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Meeting Summary

AIM301-R - [REPEAT] Creating high-quality training datasets with data labeling

Session Description

Amazon SageMaker Ground Truth makes it easy to quickly label high-quality, accurate training datasets. In this workshop, we set up labeling jobs for text and images to help you understand how to make the most of Amazon SageMaker Ground Truth. You learn how to explore and prepare the dataset and label it with object bounding boxes. Then, we use Amazon SageMaker to train a Single Shot MultiBox Detector (SSD) object-detection model based on the labeled dataset, use hyperparameter optimization to find the best model for deployment, and deploy the model to an endpoint for use in an application.

Additional Information
Artificial Intelligence & Machine Learning
300 - Advanced
Please note that session information is subject to change.
Session Schedule