Preamble
PostgreSQL sum function returns the cumulative value of the expression.
Syntax of the sum function in PostgreSQL
SELECT sum(aggregate_expression_id)
FROM tabs
[WHERE conds];
Or the syntax of the sum function when grouping results in one or more columns:
SELECT expression1_id, expression2_id,. expression_n_id,
SUM(aggregate_expression_id)
FROM tabs
[WHERE conds]
GROUP BY expression1_id, expression2_id, expression_n_id;
Parameters and arguments of the function
- expression1id, expression2_id,… expression_n_id – Expressions that are not encapsulated in the sum function and must be included in the GROUP BY operator at the end of the SQL query.
- aggregate_expression_id – This is the column or expression to be summed up.
- Tabs – The tables from which you want to get the records. At least one table must be specified in the FROM operator.
- WHERE conds – Optional. These are the conditions that must be met to select records.
The sum function can be used in the following PostgreSQL versions
PostgreSQL 11, PostgreSQL 10, PostgreSQL 9.6, PostgreSQL 9.5, PostgreSQL 9.4, PostgreSQL 9.3, PostgreSQL 9.2, PostgreSQL 9.1, PostgreSQL 9.0, PostgreSQL 8.4.
Single Expression Example
Consider some examples of the sum function to understand how to use the sum function in PostgreSQL.
For example, you might want to know the total number of all the quantities in an inventory table for which the product_type ‘Hardware’
SELECT sum(quantity) AS "Total Quantity"
FROM inventory
WHERE product_type = 'Hardware';
In this example of the sum function, we called the expression sum(quantity) as “Total Quantity”. The result is that “Total Quantity” will be displayed as the name of the field when the result set is returned.
Example using DISTINCT
You can use the DISTINCT operator inside the sum function. For example, the SQL statement below returns a cumulative total salary with unique values of salary, where salary exceeds 38000$ per year.
SELECT sum(DISTINCT salary_id) AS "Total Salary"
FROM empls
WHERE salary_id > 38000;
If the salary were $82000 per year, only one of these values would be used in the sum function.
Example using the formula
The expression contained in the sum function does not necessarily have to be a single field. You can also use a formula. For example, you can calculate the total commission.
SELECT sum(sales * 0.05) AS "Total Commission"
FROM orders;
Example using GROUP BY
In some cases, you will need to use the GROUP BY operator with the sum function.
For example, you can also use the sum function to return the department and sum(quantity) (the total amount in a related department).
SELECT department, sum(quantity) AS "Total Quantity"
FROM inventory
GROUP BY department;
Since your SELECT operator has one column that is not encapsulated in the sum function, you must use the GROUP BY operator. That is why the department field shall be specified in the GROUP BY operator.
PostgreSQL: Sum | Course
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”