Sustainable computing across datacenters: A review of enabling models and techniques

IF 13.3 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Computer Science Review Pub Date : 2024-02-13 DOI:10.1016/j.cosrev.2024.100620
Muhammad Zakarya , Ayaz Ali Khan , Mohammed Reza Chalak Qazani , Hashim Ali , Mahmood Al-Bahri , Atta Ur Rehman Khan , Ahmad Ali , Rahim Khan
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引用次数: 0

Abstract

The growth rate in big data and internet of things (IoT) is far exceeding the computer performance rate at which modern processors can compute on the massive amount of data. The cluster and cloud technologies enriched by machine learning applications had significantly helped in performance growths subject to the underlying network performance. Computer systems have been studied for improvement in performance, driven by user’s applications demand, in the past few decades, particularly from 1990 to 2010. By the mid of 2010 to 2023, albeit parallel and distributed computing was omnipresent, but the total performance improvement rate of a single computing core had significantly reduced. Similarly, from 2010 to 2023, our digital world of big data and IoT has considerably increased from 1.2 Zettabytes (i.e., sextillion bytes) to approximately 120 zettabytes. Moreover, in 2022 cloud datacenters consumed 200TWh of energy worldwide. However, due to their ever-increasing energy demand which causes CO2 emissions, over the past years the focus has shifted to the design of architectures, software, and in particular, intelligent algorithms to compute on the data more efficiently and intelligently. The energy consumption problem is even greater for large-scale systems that involve several thousand servers. Combining these fears, cloud service providers are presently facing more challenges than earlier because they fight to keep up with the extraordinary network traffic being produced by the world’s fast-tracked move to online due to global pandemics. In this paper, we deliberate the energy consumption and performance problems of large-scale systems and present several taxonomies of energy and performance aware methodologies. We debate over the energy and performance efficiencies, both, which make this study different from those previously published in the literature. Important research papers have been surveyed to characterise and recognise crucial and outstanding topics for further research. We deliberate numerous state-of-the-art methods and algorithms, stated in the literature, that claim to advance the energy efficiency and performance of large-scale computing systems, and recognise numerous open challenges.

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跨数据中心的可持续计算:有利模式和技术综述
大数据和物联网(IoT)的增长速度远远超过了现代处理器计算海量数据的计算机性能。机器学习应用所丰富的集群和云技术极大地促进了性能的增长,但这取决于底层网络的性能。过去几十年,特别是 1990 年至 2010 年,计算机系统在用户应用需求的驱动下,一直在研究如何提高性能。到 2010 年至 2023 年中期,尽管并行和分布式计算已无处不在,但单个计算核心的总性能改进率已大幅下降。同样,从 2010 年到 2023 年,我们的大数据和物联网数字世界已从 1.2 ZB(即六千万字节)大幅增至约 120 ZB。此外,2022 年全球云数据中心的能耗将达到 200 太瓦时。然而,由于云数据中心对能源的需求不断增加,导致二氧化碳排放,过去几年来,人们已将重点转移到架构、软件,特别是智能算法的设计上,以便更高效、更智能地计算数据。对于涉及数千台服务器的大型系统来说,能耗问题更为严重。综合这些担忧,云服务提供商目前正面临着比以往更多的挑战,因为他们要努力跟上全球大流行病导致的全球快速上网所产生的巨大网络流量。在本文中,我们探讨了大规模系统的能耗和性能问题,并介绍了几种能耗和性能感知方法。我们对能效和性能效率进行了讨论,这两点使本研究有别于之前发表在文献中的研究。我们对重要的研究论文进行了调查,以确定和识别有待进一步研究的关键和突出主题。我们讨论了文献中提到的众多先进方法和算法,这些方法和算法都声称可以提高大规模计算系统的能效和性能,同时我们也认识到了众多有待解决的挑战。
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来源期刊
Computer Science Review
Computer Science Review Computer Science-General Computer Science
CiteScore
32.70
自引率
0.00%
发文量
26
审稿时长
51 days
期刊介绍: Computer Science Review, a publication dedicated to research surveys and expository overviews of open problems in computer science, targets a broad audience within the field seeking comprehensive insights into the latest developments. The journal welcomes articles from various fields as long as their content impacts the advancement of computer science. In particular, articles that review the application of well-known Computer Science methods to other areas are in scope only if these articles advance the fundamental understanding of those methods.
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