GPQA is a new graduate-level benchmark where PhD experts score 65% (74% after corrections), skilled non-experts score 34% with web access, and GPT-4 scores 39%, intended to enable realistic tests of human supervision over superhuman AI.
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GPQA: A Graduate-Level Google-Proof Q&A Benchmark
GPQA is a new graduate-level benchmark where PhD experts score 65% (74% after corrections), skilled non-experts score 34% with web access, and GPT-4 scores 39%, intended to enable realistic tests of human supervision over superhuman AI.