Overview
Explore a detailed explanation of the SimCLRv2 paper, which demonstrates the significant benefits of self-supervised pre-training for semi-supervised learning. Learn how this effect becomes more pronounced with fewer available labels and larger model parameters. Dive into key concepts including semi-supervised learning, self-supervised pre-training, contrastive loss, projection head retention, supervised fine-tuning, and unsupervised distillation. Examine the proposed three-step semi-supervised learning algorithm and its impressive results on ImageNet classification. Gain insights into the architecture, experiments, and broader impact of this approach that achieves state-of-the-art label efficiency for image classification tasks.
Syllabus
- Intro & Overview
- Semi-Supervised Learning
- Pre-Training via Self-Supervision
- Contrastive Loss
- Retaining Projection Heads
- Supervised Fine-Tuning
- Unsupervised Distillation & Self-Training
- Architecture Recap
- Experiments
- Broader Impact
Taught by
Yannic Kilcher