CC
Jul 28, 2016
This is the second course I have taken from Roger Peng and both were outstanding. I have a strong math background, but not much of a background in stats, but this course was very approachable for me.
YF
Sep 23, 2017
Very good course! It provide me the foundation in learning how to plot and interpret data. This will definitely strengthen my "R programming" to generate publication type figure for my genomics data!
By Johnny C
•Mar 6, 2018
In general was good, but there were some lectures and exercises which were disorganized ("plots with colors")
By Erkan E
•Jun 24, 2016
I wish there several comprehensive examples of exploring some real data as guided by the course instructors.
By Mehrdad P
•Aug 25, 2019
The course was overall ok, but I wish discussions about k-means, PCA and SVD were divided into two courses.
By Daniel P
•Dec 8, 2019
I've learned plotting in R. I expect to learn more in four weeks of "Data Science" specialization.
By Stuart A
•Jul 18, 2020
Course hasn't been updated in a long time, some of the data needed for the projects has migrated.
By Francisco R
•Jan 8, 2019
The third and fourth week were a big leap in knowledge and not really well explained, for me.
By sandeep d
•Mar 10, 2018
Excercises are very good. But I believe lecture could be more interesting and easily taught.
By Guy P
•Mar 26, 2016
It misses an assignment which will allow to practice the clustering skills.
By Alex s
•Jan 17, 2018
It focus too much on the tools and a little bit on the analysis
By Amit O
•Sep 30, 2017
faced many technical difficluties in pratcice exerices in swirl
By Victor M C T
•Jan 4, 2022
The swirl labs failed, I never could load the "field" module.
By Eduardo V K
•Jun 28, 2020
There seems to be some outdated info in several tests.
By Rafael A
•Mar 23, 2017
First two weeks are too repetitive with other courses
By Kevin F
•Jul 15, 2020
pretty brief and basic. no assessment on clustering.
By Erwin V
•Mar 12, 2016
Interesting stuff, but not a lot of detail
By Oscar P G P
•Sep 17, 2020
It's necessary for more examples!!!!
By Lidiya N
•Apr 28, 2019
Absolutely No technical help, like insane amounts of homework for each week. People have jobs and businesses to run. Incredibly short duration. Like literally this should have been spread out several more weeks. I would have dropped the class but I can’t. It’s so difficult to get i to the first set of practice assignments and these several sets. Honestly, I am literally getting no help on it and probably won’t pass because I am missing the deadline. I finished 5 coursera courses working on them for 24 none stop. I’ve literally been at this class all day. Besides all the insane amounts of assignments there’s tons of videos to watch and uploads to do. Go buy some books or take another class unless you are unemployed or have nothing better to do.
By Jesus A P G
•Jul 20, 2020
More than Exploratory data analysis, the course is only focused on how to make graphs in R. That is actually fine, but the name of the course is not suited to the content. In addition, the lectures were too boring. The lack of pedagogy is stunning. The most useful part of the course was the swirl exercises that were the same examples shown in the lectures. That is why it seems that watching video lectures is an incredible waste of time.
By Jamie R
•Jun 6, 2019
Just an extended course on using R. There was little strategies for Exploratory Data Analysis, infact the example jumped from a high level view of the data to then start looking at individual counties. There are multiple tools in the market that will deliver in a better and faster way for exploratory data analysis. This course should be more targeted at developing a skill set that is tool agnostic.
By Joseph K
•Jan 31, 2017
Clustering topic is covered superficially, too much time spend on employing ggplot graphs, not very useful since making graphs is straightforward on other software, like excel, once you aggregate datasets correctly. I had not found it very enriching as a course. I would merge this class within R-Programming section and call it Part 2 rather than categorizing into "Exploratory Data Analysis".
By Bartek W
•Feb 6, 2016
Some parts of material is good quality, but some is bad - also some show bad practices in R. Extensively use swirl as assignments over self work. It is better to go through good tutorial over R base plotting system and ggplot2.
By David I
•Mar 26, 2016
The final project did not require use of the material in the course beyond the first week and a half. I did not take any quizzes or otherwise have my knowledge tested on the material in the second half of the course.
By Rohith J
•Dec 13, 2016
Course content and assignments were difficult to follow. Loads of statistical content along with high-level R content means it was probably the toughest of the 4 I have taken so far in the Coursetrack.
By Дмитрий Ð
•Feb 6, 2016
some swirl tests (4,5) don't work because of parameter method in qplot function. This parameter is not realy existed in this function now
By Rahul R
•Jun 16, 2021
SVD should be better explained. I found diffucilut to understand. Some backgroeund matrices and it's operations should be explained.