Data analysts and data scientists use data to drive insights and predictions. This guide compares roles, skills, education, and salaries, offers tips for building expertise, and explores the growing demand for data professionals in today’s job market.
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Data analysts and data scientists are two similar but distinct roles that help businesses make decisions, predictions, and drive growth.
Data analysts and data scientists are among the most in-demand, high-paying jobs, according to the World Economic Forum Future of Jobs Report 2025 [1].
A data analyst focuses on solving business problems, while a data scientist uses data to make predictions.
You can become a data analyst with a bachelor’s degree, while data scientists typically require advanced degrees.
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.
Data analysts:
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:
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
Data professionals are in demand and well-paid for their valuable skills. 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]. According to the US Bureau of Labor Statistics (BLS), the number of data scientists, including analysts, is projected to grow by 34 percent between 2024 and 2034, indicating much faster-than-average job growth over the next decade [2].
Median total salary (US):
*All salary information represents the median total pay from Glassdoor as of February 2026. These figures include base salary and additional pay, which may represent profit-sharing, commissions, bonuses, or other compensation.
Read more: Data Scientist Salary: Your Pay Guide
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 on those that 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.
Data analysts
Typical requirements: Bachelor’s degree in mathematics, statistics, computer science, or finance.
Alternative pathway: Certification or Professional Certificate in data analytics for entry-level roles
Data scientists
Typical requirements: Bachelor’s degree plus an advanced degree such as a master’s or doctoral degree in data science, information technology, mathematics, or statistics
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.
Explore career paths, assess your skills, and connect with resume guidance while browsing our Career Resources Hub. Or if you want to learn more about data analysis and data science, check out these free resources:
Watch on YouTube: How to Start a Data Science Career in 2025 (Complete Roadmap)
Study terms: Data Analysis Terminology
Hear from an expert: 7 Questions with a Data Analytics Professor
Whether you want to develop a new skill, get comfortable with an in-demand technology, or advance your abilities, keep growing with a Coursera Plus subscription. You’ll get access to over 10,000 flexible courses.
数据分析师能成为数据科学家吗?
可以。许多数据分析师在积累经验、提高编程和数学技能并获得高级学位后,都会成为数据科学家。
选择哪个专业主要取决于个人喜好。如果您有数学头脑,喜欢编码和建模等技术方面的工作,那么数据科学学位可能很适合您。另一方面,如果您喜欢与数字打交道、交流您的见解并影响商业决策,那么可以考虑数据解析专业。无论您学习的是 Data Science 还是 Data Analytics,您都将为热门的高薪职业积累技能。
尽管精通 Python、R 或 SQL 可以帮助您清理、组织和解析数据,但数据分析师通常并不需要编码。
World Economic Forum. "The Future of Jobs Report 2025, https://reports.weforum.org/docs/WEF_Future_of_Jobs_Report_2025.pdf." Accessed February 5, 2026.
US BLS. "Occupational Outlook Handbook: Data Scientist, Job Outlook, https://www.bls.gov/ooh/math/data-scientists.htm#tab-6." Accessed February 5, 2026.
Glassdoor. "Data Analyst Salaries, https://www.glassdoor.com/Salaries/us-data-analyst-salary-SRCH_IL.0,2_IN1_KO3,15.htm." Accessed February 5, 2026.
Glassdoor. "Data Scientist Salaries, https://www.glassdoor.com/Salaries/data-scientist-salary-SRCH_KO0,14.htm." Accessed February 5, 2026.
Robert Half. "2026 Salary Guide: Data Analyst - Technology, https://www.roberthalf.com/us/en/job-details/data-analyst-technology." Accessed February 5, 2026.
Robert Half. "2026 Salary Guide: Data Scientist, https://www.roberthalf.com/us/en/job-details/data-scientist." Accessed February 5, 2026.
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