Practical Statistics for Data Scientists (2nd Edition)
Author: Peter Bruce Binding: Paperback Paper Quality: Black & White Paper Category: Data Science / Statistics / Programming Recommended For: Data scientists, analysts, machine learning practitioners, and students seeking to understand core statistics concepts used in data science.
Key Points:
1. Fundamentals of Statistical Analysis This section covers the core principles of statistical analysis, including probability theory, descriptive statistics, and inferential statistics, laying a solid groundwork for data scientists to build upon.
2. Data Preprocessing Techniques Explore the essential steps of data preprocessing, including data cleaning, transformation, and normalization, to ensure data quality and compatibility for statistical analysis.
3. Exploratory Data Analysis (EDA) Learn how to visually explore and summarize data using EDA techniques such as histograms, box plots, scatter plots, and correlation matrices to gain insights and identify patterns.
4. Statistical Modeling and Inference Delve into various statistical models and inference methods, including regression analysis, hypothesis testing, and Bayesian statistics, to extract meaningful information and make reliable predictions from data.
5. Machine Learning and Statistical Techniques Discover how statistical techniques intertwine with machine learning algorithms, providing data scientists with powerful tools for classification, clustering, and predictive modeling.
6. Data Visualization for Insights Master the art of data visualization using tools like R and Python libraries to effectively communicate findings and insights derived from statistical analysis.
7. Real-world Applications and Case Studies Explore real-world applications of statistical analysis in diverse fields such as finance, healthcare, marketing, and social sciences through engaging case studies and practical examples.
8. Advanced Statistical Methods Dive deeper into advanced statistical methods, including time series analysis, multivariate analysis, and experimental design, to tackle complex data challenges effectively.
9. Ethical Considerations in Data Science Discuss the ethical implications and considerations surrounding data collection, analysis, and interpretation, emphasizing the importance of responsible and ethical data practices.
10. Practical Implementation and Best Practices Gain insights into best practices for implementing statistical analysis in real-world scenarios, including data science workflows, collaboration strategies, and continuous learning approaches.
In "Practical Statistics for Data Scientists 2nd Edition," readers will embark on a journey through the intricate world of statistical analysis, equipped with practical knowledge, hands-on experience, and invaluable insights to thrive in the dynamic field of data science.
════⋆★⋆═══
Writer ✤ Peter Bruce (Author), Andrew Bruce (Author), Peter Gedeck (Author)
I ordered this book along with few other books, print quality of all books was good except the book مسلم نفسیات, delivery and packaging was also superb. Would love to buy again In Sha Allah.