SQL Query Design Patterns and Best Practices: A practical guide to writing readable and maintainable SQL queries using its design patterns


SQL Query Design Patterns and Best Practices: A practical guide to writing readable and maintainable SQL queries using its design patterns
by Steve Hughes(Author), Dennis Neer(Author), Dr. Ram Babu Singh(Author), Shabbir H. Mala(Author), Leslie Andrews(Author), Chi Zhang(Author)
Publisher Finelybook 出版社: Packt Publishing (March 31, 2023)
Language 语言: English
pages 页数: 270 pages
ISBN-10 书号: 1837633282
ISBN-13 书号: 9781837633289


Book Description
Enhance your SQL query writing skills to provide greater business value using advanced techniques such as common table expressions, window functions, and JSON
Purchase of the print or Kindle book includes a free PDF eBook

Key Features
Examine query design and performance using query plans and indexes
Solve business problems using advanced techniques such as common table expressions and window functions
Use SQL in modern data platform solutions with JSON and Jupyter notebooks

Book Description
SQL has been the de facto standard when interacting with databases for decades and shows no signs of going away. Through the years, report developers or data wranglers have had to learn SQL on the fly to meet the business needs, so if you are someone who needs to write queries, SQL Query Design and Pattern Best Practices is for you.
This book will guide you through making efficient SQL queries by reducing set sizes for effective results. You'll learn how to format your results to make them easier to consume at their destination. From there, the book will take you through solving complex business problems using more advanced techniques, such as common table expressions and window functions, and advance to uncovering issues resulting from security in the underlying dataset. Armed with this knowledge, you'll have a foundation for building queries and be ready to shift focus to using tools, such as query plans and indexes, to optimize those queries. The book will go over the modern data estate, which includes data lakes and JSON data, and wrap up with a brief on how to use Jupyter notebooks in your SQL journey.
By the end of this SQL book, you'll be able to make efficient SQL queries that will improve your report writing and the overall SQL experience.

What you will learn
Build efficient queries by reducing the data being returned
Manipulate your data and format it for easier consumption
Form common table expressions and window functions to solve complex business issues
Understand the impact of SQL security on your results
Understand and use query plans to optimize your queries
Understand the impact of indexes on your query performance and design
Work with data lake data and JSON in SQL queries
Organize your queries using Jupyter notebooks

Who this book is for
This book is for SQL developers, data analysts, report writers, data scientists, and other data gatherers looking to expand their skills for complex querying as well as for building more efficient and performant queries.
For those new to SQL, this book can help you accelerate your learning and keep you from making common mistakes.

Table of contents
1. Reducing Rows and Columns in Your Result Sets
2. Efficiently Aggregating Data in Your Results
3. Formatting Your Results for Easier Consumption
4. Manipulating Your Data Results Using Conditional SQL
5. Using Common Table Expressions
6. Analyze Your Data Using Window Functions
7. Reshaping Your Data with Advanced Techniques
8. Impact of SQL Security on Query Results
9. Understanding Query Plans
10. Understanding the Impact of Indexes on Your Query Design
11. Handling JSON Data in SQL Server
12. Integrating File Data and Data Lake Content with SQL
13. Organizing and Sharing Your Queries with Jupyter Notebooks
14. Appendix-Preparing Your Environment

下载地址 Download
打赏
未经允许不得转载:finelybook » SQL Query Design Patterns and Best Practices: A practical guide to writing readable and maintainable SQL queries using its design patterns

相关推荐

  • 暂无文章

觉得文章有用就打赏一下

您的打赏,我们将继续给力更多优质内容

支付宝扫一扫打赏

微信扫一扫打赏