Multipliers for FPGA Machine Learning Implementations

发布者:童领发布时间:2019-09-26浏览次数:423

题   目:Multipliers for FPGA Machine Learning Implementations 

报告人:Philip Leong, The University of Sydney

时   间:2019年9月30日(周一)上午9:00-11:30

地   点:张江校区微电子楼369室


Abstract

FPGA implementations of machine learning algorithms have received considerable interest, and multipliers are a key component for their efficient implementation. In this talk, four examples of our recent research efforts in customisation of FPGA architecture and designs using different approaches to multiplication be described. As the multipliers become more specialised, higher performance gains are possible.

First we describe a two-speed multiplier (TSM) which offers improved average clock rate over a conventional multiplier by carefully considering the delay of two critical paths in a serial-parallel modified radix-4 Booth multiplier. Secondly, our joint research with Fudan University on a flexible precision, run-time decomposable DSP architecture for CNN implementations which optimises Precision, Interconnect, and Reuse (PIR-DSP) is presented. The resulting design offers a 6× improvement in multiply-accumulate operations per DSP in the 9 × 9-bit case, 12× for 4 × 4 bits, and 24× for 2 × 2 bits. Thirdly, we present AddNet which shows that reconfigurable constant coefficient multipliers (RCCMs) offer an alternative to low precision arithmetic for saving area. Finally, we describe a ternary neural network generator which can generate fully unrolled designs. The implementation of a VGG-style network achieves 90.9% accuracy and 122 k frames per second, with a latency of only 29 μs, which is the fastest CNN inference implementation reported so far on an FPGA.


Biography

Philip Leong received the B.Sc., B.E. and Ph.D. degrees from the University of Sydney. In 1993 he was a consultant to ST Microelectronics in Milan, Italy working on advanced flash memory-based integrated circuit design. From 1997-2009 he was with the Chinese University of Hong Kong. He is currently Professor of Computer Systems in the School of Electrical and Information Engineering at the University of Sydney, Senior Visitor Scholar at Fudan University, Visiting Professor at Imperial College, Visiting Professor at Harbin Institute of Technology, and Chief Technology Advisor to ClusterTech.


联系人:王伶俐