Basic Memory
    Basic Memory

    Basic Memory

    Basic Memory is a knowledge management system that allows you to build a persistent semantic graph from conversations with AI assistants, stored in standard Markdown files on your computer. Integrates directly with Obsidan.md

    4.3

    GitHub Stats

    Stars

    1123

    Forks

    77

    Release Date

    6/18/2025

    about two weeks ago

    Detailed Description

    License: AGPL v3 PyPI version Python 3.12+ Tests Ruff smithery badge

    Basic Memory

    Basic Memory lets you build persistent knowledge through natural conversations with Large Language Models (LLMs) like Claude, while keeping everything in simple Markdown files on your computer. It uses the Model Context Protocol (MCP) to enable any compatible LLM to read and write to your local knowledge base.

    • Website: https://basicmemory.com
    • Company: https://basicmachines.co
    • Documentation: https://memory.basicmachines.co
    • Discord: https://discord.gg/tyvKNccgqN
    • YouTube: https://www.youtube.com/@basicmachines-co

    Pick up your conversation right where you left off

    • AI assistants can load context from local files in a new conversation
    • Notes are saved locally as Markdown files in real time
    • No project knowledge or special prompting required

    https://github.com/user-attachments/assets/a55d8238-8dd0-454a-be4c-8860dbbd0ddc

    Quick Start

    # Install with uv (recommended)
    uv tool install basic-memory
    
    # or with Homebrew
    brew tap basicmachines-co/basic-memory
    brew install basic-memory
    
    # Configure Claude Desktop (edit ~/Library/Application Support/Claude/claude_desktop_config.json)
    # Add this to your config:
    {
      "mcpServers": {
        "basic-memory": {
          "command": "uvx",
          "args": [
            "basic-memory",
            "mcp"
          ]
        }
      }
    }
    # Now in Claude Desktop, you can:
    # - Write notes with "Create a note about coffee brewing methods"
    # - Read notes with "What do I know about pour over coffee?"
    # - Search with "Find information about Ethiopian beans"
    
    

    You can view shared context via files in ~/basic-memory (default directory location).

    Alternative Installation via Smithery

    You can use Smithery to automatically configure Basic Memory for Claude Desktop:

    npx -y @smithery/cli install @basicmachines-co/basic-memory --client claude
    

    This installs and configures Basic Memory without requiring manual edits to the Claude Desktop configuration file. Note: The Smithery installation uses their hosted MCP server, while your data remains stored locally as Markdown files.

    Add to Cursor

    Once you have installed Basic Memory revisit this page for the 1-click installer for Cursor:

    Install MCP Server

    Glama.ai

    Why Basic Memory?

    Most LLM interactions are ephemeral - you ask a question, get an answer, and everything is forgotten. Each conversation starts fresh, without the context or knowledge from previous ones. Current workarounds have limitations:

    • Chat histories capture conversations but aren't structured knowledge
    • RAG systems can query documents but don't let LLMs write back
    • Vector databases require complex setups and often live in the cloud
    • Knowledge graphs typically need specialized tools to maintain

    Basic Memory addresses these problems with a simple approach: structured Markdown files that both humans and LLMs can read and write to. The key advantages:

    • Local-first: All knowledge stays in files you control
    • Bi-directional: Both you and the LLM read and write to the same files
    • Structured yet simple: Uses familiar Markdown with semantic patterns
    • Traversable knowledge graph: LLMs can follow links between topics
    • Standard formats: Works with existing editors like Obsidian
    • Lightweight infrastructure: Just local files indexed in a local SQLite database

    With Basic Memory, you can:

    • Have conversations that build on previous knowledge
    • Create structured notes during natural conversations
    • Have conversations with LLMs that remember what you've discussed before
    • Navigate your knowledge graph semantically
    • Keep everything local and under your control
    • Use familiar tools like Obsidian to view and edit notes
    • Build a personal knowledge base that grows over time

    How It Works in Practice

    Let's say you're exploring coffee brewing methods and want to capture your knowledge. Here's how it works:

    1. Start by chatting normally:
    I've been experimenting with different coffee brewing methods. Key things I've learned:
    
    - Pour over gives more clarity in flavor than French press
    - Water temperature is critical - around 205°F seems best
    - Freshly ground beans make a huge difference
    

    ... continue conversation.

    1. Ask the LLM to help structure this knowledge:
    "Let's write a note about coffee brewing methods."
    

    LLM creates a new Markdown file on your system (which you can see instantly in Obsidian or your editor):

    ---
    title: Coffee Brewing Methods
    permalink: coffee-brewing-methods
    tags:
    - coffee
    - brewing
    ---
    
    # Coffee Brewing Methods
    
    ## Observations
    
    - [method] Pour over provides more clarity and highlights subtle flavors
    - [technique] Water temperature at 205°F (96°C) extracts optimal compounds
    - [principle] Freshly ground beans preserve aromatics and flavor
    
    ## Relations
    
    - relates_to [[Coffee Bean Origins]]
    - requires [[Proper Grinding Technique]]
    - affects [[Flavor Extraction]]
    

    The note embeds semantic content and links to other topics via simple Markdown formatting.

    1. You see this file on your computer in real time in the current project directory (default ~/$HOME/basic-memory).
    • Realtime sync is enabled by default starting with v0.12.0
    • Project switching during conversations is supported starting with v0.13.0
    1. In a chat with the LLM, you can reference a topic:
    Look at `coffee-brewing-methods` for context about pour over coffee
    

    The LLM can now build rich context from the knowledge graph. For example:

    Following relation 'relates_to [[Coffee Bean Origins]]':
    - Found information about Ethiopian Yirgacheffe
    - Notes on Colombian beans' nutty profile
    - Altitude effects on bean characteristics
    
    Following relation 'requires [[Proper Grinding Technique]]':
    - Burr vs. blade grinder comparisons
    - Grind size recommendations for different methods
    - Impact of consistent particle size on extraction
    

    Each related document can lead to more context, building a rich semantic understanding of your knowledge base.

    This creates a two-way flow where:

    • Humans write and edit Markdown files
    • LLMs read and write through the MCP protocol
    • Sync keeps everything consistent
    • All knowledge stays in local files.

    Technical Implementation

    Under the hood, Basic Memory:

    1. Stores everything in Markdown files
    2. Uses a SQLite database for searching and indexing
    3. Extracts semantic meaning from simple Markdown patterns
      • Files become Entity objects
      • Each Entity can have Observations, or facts associated with it
      • Relations connect entities together to form the knowledge graph
    4. Maintains the local knowledge graph derived from the files
    5. Provides bidirectional synchronization between files and the knowledge graph
    6. Implements the Model Context Protocol (MCP) for AI integration
    7. Exposes tools that let AI assistants traverse and manipulate the knowledge graph
    8. Uses memory:// URLs to reference entities across tools and conversations

    The file format is just Markdown with some simple markup:

    Each Markdown file has:

    Frontmatter

    title: <Entity title>
    type: <The type of Entity> (e.g. note)
    permalink: <a uri slug>
    
    - <optional metadata> (such as tags)
    

    Observations

    Observations are facts about a topic. They can be added by creating a Markdown list with a special format that can reference a category, tags using a "#" character, and an optional context.

    Observation Markdown format:

    - [category] content #tag (optional context)
    

    Examples of observations:

    - [method] Pour over extracts more floral notes than French press
    - [tip] Grind size should be medium-fine for pour over #brewing
    - [preference] Ethiopian beans have bright, fruity flavors (especially from Yirgacheffe)
    - [fact] Lighter roasts generally contain more caffeine than dark roasts
    - [experiment] Tried 1:15 coffee-to-water ratio with good results
    - [resource] James Hoffman's V60 technique on YouTube is excellent
    - [question] Does water temperature affect extraction of different compounds differently?
    - [note] My favorite local shop uses a 30-second bloom time
    

    Relations

    Relations are links to other topics. They define how entities connect in the knowledge graph.

    Markdown format:

    - relation_type [[WikiLink]] (optional context)
    

    Examples of relations:

    - pairs_well_with [[Chocolate Desserts]]
    - grown_in [[Ethiopia]]
    - contrasts_with [[Tea Brewing Methods]]
    - requires [[Burr Grinder]]
    - improves_with [[Fresh Beans]]
    - relates_to [[Morning Routine]]
    - inspired_by [[Japanese Coffee Culture]]
    - documented_in [[Coffee Journal]]
    

    Using with VS Code

    For one-click installation, click one of the install buttons below...

    Install with UV in VS Code Install with UV in VS Code Insiders

    You can use Basic Memory with VS Code to easily retrieve and store information while coding. Click the installation buttons above for one-click setup, or follow the manual installation instructions below.

    Manual Installation

    Add the following JSON block to your User Settings (JSON) file in VS Code. You can do this by pressing Ctrl + Shift + P and typing Preferences: Open User Settings (JSON).

    {
      "mcp": {
        "servers": {
          "basic-memory": {
            "command": "uvx",
            "args": ["basic-memory", "mcp"]
          }
        }
      }
    }
    

    Optionally, you can add it to a file called .vscode/mcp.json in your workspace. This will allow you to share the configuration with others.

    {
      "servers": {
        "basic-memory": {
          "command": "uvx",
          "args": ["basic-memory", "mcp"]
        }
      }
    }
    

    Using with Claude Desktop

    Basic Memory is built using the MCP (Model Context Protocol) and works with the Claude desktop app (https://claude.ai/):

    1. Configure Claude Desktop to use Basic Memory:

    Edit your MCP configuration file (usually located at ~/Library/Application Support/Claude/claude_desktop_config.json for OS X):

    {
      "mcpServers": {
        "basic-memory": {
          "command": "uvx",
          "args": [
            "basic-memory",
            "mcp"
          ]
        }
      }
    }
    

    If you want to use a specific project (see Multiple Projects), update your Claude Desktop config:

    {
      "mcpServers": {
        "basic-memory": {
          "command": "uvx",
          "args": [
            "basic-memory",
            "--project",
            "your-project-name",
            "mcp"
          ]
        }
      }
    }
    
    1. Sync your knowledge:

    Basic Memory will sync the files in your project in real time if you make manual edits.

    1. In Claude Desktop, the LLM can now use these tools:
    write_note(title, content, folder, tags) - Create or update notes
    read_note(identifier, page, page_size) - Read notes by title or permalink
    edit_note(identifier, operation, content) - Edit notes incrementally (append, prepend, find/replace)
    move_note(identifier, destination_path) - Move notes with database consistency
    view_note(identifier) - Display notes as formatted artifacts for better readability
    build_context(url, depth, timeframe) - Navigate knowledge graph via memory:// URLs
    search_notes(query, page, page_size) - Search across your knowledge base
    recent_activity(type, depth, timeframe) - Find recently updated information
    canvas(nodes, edges, title, folder) - Generate knowledge visualizations
    list_memory_projects() - List all available projects with status
    switch_project(project_name) - Switch to different project context
    get_current_project() - Show current project and statistics
    create_memory_project(name, path, set_default) - Create new projects
    delete_project(name) - Delete projects from configuration
    set_default_project(name) - Set default project
    sync_status() - Check file synchronization status
    
    1. Example prompts to try:
    "Create a note about our project architecture decisions"
    "Find information about JWT authentication in my notes"
    "Create a canvas visualization of my project components"
    "Read my notes on the authentication system"
    "What have I been working on in the past week?"
    "Switch to my work-notes project"
    "List all my available projects"
    "Edit my coffee brewing note to add a new technique"
    "Move my old meeting notes to the archive folder"
    

    Futher info

    See the Documentation for more info, including:

    Installation Options

    Stable Release

    pip install basic-memory
    

    Beta/Pre-releases

    pip install basic-memory --pre
    

    Development Builds

    Development versions are automatically published on every commit to main with versions like 0.12.4.dev26+468a22f:

    pip install basic-memory --pre --force-reinstall
    

    Docker

    Run Basic Memory in a container with volume mounting for your Obsidian vault:

    # Clone and start with Docker Compose
    git clone https://github.com/basicmachines-co/basic-memory.git
    cd basic-memory
    
    # Edit docker-compose.yml to point to your Obsidian vault
    # Then start the container
    docker-compose up -d
    

    Or use Docker directly:

    docker run -d \
      --name basic-memory-server \
      -v /path/to/your/obsidian-vault:/data/knowledge:rw \
      -v basic-memory-config:/root/.basic-memory:rw \
      ghcr.io/basicmachines-co/basic-memory:latest
    

    See Docker Setup Guide for detailed configuration options, multiple project setup, and integration examples.

    License

    AGPL-3.0

    Contributions are welcome. See the Contributing guide for info about setting up the project locally and submitting PRs.

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