Computational Efficiency
Computational efficiency in machine learning focuses on minimizing the computational resources (time and energy) required for training and deploying models while maintaining accuracy. Current research emphasizes developing novel algorithms and architectures, such as lightweight convolutional networks, efficient attention mechanisms (e.g., entropy-based clustering), and optimized numerical systems (e.g., redundant residue number systems), to reduce computational complexity. These advancements are crucial for deploying machine learning models on resource-constrained devices and for scaling up the training of increasingly complex models, impacting fields ranging from medical diagnosis to robotics.
Papers
SOAP: Improving and Stabilizing Shampoo using Adam
Nikhil Vyas, Depen Morwani, Rosie Zhao, Itai Shapira, David Brandfonbrener, Lucas Janson, Sham Kakade
Lite-FBCN: Lightweight Fast Bilinear Convolutional Network for Brain Disease Classification from MRI Image
Dewinda Julianensi Rumala, Reza Fuad Rachmadi, Anggraini Dwi Sensusiati, I Ketut Eddy Purnama