by agentset-ai
Agentset MCP Server is a component of Agentset, an open-source platform for Retrieval-Augmented Generation (RAG). It helps developers build intelligent, document-based applications by connecting their knowledge base to AI agents.
Agentset MCP Server is a component of Agentset, an open-source platform for Retrieval-Augmented Generation (RAG). It is designed to help developers build intelligent, document-based applications quickly and efficiently by connecting their knowledge base to AI agents with agentic superpowers.
To use the Agentset MCP Server, you need to run it using npx
, yarn dlx
, or pnpm dlx
, providing your Agentset API key and namespace ID as environment variables or command-line arguments. Once running, it can be added to MCP-compatible applications like Claude by configuring the mcpServers
settings in the application's configuration file.
Example Installation and Run Command:
AGENTSET_API_KEY=your-api-key AGENTSET_NAMESPACE_ID=your-namespace-id npx @agentset/mcp
Example Claude Configuration:
{
"mcpServers": {
"agentset": {
"command": "npx",
"args": ["-y", "@agentset/mcp@latest"],
"env": {
"AGENTSET_API_KEY": "agentset_xxx",
"AGENTSET_NAMESPACE_ID": "ns_xxx"
}
}
}
}
As a developer-focused tool, common questions would likely revolve around:
For detailed answers and more information, developers should refer to the official Agentset documentation.
MCP server for Agentset, an open-source platform for Retrieval-Augmented Generation (RAG). Designed for developers who want to build intelligent, document-based applications quickly and efficiently.
using npm:
AGENTSET_API_KEY=your-api-key npx @agentset/mcp --ns your-namespace-id
using yarn:
AGENTSET_API_KEY=your-api-key yarn dlx @agentset/mcp --ns your-namespace-id
using pnpm:
AGENTSET_API_KEY=your-api-key pnpm dlx @agentset/mcp --ns your-namespace-id
{
"mcpServers": {
"agentset": {
"command": "npx",
"args": ["-y", "@agentset/mcp@latest"],
"env": {
"AGENTSET_API_KEY": "agentset_xxx",
"AGENTSET_NAMESPACE_ID": "ns_xxx"
}
}
}
}
Passing namespace id as an environment variable
AGENTSET_API_KEY=your-api-key AGENTSET_NAMESPACE_ID=your-namespace-id npx @agentset/mcp
Passing a custom tool description
AGENTSET_API_KEY=your-api-key npx @agentset/mcp --ns your-namespace-id -d "Your custom tool description"
Passing a tenant id:
AGENTSET_API_KEY=your-api-key npx @agentset/mcp --ns your-namespace-id -t your-tenant-id
Visit the full documentation for more details.
Please log in to share your review and rating for this MCP.
Discover more MCP servers with similar functionality and use cases
by topoteretes
Enables AI agents to store, retrieve, and reason over past conversations, documents, images, and audio transcriptions by loading data into graph and vector databases with minimal code.
by basicmachines-co
Basic Memory is a local-first knowledge management system that allows users to build a persistent semantic graph from conversations with AI assistants. It addresses the ephemeral nature of most LLM interactions by providing a structured, bi-directional knowledge base that both humans and LLMs can read and write to.
by smithery-ai
mcp-obsidian is a connector that allows Claude Desktop to read and search an Obsidian vault or any directory containing Markdown notes.
by qdrant
Provides a semantic memory layer on top of the Qdrant vector search engine, enabling storage and retrieval of information via the Model Context Protocol.
by GreatScottyMac
A database‑backed MCP server that stores project decisions, progress, architecture, custom data, and vector embeddings, allowing AI assistants in IDEs to retrieve precise, up‑to‑date context for generation tasks.
by StevenStavrakis
Enables AI assistants to read, create, edit, move, delete, and organize notes and tags within an Obsidian vault.
by mem0ai
Provides tools to store, retrieve, and semantically search coding preferences via an SSE endpoint for integration with MCP clients.
by graphlit
Enables integration between MCP clients and the Graphlit platform, providing ingestion, retrieval, RAG, and publishing capabilities across a wide range of data sources and tools.
by chroma-core
Provides vector, full‑text, and metadata‑based retrieval powered by Chroma for LLM applications, supporting in‑memory, persistent, HTTP, and cloud clients as well as multiple embedding functions.