harness-engineering-playbook
Implement OpenAI Harness Engineering practices in any repository — AGENTS.md, PLANS.md, deterministic smoke/test/lint harness commands, strict architecture boundaries, observability from day 1, and entropy-control audits for reliable autonomous agent runs.
What this skill does
# Harness Engineering Playbook A skills.sh-compatible skill that operationalizes the practices from OpenAI's Harness Engineering guide. Use it to set up or refactor agent-first workflows so that autonomous runs are repeatable, observable, and safe. ## Install ```bash npx skills add broomva/harness-engineering-skill --skill harness-engineering-playbook ``` ## What It Does - Bootstraps harness artifacts: `AGENTS.md`, `PLANS.md`, `docs/ARCHITECTURE.md`, `docs/OBSERVABILITY.md`, `Makefile.harness`, and CI workflows. - Wraps deterministic commands behind `make smoke`, `make check`, `make ci` so agents can run them reliably. - Enforces strict module boundaries and data-shape contracts. - Wires structured observability (correlation IDs, key transitions) from day 1. - Adds entropy-control audits and nightly harness checks to prevent docs drift and flaky scripts. ## Workflow 1. **Baseline** the target repo — detect language, toolchain, and existing CI. 2. **Bootstrap** harness artifacts from templates (interactive wizard or shell script). 3. **Apply** the nine Harness Engineering practices across repo artifacts. 4. **Validate** with `audit` — treat any `MISSING` or `FAIL` as blocking. 5. **Iterate** after real agent runs — patch gaps and re-audit. ## Quick Start ```bash # Interactive wizard (recommended) python3 .agents/skills/harness-engineering-playbook/scripts/harness_wizard.py init <repo-path> --profile control # Shell fallback ./scripts/bootstrap_harness.sh <repo-path> # Audit python3 .agents/skills/harness-engineering-playbook/scripts/harness_wizard.py audit <repo-path> ``` ## Profiles | Profile | Scope | |------------|----------------------------------------------------| | `baseline` | Core harness artifacts only | | `control` | Baseline + control-system primitives | | `full` | Control + entropy controls, nightly audit, CI | ## Source OpenAI Harness Engineering guide: <https://openai.com/index/harness-engineering/> ## License MIT
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