Vectra MCP Server

Created By
theVuArenaa year ago
An MCP server providing tools to manage and query a Vectra knowledge base, enabling integration with MCP clients via a backend API.
Overview

what is Vectra MCP Server?

Vectra MCP Server is a Model Context Protocol (MCP) server designed for managing and querying a Vectra knowledge base, facilitating integration with MCP-compatible clients through a backend API.

how to use Vectra MCP Server?

To use the Vectra MCP Server, install the necessary dependencies, build the server, and run it. You can then interact with the server using various tools provided for managing collections and querying the knowledge base.

key features of Vectra MCP Server?

  • Create and manage Vectra collections.
  • Embed texts and files into Vectra collections.
  • Query collections using hybrid search capabilities.
  • List and delete files within collections.
  • Fetch specific nodes from the underlying ArangoDB database.

use cases of Vectra MCP Server?

  1. Managing a knowledge base for research and data analysis.
  2. Integrating with applications that require access to a structured knowledge base.
  3. Facilitating data embedding and retrieval for machine learning applications.

FAQ from Vectra MCP Server?

  • What programming language is Vectra MCP Server built with?

Vectra MCP Server is built using TypeScript.

  • How can I install Vectra MCP Server?

You can install it by running npm install after cloning the repository.

  • Is there a license for Vectra MCP Server?

Yes, it is licensed under the AGPL-3.0 license.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
theVuArena
Star
1
Language
TypeScript
License
AGPL-3.0 license

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