🗄️ DataBase Project (PostgreSQL & SQLite Management)

Created By
alvnavraiia year ago
MCP Server to manage PostGress and SQLite. In fact, you could use any Database Engine
Overview

What is mcpDataBases?

McpDataBases is a project designed to manage and migrate data between PostgreSQL and SQLite databases, facilitating CRUD operations and administration for applications that require flexibility between different database engines.

How to use mcpDataBases?

To use mcpDataBases, run the MCP server using python3 main.py to access database management tools, or execute the migration script with python3 migrate_postgres_to_sqlite.py to transfer data between databases.

Key features of mcpDataBases?

  • CRUD operations: Create, Read, Update, and Delete records in PostgreSQL database tables.
  • Table management: Easily create, alter, and drop tables.
  • Data migration: Automatically transfer structure and data between PostgreSQL and SQLite.
  • Advanced queries: Run custom SQL queries for analysis or maintenance.

Use cases of mcpDataBases?

  1. Managing user data in an e-commerce application.
  2. Migrating data from PostgreSQL to SQLite for local development.
  3. Performing batch updates and deletions in a database.

FAQ from mcpDataBases?

  • Can mcpDataBases manage other database engines?

Yes! While primarily designed for PostgreSQL and SQLite, it can be adapted for other database engines.

  • Is there a graphical interface for mcpDataBases?

No, mcpDataBases is command-line based, but it provides powerful tools for database management.

  • What are the system requirements?

You need Python 3.8+, PostgreSQL server, and the necessary Python libraries installed.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
alvnavraii
Star
0
Language
Python
License
-
Category
databases

Recommend Servers

View All
Mnemom

14 hours ago
//beforeyouship — LLM Cost Modeling From Your Editor
@Indiegoing

Query realistic LLM cost models without leaving your editor. beforeyouship models the **true monthly cost** of an LLM app architecture — retries, prompt caching, batch discounts, infra overhead, and 3×/10× growth — across GPT-5.x, Claude, Gemini, DeepSeek, and more. Not a token calculator: a planning tool for the design phase, before you commit to a stack. **No API key needed to try it** — demo mode covers the six free-tier models. A Pro key from [beforeyouship.dev](https://beforeyouship.dev) unlocks the full 18-model catalog. ## What you can ask - "How much will a RAG chatbot cost at 10,000 requests/day?" - "Compare Claude Haiku vs Gemini Flash pricing for my workload" - "What's the cheapest model for a multi-step agent at scale?" - "Show me current per-token prices for Anthropic models" ## Tools ### `estimate_cost` Full cost model for an architecture at a given usage level. Returns Naive / Realistic / Worst Case monthly cost per model, 3×/10× growth scenarios, and an opinionated recommendation with reasoning. ### `get_model_prices` Current per-1M-token pricing — input, output, cached input, batch — with context windows and staleness metadata. ### `list_archetypes` Seven preset architecture patterns (simple chatbot, chatbot with history, RAG pipeline, multi-model router, coding assistant, document processor, multi-step agent) used as starting points for estimates. ## Setup **Claude Code:** ​```bash claude mcp add --transport http beforeyouship https://beforeyouship.dev/api/mcp ​``` **Cursor / other clients** — add a remote server: ​```json { "mcpServers": { "beforeyouship": { "type": "streamable-http", "url": "https://beforeyouship.dev/api/mcp" } } } ​``` Add an `Authorization: Bearer bys_...` header with a Pro key for the full catalog. ## Try it > Estimate the monthly cost of a RAG pipeline at 10,000 requests/day

13 hours ago
Docwand

13 hours ago