OKF Knowledge Agent Server
БесплатноНе проверенAn LLM-managed knowledge base following the Open Knowledge Format (OKF) v0.1 spec. Provides MCP tools: kb_query, kb_add, kb_update, kb_status over stdio or stre
Описание
An LLM-managed knowledge base following the Open Knowledge Format (OKF) v0.1 spec. Provides MCP tools: kb_query, kb_add, kb_update, kb_status over stdio or streamable HTTP.
README
Memory that grows.
The layer beneath your agents: a self-wiring, plain-markdown memory. Every fact your agents learn is filed as a markdown concept, cross-linked into a living knowledge graph, and kept healthy by the agent itself — searchable, diffable, and entirely yours. Runs great on local models.
Bundles follow the Open Knowledge Format (OKF) v0.1 spec — plain markdown files with YAML frontmatter, readable by humans, diffable in git, portable across tools.
Three ways in, one agent:
- MCP server —
memory_query/memory_add/memory_update/memory_status/memory_maintaintools over stdio or streamable HTTP. Each call drives an internal LLM agent with the OKF spec in its system prompt. - Web UI — browse the bundle (tree, concept viewer, update log, conformance badge), see the memory as an Obsidian-style force-directed graph (drag/pan/zoom, colored by type, sized by connections, orphans ringed red, click to open), and chat with the same agent to test it. Tool calls render inline so you can watch it work.
- Query-path replay — every agent run (query/mutation/chat) records its traversal (searches → reads → writes) as a compact notation, persisted under
<bundle>/.traces/. The graph view lists recent runs; selecting one replays the path as numbered directed hops over the graph — visited concepts ringed, search hits dotted, everything else faded. - CLI —
pnpm agent:query "..."/pnpm agent:mutate "..."smoke entries.
Design rule: conformance is enforced in code, not prompts. The deterministic bundle layer validates frontmatter (type required), regenerates index.md files, appends log.md entries (newest-first, spec §7), and sandboxes all paths to the bundle root. The LLM decides what to change; the code guarantees the result is a conformant bundle.
Quick start (Docker)
No clone needed — the image is public. Save this as docker-compose.yml:
services:
understory:
image: ghcr.io/thecodacus/understory:latest
ports:
- "3800:3800"
volumes:
# Your memory lives here as plain markdown — a named volume, or point
# a bind mount (e.g. ./my-memory:/bundle) at any OKF bundle.
- understory-memory:/bundle
environment:
BUNDLE_ROOT: /bundle
# Pick ONE provider:
# 1) Local llama.cpp / llama-swap (model auto-discovered; start llama-server with --jinja)
LLM_PROVIDER: llamacpp
LLAMACPP_BASE_URL: http://your-inference-box:8080
# 2) Anthropic
#LLM_PROVIDER: anthropic
#ANTHROPIC_API_KEY: sk-ant-...
# 3) OpenRouter
#LLM_PROVIDER: openrouter
#OPENROUTER_API_KEY: sk-or-...
restart: unless-stopped
volumes:
understory-memory:
docker compose up -d
Then:
- Web UI → http://localhost:3800 — browse the memory, watch the graph, chat with the agent
- MCP endpoint →
http://localhost:3800/mcp(streamable HTTP) — register it in any MCP client:claude mcp add --transport http ustory http://localhost:3800/mcp - Your agent now has
memory_query/memory_add/memory_update/memory_status/memory_maintain, and gets a seed overview of the memory at every session start.
Teach it something (memory_add: "We deploy on Fridays, never Mondays"), then open the graph and watch the concept wire itself in. Deploying with Portainer? Use docker-compose.portainer.yml as a repository stack.
Stack
pnpm monorepo:
| Package | What |
|---|---|
packages/core |
OKF bundle layer (zero LLM) + agent (Vercel AI SDK tool loop: search/read/list/write/patch/delete) + provider registry |
packages/server |
Express: MCP streamable-HTTP at /mcp, stdio bin, REST browse API at /api/*, streaming chat at /api/chat, serves the web build |
packages/web |
Vite + React + TS + Tailwind: bundle browser + agent chat (useChat) |
Providers (env-selected, swappable per chat): Anthropic (default), OpenRouter, llamacpp (llama.cpp llama-server / llama-swap — model auto-discovered from /v1/models, loaded model preferred), local (any other OpenAI-compatible endpoint).
llama.cpp
# on the inference box — --jinja enables OpenAI-style tool calling
llama-server -m model.gguf --jinja --host 0.0.0.0 --port 8080
# here — no model id needed, it's discovered
LLM_PROVIDER=llamacpp LLAMACPP_BASE_URL=http://inference-box:8080 \
BUNDLE_ROOT=./sample-bundle node packages/server/dist/index.js
Works behind llama-swap too: discovery prefers the currently loaded model so a query doesn't trigger a multi-minute model swap. Pin a specific model with LLM_MODEL=.
From source
pnpm install
pnpm build
cp .env.example .env # add your API key
BUNDLE_ROOT=./sample-bundle ANTHROPIC_API_KEY=sk-... node packages/server/dist/index.js
# → http://localhost:3800 (web UI + /api + /mcp)
Or build the container yourself: docker compose up --build (the repo's docker-compose.yml builds from source and mounts ./sample-bundle).
Dev mode (server on :3800, Vite HMR on :5180 with proxy):
BUNDLE_ROOT=./sample-bundle pnpm --filter @understory/server dev
pnpm --filter @understory/web dev
MCP registration (Claude Code / Desktop)
claude mcp add ustory \
-e BUNDLE_ROOT=/path/to/your/bundle \
-e ANTHROPIC_API_KEY=sk-... \
-- node /path/to/understory/packages/server/dist/mcp/stdio.js
Or point an HTTP MCP client at http://host:3800/mcp.
Seed memory
A client LLM that only sees four bare tool names never gets the instinct to check memory. So at session start the server injects a compact overview of what the knowledge base contains (directories, concepts with types + descriptions, recent activity) through both channels that reach the model:
- the MCP initialize
instructionsfield (clients like Claude put it in the system prompt), and - the
memory_querytool description — the universal fallback every tool-calling client loads.
The seed regenerates fresh for every new session. After memory_add / memory_update in a long-lived (stdio) session, the tool description refreshes via tools/list_changed, so the session sees its own writes. Out-of-band edits (hand edits, other clients) are picked up on the next session.
Graph health & maintenance
Memory is a graph, not a pile of notes, and graphs rot: concepts go orphaned (nothing links to them) and links go broken. Two mechanisms keep it healthy:
- Write-time linking — new knowledge either enriches the concept it belongs to (an attribute of an existing entity is patched in, not filed separately) or, when it's a distinct entity, is created and back-linked from related concepts. Contradictions are superseded in place, never left standing alongside the old value.
memory_maintain— a deterministic lint (orphans + broken links, surfaced inmemory_statusundergraph) drives an internal agent to wire orphans into related concepts and fix dangling links. Run it periodically to counter drift; it's a no-op when the graph is already healthy.
This design mirrors the pattern in Karpathy's LLM Wiki (index.md + log.md, create-vs-enrich, lint for orphans). Deferred from that pattern until scale warrants: an explicit page-type schema, and hybrid FTS5+embedding search (the naive scan in search.ts is fine into the low thousands of concepts).
Tests
pnpm test # core: 18 tests (spec §5/§6/§7/§9, sandbox, search, concurrency)
pnpm --filter @understory/server exec tsx scripts/mcp-smoke.mts # MCP stdio round-trip (needs SMOKE_BUNDLE + an API key)
Environment
See .env.example. BUNDLE_ROOT is required; GIT_AUTOCOMMIT=true commits every mutation.
Установка OKF Knowledge Agent Server
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/thecodacus/understoryFAQ
OKF Knowledge Agent Server MCP бесплатный?
Да, OKF Knowledge Agent Server MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для OKF Knowledge Agent Server?
Нет, OKF Knowledge Agent Server работает без API-ключей и переменных окружения.
OKF Knowledge Agent Server — hosted или self-hosted?
Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.
Как установить OKF Knowledge Agent Server в Claude Desktop, Claude Code или Cursor?
Открой OKF Knowledge Agent Server на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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