Trending-skills copaw-ai-assistant
Personal AI assistant framework supporting multiple chat channels (DingTalk, Feishu, QQ, Discord, etc.) with extensible skills, local/cloud deployment, and cron scheduling.
git clone https://github.com/Aradotso/trending-skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/Aradotso/trending-skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/copaw-ai-assistant" ~/.claude/skills/aradotso-trending-skills-copaw-ai-assistant && rm -rf "$T"
skills/copaw-ai-assistant/SKILL.mdCoPaw AI Assistant Skill
Skill by ara.so — Daily 2026 Skills collection.
CoPaw is a personal AI assistant framework you deploy on your own machine or in the cloud. It connects to multiple chat platforms (DingTalk, Feishu, QQ, Discord, iMessage, Telegram, Mattermost, Matrix, MQTT) through a single agent, supports custom Python skills, scheduled cron jobs, local and cloud LLMs, and provides a web Console at
http://127.0.0.1:8088/.
Installation
pip (recommended if Python 3.10–3.13 is available)
pip install copaw copaw init --defaults # non-interactive setup with sensible defaults copaw app # starts the web Console + backend
Script install (no Python setup required)
macOS / Linux:
curl -fsSL https://copaw.agentscope.io/install.sh | bash # With Ollama support: curl -fsSL https://copaw.agentscope.io/install.sh | bash -s -- --extras ollama # Multiple extras: curl -fsSL https://copaw.agentscope.io/install.sh | bash -s -- --extras ollama,llamacpp
Windows CMD:
curl -fsSL https://copaw.agentscope.io/install.bat -o install.bat && install.bat
Windows PowerShell:
irm https://copaw.agentscope.io/install.ps1 | iex
After script install, open a new terminal:
copaw init --defaults copaw app
Install from source
git clone https://github.com/agentscope-ai/CoPaw.git cd CoPaw pip install -e ".[dev]" copaw init --defaults copaw app
CLI Reference
copaw init # interactive workspace setup copaw init --defaults # non-interactive setup copaw app # start the Console (http://127.0.0.1:8088/) copaw app --port 8090 # use a custom port copaw --help # list all commands
Workspace Structure
After
copaw init, a workspace is created (default: ~/.copaw/workspace/):
~/.copaw/workspace/ ├── config.yaml # agent, provider, channel configuration ├── skills/ # custom skill files (auto-loaded) │ └── my_skill.py ├── memory/ # conversation memory storage └── logs/ # runtime logs
Configuration (config.yaml
)
config.yamlcopaw init generates this file. Edit it directly or use the Console UI.
LLM Provider (OpenAI-compatible)
providers: - id: openai-main type: openai api_key: ${OPENAI_API_KEY} # use env var reference model: gpt-4o base_url: https://api.openai.com/v1 - id: local-ollama type: ollama model: llama3.2 base_url: http://localhost:11434
Agent Settings
agent: name: CoPaw language: en # en, zh, ja, etc. provider_id: openai-main context_limit: 8000
Channel: DingTalk
channels: - type: dingtalk app_key: ${DINGTALK_APP_KEY} app_secret: ${DINGTALK_APP_SECRET} agent_id: ${DINGTALK_AGENT_ID} mention_only: true # only respond when @mentioned in groups
Channel: Feishu (Lark)
channels: - type: feishu app_id: ${FEISHU_APP_ID} app_secret: ${FEISHU_APP_SECRET} mention_only: false
Channel: Discord
channels: - type: discord token: ${DISCORD_BOT_TOKEN} mention_only: true
Channel: Telegram
channels: - type: telegram token: ${TELEGRAM_BOT_TOKEN}
Channel: QQ
channels: - type: qq uin: ${QQ_UIN} password: ${QQ_PASSWORD}
Channel: Mattermost
channels: - type: mattermost url: ${MATTERMOST_URL} token: ${MATTERMOST_TOKEN} team: my-team
Channel: Matrix
channels: - type: matrix homeserver: ${MATRIX_HOMESERVER} user_id: ${MATRIX_USER_ID} access_token: ${MATRIX_ACCESS_TOKEN}
Custom Skills
Skills are Python files placed in
~/.copaw/workspace/skills/. They are auto-loaded when CoPaw starts — no registration step needed.
Minimal skill structure
# ~/.copaw/workspace/skills/weather.py SKILL_NAME = "get_weather" SKILL_DESCRIPTION = "Get current weather for a city" # Tool schema (OpenAI function-calling format) SKILL_SCHEMA = { "type": "function", "function": { "name": SKILL_NAME, "description": SKILL_DESCRIPTION, "parameters": { "type": "object", "properties": { "city": { "type": "string", "description": "City name, e.g. 'Tokyo'" } }, "required": ["city"] } } } def get_weather(city: str) -> str: """Fetch weather data for the given city.""" import os import requests api_key = os.environ["OPENWEATHER_API_KEY"] url = f"https://api.openweathermap.org/data/2.5/weather" resp = requests.get(url, params={"q": city, "appid": api_key, "units": "metric"}) resp.raise_for_status() data = resp.json() temp = data["main"]["temp"] desc = data["weather"][0]["description"] return f"{city}: {temp}°C, {desc}"
Skill with async support
# ~/.copaw/workspace/skills/summarize_url.py SKILL_NAME = "summarize_url" SKILL_DESCRIPTION = "Fetch and summarize the content of a URL" SKILL_SCHEMA = { "type": "function", "function": { "name": SKILL_NAME, "description": SKILL_DESCRIPTION, "parameters": { "type": "object", "properties": { "url": {"type": "string", "description": "The URL to summarize"} }, "required": ["url"] } } } async def summarize_url(url: str) -> str: import httpx async with httpx.AsyncClient(timeout=15) as client: resp = await client.get(url) text = resp.text[:4000] # truncate for context limit return f"Content preview from {url}:\n{text}"
Skill returning structured data
# ~/.copaw/workspace/skills/list_files.py import os import json SKILL_NAME = "list_files" SKILL_DESCRIPTION = "List files in a directory" SKILL_SCHEMA = { "type": "function", "function": { "name": SKILL_NAME, "description": SKILL_DESCRIPTION, "parameters": { "type": "object", "properties": { "path": { "type": "string", "description": "Absolute or relative directory path" }, "extension": { "type": "string", "description": "Filter by extension, e.g. '.py'. Optional." } }, "required": ["path"] } } } def list_files(path: str, extension: str = "") -> str: entries = os.listdir(os.path.expanduser(path)) if extension: entries = [e for e in entries if e.endswith(extension)] return json.dumps(sorted(entries))
Cron / Scheduled Tasks
Define cron jobs in
config.yaml to run skills on a schedule and push results to a channel:
cron: - id: daily-digest schedule: "0 8 * * *" # every day at 08:00 skill: get_weather skill_args: city: "Tokyo" channel_id: dingtalk-main # matches a channel id below message_template: "Good morning! Today's weather: {result}" - id: hourly-news schedule: "0 * * * *" skill: fetch_tech_news channel_id: discord-main
Local Model Setup
Ollama
# Install Ollama: https://ollama.ai ollama pull llama3.2 ollama serve # starts on http://localhost:11434
# config.yaml providers: - id: ollama-local type: ollama model: llama3.2 base_url: http://localhost:11434
LM Studio
providers: - id: lmstudio-local type: lmstudio model: lmstudio-community/Meta-Llama-3-8B-Instruct-GGUF base_url: http://localhost:1234/v1
llama.cpp (extra required)
pip install "copaw[llamacpp]"
providers: - id: llamacpp-local type: llamacpp model_path: /path/to/model.gguf
Tool Guard (Security)
Tool Guard blocks risky tool calls and requires user approval before execution. Configure in
config.yaml:
agent: tool_guard: enabled: true risk_patterns: - "rm -rf" - "DROP TABLE" - "os.system" auto_approve_low_risk: true
When a call is blocked, the Console shows an approval prompt. The user can approve or deny before the tool runs.
Token Usage Tracking
Token usage is tracked automatically and visible in the Console dashboard. Access programmatically:
# In a skill or debug script from copaw.telemetry import get_usage_summary summary = get_usage_summary() print(summary) # {'total_tokens': 142300, 'prompt_tokens': 98200, 'completion_tokens': 44100, 'by_provider': {...}}
Environment Variables
Set these before running
copaw app, or reference them in config.yaml as ${VAR_NAME}:
# LLM providers export OPENAI_API_KEY=... export ANTHROPIC_API_KEY=... # Channels export DINGTALK_APP_KEY=... export DINGTALK_APP_SECRET=... export DINGTALK_AGENT_ID=... export FEISHU_APP_ID=... export FEISHU_APP_SECRET=... export DISCORD_BOT_TOKEN=... export TELEGRAM_BOT_TOKEN=... export QQ_UIN=... export QQ_PASSWORD=... export MATTERMOST_URL=... export MATTERMOST_TOKEN=... export MATRIX_HOMESERVER=... export MATRIX_USER_ID=... export MATRIX_ACCESS_TOKEN=... # Custom skill secrets export OPENWEATHER_API_KEY=...
Common Patterns
Pattern: Morning briefing to DingTalk
# config.yaml excerpt channels: - id: dingtalk-main type: dingtalk app_key: ${DINGTALK_APP_KEY} app_secret: ${DINGTALK_APP_SECRET} agent_id: ${DINGTALK_AGENT_ID} cron: - id: morning-brief schedule: "30 7 * * 1-5" # weekdays 07:30 skill: daily_briefing channel_id: dingtalk-main
# skills/daily_briefing.py SKILL_NAME = "daily_briefing" SKILL_DESCRIPTION = "Compile a morning briefing with weather and news" SKILL_SCHEMA = { "type": "function", "function": { "name": SKILL_NAME, "description": SKILL_DESCRIPTION, "parameters": {"type": "object", "properties": {}, "required": []} } } def daily_briefing() -> str: import os, requests, datetime today = datetime.date.today().strftime("%A, %B %d") # Add your own data sources here return f"Good morning! Today is {today}. Have a productive day!"
Pattern: Multi-channel broadcast
# skills/broadcast.py SKILL_NAME = "broadcast_message" SKILL_DESCRIPTION = "Send a message to all configured channels" SKILL_SCHEMA = { "type": "function", "function": { "name": SKILL_NAME, "description": SKILL_DESCRIPTION, "parameters": { "type": "object", "properties": { "message": {"type": "string", "description": "Message to broadcast"} }, "required": ["message"] } } } def broadcast_message(message: str) -> str: # CoPaw handles routing; return the message and let the agent deliver it return f"[BROADCAST] {message}"
Pattern: File summarization skill
# skills/summarize_file.py SKILL_NAME = "summarize_file" SKILL_DESCRIPTION = "Read and summarize a local file" SKILL_SCHEMA = { "type": "function", "function": { "name": SKILL_NAME, "description": SKILL_DESCRIPTION, "parameters": { "type": "object", "properties": { "file_path": {"type": "string", "description": "Absolute path to the file"} }, "required": ["file_path"] } } } def summarize_file(file_path: str) -> str: import os path = os.path.expanduser(file_path) if not os.path.exists(path): return f"File not found: {path}" with open(path, "r", encoding="utf-8", errors="ignore") as f: content = f.read(8000) return f"File: {path}\nSize: {os.path.getsize(path)} bytes\nContent preview:\n{content}"
Troubleshooting
Console not accessible at port 8088
# Use a different port copaw app --port 8090 # Check if another process is using 8088 lsof -i :8088 # macOS/Linux netstat -ano | findstr :8088 # Windows
Skills not loading
- Confirm the skill file is in
~/.copaw/workspace/skills/ - Confirm
,SKILL_NAME
,SKILL_DESCRIPTION
, and the handler function are all defined at module levelSKILL_SCHEMA - Check
for import errors~/.copaw/workspace/logs/ - Restart
after adding new skill filescopaw app
Channel not receiving messages
- Verify credentials are set correctly (env vars or
)config.yaml - Check the Console → Channels page for connection status
- For DingTalk/Feishu/Discord with
, the bot must be @mentionedmention_only: true - Discord messages over 2000 characters are split automatically — ensure the bot has
permissionSend Messages
LLM provider connection fails
# Test provider from CLI (Console → Providers → Test Connection) # Or check logs: tail -f ~/.copaw/workspace/logs/copaw.log
- For Ollama: confirm
is running andollama serve
matchesbase_url - For OpenAI-compatible APIs: verify
ends withbase_url/v1 - LLM calls auto-retry with exponential backoff — transient failures resolve automatically
Windows encoding issues
# Set UTF-8 encoding for CMD chcp 65001
Or set in environment:
export PYTHONIOENCODING=utf-8
Workspace reset
# Reinitialize workspace (preserves skills/) copaw init # Full reset (destructive) rm -rf ~/.copaw/workspace copaw init --defaults
ModelScope Cloud Deployment
For one-click cloud deployment without local setup:
- Visit ModelScope CoPaw Studio
- Fork the studio to your account
- Set environment variables in the studio settings
- Start the studio — Console is accessible via the studio URL
Key Links
- Documentation: https://copaw.agentscope.io/
- Channel setup guides: https://copaw.agentscope.io/docs/channels
- Release notes: https://agentscope-ai.github.io/CoPaw/release-notes
- GitHub: https://github.com/agentscope-ai/CoPaw
- PyPI: https://pypi.org/project/copaw/
- Discord community: https://discord.gg/eYMpfnkG8h