Skip to main content

Data, AI, and Cloud Courses

Master skills that matter

Follow short videos led by expert instructors and then practice what you’ve learned with interactive exercises in your browser.

  • Learn at your own pace
  • Get hands-on experience
  • Complete bite-sized chapters

Create Your Free Account

or

By continuing, you accept our Terms of Use, our Privacy Policy and that your data is stored in the USA.
675 Courses

Course

Case Study: HR Analytics in Tableau

  • IntermediateSkill Level
  • 4.5+
  • 115

Explore HR data analysis in Tableau with this case study.

Data Visualization

3 hours

Course

Case Study: Analyzing Healthcare Data in Tableau

  • IntermediateSkill Level
  • 4.8+
  • 110

Practice Tableau with our healthcare case study. Analyze data, uncover efficiency insights, and build a dashboard.

Data Visualization

3 hours

Course

Case Studies in Statistical Thinking

  • IntermediateSkill Level
  • 4.7+
  • 110

Take vital steps towards mastery as you apply your statistical thinking skills to real-world data sets and extract actionable insights from them.

Probability & Statistics

4 hours

Course

Intermediate Interactive Data Visualization with plotly in R

  • IntermediateSkill Level
  • 4.6+
  • 106

Learn to create animated graphics and linked views entirely in R with plotly.

Data Visualization

4 hours

Course

Analyzing Survey Data in Python

  • IntermediateSkill Level
  • 4.6+
  • 106

Learn how to analyze survey data with Python and discover when it is appropriate to apply statistical tools that are descriptive and inferential in nature.

Probability & Statistics

4 hours

Course

Parallel Programming with Dask in Python

  • IntermediateSkill Level
  • 4.8+
  • 104

Learn how to use Python parallel programming with Dask to upscale your workflows and efficiently handle big data.

Software Development

4 hours

Course

ChIP-seq with Bioconductor in R

  • IntermediateSkill Level
  • 4.7+
  • 104

Learn how to analyse and interpret ChIP-seq data with the help of Bioconductor using a human cancer dataset.

Probability & Statistics

4 hours

Course

Intermediate Network Analysis in Python

  • AdvancedSkill Level
  • 4.3+
  • 104

Analyze time series graphs, use bipartite graphs, and gain the skills to tackle advanced problems in network analytics.

Probability & Statistics

4 hours

Course

Working with DeepSeek in Python

  • BasicSkill Level
  • 4.8+
  • 103

Discover what all of the DeepSeek hype was really about! Build applications using DeepSeeks R1 and V3 models.

Artificial Intelligence

3 hours

Course

Financial Trading in R

  • IntermediateSkill Level
  • 4.6+
  • 103

This course covers the basics of financial trading and how to use quantstrat to build signal-based trading strategies.

Applied Finance

5 hours

Course

Bond Valuation and Analysis in R

  • IntermediateSkill Level
  • 4.6+
  • 102

Learn to use R to develop models to evaluate and analyze bonds as well as protect them from interest rate changes.

Applied Finance

4 hours

Course

Equity Valuation in R

  • IntermediateSkill Level
  • 4.4+
  • 102

Learn the fundamentals of valuing stocks.

Applied Finance

4 hours

Course

Serverless Applications with AWS Lambda

  • IntermediateSkill Level
  • 4.6+
  • 97

Build, deploy, and optimize serverless apps with AWS Lambda. Master event processing, error handling, concurrency, and safe deployments in a live AWS Console.

Cloud

3 hours

Course

Multivariate Probability Distributions in R

  • IntermediateSkill Level
  • 4.5+
  • 95

Learn to analyze, plot, and model multivariate data.

Probability & Statistics

4 hours

Course

Case Study: Inventory Analysis in Tableau

  • IntermediateSkill Level
  • 4.6+
  • 93

Enhance your Tableau skills with this case study on inventory analysis. Analyze a dataset, create calculated fields, and create visualizations.

Data Visualization

2 hours

Course

Advanced AI-Assisted Coding for Developers

  • AdvancedSkill Level
  • 4.8+
  • 92

Learn to use AI as a senior engineering partner for code analysis, performance optimization, security, and software architecture decisions.

Artificial Intelligence

2 hours

Course

HR Analytics: Predicting Employee Churn in Python

  • IntermediateSkill Level
  • 4.6+
  • 92

In this course youll learn how to apply machine learning in the HR domain.

Machine Learning

4 hours

Course

Data Privacy and Anonymization in Python

  • AdvancedSkill Level
  • 4.9+
  • 90

Learn to process sensitive information with privacy-preserving techniques.

Machine Learning

4 hours

Course

Case Study: Supply Chain Analytics in Tableau

  • IntermediateSkill Level
  • 4.8+
  • 90

Dive into our Tableau case study on supply chain analytics. Tackle shipment, inventory management, and dashboard creation to drive business improvements.

Data Visualization

4 hours

Course

GDPR in Practice: Compliance and Fines

  • BasicSkill Level
  • 4.9+
  • 88

Explore GDPR through real-world cases on data rights, breaches, and compliance challenges.

Data Management

2 hours

Course

Bayesian Regression Modeling with rstanarm

  • AdvancedSkill Level
  • 4.6+
  • 87

Learn how to leverage Bayesian estimation methods to make better inferences about linear regression models.

Probability & Statistics

4 hours

Course

Case Study: Net Revenue Management in Google Sheets

  • IntermediateSkill Level
  • 3.9+
  • 85

You will use Net Revenue Management techniques in Google Sheets for a Fast Moving Consumer Goods company.

Applied Finance

3 hours

Course

Interactive Data Visualization with Bokeh

  • IntermediateSkill Level
  • 4.5+
  • 83

Learn how to create interactive data visualizations, including building and connecting widgets using Bokeh!

Data Visualization

4 hours

Course

Intermediate Predictive Analytics in Python

  • BasicSkill Level
  • 4.3+
  • 83

Learn how to prepare and organize your data for predictive analytics.

Machine Learning

4 hours

Course

Bond Valuation and Analysis in Python

  • BasicSkill Level
  • 4.7+
  • 80

Learn how bonds work and how to price them and assess some of their risks using the numpy and numpy-financial packages.

Applied Finance

4 hours

Course

Intermediate Julia

  • BasicSkill Level
  • 4.7+
  • 79

Take your Julia skills to the next level with our intermediate Julia course. Learn about loops, advanced data structures, timing, and more.

Software Development

4 hours

Course

Scaling with Google Cloud Operations

  • BasicSkill Level
  • 4.7+
  • 78

Scaling with Google Cloud Operations

Cloud

1 hour

Course

Case Studies: Network Analysis in R

  • BasicSkill Level
  • 4.9+
  • 77

Apply fundamental concepts in network analysis to large real-world datasets in 4 different case studies.

Probability & Statistics

4 hours

Course

Bayesian Modeling with RJAGS

  • AdvancedSkill Level
  • 4.8+
  • 77

In this course, youll learn how to implement more advanced Bayesian models using RJAGS.

Probability & Statistics

4 hours

Course

Intermediate Portfolio Analysis in R

  • IntermediateSkill Level
  • 4.7+
  • 77

Advance you R finance skills to backtest, analyze, and optimize financial portfolios.

Applied Finance

5 hours

FAQs

What is data science?

Data science is an area of expertise focused on gaining information from data. Using programming skills, scientific methods, algorithms, and more, data scientists analyze data to form actionable insights.

How can I learn data science?

You’ll need to learn a programming language such as Python or R and master the principles of math and statistics. Knowledge of data analysis methods and data science tools is also essential. There are many ways to learn data science. As well as formal means of education, such as a degree or university study, there are plenty of other resources to help you learn at your own pace. As well as online courses and tutorials, there are books, videos, and more.

What skills are required for data science?

As well as knowledge of mathematics and statistics, data scientists need programming skills in languages such as Python, R, and SQL. Additionally, data science requires the ability to work with large data sets, knowledge of data visualization, data wrangling, and database management. Skills in machine learning and deep learning can also be useful.

What can I use data science for?

In a professional capacity, almost every industry can use data science to some degree. Healthcare organizations use data science to detect and cure diseases, while finance companies use it to detect and prevent fraud. All kinds of industries use data science for marketing, such as building recommendation systems and analyzing customer churn.

Is data science a good career?

Yes, data science is among the fastest-growing sectors in the US and worldwide. It’s also one of the best-paid careers out there. According to data from Payscale, experience data scientists earn an average of $97,609 and have a satisfaction rating of four stars out of five in the US.

Is it difficult to become a data scientist?

There are a few things to consider here. First, data science degrees can be competitive to get onto, often requiring consistently high grades. Similarly, many of the skills required for data science require a lot of study and patience. It can take several months to master all of the necessary basics, as well as a lot of practical experience to secure an entry-level position.

Does data science require coding?

Yes, you’ll need some coding experience in languages such as Python, R, SQL, Java, and C/C++. However, due to its relatively simple syntax, Python programming language is often the preferred choice among newcomers.

How long does it take to become a data scientist?

For a person with no prior coding experience and/or mathematical background, it can typically take 7 to 12 months of intensive studies to be at the level of an entry-level data scientist. However, it is important to remember that learning only the theoretical basis of data science may not make you a real data scientist.

What topics can I study within data science?

Once you’ve mastered the foundations of data science, you can then specialize in a variety of areas, including machine learning, artificial intelligence, big data analysis, business analytics and intelligence, data mining, and more.