MCP Servers for IoT and Memory Management

Created By
MCP-Mirrora year ago
Mirror of
Overview

What is MCP Servers for IoT and Memory Management?

MCP Servers for IoT and Memory Management is a repository that contains two Model Context Protocol (MCP) servers designed for controlling IoT devices and managing memory storage.

How to use MCP Servers?

To use the MCP servers, clone the repository, install the dependencies, configure the environment variables, and run the respective server scripts for IoT and Memory management.

Key features of MCP Servers?

  • IoT Device Control MCP Server:
    • Send commands to IoT devices
    • Query device state and status
    • Subscribe to real-time device updates
    • Support for MQTT protocol
  • Memory Management MCP Server:
    • Save information to long-term memory
    • Retrieve all stored memories
    • Search memories using semantic search

Use cases of MCP Servers?

  1. Home automation and control of smart devices.
  2. Industrial IoT monitoring and remote management.
  3. Conversation history storage and knowledge management.
  4. Contextual awareness in AI applications.

FAQ from MCP Servers?

  • What protocols do the servers support?

The IoT server supports MQTT protocol for device communication.

  • Can I use these servers for any IoT device?

Yes, as long as the device supports the Model Context Protocol.

  • Is there a way to search through stored memories?

Yes, the Memory Management MCP Server allows for semantic search of stored memories.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
MCP-Mirror
Star
0
Language
Python
License
-
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