Ai Hub
БесплатноНе проверенA self-hosted server providing shared memory, RAG document search, project maps, and role-based prompts for all AI agents via MCP and REST, enabling persistent
Описание
A self-hosted server providing shared memory, RAG document search, project maps, and role-based prompts for all AI agents via MCP and REST, enabling persistent context across devices and tools.
README
One memory for every AI agent.
Live site · Quick start · Connect an agent · Screenshots · Full architecture
Claude Code, Cursor, opencode, Codex CLI, and custom agents each keep their own context today — decisions made in one tool are invisible to the others, and switching devices means starting from zero. Mnema is a small self-hosted server (MCP + REST) that gives all of them one common brain: structured memory, hybrid document search (RAG), project maps, and role-based system prompts. It runs on a Raspberry Pi 5 on your own network and follows you across every machine and every agent.
Why this exists
Multi-agent workflows have a context problem:
| Without a hub | With Mnema |
|---|---|
| A decision made while pairing with Claude Code isn't visible to Cursor an hour later | Decisions saved once, with rationale, retrievable by any agent |
| Switching desktop → laptop means re-explaining everything | Project maps follow you across every machine on your mesh |
| Every agent re-derives project context from scratch | Relevant memory is auto-injected into each message — precisely filtered |
| "I learned X yesterday" lives in scrollback — or nowhere | Notes and research live in a searchable RAG store, forever |
Mnema is a deliberately small answer to that: one server, one SQLite file, one protocol (MCP) that every agent already speaks, plus REST for anything that doesn't. No vector database cluster, no message queue, no Docker layer — just enough infrastructure to make memory persistent and searchable across tools and devices.
Features
- Shared memory — facts, preferences, decisions (with rationale), and
how-tos, saved by any agent and retrievable by any other. Hybrid search
(BM25 via FTS5 + vector via
sqlite-vec, merged with Reciprocal Rank Fusion) finds the right memory whether the match is lexical or semantic. - RAG document store — ingest notes, READMEs, research write-ups, or learning summaries; markdown-aware chunking, automatic embedding, hybrid retrieval with source references.
- Project maps — one YAML-backed record per project: summary, stack,
decisions, current focus, next steps. Any agent, any device, calls
project_get("name")and has full context instantly. - Role-based system prompts — a library of prompts (senior software architect, code reviewer, debugging specialist, security engineer, frontend engineer, devops/SRE, ML engineer) with a shared "engineering mindset" core auto-injected into every role, including prompts handed to local models.
- Local AI orchestration — route simple/bulk text work to a local LLM
(LM Studio, zero API cost) and image/video/audio generation to ComfyUI,
both driven from any connected agent via
local_llm/media_generate. - Cross-device sync — a local-first, last-write-wins sync model so memories and project maps created on one machine reconcile cleanly with the primary (Pi) instance.
- MCP + REST, same core — every capability is exposed both as an MCP tool (for agents that speak MCP over Streamable HTTP) and as a REST endpoint (for scripts, custom agents, and the web UI) — one implementation, two doors.
- Web UI — a small React dashboard for browsing memory, RAG documents, projects, and prompts from a browser, including your phone. Redesigned with a high-contrast, 1-bit-inspired visual language, a relationship graph view for exploring how memories/projects/documents connect, and optimized RAG search (faster, more relevant hybrid retrieval).
- Code-map project maps — project maps now carry a structured code map
(
architecture,modules,entry_points,commands,conventions,data_model), injected automatically at session start so any agent gets oriented instantly.
24 MCP tools cover all of the above — same set, every agent, every device. See the full tool tracklist on the live site or src/server/mcp.ts in source.
Architecture
┌──────────────────────────────────────────────────────────────┐
│ Raspberry Pi 5 — "hub" (Tailscale IP: 100.x.x.x) │
│ │
│ ┌────────────────────────────────────────────┐ │
│ │ hub-server (Node 22, systemd) │ │
│ │ ├── MCP endpoint /mcp (Streamable HTTP) │ │
│ │ ├── REST API /api/* (scripts, agents) │ │
│ │ └── Web UI / (dashboard, PWA) │ │
│ └───────────────┬────────────────────────────┘ │
│ │ │
│ ┌───────────────▼────────────────────────────┐ │
│ │ SQLite (single file: hub.db) │ │
│ │ ├── memories (structured memory) │ │
│ │ ├── documents (RAG source docs) │ │
│ │ ├── chunks + vec (sqlite-vec embeddings) │ │
│ │ ├── chunks_fts (FTS5 BM25 index) │ │
│ │ └── projects (project maps) │ │
│ └────────────────────────────────────────────┘ │
│ │
│ Nightly backup: sqlite backup + markdown export → git push │
└──────────────────────────────────────────────────────────────┘
▲ Tailscale (private network; Funnel optional for public access)
│
┌─────┴──────────────────────────────────────┐
│ Devices (desktop, laptop, phone) │
│ ├── Claude Code → MCP (Streamable HTTP) │
│ ├── Cursor / Windsurf → MCP (mcp.json) │
│ ├── opencode → MCP (opencode.json) │
│ ├── Codex CLI → MCP (config.toml) │
│ ├── claude.ai / ChatGPT / Gemini → MCP (Funnel + ?token=) │
│ └── custom scripts → REST API │
└────────────────────────────────────────────┘
Embedding calls (Gemini API) are made from the Pi only — clients send raw text, so the API key lives in exactly one place.
For the full data model and phased build plan, see PLAN.md.
Screenshots
| Dashboard | Memories | RAG search | Prompts | Mobile |
|---|---|---|---|---|
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More at the live site: fthsrbst.github.io/mnema
Quick start
Option A: one-click installer
# macOS / Linux
curl -fsSL https://raw.githubusercontent.com/fthsrbst/mnema/master/scripts/install.sh | bash
# Windows
irm https://raw.githubusercontent.com/fthsrbst/mnema/master/scripts/install.ps1 | iex
The installer clones the repo, installs dependencies, builds, and writes a
starter .env.
Option B: manual
git clone https://github.com/fthsrbst/mnema.git
cd mnema
npm ci
npm run build
cp .env.example .env # edit HUB_TOKEN, GEMINI_API_KEY (optional)
npm run dev # http://127.0.0.1:8033
Without GEMINI_API_KEY the server still runs — it falls back to FTS-only
(keyword) search instead of hybrid search. Nothing crashes; you lose semantic
recall until you add a key.
Raspberry Pi deploy
curl -fsSL https://raw.githubusercontent.com/fthsrbst/mnema/master/deploy/setup-pi.sh | bash
This installs Node 22, clones the repo, builds server + web UI, generates a
.env with a random HUB_TOKEN, installs a systemd unit (hub@<user>), and
schedules a nightly backup cron job. See deploy/setup-pi.sh
and deploy/clients.md for details.
Connecting agents
Every agent talks to the same /mcp endpoint. Replace <HUB> with your
server URL (http://127.0.0.1:8033 locally, http://100.x.x.x:8033 on your
tailnet) and <TOKEN> with your HUB_TOKEN.
Claude Code
claude mcp add --transport http --scope user hub <HUB>/mcp \
--header "Authorization: Bearer <TOKEN>"
Cursor / Windsurf (~/.cursor/mcp.json)
{
"mcpServers": {
"hub": {
"url": "<HUB>/mcp",
"headers": { "Authorization": "Bearer <TOKEN>" }
}
}
}
opencode (~/.config/opencode/opencode.json)
{
"mcp": {
"hub": {
"type": "remote",
"url": "<HUB>/mcp",
"headers": { "Authorization": "Bearer <TOKEN>" }
}
}
}
Codex CLI (~/.codex/config.toml)
[mcp_servers.hub]
url = "<HUB>/mcp"
http_headers = { "Authorization" = "Bearer <TOKEN>" }
These four entries are not hand-maintained per client — they all come from
one file, mcp-servers.json, which also lists auxiliary
MCP servers (context7, playwright, sequential-thinking):
{
"servers": {
"hub": {
"url": "$HUB_URL/mcp",
"headers": { "Authorization": "Bearer $HUB_TOKEN" }
}
}
}
Running hub sync on a device resolves $HUB_URL / $HUB_TOKEN from that
device's hub config, writes the result into each detected client's own
config file (~/.claude.json, ~/.cursor/mcp.json, ~/.config/opencode/opencode.json,
~/.codex/config.toml), copies the shared skill set into ~/.claude/skills/,
and updates a managed block in CLAUDE.md / AGENTS.md so every agent knows
the hub exists and when to use it. Full client details:
deploy/clients.md.
Auto-recall hook
This is the feature that makes the shared memory actually get used instead of
sitting unread: Claude Code's UserPromptSubmit hook runs hub recall --hook
on every message you send, before the agent sees it. The hook reads the
prompt from stdin, skips short messages and slash commands, calls
GET /api/recall?q=<prompt>&format=text on the hub with a tight timeout, and
prints back whatever relevant memories/RAG chunks it finds — the agent then
has that context already in front of it, with zero explicit "search your
memory" step from you.
It is deliberately fail-silent: if the hub is unreachable, slow, or returns an
error, the hook exits 0 and your prompt goes through untouched. Auto-recall
can only add context — it can never block or break a conversation.
Wire it up by merging the hooks block from
deploy/claude-code-settings.example.json
into ~/.claude/settings.json:
{
"hooks": {
"UserPromptSubmit": [
{ "hooks": [{ "type": "command", "command": "hub recall --hook", "timeout": 5 }] }
]
}
}
hub sync also writes a managed block into CLAUDE.md / AGENTS.md that
tells the agent when to write back — save decisions with rationale, log
sessions before closing, keep project maps current — so recall and capture
work as a loop, not just a one-way lookup.
Security notes
Mnema's auth model is intentionally simple — read this before exposing it beyond your own machine:
- Single bearer token.
HUB_TOKENin.envgates every request except/health. If it's empty, auth is off entirely (fine for local dev, not for anything else). There's no per-agent scoping or rotation tooling — rotating means changing.env, restarting the service, and updating every connected client by hand. - Two ways to send the token. Most clients send
Authorization: Bearer <token>; platforms that can't attach custom headers (claude.ai, ChatGPT, Gemini) fall back to?token=<HUB_TOKEN>in the URL. Token-in-URL has real trade-offs (browser history, proxy/access logs) — see docs/connectors.md for the full write-up. - Tailscale is the default network boundary. The hub listens on a private
tailnet address; nothing is reachable from the open internet unless you
explicitly run
tailscale funnel. Funnel makes the endpoint fully public — the bearer token becomes the only thing standing between the internet and your memory store, so treat turning it on as a deliberate, temporary action, not a default. /outputsis served without auth, on purpose. Generated media (data/outputs, viaimage_generate/media_generate) and the web UI's static shell are served unauthenticated (express.static, mounted before the token middleware insrc/server/index.ts) so<img>/<video>tags in the dashboard work without token-laced URLs. All data endpoints (/api/*,/mcp) stay behind the bearer check. Don't put anything sensitive indata/outputs.
This is a personal-scale tool, not a hardened multi-tenant service — see the maturity table below for what's actually battle-tested versus rough.
Roadmap
Not built yet, tracked in PLAN.md (Faz 5/6):
hub ask "<question>"— RAG + Gemini Flash, direct terminal Q&A without opening an agent.- Quick capture — a mobile-friendly single-input web UI for dropping a note or link straight into RAG (with auto-fetch + summarize for links).
- Watch mode — re-index a notes/docs folder automatically on change.
hub timeline <project>— chronological dump of a project's decisions and sessions.- Weekly memory-maintenance digest — a cron job that reports stale/conflicting memory entries instead of just letting them accumulate.
- Qdrant migration path —
sqlite-vecis fine to roughly 1M vectors; moving to a dedicated vector store if that ceiling is ever hit is planned, not implemented.
Maturity / honesty table
No inflation — this is what's actually solid versus still rough.
| Area | Status | Notes |
|---|---|---|
| Memory CRUD + hybrid search | Stable | Used daily; FTS-only fallback tested |
| RAG ingest + search | Stable | Chunking is markdown-aware but simple; no re-ranking model |
| Project maps | Stable | YAML + DB sync works; no conflict UI beyond LWW |
| MCP server (tools) | Stable | All tools listed in src/server/mcp.ts are in daily use |
| REST API | Stable | Mirrors MCP tools; used by CLI and web UI |
| Cross-device sync (LWW) | Functional, lightly tested | Works for the author's two-to-three-device setup; not stress-tested for heavy concurrent writes |
| Web UI | Functional | Covers memory/RAG/projects/prompts browsing; not a polished product UI |
| Local LLM orchestration (LM Studio) | Functional | Works when LM Studio is reachable; no retry/queueing beyond basic error handling |
| Media generation (ComfyUI) | Experimental | Works for the author's own workflows; expect to write your own workflows/*.json |
Public connector exposure (Funnel + ?token=) |
Functional, use with care | Token-in-URL is a real trade-off — see docs/connectors.md |
| Auth model | Basic | Single bearer token, no per-agent scoping or rotation automation |
| Backup/restore | Functional | Nightly cron + markdown export exist; restore path is manual |
| Qdrant / larger-scale vector store | Not built | sqlite-vec is fine to roughly 1M vectors; migration path is planned, not implemented |
This is a personal-scale tool built for one user running a handful of devices — it is not hardened for multi-tenant or public deployment beyond the token + Funnel model described above.
License
MIT — see LICENSE.
Установка Ai Hub
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/fthsrbst/mnemaFAQ
Ai Hub MCP бесплатный?
Да, Ai Hub MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Ai Hub?
Нет, Ai Hub работает без API-ключей и переменных окружения.
Ai Hub — hosted или self-hosted?
Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.
Как установить Ai Hub в Claude Desktop, Claude Code или Cursor?
Открой Ai Hub 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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