Accelerating Neural Network Training: A Brief Review
Sahil Nokhwal, Priyanka Chilakalapudi, Preeti Donekal, Suman Nokhwal, Saurabh Pahune, Ankit Chaudhary
Abstract
The process of training a deep neural network is characterized by significant time requirements and associated costs. Although researchers have made considerable progress in this area, further work is still required due to resource constraints. This study examines innovative approaches to expedite the training process of deep neural networks (DNN), with specific emphasis on three state-of-the-art models such as ResNet50, Vision Transformer (ViT), and EfficientNet. The research utilizes sophisticated methodologies, including Gradient Accumulation (GA), Automatic Mixed Precision (AMP), and Pin Memory (PM), in order to optimize performance and accelerate the training procedure.