Get startedGet started for free

Wrap-up video

1. Wrap-up video

This introduction to deep learning in PyTorch is coming to an end. You have learned so much and I hope you enjoyed this course.

2. Summary

In the first chapter, you discovered deep learning, learned how to create neural networks, and learned all about linear layers. In the second chapter, you were introduced to more neural network components like activation functions and loss functions. You used PyTorch to calculate derivatives and used the backpropagation algorithm. In the third chapter, you trained your first neural network and learned the impact of the learning rate and the momentum. Finally, in the last chapter, you learned all about improving and evaluating your model to reduce overfitting and more.

3. Next steps

Here are some courses you can take next to continue on your learning journey. If you want to push further and expand your deep learning knowledge, I suggest strengthening your understanding of probabilities, linear algebra, and calculus. Practice is essential here so remember to apply your skills. Here is a hands-on project in DataLab, your playground for deep learning and machine learning challenges. Finally, take your expertise even further by using your skills to create something tangible, like a smartphone app or an innovative project of your own.

4. Let's practice!

Deep learning is an exciting field with tons of opportunities and I am very excited for you to be at the beginning of this journey. Good luck!