Python Machine Learning: A Beginner’s Guide to Scikit-Learn
- Length: 483 pages
- Edition: 1
- Language: English
- Publisher: Jamba Academy
- Publication Date: 2023-03-03
- ISBN-10: 1960833049
- ISBN-13: 9781960833044
- Sales Rank: #0 (See Top 100 Books)
Are you ready to dive into the world of Python machine learning?
Look no further! “Python Machine Learning: A Beginner’s Guide to Scikit-Learn” is the perfect guide for you. Written by experienced data scientist, Rajender Kumar, this book takes you on a journey through the basics of machine learning and the powerful Scikit-learn library.
KEY FEATURES:
- Detailed introduction to the fundamentals of machine learning and the Scikit-Learn library.
- Comprehensive coverage of essential concepts such as data preprocessing, model selection, evaluation, and optimization.
- Hands-on experience with real-world datasets and practical projects that will help you develop the skills you need to succeed in machine learning.
- Easy-to-follow explanations and step-by-step examples that make it easy for beginners to get started and advanced users to take their skills to the next level.
- See how machine learning is being used to solve problems in industries such as healthcare, finance and more.
OUTCOME:
- Unlock the earning potential of up to $300k in job after reading the book.
- Boosting your resume.
- Opening doors to new opportunities.
WHAT OTHER PEOPLE SAYS ABOUT THE BOOK:
Don’t just take our word for it – see what other readers have said:
“I was able to understand machine learning concepts and implement them easily with the help of this book.”
“Rajender Kumar’s writing style made the complex concepts easy to understand.”
“I highly recommend this book to anyone looking to learn machine learning with Python.”
Don’t miss out on this opportunity to master the art of Python machine learning with “Python Machine Learning: A Beginner’s Guide to Scikit-Learn”. Get your copy today and start building your own intelligent systems!
WHO THIS BOOK IS FOR?
“Python Machine Learning: A Beginner’s Guide to Scikit-Learn” is intended for a wide range of readers, including:
- Individuals who are new to the field of machine learning and want to gain a solid understanding of the basics and how to apply them using the popular scikit-learn library in Python.
- Data scientists, statisticians, and analysts who are familiar with machine learning concepts but want to learn how to implement them using Python and scikit-learn.
- Developers and engineers who want to add machine learning to their skill set and build intelligent applications using Python.
- Students and researchers who are studying machine learning and want to learn how to apply it using a widely used and accessible library like scikit-learn.
TABLE OF CONTENTS
- Introduction to Machine Learning
- Python: A Beginner’s Overview
- Data Preparation
- Supervised Learning
- Unsupervised Learning
- Deep Learning
- Model Selection and Evaluation
- The Power of Combining: Ensemble Learning Methods
- Real-World Applications of Machine Learning
- Future Directions in Python Machine Learning
- Additional Resources
- Tools and Frameworks
- Datasets
- Career Resources
- Glossary