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Johns Hopkins University

Reproducible Research

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.

Status: Statistical Reporting
Status: R Programming
Course8 hours

Featured reviews

RG

5.0Reviewed Apr 29, 2020

Great topic which is discussed well with a good case study. I'd like to see more up-to-date content and more detailed analytical techniques. However, it's a nice introduction!

IM

5.0Reviewed Aug 9, 2019

Without taking this course wouldn't have fully understood the importance of reproducible research in data science. Thank you so much. I recommend this course for all data scientists.

MF

5.0Reviewed Mar 30, 2022

I took this course as part of the Data Science specialization without any real expectation and realized that this subject is probably one of the most important in data analysis.

AP

4.0Reviewed Feb 2, 2017

While I'm pretty sure this course is VERY important for researchers, it is not very useful for my area (IT) and I would like to know this before taking the course. Thank you.

DE

5.0Reviewed Aug 4, 2017

Very informative and enjoyable class. The importance of reproducible research is stressed clear and concisely, Roger D. Peng does a great job of explaining the material.

KK

4.0Reviewed Aug 7, 2018

Very helpful and informative information on how to create reproducible research. The project gives you an opportunity to create reproducible research in the format of a report.

GA

4.0Reviewed Feb 21, 2018

This is a necessary evil. You can try to do the other classes in the specialization without it, but learning to use R markdown well is hard with out this or a similar class

YM

4.0Reviewed Apr 5, 2017

If you are at university (PhD student, academic, researcher, etc.) then you kind of know most of the "theory". However, practising R was a huge plus (personally, I liked the Week 4 task).

MR

4.0Reviewed Nov 13, 2017

Enjoyed learning about rMarkdown, caching, and RPubs. Was also able to spend time plotting and aggregating data in different ways. Didn't enjoy cleaning data too much :)

YM

4.0Reviewed Jul 22, 2017

Learning Knitr was cool. However, many of the slides were not directly relevant to the course. I think, more rigor can be added, or this course can be merged with one of the others.

AP

5.0Reviewed 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.

VM

5.0Reviewed Feb 13, 2020

Highly recommended for beginners to learn the basics of Data Science, Re-producibility and how to write a good report around the analysis done by you as a data analyst.

All reviews

Showing: 20 of 590

Chris McGrillen
1.0
Reviewed Apr 9, 2016
Dzmitry Spirydzionak
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Reviewed May 10, 2016
Rahul Marne
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Reviewed Dec 20, 2017
Daniel Pelisek
1.0
Reviewed Mar 6, 2020
Jill Beck
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Reviewed Mar 30, 2016
Matthew Pollard
1.0
Reviewed Dec 18, 2016
Chandrakanth Kamath
1.0
Reviewed Oct 7, 2017
Ashwath Muralidharan
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Reviewed Mar 19, 2016
Michal Kovac
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Reviewed May 12, 2016
Jackson Chou
2.0
Reviewed Apr 3, 2016
Paul Jacobs
1.0
Reviewed Apr 9, 2016
ALEXEY PRONIN
2.0
Reviewed Oct 11, 2017
Matt S.
5.0
Reviewed Mar 5, 2019
Andaru Pramudito
5.0
Reviewed Feb 12, 2016
Jason Torpy
5.0
Reviewed Jul 23, 2017
Ishwarya Murugan
5.0
Reviewed Aug 10, 2019
Joe DiNoto
5.0
Reviewed Aug 1, 2019
Diana Hanania
5.0
Reviewed Feb 23, 2021
5.0
Reviewed Jun 17, 2016
Nataliia Muzhytska
5.0
Reviewed Jan 24, 2017