Exploring nonintrusive measurements of spatio‐temporal portrait of microservices

Author:

Zeng Tao1ORCID,Xu Zichen1ORCID,Wu Dan1,Li Xiaoling2,Liu Biyong1,Hu Haichuan1,Tan Shuang2,Tan Yusong2,Xu Chenren3,Stewart Christopher4,Zhou Qihe5,Cao Ye1

Affiliation:

1. School of Mathematics and Computer Sciences Nanchang University Nanchang China

2. College of Computer National University of Defense Technology Hunan China

3. School of Computer Science Peking University Beijing China

4. Computer Science and Engineering The Ohio State University Columbus Ohio USA

5. Faculty of Data Science City University of Macau Macao China

Abstract

AbstractAs cloud native technology advances, the scale and complexity of applications built on microservice architecture continue to expand, leading to increasingly intricate differences between software within the same application. Microservice applications, offering high flexibility, are deployed in data centers as black boxes from the users' perspective, leaving them with no insight into the orchestration of cloud service providers. Consequently, users face challenges in promptly recognizing performance imbalances within their deployed applications. Meanwhile, cloud service providers may cut costs by offering a mix of qualified and unqualified services, potentially deceiving users. To enhance the understanding of microservice application organization, we propose a non‐intrusive measurement framework, termed NMPI. NMPI facilitates rapid identification of microservice application defects, offering insights into cloud services and detecting fraudulent behavior in microservice‐based applications. We model microservice applications using a queue analysis‐based approach and filter the dominant frequency components of average response time signals by employing k‐means on the fast fourier transform (FFT). Our model constructs a library of performance portraits for various software, with these portraits resembling human fingerprints that carry and mark the software's internal information. Utilizing a two‐tier microservices‐based application incorporating a database as a case study allows us to demonstrate the effectiveness of NMPI. Our experimental results show that NMPI can produce differentiable profiles of data service performance portraits across a diverse and extensive range of workloads, enabling the identification of software types and the analysis of performance conditions.

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

Publisher

Wiley

Subject

Software

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