The process of building a machine learning (ML) model is iterative until you find the candidate model that is performing well and is ready to be deployed. As data scientists iterate through that process, they need a reliable method to easily track experiments to understand how each model version was built and how it performed.
Amazon SageMaker allows teams to take advantage of a broad range of features to quickly prepare, build, train, deploy, and monitor ML models. Amazon SageMaker Pipelines provides a repeatable process for iterating through model build activities, and is integrated with Amazon SageMaker Experiments. By default, every SageMaker pipeline is associated with an experiment, and every run of that pipeline is tracked as a trial in that experiment. Then your iterations are automatically tracked without any additional steps.
In this post, we take a closer look at the motivation behind having an automated process to track

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