NeuroCool: Dynamic Thermal Management of 3D DRAM for Deep Neural Networks through Customized Prefetching

IF 2.2 4区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE ACM Transactions on Design Automation of Electronic Systems Pub Date : 2023-10-23 DOI:10.1145/3630012
Shailja Pandey, Lokesh Siddhu, Preeti Ranjan Panda
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Abstract

Deep neural network (DNN) implementations are typically characterized by huge data sets and concurrent computation, resulting in a demand for high memory bandwidth due to intensive data movement between processors and off-chip memory. Performing DNN inference on general-purpose cores/ edge is gaining attraction to enhance user experience and reduce latency. The mismatch in the CPU and conventional DRAM speed leads to under utilization of the compute capabilities, causing increased inference time. 3D DRAM is a promising solution to effectively fulfill the bandwidth requirement of high-throughput DNNs. However, due to high power density in stacked architectures, 3D DRAMs need dynamic thermal management (DTM), resulting in performance overhead due to memory-induced CPU throttling. We study the thermal impact of DNN applications running on a 3D DRAM system, and make a case for a memory temperature-aware customized prefetch mechanism to reduce DTM overheads and significantly improve performance. In our proposed NeuroCool DTM policy, we intelligently place either DRAM ranks or tiers in low power state, using the DNN layer characteristics and access rate. We establish the generalization of our approach through training and test data sets comprising diverse data points from widely used DNN applications. Experimental results on popular DNNs show that NeuroCool results in a average performance gain of 44% (as high as 52%) and memory energy improvement of 43% (as high as 69%) over general-purpose DTM policies.
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通过定制预取的深度神经网络3D DRAM动态热管理
深度神经网络(DNN)的实现通常以庞大的数据集和并发计算为特征,由于处理器和片外存储器之间的密集数据移动,导致对高内存带宽的需求。在通用核心/边缘上执行DNN推理以增强用户体验和减少延迟越来越有吸引力。CPU和传统DRAM速度的不匹配导致计算能力利用率不足,导致推理时间增加。3D DRAM是一种很有前途的解决方案,可以有效地满足高吞吐量深度神经网络的带宽需求。然而,由于堆叠架构中的高功率密度,3D dram需要动态热管理(DTM),导致内存引起的CPU节流导致性能开销。我们研究了在3D DRAM系统上运行的DNN应用程序的热影响,并提出了一种内存温度感知的定制预取机制,以减少DTM开销并显着提高性能。在我们提出的NeuroCool DTM策略中,我们利用DNN层的特性和访问速率,智能地将DRAM排列或层置于低功耗状态。我们通过训练和测试数据集建立了我们的方法的泛化,这些数据集包括来自广泛使用的深度神经网络应用的不同数据点。在流行的dnn上的实验结果表明,与通用DTM策略相比,NeuroCool的平均性能提高了44%(高达52%),内存能量提高了43%(高达69%)。
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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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