Editing Community Data Science Course (Spring 2019)

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=== Final Project Proposal ===  
=== Final Project Proposal ===  
:'''Maximum Length:''' 1500 words (~5 pages)
:'''Maximum Length:''' 1500 words (~5 pages)
:'''Due Date:''' Week 8
:'''Due Date:''' Week 7


This proposal should focus on two questions:
This proposal should focus on two questions:
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* Have written a program with loops and lists.
* Have written a program with loops and lists.
* Have a better understanding of the expectations for your final project, and be ready to hand in your initial assignment.
* Have a better understanding of the expectations for your final project, and be ready to hand in your initial assignment.
=== Week 3: April 17 ===
'''Assignment Due:'''
Final project idea.  Turn in on [https://canvas.uw.edu/courses/1272567/assignments/4788468 Canvas].
Finish Wordplay examples
Reading
* Read chapter 4, 5 of Python for Informatics:
** Functions (this is mostly new)
** Iteration (this is mostly review)
'''Course plan:'''
* Go over last week's assignment.
* Dictionaries and aggregations [[Community Data Science Course (Spring 2019)/Day 3 Notes|Day 3 Notes]]
* A break! Let's really aim for 7:30 this time.
* Discuss average, median using the wordplay data.
* Project time — We'll begin working on a series of project based on the [http://mako.cc/teaching/2015/cdsw-autumn/babynames.zip Baby names] project.
* [[Community Data Science Course (Spring 2019)/Day 3 Coding Challenges|Day 3 Coding Challenges]]
'''Resources:'''
* [[Python_data_types_cheat_sheet]] A cheat sheet with everything we've covered in class so far including today.
=== Week 4: April 24 ===
'''Assignment Due:'''
Finish Baby Names examples.
Reading
* Read chapters 10 and 8 of Python for Informatics: Dictionaries and Files.
'''Course Plan'''
* Let's discuss two visualizations I found.
* Discuss week of May 8. I'm in North Carolina.
* Go over last week's assignment.
* Discuss histograms in python, and build a few.
* Project time - We'll reuse the babynames code.
* [[Community Data Science Course (Spring 2019)/Day 4 Coding Challenges|Day 4 Coding Challenges]]
=== Week 5: May 1 ===
'''Assignment Due:'''
Turn in (on canvas!) solution to this problem:
List '''how many babies''' were born that share a name with 4, 6, 7, 8, ..., 19 other babies. Also, list how many babies share names with more than 20 other babies under the key "common".
'''Course Plan'''
* Let's discuss week of May 8. (Doodle poll results)
* Go over last week's assignment and review histograms.
* Discuss APIs and downloading data from the internet. Refer to [[Community Data Science Course (Spring 2019)/Day 5 Notes|Day 5 Notes]]
* Spend time on [[Community Data Science Course (Spring 2019)/Day 5 Coding Challenges|Day 5 Coding Challenges]]
=== Week 7: May 15 ===
'''Course Plan'''
* Let's discuss remaining schedule
* Discuss data downloading and cleaning. Refer to [[Community Data Science Course (Sprint 2019)/Day 7 Notes|Day 7 Notes]]
* We will be discussing this data set: https://data.seattle.gov/Transportation/Collisions/vac5-r8kk
* Spend time on [[Community Data Science Course (Spring 2019)/Day 7 Coding Challenges|Day 7 Coding Challenges]] which are group challenges.
=== Week 8: May 22 ===
'''Assignment Due:'''
Final Project Proposal. Canvas link [https://canvas.uw.edu/courses/1272567/assignments/4821879 here].
'''Course Plan'''
* Discuss pivot tables in Excel
* [[Community Data Science Course (Spring 2019)/Day 8 notes|Day 8 notes]]
=== Week 9: May 29 ===
'''Assignment Due:'''
Nothing! But I hope you are making good progress.
'''Course Plan'''
* Follow up from last week: let's discuss inference and A/B testing.
** [https://www.exp-platform.com/Documents/2016-11BestRefutedCausalClaimsFromObservationalStudies.pdf Examples of bad observational studies]
* Visualization dos and don'ts. We'll discuss the European Environmental Agency's [https://www.eea.europa.eu/data-and-maps/daviz/learn-more/chart-dos-and-donts list of advice for making charts]. **I will refer to this guide as a grade your final projects.**
* Two options for remainder of class. You can work through this introductory guide to visualization in python or you can work on your final project. I'll be here to answer any questions.
'''Optional visualization in python tutorial'''
Self-guided visualization tutorial in python. [https://raw.githubusercontent.com/guyrt/teaching/master/2019/Com520B/VisualizationNotebook.ipynb Download here]. Save the file in a new directory in your desktop and open it with jupyter notebook
If you are on Windows, you may run into an issue with missing path variables. [https://stackoverflow.com/questions/52821162/jupyter-notebook-failed-to-load-dll This SO post helped me solve it.]
=== Week 10: June 5 ===
'''Assignment Due:'''
Final Project Presentation!


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