The Colabs in this course are out of date and will be removed in July 2024.
ML Practicum: Image Classification
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Exercise 2: Preventing Overfitting
In this exercise, you'll improve the CNN model for cat-vs.-dog
classification you built in Exercise 1 by applying
data augmentation and dropout regularization:
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Last updated 2022-07-18 UTC.
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