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109 Commits
2.1.0 ... 2.1.2

Author SHA1 Message Date
zhayujie
01373465b0 fix(web): correct Bridge import path in MessageDeleteHandler #2902 2026-06-17 22:04:24 +08:00
zhayujie
3b3ef715bb feat: update 2.1.2 release docs 2026-06-17 19:09:47 +08:00
zhayujie
47b2bf9d46 Merge pull request #2900 from Jr61-star/harness-fix/net-egress-cowagent-web-fetch-no-private-ip-guard
fix(web_fetch): add SSRF guard for model-supplied URLs
2026-06-17 17:47:48 +08:00
christop
ea47f3097e fix(web_fetch): add SSRF guard for model-supplied URLs
web_fetch fetched any http/https URL a model emitted, checking only the
scheme. It performed requests.get(..., allow_redirects=True) with no
hostname resolution check and no private/loopback/link-local/cloud-metadata
filtering, and never re-validated redirect targets. A model (including one
under prompt injection) could make CowAgent fetch 127.0.0.1, RFC1918,
169.254.169.254 or other internal endpoints and return their bodies into
the conversation; a public URL could also 302-bounce into a private target.

The repo already shipped an SSRF validator for the vision tool
(Vision._validate_url_safe). Extract that logic into a shared helper
(agent/tools/utils/url_safety.py) and reuse it:

- execute() now validates the URL before dispatching to either fetch path.
- A new _safe_get() helper disables auto-redirect and follows redirects
  manually, re-validating every hop so a public URL cannot bounce into an
  internal address. Both the webpage and document fetch paths use it.
- Vision._validate_url_safe now delegates to the shared helper (public API
  unchanged), so both URL-consuming tools share one guard.

Stdlib only (ipaddress, socket, urllib.parse); no new dependency. Adds
tests/test_security_ssrf_web_fetch.py covering loopback, cloud-metadata,
RFC1918 and a public->loopback redirect.

Sink: agent/tools/web_fetch/web_fetch.py (_fetch_webpage / _fetch_document).
Signed-off-by: christop <825583681@qq.com>
2026-06-17 17:38:35 +08:00
zhayujie
70c1c44d15 feat: add kimi-k2.7-code and glm-5.2 models
- Add Kimi kimi-k2.7-code (default), kimi-k2.7-code-highspeed, and GLM glm-5.2 (default)
- Fix 400 error when disabling thinking on kimi-k2.7-code; omit the thinking param for this series since it only accepts type=enabled
- Update README, docs (zh/en/ja), install scripts, and Web console model dropdown
2026-06-17 11:54:35 +08:00
zhayujie
e3dce45b2a fix(bash): bypass cmd.exe length limit for long python -c on Windows 2026-06-16 21:11:33 +08:00
zhayujie
3bb8ec3bea feat(web): support manually renaming sessions in console #2897 2026-06-16 20:03:38 +08:00
zhayujie
35e42a3ad6 Merge pull request #2893 from yangziyu-hhh/master
feat(knowledge): add category and document management
2026-06-16 18:52:43 +08:00
zhayujie
949575ad14 Merge pull request #2896 from 6vision/feat/wecom-bot-callback #2869
Feat: wecom bot callback
2026-06-16 17:29:30 +08:00
zhayujie
1c34f0f03d Merge pull request #2892 from HnBigVolibear/master
feat(web): enhance scheduled task management in web console
2026-06-16 17:24:05 +08:00
6vision
eed2eab014 refactor(wecom_bot): use wecom_bot_mode field and clean up temp images
Replace the boolean wecom_bot_callback with a wecom_bot_mode field
("websocket" | "webhook"), consistent with the Feishu channel's
feishu_event_mode. Update startup() and send() to branch on the mode.

Also fix a temp-file leak in _load_image_base64: downloads, format
conversions and compressions wrote to /tmp but were never removed. Track
only the temp files created here and delete them in a finally block,
leaving the caller's original local file untouched.

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-16 17:23:31 +08:00
zhayujie
381cbed4fd fix(evolution): improve review summary language, tone and length 2026-06-15 22:28:07 +08:00
zhayujie
4cde25325d fix(evolution): pin review summary language via i18n hint 2026-06-15 22:04:52 +08:00
zhayujie
8d70af5e89 refactor(evolution): simplify review summary prompt 2026-06-15 21:43:53 +08:00
zhayujie
b3408d8e5f fix(windows): persist cow CLI dir to user PATH 2026-06-15 20:53:01 +08:00
zhayujie
e74906fbec fix(evolution): skip idle review while a turn is running 2026-06-15 20:33:52 +08:00
6vision
52209217fc refactor(wecom_bot): config-file-only callback mode + fixed callback path
Remove the callback-mode fields (Callback Mode / Token / EncodingAESKey /
Port) from the web console channel form; these are rarely changed and are
now configured via config.json only. The console keeps Bot ID / Secret for
the long-connection setup.

Serve the callback HTTP server on a fixed path (/wecombot) instead of any
path (/.*), so unrelated requests 404 rather than being processed as
signature-failing WeCom callbacks. The bot's receive-message URL must point
at http(s)://host:<port>/wecombot.

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-15 19:47:19 +08:00
6vision
018493a60b fix(wecom_bot): revert callback image cap to 512KB (2MB inline body rejected by WeCom)
The 2MB cap (matching the long-connection upload path) does not work for
the callback path: there the whole image is base64-embedded in an
AES-encrypted body returned on every poll. A ~1.5MB image (base64 ~2.1MB,
encrypted ~2.8MB) makes WeCom reject the finish packet and poll forever,
which also surfaces as a truncated text bubble and WeCom's own timeout
error. Cap well below that at 512KB so the finish packet is accepted.

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-15 19:22:16 +08:00
6vision
630373b1f0 fix(wecom_bot): defer text finish for image race; align callback image cap to 2MB
Defer the callback stream finish after a text reply so a trailing
image-with-caption send (text first, image 0.3s later) can merge in
instead of closing the stream prematurely. Raise the callback inline
image cap from 512KB to 2MB to match the long-connection upload path.

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-15 18:56:20 +08:00
6vision
dec31dfd75 fix(wecom_bot): shrink callback inline images so finish packets aren't rejected
In callback mode the image is base64-embedded in the stream finish reply and
the whole response is AES-encrypted and returned on every poll. A multi-MB
body is rejected/times out on WeCom's side, leaving the "···" bubble spinning
and the image never shown.

- Compress callback images to <=512KB (JPEG, resize if needed) instead of the
  10MB the protocol nominally allows
- Fall back to the original image if compression fails, and log the final
  base64 payload size for diagnosis

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-15 18:26:38 +08:00
zhayujie
2397ea019e feat: config cli support evolution 2026-06-15 17:57:10 +08:00
zhayujie
77da90e316 feat: record self-evolution turn on streaming chat 2026-06-15 17:51:22 +08:00
6vision
18ce17d21a fix(wecom_bot): finalize stream on cancel; never force-finish on a timer
The streaming "···" bubble should only stop when the task actually completes
or the user cancels — not on an arbitrary timeout that would also steal the
response_url fallback's chance to deliver a late answer.

- On agent_cancelled, finalize the stream (finish=true, "🛑 已中止" if empty)
  and schedule the response_url fallback so the bubble clears immediately when
  a run is cancelled, even past the poll window
- Do not force-finish a still-running stream on a timer; let it keep spinning
  until completion or cancel. Answers that finish after WeCom's ~6min poll
  window are delivered via response_url instead

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-15 17:26:06 +08:00
zhayujie
ce09b14836 feat: sync self-evolution switch and fix scheduler context 2026-06-15 16:30:34 +08:00
yangziyu-hhh
e7a069b060 Merge remote-tracking branch 'upstream/master' 2026-06-15 13:17:12 +08:00
yangziyu-hhh
6e3933be30 feat(knowledge): add category and document management 2026-06-15 13:15:07 +08:00
zhayujie
e2cb9e11b0 fix(install): avoid greenlet source build on Windows & guide browser tool install 2026-06-15 11:50:41 +08:00
zhayujie
d281a34c6f fix(models): demote claude-fable-5 from Claude default 2026-06-14 21:06:41 +08:00
湖南大白熊工作室
c97cf5610f Merge branch 'zhayujie:master' into master 2026-06-14 18:38:45 +08:00
zhayujie
ab674a3517 fix(docs): architecture graph link 2026-06-14 17:22:41 +08:00
zhayujie
7d63e7d8fa feat(cli): add agent self-restart command 2026-06-14 17:20:41 +08:00
zhayujie
6538843bdf fix(memory): remove max_tokens cap in deep dream distillation 2026-06-14 11:06:25 +08:00
HnBigVolibear
bd5fede122 feat(web): enhance scheduled task management in web console. Now we can edit any scheduled tasks in web!
- Add toggle, update and delete APIs for scheduled tasks
- Add task edit modal with schedule/action updates in web console  (PS: In edit box, now I Prevent channel type changes during editing (weixin token bound to session) )
- Add enable/disable switch with visual feedback in task cards
- Sort task list by enabled status first, then by next_run_at

Closes #2882
2026-06-14 02:11:15 +08:00
zhayujie
047fb57630 Merge pull request #2891 from sufan721/feat-add-role-module
- Auto-scan roles/*.json on startup and merge into built-in roles
2026-06-13 18:23:57 +08:00
sufan721
583c1de5ba - Auto-scan roles/*.json on startup and merge into built-in roles
- Same title overrides built-in role; different title appends as new
  - roles/ directory is optional — no impact when absent

  Users can now add custom roles by simply dropping a .json file
  into the roles/ directory and restarting. No config changes needed.
2026-06-13 16:50:54 +08:00
zhayujie
c9c293f67c Merge pull request #2888 from kirs-hi/fix/robustness-cancel-keyerror-compress-loop
fix: avoid KeyError on /cancel and infinite loop in image compression
2026-06-12 18:28:10 +08:00
6vision
561631baba fix(wecom_bot): rescue late replies via response_url + fix degrade notice
Handle agent replies that finish after WeCom stops polling the passive
stream (the poll window is ~6min from the user's message).

- Capture response_url from the message callback and, when a reply is
  finalized but no poll picks it up within a short grace period, push it as
  a one-shot active markdown reply (valid 1h, single use)
- Guard against double delivery via delivered/url_sent flags
- Embed public image URLs in the active markdown; note when a local image
  can't be delivered post-timeout
- Append (instead of discarding) the unsupported-type notice for
  file/voice/video replies so streamed text is preserved
- Quiet the per-poll debug log and log stream completion with content size

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-12 18:24:33 +08:00
zhayujie
80d0a6aeb2 Merge pull request #2879 from yangziyu-hhh/master
feat: stream Bash progress and guard message actions during replies
2026-06-12 18:19:13 +08:00
zhayujie
6b5ee245ae feat(web): integrate custom providers into the provider credentials section
- Merge the separate custom-providers section into the unified provider
  grid; "Custom" in the add-provider picker now acts as an add-new action
  (trailing + mark) and opens the dedicated modal, supporting multiple
  OpenAI-compatible endpoints
- Simplify the custom provider modal: drop the default-model field, add
  an inline delete button, align colors with the theme
- Keep the legacy single "custom" card visible (models page, chat
  dropdown and legacy config page) while custom_api_key/custom_api_base
  is still in use, so existing single-provider setups don't disappear
- Unify user-facing wording from "vendor" to "provider" in UI and docs
- Restructure custom provider docs (zh/en/ja) around Web console and
  config file usage
2026-06-12 18:03:33 +08:00
6vision
5c43c2f519 feat(wecom_bot): add callback (webhook) mode alongside long connection
Support receiving WeCom smart-bot messages via encrypted HTTP callback in
addition to the existing WebSocket long connection. Disabled by default
(wecom_bot_callback=false).

- Add wecom_bot_callback / wecom_bot_token / wecom_bot_encoding_aes_key /
  wecom_bot_port config keys
- Add WXBizJsonMsgCrypt-based crypto module for URL verification, callback
  decryption and passive-reply encryption (receive_id empty for internal bots)
- Reply asynchronously via the official stream-refresh polling: register a
  stream id on first reply, accumulate agent output into per-stream state, and
  serve the latest content (text + image) on each poll until finish
- Fall back to EncodingAESKey for media decryption when callback bodies carry
  no per-message aeskey
- Degrade unsupported passive replies (file/voice/video) to a text notice
- Expose the new fields in the Web console channel config

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-12 16:26:54 +08:00
yangziyu-hhh
9387980e74 ci: add Windows Bash streaming tests 2026-06-12 14:07:40 +08:00
yangziyu-hhh
075d9fc608 fix: address Bash streaming review feedback 2026-06-12 13:45:39 +08:00
zhayujie
63bfab03f6 Merge pull request #2877 from kirs-hi/feat/custom-providers-ui
feat(web): manage multiple custom (OpenAI-compatible) providers in console UI
2026-06-12 11:54:48 +08:00
zhayujie
1d7e6b3703 fix(web): accept custom:<id> providers in the chat capability card
_set_chat rejected the expanded "custom:<id>" ids with "unknown
provider", so switching to a custom provider was only possible from
the custom providers section. Now the chat card and the custom section
behave consistently: _set_chat validates the id against
custom_providers, falls back to the provider's default model when none
is picked, and _chat_capability expands the dropdown with the
"custom:<id>" entries (legacy single-custom mode unchanged).

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-12 11:54:19 +08:00
kirs-hi
ad64e17a34 fix: avoid KeyError on cancel and infinite loop in image compression
Two independent robustness fixes:

1. ChatChannel.cancel_session / cancel_all_session raised KeyError when a
   session existed in self.sessions but no future had been dispatched yet.
   self.sessions[sid] is created in produce(), but self.futures[sid] is only
   created later in consume() on first dispatch. Cancelling in that window
   (e.g. user sends a message then immediately cancels) crashed the cancel
   path. Use self.futures.get(sid, []) so an absent entry is a no-op.

2. compress_imgfile decremented JPEG quality by 5 with no lower bound. For an
   image that cannot be compressed below max_size, quality went 0, negative,
   ... — the loop never terminated and passed invalid quality values to PIL.
   Add a min_quality floor (10) and return the best effort once reached.

Adds tests/test_robustness_fixes.py covering both paths (5 tests).
2026-06-12 11:03:04 +08:00
kirs-hi
0092376c07 fix: address review — no auto-hijack, sync model on activation, cleanup
1. Creating a provider no longer auto-switches bot_type. Only an
   explicit make_active=true changes the active model — prevents
   silently hijacking users on Claude/OpenAI/etc.

2. When a provider IS activated, its 'model' is now written into the
   global 'model' field. This ensures all three paths (regular chat,
   agent_bridge, vision) use the correct model without per-path patches.

3. Removed unused i18n key 'models_custom_name_exists' (no longer
   referenced after the id-based rework removed name-collision checks).

4. Updated tests: 39 passing (added model-sync tests, fixed tests that
   relied on the removed auto-activation behavior).
2026-06-12 10:05:05 +08:00
zhayujie
6fb19a68b5 feat: update default config in run script 2026-06-11 19:30:08 +08:00
zhayujie
d5427d967a fix(installer): fix ASR/TTS default, self-evolution flag, and QuickEdit hang 2026-06-11 19:24:08 +08:00
zhayujie
7fd30b608c fix(cow_cli): fix line breaks in CLI replies 2026-06-11 19:08:30 +08:00
zhayujie
830b05f243 Merge pull request #2886 from kirs-hi/fix/ssrf-and-path-traversal
fix(security): SSRF protection for vision tool + path traversal guard for skill install
2026-06-11 18:24:09 +08:00
kirs-hi
e85290cddc fix(security): SSRF protection for vision tool + path traversal guard for skill install
1. Vision SSRF (#2878, #2872):
   Add _validate_url_safe() that resolves the target hostname via DNS and
   rejects any IP in private (RFC1918), loopback, link-local, or reserved
   ranges before requests.get() is called. This blocks attacks that use
   attacker-controlled image URLs to probe internal services or cloud
   metadata endpoints (169.254.169.254).

2. Skill install path traversal (#2873):
   Add _safe_skill_dir() that validates the skill name cannot escape the
   skills/ root directory. Rejects names containing '..', absolute paths,
   and any resolved path that falls outside the custom_dir boundary.
   Applied to _add_url(), _add_package(), and delete().

Both fixes include comprehensive unit tests (19 test cases) covering
blocked patterns, edge cases, and allowed legitimate usage.

Closes #2878
Closes #2873
Ref: #2872
2026-06-11 17:40:41 +08:00
kirs-hi
1940d628a8 refactor(custom): id-based routing, single source of truth, security fixes
Rework the multi custom-provider design per maintainer review:

1. Data model: use server-generated uuid4 short id as primary key;
   'name' is now a pure display label that can be freely renamed.

2. Routing: drop 'custom_active_provider'; activate a provider by
   setting bot_type to 'custom:<id>'. Single source of truth — no
   pointer drift between bot_type and a separate active selector.

3. Security: drag_sensitive() now recursively masks api_key/secret in
   nested structures (custom_providers list); previously only top-level
   string fields were masked.

4. Per-provider model: the provider's 'model' field now takes effect on
   the main chat path and agent path (was silently ignored before).

5. XSS fix: replace all inline onclick handlers in custom-provider UI
   with data-* attributes + event delegation. Provider names never
   appear in executable HTML contexts.

Legacy compatibility: bot_type='custom' (no colon) still reads the flat
custom_api_key/custom_api_base fields byte-for-byte identically.

Closes: consolidates #2876 into this PR as requested.
Ref: #2838
2026-06-11 17:25:24 +08:00
kirs-hi
cffa590d3e feat(web): manage multiple custom (OpenAI-compatible) providers in console UI
Adds first-class support for configuring more than one custom
OpenAI-compatible provider (e.g. SiliconFlow, DeepSeek, local vLLM)
and switching the active one from the web console, addressing #2838.

Backend:
- config: new `custom_providers` (list) and `custom_active_provider`
  fields, fully backward compatible with the legacy single
  `open_ai_api_base`/`model` fields (used as fallback).
- models/custom_provider.py: centralized resolver
  `resolve_custom_credentials()` returning (api_key, api_base, model),
  with active-provider selection and graceful fallback.
- chat_gpt_bot.py wired to use the resolver.
- web_channel.py: `_provider_overview` expands `custom_providers` into
  one card per provider (id `custom:<name>`, active flag, masked key);
  new POST actions `set_custom_provider`, `delete_custom_provider`,
  `set_active_custom_provider` with hermetic persistence + bridge reset.

Frontend:
- console.js: dedicated "Custom providers" section with add / edit /
  delete / set-active actions, masked-key keep-existing handling, and
  ~20 new zh/en i18n strings.
- chat.html: custom provider modal.

Tests:
- tests/test_custom_provider.py (11) - resolver/config behavior.
- tests/test_custom_provider_handlers.py (18) - write-side handlers and
  overview expansion, including duplicate-name rejection.

All 29 unit tests pass.
2026-06-10 18:12:30 +08:00
yangziyu-hhh
402e2bfee0 feat: stream Bash progress and guard message actions during replies 2026-06-10 14:19:03 +08:00
zhayujie
f5caba81d6 feat(models): support claude-fable-5 2026-06-10 09:39:37 +08:00
zhayujie
354350dec9 fix: hide code block language label when language is undefined 2026-06-09 19:20:15 +08:00
zhayujie
0513298f57 feat(evolution): allow rare persona (AGENT.md) self-evolution 2026-06-09 19:03:49 +08:00
zhayujie
08e23e5bd8 fix(vision): bump vision timeout from 60s to 180s to avoid premature failures 2026-06-09 16:36:01 +08:00
zhayujie
e812c7d29a feat(vision): increase vision tool max_tokens 2026-06-09 16:08:17 +08:00
zhayujie
ef46199346 feat: update run.sh for python3.13 2026-06-09 15:24:32 +08:00
zhayujie
7c9ea62993 chore(evolution): lower trigger thresholds to 6 turns / 10 min idle 2026-06-09 15:22:38 +08:00
zhayujie
8cb53e6129 feat: release 2.1.1 2026-06-09 14:38:05 +08:00
zhayujie
12c0383dc8 docs: update self-evolution docs 2026-06-09 12:07:41 +08:00
zhayujie
83b53039f3 feat: add 2.1.1 release docs 2026-06-09 11:41:32 +08:00
zhayujie
7e6a309935 feat(evolution): default on for new installs, unify naming, add docs 2026-06-09 10:49:43 +08:00
zhayujie
33c03e30d9 fix(web): switch to a sibling session when deleting the active one 2026-06-09 10:49:34 +08:00
zhayujie
1f1abdd7b6 fix(evolution): correct [SILENT] verdict and enable guarded bash for skill creation 2026-06-09 09:29:30 +08:00
zhayujie
16134bd150 fix: update python version in powershell script 2026-06-08 20:19:57 +08:00
zhayujie
c887fc71ad fix: support Python 3.13 by installing web.py from GitHub 2026-06-08 20:15:32 +08:00
zhayujie
9fc39f648f feat(evolution): give review agent full context, add knowledge signal, polish UX 2026-06-08 20:06:01 +08:00
zhayujie
ec9557e3d8 feat(web): resume live streaming when switching back to a session 2026-06-08 17:32:27 +08:00
zhayujie
7cf0f7d42d fix(web): self-heal stuck Cancel send button 2026-06-08 15:48:21 +08:00
zhayujie
b7aa64279d fix(web): support parallel sessions; fix lost/duplicate in-flight replies 2026-06-08 15:36:48 +08:00
zhayujie
26300a8d43 feat(evolution): flag self-evolution bubbles in UI and relax MEMORY.md writes 2026-06-07 21:00:03 +08:00
zhayujie
8dd21ddb83 Merge pull request #2868 from zhayujie/feat-self-evolution
feat(evolution): add self-evolution subsystem
2026-06-07 20:10:50 +08:00
zhayujie
ff584f8421 feat: add inter-method splitting 2026-06-07 20:10:26 +08:00
zhayujie
ca4a8253a1 docs(evolution): add Self-Evolution guide 2026-06-07 20:07:20 +08:00
zhayujie
157374401a feat(web): add self-evolution toggle in agent config 2026-06-07 19:12:32 +08:00
zhayujie
ba777ed706 feat(evolution): add self-evolution subsystem
Add a self-evolution subsystem that reviews idle conversations in an
isolated agent and durably learns from them — patching/creating skills,
finishing unfinished tasks, and backfilling missed memory.

- Trigger: background idle scan, fires when a session is idle >= N min AND
  (>= N turns OR context usage > 80%). In-memory cursor reviews only new
  messages so a session never re-learns old content.
- Isolated review agent: same model, restricted toolset, hard write-guard
  confining edits to the workspace (built-in skills are protected).
- Safety: file-level backup before edits + evolution_undo tool; notify the
  user ONLY when a workspace file actually changed (no-nag rule); capped
  concurrency.
- Records to memory/evolution/<date>.md, surfaced in the memory UI's
  renamed "Self-Evolution" tab (merged with dream diaries).
- Hide internal [SCHEDULED]/[EVOLUTION]/backup_id markers from chat history
  display (also fixes scheduler marker leakage) while keeping them in stored
  content for undo.
- Flat config: self_evolution_enabled (default off until release),
  self_evolution_idle_minutes (15), self_evolution_min_turns (6).
- Tests: tests/test_evolution.py (stub + real model modes, 7 scenarios).
2026-06-07 18:55:33 +08:00
zhayujie
0e4da1d1c5 feat(cli): show project path in cow status 2026-06-06 19:06:19 +08:00
zhayujie
72847e0711 feat(i18n): order channel list by UI language 2026-06-06 19:00:38 +08:00
zhayujie
3c19614c74 refactor(web-console): polish message actions on bubbles after #2865 2026-06-06 16:07:31 +08:00
zhayujie
a2e4955116 Merge pull request #2865 from core-power/feat/web-console-improvements
feat: message management and code block enhancements
2026-06-06 15:54:28 +08:00
PF4YZYNS\admin
c62175c06b - Add edit/delete/regenerate for user and bot messages
- Add language labels and copy buttons to code blocks
- Enhance drag-and-drop to full chat view
- Fix data consistency bugs in message operations
- Use RLock to prevent deadlock in conversation store"
2026-06-05 18:51:35 +08:00
zhayujie
fde4b6f590 Merge pull request #2863 from orbisai0security/fix/bash-credential-path-v2
fix(bash): narrow credential-file block to ~/.cow/.env only
2026-06-05 15:46:59 +08:00
zhayujie
3d7c68bac6 fix(wechatmp): reject webhook requests when wechatmp_token is empty 2026-06-05 15:14:28 +08:00
zhayujie
72a477f10c fix(models): route mimo-* models to MiMo bot in agent mode 2026-06-05 14:46:16 +08:00
OrbisAI Security
2a16c562a8 fix(bash): narrow credential-file block to ~/.cow/.env only
Replace the broad `~/.cow` directory check with a regex that matches
only the credential file path (`\.cow[/\\]\.env`), so legitimate access
to other `~/.cow/` subdirectories (e.g. skills) is no longer blocked.

Drop the incomplete env/printenv blocking rule per reviewer feedback.

Rewrite test_invariant_bash.py to use the correct Bash().execute()
API and cover both the blocked and allowed cases.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-06-05 11:36:22 +05:30
zhayujie
2b670e73f3 docs: update README.md 2026-06-04 23:17:37 +08:00
zhayujie
3994594019 docs: update badge in README.md 2026-06-04 22:43:45 +08:00
zhayujie
39c9386b54 Merge pull request #2859 from xliu123321/fix/mcp-stdio-windows
fix(mcp): replace select.select with queue.Queue for cross-platform stdio I/O
2026-06-04 11:51:08 +08:00
liusk
4cc57cc08d fix(mcp): enable concurrent calls for SSE and streamable-http transports
_stdio_send (single pipe) must remain serialized under _call_lock,
but SSE and streamable-http use independent HTTP requests and can
safely execute concurrently across sessions.

- Scope _call_lock to stdio transport only
- Add _http_lock with double-checked pattern to protect _http_session_id
  initialization during concurrent streamable-http requests
2026-06-04 11:44:35 +08:00
liusk
639a3eac1e fix(mcp): replace select.select with queue.Queue for cross-platform stdio I/O
- Use reader thread + queue.Queue instead of select.select() which does not
  work with pipes on Windows (only sockets)
- Make MCP server timeout configurable via mcp.json (default 120s)
- Validate JSON-RPC response id to skip stale responses from timed-out calls
- Log MCP server stderr at WARNING level instead of DEBUG for visibility
2026-06-04 09:10:48 +08:00
zhayujie
79323358e5 feat: add X-Title header for linkai request 2026-06-03 17:42:57 +08:00
zhayujie
cdb093c74a fix(i18n): refine auto language fallback for deployments 2026-06-03 16:09:15 +08:00
zhayujie
f6f3ce5f05 fix(i18n): refine auto language fallback for deployments 2026-06-03 15:33:29 +08:00
zhayujie
4805f3d4d3 fix(agent): register cancel token in ChatService stream run 2026-06-03 14:47:11 +08:00
zhayujie
1d797cdaf5 feat(channel): support telegram/slack/discord credential mapping 2026-06-03 11:26:36 +08:00
zhayujie
4d8458669c chore(install): simplify model menu, add MiMo option 2026-06-02 17:10:26 +08:00
zhayujie
92ec9653e5 feat(models): support qwen3.7-plus multi-modal model 2026-06-02 16:38:17 +08:00
zhayujie
e861d98007 feat(models): support ASR model selection in web console 2026-06-02 15:05:35 +08:00
zhayujie
a97eeb1fd9 Merge pull request #2857 from nightwhite/codex/fix-asr-model-hot-switch
Fix ASR model persistence in models API
2026-06-02 14:54:02 +08:00
nightwhite
cd88b23b5d fix: persist ASR model in models API 2026-06-02 13:01:20 +08:00
zhayujie
33eabf937b Merge pull request #2853 from Wyh-max-star/WYH
chore:add group task board plugin source
2026-06-02 10:38:29 +08:00
zhayujie
beb5df16a3 Merge pull request #2855 from octo-patch/feature/upgrade-minimax-m3
feat(minimax): add MiniMax-M3 as default, drop older M2.5/M2.1/M2
2026-06-02 10:30:42 +08:00
octo-patch
7fa743f01a feat(minimax): add MiniMax-M3, set as default, drop M2.5/M2.1/M2
- Add MINIMAX_M3 = "MiniMax-M3" constant and put it first in MODEL_LIST
- Default MinimaxBot model: MiniMax-M2.7 -> MiniMax-M3
- Keep MiniMax-M2.7 and MiniMax-M2.7-highspeed as legacy options
- Drop MINIMAX_M2_5 / MINIMAX_M2_1 / MINIMAX_M2_1_LIGHTNING / MINIMAX_M2
- Update web console recommended/provider model lists
- Update README capability table and docs/models index (en/zh/ja)
- Update docs/models/minimax.mdx and coding-plan.mdx MiniMax section
- Update run.sh / run.ps1 installer default and menu hint
- Update zh CLI status sample output
- Update unit tests to assert new M3 default and constant

TTS (speech-2.*) and API base URL remain unchanged.
2026-06-01 21:30:38 +08:00
zhayujie
1f6859d78f feat: update CLI version to 2.1.0 2026-06-01 16:59:19 +08:00
zhayujie
2853735472 docs: update README.md 2026-06-01 16:46:16 +08:00
Wyh-max-star
04d28f9d2d chore:add group task board plugin source 2026-05-31 20:52:42 +08:00
151 changed files with 10558 additions and 741 deletions

View File

@@ -1,6 +1,6 @@
<!-- <!--
Thanks for your contribution! Please write this PR in English. Thanks for your contribution! Please write this PR in English.
【中文开发者】请使用英文填写,感谢 ❤️ 推荐使用英文填写,感谢 ❤️
--> -->
## What does this PR do? ## What does this PR do?
@@ -16,6 +16,7 @@ Thanks for your contribution! Please write this PR in English.
## Checklist ## Checklist
- [ ] I have read the [Contributing Guide](https://github.com/zhayujie/CowAgent/blob/master/CONTRIBUTING.md)
- [ ] I tested this change locally - [ ] I tested this change locally
- [ ] Code comments and docs are in English - [ ] Code comments and docs are in English
- [ ] Linked related issue (if any): closes # - [ ] Linked related issue (if any): closes #

32
.github/workflows/test-windows-bash.yml vendored Normal file
View File

@@ -0,0 +1,32 @@
name: Windows Bash Streaming Tests
on:
workflow_dispatch:
pull_request:
paths:
- "agent/tools/bash/bash.py"
- "tests/test_bash_streaming.py"
- ".github/workflows/test-windows-bash.yml"
jobs:
windows-bash-tests:
runs-on: windows-latest
steps:
- name: Checkout repository
uses: actions/checkout@v4
- name: Set up Python
uses: actions/setup-python@v5
with:
python-version: "3.11"
cache: pip
- name: Install dependencies
run: |
python -m pip install --upgrade pip
python -m pip install pytest
python -m pip install -r requirements.txt
- name: Run Windows Bash streaming tests
run: python -m pytest tests/test_bash_streaming.py -v

View File

@@ -1,13 +1,21 @@
<p align="center"><img src="https://github.com/user-attachments/assets/eca9a9ec-8534-4615-9e0f-96c5ac1d10a3" alt="CowAgent" width="420" /></p> <p align="center"><img src="https://github.com/user-attachments/assets/eca9a9ec-8534-4615-9e0f-96c5ac1d10a3" alt="CowAgent" width="420" /></p>
<p align="center"> <p align="center">
<a href="https://github.com/zhayujie/CowAgent/releases/latest"><img src="https://img.shields.io/github/v/release/zhayujie/CowAgent" alt="Latest release"></a> <a href="https://github.com/zhayujie/CowAgent/releases/latest"><img src="https://img.shields.io/github/v/release/zhayujie/CowAgent?cacheSeconds=3600" alt="Latest release"></a>
<a href="https://github.com/zhayujie/CowAgent/blob/master/LICENSE"><img src="https://img.shields.io/github/license/zhayujie/CowAgent" alt="License: MIT"></a> <a href="https://github.com/zhayujie/CowAgent/blob/master/LICENSE"><img src="https://img.shields.io/badge/license-MIT-green.svg" alt="License: MIT"></a>
<a href="https://github.com/zhayujie/CowAgent"><img src="https://img.shields.io/github/stars/zhayujie/CowAgent?style=flat-square" alt="Stars"></a> <br/> <a href="https://github.com/zhayujie/CowAgent"><img src="https://img.shields.io/github/stars/zhayujie/CowAgent?style=flat-square&cacheSeconds=3600" alt="Stars"></a>
<a href="https://docs.cowagent.ai/"><img src="https://img.shields.io/badge/Docs-cowagent.ai-blue?style=flat&logo=readthedocs&logoColor=white" alt="Docs"></a>
</p>
<p align="center">
<a href="https://trendshift.io/repositories/25763" target="_blank"><img src="https://trendshift.io/api/badge/repositories/25763" alt="zhayujie%2FCowAgent | Trendshift" style="width: 250px; height: 55px;" width="250" height="55"/></a>
</p>
<p align="center">
[English] | [<a href="docs/zh/README.md">中文</a>] | [<a href="docs/ja/README.md">日本語</a>] [English] | [<a href="docs/zh/README.md">中文</a>] | [<a href="docs/ja/README.md">日本語</a>]
</p> </p>
**CowAgent** is an open-source super AI assistant that proactively plans tasks, controls your computer and external services, creates and runs Skills, and grows alongside you through a personal knowledge base and long-term memory — a reference implementation of Agent Harness engineering. **CowAgent** is an open-source super AI assistant that proactively plans tasks, controls your computer and external services, creates and runs Skills, builds a personal knowledge base and long-term memory, and grows alongside you through self-evolution — a reference implementation of Agent Harness engineering.
CowAgent is lightweight, easy to deploy, and built to extend. Plug in any major LLM provider and run it 24/7 on a personal computer or server, across the web and all major IM platforms. CowAgent is lightweight, easy to deploy, and built to extend. Plug in any major LLM provider and run it 24/7 on a personal computer or server, across the web and all major IM platforms.
@@ -28,6 +36,7 @@ CowAgent is lightweight, easy to deploy, and built to extend. Plug in any major
| [Planning](https://docs.cowagent.ai/intro/architecture) | Decomposes complex tasks and executes them step by step, looping over tools until the goal is reached | | [Planning](https://docs.cowagent.ai/intro/architecture) | Decomposes complex tasks and executes them step by step, looping over tools until the goal is reached |
| [Memory](https://docs.cowagent.ai/memory/index) | Three-tier architecture (context → daily → core), automatic Deep Dream distillation, hybrid keyword + vector retrieval | | [Memory](https://docs.cowagent.ai/memory/index) | Three-tier architecture (context → daily → core), automatic Deep Dream distillation, hybrid keyword + vector retrieval |
| [Knowledge](https://docs.cowagent.ai/knowledge/index) | Auto-curates structured knowledge into a Markdown wiki, builds an evolving knowledge graph with visual browsing | | [Knowledge](https://docs.cowagent.ai/knowledge/index) | Auto-curates structured knowledge into a Markdown wiki, builds an evolving knowledge graph with visual browsing |
| [Evolution](https://docs.cowagent.ai/memory/self-evolution) | Self-Evolution reviews conversations automatically to improve skills, follow up on unfinished tasks, and consolidate memory and knowledge, growing through everyday use |
| [Skills](https://docs.cowagent.ai/skills/index) | One-click install from [Skill Hub](https://skills.cowagent.ai/), GitHub, ClawHub; or create custom skills via natural-language conversation | | [Skills](https://docs.cowagent.ai/skills/index) | One-click install from [Skill Hub](https://skills.cowagent.ai/), GitHub, ClawHub; or create custom skills via natural-language conversation |
| [Tools](https://docs.cowagent.ai/tools/index) | Built-in file I/O, terminal, browser, scheduler, memory retrieval, web search, and 10+ more tools — with native MCP integration | | [Tools](https://docs.cowagent.ai/tools/index) | Built-in file I/O, terminal, browser, scheduler, memory retrieval, web search, and 10+ more tools — with native MCP integration |
| [Channels](https://docs.cowagent.ai/channels/index) | Integrates with Web, WeChat, Feishu, DingTalk, WeCom, QQ, Official Accounts, Telegram, and Slack | | [Channels](https://docs.cowagent.ai/channels/index) | Integrates with Web, WeChat, Feishu, DingTalk, WeCom, QQ, Official Accounts, Telegram, and Slack |
@@ -39,7 +48,7 @@ CowAgent is lightweight, easy to deploy, and built to extend. Plug in any major
## 🏗️ Architecture ## 🏗️ Architecture
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/architecture/en/architecture.jpg" alt="CowAgent Architecture" width="750"/> <img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/architecture/en/architecture.png" alt="CowAgent Architecture" width="750"/>
CowAgent is a complete **Agent Harness**: messages flow in through **Channels**; the **Agent Core** plans and reasons over memory, knowledge, and the available tools and skills; **Models** generate the response, which is sent back through the originating channel. Every layer is decoupled and independently extensible. CowAgent is a complete **Agent Harness**: messages flow in through **Channels**; the **Agent Core** plans and reasons over memory, knowledge, and the available tools and skills; **Models** generate the response, which is sent back through the originating channel. Every layer is decoupled and independently extensible.
@@ -94,15 +103,15 @@ CowAgent supports all mainstream LLM providers. **Chat, vision, image generation
| Provider | Featured Models | Chat | Vision | Image Gen | ASR | TTS | Embedding | | Provider | Featured Models | Chat | Vision | Image Gen | ASR | TTS | Embedding |
| --- | --- | :-: | :-: | :-: | :-: | :-: | :-: | | --- | --- | :-: | :-: | :-: | :-: | :-: | :-: |
| [Claude](https://docs.cowagent.ai/models/claude) | claude-opus-4-8 | ✅ | ✅ | | | | | | [Claude](https://docs.cowagent.ai/models/claude) | claude-fable-5 | ✅ | ✅ | | | | |
| [OpenAI](https://docs.cowagent.ai/models/openai) | gpt-5.5, o-series | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [OpenAI](https://docs.cowagent.ai/models/openai) | gpt-5.5, o-series | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [Gemini](https://docs.cowagent.ai/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | | | [Gemini](https://docs.cowagent.ai/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | |
| [DeepSeek](https://docs.cowagent.ai/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | | | [DeepSeek](https://docs.cowagent.ai/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | |
| [Qwen](https://docs.cowagent.ai/models/qwen) | qwen3.7-max | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [Qwen](https://docs.cowagent.ai/models/qwen) | qwen3.7-plus | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [GLM](https://docs.cowagent.ai/models/glm) | glm-5.1, glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ | | [GLM](https://docs.cowagent.ai/models/glm) | glm-5.2, glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ |
| [Doubao](https://docs.cowagent.ai/models/doubao) | doubao-seed-2.0 series | ✅ | ✅ | ✅ | | | ✅ | | [Doubao](https://docs.cowagent.ai/models/doubao) | doubao-seed-2.0 series | ✅ | ✅ | ✅ | | | ✅ |
| [Kimi](https://docs.cowagent.ai/models/kimi) | kimi-k2.6 | ✅ | ✅ | | | | | | [Kimi](https://docs.cowagent.ai/models/kimi) | kimi-k2.7-code | ✅ | ✅ | | | | |
| [MiniMax](https://docs.cowagent.ai/models/minimax) | MiniMax-M2.7 | ✅ | ✅ | ✅ | | ✅ | | | [MiniMax](https://docs.cowagent.ai/models/minimax) | MiniMax-M3 | ✅ | ✅ | ✅ | | ✅ | |
| [ERNIE](https://docs.cowagent.ai/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | | | [ERNIE](https://docs.cowagent.ai/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | |
| [MiMo](https://docs.cowagent.ai/models/mimo) | mimo-v2.5 / pro | ✅ | ✅ | | | ✅ | | | [MiMo](https://docs.cowagent.ai/models/mimo) | mimo-v2.5 / pro | ✅ | ✅ | | | ✅ | |
| [LinkAI](https://docs.cowagent.ai/models/linkai) | One key for 100+ models | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [LinkAI](https://docs.cowagent.ai/models/linkai) | One key for 100+ models | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
@@ -190,6 +199,10 @@ Learn more: [Skills overview](https://docs.cowagent.ai/skills/index) · [Creatin
## 🏷 Changelog ## 🏷 Changelog
> **2026.06.18:** [v2.1.2](https://github.com/zhayujie/CowAgent/releases/tag/2.1.2) — Web console upgrades (scheduled task management, knowledge base categories, multiple custom model providers), Self-Evolution improvements, new models (kimi-k2.7-code, glm-5.2), security hardening and refinements.
> **2026.06.09:** [v2.1.1](https://github.com/zhayujie/CowAgent/releases/tag/2.1.1) — Self-Evolution, Web console upgrades (message management, parallel sessions), cross-platform MCP enhancements with concurrent calls, new models (MiniMax-M3, qwen3.7-plus), Python 3.13 support.
> **2026.06.01:** [v2.1.0](https://github.com/zhayujie/CowAgent/releases/tag/2.1.0) — Internationalization, new channels (Telegram, Discord, Slack, WeChat Customer Service), CLI interaction upgrades, streamlined one-line install, MCP Streamable HTTP support, new models (claude-opus-4-8, MiMo). > **2026.06.01:** [v2.1.0](https://github.com/zhayujie/CowAgent/releases/tag/2.1.0) — Internationalization, new channels (Telegram, Discord, Slack, WeChat Customer Service), CLI interaction upgrades, streamlined one-line install, MCP Streamable HTTP support, new models (claude-opus-4-8, MiMo).
> **2026.05.22:** [v2.0.9](https://github.com/zhayujie/CowAgent/releases/tag/2.0.9) — Model management, MCP protocol support, persistent browser sessions, new models (gpt-5.5, gemini-3.5-flash, qwen3.7-max), deployment hardening. > **2026.05.22:** [v2.0.9](https://github.com/zhayujie/CowAgent/releases/tag/2.0.9) — Model management, MCP protocol support, persistent browser sessions, new models (gpt-5.5, gemini-3.5-flash, qwen3.7-max), deployment hardening.
@@ -238,9 +251,9 @@ For enterprise inquiries: sales@simple-future.tech or [scan the QR code](https:/
## 🛠️ Development & Contributing ## 🛠️ Development & Contributing
Contributions are welcome — add a new channel by following the [Feishu channel reference](https://github.com/zhayujie/CowAgent/blob/master/channel/feishu/feishu_channel.py), or contribute new skills to [Skill Hub](https://skills.cowagent.ai/submit). All kinds of contributions are welcome — new features, bug fixes, performance improvements, docs, or sharing your own skills on the [Skill Hub](https://skills.cowagent.ai/submit). See [CONTRIBUTING.md](/CONTRIBUTING.md) to get started, then open an Issue to discuss or send a PR directly.
⭐ Star the project to follow updates, and feel free to open PRs and Issues. ⭐ Star the project to show your support, and Watch → Custom → Releases to get notified of new versions. PRs and Issues are always welcome.
## 🌟 Contributors ## 🌟 Contributors

View File

@@ -49,6 +49,16 @@ class ChatService:
agent.model.channel_type = channel_type or "" agent.model.channel_type = channel_type or ""
agent.model.session_id = session_id or "" agent.model.session_id = session_id or ""
# Build a context so context-aware tools (e.g. scheduler) can resolve the
# receiver/session. This streaming path bypasses agent_bridge.agent_reply,
# so the attach step that normally happens there must be done here too.
context = self._build_context(query, session_id, channel_type)
self._attach_context_aware_tools(agent, context)
# Mark this session as mid-run so the self-evolution idle scan does not
# fire concurrently when a single turn runs longer than idle_minutes.
self._mark_run_active(agent, True)
# State shared between the event callback and this method # State shared between the event callback and this method
state = _StreamState() state = _StreamState()
@@ -171,6 +181,12 @@ class ChatService:
from agent.protocol.agent_stream import AgentStreamExecutor from agent.protocol.agent_stream import AgentStreamExecutor
# Register a cancel token so /cancel can abort this in-flight run.
# IM channels key on session_id (no per-turn request_id here).
from agent.protocol import get_cancel_registry
registry = get_cancel_registry()
cancel_event = registry.register(session_id, session_id=session_id) if session_id else None
executor = AgentStreamExecutor( executor = AgentStreamExecutor(
agent=agent, agent=agent,
model=agent.model, model=agent.model,
@@ -180,6 +196,7 @@ class ChatService:
on_event=on_event, on_event=on_event,
messages=messages_copy, messages=messages_copy,
max_context_turns=max_context_turns, max_context_turns=max_context_turns,
cancel_event=cancel_event,
) )
try: try:
@@ -191,6 +208,15 @@ class ChatService:
agent.messages.clear() agent.messages.clear()
logger.info("[ChatService] Cleared agent message history after executor recovery") logger.info("[ChatService] Cleared agent message history after executor recovery")
raise raise
finally:
# Clear the mid-run flag so idle scans can review this session again.
self._mark_run_active(agent, False)
# Release cancel token to keep the registry bounded.
if session_id:
try:
registry.unregister(session_id)
except Exception:
pass
# Sync executor messages back to agent (thread-safe). # Sync executor messages back to agent (thread-safe).
# The executor may have trimmed context, making its list shorter than # The executor may have trimmed context, making its list shorter than
@@ -254,10 +280,68 @@ class ChatService:
# Execute post-process tools # Execute post-process tools
agent._execute_post_process_tools() agent._execute_post_process_tools()
# Record this user turn for the self-evolution idle trigger. This
# streaming path bypasses agent_bridge.agent_reply, so the activity must
# be noted here, otherwise idle scans never see any signal to evolve.
self._note_evolution_turn(agent, context)
logger.info(f"[ChatService] Agent run completed: session={session_id}") logger.info(f"[ChatService] Agent run completed: session={session_id}")
@staticmethod
def _build_context(query: str, session_id: str, channel_type: str):
"""Build a Context for tool resolution on the streaming chat path.
receiver falls back to session_id; the scheduler's delivery keys on
session_id as the receiver.
"""
from bridge.context import Context, ContextType
# Pass an explicit kwargs dict: Context's default kwargs is a shared
# mutable default, so omitting it would leak fields across sessions.
ctx = Context(ContextType.TEXT, query, kwargs={})
ctx["session_id"] = session_id
ctx["receiver"] = session_id
ctx["isgroup"] = False
ctx["channel_type"] = channel_type or ""
return ctx
@staticmethod
def _attach_context_aware_tools(agent, context):
"""Attach the current context to tools that need it (scheduler)."""
try:
if not (context and getattr(agent, "tools", None)):
return
for tool in agent.tools:
if tool.name == "scheduler":
from agent.tools.scheduler.integration import attach_scheduler_to_tool
attach_scheduler_to_tool(tool, context)
break
except Exception as e:
logger.warning(f"[ChatService] Failed to attach context to scheduler: {e}")
@staticmethod
def _mark_run_active(agent, active):
"""Toggle the self-evolution mid-run flag for this session's agent."""
try:
from agent.evolution.trigger import mark_run_active
mark_run_active(agent, active)
except Exception:
pass
@staticmethod
def _note_evolution_turn(agent, context):
"""Record a user turn so the self-evolution idle trigger has signal."""
try:
from agent.evolution.trigger import note_user_turn
ch = (context.get("channel_type") or "") if context else ""
rcv = (context.get("receiver") or "") if context else ""
is_group = bool(context.get("isgroup")) if context else False
# Only single chats get a proactive push target; group push is noisy.
note_user_turn(agent, channel_type=ch, receiver=(rcv if not is_group else ""))
except Exception:
pass
@staticmethod @staticmethod
def _persist_messages(session_id: str, new_messages: list, channel_type: str = ""): def _persist_messages(session_id: str, new_messages: list, channel_type: str = ""):
try: try:

View File

@@ -0,0 +1,19 @@
"""
Self-evolution subsystem for CowAgent.
Runs a lightweight, isolated review pass after a conversation goes idle to
decide whether anything is worth durably learning (memory / skill) or whether
an unfinished task can be pushed forward. Conservative by design: most
conversations should produce no change at all.
Public entry points:
from agent.evolution import get_evolution_config
from agent.evolution.trigger import start_evolution_trigger, note_user_turn
"""
from agent.evolution.config import EvolutionConfig, get_evolution_config
__all__ = [
"EvolutionConfig",
"get_evolution_config",
]

102
agent/evolution/backup.py Normal file
View File

@@ -0,0 +1,102 @@
"""File backup / rollback support for self-evolution.
Before the evolution agent edits MEMORY.md or a skill file, we snapshot the
current state into ``memory/.evolution_backups/<backup_id>/`` so a later "undo"
can restore it. File-level restore only — simple and reliable.
"""
from __future__ import annotations
import json
import shutil
import time
from datetime import datetime
from pathlib import Path
from typing import List, Optional
from common.log import logger
_BACKUP_DIRNAME = ".evolution_backups"
_MANIFEST_NAME = "manifest.json"
# Keep only the most recent N backups to bound disk usage.
_MAX_BACKUPS = 10
def _backups_root(workspace_dir: Path) -> Path:
return Path(workspace_dir) / "memory" / _BACKUP_DIRNAME
def create_backup(workspace_dir: Path, files: List[Path]) -> Optional[str]:
"""Snapshot ``files`` (those that exist) under a new backup id.
Returns the backup_id, or None when there is nothing to back up.
"""
existing = [Path(f) for f in files if Path(f).exists()]
if not existing:
return None
backup_id = datetime.now().strftime("%Y%m%d-%H%M%S-") + str(int(time.time() * 1000) % 1000)
root = _backups_root(workspace_dir)
target = root / backup_id
try:
target.mkdir(parents=True, exist_ok=True)
ws = Path(workspace_dir)
manifest = []
for idx, src in enumerate(existing):
# Store under a flat index plus the relative path so restore knows
# where it came from, even for nested skill files.
try:
rel = str(src.relative_to(ws))
except ValueError:
rel = src.name
dst = target / f"{idx}.bak"
shutil.copy2(src, dst)
manifest.append({"rel": rel, "bak": f"{idx}.bak"})
(target / _MANIFEST_NAME).write_text(
json.dumps(manifest, ensure_ascii=False, indent=2), encoding="utf-8"
)
_prune_old_backups(root)
# Caller logs a combined backup+review line; keep this at debug.
logger.debug(f"[Evolution] Created backup {backup_id} ({len(manifest)} file(s))")
return backup_id
except Exception as e:
logger.warning(f"[Evolution] Failed to create backup: {e}")
return None
def restore_backup(workspace_dir: Path, backup_id: str) -> bool:
"""Restore all files captured under ``backup_id``. Returns success."""
if not backup_id:
return False
target = _backups_root(workspace_dir) / backup_id
manifest_path = target / _MANIFEST_NAME
if not manifest_path.exists():
logger.warning(f"[Evolution] Backup not found: {backup_id}")
return False
try:
manifest = json.loads(manifest_path.read_text(encoding="utf-8"))
ws = Path(workspace_dir)
for entry in manifest:
bak = target / entry["bak"]
dst = ws / entry["rel"]
if bak.exists():
dst.parent.mkdir(parents=True, exist_ok=True)
shutil.copy2(bak, dst)
logger.info(f"[Evolution] Restored backup {backup_id} ({len(manifest)} file(s))")
return True
except Exception as e:
logger.warning(f"[Evolution] Failed to restore backup {backup_id}: {e}")
return False
def _prune_old_backups(root: Path) -> None:
"""Drop the oldest backups beyond _MAX_BACKUPS (sorted by name = chronological)."""
try:
dirs = sorted(
[d for d in root.iterdir() if d.is_dir()],
key=lambda p: p.name,
)
for old in dirs[:-_MAX_BACKUPS]:
shutil.rmtree(old, ignore_errors=True)
except Exception as e:
logger.debug(f"[Evolution] Backup prune skipped: {e}")

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"""Configuration for the self-evolution subsystem.
Reads flat ``self_evolution_*`` keys from config.json. All fields have safe
defaults so the feature degrades gracefully when keys are absent.
"""
from __future__ import annotations
from dataclasses import dataclass
from typing import Any
# Defaults — conservative (see executor module docstring). Disabled by default
# until release; enable via ``self_evolution_enabled``.
DEFAULT_ENABLED = False
DEFAULT_IDLE_MINUTES = 10
DEFAULT_MIN_TURNS = 6
# Max review steps for the isolated evolution agent. Kept small (not exposed as
# config): the review is meant to be cheap and focused, not a long autonomous run.
DEFAULT_MAX_STEPS = 12
@dataclass
class EvolutionConfig:
"""Resolved self-evolution settings."""
enabled: bool = DEFAULT_ENABLED
idle_minutes: int = DEFAULT_IDLE_MINUTES
min_turns: int = DEFAULT_MIN_TURNS
max_steps: int = DEFAULT_MAX_STEPS
@property
def idle_seconds(self) -> int:
return max(60, self.idle_minutes * 60)
def _as_bool(value: Any, fallback: bool) -> bool:
if isinstance(value, bool):
return value
if isinstance(value, str):
v = value.strip().lower()
if v in ("true", "1", "yes", "on"):
return True
if v in ("false", "0", "no", "off"):
return False
return fallback
def _as_pos_int(value: Any, fallback: int) -> int:
try:
n = int(value)
return n if n > 0 else fallback
except (TypeError, ValueError):
return fallback
def get_evolution_config() -> EvolutionConfig:
"""Build EvolutionConfig from the live config.json ``self_evolution_*`` keys."""
try:
from config import conf
c = conf()
except Exception:
c = {}
def _get(key, default):
try:
return c.get(key, default)
except Exception:
return default
return EvolutionConfig(
enabled=_as_bool(_get("self_evolution_enabled", None), DEFAULT_ENABLED),
idle_minutes=_as_pos_int(_get("self_evolution_idle_minutes", None), DEFAULT_IDLE_MINUTES),
min_turns=_as_pos_int(_get("self_evolution_min_turns", None), DEFAULT_MIN_TURNS),
max_steps=DEFAULT_MAX_STEPS,
)

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"""Self-evolution executor.
Runs an isolated review agent over an idle conversation's transcript and, if a
clear signal is found, lets it edit memory / skills via a restricted toolset.
Conservative by design: most runs return ``[SILENT]`` and change nothing.
Flow:
1. Build a transcript from the session's new (since last pass) messages.
2. Snapshot MEMORY.md + daily file + editable skills (for undo) -> backup_id.
3. Run an isolated agent (same model, restricted tools, evolution prompt).
4. If output is [SILENT], or no workspace file actually changed -> done.
5. Otherwise -> record to the evolution log, inject an [EVOLUTION] note into
the user session (so the main agent can honor "undo"), and push the
summary to the user's channel.
Reuses existing infrastructure (AgentBridge.create_agent, ToolManager,
remember_scheduled_output, channel_factory) rather than introducing a fork.
"""
from __future__ import annotations
import re
import threading
from datetime import datetime
from pathlib import Path
from typing import List, Optional
from common.log import logger
from agent.evolution.backup import create_backup
from agent.evolution.config import get_evolution_config
from agent.evolution.prompts import (
EVOLUTION_MARKER,
EVOLUTION_SYSTEM_PROMPT,
SILENT_TOKEN,
build_review_user_message,
)
from agent.evolution.record import append_session_evolution
# Tools the isolated evolution agent is allowed to use. Everything else is
# withheld so a review pass can only read context, run workspace scripts, and
# edit memory/skill files. bash is needed by skill-creator's init script and is
# confined to the workspace by _BashWorkspaceGuard.
_ALLOWED_TOOLS = {"read", "write", "edit", "ls", "bash", "memory_search", "memory_get"}
# Cap concurrent evolution passes so a burst of idle sessions can't spawn many
# background model runs at once. Extra sessions simply wait for the next scan.
_MAX_CONCURRENT = 2
_running_lock = threading.Lock()
_running_count = 0
def _builtin_skill_names() -> set:
"""Names of skills shipped with the product (project-root ``skills/``).
These are protected: the evolution agent must never edit them, even though
a same-named copy exists in the workspace at runtime. The project dir is the
authoritative list of what counts as built-in.
"""
try:
# executor.py -> agent/evolution -> agent -> project root
project_root = Path(__file__).resolve().parents[2]
builtin_dir = project_root / "skills"
if not builtin_dir.is_dir():
return set()
names = set()
for entry in builtin_dir.iterdir():
if entry.is_dir() and not entry.name.startswith("."):
names.add(entry.name)
return names
except Exception:
return set()
def _build_transcript(messages: List[dict], max_chars: int = 12000) -> str:
"""Render the session messages into a compact text transcript."""
lines: List[str] = []
for msg in messages:
role = msg.get("role", "")
if role not in ("user", "assistant"):
continue
content = msg.get("content", "")
text = _extract_text(content)
if not text.strip():
continue
speaker = "User" if role == "user" else "Assistant"
lines.append(f"{speaker}: {text.strip()}")
transcript = "\n".join(lines)
# Keep the most RECENT context if oversized (tail is most relevant).
if len(transcript) > max_chars:
transcript = "...(earlier omitted)...\n" + transcript[-max_chars:]
return transcript
def _extract_text(content) -> str:
if isinstance(content, str):
return content
if isinstance(content, list):
parts = []
for block in content:
if isinstance(block, dict) and block.get("type") == "text":
parts.append(block.get("text", ""))
elif isinstance(block, str):
parts.append(block)
return "\n".join(parts)
return ""
def _select_tools(all_tools: list) -> list:
return [t for t in all_tools if getattr(t, "name", None) in _ALLOWED_TOOLS]
# Tools whose writes must be confined to the workspace during evolution.
_WRITE_TOOLS = {"write", "edit"}
class _WorkspaceWriteGuard:
"""Wraps a write/edit tool so it can ONLY write inside the workspace.
Hard engineering guard (not prompt-based): any write resolving outside the
workspace — e.g. the project's bundled ``skills/`` dir — is rejected. This
protects built-in skills regardless of what the model attempts.
"""
def __init__(self, inner, workspace_dir: str):
self._inner = inner
self._ws = Path(workspace_dir).resolve()
# Mirror the attributes the agent runtime reads off a tool.
self.name = inner.name
self.description = inner.description
self.params = inner.params
def __getattr__(self, item):
return getattr(self._inner, item)
def execute_tool(self, params):
# The agent runtime calls execute_tool (not execute); route it through
# our guarded execute so the path checks always run.
try:
return self.execute(params)
except Exception as e:
logger.error(f"[Evolution] guarded tool error: {e}")
from agent.tools.base_tool import ToolResult
return ToolResult.fail(f"Error: {e}")
def execute(self, args):
path = (args.get("path") or "").strip()
if path:
try:
resolved = Path(self._inner._resolve_path(path)).resolve()
from agent.tools.base_tool import ToolResult
# Confine writes to the workspace. This protects the product's
# bundled skills (which live outside the workspace) from ever
# being modified, no matter what path the model attempts.
if self._ws not in resolved.parents and resolved != self._ws:
return ToolResult.fail(
"Error: evolution may only write inside the workspace; "
f"path '{path}' is outside and was blocked."
)
except Exception:
pass
return self._inner.execute(args)
class _BashWorkspaceGuard:
"""Wraps the bash tool so evolution can only run commands inside the
workspace.
Evolution needs bash for skill-creator's init script, but it runs
unattended in the background, so a raw shell is too broad. This guard:
- forces the command to execute with cwd = workspace,
- rejects commands that reference an absolute path or ``..`` segment
pointing OUTSIDE the workspace (the common ways to escape it).
It is a coarse textual check, not a sandbox — paired with the model's
instruction to only run skill-creator scripts, it keeps writes local.
"""
def __init__(self, inner, workspace_dir: str):
self._inner = inner
self._ws = Path(workspace_dir).resolve()
# Pin the shell's working directory to the workspace.
try:
self._inner.cwd = str(self._ws)
except Exception:
pass
self.name = inner.name
self.description = inner.description
self.params = inner.params
def __getattr__(self, item):
return getattr(self._inner, item)
def execute_tool(self, params):
try:
return self.execute(params)
except Exception as e:
logger.error(f"[Evolution] guarded bash error: {e}")
from agent.tools.base_tool import ToolResult
return ToolResult.fail(f"Error: {e}")
def _escapes_workspace(self, command: str) -> bool:
# Absolute paths that are not under the workspace.
for tok in re.findall(r'(?:^|\s)(/[^\s\'";|&]+)', command):
try:
resolved = Path(tok).resolve()
except Exception:
continue
if self._ws != resolved and self._ws not in resolved.parents:
return True
# Parent-dir traversal that climbs above the workspace.
for tok in re.findall(r'[^\s\'";|&]*\.\.[^\s\'";|&]*', command):
try:
resolved = (self._ws / tok).resolve()
except Exception:
continue
if self._ws != resolved and self._ws not in resolved.parents:
return True
return False
def execute(self, args):
from agent.tools.base_tool import ToolResult
command = (args.get("command") or "").strip()
if command and self._escapes_workspace(command):
return ToolResult.fail(
"Error: evolution may only run commands inside the workspace; "
"this command references a path outside it and was blocked."
)
return self._inner.execute(args)
def _guard_tools(tools: list, workspace_dir: str) -> list:
"""Wrap write/edit/bash tools with workspace guards; leave others as-is."""
guarded = []
for t in tools:
name = getattr(t, "name", None)
if name in _WRITE_TOOLS:
guarded.append(_WorkspaceWriteGuard(t, workspace_dir))
elif name == "bash":
guarded.append(_BashWorkspaceGuard(t, workspace_dir))
else:
guarded.append(t)
return guarded
# Workspace subtrees worth watching for evolution-induced changes. AGENT.md is
# watched too: evolution may rarely refine the assistant's persona/style there.
_WATCH_SUBDIRS = ("MEMORY.md", "AGENT.md", "skills", "knowledge", "output")
# Subpaths under memory/ to ignore: evolution's own bookkeeping + the nightly
# dream diary, none of which count as a user-facing change signal.
_MEMORY_IGNORE = (".evolution_backups", "dreams", "evolution")
# Files the skill subsystem maintains automatically (the enable/disable index).
# Not an evolution result, so a rewrite must not count as a change signal.
_WATCH_IGNORE_NAMES = ("skills_config.json",)
def _workspace_snapshot(workspace_dir) -> dict:
"""Map relative path -> (mtime, size) for watched files. Cheap, no reads."""
ws = Path(workspace_dir)
snap: dict = {}
for name in _WATCH_SUBDIRS:
root = ws / name
if root.is_file():
try:
st = root.stat()
snap[name] = (st.st_mtime, st.st_size)
except OSError:
pass
continue
if not root.is_dir():
continue
for p in root.rglob("*"):
if not p.is_file():
continue
if p.name in _WATCH_IGNORE_NAMES:
continue
try:
st = p.stat()
snap[str(p.relative_to(ws))] = (st.st_mtime, st.st_size)
except OSError:
pass
# Watch the daily memory files (memory/*.md and per-user dailies) since
# evolution now records learnings there. Skip backups/dreams bookkeeping.
mem_dir = ws / "memory"
if mem_dir.is_dir():
for p in mem_dir.rglob("*.md"):
rel_parts = p.relative_to(mem_dir).parts
if rel_parts and rel_parts[0] in _MEMORY_IGNORE:
continue
try:
st = p.stat()
snap[str(p.relative_to(ws))] = (st.st_mtime, st.st_size)
except OSError:
pass
return snap
def _workspace_changed(workspace_dir, pre: dict) -> bool:
"""True if any watched file was added, removed, or modified since ``pre``."""
return _workspace_snapshot(workspace_dir) != pre
def run_evolution_for_session(
agent_bridge,
session_id: str,
channel_type: str = "",
receiver: str = "",
user_id: Optional[str] = None,
idle_minutes: float = 0.0,
) -> bool:
"""Run one evolution pass for a session. Returns True if it changed anything.
Safe to call from a background thread. All failures are swallowed and
logged — evolution must never disrupt the main pipeline.
"""
cfg = get_evolution_config()
if not cfg.enabled:
return False
# Concurrency gate: bound how many evolution passes run at once.
global _running_count
with _running_lock:
if _running_count >= _MAX_CONCURRENT:
logger.info(
f"[Evolution] busy ({_running_count}/{_MAX_CONCURRENT} running); "
f"skipping session={session_id} this scan"
)
return False
_running_count += 1
try:
agent = agent_bridge.agents.get(session_id) or agent_bridge.default_agent
if not agent:
return False
with agent.messages_lock:
all_messages = list(agent.messages)
total_msgs = len(all_messages)
# In-memory evolution cursor: only review messages added since the last
# pass so a long session doesn't re-judge (and re-write) old content.
# Stored on the agent instance; lost on restart (acceptable — at worst
# one redundant pass right after a restart, gated by the file-change
# check downstream so it won't double-write identical memory).
done = int(getattr(agent, "_evo_done_msg_count", 0))
if done > total_msgs:
done = 0 # history was trimmed/reset; start fresh
new_messages = all_messages[done:]
transcript = _build_transcript(new_messages)
if not transcript.strip():
# Routine no-op: the per-minute scan hits every idle session. Advance
# the cursor so we don't re-scan the same tail; no log (pure noise).
agent._evo_done_msg_count = total_msgs
return False
logger.info(
f"[Evolution] ▶ Reviewing session={session_id} "
f"(idle {idle_minutes:.1f}min, {len(new_messages)} new/{total_msgs} msgs, "
f"~{len(transcript)} chars)"
)
# Resolve workspace + files to snapshot for undo.
from agent.memory.config import get_default_memory_config
mem_cfg = get_default_memory_config()
workspace_dir = mem_cfg.get_workspace()
if user_id:
memory_file = Path(workspace_dir) / "memory" / "users" / user_id / "MEMORY.md"
else:
memory_file = Path(workspace_dir) / "MEMORY.md"
skills_dir = mem_cfg.get_skills_dir()
# Snapshot MEMORY.md + every NON-protected skill's SKILL.md. Protected
# built-in skills are excluded from backup because they must never be
# edited in the first place.
protected_names = _builtin_skill_names()
# Back up both MEMORY.md and today's daily file: evolution now writes to
# the daily file, but MEMORY.md is cheap to snapshot and keeps undo safe
# if the model ever edits it.
today_daily = Path(workspace_dir) / "memory" / (
datetime.now().strftime("%Y-%m-%d") + ".md"
)
if user_id:
today_daily = Path(workspace_dir) / "memory" / "users" / user_id / (
datetime.now().strftime("%Y-%m-%d") + ".md"
)
# AGENT.md (persona) is backed up too so a rare persona edit is undoable.
# Persona is workspace-global (not per-user): it always lives at the
# workspace root, regardless of user_id.
agent_file = Path(workspace_dir) / "AGENT.md"
backup_files = [Path(memory_file), today_daily, agent_file]
if skills_dir.exists():
for skill_md in skills_dir.rglob("SKILL.md"):
# The skill dir is the SKILL.md's parent (or an ancestor for
# collections); guard by checking the immediate top-level dir.
try:
top = skill_md.relative_to(skills_dir).parts[0]
except (ValueError, IndexError):
continue
if top in protected_names:
continue
backup_files.append(skill_md)
backup_id = create_backup(workspace_dir, backup_files)
_backup_n = sum(1 for f in backup_files if Path(f).exists())
# Snapshot the whole workspace (path -> mtime/size) so we can reliably
# detect ANY file change — including new output files written when
# finishing an unfinished task, which are not in backup_files.
pre_snapshot = _workspace_snapshot(workspace_dir)
# Build the isolated review agent: same model, restricted tools, with a
# hard guard that confines all writes to the workspace (protects the
# project's bundled skills from ever being modified).
review_tools = _guard_tools(
_select_tools(list(getattr(agent, "tools", []) or [])),
str(workspace_dir),
)
review_agent = agent_bridge.create_agent(
system_prompt="",
tools=review_tools,
description="Self-evolution review agent",
max_steps=cfg.max_steps,
workspace_dir=str(workspace_dir),
skill_manager=getattr(agent, "skill_manager", None),
memory_manager=getattr(agent, "memory_manager", None),
enable_skills=True,
runtime_info=getattr(agent, "runtime_info", None),
)
# Reuse the live model so it follows the user's configured model.
review_agent.model = agent.model
# Inject the evolution task brief AFTER the full system prompt: the agent
# gets the full context (tools, workspace, user preferences, memory, time)
# AND its evolution-specific instructions on top, instead of one
# overwriting the other.
review_agent.extra_system_suffix = EVOLUTION_SYSTEM_PROMPT
logger.info(
f"[Evolution] backup {backup_id} ({_backup_n} files) → running review agent"
)
user_msg = build_review_user_message(transcript, protected_skills=list(protected_names))
result = review_agent.run_stream(user_msg, clear_history=True)
result = (result or "").strip()
# These messages are now reviewed; advance the cursor so the next pass
# only looks at messages added after this point (silent or not).
agent._evo_done_msg_count = total_msgs
# Respect an explicit silent verdict: empty, exactly [SILENT], or text
# that STARTS with [SILENT] means the model chose to stay quiet.
if not result or result.startswith(SILENT_TOKEN):
logger.info(f"[Evolution] ✗ No change for session={session_id} ([SILENT])")
return False
# Anti-nag backstop: if the model wrote a summary but actually changed no
# watched file, stay silent — never notify about work that didn't happen.
if not _workspace_changed(workspace_dir, pre_snapshot):
logger.info(
f"[Evolution] ✗ session={session_id}: text produced but no file "
f"changed — staying silent"
)
return False
# The model produced a real summary. Strip any stray [SILENT] tokens it
# left mid-text, then notify.
result = result.replace(SILENT_TOKEN, "").strip()
if not result:
logger.info(f"[Evolution] ✗ No change for session={session_id} ([SILENT])")
return False
logger.info(f"[Evolution] ✓ session={session_id} evolved:\n{result}")
append_session_evolution(workspace_dir, result, backup_id=backup_id, user_id=user_id)
# Inject an [EVOLUTION] note so the main agent can honor "undo".
_inject_evolution_record(agent_bridge, session_id, channel_type, result, backup_id)
# The injection appended its own messages ([SCHEDULED]/[EVOLUTION]).
# Advance the cursor past them so the next scan does not treat
# evolution's own bookkeeping as new user content and re-trigger.
try:
with agent.messages_lock:
agent._evo_done_msg_count = len(agent.messages)
except Exception:
pass
# Push the summary to the user's channel. The "did a file actually
# change" gate above is the only throttle we need: real evolutions are
# rare, so no extra opt-in switch or daily-count limit is required.
if channel_type and receiver:
_notify_user(channel_type, receiver, result)
return True
except Exception as e:
logger.warning(f"[Evolution] Run failed for session={session_id}: {e}")
return False
finally:
with _running_lock:
_running_count -= 1
def _inject_evolution_record(
agent_bridge, session_id: str, channel_type: str, summary: str, backup_id: Optional[str]
) -> None:
"""Add an [EVOLUTION] note to the user session so the main agent can undo."""
try:
note = f"{EVOLUTION_MARKER} {summary}"
if backup_id:
note += f"\n(backup_id: {backup_id}; to undo, restore this backup)"
# Reuse the scheduler-output injection path: isolated execution, only a
# compact record lands in the user session.
agent_bridge.remember_scheduled_output(
session_id=session_id,
content=note,
channel_type=channel_type,
task_description="self-evolution",
)
except Exception as e:
logger.debug(f"[Evolution] Failed to inject evolution record: {e}")
def _notify_user(channel_type: str, receiver: str, summary: str) -> None:
"""Push the evolution summary to the user's channel as a new message."""
try:
from bridge.context import Context, ContextType
from bridge.reply import Reply, ReplyType
from channel.channel_factory import create_channel
context = Context(ContextType.TEXT, summary)
context["receiver"] = receiver
context["isgroup"] = False
context["session_id"] = receiver
# Channels that reply to an original message need msg=None for a fresh push.
if channel_type in ("feishu", "dingtalk", "wecom_bot", "qq"):
context["msg"] = None
if channel_type == "feishu":
context["receive_id_type"] = "open_id"
channel = create_channel(channel_type)
if not channel:
return
# Web is request-response: a background push needs a synthetic request_id
# plus a request->session mapping so the channel can route the message to
# the user's polling queue (same approach the scheduler uses).
if channel_type == "web":
import uuid
request_id = f"evolution_{uuid.uuid4().hex[:8]}"
context["request_id"] = request_id
if hasattr(channel, "request_to_session"):
channel.request_to_session[request_id] = receiver
channel.send(Reply(ReplyType.TEXT, summary), context)
logger.info(f"[Evolution] Notified user via {channel_type}")
except Exception as e:
logger.warning(f"[Evolution] Failed to notify user: {e}")

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"""Prompts for the self-evolution review agent.
The system prompt is intentionally English-only: it governs the agent's
internal reasoning and is more stable / cheaper to maintain in one language.
The user-facing summary the agent produces should follow the user's own
language (instructed at the end of the prompt).
Design goals (see ref/hermes-agent background_review for inspiration):
- Default to doing NOTHING. Evolution is the exception, not the rule.
- Signal types: skill, unfinished task, memory, knowledge.
- An explicit "do NOT capture" list to avoid self-poisoning over time.
- Generic examples only — never bake in domain-specific business terms.
"""
# Sentinel the agent emits when there is nothing worth evolving.
SILENT_TOKEN = "[SILENT]"
# Marker prefix for the evolution record injected into the user session, so the
# main chat agent can recognize past evolutions and honor an "undo" request.
EVOLUTION_MARKER = "[EVOLUTION]"
EVOLUTION_SYSTEM_PROMPT = """You are a self-evolution review agent for an AI assistant.
You are given a transcript of a conversation that just went idle. Your job is to
decide whether anything from it is worth durably learning so future
conversations go better — and if so, to make that change.
# Top principle: default to doing NOTHING
Most ordinary conversations need no evolution. Only act when there is a CLEAR
signal below. If there is none, reply with exactly `[SILENT]` and stop. Staying
silent is the normal, correct outcome — not a failure.
Greetings, small talk, acknowledgements ("ok", "thanks", "got it"), and casual
chat are NOT signals. For these, output exactly `[SILENT]` immediately — do not
explore files, do not write a summary, do not be polite. Just `[SILENT]`.
IMPORTANT: A summary is only allowed if you ACTUALLY made a file change via a
tool (write/edit) in this pass. If you did not change any file, you MUST output
exactly `[SILENT]` — never describe a change you only intended to make.
# Signals worth acting on (act only if at least one clearly appears)
SKILL and UNFINISHED TASK are your PRIMARY value — no other mechanism handles
them. When their signal is clear, act; do not be shy here.
1. SKILL — two cases:
a) PATCH an existing skill: a skill used here showed a STRUCTURAL problem (a
missing step/section, a wrong or outdated detail, an error in its
content), or its OUTPUT repeatedly misses something the user flagged. Read
the relevant skill file under the skills directory and make a small
incremental edit so it never recurs.
b) CREATE a new skill: a clearly reusable, repeatable workflow emerged that
no existing skill covers and the user is likely to want again. Follow the
`skill-creator` skill's conventions (read its SKILL.md for the required
structure), then create `skills/<name>/SKILL.md` by WRITING the file
directly with the write tool — this is the simplest reliable path. (bash
is available and confined to the workspace if a helper script is truly
needed, but a direct write is preferred.) Only create when the workflow is
genuinely reusable — not for a one-off task.
CRITICAL — fix the SOURCE, do not just remember the symptom: when the root
cause of a problem lives IN a skill file itself (its instructions, content,
or configuration are wrong/outdated), the correct action is to EDIT that
skill so the problem cannot recur. Recording the corrected fact in memory
does NOT prevent recurrence — only fixing the skill does. Never log "skill X
has wrong detail Y" as a memory note in place of editing skill X.
2. UNFINISHED TASK — a specific deliverable you promised but didn't produce,
AND you already have everything needed to finish it. DO IT now with the
available tools and produce the result (e.g. write the file you said you'd
write). If key info is missing, or the task is merely waiting on the user's
reply/decision, do NOTHING and stay [SILENT] — do not nag or ping the user.
You only ever notify the user as a side effect of having actually done work.
3. MEMORY — RARE, last resort. Default to writing NOTHING here. The main
assistant already writes memory during the chat, and a nightly pass plus
context-overflow saves are dedicated safety nets — so memory is almost always
already covered without you. Skip unless the main assistant clearly missed a
durable fact that belongs in no skill AND would visibly change future replies.
- MEMORY.md is the curated long-term index, auto-loaded into EVERY future
conversation. Treat it as precious: edit it in place to CORRECT a wrong
fact, or append a new durable preference/decision/lesson — but do so
SPARINGLY (a lasting fact, not a passing detail; the nightly pass handles
routine consolidation).
- For a NEW fact that is important but not yet clearly lasting, append ONE
short bullet to today's `memory/YYYY-MM-DD.md` instead. When unsure, the
daily file is the safe place — but first ask whether this really belongs
in a skill.
- PERSONA (AGENT.md) — EXTREMELY rare: only on an explicit, repeated signal
about the assistant's own identity/personality/style, make a small edit to
AGENT.md; never for user/world facts, and when in doubt do nothing.
- Keep it to ONE short bullet. Never write paragraphs, never re-summarize the
conversation, never copy what the main assistant already recorded.
- If it is already captured anywhere (check MEMORY.md AND the daily file
first), do NOTHING.
4. KNOWLEDGE — only if the conversation produced durable, reusable reference
knowledge on a topic (the kind worth looking up again) that the main
assistant did NOT already save to `knowledge/`. Add or update the relevant
file there. Like memory, this is the exception: skip routine Q&A, and if the
topic is already covered in `knowledge/`, do NOTHING rather than duplicate.
# Do NOT capture (these poison future behavior)
- Environment failures: missing binaries, unset credentials, uninstalled
packages, "command not found". The user can fix these; they are not durable
rules.
- Negative claims about tools or features ("tool X does not work"). These
harden into refusals the agent cites against itself later.
- One-off task narratives (e.g. summarizing today's content). Not a class of
reusable work.
- Transient errors that resolved on retry within the conversation.
# Execution constraints
- Before changing memory or a skill, READ the current content first and make a
small INCREMENTAL edit. Never fabricate, never rewrite large sections.
- AVOID DUPLICATES. Before writing memory, READ both MEMORY.md AND today's
daily file `memory/YYYY-MM-DD.md`. If the fact/preference is already recorded
in EITHER (even if worded differently), do NOT add it again. The main
assistant likely already wrote it during the chat — only add what is
genuinely new or a correction not yet reflected anywhere.
- You may only edit files inside the workspace. Built-in skills shipped with
the product live outside it and are write-protected; do not try to edit them.
- Make at most the few edits the signals justify; do not go looking for work.
# Output
- Nothing worth evolving -> output exactly `[SILENT]` and nothing else.
- Otherwise, after performing the edits, output a short user-facing summary in
the SAME LANGUAGE the user speaks in the conversation transcript. Write it for an ordinary user, in plain
everyday words — NOT a developer report. No need to expose internal details
(file names/paths, system mechanics, etc.). Briefly speak directly TO the user, telling them that you just did a self-learning pass,
what you learned, and what you changed in THIS pass. Keep it clear and focused on the key changes (a few lines), and let
the user know they can undo it.
"""
def build_review_user_message(transcript: str, protected_skills: list = None) -> str:
"""Wrap the conversation transcript as the review agent's user message.
``protected_skills`` lists skill names that must never be edited (built-in
skills shipped with the product). Surfaced so the agent avoids them.
"""
protected_note = ""
if protected_skills:
names = ", ".join(sorted(protected_skills))
protected_note = (
"\n\nPROTECTED skills (built-in — never edit these): "
f"{names}\n"
)
try:
from common import i18n
lang_name = "中文" if i18n.is_zh() else "English"
except Exception:
lang_name = "中文"
return (
"Here is the conversation transcript that just went idle. Review it per "
"your instructions. Acting is the exception: the main value is fixing or "
"creating a skill and finishing promised work. Memory and knowledge are "
"rare last resorts — stay [SILENT] unless there is a clear, durable signal "
"not already covered."
f"{protected_note}\n"
f"The summary should preferably be written in: {lang_name}\n"
"<transcript>\n"
f"{transcript}\n"
"</transcript>"
)

55
agent/evolution/record.py Normal file
View File

@@ -0,0 +1,55 @@
"""Self-evolution record log.
Session-level evolutions are appended to their OWN per-day file under
``memory/evolution/YYYY-MM-DD.md`` (separate from the nightly Deep Dream diary
in ``memory/dreams/``). Each day's file accumulates one short section per
evolution pass — tagged with a timestamp and a backup id for undo — so the
memory UI can surface "what the agent learned/changed today" on one timeline
without ever mixing into the dream diary or the main conversation memory.
"""
from __future__ import annotations
from datetime import datetime
from pathlib import Path
from typing import Optional
from common.log import logger
def _evolution_dir(workspace_dir: Path, user_id: Optional[str] = None) -> Path:
base = Path(workspace_dir) / "memory"
if user_id:
return base / "users" / user_id / "evolution"
return base / "evolution"
def append_session_evolution(
workspace_dir: Path,
summary: str,
backup_id: Optional[str] = None,
user_id: Optional[str] = None,
) -> None:
"""Append a session-evolution entry to today's evolution log."""
if not summary or not summary.strip():
return
try:
evo_dir = _evolution_dir(workspace_dir, user_id)
evo_dir.mkdir(parents=True, exist_ok=True)
today = datetime.now().strftime("%Y-%m-%d")
log_file = evo_dir / f"{today}.md"
ts = datetime.now().strftime("%H:%M")
header = f"## {ts}"
body = summary.strip()
if backup_id:
body += f"\n\n_backup_id: {backup_id}_"
# Create with a title if the file is new, otherwise append a section.
if not log_file.exists():
log_file.write_text(f"# Self-Evolution: {today}\n\n", encoding="utf-8")
with open(log_file, "a", encoding="utf-8") as f:
f.write(f"\n{header}\n\n{body}\n")
logger.info(f"[Evolution] Recorded session evolution to {log_file.name}")
except Exception as e:
logger.warning(f"[Evolution] Failed to record session evolution: {e}")

151
agent/evolution/trigger.py Normal file
View File

@@ -0,0 +1,151 @@
"""Idle-based evolution trigger.
A single background thread periodically scans live agent sessions and runs an
evolution pass for any session that is idle for >= idle_minutes AND has enough
accumulated signal, where "enough signal" is EITHER:
- >= min_turns user turns since the last evolution, OR
- the live context has grown past _CONTEXT_RATIO of the agent's token budget
(mirrors how OpenClacky / Claude Code consolidate under context pressure).
Turn counting is per user turn (not per message), measured from the last
evolution (or session start). After a pass runs, the baseline resets so a long
session can evolve multiple times without re-judging old content.
Per-session evolution state is stored on the agent instance via lightweight
attributes set by AgentBridge.agent_reply (see _note_user_turn).
"""
from __future__ import annotations
import threading
import time
from common.log import logger
from agent.evolution.config import get_evolution_config
from agent.evolution.executor import run_evolution_for_session
_SCAN_INTERVAL_SECONDS = 60
# Context-pressure trigger: evolve once the live context exceeds this fraction
# of the agent's token budget, even if min_turns hasn't been reached. Kept as a
# module constant (not user config) for now. Fallback budget matches
# agent_initializer / config.py (agent_max_context_tokens default = 50000).
_CONTEXT_RATIO = 0.8
_FALLBACK_CONTEXT_BUDGET = 50000
def _context_pressure_reached(agent) -> bool:
"""True if the agent's live context exceeds _CONTEXT_RATIO of its budget.
Uses the agent's own (estimated) token accounting so behavior matches the
existing context-trimming path. Best-effort: any error -> False.
"""
try:
with agent.messages_lock:
messages = list(agent.messages)
if not messages:
return False
est = sum(agent._estimate_message_tokens(m) for m in messages)
budget = getattr(agent, "max_context_tokens", None) or _FALLBACK_CONTEXT_BUDGET
return est / budget > _CONTEXT_RATIO
except Exception:
return False
def note_user_turn(agent, channel_type: str = "", receiver: str = "") -> None:
"""Record activity for a session's agent. Called once per real user turn.
Maintains, on the agent instance:
_evo_last_active : epoch seconds of the last user turn
_evo_turns : user turns since the last evolution
_evo_channel_type : originating channel (for later notify)
_evo_receiver : push target for notify
"""
try:
agent._evo_last_active = time.time()
agent._evo_turns = int(getattr(agent, "_evo_turns", 0)) + 1
if channel_type:
agent._evo_channel_type = channel_type
if receiver:
agent._evo_receiver = receiver
except Exception:
pass
def mark_run_active(agent, active: bool) -> None:
"""Flag whether the agent is mid-run, so idle scans skip a busy session.
Without this, a single run that lasts longer than idle_minutes would let
the scanner fire an evolution pass concurrently with the live turn.
"""
try:
agent._evo_run_active = bool(active)
if active:
agent._evo_last_active = time.time()
except Exception:
pass
def start_evolution_trigger(agent_bridge) -> None:
"""Start the idle-scan thread once per process (idempotent)."""
if getattr(agent_bridge, "_evolution_trigger_started", False):
return
agent_bridge._evolution_trigger_started = True
t = threading.Thread(
target=_scan_loop, args=(agent_bridge,), daemon=True, name="evolution-trigger"
)
t.start()
logger.info("[Evolution] Idle trigger started")
def _scan_loop(agent_bridge) -> None:
while True:
try:
time.sleep(_SCAN_INTERVAL_SECONDS)
cfg = get_evolution_config()
if not cfg.enabled:
continue
_scan_once(agent_bridge, cfg)
except Exception as e:
logger.warning(f"[Evolution] Scan loop error: {e}")
time.sleep(_SCAN_INTERVAL_SECONDS)
def _scan_once(agent_bridge, cfg) -> None:
now = time.time()
# Snapshot to avoid holding the dict while running long evolutions.
sessions = list(getattr(agent_bridge, "agents", {}).items())
for session_id, agent in sessions:
try:
# Skip sessions whose agent is mid-run: a long turn must not be
# reviewed while it is still producing the answer.
if getattr(agent, "_evo_run_active", False):
continue
last_active = getattr(agent, "_evo_last_active", 0)
turns = int(getattr(agent, "_evo_turns", 0))
# Enough signal = enough turns OR enough context pressure.
enough_signal = turns >= cfg.min_turns or _context_pressure_reached(agent)
if not enough_signal:
continue
idle = now - last_active if last_active > 0 else -1
if last_active <= 0 or idle < cfg.idle_seconds:
continue
channel_type = getattr(agent, "_evo_channel_type", "") or ""
receiver = getattr(agent, "_evo_receiver", "") or ""
# Reset baseline BEFORE running so a long pass / new messages during
# it don't double-trigger; turns accrue fresh from here.
agent._evo_turns = 0
run_evolution_for_session(
agent_bridge,
session_id=session_id,
channel_type=channel_type,
receiver=receiver,
idle_minutes=(now - last_active) / 60 if last_active > 0 else 0.0,
)
except Exception as e:
logger.warning(f"[Evolution] Failed to evaluate session={session_id}: {e}")

View File

@@ -12,11 +12,16 @@ Knowledge file layout (under workspace_root):
import os import os
import re import re
import asyncio
import shutil
import threading
from pathlib import Path from pathlib import Path
from typing import Optional from typing import Optional, Iterable
from common.log import logger from common.log import logger
from config import conf from config import conf
from agent.memory.config import MemoryConfig
from agent.memory.manager import MemoryManager
class KnowledgeService: class KnowledgeService:
@@ -25,9 +30,189 @@ class KnowledgeService:
Operates directly on the filesystem. Operates directly on the filesystem.
""" """
def __init__(self, workspace_root: str): PROTECTED_FILES = {"index.md", "log.md"}
self.workspace_root = workspace_root INVALID_NAME_RE = re.compile(r'[<>:"|?*\x00-\x1f]')
self.knowledge_dir = os.path.join(workspace_root, "knowledge")
def __init__(self, workspace_root: str, memory_manager=None):
self.workspace_root = os.path.abspath(workspace_root)
self.knowledge_dir = os.path.join(self.workspace_root, "knowledge")
self._memory_manager = memory_manager
def _resolve_path(self, rel_path: str, *, kind: Optional[str] = None,
allow_missing: bool = True) -> tuple:
if not isinstance(rel_path, str) or not rel_path.strip():
raise ValueError("path is required")
rel_path = rel_path.replace("\\", "/").strip("/")
parts = rel_path.split("/")
if any(not p or p in (".", "..") or self.INVALID_NAME_RE.search(p) for p in parts):
raise ValueError("invalid path")
if kind == "document" and not rel_path.lower().endswith(".md"):
raise ValueError("document path must end with .md")
root = Path(self.knowledge_dir).resolve()
candidate = root.joinpath(*parts)
# Resolve the nearest existing ancestor so a symlink cannot be used
# to escape when the final destination does not exist yet.
ancestor = candidate
while not ancestor.exists() and ancestor != root:
ancestor = ancestor.parent
try:
ancestor.resolve().relative_to(root)
except ValueError:
raise ValueError("path outside knowledge dir")
if candidate.exists():
try:
candidate.resolve().relative_to(root)
except ValueError:
raise ValueError("path outside knowledge dir")
elif not allow_missing:
raise FileNotFoundError(f"path not found: {rel_path}")
return rel_path, candidate
def _ensure_not_protected(self, rel_path: str):
if rel_path in self.PROTECTED_FILES:
raise ValueError(f"protected knowledge file: {rel_path}")
def _manager(self):
if self._memory_manager is None:
self._memory_manager = MemoryManager(MemoryConfig(workspace_root=self.workspace_root))
return self._memory_manager
@staticmethod
def _run_sync(coro):
try:
asyncio.get_running_loop()
except RuntimeError:
return asyncio.run(coro)
result = []
error = []
def runner():
try:
result.append(asyncio.run(coro))
except Exception as exc:
error.append(exc)
thread = threading.Thread(target=runner)
thread.start()
thread.join()
if error:
raise error[0]
return result[0] if result else None
def _sync_index(self, old_paths: Iterable[str]):
old_paths = sorted(set(old_paths))
if not old_paths:
return
manager = self._manager()
for rel_path in old_paths:
manager.storage.delete_by_path(f"knowledge/{rel_path}")
manager.mark_dirty()
self._run_sync(manager.sync())
def create_category(self, path: str) -> dict:
rel_path, full_path = self._resolve_path(path, kind="category")
if full_path.exists():
return {"path": rel_path, "created": False, "reason": "already_exists"}
full_path.mkdir(parents=True)
return {"path": rel_path, "created": True}
def rename_category(self, path: str, new_path: str) -> dict:
old_rel, old_full = self._resolve_path(path, kind="category", allow_missing=False)
new_rel, new_full = self._resolve_path(new_path, kind="category")
if not old_full.is_dir():
raise ValueError(f"not a category: {old_rel}")
if new_full.exists():
raise FileExistsError(f"target already exists: {new_rel}")
old_documents = [str(p.relative_to(old_full)).replace(os.sep, "/")
for p in old_full.rglob("*.md") if p.is_file()]
new_full.parent.mkdir(parents=True, exist_ok=True)
try:
old_full.rename(new_full)
except FileNotFoundError:
return {"old_path": old_rel, "path": new_rel, "moved": False, "reason": "not_found"}
except FileExistsError:
raise FileExistsError(f"target already exists: {new_rel}")
old_paths = [f"{old_rel}/{p}" for p in old_documents]
self._sync_index(old_paths)
return {"old_path": old_rel, "path": new_rel, "moved_documents": len(old_documents)}
def delete_category(self, path: str, confirm: bool = False) -> dict:
rel_path, full_path = self._resolve_path(path, kind="category")
if not full_path.exists():
return {"path": rel_path, "deleted": False, "reason": "not_found"}
if not full_path.is_dir():
raise ValueError(f"not a category: {rel_path}")
knowledge_root = Path(self.knowledge_dir).resolve()
documents = [str(p.relative_to(knowledge_root)).replace(os.sep, "/")
for p in full_path.rglob("*.md") if p.is_file()]
if any(p in self.PROTECTED_FILES for p in documents):
raise ValueError("category contains protected knowledge files")
if any(full_path.iterdir()) and not confirm:
raise ValueError("category is not empty; confirmation is required")
try:
shutil.rmtree(full_path)
except FileNotFoundError:
return {"path": rel_path, "deleted": False, "reason": "not_found"}
self._sync_index(documents)
return {"path": rel_path, "deleted": True, "deleted_documents": len(documents)}
def delete_documents(self, paths: Iterable[str]) -> dict:
if not isinstance(paths, list):
raise ValueError("paths must be a list")
results = []
deleted = []
for path in paths:
rel_path, full_path = self._resolve_path(path, kind="document")
self._ensure_not_protected(rel_path)
if not full_path.exists():
deleted.append(rel_path)
results.append({"path": rel_path, "deleted": False, "reason": "not_found"})
continue
if not full_path.is_file():
raise ValueError(f"not a document: {rel_path}")
try:
full_path.unlink()
deleted.append(rel_path)
results.append({"path": rel_path, "deleted": True})
except FileNotFoundError:
deleted.append(rel_path)
results.append({"path": rel_path, "deleted": False, "reason": "not_found"})
self._sync_index(deleted)
return {"results": results, "deleted": sum(1 for item in results if item["deleted"])}
def move_documents(self, paths: Iterable[str], target_category: str) -> dict:
if not isinstance(paths, list):
raise ValueError("paths must be a list")
target_rel, target_full = self._resolve_path(target_category, kind="category")
if not target_full.is_dir():
raise FileNotFoundError(f"category not found: {target_rel}")
results = []
moved_old_paths = []
for path in paths:
rel_path, full_path = self._resolve_path(path, kind="document")
self._ensure_not_protected(rel_path)
if not full_path.exists():
results.append({"path": rel_path, "moved": False, "reason": "not_found"})
continue
destination = target_full / full_path.name
new_rel = str(destination.relative_to(Path(self.knowledge_dir).resolve())).replace(os.sep, "/")
if destination.exists():
results.append({"path": rel_path, "moved": False, "reason": "target_exists",
"target": new_rel})
continue
try:
os.link(full_path, destination)
full_path.unlink()
moved_old_paths.append(rel_path)
results.append({"path": rel_path, "moved": True, "target": new_rel})
except FileExistsError:
results.append({"path": rel_path, "moved": False, "reason": "target_exists",
"target": new_rel})
except FileNotFoundError:
results.append({"path": rel_path, "moved": False, "reason": "not_found"})
self._sync_index(moved_old_paths)
return {"results": results, "moved": len(moved_old_paths)}
# ------------------------------------------------------------------ # ------------------------------------------------------------------
# list — directory tree with stats # list — directory tree with stats
@@ -121,15 +306,8 @@ class KnowledgeService:
:raises ValueError: if path is invalid or escapes knowledge dir :raises ValueError: if path is invalid or escapes knowledge dir
:raises FileNotFoundError: if file does not exist :raises FileNotFoundError: if file does not exist
""" """
if not rel_path or ".." in rel_path: rel_path, full_path = self._resolve_path(rel_path, kind="document")
raise ValueError("invalid path") if not full_path.is_file():
full_path = os.path.normpath(os.path.join(self.knowledge_dir, rel_path))
allowed = os.path.normpath(self.knowledge_dir)
if not full_path.startswith(allowed + os.sep) and full_path != allowed:
raise ValueError("path outside knowledge dir")
if not os.path.isfile(full_path):
raise FileNotFoundError(f"file not found: {rel_path}") raise FileNotFoundError(f"file not found: {rel_path}")
with open(full_path, "r", encoding="utf-8") as f: with open(full_path, "r", encoding="utf-8") as f:
@@ -228,13 +406,26 @@ class KnowledgeService:
result = self.build_graph() result = self.build_graph()
return {"action": action, "code": 200, "message": "success", "payload": result} return {"action": action, "code": 200, "message": "success", "payload": result}
elif action == "create_category":
result = self.create_category(payload.get("path"))
elif action == "rename_category":
result = self.rename_category(payload.get("path"), payload.get("new_path"))
elif action == "delete_category":
result = self.delete_category(payload.get("path"), payload.get("confirm", False))
elif action == "delete_documents":
result = self.delete_documents(payload.get("paths") or [])
elif action == "move_documents":
result = self.move_documents(payload.get("paths") or [], payload.get("target_category"))
else: else:
return {"action": action, "code": 400, "message": f"unknown action: {action}", "payload": None} return {"action": action, "code": 400, "message": f"unknown action: {action}", "payload": None}
return {"action": action, "code": 200, "message": "success", "payload": result}
except ValueError as e: except ValueError as e:
return {"action": action, "code": 403, "message": str(e), "payload": None} return {"action": action, "code": 403, "message": str(e), "payload": None}
except FileNotFoundError as e: except FileNotFoundError as e:
return {"action": action, "code": 404, "message": str(e), "payload": None} return {"action": action, "code": 404, "message": str(e), "payload": None}
except FileExistsError as e:
return {"action": action, "code": 409, "message": str(e), "payload": None}
except Exception as e: except Exception as e:
logger.error(f"[KnowledgeService] dispatch error: action={action}, error={e}") logger.error(f"[KnowledgeService] dispatch error: action={action}, error={e}")
return {"action": action, "code": 500, "message": str(e), "payload": None} return {"action": action, "code": 500, "message": str(e), "payload": None}

View File

@@ -13,6 +13,7 @@ Storage path: ~/cow/sessions/conversations.db
from __future__ import annotations from __future__ import annotations
import json import json
import re
import sqlite3 import sqlite3
import threading import threading
import time import time
@@ -109,6 +110,48 @@ def _extract_display_text(content: Any) -> str:
return "" return ""
# Internal markers written into the session for the agent's own bookkeeping
# (scheduler injection / self-evolution undo). They must stay in the stored
# content (the LLM reads them, e.g. to find a backup_id for undo) but should
# never be shown verbatim to the user in the chat history UI.
_SCHEDULED_DISPLAY_MARKERS = ("[SCHEDULED]", "Scheduled task")
_EVOLUTION_DISPLAY_MARKER = "[EVOLUTION]"
def _is_internal_user_marker(text: str) -> bool:
"""True if a user-turn text is an internal injection marker (hide from UI)."""
t = (text or "").lstrip()
return any(t.startswith(m) for m in _SCHEDULED_DISPLAY_MARKERS)
def _is_evolution_text(text: str) -> bool:
"""True if assistant text is a self-evolution summary (before cleaning)."""
return (text or "").lstrip().startswith(_EVOLUTION_DISPLAY_MARKER)
def _clean_display_text(text: str) -> str:
"""Strip internal markers from assistant text for user-facing display.
Removes a leading ``[EVOLUTION]`` tag and a trailing ``(backup_id: ...)``
undo hint. The raw stored message is untouched, so undo + LLM context still
work; only the rendered chat bubble is cleaned.
"""
if not text:
return text
cleaned = text
stripped = cleaned.lstrip()
if stripped.startswith(_EVOLUTION_DISPLAY_MARKER):
cleaned = stripped[len(_EVOLUTION_DISPLAY_MARKER):].lstrip()
# Drop a trailing backup_id undo hint line, e.g.
# "(backup_id: 20260607-...; to undo, restore this backup)"
cleaned = re.sub(
r"\n*\(backup_id:[^\)]*\)\s*$",
"",
cleaned,
).rstrip()
return cleaned
def _extract_tool_calls(content: Any) -> List[Dict[str, Any]]: def _extract_tool_calls(content: Any) -> List[Dict[str, Any]]:
""" """
Extract tool_use blocks from an assistant message content. Extract tool_use blocks from an assistant message content.
@@ -210,7 +253,10 @@ def _group_into_display_turns(
if user_row: if user_row:
content, created_at, _u_extras = user_row content, created_at, _u_extras = user_row
text = _extract_display_text(content) text = _extract_display_text(content)
if text: # Hide internal injection markers (scheduler / self-evolution) so the
# user never sees a synthetic "[SCHEDULED] self-evolution" bubble;
# the assistant reply that follows is still rendered.
if text and not _is_internal_user_marker(text):
turns.append({"role": "user", "content": text, "created_at": created_at}) turns.append({"role": "user", "content": text, "created_at": created_at})
# Build an ordered list of steps preserving the original sequence: # Build an ordered list of steps preserving the original sequence:
@@ -265,6 +311,18 @@ def _group_into_display_turns(
step["result"] = tr.get("result", "") step["result"] = tr.get("result", "")
step["is_error"] = tr.get("is_error", False) step["is_error"] = tr.get("is_error", False)
# Detect a self-evolution bubble BEFORE cleaning the marker away, so the
# UI can flag it even though the visible text stays clean.
is_evolution = _is_evolution_text(final_text)
# Clean internal markers from the user-facing assistant text. Applies to
# both the final content and the mirrored content step so the rendered
# bubble shows clean text while the stored message keeps the markers.
final_text = _clean_display_text(final_text)
for step in steps:
if step.get("type") == "content":
step["content"] = _clean_display_text(step.get("content", ""))
if steps or final_text: if steps or final_text:
turn = { turn = {
"role": "assistant", "role": "assistant",
@@ -272,6 +330,8 @@ def _group_into_display_turns(
"steps": steps, "steps": steps,
"created_at": final_ts or (user_row[1] if user_row else 0), "created_at": final_ts or (user_row[1] if user_row else 0),
} }
if is_evolution:
turn["kind"] = "evolution"
if merged_extras: if merged_extras:
turn["extras"] = merged_extras turn["extras"] = merged_extras
turns.append(turn) turns.append(turn)
@@ -291,7 +351,7 @@ class ConversationStore:
def __init__(self, db_path: Path): def __init__(self, db_path: Path):
self._db_path = db_path self._db_path = db_path
self._lock = threading.Lock() self._lock = threading.RLock() # Use RLock to allow reentrant locking
self._init_db() self._init_db()
# ------------------------------------------------------------------ # ------------------------------------------------------------------
@@ -509,6 +569,65 @@ class ConversationStore:
finally: finally:
conn.close() conn.close()
def get_latest_pair_seqs(self, session_id: str) -> Dict[str, Optional[int]]:
"""Return the seq numbers of the latest visible user message and the
latest assistant message in a session.
A "visible" user message is one whose content is real user text
(not just a tool_result block), so tool-execution turns do not
shadow the actual user query.
Returns:
Dict with keys ``user_seq`` and ``bot_seq``; either may be None
when no matching message exists.
"""
result: Dict[str, Optional[int]] = {"user_seq": None, "bot_seq": None}
with self._lock:
conn = self._connect()
try:
# Latest assistant message (cheap: single row by seq DESC).
row = conn.execute(
"SELECT seq FROM messages "
"WHERE session_id = ? AND role = 'assistant' "
"ORDER BY seq DESC LIMIT 1",
(session_id,),
).fetchone()
if row:
result["bot_seq"] = int(row[0])
# Latest visible user message: scan recent user rows and
# skip pure tool_result entries.
rows = conn.execute(
"SELECT seq, content FROM messages "
"WHERE session_id = ? AND role = 'user' "
"ORDER BY seq DESC LIMIT 20",
(session_id,),
).fetchall()
for seq, content_raw in rows:
try:
content = json.loads(content_raw)
except Exception:
result["user_seq"] = int(seq)
break
if isinstance(content, list):
has_text = any(
isinstance(b, dict) and b.get("type") == "text"
for b in content
)
has_tool_result = any(
isinstance(b, dict) and b.get("type") == "tool_result"
for b in content
)
if has_text and not has_tool_result:
result["user_seq"] = int(seq)
break
else:
result["user_seq"] = int(seq)
break
finally:
conn.close()
return result
def clear_session(self, session_id: str) -> None: def clear_session(self, session_id: str) -> None:
"""Delete all messages and the session record for a given session_id.""" """Delete all messages and the session record for a given session_id."""
with self._lock: with self._lock:
@@ -524,6 +643,109 @@ class ConversationStore:
finally: finally:
conn.close() conn.close()
def delete_message_pair(self, session_id: str, user_seq: int, delete_user: bool = True, cascade: bool = False) -> int:
"""Delete a user message and/or its corresponding assistant reply.
The assistant reply is identified as all messages between user_seq
and the next visible user message (or end of session).
Args:
session_id: Session identifier.
user_seq: The seq number of the user message.
delete_user: If True (default), delete the user message too.
If False, only delete assistant reply (for regenerate scenarios).
cascade: If True, also delete all subsequent turns after this one.
Used by edit-message which removes this turn and everything after.
Returns:
Number of message rows deleted.
"""
with self._lock:
conn = self._connect()
try:
with conn:
# Verify this is a user message
row = conn.execute(
"SELECT role FROM messages WHERE session_id = ? AND seq = ?",
(session_id, user_seq),
).fetchone()
if not row or row[0] != "user":
return 0
if cascade:
# Delete from this message to end of session
start_seq = user_seq if delete_user else user_seq + 1
end_seq_row = conn.execute(
"SELECT MAX(seq) FROM messages WHERE session_id = ?",
(session_id,),
).fetchone()
end_seq = (end_seq_row[0] or user_seq) + 1
else:
# Find the next visible user message seq (exclude tool_result)
# Use batched query to avoid loading too many rows at once
next_user_seq = None
batch_size = 100
offset = 0
while True:
batch = conn.execute(
"""
SELECT seq, content FROM messages
WHERE session_id = ? AND seq > ? AND role = 'user'
ORDER BY seq ASC
LIMIT ? OFFSET ?
""",
(session_id, user_seq, batch_size, offset),
).fetchall()
if not batch:
break
for seq, content in batch:
try:
content_obj = json.loads(content)
except Exception:
content_obj = content
if _is_visible_user_message(content_obj):
next_user_seq = seq
break
if next_user_seq is not None:
break
offset += batch_size
# Determine the end boundary for deletion
if next_user_seq is not None:
end_seq = next_user_seq
else:
end_seq_row = conn.execute(
"SELECT MAX(seq) FROM messages WHERE session_id = ?",
(session_id,),
).fetchone()
end_seq = (end_seq_row[0] or user_seq) + 1
# Determine the start boundary for deletion
start_seq = user_seq if delete_user else user_seq + 1
# Delete messages from start_seq to end_seq (exclusive)
cur = conn.execute(
"DELETE FROM messages WHERE session_id = ? AND seq >= ? AND seq < ?",
(session_id, start_seq, end_seq),
)
deleted = cur.rowcount
# Update session msg_count
conn.execute(
"""
UPDATE sessions
SET msg_count = (
SELECT COUNT(*) FROM messages WHERE session_id = ?
)
WHERE session_id = ?
""",
(session_id, session_id),
)
return deleted
finally:
conn.close()
def prune_scheduled_messages( def prune_scheduled_messages(
self, self,
session_id: str, session_id: str,
@@ -1053,3 +1275,4 @@ def get_conversation_store() -> ConversationStore:
_store_instance = ConversationStore(db_path) _store_instance = ConversationStore(db_path)
logger.debug(f"[ConversationStore] Using shared DB at: {db_path}") logger.debug(f"[ConversationStore] Using shared DB at: {db_path}")
return _store_instance return _store_instance

View File

@@ -34,13 +34,18 @@ class MemoryService:
# ------------------------------------------------------------------ # ------------------------------------------------------------------
def list_files(self, page: int = 1, page_size: int = 20, category: str = "memory") -> dict: def list_files(self, page: int = 1, page_size: int = 20, category: str = "memory") -> dict:
""" """
List memory or dream files with metadata (without content). List memory, dream, or evolution files with metadata (without content).
Args: Args:
category: ``"memory"`` (default) — MEMORY.md + daily files; category: ``"memory"`` (default) — MEMORY.md + daily files;
``"dream"`` — dream diary files from memory/dreams/ ``"dream"`` — dream diary files from memory/dreams/;
``"evolution"`` — self-evolution logs from memory/evolution/
merged with the nightly dream diaries, so
one tab shows everything the agent learned.
""" """
if category == "dream": if category == "evolution":
files = self._list_evolution_files()
elif category == "dream":
files = self._list_dream_files() files = self._list_dream_files()
else: else:
files = self._list_memory_files() files = self._list_memory_files()
@@ -93,6 +98,26 @@ class MemoryService:
return files return files
def _list_evolution_files(self) -> List[dict]:
"""Self-evolution logs (memory/evolution/*.md) merged with the nightly
dream diaries (memory/dreams/*.md), newest first.
Both are surfaced under the unified "Self-Evolution" tab. A file's
``type`` records its origin so the reader can resolve the right dir.
"""
files: List[dict] = []
for sub, ftype in (("evolution", "evolution"), ("dreams", "dream")):
sub_dir = os.path.join(self.memory_dir, sub)
if not os.path.isdir(sub_dir):
continue
for name in os.listdir(sub_dir):
full = os.path.join(sub_dir, name)
if os.path.isfile(full) and name.endswith(".md"):
files.append(self._file_info(full, name, ftype))
# Sort newest first by filename (date-named); ties favor evolution.
files.sort(key=lambda f: (f["filename"], f["type"] != "evolution"), reverse=True)
return files
# ------------------------------------------------------------------ # ------------------------------------------------------------------
# content — read a single file # content — read a single file
# ------------------------------------------------------------------ # ------------------------------------------------------------------
@@ -101,7 +126,7 @@ class MemoryService:
Read the full content of a memory or dream file. Read the full content of a memory or dream file.
:param filename: File name, e.g. ``MEMORY.md``, ``2026-02-20.md`` :param filename: File name, e.g. ``MEMORY.md``, ``2026-02-20.md``
:param category: ``"memory"`` or ``"dream"`` :param category: ``"memory"``, ``"dream"`` or ``"evolution"``
:return: dict with ``filename`` and ``content`` :return: dict with ``filename`` and ``content``
:raises FileNotFoundError: if the file does not exist :raises FileNotFoundError: if the file does not exist
""" """
@@ -125,7 +150,7 @@ class MemoryService:
Dispatch a memory management action. Dispatch a memory management action.
:param action: ``list`` or ``content`` :param action: ``list`` or ``content``
:param payload: action-specific payload (supports ``category``: ``"memory"`` | ``"dream"``) :param payload: action-specific payload (supports ``category``: ``"memory"`` | ``"dream"`` | ``"evolution"``)
:return: protocol-compatible response dict :return: protocol-compatible response dict
""" """
payload = payload or {} payload = payload or {}
@@ -166,6 +191,7 @@ class MemoryService:
- ``MEMORY.md`` → ``{workspace_root}/MEMORY.md`` - ``MEMORY.md`` → ``{workspace_root}/MEMORY.md``
- ``2026-02-20.md`` (memory) → ``{workspace_root}/memory/2026-02-20.md`` - ``2026-02-20.md`` (memory) → ``{workspace_root}/memory/2026-02-20.md``
- ``2026-02-20.md`` (dream) → ``{workspace_root}/memory/dreams/2026-02-20.md`` - ``2026-02-20.md`` (dream) → ``{workspace_root}/memory/dreams/2026-02-20.md``
- ``2026-02-20.md`` (evolution) → ``{workspace_root}/memory/evolution/2026-02-20.md``
Raises ValueError if the resolved path escapes the allowed directory. Raises ValueError if the resolved path escapes the allowed directory.
""" """
@@ -173,6 +199,8 @@ class MemoryService:
base_dir = self.workspace_root base_dir = self.workspace_root
elif category == "dream": elif category == "dream":
base_dir = os.path.join(self.memory_dir, "dreams") base_dir = os.path.join(self.memory_dir, "dreams")
elif category == "evolution":
base_dir = os.path.join(self.memory_dir, "evolution")
else: else:
base_dir = self.memory_dir base_dir = self.memory_dir

View File

@@ -825,9 +825,10 @@ class MemoryStorage:
return [] return []
def delete_by_path(self, path: str): def delete_by_path(self, path: str):
"""Delete all chunks from a file""" """Delete all chunks and file metadata for a path."""
with self._lock: with self._lock:
self.conn.execute("DELETE FROM chunks WHERE path = ?", (path,)) self.conn.execute("DELETE FROM chunks WHERE path = ?", (path,))
self.conn.execute("DELETE FROM files WHERE path = ?", (path,))
self.conn.commit() self.conn.commit()
def get_file_hash(self, path: str) -> Optional[str]: def get_file_hash(self, path: str) -> Optional[str]:

View File

@@ -462,13 +462,12 @@ class MemoryFlushManager:
daily_content=daily_content or "(no recent daily records)", daily_content=daily_content or "(no recent daily records)",
) )
from agent.protocol.models import LLMRequest from agent.protocol.models import LLMRequest
# Scale max_tokens based on input size to avoid truncating large MEMORY.md # No output cap: the prompt already keeps MEMORY.md concise (~50
input_chars = len(memory_content) + len(daily_content) # items), so a hard max_tokens would only risk truncating a large
dream_max_tokens = max(2000, min(input_chars, 8000)) # rewrite. Let the model use its default output budget.
request = LLMRequest( request = LLMRequest(
messages=[{"role": "user", "content": user_msg}], messages=[{"role": "user", "content": user_msg}],
temperature=0.3, temperature=0.3,
max_tokens=dream_max_tokens,
stream=False, stream=False,
system=_dream_system_prompt(), system=_dream_system_prompt(),
) )

View File

@@ -52,6 +52,11 @@ class Agent:
self.workspace_dir = workspace_dir # Workspace directory self.workspace_dir = workspace_dir # Workspace directory
self.enable_skills = enable_skills # Skills enabled flag self.enable_skills = enable_skills # Skills enabled flag
self.runtime_info = runtime_info # Runtime info for dynamic time update self.runtime_info = runtime_info # Runtime info for dynamic time update
# Optional extra instructions appended AFTER the rebuilt full system
# prompt. Used by the self-evolution review agent to add its task brief
# on top of the full context (tools, workspace, user preferences, time)
# so it both follows the user's preferences and knows its evolution job.
self.extra_system_suffix = None
# Initialize skill manager # Initialize skill manager
self.skill_manager = None self.skill_manager = None
@@ -120,15 +125,20 @@ class Agent:
except Exception: except Exception:
lang = "zh" lang = "zh"
builder = PromptBuilder(workspace_dir=self.workspace_dir or "", language=lang) builder = PromptBuilder(workspace_dir=self.workspace_dir or "", language=lang)
return builder.build( full = builder.build(
tools=self.tools, tools=self.tools,
context_files=context_files, context_files=context_files,
skill_manager=self.skill_manager, skill_manager=self.skill_manager,
memory_manager=self.memory_manager, memory_manager=self.memory_manager,
runtime_info=self.runtime_info, runtime_info=self.runtime_info,
) )
if self.extra_system_suffix:
full = f"{full}\n\n{self.extra_system_suffix}"
return full
except Exception as e: except Exception as e:
logger.warning(f"Failed to rebuild system prompt, using cached version: {e}") logger.warning(f"Failed to rebuild system prompt, using cached version: {e}")
if self.extra_system_suffix:
return f"{self.system_prompt}\n\n{self.extra_system_suffix}"
return self.system_prompt return self.system_prompt
def refresh_skills(self): def refresh_skills(self):

View File

@@ -347,11 +347,14 @@ class AgentStreamExecutor:
Returns: Returns:
Final response text Final response text
""" """
# Log user message with model info # Log user message with model info. Truncate very long messages (e.g.
# injected transcripts / large prompts) so logs stay readable.
thinking_enabled = self._is_thinking_enabled() thinking_enabled = self._is_thinking_enabled()
thinking_label = " | 💭 thinking" if thinking_enabled else "" thinking_label = " | 💭 thinking" if thinking_enabled else ""
logger.info(f"🤖 {self.model.model}{thinking_label} | 👤 {user_message}") _log_msg = user_message if len(user_message) <= 500 else (
user_message[:500] + f" …(+{len(user_message) - 500} chars)"
)
logger.info(f"🤖 {self.model.model}{thinking_label} | 👤 {_log_msg}")
# Add user message (Claude format - use content blocks for consistency) # Add user message (Claude format - use content blocks for consistency)
self.messages.append({ self.messages.append({
@@ -1171,10 +1174,21 @@ class AgentStreamExecutor:
# Set tool context # Set tool context
tool.model = self.model tool.model = self.model
tool.context = self.agent tool.context = self.agent
tool.progress_callback = lambda message: self._emit_event(
"tool_execution_progress",
{
"tool_call_id": tool_id,
"tool_name": tool_name,
"message": message,
}
)
# Execute tool # Execute tool
start_time = time.time() start_time = time.time()
result: ToolResult = tool.execute_tool(arguments) try:
result: ToolResult = tool.execute_tool(arguments)
finally:
tool.progress_callback = None
execution_time = time.time() - start_time execution_time = time.time() - start_time
result_dict = { result_dict = {

View File

@@ -34,6 +34,27 @@ class SkillService:
""" """
self.manager = skill_manager self.manager = skill_manager
def _safe_skill_dir(self, name: str) -> str:
"""Derive and validate the skill directory path.
Ensures the resolved path stays within the custom_dir root,
preventing path traversal via names like ``../escaped``.
:raises ValueError: if the name would escape the skills root.
"""
if not name or not name.strip():
raise ValueError("skill name is required")
# Reject obvious traversal components.
if ".." in name or name.startswith("/") or name.startswith("\\"):
raise ValueError(f"invalid skill name (path traversal detected): {name!r}")
skill_dir = os.path.realpath(os.path.join(self.manager.custom_dir, name))
root = os.path.realpath(self.manager.custom_dir)
if not skill_dir.startswith(root + os.sep) and skill_dir != root:
raise ValueError(
f"skill name {name!r} resolves outside the skills directory"
)
return skill_dir
# ------------------------------------------------------------------ # ------------------------------------------------------------------
# query # query
# ------------------------------------------------------------------ # ------------------------------------------------------------------
@@ -107,7 +128,7 @@ class SkillService:
if not files: if not files:
raise ValueError("skill files list is empty") raise ValueError("skill files list is empty")
skill_dir = os.path.join(self.manager.custom_dir, name) skill_dir = self._safe_skill_dir(name)
tmp_dir = skill_dir + ".tmp" tmp_dir = skill_dir + ".tmp"
if os.path.exists(tmp_dir): if os.path.exists(tmp_dir):
@@ -146,7 +167,7 @@ class SkillService:
raise ValueError("package url is required") raise ValueError("package url is required")
url = files[0]["url"] url = files[0]["url"]
skill_dir = os.path.join(self.manager.custom_dir, name) skill_dir = self._safe_skill_dir(name)
with tempfile.TemporaryDirectory() as tmp_dir: with tempfile.TemporaryDirectory() as tmp_dir:
zip_path = os.path.join(tmp_dir, "package.zip") zip_path = os.path.join(tmp_dir, "package.zip")
@@ -217,7 +238,7 @@ class SkillService:
if not name: if not name:
raise ValueError("skill name is required") raise ValueError("skill name is required")
skill_dir = os.path.join(self.manager.custom_dir, name) skill_dir = self._safe_skill_dir(name)
if os.path.exists(skill_dir): if os.path.exists(skill_dir):
shutil.rmtree(skill_dir) shutil.rmtree(skill_dir)
logger.info(f"[SkillService] delete: removed directory {skill_dir}") logger.info(f"[SkillService] delete: removed directory {skill_dir}")

View File

@@ -14,6 +14,9 @@ from agent.tools.send.send import Send
from agent.tools.memory.memory_search import MemorySearchTool from agent.tools.memory.memory_search import MemorySearchTool
from agent.tools.memory.memory_get import MemoryGetTool from agent.tools.memory.memory_get import MemoryGetTool
# Import self-evolution tools
from agent.tools.evolution_undo.evolution_undo import EvolutionUndoTool
# Import tools with optional dependencies # Import tools with optional dependencies
def _import_optional_tools(): def _import_optional_tools():
"""Import tools that have optional dependencies""" """Import tools that have optional dependencies"""
@@ -135,6 +138,7 @@ __all__ = [
'Send', 'Send',
'MemorySearchTool', 'MemorySearchTool',
'MemoryGetTool', 'MemoryGetTool',
'EvolutionUndoTool',
'EnvConfig', 'EnvConfig',
'SchedulerTool', 'SchedulerTool',
'WebSearch', 'WebSearch',

View File

@@ -38,6 +38,16 @@ class BaseTool:
description: str = "Base tool" description: str = "Base tool"
params: dict = {} # Store JSON Schema params: dict = {} # Store JSON Schema
model: Optional[Any] = None # LLM model instance, type depends on bot implementation model: Optional[Any] = None # LLM model instance, type depends on bot implementation
progress_callback = None
def report_progress(self, message: str):
callback = getattr(self, "progress_callback", None)
if not callback:
return
try:
callback(str(message))
except Exception as e:
logger.debug(f"[{self.name}] progress callback failed: {e}")
@classmethod @classmethod
def get_json_schema(cls) -> dict: def get_json_schema(cls) -> dict:

View File

@@ -4,9 +4,12 @@ Bash tool - Execute bash commands
import os import os
import re import re
import signal
import sys import sys
import subprocess import subprocess
import tempfile import tempfile
import threading
import time
from typing import Dict, Any from typing import Dict, Any
from agent.tools.base_tool import BaseTool, ToolResult from agent.tools.base_tool import BaseTool, ToolResult
@@ -19,6 +22,10 @@ class Bash(BaseTool):
"""Tool for executing bash commands""" """Tool for executing bash commands"""
_IS_WIN = sys.platform == "win32" _IS_WIN = sys.platform == "win32"
_PROGRESS_MAX_BYTES = 4 * 1024
_PROGRESS_INTERVAL = 0.5
# cmd.exe command line limit is ~8191 chars; rewrite python -c above this.
_WIN_CMD_SAFE_LEN = 7000
name: str = "bash" name: str = "bash"
description: str = f"""Execute a bash command in the current working directory. Returns stdout and stderr. Output is truncated to last {DEFAULT_MAX_LINES} lines or {DEFAULT_MAX_BYTES // 1024}KB (whichever is hit first). If truncated, full output is saved to a temp file. description: str = f"""Execute a bash command in the current working directory. Returns stdout and stderr. Output is truncated to last {DEFAULT_MAX_LINES} lines or {DEFAULT_MAX_BYTES // 1024}KB (whichever is hit first). If truncated, full output is saved to a temp file.
@@ -69,8 +76,8 @@ SAFETY:
if not command: if not command:
return ToolResult.fail("Error: command parameter is required") return ToolResult.fail("Error: command parameter is required")
# Security check: Prevent accessing sensitive config files # Security check: Prevent direct access to the credential file
if "~/.cow/.env" in command or "~/.cow" in command: if re.search(r'\.cow[/\\]\.env', command):
return ToolResult.fail( return ToolResult.fail(
"Error: Access denied. API keys and credentials must be accessed through the env_config tool only." "Error: Access denied. API keys and credentials must be accessed through the env_config tool only."
) )
@@ -106,25 +113,35 @@ SAFETY:
else: else:
logger.debug(f"[Bash] Process User: {os.environ.get('USERNAME', os.environ.get('USER', 'unknown'))}") logger.debug(f"[Bash] Process User: {os.environ.get('USERNAME', os.environ.get('USER', 'unknown'))}")
# Temp script written for long `python -c` commands (Windows only),
# cleaned up after execution.
temp_script_path = None
# On Windows, convert $VAR references to %VAR% for cmd.exe # On Windows, convert $VAR references to %VAR% for cmd.exe
if self._IS_WIN: if self._IS_WIN:
env["PYTHONIOENCODING"] = "utf-8" env["PYTHONIOENCODING"] = "utf-8"
command = self._convert_env_vars_for_windows(command, dotenv_vars) command = self._convert_env_vars_for_windows(command, dotenv_vars)
# cmd.exe has an ~8191 char command line limit. Long
# `python -c "..."` commands silently fail, so spill the inline
# code into a temp .py file and run that instead.
if len(command) > self._WIN_CMD_SAFE_LEN:
command, temp_script_path = self._rewrite_long_python_c(command)
if command and not command.strip().lower().startswith("chcp"): if command and not command.strip().lower().startswith("chcp"):
command = f"chcp 65001 >nul 2>&1 && {command}" command = f"chcp 65001 >nul 2>&1 && {command}"
result = subprocess.run( try:
command, result = self._run_streaming(
shell=True, command,
cwd=self.cwd, timeout,
stdout=subprocess.PIPE, env,
stderr=subprocess.PIPE, dotenv_vars,
text=True, )
encoding="utf-8", finally:
errors="replace", if temp_script_path:
timeout=timeout, try:
env=env, os.remove(temp_script_path)
) except OSError:
pass
logger.debug(f"[Bash] Exit code: {result.returncode}") logger.debug(f"[Bash] Exit code: {result.returncode}")
logger.debug(f"[Bash] Stdout length: {len(result.stdout)}") logger.debug(f"[Bash] Stdout length: {len(result.stdout)}")
@@ -236,6 +253,105 @@ SAFETY:
except Exception as e: except Exception as e:
return ToolResult.fail(f"Error executing command: {str(e)}") return ToolResult.fail(f"Error executing command: {str(e)}")
def _run_streaming(self, command: str, timeout: int, env: dict, dotenv_vars: dict):
process = subprocess.Popen(
command,
shell=True,
cwd=self.cwd,
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
env=env,
start_new_session=not self._IS_WIN,
)
stdout_chunks, stderr_chunks = [], []
recent = bytearray()
recent_lock = threading.Lock()
def drain(stream, chunks):
while True:
chunk = os.read(stream.fileno(), 4096)
if not chunk:
break
chunks.append(chunk)
with recent_lock:
recent.extend(chunk)
if len(recent) > self._PROGRESS_MAX_BYTES:
del recent[:-self._PROGRESS_MAX_BYTES]
readers = [
threading.Thread(target=drain, args=(process.stdout, stdout_chunks), daemon=True),
threading.Thread(target=drain, args=(process.stderr, stderr_chunks), daemon=True),
]
for reader in readers:
reader.start()
started = time.monotonic()
last_reported_at = started
last_snapshot = None
try:
while process.poll() is None:
now = time.monotonic()
elapsed = now - started
if elapsed >= timeout:
self._kill_process(process)
raise subprocess.TimeoutExpired(command, timeout)
if elapsed >= self._PROGRESS_INTERVAL and now - last_reported_at >= self._PROGRESS_INTERVAL:
with recent_lock:
snapshot = bytes(recent).decode("utf-8", errors="replace")
snapshot = self._redact_progress(snapshot, dotenv_vars)
if snapshot and snapshot != last_snapshot:
self.report_progress(snapshot)
last_snapshot = snapshot
last_reported_at = now
time.sleep(0.1)
finally:
if process.poll() is None:
self._kill_process(process)
process.wait()
join_deadline = time.monotonic() + 5
for reader in readers:
reader.join(timeout=max(0, join_deadline - time.monotonic()))
from types import SimpleNamespace
return SimpleNamespace(
returncode=process.returncode,
stdout=b"".join(stdout_chunks).decode("utf-8", errors="replace"),
stderr=b"".join(stderr_chunks).decode("utf-8", errors="replace"),
)
def _kill_process(self, process):
if self._IS_WIN:
try:
result = subprocess.run(
["taskkill", "/F", "/T", "/PID", str(process.pid)],
capture_output=True,
timeout=5,
)
if result.returncode != 0 and process.poll() is None:
process.kill()
except (OSError, subprocess.SubprocessError):
if process.poll() is None:
process.kill()
else:
try:
os.killpg(process.pid, signal.SIGKILL)
except (PermissionError, ProcessLookupError):
if process.poll() is None:
process.kill()
@staticmethod
def _redact_progress(text: str, dotenv_vars: dict) -> str:
text = re.sub(
r'(?i)\b(API_KEY|TOKEN|PASSWORD|AUTHORIZATION)\s*=\s*[^\s]+',
lambda match: f"{match.group(1)}=[REDACTED]",
text,
)
for value in dotenv_vars.values():
value = str(value or "")
if len(value) >= 6:
text = text.replace(value, "[REDACTED]")
return text
def _get_safety_warning(self, command: str) -> str: def _get_safety_warning(self, command: str) -> str:
""" """
Get safety warning for absolutely catastrophic commands only. Get safety warning for absolutely catastrophic commands only.
@@ -293,3 +409,43 @@ SAFETY:
return m.group(0) return m.group(0)
return re.sub(r'\$\{(\w+)\}|\$(\w+)', replace_match, command) return re.sub(r'\$\{(\w+)\}|\$(\w+)', replace_match, command)
@staticmethod
def _rewrite_long_python_c(command: str):
"""
Rewrite `python -c "<code>"` into `python <tempfile>` to bypass the
cmd.exe command line length limit on Windows.
Returns (new_command, temp_file_path). On any parse failure the original
command and None are returned, so behavior is unchanged when unmatched.
"""
# Match: <python|python3|py> [flags] -c "<code>" (single or double quoted)
m = re.search(
r'^(?P<prefix>.*?\b(?:python3?|py)\b[^\n]*?\s-c\s+)'
r'(?P<quote>["\'])(?P<code>.*)(?P=quote)\s*(?P<suffix>.*)$',
command,
re.DOTALL,
)
if not m:
return command, None
quote = m.group("quote")
code = m.group("code")
# Reverse common shell-level escaping of the quote char inside the code.
code = code.replace("\\" + quote, quote)
try:
fd, path = tempfile.mkstemp(suffix=".py", prefix="bash-pyc-")
with os.fdopen(fd, "w", encoding="utf-8") as f:
f.write(code)
except OSError:
return command, None
prefix = m.group("prefix")
# Drop the trailing "-c " from the prefix, keep the interpreter + flags.
interp = re.sub(r'\s-c\s+$', ' ', prefix).rstrip()
suffix = m.group("suffix").strip()
new_command = f'{interp} "{path}"'
if suffix:
new_command += f' {suffix}'
return new_command, path

View File

@@ -0,0 +1,3 @@
from agent.tools.evolution_undo.evolution_undo import EvolutionUndoTool
__all__ = ["EvolutionUndoTool"]

View File

@@ -0,0 +1,58 @@
"""Evolution undo tool.
Lets the main chat agent roll back a previous self-evolution when the user asks
("undo the last learning"). The rollback itself is a deterministic FILE RESTORE
from the snapshot taken before the evolution — the model only supplies the
backup_id it reads from the [EVOLUTION] record in the conversation. No LLM-driven
re-editing is involved, so a restore can never make things worse.
"""
from agent.tools.base_tool import BaseTool, ToolResult
class EvolutionUndoTool(BaseTool):
"""Restore memory/skill files to the state before a self-evolution."""
name: str = "evolution_undo"
description: str = (
"Undo a previous self-evolution (self-learning) by restoring the "
"memory/skill files to their state before that learning. Use this when "
"the user asks to undo / revert / roll back the last self-learning. "
"Find the backup_id in the most recent [EVOLUTION] record in the "
"conversation and pass it here."
)
params: dict = {
"type": "object",
"properties": {
"backup_id": {
"type": "string",
"description": (
"The backup_id from the [EVOLUTION] record to restore "
"(e.g. '20260607-155551-850')."
),
}
},
"required": ["backup_id"],
}
def execute(self, args: dict):
backup_id = (args.get("backup_id") or "").strip()
if not backup_id:
return ToolResult.fail("Error: backup_id is required")
try:
from agent.memory.config import get_default_memory_config
from agent.evolution.backup import restore_backup
workspace_dir = get_default_memory_config().get_workspace()
ok = restore_backup(workspace_dir, backup_id)
if ok:
return ToolResult.success(
f"Restored memory/skills to the state before evolution "
f"{backup_id}. The previous self-learning has been undone."
)
return ToolResult.fail(
f"Could not find or restore backup {backup_id}. It may have "
f"expired or already been rolled back."
)
except Exception as e:
return ToolResult.fail(f"Error during undo: {e}")

View File

@@ -7,7 +7,7 @@ without any external MCP SDK dependency.
import json import json
import os import os
import select import queue
import subprocess import subprocess
import threading import threading
import urllib.request import urllib.request
@@ -34,6 +34,8 @@ class McpClient:
self.config = config self.config = config
self.name: str = config.get("name", "unknown") self.name: str = config.get("name", "unknown")
raw_transport: str = config.get("type", "stdio") raw_transport: str = config.get("type", "stdio")
# Per-server timeout for tool calls (default 120s, suitable for data queries)
self._timeout: int = int(config.get("timeout", 120))
# Normalize streamable-http aliases to a single internal key # Normalize streamable-http aliases to a single internal key
self.transport: str = ( self.transport: str = (
"streamable-http" "streamable-http"
@@ -43,6 +45,7 @@ class McpClient:
# stdio state # stdio state
self._proc: Optional[subprocess.Popen] = None self._proc: Optional[subprocess.Popen] = None
self._read_queue: queue.Queue = queue.Queue()
# SSE state # SSE state
self._sse_url: Optional[str] = None self._sse_url: Optional[str] = None
@@ -56,7 +59,13 @@ class McpClient:
# Shared state # Shared state
self._next_id = 1 self._next_id = 1
self._id_lock = threading.Lock() self._id_lock = threading.Lock()
# _call_lock serializes all requests on the single stdio pipe.
# SSE and streamable-http use independent HTTP requests, so they
# do not acquire this lock (see _send_request).
self._call_lock = threading.Lock() self._call_lock = threading.Lock()
# _http_lock protects _http_session_id initialization across
# concurrent streamable-http requests.
self._http_lock = threading.Lock()
self._initialized = False self._initialized = False
# ------------------------------------------------------------------ # ------------------------------------------------------------------
@@ -172,6 +181,9 @@ class McpClient:
threading.Thread( threading.Thread(
target=self._drain_stderr, daemon=True, name=f"mcp-stderr-{self.name}" target=self._drain_stderr, daemon=True, name=f"mcp-stderr-{self.name}"
).start() ).start()
threading.Thread(
target=self._drain_stdout, daemon=True, name=f"mcp-stdout-{self.name}"
).start()
return self._handshake() return self._handshake()
@@ -179,14 +191,35 @@ class McpClient:
for line in self._proc.stderr: for line in self._proc.stderr:
line = line.strip() line = line.strip()
if line: if line:
logger.debug(f"[MCP:{self.name}] stderr: {line}") logger.warning(f"[MCP:{self.name}] stderr: {line}")
def _readline_with_timeout(self, timeout: int = 30) -> str: def _drain_stdout(self):
"""Read one line from stdio stdout with a hard timeout.""" """Background thread: read lines from stdout and put them into the queue."""
ready, _, _ = select.select([self._proc.stdout], [], [], timeout) try:
if not ready: for line in self._proc.stdout:
raise TimeoutError(f"[MCP:{self.name}] stdio read timed out after {timeout}s") self._read_queue.put(line)
return self._proc.stdout.readline() except Exception:
pass
finally:
try:
self._read_queue.put("")
except Exception:
pass
def _readline_with_timeout(self, timeout: Optional[int] = None) -> str:
"""Read one line from stdio stdout with a hard timeout (cross-platform).
Uses the per-server timeout from mcp.json config when no explicit
timeout is provided.
"""
effective = timeout if timeout is not None else self._timeout
try:
line = self._read_queue.get(timeout=effective)
except queue.Empty:
raise TimeoutError(f"[MCP:{self.name}] stdio read timed out after {effective}s")
if not line:
raise IOError(f"[MCP:{self.name}] stdio process closed unexpectedly")
return line
def _stdio_send(self, message: dict) -> dict: def _stdio_send(self, message: dict) -> dict:
"""Send a JSON-RPC message over stdio and read the response.""" """Send a JSON-RPC message over stdio and read the response."""
@@ -194,6 +227,7 @@ class McpClient:
self._proc.stdin.write(raw) self._proc.stdin.write(raw)
self._proc.stdin.flush() self._proc.stdin.flush()
expected_id = message.get("id")
while True: while True:
line = self._readline_with_timeout() line = self._readline_with_timeout()
if not line: if not line:
@@ -208,6 +242,14 @@ class McpClient:
if "id" not in data: if "id" not in data:
logger.debug(f"[MCP:{self.name}] notification skipped: {data.get('method', '?')}") logger.debug(f"[MCP:{self.name}] notification skipped: {data.get('method', '?')}")
continue continue
# Verify response id matches request id to avoid consuming a stale
# response left over from a previously failed/timed-out request.
if data.get("id") != expected_id:
logger.warning(
f"[MCP:{self.name}] Stale response id={data.get('id')} "
f"(expected {expected_id}), skipping"
)
continue
return data return data
# ------------------------------------------------------------------ # ------------------------------------------------------------------
@@ -302,8 +344,12 @@ class McpClient:
"Content-Type": "application/json", "Content-Type": "application/json",
"Accept": "application/json, text/event-stream", "Accept": "application/json, text/event-stream",
} }
if self._http_session_id: # Read session id under lock to avoid racing with the
headers["Mcp-Session-Id"] = self._http_session_id # initialization write below during concurrent requests.
with self._http_lock:
sid = self._http_session_id
if sid:
headers["Mcp-Session-Id"] = sid
headers.update(self._http_headers) headers.update(self._http_headers)
req = urllib.request.Request( req = urllib.request.Request(
@@ -329,8 +375,13 @@ class McpClient:
with resp: with resp:
# Capture session id assigned by the server (if any) # Capture session id assigned by the server (if any)
session_id = resp.headers.get("Mcp-Session-Id") session_id = resp.headers.get("Mcp-Session-Id")
# Double-checked lock: only the first response sets the
# session id, preventing concurrent initializers from
# overwriting each other.
if session_id and not self._http_session_id: if session_id and not self._http_session_id:
self._http_session_id = session_id with self._http_lock:
if not self._http_session_id:
self._http_session_id = session_id
status = resp.status if hasattr(resp, "status") else resp.getcode() status = resp.status if hasattr(resp, "status") else resp.getcode()
@@ -409,15 +460,18 @@ class McpClient:
message = self._build_request(method, params) message = self._build_request(method, params)
with self._call_lock: # stdio transport uses a single pipe and must be serialized.
if self.transport == "stdio": # SSE and streamable-http use independent HTTP requests and
# can safely run concurrently across sessions.
if self.transport == "stdio":
with self._call_lock:
return self._stdio_send(message) return self._stdio_send(message)
elif self.transport == "sse": elif self.transport == "sse":
return self._sse_send(message) return self._sse_send(message)
elif self.transport == "streamable-http": elif self.transport == "streamable-http":
return self._streamable_http_send(message) return self._streamable_http_send(message)
else: else:
raise ValueError(f"[MCP:{self.name}] Unsupported transport: {self.transport}") raise ValueError(f"[MCP:{self.name}] Unsupported transport: {self.transport}")
def _send_notification(self, method: str, params: dict): def _send_notification(self, method: str, params: dict):
"""Fire-and-forget notification (no response expected).""" """Fire-and-forget notification (no response expected)."""

View File

@@ -182,8 +182,15 @@ class TaskStore:
if enabled_only: if enabled_only:
task_list = [t for t in task_list if t.get("enabled", True)] task_list = [t for t in task_list if t.get("enabled", True)]
# Sort by next_run_at # Sort by enabled status (enabled first), then by next_run_at
task_list.sort(key=lambda t: t.get("next_run_at", float('inf'))) def sort_key(t):
enabled = t.get("enabled", True)
next_run = t.get("next_run_at", "")
# Enabled tasks first (0), disabled tasks second (1)
# Then sort by next_run_at (empty string sorts last)
return (0 if enabled else 1, next_run if next_run else "9999-12-31")
task_list.sort(key=sort_key)
return task_list return task_list

View File

@@ -20,6 +20,11 @@ from .diff import (
FuzzyMatchResult FuzzyMatchResult
) )
from .url_safety import (
validate_url_safe,
assert_public_ip
)
__all__ = [ __all__ = [
'truncate_head', 'truncate_head',
'truncate_tail', 'truncate_tail',
@@ -36,5 +41,7 @@ __all__ = [
'normalize_for_fuzzy_match', 'normalize_for_fuzzy_match',
'fuzzy_find_text', 'fuzzy_find_text',
'generate_diff_string', 'generate_diff_string',
'FuzzyMatchResult' 'FuzzyMatchResult',
'validate_url_safe',
'assert_public_ip'
] ]

View File

@@ -0,0 +1,66 @@
"""
Shared SSRF guard utilities for tools that fetch model-supplied URLs.
A URL is only considered safe when it uses an http/https scheme, has a
hostname, that hostname resolves, and every resolved address is a public
(internet-routable) address. Loopback, private (RFC1918 / ULA), link-local
(incl. the 169.254.169.254 cloud-metadata endpoint) and otherwise reserved
addresses are rejected, for both IPv4 and IPv6.
"""
import ipaddress
import socket
from urllib.parse import urlparse
def _is_blocked_ip(ip: "ipaddress._BaseAddress") -> bool:
"""Return True if the address is not safe to connect to (non-public)."""
return (
ip.is_private
or ip.is_loopback
or ip.is_link_local
or ip.is_reserved
or ip.is_multicast
or ip.is_unspecified
)
def assert_public_ip(ip_str: str) -> None:
"""Raise ValueError if the given literal IP is a non-public address.
Used to re-validate the concrete address a redirect resolved to.
"""
ip = ipaddress.ip_address(ip_str)
if _is_blocked_ip(ip):
raise ValueError(
f"URL resolves to a non-public address ({ip_str}), "
f"request blocked for security"
)
def validate_url_safe(url: str) -> None:
"""Reject URLs that target private/loopback/link-local addresses (SSRF guard).
Resolves the hostname to its IP address(es) and blocks any that fall
into non-public ranges. Also rejects URLs with no host, non-HTTP(S)
schemes, or hosts that fail DNS resolution.
Raises:
ValueError: if the URL targets a disallowed address.
"""
parsed = urlparse(url)
if parsed.scheme not in ("http", "https"):
raise ValueError(f"Unsupported URL scheme: {parsed.scheme}")
hostname = parsed.hostname
if not hostname:
raise ValueError("URL has no hostname")
try:
# Resolve all addresses for the hostname.
addr_infos = socket.getaddrinfo(hostname, None, socket.AF_UNSPEC, socket.SOCK_STREAM)
except socket.gaierror:
raise ValueError(f"Cannot resolve hostname: {hostname}")
for family, _, _, _, sockaddr in addr_infos:
assert_public_ip(sockaddr[0])

View File

@@ -26,13 +26,14 @@ from typing import Any, Dict, List, Optional
import requests import requests
from agent.tools.base_tool import BaseTool, ToolResult from agent.tools.base_tool import BaseTool, ToolResult
from agent.tools.utils.url_safety import validate_url_safe
from common import const from common import const
from common.log import logger from common.log import logger
from config import conf from config import conf
DEFAULT_MODEL = const.GPT_41_MINI DEFAULT_MODEL = const.GPT_41_MINI
DEFAULT_TIMEOUT = 60 DEFAULT_TIMEOUT = 180
MAX_TOKENS = 1000 MAX_TOKENS = 4000
COMPRESS_THRESHOLD = 1_048_576 # 1 MB COMPRESS_THRESHOLD = 1_048_576 # 1 MB
SUPPORTED_EXTENSIONS = { SUPPORTED_EXTENSIONS = {
@@ -51,7 +52,7 @@ _MAIN_MODEL_PROVIDER_NAME = "MainModel"
_DISCOVERABLE_MODELS = [ _DISCOVERABLE_MODELS = [
("moonshot_api_key", const.MOONSHOT, const.KIMI_K2_6, "Moonshot"), ("moonshot_api_key", const.MOONSHOT, const.KIMI_K2_6, "Moonshot"),
("ark_api_key", const.DOUBAO, const.DOUBAO_SEED_2_PRO, "Doubao"), ("ark_api_key", const.DOUBAO, const.DOUBAO_SEED_2_PRO, "Doubao"),
("dashscope_api_key", const.QWEN_DASHSCOPE, const.QWEN36_PLUS, "DashScope"), ("dashscope_api_key", const.QWEN_DASHSCOPE, const.QWEN37_PLUS, "DashScope"),
("claude_api_key", const.CLAUDEAPI, const.CLAUDE_4_6_SONNET, "Claude"), ("claude_api_key", const.CLAUDEAPI, const.CLAUDE_4_6_SONNET, "Claude"),
("gemini_api_key", const.GEMINI, const.GEMINI_35_FLASH, "Gemini"), ("gemini_api_key", const.GEMINI, const.GEMINI_35_FLASH, "Gemini"),
("qianfan_api_key", const.QIANFAN, const.ERNIE_45_TURBO_VL, "Qianfan"), ("qianfan_api_key", const.QIANFAN, const.ERNIE_45_TURBO_VL, "Qianfan"),
@@ -161,7 +162,7 @@ class Vision(BaseTool):
"Error: No model available for Vision.\n" "Error: No model available for Vision.\n"
"The main model does not support vision and no other API keys are configured.\n" "The main model does not support vision and no other API keys are configured.\n"
"Options:\n" "Options:\n"
" 1. Switch to a multimodal model (e.g. ernie-4.5-turbo-vl, qwen3.6-plus, claude-sonnet-4-6, gemini-2.0-flash)\n" " 1. Switch to a multimodal model (e.g. ernie-4.5-turbo-vl, qwen3.7-plus, claude-sonnet-4-6, gemini-2.0-flash)\n"
" 2. Configure OPENAI_API_KEY: env_config(action=\"set\", key=\"OPENAI_API_KEY\", value=\"your-key\")\n" " 2. Configure OPENAI_API_KEY: env_config(action=\"set\", key=\"OPENAI_API_KEY\", value=\"your-key\")\n"
" 3. Configure LINKAI_API_KEY: env_config(action=\"set\", key=\"LINKAI_API_KEY\", value=\"your-key\")" " 3. Configure LINKAI_API_KEY: env_config(action=\"set\", key=\"LINKAI_API_KEY\", value=\"your-key\")"
) )
@@ -654,6 +655,22 @@ class Vision(BaseTool):
return api_base return api_base
return api_base.rstrip("/") + "/v1" return api_base.rstrip("/") + "/v1"
@staticmethod
def _validate_url_safe(url: str) -> None:
"""Reject URLs that target private/loopback/link-local addresses (SSRF guard).
Resolves the hostname to its IP address(es) and blocks any that fall
into non-public ranges. Also rejects URLs with no host, non-HTTP(S)
schemes, or hosts that fail DNS resolution.
Delegates to the shared ``agent.tools.utils.url_safety`` helper so the
same guard protects every tool that fetches model-supplied URLs.
Raises:
ValueError: if the URL targets a disallowed address.
"""
validate_url_safe(url)
def _build_image_content(self, image: str) -> dict: def _build_image_content(self, image: str) -> dict:
""" """
Build the image_url content block. Build the image_url content block.
@@ -661,6 +678,7 @@ class Vision(BaseTool):
so every bot backend can consume them without extra downloads. so every bot backend can consume them without extra downloads.
""" """
if image.startswith(("http://", "https://")): if image.startswith(("http://", "https://")):
self._validate_url_safe(image)
return self._download_to_data_url(image) return self._download_to_data_url(image)
if not os.path.isfile(image): if not os.path.isfile(image):

View File

@@ -16,11 +16,15 @@ import requests
from agent.tools.base_tool import BaseTool, ToolResult from agent.tools.base_tool import BaseTool, ToolResult
from agent.tools.utils.truncate import truncate_head, format_size from agent.tools.utils.truncate import truncate_head, format_size
from agent.tools.utils.url_safety import validate_url_safe
from common.log import logger from common.log import logger
DEFAULT_TIMEOUT = 30 DEFAULT_TIMEOUT = 30
MAX_FILE_SIZE = 50 * 1024 * 1024 # 50MB MAX_FILE_SIZE = 50 * 1024 * 1024 # 50MB
# Cap on how many redirects we follow; each hop's target is re-validated
# against the SSRF guard so a public URL cannot bounce us into an internal one.
MAX_REDIRECTS = 10
DEFAULT_HEADERS = { DEFAULT_HEADERS = {
"User-Agent": "Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7) AppleWebKit/537.36", "User-Agent": "Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7) AppleWebKit/537.36",
@@ -107,23 +111,65 @@ class WebFetch(BaseTool):
if parsed.scheme not in ("http", "https"): if parsed.scheme not in ("http", "https"):
return ToolResult.fail("Error: Invalid URL (must start with http:// or https://)") return ToolResult.fail("Error: Invalid URL (must start with http:// or https://)")
# SSRF guard: reject URLs that resolve to private/loopback/link-local/
# cloud-metadata addresses before any request is issued.
try:
validate_url_safe(url)
except ValueError as e:
return ToolResult.fail(f"Error: {e}")
if _is_document_url(url): if _is_document_url(url):
return self._fetch_document(url) return self._fetch_document(url)
return self._fetch_webpage(url) return self._fetch_webpage(url)
# ---- Safe request helper ----
@staticmethod
def _safe_get(url: str, **kwargs) -> requests.Response:
"""Issue a GET request while re-validating every redirect hop (SSRF guard).
Auto-redirect is disabled and each hop is followed manually so the
target of every redirect is re-resolved and checked against the SSRF
guard. This prevents a public URL from 3xx-bouncing into a private,
loopback, link-local or cloud-metadata address. ``kwargs`` are passed
through to ``requests.get`` (e.g. ``stream``).
Raises:
ValueError: if any hop resolves to a non-public address.
"""
kwargs.pop("allow_redirects", None)
current = url
for _ in range(MAX_REDIRECTS + 1):
response = requests.get(
current,
headers=DEFAULT_HEADERS,
timeout=DEFAULT_TIMEOUT,
allow_redirects=False,
**kwargs,
)
if not response.is_redirect and not response.is_permanent_redirect:
return response
location = response.headers.get("Location")
if not location:
return response
# Resolve the redirect target relative to the current URL, then
# re-validate it before following.
current = requests.compat.urljoin(current, location)
validate_url_safe(current)
response.close()
raise ValueError(f"Too many redirects (>{MAX_REDIRECTS})")
# ---- Web page fetching ---- # ---- Web page fetching ----
def _fetch_webpage(self, url: str) -> ToolResult: def _fetch_webpage(self, url: str) -> ToolResult:
"""Fetch and extract readable text from an HTML web page.""" """Fetch and extract readable text from an HTML web page."""
parsed = urlparse(url) parsed = urlparse(url)
try: try:
response = requests.get( response = self._safe_get(url)
url,
headers=DEFAULT_HEADERS,
timeout=DEFAULT_TIMEOUT,
allow_redirects=True,
)
response.raise_for_status() response.raise_for_status()
except requests.Timeout: except requests.Timeout:
return ToolResult.fail(f"Error: Request timed out after {DEFAULT_TIMEOUT}s") return ToolResult.fail(f"Error: Request timed out after {DEFAULT_TIMEOUT}s")
@@ -131,6 +177,8 @@ class WebFetch(BaseTool):
return ToolResult.fail(f"Error: Failed to connect to {parsed.netloc}") return ToolResult.fail(f"Error: Failed to connect to {parsed.netloc}")
except requests.HTTPError as e: except requests.HTTPError as e:
return ToolResult.fail(f"Error: HTTP {e.response.status_code} for URL: {url}") return ToolResult.fail(f"Error: HTTP {e.response.status_code} for URL: {url}")
except ValueError as e:
return ToolResult.fail(f"Error: {e}")
except Exception as e: except Exception as e:
return ToolResult.fail(f"Error: Failed to fetch URL: {e}") return ToolResult.fail(f"Error: Failed to fetch URL: {e}")
@@ -158,13 +206,7 @@ class WebFetch(BaseTool):
logger.info(f"[WebFetch] Downloading document: {url} -> {local_path}") logger.info(f"[WebFetch] Downloading document: {url} -> {local_path}")
try: try:
response = requests.get( response = self._safe_get(url, stream=True)
url,
headers=DEFAULT_HEADERS,
timeout=DEFAULT_TIMEOUT,
stream=True,
allow_redirects=True,
)
response.raise_for_status() response.raise_for_status()
content_length = int(response.headers.get("Content-Length", 0)) content_length = int(response.headers.get("Content-Length", 0))
@@ -191,6 +233,9 @@ class WebFetch(BaseTool):
return ToolResult.fail(f"Error: Failed to connect to {parsed.netloc}") return ToolResult.fail(f"Error: Failed to connect to {parsed.netloc}")
except requests.HTTPError as e: except requests.HTTPError as e:
return ToolResult.fail(f"Error: HTTP {e.response.status_code} for URL: {url}") return ToolResult.fail(f"Error: HTTP {e.response.status_code} for URL: {url}")
except ValueError as e:
self._cleanup_file(local_path)
return ToolResult.fail(f"Error: {e}")
except Exception as e: except Exception as e:
self._cleanup_file(local_path) self._cleanup_file(local_path)
return ToolResult.fail(f"Error: Failed to download file: {e}") return ToolResult.fail(f"Error: Failed to download file: {e}")

3
app.py
View File

@@ -236,6 +236,9 @@ def _clear_singleton_cache(channel_name: str):
const.DINGTALK: "channel.dingtalk.dingtalk_channel.DingTalkChanel", const.DINGTALK: "channel.dingtalk.dingtalk_channel.DingTalkChanel",
const.WECOM_BOT: "channel.wecom_bot.wecom_bot_channel.WecomBotChannel", const.WECOM_BOT: "channel.wecom_bot.wecom_bot_channel.WecomBotChannel",
const.QQ: "channel.qq.qq_channel.QQChannel", const.QQ: "channel.qq.qq_channel.QQChannel",
const.TELEGRAM: "channel.telegram.telegram_channel.TelegramChannel",
const.SLACK: "channel.slack.slack_channel.SlackChannel",
const.DISCORD: "channel.discord.discord_channel.DiscordChannel",
const.WEIXIN: "channel.weixin.weixin_channel.WeixinChannel", const.WEIXIN: "channel.weixin.weixin_channel.WeixinChannel",
"wx": "channel.weixin.weixin_channel.WeixinChannel", "wx": "channel.weixin.weixin_channel.WeixinChannel",
} }

View File

@@ -78,6 +78,7 @@ class AgentLLMModel(LLMModel):
("moonshot", const.MOONSHOT), ("kimi", const.MOONSHOT), ("moonshot", const.MOONSHOT), ("kimi", const.MOONSHOT),
("doubao", const.DOUBAO), ("deepseek", const.DEEPSEEK), ("doubao", const.DOUBAO), ("deepseek", const.DEEPSEEK),
("ernie", const.QIANFAN), ("ernie", const.QIANFAN),
("mimo-", const.MIMO),
] ]
def __init__(self, bridge: Bridge, bot_type: str = "chat"): def __init__(self, bridge: Bridge, bot_type: str = "chat"):
@@ -294,6 +295,14 @@ class AgentBridge:
self.scheduler_initialized = True self.scheduler_initialized = True
except Exception as e: except Exception as e:
logger.warning(f"[AgentBridge] Eager scheduler init failed: {e}") logger.warning(f"[AgentBridge] Eager scheduler init failed: {e}")
# Start the self-evolution idle trigger (idempotent, daemon thread).
try:
from agent.evolution.trigger import start_evolution_trigger
start_evolution_trigger(self)
except Exception as e:
logger.warning(f"[AgentBridge] Evolution trigger init failed: {e}")
def create_agent(self, system_prompt: str, tools: List = None, **kwargs) -> Agent: def create_agent(self, system_prompt: str, tools: List = None, **kwargs) -> Agent:
""" """
Create the super agent with COW integration Create the super agent with COW integration
@@ -383,6 +392,48 @@ class AgentBridge:
agent = self.initializer.initialize_agent(session_id=session_id) agent = self.initializer.initialize_agent(session_id=session_id)
self.agents[session_id] = agent self.agents[session_id] = agent
def sync_session_messages_from_store(self, session_id: str) -> int:
"""Reload an agent's in-memory ``messages`` list from the persistent
conversation store.
Used after an external mutation (e.g. user edits / deletes a message
via the web console) so the agent's next turn sees the same history
as the database. The operation is a no-op when the agent has not been
instantiated yet for the session.
Returns:
Number of messages now held in the agent's memory. Returns -1 if
the agent does not exist or has no compatible ``messages`` attr.
"""
if not session_id or session_id not in self.agents:
return -1
agent = self.agents[session_id]
if not (hasattr(agent, "messages") and hasattr(agent, "messages_lock")):
return -1
try:
from agent.memory import get_conversation_store
store = get_conversation_store()
# No turn cap here: we want a faithful mirror of what the store
# has for this session after deletion.
remaining = store.load_messages(session_id, max_turns=10**6)
except Exception as e:
logger.warning(
f"[AgentBridge] Failed to load messages for sync (session={session_id}): {e}"
)
return -1
with agent.messages_lock:
agent.messages.clear()
for msg in remaining:
agent.messages.append({
"role": msg["role"],
"content": msg["content"],
})
count = len(agent.messages)
logger.info(
f"[AgentBridge] Synced agent memory for session={session_id}, messages={count}"
)
return count
def agent_reply(self, query: str, context: Context = None, def agent_reply(self, query: str, context: Context = None,
on_event=None, clear_history: bool = False) -> Reply: on_event=None, clear_history: bool = False) -> Reply:
""" """
@@ -464,6 +515,24 @@ class AgentBridge:
) )
self._trim_in_memory_to_turns(agent, scheduler_keep_turns) self._trim_in_memory_to_turns(agent, scheduler_keep_turns)
# Eagerly persist the user message BEFORE running the agent so the
# session and the user's bubble are immediately visible — even if
# the user switches away or refreshes before the reply finishes.
# The reply (assistant/tool messages) is appended once the run
# completes; the final persist skips this already-stored user turn.
pre_persisted = self._pre_persist_user_message(
session_id, query, context, clear_history
)
# Mark this session as mid-run so the self-evolution idle scan does
# not fire concurrently when a single turn runs longer than
# idle_minutes.
try:
from agent.evolution.trigger import mark_run_active
mark_run_active(agent, True)
except Exception:
pass
try: try:
# Use agent's run_stream method with event handler # Use agent's run_stream method with event handler
response = agent.run_stream( response = agent.run_stream(
@@ -473,6 +542,13 @@ class AgentBridge:
cancel_event=cancel_event, cancel_event=cancel_event,
) )
finally: finally:
# Clear the mid-run flag so idle scans can review this session.
try:
from agent.evolution.trigger import mark_run_active
mark_run_active(agent, False)
except Exception:
pass
# Restore original tools # Restore original tools
if context and context.get("is_scheduled_task"): if context and context.get("is_scheduled_task"):
agent.tools = original_tools agent.tools = original_tools
@@ -490,7 +566,11 @@ class AgentBridge:
# Persist new messages generated during this run # Persist new messages generated during this run
if session_id: if session_id:
channel_type = (context.get("channel_type") or "") if context else "" channel_type = (context.get("channel_type") or "") if context else ""
new_messages = getattr(agent, '_last_run_new_messages', []) new_messages = list(getattr(agent, '_last_run_new_messages', []))
# The leading user turn was already persisted eagerly above;
# drop it here so it isn't stored twice.
if pre_persisted and new_messages and new_messages[0].get("role") == "user":
new_messages = new_messages[1:]
if new_messages: if new_messages:
self._persist_messages(session_id, list(new_messages), channel_type) self._persist_messages(session_id, list(new_messages), channel_type)
else: else:
@@ -504,6 +584,23 @@ class AgentBridge:
except Exception as e: except Exception as e:
logger.warning(f"[AgentBridge] Failed to clear DB after recovery: {e}") logger.warning(f"[AgentBridge] Failed to clear DB after recovery: {e}")
# Record this user turn for the self-evolution idle trigger. Skip
# scheduler-injected / scheduled-task sessions so internal runs do
# not count as user activity.
if session_id and not session_id.startswith("scheduler_") and not (
context and context.get("is_scheduled_task")
):
try:
from agent.evolution.trigger import note_user_turn
ch = (context.get("channel_type") or "") if context else ""
rcv = (context.get("receiver") or "") if context else ""
is_group = bool(context.get("isgroup")) if context else False
# Only enable proactive push for single chats (group push is
# noisy); group sessions still evolve, just without notify.
note_user_turn(agent, channel_type=ch, receiver=(rcv if not is_group else ""))
except Exception:
pass
# Post-message hot-reload: detect edits to ~/cow/mcp.json and # Post-message hot-reload: detect edits to ~/cow/mcp.json and
# sync any new/removed MCP tools into the live agent in the # sync any new/removed MCP tools into the live agent in the
# background. Off the critical path so user latency is unaffected; # background. Off the critical path so user latency is unaffected;
@@ -689,6 +786,48 @@ class AgentBridge:
except Exception as e: except Exception as e:
logger.warning(f"[AgentBridge] Failed to sync API keys: {e}") logger.warning(f"[AgentBridge] Failed to sync API keys: {e}")
def _pre_persist_user_message(
self, session_id: str, query: str, context: Context, clear_history: bool
) -> bool:
"""Persist the user's message before the agent runs.
This makes a brand-new session (and the user's bubble) visible even if
the reply hasn't finished — switching away or refreshing no longer
loses the in-flight session. Returns True when the user turn was
stored, so the caller can skip it in the post-run persist.
Best-effort: any failure is swallowed and reported as not-persisted.
"""
if not session_id or not query:
return False
# Only real user turns: skip scheduler-injected / scheduled-task runs.
if session_id.startswith("scheduler_") or (
context and context.get("is_scheduled_task")
):
return False
try:
from config import conf
if not conf().get("conversation_persistence", True):
return False
from agent.memory import get_conversation_store
store = get_conversation_store()
# clear_history starts a fresh transcript: wipe the store first so
# the eager user turn becomes seq 0, matching in-memory state.
if clear_history:
store.clear_session(session_id)
channel_type = (context.get("channel_type") or "") if context else ""
user_msg = {
"role": "user",
"content": [{"type": "text", "text": query}],
}
store.append_messages(session_id, [user_msg], channel_type=channel_type)
return True
except Exception as e:
logger.warning(
f"[AgentBridge] Failed to pre-persist user message for session={session_id}: {e}"
)
return False
def _persist_messages( def _persist_messages(
self, session_id: str, new_messages: list, channel_type: str = "" self, session_id: str, new_messages: list, channel_type: str = ""
) -> None: ) -> None:

View File

@@ -524,6 +524,14 @@ class AgentInitializer:
logger.debug("[AgentInitializer] WebSearch skipped - no search provider configured") logger.debug("[AgentInitializer] WebSearch skipped - no search provider configured")
continue continue
# Skip evolution_undo when self-evolution is disabled: with no
# evolution there is nothing to roll back, so the tool is dead weight.
if tool_name == "evolution_undo":
from agent.evolution.config import get_evolution_config
if not get_evolution_config().enabled:
logger.debug("[AgentInitializer] evolution_undo skipped - self-evolution disabled")
continue
# Special handling for EnvConfig tool # Special handling for EnvConfig tool
if tool_name == "env_config": if tool_name == "env_config":
from agent.tools import EnvConfig from agent.tools import EnvConfig

View File

@@ -519,7 +519,10 @@ class ChatChannel(Channel):
def cancel_session(self, session_id): def cancel_session(self, session_id):
with self.lock: with self.lock:
if session_id in self.sessions: if session_id in self.sessions:
for future in self.futures[session_id]: # futures[session_id] is only created in consume() when a task is
# dispatched, so it may be absent if cancel happens right after
# produce() but before the first dispatch. Default to [].
for future in self.futures.get(session_id, []):
future.cancel() future.cancel()
cnt = self.sessions[session_id][0].qsize() cnt = self.sessions[session_id][0].qsize()
if cnt > 0: if cnt > 0:
@@ -529,7 +532,7 @@ class ChatChannel(Channel):
def cancel_all_session(self): def cancel_all_session(self):
with self.lock: with self.lock:
for session_id in self.sessions: for session_id in self.sessions:
for future in self.futures[session_id]: for future in self.futures.get(session_id, []):
future.cancel() future.cancel()
cnt = self.sessions[session_id][0].qsize() cnt = self.sessions[session_id][0].qsize()
if cnt > 0: if cnt > 0:

View File

@@ -285,7 +285,7 @@
</button> </button>
<!-- Docs Link --> <!-- Docs Link -->
<a href="https://docs.cowagent.ai" target="_blank" rel="noopener noreferrer" <a id="docs-link" href="https://docs.cowagent.ai" target="_blank" rel="noopener noreferrer"
class="p-2 rounded-lg text-slate-500 dark:text-slate-400 hover:bg-slate-100 dark:hover:bg-white/10 class="p-2 rounded-lg text-slate-500 dark:text-slate-400 hover:bg-slate-100 dark:hover:bg-white/10
cursor-pointer transition-colors duration-150" title="Documentation"> cursor-pointer transition-colors duration-150" title="Documentation">
<i class="fas fa-book text-base"></i> <i class="fas fa-book text-base"></i>
@@ -620,6 +620,18 @@
after:rounded-full after:h-4 after:w-4 after:transition-all peer-checked:after:translate-x-full"></div> after:rounded-full after:h-4 after:w-4 after:transition-all peer-checked:after:translate-x-full"></div>
</label> </label>
</div> </div>
<div class="flex items-center justify-between">
<label class="flex items-center gap-1.5 text-sm font-medium text-slate-600 dark:text-slate-400">
<span data-i18n="config_self_evolution">Self-Evolution</span>
<span class="cfg-tip" data-tip-key="config_self_evolution_hint"><i class="fas fa-circle-question"></i></span>
</label>
<label class="relative inline-flex items-center cursor-pointer">
<input id="cfg-self-evolution" type="checkbox" class="sr-only peer">
<div class="w-9 h-5 bg-slate-200 dark:bg-slate-700 peer-checked:bg-primary-400 rounded-full
after:content-[''] after:absolute after:top-[2px] after:left-[2px] after:bg-white
after:rounded-full after:h-4 after:w-4 after:transition-all peer-checked:after:translate-x-full"></div>
</label>
</div>
<div class="flex items-center justify-end gap-3 pt-1"> <div class="flex items-center justify-end gap-3 pt-1">
<span id="cfg-agent-status" class="text-xs text-primary-500 opacity-0 transition-opacity duration-300"></span> <span id="cfg-agent-status" class="text-xs text-primary-500 opacity-0 transition-opacity duration-300"></span>
<button id="cfg-agent-save" <button id="cfg-agent-save"
@@ -760,7 +772,7 @@
</button> </button>
<button id="memory-tab-dreams" onclick="switchMemoryTab('dreams')" <button id="memory-tab-dreams" onclick="switchMemoryTab('dreams')"
class="memory-tab px-3 py-1.5 rounded-md text-xs font-medium cursor-pointer transition-colors duration-150"> class="memory-tab px-3 py-1.5 rounded-md text-xs font-medium cursor-pointer transition-colors duration-150">
<i class="fas fa-moon mr-1.5"></i><span data-i18n="memory_tab_dreams">梦境日记</span> <i class="fas fa-seedling mr-1.5"></i><span data-i18n="memory_tab_dreams">自主进化</span>
</button> </button>
</div> </div>
</div> </div>
@@ -828,6 +840,11 @@
</div> </div>
<div class="flex items-center gap-2"> <div class="flex items-center gap-2">
<span id="knowledge-stats" class="text-xs text-slate-400 dark:text-slate-500 hidden sm:inline"></span> <span id="knowledge-stats" class="text-xs text-slate-400 dark:text-slate-500 hidden sm:inline"></span>
<span id="knowledge-action-status" class="text-xs opacity-0 transition-opacity duration-200"></span>
<button onclick="createKnowledgeCategory()"
class="flex items-center gap-1.5 px-3 py-1.5 rounded-lg bg-primary-500 hover:bg-primary-600 text-white text-xs font-medium cursor-pointer transition-colors">
<i class="fas fa-folder-plus"></i><span data-i18n="knowledge_new_category">新建分类</span>
</button>
<div class="flex items-center bg-slate-100 dark:bg-white/10 rounded-lg p-0.5"> <div class="flex items-center bg-slate-100 dark:bg-white/10 rounded-lg p-0.5">
<button id="knowledge-tab-docs" onclick="switchKnowledgeTab('docs')" <button id="knowledge-tab-docs" onclick="switchKnowledgeTab('docs')"
class="knowledge-tab px-3 py-1.5 rounded-md text-xs font-medium cursor-pointer transition-colors duration-150 active"> class="knowledge-tab px-3 py-1.5 rounded-md text-xs font-medium cursor-pointer transition-colors duration-150 active">
@@ -983,6 +1000,14 @@
<h2 class="text-xl font-bold text-slate-800 dark:text-slate-100" data-i18n="tasks_title">定时任务</h2> <h2 class="text-xl font-bold text-slate-800 dark:text-slate-100" data-i18n="tasks_title">定时任务</h2>
<p class="text-sm text-slate-500 dark:text-slate-400 mt-1" data-i18n="tasks_desc">查看和管理定时任务</p> <p class="text-sm text-slate-500 dark:text-slate-400 mt-1" data-i18n="tasks_desc">查看和管理定时任务</p>
</div> </div>
<div class="flex items-center gap-2">
<button id="task-refresh-btn" onclick="refreshTasksView()"
class="px-3 py-2 rounded-lg border border-slate-200 dark:border-white/10
text-slate-600 dark:text-slate-300 hover:bg-slate-50 dark:hover:bg-white/5
text-sm font-medium cursor-pointer transition-colors duration-150">
<i class="fas fa-refresh text-xs"></i>
</button>
</div>
</div> </div>
<div id="tasks-empty" class="flex flex-col items-center justify-center py-20"> <div id="tasks-empty" class="flex flex-col items-center justify-center py-20">
<div class="w-16 h-16 rounded-2xl bg-rose-50 dark:bg-rose-900/20 flex items-center justify-center mb-4"> <div class="w-16 h-16 rounded-2xl bg-rose-50 dark:bg-rose-900/20 flex items-center justify-center mb-4">
@@ -1056,6 +1081,34 @@
</div><!-- /main-content --> </div><!-- /main-content -->
</div><!-- /app --> </div><!-- /app -->
<!-- Knowledge Action Dialog -->
<div id="knowledge-dialog-overlay" class="fixed inset-0 bg-black/50 z-[200] hidden flex items-center justify-center">
<div class="bg-white dark:bg-[#1A1A1A] rounded-2xl border border-slate-200 dark:border-white/10 shadow-xl w-full max-w-md mx-4 overflow-hidden">
<div class="p-6">
<div class="flex items-center gap-3 mb-5">
<div class="w-10 h-10 rounded-xl bg-emerald-50 dark:bg-emerald-900/20 flex items-center justify-center">
<i id="knowledge-dialog-icon" class="fas fa-folder text-emerald-500"></i>
</div>
<div>
<h3 id="knowledge-dialog-title" class="font-semibold text-slate-800 dark:text-slate-100"></h3>
<p id="knowledge-dialog-subtitle" class="text-xs text-slate-400 dark:text-slate-500 mt-0.5"></p>
</div>
</div>
<label id="knowledge-dialog-label" class="block text-sm font-medium text-slate-600 dark:text-slate-300 mb-1.5"></label>
<input id="knowledge-dialog-input" type="text"
class="w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600 bg-slate-50 dark:bg-white/5 text-sm text-slate-800 dark:text-slate-100 focus:outline-none focus:border-primary-500">
<select id="knowledge-dialog-select"
class="hidden w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600 bg-slate-50 dark:bg-[#222] text-sm text-slate-800 dark:text-slate-100 focus:outline-none focus:border-primary-500"></select>
<p id="knowledge-dialog-hint" class="mt-2 text-xs text-slate-400 dark:text-slate-500"></p>
<p id="knowledge-dialog-error" class="mt-2 text-xs text-red-500 hidden"></p>
</div>
<div class="flex justify-end gap-3 px-6 py-4 border-t border-slate-100 dark:border-white/5">
<button id="knowledge-dialog-cancel" class="px-4 py-2 rounded-lg border border-slate-200 dark:border-white/10 text-slate-600 dark:text-slate-300 text-sm hover:bg-slate-50 dark:hover:bg-white/5">取消</button>
<button id="knowledge-dialog-submit" class="px-4 py-2 rounded-lg bg-primary-500 hover:bg-primary-600 text-white text-sm font-medium disabled:opacity-50">确定</button>
</div>
</div>
</div>
<!-- Confirm Dialog --> <!-- Confirm Dialog -->
<div id="confirm-dialog-overlay" class="fixed inset-0 bg-black/50 z-[200] hidden flex items-center justify-center"> <div id="confirm-dialog-overlay" class="fixed inset-0 bg-black/50 z-[200] hidden flex items-center justify-center">
<div class="bg-white dark:bg-[#1A1A1A] rounded-2xl border border-slate-200 dark:border-white/10 shadow-xl <div class="bg-white dark:bg-[#1A1A1A] rounded-2xl border border-slate-200 dark:border-white/10 shadow-xl
@@ -1153,6 +1206,240 @@
</div> </div>
</div> </div>
<!-- Custom Provider Modal (multiple OpenAI-compatible providers) -->
<div id="custom-provider-modal-overlay" class="fixed inset-0 bg-black/50 z-[100] hidden flex items-center justify-center">
<div class="bg-white dark:bg-[#1A1A1A] rounded-2xl border border-slate-200 dark:border-white/10 shadow-xl
w-full max-w-md mx-4">
<div class="p-6">
<div class="flex items-center gap-3 mb-5">
<div class="w-10 h-10 rounded-xl bg-primary-50 dark:bg-primary-900/20 flex items-center justify-center flex-shrink-0">
<i class="fas fa-sliders text-primary-500"></i>
</div>
<div class="min-w-0 flex-1">
<h3 id="custom-provider-modal-title" class="font-semibold text-slate-800 dark:text-slate-100 text-base"></h3>
</div>
</div>
<div class="space-y-4">
<div>
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5" data-i18n="models_custom_name">名称</label>
<input id="custom-provider-name" type="text" autocomplete="off" data-1p-ignore data-lpignore="true"
class="w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-white/5 text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 transition-colors">
</div>
<div>
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">API Base</label>
<input id="custom-provider-base" type="text"
class="w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-white/5 text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 font-mono transition-colors"
placeholder="https://...../v1">
</div>
<div>
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">API Key</label>
<input id="custom-provider-key" type="text" autocomplete="off" data-1p-ignore data-lpignore="true"
class="w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-white/5 text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 font-mono transition-colors">
</div>
</div>
</div>
<div class="flex items-center justify-between gap-3 px-6 py-4 border-t border-slate-100 dark:border-white/5 rounded-b-2xl">
<button id="custom-provider-modal-delete"
class="px-3 py-2 rounded-lg text-sm font-medium text-red-500 hover:bg-red-50 dark:hover:bg-red-900/20
cursor-pointer transition-colors duration-150 hidden"
data-i18n="models_custom_delete">删除</button>
<span id="custom-provider-modal-status"
class="flex-1 text-xs text-primary-500 opacity-0 transition-opacity duration-300 text-left"></span>
<button id="custom-provider-modal-cancel"
class="px-4 py-2 rounded-lg border border-slate-200 dark:border-white/10
text-slate-600 dark:text-slate-300 text-sm font-medium
hover:bg-slate-50 dark:hover:bg-white/5
cursor-pointer transition-colors duration-150"
data-i18n="cancel">取消</button>
<button id="custom-provider-modal-save"
class="px-4 py-2 rounded-lg bg-primary-500 hover:bg-primary-600 text-white text-sm font-medium
cursor-pointer transition-colors duration-150 disabled:opacity-50 disabled:cursor-not-allowed"
data-i18n="save">保存</button>
</div>
</div>
</div>
<!-- Task Edit Modal -->
<div id="task-edit-modal-overlay" class="fixed inset-0 bg-black/50 z-[100] hidden flex items-center justify-center">
<div class="bg-white dark:bg-[#1A1A1A] rounded-2xl border border-slate-200 dark:border-white/10 shadow-xl
w-full max-w-2xl mx-4 max-h-[90vh] overflow-y-auto">
<div class="p-6">
<div class="flex items-center gap-3 mb-5">
<div class="w-10 h-10 rounded-xl bg-primary-50 dark:bg-primary-900/20 flex items-center justify-center flex-shrink-0">
<i class="fas fa-clock text-primary-500"></i>
</div>
<div class="min-w-0 flex-1">
<h3 class="font-semibold text-slate-800 dark:text-slate-100 text-base" data-i18n="task_edit_title">编辑定时任务</h3>
<p id="task-edit-modal-subtitle" class="text-xs text-slate-500 dark:text-slate-400 mt-0.5 font-mono"></p>
</div>
</div>
<div class="space-y-4">
<!-- 任务名称和启用状态 -->
<div class="flex gap-4 items-end">
<div class="flex-1">
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">
<span data-i18n="task_name">任务名称</span>
</label>
<input id="task-edit-name" type="text"
class="w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-white/5 text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 transition-colors"
placeholder="任务名称">
</div>
<div class="flex items-center gap-2 pb-[2px]">
<label class="text-xs font-medium text-slate-600 dark:text-slate-400">
<span data-i18n="task_enabled">启用</span>
</label>
<label class="relative inline-flex items-center cursor-pointer">
<input type="checkbox" id="task-edit-enabled" class="sr-only peer">
<div class="w-11 h-6 bg-slate-200 peer-focus:outline-none rounded-full peer peer-checked:after:translate-x-full peer-checked:after:border-white after:content-[''] after:absolute after:top-[2px] after:left-[2px] after:bg-white after:rounded-full after:h-5 after:w-5 after:transition-all peer-checked:bg-primary-500 dark:bg-slate-600 dark:peer-checked:bg-primary-500"></div>
</label>
</div>
</div>
<!-- 调度类型 + 调度值 -->
<div class="grid grid-cols-2 gap-4">
<div>
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">
<span data-i18n="task_schedule_type">调度类型</span>
</label>
<select id="task-edit-schedule-type"
class="w-full px-3 py-2 pr-8 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-[#1A1A1A] text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 transition-colors
appearance-none bg-no-repeat bg-right"
style="background-image: url('data:image/svg+xml;charset=UTF-8,%3csvg xmlns=%27http://www.w3.org/2000/svg%27 viewBox=%270 0 20 20%27 fill=%27none%27%3e%3cpath d=%27M7 7l3 3 3-3%27 stroke=%27%23888%27 stroke-width=%272%27 stroke-linecap=%27round%27 stroke-linejoin=%27round%27/%3e%3c/svg%3e'); background-position: right 0.5rem center; background-size: 1.25rem;">
<option value="cron" data-i18n="task_schedule_cron">Cron 表达式</option>
<option value="interval" data-i18n="task_schedule_interval">固定间隔</option>
<option value="once" data-i18n="task_schedule_once">一次性任务</option>
</select>
</div>
<!-- Cron 表达式 -->
<div id="task-edit-cron-wrap">
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">
<span data-i18n="task_cron_expression">Cron 表达式</span>
</label>
<input id="task-edit-cron-expression" type="text"
class="w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-white/5 text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 font-mono transition-colors"
placeholder="0 9 * * *">
</div>
<!-- 固定间隔 -->
<div id="task-edit-interval-wrap" class="hidden">
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">
<span data-i18n="task_interval_seconds">间隔秒数</span>
</label>
<input id="task-edit-interval-seconds" type="number" min="60"
class="w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-white/5 text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 transition-colors"
placeholder="3600">
</div>
<!-- 一次性任务时间 -->
<div id="task-edit-once-wrap" class="hidden">
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">
<span data-i18n="task_once_time">执行时间</span>
</label>
<input id="task-edit-once-time" type="datetime-local" step="1"
class="w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-white/5 text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 transition-colors
cursor-pointer"
onclick="this.showPicker && this.showPicker()">
</div>
</div>
<!-- Cron/Interval 提示 -->
<p id="task-edit-cron-hint" class="text-xs text-slate-400 dark:text-slate-500">
<span data-i18n="task_cron_hint">格式: 分 时 日 月 周,例如 "0 9 * * *" 表示每天 9:00</span>
</p>
<p id="task-edit-interval-hint" class="text-xs text-slate-400 dark:text-slate-500 hidden">
<span data-i18n="task_interval_hint">最小 60 秒,例如 3600 表示每小时执行一次</span>
</p>
<!-- 动作类型 + 通道类型 -->
<div class="grid grid-cols-2 gap-4">
<div>
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">
<span data-i18n="task_action_type">动作类型</span>
</label>
<select id="task-edit-action-type"
class="w-full px-3 py-2 pr-8 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-[#1A1A1A] text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 transition-colors
appearance-none bg-no-repeat bg-right"
style="background-image: url('data:image/svg+xml;charset=UTF-8,%3csvg xmlns=%27http://www.w3.org/2000/svg%27 viewBox=%270 0 20 20%27 fill=%27none%27%3e%3cpath d=%27M7 7l3 3 3-3%27 stroke=%27%23888%27 stroke-width=%272%27 stroke-linecap=%27round%27 stroke-linejoin=%27round%27/%3e%3c/svg%3e'); background-position: right 0.5rem center; background-size: 1.25rem;">
<option value="send_message" data-i18n="task_action_send_message">发送消息</option>
<option value="agent_task" data-i18n="task_action_agent_task">AI 任务</option>
</select>
</div>
<div>
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">
<span data-i18n="task_channel_type">通道类型</span>
</label>
<select id="task-edit-channel-type"
class="w-full px-3 py-2 pr-8 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-[#1A1A1A] text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 transition-colors
appearance-none bg-no-repeat bg-right
disabled:opacity-100 disabled:text-slate-800 dark:disabled:text-slate-300 disabled:bg-slate-100 dark:disabled:bg-[#252525] disabled:cursor-not-allowed"
style="background-image: url('data:image/svg+xml;charset=UTF-8,%3csvg xmlns=%27http://www.w3.org/2000/svg%27 viewBox=%270 0 20 20%27 fill=%27none%27%3e%3cpath d=%27M7 7l3 3 3-3%27 stroke=%27%23888%27 stroke-width=%272%27 stroke-linecap=%27round%27 stroke-linejoin=%27round%27/%3e%3c/svg%3e'); background-position: right 0.5rem center; background-size: 1.25rem;">
</select>
<p class="text-xs text-slate-400 dark:text-slate-500 mt-1">
<span data-i18n="task_channel_hint">选择定时消息发送的通道</span>
</p>
</div>
</div>
<!-- 隐藏的接收者ID字段自动填充 -->
<input id="task-edit-receiver" type="hidden" value="">
<!-- 消息内容/任务描述 -->
<div>
<label class="block text-sm font-medium text-slate-600 dark:text-slate-400 mb-1.5">
<span id="task-edit-content-label" data-i18n="task_message_content">消息内容</span>
</label>
<textarea id="task-edit-content" rows="3"
class="w-full px-3 py-2 rounded-lg border border-slate-200 dark:border-slate-600
bg-slate-50 dark:bg-white/5 text-sm text-slate-800 dark:text-slate-100
focus:outline-none focus:border-primary-500 transition-colors resize-none"
placeholder="输入消息内容或任务描述"></textarea>
</div>
</div>
</div>
<div class="flex items-center justify-between gap-3 px-6 py-4 border-t border-slate-100 dark:border-white/5 rounded-b-2xl">
<button id="task-edit-modal-delete"
class="px-4 py-2 rounded-lg text-sm font-medium text-red-500 hover:bg-red-50 dark:hover:bg-red-900/20
cursor-pointer transition-colors duration-150 hidden"
data-i18n="task_delete_btn">删除任务</button>
<span id="task-edit-modal-status"
class="flex-1 text-xs text-primary-500 opacity-0 transition-opacity duration-300 text-left"></span>
<button id="task-edit-modal-cancel"
class="px-4 py-2 rounded-lg border border-slate-200 dark:border-white/10
text-slate-600 dark:text-slate-300 text-sm font-medium
hover:bg-slate-50 dark:hover:bg-white/5
cursor-pointer transition-colors duration-150"
data-i18n="cancel">取消</button>
<button id="task-edit-modal-save"
class="px-4 py-2 rounded-lg bg-primary-500 hover:bg-primary-600 text-white text-sm font-medium
cursor-pointer transition-colors duration-150 disabled:opacity-50 disabled:cursor-not-allowed"
data-i18n="save">保存</button>
</div>
</div>
</div>
<script defer src="assets/js/console.js"></script> <script defer src="assets/js/console.js"></script>
</body> </body>
</html> </html>

View File

@@ -244,6 +244,52 @@
} }
.dark .session-delete:hover { background: rgba(239, 68, 68, 0.15); } .dark .session-delete:hover { background: rgba(239, 68, 68, 0.15); }
/* Rename button: shares the look of the delete button, sits to its left.
Negative right margin tightens the gap to the delete button only. */
.session-rename {
flex-shrink: 0;
margin-right: -6px;
width: 22px;
height: 22px;
display: flex;
align-items: center;
justify-content: center;
border-radius: 6px;
color: #9ca3af;
font-size: 11px;
opacity: 0;
transition: opacity 0.15s, color 0.15s, background 0.15s;
cursor: pointer;
background: none;
border: none;
padding: 0;
}
.session-item:hover .session-rename { opacity: 1; }
.session-rename:hover {
color: #4ABE6E;
background: rgba(74, 190, 110, 0.12);
}
.dark .session-rename:hover { background: rgba(74, 190, 110, 0.18); }
/* Inline title editor */
.session-title-input {
flex: 1;
min-width: 0;
font-size: 13px;
font-family: inherit;
color: #111827;
background: #ffffff;
border: 1px solid #4ABE6E;
border-radius: 6px;
padding: 2px 6px;
outline: none;
}
.dark .session-title-input {
color: #e5e5e5;
background: rgba(255, 255, 255, 0.06);
border-color: #4ABE6E;
}
/* Context Divider */ /* Context Divider */
.context-divider { .context-divider {
display: flex; display: flex;
@@ -605,6 +651,18 @@
color: inherit; color: inherit;
} }
.tool-error-text { color: #f87171; } .tool-error-text { color: #f87171; }
.tool-live-output:empty { display: none; }
.tool-streaming .tool-live-output:not(:empty)::after {
content: ' ';
display: inline-block;
width: 0.45em;
height: 1em;
margin-left: 0.15em;
vertical-align: -0.15em;
background: currentColor;
animation: tool-cursor-blink 1s steps(1) infinite;
}
@keyframes tool-cursor-blink { 50% { opacity: 0; } }
/* Log level highlighting */ /* Log level highlighting */
.log-line { display: block; } .log-line { display: block; }
@@ -854,6 +912,14 @@
font-size: 11px; font-size: 11px;
flex-shrink: 0; flex-shrink: 0;
} }
/* "Custom" row is an add-new action: trailing + instead of ✓. */
.vendor-picker-add-mark {
margin-left: auto;
padding-left: 12px;
color: #94a3b8;
font-size: 11px;
flex-shrink: 0;
}
/* Chat Input */ /* Chat Input */
#chat-input { #chat-input {
@@ -1191,6 +1257,34 @@
background: #EDFDF3; background: #EDFDF3;
color: #228547; color: #228547;
} }
.knowledge-actions {
display: flex;
gap: 2px;
margin-left: auto;
opacity: 0;
transition: opacity 0.15s;
}
.knowledge-tree-file:hover .knowledge-actions,
.knowledge-tree-group-btn:hover .knowledge-actions,
.knowledge-tree-file:focus-within .knowledge-actions,
.knowledge-tree-group-btn:focus-within .knowledge-actions {
opacity: 1;
}
.knowledge-action {
padding: 3px 5px;
border-radius: 5px;
color: #94a3b8;
font-size: 9px;
}
.knowledge-action:hover {
color: #228547;
background: rgba(34, 133, 71, 0.08);
}
.knowledge-action.danger:hover {
color: #ef4444;
background: rgba(239, 68, 68, 0.08);
}
.dark .knowledge-tree-file:hover { .dark .knowledge-tree-file:hover {
background: rgba(255,255,255,0.06); background: rgba(255,255,255,0.06);
color: #e2e8f0; color: #e2e8f0;
@@ -1399,3 +1493,181 @@
.agent-cancelled-tag { .agent-cancelled-tag {
font-style: italic; font-style: italic;
} }
/* =====================================================================
Code Block Enhancements
===================================================================== */
.code-block-wrapper {
position: relative;
margin: 1em 0;
border-radius: 8px;
overflow: hidden;
background: #f8f9fa;
border: 1px solid #e2e8f0;
}
.dark .code-block-wrapper {
background: #1e293b;
border-color: #334155;
}
.code-block-header {
display: flex;
justify-content: space-between;
align-items: center;
padding: 0.5em 1em;
background: #e2e8f0;
border-bottom: 1px solid #cbd5e1;
font-size: 0.85em;
}
.dark .code-block-header {
background: #0f172a;
border-bottom-color: #334155;
}
.code-block-lang {
color: #64748b;
font-weight: 500;
text-transform: lowercase;
}
.dark .code-block-lang {
color: #94a3b8;
}
.code-copy-btn {
background: transparent;
border: none;
color: #64748b;
cursor: pointer;
padding: 0.25em 0.5em;
border-radius: 4px;
transition: all 0.2s;
font-size: 0.9em;
}
.code-copy-btn:hover {
background: rgba(100, 116, 139, 0.1);
color: #475569;
}
.dark .code-copy-btn {
color: #94a3b8;
}
.dark .code-copy-btn:hover {
background: rgba(148, 163, 184, 0.1);
color: #cbd5e1;
}
.code-block-wrapper pre {
margin: 0;
border-radius: 0;
border: none;
}
/* =====================================================================
Drag and Drop Overlay
===================================================================== */
/* Anchor the absolutely-positioned overlay to the chat view. */
#view-chat {
position: relative;
}
.drag-overlay {
position: absolute;
top: 0;
left: 0;
right: 0;
bottom: 0;
background: rgba(59, 130, 246, 0.1);
backdrop-filter: blur(2px);
display: flex;
align-items: center;
justify-content: center;
z-index: 9999;
pointer-events: none;
opacity: 0;
transition: opacity 0.2s;
}
.drag-overlay.active {
opacity: 1;
}
.drag-overlay.hidden {
display: none;
}
.drag-overlay-content {
background: white;
border: 3px dashed #3b82f6;
border-radius: 16px;
padding: 3em 4em;
text-align: center;
box-shadow: 0 20px 25px -5px rgba(0, 0, 0, 0.1);
animation: bounce 1s ease infinite;
}
.dark .drag-overlay-content {
background: #1e293b;
border-color: #60a5fa;
}
.drag-overlay-content i {
font-size: 4em;
color: #3b82f6;
margin-bottom: 0.5em;
}
.dark .drag-overlay-content i {
color: #60a5fa;
}
.drag-overlay-content p {
font-size: 1.5em;
font-weight: 600;
color: #1e293b;
margin: 0;
}
.dark .drag-overlay-content p {
color: #f1f5f9;
}
@keyframes bounce {
0%, 100% { transform: translateY(0); }
50% { transform: translateY(-10px); }
}
/* =====================================================================
Message Action Buttons
===================================================================== */
.edit-msg-btn,
.delete-msg-btn,
.regenerate-msg-btn {
opacity: 0;
transition: opacity 0.2s, color 0.2s;
}
.user-message-group:hover .edit-msg-btn,
.user-message-group:hover .delete-msg-btn,
.bot-message-group:hover .regenerate-msg-btn {
opacity: 1;
}
.edit-msg-btn:hover,
.regenerate-msg-btn:hover {
color: #3b82f6 !important;
}
.delete-msg-btn:hover {
color: #ef4444 !important;
}
.edit-msg-btn:disabled,
.delete-msg-btn:disabled {
cursor: not-allowed !important;
opacity: 0.35 !important;
}

File diff suppressed because it is too large Load Diff

View File

@@ -251,6 +251,21 @@ class WebChannel(ChatChannel):
"""生成唯一的请求ID""" """生成唯一的请求ID"""
return str(uuid.uuid4()) return str(uuid.uuid4())
def _fetch_latest_pair_seqs(self, session_id: str):
"""Query the conversation store for the latest user/bot message seqs.
Returned as ``{"user_seq": int|None, "bot_seq": int|None}``; used to
attach seq metadata onto the SSE ``done`` event so the frontend can
wire edit / regenerate buttons for live-streamed bubbles without a
page refresh.
"""
try:
from agent.memory import get_conversation_store
return get_conversation_store().get_latest_pair_seqs(session_id)
except Exception as e:
logger.debug(f"[WebChannel] _fetch_latest_pair_seqs failed: {e}")
return {"user_seq": None, "bot_seq": None}
def send(self, reply: Reply, context: Context): def send(self, reply: Reply, context: Context):
try: try:
if reply.type in self.NOT_SUPPORT_REPLYTYPE: if reply.type in self.NOT_SUPPORT_REPLYTYPE:
@@ -291,11 +306,14 @@ class WebChannel(ChatChannel):
if reply.type in (ReplyType.IMAGE_URL, ReplyType.FILE) and content.startswith("file://"): if reply.type in (ReplyType.IMAGE_URL, ReplyType.FILE) and content.startswith("file://"):
text_content = getattr(reply, 'text_content', '') text_content = getattr(reply, 'text_content', '')
if text_content: if text_content:
seqs = self._fetch_latest_pair_seqs(session_id)
self.sse_queues[request_id].put({ self.sse_queues[request_id].put({
"type": "done", "type": "done",
"content": text_content, "content": text_content,
"request_id": request_id, "request_id": request_id,
"timestamp": time.time() "timestamp": time.time(),
"user_seq": seqs.get("user_seq"),
"bot_seq": seqs.get("bot_seq"),
}) })
logger.debug(f"SSE skipped duplicate file for request {request_id}") logger.debug(f"SSE skipped duplicate file for request {request_id}")
return return
@@ -307,11 +325,14 @@ class WebChannel(ChatChannel):
logger.debug(f"SSE skipped http media reply for request {request_id}") logger.debug(f"SSE skipped http media reply for request {request_id}")
return return
seqs = self._fetch_latest_pair_seqs(session_id)
self.sse_queues[request_id].put({ self.sse_queues[request_id].put({
"type": "done", "type": "done",
"content": content, "content": content,
"request_id": request_id, "request_id": request_id,
"timestamp": time.time() "timestamp": time.time(),
"user_seq": seqs.get("user_seq"),
"bot_seq": seqs.get("bot_seq"),
}) })
logger.debug(f"SSE done sent for request {request_id}") logger.debug(f"SSE done sent for request {request_id}")
# Auto-trigger TTS once the bot finishes its text reply. The # Auto-trigger TTS once the bot finishes its text reply. The
@@ -339,6 +360,13 @@ class WebChannel(ChatChannel):
): ):
logger.debug(f"Polling skipped duplicate file reply for session {session_id}") logger.debug(f"Polling skipped duplicate file reply for session {session_id}")
return return
# SSE-enabled requests already stream the text reply to the
# client. Do NOT also enqueue it for polling: if the user
# switched away mid-run, the queued copy would resurface as a
# duplicate bubble when they return and poll the session.
if reply.type == ReplyType.TEXT and context.get("on_event") is not None:
logger.debug(f"Polling skipped SSE text reply for session {session_id}")
return
response_data = { response_data = {
"type": str(reply.type), "type": str(reply.type),
"content": content, "content": content,
@@ -404,7 +432,15 @@ class WebChannel(ChatChannel):
elif event_type == "tool_execution_start": elif event_type == "tool_execution_start":
tool_name = data.get("tool_name", "tool") tool_name = data.get("tool_name", "tool")
arguments = data.get("arguments", {}) arguments = data.get("arguments", {})
q.put({"type": "tool_start", "tool": tool_name, "arguments": arguments}) q.put({"type": "tool_start", "tool_call_id": data.get("tool_call_id"), "tool": tool_name, "arguments": arguments})
elif event_type == "tool_execution_progress":
q.put({
"type": "tool_progress",
"tool_call_id": data.get("tool_call_id"),
"tool": data.get("tool_name", "tool"),
"content": str(data.get("message", ""))[-4 * 1024:],
})
elif event_type == "tool_execution_end": elif event_type == "tool_execution_end":
tool_name = data.get("tool_name", "tool") tool_name = data.get("tool_name", "tool")
@@ -417,6 +453,7 @@ class WebChannel(ChatChannel):
result_str = result_str[:2000] + "" result_str = result_str[:2000] + ""
q.put({ q.put({
"type": "tool_end", "type": "tool_end",
"tool_call_id": data.get("tool_call_id"),
"tool": tool_name, "tool": tool_name,
"status": status, "status": status,
"result": result_str, "result": result_str,
@@ -919,7 +956,12 @@ class WebChannel(ChatChannel):
post_done = True post_done = True
post_deadline = time.time() + 2 # 2s post-attach tail post_deadline = time.time() + 2 # 2s post-attach tail
finally: finally:
self.sse_queues.pop(request_id, None) # Only drop the queue once the reply is actually complete. If the
# client disconnected early (e.g. switched sessions and will
# re-attach with the same request_id), keep the queue so the new
# connection can resume reading the remaining events.
if post_done or time.time() >= deadline:
self.sse_queues.pop(request_id, None)
def cancel_request(self): def cancel_request(self):
""" """
@@ -1025,22 +1067,44 @@ class WebChannel(ChatChannel):
self._cleanup_stale_voice_recordings() self._cleanup_stale_voice_recordings()
# Print available channel types # Print available channel types (ordered by language: prioritize
# locally-popular channels for the current UI language)
logger.info( logger.info(
"[WebChannel] Available channels (edit `channel_type` in config.json to switch, separate multiple with commas):") "[WebChannel] Available channels (edit `channel_type` in config.json to switch, separate multiple with commas):")
logger.info("[WebChannel] 1. web - Web") zh_channels = [
logger.info("[WebChannel] 2. terminal - Terminal") ("web", "Web"),
logger.info("[WebChannel] 3. weixin - WeChat") ("terminal", "Terminal"),
logger.info("[WebChannel] 4. feishu - Feishu") ("weixin", "WeChat"),
logger.info("[WebChannel] 5. dingtalk - DingTalk") ("feishu", "Feishu"),
logger.info("[WebChannel] 6. wecom_bot - WeCom Bot") ("dingtalk", "DingTalk"),
logger.info("[WebChannel] 7. wechatcom_app - WeCom App") ("wecom_bot", "WeCom Bot"),
logger.info("[WebChannel] 8. wechat_kf - WeChat Customer Service") ("wechatcom_app", "WeCom App"),
logger.info("[WebChannel] 9. wechatmp - WeChat Official Account") ("wechat_kf", "WeChat Customer Service"),
logger.info("[WebChannel] 10. wechatmp_service - WeChat Official Account (Service)") ("wechatmp", "WeChat Official Account"),
logger.info("[WebChannel] 11. telegram - Telegram") ("wechatmp_service", "WeChat Official Account (Service)"),
logger.info("[WebChannel] 12. slack - Slack") ("telegram", "Telegram"),
logger.info("[WebChannel] 13. discord - Discord") ("slack", "Slack"),
("discord", "Discord"),
]
en_channels = [
("web", "Web"),
("terminal", "Terminal"),
("telegram", "Telegram"),
("slack", "Slack"),
("discord", "Discord"),
("weixin", "WeChat"),
("feishu", "Feishu"),
("dingtalk", "DingTalk"),
("wecom_bot", "WeCom Bot"),
("wechatcom_app", "WeCom App"),
("wechat_kf", "WeChat Customer Service"),
("wechatmp", "WeChat Official Account"),
("wechatmp_service", "WeChat Official Account (Service)"),
]
channels = en_channels if i18n.get_language() == "en" else zh_channels
name_width = max(len(name) for name, _ in channels)
for idx, (name, label) in enumerate(channels, 1):
logger.info(f"[WebChannel] {idx:>2}. {name:<{name_width}} - {label}")
logger.info("[WebChannel] ✅ Web console is running") logger.info("[WebChannel] ✅ Web console is running")
logger.info(f"[WebChannel] 🌐 Local access: http://localhost:{port}") logger.info(f"[WebChannel] 🌐 Local access: http://localhost:{port}")
if is_public_bind: if is_public_bind:
@@ -1090,12 +1154,17 @@ class WebChannel(ChatChannel):
'/api/knowledge/list', 'KnowledgeListHandler', '/api/knowledge/list', 'KnowledgeListHandler',
'/api/knowledge/read', 'KnowledgeReadHandler', '/api/knowledge/read', 'KnowledgeReadHandler',
'/api/knowledge/graph', 'KnowledgeGraphHandler', '/api/knowledge/graph', 'KnowledgeGraphHandler',
'/api/knowledge/action', 'KnowledgeActionHandler',
'/api/scheduler', 'SchedulerHandler', '/api/scheduler', 'SchedulerHandler',
'/api/scheduler/toggle', 'SchedulerToggleHandler',
'/api/scheduler/update', 'SchedulerUpdateHandler',
'/api/scheduler/delete', 'SchedulerDeleteHandler',
'/api/sessions', 'SessionsHandler', '/api/sessions', 'SessionsHandler',
'/api/sessions/(.*)/generate_title', 'SessionTitleHandler', '/api/sessions/(.*)/generate_title', 'SessionTitleHandler',
'/api/sessions/(.*)/clear_context', 'SessionClearContextHandler', '/api/sessions/(.*)/clear_context', 'SessionClearContextHandler',
'/api/sessions/(.*)', 'SessionDetailHandler', '/api/sessions/(.*)', 'SessionDetailHandler',
'/api/history', 'HistoryHandler', '/api/history', 'HistoryHandler',
'/api/messages/delete', 'MessageDeleteHandler',
'/api/logs', 'LogsHandler', '/api/logs', 'LogsHandler',
'/api/version', 'VersionHandler', '/api/version', 'VersionHandler',
'/assets/(.*)', 'AssetsHandler', '/assets/(.*)', 'AssetsHandler',
@@ -1403,15 +1472,17 @@ class ChatHandler:
class ConfigHandler: class ConfigHandler:
_RECOMMENDED_MODELS = [ _RECOMMENDED_MODELS = [
const.DEEPSEEK_V4_FLASH, const.DEEPSEEK_V4_PRO, const.DEEPSEEK_CHAT, const.DEEPSEEK_REASONER, const.DEEPSEEK_V4_FLASH, const.DEEPSEEK_V4_PRO,
const.MINIMAX_M2_7_HIGHSPEED, const.MINIMAX_M2_7, const.MINIMAX_M2_5, const.MINIMAX_M2_1, const.MINIMAX_M2_1_LIGHTNING, const.MINIMAX_M3, const.MINIMAX_M2_7_HIGHSPEED, const.MINIMAX_M2_7,
const.CLAUDE_4_8_OPUS, const.CLAUDE_4_7_OPUS, const.CLAUDE_4_6_SONNET, const.CLAUDE_4_6_OPUS, const.CLAUDE_4_5_SONNET, # claude-fable-5 is placed after claude-opus-4-7 (not as the Claude
# default) since it is often unavailable due to policy restrictions.
const.CLAUDE_4_8_OPUS, const.CLAUDE_4_7_OPUS, const.CLAUDE_FABLE_5, const.CLAUDE_4_6_SONNET, const.CLAUDE_4_6_OPUS,
const.GEMINI_35_FLASH, const.GEMINI_31_FLASH_LITE_PRE, const.GEMINI_31_PRO_PRE, const.GEMINI_3_FLASH_PRE, const.GEMINI_35_FLASH, const.GEMINI_31_FLASH_LITE_PRE, const.GEMINI_31_PRO_PRE, const.GEMINI_3_FLASH_PRE,
const.GPT_55, const.GPT_54, const.GPT_54_MINI, const.GPT_54_NANO, const.GPT_5, const.GPT_41, const.GPT_4o, const.GPT_55, const.GPT_54, const.GPT_54_MINI, const.GPT_54_NANO, const.GPT_5, const.GPT_41, const.GPT_4o,
const.GLM_5_1, const.GLM_5_TURBO, const.GLM_5, const.GLM_4_7, const.GLM_5_2, const.GLM_5_1, const.GLM_5_TURBO, const.GLM_5, const.GLM_4_7,
const.QWEN36_PLUS, const.QWEN37_MAX, const.QWEN35_PLUS, const.QWEN3_MAX, const.QWEN37_PLUS, const.QWEN37_MAX, const.QWEN36_PLUS,
const.DOUBAO_SEED_2_PRO, const.DOUBAO_SEED_2_CODE, const.DOUBAO_SEED_2_PRO, const.DOUBAO_SEED_2_CODE,
const.KIMI_K2_6, const.KIMI_K2_5, const.KIMI_K2, const.KIMI_K2_7_CODE, const.KIMI_K2_7_CODE_HIGHSPEED, const.KIMI_K2_6, const.KIMI_K2_5, const.KIMI_K2,
const.ERNIE_5_1, const.ERNIE_5, const.ERNIE_X1_1, const.ERNIE_45_TURBO_128K, const.ERNIE_45_TURBO_32K, const.ERNIE_5_1, const.ERNIE_5, const.ERNIE_X1_1, const.ERNIE_45_TURBO_128K, const.ERNIE_45_TURBO_32K,
const.MIMO_V2_5_PRO, const.MIMO_V2_5, const.MIMO_V2_5_PRO, const.MIMO_V2_5,
] ]
@@ -1442,7 +1513,7 @@ class ConfigHandler:
"api_base_key": None, "api_base_key": None,
"api_base_default": None, "api_base_default": None,
"api_base_placeholder": "", "api_base_placeholder": "",
"models": [const.MINIMAX_M2_7, const.MINIMAX_M2_7_HIGHSPEED, const.MINIMAX_M2_5, const.MINIMAX_M2_1, const.MINIMAX_M2_1_LIGHTNING], "models": [const.MINIMAX_M3, const.MINIMAX_M2_7, const.MINIMAX_M2_7_HIGHSPEED],
}), }),
("claudeAPI", { ("claudeAPI", {
"label": "Claude", "label": "Claude",
@@ -1450,7 +1521,7 @@ class ConfigHandler:
"api_base_key": "claude_api_base", "api_base_key": "claude_api_base",
"api_base_default": "https://api.anthropic.com/v1", "api_base_default": "https://api.anthropic.com/v1",
"api_base_placeholder": _PLACEHOLDER_V1, "api_base_placeholder": _PLACEHOLDER_V1,
"models": [const.CLAUDE_4_8_OPUS, const.CLAUDE_4_7_OPUS, const.CLAUDE_4_6_SONNET, const.CLAUDE_4_6_OPUS, const.CLAUDE_4_5_SONNET], "models": [const.CLAUDE_4_8_OPUS, const.CLAUDE_4_7_OPUS, const.CLAUDE_FABLE_5, const.CLAUDE_4_6_SONNET, const.CLAUDE_4_6_OPUS],
}), }),
("gemini", { ("gemini", {
"label": "Gemini", "label": "Gemini",
@@ -1474,7 +1545,7 @@ class ConfigHandler:
"api_base_key": "zhipu_ai_api_base", "api_base_key": "zhipu_ai_api_base",
"api_base_default": "https://open.bigmodel.cn/api/paas/v4", "api_base_default": "https://open.bigmodel.cn/api/paas/v4",
"api_base_placeholder": _PLACEHOLDER_ZHIPU, "api_base_placeholder": _PLACEHOLDER_ZHIPU,
"models": [const.GLM_5_1, const.GLM_5_TURBO, const.GLM_5, const.GLM_4_7], "models": [const.GLM_5_2, const.GLM_5_1, const.GLM_5_TURBO, const.GLM_5, const.GLM_4_7],
}), }),
("dashscope", { ("dashscope", {
"label": {"zh": "通义千问", "en": "Qwen"}, "label": {"zh": "通义千问", "en": "Qwen"},
@@ -1482,7 +1553,7 @@ class ConfigHandler:
"api_base_key": None, "api_base_key": None,
"api_base_default": None, "api_base_default": None,
"api_base_placeholder": "", "api_base_placeholder": "",
"models": [const.QWEN36_PLUS, const.QWEN37_MAX, const.QWEN35_PLUS, const.QWEN3_MAX], "models": [const.QWEN37_PLUS, const.QWEN37_MAX, const.QWEN36_PLUS],
}), }),
("doubao", { ("doubao", {
"label": {"zh": "豆包", "en": "Doubao"}, "label": {"zh": "豆包", "en": "Doubao"},
@@ -1498,7 +1569,7 @@ class ConfigHandler:
"api_base_key": "moonshot_base_url", "api_base_key": "moonshot_base_url",
"api_base_default": "https://api.moonshot.cn/v1", "api_base_default": "https://api.moonshot.cn/v1",
"api_base_placeholder": _PLACEHOLDER_V1, "api_base_placeholder": _PLACEHOLDER_V1,
"models": [const.KIMI_K2_6, const.KIMI_K2_5, const.KIMI_K2], "models": [const.KIMI_K2_7_CODE, const.KIMI_K2_7_CODE_HIGHSPEED, const.KIMI_K2_6, const.KIMI_K2_5, const.KIMI_K2],
}), }),
("qianfan", { ("qianfan", {
"label": {"zh": "百度千帆", "en": "ERNIE"}, "label": {"zh": "百度千帆", "en": "ERNIE"},
@@ -1542,8 +1613,9 @@ class ConfigHandler:
"open_ai_api_key", "deepseek_api_key", "qianfan_api_key", "claude_api_key", "gemini_api_key", "open_ai_api_key", "deepseek_api_key", "qianfan_api_key", "claude_api_key", "gemini_api_key",
"zhipu_ai_api_key", "dashscope_api_key", "moonshot_api_key", "zhipu_ai_api_key", "dashscope_api_key", "moonshot_api_key",
"ark_api_key", "minimax_api_key", "linkai_api_key", "custom_api_key", "mimo_api_key", "ark_api_key", "minimax_api_key", "linkai_api_key", "custom_api_key", "mimo_api_key",
"custom_providers",
"agent_max_context_tokens", "agent_max_context_turns", "agent_max_steps", "agent_max_context_tokens", "agent_max_context_turns", "agent_max_steps",
"enable_thinking", "web_password", "enable_thinking", "self_evolution_enabled", "web_password",
} }
@staticmethod @staticmethod
@@ -1583,6 +1655,32 @@ class ConfigHandler:
"api_key_field": p.get("api_key_field"), "api_key_field": p.get("api_key_field"),
} }
# Expose user-defined custom providers as "custom:<id>" entries so
# the legacy config page can display and select them. Credentials
# are managed on the Models page, hence the null key/base fields.
# Mirrors the Models page: when expanded entries exist, the bare
# legacy "custom" entry is hidden — unless the flat single-provider
# custom config is still active or filled in.
try:
from models.custom_provider import get_custom_providers
custom_list = get_custom_providers()
legacy_custom_in_use = ModelsHandler._legacy_custom_in_use(local_config)
if custom_list and not legacy_custom_in_use:
providers.pop("custom", None)
for cp in custom_list:
cid = f"custom:{cp.get('id')}"
cname = cp.get("name") or cp.get("id")
providers[cid] = {
"label": {"zh": cname, "en": cname},
"models": [cp["model"]] if cp.get("model") else [],
"api_base_key": None,
"api_base_default": None,
"api_base_placeholder": "",
"api_key_field": None,
}
except Exception as cp_err:
logger.warning(f"[ConfigHandler] failed to expand custom providers: {cp_err}")
raw_pwd = str(local_config.get("web_password", "") or "") raw_pwd = str(local_config.get("web_password", "") or "")
masked_pwd = ("*" * len(raw_pwd)) if raw_pwd else "" masked_pwd = ("*" * len(raw_pwd)) if raw_pwd else ""
@@ -1598,6 +1696,7 @@ class ConfigHandler:
"agent_max_context_turns": local_config.get("agent_max_context_turns", 20), "agent_max_context_turns": local_config.get("agent_max_context_turns", 20),
"agent_max_steps": local_config.get("agent_max_steps", 20), "agent_max_steps": local_config.get("agent_max_steps", 20),
"enable_thinking": bool(local_config.get("enable_thinking", False)), "enable_thinking": bool(local_config.get("enable_thinking", False)),
"self_evolution_enabled": bool(local_config.get("self_evolution_enabled", False)),
"api_bases": api_bases, "api_bases": api_bases,
"api_keys": api_keys_masked, "api_keys": api_keys_masked,
"providers": providers, "providers": providers,
@@ -1623,7 +1722,7 @@ class ConfigHandler:
continue continue
if key in ("agent_max_context_tokens", "agent_max_context_turns", "agent_max_steps"): if key in ("agent_max_context_tokens", "agent_max_context_turns", "agent_max_steps"):
value = int(value) value = int(value)
if key in ("use_linkai", "enable_thinking"): if key in ("use_linkai", "enable_thinking", "self_evolution_enabled"):
value = bool(value) value = bool(value)
local_config[key] = value local_config[key] = value
applied[key] = value applied[key] = value
@@ -1720,6 +1819,28 @@ class ModelsHandler:
], ],
} }
# ASR engine catalog per provider. The first entry of each list is the
# runtime default (mirrors DEFAULT_ASR_MODEL in voice/*). Users can still
# pick "custom" in the UI to send any other model id.
_ASR_PROVIDER_MODELS = {
"openai": [
{"value": "gpt-4o-mini-transcribe", "hint": "默认 · 速度快"},
{"value": "gpt-4o-transcribe", "hint": "更高准确率"},
{"value": "whisper-1", "hint": "经典 Whisper"},
],
"dashscope": [
{"value": "qwen3-asr-flash", "hint": "覆盖普通话、方言与主流外语"},
],
"zhipu": [
{"value": "glm-asr-2512", "hint": "智谱语音识别"},
],
# LinkAI gateway pins whisper-1 for ASR and ignores any other id,
# so expose only that to avoid misleading the user.
"linkai": [
{"value": "whisper-1", "hint": "网关固定使用"},
],
}
# Per-provider voice timbres. Entries can be a bare code string # Per-provider voice timbres. Entries can be a bare code string
# (label = code) or {value, hint?} when a friendly secondary label # (label = code) or {value, hint?} when a friendly secondary label
# helps recognition. We keep `value` as the raw API code so power # helps recognition. We keep `value` as the raw API code so power
@@ -1964,7 +2085,7 @@ class ModelsHandler:
], ],
"doubao": [const.DOUBAO_SEED_2_PRO], "doubao": [const.DOUBAO_SEED_2_PRO],
"moonshot": [const.KIMI_K2_6], "moonshot": [const.KIMI_K2_6],
"dashscope": [const.QWEN36_PLUS, const.QWEN35_PLUS, const.QWEN3_MAX], "dashscope": [const.QWEN37_PLUS, const.QWEN36_PLUS],
"claudeAPI": [const.CLAUDE_4_8_OPUS, const.CLAUDE_4_7_OPUS, const.CLAUDE_4_6_SONNET, const.CLAUDE_4_6_OPUS], "claudeAPI": [const.CLAUDE_4_8_OPUS, const.CLAUDE_4_7_OPUS, const.CLAUDE_4_6_SONNET, const.CLAUDE_4_6_OPUS],
"gemini": [const.GEMINI_35_FLASH, const.GEMINI_31_FLASH_LITE_PRE, const.GEMINI_31_PRO_PRE, const.GEMINI_3_FLASH_PRE], "gemini": [const.GEMINI_35_FLASH, const.GEMINI_31_FLASH_LITE_PRE, const.GEMINI_31_PRO_PRE, const.GEMINI_3_FLASH_PRE],
"qianfan": [const.ERNIE_45_TURBO_VL], "qianfan": [const.ERNIE_45_TURBO_VL],
@@ -1985,7 +2106,7 @@ class ModelsHandler:
"linkai": [ "linkai": [
const.GPT_41_MINI, const.GPT_41_MINI,
const.GPT_54_MINI, const.GPT_54_MINI,
const.QWEN36_PLUS, const.QWEN37_PLUS,
const.DOUBAO_SEED_2_PRO, const.DOUBAO_SEED_2_PRO,
const.KIMI_K2_6, const.KIMI_K2_6,
const.CLAUDE_4_6_SONNET, const.CLAUDE_4_6_SONNET,
@@ -2049,13 +2170,99 @@ class ModelsHandler:
def _is_real_key(value: str) -> bool: def _is_real_key(value: str) -> bool:
return bool(value) and value not in ("", "YOUR API KEY", "YOUR_API_KEY") return bool(value) and value not in ("", "YOUR API KEY", "YOUR_API_KEY")
@classmethod
def _custom_provider_cards(cls, local_config: dict) -> List[dict]:
"""Expand ``custom_providers`` into one card per provider.
Each user-defined OpenAI-compatible provider becomes its own card with
id ``custom:<id>`` so the frontend can render, edit, delete and
activate them independently. The card carries ``is_custom=True`` and
``active`` flags that the UI uses to render the extra controls.
Returns an empty list when no multi-providers are configured, in which
case the caller keeps the single legacy ``custom`` card untouched —
guaranteeing backward compatibility with the flat
``custom_api_key`` / ``custom_api_base`` config.
"""
try:
from models.custom_provider import get_custom_providers, parse_custom_bot_type
providers = get_custom_providers()
except Exception as e: # pragma: no cover - defensive
logger.warning(f"[ModelsHandler] failed to load custom_providers: {e}")
providers = []
if not providers:
return []
# Determine the currently active provider id from bot_type.
bot_type = local_config.get("bot_type") or ""
_, active_id = parse_custom_bot_type(bot_type)
meta = ConfigHandler.PROVIDER_MODELS.get("custom") or {}
cards = []
for p in providers:
pid = p.get("id") or ""
name = p.get("name") or pid
raw_key = p.get("api_key") or ""
raw_base = p.get("api_base") or ""
configured = cls._is_real_key(raw_key)
cards.append({
"id": f"custom:{pid}",
"label": {"zh": name, "en": name},
"configured": configured,
"is_custom": True,
"custom_id": pid,
"custom_name": name,
"active": (pid == active_id),
"model": p.get("model") or "",
# Custom cards are edited via the dedicated set_custom_provider
# action, not the field-based set_provider flow, so the field
# names are intentionally null.
"api_key_field": None,
"api_base_field": None,
"api_key_masked": ConfigHandler._mask_key(raw_key) if configured else "",
"api_base": raw_base,
"api_base_default": "",
"api_base_placeholder": meta.get("api_base_placeholder") or "",
"models": [p.get("model")] if p.get("model") else [],
})
return cards
@classmethod
def _legacy_custom_in_use(cls, local_config: dict) -> bool:
"""True when the flat single-provider custom config is still relevant:
either it is the active bot_type, or its key/base fields are filled.
In that case the legacy "custom" card must stay visible even when
multi ``custom_providers`` entries exist."""
if (local_config.get("bot_type") or "") == "custom":
return True
return (cls._is_real_key(local_config.get("custom_api_key") or "")
or bool(local_config.get("custom_api_base")))
@classmethod @classmethod
def _provider_overview(cls) -> List[dict]: def _provider_overview(cls) -> List[dict]:
"""All known providers (configured first, unconfigured after). """All known providers (configured first, unconfigured after).
Re-uses ConfigHandler.PROVIDER_MODELS for the canonical list.""" Re-uses ConfigHandler.PROVIDER_MODELS for the canonical list.
When the user has defined multiple custom (OpenAI-compatible)
providers via ``custom_providers``, the single built-in ``custom``
card is replaced by one card per provider (see
``_custom_provider_cards``). Otherwise the legacy single ``custom``
card is shown unchanged.
"""
local_config = conf() local_config = conf()
custom_cards = cls._custom_provider_cards(local_config)
# Keep the legacy single "custom" card visible alongside the expanded
# ones when the flat custom_api_key/base config is active or filled,
# so existing single-provider setups never disappear from the UI.
keep_legacy_custom = cls._legacy_custom_in_use(local_config)
items = [] items = []
for pid, p in ConfigHandler.PROVIDER_MODELS.items(): for pid, p in ConfigHandler.PROVIDER_MODELS.items():
if pid == "custom" and custom_cards:
# Multi-provider mode: emit the expanded cards, plus the
# legacy card when it is still in use.
items.extend(custom_cards)
if not keep_legacy_custom:
continue
key_field = p.get("api_key_field") key_field = p.get("api_key_field")
base_field = p.get("api_base_key") base_field = p.get("api_base_key")
raw_key = local_config.get(key_field, "") if key_field else "" raw_key = local_config.get(key_field, "") if key_field else ""
@@ -2065,6 +2272,7 @@ class ModelsHandler:
"id": pid, "id": pid,
"label": p["label"], "label": p["label"],
"configured": configured, "configured": configured,
"is_custom": (pid == "custom"),
"api_key_field": key_field, "api_key_field": key_field,
"api_base_field": base_field, "api_base_field": base_field,
"api_key_masked": ConfigHandler._mask_key(raw_key) if configured else "", "api_key_masked": ConfigHandler._mask_key(raw_key) if configured else "",
@@ -2073,7 +2281,19 @@ class ModelsHandler:
"api_base_placeholder": p.get("api_base_placeholder") or "", "api_base_placeholder": p.get("api_base_placeholder") or "",
"models": list(p.get("models") or []), "models": list(p.get("models") or []),
}) })
items.sort(key=lambda it: (0 if it["configured"] else 1, list(ConfigHandler.PROVIDER_MODELS.keys()).index(it["id"])))
def _sort_key(it):
pid = it["id"]
# Custom expanded cards share the sort weight of the base "custom"
# entry so they cluster where the single custom card used to be.
base_id = "custom" if it.get("is_custom") else pid
try:
order = list(ConfigHandler.PROVIDER_MODELS.keys()).index(base_id)
except ValueError:
order = len(ConfigHandler.PROVIDER_MODELS)
return (0 if it["configured"] else 1, order)
items.sort(key=_sort_key)
return items return items
@classmethod @classmethod
@@ -2081,13 +2301,28 @@ class ModelsHandler:
"""Main chat model — drives the agent. bot_type maps to a provider id.""" """Main chat model — drives the agent. bot_type maps to a provider id."""
bot_type = local_config.get("bot_type") or "" bot_type = local_config.get("bot_type") or ""
provider_id = "openai" if bot_type == "chatGPT" else bot_type provider_id = "openai" if bot_type == "chatGPT" else bot_type
if provider_id not in ConfigHandler.PROVIDER_MODELS and local_config.get("use_linkai"): is_custom_id = provider_id.startswith("custom:")
if (provider_id not in ConfigHandler.PROVIDER_MODELS and not is_custom_id
and local_config.get("use_linkai")):
provider_id = "linkai" provider_id = "linkai"
# In multi-provider mode, replace the single "custom" entry with the
# expanded "custom:<id>" ids so the chat dropdown matches the cards.
# The legacy "custom" entry stays when its flat config is still used.
provider_ids = []
custom_cards = cls._custom_provider_cards(local_config)
keep_legacy_custom = cls._legacy_custom_in_use(local_config)
for pid in ConfigHandler.PROVIDER_MODELS.keys():
if pid == "custom" and custom_cards:
provider_ids.extend(c["id"] for c in custom_cards)
if keep_legacy_custom:
provider_ids.append(pid)
else:
provider_ids.append(pid)
return { return {
"editable": True, "editable": True,
"current_provider": provider_id, "current_provider": provider_id,
"current_model": local_config.get("model", ""), "current_model": local_config.get("model", ""),
"providers": list(ConfigHandler.PROVIDER_MODELS.keys()), "providers": provider_ids,
"use_linkai": bool(local_config.get("use_linkai", False)), "use_linkai": bool(local_config.get("use_linkai", False)),
} }
@@ -2102,7 +2337,7 @@ class ModelsHandler:
_VISION_AUTO_ORDER = [ _VISION_AUTO_ORDER = [
("moonshot", "moonshot_api_key", const.KIMI_K2_6), ("moonshot", "moonshot_api_key", const.KIMI_K2_6),
("doubao", "ark_api_key", const.DOUBAO_SEED_2_PRO), ("doubao", "ark_api_key", const.DOUBAO_SEED_2_PRO),
("dashscope", "dashscope_api_key", const.QWEN36_PLUS), ("dashscope", "dashscope_api_key", const.QWEN37_PLUS),
("claudeAPI", "claude_api_key", const.CLAUDE_4_6_SONNET), ("claudeAPI", "claude_api_key", const.CLAUDE_4_6_SONNET),
("gemini", "gemini_api_key", const.GEMINI_35_FLASH), ("gemini", "gemini_api_key", const.GEMINI_35_FLASH),
("qianfan", "qianfan_api_key", const.ERNIE_45_TURBO_VL), ("qianfan", "qianfan_api_key", const.ERNIE_45_TURBO_VL),
@@ -2240,8 +2475,9 @@ class ModelsHandler:
"editable": True, "editable": True,
"current_provider": explicit, "current_provider": explicit,
"suggested_provider": suggested, "suggested_provider": suggested,
"current_model": "", "current_model": (local_config.get("voice_to_text_model") or "") if explicit else "",
"providers": cls._ASR_PROVIDERS, "providers": cls._ASR_PROVIDERS,
"provider_models": cls._ASR_PROVIDER_MODELS,
} }
@classmethod @classmethod
@@ -2520,6 +2756,12 @@ class ModelsHandler:
return self._handle_set_provider(data) return self._handle_set_provider(data)
if action == "delete_provider": if action == "delete_provider":
return self._handle_delete_provider(data) return self._handle_delete_provider(data)
if action == "set_custom_provider":
return self._handle_set_custom_provider(data)
if action == "delete_custom_provider":
return self._handle_delete_custom_provider(data)
if action == "set_active_custom_provider":
return self._handle_set_active_custom_provider(data)
if action == "set_capability": if action == "set_capability":
return self._handle_set_capability(data) return self._handle_set_capability(data)
if action == "set_voice_reply_mode": if action == "set_voice_reply_mode":
@@ -2603,6 +2845,170 @@ class ModelsHandler:
self._reset_bridge() self._reset_bridge()
return json.dumps({"status": "success", "provider": provider_id, "cleared": cleared}) return json.dumps({"status": "success", "provider": provider_id, "cleared": cleared})
# ------------------------------------------------------------------
# Multiple custom (OpenAI-compatible) providers
# ------------------------------------------------------------------
# These actions manage the ``custom_providers`` list. Activation is done
# by setting ``bot_type`` to ``"custom:<id>"``. There is no separate
# ``custom_active_provider`` field — a single source of truth.
@staticmethod
def _normalize_custom_providers(raw) -> List[dict]:
"""Return a clean list of provider dicts (drops malformed entries)."""
if not isinstance(raw, list):
return []
out = []
for p in raw:
if isinstance(p, dict) and (p.get("id") or "").strip():
out.append(p)
return out
def _persist_custom_providers(self, providers: List[dict], bot_type=None) -> None:
"""Write the providers list to both in-memory conf and the on-disk
config, then reset the bridge so bots rebuild.
If ``bot_type`` is given, also update ``bot_type``. When activating a
provider (bot_type is ``custom:<id>``), also write the provider's
``model`` into the global ``model`` field so that all paths (chat,
agent, vision) automatically use the correct model."""
from models.custom_provider import parse_custom_bot_type
local_config = conf()
file_cfg = self._read_file_config()
local_config["custom_providers"] = providers
file_cfg["custom_providers"] = providers
if bot_type is not None:
local_config["bot_type"] = bot_type
file_cfg["bot_type"] = bot_type
# Sync the provider's model into the global model field.
_, pid = parse_custom_bot_type(bot_type)
if pid:
provider = next((p for p in providers if p.get("id") == pid), None)
if provider and provider.get("model"):
local_config["model"] = provider["model"]
file_cfg["model"] = provider["model"]
self._write_file_config(file_cfg)
self._reset_bridge()
def _handle_set_custom_provider(self, data: dict) -> str:
"""Add a new custom provider or update an existing one.
Payload::
{
"action": "set_custom_provider",
"id": "3f2a9c1b", # required for edit; omit for create
"name": "siliconflow", # required, display label
"api_base": "https://...", # required when creating
"api_key": "sk-...", # optional on edit (keep existing)
"model": "deepseek-ai/...", # optional default model
"make_active": true # optional, also activate it
}
"""
from models.custom_provider import generate_provider_id, parse_custom_bot_type
name = (data.get("name") or "").strip()
if not name:
return json.dumps({"status": "error", "message": "name is required"})
provider_id = (data.get("id") or "").strip()
api_base = (data.get("api_base") or "").strip()
# api_key omitted/empty on edit => keep the existing one.
api_key_raw = data.get("api_key")
api_key = api_key_raw.strip() if isinstance(api_key_raw, str) else ""
model = (data.get("model") or "").strip()
make_active = bool(data.get("make_active"))
local_config = conf()
providers = self._normalize_custom_providers(local_config.get("custom_providers"))
existing = next((p for p in providers if p.get("id") == provider_id), None) if provider_id else None
if existing is None:
# Creating a new provider — api_base is mandatory.
if not api_base:
return json.dumps({"status": "error", "message": "api_base is required"})
provider_id = generate_provider_id()
entry = {"id": provider_id, "name": name, "api_key": api_key, "api_base": api_base}
if model:
entry["model"] = model
providers.append(entry)
created = True
else:
existing["name"] = name
if api_base:
existing["api_base"] = api_base
if api_key:
existing["api_key"] = api_key
# Only touch model when explicitly provided in the payload; an
# explicit empty string clears it, a missing key keeps it (the
# UI modal no longer sends model, so manual config survives edits).
if "model" in data:
if model:
existing["model"] = model
else:
existing.pop("model", None)
created = False
# Decide bot_type — only switch when explicitly requested.
new_bot_type = None
if make_active:
new_bot_type = f"custom:{provider_id}"
self._persist_custom_providers(providers, new_bot_type)
logger.info(
f"[ModelsHandler] custom provider {name!r} (id={provider_id}) "
f"{'created' if created else 'updated'}"
)
return json.dumps({
"status": "success",
"id": provider_id,
"name": name,
"created": created,
})
def _handle_delete_custom_provider(self, data: dict) -> str:
"""Remove a custom provider by id."""
from models.custom_provider import parse_custom_bot_type
provider_id = (data.get("id") or "").strip()
if not provider_id:
return json.dumps({"status": "error", "message": "id is required"})
local_config = conf()
providers = self._normalize_custom_providers(local_config.get("custom_providers"))
remaining = [p for p in providers if p.get("id") != provider_id]
if len(remaining) == len(providers):
return json.dumps({"status": "error", "message": f"unknown custom provider id: {provider_id}"})
# If the deleted provider was active, fall back to the first remaining.
_, current_active_id = parse_custom_bot_type(local_config.get("bot_type") or "")
new_bot_type = None
if current_active_id == provider_id:
if remaining:
new_bot_type = f"custom:{remaining[0]['id']}"
else:
new_bot_type = "custom" # revert to legacy
self._persist_custom_providers(remaining, new_bot_type)
logger.info(f"[ModelsHandler] custom provider id={provider_id} deleted")
return json.dumps({"status": "success", "id": provider_id})
def _handle_set_active_custom_provider(self, data: dict) -> str:
"""Activate a custom provider by setting bot_type to 'custom:<id>'."""
provider_id = (data.get("id") or "").strip()
if not provider_id:
return json.dumps({"status": "error", "message": "id is required"})
local_config = conf()
providers = self._normalize_custom_providers(local_config.get("custom_providers"))
if not any(p.get("id") == provider_id for p in providers):
return json.dumps({"status": "error", "message": f"unknown custom provider id: {provider_id}"})
new_bot_type = f"custom:{provider_id}"
self._persist_custom_providers(providers, new_bot_type)
logger.info(f"[ModelsHandler] active custom provider set to id={provider_id}")
return json.dumps({"status": "success", "active_id": provider_id})
def _handle_set_capability(self, data: dict) -> str: def _handle_set_capability(self, data: dict) -> str:
capability = (data.get("capability") or "").strip() capability = (data.get("capability") or "").strip()
provider_id = (data.get("provider_id") or "").strip() provider_id = (data.get("provider_id") or "").strip()
@@ -2613,7 +3019,7 @@ class ModelsHandler:
if capability == "vision": if capability == "vision":
return self._set_vision(provider_id, model) return self._set_vision(provider_id, model)
if capability == "asr": if capability == "asr":
return self._set_simple("voice_to_text", provider_id) return self._set_asr(provider_id, model)
if capability == "tts": if capability == "tts":
return self._set_tts(provider_id, model, (data.get("voice") or "").strip()) return self._set_tts(provider_id, model, (data.get("voice") or "").strip())
if capability == "embedding": if capability == "embedding":
@@ -2667,13 +3073,28 @@ class ModelsHandler:
}) })
def _set_chat(self, provider_id: str, model: str) -> str: def _set_chat(self, provider_id: str, model: str) -> str:
if provider_id and provider_id not in ConfigHandler.PROVIDER_MODELS: # Accept expanded custom provider ids ("custom:<id>") as well as the
# built-in vendors, so the chat capability card and the custom
# providers section behave consistently.
custom_provider = None
if provider_id.startswith("custom:"):
from models.custom_provider import parse_custom_bot_type
_, custom_id = parse_custom_bot_type(provider_id)
providers = self._normalize_custom_providers(conf().get("custom_providers"))
custom_provider = next((p for p in providers if p.get("id") == custom_id), None)
if custom_provider is None:
return json.dumps({"status": "error", "message": f"unknown custom provider id: {custom_id}"})
elif provider_id and provider_id not in ConfigHandler.PROVIDER_MODELS:
return json.dumps({"status": "error", "message": f"unknown provider: {provider_id}"}) return json.dumps({"status": "error", "message": f"unknown provider: {provider_id}"})
applied = {} applied = {}
local_config = conf() local_config = conf()
file_cfg = self._read_file_config() file_cfg = self._read_file_config()
# Fall back to the custom provider's default model when none is given.
if not model and custom_provider:
model = custom_provider.get("model") or ""
if provider_id: if provider_id:
bot_type_value = "chatGPT" if provider_id == "openai" else provider_id bot_type_value = "chatGPT" if provider_id == "openai" else provider_id
local_config["bot_type"] = bot_type_value local_config["bot_type"] = bot_type_value
@@ -2773,6 +3194,30 @@ class ModelsHandler:
self._refresh_voice_routing() self._refresh_voice_routing()
return json.dumps({"status": "success", key: value}) return json.dumps({"status": "success", key: value})
def _set_asr(self, provider_id: str, model: str) -> str:
local_config = conf()
file_cfg = self._read_file_config()
local_config["voice_to_text"] = provider_id
file_cfg["voice_to_text"] = provider_id
# Only overwrite the model when one is supplied. An empty model means
# "keep whatever is configured" so switching provider from the console
# never wipes a user's hand-set voice_to_text_model (runtime falls back
# to the engine default via `or DEFAULT_ASR_MODEL` regardless).
if model:
local_config["voice_to_text_model"] = model
file_cfg["voice_to_text_model"] = model
self._write_file_config(file_cfg)
logger.info(
f"[ModelsHandler] asr updated: provider={provider_id!r} "
f"model={model!r}"
)
self._refresh_voice_routing()
return json.dumps({
"status": "success",
"provider": provider_id,
"model": local_config.get("voice_to_text_model", ""),
})
def _set_tts(self, provider_id: str, model: str, voice: str = "") -> str: def _set_tts(self, provider_id: str, model: str, voice: str = "") -> str:
local_config = conf() local_config = conf()
file_cfg = self._read_file_config() file_cfg = self._read_file_config()
@@ -3720,6 +4165,141 @@ class SchedulerHandler:
return json.dumps({"status": "error", "message": str(e)}) return json.dumps({"status": "error", "message": str(e)})
class SchedulerToggleHandler:
def POST(self):
_require_auth()
web.header('Content-Type', 'application/json; charset=utf-8')
try:
body = json.loads(web.data())
task_id = body.get("task_id")
enabled = body.get("enabled", True)
if not task_id:
return json.dumps({"status": "error", "message": "task_id required"})
from agent.tools.scheduler.task_store import TaskStore
workspace_root = _get_workspace_root()
store_path = os.path.join(workspace_root, "scheduler", "tasks.json")
store = TaskStore(store_path)
store.enable_task(task_id, enabled)
task = store.get_task(task_id)
return json.dumps({"status": "success", "task": task}, ensure_ascii=False)
except Exception as e:
logger.error(f"[WebChannel] Scheduler toggle error: {e}")
return json.dumps({"status": "error", "message": str(e)})
class SchedulerUpdateHandler:
def POST(self):
_require_auth()
web.header('Content-Type', 'application/json; charset=utf-8')
try:
body = json.loads(web.data())
task_id = body.get("task_id")
if not task_id:
return json.dumps({"status": "error", "message": "task_id required"})
from agent.tools.scheduler.task_store import TaskStore
from agent.tools.scheduler.scheduler_service import SchedulerService
from datetime import datetime
workspace_root = _get_workspace_root()
store_path = os.path.join(workspace_root, "scheduler", "tasks.json")
store = TaskStore(store_path)
# Get original task (single query to avoid repeated I/O)
original_task = store.get_task(task_id)
if not original_task:
return json.dumps({"status": "error", "message": f"Task '{task_id}' not found"})
# Build updates dict
updates = {}
if "name" in body:
updates["name"] = body["name"]
if "enabled" in body:
updates["enabled"] = body["enabled"]
# Update schedule
if "schedule" in body:
updates["schedule"] = body["schedule"]
# If schedule config changed, recalculate next_run_at
# Build merged temp task data for calculation (without modifying the original object)
merged = dict(original_task)
merged.update(updates)
if "action" in body:
merged["action"] = body["action"]
temp_service = SchedulerService(store, lambda t: None)
next_run = temp_service._calculate_next_run(merged, datetime.now())
if next_run:
updates["next_run_at"] = next_run.isoformat()
else:
# Cannot calculate next run time, schedule config may be invalid
return json.dumps({
"status": "error",
"message": "Cannot calculate next run time. Please check the schedule config (e.g., cron expression format, or whether the one-time task time has already passed)."
}, ensure_ascii=False)
# Update action
if "action" in body:
action = body["action"]
channel_type = action.get("channel_type", "web")
# Get the task's original channel_type
old_channel = original_task.get("action", {}).get("channel_type", "web")
# If channel type changed or no receiver, reject the update.
# Note: the web UI disables the channel selector, so this branch
# is only reachable via direct API calls. Changing a task's channel
# after creation is not supported because the receiver identity is
# channel-bound and cannot be trivially re-populated (e.g. weixin
# requires a valid context_token tied to the original user-session).
if old_channel and old_channel != channel_type:
return json.dumps({
"status": "error",
"message": f"Cannot change channel type from '{old_channel}' to '{channel_type}'. Please create a new task on the target channel instead."
}, ensure_ascii=False)
if not action.get("receiver"):
return json.dumps({
"status": "error",
"message": "Receiver is required. Please create a new task through the chat interface."
}, ensure_ascii=False)
updates["action"] = action
# If schedule was not updated but action was, ensure next_run_at exists
if "schedule" not in body and "next_run_at" not in original_task:
merged = dict(original_task)
merged.update(updates)
temp_service = SchedulerService(store, lambda t: None)
next_run = temp_service._calculate_next_run(merged, datetime.now())
if next_run:
updates["next_run_at"] = next_run.isoformat()
store.update_task(task_id, updates)
task = store.get_task(task_id)
return json.dumps({"status": "success", "task": task}, ensure_ascii=False)
except Exception as e:
logger.error(f"[WebChannel] Scheduler update error: {e}")
return json.dumps({"status": "error", "message": str(e)})
class SchedulerDeleteHandler:
def POST(self):
_require_auth()
web.header('Content-Type', 'application/json; charset=utf-8')
try:
body = json.loads(web.data())
task_id = body.get("task_id")
if not task_id:
return json.dumps({"status": "error", "message": "task_id required"})
from agent.tools.scheduler.task_store import TaskStore
workspace_root = _get_workspace_root()
store_path = os.path.join(workspace_root, "scheduler", "tasks.json")
store = TaskStore(store_path)
store.delete_task(task_id)
return json.dumps({"status": "success"}, ensure_ascii=False)
except Exception as e:
logger.error(f"[WebChannel] Scheduler delete error: {e}")
return json.dumps({"status": "error", "message": str(e)})
class SessionsHandler: class SessionsHandler:
def GET(self): def GET(self):
_require_auth() _require_auth()
@@ -3873,6 +4453,40 @@ class HistoryHandler:
return json.dumps({"status": "error", "message": str(e)}) return json.dumps({"status": "error", "message": str(e)})
class MessageDeleteHandler:
def POST(self):
_require_auth()
web.header('Content-Type', 'application/json; charset=utf-8')
web.header('Access-Control-Allow-Origin', '*')
try:
data = json.loads(web.data())
session_id = data.get('session_id', '').strip()
user_seq = data.get('user_seq')
delete_user = data.get('delete_user', True)
cascade = data.get('cascade', False)
if not session_id or user_seq is None:
return json.dumps({"status": "error", "message": "session_id and user_seq required"})
# 1. Delete from database
from agent.memory import get_conversation_store
store = get_conversation_store()
deleted = store.delete_message_pair(session_id, int(user_seq), delete_user=delete_user, cascade=cascade)
# 2. Sync agent's in-memory context so its next turn sees the
# same history as the DB. Handled by the agent_bridge helper.
try:
from bridge.bridge import Bridge
Bridge().get_agent_bridge().sync_session_messages_from_store(session_id)
except Exception as sync_err:
logger.warning(f"[WebChannel] Failed to sync agent memory: {sync_err}")
return json.dumps({"status": "success", "deleted": deleted}, ensure_ascii=False)
except Exception as e:
logger.error(f"[WebChannel] Message delete error: {e}")
return json.dumps({"status": "error", "message": str(e)})
class LogsHandler: class LogsHandler:
def GET(self): def GET(self):
_require_auth() _require_auth()
@@ -4014,6 +4628,25 @@ class KnowledgeGraphHandler:
return json.dumps({"nodes": [], "links": []}) return json.dumps({"nodes": [], "links": []})
class KnowledgeActionHandler:
def POST(self):
_require_auth()
web.header('Content-Type', 'application/json; charset=utf-8')
try:
body = json.loads(web.data() or b"{}")
action = body.get("action", "")
payload = body.get("payload") or {}
from agent.knowledge.service import KnowledgeService
result = KnowledgeService(_get_workspace_root()).dispatch(action, payload)
return json.dumps({
"status": "success" if result["code"] < 300 else "error",
**result,
}, ensure_ascii=False)
except Exception as e:
logger.error(f"[WebChannel] Knowledge action error: {e}")
return json.dumps({"status": "error", "code": 500, "message": str(e), "payload": None})
class VersionHandler: class VersionHandler:
def GET(self): def GET(self):
web.header('Content-Type', 'application/json; charset=utf-8') web.header('Content-Type', 'application/json; charset=utf-8')

View File

@@ -19,9 +19,15 @@ def verify_server(data):
nonce = data.nonce nonce = data.nonce
echostr = data.get("echostr", None) echostr = data.get("echostr", None)
token = conf().get("wechatmp_token") # 请按照公众平台官网\基本配置中信息填写 token = conf().get("wechatmp_token") # 请按照公众平台官网\基本配置中信息填写
# Reject when token is empty: an empty token reduces signature verification
# to a predictable hash over attacker-controlled values.
if not token:
raise web.Forbidden("wechatmp_token is not configured")
check_signature(token, signature, timestamp, nonce) check_signature(token, signature, timestamp, nonce)
return echostr return echostr
except InvalidSignatureException: except InvalidSignatureException:
raise web.Forbidden("Invalid signature") raise web.Forbidden("Invalid signature")
except web.Forbidden:
raise
except Exception as e: except Exception as e:
raise web.Forbidden(str(e)) raise web.Forbidden(str(e))

View File

@@ -12,16 +12,19 @@ import hashlib
import json import json
import math import math
import os import os
import re
import threading import threading
import time import time
import uuid import uuid
import requests import requests
import web
import websocket import websocket
from bridge.context import Context, ContextType from bridge.context import Context, ContextType
from bridge.reply import Reply, ReplyType from bridge.reply import Reply, ReplyType
from channel.chat_channel import ChatChannel, check_prefix from channel.chat_channel import ChatChannel, check_prefix
from channel.wecom_bot.wecom_bot_crypt import WecomBotCrypt
from channel.wecom_bot.wecom_bot_message import WecomBotMessage from channel.wecom_bot.wecom_bot_message import WecomBotMessage
from common.expired_dict import ExpiredDict from common.expired_dict import ExpiredDict
from common.log import logger from common.log import logger
@@ -32,6 +35,9 @@ from config import conf
WECOM_WS_URL = "wss://openws.work.weixin.qq.com" WECOM_WS_URL = "wss://openws.work.weixin.qq.com"
HEARTBEAT_INTERVAL = 30 HEARTBEAT_INTERVAL = 30
MEDIA_CHUNK_SIZE = 512 * 1024 # 512KB per chunk (before base64 encoding) MEDIA_CHUNK_SIZE = 512 * 1024 # 512KB per chunk (before base64 encoding)
# Fixed URL path for the callback (webhook) HTTP server. The bot's
# receive-message URL must point at this path, e.g. http://host:9892/wecombot
CALLBACK_PATH = "/wecombot"
def _escape_control_chars_inside_json_strings(s: str) -> str: def _escape_control_chars_inside_json_strings(s: str) -> str:
@@ -97,6 +103,14 @@ class WecomBotChannel(ChatChannel):
self._pending_lock = threading.Lock() self._pending_lock = threading.Lock()
self._stream_states = {} # req_id -> {"stream_id": str, "content": str} self._stream_states = {} # req_id -> {"stream_id": str, "content": str}
# Transport mode: "websocket" (long connection) or "webhook" (HTTP callback)
self.mode = "websocket"
self._crypt = None
self._http_server = None
# stream_id -> {"committed", "current", "finished", "images", "last_access"}
self._callback_streams = ExpiredDict(60 * 10) # auto-expire after 10min (max poll window is 6min)
self._callback_lock = threading.Lock()
conf()["group_name_white_list"] = ["ALL_GROUP"] conf()["group_name_white_list"] = ["ALL_GROUP"]
conf()["single_chat_prefix"] = [""] conf()["single_chat_prefix"] = [""]
@@ -105,6 +119,11 @@ class WecomBotChannel(ChatChannel):
# ------------------------------------------------------------------ # ------------------------------------------------------------------
def startup(self): def startup(self):
self.mode = conf().get("wecom_bot_mode", "websocket")
if self.mode == "webhook":
self._startup_callback()
return
self.bot_id = conf().get("wecom_bot_id", "") self.bot_id = conf().get("wecom_bot_id", "")
self.bot_secret = conf().get("wecom_bot_secret", "") self.bot_secret = conf().get("wecom_bot_secret", "")
@@ -127,6 +146,13 @@ class WecomBotChannel(ChatChannel):
pass pass
self._ws = None self._ws = None
self._connected = False self._connected = False
if self._http_server:
try:
self._http_server.stop()
logger.info("[WecomBot] Callback HTTP server stopped")
except Exception as e:
logger.warning(f"[WecomBot] Error stopping HTTP server: {e}")
self._http_server = None
# ------------------------------------------------------------------ # ------------------------------------------------------------------
# WebSocket connection # WebSocket connection
@@ -183,6 +209,192 @@ class WecomBotChannel(ChatChannel):
def _gen_req_id(self) -> str: def _gen_req_id(self) -> str:
return uuid.uuid4().hex[:16] return uuid.uuid4().hex[:16]
# ------------------------------------------------------------------
# Callback (webhook) mode
# ------------------------------------------------------------------
def _startup_callback(self):
"""Start an HTTP server that receives encrypted callbacks (webhook mode).
The bot's "接收消息" URL in the WeCom admin console should point at this
server (any path is accepted). Verification (GET) and message delivery
(POST) are both handled by ``WecomBotCallbackController``.
"""
token = conf().get("wecom_bot_token", "")
aes_key = conf().get("wecom_bot_encoding_aes_key", "")
if not token or not aes_key:
err = "[WecomBot] callback mode requires wecom_bot_token and wecom_bot_encoding_aes_key"
logger.error(err)
self.report_startup_error(err)
return
try:
# Enterprise-internal smart bot: receive_id is an empty string.
self._crypt = WecomBotCrypt(token, aes_key, "")
except Exception as e:
err = f"[WecomBot] invalid callback credentials: {e}"
logger.error(err)
self.report_startup_error(err)
return
port = int(conf().get("wecom_bot_port", 9892))
logger.info(f"[WecomBot] Starting callback (webhook) server on port {port}, path {CALLBACK_PATH} ...")
# Only serve the fixed callback path; everything else 404s instead of being
# treated as a (signature-failing) WeCom callback.
urls = (re.escape(CALLBACK_PATH), "channel.wecom_bot.wecom_bot_channel.WecomBotCallbackController")
app = web.application(urls, globals(), autoreload=False)
func = web.httpserver.StaticMiddleware(app.wsgifunc())
func = web.httpserver.LogMiddleware(func)
server = web.httpserver.WSGIServer(("0.0.0.0", port), func)
self._http_server = server
self.report_startup_success()
try:
server.start()
except (KeyboardInterrupt, SystemExit):
server.stop()
def _new_callback_stream(self, response_url: str = "") -> str:
"""Create a new stream state and return its id."""
stream_id = uuid.uuid4().hex[:16]
now = time.time()
with self._callback_lock:
self._callback_streams[stream_id] = {
"committed": "",
"current": "",
"finished": False,
"images": [], # list of (base64_str, md5_str), flushed only at finish
"image_urls": [], # public http(s) image urls (usable in response_url markdown)
"image_pending": False, # an image reply is being prepared; don't finish on text yet
"last_access": now,
"created_at": now,
"response_url": response_url or "",
"delivered": False, # final answer handed to WeCom via a poll
"url_sent": False, # final answer pushed via response_url (active reply)
}
return stream_id
def _callback_handle_message(self, data: dict) -> dict:
"""Handle a freshly-received user message in callback mode.
Produces the context for async processing and returns the initial passive
reply (a stream packet with finish=false) so WeCom starts polling for the
agent's streamed answer. Returns ``None`` when there's nothing to reply
(e.g. an image/file silently cached for the next query).
"""
msg_id = data.get("msgid", "")
if msg_id and self.received_msgs.get(msg_id):
logger.debug(f"[WecomBot] Duplicate msg filtered: {msg_id}")
return None
if msg_id:
self.received_msgs[msg_id] = True
chattype = data.get("chattype", "single")
is_group = chattype == "group"
default_aeskey = conf().get("wecom_bot_encoding_aes_key", "")
result = self._build_context(data, is_group, default_aeskey=default_aeskey)
if not result:
return None
context, wecom_msg = result
# response_url lets us actively reply once within 1h, used as a fallback
# when the agent finishes after WeCom stops polling (max ~6min window).
response_url = data.get("response_url", "") or ""
stream_id = self._new_callback_stream(response_url=response_url)
wecom_msg.stream_id = stream_id
context["wecom_stream_id"] = stream_id
context["on_event"] = self._make_callback_stream_callback(stream_id)
self.produce(context)
# First passive reply: register the stream id, WeCom will poll for updates.
return {
"msgtype": "stream",
"stream": {"id": stream_id, "finish": False, "content": ""},
}
def _callback_handle_stream_poll(self, data: dict) -> dict:
"""Handle a "流式消息刷新" poll: return the latest accumulated content."""
stream_id = data.get("stream", {}).get("id", "")
with self._callback_lock:
state = self._callback_streams.get(stream_id)
if state is None:
# Unknown / expired stream: tell WeCom we're done to stop polling.
return {"msgtype": "stream", "stream": {"id": stream_id, "finish": True, "content": ""}}
state["last_access"] = time.time()
if state.get("url_sent"):
# Final answer already pushed via response_url; finish silently.
return {"msgtype": "stream", "stream": {"id": stream_id, "finish": True, "content": ""}}
# We never force-finish on a timer: while a task is still running the
# bubble should keep spinning until either the task finishes or the
# user cancels. If WeCom's 6min window closes before completion, the
# answer is delivered later via response_url instead.
finished = state["finished"]
content = state["committed"] + state["current"]
images = state["images"] if finished else []
if finished:
state["delivered"] = True
logger.debug(f"[WecomBot] stream {stream_id} delivered via poll, len={len(content)}, images={len(images)}")
stream = {"id": stream_id, "finish": finished, "content": content}
if images:
stream["msg_item"] = [
{"msgtype": "image", "image": {"base64": b64, "md5": md5}}
for (b64, md5) in images
]
return {"msgtype": "stream", "stream": stream}
def _make_callback_stream_callback(self, stream_id: str):
"""Build an on_event callback that accumulates agent output into stream state.
Mirrors the websocket streaming behaviour: intermediate turns (text before
a tool call) are committed with a '---' separator; WeCom reads the full
accumulated content on each poll.
"""
def on_event(event: dict):
event_type = event.get("type")
edata = event.get("data", {})
cancelled = False
with self._callback_lock:
state = self._callback_streams.get(stream_id)
if not state:
return
if event_type == "turn_start":
state["current"] = ""
elif event_type == "message_update":
delta = edata.get("delta", "")
if delta:
state["current"] += delta
elif event_type == "message_end":
tool_calls = edata.get("tool_calls", [])
if tool_calls:
if state["current"].strip():
state["committed"] += state["current"].strip() + "\n\n---\n\n"
state["current"] = ""
else:
state["committed"] += state["current"]
state["current"] = ""
elif event_type == "agent_cancelled":
# Mechanism 1: a cancelled run never reaches send(), so finalize
# its stream here to stop the "···" bubble immediately.
if state["current"]:
state["committed"] += state["current"]
state["current"] = ""
state["committed"] = state["committed"].rstrip()
if state["committed"].endswith("---"):
state["committed"] = state["committed"][:-3].rstrip()
if not state["committed"].strip():
state["committed"] = "🛑 已中止"
state["finished"] = True
state["last_access"] = time.time()
cancelled = True
if cancelled:
# Outside the lock: response_url fallback re-acquires it.
self._schedule_response_url_fallback(stream_id)
return on_event
# ------------------------------------------------------------------ # ------------------------------------------------------------------
# Subscribe & heartbeat # Subscribe & heartbeat
# ------------------------------------------------------------------ # ------------------------------------------------------------------
@@ -287,16 +499,31 @@ class WecomBotChannel(ChatChannel):
chattype = body.get("chattype", "single") chattype = body.get("chattype", "single")
is_group = chattype == "group" is_group = chattype == "group"
result = self._build_context(body, is_group)
if not result:
return
context, wecom_msg = result
wecom_msg.req_id = req_id
if req_id:
context["on_event"] = self._make_stream_callback(req_id)
self.produce(context)
def _build_context(self, body: dict, is_group: bool, default_aeskey: str = ""):
"""Parse a wecom message body into a Context, applying file-cache logic.
Shared by both the websocket (long-connection) and callback (webhook)
receive paths. Returns ``(context, wecom_msg)`` when the message should be
handed to the agent, or ``None`` when it was consumed (cached image/file,
parse failure, etc.).
"""
try: try:
wecom_msg = WecomBotMessage(body, is_group=is_group) wecom_msg = WecomBotMessage(body, is_group=is_group, default_aeskey=default_aeskey)
except NotImplementedError as e: except NotImplementedError as e:
logger.warning(f"[WecomBot] {e}") logger.warning(f"[WecomBot] {e}")
return return None
except Exception as e: except Exception as e:
logger.error(f"[WecomBot] Failed to parse message: {e}", exc_info=True) logger.error(f"[WecomBot] Failed to parse message: {e}", exc_info=True)
return return None
wecom_msg.req_id = req_id
# File cache logic (same pattern as feishu) # File cache logic (same pattern as feishu)
from channel.file_cache import get_file_cache from channel.file_cache import get_file_cache
@@ -314,13 +541,13 @@ class WecomBotChannel(ChatChannel):
if hasattr(wecom_msg, "image_path") and wecom_msg.image_path: if hasattr(wecom_msg, "image_path") and wecom_msg.image_path:
file_cache.add(session_id, wecom_msg.image_path, file_type="image") file_cache.add(session_id, wecom_msg.image_path, file_type="image")
logger.info(f"[WecomBot] Image cached for session {session_id}") logger.info(f"[WecomBot] Image cached for session {session_id}")
return return None
if wecom_msg.ctype == ContextType.FILE: if wecom_msg.ctype == ContextType.FILE:
wecom_msg.prepare() wecom_msg.prepare()
file_cache.add(session_id, wecom_msg.content, file_type="file") file_cache.add(session_id, wecom_msg.content, file_type="file")
logger.info(f"[WecomBot] File cached for session {session_id}: {wecom_msg.content}") logger.info(f"[WecomBot] File cached for session {session_id}: {wecom_msg.content}")
return return None
if wecom_msg.ctype == ContextType.TEXT: if wecom_msg.ctype == ContextType.TEXT:
cached_files = file_cache.get(session_id) cached_files = file_cache.get(session_id)
@@ -346,10 +573,9 @@ class WecomBotChannel(ChatChannel):
msg=wecom_msg, msg=wecom_msg,
no_need_at=True, no_need_at=True,
) )
if context: if not context:
if req_id: return None
context["on_event"] = self._make_stream_callback(req_id) return context, wecom_msg
self.produce(context)
# ------------------------------------------------------------------ # ------------------------------------------------------------------
# Event callback # Event callback
@@ -490,11 +716,233 @@ class WecomBotChannel(ChatChannel):
return context return context
# ------------------------------------------------------------------
# Callback (webhook) send: write the final reply into the stream state
# so the next "流式消息刷新" poll returns it with finish=true.
# ------------------------------------------------------------------
def _callback_send(self, reply: Reply, context: Context):
msg = context.get("msg")
stream_id = getattr(msg, "stream_id", None) if msg else None
if not stream_id:
stream_id = context.get("wecom_stream_id")
if not stream_id:
logger.warning("[WecomBot] callback send without stream_id, dropping reply")
return
if reply.type == ReplyType.TEXT:
self._callback_finalize_text(stream_id, reply.content)
elif reply.type in (ReplyType.IMAGE_URL, ReplyType.IMAGE):
self._callback_finalize_image(stream_id, reply.content)
elif reply.type == ReplyType.FILE:
# Passive callback replies only support text + image (base64); files
# are not supported by the protocol, so append a notice to whatever
# text the agent already streamed (do not drop it).
text = getattr(reply, "text_content", "") or ""
note = (text + "\n\n" if text else "") + "(文件无法在企微回调模式下直接发送)"
self._callback_finalize_text(stream_id, note, append=True)
elif reply.type in (ReplyType.VIDEO, ReplyType.VIDEO_URL, ReplyType.VOICE):
logger.warning(f"[WecomBot] reply type {reply.type} not supported in callback mode")
text = getattr(reply, "text_content", "") or ""
note = (text + "\n\n" if text else "") + "(该消息类型无法在企微回调模式下直接发送)"
self._callback_finalize_text(stream_id, note, append=True)
else:
self._callback_finalize_text(stream_id, str(reply.content))
def _callback_get_or_create_state(self, stream_id: str) -> dict:
state = self._callback_streams.get(stream_id)
if state is None:
now = time.time()
state = {
"committed": "",
"current": "",
"finished": False,
"images": [],
"image_urls": [],
"image_pending": False,
"last_access": now,
"created_at": now,
"response_url": "",
"delivered": False,
"url_sent": False,
}
self._callback_streams[stream_id] = state
return state
def _callback_finalize_text(self, stream_id: str, content: str, append: bool = False):
with self._callback_lock:
state = self._callback_get_or_create_state(stream_id)
accumulated = (state["committed"] + state["current"]).strip()
if append and accumulated:
state["committed"] = (accumulated + "\n\n" + (content or "")).strip()
else:
state["committed"] = accumulated if accumulated else (content or "")
state["current"] = ""
state["last_access"] = time.time()
# Don't finish synchronously: chat_channel splits an image-with-caption
# reply into a TEXT send followed (0.3s later) by the IMAGE send. If the
# text finished the stream immediately, WeCom would close it before the
# image arrives. Defer the finish so a trailing image can merge in.
self._schedule_text_finish(stream_id)
def _schedule_text_finish(self, stream_id: str, delay: float = 1.2):
def _run():
time.sleep(delay)
with self._callback_lock:
state = self._callback_streams.get(stream_id)
if not state or state["finished"] or state.get("image_pending"):
return # already finished, or an image reply is on its way
state["finished"] = True
state["last_access"] = time.time()
self._schedule_response_url_fallback(stream_id)
threading.Thread(target=_run, daemon=True, name=f"wecom-textfin-{stream_id}").start()
def _callback_finalize_image(self, stream_id: str, img_path_or_url: str):
# Mark the image as pending up front (before the slow load/compress) so a
# preceding text finalize won't close the stream while we work.
with self._callback_lock:
self._callback_get_or_create_state(stream_id)["image_pending"] = True
b64md5 = self._load_image_base64(img_path_or_url)
with self._callback_lock:
state = self._callback_get_or_create_state(stream_id)
accumulated = (state["committed"] + state["current"]).strip()
state["current"] = ""
if b64md5:
state["images"].append(b64md5)
state["committed"] = accumulated
# Remember the public url (if any) so the response_url fallback
# can embed it as markdown when the poll window has closed.
if img_path_or_url.startswith(("http://", "https://")):
state["image_urls"].append(img_path_or_url)
else:
state["committed"] = accumulated or "[图片发送失败]"
state["finished"] = True
state["image_pending"] = False
state["last_access"] = time.time()
self._schedule_response_url_fallback(stream_id)
# ------------------------------------------------------------------
# Active reply fallback (response_url): rescue replies that finish after
# WeCom stops polling (the passive stream window is ~6 min from the user's
# message). A short delay lets an in-flight poll deliver first; only if no
# poll picks up the finished answer do we push it actively via response_url.
# ------------------------------------------------------------------
def _schedule_response_url_fallback(self, stream_id: str, delay: float = 3.0):
def _run():
time.sleep(delay)
with self._callback_lock:
state = self._callback_streams.get(stream_id)
if not state:
return
if state.get("delivered") or state.get("url_sent"):
return # a poll already delivered (or fallback already ran)
response_url = state.get("response_url") or ""
if not response_url:
logger.warning(
f"[WecomBot] stream {stream_id} finished after poll window but no response_url; reply dropped"
)
return
content = (state["committed"] + state["current"]).strip()
image_urls = list(state.get("image_urls") or [])
has_images = bool(state.get("images"))
state["url_sent"] = True
self._send_via_response_url(stream_id, response_url, content, image_urls, has_images)
threading.Thread(target=_run, daemon=True, name=f"wecom-respurl-{stream_id}").start()
def _send_via_response_url(self, stream_id, response_url, content, image_urls, has_images):
"""Push a one-shot active markdown reply to response_url (valid 1h, single use)."""
md = content or ""
if image_urls:
md += ("\n\n" if md else "") + "\n".join(f"![]({u})" for u in image_urls)
elif has_images:
md += ("\n\n" if md else "") + "(图片已生成,但因处理超时无法通过回调发送)"
if not md:
md = "(处理完成)"
payload = {"msgtype": "markdown", "markdown": {"content": md}}
try:
resp = requests.post(response_url, json=payload, timeout=15)
logger.info(
f"[WecomBot] response_url active reply sent for {stream_id}: "
f"status={resp.status_code}, body={resp.text[:200]}"
)
except Exception as e:
logger.error(f"[WecomBot] response_url active reply failed for {stream_id}: {e}")
def _load_image_base64(self, img_path_or_url: str):
"""Load a local/remote image, ensure JPG/PNG within 10MB, return (base64, md5)."""
local_path = img_path_or_url
if local_path.startswith("file://"):
local_path = local_path[7:]
# Temp files we create here (downloads/conversions/compressions) must be
# cleaned up afterwards; the caller's original local file must not be.
temp_files = []
try:
if local_path.startswith(("http://", "https://")):
try:
resp = requests.get(local_path, timeout=30)
resp.raise_for_status()
tmp_path = f"/tmp/wecom_cb_img_{uuid.uuid4().hex[:8]}"
with open(tmp_path, "wb") as f:
f.write(resp.content)
temp_files.append(tmp_path)
local_path = tmp_path
except Exception as e:
logger.error(f"[WecomBot] Failed to download image for callback reply: {e}")
return None
if not os.path.exists(local_path):
logger.error(f"[WecomBot] Image file not found: {local_path}")
return None
formatted = self._ensure_image_format(local_path)
if not formatted:
return None
if formatted != local_path:
temp_files.append(formatted)
local_path = formatted
# Unlike the long-connection path (which uploads and sends only a tiny
# media_id), the callback reply embeds the whole image as base64 inside
# an AES-encrypted body that is returned on EVERY poll. Empirically a
# ~1.5MB image (base64 ~2.1MB, encrypted ~2.8MB) makes WeCom reject the
# finish packet and poll forever, so cap well below that.
callback_max_size = 512 * 1024
if os.path.getsize(local_path) > callback_max_size:
compressed = self._compress_image(local_path, callback_max_size)
if compressed:
temp_files.append(compressed)
local_path = compressed
else:
logger.warning("[WecomBot] callback image compress failed; sending original (may be rejected)")
try:
with open(local_path, "rb") as f:
raw = f.read()
return base64.b64encode(raw).decode("utf-8"), hashlib.md5(raw).hexdigest()
except Exception as e:
logger.error(f"[WecomBot] Failed to read image for callback reply: {e}")
return None
finally:
for path in temp_files:
try:
os.remove(path)
except OSError:
pass
# ------------------------------------------------------------------ # ------------------------------------------------------------------
# Send reply # Send reply
# ------------------------------------------------------------------ # ------------------------------------------------------------------
def send(self, reply: Reply, context: Context): def send(self, reply: Reply, context: Context):
if self.mode == "webhook":
self._callback_send(reply, context)
return
msg = context.get("msg") msg = context.get("msg")
is_group = context.get("isgroup", False) is_group = context.get("isgroup", False)
receiver = context.get("receiver", "") receiver = context.get("receiver", "")
@@ -906,3 +1354,85 @@ class WecomBotChannel(ChatChannel):
else: else:
logger.error("[WecomBot] Failed to get media_id from finish response") logger.error("[WecomBot] Failed to get media_id from finish response")
return media_id return media_id
class WecomBotCallbackController:
"""HTTP controller for wecom bot callback (webhook) mode.
- GET : URL verification (echo the decrypted echostr).
- POST : encrypted message / stream-refresh / event callbacks; returns an
encrypted passive reply (or "success" for an empty reply).
"""
@staticmethod
def _channel() -> "WecomBotChannel":
return WecomBotChannel()
def GET(self):
channel = self._channel()
params = web.input(msg_signature="", timestamp="", nonce="", echostr="")
if not channel._crypt:
return "wecom bot callback not ready"
ret, echo = channel._crypt.verify_url(
params.msg_signature, params.timestamp, params.nonce, params.echostr
)
if ret != 0:
logger.error(f"[WecomBot] URL verify failed: ret={ret}")
return "verify fail"
if isinstance(echo, bytes):
echo = echo.decode("utf-8")
return echo
def POST(self):
channel = self._channel()
if not channel._crypt:
return "success"
params = web.input(msg_signature="", timestamp="", nonce="")
body = web.data()
ret, plain = channel._crypt.decrypt_msg(
body, params.msg_signature, params.timestamp, params.nonce
)
if ret != 0:
logger.error(f"[WecomBot] callback decrypt failed: ret={ret}")
return "success"
try:
data = json.loads(plain)
except Exception as e:
logger.error(f"[WecomBot] callback json parse failed: {e}")
return "success"
msgtype = data.get("msgtype", "")
# Stream polls arrive ~1/s; logging each is noisy, so only log non-poll
# callbacks here (poll completion is logged in the stream-poll handler).
if msgtype != "stream":
logger.debug(f"[WecomBot] callback received msgtype={msgtype}")
try:
if msgtype == "stream":
reply = channel._callback_handle_stream_poll(data)
elif msgtype == "event":
event_type = data.get("event", {}).get("eventtype", "")
logger.info(f"[WecomBot] callback event: {event_type}")
reply = None
elif msgtype in ("text", "image", "voice", "file", "video", "mixed"):
reply = channel._callback_handle_message(data)
else:
logger.warning(f"[WecomBot] unsupported callback msgtype: {msgtype}")
reply = None
except Exception as e:
logger.error(f"[WecomBot] callback handling error: {e}", exc_info=True)
reply = None
if not reply:
# Empty reply package is acceptable.
return "success"
plain_reply = json.dumps(reply, ensure_ascii=False)
ret, enc = channel._crypt.encrypt_msg(plain_reply, params.nonce, params.timestamp)
if ret != 0:
logger.error(f"[WecomBot] callback encrypt failed: ret={ret}")
return "success"
web.header("Content-Type", "application/json; charset=utf-8")
return json.dumps(enc, ensure_ascii=False)

View File

@@ -0,0 +1,203 @@
"""
WeCom (企业微信) smart-bot callback message encryption/decryption.
Adapted from the official `WXBizJsonMsgCrypt` sample (JSON variant) used by the
AI bot callback (webhook) mode. The bot's receive-message callback delivers
AES-256-CBC encrypted JSON payloads, and passive replies must be encrypted the
same way before being returned in the HTTP response.
For an enterprise-internal smart bot, ``receive_id`` is always an empty string.
"""
import base64
import hashlib
import random
import socket
import struct
import time
from Crypto.Cipher import AES
from common.log import logger
# Error codes (mirrors the official ierror.py)
WXBizMsgCrypt_OK = 0
WXBizMsgCrypt_ValidateSignature_Error = -40001
WXBizMsgCrypt_ParseJson_Error = -40002
WXBizMsgCrypt_ComputeSignature_Error = -40003
WXBizMsgCrypt_IllegalAesKey = -40004
WXBizMsgCrypt_ValidateCorpid_Error = -40005
WXBizMsgCrypt_EncryptAES_Error = -40006
WXBizMsgCrypt_DecryptAES_Error = -40007
WXBizMsgCrypt_IllegalBuffer = -40008
WXBizMsgCrypt_EncodeBase64_Error = -40009
WXBizMsgCrypt_DecodeBase64_Error = -40010
WXBizMsgCrypt_GenReturnJson_Error = -40011
class FormatException(Exception):
pass
def _gen_sha1(token, timestamp, nonce, encrypt):
"""Compute the WeCom message signature with SHA1 over the sorted parts."""
try:
if isinstance(encrypt, bytes):
encrypt = encrypt.decode("utf-8")
sortlist = [str(token), str(timestamp), str(nonce), str(encrypt)]
sortlist.sort()
sha = hashlib.sha1()
sha.update("".join(sortlist).encode("utf-8"))
return WXBizMsgCrypt_OK, sha.hexdigest()
except Exception as e:
logger.error(f"[WecomBot] compute signature error: {e}")
return WXBizMsgCrypt_ComputeSignature_Error, None
class _PKCS7Encoder:
"""PKCS#7 padding with a 32-byte block size (AES-256)."""
block_size = 32
def encode(self, text: bytes) -> bytes:
text_length = len(text)
amount_to_pad = self.block_size - (text_length % self.block_size)
if amount_to_pad == 0:
amount_to_pad = self.block_size
pad = bytes([amount_to_pad])
return text + pad * amount_to_pad
def decode(self, decrypted: bytes) -> bytes:
pad = decrypted[-1]
if pad < 1 or pad > 32:
pad = 0
return decrypted[:-pad] if pad else decrypted
class _Prpcrypt:
"""AES-256-CBC encrypt/decrypt for WeCom callback messages."""
def __init__(self, key: bytes):
self.key = key
self.mode = AES.MODE_CBC
def encrypt(self, text: str, receive_id: str):
text_bytes = text.encode()
# 16-byte random prefix + network-order length + body + receive_id
text_bytes = (
self._get_random_str()
+ struct.pack("I", socket.htonl(len(text_bytes)))
+ text_bytes
+ receive_id.encode()
)
text_bytes = _PKCS7Encoder().encode(text_bytes)
try:
cryptor = AES.new(self.key, self.mode, self.key[:16])
ciphertext = cryptor.encrypt(text_bytes)
return WXBizMsgCrypt_OK, base64.b64encode(ciphertext)
except Exception as e:
logger.error(f"[WecomBot] AES encrypt error: {e}")
return WXBizMsgCrypt_EncryptAES_Error, None
def decrypt(self, text, receive_id: str):
try:
cryptor = AES.new(self.key, self.mode, self.key[:16])
plain_text = cryptor.decrypt(base64.b64decode(text))
except Exception as e:
logger.error(f"[WecomBot] AES decrypt error: {e}")
return WXBizMsgCrypt_DecryptAES_Error, None
try:
pad = plain_text[-1]
content = plain_text[16:-pad]
json_len = socket.ntohl(struct.unpack("I", content[:4])[0])
json_content = content[4 : json_len + 4].decode("utf-8")
from_receive_id = content[json_len + 4 :].decode("utf-8")
except Exception as e:
logger.error(f"[WecomBot] illegal buffer when decrypting: {e}")
return WXBizMsgCrypt_IllegalBuffer, None
if from_receive_id != receive_id:
logger.error(
f"[WecomBot] receive_id not match: expect={receive_id}, got={from_receive_id}"
)
return WXBizMsgCrypt_ValidateCorpid_Error, None
return WXBizMsgCrypt_OK, json_content
@staticmethod
def _get_random_str() -> bytes:
return str(random.randint(1000000000000000, 9999999999999999)).encode()
class WecomBotCrypt:
"""High-level helper for verifying URLs and (de)crypting callback messages."""
def __init__(self, token: str, encoding_aes_key: str, receive_id: str = ""):
try:
self.key = base64.b64decode(encoding_aes_key + "=")
assert len(self.key) == 32
except Exception:
raise FormatException("[WecomBot] invalid EncodingAESKey")
self.token = token
self.receive_id = receive_id
def verify_url(self, msg_signature, timestamp, nonce, echostr):
ret, signature = _gen_sha1(self.token, timestamp, nonce, echostr)
if ret != 0:
return ret, None
if signature != msg_signature:
return WXBizMsgCrypt_ValidateSignature_Error, None
pc = _Prpcrypt(self.key)
return pc.decrypt(echostr, self.receive_id)
def encrypt_msg(self, reply_msg: str, nonce: str, timestamp: str = None):
"""Encrypt a passive-reply JSON string and return the full response JSON.
Returns (ret, response_dict). On success ret==0 and response_dict is a
dict with encrypt/msgsignature/timestamp/nonce fields.
"""
pc = _Prpcrypt(self.key)
ret, encrypt = pc.encrypt(reply_msg, self.receive_id)
if ret != 0:
return ret, None
encrypt = encrypt.decode("utf-8")
if timestamp is None:
timestamp = str(int(time.time()))
ret, signature = _gen_sha1(self.token, timestamp, nonce, encrypt)
if ret != 0:
return ret, None
return WXBizMsgCrypt_OK, {
"encrypt": encrypt,
"msgsignature": signature,
"timestamp": timestamp,
"nonce": nonce,
}
def decrypt_msg(self, post_data, msg_signature, timestamp, nonce):
"""Verify signature and decrypt the encrypted callback payload.
``post_data`` may be the raw request body (bytes/str) containing
``{"encrypt": "..."}`` or the already-extracted encrypt string.
Returns (ret, plaintext_json_str).
"""
import json
encrypt = None
if isinstance(post_data, (bytes, bytearray)):
post_data = post_data.decode("utf-8")
if isinstance(post_data, str):
try:
encrypt = json.loads(post_data).get("encrypt")
except Exception:
encrypt = post_data
elif isinstance(post_data, dict):
encrypt = post_data.get("encrypt")
if not encrypt:
return WXBizMsgCrypt_ParseJson_Error, None
ret, signature = _gen_sha1(self.token, timestamp, nonce, encrypt)
if ret != 0:
return ret, None
if signature != msg_signature:
logger.error("[WecomBot] callback signature not match")
return WXBizMsgCrypt_ValidateSignature_Error, None
pc = _Prpcrypt(self.key)
return pc.decrypt(encrypt, self.receive_id)

View File

@@ -87,11 +87,14 @@ def _get_tmp_dir() -> str:
class WecomBotMessage(ChatMessage): class WecomBotMessage(ChatMessage):
"""Message wrapper for wecom bot (websocket long-connection mode).""" """Message wrapper for wecom bot (websocket long-connection mode)."""
def __init__(self, msg_body: dict, is_group: bool = False): def __init__(self, msg_body: dict, is_group: bool = False, default_aeskey: str = ""):
super().__init__(msg_body) super().__init__(msg_body)
self.msg_id = msg_body.get("msgid") self.msg_id = msg_body.get("msgid")
self.create_time = msg_body.get("create_time") self.create_time = msg_body.get("create_time")
self.is_group = is_group self.is_group = is_group
# In callback (webhook) mode the media bodies carry no per-message aeskey;
# the download url is encrypted with the bot's EncodingAESKey instead.
self._default_aeskey = default_aeskey
msg_type = msg_body.get("msgtype") msg_type = msg_body.get("msgtype")
from_userid = msg_body.get("from", {}).get("userid", "") from_userid = msg_body.get("from", {}).get("userid", "")
@@ -113,7 +116,7 @@ class WecomBotMessage(ChatMessage):
self.ctype = ContextType.IMAGE self.ctype = ContextType.IMAGE
image_info = msg_body.get("image", {}) image_info = msg_body.get("image", {})
image_url = image_info.get("url", "") image_url = image_info.get("url", "")
aeskey = image_info.get("aeskey", "") aeskey = image_info.get("aeskey", "") or self._default_aeskey
tmp_dir = _get_tmp_dir() tmp_dir = _get_tmp_dir()
image_path = os.path.join(tmp_dir, f"wecom_{self.msg_id}.png") image_path = os.path.join(tmp_dir, f"wecom_{self.msg_id}.png")
@@ -147,7 +150,7 @@ class WecomBotMessage(ChatMessage):
elif item_type == "image": elif item_type == "image":
img_info = item.get("image", {}) img_info = item.get("image", {})
img_url = img_info.get("url", "") img_url = img_info.get("url", "")
img_aeskey = img_info.get("aeskey", "") img_aeskey = img_info.get("aeskey", "") or self._default_aeskey
img_path = os.path.join(tmp_dir, f"wecom_{self.msg_id}_{idx}.png") img_path = os.path.join(tmp_dir, f"wecom_{self.msg_id}_{idx}.png")
try: try:
img_data = _decrypt_media(img_url, img_aeskey) img_data = _decrypt_media(img_url, img_aeskey)
@@ -166,7 +169,7 @@ class WecomBotMessage(ChatMessage):
self.ctype = ContextType.FILE self.ctype = ContextType.FILE
file_info = msg_body.get("file", {}) file_info = msg_body.get("file", {})
file_url = file_info.get("url", "") file_url = file_info.get("url", "")
aeskey = file_info.get("aeskey", "") aeskey = file_info.get("aeskey", "") or self._default_aeskey
tmp_dir = _get_tmp_dir() tmp_dir = _get_tmp_dir()
base_path = os.path.join(tmp_dir, f"wecom_{self.msg_id}") base_path = os.path.join(tmp_dir, f"wecom_{self.msg_id}")
self.content = base_path self.content = base_path
@@ -188,7 +191,7 @@ class WecomBotMessage(ChatMessage):
self.ctype = ContextType.FILE self.ctype = ContextType.FILE
video_info = msg_body.get("video", {}) video_info = msg_body.get("video", {})
video_url = video_info.get("url", "") video_url = video_info.get("url", "")
aeskey = video_info.get("aeskey", "") aeskey = video_info.get("aeskey", "") or self._default_aeskey
tmp_dir = _get_tmp_dir() tmp_dir = _get_tmp_dir()
self.content = os.path.join(tmp_dir, f"wecom_{self.msg_id}.mp4") self.content = os.path.join(tmp_dir, f"wecom_{self.msg_id}.mp4")

View File

@@ -1 +1 @@
2.0.9 2.1.1

View File

@@ -3,7 +3,7 @@
import click import click
from cli import __version__ from cli import __version__
from cli.commands.skill import skill from cli.commands.skill import skill
from cli.commands.process import start, stop, restart, update, status, logs from cli.commands.process import start, stop, restart, self_restart, update, status, logs
from cli.commands.context import context from cli.commands.context import context
from cli.commands.install import install_browser from cli.commands.install import install_browser
from cli.commands.knowledge import knowledge from cli.commands.knowledge import knowledge
@@ -68,6 +68,7 @@ main.add_command(skill)
main.add_command(start) main.add_command(start)
main.add_command(stop) main.add_command(stop)
main.add_command(restart) main.add_command(restart)
main.add_command(self_restart)
main.add_command(update) main.add_command(update)
main.add_command(status) main.add_command(status)
main.add_command(logs) main.add_command(logs)

View File

@@ -78,12 +78,13 @@ def _is_china_network() -> bool:
def _pip_install(package_spec: str, stream: StreamFn) -> int: def _pip_install(package_spec: str, stream: StreamFn) -> int:
"""Install a package, retrying with --user on permission failure.""" """Install a package, preferring prebuilt wheels; retry with --user on perm error."""
python = sys.executable python = sys.executable
ret = subprocess.call([python, "-m", "pip", "install", package_spec]) base = [python, "-m", "pip", "install", "--prefer-binary"]
ret = subprocess.call(base + [package_spec])
if ret != 0: if ret != 0:
stream(" Retrying with --user flag...", "yellow") stream(" Retrying with --user flag...", "yellow")
ret = subprocess.call([python, "-m", "pip", "install", "--user", package_spec]) ret = subprocess.call(base + ["--user", package_spec])
return ret return ret
@@ -155,6 +156,22 @@ def run_install_browser(
target_version = PLAYWRIGHT_LEGACY_VERSION if legacy_mode else PLAYWRIGHT_VERSION target_version = PLAYWRIGHT_LEGACY_VERSION if legacy_mode else PLAYWRIGHT_VERSION
# Windows-only: greenlet 3.2.x ships no Windows wheel, so pip would build it
# from source (needs MSVC) and fail. Pre-install 3.1.x (has win wheels for
# py3.7-3.13) which still satisfies playwright's greenlet>=3.1.1,<4.
if sys.platform == "win32":
stream("[1/3] Pre-installing greenlet (prebuilt wheel) for Windows...", "yellow")
ret = subprocess.call(
[python, "-m", "pip", "install", "--only-binary=:all:", "greenlet>=3.1.1,<3.2"]
)
if ret != 0:
stream(
" Could not pre-install a prebuilt greenlet wheel.\n"
" playwright may try to build greenlet from source, which needs\n"
" Microsoft C++ Build Tools: https://visualstudio.microsoft.com/visual-cpp-build-tools/",
"yellow",
)
_phase(on_phase, _t("📦 [1/3] 正在安装 Playwright Python 包…", "📦 [1/3] Installing Playwright Python package…")) _phase(on_phase, _t("📦 [1/3] 正在安装 Playwright Python 包…", "📦 [1/3] Installing Playwright Python package…"))
stream("[1/3] Installing playwright Python package...", "yellow") stream("[1/3] Installing playwright Python package...", "yellow")
ret = _pip_install(f"playwright=={target_version}", stream) ret = _pip_install(f"playwright=={target_version}", stream)

View File

@@ -195,6 +195,120 @@ def restart(ctx, no_logs):
ctx.invoke(start, no_logs=no_logs) ctx.invoke(start, no_logs=no_logs)
# Detached relay that survives the caller's process tree. Run via `python -c`
# with start_new_session=True so it keeps going after the agent's bash child
# (and the main app it kills) both die. Flow: self-check the new code FIRST
# (import app); abort without touching the old process if it fails. Only when
# the new code is loadable does it SIGTERM the old PID, wait for exit (SIGKILL
# fallback), then start a fresh app.py and write the pid.
_RELAY_SCRIPT = r"""
import os, sys, time, signal, subprocess
root, python, app_py, pid_file, log_file = sys.argv[1:6]
old_pid = int(sys.argv[6]) if len(sys.argv) > 6 and sys.argv[6] else 0
def alive(pid):
if not pid:
return False
try:
os.kill(pid, 0)
return True
except OSError:
return False
def log(msg):
try:
with open(log_file, "a") as f:
f.write("[self-restart] " + msg + "\n")
except OSError:
pass
# 0) Self-check: make sure the new code actually loads BEFORE killing anything.
# `import app` exercises top-level imports / syntax of the entry module. If it
# fails, abort and leave the running service untouched — never end up with the
# old process killed and the new one unable to start.
check = subprocess.run(
[python, "-c", "import app"], cwd=root,
stdout=subprocess.PIPE, stderr=subprocess.STDOUT,
)
if check.returncode != 0:
detail = (check.stdout or b"").decode("utf-8", "replace").strip()
log("self-check FAILED, aborting restart; service left running:\n" + detail)
sys.exit(1)
log("self-check passed")
# 1) Ask the old process to exit gracefully (its SIGTERM handler persists state).
if alive(old_pid):
try:
os.kill(old_pid, signal.SIGTERM)
except OSError:
pass
# 2) Wait up to ~15s for it to go, then force-kill as a backstop.
for _ in range(150):
if not alive(old_pid):
break
time.sleep(0.1)
else:
try:
os.kill(old_pid, signal.SIGKILL)
except OSError:
pass
time.sleep(0.5)
# 3) Start a fresh instance, detached, logging to the same file.
with open(log_file, "a") as f:
proc = subprocess.Popen(
[python, app_py], cwd=root,
stdout=f, stderr=f, start_new_session=True,
)
with open(pid_file, "w") as f:
f.write(str(proc.pid))
log("restarted, new pid=" + str(proc.pid))
"""
@click.command(name="self-restart", hidden=True)
def self_restart():
"""Restart from inside the running agent (detached; survives parent death).
Intended to be invoked by the agent itself (e.g. via bash after editing its
own code), not by users — so it is hidden from `cow help`. Unlike `restart`,
the actual stop+start runs in a detached relay process that outlives the
agent's bash child, which would otherwise die together with the main app it
kills.
"""
if _IS_WIN:
click.echo("self-restart is not supported on Windows; use `cow restart`.", err=True)
sys.exit(1)
root = get_project_root()
app_py = os.path.join(root, "app.py")
if not os.path.exists(app_py):
click.echo("Error: app.py not found in project root.", err=True)
sys.exit(1)
python = sys.executable
pid = _read_pid() or 0
subprocess.Popen(
[
python, "-c", _RELAY_SCRIPT,
root, python, app_py, _get_pid_file(), _get_log_file(), str(pid),
],
cwd=root,
start_new_session=True,
stdout=subprocess.DEVNULL,
stderr=subprocess.DEVNULL,
)
click.echo(click.style(
"✓ Restart scheduled. The service will stop and come back in a few seconds.",
fg="green",
))
@click.command() @click.command()
@click.pass_context @click.pass_context
def update(ctx): def update(ctx):
@@ -275,7 +389,7 @@ def update(ctx):
def status(): def status():
"""Show CowAgent running status.""" """Show CowAgent running status."""
from cli import __version__ from cli import __version__
from cli.utils import load_config_json, get_cli_language from cli.utils import load_config_json, get_cli_language, get_project_root
# get_cli_language() calls ensure_sys_path(), which adds the project root # get_cli_language() calls ensure_sys_path(), which adds the project root
# to sys.path. Import `common` only AFTER that, otherwise it fails with # to sys.path. Import `common` only AFTER that, otherwise it fails with
@@ -292,6 +406,11 @@ def status():
click.echo(_t(f" 版本: v{__version__}", f" Version: v{__version__}")) click.echo(_t(f" 版本: v{__version__}", f" Version: v{__version__}"))
# Project path bound to this `cow` CLI — disambiguates which checkout the
# command actually controls when the user has multiple clones.
project_root = get_project_root()
click.echo(_t(f" 路径: {project_root}", f" Path: {project_root}"))
cfg = load_config_json() cfg = load_config_json()
if cfg: if cfg:
channel = cfg.get("channel_type", "unknown") channel = cfg.get("channel_type", "unknown")

View File

@@ -34,7 +34,9 @@ chat_client: LinkAIClient
CHANNEL_ACTIONS = {"channel_create", "channel_update", "channel_delete"} CHANNEL_ACTIONS = {"channel_create", "channel_update", "channel_delete"}
# channelType -> config key mapping for app credentials # channelType -> config key mapping for app credentials.
# secret_key may be "" for single-token channels (e.g. telegram/discord).
# For slack, appId carries bot_token and appSecret carries app_token.
CREDENTIAL_MAP = { CREDENTIAL_MAP = {
"feishu": ("feishu_app_id", "feishu_app_secret"), "feishu": ("feishu_app_id", "feishu_app_secret"),
"dingtalk": ("dingtalk_client_id", "dingtalk_client_secret"), "dingtalk": ("dingtalk_client_id", "dingtalk_client_secret"),
@@ -43,6 +45,9 @@ CREDENTIAL_MAP = {
"wechatmp": ("wechatmp_app_id", "wechatmp_app_secret"), "wechatmp": ("wechatmp_app_id", "wechatmp_app_secret"),
"wechatmp_service": ("wechatmp_app_id", "wechatmp_app_secret"), "wechatmp_service": ("wechatmp_app_id", "wechatmp_app_secret"),
"wechatcom_app": ("wechatcomapp_agent_id", "wechatcomapp_secret"), "wechatcom_app": ("wechatcomapp_agent_id", "wechatcomapp_secret"),
"telegram": ("telegram_token", ""),
"slack": ("slack_bot_token", "slack_app_token"),
"discord": ("discord_token", ""),
} }
@@ -167,6 +172,11 @@ class CloudClient(LinkAIClient):
if key in available_setting and config.get(key) is not None: if key in available_setting and config.get(key) is not None:
local_config[key] = config.get(key) local_config[key] = config.get(key)
# Self-evolution switch: normalize remote value (bool / "Y"/"N" / "true")
# to a real bool so the evolution config parser reads it correctly.
if config.get("self_evolution_enabled") is not None:
local_config["self_evolution_enabled"] = self._to_bool(config.get("self_evolution_enabled"))
# Voice settings # Voice settings
reply_voice_mode = config.get("reply_voice_mode") reply_voice_mode = config.get("reply_voice_mode")
if reply_voice_mode: if reply_voice_mode:
@@ -336,6 +346,20 @@ class CloudClient(LinkAIClient):
except Exception as e: except Exception as e:
logger.warning(f"[CloudClient] Failed to remove weixin credentials: {e}") logger.warning(f"[CloudClient] Failed to remove weixin credentials: {e}")
# ------------------------------------------------------------------
# value helpers
# ------------------------------------------------------------------
@staticmethod
def _to_bool(value) -> bool:
"""Normalize a remote config value to bool (bool / "Y"/"N" / "true"/"1")."""
if isinstance(value, bool):
return value
if isinstance(value, (int, float)):
return value != 0
if isinstance(value, str):
return value.strip().lower() in ("y", "yes", "true", "1", "on")
return False
# ------------------------------------------------------------------ # ------------------------------------------------------------------
# channel credentials helpers # channel credentials helpers
# ------------------------------------------------------------------ # ------------------------------------------------------------------
@@ -357,7 +381,8 @@ class CloudClient(LinkAIClient):
local_config[id_key] = app_id local_config[id_key] = app_id
os.environ[id_key.upper()] = str(app_id) os.environ[id_key.upper()] = str(app_id)
changed = True changed = True
if app_secret is not None and local_config.get(secret_key) != app_secret: # secret_key may be empty for single-token channels (e.g. telegram/discord)
if secret_key and app_secret is not None and local_config.get(secret_key) != app_secret:
local_config[secret_key] = app_secret local_config[secret_key] = app_secret
os.environ[secret_key.upper()] = str(app_secret) os.environ[secret_key.upper()] = str(app_secret)
changed = True changed = True
@@ -372,9 +397,10 @@ class CloudClient(LinkAIClient):
return return
id_key, secret_key = cred id_key, secret_key = cred
local_config.pop(id_key, None) local_config.pop(id_key, None)
local_config.pop(secret_key, None)
os.environ.pop(id_key.upper(), None) os.environ.pop(id_key.upper(), None)
os.environ.pop(secret_key.upper(), None) if secret_key:
local_config.pop(secret_key, None)
os.environ.pop(secret_key.upper(), None)
# ------------------------------------------------------------------ # ------------------------------------------------------------------
# channel_type list helpers # channel_type list helpers
@@ -848,6 +874,10 @@ def _build_config():
"agent_max_context_turns": local_conf.get("agent_max_context_turns"), "agent_max_context_turns": local_conf.get("agent_max_context_turns"),
"agent_max_context_tokens": local_conf.get("agent_max_context_tokens"), "agent_max_context_tokens": local_conf.get("agent_max_context_tokens"),
"agent_max_steps": local_conf.get("agent_max_steps"), "agent_max_steps": local_conf.get("agent_max_steps"),
# Self-evolution switch reported so the console can reflect state
"self_evolution_enabled": "Y" if local_conf.get("self_evolution_enabled") else "N",
"self_evolution_idle_minutes": local_conf.get("self_evolution_idle_minutes"),
"self_evolution_min_turns": local_conf.get("self_evolution_min_turns"),
"channelType": local_conf.get("channel_type"), "channelType": local_conf.get("channel_type"),
} }
@@ -862,25 +892,16 @@ def _build_config():
if plugin_config.get("Godcmd"): if plugin_config.get("Godcmd"):
config["admin_password"] = plugin_config.get("Godcmd").get("password") config["admin_password"] = plugin_config.get("Godcmd").get("password")
# Add channel-specific app credentials # Add channel-specific app credentials based on CREDENTIAL_MAP.
# For multi-channel channel_type (comma-separated), the first matched type wins.
current_channel_type = local_conf.get("channel_type", "") current_channel_type = local_conf.get("channel_type", "")
if current_channel_type == "feishu": for ch_type in CloudClient._parse_channel_types({"channel_type": current_channel_type}):
config["app_id"] = local_conf.get("feishu_app_id") cred = CREDENTIAL_MAP.get(ch_type)
config["app_secret"] = local_conf.get("feishu_app_secret") if not cred:
elif current_channel_type == "dingtalk": continue
config["app_id"] = local_conf.get("dingtalk_client_id") id_key, secret_key = cred
config["app_secret"] = local_conf.get("dingtalk_client_secret") config["app_id"] = local_conf.get(id_key)
elif current_channel_type in ("wechatmp", "wechatmp_service"): config["app_secret"] = local_conf.get(secret_key) if secret_key else ""
config["app_id"] = local_conf.get("wechatmp_app_id") break
config["app_secret"] = local_conf.get("wechatmp_app_secret")
elif current_channel_type == "wecom_bot":
config["app_id"] = local_conf.get("wecom_bot_id")
config["app_secret"] = local_conf.get("wecom_bot_secret")
elif current_channel_type == "qq":
config["app_id"] = local_conf.get("qq_app_id")
config["app_secret"] = local_conf.get("qq_app_secret")
elif current_channel_type == "wechatcom_app":
config["app_id"] = local_conf.get("wechatcomapp_agent_id")
config["app_secret"] = local_conf.get("wechatcomapp_secret")
return config return config

View File

@@ -1,4 +1,4 @@
# 厂商类型 # Provider types
OPEN_AI = "openAI" OPEN_AI = "openAI"
OPENAI = "openai" OPENAI = "openai"
CHATGPT = "chatGPT" # legacy alias for OPENAI, kept for backward compatibility CHATGPT = "chatGPT" # legacy alias for OPENAI, kept for backward compatibility
@@ -8,48 +8,49 @@ XUNFEI = "xunfei"
CHATGPTONAZURE = "chatGPTOnAzure" CHATGPTONAZURE = "chatGPTOnAzure"
LINKAI = "linkai" LINKAI = "linkai"
CLAUDEAPI= "claudeAPI" CLAUDEAPI= "claudeAPI"
QWEN = "qwen" # 千问 (兼容旧配置,实际走 DashscopeBot) QWEN = "qwen" # legacy alias, actually routed to DashscopeBot
QWEN_DASHSCOPE = "dashscope" # 千问 DashScope 接入 QWEN_DASHSCOPE = "dashscope" # Qwen via DashScope
GEMINI = "gemini" GEMINI = "gemini"
ZHIPU_AI = "zhipu" ZHIPU_AI = "zhipu"
MOONSHOT = "moonshot" MOONSHOT = "moonshot"
MiniMax = "minimax" MiniMax = "minimax"
DEEPSEEK = "deepseek" DEEPSEEK = "deepseek"
MIMO = "mimo" # 小米 MiMo 大模型 MIMO = "mimo" # Xiaomi MiMo
CUSTOM = "custom" # custom OpenAI-compatible API, bot_type won't auto-switch on model change CUSTOM = "custom" # custom OpenAI-compatible API, bot_type won't auto-switch on model change
MODELSCOPE = "modelscope" MODELSCOPE = "modelscope"
# 模型列表 # Model list
# Claude (Anthropic) # Claude (Anthropic)
CLAUDE3 = "claude-3-opus-20240229" CLAUDE3 = "claude-3-opus-20240229"
CLAUDE_3_OPUS = "claude-3-opus-latest" CLAUDE_3_OPUS = "claude-3-opus-latest"
CLAUDE_3_OPUS_0229 = "claude-3-opus-20240229" CLAUDE_3_OPUS_0229 = "claude-3-opus-20240229"
CLAUDE_3_SONNET = "claude-3-sonnet-20240229" CLAUDE_3_SONNET = "claude-3-sonnet-20240229"
CLAUDE_3_HAIKU = "claude-3-haiku-20240307" CLAUDE_3_HAIKU = "claude-3-haiku-20240307"
CLAUDE_35_SONNET = "claude-3-5-sonnet-latest" # 带 latest 标签的模型名称,会不断更新指向最新发布的模型 CLAUDE_35_SONNET = "claude-3-5-sonnet-latest" # "latest" tag always points to the newest release
CLAUDE_35_SONNET_1022 = "claude-3-5-sonnet-20241022" # 带具体日期的模型名称,会固定为该日期发布的模型 CLAUDE_35_SONNET_1022 = "claude-3-5-sonnet-20241022" # dated name pinned to a specific release
CLAUDE_35_SONNET_0620 = "claude-3-5-sonnet-20240620" CLAUDE_35_SONNET_0620 = "claude-3-5-sonnet-20240620"
CLAUDE_4_OPUS = "claude-opus-4-0" CLAUDE_4_OPUS = "claude-opus-4-0"
CLAUDE_4_8_OPUS = "claude-opus-4-8" # Claude Opus 4.8 - Agent推荐模型 CLAUDE_FABLE_5 = "claude-fable-5" # Claude Fable 5 (often restricted by policy)
CLAUDE_4_8_OPUS = "claude-opus-4-8" # Claude Opus 4.8 - Agent recommended model
CLAUDE_4_7_OPUS = "claude-opus-4-7" # Claude Opus 4.7 CLAUDE_4_7_OPUS = "claude-opus-4-7" # Claude Opus 4.7
CLAUDE_4_6_OPUS = "claude-opus-4-6" # Claude Opus 4.6 CLAUDE_4_6_OPUS = "claude-opus-4-6" # Claude Opus 4.6
CLAUDE_4_SONNET = "claude-sonnet-4-0" # Claude Sonnet 4.0 CLAUDE_4_SONNET = "claude-sonnet-4-0" # Claude Sonnet 4.0
CLAUDE_4_5_SONNET = "claude-sonnet-4-5" # Claude Sonnet 4.5 - Agent推荐模型 CLAUDE_4_5_SONNET = "claude-sonnet-4-5" # Claude Sonnet 4.5 - Agent recommended model
CLAUDE_4_6_SONNET = "claude-sonnet-4-6" # Claude Sonnet 4.6 - Agent推荐模型 CLAUDE_4_6_SONNET = "claude-sonnet-4-6" # Claude Sonnet 4.6 - Agent recommended model
# Gemini (Google) # Gemini (Google)
GEMINI_PRO = "gemini-1.0-pro" GEMINI_PRO = "gemini-1.0-pro"
GEMINI_15_flash = "gemini-1.5-flash" GEMINI_15_flash = "gemini-1.5-flash"
GEMINI_15_PRO = "gemini-1.5-pro" GEMINI_15_PRO = "gemini-1.5-pro"
GEMINI_20_flash_exp = "gemini-2.0-flash-exp" # exp结尾为实验模型,会逐步不再支持 GEMINI_20_flash_exp = "gemini-2.0-flash-exp" # "-exp" models are experimental and will be phased out
GEMINI_20_FLASH = "gemini-2.0-flash" # 正式版模型 GEMINI_20_FLASH = "gemini-2.0-flash" # stable release
GEMINI_25_FLASH_PRE = "gemini-2.5-flash-preview-05-20" GEMINI_25_FLASH_PRE = "gemini-2.5-flash-preview-05-20"
GEMINI_25_PRO_PRE = "gemini-2.5-pro-preview-05-06" GEMINI_25_PRO_PRE = "gemini-2.5-pro-preview-05-06"
GEMINI_3_FLASH_PRE = "gemini-3-flash-preview" # Gemini 3 Flash Preview - Agent推荐模型 GEMINI_3_FLASH_PRE = "gemini-3-flash-preview" # Gemini 3 Flash Preview - Agent recommended model
GEMINI_3_PRO_PRE = "gemini-3-pro-preview" # Gemini 3 Pro Preview GEMINI_3_PRO_PRE = "gemini-3-pro-preview" # Gemini 3 Pro Preview
GEMINI_31_PRO_PRE = "gemini-3.1-pro-preview" # Gemini 3.1 Pro Preview - Agent推荐模型 GEMINI_31_PRO_PRE = "gemini-3.1-pro-preview" # Gemini 3.1 Pro Preview - Agent recommended model
GEMINI_31_FLASH_LITE_PRE = "gemini-3.1-flash-lite-preview" # Gemini 3.1 Flash Lite Preview - Agent推荐模型 GEMINI_31_FLASH_LITE_PRE = "gemini-3.1-flash-lite-preview" # Gemini 3.1 Flash Lite Preview - Agent recommended model
GEMINI_35_FLASH = "gemini-3.5-flash" # Gemini 3.5 Flash - Agent推荐模型 GEMINI_35_FLASH = "gemini-3.5-flash" # Gemini 3.5 Flash - Agent recommended model
# OpenAI # OpenAI
GPT35 = "gpt-3.5-turbo" GPT35 = "gpt-3.5-turbo"
@@ -85,10 +86,10 @@ TTS_1 = "tts-1"
TTS_1_HD = "tts-1-hd" TTS_1_HD = "tts-1-hd"
# DeepSeek # DeepSeek
DEEPSEEK_CHAT = "deepseek-chat" # DeepSeek-V3对话模型 DEEPSEEK_CHAT = "deepseek-chat" # DeepSeek-V3 chat model
DEEPSEEK_REASONER = "deepseek-reasoner" # DeepSeek-R1模型 DEEPSEEK_REASONER = "deepseek-reasoner" # DeepSeek-R1 model
DEEPSEEK_V4_FLASH = "deepseek-v4-flash" # DeepSeek V4 Flash - 默认推荐 (思考模式 + 工具调用) DEEPSEEK_V4_FLASH = "deepseek-v4-flash" # DeepSeek V4 Flash - default recommendation (thinking + tool calls)
DEEPSEEK_V4_PRO = "deepseek-v4-pro" # DeepSeek V4 Pro - 复杂任务更强 (思考模式 + 工具调用) DEEPSEEK_V4_PRO = "deepseek-v4-pro" # DeepSeek V4 Pro - stronger on complex tasks (thinking + tool calls)
# Baidu Qianfan / ERNIE # Baidu Qianfan / ERNIE
ERNIE_5_1 = "ernie-5.1" # ERNIE 5.1 - default recommendation, latest flagship ERNIE_5_1 = "ernie-5.1" # ERNIE 5.1 - default recommendation, latest flagship
@@ -100,32 +101,31 @@ ERNIE_4_TURBO_8K = "ERNIE-4.0-Turbo-8K"
ERNIE_45_TURBO_VL = "ernie-4.5-turbo-vl" ERNIE_45_TURBO_VL = "ernie-4.5-turbo-vl"
ERNIE_45_TURBO_VL_32K = "ernie-4.5-turbo-vl-32k" ERNIE_45_TURBO_VL_32K = "ernie-4.5-turbo-vl-32k"
# Qwen (通义千问 - 阿里云 DashScope) # Qwen (Alibaba Cloud DashScope)
QWEN_TURBO = "qwen-turbo" QWEN_TURBO = "qwen-turbo"
QWEN_PLUS = "qwen-plus" QWEN_PLUS = "qwen-plus"
QWEN_MAX = "qwen-max" QWEN_MAX = "qwen-max"
QWEN_LONG = "qwen-long" QWEN_LONG = "qwen-long"
QWEN3_MAX = "qwen3-max" # Qwen3 Max - Agent推荐模型 QWEN3_MAX = "qwen3-max" # Qwen3 Max - Agent recommended model
QWEN35_PLUS = "qwen3.5-plus" # Qwen3.5 Plus - Omni model (MultiModalConversation) QWEN35_PLUS = "qwen3.5-plus" # Qwen3.5 Plus - Omni model (MultiModalConversation)
QWEN36_PLUS = "qwen3.6-plus" # Qwen3.6 Plus - Omni model (MultiModalConversation) QWEN36_PLUS = "qwen3.6-plus" # Qwen3.6 Plus - Omni model (MultiModalConversation)
QWEN37_MAX = "qwen3.7-max" # Qwen3.7 Max - Agent推荐模型 QWEN37_PLUS = "qwen3.7-plus" # Qwen3.7 Plus - Omni model (MultiModalConversation)
QWEN37_MAX = "qwen3.7-max" # Qwen3.7 Max - Agent recommended model
QWQ_PLUS = "qwq-plus" QWQ_PLUS = "qwq-plus"
# MiniMax # MiniMax
MINIMAX_M2_7 = "MiniMax-M2.7" # MiniMax M2.7 - Latest MINIMAX_M3 = "MiniMax-M3" # MiniMax M3 - Latest (default)
MINIMAX_TEXT_01 = "MiniMax-Text-01" # MiniMax 多模态 (vision) MINIMAX_M2_7 = "MiniMax-M2.7" # MiniMax M2.7
MINIMAX_M2_7_HIGHSPEED = "MiniMax-M2.7-highspeed" # MiniMax M2.7 highspeed MINIMAX_M2_7_HIGHSPEED = "MiniMax-M2.7-highspeed" # MiniMax M2.7 highspeed
MINIMAX_M2_5 = "MiniMax-M2.5" # MiniMax M2.5 MINIMAX_TEXT_01 = "MiniMax-Text-01" # MiniMax multimodal (vision)
MINIMAX_M2_1 = "MiniMax-M2.1" # MiniMax M2.1
MINIMAX_M2_1_LIGHTNING = "MiniMax-M2.1-lightning" # MiniMax M2.1 极速版
MINIMAX_M2 = "MiniMax-M2" # MiniMax M2
MINIMAX_ABAB6_5 = "abab6.5-chat" # MiniMax abab6.5 MINIMAX_ABAB6_5 = "abab6.5-chat" # MiniMax abab6.5
# GLM (智谱AI) # GLM (Zhipu AI)
GLM_5_1 = "glm-5.1" # 智谱 GLM-5.1 - Agent recommended model (default) GLM_5_2 = "glm-5.2" # GLM-5.2 - Agent recommended model (default)
GLM_5_TURBO = "glm-5-turbo" # 智谱 GLM-5-Turbo GLM_5_1 = "glm-5.1" # GLM-5.1
GLM_5 = "glm-5" # 智谱 GLM-5 GLM_5_TURBO = "glm-5-turbo" # GLM-5-Turbo
GLM_5V_TURBO = "glm-5v-turbo" # 智谱多模态 (vision) GLM_5 = "glm-5" # GLM-5
GLM_5V_TURBO = "glm-5v-turbo" # Zhipu multimodal (vision)
GLM_4 = "glm-4" GLM_4 = "glm-4"
GLM_4_PLUS = "glm-4-plus" GLM_4_PLUS = "glm-4-plus"
GLM_4_flash = "glm-4-flash" GLM_4_flash = "glm-4-flash"
@@ -134,20 +134,22 @@ GLM_4_ALLTOOLS = "glm-4-alltools"
GLM_4_0520 = "glm-4-0520" GLM_4_0520 = "glm-4-0520"
GLM_4_AIR = "glm-4-air" GLM_4_AIR = "glm-4-air"
GLM_4_AIRX = "glm-4-airx" GLM_4_AIRX = "glm-4-airx"
GLM_4_7 = "glm-4.7" # 智谱 GLM-4.7 - Agent推荐模型 GLM_4_7 = "glm-4.7" # GLM-4.7 - Agent recommended model
# Kimi (Moonshot) # Kimi (Moonshot)
MOONSHOT = "moonshot" MOONSHOT = "moonshot"
KIMI_K2_7_CODE = "kimi-k2.7-code" # Kimi K2.7 Code - Agent recommended model (default)
KIMI_K2_7_CODE_HIGHSPEED = "kimi-k2.7-code-highspeed" # Kimi K2.7 Code highspeed
KIMI_K2 = "kimi-k2" KIMI_K2 = "kimi-k2"
KIMI_K2_5 = "kimi-k2.5" KIMI_K2_5 = "kimi-k2.5"
KIMI_K2_6 = "kimi-k2.6" # Kimi K2.6 - Agent recommended model (default) KIMI_K2_6 = "kimi-k2.6"
# 小米 MiMo # Xiaomi MiMo
MIMO_V2_5_PRO = "mimo-v2.5-pro" # MiMo V2.5 Pro - 旗舰,长上下文(默认推荐) MIMO_V2_5_PRO = "mimo-v2.5-pro" # MiMo V2.5 Pro - flagship, long context (default recommendation)
MIMO_V2_5 = "mimo-v2.5" # MiMo V2.5 - 多模态(文/图/音/视频) MIMO_V2_5 = "mimo-v2.5" # MiMo V2.5 - multimodal (text/image/audio/video)
MIMO_V2_PRO = "mimo-v2-pro" # MiMo V2 Pro MIMO_V2_PRO = "mimo-v2-pro" # MiMo V2 Pro
MIMO_V2_OMNI = "mimo-v2-omni" # MiMo V2 Omni - 多模态 MIMO_V2_OMNI = "mimo-v2-omni" # MiMo V2 Omni - multimodal
MIMO_V2_FLASH = "mimo-v2-flash" # MiMo V2 Flash - 极速版 MIMO_V2_FLASH = "mimo-v2-flash" # MiMo V2 Flash - high-speed
# Doubao (Volcengine Ark) # Doubao (Volcengine Ark)
DOUBAO = "doubao" DOUBAO = "doubao"
@@ -156,11 +158,11 @@ DOUBAO_SEED_2_PRO = "doubao-seed-2-0-pro-260215"
DOUBAO_SEED_2_LITE = "doubao-seed-2-0-lite-260215" DOUBAO_SEED_2_LITE = "doubao-seed-2-0-lite-260215"
DOUBAO_SEED_2_MINI = "doubao-seed-2-0-mini-260215" DOUBAO_SEED_2_MINI = "doubao-seed-2-0-mini-260215"
# ModelScope(魔搭社区) # ModelScope
QWEN3_235B_A22B_INSTRUCT_2507 = "Qwen/Qwen3-235B-A22B-Instruct-2507" QWEN3_235B_A22B_INSTRUCT_2507 = "Qwen/Qwen3-235B-A22B-Instruct-2507"
QWEN3_5_27B = "Qwen/Qwen3.5-27B" QWEN3_5_27B = "Qwen/Qwen3.5-27B"
# 其他模型 # Other models
WEN_XIN = "wenxin" WEN_XIN = "wenxin"
WEN_XIN_4 = "wenxin-4" WEN_XIN_4 = "wenxin-4"
XUNFEI = "xunfei" XUNFEI = "xunfei"
@@ -189,13 +191,13 @@ MODEL_LIST = [
ERNIE_45_TURBO_VL, ERNIE_45_TURBO_VL_32K, ERNIE_45_TURBO_VL, ERNIE_45_TURBO_VL_32K,
# MiniMax # MiniMax
MiniMax, MINIMAX_M2_7, MINIMAX_M2_7_HIGHSPEED, MINIMAX_M2_5, MINIMAX_M2_1, MINIMAX_M2_1_LIGHTNING, MINIMAX_M2, MINIMAX_ABAB6_5, MiniMax, MINIMAX_M3, MINIMAX_M2_7, MINIMAX_M2_7_HIGHSPEED, MINIMAX_ABAB6_5,
# 小米 MiMo # Xiaomi MiMo
MIMO, MIMO_V2_5_PRO, MIMO_V2_5, MIMO_V2_PRO, MIMO_V2_OMNI, MIMO_V2_FLASH, MIMO, MIMO_V2_5_PRO, MIMO_V2_5, MIMO_V2_PRO, MIMO_V2_OMNI, MIMO_V2_FLASH,
# Claude # Claude
CLAUDE3, CLAUDE_4_8_OPUS, CLAUDE_4_7_OPUS, CLAUDE_4_6_SONNET, CLAUDE_4_6_OPUS, CLAUDE_4_OPUS, CLAUDE_4_5_SONNET, CLAUDE_4_SONNET, CLAUDE_3_OPUS, CLAUDE_3_OPUS_0229, CLAUDE3, CLAUDE_4_8_OPUS, CLAUDE_4_7_OPUS, CLAUDE_FABLE_5, CLAUDE_4_6_SONNET, CLAUDE_4_6_OPUS, CLAUDE_4_OPUS, CLAUDE_4_5_SONNET, CLAUDE_4_SONNET, CLAUDE_3_OPUS, CLAUDE_3_OPUS_0229,
CLAUDE_35_SONNET, CLAUDE_35_SONNET_1022, CLAUDE_35_SONNET_0620, CLAUDE_3_SONNET, CLAUDE_3_HAIKU, CLAUDE_35_SONNET, CLAUDE_35_SONNET_1022, CLAUDE_35_SONNET_0620, CLAUDE_3_SONNET, CLAUDE_3_HAIKU,
"claude", "claude-3-haiku", "claude-3-sonnet", "claude-3-opus", "claude-3.5-sonnet", "claude", "claude-3-haiku", "claude-3-sonnet", "claude-3-opus", "claude-3.5-sonnet",
@@ -213,19 +215,19 @@ MODEL_LIST = [
GPT_54, GPT_55, GPT_54_MINI, GPT_54_NANO, GPT_54, GPT_55, GPT_54_MINI, GPT_54_NANO,
O1, O1_MINI, O1, O1_MINI,
# GLM (智谱AI) # GLM (Zhipu AI)
ZHIPU_AI, GLM_5_1, GLM_5_TURBO, GLM_5, GLM_4, GLM_4_PLUS, GLM_4_flash, GLM_4_LONG, GLM_4_ALLTOOLS, ZHIPU_AI, GLM_5_2, GLM_5_1, GLM_5_TURBO, GLM_5, GLM_4, GLM_4_PLUS, GLM_4_flash, GLM_4_LONG, GLM_4_ALLTOOLS,
GLM_4_0520, GLM_4_AIR, GLM_4_AIRX, GLM_4_7, GLM_4_0520, GLM_4_AIR, GLM_4_AIRX, GLM_4_7,
# Qwen (通义千问) # Qwen
QWEN37_MAX, QWEN36_PLUS, QWEN35_PLUS, QWEN3_MAX, QWEN_MAX, QWEN_PLUS, QWEN_TURBO, QWEN_LONG, QWEN37_PLUS, QWEN37_MAX, QWEN36_PLUS, QWEN35_PLUS, QWEN3_MAX, QWEN_MAX, QWEN_PLUS, QWEN_TURBO, QWEN_LONG,
# Doubao (豆包) # Doubao
DOUBAO, DOUBAO_SEED_2_CODE, DOUBAO_SEED_2_PRO, DOUBAO_SEED_2_LITE, DOUBAO_SEED_2_MINI, DOUBAO, DOUBAO_SEED_2_CODE, DOUBAO_SEED_2_PRO, DOUBAO_SEED_2_LITE, DOUBAO_SEED_2_MINI,
# Kimi (Moonshot) # Kimi (Moonshot)
MOONSHOT, "moonshot-v1-8k", "moonshot-v1-32k", "moonshot-v1-128k", MOONSHOT, "moonshot-v1-8k", "moonshot-v1-32k", "moonshot-v1-128k",
KIMI_K2_6, KIMI_K2_5, KIMI_K2, KIMI_K2_7_CODE, KIMI_K2_7_CODE_HIGHSPEED, KIMI_K2_6, KIMI_K2_5, KIMI_K2,
# ModelScope # ModelScope
MODELSCOPE, MODELSCOPE,
@@ -233,11 +235,12 @@ MODEL_LIST = [
# LinkAI # LinkAI
LINKAI_35, LINKAI_4_TURBO, LINKAI_4o, LINKAI_35, LINKAI_4_TURBO, LINKAI_4o,
# 其他模型 # Other models
WEN_XIN, WEN_XIN_4, XUNFEI, WEN_XIN, WEN_XIN_4, XUNFEI,
] ]
MODEL_LIST = MODEL_LIST + GITEE_AI_MODEL_LIST + MODELSCOPE_MODEL_LIST MODEL_LIST = MODEL_LIST + GITEE_AI_MODEL_LIST + MODELSCOPE_MODEL_LIST
# channel # channel
FEISHU = "feishu" FEISHU = "feishu"
DINGTALK = "dingtalk" DINGTALK = "dingtalk"

View File

@@ -124,6 +124,8 @@ def detect_language():
3. Python locale module 3. Python locale module
4. default English 4. default English
""" """
if os.environ.get("CLOUD_DEPLOYMENT_ID"):
return ZH
return ( return (
_detect_from_macos() _detect_from_macos()
or _detect_from_env() or _detect_from_env()

View File

@@ -27,10 +27,14 @@ def compress_imgfile(file, max_size):
img = Image.open(file) img = Image.open(file)
rgb_image = img.convert("RGB") rgb_image = img.convert("RGB")
quality = 95 quality = 95
min_quality = 10
while True: while True:
out_buf = io.BytesIO() out_buf = io.BytesIO()
rgb_image.save(out_buf, "JPEG", quality=quality) rgb_image.save(out_buf, "JPEG", quality=quality)
if fsize(out_buf) <= max_size: if fsize(out_buf) <= max_size or quality <= min_quality:
# Stop at min_quality: further decrements would pass an invalid
# quality (<1) to PIL and the loop would otherwise never terminate
# for images that cannot be compressed below max_size.
return out_buf return out_buf
quality -= 5 quality -= 5

View File

@@ -40,5 +40,6 @@
"agent_max_steps": 20, "agent_max_steps": 20,
"enable_thinking": false, "enable_thinking": false,
"reasoning_effort": "high", "reasoning_effort": "high",
"knowledge": true "knowledge": true,
"self_evolution_enabled": true
} }

View File

@@ -24,8 +24,11 @@ available_setting = {
"open_ai_api_base": "https://api.openai.com/v1", "open_ai_api_base": "https://api.openai.com/v1",
"claude_api_base": "https://api.anthropic.com/v1", # claude api base "claude_api_base": "https://api.anthropic.com/v1", # claude api base
"gemini_api_base": "https://generativelanguage.googleapis.com", # gemini api base "gemini_api_base": "https://generativelanguage.googleapis.com", # gemini api base
"custom_api_key": "", # custom OpenAI-compatible provider api key (used when bot_type is "custom") "custom_api_key": "", # custom OpenAI-compatible provider api key (used when bot_type is "custom"); legacy single-provider field
"custom_api_base": "", # custom OpenAI-compatible provider api base (used when bot_type is "custom") "custom_api_base": "", # custom OpenAI-compatible provider api base (used when bot_type is "custom"); legacy single-provider field
# Multiple custom (OpenAI-compatible) providers. Activated via bot_type: "custom:<id>".
# Each item: {"id": "3f2a9c1b", "name": "siliconflow", "api_key": "sk-...", "api_base": "https://api.siliconflow.cn/v1", "model": "deepseek-ai/DeepSeek-V3"}
"custom_providers": [],
"proxy": "", # proxy used by openai "proxy": "", # proxy used by openai
# chatgpt model; when use_azure_chatgpt is true, this is the Azure model deployment name # chatgpt model; when use_azure_chatgpt is true, this is the Azure model deployment name
"model": "gpt-3.5-turbo", # options: gpt-4o, gpt-4o-mini, gpt-4-turbo, claude-3-sonnet, wenxin, moonshot, qwen-turbo, xunfei, glm-4, minimax, gemini, etc. See common/const.py for the full list "model": "gpt-3.5-turbo", # options: gpt-4o, gpt-4o-mini, gpt-4-turbo, claude-3-sonnet, wenxin, moonshot, qwen-turbo, xunfei, glm-4, minimax, gemini, etc. See common/const.py for the full list
@@ -180,6 +183,11 @@ available_setting = {
# WeCom smart bot config (long connection mode) # WeCom smart bot config (long connection mode)
"wecom_bot_id": "", # WeCom smart bot BotID "wecom_bot_id": "", # WeCom smart bot BotID
"wecom_bot_secret": "", # WeCom smart bot long-connection secret "wecom_bot_secret": "", # WeCom smart bot long-connection secret
# WeCom smart bot transport mode: "websocket" (long connection) or "webhook" (HTTP callback)
"wecom_bot_mode": "websocket",
"wecom_bot_token": "", # webhook mode: Token configured on the bot's receive-message URL
"wecom_bot_encoding_aes_key": "", # webhook mode: EncodingAESKey configured on the bot's receive-message URL
"wecom_bot_port": 9892, # webhook mode: local HTTP server port for the receive-message URL
# Telegram config # Telegram config
"telegram_token": "", # Bot token from @BotFather "telegram_token": "", # Bot token from @BotFather
"telegram_proxy": "", # Optional HTTP/SOCKS5 proxy, e.g. http://127.0.0.1:7890 or socks5://127.0.0.1:1080 (empty falls back to env vars) "telegram_proxy": "", # Optional HTTP/SOCKS5 proxy, e.g. http://127.0.0.1:7890 or socks5://127.0.0.1:1080 (empty falls back to env vars)
@@ -251,6 +259,10 @@ available_setting = {
"enable_thinking": False, # Enable deep-thinking mode for thinking-capable models "enable_thinking": False, # Enable deep-thinking mode for thinking-capable models
"reasoning_effort": "high", # Reasoning depth under thinking mode: "high" or "max" "reasoning_effort": "high", # Reasoning depth under thinking mode: "high" or "max"
"knowledge": True, # whether to enable the knowledge base feature "knowledge": True, # whether to enable the knowledge base feature
# Self-evolution: review idle conversations to learn memory/skills. Flat keys.
"self_evolution_enabled": False, # switch to enable/disable self-evolution
"self_evolution_idle_minutes": 10, # idle time before a session is reviewed
"self_evolution_min_turns": 6, # min user turns (or context pressure) to trigger
"skill": {}, # Per-skill runtime config; nested keys flatten to SKILL_<NAME>_<KEY> env vars at startup "skill": {}, # Per-skill runtime config; nested keys flatten to SKILL_<NAME>_<KEY> env vars at startup
"mcp_servers": [], # MCP server list; each entry supports type "stdio" (local process) or "sse" (remote URL) "mcp_servers": [], # MCP server list; each entry supports type "stdio" (local process) or "sse" (remote URL)
} }
@@ -317,24 +329,37 @@ class Config(dict):
config = Config() config = Config()
def _mask_value(val):
"""Mask a sensitive string value, keeping first 3 and last 3 chars."""
if not isinstance(val, str) or len(val) <= 8:
return val
return val[0:3] + "*" * 5 + val[-3:]
def _mask_sensitive_recursive(obj):
"""Recursively mask values whose keys contain 'key' or 'secret'."""
if isinstance(obj, dict):
masked = {}
for k, v in obj.items():
if ("key" in k or "secret" in k) and isinstance(v, str):
masked[k] = _mask_value(v)
else:
masked[k] = _mask_sensitive_recursive(v)
return masked
elif isinstance(obj, list):
return [_mask_sensitive_recursive(item) for item in obj]
return obj
def drag_sensitive(config): def drag_sensitive(config):
try: try:
if isinstance(config, str): if isinstance(config, str):
conf_dict: dict = json.loads(config) conf_dict: dict = json.loads(config)
conf_dict_copy = copy.deepcopy(conf_dict) conf_dict_copy = _mask_sensitive_recursive(conf_dict)
for key in conf_dict_copy:
if "key" in key or "secret" in key:
if isinstance(conf_dict_copy[key], str):
conf_dict_copy[key] = conf_dict_copy[key][0:3] + "*" * 5 + conf_dict_copy[key][-3:]
return json.dumps(conf_dict_copy, indent=4) return json.dumps(conf_dict_copy, indent=4)
elif isinstance(config, dict): elif isinstance(config, dict):
config_copy = copy.deepcopy(config) return _mask_sensitive_recursive(config)
for key in config:
if "key" in key or "secret" in key:
if isinstance(config_copy[key], str):
config_copy[key] = config_copy[key][0:3] + "*" * 5 + config_copy[key][-3:]
return config_copy
except Exception as e: except Exception as e:
logger.exception(e) logger.exception(e)
return config return config

View File

@@ -38,12 +38,13 @@ services:
DINGTALK_CLIENT_SECRET: '' DINGTALK_CLIENT_SECRET: ''
WECOM_BOT_ID: '' WECOM_BOT_ID: ''
WECOM_BOT_SECRET: '' WECOM_BOT_SECRET: ''
# 如需通过宿主机访问 Web 控制台,改为 '0.0.0.0' 并设置 WEB_PASSWORD # To access the web console from the host, set this to '0.0.0.0' and set WEB_PASSWORD
WEB_HOST: '127.0.0.1' WEB_HOST: '127.0.0.1'
WEB_PASSWORD: '' WEB_PASSWORD: ''
AGENT: 'True' AGENT: 'True'
AGENT_MAX_CONTEXT_TOKENS: 50000 AGENT_MAX_CONTEXT_TOKENS: 50000
AGENT_MAX_CONTEXT_TURNS: 20 AGENT_MAX_CONTEXT_TURNS: 20
AGENT_MAX_STEPS: 20 AGENT_MAX_STEPS: 20
SELF_EVOLUTION_ENABLED: 'True'
volumes: volumes:
- ./cow:/home/agent/cow - ./cow:/home/agent/cow

View File

@@ -22,6 +22,10 @@
"label": "官网", "label": "官网",
"href": "https://cowagent.ai/" "href": "https://cowagent.ai/"
}, },
{
"label": "博客",
"href": "https://cowagent.ai/zh/blog/"
},
{ {
"label": "GitHub", "label": "GitHub",
"href": "https://github.com/zhayujie/CowAgent" "href": "https://github.com/zhayujie/CowAgent"
@@ -51,6 +55,10 @@
"label": "Website", "label": "Website",
"href": "https://cowagent.ai/" "href": "https://cowagent.ai/"
}, },
{
"label": "Blog",
"href": "https://cowagent.ai/blog/"
},
{ {
"label": "GitHub", "label": "GitHub",
"href": "https://github.com/zhayujie/CowAgent" "href": "https://github.com/zhayujie/CowAgent"
@@ -179,7 +187,8 @@
"pages": [ "pages": [
"memory/index", "memory/index",
"memory/context", "memory/context",
"memory/deep-dream" "memory/deep-dream",
"memory/self-evolution"
] ]
} }
] ]
@@ -240,6 +249,8 @@
"group": "Release Notes", "group": "Release Notes",
"pages": [ "pages": [
"releases/overview", "releases/overview",
"releases/v2.1.2",
"releases/v2.1.1",
"releases/v2.1.0", "releases/v2.1.0",
"releases/v2.0.9", "releases/v2.0.9",
"releases/v2.0.8", "releases/v2.0.8",
@@ -265,6 +276,10 @@
"label": "官网", "label": "官网",
"href": "https://cowagent.ai/?lang=zh" "href": "https://cowagent.ai/?lang=zh"
}, },
{
"label": "博客",
"href": "https://cowagent.ai/zh/blog/"
},
{ {
"label": "GitHub", "label": "GitHub",
"href": "https://github.com/zhayujie/CowAgent" "href": "https://github.com/zhayujie/CowAgent"
@@ -393,7 +408,8 @@
"pages": [ "pages": [
"zh/memory/index", "zh/memory/index",
"zh/memory/context", "zh/memory/context",
"zh/memory/deep-dream" "zh/memory/deep-dream",
"zh/memory/self-evolution"
] ]
} }
] ]
@@ -454,6 +470,8 @@
"group": "发布记录", "group": "发布记录",
"pages": [ "pages": [
"zh/releases/overview", "zh/releases/overview",
"zh/releases/v2.1.2",
"zh/releases/v2.1.1",
"zh/releases/v2.1.0", "zh/releases/v2.1.0",
"zh/releases/v2.0.9", "zh/releases/v2.0.9",
"zh/releases/v2.0.8", "zh/releases/v2.0.8",
@@ -479,6 +497,10 @@
"label": "ウェブサイト", "label": "ウェブサイト",
"href": "https://cowagent.ai/" "href": "https://cowagent.ai/"
}, },
{
"label": "ブログ",
"href": "https://cowagent.ai/blog/"
},
{ {
"label": "GitHub", "label": "GitHub",
"href": "https://github.com/zhayujie/CowAgent" "href": "https://github.com/zhayujie/CowAgent"
@@ -607,7 +629,8 @@
"pages": [ "pages": [
"ja/memory/index", "ja/memory/index",
"ja/memory/context", "ja/memory/context",
"ja/memory/deep-dream" "ja/memory/deep-dream",
"ja/memory/self-evolution"
] ]
} }
] ]
@@ -668,6 +691,8 @@
"group": "リリースノート", "group": "リリースノート",
"pages": [ "pages": [
"ja/releases/overview", "ja/releases/overview",
"ja/releases/v2.1.2",
"ja/releases/v2.1.1",
"ja/releases/v2.1.0", "ja/releases/v2.1.0",
"ja/releases/v2.0.9", "ja/releases/v2.0.9",
"ja/releases/v2.0.8", "ja/releases/v2.0.8",

View File

@@ -5,7 +5,7 @@ description: One-click install and manage CowAgent with scripts
The project provides scripts for one-click install, configuration, startup, and management. Script-based deployment is recommended for quick setup. The project provides scripts for one-click install, configuration, startup, and management. Script-based deployment is recommended for quick setup.
Supports Linux, macOS, and Windows. Requires Python 3.7-3.12 (3.9 recommended). Supports Linux, macOS, and Windows. Requires Python 3.7-3.13 (3.9 recommended).
## Install Command ## Install Command

View File

@@ -9,13 +9,14 @@ CowAgent 2.0 has evolved from a simple chatbot into a super intelligent assistan
CowAgent's architecture consists of the following core modules: CowAgent's architecture consists of the following core modules:
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/architecture/en/architecture.jpg" alt="CowAgent Architecture" /> <img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/architecture/en/architecture.png" alt="CowAgent Architecture" />
| Module | Description | | Module | Description |
| --- | --- | | --- | --- |
| **Plan** | Understands user intent, decomposes complex tasks into multi-step plans, and iteratively invokes tools until the goal is achieved | | **Plan** | Understands user intent, decomposes complex tasks into multi-step plans, and iteratively invokes tools until the goal is achieved |
| **Memory** | Automatically persists important information as core memory and daily memory, with hybrid keyword and vector retrieval for cross-session context continuity | | **Memory** | Automatically persists important information as core memory and daily memory, with hybrid keyword and vector retrieval for cross-session context continuity |
| **Knowledge** | Organizes structured knowledge by topic. The Agent autonomously distills valuable information into Markdown pages, maintaining indexes and cross-references to build a growing knowledge network | | **Knowledge** | Organizes structured knowledge by topic. The Agent autonomously distills valuable information into Markdown pages, maintaining indexes and cross-references to build a growing knowledge network |
| **Evolution** | Reviews a conversation in an isolated environment after it goes idle, improving skills, following up on unfinished tasks, and backfilling memory and knowledge so the Agent keeps growing through everyday use |
| **Tools** | Core capability for Agent to access OS resources. 10+ built-in tools including file read/write, terminal, browser, scheduler, memory search, web search, and more | | **Tools** | Core capability for Agent to access OS resources. 10+ built-in tools including file read/write, terminal, browser, scheduler, memory search, web search, and more |
| **Skills** | Loads and manages Skills. Supports one-click installation from Skill Hub, GitHub, and more, or custom skill creation through conversation | | **Skills** | Loads and manages Skills. Supports one-click installation from Skill Hub, GitHub, and more, or custom skill creation through conversation |
| **Models** | Model layer with unified access to OpenAI, Claude, Gemini, DeepSeek, MiniMax, GLM, Qwen, and other mainstream LLMs | | **Models** | Model layer with unified access to OpenAI, Claude, Gemini, DeepSeek, MiniMax, GLM, Qwen, and other mainstream LLMs |
@@ -84,4 +85,5 @@ Configure Agent mode parameters in `config.json`:
| `agent_max_steps` | Max decision steps per task | `20` | | `agent_max_steps` | Max decision steps per task | `20` |
| `enable_thinking` | Enable deep-thinking mode | `false` | | `enable_thinking` | Enable deep-thinking mode | `false` |
| `knowledge` | Enable personal knowledge base | `true` | | `knowledge` | Enable personal knowledge base | `true` |
| `self_evolution_enabled` | Enable Self-Evolution (on by default for new installs) | `false` |
| `cow_lang` | Language for the UI, command text and system prompts; `auto` to detect, or set `zh` / `en` | `auto` | | `cow_lang` | Language for the UI, command text and system prompts; `auto` to detect, or set `zh` / `en` | `auto` |

View File

@@ -15,7 +15,13 @@ In subsequent long-term conversations, the Agent intelligently stores or retriev
<img src="https://cdn.link-ai.tech/doc/20260203000455.png" width="800" /> <img src="https://cdn.link-ai.tech/doc/20260203000455.png" width="800" />
</Frame> </Frame>
See [Long-term Memory](/memory) and [Deep Dream](/memory/deep-dream) for details. Building on this, **Self-Evolution** lets the Agent keep growing through everyday use: after a conversation goes idle, it reviews it automatically to improve skills, follow up on unfinished tasks, and backfill memory and knowledge. It speaks up only when it actually made a change, and every change can be undone. Enabled by default for new installs.
<Frame>
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-evolution-demo.png" width="800" />
</Frame>
See [Long-term Memory](/memory), [Deep Dream](/memory/deep-dream), and [Self-Evolution](/memory/self-evolution) for details.
## 2. Personal Knowledge Base ## 2. Personal Knowledge Base

View File

@@ -32,6 +32,9 @@ CowAgent is lightweight, easy to deploy, and built to extend. Plug in any major
<Card title="Personal Knowledge Base" icon="book" href="/knowledge/index"> <Card title="Personal Knowledge Base" icon="book" href="/knowledge/index">
Auto-curates structured knowledge into a Markdown wiki, builds an evolving knowledge graph with visual browsing. Auto-curates structured knowledge into a Markdown wiki, builds an evolving knowledge graph with visual browsing.
</Card> </Card>
<Card title="Self-Evolution" icon="seedling" href="/memory/self-evolution">
Reviews conversations automatically to improve skills, follow up on unfinished tasks, and consolidate memory and knowledge, growing through everyday use.
</Card>
<Card title="Skills System" icon="puzzle-piece" href="/skills/index"> <Card title="Skills System" icon="puzzle-piece" href="/skills/index">
A complete skill creation and execution engine. Install from Skill Hub or generate custom skills via natural-language conversation. A complete skill creation and execution engine. Install from Skill Hub or generate custom skills via natural-language conversation.
</Card> </Card>

View File

@@ -1,13 +1,21 @@
<p align="center"><img src="https://github.com/user-attachments/assets/eca9a9ec-8534-4615-9e0f-96c5ac1d10a3" alt="CowAgent" width="420" /></p> <p align="center"><img src="https://github.com/user-attachments/assets/eca9a9ec-8534-4615-9e0f-96c5ac1d10a3" alt="CowAgent" width="420" /></p>
<p align="center"> <p align="center">
<a href="https://github.com/zhayujie/CowAgent/releases/latest"><img src="https://img.shields.io/github/v/release/zhayujie/CowAgent" alt="Latest release"></a> <a href="https://github.com/zhayujie/CowAgent/releases/latest"><img src="https://img.shields.io/github/v/release/zhayujie/CowAgent?cacheSeconds=3600" alt="Latest release"></a>
<a href="https://github.com/zhayujie/CowAgent/blob/master/LICENSE"><img src="https://img.shields.io/github/license/zhayujie/CowAgent" alt="License: MIT"></a> <a href="https://github.com/zhayujie/CowAgent/blob/master/LICENSE"><img src="https://img.shields.io/badge/license-MIT-green.svg" alt="License: MIT"></a>
<a href="https://github.com/zhayujie/CowAgent"><img src="https://img.shields.io/github/stars/zhayujie/CowAgent?style=flat-square" alt="Stars"></a> <br/> <a href="https://github.com/zhayujie/CowAgent"><img src="https://img.shields.io/github/stars/zhayujie/CowAgent?style=flat-square&cacheSeconds=3600" alt="Stars"></a>
<a href="https://docs.cowagent.ai/ja"><img src="https://img.shields.io/badge/%E3%83%89%E3%82%AD%E3%83%A5%E3%83%A1%E3%83%B3%E3%83%88-cowagent.ai-blue?style=flat&logo=readthedocs&logoColor=white" alt="ドキュメント"></a>
</p>
<p align="center">
<a href="https://trendshift.io/repositories/25763" target="_blank"><img src="https://trendshift.io/api/badge/repositories/25763" alt="zhayujie%2FCowAgent | Trendshift" style="width: 250px; height: 55px;" width="250" height="55"/></a>
</p>
<p align="center">
[<a href="../../README.md">English</a>] | [<a href="../zh/README.md">中文</a>] | [日本語] [<a href="../../README.md">English</a>] | [<a href="../zh/README.md">中文</a>] | [日本語]
</p> </p>
**CowAgent** は、自律的にタスクを計画し、コンピュータや外部リソースを操作し、Skill を作成・実行し、パーソナルナレッジベースと長期記憶ユーザーとともに成長するオープンソースのスーパー AI アシスタントです。エンドツーエンドの Agent Harness のリファレンス実装の一つでもあります。 **CowAgent** は、自律的にタスクを計画し、コンピュータや外部リソースを操作し、Skill を作成・実行し、パーソナルナレッジベースと長期記憶を構築し、自己進化によってユーザーとともに成長するオープンソースのスーパー AI アシスタントです。エンドツーエンドの Agent Harness のリファレンス実装の一つでもあります。
CowAgent は軽量でデプロイしやすく、拡張性に優れています。主要な LLM プロバイダーをそのまま組み込み、Web や主要な IM プラットフォーム上で動作。個人 PC やサーバー上で 24 時間 365 日稼働できます。 CowAgent は軽量でデプロイしやすく、拡張性に優れています。主要な LLM プロバイダーをそのまま組み込み、Web や主要な IM プラットフォーム上で動作。個人 PC やサーバー上で 24 時間 365 日稼働できます。
@@ -28,6 +36,7 @@ CowAgent は軽量でデプロイしやすく、拡張性に優れています
| [タスク計画](https://docs.cowagent.ai/ja/intro/architecture) | 複雑なタスクを分解し、目標達成までツールを繰り返し呼び出して段階的に実行 | | [タスク計画](https://docs.cowagent.ai/ja/intro/architecture) | 複雑なタスクを分解し、目標達成までツールを繰り返し呼び出して段階的に実行 |
| [長期記憶](https://docs.cowagent.ai/ja/memory/index) | 三層構造(コンテキスト → デイリー → コア、Deep Dream による自動蒸留、キーワードとベクトルのハイブリッド検索 | | [長期記憶](https://docs.cowagent.ai/ja/memory/index) | 三層構造(コンテキスト → デイリー → コア、Deep Dream による自動蒸留、キーワードとベクトルのハイブリッド検索 |
| [ナレッジベース](https://docs.cowagent.ai/ja/knowledge/index) | 構造化された知識を Markdown Wiki として自動整理し、進化し続けるナレッジグラフを可視化ブラウジング | | [ナレッジベース](https://docs.cowagent.ai/ja/knowledge/index) | 構造化された知識を Markdown Wiki として自動整理し、進化し続けるナレッジグラフを可視化ブラウジング |
| [自己進化](https://docs.cowagent.ai/ja/memory/self-evolution) | 会話を自動でレビューして Skill を改善し、未完了のタスクを引き継ぎ、記憶と知識を補完。日々の利用を通じて成長 |
| [Skill](https://docs.cowagent.ai/ja/skills/index) | [Skill Hub](https://skills.cowagent.ai/)、GitHub、ClawHub からワンクリックでインストール;対話によるカスタム Skill 作成にも対応 | | [Skill](https://docs.cowagent.ai/ja/skills/index) | [Skill Hub](https://skills.cowagent.ai/)、GitHub、ClawHub からワンクリックでインストール;対話によるカスタム Skill 作成にも対応 |
| [ツール](https://docs.cowagent.ai/ja/tools/index) | ファイル I/O、ターミナル、ブラウザ、スケジューラ、記憶検索、Web 検索など 10+ の組み込みツール — MCP プロトコルに完全対応 | | [ツール](https://docs.cowagent.ai/ja/tools/index) | ファイル I/O、ターミナル、ブラウザ、スケジューラ、記憶検索、Web 検索など 10+ の組み込みツール — MCP プロトコルに完全対応 |
| [チャネル](https://docs.cowagent.ai/ja/channels/index) | 一つの Agent で Web、WeChat、Feishu、DingTalk、WeCom、QQ、公式アカウント、Telegram、Slack を同時にサポート | | [チャネル](https://docs.cowagent.ai/ja/channels/index) | 一つの Agent で Web、WeChat、Feishu、DingTalk、WeCom、QQ、公式アカウント、Telegram、Slack を同時にサポート |
@@ -39,7 +48,7 @@ CowAgent は軽量でデプロイしやすく、拡張性に優れています
## 🏗️ アーキテクチャ ## 🏗️ アーキテクチャ
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/architecture/en/architecture.jpg" alt="CowAgent Architecture" width="750"/> <img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/architecture/en/architecture.png" alt="CowAgent Architecture" width="750"/>
CowAgent は完全な **Agent Harness** です:メッセージは各種**チャネル**から流入し、**Agent Core** が記憶・知識・利用可能なツールSkill を組み合わせてタスクを計画・判断、**モデル**が応答を生成し、結果は元のチャネルに返されます。各レイヤーは疎結合で、独立して拡張可能です。 CowAgent は完全な **Agent Harness** です:メッセージは各種**チャネル**から流入し、**Agent Core** が記憶・知識・利用可能なツールSkill を組み合わせてタスクを計画・判断、**モデル**が応答を生成し、結果は元のチャネルに返されます。各レイヤーは疎結合で、独立して拡張可能です。
@@ -94,15 +103,15 @@ CowAgent は主要な LLM プロバイダーすべてに対応しています。
| プロバイダー | 代表的なモデル | チャット | 画像認識 | 画像生成 | ASR | TTS | Embedding | | プロバイダー | 代表的なモデル | チャット | 画像認識 | 画像生成 | ASR | TTS | Embedding |
| --- | --- | :-: | :-: | :-: | :-: | :-: | :-: | | --- | --- | :-: | :-: | :-: | :-: | :-: | :-: |
| [Claude](https://docs.cowagent.ai/ja/models/claude) | claude-opus-4-8 | ✅ | ✅ | | | | | | [Claude](https://docs.cowagent.ai/ja/models/claude) | claude-fable-5 | ✅ | ✅ | | | | |
| [OpenAI](https://docs.cowagent.ai/ja/models/openai) | gpt-5.5、o シリーズ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [OpenAI](https://docs.cowagent.ai/ja/models/openai) | gpt-5.5、o シリーズ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [Gemini](https://docs.cowagent.ai/ja/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | | | [Gemini](https://docs.cowagent.ai/ja/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | |
| [DeepSeek](https://docs.cowagent.ai/ja/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | | | [DeepSeek](https://docs.cowagent.ai/ja/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | |
| [Qwen](https://docs.cowagent.ai/ja/models/qwen) | qwen3.7-max | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [Qwen](https://docs.cowagent.ai/ja/models/qwen) | qwen3.7-plus | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [GLM](https://docs.cowagent.ai/ja/models/glm) | glm-5.1、glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ | | [GLM](https://docs.cowagent.ai/ja/models/glm) | glm-5.2、glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ |
| [Doubao](https://docs.cowagent.ai/ja/models/doubao) | doubao-seed-2.0 シリーズ | ✅ | ✅ | ✅ | | | ✅ | | [Doubao](https://docs.cowagent.ai/ja/models/doubao) | doubao-seed-2.0 シリーズ | ✅ | ✅ | ✅ | | | ✅ |
| [Kimi](https://docs.cowagent.ai/ja/models/kimi) | kimi-k2.6 | ✅ | ✅ | | | | | | [Kimi](https://docs.cowagent.ai/ja/models/kimi) | kimi-k2.7-code | ✅ | ✅ | | | | |
| [MiniMax](https://docs.cowagent.ai/ja/models/minimax) | MiniMax-M2.7 | ✅ | ✅ | ✅ | | ✅ | | | [MiniMax](https://docs.cowagent.ai/ja/models/minimax) | MiniMax-M3 | ✅ | ✅ | ✅ | | ✅ | |
| [ERNIE](https://docs.cowagent.ai/ja/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | | | [ERNIE](https://docs.cowagent.ai/ja/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | |
| [MiMo](https://docs.cowagent.ai/ja/models/mimo) | mimo-v2.5-pro / v2.5 | ✅ | ✅ | | | ✅ | | | [MiMo](https://docs.cowagent.ai/ja/models/mimo) | mimo-v2.5-pro / v2.5 | ✅ | ✅ | | | ✅ | |
| [LinkAI](https://docs.cowagent.ai/ja/models/linkai) | 1 つの Key で 100+ モデルに接続 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [LinkAI](https://docs.cowagent.ai/ja/models/linkai) | 1 つの Key で 100+ モデルに接続 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
@@ -190,6 +199,10 @@ CowAgent は主要な LLM プロバイダーすべてに対応しています。
## 🏷 更新履歴 ## 🏷 更新履歴
> **2026.06.18:** [v2.1.2](https://github.com/zhayujie/CowAgent/releases/tag/2.1.2) — Web コンソールの強化定期タスク管理、ナレッジベースのカテゴリ、複数のカスタムモデルプロバイダー、自己進化の改善、新モデルkimi-k2.7-code、glm-5.2)、セキュリティ強化と改善。
> **2026.06.09:** [v2.1.1](https://github.com/zhayujie/CowAgent/releases/tag/2.1.1) — 自己進化、Web コンソールの強化(メッセージ管理、マルチセッション並行)、クロスプラットフォーム対応の MCP 強化と並行呼び出し、新モデルMiniMax-M3、qwen3.7-plus、Python 3.13 対応。
> **2026.06.01:** [v2.1.0](https://github.com/zhayujie/CowAgent/releases/tag/2.1.0) — 国際化対応、新チャネルTelegram、Discord、Slack、WeChat カスタマーサービス、CLI インタラクション強化、ワンライナーインストールの最適化、MCP Streamable HTTP 対応、新モデルclaude-opus-4-8、MiMo > **2026.06.01:** [v2.1.0](https://github.com/zhayujie/CowAgent/releases/tag/2.1.0) — 国際化対応、新チャネルTelegram、Discord、Slack、WeChat カスタマーサービス、CLI インタラクション強化、ワンライナーインストールの最適化、MCP Streamable HTTP 対応、新モデルclaude-opus-4-8、MiMo
> **2026.05.22:** [v2.0.9](https://github.com/zhayujie/CowAgent/releases/tag/2.0.9) — モデル管理、MCP プロトコル対応、ブラウザセッション永続化、新モデルgpt-5.5、gemini-3.5-flash、qwen3.7-max、デプロイのセキュリティ強化。 > **2026.05.22:** [v2.0.9](https://github.com/zhayujie/CowAgent/releases/tag/2.0.9) — モデル管理、MCP プロトコル対応、ブラウザセッション永続化、新モデルgpt-5.5、gemini-3.5-flash、qwen3.7-max、デプロイのセキュリティ強化。
@@ -238,9 +251,9 @@ GitHub で [Issue を報告](https://github.com/zhayujie/CowAgent/issues) する
## 🛠️ 開発とコントリビューション ## 🛠️ 開発とコントリビューション
新しいチャネルの追加を歓迎します — [Feishu チャネル](https://github.com/zhayujie/CowAgent/blob/master/channel/feishu/feishu_channel.py) を参考にカスタムチャネルを実装できます。新しい Skill のコントリビューションも [Skill Hub](https://skills.cowagent.ai/submit) で受け付けています あらゆる形のコントリビューションを歓迎します —— 新機能、バグ修正、パフォーマンス改善、ドキュメント、あるいは [Skill Hub](https://skills.cowagent.ai/submit) への Skill の共有など。まずは [CONTRIBUTING.md](/CONTRIBUTING.md) をご覧いただき、Issue で相談するか、直接 PR を送ってください
⭐ Star でプロジェクトの更新をフォローしてください。PR や Issue の提出も歓迎します。 ⭐ Star でプロジェクトを応援し、Watch → Custom → Releases で新バージョンの通知を受け取れます。PR や Issue の提出も歓迎します。
## 🌟 コントリビューター ## 🌟 コントリビューター

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@@ -5,7 +5,7 @@ description: スクリプトによるCowAgentのワンクリックインスト
本プロジェクトでは、ワンクリックでのインストール、設定、起動、管理を行うスクリプトを提供しています。素早くセットアップするには、スクリプトによるデプロイを推奨します。 本プロジェクトでは、ワンクリックでのインストール、設定、起動、管理を行うスクリプトを提供しています。素早くセットアップするには、スクリプトによるデプロイを推奨します。
Linux、macOS、Windowsに対応しています。Python 3.7〜3.12が必要です3.9を推奨)。 Linux、macOS、Windowsに対応しています。Python 3.7〜3.13が必要です3.9を推奨)。
## インストールコマンド ## インストールコマンド

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@@ -9,13 +9,14 @@ CowAgent 2.0 は、シンプルなチャットボットから、自律的な思
CowAgent のアーキテクチャは以下のコアモジュールで構成されています: CowAgent のアーキテクチャは以下のコアモジュールで構成されています:
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/architecture/en/architecture.jpg" alt="CowAgent Architecture" /> <img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/architecture/en/architecture.png" alt="CowAgent Architecture" />
| モジュール | 説明 | | モジュール | 説明 |
| --- | --- | | --- | --- |
| **Plan** | ユーザーの意図を理解し、複雑なタスクをマルチステップの計画に分解、目標達成までツールを反復的に呼び出す | | **Plan** | ユーザーの意図を理解し、複雑なタスクをマルチステップの計画に分解、目標達成までツールを反復的に呼び出す |
| **Memory** | 重要な情報をコアメモリとデイリーメモリとして自動永続化し、キーワードとベクトルのハイブリッド検索でセッション間の連続性を実現 | | **Memory** | 重要な情報をコアメモリとデイリーメモリとして自動永続化し、キーワードとベクトルのハイブリッド検索でセッション間の連続性を実現 |
| **Knowledge** | トピック別に構造化された知識を整理。Agent が価値ある情報を Markdown ページとして自律的に整理し、インデックスと相互参照で成長するナレッジネットワークを構築 | | **Knowledge** | トピック別に構造化された知識を整理。Agent が価値ある情報を Markdown ページとして自律的に整理し、インデックスと相互参照で成長するナレッジネットワークを構築 |
| **Evolution** | 会話がアイドルになった後、隔離環境で自動レビューを実行。Skill を改善し、未完了のタスクを引き継ぎ、記憶と知識を補完して、日々の利用を通じて Agent を成長させる |
| **Tools** | Agent が OS リソースにアクセスするための中核能力。ファイル読み書き、ターミナル、ブラウザ、スケジューラ、記憶検索、Web 検索など 10 以上の組み込みツール | | **Tools** | Agent が OS リソースにアクセスするための中核能力。ファイル読み書き、ターミナル、ブラウザ、スケジューラ、記憶検索、Web 検索など 10 以上の組み込みツール |
| **Skills** | Skill の読み込み・管理。Skill Hub や GitHub からのワンクリックインストール、または会話を通じたカスタム Skill の作成をサポート | | **Skills** | Skill の読み込み・管理。Skill Hub や GitHub からのワンクリックインストール、または会話を通じたカスタム Skill の作成をサポート |
| **Models** | モデル層。OpenAI、Claude、Gemini、DeepSeek、MiniMax、GLM、Qwen など主要 LLM への統一アクセスを提供 | | **Models** | モデル層。OpenAI、Claude、Gemini、DeepSeek、MiniMax、GLM、Qwen など主要 LLM への統一アクセスを提供 |
@@ -82,4 +83,5 @@ Agent のワークスペースはデフォルトで `~/cow` にあり、シス
| `agent_max_context_turns` | 最大コンテキストターン数 | `30` | | `agent_max_context_turns` | 最大コンテキストターン数 | `30` |
| `agent_max_steps` | タスクあたりの最大判断ステップ数 | `15` | | `agent_max_steps` | タスクあたりの最大判断ステップ数 | `15` |
| `knowledge` | パーソナルナレッジベースの有効化 | `true` | | `knowledge` | パーソナルナレッジベースの有効化 | `true` |
| `self_evolution_enabled` | 自己進化の有効化(新規インストールではデフォルト有効) | `false` |
| `cow_lang` | UI・コマンド文言・システムプロンプトなどの言語。`auto` で自動検出、`zh` / `en` も指定可 | `auto` | | `cow_lang` | UI・コマンド文言・システムプロンプトなどの言語。`auto` で自動検出、`zh` / `en` も指定可 | `auto` |

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@@ -15,7 +15,13 @@ description: CowAgent の長期記憶、タスク計画、Skill システム、C
<img src="https://cdn.link-ai.tech/doc/20260203000455.png" width="800" /> <img src="https://cdn.link-ai.tech/doc/20260203000455.png" width="800" />
</Frame> </Frame>
詳細は [長期記憶](/ja/memory) と [Deep Dream](/ja/memory/deep-dream) を参照してください これに加えて、**自己進化Self-Evolution** により Agent は日々の利用を通じて成長し続けます。会話がアイドルになった後に自動でレビューを行い、Skill を改善し、未完了のタスクを引き継ぎ、記憶と知識を補完します。実際に変更があったときのみ簡潔に通知し、変更はいつでも取り消せます。新規インストールではデフォルトで有効です
<Frame>
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-evolution-demo.png" width="800" />
</Frame>
詳細は [長期記憶](/ja/memory)、[Deep Dream](/ja/memory/deep-dream)、[自己進化](/ja/memory/self-evolution) を参照してください。
## 2. パーソナルナレッジベース ## 2. パーソナルナレッジベース

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@@ -25,6 +25,9 @@ CowAgent は自ら思考しタスクを計画し、コンピュータや外部
<Card title="ナレッジベース" icon="book" href="/ja/knowledge"> <Card title="ナレッジベース" icon="book" href="/ja/knowledge">
構造化された知識を自動整理し、ナレッジグラフの可視化をサポート。相互参照により継続的に成長するナレッジネットワークを構築します。 構造化された知識を自動整理し、ナレッジグラフの可視化をサポート。相互参照により継続的に成長するナレッジネットワークを構築します。
</Card> </Card>
<Card title="自己進化" icon="seedling" href="/ja/memory/self-evolution">
会話の終了後に自動でレビューし、Skill を改善し、未完了のタスクを引き継ぎ、記憶と知識を補完。日々の利用を通じて Agent が成長し続けます。
</Card>
<Card title="Skill システム" icon="puzzle-piece" href="/ja/skills/index"> <Card title="Skill システム" icon="puzzle-piece" href="/ja/skills/index">
Skill の作成・実行エンジンを実装し、組み込み Skill を搭載。自然言語の会話を通じてカスタム Skill の開発もサポートしています。 Skill の作成・実行エンジンを実装し、組み込み Skill を搭載。自然言語の会話を通じてカスタム Skill の開発もサポートしています。
</Card> </Card>

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@@ -0,0 +1,78 @@
---
title: 自律進化
description: Self-Evolution — 会話がアイドル状態になった後に振り返り、記憶を蓄積し、スキルを改善し、未完了のタスクに対応する
---
## 機能概要
### はじめに
自律進化Self-Evolutionは、Agent が単発のタスクをこなすだけでなく、あなたとのやり取りを通じて成長し続けられるようにする仕組みです。会話が一段落すると、Agent は静かに振り返りを行います。覚えておくべきことを長期記憶に保存し、スキルで見つかった問題を修正し、やり残したタスクを引き継いで進めます。使い込むほど、Agent はあなたの好みを理解し、同じ失敗を繰り返さなくなり、自分から物事を仕上げるようになります。これらはすべてバックグラウンドで静かに行われ、実際に何かを行ったときだけ簡潔に知らせます。
> 自律進化は[夢境蒸留](/ja/memory/deep-dream)と補完し合います。夢境蒸留が記憶そのものを整理するのに対し、自律進化はさらに一歩進んでスキルを改善し、未完了のタスクを前に進め、日々の利用を通じて Agent の能力を磨きます。
### 3 つの目標
自律進化は次の 3 つを軸に動きます:
| 目標 | 説明 |
| --- | --- |
| **記憶の蓄積** | 会話中の重要な好み、決定、事実を記憶に補い、メインの会話の取りこぼしを補完します |
| **スキルの改善** | スキルの利用中に問題(設定の誤りや手順の欠落など)が見つかったら、メモを残すだけでなくスキルファイルを直接修正します。必要に応じて新しいスキルも作成します |
| **未完了タスクへの対応** | 会話に残ったやるべきことを見つけ、可能なときにその場で完了させます |
振り返りが終わり、実際に変更を加えた場合は、Agent が「何を学び、どこを調整したか」を会話の中で一言で伝えるので、元に戻すかどうかを判断できます。
## 使い方
### トリガーのタイミング
自律進化は定時実行ではなく、**会話が自然に終わってアイドル状態になった後**にのみ起動するため、進行中のやり取りを妨げることはありません。次の 2 つの条件を同時に満たす必要があります:
- **会話がアイドル状態**:最後のやり取りから、設定したアイドル時間(デフォルトは 10 分)以上が経過している
- **振り返るだけの内容がある**:前回の進化から十分なターン数が蓄積されている、またはコンテキストが容量の上限に近づいている
両方の条件を満たしたときにのみ振り返りが始まります。これにより、振り返る価値のある内容を確保しつつ、会話の途中で邪魔をしないようにしています。
### 関連設定
自律進化は Web コンソールの「設定 → Agent 設定」(「ディープシンキング」の下)にあるスイッチで切り替えられるほか、設定ファイルで調整することもできます:
| パラメータ | 説明 | デフォルト値 |
| --- | --- | --- |
| `self_evolution_enabled` | 自律進化を有効にするかどうか(新規インストールはデフォルトで有効) | `false` |
| `self_evolution_idle_minutes` | 会話がアイドル状態になってからトリガーするまでの時間(分) | `10` |
| `self_evolution_min_turns` | トリガーに必要な最小会話ターン数 | `6` |
<Tip>
Web コンソールでは有効・無効のスイッチのみを提供しています。アイドル時間やターン数のしきい値を変更したい場合は、設定ファイルを編集してください。変更は即時に反映され、再起動は不要です。
</Tip>
### 進化の記録
各振り返りは日付ごとに `memory/evolution/YYYY-MM-DD.md` に記録され、Web コンソールの「メモリ管理 → 自律進化」タブで確認できます。このタブには自律進化の記録と夢日記の両方がまとめられており、Agent の成長の軌跡を一箇所で振り返ることができます。
### 元に戻す方法
ある振り返りの変更に納得できない場合は、会話の中で Agent に「直前の変更を取り消して」と伝えるだけで、振り返り前のバックアップから該当ファイルを復元します。各振り返りはそれぞれ独立したバックアップを持つため、互いに干渉することはありません。
## 設計
自律進化はシステムの既存の機能を再利用しており、軽量に保たれています:
- **隔離実行**:各振り返りは独立した短命のタスクとして実行されます。メインの会話と同じモデルを使いますが、ツールは制限されています(コンテキストの読み取りと、記憶およびスキルファイルの編集のみ可能)。メインの会話のコンテキストを汚さず、その動作にも影響しません。
- **バックアップによる取り消し**:振り返り前に該当ファイルのスナップショットを取り、取り消し時にそのスナップショットから復元するため、すべての変更が追跡可能で元に戻せます。
- **変更検知**:振り返り後にファイルのスナップショットを比較して実際に変更があったかを確認し、それをもとに通知するかどうかを判断します。これにより「何もしなければ通知しない」ことを仕組みとして保証します。
### 抑制と安全性
自律進化は、必要なときに動き、それ以外のときは邪魔をしないように設計されています:
| 仕組み | 説明 |
| --- | --- |
| **何もしなければ通知しない** | 振り返りで実際の変更がなければ、静かなままで何も送りません |
| **アイドル時のみトリガー** | 会話がアイドル状態になったときだけ実行し、進行中の会話を妨げません |
| **変更を元に戻せる** | 振り返りごとに事前にバックアップを取るため、納得できない結果は取り消せます |
| **組み込みスキルの保護** | 製品に付属する組み込みスキルは保護され、変更されません |
| **ワークスペースに限定** | すべての読み書きはワークスペース内に限定され、他のシステムファイルには触れません |
| **バックグラウンド実行** | 振り返りはバックグラウンドで実行され、通常の返信を妨げません |

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@@ -13,14 +13,14 @@ Claude は Anthropic が提供するモデルで、テキスト対話と画像
```json ```json
{ {
"model": "claude-opus-4-8", "model": "claude-fable-5",
"claude_api_key": "YOUR_API_KEY" "claude_api_key": "YOUR_API_KEY"
} }
``` ```
| パラメータ | 説明 | | パラメータ | 説明 |
| --- | --- | | --- | --- |
| `model` | `claude-opus-4-8`、`claude-opus-4-7`、`claude-sonnet-4-6`、`claude-opus-4-6`、`claude-sonnet-4-5`、`claude-sonnet-4-0`、`claude-3-5-sonnet-latest` などをサポート。詳細は [公式モデル一覧](https://docs.anthropic.com/en/docs/about-claude/models/overview) を参照 | | `model` | `claude-fable-5`、`claude-opus-4-8`、`claude-opus-4-7`、`claude-sonnet-4-6`、`claude-opus-4-6`、`claude-sonnet-4-5`、`claude-sonnet-4-0`、`claude-3-5-sonnet-latest` などをサポート。詳細は [公式モデル一覧](https://docs.anthropic.com/en/docs/about-claude/models/overview) を参照 |
| `claude_api_key` | [Claude コンソール](https://console.anthropic.com/settings/keys) で作成 | | `claude_api_key` | [Claude コンソール](https://console.anthropic.com/settings/keys) で作成 |
| `claude_api_base` | 任意。デフォルトは `https://api.anthropic.com/v1`。サードパーティのプロキシに変更可能 | | `claude_api_base` | 任意。デフォルトは `https://api.anthropic.com/v1`。サードパーティのプロキシに変更可能 |
@@ -28,8 +28,9 @@ Claude は Anthropic が提供するモデルで、テキスト対話と画像
| モデル | 用途 | | モデル | 用途 |
| --- | --- | | --- | --- |
| `claude-opus-4-8` | デフォルト推奨。最新フラッグシップ。複雑な推論や長いタスクチェーンに最適 | | `claude-fable-5` | 最新フラッグシップ。複雑な推論や長いタスクチェーンに最適。価格はやや高め |
| `claude-opus-4-7` | 前世代の Opus フラッグシップ | | `claude-opus-4-8` | 前世代フラッグシップ。性能とコストのバランスが良い |
| `claude-opus-4-7` | より以前の Opus フラッグシップ |
| `claude-sonnet-4-6` | コストパフォーマンスと速度のバランスが良く、コストも低い | | `claude-sonnet-4-6` | コストパフォーマンスと速度のバランスが良く、コストも低い |
| `claude-opus-4-6` / `claude-sonnet-4-5` / `claude-sonnet-4-0` | より以前のフラッグシップ。価格はより安い | | `claude-opus-4-6` / `claude-sonnet-4-5` / `claude-sonnet-4-0` | より以前のフラッグシップ。価格はより安い |

View File

@@ -61,7 +61,7 @@ description: Coding Planモデルの設定
```json ```json
{ {
"bot_type": "openai", "bot_type": "openai",
"model": "MiniMax-M2.5", "model": "MiniMax-M3",
"open_ai_api_base": "https://api.minimaxi.com/v1", "open_ai_api_base": "https://api.minimaxi.com/v1",
"open_ai_api_key": "YOUR_API_KEY" "open_ai_api_key": "YOUR_API_KEY"
} }
@@ -69,7 +69,7 @@ description: Coding Planモデルの設定
| パラメータ | 説明 | | パラメータ | 説明 |
| --- | --- | | --- | --- |
| `model` | `MiniMax-M2.5`、`MiniMax-M2.5-highspeed`、`MiniMax-M2.1`、`MiniMax-M2` | | `model` | `MiniMax-M3`、`MiniMax-M2.7`、`MiniMax-M2.7-highspeed` |
| `open_ai_api_base` | 中国: `https://api.minimaxi.com/v1`、グローバル: `https://api.minimax.io/v1` | | `open_ai_api_base` | 中国: `https://api.minimaxi.com/v1`、グローバル: `https://api.minimax.io/v1` |
| `open_ai_api_key` | Coding Plan専用キー従量課金とは共有不可 | | `open_ai_api_key` | Coding Plan専用キー従量課金とは共有不可 |

View File

@@ -1,51 +1,21 @@
--- ---
title: カスタム title: カスタム
description: カスタムベンダー設定。サードパーティ API プロキシやローカルモデル向け description: サードパーティ API プロキシやローカルモデル向けのカスタムプロバイダー設定
--- ---
OpenAI 互換プロトコルで接続するサードパーティのモデルサービスや、ローカルにデプロイしたモデルに適しています。例えば: OpenAI 互換プロトコルで接続するモデルサービス向けの設定です。例えば:
- **サードパーティ API プロキシ**:統一された API Base から複数のモデルを呼び出す - **サードパーティ API プロキシ**:統一された API アドレスで複数のモデルを呼び出す
- **ローカルモデル**Ollama、vLLM、LocalAI などのツールでローカルにデプロイしたモデル - **ローカルモデル**Ollama、vLLM などのツールでローカルにデプロイしたモデル
- **プライベートデプロイ**:企業内部にデプロイたモデルサービス - **プライベートデプロイ**:企業内部にデプロイされたモデルサービス
<Note> ## Web コンソールでの設定
`openai` ベンダーとの違い:カスタムベンダーを選択した場合、`/config model` でモデルを切り替えてもベンダータイプは自動で切り替わらず、常にカスタムの API アドレスを使用します。
</Note>
## テキスト対話 推奨方法です。Web コンソールの「モデル」ページで「プロバイダーを追加」をクリックし、「カスタム」を選択して、名称・API Base・API Key を入力します。複数のカスタムプロバイダーを追加でき、追加後は「メインモデル」でプロバイダーとモデルを選択すると有効になります。
### サードパーティ API プロキシ <img width="900" src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-custom-model-config.png" />
```json 主なローカルデプロイツールのデフォルトアドレス:
{
"bot_type": "custom",
"model": "",
"custom_api_key": "YOUR_API_KEY",
"custom_api_base": "https://{your-proxy.com}/v1"
}
```
| パラメータ | 説明 |
| --- | --- |
| `bot_type` | `custom` に設定する必要があります |
| `model` | モデル名。プロキシサービスがサポートする任意のモデル名を指定 |
| `custom_api_key` | API キー。プロキシサービスから提供されます |
| `custom_api_base` | API アドレス。プロキシサービスから提供され、OpenAI プロトコル互換である必要があります |
### ローカルモデル
ローカルモデルは通常 API Key が不要で、API Base のみ設定します:
```json
{
"bot_type": "custom",
"model": "qwen3.5:27b",
"custom_api_base": "http://localhost:11434/v1"
}
```
一般的なローカルデプロイツールとデフォルトアドレス:
| ツール | デフォルト API Base | | ツール | デフォルト API Base |
| --- | --- | | --- | --- |
@@ -53,10 +23,40 @@ OpenAI 互換プロトコルで接続するサードパーティのモデルサ
| [vLLM](https://docs.vllm.ai) | `http://localhost:8000/v1` | | [vLLM](https://docs.vllm.ai) | `http://localhost:8000/v1` |
| [LocalAI](https://localai.io) | `http://localhost:8080/v1` | | [LocalAI](https://localai.io) | `http://localhost:8080/v1` |
### モデル切り替え ## 設定ファイルでの設定
カスタムベンダーでモデルを切り替える際は `model` のみが変更され、`bot_type` と API アドレスは変わりません `config.json` を直接編集することもできます。`custom_providers` リストに複数のプロバイダーを定義し、`bot_type` を `"custom:<id>"` に設定していずれかを有効化します
```json
{
"bot_type": "custom:3f2a9c1b",
"custom_providers": [
{
"id": "3f2a9c1b",
"name": "プロバイダーA",
"api_key": "YOUR_API_KEY_A",
"api_base": "https://api.a.com/v1",
"model": "deepseek-v3"
},
{
"id": "a1b2c3d4",
"name": "プロバイダーB",
"api_key": "YOUR_API_KEY_B",
"api_base": "https://api.b.com/v1",
"model": "qwen3-max"
}
]
}
``` ```
/config model qwen3.5:27b
``` | パラメータ | 説明 |
| --- | --- |
| `custom_providers` | カスタムプロバイダーのリスト。各項目は `id`、`name`、`api_base`、`api_key`(任意)、`model`(任意)を含む |
| `bot_type` | `"custom:<id>"` に設定して対応するプロバイダーを有効化 |
| `id` | 一意の識別子8 桁の 16 進数。Web コンソールから追加すると自動生成され、手動設定の場合は重複しない任意の文字列でよい |
| `name` | 表示名。自由に変更可能 |
| `model` | このプロバイダーで使用するモデル。有効化時に適用される |
<Note>
従来の単一プロバイダー設定(`bot_type` を `"custom"` にし、`custom_api_key` / `custom_api_base` を使用)は引き続き互換性があり、変更なしでそのまま利用できます。
</Note>

View File

@@ -13,20 +13,20 @@ Zhipu AI はテキスト対話、画像理解、音声認識ASR、ベク
```json ```json
{ {
"model": "glm-5.1", "model": "glm-5.2",
"zhipu_ai_api_key": "YOUR_API_KEY" "zhipu_ai_api_key": "YOUR_API_KEY"
} }
``` ```
| パラメータ | 説明 | | パラメータ | 説明 |
| --- | --- | | --- | --- |
| `model` | `glm-5.1`、`glm-5-turbo`、`glm-5`、`glm-4.7`、`glm-4-plus`、`glm-4-flash`、`glm-4-air` などを指定可能。詳細は [モデルコード](https://bigmodel.cn/dev/api/normal-model/glm-4) を参照 | | `model` | `glm-5.2`、`glm-5.1`、`glm-5-turbo`、`glm-5`、`glm-4.7`、`glm-4-plus`、`glm-4-flash`、`glm-4-air` などを指定可能。詳細は [モデルコード](https://bigmodel.cn/dev/api/normal-model/glm-4) を参照 |
| `zhipu_ai_api_key` | [Zhipu AI コンソール](https://www.bigmodel.cn/usercenter/proj-mgmt/apikeys) で作成 | | `zhipu_ai_api_key` | [Zhipu AI コンソール](https://www.bigmodel.cn/usercenter/proj-mgmt/apikeys) で作成 |
| `zhipu_ai_api_base` | 任意。デフォルトは `https://open.bigmodel.cn/api/paas/v4` | | `zhipu_ai_api_base` | 任意。デフォルトは `https://open.bigmodel.cn/api/paas/v4` |
## 画像理解 ## 画像理解
Zhipu の chat 系モデル(`glm-5.1`、`glm-5-turbo` など)はビジョンに対応していないため、ビジョン呼び出しは `glm-5v-turbo` に統一的にルーティングされます。`zhipu_ai_api_key` を設定すると、Agent の Vision ツールは自動的にこのモデルを使用するため、設定ファイルで明示的に指定する必要はありません。 Zhipu の chat 系モデル(`glm-5.2`、`glm-5.1`、`glm-5-turbo` など)はビジョンに対応していないため、ビジョン呼び出しは `glm-5v-turbo` に統一的にルーティングされます。`zhipu_ai_api_key` を設定すると、Agent の Vision ツールは自動的にこのモデルを使用するため、設定ファイルで明示的に指定する必要はありません。
## 音声認識 ## 音声認識

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@@ -6,7 +6,7 @@ description: CowAgent がサポートするモデルベンダーと機能マト
CowAgent は国内外の主要ベンダーの大規模言語モデルをサポートしており、モデル接続の実装はプロジェクトの `models/` ディレクトリにあります。テキスト対話に加えて、一部のベンダーは画像理解、画像生成、音声認識、音声合成、ベクトルなどの機能も提供しており、Agent フローの中で必要に応じて呼び出すことができます。 CowAgent は国内外の主要ベンダーの大規模言語モデルをサポートしており、モデル接続の実装はプロジェクトの `models/` ディレクトリにあります。テキスト対話に加えて、一部のベンダーは画像理解、画像生成、音声認識、音声合成、ベクトルなどの機能も提供しており、Agent フローの中で必要に応じて呼び出すことができます。
<Note> <Note>
Agent モードでは、効果とコストのバランスを考慮して以下のモデルの利用を推奨しますdeepseek-v4-flash、MiniMax-M2.7、claude-sonnet-4-6、gemini-3.5-flash、glm-5.1、qwen3.6-plus、kimi-k2.6、ernie-5.1。 Agent モードでは、効果とコストのバランスを考慮して以下のモデルの利用を推奨しますdeepseek-v4-flash、MiniMax-M3、claude-sonnet-4-6、gemini-3.5-flash、glm-5.2、qwen3.7-plus、kimi-k2.7-code、ernie-5.1。
同時に [LinkAI](https://link-ai.tech) プラットフォームの API もサポートしており、1 つの Key で複数ベンダーを柔軟に切り替えられ、ナレッジベース、ワークフロー、プラグインなどの機能も付属しています。 同時に [LinkAI](https://link-ai.tech) プラットフォームの API もサポートしており、1 つの Key で複数ベンダーを柔軟に切り替えられ、ナレッジベース、ワークフロー、プラグインなどの機能も付属しています。
</Note> </Note>
@@ -19,14 +19,14 @@ CowAgent は国内外の主要ベンダーの大規模言語モデルをサポ
| ベンダー | 代表モデル | テキスト | 画像理解 | 画像生成 | 音声認識 | 音声合成 | ベクトル | | ベンダー | 代表モデル | テキスト | 画像理解 | 画像生成 | 音声認識 | 音声合成 | ベクトル |
| --- | --- | :-: | :-: | :-: | :-: | :-: | :-: | | --- | --- | :-: | :-: | :-: | :-: | :-: | :-: |
| [DeepSeek](/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | | | [DeepSeek](/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | |
| [MiniMax](/models/minimax) | MiniMax-M2.7 | ✅ | ✅ | ✅ | | ✅ | | | [MiniMax](/models/minimax) | MiniMax-M3 | ✅ | ✅ | ✅ | | ✅ | |
| [Claude](/models/claude) | claude-opus-4-8 | ✅ | ✅ | | | | | | [Claude](/models/claude) | claude-fable-5 | ✅ | ✅ | | | | |
| [Gemini](/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | | | [Gemini](/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | |
| [OpenAI](/models/openai) | gpt-5.5、o シリーズ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [OpenAI](/models/openai) | gpt-5.5、o シリーズ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [Zhipu GLM](/models/glm) | glm-5.1、glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ | | [Zhipu GLM](/models/glm) | glm-5.2、glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ |
| [Tongyi Qianwen](/models/qwen) | qwen3.7-max | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [Tongyi Qianwen](/models/qwen) | qwen3.7-plus | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [Doubao](/models/doubao) | doubao-seed-2.0 シリーズ | ✅ | ✅ | ✅ | | | ✅ | | [Doubao](/models/doubao) | doubao-seed-2.0 シリーズ | ✅ | ✅ | ✅ | | | ✅ |
| [Kimi](/models/kimi) | kimi-k2.6 | ✅ | ✅ | | | | | | [Kimi](/models/kimi) | kimi-k2.7-code | ✅ | ✅ | | | | |
| [Baidu Qianfan](/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | | | [Baidu Qianfan](/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | |
| [LinkAI](/models/linkai) | 複数ベンダー 100+ モデルを統一接続 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [LinkAI](/models/linkai) | 複数ベンダー 100+ モデルを統一接続 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [カスタム](/models/custom) | ローカルモデル / サードパーティプロキシ | ✅ | | | | | | | [カスタム](/models/custom) | ローカルモデル / サードパーティプロキシ | ✅ | | | | | |

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@@ -13,14 +13,14 @@ Kimi は Moonshot が提供するモデルで、テキスト対話と画像理
```json ```json
{ {
"model": "kimi-k2.6", "model": "kimi-k2.7-code",
"moonshot_api_key": "YOUR_API_KEY" "moonshot_api_key": "YOUR_API_KEY"
} }
``` ```
| パラメータ | 説明 | | パラメータ | 説明 |
| --- | --- | | --- | --- |
| `model` | `kimi-k2.6`、`kimi-k2.5`、`kimi-k2`、`moonshot-v1-8k`、`moonshot-v1-32k`、`moonshot-v1-128k` を指定可能 | | `model` | `kimi-k2.7-code`、`kimi-k2.7-code-highspeed`、`kimi-k2.6`、`kimi-k2.5`、`kimi-k2`、`moonshot-v1-8k`、`moonshot-v1-32k`、`moonshot-v1-128k` を指定可能 |
| `moonshot_api_key` | [Moonshot コンソール](https://platform.moonshot.cn/console/api-keys) で作成 | | `moonshot_api_key` | [Moonshot コンソール](https://platform.moonshot.cn/console/api-keys) で作成 |
| `moonshot_base_url` | 任意。デフォルトは `https://api.moonshot.cn/v1` | | `moonshot_base_url` | 任意。デフォルトは `https://api.moonshot.cn/v1` |

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@@ -40,7 +40,7 @@ description: LinkAI プラットフォーム経由でテキスト、ビジョン
} }
``` ```
選択可能なモデル:`gpt-4.1-mini`、`gpt-5.4-mini`、`qwen3.6-plus`、`doubao-seed-2-0-pro-260215`、`kimi-k2.6`、`claude-sonnet-4-6`、`gemini-3.1-flash-lite-preview` など。 選択可能なモデル:`gpt-4.1-mini`、`gpt-5.4-mini`、`qwen3.7-plus`、`doubao-seed-2-0-pro-260215`、`kimi-k2.6`、`claude-sonnet-4-6`、`gemini-3.1-flash-lite-preview` など。
## 画像生成 ## 画像生成

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@@ -13,14 +13,14 @@ MiniMax はテキスト対話、画像理解、画像生成、音声合成をサ
```json ```json
{ {
"model": "MiniMax-M2.7", "model": "MiniMax-M3",
"minimax_api_key": "YOUR_API_KEY" "minimax_api_key": "YOUR_API_KEY"
} }
``` ```
| パラメータ | 説明 | | パラメータ | 説明 |
| --- | --- | | --- | --- |
| `model` | `MiniMax-M2.7`、`MiniMax-M2.7-highspeed`、`MiniMax-M2.5`、`MiniMax-M2.1`、`MiniMax-M2.1-lightning`、`MiniMax-M2` などを指定可能 | | `model` | `MiniMax-M3`、`MiniMax-M2.7`、`MiniMax-M2.7-highspeed` などを指定可能 |
| `minimax_api_key` | [MiniMax コンソール](https://platform.minimaxi.com/user-center/basic-information/interface-key) で作成 | | `minimax_api_key` | [MiniMax コンソール](https://platform.minimaxi.com/user-center/basic-information/interface-key) で作成 |
## 画像理解 ## 画像理解

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@@ -13,19 +13,19 @@ Tongyi QianwenDashScope / Bailianは国内で最も広範な機能をカ
```json ```json
{ {
"model": "qwen3.6-plus", "model": "qwen3.7-plus",
"dashscope_api_key": "YOUR_API_KEY" "dashscope_api_key": "YOUR_API_KEY"
} }
``` ```
| パラメータ | 説明 | | パラメータ | 説明 |
| --- | --- | | --- | --- |
| `model` | `qwen3.6-plus`、`qwen3.7-max`、`qwen3.5-plus`、`qwen3-max`、`qwen-max`、`qwen-plus`、`qwen-turbo`、`qwq-plus` などを指定可能 | | `model` | `qwen3.7-plus`、`qwen3.7-max`、`qwen3.6-plus`、`qwen3.5-plus`、`qwen3-max`、`qwen-max`、`qwen-plus`、`qwen-turbo`、`qwq-plus` などを指定可能 |
| `dashscope_api_key` | [Bailian コンソール](https://bailian.console.aliyun.com/?tab=model#/api-key) で作成。詳細は [公式ドキュメント](https://bailian.console.aliyun.com/?tab=api#/api) を参照 | | `dashscope_api_key` | [Bailian コンソール](https://bailian.console.aliyun.com/?tab=model#/api-key) で作成。詳細は [公式ドキュメント](https://bailian.console.aliyun.com/?tab=api#/api) を参照 |
## 画像理解 ## 画像理解
`dashscope_api_key` を設定すると、Agent の Vision ツールは自動的に Qwen のビジョンモデルを呼び出して画像を認識します。`qwen3-max` / `qwen3.5-plus` / `qwen3.6-plus` などのモデルはそのままマルチモーダルです。メインモデルがテキスト専用(`qwen-turbo` など)の場合は、自動的に `qwen-vl-max` にフォールバックします。 `dashscope_api_key` を設定すると、Agent の Vision ツールは自動的に Qwen のビジョンモデルを呼び出して画像を認識します。`qwen3.7-plus` / `qwen3.6-plus` / `qwen3.5-plus` / `qwen3-max` などのモデルはそのままマルチモーダルです。メインモデルがテキスト専用(`qwen-turbo` など)の場合は、自動的に `qwen-vl-max` にフォールバックします。
Vision モデルを手動で指定したい場合: Vision モデルを手動で指定したい場合:
@@ -33,13 +33,13 @@ Vision モデルを手動で指定したい場合:
{ {
"tools": { "tools": {
"vision": { "vision": {
"model": "qwen3.6-plus" "model": "qwen3.7-plus"
} }
} }
} }
``` ```
サポートするモデル:`qwen3.6-plus`、`qwen3.5-plus`、`qwen3-max`。 サポートするモデル:`qwen3.7-plus`、`qwen3.6-plus`、`qwen3.5-plus`、`qwen3-max`。
## 画像生成 ## 画像生成

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@@ -5,6 +5,8 @@ description: CowAgent バージョン更新履歴
| バージョン | 日付 | 説明 | | バージョン | 日付 | 説明 |
| --- | --- | --- | | --- | --- | --- |
| [2.1.2](/ja/releases/v2.1.2) | 2026.06.18 | Web コンソールの強化定期タスク管理、ナレッジベースのカテゴリ、複数のカスタムモデルプロバイダー、自己進化の改善、新モデル追加kimi-k2.7-code、glm-5.2)、セキュリティ強化と改善 |
| [2.1.1](/ja/releases/v2.1.1) | 2026.06.09 | 自己進化、Web コンソールの強化(メッセージ管理、マルチセッション並行)、クロスプラットフォーム対応の MCP 強化と並行呼び出し、新モデル追加MiniMax-M3、qwen3.7-plus など)、各種改善 |
| [2.1.0](/ja/releases/v2.1.0) | 2026.06.01 | 国際化対応、Telegram / Discord / Slack / WeChat カスタマーサービスチャネルの追加、CLI インタラクション強化ストリーミング出力、コマンドあいまいマッチング、タスクキャンセル、MCP Streamable HTTP、新モデル追加 | | [2.1.0](/ja/releases/v2.1.0) | 2026.06.01 | 国際化対応、Telegram / Discord / Slack / WeChat カスタマーサービスチャネルの追加、CLI インタラクション強化ストリーミング出力、コマンドあいまいマッチング、タスクキャンセル、MCP Streamable HTTP、新モデル追加 |
| [2.0.9](/ja/releases/v2.0.9) | 2026.05.22 | モデル管理機能の追加、MCP プロトコル対応、ブラウザログイン状態の永続化、新モデル追加gpt-5.5、gemini-3.5-flash、qwen3.7-max など)、デプロイ・セキュリティ強化 | | [2.0.9](/ja/releases/v2.0.9) | 2026.05.22 | モデル管理機能の追加、MCP プロトコル対応、ブラウザログイン状態の永続化、新モデル追加gpt-5.5、gemini-3.5-flash、qwen3.7-max など)、デプロイ・セキュリティ強化 |
| [2.0.8](/ja/releases/v2.0.8) | 2026.05.06 | Feishu チャネル全面アップグレード(音声、ストリーミング出力と Markdown、QR コードによるワンクリック接続、DeepSeek V4 と百度モデルの追加、スケジュールタスクツールの強化 | | [2.0.8](/ja/releases/v2.0.8) | 2026.05.06 | Feishu チャネル全面アップグレード(音声、ストリーミング出力と Markdown、QR コードによるワンクリック接続、DeepSeek V4 と百度モデルの追加、スケジュールタスクツールの強化 |

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@@ -0,0 +1,61 @@
---
title: v2.1.1
description: CowAgent 2.1.1 - 自己進化、Web コンソールのメッセージ管理とマルチセッション並行、クロスプラットフォーム対応の MCP 強化、新モデルと改善
---
🌐 [English](https://docs.cowagent.ai/releases/v2.1.1) | [中文](https://docs.cowagent.ai/zh/releases/v2.1.1)
## 🧬 自己進化
CowAgent に **自己進化Self-Evolution** が加わりました。Agent は単発のタスクをこなすだけでなく、日々の協働を通じて成長し続けます:
- **アイドル後の自動レビュー**会話がアイドルになると、Agent はバックグラウンドでその会話をレビューし、使用中に表面化した Skill の問題を修正し、再利用可能な新しい Skill を作成し、未完了のタスクを引き継ぎ、重要な情報を記憶とナレッジベースに記録します
- **静かに実行、必要なときだけ通知**:実際に変更があったときのみ調整内容を一言で伝え、変更がなければ何も通知しません
- **安全で取り消し可能**:レビューのたびに事前にバックアップを取り、いつでも取り消せます。組み込み Skill は保護され、すべての読み書きはワークスペース内に限定されます
新規インストールではデフォルトで有効です。既存ユーザーは Web コンソールの **設定 → Agent 設定** からワンクリックで有効化できます。
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-evolution-demo.png" alt="自己進化の会話例" />
ドキュメント:[自己進化](https://docs.cowagent.ai/ja/memory/self-evolution)
## 💬 Web コンソールの強化
Web コンソールのチャット体験がさらに強化され、主要なチャット製品に近い操作感になりました:
- **メッセージ管理**:ユーザーと Bot のメッセージを編集・削除・再生成できます。コードブロックに言語ラベルとワンクリックコピーボタンを追加。Thanks [@core-power](https://github.com/core-power) (#2865)
- **マルチセッション並行**:複数のセッションを同時に実行しても互いに干渉せず、セッションに戻るとライブストリーミングが自動的に再開されます
- **細部の改善**:チャット画面のどこにでもファイルをドラッグ&ドロップ可能。アクティブなセッションを削除すると隣接セッションへ自動で切り替わります
## 🧩 クロスプラットフォーム対応の MCP 強化
- **Windows 互換性の修正**Windows で `stdio` 通信が動作しない問題を修正し、サーバーのタイムアウトを `mcp.json` で設定できるようにしました
- **並行呼び出し**`sse` と `streamable-http` トランスポートがセッション間の並行呼び出しに対応し、複数ツールの応答が高速化されました
Thanks [@xliu123321](https://github.com/xliu123321) (#2859)
ドキュメント:[MCP ツール](https://docs.cowagent.ai/ja/tools/mcp)
## 🤖 新モデルと改善
- **MiniMax-M3**追加してデフォルトモデルに設定M2.7 シリーズはオプションとして継続。Thanks [@octo-patch](https://github.com/octo-patch) (#2855)
- **Qwen3.7-plus**:マルチモーダル対話に対応
- **ASR モデルの選択**Web コンソールで ASR音声認識モデルを選択して永続化できるようになりました。Thanks [@nightwhite](https://github.com/nightwhite) (#2857)
- **インストールメニューの簡素化**ワンライナーインストールスクリプトのモデルメニューを簡素化し、Xiaomi MiMo オプションを追加
ドキュメント:[モデル概要](https://docs.cowagent.ai/ja/models)
## 🛠 改善と修正
- **Python 3.13 対応**Python 3.13 環境でのインストールと依存関係の互換性を修正
- **国際化**:チャネル一覧を UI の言語順に表示。`auto` モードでの言語自動フォールバックを改善
- **より確実なキャンセル**:ストリーミング応答を中断できない場合がある問題を修正
- **CLI**`cow status` に現在のプロジェクトパスを表示
- **デプロイのセキュリティ強化**:認証ファイルのブロック範囲を `~/.cow/.env` に限定し、他のディレクトリに影響しないように修正Thanks [@orbisai0security](https://github.com/orbisai0security) #2863。WeChat 公式アカウントは `wechatmp_token` が空の場合に Webhook リクエストを拒否します
- **グループタスクボードプラグイン**グループタスクボードプラグインのソースを追加。Thanks [@Wyh-max-star](https://github.com/Wyh-max-star) (#2853)
## 📦 アップグレード
ソースコードでデプロイしている場合は `cow update` でワンクリックアップグレードするか、最新コードを取得して手動で再起動してください。詳細は [アップグレードガイド](https://docs.cowagent.ai/ja/guide/upgrade) を参照してください。
**リリース日**2026.06.09 | [Full Changelog](https://github.com/zhayujie/CowAgent/compare/2.1.0...2.1.1)

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@@ -0,0 +1,67 @@
---
title: v2.1.2
description: CowAgent 2.1.2 - Web コンソールの管理機能強化、自己進化の改善、新モデル、企業微信スマートボットのコールバックモード、セキュリティ強化
---
🌐 [English](https://docs.cowagent.ai/releases/v2.1.2) | [中文](https://docs.cowagent.ai/zh/releases/v2.1.2)
## 💬 Web コンソールの改善
本リリースでは Web コンソールに複数の可視化管理機能を追加し、ファイルを編集せずに UI 上でより多くの設定を行えるようになりました:
- **定期タスク管理**コンソール上で任意の定期タスクを直接表示・編集・有効化無効化・削除できます。タスク一覧は有効状態を優先し、次回実行時刻の順にソートされます。Thanks @HnBigVolibear (#2892)
- **ナレッジベースのカテゴリと文書管理**:ナレッジベースをカテゴリで整理し、各カテゴリ配下の文書を UI で管理できるようになりました。Thanks @yangziyu-hhh (#2893)
- **複数のカスタムモデルプロバイダー**:複数の OpenAI 互換プロバイダーを設定し、有効なものをワンクリックで切り替えられます。既存の設定とも完全に互換です。Thanks @kirs-hi (#2877)
- **セッションのリネーム**:セッションを手動でリネームでき、並行する複数のタスクを区別しやすくなります (#2897)
- **Bash のストリーミング出力**:長時間実行される Bash コマンドの進捗をリアルタイムにストリーミング出力します。Thanks @yangziyu-hhh (#2879)
## 🧬 自己進化の改善
前バージョンで導入した自己進化を、本バージョンでさらに改善しました:
- **トリガー閾値の引き下げ**:デフォルトのレビュー閾値を引き下げ、日々の協働がより早く改善へとつながります
- **同時レビューの回避**:単一ターンの処理が長引いた場合に、アイドルレビューが誤って起動しなくなり、進行中の会話との干渉を回避します
- **レビュー要約の改善**:要約生成のプロンプトを改善し、要約を簡潔に保ちつつ情報密度を高め、会話の言語で出力します
ドキュメント:[自己進化](https://docs.cowagent.ai/ja/memory/self-evolution)
## 🤖 新モデル
- **kimi-k2.7-code**:追加して Kimi のデフォルトモデルに設定。高速版の `kimi-k2.7-code-highspeed` も利用できます
- **glm-5.2**:追加して GLM のデフォルトモデルに設定
ドキュメント:[モデル概要](https://docs.cowagent.ai/ja/models)
## 🏢 企業微信スマートボットのコールバックモード
企業微信スマートボットのチャネルに、既存のロングコネクションに加えて **HTTP コールバックモード** を追加しました。ロングコネクションを維持できない環境でも安定して接続できます:
- **モード切替**`wecom_bot_mode` で `websocket`(ロングコネクション)と `webhook`(コールバック)を切り替えます
- **暗号化通信**:コールバックモードは URL 検証、メッセージ復号、受動応答の暗号化に完全対応します
- **安定性の修正**:応答の中断、ストリームの早期終了、一時画像ファイルのリークなどの問題を修正しました
Thanks @6vision (#2896 #2869)
ドキュメント:[企業微信スマートボット](https://docs.cowagent.ai/ja/channels/wecom-bot)
## 🔒 セキュリティ強化
- **Vision ツールの SSRF 対策**:画像 URL を解決する前に対象アドレスを検証し、内部・ループバック・クラウドサーバーのメタデータエンドポイントへのリクエストをブロックします。Thanks @kirs-hi (#2886)
- **Web フェッチの SSRF 対策**`web_fetch` は取得前に対象アドレスを検証し、リダイレクトのたびに再検証することで、リダイレクト経由で検証を回避して内部アドレスへ到達することを防ぎます。Thanks @christop (#2900)
- **Skill インストールのパストラバーサル対策**Skill のインストール時にパスを検証し、悪意ある Skill 名がパストラバーサルで `skills/` ディレクトリを抜け出して許可されない場所に書き込むことを防ぎます。Thanks @kirs-hi (#2886)
## 🛠 改善と修正
- **CLI セルフ再起動**self-restart コマンドを追加し、Agent が自身のプロセスを再起動できるようになりました
- **Windows 互換性**cow CLI のディレクトリをユーザー PATH に永続化。`python -c` の長いコマンドが `cmd.exe` の長さ制限を超える問題を修正。インストール時に greenlet をソースからビルドしないように修正
- **カスタムロール**:ロールプラグインが `roles/*.json` 配下の独立したプロンプトファイルによるカスタマイズに対応しました。Thanks @sufan721 (#2891)
- **安定性の修正**`/cancel` 時の KeyError と画像圧縮の無限ループを修正Thanks @kirs-hi #2888
- **インストールの改善**起動スクリプトとデフォルト設定を更新。ASR/TTS のデフォルト値、自己進化フラグ、インストール時のハングを修正
- **Vision ツールの安定性**Vision ツールのタイムアウトと max_tokens を引き上げ
- **記憶の蒸留**:ディープドリーム蒸留の出力長制限を撤廃し、大きな `MEMORY.md` が切り詰められないようにしました
## 📦 アップグレード
ソースコードでデプロイしている場合は `cow update` でワンクリックアップグレードするか、最新コードを取得して手動で再起動してください。詳細は [アップグレードガイド](https://docs.cowagent.ai/ja/guide/upgrade) を参照してください。
**リリース日**2026.06.18 | [Full Changelog](https://github.com/zhayujie/CowAgent/compare/2.1.1...2.1.2)

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@@ -19,7 +19,7 @@ Vision ツールは多段階の自動選択 + 自動フォールバック戦略
| プロバイダー | ビジョンモデル | 説明 | | プロバイダー | ビジョンモデル | 説明 |
| --- | --- | --- | | --- | --- | --- |
| OpenAI / 互換プロトコル | メインモデルを使用 | すべての OpenAI 互換マルチモーダルモデルに対応 | | OpenAI / 互換プロトコル | メインモデルを使用 | すべての OpenAI 互換マルチモーダルモデルに対応 |
| 通義千問 (DashScope) | メインモデルを使用 | 例qwen3.6-plus など | | 通義千問 (DashScope) | メインモデルを使用 | 例qwen3.7-plus など |
| Claude | メインモデルを使用 | Anthropic ネイティブ画像形式 | | Claude | メインモデルを使用 | Anthropic ネイティブ画像形式 |
| Gemini | メインモデルを使用 | inlineData 形式 | | Gemini | メインモデルを使用 | inlineData 形式 |
| 豆包 (Doubao) | メインモデルを使用 | doubao-seed-2-0 シリーズがネイティブ対応 | | 豆包 (Doubao) | メインモデルを使用 | doubao-seed-2-0 シリーズがネイティブ対応 |

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@@ -0,0 +1,94 @@
---
title: Self-Evolution
description: Self-Evolution — review a conversation after it goes idle to consolidate memory, improve skills, and follow up on unfinished tasks
---
## Overview
### Introduction
Self-Evolution lets the Agent do more than finish one task at a time; it keeps improving as it works with you. After a conversation winds down, it quietly reviews what just happened: it saves anything worth remembering into long-term memory, fixes problems that surfaced in a skill, and picks up tasks that were left unfinished. Over time the Agent learns your preferences, repeats fewer mistakes, and gets better at wrapping things up on its own. All of this runs in the background, and it only tells you when it actually did something.
<Note>
For the full architecture and engineering behind the self-evolution mechanism, see the blog post: [A Five-Layer Self-Evolution Mechanism for AI Agents](https://cowagent.ai/blog/self-evolution/).
</Note>
> Self-Evolution complements [Deep Dream](/memory/deep-dream). Deep Dream organizes memory itself, while Self-Evolution goes a step further to improve skills and push unfinished tasks forward, sharpening the Agent's abilities through everyday use.
<Frame>
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-evolution-demo.png" alt="Self-Evolution in a conversation" />
</Frame>
### Three Goals
Self-Evolution focuses on three things:
| Goal | Description |
| --- | --- |
| **Consolidate memory** | Record important preferences, decisions, and facts from the conversation, filling in what the main chat may have missed |
| **Improve skills** | ① When a skill shows a problem in use (such as a wrong setting or a missing step), fix the skill file directly; ② when a reusable workflow emerges, turn it into a new skill so it can be reused next time |
| **Follow up on unfinished tasks** | Spot the to-dos left in a conversation and finish them when possible |
Once a review is done, if it actually changed something, the Agent tells you in a single line what it just learned and what it adjusted, so you can decide whether to roll it back.
## Usage
### When It Triggers
Self-Evolution does not run on a fixed schedule. It only kicks in **after a conversation naturally ends and goes idle**, so it never interrupts an ongoing exchange. Two conditions must both hold:
- **The conversation is idle**: more time has passed since the last interaction than the configured idle window (10 minutes by default)
- **There is enough to review**: enough turns have accumulated since the last evolution, or the context is close to its capacity
Only when both are met does a review begin. This makes sure there is something worth reviewing while keeping it from bothering you mid-conversation.
### Configuration
You can toggle Self-Evolution in the Web console under **Settings → Agent Config** (below "Deep Thinking"), or adjust it in the config file:
| Parameter | Description | Default |
| --- | --- | --- |
| `self_evolution_enabled` | Whether Self-Evolution is enabled (on by default for new installs) | `false` |
| `self_evolution_idle_minutes` | How long the conversation must be idle before it triggers (minutes) | `10` |
| `self_evolution_min_turns` | Minimum conversation turns required to trigger | `6` |
<Frame>
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-evolution-config.png" alt="Enable Self-Evolution in the Web console" />
</Frame>
<Tip>
The Web console only exposes the on/off toggle. To change the idle window or the turn threshold, edit the config file. Changes take effect immediately, with no restart needed.
</Tip>
### Evolution Records
Each review is recorded by date in `memory/evolution/YYYY-MM-DD.md`, viewable in the Web console under the **Memory → Self-Evolution** tab. That tab gathers both self-evolution records and dream diaries in one place, so you can look back on how the Agent has grown.
<Frame>
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-evolution-logs.png" alt="Self-Evolution records list" />
</Frame>
### Rolling Back
If you disagree with a change from a review, just tell the Agent in chat to undo the last change. It restores the affected files from the backup taken before the review. Every review keeps its own backup, so they never interfere with each other.
## Design
Self-Evolution reuses what the system already has, which keeps it lightweight:
- **Isolated execution**: each review runs as a separate, short-lived task. It uses the same model as the main chat but with a restricted toolset (it can only read context and edit memory and skill files). It does not pollute the main chat's context or affect its performance.
- **Backup-based undo**: the relevant files are snapshotted before a review and restored from that snapshot on undo, so every change is traceable and reversible.
- **Change detection**: after a review, the system compares file snapshots to see whether anything actually changed, and uses that to decide whether to notify you. This is how it guarantees, at the engineering level, that no work means no message.
### Restraint and Safety
Self-Evolution is built to act when needed and stay out of the way otherwise:
| Mechanism | Description |
| --- | --- |
| **No work, no notification** | If a review produces no real change, it stays silent and sends nothing |
| **Triggers only when idle** | It runs only after the conversation is idle, never interrupting an active one |
| **Reversible changes** | A backup is taken before every review, so you can undo a result you do not like |
| **Built-in skills protected** | The skills shipped with the product are protected and never modified |
| **Workspace-scoped** | All reads and writes stay inside the workspace and never touch other system files |
| **Runs in the background** | Reviews run in the background and do not block normal replies |

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@@ -13,14 +13,14 @@ Claude is provided by Anthropic and supports both text chat and image understand
```json ```json
{ {
"model": "claude-opus-4-8", "model": "claude-fable-5",
"claude_api_key": "YOUR_API_KEY" "claude_api_key": "YOUR_API_KEY"
} }
``` ```
| Parameter | Description | | Parameter | Description |
| --- | --- | | --- | --- |
| `model` | Supports `claude-opus-4-8`, `claude-opus-4-7`, `claude-sonnet-4-6`, `claude-opus-4-6`, `claude-sonnet-4-5`, `claude-sonnet-4-0`, `claude-3-5-sonnet-latest`, etc. See [official models](https://docs.anthropic.com/en/docs/about-claude/models/overview) | | `model` | Supports `claude-fable-5`, `claude-opus-4-8`, `claude-opus-4-7`, `claude-sonnet-4-6`, `claude-opus-4-6`, `claude-sonnet-4-5`, `claude-sonnet-4-0`, `claude-3-5-sonnet-latest`, etc. See [official models](https://docs.anthropic.com/en/docs/about-claude/models/overview) |
| `claude_api_key` | Create one in the [Claude Console](https://console.anthropic.com/settings/keys) | | `claude_api_key` | Create one in the [Claude Console](https://console.anthropic.com/settings/keys) |
| `claude_api_base` | Optional, defaults to `https://api.anthropic.com/v1`. Can be changed to a third-party proxy | | `claude_api_base` | Optional, defaults to `https://api.anthropic.com/v1`. Can be changed to a third-party proxy |
@@ -28,8 +28,9 @@ Claude is provided by Anthropic and supports both text chat and image understand
| Model | Use Case | | Model | Use Case |
| --- | --- | | --- | --- |
| `claude-opus-4-8` | Default recommended, latest flagship; best for complex reasoning and long-running tasks | | `claude-fable-5` | Latest flagship; best for complex reasoning and long-running tasks, at a higher price |
| `claude-opus-4-7` | Previous-generation Opus flagship | | `claude-opus-4-8` | Previous flagship with balanced quality and cost |
| `claude-opus-4-7` | Earlier Opus flagship |
| `claude-sonnet-4-6` | Balanced cost and speed, lower cost | | `claude-sonnet-4-6` | Balanced cost and speed, lower cost |
| `claude-opus-4-6` / `claude-sonnet-4-5` / `claude-sonnet-4-0` | Earlier flagships at a lower price | | `claude-opus-4-6` / `claude-sonnet-4-5` / `claude-sonnet-4-0` | Earlier flagships at a lower price |

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@@ -61,7 +61,7 @@ Reference: [Quick Start](https://help.aliyun.com/zh/model-studio/coding-plan-qui
```json ```json
{ {
"bot_type": "openai", "bot_type": "openai",
"model": "MiniMax-M2.5", "model": "MiniMax-M3",
"open_ai_api_base": "https://api.minimaxi.com/v1", "open_ai_api_base": "https://api.minimaxi.com/v1",
"open_ai_api_key": "YOUR_API_KEY" "open_ai_api_key": "YOUR_API_KEY"
} }
@@ -69,7 +69,7 @@ Reference: [Quick Start](https://help.aliyun.com/zh/model-studio/coding-plan-qui
| Parameter | Description | | Parameter | Description |
| --- | --- | | --- | --- |
| `model` | `MiniMax-M2.5`, `MiniMax-M2.5-highspeed`, `MiniMax-M2.1`, `MiniMax-M2` | | `model` | `MiniMax-M3`, `MiniMax-M2.7`, `MiniMax-M2.7-highspeed` |
| `open_ai_api_base` | China: `https://api.minimaxi.com/v1`; Global: `https://api.minimax.io/v1` | | `open_ai_api_base` | China: `https://api.minimaxi.com/v1`; Global: `https://api.minimax.io/v1` |
| `open_ai_api_key` | Coding Plan specific key (not shared with pay-as-you-go) | | `open_ai_api_key` | Coding Plan specific key (not shared with pay-as-you-go) |

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@@ -1,51 +1,21 @@
--- ---
title: Custom title: Custom
description: Custom vendor configuration for third-party API proxies and local models description: Custom provider configuration for third-party API proxies and local models
--- ---
For model services accessed via the OpenAI-compatible protocol or locally deployed models, such as: For model services accessed via the OpenAI-compatible protocol, such as:
- **Third-party API proxies**: call multiple models through a unified API base - **Third-party API proxies**: call multiple models through a unified API base
- **Local models**: models deployed locally with tools like Ollama, vLLM, LocalAI - **Local models**: models deployed locally with tools like Ollama, vLLM
- **Private deployments**: model services deployed inside an enterprise - **Private deployments**: model services deployed inside an enterprise
<Note> ## Web Console
Difference from the `openai` vendor: when a custom vendor is selected, switching models via `/config model` does not automatically switch the vendor type — the custom API address is always used.
</Note>
## Text Chat Recommended. On the "Models" page of the Web console, click "Add Provider" and pick "Custom", then fill in the name, API Base and API Key. Multiple custom providers can be added; after adding one, select it together with a model in the "Main Model" card to enable it.
### Third-party API proxy <img width="900" src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-custom-model-config.png" />
```json Default endpoints of common local deployment tools:
{
"bot_type": "custom",
"model": "",
"custom_api_key": "YOUR_API_KEY",
"custom_api_base": "https://{your-proxy.com}/v1"
}
```
| Parameter | Description |
| --- | --- |
| `bot_type` | Must be set to `custom` |
| `model` | Model name; any model name supported by the proxy service |
| `custom_api_key` | API key provided by the proxy service |
| `custom_api_base` | API endpoint provided by the proxy service; must be OpenAI-compatible |
### Local models
Local models usually do not require an API key — only the API base needs to be filled in:
```json
{
"bot_type": "custom",
"model": "qwen3.5:27b",
"custom_api_base": "http://localhost:11434/v1"
}
```
Common local deployment tools and their default endpoints:
| Tool | Default API Base | | Tool | Default API Base |
| --- | --- | | --- | --- |
@@ -53,10 +23,40 @@ Common local deployment tools and their default endpoints:
| [vLLM](https://docs.vllm.ai) | `http://localhost:8000/v1` | | [vLLM](https://docs.vllm.ai) | `http://localhost:8000/v1` |
| [LocalAI](https://localai.io) | `http://localhost:8080/v1` | | [LocalAI](https://localai.io) | `http://localhost:8080/v1` |
### Switching Models ## Configuration File
Switching models under a custom vendor only changes `model` — `bot_type` and the API endpoint remain unchanged: You can also edit `config.json` directly: define multiple providers in the `custom_providers` list and set `bot_type` to `"custom:<id>"` to activate one of them:
```json
{
"bot_type": "custom:3f2a9c1b",
"custom_providers": [
{
"id": "3f2a9c1b",
"name": "ProviderA",
"api_key": "YOUR_API_KEY_A",
"api_base": "https://api.a.com/v1",
"model": "deepseek-v3"
},
{
"id": "a1b2c3d4",
"name": "ProviderB",
"api_key": "YOUR_API_KEY_B",
"api_base": "https://api.b.com/v1",
"model": "qwen3-max"
}
]
}
``` ```
/config model qwen3.5:27b
``` | Parameter | Description |
| --- | --- |
| `custom_providers` | List of custom providers; each item has `id`, `name`, `api_base`, `api_key` (optional) and `model` (optional) |
| `bot_type` | Set to `"custom:<id>"` to activate the corresponding provider |
| `id` | Unique identifier (8-char hex); auto-generated when adding via the Web console, or any unique string when editing manually |
| `name` | Display label, can be renamed freely |
| `model` | Model used by this provider, takes effect when activated |
<Note>
The legacy single-provider configuration (`bot_type` set to `"custom"` with `custom_api_key` / `custom_api_base`) remains fully compatible and keeps working without any changes.
</Note>

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@@ -3,7 +3,7 @@ title: DeepSeek
description: DeepSeek model configuration (Text Chat + Thinking Mode) description: DeepSeek model configuration (Text Chat + Thinking Mode)
--- ---
DeepSeek is one of the default recommended vendors in Agent mode, focused on cost-effective text chat and task planning. DeepSeek is one of the default recommended providers in Agent mode, focused on cost-effective text chat and task planning.
## Text Chat ## Text Chat

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@@ -13,20 +13,20 @@ Zhipu AI supports text chat, image understanding, speech-to-text (ASR), and embe
```json ```json
{ {
"model": "glm-5.1", "model": "glm-5.2",
"zhipu_ai_api_key": "YOUR_API_KEY" "zhipu_ai_api_key": "YOUR_API_KEY"
} }
``` ```
| Parameter | Description | | Parameter | Description |
| --- | --- | | --- | --- |
| `model` | Can be `glm-5.1`, `glm-5-turbo`, `glm-5`, `glm-4.7`, `glm-4-plus`, `glm-4-flash`, `glm-4-air`, etc. See [model codes](https://bigmodel.cn/dev/api/normal-model/glm-4) | | `model` | Can be `glm-5.2`, `glm-5.1`, `glm-5-turbo`, `glm-5`, `glm-4.7`, `glm-4-plus`, `glm-4-flash`, `glm-4-air`, etc. See [model codes](https://bigmodel.cn/dev/api/normal-model/glm-4) |
| `zhipu_ai_api_key` | Create one in the [Zhipu AI Console](https://www.bigmodel.cn/usercenter/proj-mgmt/apikeys) | | `zhipu_ai_api_key` | Create one in the [Zhipu AI Console](https://www.bigmodel.cn/usercenter/proj-mgmt/apikeys) |
| `zhipu_ai_api_base` | Optional, defaults to `https://open.bigmodel.cn/api/paas/v4` | | `zhipu_ai_api_base` | Optional, defaults to `https://open.bigmodel.cn/api/paas/v4` |
## Image Understanding ## Image Understanding
Zhipu's chat models (`glm-5.1`, `glm-5-turbo`, etc.) do not support vision; vision calls are uniformly routed to `glm-5v-turbo`. Once `zhipu_ai_api_key` is configured, the Agent's Vision tool automatically uses this model, with no need to specify it explicitly in the configuration file. Zhipu's chat models (`glm-5.2`, `glm-5.1`, `glm-5-turbo`, etc.) do not support vision; vision calls are uniformly routed to `glm-5v-turbo`. Once `zhipu_ai_api_key` is configured, the Agent's Vision tool automatically uses this model, with no need to specify it explicitly in the configuration file.
## Speech-to-Text (ASR) ## Speech-to-Text (ASR)

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@@ -1,32 +1,32 @@
--- ---
title: Models Overview title: Models Overview
description: Model vendors supported by CowAgent and their capability matrix description: Model providers supported by CowAgent and their capability matrix
--- ---
CowAgent supports a wide range of mainstream large language models. Model interfaces live under the project's `models/` directory. Beyond text chat, several vendors also provide vision understanding, image generation, speech-to-text, text-to-speech, and embeddings — all of which can be invoked on demand in the Agent flow. CowAgent supports a wide range of mainstream large language models. Model interfaces live under the project's `models/` directory. Beyond text chat, several providers also provide vision understanding, image generation, speech-to-text, text-to-speech, and embeddings — all of which can be invoked on demand in the Agent flow.
## Capability Matrix ## Capability Matrix
A snapshot of each vendor's capabilities. "Text" refers to the main chat model; the remaining columns show which Agent capabilities the vendor can power. A snapshot of each provider's capabilities. "Text" refers to the main chat model; the remaining columns show which Agent capabilities the provider can power.
| Vendor | Representative Models | Text | Vision | Image Gen | STT | TTS | Embedding | | Provider | Representative Models | Text | Vision | Image Gen | STT | TTS | Embedding |
| --- | --- | :-: | :-: | :-: | :-: | :-: | :-: | | --- | --- | :-: | :-: | :-: | :-: | :-: | :-: |
| [DeepSeek](/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | | | [DeepSeek](/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | |
| [MiniMax](/models/minimax) | MiniMax-M2.7 | ✅ | ✅ | ✅ | | ✅ | | | [MiniMax](/models/minimax) | MiniMax-M3 | ✅ | ✅ | ✅ | | ✅ | |
| [Claude](/models/claude) | claude-opus-4-8 | ✅ | ✅ | | | | | | [Claude](/models/claude) | claude-fable-5 | ✅ | ✅ | | | | |
| [Gemini](/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | | | [Gemini](/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | |
| [OpenAI](/models/openai) | gpt-5.5, o-series | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [OpenAI](/models/openai) | gpt-5.5, o-series | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [GLM](/models/glm) | glm-5.1, glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ | | [GLM](/models/glm) | glm-5.2, glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ |
| [Qwen](/models/qwen) | qwen3.7-max | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [Qwen](/models/qwen) | qwen3.7-plus | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [Doubao](/models/doubao) | doubao-seed-2.0 series | ✅ | ✅ | ✅ | | | ✅ | | [Doubao](/models/doubao) | doubao-seed-2.0 series | ✅ | ✅ | ✅ | | | ✅ |
| [Kimi](/models/kimi) | kimi-k2.6 | ✅ | ✅ | | | | | | [Kimi](/models/kimi) | kimi-k2.7-code | ✅ | ✅ | | | | |
| [ERNIE](/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | | | [ERNIE](/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | |
| [MiMo](/models/mimo) | mimo-v2.5-pro / v2.5 | ✅ | ✅ | | | ✅ | | | [MiMo](/models/mimo) | mimo-v2.5-pro / v2.5 | ✅ | ✅ | | | ✅ | |
| [LinkAI](/models/linkai) | 100+ models from multiple vendors | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [LinkAI](/models/linkai) | 100+ models from multiple providers | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [Custom](/models/custom) | Local models / third-party proxies | ✅ | | | | | | | [Custom](/models/custom) | Local models / third-party proxies | ✅ | | | | | |
<Tip> <Tip>
Every capability in the Web console (Vision / Image / STT / TTS / Embedding / Web Search) can be configured independently with its own vendor and model — there is no forced binding between them. Every capability in the Web console (Vision / Image / STT / TTS / Embedding / Web Search) can be configured independently with its own provider and model — there is no forced binding between them.
</Tip> </Tip>
## How to Configure ## How to Configure
@@ -35,4 +35,4 @@ A snapshot of each vendor's capabilities. "Text" refers to the main chat model;
<img width="900" src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-models-config.png" /> <img width="900" src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-models-config.png" />
**Option 2:** Edit `config.json` manually and fill in the model name and API key for the selected vendor. Every model also supports OpenAI-compatible access — just set `bot_type` to `openai` and configure `open_ai_api_base` and `open_ai_api_key`. **Option 2:** Edit `config.json` manually and fill in the model name and API key for the selected provider. Every model also supports OpenAI-compatible access — just set `bot_type` to `openai` and configure `open_ai_api_base` and `open_ai_api_key`.

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@@ -13,14 +13,14 @@ Kimi is provided by Moonshot and supports both text chat and image understanding
```json ```json
{ {
"model": "kimi-k2.6", "model": "kimi-k2.7-code",
"moonshot_api_key": "YOUR_API_KEY" "moonshot_api_key": "YOUR_API_KEY"
} }
``` ```
| Parameter | Description | | Parameter | Description |
| --- | --- | | --- | --- |
| `model` | Can be `kimi-k2.6`, `kimi-k2.5`, `kimi-k2`, `moonshot-v1-8k`, `moonshot-v1-32k`, `moonshot-v1-128k` | | `model` | Can be `kimi-k2.7-code`, `kimi-k2.7-code-highspeed`, `kimi-k2.6`, `kimi-k2.5`, `kimi-k2`, `moonshot-v1-8k`, `moonshot-v1-32k`, `moonshot-v1-128k` |
| `moonshot_api_key` | Create one in the [Moonshot Console](https://platform.moonshot.cn/console/api-keys) | | `moonshot_api_key` | Create one in the [Moonshot Console](https://platform.moonshot.cn/console/api-keys) |
| `moonshot_base_url` | Optional, defaults to `https://api.moonshot.cn/v1` | | `moonshot_base_url` | Optional, defaults to `https://api.moonshot.cn/v1` |

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@@ -3,7 +3,7 @@ title: LinkAI
description: Access text, vision, image, speech, and embedding capabilities through the LinkAI platform description: Access text, vision, image, speech, and embedding capabilities through the LinkAI platform
--- ---
A single `linkai_api_key` gives you access to all capabilities of mainstream vendors such as OpenAI, Claude, Gemini, DeepSeek, MiniMax, Qwen, Kimi, and Doubao. A single `linkai_api_key` gives you access to all capabilities of mainstream providers such as OpenAI, Claude, Gemini, DeepSeek, MiniMax, Qwen, Kimi, and Doubao.
<Tip> <Tip>
All capabilities below can be configured in one place via the "Model Management" page in the Web Console, with no need to manually edit the configuration file. All capabilities below can be configured in one place via the "Model Management" page in the Web Console, with no need to manually edit the configuration file.
@@ -40,7 +40,7 @@ Once configured, the Agent's Vision tool automatically calls multimodal models v
} }
``` ```
Available models: `gpt-4.1-mini`, `gpt-5.4-mini`, `qwen3.6-plus`, `doubao-seed-2-0-pro-260215`, `kimi-k2.6`, `claude-sonnet-4-6`, `gemini-3.1-flash-lite-preview`, etc. Available models: `gpt-4.1-mini`, `gpt-5.4-mini`, `qwen3.7-plus`, `doubao-seed-2-0-pro-260215`, `kimi-k2.6`, `claude-sonnet-4-6`, `gemini-3.1-flash-lite-preview`, etc.
## Image Generation ## Image Generation

View File

@@ -49,7 +49,7 @@ Use the global `enable_thinking` flag to toggle visibility (also switchable from
Once `mimo_api_key` is configured, the Agent's Vision tool can automatically use MiMo's vision models: Once `mimo_api_key` is configured, the Agent's Vision tool can automatically use MiMo's vision models:
- When the main model itself is multimodal (`mimo-v2.5-pro` / `mimo-v2.5`), images are handled directly by the main model with no extra setup. - When the main model itself is multimodal (`mimo-v2.5-pro` / `mimo-v2.5`), images are handled directly by the main model with no extra setup.
- When the main model belongs to another vendor, the Vision tool falls back to `mimo-v2.5-pro` in order. - When the main model belongs to another provider, the Vision tool falls back to `mimo-v2.5-pro` in order.
To force a specific Vision model, set it explicitly in the configuration: To force a specific Vision model, set it explicitly in the configuration:

View File

@@ -13,14 +13,14 @@ MiniMax supports text chat, image understanding, image generation, and text-to-s
```json ```json
{ {
"model": "MiniMax-M2.7", "model": "MiniMax-M3",
"minimax_api_key": "YOUR_API_KEY" "minimax_api_key": "YOUR_API_KEY"
} }
``` ```
| Parameter | Description | | Parameter | Description |
| --- | --- | | --- | --- |
| `model` | Can be `MiniMax-M2.7`, `MiniMax-M2.7-highspeed`, `MiniMax-M2.5`, `MiniMax-M2.1`, `MiniMax-M2.1-lightning`, `MiniMax-M2`, etc. | | `model` | Can be `MiniMax-M3`, `MiniMax-M2.7`, `MiniMax-M2.7-highspeed`, etc. |
| `minimax_api_key` | Create one in the [MiniMax Console](https://platform.minimaxi.com/user-center/basic-information/interface-key) | | `minimax_api_key` | Create one in the [MiniMax Console](https://platform.minimaxi.com/user-center/basic-information/interface-key) |
## Image Understanding ## Image Understanding

View File

@@ -25,7 +25,7 @@ OpenAI offers the most complete coverage and can simultaneously serve text chat,
| `model` | Same as OpenAI's [model parameter](https://platform.openai.com/docs/models); supports `gpt-5.5`, `gpt-5.4`, `gpt-5.4-mini`, `gpt-5.4-nano`, the `gpt-5` series, `gpt-4.1`, the o-series, etc. Agent mode defaults to `gpt-5.5`; use `gpt-5.4` for better cost-efficiency | | `model` | Same as OpenAI's [model parameter](https://platform.openai.com/docs/models); supports `gpt-5.5`, `gpt-5.4`, `gpt-5.4-mini`, `gpt-5.4-nano`, the `gpt-5` series, `gpt-4.1`, the o-series, etc. Agent mode defaults to `gpt-5.5`; use `gpt-5.4` for better cost-efficiency |
| `open_ai_api_key` | Create one on the [OpenAI Platform](https://platform.openai.com/api-keys) | | `open_ai_api_key` | Create one on the [OpenAI Platform](https://platform.openai.com/api-keys) |
| `open_ai_api_base` | Optional; change it to access a third-party proxy | | `open_ai_api_base` | Optional; change it to access a third-party proxy |
| `bot_type` | Not required when using OpenAI's official models; set to `openai` when accessing other vendors via the compatible protocol | | `bot_type` | Not required when using OpenAI's official models; set to `openai` when accessing other providers via the compatible protocol |
## Image Understanding ## Image Understanding

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@@ -3,7 +3,7 @@ title: Qwen
description: Qwen model configuration (Text / Image Understanding / Image Generation / Speech-to-Text / Text-to-Speech / Embedding) description: Qwen model configuration (Text / Image Understanding / Image Generation / Speech-to-Text / Text-to-Speech / Embedding)
--- ---
Qwen (Alibaba DashScope / Bailian) is one of the most fully-featured vendors. Text, image understanding, image generation, speech-to-text, text-to-speech, and embedding can all be enabled with a single `dashscope_api_key`. Qwen (Alibaba DashScope / Bailian) is one of the most fully-featured providers. Text, image understanding, image generation, speech-to-text, text-to-speech, and embedding can all be enabled with a single `dashscope_api_key`.
<Tip> <Tip>
All capabilities below can be configured in one place via the "Model Management" page in the Web Console, with no need to manually edit the configuration file. All capabilities below can be configured in one place via the "Model Management" page in the Web Console, with no need to manually edit the configuration file.
@@ -13,19 +13,19 @@ Qwen (Alibaba DashScope / Bailian) is one of the most fully-featured vendors. Te
```json ```json
{ {
"model": "qwen3.6-plus", "model": "qwen3.7-plus",
"dashscope_api_key": "YOUR_API_KEY" "dashscope_api_key": "YOUR_API_KEY"
} }
``` ```
| Parameter | Description | | Parameter | Description |
| --- | --- | | --- | --- |
| `model` | Can be `qwen3.6-plus`, `qwen3.7-max`, `qwen3.5-plus`, `qwen3-max`, `qwen-max`, `qwen-plus`, `qwen-turbo`, `qwq-plus`, etc. | | `model` | Can be `qwen3.7-plus`, `qwen3.7-max`, `qwen3.6-plus`, `qwen3.5-plus`, `qwen3-max`, `qwen-max`, `qwen-plus`, `qwen-turbo`, `qwq-plus`, etc. |
| `dashscope_api_key` | Create one in the [Bailian Console](https://bailian.console.aliyun.com/?tab=model#/api-key); see the [official docs](https://bailian.console.aliyun.com/?tab=api#/api) | | `dashscope_api_key` | Create one in the [Bailian Console](https://bailian.console.aliyun.com/?tab=model#/api-key); see the [official docs](https://bailian.console.aliyun.com/?tab=api#/api) |
## Image Understanding ## Image Understanding
Once `dashscope_api_key` is configured, the Agent's Vision tool automatically calls Qwen's vision models to recognize images. Models like `qwen3-max` / `qwen3.5-plus` / `qwen3.6-plus` are already multimodal; if the main model is text-only (e.g. `qwen-turbo`), it automatically falls back to `qwen-vl-max`. Once `dashscope_api_key` is configured, the Agent's Vision tool automatically calls Qwen's vision models to recognize images. Models like `qwen3.7-plus` / `qwen3.6-plus` / `qwen3.5-plus` / `qwen3-max` are already multimodal; if the main model is text-only (e.g. `qwen-turbo`), it automatically falls back to `qwen-vl-max`.
To manually specify a Vision model: To manually specify a Vision model:
@@ -33,13 +33,13 @@ To manually specify a Vision model:
{ {
"tools": { "tools": {
"vision": { "vision": {
"model": "qwen3.6-plus" "model": "qwen3.7-plus"
} }
} }
} }
``` ```
Supported models: `qwen3.6-plus`, `qwen3.5-plus`, `qwen3-max`. Supported models: `qwen3.7-plus`, `qwen3.6-plus`, `qwen3.5-plus`, `qwen3-max`.
## Image Generation ## Image Generation

View File

@@ -5,6 +5,8 @@ description: CowAgent version history
| Version | Date | Description | | Version | Date | Description |
| --- | --- | --- | | --- | --- | --- |
| [2.1.2](/releases/v2.1.2) | 2026.06.18 | Web Console upgrades (scheduled task management, knowledge base categories, multiple custom model providers), Self-Evolution improvements, new models (kimi-k2.7-code, glm-5.2), security hardening and refinements |
| [2.1.1](/releases/v2.1.1) | 2026.06.09 | Self-Evolution, Web Console message management and parallel sessions, cross-platform MCP enhancements with concurrent calls, new models (MiniMax-M3, qwen3.7-plus, etc.), various improvements |
| [2.1.0](/releases/v2.1.0) | 2026.06.01 | Internationalization, new Telegram / Discord / Slack / WeChat Customer Service channels, CLI interaction upgrades (streaming output, fuzzy command matching, task cancellation), MCP Streamable HTTP, new models | | [2.1.0](/releases/v2.1.0) | 2026.06.01 | Internationalization, new Telegram / Discord / Slack / WeChat Customer Service channels, CLI interaction upgrades (streaming output, fuzzy command matching, task cancellation), MCP Streamable HTTP, new models |
| [2.0.9](/releases/v2.0.9) | 2026.05.22 | Model management console, MCP protocol support, browser persistent login, new models (gpt-5.5, gemini-3.5-flash, qwen3.7-max, etc.), deployment hardening | | [2.0.9](/releases/v2.0.9) | 2026.05.22 | Model management console, MCP protocol support, browser persistent login, new models (gpt-5.5, gemini-3.5-flash, qwen3.7-max, etc.), deployment hardening |
| [2.0.8](/releases/v2.0.8) | 2026.05.06 | Major Feishu channel upgrade (voice, streaming and Markdown, one-click QR-scan setup), DeepSeek V4 and Baidu models, scheduler tool enhancements | | [2.0.8](/releases/v2.0.8) | 2026.05.06 | Major Feishu channel upgrade (voice, streaming and Markdown, one-click QR-scan setup), DeepSeek V4 and Baidu models, scheduler tool enhancements |

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@@ -34,7 +34,7 @@ Related commits: [30c6d9b](https://github.com/zhayujie/CowAgent/commit/30c6d9b)
## 💰 Coding Plan Support ## 💰 Coding Plan Support
Added integration with vendor Coding Plan (monthly programming subscription) tiers via the unified OpenAI-compatible path. Supported vendors include Aliyun, MiniMax, GLM, Kimi, and Volcengine. Added integration with provider Coding Plan (monthly programming subscription) tiers via the unified OpenAI-compatible path. Supported providers include Aliyun, MiniMax, GLM, Kimi, and Volcengine.
See [Coding Plan docs](https://docs.cowagent.ai/en/models/coding-plan) for detailed configuration. See [Coding Plan docs](https://docs.cowagent.ai/en/models/coding-plan) for detailed configuration.

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@@ -22,7 +22,7 @@ Docs: [Image Generation Skill](https://docs.cowagent.ai/en/skills/image-generati
- **Claude Opus 4.7**: Added `claude-opus-4-7` model support - **Claude Opus 4.7**: Added `claude-opus-4-7` model support
- **GLM 5.1**: Added `glm-5.1` model support - **GLM 5.1**: Added `glm-5.1` model support
- **Kimi Coding Plan**: Support for Kimi Coding Plan mode - **Kimi Coding Plan**: Support for Kimi Coding Plan mode
- **Custom model providers**: New custom model provider configuration for easier integration with additional vendors - **Custom model providers**: New custom model provider configuration for easier integration with additional providers
## 💬 Web Console Improvements ## 💬 Web Console Improvements

63
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@@ -0,0 +1,63 @@
---
title: v2.1.1
description: CowAgent 2.1.1 - Self-Evolution, Web Console message management and parallel sessions, cross-platform MCP enhancements, new models and improvements
---
🌐 [English](https://docs.cowagent.ai/releases/v2.1.1) | [中文](https://docs.cowagent.ai/zh/releases/v2.1.1)
## 🧬 Self-Evolution
CowAgent introduces **Self-Evolution**, letting the agent go beyond completing a single task and keep improving through everyday collaboration with you:
- **Automatic review after idle**: Once a conversation goes idle, the agent reviews it in the background to fix problems a skill exposed in use, create reusable new skills, follow up on unfinished tasks, and record important information into memory and the knowledge base
- **Silent by default, notify on demand**: It reports what it changed only when it actually made a change, and stays silent otherwise
- **Safe and reversible**: Every review is backed up beforehand and can be undone at any time. Built-in skills are protected, and all reads and writes stay within the workspace
Enabled by default for new installs. Existing users can turn it on with a single click in the Web Console under **Settings → Agent Config**.
<img src="https://cdn.jsdelivr.net/gh/zhayujie/cowagent-assets@main/screenshots/en/web-console-evolution-demo.png" alt="Self-Evolution conversation example" />
Documentation: [Self-Evolution](https://docs.cowagent.ai/memory/self-evolution)
## 💬 Web Console Upgrades
The Web Console chat experience gets several enhancements:
- **Message management**: Edit, delete, and regenerate both user and bot messages; code blocks now include language labels and a one-click copy button
- **Parallel sessions**: Run multiple sessions at the same time without interference, with live streaming automatically resumed when you switch back to a session
- **Refinements**: Drag and drop files anywhere in the chat view; automatically switch to a sibling session after deleting the active one
Thanks [@core-power](https://github.com/core-power) (#2865)
## 🧩 Cross-platform MCP Enhancements
- **Windows compatibility fix**: Fixed `stdio` communication failing on Windows, and made the server timeout configurable via `mcp.json`
- **Concurrent calls**: The `sse` and `streamable-http` transports now support concurrent calls across sessions for faster multi-tool responses
Thanks [@xliu123321](https://github.com/xliu123321) (#2859)
Documentation: [MCP Tools](https://docs.cowagent.ai/tools/mcp)
## 🤖 New Models & Improvements
- **MiniMax-M3**: Added and set as the default model, with the M2.7 series kept as an option. Thanks [@octo-patch](https://github.com/octo-patch) (#2855)
- **Qwen3.7-plus**: Added support for multi-modal conversations
- **Selectable ASR model**: The Web Console can now select and persist the ASR (speech recognition) model. Thanks [@nightwhite](https://github.com/nightwhite) (#2857)
- **Simplified install menu**: The one-line install script streamlines the model menu and adds the Xiaomi MiMo option
Documentation: [Models Overview](https://docs.cowagent.ai/models)
## 🛠 Improvements & Fixes
- **Python 3.13 support**: Fixed installation and dependency compatibility on Python 3.13
- **Internationalization**: The channel list is now ordered by the interface language; refined the automatic language fallback under `auto` mode
- **More reliable cancellation**: Fixed cases where a streaming reply could not be interrupted
- **CLI**: `cow status` now shows the current project path
- **Hardened deployment security**: The credential-file block is narrowed to `~/.cow/.env` so other directories are no longer affected (Thanks [@orbisai0security](https://github.com/orbisai0security) #2863); the WeChat Official Account now rejects webhook requests when `wechatmp_token` is empty
- **Group task board plugin**: Added the group task board plugin source. Thanks [@Wyh-max-star](https://github.com/Wyh-max-star) (#2853)
## 📦 Upgrade
Source-code deployments can run `cow update` for a one-click upgrade, or pull the latest code and restart manually. See the [Upgrade Guide](https://docs.cowagent.ai/guide/upgrade) for details.
**Release Date**: 2026.06.09 | [Full Changelog](https://github.com/zhayujie/CowAgent/compare/2.1.0...2.1.1)

67
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@@ -0,0 +1,67 @@
---
title: v2.1.2
description: CowAgent 2.1.2 - Web Console management upgrades, Self-Evolution improvements, new models, WeCom smart-bot callback mode, and security hardening
---
🌐 [English](https://docs.cowagent.ai/releases/v2.1.2) | [中文](https://docs.cowagent.ai/zh/releases/v2.1.2)
## 💬 Web Console Improvements
This release adds several visual management capabilities to the Web Console, so more configuration can be done in the UI without editing files:
- **Scheduled task management**: View, edit, enable/disable, and delete any scheduled task directly in the console. The task list is sorted by enabled status first, then by next run time. Thanks @HnBigVolibear (#2892)
- **Knowledge base categories and document management**: The knowledge base can now be organized by category, with documents under each category managed in the UI. Thanks @yangziyu-hhh (#2893)
- **Multiple custom model providers**: Configure multiple OpenAI-compatible providers and switch the active one with a single click, fully compatible with existing configuration. Thanks @kirs-hi (#2877)
- **Session renaming**: Rename sessions manually to tell parallel tasks apart (#2897)
- **Bash streaming output**: Long-running Bash commands now stream their progress in real time. Thanks @yangziyu-hhh (#2879)
## 🧬 Self-Evolution Improvements
Building on the Self-Evolution introduced in the previous release, this version refines it further:
- **Lower trigger thresholds**: The default review thresholds are lowered, so everyday collaboration turns into improvements sooner
- **No concurrent reviews**: When a single turn runs long, the idle review no longer fires by mistake, avoiding interference with the active conversation
- **Better review summary**: Refined the summary prompt to keep summaries concise, raise their information density, and output them in the conversation language
Documentation: [Self-Evolution](https://docs.cowagent.ai/memory/self-evolution)
## 🤖 New Models
- **kimi-k2.7-code**: Added and set as the default Kimi model, with `kimi-k2.7-code-highspeed` also available
- **glm-5.2**: Added and set as the default GLM model
Documentation: [Models Overview](https://docs.cowagent.ai/models)
## 🏢 WeCom Smart-Bot Callback Mode
The WeCom smart-bot channel adds an **HTTP callback mode** alongside the existing long connection, so deployments that cannot keep a long connection open can still connect reliably:
- **Mode switching**: Switch between `websocket` (long connection) and `webhook` (callback) via `wecom_bot_mode`
- **Encrypted transport**: Callback mode fully supports URL verification, message decryption, and passive-reply encryption
- **Stability fixes**: Fixed reply interruption, premature stream termination, and temporary image file leaks
Thanks @6vision (#2896 #2869)
Documentation: [WeCom Smart Bot](https://docs.cowagent.ai/channels/wecom-bot)
## 🔒 Security Hardening
- **Vision tool SSRF protection**: Validates the target address before resolving an image URL, blocking requests to internal, loopback, and cloud server metadata endpoints. Thanks @kirs-hi (#2886)
- **Web fetch SSRF protection**: `web_fetch` validates the target address before fetching and re-validates every redirect hop, preventing redirects from bypassing the check to reach internal addresses. Thanks @christop (#2900)
- **Skill install path traversal protection**: Validates the path when installing a skill, preventing a malicious skill name from escaping the `skills/` directory through path traversal and writing to an unauthorized location. Thanks @kirs-hi (#2886)
## 🛠 Improvements & Fixes
- **CLI self-restart**: Added the self-restart command so the agent can restart its own process
- **Windows compatibility**: Persist the cow CLI directory to the user PATH; fixed `python -c` long commands exceeding the `cmd.exe` length limit; avoid building greenlet from source during install
- **Custom roles**: The role plugin supports customization via standalone prompt files under `roles/*.json`. Thanks @sufan721 (#2891)
- **Stability fixes**: Fixed a KeyError on `/cancel` and an infinite loop in image compression (Thanks @kirs-hi #2888)
- **Install improvements**: Updated the startup script and default config; fixed ASR/TTS defaults, the self-evolution flag, and install hangs
- **Vision tool stability**: Increased the vision tool timeout and max_tokens
- **Memory distillation**: Removed the output length cap in deep-dream distillation to avoid truncating a large `MEMORY.md`
## 📦 Upgrade
Source-code deployments can run `cow update` for a one-click upgrade, or pull the latest code and restart manually. See the [Upgrade Guide](https://docs.cowagent.ai/guide/upgrade) for details.
**Release Date**: 2026.06.18 | [Full Changelog](https://github.com/zhayujie/CowAgent/compare/2.1.1...2.1.2)

View File

@@ -19,7 +19,7 @@ If the current provider fails, the tool automatically tries the next one until i
| Provider | Vision Model | Notes | | Provider | Vision Model | Notes |
| --- | --- | --- | | --- | --- | --- |
| OpenAI / Compatible | Main model | All OpenAI-protocol-compatible multimodal models | | OpenAI / Compatible | Main model | All OpenAI-protocol-compatible multimodal models |
| Qwen (DashScope) | Main model | e.g. qwen3.6-plus, etc. | | Qwen (DashScope) | Main model | e.g. qwen3.7-plus, etc. |
| Claude | Main model | Anthropic native image format | | Claude | Main model | Anthropic native image format |
| Gemini | Main model | inlineData format | | Gemini | Main model | inlineData format |
| Doubao | Main model | doubao-seed-2-0 series natively supported | | Doubao | Main model | doubao-seed-2-0 series natively supported |

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@@ -1,13 +1,21 @@
<p align="center"><img src= "https://github.com/user-attachments/assets/eca9a9ec-8534-4615-9e0f-96c5ac1d10a3" alt="CowAgent" width="420" /></p> <p align="center"><img src= "https://github.com/user-attachments/assets/eca9a9ec-8534-4615-9e0f-96c5ac1d10a3" alt="CowAgent" width="420" /></p>
<p align="center"> <p align="center">
<a href="https://github.com/zhayujie/CowAgent/releases/latest"><img src="https://img.shields.io/github/v/release/zhayujie/CowAgent" alt="Latest release"></a> <a href="https://github.com/zhayujie/CowAgent/releases/latest"><img src="https://img.shields.io/github/v/release/zhayujie/CowAgent?cacheSeconds=3600" alt="Latest release"></a>
<a href="https://github.com/zhayujie/CowAgent/blob/master/LICENSE"><img src="https://img.shields.io/github/license/zhayujie/CowAgent" alt="License: MIT"></a> <a href="https://github.com/zhayujie/CowAgent/blob/master/LICENSE"><img src="https://img.shields.io/badge/license-MIT-green.svg" alt="License: MIT"></a>
<a href="https://github.com/zhayujie/CowAgent"><img src="https://img.shields.io/github/stars/zhayujie/CowAgent?style=flat-square" alt="Stars"></a> <br/> <a href="https://github.com/zhayujie/CowAgent"><img src="https://img.shields.io/github/stars/zhayujie/CowAgent?style=flat-square&cacheSeconds=3600" alt="Stars"></a>
<a href="https://docs.cowagent.ai/zh"><img src="https://img.shields.io/badge/%E6%96%87%E6%A1%A3-cowagent.ai-blue?style=flat&logo=readthedocs&logoColor=white" alt="文档"></a>
</p>
<p align="center">
<a href="https://trendshift.io/repositories/25763" target="_blank"><img src="https://trendshift.io/api/badge/repositories/25763" alt="zhayujie%2FCowAgent | Trendshift" style="width: 250px; height: 55px;" width="250" height="55"/></a>
</p>
<p align="center">
[<a href="../../README.md">English</a>] | [中文] | [<a href="../ja/README.md">日本語</a>] [<a href="../../README.md">English</a>] | [中文] | [<a href="../ja/README.md">日本語</a>]
</p> </p>
**CowAgent** 是一个开源的超级 AI 助理,能够主动思考和规划任务、操作计算机和外部资源、创造和执行 Skills、构建知识库与长期记忆与你一同成长,是 Agent Harness 工程的最佳实践之一。 **CowAgent** 是一个开源的超级 AI 助理,能够主动思考和规划任务、操作计算机和外部资源、创造和执行 Skills、构建知识库与长期记忆、通过自主进化与你一同成长,是 Agent Harness 工程的最佳实践之一。
CowAgent 轻量、易部署、可扩展自由接入主流大模型覆盖微信、飞书、钉钉、企微、QQ、Telegram、Slack、网页等多渠道7×24 运行于个人电脑或服务器中。 CowAgent 轻量、易部署、可扩展自由接入主流大模型覆盖微信、飞书、钉钉、企微、QQ、Telegram、Slack、网页等多渠道7×24 运行于个人电脑或服务器中。
@@ -28,6 +36,7 @@ CowAgent 轻量、易部署、可扩展,自由接入主流大模型,覆盖
| [任务规划](https://docs.cowagent.ai/zh/intro/architecture) | 理解复杂任务并自主分解执行,循环调用工具直到完成目标 | | [任务规划](https://docs.cowagent.ai/zh/intro/architecture) | 理解复杂任务并自主分解执行,循环调用工具直到完成目标 |
| [长期记忆](https://docs.cowagent.ai/zh/memory) | 三层记忆架构(上下文 → 天级 → 核心),梦境蒸馏自动整理,支持关键词与向量混合检索 | | [长期记忆](https://docs.cowagent.ai/zh/memory) | 三层记忆架构(上下文 → 天级 → 核心),梦境蒸馏自动整理,支持关键词与向量混合检索 |
| [知识库](https://docs.cowagent.ai/zh/knowledge) | 自动整理结构化知识为 Markdown Wiki构建持续增长的知识图谱可视化浏览 | | [知识库](https://docs.cowagent.ai/zh/knowledge) | 自动整理结构化知识为 Markdown Wiki构建持续增长的知识图谱可视化浏览 |
| [自主进化](https://docs.cowagent.ai/zh/memory/self-evolution) | 自动复盘对话,优化技能、处理未完成事项、沉淀记忆与知识,在使用中持续成长 |
| [技能](https://docs.cowagent.ai/zh/skills) | 从 [Skill Hub](https://skills.cowagent.ai/)、GitHub、ClawHub 等一键安装;也可通过对话创造自定义技能 | | [技能](https://docs.cowagent.ai/zh/skills) | 从 [Skill Hub](https://skills.cowagent.ai/)、GitHub、ClawHub 等一键安装;也可通过对话创造自定义技能 |
| [工具](https://docs.cowagent.ai/zh/tools) | 内置文件读写、终端、浏览器、定时任务、记忆检索、联网搜索等 10+ 工具,支持 MCP 协议 | | [工具](https://docs.cowagent.ai/zh/tools) | 内置文件读写、终端、浏览器、定时任务、记忆检索、联网搜索等 10+ 工具,支持 MCP 协议 |
| [通道](https://docs.cowagent.ai/zh/channels) | 一个 Agent 同时接入 Web、微信、飞书、钉钉、企微、QQ、公众号、Telegram、Slack 等多个渠道 | | [通道](https://docs.cowagent.ai/zh/channels) | 一个 Agent 同时接入 Web、微信、飞书、钉钉、企微、QQ、公众号、Telegram、Slack 等多个渠道 |
@@ -95,14 +104,14 @@ CowAgent 支持国内外主流厂商的大语言模型。**文本对话、图像
| 厂商 | 代表模型 | 文本 | 图像理解 | 图像生成 | 语音识别 | 语音合成 | 向量 | | 厂商 | 代表模型 | 文本 | 图像理解 | 图像生成 | 语音识别 | 语音合成 | 向量 |
| --- | --- | :-: | :-: | :-: | :-: | :-: | :-: | | --- | --- | :-: | :-: | :-: | :-: | :-: | :-: |
| [DeepSeek](https://docs.cowagent.ai/zh/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | | | [DeepSeek](https://docs.cowagent.ai/zh/models/deepseek) | deepseek-v4-flash / pro | ✅ | | | | | |
| [MiniMax](https://docs.cowagent.ai/zh/models/minimax) | MiniMax-M2.7 | ✅ | ✅ | ✅ | | ✅ | | | [MiniMax](https://docs.cowagent.ai/zh/models/minimax) | MiniMax-M3 | ✅ | ✅ | ✅ | | ✅ | |
| [Claude](https://docs.cowagent.ai/zh/models/claude) | claude-opus-4-8 | ✅ | ✅ | | | | | | [Claude](https://docs.cowagent.ai/zh/models/claude) | claude-fable-5 | ✅ | ✅ | | | | |
| [Gemini](https://docs.cowagent.ai/zh/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | | | [Gemini](https://docs.cowagent.ai/zh/models/gemini) | gemini-3.5-flash | ✅ | ✅ | ✅ | | | |
| [OpenAI](https://docs.cowagent.ai/zh/models/openai) | gpt-5.5、o 系列 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [OpenAI](https://docs.cowagent.ai/zh/models/openai) | gpt-5.5、o 系列 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [智谱 GLM](https://docs.cowagent.ai/zh/models/glm) | glm-5.1、glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ | | [智谱 GLM](https://docs.cowagent.ai/zh/models/glm) | glm-5.2、glm-5v-turbo | ✅ | ✅ | | ✅ | | ✅ |
| [通义千问](https://docs.cowagent.ai/zh/models/qwen) | qwen3.7-max | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [通义千问](https://docs.cowagent.ai/zh/models/qwen) | qwen3.7-plus | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| [豆包 Doubao](https://docs.cowagent.ai/zh/models/doubao) | doubao-seed-2.0 系列 | ✅ | ✅ | ✅ | | | ✅ | | [豆包 Doubao](https://docs.cowagent.ai/zh/models/doubao) | doubao-seed-2.0 系列 | ✅ | ✅ | ✅ | | | ✅ |
| [Kimi](https://docs.cowagent.ai/zh/models/kimi) | kimi-k2.6 | ✅ | ✅ | | | | | | [Kimi](https://docs.cowagent.ai/zh/models/kimi) | kimi-k2.7-code | ✅ | ✅ | | | | |
| [百度ERNIE](https://docs.cowagent.ai/zh/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | | | [百度ERNIE](https://docs.cowagent.ai/zh/models/qianfan) | ernie-5.1 | ✅ | ✅ | | | | |
| [小米 MiMo](https://docs.cowagent.ai/zh/models/mimo) | mimo-v2.5-pro / v2.5 | ✅ | ✅ | | | ✅ | | | [小米 MiMo](https://docs.cowagent.ai/zh/models/mimo) | mimo-v2.5-pro / v2.5 | ✅ | ✅ | | | ✅ | |
| [LinkAI](https://docs.cowagent.ai/zh/models/linkai) | 一个 Key 接入 100+ 模型 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | | [LinkAI](https://docs.cowagent.ai/zh/models/linkai) | 一个 Key 接入 100+ 模型 | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
@@ -191,6 +200,10 @@ CowAgent 支持国内外主流厂商的大语言模型。**文本对话、图像
## 🏷 更新日志 ## 🏷 更新日志
> **2026.06.18** [v2.1.2](https://github.com/zhayujie/CowAgent/releases/tag/2.1.2) — Web 控制台升级定时任务管理、知识库分类、多模型自定义厂商、自主进化优化、新模型接入kimi-k2.7-code、glm-5.2)、安全加固和体验优化
> **2026.06.09** [v2.1.1](https://github.com/zhayujie/CowAgent/releases/tag/2.1.1) — 自进化能力、Web 控制台升级消息管理、多会话并行、新模型接入MiniMax-M3、qwen3.7-plus、Python 3.13 支持
> **2026.06.01** [v2.1.0](https://github.com/zhayujie/CowAgent/releases/tag/2.1.0) — 国际化支持、新增通道Telegram、Discord、Slack、微信客服、命令行交互升级、一键安装脚本优化、MCP Streamable HTTP 支持、新模型接入claude-opus-4-8、MiMo > **2026.06.01** [v2.1.0](https://github.com/zhayujie/CowAgent/releases/tag/2.1.0) — 国际化支持、新增通道Telegram、Discord、Slack、微信客服、命令行交互升级、一键安装脚本优化、MCP Streamable HTTP 支持、新模型接入claude-opus-4-8、MiMo
> **2026.05.22** [v2.0.9](https://github.com/zhayujie/CowAgent/releases/tag/2.0.9) — 模型管理、MCP 协议支持、浏览器登录态持久化、新模型接入gpt-5.5、gemini-3.5-flash、qwen3.7-max、部署安全加固 > **2026.05.22** [v2.0.9](https://github.com/zhayujie/CowAgent/releases/tag/2.0.9) — 模型管理、MCP 协议支持、浏览器登录态持久化、新模型接入gpt-5.5、gemini-3.5-flash、qwen3.7-max、部署安全加固
@@ -250,9 +263,9 @@ CowAgent 支持国内外主流厂商的大语言模型。**文本对话、图像
## 🛠️ 开发与贡献 ## 🛠️ 开发与贡献
欢迎接入更多应用通道,参考 [飞书通道实现](https://github.com/zhayujie/CowAgent/blob/master/channel/feishu/feishu_channel.py) 新增自定义通道;同时欢迎贡献新技能,向 [Skill Hub](https://skills.cowagent.ai/submit) 提交 欢迎各种形式的贡献新功能、Bug 修复、性能优化、文档完善,或向 [Skill Hub](https://skills.cowagent.ai/submit) 分享你的技能。请先阅读 [CONTRIBUTING.md](/CONTRIBUTING.md) 了解如何开始,然后提交 Issue 讨论或直接发起 PR
通过 ⭐ Star 关注项目更新,欢迎提交 PR、Issue 进行反馈。 欢迎 ⭐ Star 支持项目,并通过 Watch → Custom → Releases 订阅新版本通知。也欢迎提交 PR、Issue 进行反馈。
## 🌟 贡献者 ## 🌟 贡献者

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@@ -33,7 +33,7 @@ description: 查看状态、管理配置和上下文等常用命令
Process: PID 12345 | Running 2h 15m Process: PID 12345 | Running 2h 15m
Version: 2.0.4 Version: 2.0.4
Channel: web Channel: web
Model: MiniMax-M2.5 Model: MiniMax-M3
Mode: agent Mode: agent
Session: 12 messages | 8 skills loaded Session: 12 messages | 8 skills loaded

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@@ -75,7 +75,7 @@ cow status
Status: ● Running (PID: 12345) Status: ● Running (PID: 12345)
Version: 2.0.4 Version: 2.0.4
Channel: web Channel: web
Model: MiniMax-M2.5 Model: MiniMax-M3
Mode: agent Mode: agent
``` ```

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@@ -5,7 +5,7 @@ description: 使用脚本一键安装和管理 CowAgent
项目提供了一键安装、配置、启动、管理程序的脚本,推荐使用脚本快速运行。 项目提供了一键安装、配置、启动、管理程序的脚本,推荐使用脚本快速运行。
支持 Linux、macOS、Windows 操作系统,需安装 Python 3.7 ~ 3.12(推荐 3.9)。 支持 Linux、macOS、Windows 操作系统,需安装 Python 3.7 ~ 3.13(推荐 3.9)。
## 安装命令 ## 安装命令

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