MCP Time Server

Created By
txbma year ago
Model Context Protocol Time Server - A robust timezone-aware time server implementation
Overview

what is MCP Time Server?

MCP Time Server is a robust timezone-aware time server implementation specifically designed for the Model Context Protocol, facilitating accurate timekeeping across different time zones.

how to use MCP Time Server?

To use the MCP Time Server, install it via pip and run it using the provided Python module command.

key features of MCP Time Server?

  • Full IANA timezone database support for comprehensive timezone management
  • Cross-platform compatibility ensures it works on various operating systems
  • Proper error handling and validation for reliability
  • Async/await implementation for high performance and efficiency
  • Comprehensive test coverage to guarantee quality and performance

use cases of MCP Time Server?

  1. Coordinating event timings across different time zones in distributed applications.
  2. Synchronizing logs and timestamps in applications that operate in multiple regions.
  3. Implementing time-sensitive protocols that require exact timekeeping.

FAQ from MCP Time Server?

  • What is the installation process for MCP Time Server?

You can install it using pip with the command pip install mcp-time-server.

  • Is MCP Time Server compatible with all operating systems?

Yes! It is designed to be cross-platform compatible, working on various environments.

  • How does MCP Time Server ensure accurate timekeeping?

It uses the full IANA timezone database and performs error handling to maintain accuracy.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
txbm
Star
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Language
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License
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