Enhanced Software Deployment and Integration with an Integrated CI/CD Pipeline


연구 분야: Software Development



학회: 2024 International Conference on Smart Technologies for Sustainable Development Goals (ICSTSDG)


초록

This article will present a new approach for enhancing CI/CD pipelines in the deployment of automotive software based on the cloud. The automobile industry has become dependent more and more on complex software systems; therefore, reliable procedures for deployment are essential. The proposed system integrates LSTM neural networks to exploit predictive analytics and contribute toward better decision-making at each phase of the software development lifecycle. This system ranks test cases according to the probability of failure; it optimizes resource allocation; automates code reviews; and reduces the manual involvement dramatically by analyzing historical data and real-time feedback. Important aspects of architecture include predictive deployment manager, smart build orchestrator, and an automated monitoring system, and everything is designed to really work well within a cloud context. Significant advantages with regard to deployment time as well as resource utilization, and early mistake identification over conventional CI/CD systems have been found when experimental results are compared with them. This novel approach successfully enhances the capability and security level of software deployment for cars, while also providing a scalable framework for further studies in machine learning-enhanced CI/CD systems, potentially applied to other high-stakes industries, such as aerospace and healthcare.


Author Profile
Kumar P

Department of CSE Rajalakshmi Engineering College Chennai India

India
Author Profile
Senthil Pandi S

Department of CSE Rajalakshmi Engineering College Chennai India

India
Author Profile
R.M. Suchindhar

Department of CSE Rajalakshmi Engineering College Chennai India

India

📄 논문 정보

발행 연도 2024년
인용수 29
출판 국가 India
사이트 IEEE
좋아요 수 0

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