An In-depth Comparative Analysis of Cloud Block Storage Workloads: Findings and Implications

Author:

Li Jinhong1ORCID,Wang Qiuping1ORCID,Lee Patrick P. C.1ORCID,Shi Chao2ORCID

Affiliation:

1. The Chinese University of Hong Kong, Shatin, Hong Kong, China

2. Alibaba Group, Hangzhou, China

Abstract

Cloud block storage systems support diverse types of applications in modern cloud services. Characterizing their input/output (I/O) activities is critical for guiding better system designs and optimizations. In this article, we present an in-depth comparative analysis of production cloud block storage workloads through the block-level I/O traces of billions of I/O requests collected from two production systems, Alibaba Cloud and Tencent Cloud Block Storage. We study their characteristics of load intensities, spatial patterns, and temporal patterns. We also compare the cloud block storage workloads with the notable public block-level I/O workloads from the enterprise data centers at Microsoft Research Cambridge, and we identify the commonalities and differences of the three sources of traces. To this end, we provide 6 findings through the high-level analysis and 16 findings through the detailed analysis on load intensity, spatial patterns, and temporal patterns. We discuss the implications of our findings on load balancing, cache efficiency, and storage cluster management in cloud block storage systems.

Funder

Alibaba Innovation Research (AIR) program and the Research Matching Grant Scheme

Publisher

Association for Computing Machinery (ACM)

Subject

Hardware and Architecture

Reference54 articles.

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3. Alibaba. 2022. Alibaba Cloud Block Storage. Retrieved from https://www.alibabacloud.com/help/doc-detail/63136.htm.

4. Amazon. 2022. Amazon EBS. Retrieved from https://aws.amazon.com/ebs/.

5. Dulcardo Arteaga, Jorge Cabrera, Jing Xu, Swaminathan Sundararaman, and Ming Zhao. 2016. CloudCache: On-demand flash cache management for cloud computing. In Proceedings of the 14th USENIX Conference on File and Storage Technologies (FAST’16). 355–369.

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