A crypto intelligence layer that scores 20 assets across five data dimensions (whale flows, technicals, derivatives, narrative, market microstructure) every 15 minutes and exposes the signals via MCP. Each asset gets its own learned weights based on IC analysis, with Platt-scaled probability calibration so a 75 score means real 75% directional likelihood. The server tracks its own accuracy at 24h and 48h horizons against actual price moves. Connect it to Claude Desktop or Cursor to query signals in natural language, or hit the REST endpoints directly. Most interesting for the x402 micropayment integration: paid endpoints settle $0.001 USDC on Base per call, using payment as authentication with no API keys required. Includes regime detection, portfolio optimization tools, and adaptive abstain zones tied to market conditions.
Multi-agent crypto signal intelligence. 20 assets, 5 data dimensions, scored 0–100, refreshed every 15 min.
Live API — https://web3-signals-api-production.up.railway.app
Dashboard — https://web3-signals-api-production.up.railway.app/dashboard
MCP endpoint — https://web3-signals-api-production.up.railway.app/mcp/sse
Five independent data agents (whale flows, technicals, derivatives, narrative, market microstructure) each score every asset 0–100. A fusion engine combines them into a single composite signal with a directional label, momentum tracking, and an LLM-generated rationale. The system grades its own predictions at 24h and 48h horizons against actual price moves — no self-reported accuracy.
curl https://web3-signals-api-production.up.railway.app/signal/BTC
(/signal* and /performance/reputation require an x402 payment header; everything else is free.)
{
"mcpServers": {
"web3-signals": {
"url": "https://web3-signals-api-production.up.railway.app/mcp/sse"
}
}
}
Then prompt: "What's the BTC signal right now?" or "Show me top 3 buys."
git clone https://github.com/manavaga/web3-signals-mcp.git
cd web3-signals-mcp
cp .env.example .env # fill in REDDIT_CLIENT_ID, ANTHROPIC_API_KEY, etc.
pip install -r requirements.txt
python -m api # API on :8000
python -m orchestrator.runner --once # one fusion cycle
api/ FastAPI server, dashboard, x402 middleware
mcp_server/ MCP tool definitions (stdio + SSE)
signal_fusion/ Weighted fusion, Platt calibration, meta-learner
whale_agent/ On-chain flow tracking (Etherscan + exchange wallets)
technical_agent/ RSI, MACD, MA, Bollinger (Binance)
derivatives_agent/ Funding rate, OI, long/short ratio
narrative_agent/ Reddit, news, CoinGecko trending, LLM sentiment
market_agent/ Price, volume, Fear & Greed
shared/ Storage (Postgres / SQLite), base agent, profile loader
orchestrator/ 15-minute agent scheduler + accuracy evaluator
tools/ Backtesting, IC fitting, walk-forward, weight optimizer
Python 3.13 · FastAPI · PostgreSQL · pandas / numpy / scikit-learn · Anthropic Claude (LLM rationales) · Coinbase CDP x402 facilitator · Railway (deploy)
Snapshots are saved on every fusion cycle. At 24h and 48h each directional call is graded against the actual price move (CoinGecko + Binance). Neutral signals are skipped (only directional calls count). Accuracy is AVG(gradient_score) × 100 where gradient ∈ [0, 1] depending on whether the move was in the predicted direction and how large it was. See /performance/reputation for the live numbers.
This codebase was built in pair-programming with Anthropic's Claude. Most commits have a Co-Authored-By: Claude trailer — kept intentionally to document the workflow. Architectural decisions, model choices (IC-based weighting, FDR correction, Platt scaling), and the production-readiness criteria (no-deploy-without-backtest hard rule, walk-forward embargoing) were human-driven; Claude was used for implementation, refactoring, and code review.
MIT
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