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In that sense, data modernization is synonymous with cloud migration. Modern data architectures, like cloud data warehouses and cloud datalakes , empower more people to leverage analytics for insights more efficiently. Data modernization helps you manage this process intelligently.
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The use of separate data warehouses and lakes has created datasilos, leading to problems such as lack of interoperability, duplicate governance efforts, complex architectures, and slower time to value. You can use Amazon SageMaker Lakehouse to achieve unified access to data in both data warehouses and datalakes.
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