Coursera’s top data science courses from IBM, Stanford, and Johns Hopkins offer practical, job-ready training that you can learn at your own pace. You’ll build real skills in Python, statistics, and machine learning through hands-on projects, and earn respected certificates that strengthen your resume and career opportunities. Plus, you can start free and upgrade only when you’re ready.
This five-course specialization is designed for learners who already have a foundation in data science and want to advance their skills. It dives deeper into statistical inference, regression models, predictive modeling, and machine learning using R, while guiding you in creating real, practical data products.
This beginner-friendly course builds the core foundations of statistical thinking. It teaches how to analyze data, understand probability, and choose the right statistical tests for real-world scenarios. By the end, learners gain the essential tools needed to move confidently into more advanced data science topics.
This ten-course series teaches the full data science pipeline. Learn R for data analysis, regression and predictive modeling, GitHub for project management, and complete a Capstone Project using real-world data. Gain practical skills and a portfolio by the end.
This 12-course series prepares learners for a career as a data scientist. Learn Python, SQL, data analysis, visualization, machine learning, and generative AI while completing hands-on projects and a Capstone. Build a portfolio and gain practical, job-ready skills with no prior experience required.
This beginner-friendly course introduces the fundamentals of data science. Learn what data science is, why it matters, career paths, and insights from industry professionals. Gain a foundational understanding of data-driven decision-making, AI, and analytics in just one week.
This beginner-friendly course teaches Python programming for data science and AI. Learn syntax, data types, loops, functions, OOP, and Python libraries like Pandas and NumPy. Gain hands-on experience with Jupyter Notebooks, REST APIs, and web scraping to build practical skills and real-world projects in just three weeks.