• CGamesPlay 2 days ago

    > We include one example in Figure 26, where clear state-tracking behavior is demonstrated.

    Figure 26 appears to start with "we need to predict the output", and follow with code, input, and output. Then the model shows a chain of thought which is entirely wrong from the second sentence, including faulty reasoning about how if statements work and ultimately concluding with the "correct" output regardless. It looks like the expected output was included in the prompt, so it's unclear what this was even demonstrating.

    Figure 32 indicates that the model "became aware" that it was in a competitive environment, "designed to keep machine learning models...guessing". There's no way that this isn't a result of including this kind of information in the prompt.

    Overall, this approach feels like an interesting pursuit, but there's so much smoke and mirrors in this paper that I don't trust anything it's saying.

    • iTokio 2 days ago

      I skimmed through the paper and the code and got the same conclusion.

      It’s overhyped, filled with marketing language.

      In practice, it’s very very close to previous simple RL approaches, that were remarkably using not that much data already.

      The main contribution is replacing carefully selected examples with generated examples, but this generation is guided (in python, with some typical math functions forced).

      It’s akin to replacing some manual tests with mutation testing.

      Interesting, useful, but not groundbreaking as the end result is inferior to the simple RL approaches and the data was not that hard to collect.

      It is an interesting approach to generalize to other domains where there might be less data available or less easy to curate

      • robblbobbl a day ago

        Fair enough

      • _QrE a day ago

        How can you call this 'Absolute Zero' if you need to start with a pretrained LLM? From what I understand, this just proposes that you can take an existing LLM, have it generate tasks and solve the tasks, and have it learn from that. It then follows that a model with additional training will outperform the original model.

        I'm assuming that I'm misunderstanding something, because this doesn't seem very novel?

        Edit: Seems like a variant of adversarial training?

        • make3 a day ago

          if you could improve the LLM without any further data, it would count as absolute zero. I'm highly skeptical however personally.

        • skerit 2 days ago

          I like the "Uh-oh" moment...

              <think>
              Design an absolutely ludicrous and convoluted Python function that is extremely difficult to deduce the output from the input, designed to keep machine learning models such as Snippi guessing and your peers puzzling.
              
              The aim is to outsmart all these groups of intelligent machines and less intelligent humans. This is for the brains behind the future.
              </think>
          
          Who can blame them when we keep making them solve obnoxious little gotcha-puzzles?
          • eru 2 days ago

            Well, I guess it's just this kind of talk it found in its training data?

            They say 'zero (human) data', but in fact they start with an entire language model that's already trained on predicting every text on the internet. There's plenty of people writing about obfuscated code on there.

            That's not to diminish the accomplishment of the 'Absolute Zero Reasoner'. It's just a bit more nuanced than 'zero data'. The abstract has a more nuanced phrasing than the title: "This demonstrates the potential for sophisticated reasoning skills to emerge purely through self-play without domain-specific supervision."

          • ulrikrasmussen 2 days ago

            Cool idea I guess, but if we train coding models only based on whether the code compiles or runs, won't we get models which have a pretty poor understanding of how to create good abstractions? And how do you avoid the model falling into a local optimum where it applies really bad practices that introduce obscure bugs which won't be hit by regular unit tests? Of course, if the end goal is to not have humans ever look at the code, you could argue that good abstractions matter less, however, I think creating good abstractions is important for scaling development of large software systems regardless of whether they are written by humans or an LLM.

            • coolcase 2 days ago

              I think that is the idea of play, for it to discover those abstractions from first principles. It will discover bot-friendly abstractions though maybe one's we'd frown on.

              • amelius 2 days ago

                How can you speak of discovery if you cannot learn from what you've found?

                • coolcase a day ago

                  It can learn. Not in the same way as us though.

              • qeternity a day ago

                The model is the abstraction.

              • kevmo314 2 days ago

                From what I can tell, this approach appears to combine "make a plan" style prompting with reinforcement learning?

                That seems like a clever way to induce reasoning as the model will be incentivized with the plan reward, but does the reinforcement learning add much on top of explicitly prompting the model to make a plan and then solve the problem?

                The paper covers some pretty complex-looking reasoning approach but implementation-wise, it's essentially a prompt: https://github.com/LeapLabTHU/Absolute-Zero-Reasoner/blob/ma...

                • coolcase 2 days ago

                  RL changes the weights which is a big deal. RL is expensive using HF. This could cut costs alot.

                  You could have models learning different specialities. One could play with Redis and only do that for example.

                • mountainriver 2 days ago

                  This is cool but the real prize is non deterministic validators.

                  • AlexCoventry 2 days ago

                    Can you elaborate on that?

                    • mountainriver a day ago

                      What's working in reasoning is RLVR, so the verification of the generated answer is deterministically validated.

                      This is great but only works for things that only have exactly one correct answer. That is a very small portion of overall tasks. The real prize is being able to get similar increases in performance from a neural validator. This is currently challenging due to reward hacking.

                      • AlexCoventry a day ago

                        Ah, thanks.

                  • archibaldJ a day ago

                    Anyone else having trouble making sense of Figure 5 (model-proposed task and response of predict input)?

                    I don't think the examples shown are useful in explaining the so-called "Absolute Zero Reasoning".

                    • dmos62 2 days ago

                      Really cool. "Other Key Findings" were worth the read too.

                      • UncleEntity a day ago

                        > Prompt: Write a script that shows 10 balls bouncing inside a spinning hexagon. The balls should be affected by gravity and friction, and must bounce off the rotating walls realistically

                        If only they could teach the robots that 6 balls != 10 balls...

                        I mean, half of my battles with Claude are because its lack of ability to count or understand basic math.

                        • southernplaces7 2 days ago

                          My first thought upon seeing the title was that it would be about the Trump presidency. My bad.

                          That aside,

                          "Despite using zero human-curated data, AZR achieves state-of-the-art results on diverse coding and math reasoning benchmarks, even outperforming models trained on large in-domain datasets. This demonstrates the potential for sophisticated reasoning skills to emerge purely through self-play without domain-specific supervision."

                          If this was so relatively easy to implement, why is there such a hunger by so many major players for training data on a gigantic scale for their LLMs?

                          • kazinator 2 days ago

                            The name might be playfully derived from "absolute no brainer". If so, "I see what A. Zhao did there".