AutoDAN-Turbo
A
Autodan Turbo
Overview :
AutoDAN-Turbo is an automated framework that operates without human intervention, designed to discover and implement various strategies to circumvent the limitations of large language models (LLMs). The framework can automatically develop diverse attack strategies, significantly increasing the success rate of attacks, and integrates existing human-designed jailbreak strategies into a unified framework. Its significance lies in enhancing the security and reliability of LLMs in adversarial environments, offering a new automated approach for red team assessment tools.
Target Users :
The target audience for AutoDAN-Turbo includes security researchers, developers, and professionals interested in the safety of large language models (LLMs). This framework is suitable for them as it provides an automated way to test and enhance LLMs' performance in adversarial environments, helping them to better understand and improve the models' security.
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Use Cases
Security researchers use AutoDAN-Turbo to test the security of a newly developed LLM, discovering multiple effective jailbreak strategies.
Developers integrate existing jailbreak strategies into their products using the AutoDAN-Turbo framework, enhancing security.
Educational institutions utilize AutoDAN-Turbo as a teaching tool to demonstrate to students how to assess and improve the security of LLMs.
Features
Automatically discover and implement jailbreak strategies without human intervention
Significantly increase attack success rates, with an average improvement of 74.3%
Support the integration of existing human-designed jailbreak strategies to further enhance success rates
Compatible with various latest LLMs, including both black-box and white-box models
Provide API compatibility methods, supporting platforms like OpenAI and Claude
Utilize online learning mode for self-exploration of strategies
Automatically develop diverse attack strategies to evaluate the behavior of LLMs
How to Use
1. Clone the AutoDAN-Turbo repository to your local machine.
2. Set environment variables to specify the paths for the attacker, target, scorer, and summarizer LLMs.
3. Run the `main.py` script with the necessary parameters, such as the path to the malicious behavior file, tolerance level, number of iterations, etc.
4. Adjust the hyperparameters of the LLM as needed to suit different testing scenarios.
5. Analyze the logs generated by AutoDAN-Turbo to understand the effectiveness of the attack strategies.
6. Utilize the results from AutoDAN-Turbo to enhance the security and robustness of LLMs.
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