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#044 - Data-efficient Image Transformers (Hugo Touvron)

Machine Learning Street Talk (MLST)

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Transforming Image Processing with Data-Efficient Techniques

This chapter explores the intricacies of Data-efficient Image Transformers (DIT), focusing on innovative training strategies and the role of data augmentation. It delves into the balance between preserving image labels while enhancing learning through augmentations and examines the advantages of transformers over traditional convolutional networks. Additionally, the discussion highlights the patch extraction process in transformers and its implications for image classification, particularly in applications like self-driving technology.

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