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Tableau Certified Data Analyst Certification Guide

You're reading from   Tableau Certified Data Analyst Certification Guide Ace the Tableau Data Analyst certification exam with expert guidance and practice material

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Product type Paperback
Published in Jun 2024
Publisher Packt
ISBN-13 9781803243467
Length 462 pages
Edition 1st Edition
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Authors (2):
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Daisy Jones Daisy Jones
Author Profile Icon Daisy Jones
Daisy Jones
Harry Cooney Harry Cooney
Author Profile Icon Harry Cooney
Harry Cooney
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Table of Contents (11) Chapters Close

Preface 1. Chapter 1: Connecting to Data FREE CHAPTER 2. Chapter 2: Transforming Data 3. Chapter 3: Calculations 4. Chapter 4: Grouping and Filtering 5. Chapter 5: Charts 6. Chapter 6: Dashboards 7. Chapter 7: Formatting 8. Chapter 8: Publishing and Managing Content 9. Chapter 9: Accessing the Online Practice Resources 10. Other Books You May Enjoy

Relational Databases

While using Excel and CSV is a simple and easy way to connect to data in Tableau, these files can easily be changed by human error and are not dynamic. Most organizations have outgrown using Excel and CSV for the following reasons:

  • They require data that can be found quickly when needed and is trusted to be reliable and accurate
  • The solutions need to be able to comfortably handle the natural growth of data and the number of people wanting to access and manipulate it
  • The files can often be duplicated and shared freely, risking unwarranted access
  • Alternative solutions offer greater opportunities to connect from other locations, rather than a single local machine

Relational databases are often a reliable means of achieving these benefits. They are data storage systems that organize information in the familiar tabular structure, with rows and columns; when databases are discussed in a Tableau-specific context, users are usually referring to relational databases. Databases are often hosted on a server, which provides the resources required to run and manage the database; servers can often host multiple databases simultaneously, each with a distinct function.

Tables inside these data repositories are usually set up by developers to capture conceptually distinct types of information. For instance, a marketing center may have a Telephone Enquiries table with each record representing an outgoing call (with columns such as start time, duration, and operator), but store customer-level information (such as phone numbers, addresses, and last-contact dates) in a separate table called Clients.

Common elements allow tables to be related to each other for analytical purposes. This is usually done through keys. Primary keys are either a single field or multiple fields in combination that can be used to identify distinct records. To do this effectively, values in the primary key column(s) must be unique for each row, and primary key columns must be fully populated – that is, all records must have a value (with no missing values, known as null values). Tables typically have just one primary key. Primary keys are useful for identifying duplicate values, which reduce the reliability of the data and result in issues such as double counting.

Foreign keys are columns in a table that refer to the primary key in another table. They are used to link tables on a common identifier. To continue the preceding example, the Clients table might have a Client ID column as the primary key, which also appears as a foreign key in the Telephone Enquiries table. Analysts can match the numbers between tables and identify which client was called in each instance. For example, they could identify which clients have had the greatest volume of successful calls and are therefore worth investing in. This process maintains the original values in a single location – the confidential Clients table – to make the data easier to govern.

Relational databases need to be communicated with for records to be accessed, updated, added, or deleted. This is achieved using a programming language called Structured Query Language (SQL). SQL is discussed further later, in the Custom SQL Query section.

Relational databases are popular as they often enforce rules to maintain data consistency and accuracy; for example, rules may be built to only allow values with a certain range when adding new records. In the Clients table, a Telephone Number field may require a 10-digit format with a country code prefix for a new record to be accepted in the table.

Popular relational database management systems include PostgreSQL, MySQL, and Oracle.

You have been reading a chapter from
Tableau Certified Data Analyst Certification Guide
Published in: Jun 2024
Publisher: Packt
ISBN-13: 9781803243467
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