JSPM

  • ESM via JSPM
  • ES Module Entrypoint
  • Export Map
  • Keywords
  • License
  • Repository URL
  • TypeScript Types
  • README
  • Created
  • Published
  • Downloads 368
  • Score
    100M100P100Q84763F
  • License Apache-2.0

Auto-tuned harnesses for AI agents — Meta-Harness algorithm with Pareto search over (accuracy, tokens, latency)

Package Exports

  • @codragraph/harness
  • @codragraph/harness/algorithm
  • @codragraph/harness/algorithm.js
  • @codragraph/harness/cli/main
  • @codragraph/harness/cli/main.js
  • @codragraph/harness/evaluator/impl
  • @codragraph/harness/evaluator/impl.js
  • @codragraph/harness/evaluator/judge
  • @codragraph/harness/evaluator/judge.js
  • @codragraph/harness/evaluator/runner
  • @codragraph/harness/evaluator/runner.js
  • @codragraph/harness/evaluator/score
  • @codragraph/harness/evaluator/score.js
  • @codragraph/harness/filesystem
  • @codragraph/harness/filesystem.js
  • @codragraph/harness/graph/http-client
  • @codragraph/harness/graph/http-client.js
  • @codragraph/harness/graph/index
  • @codragraph/harness/graph/index.js
  • @codragraph/harness/graph/local-client
  • @codragraph/harness/graph/local-client.js
  • @codragraph/harness/harness/interface
  • @codragraph/harness/harness/interface.js
  • @codragraph/harness/harness/seeds/few-shot
  • @codragraph/harness/harness/seeds/few-shot.js
  • @codragraph/harness/harness/seeds/graph-aware
  • @codragraph/harness/harness/seeds/graph-aware.js
  • @codragraph/harness/harness/seeds/index
  • @codragraph/harness/harness/seeds/index.js
  • @codragraph/harness/harness/seeds/zero-shot
  • @codragraph/harness/harness/seeds/zero-shot.js
  • @codragraph/harness/index
  • @codragraph/harness/index.js
  • @codragraph/harness/inference/claude
  • @codragraph/harness/inference/claude.js
  • @codragraph/harness/inference/index
  • @codragraph/harness/inference/index.js
  • @codragraph/harness/inference/interface
  • @codragraph/harness/inference/interface.js
  • @codragraph/harness/inference/openai
  • @codragraph/harness/inference/openai.js
  • @codragraph/harness/inference/opencode
  • @codragraph/harness/inference/opencode.js
  • @codragraph/harness/loader
  • @codragraph/harness/loader.js
  • @codragraph/harness/mcp/handler
  • @codragraph/harness/mcp/handler.js
  • @codragraph/harness/moat/index
  • @codragraph/harness/moat/index.js
  • @codragraph/harness/moat/lookup
  • @codragraph/harness/moat/lookup.js
  • @codragraph/harness/moat/recipe-store
  • @codragraph/harness/moat/recipe-store.js
  • @codragraph/harness/moat/swarm-with-moat
  • @codragraph/harness/moat/swarm-with-moat.js
  • @codragraph/harness/moat/types
  • @codragraph/harness/moat/types.js
  • @codragraph/harness/pareto
  • @codragraph/harness/pareto.js
  • @codragraph/harness/proposer/claude-code
  • @codragraph/harness/proposer/claude-code.js
  • @codragraph/harness/proposer/interface
  • @codragraph/harness/proposer/interface.js
  • @codragraph/harness/swarm/algorithm
  • @codragraph/harness/swarm/algorithm.js
  • @codragraph/harness/swarm/coordinator
  • @codragraph/harness/swarm/coordinator.js
  • @codragraph/harness/swarm/critic
  • @codragraph/harness/swarm/critic.js
  • @codragraph/harness/swarm/exploiter
  • @codragraph/harness/swarm/exploiter.js
  • @codragraph/harness/swarm/explorer
  • @codragraph/harness/swarm/explorer.js
  • @codragraph/harness/swarm/interface
  • @codragraph/harness/swarm/interface.js
  • @codragraph/harness/swarm/termination
  • @codragraph/harness/swarm/termination.js
  • @codragraph/harness/trace
  • @codragraph/harness/trace.js
  • @codragraph/harness/types
  • @codragraph/harness/types.js

Readme

@codragraph/harness

Auto-tuned harnesses for AI agents — Meta-Harness Algorithm 1 with Pareto search over (accuracy, tokens, latency).

Built on top of @codragraph/cli MCP tools (graph-aware code intelligence) and works with any inference provider (Claude, Codex, OpenCode, OpenAI, Anthropic, Gemini, ...).

Status

Developer preview. The package ships with single-proposer search, multi-role swarm search (Explorer + Exploiter + Critic), versioned recipe memory keyed on graph snapshots, and CLI / MCP entry points.

See RFC.md for the full design.

Concept

A harness is the code around a fixed base model that decides what to store, retrieve, and present at each step. Different harnesses produce different (accuracy, token-cost, latency) tradeoffs for the same task family.

codragraph-harness search runs an outer optimization loop:

  1. Start with seed harnesses (zero-shot, few-shot, graph-aware).
  2. Score each on a search-set of tasks → 3-vector (accuracy, tokens, latencyMs).
  3. An agentic proposer (Claude Code by default) reads the filesystem of all prior candidates' source + traces + scores and writes new harness variants.
  4. Each new harness is validated, scored, added to the Pareto frontier.
  5. Loop for N iterations.
  6. Return the non-dominated frontier.

Reference: Meta-Harness paper, arXiv 2603.28052.

Usage (planned)

codragraph-harness search \
  --task ./tasks/codebase-qa/ \
  --seeds zero-shot,few-shot,graph-aware \
  --iterations 20 \
  --proposer claude-code \
  --output ./runs/2026-04-29/
import { search } from "@codragraph/harness";

const frontier = await search({
  taskSet: "./tasks/codebase-qa/",
  iterations: 20,
  proposer: "claude-code",
});

Also exposed as a harness_run MCP tool and via @codragraph/sdk.