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Learner Reviews & Feedback for Data Analysis with Python by IBM

4.7
stars
18,485 ratings

About the Course

Analyzing data with Python is an essential skill for Data Scientists and Data Analysts. This course will take you from the basics of data analysis with Python to building and evaluating data models. Topics covered include: - collecting and importing data - cleaning, preparing & formatting data - data frame manipulation - summarizing data - building machine learning regression models - model refinement - creating data pipelines You will learn how to import data from multiple sources, clean and wrangle data, perform exploratory data analysis (EDA), and create meaningful data visualizations. You will then predict future trends from data by developing linear, multiple, polynomial regression models & pipelines and learn how to evaluate them. In addition to video lectures you will learn and practice using hands-on labs and projects. You will work with several open source Python libraries, including Pandas and Numpy to load, manipulate, analyze, and visualize cool datasets. You will also work with scipy and scikit-learn, to build machine learning models and make predictions. If you choose to take this course and earn the Coursera course certificate, you will also earn an IBM digital badge....

Top reviews

SC

May 5, 2020

I started this course without any knowledge on Data Analysis with Python, and by the end of the course I was able to understand the basics of Data Analysis, usage of different libraries and functions.

RP

Apr 19, 2019

perfect for beginner level. all the concepts with code and parameter wise have been explained excellently. overall best course in making anyone eager to learn from basics to handle advances with ease.

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2251 - 2275 of 2,890 Reviews for Data Analysis with Python

By Neil A

Jan 30, 2022

Great content, but awkward, untimely popping of questions during video lectures, very annoying. Labs are very useful and productive, but videos are too short.

By Shivam C

Jun 3, 2020

This Course was very informative and beneficial and conceptual too, being newbie i personally feel that this course has taught me alot. Thanks to team Coursera

By Sebastián M

Apr 22, 2020

Muy buen curso, por mejorar: varios errores en los talleres y también no fue posible ingresar a estos durante varios días lo cual atrasó el proceso de estudio.

By Osagie A

Dec 22, 2020

I love how engaging the course is with its labs and how it is well-packaged in such a manner that encourages beginners to learn... keep up the good work guys.

By Kedharnath A

Apr 15, 2019

I found this module very difficult to understand as it was loaded with high end concepts and coding. Might have to redo this course to understand even better.

By Manoj S

Mar 9, 2019

Course content is very good but I feel it can be more improved if the training is provided at slower pace. Also the examples should be in detail. Overall good

By Andrés P

Jan 30, 2020

I think it would be good if the units had activities to deliver mandatory since that would allow to strengthen the knowledge acquired. Thanks for the course.

By Ricardo R O

Oct 13, 2021

This course is too complete, but have too many questions between videos, its feels like a brake every time, I think is more easer at the end of the videos.

By Faizan A S

Dec 1, 2019

The course content is really great and method of teaching is very specific .Much details very covered during the course and really i gained a lot from this.

By SOUVIK B

Aug 31, 2018

Good course if you are beginning data science. You don't need much of python experience but will be better to have if you want to quickly finish the course.

By Sohan N

Jun 25, 2023

One of the difficult courses among other other data analyst course. But the hands on labs in this course are the best tools to understand the concepts !!

By Sreelatha V

Jan 5, 2020

Very detailed and guided course that provides an overview of data analysis in Python with short assignments after each video and interesting lab courses.

By Guilherme V

Jul 3, 2020

insufficient statistic, as the name of the course is Data Analysis, i would expect more classes about the different distributions of data, pdf and pmf..

By Katarina S

Mar 22, 2020

One of the best courses in the IBM Data Science Specialisation.

I would like to have more quiz questions and opportunities to practise what was covered.

By Shayan k

Sep 12, 2021

There must be a slightly high level of Quiz, assignment and Project and must have to add some more advanced concepts about statistics and probability.

By Frank M

Aug 30, 2019

I would have given it 5 stars but they barely went over polynomial regressions and pipelines and it was a major portion of the end of class assignment.

By Wenyu X

Apr 2, 2019

pros: well organized, clearly explained each step, useful

cons: frequent errors in both videos and the lab, especially on the questions part in the lab

By Maksym S

Sep 3, 2019

Final exam was too complicated. I have 2 masters degree and for me it was clear, but for other it is too complicated.

P.S. it is my personal opinion

By BINAY K

Jul 6, 2019

Course is good, but in this short course it is covering lot of thing thatswhy lot of topics are just touched intead of going little bit deep into it.

By sergio c c

Jun 20, 2019

You learn a lot, good intro to data science with python. Labs have typos and can be confusing at times though, the only thing that could be improved.

By Aurangazeeb A K

Oct 13, 2019

A very interesting and easy course. Anyone can catch up with big concepts with little effort. Thank you Coursera and IBM for this wonderful course.

By Sucheta

Sep 2, 2019

Course is nicely designed and pare explained well.

I would have liked to see the steps along with the final answer to the peer assignment questions.

By zara c

Oct 31, 2020

Very good course. I wish there were more hands on exercises. We only had a chance to practice in one lab per module; otherwise, I learned a lot.

By Ponciano R

Feb 26, 2019

Great course to start learning python applied to analysis, but after this, I prefer to use R. Less complicated and can obtain the same results.