GitHub Configuration

Created By
dmitryanchikova year ago
Mathematical Optimization MCP Server with PuLP and OR-Tools support
Overview

what is MCP Optimizer?

MCP Optimizer is a mathematical optimization server that supports various optimization problem types using PuLP and OR-Tools.

how to use MCP Optimizer?

To use MCP Optimizer, integrate it with LLM clients like Claude Desktop or Cursor, or run it via Docker or pip installation. Configuration involves adding the server details to the client settings.

key features of MCP Optimizer?

  • Supports multiple optimization problem types including linear programming, assignment problems, and financial optimization.
  • Provides integration with various LLM clients and Docker support.
  • Offers comprehensive testing and production-ready architecture.

use cases of MCP Optimizer?

  1. Solving linear programming problems for resource allocation.
  2. Assigning tasks to workers optimally.
  3. Portfolio optimization for investment management.

FAQ from MCP Optimizer?

  • What types of optimization problems can MCP Optimizer solve?

MCP Optimizer can solve linear programming, assignment, transportation, knapsack, routing, scheduling, and financial optimization problems.

  • Is MCP Optimizer easy to integrate with existing systems?

Yes! It provides various integration methods including Docker, pip, and direct LLM client support.

  • How can I test MCP Optimizer?

You can run comprehensive tests included in the repository to ensure functionality.

Server Config

{
  "mcpServers": {
    "mcp-optimizer": {
      "command": "uvx",
      "args": [
        "mcp-optimizer"
      ]
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
dmitryanchikov
Star
0
Language
Python
License
-

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