Editing Data Into Insights (Spring 2021)

From CommunityData

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* Other readings: Readings will be linked to from this page. Where necessary, they will be put on Brightspace
* Other readings: Readings will be linked to from this page. Where necessary, they will be put on Brightspace
=== Reading Academic Articles ===
Some of the readings will be academic articles. I do not expect you to read every word of these articles. Rather, you should practice intentional directed skimming. [https://writingcenter.gmu.edu/guides/strategies-for-reading-academic-articles This article] gives a nice overview. The TL;DR is that you should carefully read the abstract, introduction, and conclusion. For the rest of the article, focus on section headings and topic sentences to extract the main ideas.


= Course logistics =
= Course logistics =
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This course will follow "flipped" classroom model. I expect you to learn most of the content of the course asynchronously. The goal of our time together is not to tell you new things, but to consolidate knowledge and to clear up misconceptions.
This course will follow "flipped" classroom model. I expect you to learn most of the content of the course asynchronously. The goal of our time together is not to tell you new things, but to consolidate knowledge and to clear up misconceptions.


The Tuesday meeting will be a collaborative, discussion-centric session. Typically, about half of each session will be devoted to going over assignments and the other half will be a discussion of the readings and videos from that week. We will take collaborative notes [https://etherpad.wikimedia.org/p/com-495-data-insight using this Etherpad].
The Tuesday meeting will be a collaborative, discussion-centric session. Typically, about half of each session will be devoted to going over assignments and the other half will be a discussion of the readings and videos from that week.
 
If you would like to create collaborative summaries of the readings, you can [https://etherpad.wikimedia.org/p/com-495-summaries use this Etherpad].


The Thursday meetings will be more like a lab. Some of these sessions will include synchronous activities but they will often be more of a co-working time, where you can work synchronously on assignments and I can be available to answer questions.
The Thursday meetings will be more like a lab. Some of these sessions will include synchronous activities but they will often be more of a co-working time, where you can work synchronously on assignments and I can be available to answer questions.
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* Effective Data Storytelling (EDS) Ch. 1--3 ([https://purdue-primo-prod.hosted.exlibrisgroup.com/permalink/f/vjfldl/PURDUE_ALMA51860241510001081 Purdue libraries copy])
* Effective Data Storytelling (EDS) Ch. 1--3 ([https://purdue-primo-prod.hosted.exlibrisgroup.com/permalink/f/vjfldl/PURDUE_ALMA51860241510001081 Purdue libraries copy])
* Matei, S. [https://purdue.brightspace.com/d2l/le/content/208726/viewContent/4750659/View What is a (data) story?]
* Matei, S. [https://purdue.brightspace.com/d2l/le/content/208726/viewContent/4750659/View What is a (data) story?]
* [https://purdue.brightspace.com/d2l/le/content/208726/viewContent/5392546/View Counterfactuals and Storytelling lecture ] [4:49]
* Levy, J. (2015). [https://www-tandfonline-com.ezproxy.lib.purdue.edu/doi/full/10.1080/09636412.2015.1070602 Counterfactuals, Causal Inference, and Historical Analysis]
* (Optional) Levy, J. (2015). [https://www-tandfonline-com.ezproxy.lib.purdue.edu/doi/full/10.1080/09636412.2015.1070602 Counterfactuals, Causal Inference, and Historical Analysis]
* (Optional) [https://towardsdatascience.com/storytelling-for-data-scientists-317c2723aa31 Storytelling for Data Scientists]
* (Optional) [https://towardsdatascience.com/storytelling-for-data-scientists-317c2723aa31 Storytelling for Data Scientists]
* (Optional) [https://towardsdatascience.com/how-to-properly-tell-a-story-with-data-and-common-pitfalls-to-avoid-317d8817e0c9 How to properly tell a story with data — and common pitfalls to avoid]  
* (Optional) [https://towardsdatascience.com/how-to-properly-tell-a-story-with-data-and-common-pitfalls-to-avoid-317d8817e0c9 How to properly tell a story with data — and common pitfalls to avoid]  
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