Self-supervised learning is a machine learning paradigm that uses unlabeled data to obtain useful representations for downstream tasks. It consists of two steps: generating pseudo-labels and then performing supervised or unsupervised learning. It has been used in audio processing and speech recognition, and more closely imitates the way humans learn to classify objects.
UC Berkeley
Fall 2022
An advanced course dealing with deep networks in the fields of computer vision, language technology, robotics, and control. It delves into the themes of deep learning, model families, and real-world applications. A strong mathematical background in calculus, linear algebra, probability, optimization, and statistical learning is necessary.
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