TL;DR - Join us for a talk on an ongoing project that uses machine
learning to control a newly customizable version of the GCC C compiler
to improve performance for C-FPGA tools. This event in the Red Hat Research
Days monthly series will take place on April 22nd from 11AM to 12:30PM EDT
(5:00PM CEST, 6:00PM IDT).

link to free registration:
https://hopin.com/events/red-hat-research-days-boston-2021-353555b1-f2cc-4c48-bc57-8b0a81818f61


A Plan for Practical Programming of FPGAs in the Data Center

This event in the Red Hat Research Days monthly series will take place on
April 22nd from 11AM to 12:30PM EDT (5:00PM CEST, 6:00PM IDT). In this
session, Martin Herbordt, professor of Electrical & Computer Engineering at
Boston University, and Robert Munafo, third-year PhD student in the CAAD
Lab, will report on an ongoing project that aims to use machine learning to
improve the performance of programming methods for FPGAs. Ahmed Sanaullah,
Red Hat senior data scientist, will lead a live discussion open to all
attendees addressing varied interests in data center and FPGA development.

Abstract

To leverage the flexibility and performance potential of FPGAs in the data
center requires either expensive specialized engineering talent, or
commercial proprietary C-to-hardware tools that yield demonstrably poor
performance. This is the performance portability programmability problem
(P^4).

In previous work, we found that there exists within current compilers the
capability of delivering excellent FPGA performance for arbitrary C code,
but that this capability is brittle, inconsistent, and requires some
expertise on the part of the user to extract. Still, this result
demonstrates that P^4 can be reduced to the problem of generating the
correct sequence of optimizations for a particular input code and target
architecture. Our hypothesis is that a solution to P^4 can be built using
existing open source tools, primarily based on GCC, coupled with well-known
machine learning techniques.

In this talk, we describe our plan in detail, together with problems to be
solved, and outline our work to date. In particular, we report on an
ongoing project that aims to use machine learning to control a newly
customizable version of the GCC C compiler to automatically determine
optimization pass ordering for FPGA targets specifically, and thereby
improve performance as compared to existing (all proprietary) C-to-FPGA
methods.

Speakers
Martin Herbordt, ECE Professor at Boston University
Robert Munafo, PhD student in the  CAAD Lab at Boston University

Conversation Leader
Ahmed Sanaullah, Senior Data Scientist at Red Hat

For more information, contact rhresearchd...@redhat.com

Reply via email to