MCP Server the Character Vector Database

Created By
HarmoniaEpica year ago
Overview

What is MCP Server Character Vector Database?

MCP Server Character Vector Database is a comprehensive vector database system designed to manage the complex internal states, emotions, relationships, and memories of agentic AI characters. It integrates with AI assistants through the Model Context Protocol (MCP).

How to use MCP Server Character Vector Database?

To use the MCP Server, clone the repository, install the dependencies, and run the server using the command python main.py. You can also run it in test mode with python main.py test.

Key features of MCP Server Character Vector Database?

  • 🧠 Complete Character Management: Comprehensive profiles including personality traits, values, goals, fears, and existential parameters.
  • 🔄 Session Continuity: Save and restore states between sessions.
  • 🌊 Vibration Pattern Analysis: Modeling internal dynamics using secure entropy and pink noise.
  • 📚 Document Integration: Load and search system documentation.
  • 🔒 Security Focused: Safe implementation without dynamic compilation, pickle, or subprocess calls.
  • 🎯 MCP Compatible: Seamless integration with the Model Context Protocol.

Use cases of MCP Server Character Vector Database?

  1. Managing complex AI character profiles for interactive storytelling.
  2. Analyzing emotional dynamics in AI interactions.
  3. Integrating AI characters into games or simulations with persistent states.

FAQ from MCP Server Character Vector Database?

  • Can I use this database for any AI character?

Yes! It is designed to manage various types of AI characters with complex internal states.

  • Is there a cost to use the MCP Server?

No! The MCP Server is open-source and free to use under the MIT license.

  • What programming language is required?

The MCP Server is built using Python 3.8 or higher.

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

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