利用自适应数据压缩提高多gpu系统中计算工作负载的性能和能效

Mohammad Khavari Tavana, Yifan Sun, Nicolas Bohm Agostini, D. Kaeli
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引用次数: 17

摘要

图形处理单元(GPU)的性能在很大程度上依赖于我们在芯片上扩展晶体管数量的能力,以满足不断增长的计算需求。然而,晶体管的缩放已经变得非常具有挑战性,限制了可以塞在单个芯片上的晶体管数量。制造大型,快速和节能的单片gpu,同时增加片上流处理单元的数量,不再是扩展性能的可行解决方案。GPU厂商的目标是开发多GPU解决方案,通过高带宽网络(如NVLink)将单个节点中的多个GPU互连,或者开发多芯片模块(MCM)封装,将多个GPU模块集成在单个封装中。gpu间带宽是设计多gpu系统的一项昂贵而关键的资源。gpu间网络的设计对性能影响很大。为了解决这一挑战,在本文中,我们探索了基于硬件的内存压缩算法的潜力,以节省带宽并提高多gpu系统的能源效率。具体来说,我们提出了一种自适应的gpu间数据压缩方案,以有效地提高性能和能源效率。我们的评估表明,在多gpu架构上提出的优化可以减少多达62%的gpu间流量,提高多达33%的系统性能,平均节省45%的通信结构的能源消耗。
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Exploiting Adaptive Data Compression to Improve Performance and Energy-Efficiency of Compute Workloads in Multi-GPU Systems
Graphics Processing Unit (GPU) performance has relied heavily on our ability to scale of number of transistors on chip, in order to satisfy the ever-increasing demands for more computation. However, transistor scaling has become extremely challenging, limiting the number of transistors that can be crammed onto a single die. Manufacturing large, fast and energy-efficient monolithic GPUs, while growing the number of stream processing units on-chip, is no longer a viable solution to scale performance. GPU vendors are aiming to exploit multi-GPU solutions, interconnecting multiple GPUs in the single node with a high bandwidth network (such as NVLink), or exploiting Multi-Chip-Module (MCM) packaging, where multiple GPU modules are integrated in a single package. The inter-GPU bandwidth is an expensive and critical resource for designing multi-GPU systems. The design of the inter-GPU network can impact performance significantly. To address this challenge, in this paper we explore the potential of hardware-based memory compression algorithms to save bandwidth and improve energy efficiency in multi-GPU systems. Specifically, we propose an adaptive inter-GPU data compression scheme to efficiently improve both performance and energy efficiency. Our evaluation shows that the proposed optimization on multi-GPU architectures can reduce the inter-GPU traffic up to 62%, improve system performance by up to 33%, and save energy spent powering the communication fabric by 45%, on average.
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