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GPQA Diamond
Graduate-Level Google-Proof Q&A
198 hardest questions in biology, physics, chemistry; PhD experts score 65%
🧠Knowledge & Reasoning
Best: 94.3%
23 Models Evaluated
Champion
Claude Opus 4.7
Anthropic
94.2%
Best Score
Model Rankings
All models ranked by score on GPQA Diamond. Scores are relative to the best score of 94.3%.
| # | Model | Provider | Score | vs Best |
|---|---|---|---|---|
| 1 | Claude Opus 4.7 Elo 1500 | Anthropic | 94.2% | Best |
| 2 | Claude Opus 4.8 | Anthropic | 93.6% | -0.7% |
| 3 | GPT-5.5 Elo 1478 | OpenAI | 93.6% | -0.7% |
| 4 | GPT-5.4 Pro Elo 1480 | OpenAI | 93% | -1.3% |
| 5 | GPT-5.4 Elo 1463 | OpenAI | 92.8% | -1.5% |
| 6 | Gemini 3.1 Pro Elo 1492 | 91.9% | -2.4% | |
| 7 | Claude Opus 4.6 Elo 1503 | Anthropic | 91.3% | -3.0% |
| 8 | DeepSeek V4 Pro (Max) | DeepSeek | 90.1% | -4.2% |
| 9 | Claude Sonnet 4.6 Elo 1460 | Anthropic | 89.9% | -4.4% |
| 10 | Qwen 3.5 Elo 1450 | Alibaba | 88.4% | -5.9% |
| 11 | Kimi K2.5 Elo 1438 | Moonshot | 87.6% | -6.7% |
| 12 | Kimi K2 Thinking | Moonshot | 87.6% | -6.7% |
| 13 | Gemini 3 Pro Elo 1486 | 87% | -7.3% | |
| 14 | GLM-5 Elo 1454 | Zhipu AI | 86% | -8.3% |
| 15 | MiniMax M2.5 Elo 1404 | MiniMax | 85.2% | -9.1% |
| 16 | Grok 3 Elo 1412 | xAI | 84.6% | -9.7% |
| 17 | MiMo-V2-Flash Elo 1393 | Xiaomi | 83.7% | -10.6% |
| 18 | GPT-oss 120B Elo 1355 | OpenAI | 80.9% | -13.4% |
| 19 | DeepSeek V3.2 Elo 1423 | DeepSeek | 79.9% | -14.4% |
| 20 | Nemotron Ultra 253B Elo 1348 | NVIDIA | 76% | -18.3% |
| 21 | DeepSeek R1 Elo 1398 | DeepSeek | 71.5% | -22.8% |
| 22 | Llama 4 Maverick Elo 1328 | Meta | 69.8% | -24.5% |
| 23 | Mistral Large Elo 1416 | Mistral | 43.9% | -50.4% |
Score Distribution
Claude Opus 4.7
94.2%
Claude Opus 4.8
93.6%
GPT-5.5
93.6%
GPT-5.4 Pro
93%
GPT-5.4
92.8%
Gemini 3.1 Pro
91.9%
Claude Opus 4.6
91.3%
DeepSeek V4 Pro (Max)
90.1%
Claude Sonnet 4.6
89.9%
Qwen 3.5
88.4%
Run This Benchmark
Learn how to evaluate your own models on GPQA Diamond.
GPQA Diamond is a standardized benchmark for evaluating AI model capabilities.
To run this benchmark on your own models, visit the official benchmark page or leaderboard for detailed instructions, code, and evaluation scripts.
Data compiled from official model cards, public leaderboards, and independent evaluations.