In the age of data-driven decision-making, the quality of your data is the foundation upon which all your insights and analyses are built. "Data Cleaning and Preprocessing: The Foundation of Data Analysis" is your essential guide to mastering the crucial yet often underestimated processes of cleaning and preparing data for meaningful analysis.
From data scientists and analysts to business professionals and researchers, anyone working with data can benefit from this comprehensive and accessible book. It demystifies the complex world of data cleaning and preprocessing, making it accessible to both beginners and experienced practitioners.
Discover the fundamental principles of data quality and learn how to identify and address common data issues, such as missing values, outliers, and inconsistent records. Dive into essential techniques for handling data imperfections, from data imputation to outlier detection, and explore the art of feature engineering and dimensionality reduction to enhance the predictive power of your data.
The book provides hands-on guidance for implementing data cleaning and preprocessing techniques using popular programming languages like Python, R, and SQL, with practical examples and code samples. You'll also gain insights into best practices, data quality assessment, and the latest trends in the field, including ethical considerations and the application of AI and machine learning to automate data cleaning.
Whether you're working with structured data in a relational database, unstructured text data, or streaming data from IoT devices, this book equips you with the knowledge and tools you need to turn messy, raw data into valuable insights that can drive better decision-making in your organization.
"Data Cleaning and Preprocessing: The Foundation of Data Analysis" is the go-to resource for harnessing the true potential of your data. It's a must-read for anyone who understands that quality data is not a luxury but a necessity in the data-driven world we live in. Take control of your data, unlock its potential, and transform the way you approach data analysis with this indispensable guide.
From data scientists and analysts to business professionals and researchers, anyone working with data can benefit from this comprehensive and accessible book. It demystifies the complex world of data cleaning and preprocessing, making it accessible to both beginners and experienced practitioners.
Discover the fundamental principles of data quality and learn how to identify and address common data issues, such as missing values, outliers, and inconsistent records. Dive into essential techniques for handling data imperfections, from data imputation to outlier detection, and explore the art of feature engineering and dimensionality reduction to enhance the predictive power of your data.
The book provides hands-on guidance for implementing data cleaning and preprocessing techniques using popular programming languages like Python, R, and SQL, with practical examples and code samples. You'll also gain insights into best practices, data quality assessment, and the latest trends in the field, including ethical considerations and the application of AI and machine learning to automate data cleaning.
Whether you're working with structured data in a relational database, unstructured text data, or streaming data from IoT devices, this book equips you with the knowledge and tools you need to turn messy, raw data into valuable insights that can drive better decision-making in your organization.
"Data Cleaning and Preprocessing: The Foundation of Data Analysis" is the go-to resource for harnessing the true potential of your data. It's a must-read for anyone who understands that quality data is not a luxury but a necessity in the data-driven world we live in. Take control of your data, unlock its potential, and transform the way you approach data analysis with this indispensable guide.
Dieser Download kann aus rechtlichen Gründen nur mit Rechnungsadresse in A, B, CY, CZ, D, DK, EW, E, FIN, F, GR, H, IRL, I, LT, L, LR, M, NL, PL, P, R, S, SLO, SK ausgeliefert werden.