SimpleCalculator using Model Context Protocol (MCP) Server & Docker

Created By
DionBenFernandes-Deva year ago
A demonstration of custom Model Context Protocol (MCP) implementation for arithmetic operations, containerized with Docker for seamless deployment.
Overview

what is SimpleCalculator?

SimpleCalculator is a demonstration of a custom Model Context Protocol (MCP) implementation for performing arithmetic operations, containerized with Docker for seamless deployment.

how to use SimpleCalculator?

To use SimpleCalculator, clone the repository, navigate to the project directory, and run the Docker container using the provided commands.

key features of SimpleCalculator?

  • Custom MCP implementation for handling mathematical operations
  • Supports core operations: Addition, Subtraction, Multiplication, Division
  • Docker-based deployment for easy setup
  • Dependency management using modern Python packaging
  • Basic communication security through container isolation

use cases of SimpleCalculator?

  1. Performing basic arithmetic operations in a containerized environment
  2. Demonstrating the use of custom protocols for mathematical computations
  3. Educational purposes for understanding Docker and MCP implementations

FAQ from SimpleCalculator?

  • What operations can SimpleCalculator perform?

SimpleCalculator can perform addition, subtraction, multiplication, and division.

  • How do I deploy SimpleCalculator?

You can deploy it by cloning the repository and running docker compose up --build.

  • Is there any security implemented in SimpleCalculator?

Yes, it includes basic communication security through container isolation.

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

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