
Deep Learning
Machine learning and deep learning are quantitative analysis skills that differentiate the data scientist from the other team members. Not to mention that the field of machine learning is the driving force of artificial intelligence. This course will teach you how to leverage deep learning and neural networks for data science. The technology we employ is TensorFlow 2.0, which is the state-of-the-art deep learning framework.
What You Will LearnĀ
- Master the essential mathematics for understanding deep learning algorithms.
- Build and customize machine learning algorithms from scratch to enhance your control over model architecture.
- Understand key deep learning concepts such as backpropagation, stochastic gradient descent, and batching to optimize your neural network models.
- Learn how to deal with overfitting through early stopping and improve the generalizability of your models.
- Solve complex real-world challenges in TensorFlow 2
- Improve your career prospects by acquiring highly sophisticated technical skills such as deep learning in TensorFlow 2
- Position your profile to capitalize on the ever-growing number of AI development opportunities in the job market
Curriculum
- 13 Sections
- 92 Lessons
- 0m Duration
1. Introduction
1 Lesson
2. Neural Networks Intro
12 Lessons
3. Setting up the environment
7 Lessons
4. Minimal example
5 Lessons
5. Introduction to TensorFlow 2
8 Lessons
6. Deep nets overview
8 Lessons
7. Overfitting
6 Lessons
8. Initialization
3 Lessons
9. Optimizers
7 Lessons
10. Preprocessing
5 Lessons
11. Deeper example
12 Lessons
12. Business case
12 Lessons
13. Conclusion
6 Lessons