Build new skills, push through the inevitable rough patches, and increase your confidence as a data analyst with these tips on how to meet the challenge.
If you’re thinking about learning data analytics, it’s not unusual to have some concerns about the technical skills involved. Data analysts rely on skills like programming in R or Python, querying databases with SQL, and performing statistical analysis. While these skills can be challenging, it’s totally possible to learn them (and land a data analyst job) with the right mentality and plan of action. You might also consider exploring data analytics jobs in in-demand fields such as cloud computing.
Build new skills, push through the inevitable rough patches, and increase your confidence as a data analyst with these tips on how to meet the challenge.
Demand for skilled data analysts is growing—the World Economic Forum Future of Jobs 2025 report listed this career as one of the top jobs in terms of increasing demand [1]. And hiring data analysts is a top priority across a range of industries, including technology, financial services, health care, information technology, and energy.
According to data from Glassdoor as of May 2025, data analysts in the US make an average of $73,932, depending on skills and experience [2]. That means the energy you invest now could pay off later with an in-demand, well-paying career.
Learning new skills takes time and energy. Think of these expenditures as an investment in your future self. Each time you write a new line of code, have an “aha” moment for a tricky math concept, or finish a data project for your portfolio, you’re laying the foundation for a successful career in data.
You can complete hands-on projects for your portfolio while practicing statistical analysis, data management, and programming with 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 five months.
If you’re new to data analysis, it can help to start with a structured program that covers the basics and introduces you to some of the tools of data analytics:
Data types and structures
Processing and preparing data
Methods of data analysis
Data visualization and storytelling
Using data to answer questions
By getting a broad overview, you can assess what skills you already have and identify areas for improvement.
You don’t have to drop everything and study full-time to start making progress toward a career in data. You might be surprised by how much you can accomplish with as little as 15 minutes a day.
Set yourself up for success by planning out how your learning will fit into your life. As you’re making a plan, ask yourself these questions:
When do I feel most focused? When do I have the fewest distractions?
To what part of my day can I anchor my learning time? Right after my first cup of coffee? During my lunch break? Just after dinner?
Where can I work with few to no distractions?
Have I blocked out this time on my calendar?
Can I set an alarm to remind myself of my commitment?
Who do I need to inform of my plan to avoid interruptions? Roommates? Family members? Colleagues?
“Be realistic with the time you’re able to commit, then guard that time fiercely. This is your time to learn.”
There will be times, especially early on, when a small error in your code causes your program to crash. Or maybe you spend time building a database only to realize you could have modeled it more efficiently. That’s okay! Give yourself permission to make mistakes. This is how we learn.
Accuracy is certainly important once you’re on the job, but while you’re learning, embrace the fact that you will mess up. You will feel frustrated at times, but you’ll also learn from those struggles and become a better analyst by working through them.
Carrie, a research manager at Google, discusses how she overcame her early struggles with learning R in this video.
After you’ve built a foundation in data analysis with some form of structured overview, pick one skill and dig deeper. Choose to build confidence with a skill you already have some proficiency in or tackle your biggest weakness head-on.
Here are some ideas for places to start:
Learn the basics of Python or R programming.
Start interacting with data using SQL (structured query language).
Brush up on your spreadsheet skills with an Excel course.
Get a refresher in statistics or linear algebra.
The level of difficulty of becoming a data analyst may depend on your personal experience and prior knowledge of statistics and mathematics. To become a data analyst, you typically need to complete a bachelor’s degree in a subject such as computer science or a related field of study and to gain foundational skills such as programming and logical reasoning. You may earn your bachelor’s degree through a four-year degree program or take as much time as you need.
You don’t have to wait until you have a job as a data analyst to start gaining experience. As you’re learning the theories behind the practice, apply them to the real world by practicing on real data. Look for courses that incorporate hands-on projects and assignments, or take a do-it-yourself approach by designing your own projects using free, open-source data sets.
Pick a topic you’re interested in and start digging into the data to see what you can find. Here are some ideas to get you started:
Analyze what factors influence the popularity of a video on YouTube.
Use Google Books Ngram to determine what words were used most frequently in books between 1950 and 1990.
Visualize which countries are using which COVID-19 vaccines (and at what rates) with this daily-updated data.
Use Python to create an SQLite database for saving your contacts (name, email, phone number, address, etc.).
Practice cleaning and normalizing this data set of more than 200,000 Jeopardy questions from Reddit.
It’s never too early to start building your network. Whether you’re working through a degree course, a coding book, or your own data project, consider getting involved with a community of other learners and data professionals. When you hit a sticking point in a program you’re writing or can’t quite seem to figure out a statistical problem, you can turn to your community for ideas.
GitHub lets you post your code for feedback or collaborate on coding projects. Sometimes, the projects you post can even attract the attention of hiring managers.
On Kaggle, one of the world’s largest data science communities, you can join competitions to solve real-world data problems and collaborate with other data professionals.
Reddit has several subreddits focusing on data topics. Some to consider include r/dataisbeautiful, r/datasets, r/learnpython, r/learnSQL, and r/DataScienceJobs.
Successful data analysts leverage their technical skills on the job, but they also rely on human skills, like solid communication. As an analyst, you might be tasked with presenting your findings to decision makers who may not possess the same technical knowledge. The ability to translate complex ideas into easy-to-understand presentations can be a huge advantage.
Other workplace skills, like curiosity, problem solving, teamwork, and attention to detail, also appeal to employers. The good news is that you probably already have some of these skills.
Let’s talk about what this really means. It doesn’t mean you need to commit to a full-time degree program or wait years to get a job as a data analyst. It’s possible to develop the skills you need to get an entry-level role as a data analyst in a matter of months. But getting a job doesn’t mean your learning should stop. In this field, you’ll have an opportunity to continue improving your skills over time.
And you’ll keep getting better at it. Research has shown that learning is a skill. The more we practice learning, the faster and more efficient we become at developing expertise.
It’s less critical to know everything there is to know about Tableau, Python Pandas, or a particular machine learning model, and more critical to know how a particular tool works, what it does, and when and why you should use it.
The most popular data visualization software or programming language today might be obsolete five years from now. In an industry that’s changing all the time, learning should be less about memorizing specific bits of programming syntax or pieces of information and more about improving broader skill sets.
We’ve outlined some tips and considerations to keep in mind as you learn the skills of a data analyst. If you’re ready to take the next step, start exploring this in-demand career path with a seven-day free trial to the Google Data Analytics, IBM Data Analyst, or Microsoft Power BI Data Analyst Professional Certificates.
数据分析并不是严格意义上的 "硬 "或 "软 "技能,而是一个涉及两者结合的过程。数据分析师必须掌握的一些技术技能包括 Python 等编程语言、Excel 等数据库工具和 Tableau 等数据 Visualization 工具。数据分析师应掌握的一些职场技能包括批判性思维、解决问题和沟通。
是的,你应该了解一些数据解析的编码。尽管如此,数据分析师并不需要精通编程语言。相反,您至少应熟练掌握 SQL、Python 和 R。
是的,自学数据解析的基础知识是可能的。不过,要做到这一点,您需要留出时间,利用现有资源自学数据解析。除了您可以在网上和当地图书馆找到的内容外,Coursera 还提供由 Google、IBM 和 Microsoft 等行业领先公司提供的各种数据解析专业证书课程,这些课程是专门为初学者设计的。
World Economic Forum. "Future of Jobs Report 2025, https://reports.weforum.org/docs/WEF_Future_of_Jobs_Report_2025.pdf." Accessed on May 28, 2025.
Glassdoor. "Salary: Data Analyst in United States, https://www.glassdoor.com/Salaries/data-analyst-salary-SRCH_KO0,12.htm." Accessed on May 28, 2025.
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