Song Han Interview – Deep Gradient Compression for Distributed Training
On today’s show I chat with Song Han, assistant professor in MIT’s EECS department, about his research on Deep Gradient Compression.
In our conversation, we explore the challenge of distributed training for deep neural networks and the idea of compressing the gradient exchange to allow it to be done more efficiently. Song details the evolution of distributed training systems based on this idea, and provides a few examples of centralized and decentralized distributed training architectures such as Uber’s Horovod, as well as the approaches native to Pytorch and Tensorflow. Song also addresses potential issues that arise when considering distributed training, such as loss of accuracy and generalizability, and much more.
The notes for this show can be found at twimlai.com/talk/146.