LGMar 21, 2025

PRIOT: Pruning-Based Integer-Only Transfer Learning for Embedded Systems

arXiv:2503.16860v13 citationsh-index: 2IEEE Embedded Systems Letters
Originality Incremental advance
AI Analysis

This addresses the problem of efficient on-device learning for embedded systems like Raspberry Pi Pico, offering a novel approach to reduce computational costs, though it is incremental in optimizing existing integer-only training methods.

The paper tackles integer-only transfer learning on microcontrollers without floating-point units by proposing PRIOT, a pruning-based method that uses static scale factors, achieving accuracy improvements of 8.08 to 33.75 percentage points over existing methods.

On-device transfer learning is crucial for adapting a common backbone model to the unique environment of each edge device. Tiny microcontrollers, such as the Raspberry Pi Pico, are key targets for on-device learning but often lack floating-point units, necessitating integer-only training. Dynamic computation of quantization scale factors, which is adopted in former studies, incurs high computational costs. Therefore, this study focuses on integer-only training with static scale factors, which is challenging with existing training methods. We propose a new training method named PRIOT, which optimizes the network by pruning selected edges rather than updating weights, allowing effective training with static scale factors. The pruning pattern is determined by the edge-popup algorithm, which trains a parameter named score assigned to each edge instead of the original parameters and prunes the edges with low scores before inference. Additionally, we introduce a memory-efficient variant, PRIOT-S, which only assigns scores to a small fraction of edges. We implement PRIOT and PRIOT-S on the Raspberry Pi Pico and evaluate their accuracy and computational costs using a tiny CNN model on the rotated MNIST dataset and the VGG11 model on the rotated CIFAR-10 dataset. Our results demonstrate that PRIOT improves accuracy by 8.08 to 33.75 percentage points over existing methods, while PRIOT-S reduces memory footprint with minimal accuracy loss.

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