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#032- Simon Kornblith / GoogleAI - SimCLR and Paper Haul!

Machine Learning Street Talk (MLST)

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Advancements in Data Augmentation and Contrastive Learning

This chapter examines the critical role of data augmentation in contrastive learning, particularly within the SimCLR framework. It highlights the differences in augmentation strategies for contrastive versus supervised tasks, and discusses the impact of pretrained models like ImageNet on various datasets. The conversation also delves into machine learning challenges and the potential for incorporating external knowledge to improve representation learning and model accuracy.

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