Turn any website into a portable, agent-ready knowledge bundle — no LLM required to start.
okf-kit crawls a site into a
Google Open Knowledge Format (OKF)
bundle: a directory of markdown concept files with YAML frontmatter and
per-directory index.md listings that any agent can navigate with plain file
reads. Build it, keep it in sync as the site changes, publish it, and chat with
it — locally, with your own key, or fully offline via Ollama.
pip install okf-kit
okf build https://docs.example.com -o docs-okf # crawl → OKF bundle (no key, no browser)
okf chat docs-okf --provider ollama # chat offline, no keyOr zero-install with uv:
uvx --from okf-kit okf build https://docs.example.com -o docs-okfPart of the calknowledge ecosystem — okf-kit is the lightweight, open library; calknowledge is the full platform (LLM enrichment, RAG export, retrieval evals, GUI) built on top of it.
Everyone re-crawls and re-indexes the same docs privately and badly. okf-kit makes a website's knowledge a portable artifact:
- Agents can read an OKF bundle; they can't read your website. The bundle is navigable markdown — no scraping, no SDK, no runtime.
- Faithful markdown, not text soup. Real extraction (headings, code, tables), boilerplate filtered, JS-rendered when needed.
- Self-maintaining.
okf syncupdates only what changed, so a published bundle in git produces small delta commits and never goes stale. - Works with any LLM, or none. Chat via OpenAI, Ollama, vLLM, OpenRouter, or Claude — or get a zero-key retrieval answer with citations.
pip install okf-kit # core: build / sync / validate / zip / list / get / visualize
pip install "okf-kit[chat]" # okf chat via OpenAI-compatible providers (OpenAI, Ollama, …)
pip install "okf-kit[anthropic]" # Claude as a chat provider
pip install "okf-kit[js]" # crawl JavaScript-rendered sites (pulls a Playwright Chromium)
pip install "okf-kit[mcp]" # serve bundles to Claude Code / Cursor over MCP
pip install "okf-kit[enrich]" # okf build --enrich (LLM descriptions + tags)The default install has no browser and no LLM SDK — it installs in seconds.
Tip: install into a dedicated virtualenv so okf-kit's dependencies don't mix with your other projects:
python3 -m venv ~/okf && ~/okf/bin/pip install okf-kitThis also avoids clashes if an existing environment already pins packages like
lxml(e.g. a priorcrawl4aiinstall) — a plain install would otherwise bump them.
okf build https://docs.example.com -o docs-okf --max-depth 3 --max-pages 200Domain-restricted BFS crawl → an OKF bundle: pages/ mirror with frontmatter
concepts, a .okf-kit/state.json for sync, and an index.md in every directory
for agent navigation. Validated on exit. No API key needed.
By default the crawl is scoped to the seed's path section — okf build https://doc.rust-lang.org/book/ stays under /book/ and won't wander into the
rest of the host. Override with --path-prefix PATH (a narrower/different
scope) or --all-paths (the whole host). Other flags: --js (JS-rendered
sites — build hints when a site needs it), --no-robots, --enrich (add LLM
descriptions/tags — needs [enrich] + OPENAI_API_KEY).
okf sync docs-okfRe-crawls the same site and updates only the delta — added pages written,
changed pages rewritten, removed pages deleted, unchanged pages left
byte-for-byte (stable git diffs). A safety valve aborts on a suspiciously empty
re-crawl (--force overrides).
okf chat docs-okf --provider ollama # offline, no key
okf chat docs-okf --provider openai --trace # any provider, with citations + a navigation trace
okf chat docs-okf # no provider → zero-key retrieval answer
okf chat docs-okf --resume # continue the last session (history is local)The agent navigates the bundle (list_directory / read_concept) to the most
specific concept and answers only from what it read, citing the paths.
--provider |
Endpoint | Key |
|---|---|---|
openai |
OpenAI | OPENAI_API_KEY |
ollama |
localhost:11434 (local) |
none |
openrouter |
OpenRouter | OPENROUTER_API_KEY |
anthropic |
Claude | ANTHROPIC_API_KEY |
custom |
--base-url |
as configured |
Chat history is stored locally at ~/.okf/chats/<bundle>/.
okf visualize docs-okf # -> docs-okf/graph.htmlA self-contained interactive graph (nodes = concepts, edges = internal links);
no backend, no CDN — open the HTML from file://.
okf serve-mcp docs-okf # or --all for every downloaded bundleExposes list_bundles / list_directory / read_concept / search_bundle over
stdio MCP for Claude Code/Desktop, Cursor, and any MCP client.
Or run it as a container (the included Dockerfile bakes in the rust-book
bundle):
docker build -t okf-kit-mcp .
docker run -i --rm okf-kit-mcp # speaks MCP over stdio; serve another bundle: … okf-kit-mcp okf serve-mcp <name>pip install "okf-kit[serve]"
okf serve # prints {"event":"ready","url":…,"token":…}A loopback-only HTTP API that wraps registry / read / chat / settings, so a
desktop app or web UI can be pure UI over an API (no duplicated logic). Guarded
by a per-launch bearer token. Endpoints cover browsing the registry, installing/
removing books, reading (toc + concept with heading anchors), chat with saved
sessions and cited, deep-linkable sources, and settings (API key kept in the OS
keychain). Consume-only, so it stays light to bundle.
Built on this: okf-desktop — a lightweight desktop app (React + pywebview) that reads and chats with your bundles like a book, entirely over
okf serve.
okf list --remote # browse published bundles
okf get backstage-docs # download, validate, install to ~/.okf/bundles/
okf list # your local bundlesokf zip docs-okf # -> docs-okf.zip, ready to publish or shareSee docs/PUBLISHING.md — build a bundle, ship it as a release zip with a weekly self-sync Action, and add it to the awesome-okf-kit registry. Publish only content you may redistribute.
docs-okf/
index.md root directory listing (reserved, no frontmatter)
log.md build/sync history
pages/ one concept per page (frontmatter + body + citations)
index.md directory listing (every directory has one)
home.md
docs/…
.okf-kit/state.json crawl config, per-page content hashes, link edges
Does okf-kit require an LLM or API key?
No. The entire build path — crawl, structure, validate — runs with zero API keys
and zero model calls. An LLM is optional: you only need one for synthesized
okf chat answers (use Ollama for fully offline) or the optional --enrich step.
With no model configured, okf chat still answers from a zero-key retrieval
fallback, with citations.
What is OKF, and is okf-kit official?
OKF (Open Knowledge Format) is an open, vendor-neutral spec for representing
knowledge as markdown files with a little YAML frontmatter (type, title,
description, resource, tags, timestamp), introduced by Google as part of
its Knowledge Catalog work. okf-kit is an independent, unofficial
implementation — and it interoperates: it validates and renders Google's own
reference bundles unchanged.
How is okf-kit different from Google's OKF tools? Google's reference implementation targets BigQuery / data-catalog metadata with an LLM enrichment agent. okf-kit targets any website with a deterministic crawler that needs no LLM, no cloud, and no API key — and adds incremental sync, offline chat, an MCP server, and a community registry. Same format, complementary mission.
Can I use it with Claude Code / Cursor?
Yes — okf serve-mcp <bundle> is a stdio MCP server exposing list_bundles,
list_directory, read_concept, and search_bundle, so any MCP client can read
a project's up-to-date docs locally. There's also a Docker image.
Does it work offline?
Yes. Building a bundle needs network only to crawl the site once; after that it's
all local files. okf chat runs fully offline with Ollama, or with the zero-key
retrieval fallback.
What sites can it crawl?
Any static or server-rendered HTML site (docs, wikis, blogs). It respects
robots.txt and scopes the crawl to the seed's path by default. JavaScript-rendered
SPAs need the optional [js] extra (a real browser); extraction quality varies by
site.
pip install -e ".[dev]", then pytest -q (fully offline) and
ruff check okf_kit tests. See CONTRIBUTING.md and the
CHANGELOG.
Apache-2.0.