Put the keystone in your Python Data Science skills by becoming proficient with Data Visualization and Modeling. This course is suited for intermediate programmers, who have some experience with NumPy and Pandas, that want to expand their skills for any career in data science. Whether you come to data science through social sciences and Statistics, or from a programming background, this course will integrate the two perspectives and offer unique insights from each.

Data Visualization and Modeling in Python
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Data Visualization and Modeling in Python
This course is part of Programming for Python Data Science: Principles to Practice Specialization



Instructors: Genevieve M. Lipp
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Recommended experience
What you'll learn
Create professional visualizations for many kinds of data Utilize Classification algorithms to make predictions using a dataset
Skills you'll gain
Tools you'll learn
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There are 4 modules in this course
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