Energy-Efficient Deep Learning: A Comprehensive Review
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
Notice something missing or incorrect?
Suggest changes on GitHub
Suggest changes on GitHub