metaclaw-evolving-agent
Deploy and configure MetaClaw — an agent that meta-learns and evolves from live conversations using skills injection, RL training, and smart scheduling.
How do I install this agent skill?
npx skills add https://github.com/aradotso/trending-skills --skill metaclaw-evolving-agentIs this agent skill safe to install?
- Gen Agent Trust Hubpass
The MetaClaw agent is a learning-oriented proxy that uses conversation data to evolve its behavior. The analysis identified potential risks related to indirect prompt injection and data handling, as the tool captures and transmits full conversation histories to external training backends to facilitate its core learning features.
- Socketpass
No alerts
- Snykwarn
Risk: MEDIUM · 1 issue
- Runlayerfail
1/1 file flagged
- ZeroLeakspass
1 finding · Score: 82/100
What does this agent skill do?
MetaClaw Evolving Agent
Skill by ara.so — Daily 2026 Skills collection
MetaClaw is an OpenAI-compatible proxy agent that intercepts conversations, injects learned skills, and continuously improves itself through real-world interactions. It supports three modes: lightweight skills injection, immediate RL training, and a smart "madmax" scheduler that defers weight updates to idle/sleep windows.
Installation
# Minimal — skills injection only, no GPU required
pip install -e .
# Full RL training support (torch, transformers, tinker)
pip install -e ".[rl]"
# Skill evolution via LLM summarization
pip install -e ".[evolve]"
# Google Calendar scheduler for madmax mode
pip install -e ".[scheduler]"
# Recommended: everything
pip install -e ".[rl,evolve,scheduler]"
Quick Start
# One-time interactive config wizard
metaclaw setup
# Start in default madmax mode (skills + RL + smart scheduler)
metaclaw start
# Skills only — no GPU, no Tinker needed
metaclaw start --mode skills_only
# RL mode — trains immediately when batch is full
metaclaw start --mode rl
# RL without scheduler (same as above, explicit)
metaclaw start --mode rl
After metaclaw start, a local OpenAI-compatible proxy is running. Point your client (OpenClaw or any OpenAI SDK consumer) at http://localhost:<port> instead of the upstream LLM endpoint.
Configuration
metaclaw setup writes a config file (default: ~/.metaclaw/config.yaml). You can also edit it directly:
# ~/.metaclaw/config.yaml
proxy:
host: 0.0.0.0
port: 8080
llm:
provider: kimi # kimi | qwen | claude | minimax | openai | gemini
base_url: https://api.moonshot.cn/v1
model: moonshot-v1-8k
# api_key loaded from env: METACLAW_LLM_API_KEY
skills:
enabled: true
max_injected: 5 # max skills injected per turn
summarize_after_session: true
rl:
enabled: true
backend: auto # auto | tinker | mint
batch_size: 32
algorithm: grpo
opd_teacher: false # optional teacher distillation
scheduler: # madmax mode only
enabled: true
sleep_hours: [22, 7] # local 22:00–07:00
idle_timeout_minutes: 15
google_calendar: false # set true + configure OAuth for meeting detection
logging:
level: info
log_dir: ~/.metaclaw/logs
Environment Variables
export METACLAW_LLM_API_KEY="your-llm-api-key"
export METACLAW_TINKER_API_KEY="your-tinker-api-key" # rl mode
export METACLAW_MINT_API_KEY="your-mint-api-key" # if backend=mint
export GOOGLE_CALENDAR_CREDENTIALS_PATH="path/to/creds.json" # scheduler
Operating Modes
| Mode | Command | GPU Required | Description |
|---|---|---|---|
skills_only | metaclaw start --mode skills_only | No | Proxy + skills injection + auto-summarization |
rl | metaclaw start --mode rl | Via API | Skills + GRPO training when batch fills |
madmax | metaclaw start | Via API | Skills + RL + scheduler (trains only during idle/sleep/meetings) |
Python API
Programmatic startup
import asyncio
from metaclaw import MetaClawAgent, AgentConfig, Mode
async def main():
config = AgentConfig.from_yaml("~/.metaclaw/config.yaml")
agent = MetaClawAgent(config, mode=Mode.MADMAX)
await agent.start()
asyncio.run(main())
Manual skill injection
from metaclaw.skills import SkillStore, SkillInjector
store = SkillStore(path="~/.metaclaw/skills")
# Add a skill manually
store.add(
name="code-review-checklist",
content="Always check for: 1) error handling, 2) type hints, 3) docstrings.",
tags=["code", "review"]
)
# Retrieve top-k relevant skills for a query
injector = SkillInjector(store)
relevant = injector.retrieve(query="review my Python function", top_k=3)
for skill in relevant:
print(skill.name, skill.score)
Intercepting and recording conversations
from metaclaw.proxy import ConversationInterceptor
from metaclaw.memory import ExperienceBuffer
buffer = ExperienceBuffer(max_size=1000)
interceptor = ConversationInterceptor(
upstream_url="https://api.moonshot.cn/v1",
on_complete=buffer.record # called after each turn with (messages, response)
)
# buffer.record signature:
async def on_complete(messages: list[dict], response: dict) -> None:
...
Triggering RL training manually
from metaclaw.training import RLTrainer, TrainingConfig
trainer = RLTrainer(
config=TrainingConfig(
backend="tinker", # or "mint"
algorithm="grpo",
batch_size=32,
lora_rank=16,
)
)
# Collect a batch from the experience buffer and train
async def run_training(buffer):
batch = buffer.sample(n=32, split="support") # support/query separation
result = await trainer.train(batch)
print(f"Training complete. Loss: {result.loss:.4f}, Steps: {result.steps}")
Reward modeling
from metaclaw.rewards import RewardModel
reward_model = RewardModel(provider="llm") # uses configured LLM for scoring
async def score_turn(prompt: str, response: str) -> float:
score = await reward_model.score(prompt=prompt, response=response)
return score # float in [-1.0, 1.0]
Skills Lifecycle
Conversation turn
│
▼
SkillInjector.retrieve() ← vector search over SkillStore
│ injects top-k skills into system prompt
▼
LLM responds
│
▼
ExperienceBuffer.record() ← stores (context, response, metadata)
│
▼ (end of session)
SkillSummarizer.run() ← LLM extracts reusable patterns
│
▼
SkillStore.upsert() ← new/updated skills persisted to disk
Integration: OpenAI SDK as Client
Point any OpenAI SDK client at the MetaClaw proxy:
from openai import OpenAI
# MetaClaw proxy is running on localhost:8080
client = OpenAI(
base_url="http://localhost:8080/v1",
api_key="not-used-but-required-by-sdk"
)
response = client.chat.completions.create(
model="moonshot-v1-8k", # passed through to upstream
messages=[
{"role": "user", "content": "Review my pull request strategy."}
]
)
print(response.choices[0].message.content)
Skills are injected transparently — the client code does not change.
Scheduler (MadMax Mode)
The scheduler ensures RL weight updates never interrupt active use:
from metaclaw.scheduler import MadMaxScheduler, SchedulerConfig
scheduler = MadMaxScheduler(
config=SchedulerConfig(
sleep_hours=(22, 7), # train between 22:00–07:00 local time
idle_timeout_minutes=15, # train after 15 min of no conversations
google_calendar=True, # also train during calendar meetings
credentials_path="creds.json"
)
)
# Check if it's safe to train right now
if await scheduler.is_training_window():
await trainer.train(batch)
Google Calendar Setup
# 1. Enable Google Calendar API in Google Cloud Console
# 2. Download OAuth2 credentials as creds.json
# 3. Set path in config or env
export GOOGLE_CALENDAR_CREDENTIALS_PATH="/path/to/creds.json"
# 4. First run will open browser for OAuth consent
metaclaw start
Support/Query Set Separation
MetaClaw separates experience into support and query sets to prevent stale rewards from polluting updates:
from metaclaw.memory import ExperienceBuffer
buffer = ExperienceBuffer(
max_size=2000,
support_ratio=0.5 # 50% support, 50% query
)
# During training:
support_batch = buffer.sample(n=16, split="support") # used to compute reward signal
query_batch = buffer.sample(n=16, split="query") # used for gradient update
await trainer.train_meta(support=support_batch, query=query_batch)
RL Backends
Tinker (default)
rl:
backend: tinker
tinker_project: my-metaclaw-project
lora_rank: 16
learning_rate: 1e-4
MinT
# Install MinT compatibility layer separately
pip install metaclaw-mint
rl:
backend: mint
mint_endpoint: https://your-mint-endpoint
Auto-detection
rl:
backend: auto # tries tinker first, falls back to mint, errors if neither available
Troubleshooting
Proxy not reachable after metaclaw start
- Check port conflicts:
lsof -i :8080 - Change
proxy.portin config and restart
rl mode: "No training backend available"
- Ensure
pip install -e ".[rl]"completed successfully - Verify
METACLAW_TINKER_API_KEYorMETACLAW_MINT_API_KEYis set - Try
rl.backend: tinkerexplicitly instead ofauto
Skills not persisting between sessions
- Confirm
skills.summarize_after_session: truein config - Check write permissions on
~/.metaclaw/skills/ - Run
metaclaw skills listto inspect stored skills
Madmax mode never trains
- Verify
scheduler.sleep_hourscovers your timezone's night - Lower
scheduler.idle_timeout_minutesfor testing (e.g.,1) - Check scheduler logs:
~/.metaclaw/logs/scheduler.log
Google Calendar integration fails
- Re-run OAuth flow: delete
~/.metaclaw/token.jsonand restart - Ensure Calendar API is enabled in your Google Cloud project
OPD teacher distillation errors
- Only supported with
rl.backend: tinker - Requires a separate teacher model endpoint in config:
rl: opd_teacher: true teacher_base_url: https://api.openai.com/v1 teacher_model: gpt-4o
CLI Reference
metaclaw setup # interactive config wizard
metaclaw start # start in madmax mode
metaclaw start --mode skills_only
metaclaw start --mode rl
metaclaw start --config path/to/config.yaml
metaclaw skills list # show all stored skills
metaclaw skills delete <name> # remove a skill
metaclaw skills export skills.json
metaclaw status # show proxy, scheduler, training status
metaclaw logs # tail all logs
metaclaw logs --component scheduler
How can the creator link this skill?
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