SQL for Data Analytics: Analyze data effectively, uncover insights and master advanced SQL for real-world applications - Softcover

Jun Shan; Haibin Li; Matt Goldwasser; Upom Malik; Benjamin Johnston

 
9781836646259: SQL for Data Analytics: Analyze data effectively, uncover insights and master advanced SQL for real-world applications

Inhaltsangabe

Level up from basic SQL to advanced, analytics-grade data analysis and use real PostgreSQL datasets, modern features, and practical business scenarios to turn raw data into clear, actionable insights.

Key Features

  • Solve real business problems with advanced SQL techniques
  • Work with time-series, geospatial, and text data using PostgreSQL
  • Build job-ready data analysis skills with hands-on SQL projects
  • Purchase of the print or Kindle book includes a free PDF eBook

Book Description

SQL remains one of the most essential tools for modern data analysis and mastering it can set you apart in a competitive data landscape. This book helps you go beyond basic query writing to develop a deep, practical understanding of how SQL powers real-world decision-making.

SQL for Data Analytics, Fourth Edition, is for anyone who wants to go beyond basic SQL syntax and confidently analyze real-world data. Whether you're trying to make sense of production data for the first time or upgrading your analytics toolkit, this book gives you the skills to turn data into actionable outcomes.

You'll start by creating and managing structured databases before advancing to data retrieval, transformation, and summarization. From there, you’ll take on more complex tasks such as window functions, statistical operations, and analyzing geospatial, time-series, and text data. With hands-on exercises, case studies, and detailed guidance throughout, this book prepares you to apply SQL in everyday business contexts, whether you're cleaning data, building dashboards, or presenting findings to stakeholders. By the end, you'll have a powerful SQL toolkit that translates directly to the work analysts do every day.

What you will learn

  • Write SQL Queries to explore and analyze structured data.
  • Use JOINs, subqueries, views, and CTEs to build analytics-ready datasets
  • Apply window functions to identify trends, patterns, and cohort behavior
  • Perform statistical analysis and hypothesis testing directly in SQL
  • Analyze JSON, arrays, text, geospatial, and time-series data
  • Improve SQL performance with indexing strategies and query plan optimization
  • Load data with Python and automate analytics workflows
  • Complete a full case study simulating a real-world data analysis project

Who this book is for

This book is for aspiring and early-career data analysts, data engineers, backend developers, business analysts, and students who want to apply SQL to real-world data analytics. You should have basic SQL familiarity and college-level math knowledge, along with the desire to advance toward analytics-grade SQL, data transformation, pattern discovery, and business insight generation.

Table of Contents

  1. Introduction to Data Management Systems
  2. Creating Tables with Solid Structures
  3. Exchanging Data Using COPY
  4. Manipulating Data with Python
  5. Presenting Data with SELECT
  6. Transforming and Updating Data
  7. Defining Datasets from Existing Datasets
  8. Aggregating Data with GROUP BY
  9. Inter-Row Operation with Window Functions
  10. Performant SQL
  11. Processing JSON and Arrays
  12. Advanced Data Types: Date, Text, and Geospatial
  13. Inferential Statistics Using SQL
  14. A Case Study for Analytics Using SQL

Die Inhaltsangabe kann sich auf eine andere Ausgabe dieses Titels beziehen.

Über die Autorin bzw. den Autor

Jun Shan is a principal cloud solution advisor and data architect with 20+ years of professional experience. He has been working in the data management field since the beginning of his career and has delivered data solutions to various companies, such as Amazon and Bank of America. He also teaches about relational databases and SQL at several universities. Jun is the author of SQL for Data Analytics,Third Edition, and received his Master of Science in Computer Science from Virginia Tech.

„Über diesen Titel“ kann sich auf eine andere Ausgabe dieses Titels beziehen.