724-office-ai-agent
Self-evolving AI agent system with 26 tools, three-layer memory, MCP plugins, and 24/7 self-repair in pure Python.
How do I install this agent skill?
npx skills add https://github.com/aradotso/trending-skills --skill 724-office-ai-agentIs this agent skill safe to install?
- Gen Agent Trust Hubfail
The skill allows for arbitrary code execution and runtime creation of new executable tools, which can be easily abused to compromise the host system. It also relies on downloading code from an unverified external GitHub repository.
- Socketwarn
1 alert: gptSecurity
- Snykfail
Risk: CRITICAL · 2 issues
- ZeroLeakspass
Score: 93/100 · 2 sections analyzed
What does this agent skill do?
7/24 Office AI Agent System
Skill by ara.so — Daily 2026 Skills collection.
A 24/7 production AI agent in ~3,500 lines of pure Python with no framework dependencies. Features 26 built-in tools, three-layer memory (session + compressed + vector), MCP/plugin support, runtime tool creation, self-repair diagnostics, and cron scheduling.
Installation
git clone https://github.com/wangziqi06/724-office.git
cd 724-office
# Only 3 runtime dependencies
pip install croniter lancedb websocket-client
# Optional: WeChat silk audio decoding
pip install pilk
# Set up directories
mkdir -p workspace/memory workspace/files
# Configure
cp config.example.json config.json
Configuration (config.json)
{
"models": {
"default": {
"api_base": "https://api.openai.com/v1",
"api_key": "${OPENAI_API_KEY}",
"model": "gpt-4o",
"max_tokens": 4096
},
"embedding": {
"api_base": "https://api.openai.com/v1",
"api_key": "${OPENAI_API_KEY}",
"model": "text-embedding-3-small"
}
},
"messaging": {
"platform": "wxwork",
"corp_id": "${WXWORK_CORP_ID}",
"corp_secret": "${WXWORK_CORP_SECRET}",
"agent_id": "${WXWORK_AGENT_ID}",
"token": "${WXWORK_TOKEN}",
"encoding_aes_key": "${WXWORK_AES_KEY}"
},
"memory": {
"session_max_messages": 40,
"compression_overlap": 5,
"dedup_threshold": 0.92,
"retrieval_top_k": 5,
"lancedb_path": "workspace/memory"
},
"asr": {
"api_base": "https://api.openai.com/v1",
"api_key": "${OPENAI_API_KEY}",
"model": "whisper-1"
},
"scheduler": {
"jobs_file": "workspace/jobs.json",
"timezone": "Asia/Shanghai"
},
"server": {
"host": "0.0.0.0",
"port": 8080
},
"workspace": "workspace",
"mcp_servers": {}
}
Set environment variables rather than hardcoding secrets:
export OPENAI_API_KEY="sk-..."
export WXWORK_CORP_ID="..."
export WXWORK_CORP_SECRET="..."
Running the Agent
# Start the HTTP server (listens on :8080 by default)
python3 xiaowang.py
# Point your messaging platform webhook to:
# http://YOUR_SERVER_IP:8080/
File Structure
724-office/
├── xiaowang.py # Entry point: HTTP server, debounce, ASR, media download
├── llm.py # Tool-use loop, session management, memory injection
├── tools.py # 26 built-in tools + @tool decorator + plugin loader
├── memory.py # Three-layer memory pipeline
├── scheduler.py # Cron + one-shot scheduling, jobs.json persistence
├── mcp_client.py # JSON-RPC MCP client (stdio + HTTP)
├── router.py # Multi-tenant Docker routing
├── config.py # Config loading and env interpolation
└── workspace/
├── memory/ # LanceDB vector store
├── files/ # Agent file storage
├── SOUL.md # Agent personality
├── AGENT.md # Operational procedures
└── USER.md # User preferences/context
Adding a Built-in Tool
Tools are registered with the @tool decorator in tools.py:
from tools import tool
@tool(
name="fetch_weather",
description="Get current weather for a city.",
parameters={
"type": "object",
"properties": {
"city": {
"type": "string",
"description": "City name, e.g. 'Beijing'"
},
"units": {
"type": "string",
"enum": ["metric", "imperial"],
"default": "metric"
}
},
"required": ["city"]
}
)
def fetch_weather(city: str, units: str = "metric") -> str:
import urllib.request, json
api_key = os.environ["OPENWEATHER_API_KEY"]
url = f"https://api.openweathermap.org/data/2.5/weather?q={city}&units={units}&appid={api_key}"
with urllib.request.urlopen(url) as r:
data = json.loads(r.read())
temp = data["main"]["temp"]
desc = data["weather"][0]["description"]
return f"{city}: {temp}°, {desc}"
The tool is automatically available to the LLM in the next tool-use loop iteration.
Runtime Tool Creation (Agent Creates Its Own Tools)
The agent can call create_tool during a conversation to write and load a new Python tool without restarting:
User: "Create a tool that converts Markdown to HTML."
Agent calls: create_tool({
"name": "md_to_html",
"description": "Convert a Markdown string to HTML.",
"parameters": { ... },
"code": "import markdown\ndef md_to_html(text): return markdown.markdown(text)"
})
The tool is saved to workspace/custom_tools/md_to_html.py and hot-loaded immediately.
Connecting an MCP Server
Edit config.json to add MCP servers (stdio or HTTP):
{
"mcp_servers": {
"filesystem": {
"transport": "stdio",
"command": "npx",
"args": ["-y", "@modelcontextprotocol/server-filesystem", "/data"]
},
"myapi": {
"transport": "http",
"url": "http://localhost:3000/mcp"
}
}
}
MCP tools are namespaced as servername__toolname (double underscore). Reload without restart:
User: "reload MCP servers"
# Agent calls: reload_mcp()
Scheduling Tasks
The agent uses schedule tool internally, but you can also call the scheduler API directly:
from scheduler import Scheduler
import json
sched = Scheduler(jobs_file="workspace/jobs.json", timezone="Asia/Shanghai")
# One-shot task (ISO 8601)
sched.add_job(
job_id="morning_brief",
trigger="2026-04-01T09:00:00",
action={"type": "message", "content": "Good morning! Here's your daily brief."},
user_id="user_001"
)
# Recurring cron task
sched.add_job(
job_id="weekly_report",
trigger="0 9 * * MON", # Every Monday 09:00
action={"type": "llm_task", "prompt": "Generate weekly summary"},
user_id="user_001"
)
sched.start()
Jobs persist in workspace/jobs.json across restarts.
Three-Layer Memory System
from memory import MemoryManager
mem = MemoryManager(config["memory"])
# Layer 1 — session history (auto-managed, last 40 msgs)
mem.append_session(user_id="u1", session_id="s1", role="user", content="Hello!")
# Layer 2 — long-term compressed (triggered on session overflow)
# LLM extracts structured facts; deduped at cosine similarity 0.92
mem.compress_and_store(user_id="u1", messages=evicted_messages)
# Layer 3 — vector retrieval (injected into system prompt automatically)
results = mem.retrieve(user_id="u1", query="user's dietary preferences", top_k=5)
for r in results:
print(r["content"], r["score"])
The LLM pipeline in llm.py injects retrieved memories automatically before each call:
# Simplified from llm.py
relevant = memory.retrieve(user_id, query=user_message, top_k=5)
memory_block = "\n".join(f"- {m['content']}" for m in relevant)
system_prompt = base_prompt + f"\n\n## Relevant Memory\n{memory_block}"
Personality Files
Create these in workspace/ to shape agent behavior:
workspace/SOUL.md — Personality and values:
# Agent Soul
You are Xiao Wang, a diligent 24/7 office assistant.
- Always respond in the user's language
- Be concise but thorough
- Proactively suggest next steps
workspace/AGENT.md — Operational procedures:
# Operational Guide
## On Error
1. Check logs in workspace/logs/
2. Run self_check() tool
3. Notify owner if critical
## Daily Routine
- 09:00 Morning brief
- 17:00 EOD summary
workspace/USER.md — User context:
# User Profile
- Name: Alice
- Timezone: UTC+8
- Prefers bullet-point summaries
- Primary language: English
Tool-Use Loop (Core LLM Flow)
# Simplified representation of llm.py's main loop
async def run(user_id, session_id, user_message, media=None):
messages = memory.get_session(user_id, session_id)
messages.append({"role": "user", "content": user_message})
for iteration in range(20): # max 20 tool iterations
response = await llm_call(
model=config["models"]["default"],
messages=inject_memory(messages, user_id, user_message),
tools=tools.get_schema(), # all 26 + plugins + MCP
)
if response.finish_reason == "stop":
# Final text reply — send to user
return response.content
if response.finish_reason == "tool_calls":
for call in response.tool_calls:
result = await tools.execute(call.name, call.arguments)
messages.append({
"role": "tool",
"tool_call_id": call.id,
"content": str(result)
})
# Loop continues with tool results appended
Self-Repair and Diagnostics
# The agent runs self_check() daily via scheduler
# Or you can trigger it manually:
# Via chat: "run self-check"
# Agent calls: self_check()
# Via chat: "diagnose the last session"
# Agent calls: diagnose(session_id="s_20260322_001")
self_check scans:
- Error logs for exception patterns
- Session health (response times, tool failures)
- Memory store integrity
- Scheduled job status
Sends notification via the configured messaging platform if issues are found.
Multi-Tenant Docker Routing
router.py provisions one container per user automatically:
# router.py handles:
# POST / with user_id header -> route to user's container
# If container missing -> docker run 724-office:latest with user env
# Health-check every 30s -> restart unhealthy containers
# Deploy the router separately:
python3 router.py # listens on :80, routes to per-user :8080+N
Docker labels used for discovery:
724office.user_id=<user_id>
724office.port=<assigned_port>
Common Patterns
Send a proactive message from a scheduled job
# In a scheduled job action, "type": "message" sends directly to user
{
"type": "message",
"content": "Your weekly report is ready!",
"attachments": ["workspace/files/report.pdf"]
}
Search memory semantically
# Via agent tool call:
results = tools.execute("search_memory", {
"query": "what did the user say about the Q1 budget?",
"top_k": 3
})
Execute arbitrary Python in the agent's process
# exec tool (use carefully — runs in-process)
tools.execute("exec", {
"code": "import psutil; return psutil.virtual_memory().percent"
})
List and manage schedules
User: "list all scheduled tasks"
Agent calls: list_schedules()
User: "cancel the weekly_report job"
Agent calls: remove_schedule({"job_id": "weekly_report"})
Troubleshooting
| Symptom | Cause | Fix |
|---|---|---|
ImportError: lancedb | Missing dependency | pip install lancedb |
| Memory retrieval empty | LanceDB not initialized | Ensure workspace/memory/ exists; send a few messages first |
| MCP tool not found | Server not connected | Check config.json mcp_servers; call reload_mcp |
| Scheduler not firing | Timezone mismatch | Set scheduler.timezone in config to your local TZ |
| Tool loop hits 20 iterations | Runaway tool chain | Add guardrails in AGENT.md; check for circular tool calls |
| WeChat webhook 403 | Token mismatch | Verify WXWORK_TOKEN and WXWORK_AES_KEY env vars |
| High RAM on Jetson | LanceDB index size | Reduce retrieval_top_k; use local embedding model |
create_tool not persisting | Wrong workspace path | Confirm workspace/custom_tools/ directory exists and is writable |
Edge Deployment (Jetson Orin Nano)
# ARM64-compatible — no GPU required for core agent
# Use a local embedding model to avoid cloud latency:
pip install sentence-transformers
# In config.json, point embedding to local model:
{
"models": {
"embedding": {
"type": "local",
"model": "BAAI/bge-small-en-v1.5"
}
}
}
# Keep RAM under 2GB budget:
# - session_max_messages: 20 (reduce from 40)
# - retrieval_top_k: 3 (reduce from 5)
# - Avoid loading large MCP servers
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
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