Log inSign up
Christopher Potts
2,735 posts
Image
user avatar
Christopher Potts
@ChrisGPotts
Stanford Professor of Linguistics and, by courtesy, of Computer Science. Member of technical staff @stanfordnlp and @StanfordAILab. Co-founder @ Bigspin AI.
web.stanford.edu/~cgpotts/
Joined November 2011
724
Following
15.7K
Followers
  • Pinned
    user avatar
    Christopher Potts
    @ChrisGPotts
    Jun 9
    Like any good advisor, I felt duty-bound to defend @aryaman2020 and @ZhengxuanZenWu in this rap battle. However, the SAE diss track I wrote was so devastating as to be unanswerable, so I decided to graciously balance things out with a second verse dissing causal interp.
    Image
    00:00
    Image
    Image
    user avatar
    Aryaman Arora
    @aryaman2020
    Jun 4
    has anyone ever written a diss track of your paper
    17K
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Aug 2, 2023
    According to the first sentence of 100% of the papers I have reviewed this year, large language models have achieved amazing success in recent years. Perhaps we could settle on the abbreviation "Language Models Are Outstanding", so papers could begin "LMAO, but …" to save space.
    64K
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Jan 7, 2022
    I'm extremely grateful to @StanfordOnline for making my 2021 Natural Language Understanding course videos accessible and available on YouTube. I've created a version of the 2021 course site with direct links to the YouTube videos: web.stanford.edu/class/cs224u/2…
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Jul 25, 2019
    The remaining lectures from my Natural Language Understanding course are now up: youtube.com/playlist?list=… I have highest hopes for the contextual word reps one; I tried to methodically walk through those models with diagrams, to supplement the great tutorials already out there.
    Image
    youtube.com
    Stanford CS224U: Natural Language Understanding | Spring 2019
    This project-oriented class is focused on developing systems and algorithms for robust machine understanding of human language. It draws on theoretical conce...
  • user avatar
    Christopher Potts
    @ChrisGPotts
    May 20, 2022
    For my spring NLP/NLU course, I had a series of conversations with outstanding researchers, aiming to provide students a sense for these people and how they think about the field. The conversations were really rewarding, so I turned them into a podcast: web.stanford.edu/class/cs224u/p…
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Mar 20, 2022
    Sad news: Lauri Karttunen passed away peacefully this morning. Lauri was a towering figure in linguistics and NLP, and a vibrant presence at Stanford in Linguistics, @stanfordnlp & @StanfordCSLI. So many observations and concepts that we all take for granted trace to his work!
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Aug 1, 2021
    In nervous anticipation of my #ACL2021NLP keynote, I recorded myself giving my talk, and I've posted that version for people who can't attend the live event. The video has high-quality captions, and you don't particularly need video to follow along:
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Mar 17, 2022
    For my Introduction to Semantics and Pragmatics course at Stanford this quarter, I made screencasts of all the content, with high-quality transcripts, and put them on YouTube. All these videos and associated materials are available here: web.stanford.edu/class/linguist…
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Aug 8, 2025
    For a @GoodfireAI/@AnthropicAI meet-up later this month, I wrote a discussion doc: Assessing skeptical views of interpretability research Spoiler: it's an incredible moment for interpetability research. The skeptical views sound like a call to action to me. Link just below.
    39K
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Aug 21, 2024
    The Linear Representation Hypothesis is now widely adopted despite its highly restrictive nature. Here, @robert_csordas, Atticus Geiger, @chrmanning & I present a counterexample to the LRH and argue for more expressive theories of interpretability:
    arXiv logo
    arxiv.org
    Recurrent Neural Networks Learn to Store and Generate Sequences...
    The Linear Representation Hypothesis (LRH) states that neural networks learn to encode concepts as directions in activation space, and a strong version of the LRH states that models learn only...
    29K
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Jun 19, 2019
    Stanford has begun posting lectures from my course Natural Language Understanding on YouTube (a few are still to come): youtube.com/playlist?list=… I'm actually happiest with the "bake-offs", which don't appear much in the videos but can be found here: web.stanford.edu/class/cs224u/
    Image
    youtube.com
    Stanford CS224U: Natural Language Understanding | Spring 2019
    This project-oriented class is focused on developing systems and algorithms for robust machine understanding of human language. It draws on theoretical conce...
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Oct 5, 2020
    I'll be asking "Is it possible for language models to achieve language understanding?" at an upcoming @StanfordHAI/@OpenAI workshop on GPT-3. My current answer: "We don’t currently have compelling reasons to think they can't":
    Upside-down image of a blue lake above a blue sky with a white raft seeming to hover in the sky.
    Is it possible for language models to achieve language understanding?
    From chrisgpotts.medium.com
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Aug 26, 2024
    Intervention-based approaches to mechanistic interpretability have progressed at an astounding rate recently. In our new paper (a major update to a 2023 ms), we provide a formal framework and show how to express many methods within this framework:
    arXiv logo
    arxiv.org
    Causal Abstraction: A Theoretical Foundation for Mechanistic...
    Causal abstraction provides a theoretical foundation for mechanistic interpretability, the field concerned with providing intelligible algorithms that are faithful simplifications of the known,...
    30K
  • user avatar
    Christopher Potts
    @ChrisGPotts
    Dec 15, 2023
    AI research has progressed so rapidly that a crisis is upon us, much earlier than any of us anticipated: the ACL anthology.bib file is now larger than the largest allowable file size for Overleaf.
    21K

New to X?

Sign up now to get your own personalized timeline!

Create account

By signing up, you agree to the Terms of Service and Privacy Policy, including Cookie Use.

Terms of Service|Privacy Policy|Cookie Policy|Accessibility|Ads info|© 2026 X Corp.
Don't miss what's happening
People on X are the first to know.
Log inSign up
Advertisement
Advertisement