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What is descriptive analytics?

By Nick Barney

Descriptive analytics is a type of data analytics that looks at past data to give an account of what has happened. Results are typically presented in reports, dashboards, bar charts and other visualizations that are easily understood.

The field of data analytics is generally divided into four main types: descriptive analytics, diagnostic analytics, predictive analytics and prescriptive analytics. A fifth type, real-time analytics, analyzes data as it's generated, collected or updated.

Descriptive analytics is the simplest of these techniques. It can be used by itself or treated as a preliminary stage of data processing to create a summary or abstraction that, in turn, supports further investigation, analysis or actions performed by other types of analytics.

How does descriptive analytics work?

Descriptive analytics uses various statistical analysis techniques to slice and dice raw data into a form that enables people to see patterns, identify anomalies, improve planning and compare things. Enterprises realize the most value from descriptive analytics when using it to compare items over time or against each other. For example, a finance manager might compare product sales month over month or against related categories.

Descriptive analytics can work with numerical data, qualitative data or some combination of the two. Numerical data might quantify things like revenue, profit or a physical change. Qualitative data might characterize elements such as gender, ethnicity, profession or political party. To improve understanding, raw numerical data is often binned into ranges or categories such as age ranges, income brackets or zip codes.

Descriptive analysis techniques perform various mathematical calculations that make recognizing or communicating a pattern of interest easier. For example, central tendency describes what is normal for a given data set by considering characteristics such as the average, mean and median. Other elements include frequency, variation, ranking, range and deviation.

Real examples of descriptive analytics

Descriptive analytics is used in a variety of industries. Some real examples include the following:

Descriptive analytics is also commonly used for the following:

What can descriptive analytics tell you?

Businesses use descriptive analytics to assess, compare, spot anomalies and identify relative strengths and weaknesses. Let's walk through how these might work in practice.

Steps in descriptive analytics

The descriptive analytics process includes the following steps:

  1. Quantify goals. The process starts by translating some broad business goals, such as better business performance, into specific, measurable outcomes such as sales per product, cost per sale or conversion rate.
  2. Identify relevant data. Teams need to identify any types of data that could help improve the understanding of the critical metric. The data might be buried across one or more internal systems or within various third-party data sources.
  3. Organize data. Data from different sources, applications or teams needs to be cleaned and normalized to improve analytics accuracy.
  4. Analysis. Various statistical and mathematical techniques combine, summarize and compare the raw data in different ways to generate data features.
  5. Presentation. Data features might be numerically presented in a report, dashboard or visualization. Common visualization techniques include bar charts, pie charts, line charts, bubble charts and histograms.

Benefits and drawbacks of descriptive analytics

The use of descriptive analytics can provide the following benefits:

Drawbacks and weaknesses of descriptive analytics include the following:

Descriptive analytics tools

Relatively simple tools, like an Excel spreadsheet, and some knowledge of business management are enough to craft basic descriptive analytics. However, teams might see greater value across the organization by scaling various types of tools to democratize analytics development and promote the sharing of business intelligence (BI).

Business intelligence tools like Power BI, Tableau and Qlik can simplify many steps of the descriptive analytics process.

Descriptive analytics tools provide various ways for reorganizing raw data to view new patterns by calculating characteristics such as averages, frequencies, variations, rankings, ranges and deviations. While these basic techniques are baked into essential BI tools, a team might turn to more sophisticated data science tools for complex statistics, including the following:

Data-wrangling tools can help automate data engineering processes by cleansing, reformatting and combining data from many different sources. Popular tools include offerings from Alteryx, Cambridge Semantics, Trifacta, Talend and Tamr.

Descriptive analytics vs. prescriptive, predictive and diagnostic analytics

As noted, the field of analytics is commonly characterized as including four main kinds of capabilities:

Descriptive analytics vs real-time analytics

Descriptive analytics and real-time analytics are both critical methods of data analysis. While descriptive analytics focuses on analyzing past data to identify trends, patterns and insights, real-time analytics processes incoming data. Therefore, organizations use these separate methods to make different kinds of decisions.

Descriptive analytics, for instance, gives organizations insight into long-term customer behavior and trends, which makes it critical for research-based strategic planning. On the other hand, real-time analytics' continually updated data sets are best suited for immediate decisions, in which quick responses are needed. These include fraud detection, dynamic traffic management and live monitoring of financial transactions.

Jobs using descriptive analytics

Descriptive analytics is critical to a variety of jobs across industries. Some of the most commons jobs include the following:

Descriptive analytics is an important method used in data analysis. Learn about nine types of bias in data analysis you should avoid. Further explore the differences of descriptive vs. prescriptive vs. predictive analytics.

02 Jun 2025

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