PromptFuzzer-MCP

Created By
EdenYavina year ago
MCP Server for using Garak LLM vulnerability scanner
Overview

what is PromptFuzzer-MCP?

PromptFuzzer-MCP is a server application designed to utilize the Garak LLM vulnerability scanner for identifying potential vulnerabilities in language models.

how to use PromptFuzzer-MCP?

To use PromptFuzzer-MCP, set up the server and configure it to connect with the Garak LLM. You can then send prompts to the server to analyze and receive feedback on vulnerabilities.

key features of PromptFuzzer-MCP?

  • Integration with Garak LLM for vulnerability scanning
  • Real-time analysis of prompts
  • User-friendly server interface for managing scans

use cases of PromptFuzzer-MCP?

  1. Testing language models for security vulnerabilities.
  2. Assisting developers in improving the robustness of their AI models.
  3. Conducting research on the security aspects of language models.

FAQ from PromptFuzzer-MCP?

  • What is the purpose of PromptFuzzer-MCP?

It is designed to help identify vulnerabilities in language models using the Garak LLM.

  • Is PromptFuzzer-MCP free to use?

Yes! It is open-source and available under the MIT license.

  • How can I contribute to PromptFuzzer-MCP?

You can contribute by reporting issues, submitting pull requests, or improving documentation on its GitHub page.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
EdenYavin
Star
0
Language
-
License
MIT license

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