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SISA: Set-Centric Instruction Set Architecture for Graph Mining on Processing-in-Memory Systems

15 April 2021
Maciej Besta
Raghavendra Kanakagiri
Grzegorz Kwa'sniewski
Rachata Ausavarungnirun
Jakub Beránek
Konstantinos Kanellopoulos
Kacper Janda
Zur Vonarburg-Shmaria
Lukas Gianinazzi
Ioana Stefan
Juan Gómez Luna
Marcin Copik
Lukas Kapp-Schwoerer
Salvatore Di Girolamo
Marek Konieczny
Nils Blach
O. Mutlu
Torsten Hoefler
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Abstract

Simple graph algorithms such as PageRank have been the target of numerous hardware accelerators. Yet, there also exist much more complex graph mining algorithms for problems such as clustering or maximal clique listing. These algorithms are memory-bound and thus could be accelerated by hardware techniques such as Processing-in-Memory (PIM). However, they also come with nonstraightforward parallelism and complicated memory access patterns. In this work, we address this problem with a simple yet surprisingly powerful observation: operations on sets of vertices, such as intersection or union, form a large part of many complex graph mining algorithms, and can offer rich and simple parallelism at multiple levels. This observation drives our cross-layer design, in which we (1) expose set operations using a novel programming paradigm, (2) express and execute these operations efficiently with carefully designed set-centric ISA extensions called SISA, and (3) use PIM to accelerate SISA instructions. The key design idea is to alleviate the bandwidth needs of SISA instructions by mapping set operations to two types of PIM: in-DRAM bulk bitwise computing for bitvectors representing high-degree vertices, and near-memory logic layers for integer arrays representing low-degree vertices. Set-centric SISA-enhanced algorithms are efficient and outperform hand-tuned baselines, offering more than 10x speedup over the established Bron-Kerbosch algorithm for listing maximal cliques. We deliver more than 10 SISA set-centric algorithm formulations, illustrating SISA's wide applicability.

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