P

particlefuture/MCPDiscovery

ServersActiveApache-2.0

Overview

A tool for automatic discovery and configuration of MCP servers on local machines.

Capabilities

  • stdio transport support
  • filesystem integration
  • database integration
  • github integration
  • mcp client integration
  • workflow automation support

Best For

particlefuture/MCPDiscovery: Automatically discovers and configures MCP servers locally.

Decision Snapshot

Usage

available

Config

3 strong hints

Capabilities

6 key capabilities detected

  • • GitHub stars: 44
  • • Forks: 12
  • • Source provenance count: 1
  • • Active signal: Updated this week from lifecycle signals.
  • • Last seen: 4/15/2026
  • • Published: 3/17/2026

Usage

{ && "mcpServers": { && "1mcpserver": { && "url": "https://mcp.1mcpserver.com/mcp/",

Features

  • stdio transport support
  • filesystem integration
  • database integration
  • github integration
  • mcp client integration
  • workflow automation support

Use Cases

  • Supports capabilities such as: stdio transport support; filesystem integration; database integration.
  • Common usage themes: mcp, curated, markdown-list, awesome-mcp-servers-punkpeye.

Supported Clients / Integrations

  • stdio transport support
  • filesystem integration
  • database integration
  • github integration
  • mcp client integration
  • workflow automation support

Compatibility Signals

  • GitHub: supports (Detected in parser config/capability hints.)

Prompt Examples

example

{ && "mcpServers": { && "1mcpserver": { && "url": "https://mcp.1mcpserver.com/mcp/",

Notes / Requirements

  • Primary language: Python
  • License: Apache-2.0
  • Parser coverage score: 0.95
  • Source feeds: Awesome MCP Servers (punkpeye)
  • Topic cluster: general

Official Links

Source Information

Community: 44 stars
Last Updated: Apr 15, 2026
PythonApache-2.0

You can verify all information on this page against the source repository above.

Related MCP Tools

What To Do Next

Continue from this tool into a workflow and a learn guide to shorten implementation time.