Editing Community Data Science Course (Spring 2016)

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=== Final Project ===
=== Final Project ===
:'''Presentation Date:''' June 1, 2016
:'''Presentation Date:''' June1
:'''Paper Due Date:''' June 10, 2016 at midnight.
:'''Paper Due Date:''' TBD roughly 1 week after June 1.
 
''' [https://canvas.uw.edu/courses/1039305/assignments/3293283 Hand in your presentation here] '''
 
''' [https://canvas.uw.edu/courses/1039305/assignments/3293284 Hand in your final paper here] '''


For your final project, I expect you to build on the first two assignments to describe what they have done and what you have found. I'll expect every student to give both:
For your final project, I expect you to build on the first two assignments to describe what they have done and what you have found. I'll expect every student to give both:
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==== Presentation ====
==== Presentation ====


Your presentation should provide me with a very clear idea of what to expect in your final paper. However, don't treat it as a comprehensive overview of your paper: I would rather you tell a subset of the story well than the whole story in a rushed fashion. I'm going to give you all at least a paragraph of feedback after your talk. This will be an opportunity for me to see a preview of your paper and give you a sense for what I think you can improve. It's to your advantage to both give a compelling talk and to give me a sense for your project.
Your presentation should do everything that your paper does and should provide me with a very clear idea of what to expect in your final paper. I'm going to give you all at least a paragraph of feedback after your talk. This will be an opportunity for me to see a preview of your paper and give you a sense for what I think you can improve. It's to your advantage to both give a compelling talk and to give me a sense for your project.


;Timing: All presentations will need to be '''a maximum of 7 minutes long'' with additional 2-3 minutes for questions and answers. Timing is going to be tight and I'm going to set an alarm and stop presentations that go too long. Concisely communicating an idea in the time allotted is an important skill in it's own right.
;Timing: All presentations will need to be '''a maximum of 7 minutes long'' with additional 2-3 minutes for questions and answers. Timing is going to be tight and I'm going to set an alarm and stop presentations that go too long. Concisely communicating an idea in the time allotted is an important skill in it's own right.




;Slides: You are encouraged to use slides for your talk but I will need your slides ahead of class. See link at top of this section.
;Slides: You are encouraged to use slides for your talk but I will need your slides ahead of class.


=== Participation ===
=== Participation ===
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=== Week 6: May 4 ===
=== Week 6: May 4 ===


'''IMPORTANT: Class will be starting at 6:30 not 6:00 for May 4.'''


'''Assignment Due:''' Final project proposal.  
'''Assignment Due:''' Final project proposal.  
[[https://canvas.uw.edu/courses/1039305/assignments/3270775 Turn in on Canvas]]
[[https://canvas.uw.edu/courses/1039305/assignments/3270775 Turn in on Canvas]]
''' Class Schedule:'''
* Review and Lecture - We'll review all of the material from last week. No new material this week: I want to make sure you get caught up to date on working APIs in general.
* Project time - Two options.
** Option 1: Continue working on the Wikipedia questions. I've added a few new questions.
** Option 2: Start working on your final project with the help of a mentor. Use this time to cover questions like data access. If you can already download your data, great! Start thinking about analysis questions and visualizations.
* [[Community Data Science Course (Spring 2016)/Day 6 Plan|Day 6 Plan]]
* [[Community_Data_Science_Course_(Spring_2016)/Day_6_Coding_Challenges|Day 6 Challenge]]
* [[Python_data_types_cheat_sheet]] A cheat sheet with everything we've covered in class so far.
=== Week 7: May 11 ===
'''Assignment Due:'''
* Finish the [[Twitter authentication setup]] to request keys necessary to begin using the Twitter API.
''' Class Schedule:'''
* Review and Lecture - we'll review the exercise from last week.
** Samples
* One new thing to learn: opening and reading files.
* Lecture - introduce the [https://dev.twitter.com/overview/documentation|Twitter API]
** Sample code is [[Community_Data_Science_Course_(Spring_2016)/Day_6_Lecture|here]]
* Project time - Three options.
** Option 1: If you are working on Twitter, I would encourage you to work on the [[Community_Data_Science_Workshops_(Spring_2016)/Day_2_Projects/Twitter|getting Twitter data]] exercises.
** Option 2: If you are not working on Twitter, I would encourage you to work on the [[Community_Data_Science_Workshops_%28Spring_2016%29/Day_3_Projects/Twitter|Using Twitter Data]] exercises.
** Option 3: Take this time to get help with your projects (and do one of the other options this week).
''' Resources '''
* Twitter: [https://mako.cc/teaching/2015/cdsw-autumn/twitter-api-cdsw.zip]
=== Week 8: May 18 ===
''' Class Schedule:'''
* Talk about final presentations.
* Review last week's Twitter assignments (30 mins)
* Lecture (without code!) about what makes a good metric.
* Project time. Take this time to get help with and/or work on your projects.


== Administrative Notes ==
== Administrative Notes ==
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