In the field of data analysis, data exploration is an important first step. Learn what this statistical technique is, how professionals use it for the best results, and steps you can take to enter a career in this area.
![[Featured image] A trio of coworkers engaged in data exploration using visual analysis in an office setting.](https://d3njjcbhbojbot.cloudfront.net/api/utilities/v1/imageproxy/https://images.ctfassets.net/wp1lcwdav1p1/79fM4WWy5Oq8UD0VrP1wz6/bc622e4291b4777e8dd1fe9f2886a958/GettyImages-1213042830-converted-from-jpg.webp?w=1500&h=680&q=60&fit=fill&f=faces&fm=jpg&fl=progressive&auto=format%2Ccompress&dpr=1&w=1000)
Data exploration is often the first step in data analysis, during which you evaluate your data's structures and underlying patterns.
Types of data exploration include descriptive, visual, and statistical analysis.
Several jobs use data exploration, including data scientists, statisticians, and business analysts.
You can use visual analysis to gain a better understanding of large data sets.
Discover more about data exploration, including its different types, uses, benefits, and how to get started in a career that uses this skill. If you’re ready to begin enhancing your data analysis skills, enroll in the Google Data Analytics Professional Certificate. In as little as six months, you can learn about data cleansing, data storytelling, data visualization, Tableau software, and more.
Data exploration is a statistical process that lets you see how your data is distributed, identify the presence of outliers, and determine which statistical tests might be most appropriate. Effective data exploration can help you understand your data's characteristics when deciding what type of analysis or interpretation is needed to yield relevant, actionable insights.
Each of the following data exploration techniques can provide you with valuable data insights. Descriptive and visual analysis gives a first impression of your data. Once you have a general overview, you can move to more involved statistical analysis to help you progressively build an understanding of your data.
Descriptive analysis refers to the use and interpretation of historical data to identify its broad trends, patterns, and features. For example, let’s say you're an educator and have a spreadsheet of test scores for your learners. Descriptive analysis gives you a summary of the data and key features. You could look at frequency counts within certain grade ranges, the average grade, outliers, the range of grades, and how many learners you have data for. Descriptive analysis is like taking an inventory of what you have before deciding what to do with it.
Read more: What Are Descriptive Statistics? Definition, Tools, and Jobs
Visual analysis helps you visualize your data's trends, distribution patterns, outliers, and tendencies. This may be useful if you have large, complex data sets that are difficult to understand with numbers alone. Using visual analysis, you can see the bigger picture of your data by creating visual representations like graphs, charts, and plots. This is also helpful when sharing information about your data with a wider audience, as you can provide a more general summary.
Statistical analysis provides a deeper look into your data using mathematical tools. You can use statistical analysis to do the following:
Test your hypotheses
Test for independence of variables
Look for correlations
Assess collinearity
See how variables interact
Understand the probability of certain outcomes
Before starting this step, it is important to understand your data structure and how its characteristics might affect statistical tests. For example, several statistical tests require your data to have a normal distribution. By creating a visual representation of your data before conducting statistical analysis, you can minimize the likelihood of choosing inappropriate statistical tests for your data.
Data exploration establishes a basis for more complex analysis. By exploring their data, professionals in many industries can understand the basic structure of their data, identify anomalies or outliers, and validate or challenge their hypotheses. Data exploration is important to ensure the reliability and relevance of subsequent data analysis, which can equip organizations with valuable insights that power data-driven decision-making.
Careers where you might see data exploration playing a larger role include:
These professionals use data exploration to make informed decisions and to extract meaningful insights from raw data sets. For instance, a researcher might want to know whether a correlation exists between eating certain foods and the risk of developing specific diseases within a particular demographic. To decide what statistical tests they should use to perform this analysis and refine their hypothesis, they must take a data exploration approach to characterize the data and identify key attributes.
You will find that data exploration tools and techniques are used across a wide range of sectors. Here are examples of data exploration being used in different industries:
In finance, exploratory data analysis helps understand company revenue flow and identify areas of opportunity.
In health care, it aids in interpreting patient data.
In retail and marketing, it identifies customer behavior and trends.
By understanding this method and its importance, you can apply it to your specific area and strengthen your data analytics skills.
Hear more about how data is used in health care in this lecture from Google's Prepare Data for Exploration course:
Data exploration offers many benefits, but recognizing its limitations may help you create strategies best suited to your needs. You can also take steps to reduce the impact of limitations while maximizing the benefits.
Data exploration is the initial step in the data analysis process and offers several benefits, including:
Offering a comprehensive understanding of the data set
Highlighting important features and potential issues
Providing insight into appropriate analysis techniques
Guiding future research questions and directions
Limitations of data exploration may include:
Difficulty visualizing the high-dimensional data from images, video, and speech
May become complex for complicated data structures
Risk of personal biases that influence the exploration process
Skewed interpretations of findings
Misrepresenting data by choosing the wrong summary indicator
To build your data exploration skills, you might consider taking online courses and workshops offered by industry and academic leaders on learning platforms like Coursera. Consider beginner-friendly courses that offer direct experience so you can gain knowledge with applied practice.
After building basic skills, it’s a good idea to develop practical skills by working on real-world data sets. With Guided Projects, you can participate in data challenges, hackathons, or more advanced academic courses. Document your learning journey with a portfolio showcasing your data exploration projects. This can help set you apart from other candidates when applying for jobs.
If you want to develop your skills through an entry-level role, you can explore positions such as a data analyst or junior data scientist. If you are just beginning, consider a data analytics internship. This is a great way to build your field experience, connect with mentors, and learn from others in a collaborative environment. According to Glassdoor, a data analyst in the US earns a median total pay of $93,000 per year [1]. This figure includes base salary and additional pay, which may represent profit-sharing, commissions, bonuses, or other compensation.
Join Career Chat on LinkedIn to stay current with the latest trends in your career field. Continue your learning journey about data analytics with our other free digital resources:
Watch on YouTube: Is Data Analytics Really that Hard? Tips for Rising to the Challenge
Hear from a pro: 8 Questions with an Expert: Google Financial Data Analyst
Learn the terminology: Data Analysis Terms & Definitions
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Glassdoor. “How much does a data analyst make?, https://www.glassdoor.com/Salaries/data-analyst-salary-SRCH_KO0,12.htm/.” Accessed April 6, 2026.
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