Load Balanced PIM-Based Graph Processing

IF 2.2 4区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Xiang Zhao, Song Chen, Yi Kang
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引用次数: 0

Abstract

Graph processing is widely used for many modern applications, such as social networks, recommendation systems, and knowledge graphs. However, processing large-scale graphs on traditional Von Neumann architectures is challenging due to the irregular graph data and memory-bound graph algorithms. Processing-in-memory (PIM) architecture has emerged as a promising approach for accelerating graph processing by enabling computation to be performed directly on memory. Despite having many processing units and high local memory bandwidth, PIM often suffers from insufficient global communication bandwidth and high synchronization overhead due to load imbalance.

This paper proposes GraphB, a novel PIM-based graph processing system, to address all these issues. From the algorithm perspective, we propose a degree-aware graph partitioning algorithm that can generate balanced partitioning at a low cost. From the architecture perspective, we introduce tile buffers incorporated with an on-chip 2D-Mesh, which provides high bandwidth for inter-node data transfer. Dataflow in GraphB is designed to enable computation-communication overlap and dynamic load balancing. In a PyMTL3-based cycle-accurate simulator with five real-world graphs and three common algorithms, GraphB achieves an average 2.2 × and maximum 2.8 × speedup compared to the SOTA PIM-based graph processing system GraphQ.

基于负载平衡 PIM 的图形处理
图处理被广泛应用于许多现代应用中,如社交网络、推荐系统和知识图谱。然而,由于图数据不规则和图算法受内存限制,在传统的冯-诺依曼架构上处理大规模图具有挑战性。内存中处理(PIM)架构可直接在内存中进行计算,是一种很有前途的加速图处理方法。尽管 PIM 有很多处理单元和很高的本地内存带宽,但由于负载不平衡,它经常会出现全局通信带宽不足和同步开销过高的问题。本文提出了基于 PIM 的新型图处理系统 GraphB,以解决所有这些问题。从算法角度看,我们提出了一种度感知图分割算法,它能以较低的成本生成均衡的分割。从架构角度看,我们引入了与片上二维网格相结合的瓦片缓冲器,为节点间数据传输提供了高带宽。GraphB 中的数据流旨在实现计算-通信重叠和动态负载平衡。在基于 PyMTL3 的周期精确模拟器中,与基于 SOTA PIM 的图形处理系统 GraphQ 相比,GraphB 在五个真实图形和三种常见算法上实现了平均 2.2 倍和最高 2.8 倍的速度提升。
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来源期刊
ACM Transactions on Design Automation of Electronic Systems
ACM Transactions on Design Automation of Electronic Systems 工程技术-计算机:软件工程
CiteScore
3.20
自引率
7.10%
发文量
105
审稿时长
3 months
期刊介绍: TODAES is a premier ACM journal in design and automation of electronic systems. It publishes innovative work documenting significant research and development advances on the specification, design, analysis, simulation, testing, and evaluation of electronic systems, emphasizing a computer science/engineering orientation. Both theoretical analysis and practical solutions are welcome.
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