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Proceedings ArticleDOI

A scalable processing-in-memory accelerator for parallel graph processing

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TLDR
This work argues that the conventional concept of processing-in-memory (PIM) can be a viable solution to achieve memory-capacity-proportional performance and designs a programmable PIM accelerator for large-scale graph processing called Tesseract.
Abstract
The explosion of digital data and the ever-growing need for fast data analysis have made in-memory big-data processing in computer systems increasingly important. In particular, large-scale graph processing is gaining attention due to its broad applicability from social science to machine learning. However, scalable hardware design that can efficiently process large graphs in main memory is still an open problem. Ideally, cost-effective and scalable graph processing systems can be realized by building a system whose performance increases proportionally with the sizes of graphs that can be stored in the system, which is extremely challenging in conventional systems due to severe memory bandwidth limitations. In this work, we argue that the conventional concept of processing-in-memory (PIM) can be a viable solution to achieve such an objective. The key modern enabler for PIM is the recent advancement of the 3D integration technology that facilitates stacking logic and memory dies in a single package, which was not available when the PIM concept was originally examined. In order to take advantage of such a new technology to enable memory-capacity-proportional performance, we design a programmable PIM accelerator for large-scale graph processing called Tesseract. Tesseract is composed of (1) a new hardware architecture that fully utilizes the available memory bandwidth, (2) an efficient method of communication between different memory partitions, and (3) a programming interface that reflects and exploits the unique hardware design. It also includes two hardware prefetchers specialized for memory access patterns of graph processing, which operate based on the hints provided by our programming model. Our comprehensive evaluations using five state-of-the-art graph processing workloads with large real-world graphs show that the proposed architecture improves average system performance by a factor of ten and achieves 87% average energy reduction over conventional systems.

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Journal ArticleDOI

PIM-Align: A Processing-in-Memory Architecture for FM-Index Search Algorithm

TL;DR: PIM-Align as mentioned in this paper is an application-driven near-data processing architecture for sequence alignment, which takes advantage of 3D-stacked dynamic random access memory (DRAM) technology.
Posted Content

PRINS: Resistive CAM Processing in Storage.

TL;DR: It is shown that PRINS may outperform a reference computer architecture with a bandwidth-limited external storage and the performance of PRINS SpMV may exceed the attainable performance of such reference architecture by more than two orders of magnitude.
Proceedings ArticleDOI

FePIM: Contention-Free In-Memory Computing Based on Ferroelectric Field-Effect Transistors

TL;DR: In this article, the authors proposed a novel processing-in-memory (PIM) architecture by employing ferroelectric field effect transistors (FeFETs), which is able to perform bitwise logic and add operations between two selected rows or between one selected row and an immediate operand.
Proceedings ArticleDOI

GNNerator: A Hardware/Software Framework for Accelerating Graph Neural Networks

TL;DR: GNNERATOR as discussed by the authors is an accelerator with heterogeneous compute engines optimized for dense, regular computations and sparse, irregular computations to address the computational challenges posed by GNNs.
Proceedings ArticleDOI

DIMMining

TL;DR: In this article , the authors point out that graph mining suffers from the following challenges: heavy comparison for pruning: Pruning technique is widely used to reduce search space in graph mining, it applies constraints on vertex indices and involves massive index comparisons.
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Proceedings ArticleDOI

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