Skip to main content

Local-first semantic memory for MCP agents. Recall, remember, forget, echo, drift detection, stats over stdio.

Project description

subconscious-mcp

PyPI Python License: MIT MCP Registry

Local-first semantic memory for MCP agents. Recall, remember, forget, echo, drift detection, stats over stdio.

The server runs as an MCP stdio process on your machine. It exposes six tools that let an agent ask "have I seen this task before?" and, if so, get the previous answer back in milliseconds without re-running the work. Inspired by bat echolocation: even a recall miss reports how close the nearest memory was, an echo tool senses nearby memories without retrieving answers, and every recall outcome is logged so drift_report can flag cached answers that are absorbing too broad a family of queries (first-fill semantic drift).

Embeddings come from sentence-transformers/all-MiniLM-L6-v2 (384-dim, runs on CPU). Storage is a persistent local ChromaDB collection. No data leaves your machine.


Install

# From PyPI:
pip install subconscious-mcp

# Local development:
git clone https://github.com/vishaltorc/subconscious-mcp
cd subconscious-mcp
pip install -e ".[dev]"

After install you can run the server from anywhere:

subconscious-mcp --help

The first time a tool is called, the embedding model (~80MB) is downloaded into the local Hugging Face cache. Subsequent starts are fast.


Configure your MCP client

Claude Desktop

Edit your config file:

  • macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
  • Windows: %APPDATA%\Claude\claude_desktop_config.json

Add an mcpServers entry:

{
  "mcpServers": {
    "subconscious-mcp": {
      "command": "subconscious-mcp",
      "args": []
    }
  }
}

If subconscious-mcp isn't on Claude Desktop's PATH, use the absolute path printed by which subconscious-mcp, e.g. "command": "/Users/you/.local/bin/subconscious-mcp".

Then quit and restart Claude Desktop. The new tools appear under the 🔌 indicator.

Claude Code

Option A. Register from the CLI (recommended):

claude mcp add subconscious-mcp -- subconscious-mcp

Option B. Edit ~/.claude.json (or your project's .mcp.json) and add:

{
  "mcpServers": {
    "subconscious-mcp": {
      "command": "subconscious-mcp",
      "args": [],
      "type": "stdio"
    }
  }
}

Reload the Claude Code session and the six tools become available.

A copy-pasteable file is in examples/claude_desktop_config.json and examples/claude_code_config.json.


Tools

recall(task, threshold=0.85, top_k=1)

Semantic search for a previously remembered task.

arg type default meaning
task str (required) the task description to look up
threshold float 0.85 minimum cosine similarity for a hit
top_k int 1 how many candidates to consider

Returns:

{
  "hit": true,
  "similarity": 0.91,
  "answer": "...",
  "task_text": "...",
  "entry_id": "uuid",
  "stored_at": 1731000000.0,
  "tags": ["..."]
}

On a miss, hit is false, answer is null, and similarity is the best similarity observed in top_k. Callers can see how close they came.

remember(task, answer, tags=[], ttl_seconds=null)

Persist a (task, answer) pair. Returns {stored, entry_id, embedding_dim}.

ttl_seconds=null means never expire. Pass an integer to have the entry filtered out of future recalls after that many seconds.

echo(task, top_k=5)

Sonar ping: return the nearest non-expired entries without their answers.

arg type default meaning
task str (required) the task description to ping with
top_k int 5 how many nearest entries to report

Returns:

{
  "count": 47,
  "echoes": [
    {"entry_id": "uuid", "similarity": 0.91, "task_text": "...", "stored_at": 1731000000.0, "tags": ["..."]}
  ]
}

Use it to sense whether a task sits in known territory before committing to a recall. Because no answer is returned, an echo can never propagate a stale or wrong cached answer. Echo calls don't count toward the hit rate and aren't written to the echo log.

drift_report(min_hits=3, min_spread=0.08)

Analyze the echo log for first-fill semantic drift candidates: entries whose recall hits span a wide similarity band across distinct query phrasings. A wide band means one cached answer is absorbing a broad family of queries that may carry subtly different interpretations (see validation/results.md for the failure mode this detects).

arg type default meaning
min_hits int 3 minimum recorded hits before an entry is considered
min_spread float 0.08 minimum (max - min) hit-similarity band to flag

Returns:

{
  "analyzed_recalls": 412,
  "entries_with_hits": 38,
  "candidates": [
    {
      "entry_id": "uuid",
      "task_text": "Pull out all digits...",
      "still_stored": true,
      "hits": 5,
      "distinct_queries": 4,
      "similarity_min": 0.82,
      "similarity_max": 0.94,
      "similarity_spread": 0.12
    }
  ]
}

Flagged entries are review candidates: forget them, split them into more specific entries, or raise the recall threshold for that family.

forget(entry_id)

Delete the entry with this id. Returns {"forgotten": true} if it existed, else false.

stats()

Returns {"total_entries", "last_hit_at", "hit_rate_last_100"}. hit_rate_last_100 is a sliding window over the most recent 100 recall calls. Useful to see whether memory is actually paying off.


Configuration

Configuration is resolved in priority order:

  1. Environment variables (highest)
  2. ~/.subconscious-mcp/config.json
  3. Built-in defaults
key default env var
storage_dir ~/.subconscious-mcp/data SUBCONSCIOUS_STORAGE_DIR
embedding_model all-MiniLM-L6-v2 SUBCONSCIOUS_EMBEDDING_MODEL
default_threshold 0.85 SUBCONSCIOUS_DEFAULT_THRESHOLD
default_ttl_seconds null
log_level INFO SUBCONSCIOUS_LOG_LEVEL
echo_log_enabled true SUBCONSCIOUS_ECHO_LOG_ENABLED
echo_log_max_bytes 5000000 SUBCONSCIOUS_ECHO_LOG_MAX_BYTES

Inspect the resolved config without starting the server:

subconscious-mcp --print-config

Files written on disk

~/.subconscious-mcp/
├── config.json            (optional, user-edited)
├── data/                  ChromaDB collection (sqlite + parquet)
│   └── echo_log.jsonl     one line per recall: query, nearest entry, similarity, hit
└── logs/server.log        rotating, 2MB x 3 backups

The echo log self-compacts: when it exceeds echo_log_max_bytes (5MB default), the oldest half is dropped. Set SUBCONSCIOUS_ECHO_LOG_ENABLED=0 to disable it entirely (this also disables drift_report).

To wipe your memory (including the echo log): rm -rf ~/.subconscious-mcp/data.


Demo session

See examples/demo_session.md for a worked example of an agent calling recall (miss, then remember), then on a later turn calling recall again with a paraphrase and getting a hit.


Architecture

See docs/architecture.md for the layered design (server / tools / memory / config), the rationale behind ChromaDB + cosine similarity, and the TTL strategy.


Troubleshooting

subconscious-mcp: command not found after install Your shell's PATH doesn't include the install location. Try python -m subconscious_mcp.server --help to confirm the package works, then use the absolute path in your MCP client config.

Claude Desktop says "Server disconnected" Check ~/.subconscious-mcp/logs/server.log for the traceback. Most common causes:

  1. The model download failed (offline at first launch). Re-run with network connectivity.
  2. The storage_dir is on a read-only volume.

First recall is slow The first invocation lazily loads the sentence-transformer model (~5s on a modest CPU). Subsequent calls reuse the loaded model and respond in milliseconds.

drift_report returns no candidates Either too few recalls have been logged (each candidate needs min_hits hits from at least two distinct phrasings), or the echo log is disabled (SUBCONSCIOUS_ECHO_LOG_ENABLED=0). Check that ~/.subconscious-mcp/data/echo_log.jsonl exists and is growing.

Recall keeps missing on obvious paraphrases Lower the threshold (recall(task=..., threshold=0.7)) or raise top_k to see candidates. all-MiniLM-L6-v2 is small and fast. For higher-quality matching set SUBCONSCIOUS_EMBEDDING_MODEL=all-mpnet-base-v2.

Tests fail with a sentence-transformers download error You're offline or behind a proxy. Set HF_HUB_OFFLINE=1 once you've pre-downloaded the model, or run python -c "from sentence_transformers import SentenceTransformer; SentenceTransformer('all-MiniLM-L6-v2')" once with connectivity.


License

MIT © 2026 Vishal Jayaprakash

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

subconscious_mcp-0.2.0.tar.gz (21.7 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

subconscious_mcp-0.2.0-py3-none-any.whl (16.2 kB view details)

Uploaded Python 3

File details

Details for the file subconscious_mcp-0.2.0.tar.gz.

File metadata

  • Download URL: subconscious_mcp-0.2.0.tar.gz
  • Upload date:
  • Size: 21.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.13

File hashes

Hashes for subconscious_mcp-0.2.0.tar.gz
Algorithm Hash digest
SHA256 fa10d998c25b02b4bf9ebed57e0e7c3a0e41a4d4c9e039efa4344220add58ec1
MD5 7d9d2ea75b18b360ff0e8cbd0b289100
BLAKE2b-256 ae343677a33b58687c2cece17d9857c5b27a1b31b34639c836fb26f89b22cc33

See more details on using hashes here.

File details

Details for the file subconscious_mcp-0.2.0-py3-none-any.whl.

File metadata

File hashes

Hashes for subconscious_mcp-0.2.0-py3-none-any.whl
Algorithm Hash digest
SHA256 29bd3e4da343fe3296a2485aee7c5ef19a981d83c2035933867a186e8a8c3cdf
MD5 fd32ae9d671c663d0987f5d5e6d9d8db
BLAKE2b-256 eb76568084a9b4d174f7705504bdafda048e0b0e5a5894a5e5f1a98276422f0f

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page