LGCLApr 13, 2025

DUMP: Automated Distribution-Level Curriculum Learning for RL-based LLM Post-training

arXiv:2504.09710v334 citationsh-index: 8Has Code
Originality Highly original
AI Analysis

This work addresses a key bottleneck in LLM post-training for researchers and practitioners by optimizing training efficiency on heterogeneous data distributions.

The paper tackles the problem of inefficient RL-based post-training for LLMs by proposing a distribution-level curriculum learning framework that dynamically schedules training across diverse data distributions, achieving significant improvements in convergence speed and final performance on logic reasoning datasets.

Recent advances in reinforcement learning (RL)-based post-training have led to notable improvements in large language models (LLMs), particularly in enhancing their reasoning capabilities to handle complex tasks. However, most existing methods treat the training data as a unified whole, overlooking the fact that modern LLM training often involves a mixture of data from diverse distributions-varying in both source and difficulty. This heterogeneity introduces a key challenge: how to adaptively schedule training across distributions to optimize learning efficiency. In this paper, we present a principled curriculum learning framework grounded in the notion of distribution-level learnability. Our core insight is that the magnitude of policy advantages reflects how much a model can still benefit from further training on a given distribution. Based on this, we propose a distribution-level curriculum learning framework for RL-based LLM post-training, which leverages the Upper Confidence Bound (UCB) principle to dynamically adjust sampling probabilities for different distrubutions. This approach prioritizes distributions with either high average advantage (exploitation) or low sample count (exploration), yielding an adaptive and theoretically grounded training schedule. We instantiate our curriculum learning framework with GRPO as the underlying RL algorithm and demonstrate its effectiveness on logic reasoning datasets with multiple difficulties and sources. Our experiments show that our framework significantly improves convergence speed and final performance, highlighting the value of distribution-aware curriculum strategies in LLM post-training. Code: https://github.com/ZhentingWang/DUMP.

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