Python or R for Data Analysis: Which Should I Learn? (2024)

Written by Coursera Staff • Updated on

Is it better to learn R or Python for a career as a data analyst? Learn more about how to choose the best statistical programming language for your career goals.

Python or R for Data Analysis: Which Should I Learn? (1)

One of the most important skills for a data analyst is proficiency in a programming language. Data analysts use SQL (Structured Query Language) to communicate with databases, but when it comes to cleaning, manipulating, analyzing, and visualizing data, you’re looking at either Python or R.

In this article, we'll explore how Python and R are used for data analysis, including how they differ from one another, how to choose the right one for you, and ways to learn them. Afterward, if you want to take the next step to learning either of these impactful programming languages, you might also consider enrolling in either Google's Data Analysis with R Programming course or IBM's Data Analysis with Python course.

Python vs. R: What’s the difference?

Python and R are both free, open-source languages that can run on Windows, macOS, and Linux. Both can handle just about any data analysis task, and both are considered relatively easy languages to learn, especially for beginners. So which should you choose to learn (or learn first)? Before we dig into the differences, here’s a broad overview of each language.

What is Python?

Python is a high-level, general-purpose programming language known for its intuitive syntax that mimics natural language. You can use Python code for a wide variety of tasks, but three popular applications include:

  • Data science and data analysis

  • Web application development

  • Automation/scripting

Read more: What Is Python Used For? A Beginner’s Guide to Using Python

What does “high-level” mean?

A high-level programming language features a syntax that is easy for humans to read and understand. Low-level languages are those that can be easily understood by a machine. Examples of high-level languages include Python, C++, C#, and Java.

When you write code in a high-level language, it gets converted into a low-level language, or machine code, that your computer can recognize and run.

Python or R for Data Analysis: Which Should I Learn? (2)

What is R?

R is a software environment and statistical programming language built for statistical computing and data visualization. R’s numerous abilities tend to fall into three broad categories:

  • Manipulating data

  • Statistical analysis

  • Visualizing data

Hear more about what R can do from Carrie, a data analyst at Google, in this lecture from Google's Data Analytics Professional Certificate:

How do I choose between Python and R?

There’s no wrong choice when it comes to learning Python or R. Both are in-demand skills and will allow you to perform just about any data analytics task you’ll encounter. Which one is better for you will ultimately come down to your background, interests, and career goals.

As you make your decision, here are some things to consider.

Python and R: By the numbers

According to several popular programming language indices, TIOBE [1], Stack Overflow [2], PYPL [3], and RedMonk, [4] Python is far and away the more popular language across the broader tech community.

While this doesn’t necessarily mean it’s better, it does suggest that it’s more widely used and may have a more robust community for ongoing support and development.

Python or R for Data Analysis: Which Should I Learn? (3)

Learning curve

Both Python and R are considered fairly easy languages to learn. Python was originally designed for software development. If you have previous experience with Java or C++, you may be able to pick up Python more naturally than R. If you have a background in statistics, on the other hand, R could be a bit easier.

Overall, Python’s easy-to-read syntax gives it a smoother learning curve. R tends to have a steeper learning curve at the beginning, but once you understand how to use its features, it gets significantly easier.

Tip: Once you’ve learned one programming language, it’s typically easier to learn another one.

Read more: Popular Programming Languages

Python or R for Data Analysis: Which Should I Learn? (4)

Company

In general, it’s a good idea to “speak” the same language as the team with which you’ll be working. This makes it easier to share code and collaborate on projects.

If you’re just starting out, you may not know what company you’ll eventually work for. Take a look at a few job listings for the companies and industries you’re most interested in. Do they tend to list R or Python as a requirement? This could be a good indication for which direction to take your learning.

Strengths and weaknesses

While both Python and R can accomplish many of the same data tasks, they each have their own unique strengths. If you know you’ll be spending lots of time on certain data tasks, you might want to prioritize the language that excels at those tasks.

Python is better for...R is better for...
Handling massive amounts of dataCreating graphics and data visualizations
Building deep learning modelsBuilding statistical models
Performing non-statistical tasks, like web scraping, saving to databases, and running workflowsIts robust ecosystem of statistical packages

Career path

Think about how learning a programming language fits in with your longer-term career goals. If you’re passionate about the statistical calculation and data visualization portions of data analysis, R could be a good fit for you.

If, on the other hand, you’re interested in becoming a data scientist and working with big data, artificial intelligence, and deep learning algorithms, Python would be the better fit.

The same is true if your personal or professional interests extend beyond data and into programming, development, or other computer science fields. Python is a general-purpose language used for a much wider range of tasks than R.

How to learn R or Python: Options to get started

Python and R are both excellent languages for data. They’re also both appropriate for beginners with no previous coding experience. Luckily, no matter which language you choose to pursue first, you’ll find a wide range of resources and materials to help you along the way. These are just a few options for getting started.

Try both through Guided Projects

Another great way to decide whether to learn R or Python is to try them both out. Coursera’s Guided Projects offer a hands-on introduction in under two hours without having to buy or download any software.

With Getting Started with R, you can start writing basic R commands and learn how to install packages and import data sets. With Introduction to Python, which takes under an hour to finish, you can write a guessing game application as you learn to create variables, decision constructs, and loops.

Practice your Python skills independently with tutorials

Not ready to commit to a course or a boot camp yet? You can read step-by-step guides for troubleshooting Python basics like syntax, if-else statements, exceptions, and working with loops in Coursera's free programming tutorials.

Python or R for Data Analysis: Which Should I Learn? (5)

Take a course

If you prefer focusing on one skill at a time (or if you’re adding a new coding language to your existing data analyst skill set), a course in Python or R could get you started. There are a ton of classes out there to choose from. On Coursera, the most popular options among learners are Programming for Everybody (Getting Started with Python) from the University of Michigan and R Programming from Johns Hopkins University.

Tip: For many learners, it may be better to pick one language and get proficient rather than trying to learn both at the same time.

Python or R for Data Analysis: Which Should I Learn? (6)

Earn a Professional Certificate

Earning a Google Data Analytics Professional Certificate or IBM Data Analyst Professional Certificate gives you a framework for learning a statistical programming language within the greater context of data analysis. The Google certificate teaches R, and the IBM certificate teaches Python. Both include other job-ready skills, like SQL, spreadsheets, and data visualization. Not only can you learn to program, you can learn how all these critical data skills work together.

If you’re interested in starting a career as a data analyst, these programs are a great way to build your foundation through videos, assessments, interactive labs, and portfolio-ready projects. Both can be completed in less than six months.

Frequently asked questions (FAQ)

Instead of measuring each programming language in terms of demand, it can help to know which is most popular because that may indicate greater job prospects, more robust libraries, and increased community support.

While Python is the more popular language of the two, it’s a good idea to review job postings to see which language is preferred or required. ‎

There’s a reason Python is so popular as a programming language. It’s considered easy to learn and its multi-purpose structure makes it applicable to a wide variety of needs.

R, on the other hand, was built by statisticians to serve more specialized uses, so it may be more difficult to learn at first, though many consider it a relatively easy language overall. ‎

SQL is another standard programming language for data analysts. Other languages analysts may use include JavaScript, Scala, Java, Julia, and C/C++.‎

It’s generally a good idea to know more than one programming language to increase your versatility and competitiveness. Luckily, it's often easier to learn a new language once you’ve mastered another.‎

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This content has been made available for informational purposes only. Learners are advised to conduct additional research to ensure that courses and other credentials pursued meet their personal, professional, and financial goals.

Python or R for Data Analysis: Which Should I Learn? (2024)

FAQs

Should I learn Python or R for data analytics? ›

If this is your first foray into computer programming, you may find Python code easier to learn and more broadly applicable. However, if you already have some understanding of programming languages or have specific career goals centered on data analysis, R language may be more tailored to your needs.

Is R or Python better for data visualization? ›

R is renowned for its robust data visualization capabilities, offering a plethora of libraries like ggplot2. Its declarative syntax allows for intuitive plotting. While Python with libraries like Matplotlib and Seaborn is popular too, R's emphasis on statistical graphics gives it an edge in certain domains.

Do I need to learn R if I know Python? ›

Conclusion — it's better to learn Python before you learn R

There are still plenty of jobs where R is required, so if you have the time it doesn't hurt to learn both, but I'd suggest that these days, Python is becoming the dominant programming language for data scientists and the better first choice to focus on.

Is Python more in demand than R? ›

Python currently supports 15.7 million worldwide developers while R supports fewer than 1.4 million. This makes Python the most popular programming language out of the two. The only programming language that outpaces Python is JavaScript, which has 17.4 million developers.

Is Python enough for data analyst? ›

Is Python Required for Data Analysis? A comprehensive understanding of Python programming is extremely beneficial for data analysts. Employers likely expect data analysts to know how Python libraries work to simplify data-related tasks. Therefore, learning Python is a wise career choice.

Can Python do everything R can? ›

R can't be used in production code because of its focus on research, while Python, a general-purpose language, can be used both for prototyping and as a product itself. Python also runs faster than R, despite its GIL problems.

How much Python is needed for a data analyst? ›

At a minimum, a data analyst should be comfortable with basic to intermediate Python. This includes understanding: Basic syntax and control structures: Knowing how to write and understand basic Python code, including loops, conditionals, and functions.

Can Python replace R? ›

Python has been gaining popularity in recent years as a preferred choice for data analysis and statistical computing, potentially replacing R and SAS in many industries.

Is it worth learning both R and Python? ›

However, Python is generally considered to have more diverse applications beyond data science and analytics, and is therefore more widely used across industries. Many companies use both Python and R depending on their needs, so learning both languages can be beneficial.

Why do people prefer Python to R? ›

Python emphasizes simplicity and code readability, resulting in a smooth learning curve. R programming has a steep learning curve for developers who do not have prior statistical language programming skills. Python has gained wide popularity because of its readable syntax, making it easy to learn under expert guidance.

Should I learn SQL or Python first? ›

Typically, SQL is a good programming language to learn first. As a tool, SQL is essential for retrieving content from relational databases. Compared to Python, SQL may be easier for some people to learn.

What is the best programming language for data analysis? ›

Data Analysts typically need a language that's intuitive to learn, easy to work with, has interactive capabilities, and includes libraries that are suited to creating dynamic data visualizations. Five of the most popular programming languages in 2021 for Data Analysts are Python, SQL, R, JavaScript, and Scala.

Is the R language dying? ›

In conclusion, the predictions of the death of the R programming language are premature. R continues to demonstrate its expertise, authority, and relevance in the domains of data analysis, statistical computing, data science, and software development.

Is R better than Python in 2024? ›

Normally R is preferred to Python for economists as a tool for researches, but considering all new developments of python, is it still worth learning R over Python? I would say so. I think Python is still used by a minority of economists.

What are the disadvantages of Python over R? ›

Disadvantages of Python

Python performs poorly in statistical analysis compared to R due to a lack of statistical packages. Sometimes developers may face runtime errors due to the dynamically typed nature. The flexible data type in Python consumes a lot of memory, causing tasks requiring heavy memory to suffer.

Is R necessary for data analytics? ›

Many data scientists use R while analyzing data because it has static graphics that produce good-quality data visualizations. Moreover, the programming language has a comprehensive library that provides interactive graphics and makes data visualization and representation easy to analyze.

Is R important for data analytics? ›

One common use of R for business analytics is building custom data collection, clustering, and analytical models. Instead of opting for a pre-made approach, R data analysis allows companies to create statistics engines that can provide better, more relevant insights due to more precise data collection and storage.

Is Python and R enough for data science? ›

Python and R language top the list of essential statistical computing tools among data scientist skills. Data scientists often debate on the fact that which one is more valuable, Python or R. However, both programming languages have their specialized key features complementing each other.

Which language is best for text analytics R or Python? ›

While python codes are easy to understand and capable to do more data science tasks in general. On the other hand, R codes are in the basic academic language, easy to learn, and the best effective tool for Data Analytics tool in visualization.

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