A Decade of Machine Learning Accelerators: Lessons Learned and Carbon Footprint
EECS Colloquium
Wednesday, September 7, 2022
306 Soda Hall (HP Auditorium)
4:00 – 5:00 pm
David Patterson
Professor Emeritus, UC Berkeley
Distinguished Engineer, Google
Abstract
The success of deep neural networks (DNNs) from Machine Learning (ML) has inspired domain specific architectures (DSAs) for them. Google’s first generation DSA offered 50x improvement over conventional architectures for ML inference in 2015. Google next built the first production DSA supercomputer for the much harder problem of training. Subsequent generations greatly improved performance of both phases. We start with ten lessons learned from such efforts.
The rapid growth of DNNs rightfully raised concerns about their carbon footprint. The second part of the talk identifies the “4Ms” (Model, Machine, Mechanization, Map) that, if optimized, can reduce ML training energy by up to 100x and carbon emissions up to 1000x. By improving the 4Ms, ML held steady at <15% of Google’s total energy use despite it consuming ~75% of its floating point operations. With continuing focus on the 4Ms, we can realize the amazing potential of ML to positively impact many fields in a sustainable way.