Human-Machine Interfaces in DevOps: Enhancing Developer Experience through Augmented Reality and Virtual Collaboration
DOI:
https://doi.org/10.36676/jrps.v12.i4.1598Keywords:
Human-Machine Interfaces, Augmented Reality and Virtual CollaborationAbstract
This assignment focuses on adopting AR and VR in the DevOps process to improve the developer experience and the DevOps process chain. The goal is to understand what these enhanced interfaces might offer and how, in turn, they can solve problems, alleviate inefficiencies, and improve organizational communication that allows for more streamlined and efficient workspaces. Techniques include exploring current research on the use of AR/VR in software technology and using case studies showing how this technology may help in some actual scenarios. The main findings include the fact that AR and VR play a valuable role in improving the efficiency of visual debugging, providing various opportunities for remote collaboration, and optimizing the training and onboarding of developers. However, problems exist, such as high implementation costs, demand for special equipment, and user adaptation. To address these issues, some recommendations include a gradual approach to AR/VR applications, user training, and using cloud-based solutions. Based on the above analysis, it is possible to conclude that both AR and VR have great potential for changing the field of DevOps; however, to accomplish this task, it is necessary to plan and implement them systematically and support their application effectively.
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