MATH
MATH dataset contains 12,500 challenging competition mathematics problems from AMC 10, AMC 12, AIME, and other mathematics competitions. Each problem includes full step-by-step solutions and spans multiple difficulty levels (1-5) across seven mathematical subjects including Prealgebra, Algebra, Number Theory, Counting and Probability, Geometry, Intermediate Algebra, and Precalculus.
o3-mini from OpenAI currently leads the MATH leaderboard with a score of 0.979 across 70 evaluated AI models.
o3-mini leads with 97.9%, followed by
o1 at 96.4% and
Mistral Large 3 at 90.4%.
Progress Over Time
Interactive timeline showing model performance evolution on MATH
MATH Leaderboard
| Context | Cost | License | ||||
|---|---|---|---|---|---|---|
| 1 | OpenAI | — | — | — | ||
| 2 | OpenAI | — | — | — | ||
| 3 | Mistral AI | 675B | — | — | ||
| 3 | Mistral AI | 14B | — | — | ||
| 5 | Google | — | — | — | ||
| 6 | Moonshot AI | 1.0T | — | — | ||
| 7 | Google | 27B | — | — | ||
| 8 | Mistral AI | 8B | — | — | ||
| 9 | Google | — | — | — | ||
| 10 | Google | — | — | — | ||
| 11 | OpenAI | — | — | — | ||
| 12 | OpenAI | — | — | — | ||
| 13 | Google | 12B | — | — | ||
| 14 | Alibaba Cloud / Qwen Team | 33B | — | — | ||
| 14 | Alibaba Cloud / Qwen Team | 73B | — | — | ||
| 16 | Mistral AI | 3B | — | — | ||
| 17 | Alibaba Cloud / Qwen Team | 34B | — | — | ||
| 18 | Microsoft | 15B | — | — | ||
| 19 | Alibaba Cloud / Qwen Team | 15B | — | — | ||
| 20 | Anthropic | — | — | — | ||
| 21 | Google | — | — | — | ||
| 22 | 70B | — | — | |||
| 23 | Amazon | — | — | — | ||
| 23 | OpenAI | — | 128K | $2.50 / $10.00 | ||
| 25 | xAI | — | — | — | ||
| 26 | Google | 4B | — | — | ||
| 27 | Alibaba Cloud / Qwen Team | 8B | — | — | ||
| 28 | DeepSeek | 236B | — | — | ||
| 29 | 405B | — | — | |||
| 30 | Amazon | — | — | — | ||
| 31 | xAI | — | — | — | ||
| 32 | OpenAI | — | 128K | $10.00 / $30.00 | ||
| 33 | Alibaba Cloud / Qwen Team | 235B | — | — | ||
| 34 | Alibaba Cloud / Qwen Team | 7B | — | — | ||
| 35 | Anthropic | — | — | — | ||
| 36 | Mistral AI | 24B | — | — | ||
| 37 | Moonshot AI | 1.0T | — | — | ||
| 37 | OpenAI | — | — | — | ||
| 39 | Mistral AI | 24B | — | — | ||
| 40 | Anthropic | — | — | — | ||
| 41 | Mistral AI | 24B | — | — | ||
| 41 | Amazon | — | — | — | ||
| 43 | 90B | — | — | |||
| 44 | Microsoft | 4B | — | — | ||
| 45 | Meta | 400B | — | — | ||
| 46 | Anthropic | — | — | — | ||
| 47 | Alibaba Cloud / Qwen Team | 72B | — | — | ||
| 48 | Microsoft | 60B | — | — | ||
| 49 | Google | 8B | — | — | ||
| 50 | Alibaba Cloud / Qwen Team | 32B | — | — |
FAQ
Common questions about MATH.
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