Feature Engineering from Scratch
Failed to add items
Sorry, we are unable to add the item because your shopping cart is already at capacity.
Add to Cart failed.
Please try again later
Add to Wish List failed.
Please try again later
Remove from wishlist failed.
Please try again later
Adding to library failed
Please try again
Follow podcast failed
Please try again
Unfollow podcast failed
Please try again
Audible Standard 30-day free trial
Select 1 audiobook a month from our entire collection of titles.
Yours as long as you’re a member.
Get unlimited access to bingeable podcasts.
Standard auto renews for $8.99 a month after 30 days. Cancel anytime.
Buy for $6.30
-
Narrated by:
-
Virtual Voice
-
By:
-
Ajit Singh
This title uses virtual voice narration
Virtual voice is computer-generated narration for audiobooks.
Key Features:
1. Progressive Learning Curve: Carefully structured to guide learners from beginner-level concepts to advanced topics, making it suitable for a wide audience.
2. Hands-On Practical Implementation: Every technique is accompanied by working Python code, enabling readers to immediately apply what they learn.
3. Real-World Case Studies: Includes mini-case studies throughout the chapters to demonstrate the impact of feature engineering on actual machine learning problems.
3. Intuition-First Approach: Complex topics are broken down into simple, easy-to-understand components, building a strong conceptual foundation.
4. End-to-End Capstone Project: A dedicated final chapter guides the reader through a complete DIY project, from data cleaning and feature engineering to model building and evaluation.
To Whom This Book Is For:
1. B.Tech/M.Tech Computer Science Students: An ideal textbook for courses on Machine Learning, Data Science, or Artificial Intelligence, providing both theoretical knowledge and practical lab-ready exercises.
2. Aspiring Data Scientists and ML Engineers: A perfect self-study guide to build one of the most critical and sought-after skills in the industry.
3. Software Developers: A clear and practical resource for developers looking to transition into the field of AI/ML.
4. University Professors and Educators: A well-structured, syllabus-compliant resource for designing and teaching courses on practical machine learning.
5. Data Analysts: A valuable guide for analysts who want to enhance their skill set and move beyond traditional data analysis to predictive modeling.
The core philosophy is "learning by doing." Every chapter is replete with clear explanations, real-world analogies, and practical Python code examples using popular libraries like Pandas, Scikit-learn, and Matplotlib. The focus is not just on how to implement a technique, but on why it works and when to use it.
No reviews yet