From the course: Artificial Intelligence Foundations: Neural Networks
Next steps
- [Instructor] You've done it. Hug yourself. This is an amazing accomplishment. I hope you had fun learning what neural networks are, how they are used, how to build them, and how to improve them. You have completed a course that will help you apply what you have learned in any setting, whether for work, a school project, or personal growth toward work in the field of artificial intelligence. Of course, there's so much more you can learn about neural networks, so as next steps I suggest the following. Find datasets that classify something and learn about logistic regression by using Google's free Colab Jupyter Notebook to build a Keras sequential model. Assess your neural network for usual problems like overfitting and underfitting. Experiment with more hidden layers and with more or less neurons per layer. Add a callback function or early stopping. Play, play, play, and play some more. If you want to see other examples of data pre-processing and Keras neural networks, check out my new book with co-author Michael Abel entitled "Low-Code AI: A Practical Project-Driven Approach to Machine Learning" and see the downloadable PDF with URLs to resources I recommend for you on your journey. Please feel free to reach out to me on LinkedIn and also join the Machine Learning Community Group on LinkedIn. Thank you for taking the course, and remember, this is your moment.