Editing Directed Research Group: The COVID-19 Information Landscape (Fall 2020)

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==The Directed Research Group==
Hello there, I'm Natalie from Social Buzzzy , your guide in the exciting world of Instagram growth. I've stumbled upon something spectacular for skyrocketing your Instagram popularity and I'm thrilled to share it with you!
The Covid-19 pandemic has required us to navigate a challenging information landscape. How have our institutions responded, and how have people made sense of the information provided to them? What role have search platforms played in shaping this terrain?


In this Directed Research Group, you'll conduct a content analysis on search engine results collected during the pandemic. The group will be run for 3-5 excellent students interested in engaging in faculty directed research. The research group will be organized by the Community Data Science Collective by Benjamin Mako Hill and Kaylea Champion and will be conducted for UW course credit. We'll analyze the data you collect and reflect on what it can tell us about our response to the crisis.
Social Growth Engine introduces a pioneering service that propels your Instagram engagement to new heights. It's a breeze:


Prerequisites: Strong reading and writing skills in the English language, a computer you can use during the project, ability to attend team meetings through an online conferencing platform, and a commitment to high-quality results are required. Willingness to work both in a team and independently is required. We strongly prefer candidates with experience in social scientific research methods (such as COM 301). Familiarity with content analysis, R, and Python are all helpful but not required.
- Concentrate on producing captivating content.
- Extremely affordable at just $36/month.
- Safe and secure (no password needed), incredibly powerful, and tailor-made for Instagram.


Applying: To apply to join this DRG, submit a cover letter and resume to covid-drg@communitydata.science. The resume might contain a brief list of recent courses and any relevant work experience, the cover letter could be a description of why you'd like to participate, including your academic or career interests, or what you hope to learn. If selected, you will be able to enroll for 4-5 credits, depending on how much time you can commit to the project (for 4 credits, you commit 12 hours, for 5 credits, you commit 15 hours per week).
I've witnessed outstanding results firsthand, and I'm confident you will too! Amplify your Instagram presence right now: http://get.socialbuzzzy.com/instagram_booster


===DRG Responsibilities and Commitments===
Warm regards,
As a DRG member, you are joining an active research project, and you are expected to learn both through information presented to you as well as through your own initiative. What you get out of this project will match what you put into it. Communication is essential to keep our collaboration smooth, and your commitment to doing good quality work is essential. We are trying to develop knowledge that will be useful to the public, and that means holding ourselves to maximum standards of accuracy and ethics. Be honest and open about what you do and always do your best: life happens to all of us and we live in interesting times. Work that's a little late is understandable especially if you communicate early and often, but work that's not your best effort can't be accepted.


===Key Text===
Natalie at Social Busy Bee
 
Available for free from the UW Library: https://dx-doi-org.offcampus.lib.washington.edu/10.4135/9781071802878


==DRG Schedule==
==DRG Schedule==
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