This course teaches you how to fine-tune powerful vision models and optimize their training for real-world performance. You’ll start by applying transfer learning with a pre-trained ViT-B/16 model, learning how to freeze and selectively unfreeze layers to adapt general visual representations to domain-specific datasets such as retail product images. You’ll then analyze and compare learning-rate schedules, including cosine decay and the one-cycle policy, to understand how each strategy shapes training stability, convergence speed, and validation accuracy. Through hands-on labs, experiment logging, and training-curve interpretation, you’ll practice making informed decisions about which layers to update, which LR schedule to select, and how to balance accuracy with training efficiency. By the end of the course, you’ll be able to fine-tune transformer-based models effectively and choose learning-rate strategies that reduce training time without sacrificing performance.
This course teaches you how to fine-tune powerful vision models and optimize their training for real-world performance. You’ll start by applying transfer learning with a pre-trained ViT-B/16 model, learning how to freeze and selectively unfreeze layers to adapt general visual representations to domain-specific datasets such as retail product images. You’ll then analyze and compare learning-rate schedules, including cosine decay and the one-cycle policy, to understand how each strategy shapes training stability, convergence speed, and validation accuracy.
Through hands-on labs, experiment logging, and training-curve interpretation, you’ll practice making informed decisions about which layers to update, which LR schedule to select, and how to balance accuracy with training efficiency. By the end of the course, you’ll be able to fine-tune transformer-based models effectively and choose learning-rate strategies that reduce training time without sacrificing performance.
涵盖的内容
6个视频2篇阅读材料3个作业
显示有关单元内容的信息
6个视频•总计14分钟
Introduction and Welcome•3分钟
Why Transfer Learning Accelerates Vision Training•2分钟
Walkthrough: Unfreezing the Final Four Transformer Blocks in Keras•4分钟
Why Learning-Rate Schedules Shape Convergence•2分钟
Visualizing LR Schedules & Training Curves in Keras•2分钟
Congratulations and Continuous Learning Journey•2分钟
2篇阅读材料•总计20分钟
How ViT-B/16 Learns Features and Why Layer Unfreezing Matters•10分钟
Cosine versus One-Cycle Policies and Their Influence on Training•10分钟
3个作业•总计50分钟
Hands-On Activity: Fine-Tune ViT-B/16 for Retail Images and Log Experiment Decisions•15分钟
Hands-On Activity: Compare LR Schedules & Choose One That Improves Training Time•15分钟
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