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Friday, March 14, 2025

Did xAI lie about Grok 3’s benchmarks?


Debates over AI benchmarks — and the way they’re reported by AI labs — are spilling out into public view.

This week, an OpenAI worker accused Elon Musk’s AI firm, xAI, of publishing deceptive benchmark outcomes for its newest AI mannequin, Grok 3. One of many co-founders of xAI, Igor Babushkin, insisted that the corporate was in the best.

The reality lies someplace in between.

In a publish on xAI’s weblog, the corporate revealed a graph exhibiting Grok 3’s efficiency on AIME 2025, a set of difficult math questions from a latest invitational arithmetic examination. Some specialists have questioned AIME’s validity as an AI benchmark. However, AIME 2025 and older variations of the check are generally used to probe a mannequin’s math potential.

xAI’s graph confirmed two variants of Grok 3, Grok 3 Reasoning Beta and Grok 3 mini Reasoning, beating OpenAI’s best-performing obtainable mannequin, o3-mini-high, on AIME 2025. However OpenAI workers on X had been fast to level out that xAI’s graph didn’t embody o3-mini-high’s AIME 2025 rating at “cons@64.”

What’s cons@64, you may ask? Effectively, it’s quick for “consensus@64,” and it principally provides a mannequin 64 tries to reply every downside in a benchmark and takes the solutions generated most regularly as the ultimate solutions. As you may think about, cons@64 tends to spice up fashions’ benchmark scores fairly a bit, and omitting it from a graph may make it seem as if one mannequin surpasses one other when in actuality, that’s isn’t the case.

Grok 3 Reasoning Beta and Grok 3 mini Reasoning’s scores for AIME 2025 at “@1” — which means the primary rating the fashions bought on the benchmark — fall beneath o3-mini-high’s rating. Grok 3 Reasoning Beta additionally trails ever-so-slightly behind OpenAI’s o1 mannequin set to “medium” computing. But xAI is promoting Grok 3 because the “world’s smartest AI.”

Babushkin argued on X that OpenAI has revealed equally deceptive benchmark charts previously — albeit charts evaluating the efficiency of its personal fashions. A extra impartial social gathering within the debate put collectively a extra “correct” graph exhibiting practically each mannequin’s efficiency at cons@64:

However as AI researcher Nathan Lambert identified in a publish, maybe an important metric stays a thriller: the computational (and financial) price it took for every mannequin to attain its greatest rating. That simply goes to point out how little most AI benchmarks talk about fashions’ limitations — and their strengths.



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