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Benchmarks in Leipzig

A group of 49 mathematicians compiled a dataset of 100 research-level mathematics questions with known answers during a workshop at the Max Planck Institute for Mathematics in the Sciences in Leipzig, Germany, between April 1 and May 15, 2026. After evaluating the questions against state-of-the-art large language models across three stages, only two questions remained unsolved, demonstrating the rapidly advancing mathematical reasoning capabilities of LLMs.

read2 min publishedJun 6, 2026
[Submitted on 4 Jun 2026]


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Abstract:Between April 1 and May 15, 2026, a group of 49 mathematicians compiled a dataset of research-level mathematics questions with known answers. Most of the work was done during the 3-day workshop Benchmarks in Leipzig with 35 participants at the Max Planck Institute for Mathematics in the Sciences in Leipzig, Germany. We present the resulting collection of 100 questions. We evaluated these questions in three stages: a single attempt by five state-of-the-art LLMs, followed by a 20-runs-per-model evaluation with three of these models, and finally a 3-run attempt with two heavy-thinking models. After Stage 1, 41 questions remained completely unsolved; after Stage 2, this count dropped to 16; and we concluded Stage 3 with only 2 unsolved questions. This demonstrates that the mathematical reasoning capabilities of LLMs are becoming impressive.

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