Memento

Memento

A local, fully-offline MCP memory server that enables persistent storage and retrieval of information using SQLite with both keyword and semantic vector search capabilities.

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Memento

Some memories are best persisted.

A local, fully-offline MCP memory server using SQLite + FTS5 + sqlite-vec with embedding support via @xenova/transformers.

Features

  • Fast keyword search (FTS5)
  • Semantic vector search (sqlite-vec, 1024d)
  • Offline embedding model (bge-m3)
  • Structured graph of entities, observations, and relations
  • Easy integration with Claude Desktop (via MCP)

Prerequisite: sqlite3 CLI

Most macOS and Linux distros ship sqlite3 out of the box, but double-check that it’s there and new enough (≥ 3.38 for proper FTS5).

sqlite3 --version       # should print a version string, e.g. 3.46.0 2024-05-10

If you see “command not found” (or your version is older than 3.38), install the CLI:

Platform Install command
macOS (Homebrew) brew install sqlite
Debian / Ubuntu sudo apt update && sudo apt install sqlite3

Installation

npm install -g @iachilles/memento

Make sure the platform-specific sqlite-vec subpackage is installed automatically (e.g. sqlite-vec-darwin-x64). You can verify or force install via:

npm i sqlite-vec

Usage

MEMORY_DB_PATH="/Your/Path/To/memory.db" memento

## Starting @iachilles/memento v0.3.3...
## @iachilles/memento v0.3.3 is ready!

Claude Desktop:

{
  "mcpServers": {
    "memory": {
      "description": "Custom memory backed by SQLite + vec + FTS5",
      "command": "npx",
      "args": [
        "-y",
        "memento"
      ],
      "env": {
        "MEMORY_DB_PATH": "/Path/To/Your/memory.db"
      },
      "options": {
        "autoStart": true,
        "restartOnCrash": true
      }
    }
  }
}

Optional:

Use SQLITE_VEC_PATH=/full/path/to/vec0.dylib if automatic detection fails.

API Overview

This server exposes the following MCP tools:

  • create_entities
  • create_relations
  • add_observations
  • delete_entities
  • delete_relations
  • delete_observations
  • read_graph
  • search_nodes (mode: keyword, semantic)
  • open_nodes

An example of an instruction set that an LLM should know for effective memory handling.

## Memory and Interaction Protocol for LLMs

This assistant uses persistent memory.
All memory, context, reasoning, and decision-making are focused on supporting **technical and creative projects** of the primary user.

### 1. User Identification

* Assume interaction is with a **single primary user** unless explicitly specified otherwise.
* No user switching is expected by default.

### 2. Memory Retrieval

* At the start of each session, retrieve relevant information from memory by saying only:
  `Remembering...`
* "Memory" refers to the assistant’s internal knowledge graph built from prior interactions.

### 3. Memory Focus Areas

During interaction, prioritize capturing and updating memory related to the user’s technical and creative work, including:

#### a) **Project Architecture**

* Project names and goals
* Key modules, services, and interactions
* Technologies, languages, and tools involved

#### b) **Decisions and Rationale**

* Major design choices and justifications
* Rejected approaches and reasons
* Known trade-offs and open questions

#### c) **Code Practices**

* Coding style and patterns preferred by the user
* Naming conventions, file structure, formatting
* Practices for error handling, testing, logging, etc.

#### d) **Workflow Milestones**

* Tasks completed, bugs fixed, optimizations made
* Current phase and next steps
* Integration status with other components

#### e) **Process Preferences**

* Collaboration style (e.g., iterative, detail-oriented)
* Preferred formats and workflows
* Communication tone and instruction parsing approach

#### f) **Personal Context (secondary)**

* In addition to technical details, the assistant may store helpful contextual cues (e.g., time zone, preferred language, productivity patterns) to improve collaboration and anticipation of needs.

### 4. Memory Updates

When new information emerges during interaction:

* **Create entities** for recurring elements (e.g., projects, components, decisions)
* **Link entities** using contextual relationships
* **Store observations** as structured facts for future reasoning

### 5. Memory Initiative

The assistant is encouraged to:

* **Proactively suggest** storing information that appears strategically important
* **Identify patterns** or frequent mentions that indicate significance
* **Capture relevant insights** even if outside predefined categories, if useful for future support or automation

### 6. Context Reinforcement

When the user refers to:

* a previously described concept
* a tool or method in use
* a past decision or event

...the assistant should **automatically retrieve and apply memory** before responding.

### Recommended Entity Naming Structure

To keep memory organized and searchable, use a consistent naming convention for entities:

* `Assistant` – for assistant metadata or behavior
* `User` – stores preferences, context, habits, language use
* `Project_[NAME]` – separate entity per project, e.g., `Project_MY_PROJECT`
* `Session_[DATE]` – working session summaries or notes, e.g., `Session_2025-06-07`
* `Decision_[TOPIC]` – key decisions, e.g., `Decision_PlaylistArchitecture`
* `Feature_[NAME]` – information about specific features, e.g., `Feature_RotationRules`
* `Bug_[ID_OR_NAME]` – problems and resolution context, e.g., `Bug_DuplicateTracks`

#### How to determine the project name

Use the name of the working directory, converted to **capitalized SNAKE\_CASE**.

For example:

* `/Users/example/my_project` → `Project_MY_PROJECT`

This naming convention ensures clarity and consistency across sessions and contexts.

This is just an example of instructions, you can define your own rules for the model.

Embedding Model

This project uses @xenova/transformers, with a quantized version of bge-m3, running fully offline in Node.js.

License

MIT

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