Linked e-resources
Details
Table of Contents
Part I Fundamentals
1. Introduction
2. The landscape of machine learning
3. Linear models
4. Tree-based models
5. Clustering data
Part II Deep Neural Networks
6. Feed-forward Neural networks
7.convolutional neural networks
8. Recurrent neural networks for time series data
Part III Advanced topics in machine learning
9. Unsupervised learning with neural networks
10. Reinforcement learning
11. Transfer learning
Part IV Appendixes
Appendix A. Sci-Kit learn
Appendix B. Tensorflow.
1. Introduction
2. The landscape of machine learning
3. Linear models
4. Tree-based models
5. Clustering data
Part II Deep Neural Networks
6. Feed-forward Neural networks
7.convolutional neural networks
8. Recurrent neural networks for time series data
Part III Advanced topics in machine learning
9. Unsupervised learning with neural networks
10. Reinforcement learning
11. Transfer learning
Part IV Appendixes
Appendix A. Sci-Kit learn
Appendix B. Tensorflow.