mb-harness

Set up deterministic commands, worktrees, and quality gates so agents can run safely in this repository.

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Install skill "mb-harness" with this command: npx skills add mrvladd-d/memobank/mrvladd-d-memobank-mb-harness

mb-harness — Harness engineering setup

  • What it does: defines the execution harness around the repo, including commands, gates, and parallel-safe workflow.
  • Use it when: the repository needs stronger agent guardrails before autonomous or multi-session work.
  • Input: repository root and the project’s canonical build, test, and lint commands.
  • Output: documented quality gates, optional Codex config, and a safer harness for agent execution.

Goal

Turn the repo into a reliable “harness” for agents:

  • clear entry points (AGENTS.md)
  • reproducible commands (build/test/lint)
  • mechanical checks (CI + MB lint)
  • parallel-safe workflow (worktrees)

Process

1) Codex project configuration (optional but recommended)

If you use Codex:

  1. Create .codex/ folder.
  2. Create .codex/config.toml from assets/codex-config.toml.

Usage examples:

  • default profile (coding): codex
  • deep review: codex --profile deep-review

2) Document quality gates

In AGENTS.md (keep it short), list the canonical commands (examples):

  • install deps
  • lint / typecheck
  • unit tests
  • e2e tests

If the repo has UI or browser flows, explicitly document:

  • Playwright command(s)
  • agent-browser / browser MCP path (if available)
  • where screenshots/videos/traces are stored
  • which flows are considered release-critical

If the repo lacks them, add minimal scripts/Make targets.

3) Worktree workflow (parallel agents)

If multiple agents work in parallel:

  • create worktrees per agent to avoid file conflicts
  • merge only after passing gates

Example:

git worktree add ../wt-agent-1 -b agent-1

4) Add deterministic Memory Bank lint

If not already present, run mb-garden to add scripts/mb-lint.mjs and CI workflow.

4.1) Browser verification for UI projects

If the product has a UI:

  • prefer Playwright / agent-browser / CDP-driven checks over “manual looks OK”
  • persist artifacts (screenshots, videos, traces) into .tasks/TASK-XXX/
  • document canonical browser verification commands in .memory-bank/testing/index.md

5) Optional: skill eval harness

If you iterate on skills heavily:

  • use codex exec --json runs + deterministic graders (see OpenAI evals guidance)

Definition of done

  • .codex/config.toml exists (if using Codex) with coding + review profiles.
  • AGENTS.md lists quality-gate commands.
  • repo has a documented path for worktrees.
  • Memory Bank lint exists and passes.
  • UI repos have a documented browser-driven verification path.

Source Transparency

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