As a practitioner of Deep Learning, I am trying to bring many relevant topics under one umbrella in the following topics. Deep Learning has been most talked about for the last few years and the knowledge has been spread across multiple places.1. The content (80% hands-on and 20% theory) will prepare you to work independently on Deep Learning projects2. Foundation of Deep Learning TensorFlow 2.x3. Use TensorFlow 2.x for Regression (2 models)4. Use TensorFlow 2.x for Classifications (2 models)5. Use Convolutional Neural Net (CNNs) for Image Classifications (5 models)6. CNNs with Image Data Generator7. Use Recurrent Neural Networks (RNNs) for Sequence data (3 models)8. Transfer learning9. Generative Adversarial Networks (GANs)10. Hyperparameters Tuning11. How to avoid Overfitting12. Best practices for Deep Learning and Award-winning Architectures
Log in to write a review
Loading reviews...
Explore more courses and learning paths related to Deep Learning by TensorFlow 2.0 Basic to Advance with Python.
Browse more courses from Udemy
See the side-by-side breakdown and our pick by scenario
See the side-by-side breakdown and our pick by scenario
More intermediate-level AI and ML courses
Follow the full Intermediate Computer Vision learning path
Browse 350+ structured AI learning paths from beginner to advanced