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Learner Reviews & Feedback for Applied Plotting, Charting & Data Representation in Python by University of Michigan

4.5
stars
6,246 ratings

About the Course

This course will introduce the learner to information visualization basics, with a focus on reporting and charting using the matplotlib library. The course will start with a design and information literacy perspective, touching on what makes a good and bad visualization, and what statistical measures translate into in terms of visualizations. The second week will focus on the technology used to make visualizations in python, matplotlib, and introduce users to best practices when creating basic charts and how to realize design decisions in the framework. The third week will be a tutorial of functionality available in matplotlib, and demonstrate a variety of basic statistical charts helping learners to identify when a particular method is good for a particular problem. The course will end with a discussion of other forms of structuring and visualizing data. This course should be taken after Introduction to Data Science in Python and before the remainder of the Applied Data Science with Python courses: Applied Machine Learning in Python, Applied Text Mining in Python, and Applied Social Network Analysis in Python....

Top reviews

OK

Jun 26, 2020

its actually a good course as it starts from fundamentals of visualization to the data visualization,the assignments this course provide are exciting and full of knowledge that you learn in course ..

RM

May 13, 2020

I am going for the specialization and I know this is just the second course in it and I haven't even seen the further courses yet, but this is already my most favourite course in the specialization.

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426 - 450 of 1,044 Reviews for Applied Plotting, Charting & Data Representation in Python

By phantomxx

Aug 30, 2020

Great course material and clear presentation! Very beneficial!

By Pieter J S M

Aug 5, 2019

This course has stimulated me to develop data analytic skills!

By Bruno F

Feb 20, 2019

Very interesting course. It gave me a full insight of charting

By usama i

Jan 7, 2021

Very good instructor explained matplotlib in very good way :)

By Irene G

Dec 28, 2020

Wonderful course for who wants to learn how to visualize data

By Frank R

Nov 30, 2020

Great learning, nice additional readings, very helpful course

By Miguel Á B P

Jun 29, 2018

Five star course. Loved the assignments, really challenging!

By Wai Y P S

Jun 22, 2021

Thanks you so much University of Michigan for Great course

By Anurag K

Jul 8, 2020

Very interactive course, Because of peer-graded assignments

By Ryan W

Jan 6, 2020

Excellent course. Thanks so much for putting this together!

By Sebastian J S

Oct 22, 2019

Good learn and easy to understand the tematic of the course

By Juan C B

May 19, 2023

good for start your way as as a independent data scientist

By Thomas P

May 9, 2017

A fun and relaxed course exploring visualization in python

By David M

Feb 26, 2021

Extremely useful, i've referred back to it several times.

By Martin A L

Mar 28, 2020

Great material, good classes and very practical exercises

By William

Jul 10, 2019

Hope we don't have to wait for others to grade next time.

By Герило Е В

Oct 19, 2020

It give all necessary skills you need to visualise data.

By Zer C S S T

Jul 11, 2019

So much new learning. So much Insight. Great course!!!

By juan d c l

Apr 6, 2017

This course gives fundamental skills for data scientists

By Wei Z

Feb 16, 2022

enjoyed learning python and its visualization libraries

By Olga D

Feb 12, 2021

a good starting point for exploration the topic further

By Shakkya R

Sep 20, 2020

A Very insightful Course into visualizations in python.

By VIJAYALAKSHMI C

May 11, 2020

I Really Enjoyed Learning this Course. Its Very Useful.

By Jose A P L

Mar 16, 2019

Muy buen curso para iniciarse en el Charting con python

By Xiaoming Z

Jan 10, 2019

Very informative, tightly packed, high "data-ink" ratio