Preamble
MySQL DISTINCT statement is used to remove duplicates from the result set. The DISTINCT operator may be used only with SELECT operators.
Syntax DISTINCT operator in MySQL
SELECT DISTINCT
FROM tables
[WHERE conditions];
Parameters and arguments of the operator
- expressions – columns or calculations that you want to get.
- tables – the tables from which you want to get the records. There must be at least one table listed in the FROM statement.
- WHERE conditions are optional. The conditions that must be met for the selected records.
Note:
- When only one expression is provided in DISTINCT, the query returns unique values for this.
- If more than one expression is present in DISTINCT, the query will receive unique combinations for the specified expressions.
- In MySQL, the DISTINCT operator does not ignore NULL values. Therefore when using DISTINCT in your SQL offer, your resulting set will include NULL as a separate value.
One-column example
Let’s consider a simple example of MySQL statement DISTINCT. We can use MySQL DISTINCT to return a single column that removes duplicates from the result set.
For example:
SELECT DISTINCT state
FROM customers;
This example MySQL DISTINCT returns all unique state values from the customer’s table.
Example with multiple columns
Let’s look at an example of how you can use the MySQL DISTINCT statement to remove duplicates from more than one column in a SELECT statement.
For example:
SELECT DISTINCT city, state
FROM customers;
This example of a DISTINCT MySQL statement returns each unique combination of city and state fields from the Customers table. In this case, DISTINCT applies to each column specified after the DISTINCT keyword and therefore returns individual combinations.
MySQL Tutorial for Beginners; MySQL SELECT DISTINCT Statement
About Enteros
Enteros offers a patented database performance management SaaS platform. It proactively identifies root causes of complex business-impacting database scalability and performance issues across a growing number of clouds, RDBMS, NoSQL, and machine learning database platforms.
The views expressed on this blog are those of the author and do not necessarily reflect the opinions of Enteros Inc. This blog may contain links to the content of third-party sites. By providing such links, Enteros Inc. does not adopt, guarantee, approve, or endorse the information, views, or products available on such sites.
Are you interested in writing for Enteros’ Blog? Please send us a pitch!
RELATED POSTS
How to Enable Intelligent Wealth Growth with Enteros Database Analytics, RevOps Automation, and Gen AI
- 24 June 2026
- Software Engineering
Introduction Wealth management and investment organizations are entering a new era defined by data-driven decision-making, AI-powered advisory systems, and highly automated operational environments. As client expectations grow and financial markets become more dynamic, firms must continuously improve performance, efficiency, and personalization to remain competitive. Modern wealth organizations now operate complex ecosystems that include: Portfolio management … Continue reading “How to Enable Intelligent Wealth Growth with Enteros Database Analytics, RevOps Automation, and Gen AI”
How to Improve Financial Cost Visibility with Enteros Database Management Platform and Cost Attribution Analytics
Introduction The financial services industry is rapidly evolving as banks, insurance companies, fintech platforms, and investment firms modernize their digital infrastructure to support real-time transactions, data-driven decision-making, and highly personalized customer experiences. Modern financial organizations operate complex ecosystems that include: Core banking systems Digital payment platforms Investment and trading systems Risk management applications Fraud detection … Continue reading “How to Improve Financial Cost Visibility with Enteros Database Management Platform and Cost Attribution Analytics”
How AI-Driven Database Monitoring Enhances Business Continuity and Resilience
In today’s always-on digital economy, business continuity and operational resilience have become essential for enterprise success. Organizations depend heavily on digital systems to support customer interactions, financial transactions, supply chain operations, analytics, internal workflows, and real-time decision-making. Any disruption to these systems can lead to significant financial loss, operational inefficiencies, and reputational damage. At the … Continue reading “How AI-Driven Database Monitoring Enhances Business Continuity and Resilience”
Reducing Application Latency with Intelligent Database Performance Management
In today’s digital economy, application speed is directly tied to business success. Whether users are shopping online, using banking applications, streaming content, accessing SaaS platforms, or interacting with enterprise systems, they expect fast and seamless experiences. Even minor delays can impact user satisfaction, engagement, and revenue. Application latency has become one of the most important … Continue reading “Reducing Application Latency with Intelligent Database Performance Management”