Classical Machine Learning
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Narrated by:
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Virtual Voice
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By:
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Ajit Singh
This title uses virtual voice narration
Virtual voice is computer-generated narration for audiobooks.
Philosophy
The guiding philosophy of this book is "Application First, Theory in Service of Application." In the world of technology and data science, the value of knowledge is measured by its ability to produce a tangible outcome—a working model, a deployed application, or an actionable insight. This book is engineered around that reality. I intentionally move away from a purely academic treatment of machine learning, which can be intimidating and abstract, and instead adopt the mindset of a practitioner.
Key Features
1. Strictly Practical Focus: Over 70% of the content is dedicated to hands-on coding, examples, and case studies.
2. End-to-End Project-Based Learning: The book culminates in a full capstone project in Chapter 10, guiding you through every stage from problem definition to a functional prototype.
3. Industry-Standard Tooling: All examples are implemented in Python using the Scikit-Learn, Pandas, NumPy, and Matplotlib/Seaborn libraries, ensuring the skills you learn are immediately transferable to the workplace.
4. Simplified Algorithms: Complex algorithmic logic is broken down into simple, numbered steps that are easy to understand and follow.
5. Deployment-Ready Concepts: Chapter 9 is specifically dedicated to model evaluation, selection, and the fundamentals of deploying models as services, a critical skill often overlooked in introductory texts.
6. University Syllabus Compatibility: The structure and topics have been carefully selected to align with the core curriculum of undergraduate (B.Tech) and graduate (M.Tech) computer science programs in the USA and other international universities.
7. For Beginners and Beyond: The step-by-step approach makes the book accessible to absolute beginners, while the focus on implementation best practices, model evaluation, and deployment provides significant value for advanced learners and professionals.
Key Takeaways
Upon completing this book, you will be able to:
1. Understand and Articulate the fundamental concepts, types, and applications of classical machine learning.
2. Implement a wide range of supervised and unsupervised machine learning models from scratch using Python's Scikit-Learn library.
3. Process and Prepare raw data for machine learning tasks, a crucial step in any real-world project.
4. Select the Appropriate Algorithm for a given business problem based on its characteristics and the nature of the data.
5. Evaluate and Compare the performance of different models using standard industry metrics and techniques like cross-validation.
6. Tune Model Hyperparameters to optimize performance.
7. Design and Build a complete, end-to-end machine learning project, from data acquisition to a final predictive solution.
8. Comprehend the Basics of Model Deployment, turning a trained model into a usable service.
Disclaimer: Earnest request from the Author.
Kindly go through the table of contents and refer kindle edition for a glance on the related contents.
Thank you for your kind consideration!
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