Comparing 2D and Augmented Reality Visualizations for Microservice System Understandability: A Controlled Experiment

Authors: Amr S. Abdelfattah, Tomas Cerny, Davide Taibi, Sira Vegas

The paper (10 pages) is accepted in ICPC 2023
License: CC BY 4.0

Abstract: Microservice-based systems are often complex to understand, especially when their sizes grow. Abstracted views help practitioners with the system understanding from a certain perspective. Recent advancement in interactive data visualization begs the question of whether established software engineering models to visualize system design remain the most suited approach for the service-oriented design of microservices. Our recent work proposed presenting a 3D visualization for microservices in augmented reality. This paper analyzes whether such an approach brings any benefits to practitioners when dealing with selected architectural questions related to system design quality. For this purpose, we conducted a controlled experiment involving 20 participants investigating their performance in identifying service dependency, service cardinality, and bottlenecks. Results show that the 3D enables novices to perform as well as experts in the detection of service dependencies, especially in large systems, while no differences are reported for the identification of service cardinality and bottlenecks. We recommend industry and researchers to further investigate AR for microservice architectural analysis, especially to ease the onboarding of new developers in microservice~projects.

Submitted to arXiv on 03 Mar. 2023

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