PolyThrottle: Energy-efficient Neural Network Inference on Edge Devices: Arithmetic Intensity

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This paper investigates how the configuration of on-device hardware affects energy consumption for neural network inference with regular fine-tuning.

This paper is available on arxiv under CC BY-NC-ND 4.0 DEED license. Authors: Minghao Yan, University of Wisconsin-Madison; Hongyi Wang, Carnegie Mellon University; Shivaram Venkataraman, myan@cs.wisc.edu. Table of Links Abstract & Introduction Motivation Opportunities Architecture Overview Proble Formulation: Two-Phase Tuning Modeling Workload Interference Experiments Conclusion & References A. Hardware Details B. Experimental Results C. Arithmetic Intensity D.

Predictor Analysis C ARITHMETIC INTENSITY The arithmetic intensity of a 2D convolution layer can be computed by the following equation: The notations used in equation 1 can be found in table 8. The FLOPs term captures the total computation of each workload, while the arithmetic intensity term captures how much computation power and memory bandwidth will affect the final performance.

 

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