CLOct 20, 2025

QueST: Incentivizing LLMs to Generate Difficult Problems

arXiv:2510.17715v14 citationsh-index: 9
Originality Incremental advance
AI Analysis

This addresses scalability issues in competitive coding and reasoning for LLMs, though it appears incremental as it builds on existing synthetic data generation methods.

The paper tackles the problem of limited challenging coding problem training data for LLMs by proposing QueST, a framework that generates difficult coding problems, resulting in significant performance gains where an 8B model fine-tuned on 100K synthetic problems surpassed the original model and matched a much larger 671B model with additional data.

Large Language Models have achieved strong performance on reasoning tasks, solving competition-level coding and math problems. However, their scalability is limited by human-labeled datasets and the lack of large-scale, challenging coding problem training data. Existing competitive coding datasets contain only thousands to tens of thousands of problems. Previous synthetic data generation methods rely on either augmenting existing instruction datasets or selecting challenging problems from human-labeled data. In this paper, we propose QueST, a novel framework which combines difficulty-aware graph sampling and difficulty-aware rejection fine-tuning that directly optimizes specialized generators to create challenging coding problems. Our trained generators demonstrate superior capability compared to even GPT-4o at creating challenging problems that benefit downstream performance. We leverage QueST to generate large-scale synthetic coding problems, which we then use to distill from strong teacher models with long chain-of-thought or to conduct reinforcement learning for smaller models, proving effective in both scenarios. Our distillation experiments demonstrate significant performance gains. Specifically, after fine-tuning Qwen3-8B-base on 100K difficult problems generated by QueST, we surpass the performance of the original Qwen3-8B on LiveCodeBench. With an additional 112K examples (i.e., 28K human-written problems paired with multiple synthetic solutions), our 8B model matches the performance of the much larger DeepSeek-R1-671B. These findings indicate that generating complex problems via QueST offers an effective and scalable approach to advancing the frontiers of competitive coding and reasoning for large language models.

Foundations

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