LGNov 5, 2021

AUTOKD: Automatic Knowledge Distillation Into A Student Architecture Family

arXiv:2111.03555v13 citations
Originality Highly original
AI Analysis

This work addresses the performance gap between large models and deployable ones for resource-constrained devices, offering an automated solution that is more efficient than prior approaches.

The paper tackles the problem of selecting effective student architectures for knowledge distillation to deploy models on small devices, achieving results that match teacher performance with 3x less memory and 10x fewer parameters while being 20x more sample efficient than existing methods.

State-of-the-art results in deep learning have been improving steadily, in good part due to the use of larger models. However, widespread use is constrained by device hardware limitations, resulting in a substantial performance gap between state-of-the-art models and those that can be effectively deployed on small devices. While Knowledge Distillation (KD) theoretically enables small student models to emulate larger teacher models, in practice selecting a good student architecture requires considerable human expertise. Neural Architecture Search (NAS) appears as a natural solution to this problem but most approaches can be inefficient, as most of the computation is spent comparing architectures sampled from the same distribution, with negligible differences in performance. In this paper, we propose to instead search for a family of student architectures sharing the property of being good at learning from a given teacher. Our approach AutoKD, powered by Bayesian Optimization, explores a flexible graph-based search space, enabling us to automatically learn the optimal student architecture distribution and KD parameters, while being 20x more sample efficient compared to existing state-of-the-art. We evaluate our method on 3 datasets; on large images specifically, we reach the teacher performance while using 3x less memory and 10x less parameters. Finally, while AutoKD uses the traditional KD loss, it outperforms more advanced KD variants using hand-designed students.

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