MCPDatabases

Created By
alvnavraiia year ago
Server to manage different databases engines. For now, only allows SQLite and PostgreSQL databases, but it's easily updatable for another databases engines. This is the STDIO version. But I will uplaod SSE version too. Update this servers its highly encouraged. I hope you enjoy using it as much I making it.
Overview

what is MCPDatabases?

MCPDatabases is a server application designed to manage different database engines, currently supporting SQLite and PostgreSQL. It provides a simple interface for executing various database operations.

how to use MCPDatabases?

To use MCPDatabases, you can run the server and utilize the provided tools to execute queries, insert data, update records, and manage database tables through a command-line interface.

key features of MCPDatabases?

  • Supports multiple database engines (SQLite and PostgreSQL)
  • Provides tools for executing queries, inserting, updating, and deleting records
  • Easily updatable to support additional database engines in the future

use cases of MCPDatabases?

  1. Managing e-commerce databases using PostgreSQL.
  2. Performing data manipulation tasks in SQLite for local applications.
  3. Facilitating database management tasks in development environments.

FAQ from MCPDatabases?

  • What database engines does MCPDatabases support?

Currently, it supports SQLite and PostgreSQL, with plans to add more in the future.

  • How do I run the server?

You can start the server by executing the main script with the appropriate database engine parameters.

  • Is MCPDatabases open-source?

Yes! MCPDatabases is available on GitHub for anyone to use and contribute.

Server Config

{
  "mcpServers": {
    "SqliteManagement": {
      "command": "/home/slendy/MCPProjects/DataBase/.venv/bin/python",
      "args": [
        "/home/slendy/MCPProjects/DataBase/main.py",
        "--engine",
        "sqlite",
        "--url",
        "sqlite:////home/slendy/MCPProjects/DataBase/ecommerce.db"
      ]
    },
    "PostgressManagement": {
      "command": "/home/slendy/MCPProjects/DataBase/.venv/bin/python",
      "args": [
        "/home/slendy/MCPProjects/DataBase/main.py",
        "--engine",
        "postgresql",
        "--url",
        "postgresql://postgres:postgres@localhost:5433/ecommerce"
      ]
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
alvnavraii
Star
-
Language
-
License
-
Category
databases

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