HubSpot MCP Server

Created By
peakmojoa year ago
A Model Context Protocol (MCP) server that enables AI assistants to interact with HubSpot CRM data, providing built-in vector storage and caching mechanisms help overcome HubSpot API limitations while improving response times.
Overview

What is HubSpot MCP Server?

HubSpot MCP Server is a Model Context Protocol (MCP) server that enables AI assistants to interact seamlessly with HubSpot CRM data, enhancing the efficiency of data retrieval and management.

How to use HubSpot MCP Server?

To use the HubSpot MCP Server, deploy it via Docker with your HubSpot access token, allowing AI assistants to access and manage HubSpot data directly.

Key features of HubSpot MCP Server?

  • Direct access to HubSpot CRM data for AI assistants.
  • Built-in vector storage using FAISS for semantic search capabilities.
  • Zero configuration required for deployment, ensuring ease of use.
  • Tools for creating contacts and companies, retrieving activity, and searching data.

Use cases of HubSpot MCP Server?

  1. Creating HubSpot contacts and companies from LinkedIn profiles.
  2. Retrieving recent engagement data for contacts and companies.
  3. Performing semantic searches across previously retrieved HubSpot data.

FAQ from HubSpot MCP Server?

  • Can I use HubSpot MCP Server without a HubSpot account?

No, a HubSpot account with the necessary access token is required to use the server.

  • Is there any configuration needed for deployment?

No, the server is designed for zero configuration deployment using Docker.

  • What programming language is used for HubSpot MCP Server?

The server is developed in Python.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
peakmojo
Star
56
Language
Python
License
MIT license

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