Python Data Science with Jupyter
Promote engagement and active learning with fully auto-graded assessments and minimal text in Python Data Science with Jupyter with native Codio content.
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Python Data Science with Jupyter

Included in this course:
Introduction:
Printing and Sorting Data Types Statistical Functions Coding Exercises
Logical Operator Importing a Data Frame Selecting Data Coding Exercises
Conditionals Handling Incomplete Data Sets Merges and Joins Coding Exercises
Comparison Test Correlation Test Regression Test Coding Exercises
Analysis Lab
Jupyter and Matplotlib Customizing Visualizations Box Plots and Histograms Coding Exercises
Line Charts and Area Charts Scatter Plots and Bubble Charts Pie and Donut Charts Coding Exercises
Specialized Visualization Layout and Presentation Animations Coding Exercises
Learning-by-doing

Constructing Knowledge Through Coding

Python Data Science with Jupyter emphasizes students applying and exploring the information presented. A code editor accompanies each page with new concepts so students can see for themselves how the computer responds to code. In addition, the content provides code snippets to get students started as well as suggested avenues for investigation.

Auto-graded assessments

Auto-Graded Assessments

Students receive immediate, rich feedback. In addition to correctness feedback (i.e. right or wrong), students will also see an explanation with the complete solution. There are a wide variety of questions — all of which are auto-graded, giving students a sense of their understanding of the material right after they are introduced to it and as they attempt harder and harder problems.

Lower barriers to entry

Lowering the Barrier to Entry

Python Data Science with Jupyter reflects the need for data science education to meet students where they are. Like any specialized community, computer science has its own jargon. The formal teaching of computer science should not burden students with the assumption that they are fluent in this special language. The material is presented in smaller units that are more manageable for the students. The same vocabulary and concepts are covered, but in a more approachable way — state things as plainly as possible, and, when appropriate, use images, tables, or lists.

Another way in which this content is more approachable is that it uses many small programs instead of one large program. Research shows that a variety of smaller problems increase student performance and reduce stress. Using many small programs leads to students spend a sufficient amount of time on their work, and they do not wait until the last moment to begin their work. 

Modular & customizable

Encouraging Customization Through Modularity

Python Data Science with Jupyter is not a one-size-fits-all solution. Instead, it implements a modular format. Natural break points occur in the curriculum where instructors can make the changes they deem necessary. Instructors can re-name, re-order, or remove units.

Using Codio’s excellent content authoring tools, they can author new material. This modular approach gives instructors flexibility when designing the learner’s experience.

[Build] Real-World Coding Skills With Hands-On, Interactive Labs