Publication:
Anomaly Detection in Microservice Systems Using Autoencoders

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Abstract

The adaptation of microservice architecture has increased massively during the last few years with the emergence of the cloud. Containers have become a common choice for microservices architecture instead of VMs (Virtual Machines) due to their portability and optimized resource usage characteristics. Along with the containers, container-orchestration platforms are also becoming an integral part of microservice-based systems, considering the flexibility and scalability offered by the container-orchestration media. With the virtualized implementation and the dynamic attribute of modern microservice architecture, it has been a cumbersome task to implement a proper observability mechanism to detect abnormal behaviour using conventional monitoring tools, which are most suitable for static infrastructures. We present a system that will collect required data with the understanding of the dynamic attribute of the system and identify anomalies with efficient data analysis methods.

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Anomaly Detection, Microservice Systems, Autoencoders

Citation

M. d. Silva, S. Daniel, M. Kumarapeli, S. Mahadura, L. Rupasinghe and C. Liyanapathirana, "Anomaly Detection in Microservice Systems Using Autoencoders," 2022 4th International Conference on Advancements in Computing (ICAC), Colombo, Sri Lanka, 2022, pp. 488-493, doi: 10.1109/ICAC57685.2022.10025259.

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