Efficient Training
Efficient training of large-scale machine learning models is a critical research area aiming to reduce computational costs and resource consumption while maintaining or improving model performance. Current efforts focus on optimizing training strategies for various architectures, including transformers, mixture-of-experts models, and neural operators, employing techniques like parameter-efficient fine-tuning, data pruning, and novel loss functions. These advancements are crucial for making advanced models like large language models and vision transformers more accessible and sustainable, impacting fields ranging from natural language processing and computer vision to scientific simulations and drug discovery.
Papers
Efficient Training of Volterra Series-Based Pre-distortion Filter Using Neural Networks
Vinod Bajaj, Mathieu Chagnon, Sander Wahls, Vahid Aref
Efficient Training of Spiking Neural Networks with Temporally-Truncated Local Backpropagation through Time
Wenzhe Guo, Mohammed E. Fouda, Ahmed M. Eltawil, Khaled Nabil Salama