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SQL Query Design Patterns and Best Practices
SQL Query Design Patterns and Best Practices

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

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Profile Icon Steven Hughes Profile Icon Steve Hughes Profile Icon Zhang Profile Icon Andrews Profile Icon Shabbir Mala Profile Icon Ram Babu Singh Profile Icon Neer +3 more Show less
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Arrow left icon
Profile Icon Steven Hughes Profile Icon Steve Hughes Profile Icon Zhang Profile Icon Andrews Profile Icon Shabbir Mala Profile Icon Ram Babu Singh Profile Icon Neer +3 more Show less
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SQL Query Design Patterns and Best Practices

Reducing Rows and Columns in Your Result Sets

Today the sources of data that a data analyst has access to have grown to the point that the amount of data that is available to you is unlimited. The challenge that a data analyst faces today is to determine how to generate a result set that is manageable and has the information that ensures that it will meet the needs of the analyst for their reports and analysis. If there is too much data, the result set will become unmanageable and unusable due to information overload; too little data and the data will have gaps, and the end user will lose trust in the data.

In this chapter, we will review how you determine how much data and what data you should keep in your result set and how to filter that data efficiently. We will also review how to determine which columns you should keep and how you can efficiently select the correct columns. The chapter will then wrap up with a short discussion on how these activities will impact future data aggregations.

By the end of this chapter, you will understand how to identify the data and columns that you need and the most efficient method for getting the data into a usable result set that can easily be recreated.

In this chapter, we will cover the following main topics:

  • Identifying data to be removed from the dataset
  • Understanding the value of creating views versus removing data
  • Exploring the impact of row and column reductions on aggregations

Technical requirements

To work with the examples and illustrations in this chapter, you will need to have SQL Server Management Studio installed. We will be working with the WideWorldImportersDW database on SQL Server. Please refer to the Appendix for tool installation and database restoration guidance.

You will find the code from this chapter on GitHub: https://github.com/PacktPublishing/SQL-Query-Design-Best-Practices/tree/main/Chapter01

Identifying data to remove from the dataset

With the amount of data that is freely available today, databases are getting larger and larger, and that makes it a challenge for data analysts to analyze the data properly. A challenge that data analysts face is determining what data is required to be able to produce a dataset that provides the information that is relevant for analysis. In this chapter, you will learn how to reduce the amount of data and columns that are contained in a dataset without affecting the result set.

To do this, you will need to first understand what data is required through interviews with the people requesting the result set. The interview process will help you to understand what the person requesting the result set wants to accomplish and give you an idea of where to find the data and what database and table contain the information that is required. With this knowledge, you will need to perform some initial analysis of the data in the database tables to determine how much and what columns of data are needed. This is often done through simple queries that perform row counts and table descriptions. The following are examples of the type of queries that may be used.

The following is a query to get an idea of the data in a table:

SELECT TOP (1000) *
  FROM database.schema.table;

This type of query will give you an idea of what data is available in a particular table by showing you up to the first 1,000 rows in the table, and if the table has fewer than 1,000 rows, it will show you all of the rows in the table.

The following query will show you all of the columns and their data types in a particular schema:

SELECT Table_name as [Table] ,
       Column_name as [Column] ,
       Table_catalog as [Database],
       table_schema as [Schema]
FROM   information_schema.columns
WHERE  table_schema = 'Fact'
ORDER BY Table_name, Column_name;

This type of query will read the system tables in the database to return the names of all of the Column instances that each table in the schema contains. The table that we are interested in is the information_schema.columns table. With this information, you can determine what columns are available for you to use.

With this information, let’s look at an example for solving the following sample request that was determined by interviewing a user. For the examples in this chapter, we will assume that the interview has resulted in the following analysis:

We want to be able to analyze the number of orders that resort in a back-order item being created by each year and month and how many customers were impacted.

How do we go about this? Let us check in the following sections.

Reducing the amount of data

We start by determining which tables seem to contain the data that is required as just described:

SELECT Table_name as [Table] ,
       Column_name as [Column] ,
       Table_catalog as [Database],
       Table_schema as [Schema]
FROM information_schema.columns
Where Table_schema = 'fact'
AND Table_name = 'Order'
ORDER BY Table_name, Column_name;

Figure 1.1 shows the results of the query:

Figure 1.1 – Results of the query to show all columns in a table

Figure 1.1 – Results of the query to show all columns in a table

Based on the results, the Fact.Order table is a good candidate to start with, so let’s run the following query:

SELECT TOP (1000) *
  FROM [WideWorldImportersDW].[Fact].[Order];

Figure 1.2 shows the results of this query:

Figure 1.2 – Sample data and columns from the Fact.Order query

Figure 1.2 – Sample data and columns from the Fact.Order query

This query shows us that there are 19 columns, and of those columns, we are only interested in Customer Key, Stock Item Key, Order Date Key, and WWI Backorder ID. So this is, in fact, the table that we should be using. Now that we have identified the table that we want to use, let’s run the following query to see how much data is in the table:

SELECT count(*)
FROM [WideWorldImportersDW].[Fact].[Order]

The results show that there are 231,412 rows of data in the table, so how do we reduce the amount of data that will be required in the result set? The answer is that we do some more analysis; for example, instead of keeping all the columns in the table, we will only include the columns in the query that are needed, as identified earlier. We also know that we are only interested in orders with a back-ordered item. So, let’s run this query and see how many records remain:

SELECT count(*)
FROM [WideWorldImportersDW].[Fact].[Order]
WHERE [WWI Backorder ID] IS NOT NULL;

The result from this query shows that we have reduced the size to 20,593 records; this is a much more manageable size to work with. The query that will get us the initial result set is as follows:

SELECT [Order Date Key] as "Order Date",
    [Order Key] as "Order",
 [stock item key] as "Stock Item",
 [Customer Key] as "Customer",
 [WWI Order ID] as "WWI Order",
 [WWI Backorder ID] as "WWI Backorder"
FROM [WideWorldImportersDW].[Fact].[Order]
WHERE [WWI Backorder ID] IS NOT NULL;

To explain what you have just done with this query, let’s break down each step.

The names after SELECT are the columns that you want the query to return in the result set. In this case, you are returning Order Date Key, Order Key, Stock item key, Customer Key, WWI Order ID, and WWI Backorder ID.

With these columns, you will have a date field in which to analyze the data by month, Order Key allows you to see how many distinct orders are impacted, stock item key tells you which items in the order have been back-ordered, Customer Key tells you which customer has been impacted by the backorders, and WWI Order ID lets you determine how many orders have been impacted. WWI Backorder ID is included when you want to see how many backorders are in the system.

FROM tells the query where to get the data from, in this case, from the WWI database using the Fact Order table.

The most important part is the WHERE clause; this is the part of the code that reduces the size of the result set to a manageable size. After all, you are not interested in all the orders in the table, only the orders that have an item that is on backorder. Figure 1.3 shows what the result set will look like:

Figure 1.3 – Sample result set

Figure 1.3 – Sample result set

Since you are interested in data by months, you will want to modify the Order Date Key column for the year and a column for the month as follows:

SELECT Year([Order Date Key]) as "Order Year",
       Month([Order Date Key]) as "Order Month",
  [Order Key] as "Order",
  [stock item key] as "Stock Item",
  [Customer Key] as "Customer",
  [WWI Order ID] as "WWI Order",
  [WWI Backorder ID] as "WWI Backorder"
FROM [WideWorldImportersDW].[Fact].[Order]
WHERE [WWI Backorder ID] IS NOT NULL;

You now have this result set you can see in Figure 1.4, and you are ready to answer the question that came from the interview with the user:

Figure 1.4 – Result set totaling by month

Figure 1.4 – Result set totaling by month

Now that you have learned how to get the data that you require for analysis, we will discuss the impact this filtering of data has on the aggregations that you may want to do in the analysis.

Understanding the value of creating views versus removing data

You have now learned how to create a query to get a result set that you can use for analysis and answer questions for a user. The next challenge is how you make this reusable so that you do not have to recreate the query every time you need the same data for other analyses. The reason for the challenge is that as the query gets more complex, the more likely the query is to be incorrectly typed. The solution to this challenge is to create a view. A view is a way to save the query as a logical table so that anybody with access to the database can run the query, and if you move on to another opportunity, the next person can recreate the result set with very little effort.

So, how do you create a view? It is as simple as adding the following line to the beginning of the SELECT query:

Create View 'name of the view' AS

Here is how the query that we created earlier would look to create a view of the data by adding the following line to the beginning of the SELECT query:

CREATE VIEW v_Backorders as
SELECT Year([Order Date Key]) as "Order Year",
       Month([Order Date Key]) as "Order Month",
  [Order Key] as "Order",
  [stock item key] as "Stock Item",
  [Customer Key] as "Customer",
  [WWI Order ID] as "WWI Order",
  [WWI Backorder ID] as "WWI Backorder"
FROM [WideWorldImportersDW].[Fact].[Order]
WHERE [WWI Backorder ID] IS NOT NULL;

Now you can run the analysis query as the following:

SELECT [Order Year],
       [Order Month],
   [Order],
   [Stock Item],
   [Customer],
   [WWI Order],
   [WWI Backorder]
FROM [dbo].[v_Backorders];

In Figure 1.5, you will notice that the following results are the same as you saw in the preceding result, and you do not have to include the filters because they are already included in the view:

Figure 1.5 – Result set using a view

Figure 1.5 – Result set using a view

This can save you the time of having to create the query in the future once the initial query has been created, and you can be assured that the data is correct. Most things that you can do in a query can also be done in a view, and you can use the view as though it is a table and just select columns from the view as you would in the table.

Now let’s look at how this filtering impacts any aggregations that you may plan to do with the result set.

Exploring the impact of row and column reductions on aggregations

Now you know how to reduce the number of rows and specify the columns that you need in your result set, let’s talk about what the impact will be on any aggregations that you may be interested in.

First of all, based on this result set, you can view the number of backorders by any combination of columns. For example, to see the number of backorders based on year and month, you could use the following query:

SELECT Year([Order Date Key]) as "Order Year",
       Month([Order Date Key]) as "Order Month",
  COUNT([WWI Backorder ID]) as "Number of backorders",
  COUNT(distinct [Customer Key]) as "Impacted Customers",
  COUNT([Order Key]) as "Number of orders"
FROM [WideWorldImportersDW].[Fact].[Order]
WHERE [WWI Backorder ID] IS NOT NULL
GROUP BY Year([Order Date Key]),
         Month([Order Date Key])
ORDER BY Year([Order Date Key]),
         Month([Order Date Key]);

You could also run the following query using the view that you created, and you will get the same results:

SELECT [Order Year],
       [Order Month],
   COUNT([WWI Backorder]) as "number of backorders",
   COUNT([customer]) as "number of impacted customers",
   COUNT([Order]) as "number of orders"
FROM v_backorders
GROUP BY [Order Year],
     [Order Month];

Figure 1.6 shows a subset of the results from the query:

Figure 1.6 – Subset of results from the earlier queries

Figure 1.6 – Subset of results from the earlier queries

On closer investigation, you will notice that the values in the number of backorders and number of orders columns are the same. Why is this? The answer is in the filter; it only returns records that have an associated backorder, so you will not get the actual number of orders that have been placed, and any calculations will not be accurate. So, to get an accurate number of orders, you will need to get all the orders in the table, not just the orders associated with a backorder. You will also see that the order of the result set is different for the query that uses the view and the query that does not use the view. This is due to the query that uses the view being stored in a memory heap from the view and accessed on demand, whereas the query that does not use the view is stored on the disk in the primary key order of the table.

This is the impact of using a filter; to get around this, you can add a subquery to remove the filter. So here is how you can update your query to get that additional information:

SELECT Year([Order Date Key]) as [Order Year],
       Month([Order Date Key]) as [Order Month],
   COUNT(distinct [Customer Key]) as [Impacted Customers],
   COUNT(distinct [Stock Item Key]) as [Backorder Items],
   COUNT([WWI Backorder ID]) as [Number of backorders],
   fo.orders,
       fo.Customers
FROM [WideWorldImportersDW].[Fact].[Order] o,
     (select  Year([Order Date Key]) as [Order Year],
              Month([Order Date Key]) as [Order Month],
              COUNT (distinct [Order Key]) as [orders],
              COUNT (distinct [customer Key]) as [Customers]
      FROM [WideWorldImportersDW].[Fact].[Order]
  GROUP BY Year([Order Date Key]),
               Month([Order Date Key])) as fo
WHERE [WWI Backorder ID] IS NOT NULL
AND year(o.[Order Date Key]) = fo.[Order Year]
AND month(o.[Order Date Key]) = fo.[Order Month]
GROUP BY Year([Order Date Key]),
         Month([Order Date Key]),
    fo.orders,
    fo.Customers
ORDER BY Year([Order Date Key]),
         Month([Order Date Key]);

This will give you the following result set, as seen in Figure 1.7. Notice you now see values in the orders, Impacted Customers, Number of backorders, and Customers columns for each Order Month:

Figure 1.7 – Results of using filters in a query

Figure 1.7 – Results of using filters in a query

This can be done for any number of columns as long as the subquery is grouped by the same fields as the main query. To simplify this query, you could very easily create a view of all the orders and then use the views to get the same results with less query development.

Here is a sample of the query to create the order view that you can use in future queries:

CREATE VIEW [dbo].[v_orders] AS
SELECT Year([Order Date Key]) as [Order Year],
      MONTH([Order Date Key]) as [Order Month],
      COUNT(distinct [Order Key]) as [orders],
      COUNT(distinct [customer Key]) as [Customers]
FROM [WideWorldImportersDW].[Fact].[Order]
GROUP BY Year([Order Date Key]),
         Month([Order Date Key])

Here is a sample of the query that uses the two views (v_Backorders and v_orders) that have been created in this chapter:

  SELECT o.[Order Year],
         o.[Order Month],
         o.Customers,
         o.orders,
     COUNT(b.[WWI Backorder]) as [total backorders],
     COUNT(distinct b.[customer]) as [impacted customers]
  FROM [WideWorldImportersDW].[dbo].[v_Backorders] b,
  [WideWorldImportersDW].[dbo].[v_orders] o
  WHERE b.[Order Year] = o.[Order Year]
  AND b.[Order Month] = o.[Order Month]
  GROUP BY o.[Order Year],
           o.[Order Month],
  o.Customers,
  o.orders
  ORDER BY o.[Order Year],
           o.[Order Month];

The following is the result of the query:

   Figure 1.8 – Sample results of using multiple views in a query

Figure 1.8 – Sample results of using multiple views in a query

So as you can see, it is easy to reduce the amount of data that you bring into your result, but sometimes, you will need to include other data that may have been filtered out. This is where views come in handy and allow you to include data that may have been filtered in previous activities. You will need to use caution when deciding between using a view over a subquery due to the performance implications. In this example, the data size is small enough that the performance implications are negligible.

As you can see from this section, there are multiple ways in which you will be able to create result sets and get the same results.

Summary

In this chapter, we discussed how to determine what data you need in your result set to meet your analysis needs.

We started with some simple queries to identify what table we needed to get the data we needed, and then we queried the table to get a sample of data that was contained in it. Next, we created a query that would create a result set that met the needs of the request and showed how it could be turned into a view that makes the query easily reusable. We then wrapped up the chapter by showing how there may be a need to get data that is not available because it was filtered out.

In the next chapter, we will expand upon this knowledge to look at how to efficiently aggregate the data so that your queries will run more efficiently.

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Key benefits

  • 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

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.

Who is this book 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.

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

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Table of Contents

19 Chapters
Part 1: Refining Your Queries to Get the Results You Need Chevron down icon Chevron up icon
Chapter 1: Reducing Rows and Columns in Your Result Sets Chevron down icon Chevron up icon
Chapter 2: Efficiently Aggregating Data Chevron down icon Chevron up icon
Chapter 3: Formatting Your Results for Easier Consumption Chevron down icon Chevron up icon
Chapter 4: Manipulating Data Results Using Conditional SQL Chevron down icon Chevron up icon
Part 2: Solving Complex Business and Data Problems in Your Queries Chevron down icon Chevron up icon
Chapter 5: Using Common Table Expressions Chevron down icon Chevron up icon
Chapter 6: Analyze Your Data Using Window Functions Chevron down icon Chevron up icon
Chapter 7: Reshaping Data with Advanced Techniques Chevron down icon Chevron up icon
Chapter 8: Impact of SQL Server Security on Query Results Chevron down icon Chevron up icon
Part 3: Optimizing Your Queries to Improve Performance Chevron down icon Chevron up icon
Chapter 9: Understanding Query Plans Chevron down icon Chevron up icon
Chapter 10: Understanding the Impact of Indexes on Query Design Chevron down icon Chevron up icon
Part 4: Working with Your Data on the Modern Data Platform Chevron down icon Chevron up icon
Chapter 11: Handling JSON Data in SQL Server Chevron down icon Chevron up icon
Chapter 12: Integrating File Data and Data Lake Content with SQL Chevron down icon Chevron up icon
Chapter 13: Organizing and Sharing Your Queries with Jupyter Notebooks Chevron down icon Chevron up icon
Index Chevron down icon Chevron up icon
Other Books You May Enjoy Chevron down icon Chevron up icon

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Enrico Barillari Nov 07, 2023
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Un libro interessante ed utile, lo consiglio anche a chi ha esperienza, per un ripasso ed un'integrazione
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John Bulla Jun 21, 2023
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Have an accessible, practical guide to writing effective SQL queries is essential for any database professional. 'SQL Query Design Patterns and Best Practices' is exactly that: a comprehensive, well-structured guide that provides design patterns and best practices for optimizing SQL queries.The authors present the concepts in a clear and concise way, making it easy to understand even for professionals with basic knowledge of SQL. The examples and use cases further enrich the learning experience by allowing readers to see how design patterns are applied in real situations.One of the notable strengths of the book is its focus on the readability and maintainability of SQL queries. The featured design patterns not only help improve query performance, but also make code more understandable and maintainable. This is crucial for collaborative development teams and long-term projects.I recommend this book to anyone or professional interested in improving their SQL skills and maximizing the efficiency of their queries. From beginners to seasoned professionals, everyone will find value in this well-written practical guide. 'SQL Query Design Patterns and Best Practices' is a must-have reference for any database developer, DBA or analyst looking to take their SQL proficiency to the next level.
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joey Apr 03, 2023
Full star icon Full star icon Full star icon Full star icon Full star icon 5
I got this book to help improve my SQL skills, and it was extremely easy to follow along with. I especially liked the examples from chapter 3. It gives a really good place to begin from as you learn to format data. The use of a recurring data set and seeing the different ways you can manipulate it helps you get the concept and have it stick!
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Shailesh May 29, 2023
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One of the most practical books, I’ve read on SQL and Analytics. Strikes the right balance between theory & examples.Plenty of tips on industry standard Design patterns and best practices that come in handy while coding on the fly, whether you’re a Data-pro or an Analytics wizard, you’ll find some new tips & tricks. Great job authors!
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Dr.Nirmal Lodhi Apr 25, 2023
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I found this book especially useful in SQL beginner to expert journey. It covers useful basic SQL concept like appropriate technique of filtering the data, basic SQL functions then it moves towards expert level as SQL window functions, query optimization for better performance, Impact of Indexing, Introduction of new concept like handling JSON data, data Lake, Jupiter notebooks. I specially mention very well exampled part of this book “The impact of indexes on query performance” page no 154, this part provides a particularly good example of what is the need to including appropriate index, check the fragmentation and factors responsible for decision making of DBAs for rebuild or reorganize the indexes. A good start for SQL basic and advance learning.
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If you want to purchase a video course, eBook or Bundle (Print+eBook) please follow below steps:

  1. Register on our website using your email address and the password.
  2. Search for the title by name or ISBN using the search option.
  3. Select the title you want to purchase.
  4. Choose the format you wish to purchase the title in; if you order the Print Book, you get a free eBook copy of the same title. 
  5. Proceed with the checkout process (payment to be made using Credit Card, Debit Cart, or PayPal)
Where can I access support around an eBook? Chevron down icon Chevron up icon
  • If you experience a problem with using or installing Adobe Reader, the contact Adobe directly.
  • To view the errata for the book, see www.packtpub.com/support and view the pages for the title you have.
  • To view your account details or to download a new copy of the book go to www.packtpub.com/account
  • To contact us directly if a problem is not resolved, use www.packtpub.com/contact-us
What eBook formats do Packt support? Chevron down icon Chevron up icon

Our eBooks are currently available in a variety of formats such as PDF and ePubs. In the future, this may well change with trends and development in technology, but please note that our PDFs are not Adobe eBook Reader format, which has greater restrictions on security.

You will need to use Adobe Reader v9 or later in order to read Packt's PDF eBooks.

What are the benefits of eBooks? Chevron down icon Chevron up icon
  • You can get the information you need immediately
  • You can easily take them with you on a laptop
  • You can download them an unlimited number of times
  • You can print them out
  • They are copy-paste enabled
  • They are searchable
  • There is no password protection
  • They are lower price than print
  • They save resources and space
What is an eBook? Chevron down icon Chevron up icon

Packt eBooks are a complete electronic version of the print edition, available in PDF and ePub formats. Every piece of content down to the page numbering is the same. Because we save the costs of printing and shipping the book to you, we are able to offer eBooks at a lower cost than print editions.

When you have purchased an eBook, simply login to your account and click on the link in Your Download Area. We recommend you saving the file to your hard drive before opening it.

For optimal viewing of our eBooks, we recommend you download and install the free Adobe Reader version 9.