Volatility MCP
Integrates Volatility 3 memory analysis with FastAPI and MCP, exposing memory forensics plugins via REST APIs.
Your AI Assistant in Memory Forensics
Overview
Volatility MCP seamlessly integrates Volatility 3's powerful memory analysis with FastAPI and the Model Context Protocol (MCP). Experience memory forensics without barriers as plugins like pslist and netscan become accessible through clean REST APIs, connecting memory artifacts directly to AI assistants and web applications
Features
- Volatility 3 Integration: Leverages the Volatility 3 framework for memory image analysis.
- FastAPI Backend: Provides RESTful APIs to interact with Volatility plugins.
- Web Front End Support (future feature): Designed to connect with a web-based front end for interactive analysis.
- Model Context Protocol (MCP): Enables standardized communication with MCP clients like Claude Desktop.
- Plugin Support: Supports various Volatility plugins, including
pslistfor process listing andnetscanfor network connection analysis.
Architecture
The project architecture consists of the following components:
- MCP Client: MCP client like Claude Desktop that interacts with the FastAPI backend.
- FastAPI Server: A Python-based server that exposes Volatility plugins as API endpoints.
- Volatility 3: The memory forensics framework performing the analysis.
This architecture allows users to analyze memory images through MCP clients like Claude Desktop. Users can use natural language prompts to perform memory forensics analysis such as show me the list of the processes in memory image x, or show me all the external connections made
Getting Started
Prerequisites
- Python 3.7+ installed on your system
- Volatility 3 binary installed (see Volatility 3 Installation Guide) and added to your env path called VOLATILITY_BIN
Installation
-
Clone the repository:
git clone <repository_url> cd <repository_directory> -
Install the required Python dependencies:
pip install -r requirements.txt -
Start the FastAPI server to expose Volatility 3 APIs:
uvicorn volatility_fastapi_server:app -
Install Claude Desktop (see Claude Desktop
-
To configure Claude Desktop as a volatility MCP client, navigate to Claude → Settings → Developer → Edit Config, locate the claude_desktop_config.json file, and insert the following configuration details
-
Please note that the
-ioption in the config.json file specifies the directory path of your memory image file.{ "mcpServers": { "vol": { "command": "python", "args": [ "/ABSOLUTE_PATH_TO_MCP-SERVER/vol_mcp_server.py", "-i", "/ABSOLUTE_PATH_TO_MEMORY_IMAGE/<memory_image>" ] } } }
Alternatively, update this file directly:
/Users/YOUR_USER/Library/Application Support/Claude/claude_desktop_config.json
Usage
- Start the FastAPI server as described above.
- Connect an MCP client (e.g., Claude Desktop) to the FastAPI server.
- Start the prompt by asking questions regarding the memory image in scope, such as showing me the running processes, creating a tree relationship graph for process x, or showing me all external RFC1918 connections.
Future Features and Enhancements
- Native Volatility Python Integration: Incorporate Volatility Python SDK directly in the code base as opposed to subprocess volatility binary
- Yara Integration: Implement functionality to dump a process from memory and scan it with Yara rules for malware analysis.
- Multi-Image Analysis: Enable the analysis of multiple memory images simultaneously to correlate events and identify patterns across different systems.
- Adding more Volatility Plugins: add more volatility plugins to expand the scope of memory analysis
- GUI Enhancements: Develop a user-friendly web interface for interactive memory analysis and visualization.
- Automated Report Generation: Automate the generation of detailed reports summarizing the findings of memory analysis.
- Advanced Threat Detection: Incorporate advanced techniques for detecting sophisticated threats and anomalies in memory.
Contributing
Contributions are welcome! Please follow these steps to contribute:
- Fork this repository.
- Create a new branch (
git checkout -b feature/my-feature). - Commit your changes (
git commit -m 'Add some feature'). - Push to your branch (
git push origin feature/my-feature). - Open a pull request.
相關伺服器
Scout Monitoring MCP
贊助Put performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
贊助Access financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Hoofy
Your AI development companion. An MCP server that gives your AI persistent memory, structured specifications, and adaptive change management — so it builds what you actually want.
GameCode MCP2
A Model Context Protocol (MCP) server for tool integration, configured using a tools.yaml file.
Xcode MCP
Integrate with Xcode to build and manage your projects.
mistaike.ai
MCP security gateway with DLP scanning (PII, secrets, API keys), prompt injection protection, Memory Vault, Bug Vault (295k+ patterns), and unified audit logging. Two endpoints: free bug search at /mcp and authenticated hub at /hub_mcp.
llm-mcp
A Ruby gem for integrating Large Language Models (LLMs) via the Model Context Protocol (MCP) into development workflows.
Remote MCP Server (Authless)
An example of a remote MCP server deployable on Cloudflare Workers, without authentication.
Berry MCP Server
A universal framework for easily creating and deploying Model Context Protocol servers with any tools.
context-mem
Context optimization for AI coding assistants — 99% token savings via 14 content-aware summarizers, 3-layer search, and progressive disclosure. No LLM dependency.
@mcp-fe/react-tools
Don't let AI guess from screenshots. Give LLMs direct access to your React state, Context, and Data Grids. Features bidirectional communication via SharedWorkers & WebSockets. Docker gateway included.
Jenkins Server MCP
A tool for interacting with Jenkins CI/CD servers, requiring environment variables for configuration.
