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GTC ON-DEMAND

Deep Learning & AI Frameworks
Presentation
Media
Automatic Model Tuning in Practice Using Bayesian Hyperparameter Tuning
Abstract:
Tuning hyperparameters is a time-consuming and costly task. More an art than a science, it often takes long hours to arrive at a good combination of parameters such as batch size, learning rate, optimizer, number of layers, number of nodes in a layer, and potentially tens of others. We'll discuss how automating the process of finding the best combination of parameters, based on a data-centric and repeatable method, can save time and result in better models. We will explain the theory of Bayesian hyperparameter optimization and provide hands-on labs to help attendees learn how to take advantage of Amazon SageMaker's Automatic Model Tuning.
 
Topics:
Deep Learning & AI Frameworks, Advanced AI Learning Techniques
Type:
Talk
Event:
GTC Silicon Valley
Year:
2019
Session ID:
S9372
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