Energy Efficiency
Energy efficiency research focuses on minimizing energy consumption across diverse applications while maintaining performance. Current efforts concentrate on optimizing model architectures (e.g., spiking neural networks, convolutional neural networks, large language models) and algorithms (e.g., reinforcement learning, self-supervised contrastive learning) to improve efficiency in areas like building management, robotics, and deep learning. These advancements are crucial for mitigating climate change, reducing operational costs, and enabling sustainable deployment of computationally intensive technologies in resource-constrained environments. The field is actively exploring trade-offs between energy consumption, latency, and accuracy to identify Pareto-optimal solutions.
Papers
Analyzing Emissions and Energy Efficiency at Unsignalized Real-world Intersections Under Mixed Traffic Control
Michael Villarreal, Dawei Wang, Jia Pan, Weizi Li
Energy efficiency in Edge TPU vs. embedded GPU for computer-aided medical imaging segmentation and classification
José María Rodríguez Corral, Javier Civit-Masot, Francisco Luna-Perejón, Ignacio Díaz-Cano, Arturo Morgado-Estévez, Manuel Domínguez-Morales