CVOct 24, 2019

Reversible designs for extreme memory cost reduction of CNN training

arXiv:1910.11127v11 citations
Originality Incremental advance
AI Analysis

This work addresses the memory cost problem for training deep neural networks, particularly on embedded or non-specialized hardware, and is incremental as it builds on prior reversible architectures.

The paper tackles the memory bottleneck in CNN training by proposing reversible network designs that minimize memory footprint, achieving a minimum of 352 bytes per input pixel and enabling training on limited hardware, such as reaching 93.3% accuracy on CIFAR10 in 67 minutes on a low-end GPU with 1GB memory.

Training Convolutional Neural Networks (CNN) is a resource intensive task that requires specialized hardware for efficient computation. One of the most limiting bottleneck of CNN training is the memory cost associated with storing the activation values of hidden layers needed for the computation of the weights gradient during the backward pass of the backpropagation algorithm. Recently, reversible architectures have been proposed to reduce the memory cost of training large CNN by reconstructing the input activation values of hidden layers from their output during the backward pass, circumventing the need to accumulate these activations in memory during the forward pass. In this paper, we push this idea to the extreme and analyze reversible network designs yielding minimal training memory footprint. We investigate the propagation of numerical errors in long chains of invertible operations and analyze their effect on training. We introduce the notion of pixel-wise memory cost to characterize the memory footprint of model training, and propose a new model architecture able to efficiently train arbitrarily deep neural networks with a minimum memory cost of 352 bytes per input pixel. This new kind of architecture enables training large neural networks on very limited memory, opening the door for neural network training on embedded devices or non-specialized hardware. For instance, we demonstrate training of our model to 93.3% accuracy on the CIFAR10 dataset within 67 minutes on a low-end Nvidia GTX750 GPU with only 1GB of memory.

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