Google DeepMind 最新播客中,主持人 @fryrsquared 与 @NeelNanda5 探讨了可解释性——逆向工程神经网络学习与思维的科学。核心话题包括:模型链式推理(chain of thought)如同草稿纸,可窥见其推理过程;机制可解释性(mechanistic interpretability);链式推理监控;可解释性技术;模型安全审计;以及可解释性研究的未来方向。播客提供了完整时间戳。
A model's chain of thought acts like a scratch pad, offering a window into its reasoning. 📝
On the latest episode of our podcast, host @fryrsquared sits down with @NeelNanda5 to explore interpretability - the science of reverse engineering how neural networks learn and think.
Timecodes: 00:00 Introduction 02:41 Motivation for interpretability research 04:01 Mechanistic interpretability 08:14 Chain of thought monitoring 18:14 Interpretability techniques 35:00 Auditing models for safety 48:53 What comes next for interpretability