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Exploring Memory Access Patterns for Graph Processing Accelerators

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2021

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Gesellschaft für Informatik, Bonn

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Recent trends in business and technology (e.g., machine learning, social network analysis) benefit from storing and processing growing amounts of graph-structured data in databases and data science platforms. FPGAs as accelerators for graph processing with a customizable memory hierarchy promise solving performance problems caused by inherent irregular memory access patterns on traditional hardware (e.g., CPU). However, developing such hardware accelerators is yet time-consuming and difficult and benchmarking is non-standardized, hindering comprehension of the impact of memory access pattern changes and systematic engineering of graph processing accelerators. In this work, we propose a simulation environment for the analysis of graph processing accelerators based on simulating their memory access patterns. Further, we evaluate our approach on two state-of-the-art FPGA graph processing accelerators and show reproducibility, comparablity, as well as the shortened development process by an example. Not implementing the cycle-accurate internal data flow on accelerator hardware like FPGAs significantly reduces the implementation time, increases the benchmark parameter transparency, and allows comparison of graph processing approaches.

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Dann, Jonas; Ritter, Daniel; Fröning, Holger (2021): Exploring Memory Access Patterns for Graph Processing Accelerators. BTW 2021. DOI: 10.18420/btw2021-05. Gesellschaft für Informatik, Bonn. PISSN: 1617-5468. ISBN: 978-3-88579-705-0. pp. 101-122. Database Technology. Dresden. 13.-17. September 2021

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