Whether you have a degree or not, learn how to become a data analyst.
Data analysts gather, clean, and study data to help guide business decisions. If you enjoy working with data, solving problems, and identifying insights, this in-demand career might be right for you. At a glance, here's what you need to know about data analysts:
Data workers are in demand. According to the US Bureau of Labor Statistics (BLS), the number of job openings for data professionals is projected to grow by 34 percent between 2024 and 2034 [1].
Data analysts possess skills in data analytics, statistics, programming, and data visualization, among other things.
While most data analysts possess a bachelor's degree, some employers may be willing to hire entry-level data analysts without one, so long as they have relevant skills.
In this article, we'll go over the different ways you can become a data analyst—with or without a degree. Afterward, if you want to get started building job-ready skills, consider enrolling in the IBM Data Analyst Professional Certificate. Over 11 courses, you'll develop a working knowledge of the Python language as well as how to visualize data and present your findings. All you need is basic computer literacy, high school math, and comfort with numbers.
You can find data analytics jobs in all sorts of industries, and there’s more than one path toward securing your first job in this high-demand field. Whether you’re just getting started in the professional world or pivoting to a new career, here are some steps toward becoming a data analyst.
Learn more: What Does a Data Analyst Do? A Career Guide
If you’re new to the world of data analysis, you’ll want to start by developing some foundational knowledge in the field. Getting a broad overview of data analytics can help you decide whether this career is a good fit while equipping you with job-ready skills.
It used to be that most entry-level data analyst positions required a bachelor’s degree. While many positions still do require a degree, that’s beginning to change. You can develop foundational knowledge and enhance your resume with a degree in math, computer science, or another related field—or you can also learn what you need through alternative programs, like professional certificates, bootcamps, or self-study courses.
Learn more: What Degree Do I Need to Become a Data Analyst?
Getting a job in data analysis typically requires having a set of specific technical skills. Whether you’re learning through a degree program, professional certificate, or on your own, these are some essential skills you’ll likely need to get hired.
Take a look at some job listings for roles you’d like to apply for, and focus your learning on the specific programming languages or visualization tools listed as requirements.
In addition to these hard skills, hiring managers also look for workplace skills, like solid communication skills—you may be asked to present your findings to those without as much technical knowledge—problem-solving ability, and domain knowledge in the industry you’d like to work.
Learn how to perform data analysis, including data preparation, statistical analysis, and predictive modeling, using R, R Studio, and Jupyter with the IBM Data Analytics with Excel and R Professional Certificate.
The best way to learn how to find value in data is to work with it in real-world settings. Look for degree programs or courses that include hands-on projects using real data sets. You can also find a variety of free public data sets you can use to design your own projects.
Dig into climate data from the National Centers for Environmental Information, delve deeper into the news with data from BuzzFeed, or come up with solutions to looming challenges on Earth and beyond with NASA open data. These are just a few examples of the data out there. Pick a topic you’re interested in and find some data to practice on.
If you’re looking to build job-ready data analyst skills without committing to a degree, consider the Google Data Analytics Professional Certificate through Coursera. You'll learn how to clean and organize data with SQL and R, visualize with Tableau, and complete a case study for your portfolio.
When you complete the program, you'll get access to hiring resources through Google’s Employer Consortium.
As you play around with data sets on the internet or complete hands-on assignments in your classes, be sure to save your best work for your portfolio. A portfolio demonstrates your skills to hiring managers. A strong portfolio can go a long way toward getting the job.
As you start to curate work for your portfolio, choose projects that demonstrate your ability to:
Scrape data from different sources
Clean and normalize raw data
Visualize your findings through graphs, charts, maps, and other visualizations
Draw actionable insights from data
If you’ve worked on any group projects through the course of your learning, consider including one of those as well. This shows that you’re able to work as part of a team.
If you’re not sure what to include in your portfolio (or need some inspiration for project ideas), spend some time browsing through other people’s portfolios to see what they’ve chosen to include.
Tip: Sign up for a GitHub account and start posting your projects and code to the site. It’s an excellent spot to network with a community of data analysts, show off your work, and possibly catch the eye of recruiters.
It can be easy to focus only on the technical aspects of data analysis, but don’t neglect your communication skills. A significant element of working as a data analyst is presenting your findings to decision makers and other stakeholders in the company. When you’re able to tell a story with the data, you can help your organization make data-driven decisions.
As you complete projects for your portfolio, practice presenting your findings. Think about what message you want to convey and what visuals you’ll use to support your message. Practice speaking slowly and making eye contact. Practice in front of the mirror or your classmates. Try recording yourself as you present so you can watch it back and look for areas to improve.
After gaining some experience working with data and presenting your findings, it’s time to polish your resume and begin applying for entry-level data analyst jobs. Don’t be afraid to apply for positions that feel like a stretch. Your skills, portfolio, and enthusiasm for a role can often matter more than if you check every bullet item in the qualifications list.
If you’re still in school, ask your university’s career services office about any internship opportunities. With an internship, you can start gaining real-world experience for your resume and apply what you’re learning on the job.
As you move through your career as a data analyst, consider how you’d like to advance and what other qualifications can help you get there. Certifications, like the Certified Analytics Professional or Cloudera Certified Associate Data Analyst, may help qualify you for more advanced positions at higher pay grades.
If you’re considering advancing into a role as a data scientist, you may need to earn a master’s degree in data science or a related field. Advanced degrees are not always required, but having one can open up more opportunities.
With Coursera Plus, you can learn and earn credentials at your own pace from over 350 leading companies and universities. With a monthly or annual subscription, you’ll gain access to over 10,000 programs—just check the course page to confirm your selection is included.
要成为一名数据分析师,可能需要几个月到几年的时间。 你需要花费的时间取决于你当前的技能组合、你选择的教育途径类型以及你每周花费多少时间来发展你的数据分析技能。
数据分析是迎接挑战的硬技巧吗
是的,尽管相关专业的学位可能会增加您的机会。 虽然许多职位都会将学士学位列为工作要求,但只要具备适当的技能和经验,也有可能被录用。 如果您没有学位(或相关专业的学位),请务必花更多时间制作您的作品集,以证明您的能力。
对技术熟练的数据分析师的需求不断增长--世界经济论坛《2020 年未来的工作》报告将这一职业列为需求增长的第一位[2]。 招聘数据分析师是各行各业的当务之急,包括技术、金融服务、医疗保健、信息技术和能源等行业。
数据分析是一个以技能为基础的职业。 许多职位需要应聘者精通 SQL、Microsoft Excel、R 或 Python 编程、数据可视化和演示技能。 查看您计划申请的行业的一些职位列表,了解更具体的资格要求。
US Bureau of Labor Statistics. "Occupational Outlook Handbook: Data Scientists, https://www.bls.gov/ooh/math/data-scientists.htm." Accessed September 24, 2025.
World Economic Forum. "Data Science in the New Economy, http://www3.weforum.org/docs/WEF_Data_Science_In_the_New_Economy.pdf." Accessed September 24, 2025.
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