Transfer Learning for Images Using PyTorch: Essential Training

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Free Online Course: Transfer Learning for Images Using PyTorch: Essential Training provided by LinkedIn Learning is a comprehensive online course, which lasts for Less than 1 hour of material. The course is taught in English and is free of charge. Upon completion of the course, you can receive an e-certificate from LinkedIn Learning. Transfer Learning for Images Using PyTorch: Essential Training is taught by Jonathan Fernandes.

Overview
  • Discover how to implement transfer learning using PyTorch, the popular machine learning framework.

Syllabus
  • Introduction

    • Welcome
    • What you should know before watching this course
    1. What Is Transfer Learning?
    • What is transfer learning?
    • VGG16
    • CIFAR-10 dataset
    2. Transfer Learning: Fixed Feature Extractor
    • Creating a fixed feature extractor
    • Understanding loss: CrossEntropyLoss() and NLLLoss()
    • Autograd
    • Using autograd
    • Training the fixed feature extractor
    • Optimizers
    • CPU to GPU
    • Train the extractor
    • Evaluate the network and viewing images
    • Viewing images and normalization
    • Accuracy of the model
    3. Fine-Tuning the ConvNet
    • Fine-tuning
    • Using fine-tuning
    • Training from the fully connected network onwards
    • Unfreezing and training over the last CNN block onwards
    • Unfreezing and training over the last two CNN block onwards
    4. Further Techniques
    • Learning rates
    • Differential learning rates
    Conclusion
    • Next steps