LGMLMay 21, 2020

TASO: Time and Space Optimization for Memory-Constrained DNN Inference

arXiv:2005.10709v111 citations
AI Analysis

This work addresses the challenge of efficient DNN inference for embedded applications like robotics and mobile devices, offering incremental improvements in optimization techniques.

The paper tackles the problem of running large convolutional neural networks on memory-constrained embedded devices by proposing an ahead-of-time optimization approach using integer linear programming to select primitive operations and data layouts, resulting in speedups of 8x and memory reduction of 2.2x compared to baseline methods.

Convolutional neural networks (CNNs) are used in many embedded applications, from industrial robotics and automation systems to biometric identification on mobile devices. State-of-the-art classification is typically achieved by large networks, which are prohibitively expensive to run on mobile and embedded devices with tightly constrained memory and energy budgets. We propose an approach for ahead-of-time domain specific optimization of CNN models, based on an integer linear programming (ILP) for selecting primitive operations to implement convolutional layers. We optimize the trade-off between execution time and memory consumption by: 1) attempting to minimize execution time across the whole network by selecting data layouts and primitive operations to implement each layer; and 2) allocating an appropriate workspace that reflects the upper bound of memory footprint per layer. These two optimization strategies can be used to run any CNN on any platform with a C compiler. Our evaluation with a range of popular ImageNet neural architectures (GoogleNet, AlexNet, VGG, ResNet and SqueezeNet) on the ARM Cortex-A15 yields speedups of 8x compared to a greedy algorithm based primitive selection, reduces memory requirement by 2.2x while sacrificing only 15% of inference time compared to a solver that considers inference time only. In addition, our optimization approach exposes a range of optimal points for different configurations across the Pareto frontier of memory and latency trade-off, which can be used under arbitrary system constraints.

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