SelfMemory
@SelfMemory
About SelfMemory
It is a open-source universal memory engine where users can store and retrieve their AI conversations and context across different models. Users can add memories through MCP, SDK, or a website selfmemory.com Over time, this will evolve into a one-stop memory hub with note-taking
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"SelfMemory": {
"url": "https://mcp.selfmemory.com/mcp/"
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is SelfMemory?
SelfMemory is an open-source universal memory engine that lets users store and retrieve AI conversations and context across different models. It offers multiple access methods—MCP, an SDK, and the website selfmemory.com—and over time it will evolve into a one-stop memory hub with note-taking and chatbot features. For businesses, SelfMemory serves as a knowledge backbone that stores project context, organizational knowledge, documents, and data sources to power company-wide AI systems.
How to use SelfMemory?
Users can add memories through the MCP protocol, an SDK, or directly via the website selfmemory.com. No specific installation or configuration commands are provided in the README.
Key features of SelfMemory
- Open-source universal memory engine
- Store and retrieve AI conversations across models
- Multiple access methods: MCP, SDK, website
- Planned evolution into a memory hub with note-taking and chatbot
- B2B knowledge backbone for organizational data
Use cases of SelfMemory
- Storing and retrieving personal AI conversations across different models
- Maintaining context continuity in multi-model chat workflows
- Building a centralized organizational knowledge base for company-wide AI systems
FAQ from SelfMemory
Is SelfMemory open-source?
Yes, SelfMemory is an open-source universal memory engine.
How can I add memories to SelfMemory?
You can add memories via the MCP protocol, an SDK, or the website selfmemory.com.
What is the future direction of SelfMemory?
It will evolve into a one-stop memory hub featuring note-taking and chatbot capabilities.
Can SelfMemory be used for business applications?
Yes, for B2B it becomes a knowledge backbone that stores project context, organizational knowledge, documents, and data sources to power company-wide AI systems.
Does SelfMemory work with any specific AI model?
The README indicates it works across different models, making it model-agnostic rather than tied to a single provider.
More Memory & Knowledge MCP servers
Jupyter Notebook MCP Server (for Cursor)
jbenoModel Context Protocol (MCP) server designed to allow AI agents within Cursor to interact with Jupyter Notebook (.ipynb) files
MCP Apple Notes
RafalWilinskiTalk with your notes in Claude. RAG over your Apple Notes using Model Context Protocol.
MCP server for Obsidian
MarkusPfundsteinMCP server that interacts with Obsidian via the Obsidian rest API community plugin
JupyterMCP - Jupyter Notebook Model Context Protocol Integration
jjsantos01A Model Context Protocol (MCP) for Jupyter Notebook
Obsidian MCP Server
cyanheadsRead, write, search, and surgically edit Obsidian vault notes, tags, and frontmatter via MCP. STDIO or Streamable HTTP.
Comments