OraClaw Decision Intelligence MCP Server

12 MCP tools with 19 ML algorithms for AI agents — bandits, solvers, forecasters, risk models. All under 25ms, deterministic.

Documentation

OraClaw

MIT License MCP Algorithms Latency npm API Status

MCP Optimization Tools for AI Agents -- 17 tools, 21 algorithms, sub-25ms. Zero LLM cost.

Your AI agent can't do math. OraClaw gives it deterministic optimization, simulation, forecasting, and risk analysis through the Model Context Protocol. Every tool returns structured JSON, runs in under 25ms, and costs nothing to compute.


🚀 Using OraClaw in production — or want managed hosting, premium tools, or priority support? Tell me about your use case → — I read every one.


What this solves

LLMs generate plausible text, not mathematically optimal answers. OraClaw gives an AI agent a set of deterministic numerical tools it can call instead of guessing — each returns structured JSON from a real algorithm, with no token spend on reasoning. Concretely:

  • Your agent needs to pick the next variant to try (A/B test arm, ad/email copy, recommendation) and balance exploration against exploitation — without hand-rolling a bandit or letting the model eyeball it. Call optimize_bandit (or optimize_contextual when the best choice depends on per-call features).
  • Your agent needs a provably optimal allocation or schedule under hard constraints (budget split, integer counts, capacity caps) — without the model hallucinating constraints. Call solve_constraints (LP/MIP/QP via HiGHS) or solve_schedule for task-to-slot fitting.
  • Your agent needs to quantify uncertainty around an outcome — project a value under an uncertain input, or measure VaR/CVaR on a weighted multi-asset book with auditable assumptions — without a Monte Carlo loop in the prompt. Call simulate_montecarlo, simulate_scenario, or analyze_risk.
  • Your agent needs a point forecast or an outlier flag on a time series (demand, KPIs, sensor/metric streams) — without inventing trend math. Call predict_forecast (ARIMA / Holt-Winters) or detect_anomaly (Z-score / IQR).
  • Your agent needs to fuse or score probability signals — combine model outputs, measure how much independent sources agree, or check whether past predictions were well-calibrated. Call predict_ensemble, score_convergence, or score_calibration.
  • Your agent needs to reason over a graph — rank influential nodes, cluster a dependency/knowledge graph, find a critical path, or route between two nodes. Call analyze_graph or plan_pathfind.

Where the algorithms have been used

OraClaw's algorithms have informed implementations in several open-source projects -- through contributed routing specs, algorithm guidance, and shared math -- spanning AI agent orchestration, time-series tracking, vector search, and optimization.

Selected contributions (see CHANGELOG.md for the full list):

  • chernistry/bernstein -- agent orchestration framework. LinUCB contextual router (α=0.3) with shadow-evaluation path and interpretable decision reasons, shipped in codex/issue-367-linucb-router after a contributed spec correction.
  • stxkxs/nanohype -- contextual bandit routing, pluggable strategy registry (hash / sliding-TTL / semantic), cost anomaly detection. "Your input shaped a lot of what actually shipped."
  • rfivesix/hypertrack -- Bayesian/Kalman-style adaptive estimator with phase-aware ramp. Shipped in 0.8.0-beta.
  • AlanHuang99/pyrollmatch -- entropy balancing (Hainmueller 2012) with moment constraints + max_weight cap. Shipped in v0.1.3.
  • stffns/vstash -- IDF-sigmoid relevance weighting. Shipped in v0.17.0.

Marketplace distribution:


Quick Start

1. MCP Server (recommended for AI agents)

Add to your claude_desktop_config.json:

{
  "mcpServers": {
    "oraclaw": {
      "command": "npx",
      "args": ["-y", "@oraclaw/mcp-server"]
    }
  }
}

Then ask your agent:

"I have 3 email subject line variants. Which should I send next?"

The agent calls optimize_bandit and gets a statistically optimal selection in 0.01ms.

2. REST API (no install)

curl -X POST https://oraclaw-api.onrender.com/api/v1/optimize/bandit \
  -H 'Content-Type: application/json' \
  -d '{
    "arms": [
      {"id": "A", "name": "Option A", "pulls": 10, "totalReward": 7},
      {"id": "B", "name": "Option B", "pulls": 10, "totalReward": 5},
      {"id": "C", "name": "Option C", "pulls": 2, "totalReward": 1.8}
    ],
    "algorithm": "ucb1"
  }'

Response (<1ms):

{
  "selected": { "id": "C", "name": "Option C" },
  "score": 1.876,
  "algorithm": "ucb1",
  "exploitation": 0.9,
  "exploration": 0.976,
  "regret": 0.1
}

Free tier: 25 calls/day, no API key needed.

3. npm SDK

npm install @oraclaw/bandit
import { OraBandit } from '@oraclaw/bandit';

const client = new OraBandit({ baseUrl: 'https://oraclaw-api.onrender.com' });
const result = await client.optimize({
  arms: [
    { id: 'A', name: 'Short Subject', pulls: 500, totalReward: 175 },
    { id: 'B', name: 'Long Subject', pulls: 300, totalReward: 126 },
  ],
  algorithm: 'ucb1',
});

14 SDK packages: @oraclaw/bandit, @oraclaw/solver, @oraclaw/simulate, @oraclaw/risk, @oraclaw/forecast, @oraclaw/anomaly, @oraclaw/graph, @oraclaw/bayesian, @oraclaw/ensemble, @oraclaw/calibrate, @oraclaw/evolve, @oraclaw/pathfind, @oraclaw/cmaes, @oraclaw/decide


Why?

LLMs generate plausible text, not optimal solutions. Ask GPT to pick the best A/B test variant and it applies a heuristic that ignores the exploration-exploitation tradeoff. Ask it to solve a linear program and it hallucinates constraints. OraClaw gives your agent access to real algorithms -- bandits, solvers, forecasters, risk models -- that return mathematically correct answers in sub-millisecond time, without burning tokens on reasoning.


MCP Tool Catalog (17 tools)

Free tier (11 tools, no API key — 25 calls/day per IP):

ToolWhat It DoesLatency
optimize_banditUCB1 / Thompson / Epsilon-Greedy arm selection0.01ms
optimize_contextualContext-aware LinUCB bandit0.05ms
optimize_evolveGenetic algorithm for discrete + multi-objective problems<10ms
solve_scheduleEnergy-matched task scheduling3ms
score_convergenceMulti-source probability consensus (Hellinger)0.04ms
score_calibrationBrier + log score for forecaster accuracy0.02ms
predict_bayesianBeta posterior update from weighted evidence0.05ms
predict_ensembleMulti-model consensus + uncertainty decomposition0.1ms
plan_pathfindA* + Yen's k-shortest paths0.1ms
simulate_montecarloSingle-factor Monte Carlo (6 distributions)<2ms
simulate_scenarioWhat-if comparison + sensitivity ranking<5ms

Premium tier (6 tools, requires ORACLAW_API_KEY):

ToolWhat It DoesLatency
optimize_cmaesCMA-ES continuous black-box optimization12ms
solve_constraintsLP / MIP / QP solver via HiGHS (provably optimal)2ms
analyze_graphPageRank, Louvain communities, bottleneck detection0.5ms
analyze_riskVaR and CVaR (Expected Shortfall)<2ms
predict_forecastARIMA + Holt-Winters time series forecasting0.08ms
detect_anomalyZ-Score + IQR anomaly detection0.01ms

14 of 18 REST endpoints respond in under 1ms. All under 25ms.


Try It Now

The API is live. No signup required.

# Bayesian inference
curl -X POST https://oraclaw-api.onrender.com/api/v1/predict/bayesian \
  -H 'Content-Type: application/json' \
  -d '{"prior": 0.3, "evidence": [{"factor": "positive_test", "weight": 0.9, "value": 0.05}]}'

# Monte Carlo simulation
curl -X POST https://oraclaw-api.onrender.com/api/v1/simulate/montecarlo \
  -H 'Content-Type: application/json' \
  -d '{"simulations": 1000, "distribution": "normal", "params": {"mean": 100, "stddev": 15}}'

# Anomaly detection
curl -X POST https://oraclaw-api.onrender.com/api/v1/detect/anomaly \
  -H 'Content-Type: application/json' \
  -d '{"data": [10, 12, 11, 13, 50, 12, 11, 10], "method": "zscore", "threshold": 2.0}'

Pricing

TierCallsPriceAuth
Free25/day$0None
Pay-per-call1K/day$0.005/callAPI key
Starter10K/mo$9/moAPI key
Growth100K/mo$49/moAPI key
Scale1M/mo$199/moAPI key

x402 USDC: AI agents pay $0.01-$0.15 per call with USDC on Base. No subscription, no API key.


Source Code

ComponentPath
MCP Servermission-control/packages/mcp-server/
REST APImission-control/apps/api/
Algorithmsmission-control/apps/api/src/services/oracle/algorithms/
SDK Packagesmission-control/packages/sdk/
LangChain Toolsmission-control/integrations/langchain/oraclaw_tools.py
Mobile Appmission-control/apps/mobile/
Dashboard (Next.js)web/

Building with OraClaw?

We'd love to hear what you're working on. Share your use case, ask questions, or request features:


Links


If this saved your agent from hallucinating math, star us :star:

License

MIT