17 - Training for Very High Reliability with Daniel Ziegler

Sometimes, people talk about making AI systems safe by taking examples where they fail and training them to do well on those. But how can we actually do this well, especially when we can't use a computer program to say what a 'failure' is? In this episode, I speak with Daniel Ziegler about his research group's efforts to try doing this with present-day language models, and what they learned. Listeners beware: this episode contains a spoiler for the Animorphs franchise around minute 41 (in the 'Fanfiction' section of the transcript).   Topics we discuss, and timestamps:  - 00:00:40 - Summary of the paper  - 00:02:23 - Alignment as scalable oversight and catastrophe minimization  - 00:08:06 - Novel contribtions  - 00:14:20 - Evaluating adversarial robustness  - 00:20:26 - Adversary construction  - 00:35:14 - The task  - 00:38:23 - Fanfiction  - 00:42:15 - Estimators to reduce labelling burden  - 00:45:39 - Future work  - 00:50:12 - About Redwood Research   The transcript: axrp.net/episode/2022/08/21/episode-17-training-for-very-high-reliability-daniel-ziegler.html   Daniel Ziegler on Google Scholar: scholar.google.com/citations?user=YzfbfDgAAAAJ   Research we discuss:  - Daniel's paper, Adversarial Training for High-Stakes Reliability: arxiv.org/abs/2205.01663  - Low-stakes alignment: alignmentforum.org/posts/TPan9sQFuPP6jgEJo/low-stakes-alignment  - Red Teaming Language Models with Language Models: arxiv.org/abs/2202.03286  - Uncertainty Estimation for Language Reward Models: arxiv.org/abs/2203.07472  - Eliciting Latent Knowledge: docs.google.com/document/d/1WwsnJQstPq91_Yh-Ch2XRL8H_EpsnjrC1dwZXR37PC8/edit

Om Podcasten

AXRP (pronounced axe-urp) is the AI X-risk Research Podcast where I, Daniel Filan, have conversations with researchers about their papers. We discuss the paper, and hopefully get a sense of why it's been written and how it might reduce the risk of AI causing an existential catastrophe: that is, permanently and drastically curtailing humanity's future potential. You can visit the website and read transcripts at axrp.net.