prediction-market-arbitrageur

تایید شده

Meta-skill for orchestrating topic-monitor, polymarket-odds, and simmer-weather to detect potential news-vs-market mispricing in prediction markets. Use when users want a clear, step-by-step LM workflow for monitoring breaking signals, reading current Polymarket probabilities, computing confidence/price deltas, and producing alert-first arbitrage decisions.

@openclaw
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نصب مهارت

مهارت‌ها کدهای شخص ثالث از مخازن عمومی GitHub هستند. SkillHub الگوهای مخرب شناخته‌شده را اسکن می‌کند اما نمی‌تواند امنیت را تضمین کند. قبل از نصب، کد منبع را بررسی کنید.

نصب سراسری (سطح کاربر):

npx skillhub install openclaw/skills/prediction-market-arbitrageur

نصب در پروژه فعلی:

npx skillhub install openclaw/skills/prediction-market-arbitrageur --project

مسیر پیشنهادی: ~/.claude/skills/prediction-market-arbitrageur/

بررسی هوش مصنوعی

کیفیت دستورالعمل65
دقت توضیحات55
کاربردی بودن30
صحت فنی45

محتوای SKILL.md

---
name: prediction-market-arbitrageur
description: Meta-skill for orchestrating topic-monitor, polymarket-odds, and simmer-weather to detect potential news-vs-market mispricing in prediction markets. Use when users want a clear, step-by-step LM workflow for monitoring breaking signals, reading current Polymarket probabilities, computing confidence/price deltas, and producing alert-first arbitrage decisions.
homepage: https://clawhub.ai
user-invocable: true
disable-model-invocation: false
metadata: {"openclaw":{"emoji":"chart_with_upwards_trend","requires":{"bins":["python3","node","npx"],"env":["SIMMER_API_KEY"],"config":[]},"note":"Requires local installation of topic-monitor, polymarket-odds, and simmer-weather via ClawHub."}}
---

# Purpose

Use this meta-skill to coordinate three existing ClawHub skills into one causal arbitrage workflow:

1. Detect new high-signal news about a target event.
2. Fetch current market-implied probability from Polymarket.
3. Compare `news confidence` vs `market probability`.
4. Emit actionable alert, optionally followed by explicit execution guidance.

This skill does not replace the underlying skills. It defines how to combine them correctly.

# Required Installed Skills

This meta-skill assumes these are already installed locally:

- `topic-monitor` (inspected: latest `1.3.4`)
- `polymarket-odds` (inspected: latest `1.0.0`)
- `simmer-weather` (inspected: latest `1.7.1`, execution proxy pattern)

Install/refresh with ClawHub:

```bash
npx -y clawhub@latest install topic-monitor
npx -y clawhub@latest install polymarket-odds
npx -y clawhub@latest install simmer-weather
npx -y clawhub@latest update --all
```

Verify:

```bash
npx -y clawhub@latest list
python3 skills/topic-monitor/scripts/monitor.py --help
node skills/polymarket-odds/polymarket.mjs --help
python3 skills/simmer-weather/weather_trader.py --help
```

If any command fails, stop and report missing dependency or wrong install path.

# Inputs the LM Must Collect First

- `ceo_name`
- `company_name`
- `event_hypothesis` (for example: `CEO X resigns within 30 days`)
- `market_query` (for polymarket search)
- `topic_id` (stable ID in `topic-monitor`)
- `monitor_interval_minutes` (default: `5`)
- `min_news_confidence` (default: `0.80`)
- `min_delta` (default: `0.25`)
- `execution_mode` (`alert-only` or `execution-plan`)

Do not continue with implicit trading assumptions if these are missing.

# Skill Responsibilities (What Each Tool Actually Does)

## `topic-monitor`

Use for continuous signal discovery and scoring.

Operationally relevant behavior:
- Topic config via `scripts/manage_topics.py`.
- Monitoring loop via `scripts/monitor.py`.
- Priority/score generated by its scoring logic.
- Alert queue retrieval via `scripts/process_alerts.py --json`.

This is the source of `news confidence` candidates.

## `polymarket-odds`

Use for live market probability lookups.

Operationally relevant behavior:
- `search <query>` to find matching events/markets.
- `market <slug>` to inspect specific market pricing.
- Outputs percentage-formatted odds that must be normalized to `[0,1]`.

This is the source of `market probability`.

## `simmer-weather`

Primary design is weather strategy, but in this chain it is treated as execution proxy reference because it uses Simmer SDK trade endpoints and live/dry-run safety pattern.

Operationally relevant behavior:
- Requires `SIMMER_API_KEY`.
- Supports dry-run and live execution modes.
- Demonstrates guarded trading workflow and position checks.

In this meta-skill, it is not the signal engine. It is the execution pattern reference.

# Canonical Causal Chain

Use this exact chain:

1. `topic-monitor` heartbeat every 5 minutes.
2. Match target rumor pattern (`resignation`, `ceo_name`, `company_name`).
3. Accept only high-confidence signal (`news_confidence >= 0.80`).
4. Query `polymarket-odds` for matching market and read current yes probability.
5. Compute `delta = news_confidence - market_probability`.
6. If `delta >= min_delta`, trigger arbitrage alert.
7. If `execution_mode=execution-plan`, output explicit next trading step; do not auto-trade unless user explicitly asks.

# Data Contract Between Skills

Normalize all values into one record before decisioning:

```json
{
  "topic_id": "ceo-resignation-acme",
  "event_hypothesis": "CEO X resigns",
  "news_confidence": 0.82,
  "news_signal_time": "2026-02-14T14:05:00Z",
  "market_slug": "will-ceo-x-resign",
  "market_probability": 0.40,
  "market_snapshot_time": "2026-02-14T14:06:00Z",
  "delta": 0.42,
  "decision": "buy_yes_candidate"
}
```

Hard rules:
- Reject stale signal if `news_signal_time` is older than 30 minutes.
- Reject stale market snapshot older than 5 minutes.
- Never compare percentages and decimals mixed. Convert all to decimals first.

# LM Execution Playbook

## Step A: Configure topic once

```bash
python3 skills/topic-monitor/scripts/manage_topics.py add \
  "CEO Resignation - <company_name>" \
  --id <topic_id> \
  --query "<ceo_name> resignation <company_name> CEO stepping down" \
  --keywords "resignation,<ceo_name>,<company_name>,CEO,board,step down" \
  --frequency hourly \
  --importance high \
  --channels telegram \
  --context "Prediction market mispricing detection"
```

## Step B: Run heartbeat loop externally (every 5 min)

```bash
python3 skills/topic-monitor/scripts/monitor.py --topic <topic_id> --force
python3 skills/topic-monitor/scripts/process_alerts.py --json
```

Use max recent score for confidence extraction.

## Step C: Pull market probability

```bash
node skills/polymarket-odds/polymarket.mjs search "<market_query>"
node skills/polymarket-odds/polymarket.mjs market <market_slug>
```

Extract yes-price and normalize (`40% -> 0.40`).

## Step D: Decide

Formula:
- `delta = news_confidence - market_probability`
- Trigger if `news_confidence >= min_news_confidence` and `delta >= min_delta`

## Step E: Emit output

If triggered, emit:

`🚨 ARBITRAGE: News bestätigen, Markt schläft. Kauf empfohlen.`

Plus structured fields:
- `news_confidence`
- `market_probability`
- `delta`
- `signal_age_minutes`
- `market_age_minutes`
- `recommendation`

# Output Modes

## `alert-only`

Return recommendation and confidence math only. No execution step.

## `execution-plan`

Return recommendation plus explicit manual next actions using installed `simmer-weather` runtime pattern:
- check API key present
- run dry-run first
- require explicit user confirmation before any live action

# Guardrails for the LM

- Do not fabricate market slugs or prices.
- Do not promote execution when confidence math is below threshold.
- Do not issue live-trade instructions without clear user opt-in.
- Surface uncertainty explicitly when matching query to market is ambiguous.
- Prefer false-negative over false-positive when news credibility is weak.

# Failure Handling

- Missing skill install: output exact missing path/command.
- Missing env var (`SIMMER_API_KEY`): degrade to `alert-only`.
- No market match: return `no_trade` with retry query suggestions.
- Conflicting signals: require two independent high-confidence hits before alerting.

# Why This Meta-Skill Exists

Without orchestration, each tool solves only a fragment:
- `topic-monitor` detects events but has no market-price context.
- `polymarket-odds` shows prices but no external signal confidence.
- `simmer-weather` demonstrates execution mechanics but is not a generic event detector.

This meta-skill binds those fragments into one coherent arbitrage decision process that an LM can execute consistently.