Artwork

Content provided by Daniel Filan. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Daniel Filan or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.
Player FM - Podcast App
Go offline with the Player FM app!

21 - Interpretability for Engineers with Stephen Casper

1:56:02
 
Share
 

Manage episode 362189720 series 2844728
Content provided by Daniel Filan. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Daniel Filan or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

Lots of people in the field of machine learning study 'interpretability', developing tools that they say give us useful information about neural networks. But how do we know if meaningful progress is actually being made? What should we want out of these tools? In this episode, I speak to Stephen Casper about these questions, as well as about a benchmark he's co-developed to evaluate whether interpretability tools can find 'Trojan horses' hidden inside neural nets.

Patreon: patreon.com/axrpodcast

Ko-fi: ko-fi.com/axrpodcast

Topics we discuss, and timestamps:

- 00:00:42 - Interpretability for engineers

- 00:00:42 - Why interpretability?

- 00:12:55 - Adversaries and interpretability

- 00:24:30 - Scaling interpretability

- 00:42:29 - Critiques of the AI safety interpretability community

- 00:56:10 - Deceptive alignment and interpretability

- 01:09:48 - Benchmarking Interpretability Tools (for Deep Neural Networks) (Using Trojan Discovery)

- 01:10:40 - Why Trojans?

- 01:14:53 - Which interpretability tools?

- 01:28:40 - Trojan generation

- 01:38:13 - Evaluation

- 01:46:07 - Interpretability for shaping policy

- 01:53:55 - Following Casper's work

The transcript: axrp.net/episode/2023/05/02/episode-21-interpretability-for-engineers-stephen-casper.html

Links for Casper:

- Personal website: stephencasper.com/

- Twitter: twitter.com/StephenLCasper

- Electronic mail: scasper [at] mit [dot] edu

Research we discuss:

- The Engineer's Interpretability Sequence: alignmentforum.org/s/a6ne2ve5uturEEQK7

- Benchmarking Interpretability Tools for Deep Neural Networks: arxiv.org/abs/2302.10894

- Adversarial Policies beat Superhuman Go AIs: goattack.far.ai/

- Adversarial Examples Are Not Bugs, They Are Features: arxiv.org/abs/1905.02175

- Planting Undetectable Backdoors in Machine Learning Models: arxiv.org/abs/2204.06974

- Softmax Linear Units: transformer-circuits.pub/2022/solu/index.html

- Red-Teaming the Stable Diffusion Safety Filter: arxiv.org/abs/2210.04610

Episode art by Hamish Doodles: hamishdoodles.com

  continue reading

56 episodes

Artwork
iconShare
 
Manage episode 362189720 series 2844728
Content provided by Daniel Filan. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Daniel Filan or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

Lots of people in the field of machine learning study 'interpretability', developing tools that they say give us useful information about neural networks. But how do we know if meaningful progress is actually being made? What should we want out of these tools? In this episode, I speak to Stephen Casper about these questions, as well as about a benchmark he's co-developed to evaluate whether interpretability tools can find 'Trojan horses' hidden inside neural nets.

Patreon: patreon.com/axrpodcast

Ko-fi: ko-fi.com/axrpodcast

Topics we discuss, and timestamps:

- 00:00:42 - Interpretability for engineers

- 00:00:42 - Why interpretability?

- 00:12:55 - Adversaries and interpretability

- 00:24:30 - Scaling interpretability

- 00:42:29 - Critiques of the AI safety interpretability community

- 00:56:10 - Deceptive alignment and interpretability

- 01:09:48 - Benchmarking Interpretability Tools (for Deep Neural Networks) (Using Trojan Discovery)

- 01:10:40 - Why Trojans?

- 01:14:53 - Which interpretability tools?

- 01:28:40 - Trojan generation

- 01:38:13 - Evaluation

- 01:46:07 - Interpretability for shaping policy

- 01:53:55 - Following Casper's work

The transcript: axrp.net/episode/2023/05/02/episode-21-interpretability-for-engineers-stephen-casper.html

Links for Casper:

- Personal website: stephencasper.com/

- Twitter: twitter.com/StephenLCasper

- Electronic mail: scasper [at] mit [dot] edu

Research we discuss:

- The Engineer's Interpretability Sequence: alignmentforum.org/s/a6ne2ve5uturEEQK7

- Benchmarking Interpretability Tools for Deep Neural Networks: arxiv.org/abs/2302.10894

- Adversarial Policies beat Superhuman Go AIs: goattack.far.ai/

- Adversarial Examples Are Not Bugs, They Are Features: arxiv.org/abs/1905.02175

- Planting Undetectable Backdoors in Machine Learning Models: arxiv.org/abs/2204.06974

- Softmax Linear Units: transformer-circuits.pub/2022/solu/index.html

- Red-Teaming the Stable Diffusion Safety Filter: arxiv.org/abs/2210.04610

Episode art by Hamish Doodles: hamishdoodles.com

  continue reading

56 episodes

All episodes

×
 
Loading …

Welcome to Player FM!

Player FM is scanning the web for high-quality podcasts for you to enjoy right now. It's the best podcast app and works on Android, iPhone, and the web. Signup to sync subscriptions across devices.

 

Quick Reference Guide

Copyright 2025 | Privacy Policy | Terms of Service | | Copyright
Listen to this show while you explore
Play