Modern Convolutional Neural Networks (CNNs) are known to be computationally and memory costly owing to the deep structure that is constantly growing. A reconfigurable design is crucial in tackling this difficulty since neural network requirements are always evolving. The suggested architecture is adaptable to the needs of the neural network.
Amit Acharyya
Srimanth Tenneti
Epifanios Baikas
David Mapstone
Daniel Newbrook
Samuel