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Learner Reviews & Feedback for Reproducible Research by Johns Hopkins University

4.6
stars
4,168 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

IM

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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

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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.

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176 - 200 of 586 Reviews for Reproducible Research

By Raunak S

Oct 11, 2018

great course for those wanting to learn basic concepts of Reproducible Research.

By Frederik C

May 29, 2018

Key aspect for a good data scientist. It was a nice introduction to knitr etc...

By Jose P

Feb 11, 2018

Perfect to aid past and present curation and validation of research. Thank you!

By Emil L

Nov 3, 2016

Great Course, should be free to all freshman graduate students across the world.

By Jim M

May 22, 2020

Very nice final course pulling everything together from the previous 4 courses.

By Nilrey J D C

Oct 7, 2019

A very good course to know why it is important to have a reproducible research.

By xuwei. l

May 15, 2016

excellent course to introduce practical approach for reporting data analysis !

By Harland H

Jul 1, 2018

Very informative. Will use this on the job to make producing products easier.

By Andres D C

Dec 21, 2020

Excellent proposal, one of the important things in the scientific research

By SATHYANARAYANAN S

Sep 10, 2017

Very good for anyone wanting to get into the field of Data Science using R

By Anita M G

Aug 5, 2020

Thank you So much !!!

This course wonderfull.. Learnt so many new things.

By Diana S

Feb 11, 2016

Thank you son much!!!!

I really like the course.

It help me in my job =)

By Fikir W E

Feb 25, 2020

I am thankful that such a quality learning material is made available.

By 易灿

Feb 2, 2016

Very helpful, let me know new tools like knitr and Rmarkdown language!

By Kevin H

Nov 9, 2016

Coding documents and data cleaning is possibly the best thing ever =D

By Chong C F

Mar 20, 2017

Everyone should know this, every thing should have prove and balance

By R. V

May 16, 2022

VERY CHALLENGING course! But it's all good! You will learn a lot.

By Zhuang W

Nov 7, 2017

Great course! Help us to build the basic skills in data analysis.

By Leopoldo S

Oct 30, 2016

Impressed. Great, great, course.

Enjoy and learn at the same time.

By Nurul H A

Sep 13, 2020

Very good topic with the very good and challenging assessments.

By Fábio R C

Jul 24, 2017

Great opportunity to become more scientific report the job in R

By carlos j m

Apr 11, 2019

Great course, good lectures. I learned a lot of usable skills.

By Alzum S M

Jan 8, 2019

A great course that will take you ahead to be a Data Scientist

By JAKOB L

Apr 26, 2022

Really good course. Good introduction to an important topic.

By Brett W

Dec 4, 2017

I really liked this course. I have carried a lot out of it.