Artificial General Intelligence (AGI) Show with Soroush Pour cover image

Ep 14 - Interp, latent robustness, RLHF limitations w/ Stephen Casper (PhD AI researcher, MIT)

Artificial General Intelligence (AGI) Show with Soroush Pour

CHAPTER

Enhancing AI Safety through Latent Adversarial Training

The chapter explores the intersection of interpretability and adversarial robustness in AI systems, emphasizing the importance of latent adversarial training to address challenges in modern LLMs excelling in undesirable tasks. It discusses the ongoing issue of jailbreaks in AI models, particularly concerning the access to sensitive information like bomb-making instructions, and highlights limitations in current fine-tuning and pre-training methods. The speakers delve into the impact of different parameter efficient fine-tuning strategies on model capabilities, emphasizing the need for improved approaches to training large language models for enhanced robustness.

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