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Fully local semantic memory for AI agents: search your notes and session logs from any MCP client, with embeddings served by Ollama

Project description

local-recall-mcp

Fully local long-term memory for AI agents. Semantic search over your notes and session logs from any MCP client — embeddings served by Ollama, so nothing ever leaves your machine.

Your agent forgets everything between sessions. Your session logs and notes already contain the answers — what worked, what failed, what you decided and why. local-recall-mcp turns those files into a searchable memory the agent can query before repeating old mistakes.

  • 🔒 100% local — no cloud APIs, no keys, no telemetry. Ollama does the embeddings
  • 🪶 One tool, tiny footprint — a single search_memory tool, so it barely costs any agent context
  • Incremental indexing — SHA-256 manifest re-embeds only changed files, purges deleted ones, and self-heals from a corrupted index
  • 🏷️ Section-type filtering — map your headings (e.g. What Did NOT Work) to types like failed, then search only past failures
  • 📦 No database — the whole index is three flat files (manifest.json, chunks.json, vectors.npy)

Quickstart

1. Get Ollama and the embedding model (~1.2 GB, multilingual):

ollama pull bge-m3

2. Create a config at ~/.local-recall/config.yaml:

ollama:
  base_url: http://localhost:11434
  embed_model: bge-m3
  embed_timeout: 300

index_dir: ~/.local-recall/index

sources:
  - path: ~/notes
    pattern: "**/*.md"

3. Register the server with your MCP client. For Claude Code:

claude mcp add recall -- uvx local-recall-mcp

For Claude Desktop (claude_desktop_config.json):

{
  "mcpServers": {
    "recall": {
      "command": "uvx",
      "args": ["local-recall-mcp"]
    }
  }
}

4. Ask your agent things like "search memory for how we fixed the MCP connection issue". The first query builds the index; later queries re-embed only what changed.

Presets

Ready-made configs in configs/:

Preset What it indexes
claude-code.yaml Claude Code session logs (/save-session output) and auto-memory files, with worked / failed / decision / blocker filters
obsidian.yaml An Obsidian vault (or any folder of markdown notes)
budget-csv.yaml Credit-card / bank statement CSVs, one searchable chunk per transaction

Copy one to ~/.local-recall/config.yaml, or point the server at it directly:

claude mcp add recall -- uvx local-recall-mcp --config /path/to/claude-code.yaml

The config path can also be set via the LOCAL_RECALL_CONFIG environment variable.

Configuration reference

ollama:
  base_url: http://localhost:11434   # your Ollama endpoint
  embed_model: bge-m3                # any Ollama embedding model
  embed_timeout: 300                 # seconds; first full build is the slow one

index_dir: ~/.local-recall/index     # where the three index files live

sources:                             # any number of directories
  - path: ~/notes
    pattern: "**/*.md"               # glob, relative to path
  - path: ~/.claude/sessions
    pattern: "*.tmp"

section_rules:                       # optional heading -> type mapping
  - contains: "what worked"          # case-insensitive substring of a ##/### heading
    type: worked
  - contains: "what did not work"
    type: failed

Files are chunked on ##/### headings; files without headings become a single chunk. Each chunk gets a section_type from the first matching rule (other if none match), and the search_memory tool accepts a section_filter to narrow results to one type — the killer use case being "only show me past failures before I try this again."

CSV sources

Any CSV becomes searchable row by row — bank statements, card statements, order-history exports. One record = one chunk, so "when did I start paying Anthropic?" finds the exact transaction.

sources:
  - path: ~/Documents/statements
    pattern: "*.csv"
    type: csv
    encoding: cp932   # optional, default utf-8
    skip_rows: 4      # optional, lines before the header row
    template: "{date} {store} {amount}"   # optional

Without template, rows render as column: value | column: value. CSV chunks get section_type: csv, so section_filter: "csv" narrows results to transactions only.

Scale

  • Unchanged rows are never re-embedded: appending 50 rows to a 20k-row CSV embeds only the 50 new rows (chunk-level embedding reuse).
  • Practical ceiling is roughly 50k chunks (~200 MB of vectors, sub-100ms brute-force search). Beyond that, split your sources.
  • Aggregation ("total spent in May") is out of scope: semantic search recalls records, it does not compute.

How it works

sources (*.md, *.tmp, ...)          ~/.local-recall/index/
        │  SHA-256 per file          ├── manifest.json   path -> hash
        ▼                            ├── chunks.json     title/content/type
   diff vs manifest ──► re-embed ──► └── vectors.npy     float32 matrix
   (changed files only)   (Ollama /api/embed, batched)

query ──► embed ──► cosine top-k over vectors ──► chunks, capped at 600 chars each

No vector database, no background daemon. Sync happens lazily on each search call and is a no-op when nothing changed. A corrupted or misaligned index triggers a full rebuild automatically.

Non-goals

Kept deliberately small — these are out of scope for v0.x:

  • Embedding providers other than Ollama (local-first is the point)
  • External vector databases (flat files comfortably handle tens of thousands of chunks)
  • Reranking or hybrid search (cosine similarity only)
  • Parsers beyond markdown/plain text/CSV (no PDF, no HTML, no xlsx, no JSON)
  • Aggregation over CSV data (recall, not arithmetic)
  • Any GUI

If you need one of these, open an issue describing the use case — real demand is what justifies scope.

Development

git clone https://github.com/Chikoku-NEKO/local-recall-mcp
cd local-recall-mcp
pip install -e .
python -m unittest discover -s tests

Tests run offline against a deterministic fake embedding function.

License

MIT

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