Data Science Courses

These data science courses teach foundational tools such as pandas, NumPy, Matplotlib, and scikit-learn through practical, beginner-friendly exercises. You’ll work with real datasets to clean data, explore patterns, and build simple models.

1M+ learners
Hands-on projects
No credit card required
4.8

Recommended Path for Beginners

Start your data science journey with these expert-curated learning paths.

Data Scientist (Python)

Analyze complex datasets and build predictive models by applying statistics and machine learning to deliver end-to-end data science solutions.

38 courses 26 projects 435k

Data Analyst (R)

Analyze, clean, and visualize data using R and SQL to perform end-to-end statistical analysis and communicate insights effectively.

23 courses 18 projects 91.8k

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Explore All Data Science Courses

Introduction to Web Scraping in R

Collect structured data from websites by scraping and parsing web pages in R to support downstream analysis and insights.

3 hours 1.5k

Introduction to Statistics in R

Apply core statistical sampling techniques in R—including random, stratified, and cluster sampling—using hands-on analysis scenarios.

5 hours 5.1k

Intermediate Statistics in R

Apply measures of central tendency and variability in R, using means, medians, standard deviation, and z-scores to compare data.

3 hours 2k

Introduction to Probability in R

Compare theoretical and experimental probability in R while calculating event likelihoods using permutations, combinations, and real examples.

2 hours 1.8k

Conditional Probability in R

Apply conditional probability and Bayes’ theorem in R to model dependent events, reason under uncertainty, and build practical Naive Bayes classifiers.

2 hours 1.5k

Hypothesis Testing in R

Use hypothesis testing in R to assess real-world data with chi-square tests, probability distributions, and statistical significance.

1 hours 2.1k

Introduction to Data Cleaning in R

Develop practical data cleaning skills in R by reshaping tables, fixing missing values, and preparing relational data for analysis.

7 hours 6.2k

Advanced Data Cleaning in R

Work with regular expressions in R to precisely match, clean, and transform text data as part of advanced, real-world data cleaning workflows.

6 hours 2.8k

Parallel Processing for Data Engineering

Scale data processing workflows by applying parallel processing and MapReduce techniques to efficiently analyze large datasets.

5 hours 2.5k

Introduction to Data Structures

Build core data structures such as linked lists, stacks, queues, and dictionaries to write more efficient and scalable programs.

4 hours 2.8k

Recursion and Trees for Data Engineering

Explore recursion, binary trees, binary heaps, and more with ready-to-use tactics for real projects.

6 hours 1.8k

Building a Data Pipeline

Build a practical Python data pipeline using imperative and functional patterns, including scheduling, decorators, and real-world workflows.

4 hours 11.6k

Introduction to Data Analysis in R

Establish core R programming skills to analyze data by writing basic code, working with vectors, and performing calculations.

3 hours 47.7k

Data Structures in R

Manipulate core R data structures to store, index, and transform analysis-ready data using vectors, lists, matrices, and DataFrames.

6 hours 15.4k

Control Flow, Iteration, and Functions in R

Apply control flow, iteration, and functions in R to structure reusable workflows, reduce repetition, and handle complex data logic.

4 hours 13k

Specialized Data Processing in R

Transform text, dates, and times in R by applying string operations, date-time tools, and functional mapping to support real analysis workflows.

4 hours 6.6k

Introduction to Data Visualization in R

Create clear, insightful data visualizations in R using ggplot2 to explore trends, compare groups, and communicate findings effectively.

5 hours 8.4k

Introduction to Algorithms

Evaluate algorithm time and space complexity in Python, trade memory for speed, and design efficient solutions for data engineering workflows.

8 hours 5.9k

Learn Data Science Courses by Building Projects

Apply your skills to real-world scenarios with these guided projects

Project
Free

Word Raider

For this project, you’ll step into the role of a Python developer to create “Word Raider,” an interactive word-guessing game using core programming concepts like loops, conditionals, and file handling.

11 Steps
Project

Profitable App Profiles for the App Store and Google Play Markets

For this project, we’ll assume the role of data analysts for a company that builds free Android and iOS apps. Our revenue depends on in-app ads, so our goal is to analyze data to determine which kinds of apps attract more users.

14 Steps
Project
Free

Analyzing Kickstarter Projects

For this project, you’ll assume the role of a data analyst at a startup considering launching a Kickstarter campaign. You’ll analyze data to help the team understand what might influence a campaign’s success.

8 Steps
Project
Free

Investigative Statistical Analysis – Analyzing Accuracy in Data Presentation

For this project, you’ll be a data journalist analyzing Fandango’s movie ratings to determine if there was any change after a 2015 analysis found evidence of bias. You’ll use R and statistics skills to compare movie ratings data from 2015 and 2016.

8 Steps

Frequently Asked Questions

How do you choose the best data science course for your goals?

Start by deciding what you want to learn. Some courses focus on data analysis and visualization, while others go deeper into machine learning and modeling. Choose a course that matches the role you are aiming for, such as data analyst or data scientist, and make sure it covers core skills like data cleaning, statistics, and working with real data.

Next, look at how the course teaches these skills. A good data science course should include hands-on practice and real projects, not just videos. Dataquest’s guided career paths make this simple by recommending the right course sequence and teaching everything through interactive, project-based learning.

What is data science?

Data science is the field that uses programming, statistics, and machine learning to extract insights from data. It involves collecting, cleaning, analyzing, and modeling data to answer questions or make predictions. Dataquest teaches these skills through step-by-step, interactive lessons where you work directly with real datasets.

Is data science hard to learn?

It can feel overwhelming at first, but the right learning environment makes a big difference. Dataquest breaks complex concepts into digestible lessons and focuses on applied data science, so you practice what you learn right away. Learners consistently say this hands-on approach helped them understand topics they once found intimidating.

Is AI replacing data scientists?

No. AI is changing data science, but it is not replacing data scientists. AI tools can automate some tasks, such as data cleaning, model training, and writing basic code. This helps data scientists work faster and focus on more important work.

Data scientists are still needed to define the problem, choose the right approach, check results, and explain insights to people. These decisions require human judgment, business understanding, and critical thinking, which AI cannot fully replace.

What jobs can you get with data science?

You can qualify for data science roles such as:

  • Data Analyst
  • Data Scientist
  • Business Intelligence Analyst
  • Machine Learning Engineer
  • Analytics Engineer
  • Data Engineer

Your opportunities depend on the stack you learn. Dataquest paths help you build in-demand skills for each career.

Which programming language should you learn first?

Most beginners start with Python because it’s beginner-friendly, widely used in AI and data science, and has powerful libraries like pandas and scikit-learn. SQL is equally essential for almost every data job. R is a strong choice for research and statistics-heavy work.

Are Dataquest courses beginner-friendly?

Yes, Dataquest courses are designed for learners at every level. You start with hands-on exercises and real projects to learn Python, data analysis, and AI concepts, and continue building your skills as you progress through increasingly challenging material.

What is the difference between data science, data analytics, and data engineering?

Dataquest offers specialized paths for each field, so you can choose the track that aligns with your goals:

Data analytics focuses on exploring data, analyzing trends, and creating visualizations.

Data science builds predictive models and uses machine learning to solve complex problems.

Data engineering designs and maintains the systems that store, clean, and move data.

Which is better, AI or data science?

Neither is better. They focus on different skills and often complement each other. Data science emphasizes analyzing data, statistics, and visualization to uncover insights. AI focuses on machine learning and deep learning to build systems that learn from data. Many people start with data science as a foundation before moving into AI, depending on their career goals.

Do you need a technical background before starting a data science course?

No, many Dataquest learners start with no coding experience and succeed. Our data science courses assume you’re a beginner and teach everything step-by-step, with hands-on guidance and real projects to build practical confidence.

What tools are commonly used in data science?

Core tools include Python, R, SQL, Jupyter notebooks, Git/GitHub, Excel, Tableau, Power BI, and machine learning libraries like pandas, NumPy, scikit-learn, TensorFlow, and PyTorch. Dataquest integrates many of these tools directly into your browser so you can learn them by doing.

What is the best way to learn data science fast?

Follow a structured curriculum, practice consistently, and build real-world projects you can showcase. Dataquest speeds up the path to becoming a data scientist by combining interactive coding, guided learning paths, and portfolio-ready projects that mirror real job tasks. This helps learners progress faster than traditional video-based courses.

How long will it take to become job-ready in data science?

Most learners are ready to apply to data science jobs in about 6–12 months, depending on how much time they study each week. Dataquest’s career paths are structured to build practical data science skills efficiently, with hands-on projects that help you demonstrate real job-level ability to employers.

How much do data science courses cost?

Costs vary widely, from free introductory courses to monthly subscriptions on learning platforms to university programs costing thousands.

Dataquest offers an affordable subscription with full access to all data science, analytics, engineering, and AI courses. It also includes free lessons and a 14-day money-back guarantee, so you can start learning risk-free.

Will you get a certificate, and does it help you stand out?

Yes. Dataquest awards a data science certification for every course and learning path you complete. Certificates help signal your skills, but employers care more about how you apply them. What matters most is the portfolio of hands-on projects you build using real data science methodology, which many learners say helped them stand out in interviews.