
Free Download Python Machine Learning Essentials by Bernard Baah, Iyanu Oladiti
English | March 2, 2025 | ISBN: N/A | ASIN: B0DZ42SL1K | 397 pages | EPUB | 17 Mb
Python Machine Learning Essentials by Bernard Baah is your ultimate guide to mastering machine learning concepts and techniques using Python. Whether you're a beginner or an experienced programmer, this book equips you with the knowledge and skills needed to understand and apply machine learning algorithms effectively.
With a comprehensive approach, Bernard Baah takes you through the fundamentals of machine learning, covering Python basics, data preprocessing, exploratory data analysis, supervised and unsupervised learning, neural networks, natural language processing, model deployment, and more. Each chapter is filled with practical examples, code snippets, and hands-on exercises to reinforce your learning and deepen your understanding.
As the founder of Filly Coder (
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!
Whether you're a data scientist, developer, or aspiring AI enthusiast, "Python Machine Learning Essentials" is your go-to resource for mastering machine learning with Python. Dive into the world of machine learning and unlock the potential to build intelligent applications with confidence.
Get your copy of "Python Machine Learning Essentials" today and embark on your journey to becoming a proficient machine learning practitioner.
Contents
Preface: 2
Expanded Table of Contents. 5
Chapter 1. Introduction to Machine Learning. 7
Chapter 2. Python Basics. 9
Chapter 3. Libraries and Frameworks. 12
Chapter 4. Data Preprocessing. 14
Chapter 5. Exploratory Data Analysis (EDA): Descriptive Statistics. 24
Chapter 6. Supervised Learning: Regression and Classification Algorithms. 34
Chapter 7. Unsupervised Learning: Clustering Algorithms. 44
Chapter 8. Ensemble Learning: Bagging and Boosting Techniques. 51
Chapter 9. Neural Networks and Deep Learning: Introduction to Neural Networks. 57
Chapter 10. Natural Language Processing (NLP) 65
Chapter 11. Model Deployment 77
Chapter 12. Reinforcement Learning. 87
Chapter 13. Model Interpretability. 98
Chapter 14. Advanced Topics. 108
Chapter 15. Case Studies. 123
Chapter 16. Ethical Considerations. 133
Chapter 17. Future Trends. 136
Chapter 18. Hands-On Projects. 140
Chapter 19: Advanced Data Visualization Techniques. 142
Chapter 20: Time Series Analysis. 161
Chapter 21: Recommender Systems. 179
Chapter 22: Anomaly Detection. 190
Chapter 23: Advanced Machine Learning Topics. 205
Chapter 24: Model Interpretability and Explainability. 229
Chapter 25: Practical Applications of Machine Learning. 248
Appendix. 266
Sample Solutions to End of Chapter Problems. 276
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!