Google Workloads for Consumer Devices: Mitigating Data Movement Bottlenecks

Amirali Boroumand, Saugata Ghose, Youngsok Kim, Rachata Ausavarungnirun, Eric Shiu, Rahul Thakur, Daehyun Kim, Aki Kuusela, A. Knies, Parthasarathy Ranganathan, O. Mutlu
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引用次数: 233

Abstract

We are experiencing an explosive growth in the number of consumer devices, including smartphones, tablets, web-based computers such as Chromebooks, and wearable devices. For this class of devices, energy efficiency is a first-class concern due to the limited battery capacity and thermal power budget. We find that data movement is a major contributor to the total system energy and execution time in consumer devices. The energy and performance costs of moving data between the memory system and the compute units are significantly higher than the costs of computation. As a result, addressing data movement is crucial for consumer devices. In this work, we comprehensively analyze the energy and performance impact of data movement for several widely-used Google consumer workloads: (1) the Chrome web browser; (2) TensorFlow Mobile, Google's machine learning framework; (3) video playback, and (4) video capture, both of which are used in many video services such as YouTube and Google Hangouts. We find that processing-in-memory (PIM) can significantly reduce data movement for all of these workloads, by performing part of the computation close to memory. Each workload contains simple primitives and functions that contribute to a significant amount of the overall data movement. We investigate whether these primitives and functions are feasible to implement using PIM, given the limited area and power constraints of consumer devices. Our analysis shows that offloading these primitives to PIM logic, consisting of either simple cores or specialized accelerators, eliminates a large amount of data movement, and significantly reduces total system energy (by an average of 55.4% across the workloads) and execution time (by an average of 54.2%).
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消费类设备的Google工作负载:缓解数据移动瓶颈
我们正在经历消费设备数量的爆炸式增长,包括智能手机、平板电脑、基于网络的电脑(如chromebook)和可穿戴设备。对于这类设备,由于有限的电池容量和热功率预算,能源效率是头等大事。我们发现,在消费设备中,数据移动是总系统能量和执行时间的主要贡献者。在内存系统和计算单元之间移动数据的能量和性能成本明显高于计算成本。因此,处理数据移动对消费者设备来说至关重要。在这项工作中,我们全面分析了数据移动对几种广泛使用的谷歌消费者工作负载的能量和性能影响:(1)Chrome web浏览器;(2)谷歌的机器学习框架TensorFlow Mobile;(3)视频播放,(4)视频捕捉,这两者都用于许多视频服务,如YouTube和Google Hangouts。我们发现,通过在内存附近执行部分计算,内存中处理(PIM)可以显著减少所有这些工作负载的数据移动。每个工作负载都包含简单的原语和函数,这些原语和函数对整个数据移动的贡献很大。考虑到消费者设备的有限面积和功率限制,我们研究这些原语和函数是否可以使用PIM实现。我们的分析表明,将这些原语卸载到PIM逻辑(由简单核心或专用加速器组成)可以消除大量的数据移动,并显著降低总系统能量(跨工作负载平均减少55.4%)和执行时间(平均减少54.2%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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