| ▲ | leo3191 a day ago | ||||||||||||||||
Hi all, I'm Nick, Product Manager for Kaggle Benchmarks and one of the co-organizers and judges for this AGI hackathon. First off, I want to set some context on the AGI hackathon. This was co-organized by Kaggle and Google DeepMind, and we had ~20 judges from both organizations. The hackathon concluded on Apr 16 and we had initially anticipated a judging period of 1.5 months (till May 31). However, we ended up extending the judging period by another 1.5 months (to Jul 13) because we wanted to do right by participants. Second, I want to emphasize and unequivocally clarify that every single winning submission went through at least 2 human judges, and in some cases, up to 3-4 human judges. These judges reviewed and scored the submissions independently based on the rubric we highlighted on the hackathon page. Thirdly, I acknowledge that there is always an element of human subjectivity to reviewing qualitative submissions in hackathons. As best we can, we have put in place processes that ensure rigorous human review against objective standards and to reduce the possibility of bias by having multiple independent judges. We understand there may be valid disagreement over outcomes, but hopefully the above context clarifies this was not carelessly outsourced to LLM judges. Thanks, Nick | |||||||||||||||||
| ▲ | x313 17 hours ago | parent | next [-] | ||||||||||||||||
With all due respect, there's zero chance that humans with relevant knowledge scored these themselves. Reading through the winners, every single one is classic vibe-research, with the usual pure-LLM-research patterns: - Grand claims backed by no evidence - Core designs that make zero sense - Pointless graphs that show nothing of interest - Yet endless robustness checks on minor methodological assumptions (especially confidence intervals and t-tests) For example, on the winning entry, not only is the graph completely wrong (as mentioned by the OP), but the interpretation would be nonsensical even if it was (implying bigger models "get more RL"?). And their own results even show the core dataset is worthless, because all their metrics are near-perfectly correlated. There's no way a serious human reader trying to evaluate "is this benchmark useful" would ever miss this. I don't mean to pick on them - all the winning entries seem like there was no human effort put into them. And again, there's no way a human who actually attempted to read and understand these would ever think these are good by even the most minimal of standards. Kaggle is legitimately a really awesome website, as someone who's competed before and won a few contests pre-LLMs. Stuff like this winning devalues the entire product and makes it look like a joke. If almost all entries look like this now, it'd be better to allow for the possibility of no winner. | |||||||||||||||||
| ▲ | hungryhobbit a day ago | parent | prev | next [-] | ||||||||||||||||
Why not address the objective evidence the OP provided? To an impartial observer, it seemed quite overwhelming. | |||||||||||||||||
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| ▲ | Chu4eeno a day ago | parent | prev [-] | ||||||||||||||||
> Second, I want to emphasize and unequivocally clarify that every single winning submission went through at least 2 human judges, and in some cases, up to 3-4 human judges. These judges reviewed and scored the submissions independently based on the rubric we highlighted on the hackathon page. How did you verify this? The results seem to indicate otherwise. | |||||||||||||||||