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Main Authors: Luo, Haotian, Shen, Li, He, Haiying, Wang, Yibo, Liu, Shiwei, Li, Wei, Tan, Naiqiang, Cao, Xiaochun, Tao, Dacheng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.12570
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author Luo, Haotian
Shen, Li
He, Haiying
Wang, Yibo
Liu, Shiwei
Li, Wei
Tan, Naiqiang
Cao, Xiaochun
Tao, Dacheng
author_facet Luo, Haotian
Shen, Li
He, Haiying
Wang, Yibo
Liu, Shiwei
Li, Wei
Tan, Naiqiang
Cao, Xiaochun
Tao, Dacheng
contents Recently, long-thought reasoning LLMs, such as OpenAI's O1, adopt extended reasoning processes similar to how humans ponder over complex problems. This reasoning paradigm significantly enhances the model's problem-solving abilities and has achieved promising results. However, long-thought reasoning process leads to a substantial increase in inference time. A pressing challenge is reducing the inference overhead of long-thought LLMs while ensuring accuracy. In this paper, we experimentally demonstrate that long-thought reasoning models struggle to effectively allocate token budgets based on problem difficulty and reasoning redundancies. To address this, we propose Length-Harmonizing Fine-Tuning (O1-Pruner), aiming at minimizing reasoning overhead while maintaining accuracy. This effective fine-tuning method first estimates the LLM's baseline performance through pre-sampling and then uses RL-style fine-tuning to encourage the model to generate shorter reasoning processes under accuracy constraints. This allows the model to achieve efficient reasoning with lower redundancy while maintaining accuracy. Experiments on various mathematical reasoning benchmarks show that O1-Pruner not only significantly reduces inference overhead but also achieves higher accuracy, providing a novel and promising solution to this challenge. Our code is coming soon at https://github.com/StarDewXXX/O1-Pruner
format Preprint
id arxiv_https___arxiv_org_abs_2501_12570
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle O1-Pruner: Length-Harmonizing Fine-Tuning for O1-Like Reasoning Pruning
Luo, Haotian
Shen, Li
He, Haiying
Wang, Yibo
Liu, Shiwei
Li, Wei
Tan, Naiqiang
Cao, Xiaochun
Tao, Dacheng
Computation and Language
Recently, long-thought reasoning LLMs, such as OpenAI's O1, adopt extended reasoning processes similar to how humans ponder over complex problems. This reasoning paradigm significantly enhances the model's problem-solving abilities and has achieved promising results. However, long-thought reasoning process leads to a substantial increase in inference time. A pressing challenge is reducing the inference overhead of long-thought LLMs while ensuring accuracy. In this paper, we experimentally demonstrate that long-thought reasoning models struggle to effectively allocate token budgets based on problem difficulty and reasoning redundancies. To address this, we propose Length-Harmonizing Fine-Tuning (O1-Pruner), aiming at minimizing reasoning overhead while maintaining accuracy. This effective fine-tuning method first estimates the LLM's baseline performance through pre-sampling and then uses RL-style fine-tuning to encourage the model to generate shorter reasoning processes under accuracy constraints. This allows the model to achieve efficient reasoning with lower redundancy while maintaining accuracy. Experiments on various mathematical reasoning benchmarks show that O1-Pruner not only significantly reduces inference overhead but also achieves higher accuracy, providing a novel and promising solution to this challenge. Our code is coming soon at https://github.com/StarDewXXX/O1-Pruner
title O1-Pruner: Length-Harmonizing Fine-Tuning for O1-Like Reasoning Pruning
topic Computation and Language
url https://arxiv.org/abs/2501.12570