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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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Proceedings ArticleDOI

Hardware Architecture and Software Stack for PIM Based on Commercial DRAM Technology : Industrial Product

TL;DR: Wang et al. as discussed by the authors proposed an innovative yet practical processing-in-memory (PIM) architecture, which improves the performance of memory-bound neural network kernels and applications by 11.2× and 3.5× respectively.
Proceedings ArticleDOI

A Review of Near-Memory Computing Architectures: Opportunities and Challenges

TL;DR: This paper focuses on analyzing and organizing the extensive body of literature on near- memory computing across various dimensions: starting from the memory level where this paradigm is applied, to the granularity of the application that could be executed on the near-memory units.
Journal ArticleDOI

Understanding and Improving the Latency of DRAM-Based Memory Systems

TL;DR: The key conclusion of this dissertation is that augmenting DRAM architecture with simple and low-cost features, and developing a better understanding of manufactured DRAM chips together lead to significant memory latency reduction as well as energy efficiency improvement.
Proceedings Article

LegoOS: A Disseminated, Distributed {OS} for Hardware Resource Disaggregation

TL;DR: This work built LegoOS, a new OS designed for hardware resource disaggregation, and implemented it on x86-64 and evaluated it by emulating hardware components using commodity servers, showing that LegoOS' performance is comparable to monolithic Linux servers, while largely improving resource packing and reducing failure rate over monolithic clusters.
Proceedings ArticleDOI

GraFboost: using accelerated flash storage for external graph analytics

TL;DR: It is demonstrated that despite the relatively small amount of DRAM, GraFBoost achieves high performance with very large graphs no other system can handle, and rivals the performance of the fastest software platforms on sizes of graphs that existing platforms can handle.
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Proceedings ArticleDOI

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