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Learner Reviews & Feedback for Data Analysis with Python by IBM

4.7
stars
18,518 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

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.

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.

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2776 - 2800 of 2,896 Reviews for Data Analysis with Python

By piyush d

Dec 6, 2019

exercises could have been better.

By Jyoti M

Mar 26, 2020

I felt it was too fast to grasp.

By Baptiste M

Nov 2, 2019

Final assignment is quite messy

By Murat A

Apr 21, 2021

could not access the labs.

By Yuanyuan J

Jan 17, 2019

Not clear on the last part

By Ahmad H

Jun 8, 2019

This course is very tough

By conan s

Dec 20, 2019

Lots of technical issues

By David V R

Jun 17, 2019

Exams should be harder

By Riddhima S

Jul 8, 2019

la lala la la laa aaa

By Daniel S

Feb 8, 2019

Not easy to follow.

By Diego F C I

Sep 7, 2024

Videos en Español

By Allan G G

May 10, 2022

Muy poco practico

By thibauly t

Sep 27, 2021

très bon cours

By Vidya R

Apr 16, 2019

Very Math!

By Alagu S

Nov 13, 2024

GOOD

By SAGAR C

Apr 22, 2023

good

By James H

Apr 29, 2020

Definitely not one of my favorite courses in the Data Science Certificate series. There were times I was ready to give up the pursuit of the certificate altogether during this class... There should have been a prerequisite for this course of the statistical tools and methods that would be covered in here... Sure I could program these things after this class, but i still dont understand why I would choose to use one over another? This is one of those classes where you walk away feeling more confused than when you went in... Also there were a lot of mistakes, typos, and obsolete things in the labwork - some reported and acknowledged months ago, but still not fixed in the lab (video I can understand, but not the labs)

By Ruben W

Oct 6, 2018

The content is good, but if you are not familiar with Python, I wouldn´t recommend this course. There are a lot of typos in the video. The code contains a lot of errors where you have to find a solution. So, you are forced to debug their code often.

But if you are only interested in the course certificate, you could quickly go through the videos and quizzes, without any problems. It's easy to pass because the questions are like: What is the result of print("Hello world"). So no real challenges at all.

Please, try to fix the typos. Sometimes it was very embarrassing. Example (Week 3) instead of

"from sklearn.metrics ..." the video comes up with "from sklearn.metrixs ..."

By HELANDRA H

Aug 9, 2023

This course will throw a lot of information at you despite how short the instructional videos are. I found myself referring to the various Python library documentation sites just to get a better understanding of the formulas and concepts being introduced.

The lab modules leave a lot to be desired as well. Most of the time, you are just clicking through until you get to the bottom of the notebook. Also, please be warned that some of the functions taught in this class will not work as they have been updated in the last few years.

I am disappointed this class was a struggle to get through and I hope future students have a better experience.

By Chris M

Oct 16, 2020

Seems more adequate for people who have a background in statistical analysis. The labs are confusing and there is no orientation to the tool being used so it has taken me quite a while to figure out how to even proceed through a lab. After spending considerable time doing the lab, it may not submit the results and Coursera assumes you haven't take it yet which means you have to do it all over again. Other courses I've taken are structured much more clearly, step-by-step, providing activities that allow you to gain confidence before throwing you off the deep end. This one could use the help of an instructional design expert.

By Micheal D L

Jul 29, 2019

many typos, errors, mislabeled... just felt like a sloppy product were paying for. I was very frustrated as well by certain features not functioning... for example, after following specif instructions to share a notebook, just as I have done many times while working on this certification... testing the link comes back as unshared no matter what I do. This and the SQL course have been the worst so far in this Data Science cert but at least this course ended up marked as completed. If I wasn't already this far invested in the cert I would definitely quit and use free resources while I built my portfolio.

By Thomas S

Mar 17, 2020

-1- The training and quizzes are full of errors. You need someone to actually review the content before publishing.

-2- The education focused more on the mechanics of how to run certain commands to obtain results rather than explaining why a data scientist would want to run these certain commands and how to best interpret them.

-3- I would embed more but perhaps smaller lab assignments rather than going over many concepts and making the person go through the steps (with minimal explanation) at the end of the module. This is particularly applicable for weeks 4 & 5.

By Chris M

Dec 23, 2021

Not a very good course. The information given in the videos was not explained well and key concepts seemed to be brushed past. The graded assignments were very dumbed down and did not reflect the difficulty of the videos. This was quite lucky though as the videos were not very good either. It seems like the graded assignments were dumbed down so that the course could actually be completed without further background reading.

More information should be added, longer length videos, and get rid of the peer-review system. Lazy.

By Renz M J T

Nov 16, 2023

I would not classify this as a BEGINNER course that only requires Python and Jupyter Notebooks knowledge as advertised. Statistical knowledge should be recommended before enrolling in this course. In one video, they just threw out acronyms like SLR and MLR before these were even explained. In addition, with the amount of plots that they made us do in this course whose syntax are very unfamilar, I feel that should be after the Data Visualization Python course in the Data Science track.

By Joseph G

Jan 5, 2020

There were so many typos and errors about the very topics they were teaching. It is as if they don't actually care that people are trying to learn this and just view this course as a way to promote their Watson Studio. Normally I would forgive these errors, but there are programmers so paying attention to detail is paramount. Also, misspelling method names while you are teaching those very methods and then never showing how to spell them again makes for some serious confusion.