Chevron Left
Back to Reproducible Research

Learner Reviews & Feedback for Reproducible Research by Johns Hopkins University

4.6
stars
4,173 ratings

About the Course

This course focuses on the concepts and tools behind reporting modern data analyses in a reproducible manner. Reproducible research is the idea that data analyses, and more generally, scientific claims, are published with their data and software code so that others may verify the findings and build upon them. The need for reproducibility is increasing dramatically as data analyses become more complex, involving larger datasets and more sophisticated computations. Reproducibility allows for people to focus on the actual content of a data analysis, rather than on superficial details reported in a written summary. In addition, reproducibility makes an analysis more useful to others because the data and code that actually conducted the analysis are available. This course will focus on literate statistical analysis tools which allow one to publish data analyses in a single document that allows others to easily execute the same analysis to obtain the same results....

Top reviews

AP

Feb 12, 2016

My favorite course, at least it gives me an argument why scripted statistics is awesome and can be applied to a number of data related activities. Recycling chunks of code has proven useful to me.

RR

Aug 19, 2020

A very important course that greatly improved my ability to communicate the findings of any sort of data analysis that I perform. This is a critical skill to acquire to "deliver the means."

Filter by:

76 - 100 of 587 Reviews for Reproducible Research

By Pierre S

•

Apr 11, 2017

I think this not a complicated course but is absolutely fundamentals of proper scientific principles which are so often lacking in many data science/analytics projects.

By Juan P L R

•

Sep 25, 2020

Great course to learn about reproducible research in R, using knirt and RPub. Excellent course and carefully designed to complement the Specialization of Data Science.

By Tseliso I M

•

Nov 11, 2017

Reproducibility is one of the key elements of modern scientific method. The course was very informative and introduce ideas I did not know before, but are crucial.

By Christian H

•

Nov 10, 2016

This course helped me realize why reproducible research is absolutely necessary, and gave me the tools to implement reproducibility in my work. Project was great.

By Himanshu R

•

Jan 25, 2018

A good informative course to inform about importance of "Reproducible Research", also a good one for practicing code writing and publishing in RPubs and Github.

By Joshua B M

•

Mar 4, 2016

This class's R markdown material taught me to efficiently convey and market data analysis to non-specialists of data. It was immediately valuable to my career.

By Subramanya N

•

Dec 12, 2017

Good info on RStudio & RR.

I can easily figure out who has attended this course by their methodical nature and work when I see Kaggle competitions. Great job!

By Johann R

•

Jun 7, 2017

A handy course to do when you have to create and submit reports with calculations and code. Learn the basic principles of report writing and report structure.

By RR A I

•

Sep 22, 2020

Though I could not solve all course projects on my own, I at least understood the techniques and enjoyed doing the course greatly. Thanks to the instructors

By Camilo Y

•

Jan 10, 2017

I found all the topics of this course important. Not only for my professional career but also for everyone who is involved with data and science in general.

By Andrea G

•

May 11, 2020

Very important course. Not so many fancy analysis but it introduces to Markdown and explains well what does it mean to do data science within a community.

By Devanathan R

•

Feb 7, 2016

a very important part of data analysis. I especially found the case study in week 4 to be of tremendous interest highlighting the real world applications.

By Charles M

•

Apr 25, 2019

Great course. This and the previous course in the data scientist specialization are extremely practical and I've found immediate utility in my career.

By Marco A I E

•

Sep 20, 2018

Very interesting, the fact that our research procedure can be explained and showed to other to reproduce, validate and work on top of it is fantastic.

By Jessica R

•

Aug 11, 2019

Very useful in bringing together skills learned in the earlier courses of the Data Science specialization: R programming, R Markdown, knit, RPubs.

By Arturo P

•

Jun 22, 2021

A relly nice course, it is not really difficult at all but it's really useful overall for researchers and making reports, i recommend it so much.

By Connor G

•

Aug 30, 2017

Very important subject matter taught well. My only qualm is that the final project was more difficult than I expected it to be given the content.

By Praveen k

•

Oct 18, 2018

Good course. Examples given throughout the course are biological based so it is little hard to understand completely because they are technical

By Marco B

•

Dec 5, 2017

this course is incredibly useful!

in my job i practice data analysis everyday and this course helped me to do everything in a more efficent way!

By Michael G

•

Aug 8, 2023

Ich habe 5 Sterne gegeben, da der Kurs erstklassig war.

Das Material war sehr gut bereitgestellt und die Schulungsvideos war klasse gemacht.

By Charly A

•

Nov 26, 2016

Excellent content and plan. The delivery is fantastic and the professor's explanatory clarity is top notch. I highly recommend this course.

By Warren F

•

Aug 16, 2016

Slightly less information than the previous courses in DS spec but important for someone who has not done scientific research in the past.

By Prairy

•

Mar 17, 2016

Excellent course that is both well presented and very clear, providing many examples and opportunities to practice throughout the course.

By Tine M

•

Jan 22, 2018

Very interesting course, I was able to apply what I learned in the previous courses of the specialization, and that was a good exercise.

By Anirban C

•

Aug 15, 2017

Nice course! It helped me to understand the concepts of markdown and related R modules. The assignments were challenging and fun to do.