| name | harness-learn |
| description | Run a GEPA learning cycle via `metaharness learn` (upstream ADR-235, metaharness@0.3.0) — optimizes a harness genome against a SWE-bench-style slice manifest. $0 dry-run by default; `--run` is the explicit spend opt-in. Requires a metaharness repo checkout (`--repo` or $METAHARNESS_REPO) — without one it reports `checkout-required` with clone instructions. Degrades gracefully when metaharness is absent. |
| argument-hint | --host <h> --model <m> --slice <manifest> [--repo <checkout>] [--run] [--alert-on-fail] |
| allowed-tools | Bash |
Surfaces metaharness learn — the upstream GEPA learning harness that
evolves harness policy genomes against a scored task corpus instead of
hand-editing prompts. Candidates are scored on held-out slices and only
measured winners promote (the shipped cand-6 genome is the first such
promotion: holdout gold 2/12 → 3/12, zero regressions).
When to use
- A harness's policy prompt underperforms on a task family and you want a
measured improvement loop rather than manual prompt iteration.
- Pricing a learning run before committing spend — the default dry-run
resolves the slice manifest and reports cost without any model calls.
- After a learn run promotes a genome: pair with
harness-gepa --op render
to inspect what the promoted policy actually says.
Preconditions (upstream design)
The learning harness (GEPA + SWE-bench + Docker) is too heavy for the npm
package, so learn needs a local clone:
git clone https://github.com/ruvnet/metaharness.git
node scripts/learn.mjs --repo ./metaharness --host claude-code --model haiku --slice slices/lite.json
Without a checkout the script emits {status: "checkout-required"} and
exits 0 — a precondition report, not an error (distinct from
degraded: true, which means the npm package itself is absent). The
managed-service path (gateway-side learn jobs, no checkout) is upstream's
ADR-235 follow-up and not available yet.
Algorithm
Implementation: scripts/learn.mjs.
- Validate
--repo exists when given; export it as $METAHARNESS_REPO.
- Invoke the pinned
metaharness binary (metaharness@~0.3.0, local install
or one-time versioned cache — never @latest): metaharness learn --host <h> --model <m> --slice <s> [--run] via _harness.mjs (graceful degradation,
hard timeout).
- Default timeouts: 120s dry-run, 600s with
--run — real runs on larger
slices need an explicit --timeout-ms matched to slice size × model cost.
- Detect the checkout-required message → structured payload, exit 0.
- Parse the trailing JSON report when upstream emits one; otherwise return
the raw report text under
rawReport.
Cost note
--run is the ONLY path that spends. Everything else — dry-run, checkout
probe, degraded path — is $0. The MCP tool (metaharness_learn) has a 120s
subprocess budget; run real learning cycles from a terminal via
ruflo metaharness learn ... --run --timeout-ms <big>.
Exit codes
0 — report produced (or dry-run, checkout-required, degraded)
1 — --alert-on-fail and the learn run reported failure
2 — config error (bad --repo path)