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| | Download PDFOpen PDF in browser Download PDFOpen PDF in browserOptimizing Data Warehousing Performance Through Machine Learning Algorithms in the CloudEasyChair Preprint 116799 pages•Date: January 4, 2024AbstractThis comprehensive overview explores the integration of machine learning (ML) in data warehousing, focusing onoptimization challenges, methodologies, results, and future trends. Data warehouses, central to reporting and analysis, undergo a
 transformative shift with ML, addressing challenges like high maintenance costs and failure rates. The integration enhances
 performance through query optimization, indexing, and automated data management. Results showcase ML's application in predictive
 analytics for workload management, automated query optimization, and adaptive resource allocation, thus improving efficiency.
 However, challenges include data privacy, security concerns, and skill/resource constraints. The future scope anticipates trends like
 Explainable AI, Automated ML, Augmented Analytics, Federated Learning, and Continuous Intelligence, offering potential impacts on
 decision-making, resource allocation, data management, privacy, and real-time responsiveness. This succinct summary encapsulates the
 critical aspects of ML in data warehousing for holistic understanding.
 Keyphrases: Cloud, Data Warehousing, algorithm, machine learning | 
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