The ultimate guide to your data analyst portfolio: tips, examples, and more
Published
Entering the world of data analysis requires deep analytical, statistical and technical skills. It is important that you have a platform to highlight your key skills as an excellent professional. This is where a portfolio for data analysts can be very helpful.
Whether you want to become a data analyst, business analyst, or data scientist, a data analyst portfolio is a good tool to advance your expertise and career. First, let's talk about how to create a data analyst portfolio that impresses a potential employer and discuss some of the best data analyst portfolio examples.
What is a Data Analyst?
A data analyst transforms a disorganized data set into a clean, understandable format so that information and insights can be maximized for business growth. A career in data analytics requires conducting market research analysis, collecting and processing big data, producing reports on quantitative data results, and managing databases.
This profession comes with high job security and remuneration. According to the US Bureau of Labor Statistics, data analysts fall under the profession of operations research analyst. With this in mind, the job outlook for data analysts is expected to increase by 25 percent between 2020 and 2030.
Do you need a data analyst portfolio?
Yes, you need a data analyst portfolio to showcase your professional and analytical skills. You need to show your potential employer that you have the critical thinking skills to simplify complex concepts and create a clean record. The data analyst job market is extremely competitive, so having an impressive analytics portfolio will help you stand out from the competition.
A portfolio gives you the opportunity to show the convergence between data science and your professional experience. Taking on the right types of projects will give you further insight into your skills and achievements. It gives you the opportunity to highlight your in-demand skills in areas such as statistics, economics, machine learning, SQL and artificial intelligence.
Elements of a strong data analyst portfolio
- Basic Personal Information. Include your legal name, contact information, LinkedIn, and other relevant information. You should make it easy for customers to contact you for your services.
- Career summary. Include this section in your “About” section along with your elevator pitch. This section must include your work experience and career goals. Explain the types of analysis you have experience with and key insights from your portfolio.
- Data analysis projects. This section of your portfolio should demonstrate both your high level of expertise and your versatility in data science. When choosing which projects to display, you can also consider what type of industries you want to focus on.
- Links to your professional work. This element is mostly used by freelance data analysts and data consultants. Add links to your previous jobs, including the project code you wrote to prove your experience in this job.
- Work references. Adding work references and client comments to your portfolio will help your potential employers set a high standard for your professional skills. Social proof can turn a simple project portfolio into something special.
How to create a data analyst portfolio
Creating a data analyst portfolio can be challenging. It is not similar to other disciplines such as graphic design or programming, where portfolios are commonly created. If you need help creating a data analyst portfolio, we've put together a five-step guide below to get you started.
1. Learn data analysis
The first step to building your data analyst portfolio is to learn the subject. You can learn this subject through self-study or choose various training paths to master it. You can attend the best data analysis bootcamps, enroll in a short-term online data analysis course, or earn a bachelor's degree in data analysis to improve your critical thinking skills and gain additional experience.
2. Improve your data literacy
Focus on the skills you want to develop as a data analyst so it's easier to find the right specialization for you. You can become a business analyst, business intelligence specialist, artificial intelligence analyst, or data visualization expert. The important thing is to be clear about what type of data analyst you want to be and highlight this in your portfolio.
3. Execute the projects
The core of a strong data analyst portfolio is the presentation of your data science and analytics projects. Here you can introduce models for machine learning, Python, Tableau, data visualization tools, artificial intelligence, business analytics, and other data science projects you specialize in. They can also demonstrate the range of industries you can serve.
4. Get certified
A professional certification will increase your expertise and improve your chances of being hired by clients. The more certifications and customer logos you can collect, the more enticing your portfolio will be. This also gives you more credibility as a data analyst.
5. Use letters of recommendation
To gain the trust of your future clients, you need to include positive feedback from other professionals or previous clients in your portfolio. As often as possible, get people who can vouch for your positive work and speak highly of you.