Free Download Machine Learning Concepts from A to Z: A Comprehensive Guide with Code: Machine Learning Mastery: From A to Z with Code – Practical Examples, Algorithms, and Applications
by Vanshika Choudhary
English | 2023 | ASIN: B0CL7M4LLZ | 131 Pages | PDF (conv) | 12 MB
"Machine Learning Concepts from A to Z: A Comprehensive Guide with Code"
Are you eager to unlock the potential of machine learning, from its fundamental principles to practical implementation? Look no further. "Machine Learning Concepts from A to Z" is your all-encompassing, go-to guide for understanding and harnessing the power of machine learning.
This book takes you on an educational journey through the complex universe of machine learning, providing a clear and structured roadmap for both beginners and seasoned professionals. What sets this book apart is its unique combination of in-depth explanations, real-world applications, and practical code examples, making it an invaluable resource for anyone looking to demystify the world of machine learning.
Key Features:
Comprehensive Coverage: From the foundational concepts to the most advanced techniques, this book explores machine learning from A to Z. No matter your skill level, you’ll find something new and valuable to learn.
Code Samples: Each concept is accompanied by practical code examples in popular programming languages. You’ll be able to implement what you learn immediately, accelerating your mastery of machine learning.
Real-World Insights: Discover how machine learning is transforming diverse fields, including healthcare, finance, and more. Gain a deep understanding of how these innovations are reshaping industries.
Data Handling: Learn the importance of data in machine learning, how to preprocess it, and the advantages and disadvantages of different data types.
Types of Machine Learning: Explore the three main types of machine learning-supervised, unsupervised, and reinforcement learning- and gain insight into when to use each one.
Classification and Regression: Dive into classification and regression, with detailed explanations, common algorithms, and practical applications.
Dimensionality Reduction: Understand the importance of dimensionality reduction and its two main components: feature selection and feature extraction.
Decision Trees and More: Explore decision trees, logistic regression, Naive Bayes, and neural networks with hands-on examples.
Gradient Descent: Master the nuances of gradient descent, including batch, stochastic, and mini-batch approaches, and discover their pros and cons.
Overfitting and Underfitting: Learn how to recognize and address these common issues in machine learning models.
Leave a Reply
You must be logged in to post a comment.