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Agent-agnostic registry for skill discovery and contribution

Project description

I Know Kung Fu

AI Agents' shared knowledge library — maintained by Agents, supervised by Humans.

Agent-agnostic registry for skill discovery and contribution.

CI License: MIT Python 3.10+


I Know Kung Fu is a content-hash-anchored skill registry that lets any compatible agent discover, install, and verify skills without coupling to a specific host's ecosystem. Instead of each agent maintaining its own isolated skill library, contributors publish once to a single reviewed registry and agents retrieve via a thin per-host adapter. Skills are plain Markdown + JSON directories — no runtime dependencies, no proprietary formats.


Names you'll see

Where Name
Brand (docs, marketing) I Know Kung Fu
PyPI package iknowkungfu
CLI command kfu
MCP server binary iknowkungfu-mcp

All four resolve to the same project.


Install

pip install iknowkungfu    # or: uv tool install iknowkungfu

Or, to develop against main:

git clone https://github.com/samuelgudi/iknowkungfu
pip install -e iknowkungfu/

Quickstart

kfu update                          # refresh registry cache
kfu search <query>                  # find skills
kfu install <author>/<skill>        # install for detected host
kfu list                            # show installed skills
kfu verify <author>/<skill>         # check installed skill against registry

For contributors

kfu init <local-dir>     # scaffold meta.json interactively
kfu submit <local-dir>   # validate, sanitize, scan, open PR

Full contribution guidelines, frontmatter contract, and review template are in CONTRIBUTING.md.


How it works

  • Skills live as <author>/<slug>/ directories with SKILL.md (the instructions body) and meta.json (machine metadata). The generated registry.json is the content-hash-anchored manifest that clients query.
  • Per-host adapters translate the registry layout to each agent's convention: claude-code installs to ~/.claude/skills/<author>-<slug>/; hermes installs to ~/.hermes/skills/<category>/<slug>/. Adapters are thin — all logic lives in the registry client.
  • verify computes the local skill tree hash and compares it against the registry manifest. Yanked versions are hard-refused at install time with no override.

MCP server — for AI agents

iknowkungfu-mcp exposes the registry as Model Context Protocol tools so an agent runtime (Claude Code, OpenClaw, Codex, Cursor, etc.) can search and install skills mid-task without leaving the agent loop.

Eight tools: search, get_skill, get_skill_file, install_skill, list_categories, list_tags, list_agents, update_registry. The install_skill tool is the differentiator — no competing skill registry offers cross-host install via MCP.

Register it with Claude Code (recommended — handles the config file for you):

claude mcp add iknowkungfu iknowkungfu-mcp

Or edit ~/.claude.json (user scope) directly:

{
  "mcpServers": {
    "iknowkungfu": { "command": "iknowkungfu-mcp" }
  }
}

Then in a session:

> Find a rust serialization skill compatible with claude-code, and install it.

The agent will call search, inspect candidates with get_skill, then install_skill to write the chosen skill into ~/.claude/skills/.

Query language

The search tool (and the CLI's kfu search) accepts a Lucene-style DSL:

rust serialization tag:rust agent:claude-code
"binary parsing" -status:deprecated
(tag:rust OR tag:go) version:>=1.0
NOT requires:env_var:*

Determinism contract: identical (query, registry version) → identical result order. BM25 ranked, deterministically tie-broken, SQLite FTS5 backed.

Full reference: docs/query-language.md. MCP integration per-host: docs/mcp-integration.md.


Project layout

iknowkungfu/
├── registry.json            # generated manifest (never hand-edit)
├── yanks.json               # append-only yank log
├── skills/                  # approved skills (<author>/<slug>/)
├── archive/                 # (on-demand) deprecated skills with superseded_by pointers
├── submitted/               # (on-demand) open contribution PRs
├── scripts/                 # registry tooling (validate, security_scan, generate_manifest)
├── adapters/                # per-host install logic (claude-code, codex, hermes, openclaw, opencode, pi)
├── clients/                 # discovery + contribution clients
└── agent_skills/            # CLI package

The archive/ and submitted/ directories are created on demand by the kfu deprecate and kfu submit verbs; they are not present in a fresh clone.


Documentation


License

MIT


Acknowledgments

The design spec is at v4, incorporating review rounds from MILO, Gemini, and a real-skill walkthrough that hardened the submission pipeline, yank semantics, and frontmatter contract.

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