CFU Playground: Full-Stack Open-Source Framework for Tiny Machine Learning (TinyML) Acceleration on FPGAs

Need for the efficient processing of neural networks has given rise to the development of hardware accelerators. The increased adoption of specialized hardware has highlighted the need for more agile design flows for hardware-software co-design and domain-specific optimizations. In this paper, we pr...

Full description

Saved in:
Bibliographic Details
Published in2023 IEEE International Symposium on Performance Analysis of Systems and Software (ISPASS) pp. 157 - 167
Main Authors Prakash, Shvetank, Callahan, Tim, Bushagour, Joseph, Banbury, Colby, Green, Alan V., Warden, Pete, Ansell, Tim, Reddi, Vijay Janapa
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.04.2023
Subjects
Online AccessGet full text
DOI10.1109/ISPASS57527.2023.00024

Cover

More Information
Summary:Need for the efficient processing of neural networks has given rise to the development of hardware accelerators. The increased adoption of specialized hardware has highlighted the need for more agile design flows for hardware-software co-design and domain-specific optimizations. In this paper, we present CFU Playground- a full-stack open-source framework that enables rapid and iterative design and evaluation of machine learning (ML) accelerators for embedded ML systems. Our tool provides a completely open-source end-to-end flow for hardwaresoftware co-design on FPGAs and future systems research. This full-stack framework gives the users access to explore experimental and bespoke architectures that are customized and co-optimized for embedded ML. Our rapid, deploy-profileoptimization feedback loop lets ML hardware and software developers achieve significant returns out of a relatively small investment in customization. Using CFU Playground's design and evaluation loop, we show substantial speedups between 55 \times and 75 \times. The soft CPU coupled with the accelerator opens up a new, rich design space between the two components that we explore in an automated fashion using Vizier, an open-source black-box optimization service.
DOI:10.1109/ISPASS57527.2023.00024