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KnowledgeMay 11, 2026·3 min de lecture

learn-claude-code — Build an Agent Harness

learn-claude-code teaches agent harness engineering: tool dispatch, worktrees, context compression, and teams. Clone, set API key, run the demo scripts.

Prêt pour agents

Cet actif peut être lu et installé directement par les agents

TokRepo expose une commande CLI universelle, un contrat d'installation, le metadata JSON, un plan selon l'adaptateur et le contenu raw pour aider les agents à juger l'adaptation, le risque et les prochaines actions.

Needs Confirmation · 64/100Policy : confirmer
Surface agent
Tout agent MCP/CLI
Type
Knowledge
Installation
Single
Confiance
Confiance : Established
Point d'entrée
README.md
Commande CLI universelle
npx tokrepo install 26ec121e-a784-4ac6-ad23-7c6ae99b4382
Introduction

learn-claude-code is a verified GitHub-backed asset sourced from shareAI-lab/learn-claude-code with 59,755 stars and a MIT license snapshot. Best for: engineers building agent products who need a concrete, runnable reference harness rather than high-level blog posts. Works with: Python + pip; optional web UI (npm) for visualizations. Setup time: 12 minutes.

Quantitative notes

  • Multiple runnable stages (s01 → s12, repo)
  • Setup time ~12 minutes

Deep Dive

What it solves

Use this when you need a repeatable, team-shareable workflow instead of one-off agent prompts. The goal is to make installation, first-run validation, and rollback predictable.

Minimal mental model

  • Treat the GitHub repo as the source of truth: install instructions, configs, and upgrade paths live there.
  • Keep your first run small: one command, one verification, one rollback plan.
  • Capture a baseline: setup time, first successful run, and one real task completed end-to-end.

Safe rollout checklist

  1. Verify source: confirm repo URL, stars, and license match what you expect.
  2. Install using the Quick Use commands above.
  3. Prove it works with the verification command; save the output in a note or issue.
  4. Operationalize: document owner, upgrade command, and rollback command.

Troubleshooting (common)

  • Install succeeds but nothing shows up

    • Likely cause: the tool needs a restart/reload (CLI/IDE) or a config file in the right path.
    • Fix: restart the client, then re-run the verification step.
  • Works on one machine, fails on another

    • Likely cause: Node/Python/Docker versions differ or missing system dependencies.
    • Fix: pin versions (Node/Python), and copy a minimal known-good config.
  • Token cost or latency is worse than expected

    • Likely cause: tool schemas or verbose outputs get injected into context.
    • Fix: prefer smaller steps, cache results, and keep tool responses concise when possible.

FAQ

Q: Is this a production implementation? A: The README frames it as a teaching repo; use it to learn patterns, then harden the pieces you need.

Q: What should I run first? A: Start with s01 to see a minimal loop, then progress to the later stages for worktrees, teams, and persistence.

Q: How do I keep it safe? A: Use a dedicated API key with quotas, and run demos in a sandbox repo or throwaway project.


🙏

Source et remerciements

GitHub: https://github.com/shareAI-lab/learn-claude-code Owner avatar: https://avatars.githubusercontent.com/u/189210346?v=4 License (SPDX): MIT Stars (verified via api.github.com/repos/shareAI-lab/learn-claude-code): 59,755

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