Wir verwenden Cookies und Analyse-Tools, um die Nutzerfreundlichkeit der Internet-Seite zu verbessern und für Marketingzwecke. Wenn Sie fortfahren, diese Seite zu verwenden, nehmen wir an, dass Sie damit einverstanden sind. Zur Datenschutzerklärung.
Data Insight Foundations
Details
This book is an essential guide designed to equip you with the vital tools and knowledge needed to excel in data science. Master the end-to-end process of data collection, processing, validation, and imputation using R, and understand fundamental theories to achieve transparency with literate programming, renv, and Git--and much more. Each chapter is concise and focused, rendering complex topics accessible and easy to understand.
Data Insight Foundations caters to a diverse audience, including web developers, mathematicians, data analysts, and economists, and its flexible structure allows enables you to explore chapters in sequence or navigate directly to the topics most relevant to you.
While examples are primarily in R, a basic understanding of the language is advantageous but not essential. Many chapters, especially those focusing on theory, require no programming knowledge at all. Dive in and discover how to manipulate data, ensure reproducibility, conduct thorough literature reviews, collect data effectively, and present your findings with clarity.
What You Will Learn
- Data Management: Master the end-to-end process of data collection, processing, validation, and imputation using R.
- Reproducible Research: Understand fundamental theories and achieve transparency with literate programming, renv, and Git.
- Academic Writing: Conduct scientific literature reviews and write structured papers and reports with Quarto.
- Survey Design: Design well-structured surveys and manage data collection effectively.
Data Visualization: Understand data visualization theory and create well-designed and captivating graphics using ggplot2.
Who this Book is ForCareer professionals such as research and data analysts transitioning from academia to a professional setting where production quality significantly impacts career progression. Some familiarity with data analytics processes and an interest in learning R or Python are ideal.
Helps you kickstart your data analytics journey with an easily applicable and practical approach Provides a cross-disciplinary approach that early-career professionals can apply to concepts in various fields Includes a roadmap for self-directed learning
Autorentext
Nikita Tkachenko serves as the Chief Technology Officer (CTO) at Bridges and Barriers Advisory Services. In this role, he specializes in developing data tools tailored for executives at organizations embarking on their transformative data journeys. Beyond his work at Bridges and Barriers, Nikita is deeply engaged in academia. He imparts his knowledge by instructing Research Tools, providing mentorship to students, and conducting research at the University of San Francisco.
Klappentext
This book is not a comprehensive guide; if that's what you're seeking, you may want to look elsewhere. Instead, it serves as a map, outlining the necessary tools and topics for your research journey. The goal is to build your intuition and provide pointers for where to find more detailed information. The chapters are deliberately concise and to the point, aiming to expose and enlighten rather than bore you.
While examples are primarily in R, a basic understanding of the language is advantageous but not essential. Several chapters, especially those focusing on theory, require no programming knowledge at all. Parts of this book have proven useful to a diverse audience, including web developers, mathematicians, data analysts, and economists, making the material beneficial regardless of one's background
The structure allows for flexible reading paths; you may explore the chapters in sequence for a systematic learning experience or navigate directly to the topics most relevant to you.
What You Will Learn
- Data Management: Master the end-to-end process of data collection, processing, validation, and imputation using R
- Reproducible Research: Understand fundamental theories and achieve transparency with literate programming, renv, and Git
- Academic Writing: Conduct scientific literature reviews and write structured papers and reports with Quarto
- Survey Design: Design well-structured surveys and manage data collection effectively
Data Visualization: Understand data visualization theory and create well-designed and captivating graphics using ggplot2
Inhalt
Part I: Working with Data.- Chapter 1. Data Manipulation.- Chapter 2: Tidy Data.- Chapter 3: Relational Data.- Chapter 4: Data Validation.- Chapter 5: Imputation.- Part II: Reproducile Research.- Chapter 6: Reproducible Research.- Chapter 7: Reproducible Environment.- Chapter 8: Introduction to Command Line.- Chapter 9: Version Control with Git and Github.- Chapter 10: Style and Lint your Code.- Chapter 11: Modular Code.- Part III: Lit Review and Writing.- Chapter 12: Literature Review.- Chapter 13: Write.- Chapter 14: Layout and References.- Chapter 15: Collaboration and Templating.- Part IV: Collecting the Data.- Chapter 16: Total Survey Error (TSE).- Chapter 17: Document.- Chapter 18: APIs.- Part V: Presenting the Data.- Chapter 19: Data Visualization Fundamentals.- Chapter 20: Data Visualization.- Chapter 21: A Graph for the Job.- Chapter 22: Color Data.- Chapter 23: Make Tables Part VI: Back Matter.- Epilogue.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09798868805790
- Genre Information Technology
- Auflage First Edition
- Lesemotiv Verstehen
- Anzahl Seiten 252
- Größe H254mm x B178mm x T13mm
- Jahr 2025
- EAN 9798868805790
- Format Kartonierter Einband
- ISBN 979-8-8688-0579-0
- Veröffentlichung 01.04.2025
- Titel Data Insight Foundations
- Autor Nikita Tkachenko
- Untertitel Step-by-Step Data Analysis with R
- Gewicht 538g
- Herausgeber Apress
- Sprache Englisch