Personal Context Technology MCP Server

Created By
mikhasheva year ago
Personal Context Technology for AI Personalization MCP server
Overview

What is Personal Context Technology MCP Server?

The Personal Context Technology MCP Server is a server implementation that allows AI assistants to access and manage personalized context data, enabling more relevant and personalized interactions.

How to use the Personal Context Technology MCP Server?

To use the server, clone the repository, install dependencies, and start the server. Connect it to Claude Desktop by configuring the settings to point to the server's executable.

Key features of the Personal Context Technology MCP Server?

  • Persistent context storage for user preferences and data.
  • Privacy controls to manage data visibility.
  • Section-based access to context data.
  • Tools for updating context information.
  • Version tracking for context changes.

Use cases of the Personal Context Technology MCP Server?

  1. Enhancing AI interactions by providing personalized context.
  2. Managing user preferences for tailored responses.
  3. Supporting multi-user environments with distinct context data.

FAQ from Personal Context Technology MCP Server?

  • Can I use this server with any AI assistant?

Yes, it is designed to work with AI assistants like Claude.

  • Is my data secure?

Yes, you have control over your data and can define privacy settings.

  • How do I update my context data?

Use the updateContext tool to modify specific fields in your context.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
mikhashev
Star
0
Language
TypeScript
License
MIT license

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