Mastering Self-Supervised Algorithms for Learning without Labels

Gain insights into self-supervised learning. Delve into pseudo label generation, similarity maximization, redundancy reduction, and masked image modeling to apply and modify these algorithms on unlabelled datasets.

Advanced

31 Lessons

7h

Certificate of Completion

Gain insights into self-supervised learning. Delve into pseudo label generation, similarity maximization, redundancy reduction, and masked image modeling to apply and modify these algorithms on unlabelled datasets.

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Explanations

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Explanations

This course includes

41 Playgrounds

This course includes

41 Playgrounds

Course Overview

This course covers self-supervised algorithms, which are useful for large pools of unlabelled data or when obtaining a high-quality labeled dataset is difficult. These algorithms leverage the supervisory signals from the structure of the unlabeled data to predict any unobserved or hidden property of the input. You’ll start with the fundamentals of self-supervised learning and then implement your first class of algorithms. You’ll learn to generate pseudo labels and use these labels for training models using...Show More

What You'll Learn

An understanding of self-supervised learning and its advantage over unsupervised learning

Working knowledge of designing your self-supervised learning tasks/objectives

Hands-on experience implementing and modifying existing self-supervised learning objectives to learn from unlabelled data

Ability to transfer and evaluate your self-supervised network representations on a downstream task

Familiarity with core components of self-supervised learning, including pretext tasks, similarity maximization, redundancy reduction, and masked image modeling

What You'll Learn

An understanding of self-supervised learning and its advantage over unsupervised learning

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Course Content

1.

Introduction to Self-Supervised Learning

Get familiar with self-supervised learning, leveraging unlabeled data for adaptable model training.
2.

Pretext Tasks

Unpack the core of self-supervised learning through pretext tasks like rotation, positioning, and puzzles.
3.

Similarity Maximization and Redundancy Reduction

Examine techniques for similarity maximization and redundancy reduction through modern self-supervised learning algorithms.
4.

Masked Image Modeling

Grasp the fundamentals of masked image modeling techniques and their applications in self-supervised learning.
5.

Appendix

Dig into key research papers on self-supervised learning advancements and techniques.

Course Author

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Anthony Walker

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Emma Bostian 🐞

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Evan Dunbar

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Carlos Matias La Borde

Software Developer

Souvik Kundu

Front-end Developer

Vinay Krishnaiah

Software Developer

Eric Downs

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Kenan Eyvazov

DevOps Engineer

Anthony Walker

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Emma Bostian 🐞

@EmmaBostian

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