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ML works with structured data, while DL processes complex, unstructured data. ML requires less computing power, whereas DL excels with large datasets. Introduction In todays world of AI, both Machine Learning (ML) and Deep Learning (DL) are transforming industries, yet many confuse the two. billion by 2034.
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million by 2034, growing at an impressive CAGR of 14.2%. Exalytics delivers lightning-fast dataanalysis and visualisation capabilities. Exadata accelerates query execution and optimises storage for large-scale data management. They now support AI/ML workloads, enabling enterprises to train and deploy models faster.
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