Distribution-Aligned Sequence Distillation for Superior Long-CoT Reasoning
Shaotian Yan, Kaiyuan Liu, Chen Shen, Bing Wang, Sinan Fan, Jun Zhang, Yue Wu, Zheng Wang, Jieping Ye

TL;DR
This paper introduces DASD-4B-Thinking, an open-source reasoning model that outperforms larger models on complex benchmarks by improving sequence-level distillation methods to better capture the teacher's output distribution.
Contribution
The paper proposes novel enhancements to sequence-level distillation, addressing key limitations and significantly improving model performance with fewer training samples.
Findings
Achieves SOTA performance among open-source models of similar size.
Uses only 448K training samples, fewer than most existing models.
Outperforms several larger models on challenging benchmarks.
Abstract
In this report, we introduce DASD-4B-Thinking, a lightweight yet highly capable, fully open-source reasoning model. It achieves SOTA performance among open-source models of comparable scale across challenging benchmarks in mathematics, scientific reasoning, and code generation -- even outperforming several larger models. We begin by critically reexamining a widely adopted distillation paradigm in the community: SFT on teacher-generated responses, also known as sequence-level distillation. Although a series of recent works following this scheme have demonstrated remarkable efficiency and strong empirical performance, they are primarily grounded in the SFT perspective. Consequently, these approaches focus predominantly on designing heuristic rules for SFT data filtering, while largely overlooking the core principle of distillation itself -- enabling the student model to learn the…
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Code & Models
- 🤗Alibaba-Apsara/DASD-4B-Thinkingmodel· 462 dl· ♡ 216462 dl♡ 216
- 🤗Alibaba-Apsara/DASD-30B-A3B-Thinking-Previewmodel· 146 dl· ♡ 52146 dl♡ 52
- 🤗cyankiwi/DASD-30B-A3B-Thinking-Preview-AWQ-4bitmodel· 2 dl2 dl
- 🤗cyankiwi/DASD-30B-A3B-Thinking-Preview-AWQ-8bitmodel· 2 dl· ♡ 12 dl♡ 1
- 🤗cyankiwi/DASD-4B-Thinking-AWQ-4bitmodel· 16 dl· ♡ 116 dl♡ 1
- 🤗cyankiwi/DASD-4B-Thinking-AWQ-8bitmodel· 1 dl1 dl
- 🤗aashish1904/DASD-4B-Thinking-GGUFmodel· 57 dl· ♡ 357 dl♡ 3
- 🤗Mungert/DASD-4B-Thinking-GGUFmodel· 107 dl107 dl
- Alibaba-Apsara/Superior-Reasoning-SFT-gpt-oss-120b-Logprobdataset· 1.3k dl1.3k dl
- Alibaba-Apsara/Superior-Reasoning-SFT-gpt-oss-120bdataset· 2.5k dl2.5k dl
- Vanguminh69/Superior-Reasoning-SFT-gpt-oss-120bdataset· 3 dl3 dl
- prabinh/Superior-Reasoning-SFT-gpt-oss-120bdataset· 68 dl68 dl
- rico2512/Superior-Reasoning-SFT-gpt-oss-120bdataset· 44 dl44 dl
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Taxonomy
TopicsAdvanced Graph Neural Networks · Intelligent Tutoring Systems and Adaptive Learning · Topic Modeling
