LA
I love the way the course is structured and how Python is introduced using real-world use-cases.

This comprehensive course guides students through the complete data analytics workflow using Python, combining programming fundamentals with advanced statistical analysis. The curriculum is structured across five interconnected modules that build upon each other, using real-world datasets to provide practical, hands-on experience. Starting with programming fundamentals, you'll learn essential Python concepts while working with real datasets like public library revenue and restaurant safety inspections. The course introduces the Jupyter Notebook environment and transitions students from spreadsheet-based analysis to powerful programmatic approaches. Students master core programming concepts including variables, functions, and control flow structures. This course helps you bridge the gap between theoretical knowledge and practical application, enabling you to become proficient in using Python for comprehensive data analysis, from basic data manipulation to advanced statistical modeling and forecasting.

LA
I love the way the course is structured and how Python is introduced using real-world use-cases.
HL
Provides clear instructions, easy-to-follow tutorials, and lots of resources.
DD
The course was very detailed and got useful support whenever the concepts were hard to grasp.
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The concepts covered in this course were immediately useful and became a lot more familiar when following along with the lessons and in the labs. Sean sometimes goes a little quickly in the demos, but rewinding is good reinforcement of the concepts.
The course was very detailed and got useful support whenever the concepts were hard to grasp.
Really well-structured course with good examples and realistic problems. I thought the capstone was pretty fun and interesting challenge. The data visualizations modules are really useful. Learned so much cool stuff!
I love the way the course is structured and how Python is introduced using real-world use-cases.
Provides clear instructions, easy-to-follow tutorials, and lots of resources.
Overall this is a good course as it introduces some basic pandas and statistical inference with Python. Though I thought the quiz was too easy and the graded assignments could be more challenging to make the course better. There was some slight issue with the grading as sometimes there is more than one way to do the assignment and it seems that one has to use what's taught in the course to do it to pass. Still I'd highly recommend this course to anyone who is interested in an introduction to pandas and inferential statistics. I do hope the author will make a more advanced course on the same topic!
Extremely hard.