Overview
Embark on a journey to master the statistics fundamental to machine learning with 'Statistics for Machine Learning'. This comprehensive guide covers essential topics like supervised, unsupervised, and reinforcement learning as well as equips you with the skills to implement statistical concepts in Python and R.
What this Book will help me do
- Understand the statistical principles underlying machine learning models.
- Differentiate between statistical approaches and machine learning methodologies for problem-solving.
- Acquire skills to input and preprocess data for machine learning using R and Python packages effectively.
- Analyze the performance of models and fine-tune them for various predictive tasks.
- Familiarize with concepts such as clustering, regression, classification, and reinforcement learning in practical contexts.
Author(s)
Pratap Dangeti, the author of this insightful book, is an expert in data science and machine learning, with a strong focus on the statistical aspects of these fields. With a deep passion for educating others, he leverages his vast knowledge to make complex concepts accessible to learners of all backgrounds. His hands-on approach and practical insights bring real-world relevance to his teachings.
Who is it for?
This book is perfect for developers with minimal to no statistics background who are eager to integrate machine learning capabilities into their applications. Those with basic programming experience in R or Python will find this book especially accessible and useful. It caters to a curious audience wanting to understand and apply statistical concepts in machine learning scenarios. If you're looking to bridge your statistical skills gap for machine learning projects, this book is an ideal resource.