Crypto signal intelligence: 20 assets, 6 dimensions, regime detection, portfolio optimizer
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Config is the same across clients — only the file and path differ.
{
"mcpServers": {
"web3-signals": {
"url": "https://web3-signals-api-production.up.railway.app/mcp/sse"
}
}
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Multi-agent crypto signal intelligence. 20 assets, 5 data dimensions, scored 0–100, refreshed every 15 min.
No automated test available for this server. Check the GitHub README for setup instructions.
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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 numb