A Full-Stack Search Technique for Domain Optimized Deep Learning Accelerators (2105.12842v3)
Abstract: The rapidly-changing deep learning landscape presents a unique opportunity for building inference accelerators optimized for specific datacenter-scale workloads. We propose Full-stack Accelerator Search Technique (FAST), a hardware accelerator search framework that defines a broad optimization environment covering key design decisions within the hardware-software stack, including hardware datapath, software scheduling, and compiler passes such as operation fusion and tensor padding. In this paper, we analyze bottlenecks in state-of-the-art vision and NLP models, including EfficientNet and BERT, and use FAST to design accelerators capable of addressing these bottlenecks. FAST-generated accelerators optimized for single workloads improve Perf/TDP by 3.7x on average across all benchmarks compared to TPU-v3. A FAST-generated accelerator optimized for serving a suite of workloads improves Perf/TDP by 2.4x on average compared to TPU-v3. Our return on investment analysis shows that FAST-generated accelerators can potentially be practical for moderate-sized datacenter deployments.
- Dan Zhang (171 papers)
- Safeen Huda (4 papers)
- Ebrahim Songhori (3 papers)
- Kartik Prabhu (33 papers)
- Quoc Le (39 papers)
- Anna Goldie (19 papers)
- Azalia Mirhoseini (40 papers)