Wireshark-MCP Integration Toolkit

Created By
shubham-s-pandeya year ago
Wireshark Packet Analyzer with MCP Integration This project integrates the MCP (Message Communication Protocol) server with Wireshark to analyze and interact with network packets. The tool enables packet capture, analysis, and management using MCP while leveraging Wireshark's Lua scripting capabilities.
Overview

What is Wireshark-MCP?

Wireshark-MCP is an integration toolkit that combines the capabilities of Wireshark, a popular packet analyzer, with the Message Communication Protocol (MCP) to facilitate advanced network packet analysis and interaction.

How to use Wireshark-MCP?

To use Wireshark-MCP, set up the Python MCP server to manage communication between Wireshark and the MCP. Utilize the Lua extension for real-time packet analysis and dissection.

Key features of Wireshark-MCP?

  • Integration of Wireshark with MCP for enhanced network analysis.
  • Real-time packet dissection and analysis using Lua scripting.
  • CLI interface for packet management and analysis.
  • Smart buffering and file management capabilities.

Use cases of Wireshark-MCP?

  1. Analyzing network traffic in real-time.
  2. Interacting with network packets using natural language through Claude Desktop.
  3. Custom protocol field definitions for specific network analysis needs.

FAQ from Wireshark-MCP?

  • What is the purpose of the Wireshark-MCP integration?

It allows users to analyze and manage network packets more effectively by leveraging the capabilities of both Wireshark and MCP.

  • Is there a demo available for Wireshark-MCP?

Yes! A demo video showcasing the features of Wireshark-MCP is available here.

  • How can I contribute to the project?

You can contribute by raising issues for bugs or feature requests, or by directly contributing code to the project.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
shubham-s-pandey
Star
12
Language
Python
License
GPL-3.0 license

Recommend Servers

View All
Sellerguide

18 hours ago
Thiri Chord Intelligence
@BluesPrince

### Deterministic Music Theory for Claude, Cursor, and Autonomous AI Agents Large Language Models (LLMs) frequently hallucinate music theory, leading to incorrect notes, false Roman numerals, and broken voice leading. **THIRI** solves this by providing a deterministic, mathematical music-theory engine (pitch-class-set theory over ℤ/12) directly to your AI. It gives AI assistants precise, reproducible harmonic reasoning in milliseconds, allowing them to write correct musical scores, analyze progressions, and generate playable arrangements. #### 🎷 Key Features: * **Chord Analysis (`analyze_chord`):** Parse any symbol (e.g., `Cmaj7/E`, `G7#11`) to retrieve root, quality, intervals, Roman numerals, and diatonic or chromatic harmonic functions. * **Note Resolution (`resolve_chord`):** Resolve chord symbols to spelled notes (enharmonically correct), frequencies (Hz), MIDI numbers, and scale recommendations. * **Voicing Engine (`generate_voicing`):** Generate instrument-ready voicings (rootless, shell, triad, pad, drop-2, drop-3) and calculate voice-leading scores for transitions. * **Reharmonization (`reharmonize`):** Substitute progressions using classic jazz techniques, including Tritone Substitution, ii-V Insertion, Modal Interchange, Coltrane Changes, and Backdoor cadences. *Ideal for developers building AI music assistants, digital audio workstation (DAW) agents, educational theory tools, and automated composition workflows.*

2 hours ago