Command Palette

Search for a command to run...

UnylyUnyly
Весь каталог

Ctrl Memory

БесплатноНе проверен

A lightweight, local-first MCP memory server for LLM agents that enables storing, searching, and retrieving agent memories with zero external dependencies.

GitHubEmbed

Описание

A lightweight, local-first MCP memory server for LLM agents that enables storing, searching, and retrieving agent memories with zero external dependencies.

README

Lightweight, local-first MCP memory server for LLM agents.

Store, search, and retrieve agent memories with zero external dependencies. Plug it into Hermes, Claude Code, Cursor, or any MCP-compatible client.

pip install ctrl-memory
ctrl-memory-mcp

✨ Features

  • Zero-dependency core — pure Python, no databases, no external services
  • Two backends — JSON files (MVP, zero deps) or SQLite (production, WAL mode)
  • Semantic search — optional sentence-transformers for cosine similarity ranking
  • Hybrid retrieval — keyword recall + vector re-ranking for best precision/recall
  • Fuzzy matching — Damerau-Levenshtein typo tolerance built in
  • Scope filtering — tag-based domain isolation
  • Supersession awareness — automatically filters outdated/obsolete facts
  • Hermes plugin — auto-prefetch context, auto-capture conversation turns
  • MCP stdio server — plug into any MCP-compatible client
  • User isolation — each user's memory is fully separated
  • Cross-session persistence — memories survive between conversations

🚀 Quick start

One-liner install (recommended)

curl -fsSL https://raw.githubusercontent.com/ctrlProgrammer/ctrl-memory-system/main/install.sh | bash

This creates an isolated virtual environment in ~/.local/share/ctrl-memory/, installs ctrl-memory with semantic search, and makes the ctrl-memory-mcp command available globally. No pip install --user or sudo needed.

After install, open a new terminal (or exec $SHELL) and run:

ctrl-memory-mcp

Manual install with pip

# Core (zero deps)
pip install ctrl-memory

# With semantic search
pip install "ctrl-memory[embeddings]"

⚠️ If your system restricts global pip installs (PEP 668), use the one-liner above or install inside a virtual environment:

python3 -m venv .venv
source .venv/bin/activate
pip install "ctrl-memory[embeddings]"

pipx (alternative)

pipx install "ctrl-memory[embeddings]"

Run the MCP server

ctrl-memory-mcp

The server listens on stdin/stdout (MCP stdio transport). It starts when a client connects and exits when the client disconnects — no background daemon.

Check if it's working

In one terminal, start the server:

ctrl-memory-mcp

In another terminal, run:

# 1. Initialize the session
echo '{"jsonrpc":"2.0","id":1,"method":"initialize","params":{"protocolVersion":"2024-11-05","capabilities":{}}}' | ctrl-memory-mcp

# 2. Add a fact
echo '{"jsonrpc":"2.0","id":2,"method":"tools/call","params":{"name":"add_memory","arguments":{"user_id":"alice","content":"Alice prefers Fastify over Express"}}}' | ctrl-memory-mcp

# 3. Search
echo '{"jsonrpc":"2.0","id":3,"method":"tools/call","params":{"name":"search_memory","arguments":{"user_id":"alice","query":"web framework"}}}' | ctrl-memory-mcp

💡 For Hermes users: the plugin activates automatically when you start a new conversation. No need to run ctrl-memory-mcp separately. Memory is stored per-user across sessions.


🔄 Updating

# If you used the one-liner installer — just re-run it (upgrades in-place):
curl -fsSL https://raw.githubusercontent.com/ctrlProgrammer/ctrl-memory-system/main/install.sh | bash

# If you used pip:
pip install --upgrade "ctrl-memory[embeddings]"

# If you used pipx:
pipx upgrade ctrl-memory

📦 Backends

JSON backend (default)

  • Zero dependencies
  • One file per user: ~/.ctrl-memory/<user_id>.json
  • Auto-increment IDs, append-only writes
  • Best for: MVP, personal use, <1000 facts

SQLite backend

  • Single .db file with WAL mode
  • Indexed queries, ACID transactions
  • Embedding storage for semantic search
  • Best for: production, multi-user, >1000 facts
ctrl-memory-mcp --backend sqlite

🧠 Semantic search

When sentence-transformers is installed, ctrl-memory automatically enables:

  • Auto-embedding — facts are vectorized at write time (384-dim all-MiniLM-L6-v2)
  • Hybrid search — keyword candidates → cosine similarity re-ranking → sorted by relevance
  • Score filtering — configurable min_score threshold to filter weak matches
pip install "ctrl-memory[embeddings]"

No flags needed — detection is automatic.


🔌 Hermes Agent plugin

ctrl-memory ships with a native Hermes Agent provider.

Install

# Copy the plugin
cp -r hermes_provider ~/.hermes/hermes-agent/plugins/memory/ctrl-memory/

Configure

Add to ~/.hermes/config.yaml:

memory:
  provider: ctrl-memory
  config:
    backend: sqlite       # or json (default)
    db_path: ~/.hermes/memory.db

The plugin provides:

  • Automatic prefetch — relevant context injected before every LLM turn
  • Turn capture — facts extracted from conversations and stored
  • 4 toolsadd_memory, search_memory, delete_memory, memory_status

🔧 MCP tools

Tool Description
add_memory Store a new fact with optional metadata tags
search_memory Hybrid keyword + semantic search
get_fact Retrieve a specific fact by ID
list_facts List all facts for a user with pagination
update_fact Edit an existing fact (re-embeds if semantic enabled)
delete_fact Remove a fact (cleans up embedding)
count_facts Get total fact count for a user
search_memory_semantic Pure cosine similarity search (uses embeddings)

🏗️ Architecture

┌─────────────────────────────────────┐
│          MCP Client                  │
│  (Hermes, Claude Code, Cursor...)   │
└──────────────┬──────────────────────┘
               │ stdio JSON-RPC
┌──────────────▼──────────────────────┐
│        mcp_server.py                │
│     MCP stdio transport layer       │
└──────────────┬──────────────────────┘
               │
┌──────────────▼──────────────────────┐
│       memory_backend.py             │
│  ┌─────────┐  ┌──────────┐         │
│  │ JSON    │  │ SQLite   │         │
│  │ Store   │  │ Store    │         │
│  └─────────┘  └────┬─────┘         │
│                    │                │
│  ┌─────────────────▼──────────┐     │
│  │    EmbeddingEngine          │     │
│  │  (optional, auto-detect)   │     │
│  └────────────────────────────┘     │
└─────────────────────────────────────┘

Search flow

Query
  │
  ▼
1. Keyword search (token-OR with stop-word filter)
  │
  ├── No results? → Fuzzy fallback (Damerau-Levenshtein)
  │
  ▼
2. Cosine similarity re-ranking (if embeddings available)
  │
  ▼
3. Scope filtering (if tags match)
  │
  ▼
4. Supersession filtering (remove obsolete facts)
  │
  ▼
5. Sort by score, return top N

📊 Benchmark results

Tested against PrecisionMemBench — 77 retrieval scenarios across alias resolution, fuzzy matching, scope isolation, noise resistance, supersession chains, and budget constraints.

Score: 54 / 77 ✅ (70% passing)

Phase Passing Δ
Base keyword search 9 / 77
Hybrid keyword + cosine 42 / 77 +33
+ Damerau-Levenshtein fuzzy 43 / 77 +1
+ Scope filtering 49 / 77 +6
+ Supersession filtering 54 / 77 +5

What passes (54 tests)

Category Tests
Alias resolution k8s → Kubernetes, GHA → GitHub Actions, ReactJS → React, POV → point of view, DLQ → dead letter queue, base class → composition-inheritance, exceptions → error handling, 2-word shingles
Exact match repository-layer, canonical name, long query (400+ chars)
Scope filtering Redis-in-writing returns character not datastore, code-scope doesn't leak writing, cross-scope blocked, user-edited respects scope, scope bleed protection
Supersession SQLAlchemy superseded by MongoDB hidden, TSLint→ESLint→Biome chain resolves to terminal, resolved_at beliefs excluded, pinned+resolved excluded from questions
Fuzzy matching All-caps case-insensitive (REACTJS), typo prefix guard, scope-aware fuzzy filtering
Messy queries Filler-heavy extraction, compound surfaces 2 beliefs, negation still surfaces topic, all-caps case insensitive
Budget/limits Ceiling eviction, zero graceful, one pinned wins, recency tiebreak
Edge cases Cold start, empty query, whitespace query, short query passthrough, short query score clears, empty alias content path
User isolation Other-user beliefs never leak
Universal scope Persona prelude, explicit query with no relevant, zero-reinforcement fresh belief surfaces

What fails (23 tests) — root causes

Cause Tests Why
Token bleeding 8 Generic query tokens match too many facts (e.g. "kube" finds multiple)
Relation expansion 4 "auth depends on redis" — not yet implemented
Cap stress 3 6+ entities in single query needs NLP extraction
Ranking weights 2 canonical_name should outrank content match
Multi-scope Redis 2 Redis in both code+writing scopes needs per-scope dedup
Fuzzy edge cases 2 k9s vs k8s prefix guard, single-edit with token bleed
Other 2 why_it_matters not indexed, type isolation routing

Comparison with other providers

Provider Passing Precision Dependencies
tenure (reference) 77 / 77 1.00 MongoDB Atlas Search (BM25, shingles, fuzzy)
ctrl-memory 54 / 77 ~0.70 Zero external deps
okf ~30 / 77 ~0.47 PostgreSQL
supermemory ~21 / 77 ~0.22 Supabase + API
yourmemory ~21 / 77 ~0.17 MongoDB
mem0 ~9 / 77 ~0.06 Qdrant + API

Second place among all tested providers. ctrl-memory achieves this with zero external dependencies — no databases, no APIs, no cloud services.


🧪 Development

# Clone
git clone https://github.com/ctrl-alt-dev/ctrl-memory
cd ctrl-memory

# Setup
python3 -m venv .venv
source .venv/bin/activate
pip install -e ".[embeddings]"

# Test
python3 -m unittest discover tests -v

# Run benchmark
cd /tmp
git clone https://github.com/tenurehq/precisionMemBench
cd precisionMemBench
MEMORY_PROVIDER=ctrl-memory CTRL_MEMORY_URL=http://localhost:8000 \
  RESEED=true npx ava src/retrieval.external.eval.test.ts --timeout 10m

Test suite

File Tests What it covers
test_memory_backend.py 23 JSON store CRUD, search, user isolation
test_sqlite_store.py 25 SQLite store CRUD, search, embeddings
test_mcp_server.py 24 MCP protocol, JSON-RPC, tool dispatch
test_embeddings.py 24 Embedding engine, cosine similarity
test_hermes_provider.py 24 Plugin lifecycle, tools, prefetch

116 tests total (105 run, 11 skip without sentence-transformers).


📄 License

MIT

from github.com/ctrlProgrammer/ctrl-memory-system

Установка Ctrl Memory

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/ctrlProgrammer/ctrl-memory-system

FAQ

Ctrl Memory MCP бесплатный?

Да, Ctrl Memory MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Ctrl Memory?

Нет, Ctrl Memory работает без API-ключей и переменных окружения.

Ctrl Memory — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить Ctrl Memory в Claude Desktop, Claude Code или Cursor?

Открой Ctrl Memory на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

Похожие MCP

Compare Ctrl Memory with

Не уверен что выбрать?

Найди свой стек за 60 секунд

Автор?

Embed-бейдж для README

Похожее

Все в категории ai