I was playing around with having this model plot orbital trajectories and it was seriously impressive. Other top-tier models would struggle to get functional simulations working. Gemini 2.5 was able to do it after three or four turns in Cursor. It does feel like a meaningful step up in mathematical reasoning and math-dense coding.
On the other hand, if you try to play chess with any of these reasoning models (including Gemini 2.5), it basically doesn't work at all. They keep forgetting where pieces are. Even with rl and sequential thinking on max, they consistently move pieces in impossible ways and mutate the board position.
In a recent test with Gemini 2.5, it used like 1700 thinking tokens to conclude it was in checkmate... but it wasn't. It's going to be very hard to trust these models to do new science or to operate outside of domains humans can verify while this kind of behavior continues.
The vast majority of human chess players need to look at the board to know where the pieces are. Only a few people can know where all the pieces are if you just give them a list of moves. Have you tried evaluations where you give the LLM a representation of the board state at every move, as most human players would have, and which all chess engines track?
This does look like a large relative increase in score, but it seems like it comes from getting zero correct out of 6 to getting 1 and 1/2 correct. I think it's fair to say the sample size here is relatively small. Still, a record is a record! Congrats to the team for a new record!
From my small sample size (tens of queries per day), Gemini 2.5 seems like a noticeable improvement in (almost) every way compared to to previous Gemini models.
Answers do seem to take longer to generate, but well worth the cost.
IceHegel|11 months ago
On the other hand, if you try to play chess with any of these reasoning models (including Gemini 2.5), it basically doesn't work at all. They keep forgetting where pieces are. Even with rl and sequential thinking on max, they consistently move pieces in impossible ways and mutate the board position.
In a recent test with Gemini 2.5, it used like 1700 thinking tokens to conclude it was in checkmate... but it wasn't. It's going to be very hard to trust these models to do new science or to operate outside of domains humans can verify while this kind of behavior continues.
parsimo2010|11 months ago
The vast majority of human chess players need to look at the board to know where the pieces are. Only a few people can know where all the pieces are if you just give them a list of moves. Have you tried evaluations where you give the LLM a representation of the board state at every move, as most human players would have, and which all chess engines track?
falcor84|11 months ago
[0] https://www.letta.com/
adverbly|11 months ago
onlyrealcuzzo|11 months ago
Answers do seem to take longer to generate, but well worth the cost.
jeffbee|11 months ago
"PROOF OR BLUFF? EVALUATING LLMS ON 2025 USA MATH OLYMPIAD"
https://files.sri.inf.ethz.ch/matharena/usamo_report.pdf
Tiberium|11 months ago
unknown|11 months ago
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unknown|11 months ago
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