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Johns Hopkins University

Developing Data Products

A data product is the production output from a statistical analysis. Data products automate complex analysis tasks or use technology to expand the utility of a data informed model, algorithm or inference. This course covers the basics of creating data products using Shiny, R packages, and interactive graphics. The course will focus on the statistical fundamentals of creating a data product that can be used to tell a story about data to a mass audience.

Status: Web Applications
Status: Package and Software Management
Course10 hours

Featured reviews

SK

5.0Reviewed Jul 31, 2019

It is a good course provide neccessary stuffs for data science.You can skip week 4 as it is done previously in other courses . Small and good course.

JN

5.0Reviewed Aug 31, 2017

Brian Caffo is the best! No one could explain better than him. Congratulations for this excellent course, you are my inspiration to become a better data scientist.

RS

5.0Reviewed Nov 18, 2018

This course was amazing, it could definetly be more deep in each of the subjects, but gives you so much practice in tools that are very useful in the day by day of a data scientist

VP

4.0Reviewed Apr 9, 2017

Nice course and good classmates. It's very focus oriented and gives very good idea of Shiny, Rmarkdown, plotly and how to publish documents on github, Rpubs and other online sites. I learnt power of R

TA

5.0Reviewed Feb 16, 2020

I appreciated the wholistic approach of presenting the information via GIT, R shiney server and making the slides.... all very useful going forward.

SR

4.0Reviewed Feb 13, 2018

This course lacked required information of help to get started. Now thanks to some posts by mentors i was able to successfully complete the Capstone project. Overall a very good experience!

SS

5.0Reviewed Mar 3, 2016

This is a great introduction to some of the many ways to present your data. It's probably the easiest course in the specialisation but shows off an impressive array of widgets and gadgets.

RO

5.0Reviewed Jul 27, 2017

Course content was helpful. Some confusion in assignment questions not aligning with what was covered in lectures where it would have helped to clarify that was intentional.

JT

4.0Reviewed Mar 27, 2016

Good overview of available tools. Lack of practice exercises makes preparing for quizzes difficult. However, the course project does a good job to get your feet wet with Shiny Apps.

RH

4.0Reviewed Jan 27, 2018

Interesting topic, touching on many field. I believe it was quite informative as it applies on the previous modules knowledge into this one. However it didn't touch deeper on each topic.

BA

5.0Reviewed Jan 3, 2020

It another great lecture in this specialization course. Simplified, understandable, and highly impactful. You'd learn A-Z of shiny app development.

JC

4.0Reviewed May 4, 2016

Compared to the other classes in the JHU Data Science specialization, this one is pretty laid back. It's useful information, and teaches a few nice tricks on how to present data analysis results.

All reviews

Showing: 20 of 425

Robert O'Brien
5.0
Reviewed Jul 28, 2017
Paul Ringsted
2.0
Reviewed Mar 14, 2019
Ashutosh Baghel
5.0
Reviewed Mar 13, 2016
Idan Richman
5.0
Reviewed Mar 10, 2017
Eric Krantz
3.0
Reviewed Sep 24, 2025
Chuxing Chen
2.0
Reviewed Apr 7, 2016
Leo Carlsson
1.0
Reviewed Jul 18, 2020
David Porcaro
5.0
Reviewed Dec 17, 2015
Henk Scholten
5.0
Reviewed Dec 6, 2015
Don Moffatt
5.0
Reviewed Jul 17, 2019
Dheeraj Agarwal
5.0
Reviewed Feb 7, 2016
Pablo Adames
5.0
Reviewed Apr 5, 2017
João Freire
5.0
Reviewed Mar 16, 2019
José Antonio Ribeiro Neto
5.0
Reviewed Aug 25, 2017
David Shupe
5.0
Reviewed Feb 7, 2016
Kalle Hartwig
5.0
Reviewed Dec 7, 2017
Francisco Alejandro Olivas Alvear
5.0
Reviewed Feb 8, 2016
jessica cristina felix
5.0
Reviewed Jun 16, 2019
Richard Ian Carpenter
5.0
Reviewed Feb 6, 2016
Mehmet İLİK
5.0
Reviewed Jul 14, 2022