On Accelerating Deep and Bayesian Neural Architectures
On Accelerating Deep and Bayesian Neural Architectures
Deep artificial neural networks are a prominent approach for decision-making in scenarios involving uncertainty. These networks have significantly enhanced performance in various prediction tasks, such as image recognition, speech processing, and signal analysis. However, their utilization demands substantial computational resources and memory. On the other hand, there is a growing need to implement machine learning […]