LLM Architecture Gallery

(sebastianraschka.com)

218 points | by tzury 9 hours ago

18 comments

  • libraryofbabel 58 minutes ago
    This is great - always worth reading anything from Sebastian. I would also highly recommend his Build an LLM From Scratch book. I feel like I didn’t really understand the transformer mechanism until I worked through that book.

    On the LLM Architecture Gallery, it’s interesting to see the variations between models, but I think the 30,000ft view of this is that in the last seven years since GPT-2 there have been a lot of improvements to LLM architecture but no fundamental innovations in that area. The best open weight models today still look a lot like GPT-2 if you zoom out: it’s a bunch of attention layers and feed forward layers stacked up.

    Another way of putting this is that astonishing improvements in capabilities of LLMs that we’ve seen over the last 7 years have come mostly from scaling up and, critically, from new training methods like RLVR, which is responsible for coding agents going from barely working to amazing in the last year.

    That’s not to say that architectures aren’t interesting or important or that the improvements aren’t useful, but it is a little bit of a surprise, even though it shouldn’t be at this point because it’s probably just a version of the Bitter Lesson.

  • iroddis 3 hours ago
    This is amazing, such a nice presentation. It reminds me of the Neural Network Zoo [1], which was also a nice visualization of different architectures.

    [1] https://www.asimovinstitute.org/neural-network-zoo/

  • jasonjmcghee 24 minutes ago
    What's the structurally simplest architecture that has worked to a reasonably competitive degree?
    • loveparade 7 minutes ago
      Competitiveness doesn't really come from architecture, but from scale, data, and fine-tuning data. There has been little innovation in architecture over the last few years, and most innovations are for the purpose of making it more efficient to run training or inference (fit in more data), not "fundamentally smarter"
    • bigyabai 19 minutes ago
      If your definition of "competitive" is loose enough, you can write your own Markov chain in an evening. Transformer models rely on a lot of prior art that has to be learned incrementally.
      • jasonjmcghee 5 minutes ago
        Not that loose lol.

        I’m thinking it’s still llama / dense decoder only transformer.

  • gasi 3 hours ago
    So cool — thanks for sharing! Here’s a zoomable version of the diagram: https://zoomhub.net/LKrpB
  • wood_spirit 4 hours ago
    Lovely!

    Is there a sort order? Would be so nice to understand the threads of evolutions and revolution in the progression. A bit of a family tree and influence layout? It would also be nice to have a scaled view so you can sense the difference in sizes over time.

  • nxobject 1 hour ago
    Thank you so much! As a (bio)statistician, I've always wanted a "modular" way to go from "neural networks approximate functions" to a high-level understanding about how machine learning practitioners have engineered real-life models.
  • LuxBennu 1 hour ago
    Interesting collection. The architecture differences show up in surprising ways when you actually look at prompt patterns across models. Longer context windows don't just let you write more, they change what kind of input structure works best.
  • Slugcat 2 hours ago
    What tool was used to draw the diagrams?
  • travisgriggs 1 hour ago
    Darn. I clicked here hoping we were having LLMs design skyscrapers, dams, and bridges.

    I even brought my popcorn :(

  • jrvarela56 1 hour ago
    Would be awesome to see something like this for agents/harnesses
  • neuroelectron 55 minutes ago
    An older post from this blog, the linked article was updated recently: https://news.ycombinator.com/item?id=44622608
  • charcircuit 2 hours ago
    I'm surprised at how similar all of them are with the main differences being the size of layers.
  • mvrckhckr 4 hours ago
    What a great idea and nice execution.
  • useftmly 6 minutes ago
    [dead]
  • isotropic 4 hours ago
    [dead]
  • docybo 4 hours ago
    [dead]
  • SideLineLabs 5 hours ago
    [flagged]
  • FailMore 6 hours ago
    Thanks! This is cool. Can you tell me if you learnt anything interesting/surprising when pulling this together? As in did it teach you something about LLM Architecture that you didn't know before you began?