Both data analysts and data scientists work with data, but they do so in different ways.
Data analysts and data scientists are two of the most in-demand, high-paying jobs, according to the World Economic Forum Future of Jobs Report 2025 [1]. Both roles work with data, but they do so in different ways.
In this article, we'll compare data analysts and data scientists, including their job responsibilities, the skills they use, key differences, and what you can do to pursue each career. Afterward, if you want to start working toward a data career by building job-relevant skills, consider enrolling in either Google's Data Analytics Professional Certificate or IBM's Data Science Professional Certificate.
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Get on the fast track to a career in Data Analytics. In this certificate program, you’ll learn in-demand skills, and get AI training from Google experts. Learn at your own pace, no degree or experience required.
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Data Analysis, Creating case studies, Data Visualization, Data Cleansing, Developing a portfolio, Data Collection, Spreadsheet, Metadata, SQL, Data Ethics, Data Aggregation, Data Calculations, R Markdown, R Programming, Rstudio, Tableau Software, Presentation, Data Integrity, Sample Size Determination, Decision-Making, Problem Solving, Questioning
Data analysts typically work with structured data to solve tangible business problems using tools like SQL, R, or Python programming languages, data visualization software, and statistical analysis. Common tasks for a data analyst might include:
Collaborating with organizational leaders to identify informational needs
Acquiring data from primary and secondary sources
Cleaning and reorganizing data for analysis
Analyzing data sets to spot trends and patterns that can be translated into actionable insights
Presenting findings in an easy-to-understand way to inform data-driven decisions
Data scientists often deal with the unknown by using more advanced data techniques to make predictions about the future. They might automate their own machine learning algorithms or design predictive models that can handle both structured and unstructured data. This role is generally considered a more advanced version of a data analyst. Some day-to-day tasks for data scientists might include:
Gathering, cleaning, and processing raw data
Designing predictive models and machine learning algorithms to mine big data sets
Developing tools and processes to monitor and analyze data accuracy
Building data visualization tools, dashboards, and reports
Writing programs to automate data collection and processing
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Prepare for a career as a data scientist. Build job-ready skills – and must-have AI skills – for an in-demand career. Earn a credential from IBM. No prior experience required.
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Generative AI, Data Science, Model Selection, Data Analysis, Python Programming, Data Visualization, Predictive Modelling, Numpy, Pandas, Dashboards and Charts, dash, Matplotlib, Cloud Databases, Relational Database Management System (RDBMS), SQL, Jupyter notebooks, Machine Learning, Clustering, regression, classification, SciPy and scikit-learn, CRISP-DM, Methodology, Data Mining, Github, Jupyter Notebook, K-Means Clustering, Data Science Methodology, Rstudio, Big Data, Deep Learning, Quering Databases, Data Generation, Career Development, Interviewing Skills, Job Preparation, Resume Building
Data professionals are in demand and well-paid for their valuable skills. According to the US Bureau of Labor Statistics (BLS), the number of data scientists—including analysts—is projected to grow by 36 percent between 2023 and 2033, indicating much faster-than-average job growth over the next decade [2].
These data professionals also earn strong pay. According to Glassdoor, data analysts in the United States earn an average salary of $86,592, while data scientists earn an average salary of $119,626 [3,4].
Data scientists and data analysts both work with data, but each role uses a slightly different set of skills and tools. Many technical skills involved in data science build off of those data analysts use. Here’s a look at how they compare.
Data analyst | Data scientist | |
---|---|---|
Mathematics | Foundational math, statistics | Advanced statistics, predictive analytics |
Programming | Basic fluency in R, Python, SQL | Advanced object-oriented programming |
Software and tools | SAS, Excel, business intelligence software | Hadoop, MySQL, TensorFlow, Spark |
Other skills | Analytical thinking, data visualization | Machine learning, data modeling |
Ways to build your data skill set on Coursera with powerful industry leaders:
• Develop Python fundamentals with the IBM Applied Data Science Professional Certificate
• Learn how to work with Excel and R in the IBM Data Analytics with Excel and R Professional Certificate
• Leverage AI to gain quick insights with the Microsoft Copilot for Data Science Specialization
• Explore the benefits of data analytics in cloud computing with the Google Cloud Data Analytics Professional Certificate
• Use Power BI to connect to data sources and transform them into meaningful insights with the Microsoft Power BI Data Analyst Professional Certificate.
Most data analyst roles require at least a bachelor’s degree in a field like mathematics, statistics, computer science, or finance. Data scientists (as well as many advanced data analysts) typically have a master’s or doctoral degree in data science, information technology, mathematics, or statistics.
While a degree has generally been the primary path toward a career in data, some new options are emerging for those without a degree or previous experience. By earning a Professional Certificate in data analytics, you can build the skills necessary for an entry-level role as a data analyst in less than six months of study.
You can practice statistical analysis, data management, and programming using SQL, Tableau, and Python in Meta's beginner-friendly Data Analyst Professional Certificate. Designed to prepare you for an entry-level role, this self-paced program can be completed in just 5 months.
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Launch your career in data analytics. Build job-ready skills – and must-have AI skills – for an in-demand career. Earn a credential from Meta in 5 months or less. No degree or prior experience required.
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Average time: 5 month(s)
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SQL, Pandas, Generative AI in Data Analytics, Data Analysis, Python Programming, Marketing, Data Management, Data Visualization, Linear Regression, Statistical Analysis, Statistical Hypothesis Testing, Spreadsheet, Tableau Software
Data professionals use their knowledge of data to help organizations make better, more informed decisions. Build the analytical skills you need to start your data career with one of these educational programs on Coursera:
For foundational data analytics skills, enroll in the Google Data Analytics Professional Certificate. Learn key analytical skills like data cleaning, analysis, and visualization along with critical data tools, including SQL, R, and Tableau.
To prepare for a career as a data scientist, try the IBM Data Science Professional Certificate. Learn the tools, languages, and libraries used by professional data scientists, including Python and SQL.
To unlock AI efficiency for data, consider the Microsoft Copilot for Data Science Specialization. Gain hands-on experience using Copilot to generate code, analyze data, build simple generative models, and mitigate bias in AI-driven processes.
professional certificate
Get on the fast track to a career in Data Analytics. In this certificate program, you’ll learn in-demand skills, and get AI training from Google experts. Learn at your own pace, no degree or experience required.
4.8
(153,161 ratings)
2,644,902 already enrolled
Beginner level
Average time: 6 month(s)
Learn at your own pace
Skills you'll build:
Data Analysis, Creating case studies, Data Visualization, Data Cleansing, Developing a portfolio, Data Collection, Spreadsheet, Metadata, SQL, Data Ethics, Data Aggregation, Data Calculations, R Markdown, R Programming, Rstudio, Tableau Software, Presentation, Data Integrity, Sample Size Determination, Decision-Making, Problem Solving, Questioning
professional certificate
Prepare for a career as a data scientist. Build job-ready skills – and must-have AI skills – for an in-demand career. Earn a credential from IBM. No prior experience required.
4.6
(78,565 ratings)
708,231 already enrolled
Beginner level
Average time: 4 month(s)
Learn at your own pace
Skills you'll build:
Generative AI, Data Science, Model Selection, Data Analysis, Python Programming, Data Visualization, Predictive Modelling, Numpy, Pandas, Dashboards and Charts, dash, Matplotlib, Cloud Databases, Relational Database Management System (RDBMS), SQL, Jupyter notebooks, Machine Learning, Clustering, regression, classification, SciPy and scikit-learn, CRISP-DM, Methodology, Data Mining, Github, Jupyter Notebook, K-Means Clustering, Data Science Methodology, Rstudio, Big Data, Deep Learning, Quering Databases, Data Generation, Career Development, Interviewing Skills, Job Preparation, Resume Building
Yes. Many data analysts go on to become data scientists after gaining experience, advancing their programming and mathematical skills, and earning an advanced degree.
Which you choose is largely a matter of preference. If you’re mathematically minded and enjoy the technical aspects of coding and modeling, a data science degree could be a good fit. On the other hand, if you love working with numbers, communicating your insights, and influencing business decisions, consider a degree in data analytics. Whether you study data science or data analytics, you’ll be building skills for an in-demand, high-paying career.
Working as a data analyst empowers you to apply your analytical thinking skills to help solve business problems. It’s a highly sought-after role that’s typically well compensated. According to the Robert Half Salary Guide 2023, data analysts in the US make, on average, $110,250, depending on skills, location, and experience. Data scientists earn even more — $140,750, on average. Specializing in big data engineering and AI architecture can further increase earning potential. [5]
Coding isn’t typically required for data analysts, though having fluency in Python, R, or SQL can help you to clean, organize, and parse data.
World Economic Forum. "The Future of Jobs Report 2025, https://reports.weforum.org/docs/WEF_Future_of_Jobs_Report_2025.pdf." Accessed March 25, 2025.
US BLS. "Occupational Outlook Handbook: Data Scientist, Job Outlook, https://www.bls.gov/ooh/math/data-scientists.htm#tab-6." Accessed March 25, 2025.
Glassdoor. "Data Analyst Salaries, https://www.glassdoor.com/Salaries/us-data-analyst-salary-SRCH_IL.0,2_IN1_KO3,15.htm." Accessed March 25. 2025.
Glassdoor. "Data Scientist Salaries, https://www.glassdoor.com/Salaries/data-scientist-salary-SRCH_KO0,14.htm." Accessed March 25, 2025.
Robert Half. "2023 Salary Guide, https://www.roberthalf.com/salary-guide." Accessed March 19, 2024.
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