Back to Search Start Over

Towards Cloud Efficiency with Large-scale Workload Characterization

Authors :
Parayil, Anjaly
Zhang, Jue
Qin, Xiaoting
Goiri, Íñigo
Huang, Lexiang
Zhu, Timothy
Bansal, Chetan
Publication Year :
2024

Abstract

Cloud providers introduce features (e.g., Spot VMs, Harvest VMs, and Burstable VMs) and optimizations (e.g., oversubscription, auto-scaling, power harvesting, and overclocking) to improve efficiency and reliability. To effectively utilize these features, it's crucial to understand the characteristics of workloads running in the cloud. However, workload characteristics can be complex and depend on multiple signals, making manual characterization difficult and unscalable. In this study, we conduct the first large-scale examination of first-party workloads at Microsoft to understand their characteristics. Through an empirical study, we aim to answer the following questions: (1) What are the critical workload characteristics that impact efficiency and reliability on cloud platforms? (2) How do these characteristics vary across different workloads? (3) How can cloud platforms leverage these insights to efficiently characterize all workloads at scale? This study provides a deeper understanding of workload characteristics and their impact on cloud performance, which can aid in optimizing cloud services. Additionally, it identifies potential areas for future research.<br />Comment: 6 figures, 13 Tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.07250
Document Type :
Working Paper