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Description

In this episode of The Digital Shift, we discuss how data augmentation helps AI teams improve model accuracy without collecting large amounts of new data.

We cover how controlled changes to images, text, and tabular data improve dataset variety, reduce overfitting, and fix class imbalance.

The episode also explains online vs. offline augmentation, key use cases in healthcare, manufacturing, and finance, and risks such as label errors and data bias.

Want to improve AI model accuracy without collecting more data?

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