EC3 – Efficient Neural Networks: from SW optimization to specialized HW accelerators
Teacher: Marcello Traiola (Inria).
Artificial Neural Networks (ANNs) appear to be one of the technological revolutions of recent human history. The capability of such systems does not come at a low cost, which led researchers to develop more and more efficient techniques to implement them. Optimization approaches have been developed, such as pruning and quantization, leading to reduced memory and computation requirements. Furthermore, such approaches are adapted to the specific hardware platform features to further increase efficiency. To improve it further, the HW programmability can be traded off in favor of more specialized custom HW ANN accelerators. In this education abstract, we illustrate how optimizing operations execution at different levels, from SW to HW, can improve the efficiency of ANN execution.
Date: 9/27/2024
Time: 10:00 am - 12:00 pm
Room/Location: Array
Type:
- Education