<p>MCQ for Data Science Users</p>
<p>Prepare for success with 5000+ data science multiple-choice questions (English Edition)</p>
- English
- ePUB (mobile friendly)
- Only available on web
<p>MCQ for Data Science Users</p>
<p>Prepare for success with 5000+ data science multiple-choice questions (English Edition)</p>
About This Book
This book intends to provide a collection of various MCQs on data science
Key Features
? Comprehensive coverage of data science concepts and features.
? Multiple-choice questions to test and assess knowledge effectively.
? Over 5000 multiple-choice questions for practice.
Description
This book is a comprehensive manual created to assess and improve your comprehension of many concepts and methodologies in data science. The course encompasses a broad spectrum of subjects, such as data preprocessing, Machine Learning techniques, data visualization, statistical analysis, and additional topics. Every chapter is organized with a series of multiple-choice questions that test your understanding and allow you to evaluate your expertise in the subject.The book's objective is to offer a pragmatic and captivating approach for readers to enhance their proficiency in data science through practical exercises. The book provides an extensive examination of several subjects in data science, encompassing data preprocessing, statistical analysis, Machine Learning techniques, data visualization, and additional areas.This extensive knowledge helps readers acquire a full and all-encompassing comprehension of the subject matter. The chapters in this book adhere to a structured framework, which includes multiple-choice questions that enable readers to assess their understanding and grasp of the content.
What you will learn
? Mastering data science concepts through multiple-choice questions.
? Strengthening problem-solving skills by practicing diverse scenarios.
? Interpreting the results of data analyses and Machine Learning models effectively.
? Evaluating the performance of different Machine Learning models using metrics.
? Developing critical thinking skills to assess the suitability of various data science approaches.
? Preparing for exams, interviews, and quizzes, etc.
Who this book is for
This data science MCQ book is perfect for anyone looking to test and improve their knowledge of data through multiple-choice questions.
Table of Contents
1. Fundamental of Data Science and Data Analytics
2. Data Science Tools and Applications
3. Fundamentals of Programming
4. Introduction to Python Programming
5. Data Analysis: NumPy and Pandas Library
6. Data Visualization: Matplotlib and Seaborn Library
7. Data Structures and Algorithms
8. Database Management and Warehousing
9. Data Acquisition, Data Mining and Big Data
10. Data Pre-processing and Feature Engineering
11. Probability and Statistics
12. Linear Algebra
13. Calculus and Optimization
14. Artificial Intelligence
15. Machine Learning
16. Deep Learning
17. Pattern Recognition and Knowledge Representation
18. Natural Language Processing and Text Analytics
19. Web Analytics and Mining
20. Computer Vision
Frequently asked questions
Information
Table of contents
- Cover
- Title Page
- Copyright Page
- Dedication Page
- About the Authors
- Acknowledgement
- Preface
- Table of Contents
- 1.âFundamental of Data Science and Data Analytics
- 2.âData Science Tools and Applications
- 3.âFundamentals of Programming
- 4.âIntroduction to Python Programming
- 5.âData Analysis: NumPy and Pandas Library
- 6.âData Visualization: Matplotlib and Seaborn Library
- 7.âData Structures and Algorithms
- 8.âDatabase Management and Warehousing
- 9.âData Acquisition, Data Mining and Big Data
- 10.âData Pre-processing and Feature Engineering
- 11.âProbability and Statistics
- 12.âLinear Algebra
- 13.âCalculus and Optimization
- 14.âArtificial Intelligence
- 15.âMachine Learning
- 16.âDeep Learning
- 17.âPattern Recognition and Knowledge Representation
- 18.âNatural Language Processing and Text Analytics
- 19.âWeb Analytics and Mining
- 20.âComputer Vision