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Cloud infrastructure management now relies on predictive maintenance to decrease downtime, improve system dependability, and maximize resource use.Traditional reactive and preventative maintenance solutions are unable to handle current cloud systems' complexity and size.Intelligent, data-driven maintenance solutions are needed as cloud infrastructure spreads.This article discusses the problems, methods, and advantages of using machine learning (ML) for predictive maintenance in cloud systems.Machine learning is ideal for predictive maintenance because it can evaluate vast amounts of data and find trends.Cloud infrastructure produces massive volumes of operational data, so machine learning models can identify possible issues and avoid unexpected outages.This study discusses predictive maintenance using supervised, unsupervised, and reinforcement machine learning techniques.We examine how these algorithms may forecast hardware failures, network difficulties, and software flaws.This article emphasizes integrating predictive maintenance technologies into cloud management frameworks.Embedding machine learning models into cloud operations requires architectural considerations for data collection, processing, and model deployment.Keeping predictive models accurate and scalable in dynamic and constantly developing cloud systems is another topic of the article.Another topic of this study is anomaly identification in predictive maintenance.Machine learning's anomaly detection subgroup is essential for detecting operational abnormalities that may signify problems.We evaluate anomaly detection approaches including clustering, statistical methods, and deep learning on cloud infrastructure.Continuous learning and adaptability in machine learning models are also stressed in the article to keep them successful on the cloud.Multi-cloud and hybrid cloud predictive maintenance difficulties are also discussed in the article.These settings are complicated by the variety of platforms, technologies, and operating approaches.Federated learning and transfer learning enable knowledge to be shared across cloud platforms without compromising data privacy or security.In addition to technical concerns, the research addresses predictive maintenance's economic influence on cloud infrastructure.Predictive maintenance reduces unnecessary downtime and extends hardware and software lifespan, saving money.The financial advantages of predictive maintenance solutions in cloud systems and their ROI for enterprises are shown in case studies.This article concludes with predictions for cloud infrastructure predictive maintenance, including the possibilities for AI and machine learning automation.We discuss the effects of these changes on cloud service providers and their clients, as well as predictive maintenance as a service business models.Finally, machine learning-driven predictive maintenance transforms cloud infrastructure management.Advanced algorithms and large-scale data analysis may help organisations prevent problems, improve cloud service dependability, and save costs.This article reviews the current level of predictive maintenance in cloud systems and discusses its difficulties, prospects, and future directions.
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International Research Journal of Modernization in Engineering Technology and Science
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www.synapsesocial.com/papers/68e59e8eb6db6435875387c5 — DOI: https://doi.org/10.56726/irjmets61247