A Template-Based Design Methodology for Graph-Parallel Hardware Accelerators

作者:Ayupov Andrey; Yesil Serif; Ozdal Muhammet Mustafa*; Kim Taemin; Burns Steven; Ozturk Ozcan
来源:IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems, 2018, 37(2): 420-430.
DOI:10.1109/TCAD.2017.2706562

摘要

Graph applications have been gaining importance in the last decade due to emerging big data analytics problems such as Web graphs, social networks, and biological networks. For these applications, traditional CPU and GPU architectures suffer in terms of performance and power consumption due to irregular communications, random memory accesses, and load balancing problems. It has been shown that specialized hardware accelerators can achieve much better power and energy efficiency compared to the general purpose CPUs and GPUs. In this paper, we present a template-based methodology specifically targeted for hardware accelerator design of big-data graph applications. Important architectural features that are key for energy efficient execution are implemented in a common template. The proposed template-based methodology is used to design hardware accelerators for different graph applications with little effort. Compared to an application-specific high-level synthesis methodology, we show that the proposed methodology can generate hardware accelerators with up to 18x better energy efficiency and requires less design effort.

  • 出版日期2018-2