New Arrivals/Restock

Data Cleaning and Exploration with Machine Learning: A practical guide to machine learning and data exploration with Python and Scikit-learn (English Edition) 1st Edition, Kindle Edition

flash sale iconLimited Time Sale
Until the end
02
49
53

US$16.75 cheaper than the new price!!

Free shipping for purchases over $99 ( Details )
Free cash-on-delivery fees for purchases over $99
Please note that the sales price and tax displayed may differ between online and in-store. Also, the product may be out of stock in-store.
Used  US$11.16
quantity

Product details

Management number 220802608 Release Date 2026/05/03 List Price US$11.16 Model Number 220802608
Category

Machine learning has become central to how organizations handle data in today’s world. With businesses generating vast amounts of information, the ability to clean, explore, and model data effectively is no longer optional, it is a critical skill for decision-making, innovation, and competitive advantage.This book takes readers on a structured journey, starting with Python foundations and essential libraries. It discusses data cleaning, preprocessing, and exploratory analysis, and then explores text and time series data, dimensionality reduction, regression, classification, and clustering techniques. Advanced topics such as model evaluation, neural networks, deep learning, retrieval-augmented generation, and explainable AI are covered in detail, which are supported by real-world examples and case studies. Each chapter builds progressively, ensuring both theoretical grounding and practical application, and vital industry practices.By the end of the book, readers will be equipped with the skills to handle raw datasets, uncover patterns, build and evaluate ML models, and apply advanced techniques responsibly. You will be confident in applying these methods to solve problems in their domains, making yourself a competent data practitioner, ready to deliver insights and drive impact.What you will learn● Understand Python foundations and essential data science libraries.● Apply data cleaning methods to handle missing or noisy data.● Perform exploratory data analysis using statistics and visualization.● Work with text, time-series, and high-dimensional datasets.● Build regression, classification, and clustering ML models.● Evaluate models with metrics, validation, and hyperparameter tuning.● Explore neural networks, deep learning, and explainable AI techniques.● Implement real-world case studies and capstone data projects.Who this book is forThis book is for data analysts, data scientists, ML engineers, and business professionals who want to strengthen their skills in data preparation and modeling. It is also valuable for students, researchers, and software developers aiming to apply ML techniques effectively in real-world projects.Table of Contents1. Introduction to Data Science and Machine Learning2. Setting Up Your Development Environment3. Introduction to Integrated Development Environments4. Exploring Essential Python Libraries5. Introduction to Data Cleaning6. Exploratory Data Analysis Made Easy7. Demystifying Data Preprocessing from Raw to Refined8. Unraveling Insights from Text and Time Series Data9. Dimensionality Reduction Techniques10. Building Regression Models for Confident Predictions11. Supervised Learning for Developing Classification Models12. Discovering Hidden Patterns with Clustering Techniques13. Ensuring Model Reliability Through Evaluation14. Techniques and Applications of RAG Pipelines15. Fine-tuning and Evaluating Base LLMs16. Putting It All Together with Case Studies17. Best Practices and Tips from Industry Experts18. Conclusion and Further Resources Read more

XRay Not Enabled
Edition 1st
Language English
File size 26.9 MB
Page Flip Enabled
Publisher BPB Publications
Word Wise Not Enabled
Print length 850 pages
Accessibility Learn more
Screen Reader Supported
Publication date December 2, 2025
Enhanced typesetting Enabled

Correction of product information

If you notice any omissions or errors in the product information on this page, please use the correction request form below.

Correction Request Form

Product Review

You must be logged in to post a review