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Learner Reviews & Feedback for Data Visualization with Python by IBM

4.5
stars
11,819 ratings

About the Course

One of the most important skills of successful data scientists and data analysts is the ability to tell a compelling story by visualizing data and findings in an approachable and stimulating way. In this course you will learn many ways to effectively visualize both small and large-scale data. You will be able to take data that at first glance has little meaning and present that data in a form that conveys insights. This course will teach you to work with many Data Visualization tools and techniques. You will learn to create various types of basic and advanced graphs and charts like: Waffle Charts, Area Plots, Histograms, Bar Charts, Pie Charts, Scatter Plots, Word Clouds, Choropleth Maps, and many more! You will also create interactive dashboards that allow even those without any Data Science experience to better understand data, and make more effective and informed decisions. You will learn hands-on by completing numerous labs and a final project to practice and apply the many aspects and techniques of Data Visualization using Jupyter Notebooks and a Cloud-based IDE. You will use several data visualization libraries in Python, including Matplotlib, Seaborn, Folium, Plotly & Dash....

Top reviews

LS

Nov 27, 2018

The course with the IBM Lab is a very good way to learn and practice. The tools we've learned in this module can supply a good material to enrich all data work that need to be presented in a nice way.

CJ

Apr 22, 2023

Learnt a lot from this visualization course. The one I found most interesting was making the dashboard. Although sometime the code and indentation are tedious, but this might be useful in the future.

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1251 - 1275 of 1,858 Reviews for Data Visualization with Python

By Jonathan P

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Oct 26, 2022

Material had great breadth of topics. Should also cover related topics like how to add "narratives" to the visualizations to enhance storytelling skills.

By Rohan B

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Jun 20, 2019

Course is really helpful for indulging someone into data visualization but sometimes in the lab some stuff is just present for you to figure out yourself.

By Magnus B

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Mar 11, 2019

The information provided was straightforward and easy to understand. However, the final lab requires extended knowledge that is not covered in the videos.

By Niladri B P

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Jun 7, 2019

Excellent lab material. However, I feel the video lectures were a bit too brief and could have tried to explain the technical concepts a little bit more.

By Varun V

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Jan 1, 2019

Nice course. But Seaborn examples could have been more helpful. Also, please use Python 3 for examples. Thanks for the video and more better class labs.

By Makinde M D F

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Sep 17, 2020

The Course is an interesting and practical Course. Alex Aklson, the lecturer is a good teacher too.

Many thanks to IBM and all the teachers on Coursera.

By RICHARD D

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Oct 11, 2019

The Course materials are brief and Short and understandable. No need to learn junk topic only relevant areas are learn in this course. Thanks to IBM .

By S B A

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Sep 16, 2020

The course was good, syllabus was okay, I think that seaborn could have also been added in this, though waffle chart and map was very new for me...

By Tenin M L K

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Aug 19, 2019

Good condense course. One thing is a the recall of the data set and the lab at the beginning or at the end of each lecture which are very annoying.

By Cupid C

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Mar 29, 2024

A lot of information was packed into this course. There was not a lot of room to practise the material. The final week especially was challenging.

By Nicklas N

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Jan 29, 2019

A good overview of different visualization methods in Python. The final assignment is a little tricky and requires a diverse set of Python skills.

By Sai S D

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Sep 11, 2019

Its a great course to learn all Data Visualization libraries in python and thier constructs. It helps me alot to learn Data Science using Python.

By Pradeep M

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Jan 9, 2020

Good course. However, the instructor should add a slide mentioning what kind of errors can occur in python programming and how to correct them.

By Andrew R

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Oct 23, 2019

Some instructions could have been clearer. The final project required code that wasn't covered in the lessons. Had to research the internet.

By Daniel E

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Mar 12, 2020

Not all code examples were explained thoroughly enough within the labs, definitely not within the videos. Generally a good overview though.

By Vladimir D N

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Dec 16, 2018

Overall good course that goes through basics. It would be nice to get the students to write more code in the ungraded external tool (labs).

By Wayne K

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Jun 29, 2020

Could use a little more detail in the lectures, especially in the code being shown. Example, Folium library. Overall met expectations.

By Eden

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Feb 4, 2020

Very interesting summary of different graphs I saw in my life, though the data can't be imported to the Jupyter notebook for exercises.

By Luis A R P

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Aug 7, 2020

Great course with a lot of avaliable tools for using in data analysis. Although i'd enhance the didactive material offered in the labs

By Meenakshi S A

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Apr 29, 2020

A very good course which begins with the basics of visualization and then dives deep into various kinds of visualization techniques.

By Reid Z

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Mar 12, 2021

Good overview, sometimes a little too much copy and pasty, not enough critical thinking required that would help solidify the ideas

By Aditya M

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Nov 12, 2020

Great course! lots of useful visualization techniques were covered. Final project was very good. Quality of videos can be improved.

By Hrishikesh S

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Apr 11, 2020

Nice introductory course on basic visualisation patterns. Videos are short and needs additional readings and examples to work with.

By Amara C E

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Aug 13, 2021

I learned a lot. I was very challenged. The Dash programming needs to work early in the course to build confidence in the teacher.

By Aarya B

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Apr 5, 2020

course is great, but most of the content is covered in lab sessions. please if possible try to add more content in video lectures