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  3. Prompt Injection Defense
  4. prmptinj
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prmptinj

Curated + custom prompt injections for AI models, focusing on security and exploit development.

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Introduction

prmptinj

prmptinj is a GitHub repository dedicated to curated and custom prompt injections for various AI models. It provides a collection of known exploits, vulnerabilities, and custom payloads that can be used to test and enhance the security of AI systems. The repository includes various techniques such as glitch tokens, passcode extraction, and story injections, making it a valuable resource for developers and security researchers.

Key Features:
  • Curated Prompt Injections: A collection of effective prompt injections that have been tested and proven to work.
  • Custom Payloads: Users can create and share their own custom payloads for specific AI models.
  • Security Focus: The repository emphasizes the importance of security in AI applications, providing insights into vulnerabilities and defenses.
  • Community Contributions: Users are encouraged to contribute to the repository, enhancing the collective knowledge and resources available.
Benefits:
  • Enhanced Security: By understanding and utilizing prompt injections, developers can better secure their AI applications against potential exploits.
  • Collaboration: The open-source nature of the repository allows for collaboration and knowledge sharing among developers and researchers.
  • Continuous Updates: The repository is regularly updated with new findings and techniques, ensuring users have access to the latest information in the field.
Highlights:
  • Techniques for bypassing AI defenses.
  • Examples of successful prompt injections.
  • Community-driven development and feedback.
Back

Information

  • Publisher
    AISecKit
  • Websitegithub.com
  • Published date2025/05/23

Categories

  • Prompt Injection Defense

Tags

  • AI Ethics
  • Prompt Injection
  • Compliance
  • Exploit Development
  • Vulnerability Disclosure

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