LGAISTMLMar 21, 2025

Efficient Knowledge Distillation via Curriculum Extraction

arXiv:2503.17494v14 citationsh-index: 14
Originality Incremental advance
AI Analysis

This addresses the impracticality of checkpoint storage in large-scale training for machine learning practitioners, though it is incremental as it builds on existing progressive distillation methods.

The paper tackles the inefficiency of storing intermediate checkpoints in progressive knowledge distillation by proposing a curriculum extraction method from a fully trained teacher network, achieving similar performance to progressive distillation and outperforming one-shot distillation in tasks like sparse parity learning and language modeling.

Knowledge distillation is a technique used to train a small student network using the output generated by a large teacher network, and has many empirical advantages~\citep{Hinton2015DistillingTK}. While the standard one-shot approach to distillation only uses the output of the final teacher network, recent work~\citep{panigrahi2024progressive} has shown that using intermediate checkpoints from the teacher's training process as an implicit ``curriculum'' for progressive distillation can significantly speed up training. However, such schemes require storing these checkpoints, and often require careful selection of the intermediate checkpoints to train on, which can be impractical for large-scale training. In this paper, we show that a curriculum can be \emph{extracted} from just the fully trained teacher network, and that this extracted curriculum can give similar efficiency benefits to those of progressive distillation. Our extraction scheme is natural; we use a random projection of the hidden representations of the teacher network to progressively train the student network, before training using the output of the full network. We show that our scheme significantly outperforms one-shot distillation and achieves a performance similar to that of progressive distillation for learning sparse parities with two-layer networks, and provide theoretical guarantees for this setting. Additionally, we show that our method outperforms one-shot distillation even when using transformer-based architectures, both for sparse-parity learning, and language modeling tasks.

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