Insight from a Containerized Kubernetes Workload Introspection

Date
2021-01-05
Authors
Watts, Thomas
Benton, Ryan
Shropshire, Jordan
Bourrie, David
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6955
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Abstract
Developments in virtual containers, especially in the cloud infrastructure, have led to diversification of jobs that containers are being used to support, particularly in the big data and machine learning spaces. The diversification has been powered by the adoption of orchestration systems that marshal fleets of containers to accomplish complex programming tasks. The additional components in the vertical technology stack, plus the continued horizontal scaling have led to questions regarding how to forensically analyze complicated technology stacks. This paper proposed a solution through the use of introspection. An exploratory case study has been conducted on a bare-metal cloud that utilizes Kubernetes, the introspection tool Prometheus, and Apache Spark. The contribution of this research is two-fold. First, it provides empirical support that introspection tools can acquire forensically viable data from different levels of a technology stack. Second, it provides the ground work for comparisons between different virtual container platforms.
Description
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Cyber Operations, Defence, and Forensics, big data, containers, forensics, kubernetes, spark
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10 pages
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Proceedings of the 54th Hawaii International Conference on System Sciences
Table of Contents
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Attribution-NonCommercial-NoDerivatives 4.0 International
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