universal-memory-mcp
Persistent memory MCP server for AI agents, using SQLite with hybrid keyword and semantic search for long-term memory storage.
README
universal-memory-mcp
Persistent memory MCP server for single and multi-agent LLM systems. Gives AI agents long-term memory backed by SQLite with hybrid keyword + semantic search.
Features
- Memory types: episodic (events/logs), semantic (facts/knowledge), procedural (how-to/workflows)
- Hybrid search: FTS5 keyword search + cosine similarity over embeddings, with configurable weights
- Knowledge graph: directed links between memories (caused_by, related_to, contradicts, supports, follows) with BFS traversal
- Session checkpoints: save/restore agent state across conversations
- Multi-agent support: scope memories by agent_id, session_id, or share globally
- Optimistic locking: safe concurrent updates with version conflict detection
- Pluggable embeddings: HuggingFace transformers (in-process) or llama-server (external HTTP)
Install
uv sync
Usage
Run as an MCP server (stdio transport):
uv run python server.py
Or via the wrapper script:
./run.sh
Claude Code config
Add to your MCP settings (~/.claude/settings.json or project .mcp.json):
{
"mcpServers": {
"memory": {
"command": "uv",
"args": ["run", "--directory", "/path/to/universal-memory-mcp", "python", "server.py"]
}
}
}
Configuration
All settings via environment variables (prefix MEMORY_):
| Variable | Default | Description |
|---|---|---|
MEMORY_DATABASE_PATH |
./memory.db |
SQLite database path |
MEMORY_EMBEDDING_BACKEND |
transformers |
transformers or llama-server |
MEMORY_EMBEDDING_MODEL |
sentence-transformers/all-MiniLM-L6-v2 |
HuggingFace model name |
MEMORY_EMBEDDING_DIMENSION |
384 |
Embedding vector size |
MEMORY_LLAMA_SERVER_URL |
http://localhost:8787 |
llama-server endpoint |
MEMORY_ENABLE_EMBEDDINGS |
true |
Set false for keyword-only search |
MEMORY_KEYWORD_WEIGHT |
0.4 |
Hybrid search keyword weight |
MEMORY_SEMANTIC_WEIGHT |
0.6 |
Hybrid search semantic weight |
Using llama-server backend
For lower memory usage with a GGUF model:
llama-server --model embeddinggemma-300m-Q4_0.gguf --port 8787 --embedding --ctx-size 512
MEMORY_EMBEDDING_BACKEND=llama-server MEMORY_EMBEDDING_DIMENSION=768 uv run python server.py
MCP Tools
| Tool | Description |
|---|---|
store_memory |
Store a memory with type, agent/session scope, importance |
recall_memories |
Hybrid/keyword/semantic search with filters |
get_memory |
Retrieve a memory by ID |
update_memory |
Update with optimistic locking |
delete_memory |
Delete a memory and its links |
link_memories |
Create directed graph links between memories |
get_linked_memories |
Traverse the memory graph (BFS) |
create_session |
Create or resume a session |
checkpoint_session |
Save agent state checkpoint |
restore_session |
Restore from checkpoint |
get_stats |
Memory system statistics |
Tests
uv run pytest
License
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