With a master’s degree in data science, you may qualify for more advanced roles and higher salaries thanks to the specialized knowledge you'll gain. Learn more.
Earning your master's degree in data science is an opportunity to pivot to a career in data science or advance in your current data science career. Through a master's program, you can expect to deepen your understanding of data science methods, develop your analytical and critical thinking skills, and qualify for advanced roles in the field.
Data scientists and data science professionals continue to be in demand thanks to the growing reliance on data across all sectors. In fact, the US Bureau of Labor Statistics expects data scientist openings to grow by 36 percent over the next decade—much faster than average [1].
While a master's degree isn't typically required to work in data science, furthering your data science education can be an excellent way to make a career change or specialize in an area, such as artificial intelligence or big data. In this article, we'll go over what it takes to earn a master's in data science, the coursework you can expect, and the jobs you can pursue.
As with many other types of master's degrees, data science graduate programs take about two years of full-time study. However, options like online and accelerated programs often allow you to work at your own pace, either speeding up or stretching out your time to completion. These options can be especially helpful if you have other responsibilities to factor in.
At the master's level, you'll likely be expected to complete core classes that strengthen your understanding of core data science concepts, like data processing, and your ability to work with data sets.
Common data science coursework can include:
Machine learning
Probability and statistics
Data mining
Big data
Data visualization
Object-oriented programming
Data manipulation and management
Analytic techniques
Some programs require a capstone course or project in which you'll apply what you learn to real-world problems.
In addition to taking foundational coursework in data science, your program may offer you a chance to specialize in a particular area of interest. These are typically considered electives or specialty courses that strengthen your knowledge of an area within data science.
Common concentrations include:
Analytics and modeling
Analytics management
Applications
Artificial intelligence
Big data informatics
Business analytics
Computational intelligence
Data engineering
Technology entrepreneurship
Data science master's programs are designed to introduce new technical skills and strengthen existing ones. You should also find opportunities to bolster key workplace skills that many data scientists need, such as critical thinking, problem-solving, and communication.
You may be able to develop or work on the following skills in a master's data science program:
Workplace skills | Technical skills |
---|---|
Attention to detail | Data analysis |
Communication | Data mining |
Critical thinking | Data visualization |
Innovation | Machine learning |
Leadership | Programming |
Problem-solving | Statistics |
Learn more: 7 Skills Every Data Scientist Should Have
To qualify for a master's in data science program, you will typically need a bachelor's degree from an accredited institution. While a bachelor's in data science or a related field such as computer science, cybersecurity, accounting, mathematics, or statistics, can be helpful, it’s not always required. In fact, a number of programs accept students from various backgrounds.
That being said, each program sets different stipulations. Some, for example, may expect you to have some understanding of mathematics and computer science before beginning. It's important to spend time researching the application requirements of each program you're interested in attending.
Depending on the program you apply to, you may also need a resume, letter of intent, letters of recommendation, and a minimum GPA. Other programs may require you to complete one or more master's level courses and receive a minimum grade before enrolling in the full program.
A master's degree in data science can be a useful credential when you want to qualify for more advanced roles in the field. Data scientists earn an average annual salary of $108,659, according to Lightcast, but you may be able to earn more because of your credentials.
That's because, on average, master's degree holders tend to earn more and experience lower bouts of unemployment than bachelor's degree holders, according to BLS [2]. What's more, the degree tends to be a popular choice among data scientists. Thirty-four percent of data scientists hold a master's degree, according to Zippia [3].
Data science as a profession is "in more demand than ever," according to the Harvard Business Review [4]. You can pursue a range of jobs in the field of data science with a master's degree.
Data scientist: Data scientists collect data from data analysts and engineers to further analyze it with advanced tools. They use principles of statistics and probability to find patterns in data and make predictions so businesses can make informed decisions.
Data analyst: A data analyst reviews data to find trends and characteristics of a customer base and create data sets that can be quickly processed and interpreted. They look for patterns that can be used as solutions for companies and organizations.
Data architect: A data architect is in charge of designing the policies, models, technologies, and systems to work with the processed information.
Data engineer: A data engineer prepares data for analytical and operational uses. These professionals build data pipelines to bring data sets that analysts and scientists later process.
Data science and analytics manager: A data analytics manager joins several tasks from their team into a cohesive effort for a more extensive data project. They research and construct methods for data collection, information analysis, and problem-solving.
Business intelligence analyst: A business intelligence analyst reviews data and produces financial and market intelligence reports. These reports are for pattern recognition and finding trends in a market used for a company’s financial decisions.
Machine learning engineer: Machine learning engineers create data filters and solutions for software. They need high-level programming and mathematical analysis skills and the ability to design, build, and maintain machine learning systems and software.
Statistician: Statisticians work to collect, analyze, and interpret data to find trends and recognize patterns to be used by higher-ups for decision-making and prioritization.
Learn more: Data Science Jobs Guide: Resources for a Career in Tech
There are many benefits to earning a master's in data science, even if it's not a required degree to work in the field. You may find that you qualify for more advanced roles, or higher salaries, thanks to your graduate-level education.
Enrolling in a master's program can also be a great opportunity to develop more specialized knowledge about a subject, setting you apart from other applicants or peers who do not have the same advanced credentials. Learn more about whether a graduate degree in the subject is right for you with Is a Master's in Data Science Worth It?
Considering earning your master's in data science? Learn from top-ranked schools such as the University of Michigan's Master of Applied Data Science and the University of Colorado Boulder's Master of Science in Data Science. You can learn at your own pace from anywhere there's an internet connection. Get started by previewing a degree course today.
US Bureau of Labor Statistics. "Data Scientists, https://www.bls.gov/ooh/math/data-scientists.htm." Accessed April 19, 2023.
US Bureau of Labor Statistics. "Education Pays, https://www.bls.gov/emp/chart-unemployment-earnings-education.htm." Accessed April 19, 2023.
Zippia.com. "Data Scientist Jobs, https://www.zippia.com/data-scientist-jobs/." Accessed April 19, 2023.
Harvard Business Review. "Is Data Scientist Still the Sexist Job of the 21st Century? https://hbr.org/2022/07/is-data-scientist-still-the-sexiest-job-of-the-21st-century?." Accessed April 19, 2023.
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