A Case for Fine-grain Coherence Specialization in Heterogeneous Systems

Author:

Alsop Johnathan1ORCID,Na Weon Taek2ORCID,Sinclair Matthew D.3ORCID,Grayson Samuel4ORCID,Adve Sarita4ORCID

Affiliation:

1. AMD Research, Bellevue, WA, USA

2. MIT, Cambridge, MA, USA

3. University of Wisconsin - Madison, Madison, WI, USA

4. University of Illinois at Urbana-Champaign, Urbana, IL, USA

Abstract

Hardware specialization is becoming a key enabler of energy-efficient performance. Future systems will be increasingly heterogeneous, integrating multiple specialized and programmable accelerators, each with different memory demands. Traditionally, communication between accelerators has been inefficient, typically orchestrated through explicit DMA transfers between different address spaces. More recently, industry has proposed unified coherent memory which enables implicit data movement and more data reuse, but often these interfaces limit the coherence flexibility available to heterogeneous systems. This paper demonstrates the benefits of fine-grained coherence specialization for heterogeneous systems. We propose an architecture that enables low-complexity independent specialization of each individual coherence request in heterogeneous workloads by building upon a simple and flexible baseline coherence interface, Spandex. We then describe how to optimize individual memory requests to improve cache reuse and performance-critical memory latency in emerging heterogeneous workloads. Collectively, our techniques enable significant gains, reducing execution time by up to 61% or network traffic by up to 99% while adding minimal complexity to the Spandex protocol.

Funder

National Science Foundation

DARPA

Domain-Specific System on Chip (DSSoC) program, a Google Faculty Research

Applications Driving Architectures (ADA) Research Center

Publisher

Association for Computing Machinery (ACM)

Subject

Hardware and Architecture,Information Systems,Software

Reference96 articles.

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2. 2019. Compute Express Link: Breakthrough CPU-to-Device Interconnect. http://www.computeexpresslink.org. (2019).

3. Hazim Abdel-Shafi, Jonathan Hall, Sarita V. Adve, and Vikram S. Adve. 1997. An evaluation of fine-grain producer-initiated communication in cache-coherent multiprocessors. In High-Performance Computer Architecture, 1997., Third International Symposium on. IEEE, 204–215.

4. Analyzing the performance of mutation operators to solve the travelling salesman problem;Abdoun Otman;CoRR,2012

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