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| Auteurs principaux: | , , , , , , , , , , |
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| Format: | Preprint |
| Publié: |
2026
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| Sujets: | |
| Accès en ligne: | https://arxiv.org/abs/2603.07779 |
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| _version_ | 1866914379552784384 |
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| author | Li, Zongqian Lv, Tengchao Huang, Shaohan Su, Yixuan Sun, Qinzheng Yin, Qiufeng Xin, Ying Li, Scarlett Cui, Lei Collier, Nigel Wei, Furu |
| author_facet | Li, Zongqian Lv, Tengchao Huang, Shaohan Su, Yixuan Sun, Qinzheng Yin, Qiufeng Xin, Ying Li, Scarlett Cui, Lei Collier, Nigel Wei, Furu |
| contents | Training next-generation code generation models requires high-quality datasets, yet existing datasets face difficulty imbalance, format inconsistency, and data quality problems. We address these challenges through systematic data processing and difficulty scaling. We introduce a four-stage Data Processing Framework encompassing collection, processing, filtering, and verification, incorporating Automatic Difficulty Filtering via an LLM-based predict-calibrate-select framework that leverages multi-dimensional difficulty metrics across five weighted dimensions to retain challenging problems while removing simplistic ones. The resulting MicroCoder dataset comprises tens of thousands of curated real competitive programming problems from diverse platforms, emphasizing recency and difficulty. Evaluations on strictly unseen LiveCodeBench demonstrate that MicroCoder achieves 3x larger performance gains within 300 training steps compared to widely-used baseline datasets of comparable size, with consistent advantages under both GRPO and its variant training algorithms. The MicroCoder dataset delivers obvious improvements on medium and hard problems across different model sizes, achieving up to 17.2% relative gains in overall performance where model capabilities are most stretched. These results validate that difficulty-aware data curation improves model performance on challenging tasks, providing multiple insights for dataset creation in code generation. |
| format | Preprint |
| id |
arxiv_https___arxiv_org_abs_2603_07779 |
| institution | arXiv |
| publishDate | 2026 |
| record_format | arxiv |
| spellingShingle | Scaling Data Difficulty: Improving Coding Models via Reinforcement Learning on Fresh and Challenging Problems Li, Zongqian Lv, Tengchao Huang, Shaohan Su, Yixuan Sun, Qinzheng Yin, Qiufeng Xin, Ying Li, Scarlett Cui, Lei Collier, Nigel Wei, Furu Computation and Language General Literature Machine Learning Training next-generation code generation models requires high-quality datasets, yet existing datasets face difficulty imbalance, format inconsistency, and data quality problems. We address these challenges through systematic data processing and difficulty scaling. We introduce a four-stage Data Processing Framework encompassing collection, processing, filtering, and verification, incorporating Automatic Difficulty Filtering via an LLM-based predict-calibrate-select framework that leverages multi-dimensional difficulty metrics across five weighted dimensions to retain challenging problems while removing simplistic ones. The resulting MicroCoder dataset comprises tens of thousands of curated real competitive programming problems from diverse platforms, emphasizing recency and difficulty. Evaluations on strictly unseen LiveCodeBench demonstrate that MicroCoder achieves 3x larger performance gains within 300 training steps compared to widely-used baseline datasets of comparable size, with consistent advantages under both GRPO and its variant training algorithms. The MicroCoder dataset delivers obvious improvements on medium and hard problems across different model sizes, achieving up to 17.2% relative gains in overall performance where model capabilities are most stretched. These results validate that difficulty-aware data curation improves model performance on challenging tasks, providing multiple insights for dataset creation in code generation. |
| title | Scaling Data Difficulty: Improving Coding Models via Reinforcement Learning on Fresh and Challenging Problems |
| topic | Computation and Language General Literature Machine Learning |
| url | https://arxiv.org/abs/2603.07779 |