Aleph-10: Vector Memory MCP Server
@bjkemp
About Aleph-10: Vector Memory MCP Server
Vector Memory MCP Server - An MCP server with vector-based memory storage capabilities
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"aleph-10": {
"command": "node",
"args": [
"build/index.js"
]
}
}
}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 Aleph-10: Vector Memory MCP Server?
Aleph-10: Vector Memory MCP Server is a Model Context Protocol server that combines weather data retrieval from the National Weather Service API with vector‑based semantic memory storage. It is intended for developers who need an MCP‑compatible server for both weather information and persistent, searchable memory via embeddings.
How to use Aleph-10: Vector Memory MCP Server?
Install Node.js 18+, pnpm, clone the repository, run pnpm install, configure environment variables in a .env file, then pnpm build and start with node build/index.js. The server exposes tools such as get‑alerts, get‑forecast, memory‑store, memory‑retrieve, memory‑update, memory‑delete, and memory‑stats.
Key features of Aleph-10: Vector Memory MCP Server
- Retrieves weather alerts and forecasts via the National Weather Service API
- Stores and retrieves information using semantic vector search
- Supports both Google Gemini (cloud) and Ollama (local) embedding providers
- Allows metadata to be attached and filtered on memory entries
Use cases of Aleph-10: Vector Memory MCP Server
- Fetching live weather alerts for any US state during an MCP session
- Obtaining weather forecasts for given latitude/longitude coordinates
- Storing conversational context as vector embeddings for later retrieval
- Searching for semantically similar text entries across stored memories
- Updating or deleting individual memory entries by ID
FAQ from Aleph-10: Vector Memory MCP Server
What are the prerequisites to run the server?
Node.js 18.x or higher and the pnpm package manager are required.
How do I configure the embedding provider?
Set the environment variable EMBEDDING_PROVIDER to gemini or ollama. If using Gemini, provide a GEMINI_API_KEY. For Ollama, set OLLAMA_BASE_URL (default: http://localhost:11434).
Where is the vector database stored?
The vector database is stored at the path specified by VECTOR_DB_PATH, which defaults to ./data/vector_db.
What weather data source is used?
Weather data is sourced from the National Weather Service API.
Can I run embeddings locally without an internet connection?
Yes, by setting EMBEDDING_PROVIDER to ollama and running a local Ollama instance.
More Memory & Knowledge MCP servers
mcp-local-rag
nkapila6"primitive" RAG-like web search model context protocol (MCP) server that runs locally. ✨ no APIs ✨
🧠 Ultimate MCP Server
DicklesworthstoneComprehensive MCP server exposing dozens of capabilities to AI agents: multi-provider LLM delegation, browser automation, document processing, vector ops, and cognitive memory systems
JupyterMCP - Jupyter Notebook Model Context Protocol Integration
jjsantos01A Model Context Protocol (MCP) for Jupyter Notebook
Context Portal MCP (ConPort)
GreatScottyMacContext Portal (ConPort): A memory bank MCP server building a project-specific knowledge graph to supercharge AI assistants. Enables powerful Retrieval Augmented Generation (RAG) for context-aware development in your IDE.
Semantic Scholar MCP Server
YUZongminA FastMCP server implementation for the Semantic Scholar API, providing comprehensive access to academic paper data, author information, and citation networks.
Comments