Autonomous DevOps: Integrating RPA, AI, and ML for Self-Optimizing Development Pipelines

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Publication Information

Journal Title: Asian Journal of Multidisciplinary Research & Review
Author(s): Kamala Venigandla & Navya Vemuri
Published On: 25/03/2022
Volume: 3
Issue: 2
First Page: 214
Last Page: 231
ISSN: 2582-8088
Publisher: The Law Brigade Publisher

Cite this Article

Kamala Venigandla & Navya Vemuri, Autonomous DevOps: Integrating RPA, AI, and ML for Self-Optimizing Development Pipelines, Volume 3 Issue 2, Asian Journal of Multidisciplinary Research & Review, 214-231, Published on 25/03/2022, Available at https://ajmrr.thelawbrigade.com/article/autonomous-devops-integrating-rpa-ai-and-ml-for-self-optimizing-development-pipelines/

Abstract

The research explores the paradigm of Autonomous DevOps, which integrates Robotic Process Automation (RPA), Artificial Intelligence (AI), and Machine Learning (ML) technologies to create self-optimizing development pipelines. Through a mixed-methods approach encompassing case studies, surveys, interviews, and data analysis, the paper investigates the implementation, benefits, challenges, and future directions of Autonomous DevOps practices. The implementation of Autonomous DevOps enables organizations to automate routine tasks, optimize workflows, and proactively address potential issues in their development pipelines. By leveraging RPA, AI, and ML technologies, organizations can achieve greater efficiency, agility, and innovation in their software delivery processes. Case studies illustrate diverse approaches and strategies for implementing Autonomous DevOps across different organizations, highlighting the transformative impact on development practices. The paper identifies significant benefits of adopting Autonomous DevOps, including accelerated time-to-market, improved reliability, scalability, and resilience. However, challenges such as security, compliance, ethical considerations, and organizational culture must be addressed to realize the full potential of Autonomous DevOps. Future directions and opportunities for further research and innovation in Autonomous DevOps are also discussed, including the integration of DevSecOps principles, cloud-native technologies, edge computing, and DevOps-as-a-Service (DaaS) platforms. Through the research, we underscore the transformative potential of Autonomous DevOps in revolutionizing software development practices. By embracing automation, artificial intelligence, and machine learning, organizations can navigate the complexities of modern software development and drive digital innovation in an increasingly competitive and dynamic landscape.

Keywords: Artificial Intelligence (AI), DevOps Practices, Robotic Process Automation (RPA), Machine Learning (ML), Autonomous DevOp

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Kamala Venigandla & Navya Vemuri

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