what are the terms used for training a model in CreateML?
Generated on 2/20/2025
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In the context of training a model in CreateML, the terms used include "training data" and "annotations." The process involves understanding the nature of your annotations to ensure that the model behaves as expected. The CreateML app allows you to train models by choosing a template aligned with your task, and then training, evaluating, and iterating on your model with your data.

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