Community Data Science Workshops (Fall 2015): Difference between revisions

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'''Activities'''
'''Activities'''
* Morning: [[Community_Data_Science_Workshops_(Fall_2015)/Day_3_Lecture|A 140 minuteinteractive lecture]]
* Morning: [[Community_Data_Science_Workshops_(Fall_2015)/Day_3_Lecture|A 140 minute interactive lecture]]
* Afternoon: [[Community_Data_Science_Workshops_(Fall_2015)/Day_3_Projects|independent projects]] using data from...
* Afternoon: [[Community_Data_Science_Workshops_(Fall_2015)/Day_3_Projects|independent projects]] using data from...


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:* [[Community_Data_Science_Workshops_(Fall_2015)/Day_3_Projects/Civic_data|Analyzing civic data from data.seattle.gov]]
:* [[Community_Data_Science_Workshops_(Fall_2015)/Day_3_Projects/Civic_data|Analyzing civic data from data.seattle.gov]]
:* Independent projects working on issues of ''your'' choosing!
:* Independent projects working on issues of ''your'' choosing!


== Venue and Logistics ==
== Venue and Logistics ==
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=== Location ===
=== Location ===


Our events are held at a variety of places on the University of Washington campus including the '''Communications building (CMU)''', '''Odegaard Library''', and the ''Allen Library Research Commons'''. Please see [http://www.washington.edu/maps/ this campus map from UW] for details on the individual buildings.
Our events are held at a variety of places on the University of Washington campus including the '''Communications building (CMU)''', '''Odegaard Library''', and the '''Allen Library Research Commons'''. Please see [http://www.washington.edu/maps/ this campus map from UW] for details on the individual buildings.


Parking at UW is available but is not free. There is [https://www.washington.edu/facilities/transportation/commuterservices/parking/selfserve self-serve parking] as well as gatehouses that are staffed from 7am on Saturday and can issue you parking passes and point you to an appropriate lot. More details are on the [https://www.washington.edu/facilities/transportation/commuterservices/parking/daily UW Commuter Services website for Visitors and Guests]. UW is also well served by public transportation and easily accessible by bicycle with the [https://en.wikipedia.org/wiki/Burke_Gilman_Trail Burke Giilman Trail].
Parking at UW is available but is not free. There is [https://www.washington.edu/facilities/transportation/commuterservices/parking/selfserve self-serve parking] as well as gatehouses that are staffed from 7am on Saturday and can issue you parking passes and point you to an appropriate lot. More details are on the [https://www.washington.edu/facilities/transportation/commuterservices/parking/daily UW Commuter Services website for Visitors and Guests]. UW is also well served by public transportation and easily accessible by bicycle with the [https://en.wikipedia.org/wiki/Burke_Gilman_Trail Burke Giilman Trail].

Latest revision as of 17:20, 7 November 2015

Registration for Fall 2015 is now closed

Registration closed on October 2. Have experience to share? Sign up to be a mentor If you would like to be notified of future workshops, subscribe to our announcement email list.

The Community Data Science Workshops in Fall 2015 are a series of project-based workshops being held at the University of Washington for anyone interested in learning how to use programming and data science tools to ask and answer questions about online communities like Wikipedia, Twitter, free and open source software, and civic media.

The Fall 2015 workshop series will take place over three Saturdays (plus a short Friday night setup session):

These workshops are for people with absolutely no previous programming experience and they bring together researchers and academics with participants and leaders in online communities. The workshops are run entirely by volunteers and are entirely free of charge for participants, generously sponsored by the UW Department of Communication and the eScience Institute. Participants from outside UW are encouraged to apply.

Our goal is that, after the three workshops, participants will be able to use data to produce numbers, hypothesis tests, tables, and graphical visualizations to answer questions like:

  • Are new contributors in Wikipedia this year sticking around longer or contributing more than people who joined last year?
  • Who are the most active or influential users of a particular Twitter hashtag?
  • Are people who join through a Wikipedia outreach event staying involved? How do they compare to people who decide to join the project outside of the event?

Several earlier versions of the workshops was run in 2014 and 2015 and the curriculum we used for previous sessions is all online.

Registration[edit]

Participants! If you are interested in learning data science, please fill out our registration form here. The deadline to register is Friday October 2. We will let participants know if we have room for them by Monday October 5. Space is limited and will depend on how many mentors we can recruit for the sessions.

Interested in being a mentor? If you already have experience with Python, please consider helping out at the sessions as a mentor. Being a mentor will involve working with participants and talking them through the challenges they encounter in programming. No special preparation is required. And we'll feed you! Because we want to keep a very high mentor-to-student ratio, recruiting more mentors means we can accept more participants. If you're interested you can fill out this form or email makohill@uw.edu. Also, thank you, thank you, thank you!


Schedule[edit]

There will be a mandatory evening setup session 6:00-9:00pm on Friday October 9 and three workshops held from 9:45am-4pm on three Saturdays (October 10 and 24 and November 7). Each Saturday session will involve a period for lecture and technical demonstrations in the morning. This will be followed by a lunch graciously provided by the eScience Institute at UW. The rest of the day will be followed by group work on programming and data science projects supported by more experienced mentors.

All sessions are interactive and involve you programming on your own and on your own laptop. Everybody attending should bring a laptop and a power cord so that they don't run out of battery.

Session 0: Setup and Programming Tutorial (Friday October 9 evening)[edit]

Time: 6-9pm
Location: Communications (CMU) 104
Material: Click here for the the setup and tutorial material.
Note: Because we expect to hit the ground running on our first full day, we will meet to help participants get software installed and to work through a self-guided tutorial that will help ensure that everyone has the skills and vocabulary to start programming and learning when we meet the following morning.

Come to Communications (CMU) 104 between 6:00 and 9:00pm. It's OK if you come a little late but you'll want to have as much time as you can to finish the setup and self-directed assignments so come as close to 6:30pm as you can. Most people will finish early but some people will definitely need the full 3 hours. It's hard to know in advance where problems will crop up so please come on time even if you are confident.

During this session, mentors will help you:

  • set up your development environment
  • learn how to execute Python code from a file and interactively from a Python prompt
  • learn about printing and using Python as a calculator

Session 1: Introduction to Programming (October 10)[edit]

Programming is an essential tool for data science and is useful for solving many other problems. The goal of this session will be to introduce programming in the Python programming language. Each participant will leave having solved a real problem and will have built their first real programming project.

Time: 9:45am-4pm
Locations:

Come to Odegaard Library Room 136 by 9:45am You will need time to get settled and setup. We will start lecturing promptly at 10am. There will be coffee!

Day schedule

Session 2: Importing Data from web APIs (October 24)[edit]

An important step in doing data science is collecting data. The goal of this session will be to teach participants how to get data from the public application programming interfaces ("APIs") common to many social media and online communities. Although we will use the APIs provided by Wikipedia, Twitter, Socrata, and Yelp in the session, the principles and techniques are common to many other online communities.

Time: 9:45am-4pm
Location:

Come to Odegaard Library Room 136 by 9:45am You will need time to get settled and setup. We will start lecturing promptly at 10am. There will be coffee!

Day schedule

Projects

(*) Important Note: If you plan to attend the Twitter afternoon session, you need to complete the Twitter authentication setup before the afternoon session on Saturday. If you plan to attend the Yelp afternoon session, you need to complete the Yelp authentication setup before the session.

Session 3: Data Analysis and Visualization (November 7)[edit]

Time: 9:45am-4pm
Location:

Come to Odegaard Library Room 136 by 9:45am You will need time to get settled and setup. We will start lecturing promptly at 10am. There will be coffee!

The goal of data science is to use data to answer questions. In our final session, we will use the Python skills we learned in the first session and the datasets we've created in the second to ask and answer common questions about the activity and health of online communities. We will focus on learning how to generate visualizations, create summary statistics, and test hypotheses.

Activities

Venue and Logistics[edit]

Contact information[edit]

If you have any questions about the events, you can contact makohill@uw.edu.

Location[edit]

Our events are held at a variety of places on the University of Washington campus including the Communications building (CMU), Odegaard Library, and the Allen Library Research Commons. Please see this campus map from UW for details on the individual buildings.

Parking at UW is available but is not free. There is self-serve parking as well as gatehouses that are staffed from 7am on Saturday and can issue you parking passes and point you to an appropriate lot. More details are on the UW Commuter Services website for Visitors and Guests. UW is also well served by public transportation and easily accessible by bicycle with the Burke Giilman Trail.

What to bring[edit]

  1. a laptop
    • for Session 0 make sure that you have about 1GB of space free so you can install Python and all the necessary other software
    • for Sessions 1-3 bring your laptop with Python set up
  2. a power cord
  3. a sense of adventure!

Food[edit]

Thanks to generous sponsorship by the eScience Institute at UW, we will provide catered lunchs during the Saturday sessions. Although we haven't figured out the menu, the food will all be vegetarian and there will be vegan and gluten free options. If the food we have doesn't doesn't work for you, there is a food court open for lunch in the HUB (the UW student center) that is on campus and nearby.

Social Media[edit]

About the Organizers[edit]

The workshops are being coordinated, organized by Benjamin Mako Hill, Jonathan Morgan, Tommy Guy, Ben Lewis, Dharma Dailey, and a long list of other volunteer mentors. The workshops have been designed with lots of help and inspiration from Shauna Gordon-McKeon and Asheesh Laroia of OpenHatch and lots of inspiration from the Boston Python Workshop.

These workshops are an all-volunteer effort. Fundamentally, we're doing this because we're programmers and data scientists who work in online communities and we really believe that the skills you'll learn in these sessions are important and empowering tools.

The workshops are being supported by the UW Department of Communication and the eScience Institute.

If you have any questions or concerns, please contact Benjamin Mako Hill at makohill@uw.edu.

Dept.Comm UW vertical small square.jpg EScience Logo RGB.png