Energy-Efficient Deep Learning: A Comprehensive Review

Authors

Song Han (MIT)
William J. Dally (Stanford University)
Kurt Keutzer (UC Berkeley)

Abstract

This comprehensive review examines state-of-the-art approaches for making deep learning more energy-efficient across the entire stack, from hardware to algorithms.

The research analyzes various efficiency techniques including model compression, neural architecture search, and hardware-software co-design for energy-efficient deep learning.

The authors provide detailed case studies and empirical evaluations of different approaches, offering insights into their effectiveness for reducing energy consumption while maintaining model performance.

Sources

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