agent-apprenticeship
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- License — License: MIT
- Description — Repository has a description
- Active repo — Last push 0 days ago
- Community trust — 32 GitHub stars
Code Uyari
- fs module — File system access in seed_dataset/attempts/101/baseline/attempt_manifest.json
- fs module — File system access in seed_dataset/attempts/101/revised/attempt_manifest.json
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- Permissions — No dangerous permissions requested
Bu listing icin henuz AI raporu yok.
The living ecosystem for AI agents learning from real-world work through iterative loops and training-signal exchange.
Agent Apprenticeship
The living ecosystem where AI agents learn from real-world work through iterative workflow loops, reusable experience, and training signal exchange.
npx agent-apprenticeship init
As agents move into long-horizon, economically valuable work, Agent Apprenticeship creates the open infrastructure where real-world tasks generate reusable learning signals and challenging workflows advance through automated agent loops.
Agent Apprenticeship is designed for an infinite exchange of work experience between agents: useful work creates training signals, signals improve future work, and future work creates new signals for the ecosystem.
Agent Apprenticeship is built for loop iterations across domains, from simple tasks to complex specialized workflows. Apprentice agents can work with mentor agents to accomplish long-horizon, real-world tasks across model-assisted, expert-led, and hybrid modes, generating learning signals throughout the process.
The first seed dataset includes:
- 500+ curated seed tasks sourced and grounded from real world
- 495 reusable agent lessons
- 1000+ full agent execution traces
- 1000+ agent work episodes / task rollouts
The seed dataset spans specialized economically valuable tasks across domains and forms the first layer of the Agent Apprenticeship ecosystem.
Agent Apprenticeship is now available for anyone to start using with local agents including Codex, Cursor, Claude Code, OpenClaw, OpenCode, Hermes Agent, and custom agents, alongside different model providers. Users can run automated agent workflow loops locally, contribute agent learning signals back to the ecosystem, and use shared ecosystem signals to improve their own agents.
Agent Apprenticeship is also about the future of work and the economic value of agents. For every task executed through Agent Apprenticeship, the system can estimate task-level economic value, especially across specialized domains. It is built for everyday use to improve agent performance and outcome quality, while also enabling users to exchange agent work experience with each other and with domain-expert-led agents in one living ecosystem.
Install
npx agent-apprenticeship init
npm install -g agent-apprenticeship
apprentice init
The installed command is:
apprentice
The long-form command also remains available:
agent-apprenticeship
Quickstart
apprentice init
apprentice settings
apprentice run "Create a short market map for AI procurement tools."
Runs print the artifacts path and Contribution Bundle path.
apprentice ecosystem contribute <bundle_path>
Public ecosystem:
https://github.com/Forsy-AI/agent-apprenticeship
Apprentice Agents
Selected v0 Apprentice Agents:
- Codex
- Cursor
- Claude Code
- OpenClaw
- OpenCode
- Hermes Agent
- Custom
Agent Apprenticeship auto-detects installed CLIs. If multiple are detected, choose one during setup.
Custom lets you provide a command template:
apprentice configure agent custom --command-template "my-agent run --workspace {workspace} --prompt-file {prompt_file}"
Mentor Model Providers
Store local keys in:
~/.agent-apprenticeship/.env.local
Example:
OPENAI_API_KEY=""
ANTHROPIC_API_KEY=""
GEMINI_API_KEY=""
OPENROUTER_API_KEY=""
Configure:
apprentice configure model
apprentice doctor
Mentor Modes
apprentice run "..." --mentor-mode model-assisted
apprentice run "..." --mentor-mode expert-led
apprentice run "..." --mentor-mode hybrid
model-assisted: Mentor Model Provider handles the mentor loop.expert-led: human expert checkpoints guide the mentor loop.hybrid: Mentor Model Provider drafts and human expert checkpoints approve or edit.
Ecosystem Search
The public ecosystem brings together the seed dataset and community-contributed agent experience packages in one searchable network.
Explore ecosystem experience:
apprentice ecosystem list
apprentice ecosystem search cloud
apprentice ecosystem inspect aa-seed-task-501
apprentice ecosystem pull aa-seed-task-501
The seed dataset is included under:
seed_dataset/
Ecosystem Learning
Pulled ecosystem experience can be used directly or turned into Experience Packs:
apprentice learn create aa-seed-task-501
apprentice learn preview <pack_id>
apprentice learn replay <pack_id>
apprentice learn keep <pack_id>
apprentice run "Create a related incident response checklist." --experience-pack <pack_id>
apprentice learn revert <pack_id>
Use active packs explicitly:
apprentice run "..." --use-active-experience-packs
apprentice run "..." --no-experience-packs
Contribution Bundles
Runs produce Contribution Bundles.
Contribute one to the public ecosystem:
apprentice ecosystem contribute <bundle_path>
apprentice bundle contribute <bundle_path>
Public ecosystem:
https://github.com/Forsy-AI/agent-apprenticeship
Ecosystem Auto-Share
Default mode is Manual.
apprentice ecosystem configure --repo Forsy-AI/agent-apprenticeship
apprentice ecosystem configure --auto-share manual
apprentice ecosystem configure --auto-share ask
apprentice ecosystem configure --auto-share automatic
apprentice ecosystem status
Requirements:
- GitHub CLI installed
ghauthenticated- ecosystem repo configured
Search, Inspect, Pull
Discover and export ecosystem experience:
apprentice ecosystem search <query>
apprentice ecosystem inspect <id>
apprentice ecosystem pull <id>
Public Repo Structure
seed_dataset/
ecosystem/
ecosystem/contributions/
schemas/
examples/
Development Commands
.venv/bin/python -m pytest -q tests
PYTHONPATH=src .venv/bin/python -m compileall -q src tests scripts examples
bash scripts/export_public_repo.sh
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