CVLGJul 22, 2020

TinyTL: Reduce Activations, Not Trainable Parameters for Efficient On-Device Learning

arXiv:2007.11622v567 citations
Originality Highly original
AI Analysis

This addresses memory constraints for edge devices needing continual adaptation, offering a novel approach beyond parameter reduction.

The paper tackles the problem of memory-efficient on-device learning by reducing activations instead of trainable parameters, achieving up to 6.5x memory savings with little accuracy loss and up to 34.1% accuracy improvements over baseline methods.

On-device learning enables edge devices to continually adapt the AI models to new data, which requires a small memory footprint to fit the tight memory constraint of edge devices. Existing work solves this problem by reducing the number of trainable parameters. However, this doesn't directly translate to memory saving since the major bottleneck is the activations, not parameters. In this work, we present Tiny-Transfer-Learning (TinyTL) for memory-efficient on-device learning. TinyTL freezes the weights while only learns the bias modules, thus no need to store the intermediate activations. To maintain the adaptation capacity, we introduce a new memory-efficient bias module, the lite residual module, to refine the feature extractor by learning small residual feature maps adding only 3.8% memory overhead. Extensive experiments show that TinyTL significantly saves the memory (up to 6.5x) with little accuracy loss compared to fine-tuning the full network. Compared to fine-tuning the last layer, TinyTL provides significant accuracy improvements (up to 34.1%) with little memory overhead. Furthermore, combined with feature extractor adaptation, TinyTL provides 7.3-12.9x memory saving without sacrificing accuracy compared to fine-tuning the full Inception-V3.

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