Explore the pathway to a non-traditional data science career, identifying different methods of acquiring the requisite skills without a university degree. Understand the importance of hands-on experience, professional portfolios and industry connections in being competitive in the field of data science.

Key Insights

  • You don't need a university degree to become a data scientist. Essential skills and knowledge can be acquired through various learning methods such as on-demand classes, in-person training, or live online classes.
  • Data scientists need a strong understanding of statistics, machine learning, and programming languages such as R, SQL, Python, Java, and C++.
  • Hands-on experience is crucial for aspiring data scientists. It not only aids in understanding the work of a data scientist but also helps build a professional portfolio.
  • Creating a professional portfolio showcasing your work is an effective way to attract prospective employers. It can include hands-on projects from your training as well as other relevant projects.
  • Networking is vital in the data science field. It can aid in job searches, skill development, and career advancement.
  • Noble Desktop offers in-person and live online data science classes that include hands-on experience, one-on-one mentorship, job search assistance, and more.

Similar to the article above, but specifically about people who want to become Data Scientists but do not have college degrees (or who have degrees in unrelated fields).

If you are interested in becoming a Data Scientist, you might wonder what level of education you need to start this career. You might think that you have to earn a four-year degree or even a Master’s degree, but there are ways to start a data science career without either. The following sections detail how to become a Data Scientist without a degree. 

What is a Data Scientist?

Data Scientists extract meaning from raw data to detect patterns and propose solutions that meet an organization’s needs, especially the needs to compete and grow. A Data Scientist’s responsibilities include finding valuable data from data sources, developing machine learning algorithms, improving data collection procedures, cleansing and validating data integrity to ensure accuracy, and detecting patterns and solutions based on data. Data Scientists build models based on data, create data visualizations that communicate patterns and findings to stakeholders, and automate collection processes. Because data plays a critical role in the success of any organization, Data Scientists can build careers in business, technology, finance, nonprofits, and many other industries. 

Those who wish to become a Data Scientist should develop the analytical, statistical, and programming skills needed to manage and interpret raw data. These skills include understanding statistics, machine learning, and reporting tools. Aspiring Data Scientists also benefit from understanding the programming languages R, SQL, Python, Java, and C++. 

Read more about what a Data Scientist does.

Can You Really Become a Data Scientist Without a Degree?

You can become a Data Scientist without a university degree. You can also become a Data Scientist if you have a degree in something other than computer science or applied mathematics. The key to becoming a Data Scientist is to have the skills and knowledge needed to perform the work required of the position. Read on to learn more about how to become a Data Scientist. 

Steps to Become a Data Scientist

If you are interested in starting a career as a Data Scientist, you will want to outline the steps needed to meet your goal. This includes outlining your career goals, identifying the right learning method for you, dedicating time to learning the necessary skills, creating a professional portfolio, networking with others in your field of interest, and starting your job search. 

Determine Your Goals and Learning Path

The first step toward starting a career as a Data Scientist is to identify your career goals and learning path. Is there a particular area of data science you wish to specialize in? What skills do you need to become a Data Scientist? Data Scientists must understand how to use data management and visualization tools, how to use machine learning to process data and forecast outcomes, and how to use R programming, Python, Java, and sometimes other programming languages such as C++. Identifying the skills necessary to reach your career goal will help you determine what learning method to pursue.

How do you go about learning data science skills? While earning a four-year degree related to data science is an option, it is a costly and time-consuming one. Most working professionals wishing to launch a new career as a Data Scientist learn data science skills through on-demand classes, in-person classes, or live online classes. On-demand classes such as those found on Skillshare and LinkedIn Learning provide the most flexibility since you can stop and start the course whenever you choose. The major drawback to the on-demand/self-paced learning method is lack of access to an instructor if you have questions. In-person classes are those taught by an expert instructor in a physical learning location, allowing you to network with local professionals such as your classmates.

In-person learning works well for those who prefer face-to-face, and it provides access to all necessary equipment and software. In-person classes also incorporate hands-on assignments that help you retain what you learn, develop your skills, collaborate with others, and build a professional portfolio. The major drawback to in-person classes is the extra time and expense that commuting to the class requires. 

Live online learning offers many of the same benefits as in-person learning including real-time feedback from your instructor, the ability to collaborate with classmates, and the use of hands-on assignments. Live online classes have the benefit of letting you learn from anywhere. Virtual classes do, however, require that you have the necessary software and tools needed for you to learn. Remote learning may also mean that your classmates do not live in your local area, so the class may not provide the chance to network locally.

When deciding which learning method works best for you, keep both your budget and learning preferences in mind. If you want to start learning data science skills before committing to a paid learning method, you can explore free learning tools through Noble Desktop’s Data Science Learn Hub

When you’re ready to explore paid learning methods, you can compare different learning options, including local classes, using the Classes Near Me tool.

Learn Data Science Skills

Once you have decided on the learning path that fits your needs, it’s time to start learning the data science skills needed to launch your career as a Data Scientist. Learning these skills requires setting aside dedicated time. If you are taking an in-person or live online class, you will meet a scheduled time, but you may also wish to supplement what you learn in class to help you retain the information and further develop your skills. The skills required to become a Data Scientist include learning programming languages such as SQL, R, and Python, understanding mathematics including linear algebra, calculus, statistics, and probability, and understanding machine learning, natural language processing, and file management.

A critical part of developing data science skills is gaining hands-on experience. In-person and live online classes often include hands-on activities as part of the curriculum. To truly understand the work of a Data Scientist, you must put lessons into practice through hands-on assignments. Such projects also allow you to build a professional portfolio. 

Create a Professional Portfolio

Creating a professional portfolio allows you to show prospective employers the evidence of your hard work and data science skills. Portfolios can also help you to land part-time and freelance jobs as a Data Scientist if you decide to pursue that path or wish to gain additional experience before finding a full-time role. So how does one assemble a professional portfolio for Data Scientist jobs?

If you participate in hands-on activities through an in-person or live online class, you can save your work as part of your portfolio. You can also add other projects that showcase your work if you choose. Having a mentor review your portfolio will help to ensure you have everything you need to make a good impression during your job search. Live online classes and in-person classes that include portfolio reviews and mentorship with your tuition can therefore help you have the edge over the competition when you start your job search.

Make Industry Connections

Making industry connections can significantly benefit you when you start your job search, but networking doesn’t just serve your short-term goals. The industry connections you make can prove helpful throughout your entire career. You can learn new skills from mentors and others in the industry. You may learn about new opportunities through your connections as you work to advance your career. 

In-person data science classes allow you to network with locals while learning the necessary skills to become a Data Scientist. You also have a professional connection through your instructor/mentor. Live online classes also connect you to industry professionals, though not always in your local area. If you want to network beyond your class, identifying local data-related professional organizations can provide a means of connecting with others.

Review Your Resume and Start Your Job Search

The final step to finding a job as a Data Scientist is to review your resume and start your job search. Reviewing your resume with your mentor or another professional helps you to ensure your resume stands out to recruiters. You will want to highlight the skills key to the job you want, including any soft skills relevant to the position. Also, take advantage of any other job search assistance in your data science program.

Once you have a polished resume, you are ready to start your job search. You can find Data Scientist job postings on Glassdoor, LinkedIn, Indeed, and more. Setting up email alerts for relevant keywords and postings can help you stay on top of all available opportunities.

Learn the Skills to Become a Data Scientist at Noble Desktop

If you are looking to start a new career in data science, you might think the only way for you to become a Data Scientist is by enrolling in a four-year university or pursuing other costly and lengthy educational options. However, there are many alternative methods available to help you transition into a data science career, including data science bootcamps and certificate courses designed to help working professionals gain the skills needed to obtain an entry-level job as a Data Scientist. Exploring in-person and live online data science bootcamps and certificate programs can help you find the class that meets your career goals, budget, and schedule. The first step to finding the class that fits your needs is to understand the differences between in-person classes and live online classes. 

In-person data science classes meet in a traditional classroom setting at a physical location. In-person classes have the advantage of providing all necessary equipment, such as computers and software, and allowing students to network with local professionals such as your classmates and instructor. You also have the advantage of learning from an expert instructor face-to-face. The primary drawback to in-person courses is the extra time and money required to commute to the physical learning location. Live online data science classes offer many of the same benefits as in-person classes, including the ability to learn in real-time from an expert instructor. You can also collaborate with classmates, and you have the advantage of learning remotely. 

Noble Desktop offers several different in-person and live online data science classes that can help you start a career as a Data Scientist. The Python for Data Science Bootcamp teaches students foundational programming concepts and how to handle different data types, use conditional statements to control the flow of a program, use Scikit-Learn, Matplotlib, Numpy, Pandas, and other Python libraries and tools. Noble’s Data Science Certificate program and Data Analytics Certificate program provide a deep dive into the topics and skills essential to launching a career in data science or data analytics and offer one-on-one mentorship and job search assistance. All Noble Desktop classes provide students with hands-on experience, flexible financing options, setup assistance, a free retake, small class sizes, and real-time guidance from an expert instructor.

Learn more about Noble Desktop’s in-person and live online data science classes.

You can also learn more about data science careers and data science learning options with Noble’s free Data Science Learning Hub.