Amazon SageMaker is a fully managed service that allows users to build, train, and deploy machine learning (ML) models for any use case. It provides fully managed infrastructure, tools, and workflows to enable more people to innovate with ML.
Features
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A choice of tools for data scientists and business analysts.
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Ability to access, label, and process large amounts of structured and unstructured data for ML.
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Reduced training time from hours to minutes with optimized infrastructure.
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Up to 10 times increase in team productivity with purpose-built tools.
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Automated and standardized MLOps practices and governance across organizations to support transparency and auditability.
Use Cases
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Business analysts can make ML predictions using a visual interface with SageMaker Canvas.
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Data scientists can prepare data and build, train, and deploy models with SageMaker Studio.
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ML engineers can deploy and manage models at scale with SageMaker MLOps.
Amazon SageMaker also supports the leading ML frameworks, toolkits, and programming languages. It is built on Amazon’s two decades of experience developing real-world ML applications, including product recommendations, personalization, intelligent shopping, robotics, and voice-assisted devices.
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