KV

Kanishkan Vadivel

3 records found

Event-driven neural network accelerators achieve superior energy efficiency by processing only meaningful data events, yet existing design space exploration tools lack support for their asynchronous execution characteristics. This thesis introduces AeDAM (Event-Driven Architectur ...
Deep Neural Networks (DNNs) have revolutionized numerous computational fields, from image and speech recognition to autonomous driving and natural language processing. Yet, the substantial computational and energy requirements of DNNs, particularly Convolutional Neural Networks ( ...