Human Centered Data Science (Fall 2018)/Assignments: Difference between revisions
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For example, your filename for monthly page views on desktop should be: | For example, your filename for monthly page views on desktop should be: | ||
pagecounts_desktop- | pagecounts_desktop-site_200712-201809.json | ||
'''Important notes:''' | '''Important notes:''' | ||
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The final data file should be named: | The final data file should be named: | ||
en- | en-wikipedia_traffic_200712-201809.csv | ||
==== Step 3: Analysis ==== | ==== Step 3: Analysis ==== | ||
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=== A2: Bias in data === | === A2: Bias in data === | ||
The goal of this assignment is to explore the concept of bias through data on Wikipedia articles - specifically, articles on political figures from a variety of countries. For this assignment, you will combine a dataset of Wikipedia articles with a dataset of country populations, and use a machine learning service called ORES to estimate the quality of each article. | |||
The goal of this assignment is to explore the concept of | |||
You are expected to perform an analysis of how the ''coverage'' of politicians on Wikipedia and the ''quality'' of articles about politicians varies between countries. Your analysis will consist of a series of tables that show: | You are expected to perform an analysis of how the ''coverage'' of politicians on Wikipedia and the ''quality'' of articles about politicians varies between countries. Your analysis will consist of a series of tables that show: | ||
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You are also expected to write a short reflection on the project, that describes how this assignment helps you understand the causes and consequences of bias on Wikipedia. | You are also expected to write a short reflection on the project, that describes how this assignment helps you understand the causes and consequences of bias on Wikipedia. | ||
'''A repository with a README framework and examples of querying the ORES datastore in R and Python can be found [https://github.com/Ironholds/data-512-a2 here]''' | |||
==== Getting the article and population data ==== | ==== Getting the article and population data ==== | ||
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The first step is getting the data, which lives in several different places. The wikipedia dataset can be found [https://figshare.com/articles/Untitled_Item/5513449 on Figshare]. Read through the documentation for this repository, then download and unzip it. | The first step is getting the data, which lives in several different places. The wikipedia dataset can be found [https://figshare.com/articles/Untitled_Item/5513449 on Figshare]. Read through the documentation for this repository, then download and unzip it. | ||
The population data is on | The population data is on [https://www.dropbox.com/s/5u7sy1xt7g0oi2c/WPDS_2018_data.csv?dl=0 Dropbox]. Download this data as a CSV file (hint: look for the 'Microsoft Excel' icon in the upper right). | ||
==== Getting article quality predictions ==== | ==== Getting article quality predictions ==== | ||
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For context, these quality classes are a sub-set of quality assessment categories developed by Wikipedia editors. If you're curious, you can read more about what these assessment classes mean on [https://en.wikipedia.org/wiki/Wikipedia:WikiProject_assessment#Grades English Wikipedia]. We will talk about what these categories mean, and how the ORES model predicts which category an article goes into, next week in class. For this assignment, you only need to know that these categories exist, and that ORES will assign one of these 6 categories to any article you send it. | For context, these quality classes are a sub-set of quality assessment categories developed by Wikipedia editors. If you're curious, you can read more about what these assessment classes mean on [https://en.wikipedia.org/wiki/Wikipedia:WikiProject_assessment#Grades English Wikipedia]. We will talk about what these categories mean, and how the ORES model predicts which category an article goes into, next week in class. For this assignment, you only need to know that these categories exist, and that ORES will assign one of these 6 categories to any article you send it. | ||
The ORES API is configured fairly similarly to the pageviews API we used last assignment; documentation can be found [https://ores.wikimedia.org/v3/#!/scoring/get_v3_scores_context_revid_model here]. It expects a revision ID, which is the third column in the Wikipedia dataset, and a model, which is "wp10". The sample iPython | The ORES API is configured fairly similarly to the pageviews API we used last assignment; documentation can be found [https://ores.wikimedia.org/v3/#!/scoring/get_v3_scores_context_revid_model here]. It expects a revision ID, which is the third column in the Wikipedia dataset, and a model, which is "wp10". The [https://github.com/Ironholds/data-512-a2 sample iPython notebooks for this assignment] provide examples of a correctly-structured API query that you can use to understand how to gather your data, and also to examine the query output. | ||
In order to get article predictions for each article in the Wikipedia dataset, you will need to read <tt>page_data.csv</tt> into Python (or R), and then read through the dataset line by line, using the value of the <tt>last_edit</tt> column in the API query. If you're working in Python, the [https://docs.python.org/3/library/csv.html CSV module] will help with this. | In order to get article predictions for each article in the Wikipedia dataset, you will need to read <tt>page_data.csv</tt> into Python (or R), and then read through the dataset line by line, using the value of the <tt>last_edit</tt> column in the API query. If you're working in Python, the [https://docs.python.org/3/library/csv.html CSV module] will help with this. | ||
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==== Writeup ==== | ==== Writeup ==== | ||
Write a few paragraphs, either in the README or in the notebook, reflecting on what you have learned, what you found, what (if anything) surprised you about your findings, and/or what theories you have about why any biases might exist (if you find they exist). You can also include any questions this assignment raised for you about bias, Wikipedia, or machine learning. | Write a few paragraphs, either in the README or in the notebook, reflecting on what you have learned, what you found, what (if anything) surprised you about your findings, and/or what theories you have about why any biases might exist (if you find they exist). You can also include any questions this assignment raised for you about bias, Wikipedia, or machine learning. Particular questions you might want to answer: | ||
# What biases did you expect to find in the data, and why? | |||
# What are the results? | |||
# What theories do you have about why the results are what they are? | |||
==== Submission instructions ==== | ==== Submission instructions ==== | ||
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#Create the data-512-a2 repository on GitHub w/ your code and data. | #Create the data-512-a2 repository on GitHub w/ your code and data. | ||
#Complete and add your README and LICENSE file. | #Complete and add your README and LICENSE file. | ||
#Submit the link to your GitHub repo to: https://canvas.uw.edu/courses/ | #Submit the link to your GitHub repo to: https://canvas.uw.edu/courses/1244514/assignments/4376107 | ||
==== Required deliverables ==== | ==== Required deliverables ==== | ||
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:# 1 final data file in CSV format that follows the formatting conventions. | :# 1 final data file in CSV format that follows the formatting conventions. | ||
:# 1 Jupyter notebook named <tt>hcds-a2-bias</tt> that contains all code as well as information necessary to understand each programming step, as well as your writeup (if you have not included it in the README) and the tables. | :# 1 Jupyter notebook named <tt>hcds-a2-bias</tt> that contains all code as well as information necessary to understand each programming step, as well as your writeup (if you have not included it in the README) and the tables. | ||
:# 1 README file in .txt or .md format that contains information to reproduce the analysis, including data descriptions, attributions and provenance information, and descriptions of all relevant resources and documentation (inside and outside the repo) and hyperlinks to those resources, and your writeup (if you have not included it in the notebook). | :# 1 README file in .txt or .md format that contains information to reproduce the analysis, including data descriptions, attributions and provenance information, and descriptions of all relevant resources and documentation (inside and outside the repo) and hyperlinks to those resources, and your writeup (if you have not included it in the notebook). A prototype framework is included in the [https://github.com/Ironholds/data-512-a2 sample repository] | ||
:# 1 LICENSE file that contains an [https://opensource.org/licenses/MIT MIT LICENSE] for your code. | :# 1 LICENSE file that contains an [https://opensource.org/licenses/MIT MIT LICENSE] for your code. | ||
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* Experiment with queries in the sandbox of the technical documentation for the API to familiarize yourself with the schema and the data | * Experiment with queries in the sandbox of the technical documentation for the API to familiarize yourself with the schema and the data | ||
* Explore the data a bit before starting to be sure you understand how it is structured and what it contains | * Explore the data a bit before starting to be sure you understand how it is structured and what it contains | ||
* Ask questions on Slack if you're unsure about anything | * Ask questions on Slack if you're unsure about anything. Please email Os to set up a meeting, or come to office hours, if you want to! This time is set aside specifically for you - it is not an imposition. | ||
* When documenting/describing your project, think: "If I found this GitHub repo, and wanted to fully reproduce the analysis, what information would I want? What information would I need?" | * When documenting/describing your project, think: "If I found this GitHub repo, and wanted to fully reproduce the analysis, what information would I want? What information would I need?" | ||
=== A3: Crowdwork ethnography === | === A3: Crowdwork ethnography === | ||
For this assignment, you will go undercover as a member of the Amazon Mechanical Turk community. You will preview or perform Mechanical Turk tasks (called "HITs"), lurk in Turk worker discussion forums, and write an ethnographic account of your experience as a crowdworker, and how this experience changes your understanding of the phenomenon of crowdwork. | For this assignment, you will go undercover as a member of the Amazon Mechanical Turk community. You will preview or perform Mechanical Turk tasks (called "HITs"), lurk in Turk worker discussion forums, and write an ethnographic account of your experience as a crowdworker, and how this experience changes your understanding of the phenomenon of crowdwork. | ||
The full assignment description is available [https://docs.google.com/document/d/16lZdTxkw1meUPMzA-BYl8TVtk0Jxv4Wh8mbZq_BursM/edit?usp=sharing as a Google doc] and [[:File:HCDS_Crowdwork_ethnography_instructions.pdf|as a PDF]]. | |||
The full assignment description is available | |||
=== A4: Final project plan === | === A4: Final project plan === |
Latest revision as of 19:24, 22 October 2018
Assignments are comprised of weekly in-class activities, weekly reading reflections, written assignments, and programming/data analysis assignments. Weekly in-class reading groups will discuss the assigned readings from the course and students are expected to have read the material in advance. In class activities each week are posted to Canvas and may require time outside of class to complete.
Unless otherwise noted, all assignments are due before 5pm on the following week's class.
Unless otherwise noted, all assignments are individual assignments.
Assignment timeline[edit]
- Assignments due every week
- In-class activities - 2 points (weekly): In-class activity output posted to Canvas (group or individual) within 24 hours of class session.
- Reading reflections - 2 points (weekly): Reading reflections posted to Canvas (individual) before following class session.
- Scheduled assignments
- A1 - 5 points (due 10/18): Data curation (programming/analysis)
- A2 - 10 points (due 11/1): Sources of bias in data (programming/analysis)
- A3 - 10 points (due 11/8): Crowdwork Ethnography (written)
- A4 - 10 points (due 11/22): Final project plan (written)
- A5 - 10 points (due 12/6): Final project presentation (oral, slides)
- A6 - 15 points (due 12/9): Final project report (programming/analysis, written)
Weekly in-class activities[edit]
In each class session, one in-class activity will have a graded deliverable that is due the next day. The sum of these deliverables constitutes your participation grade for the course. The deliverable is intended to be something that you complete (and ideally, turn in, in class), but in rare cases may involve some work after class. It could be as simple as a picture of a design sketch you made, or notes from a group brainstorm. When you and/or your group complete the assigned activity, follow the instructions below to submit the activity and get full credit.
Love it or hate it, teamwork is an integral part of data science practice (and work in general). During some class sessions, you will be asked to participate in one or more group activities. These activities may involve reading discussions, group brainstorming activities, collaborative coding or data analysis, working together on designs, or offering peer support.
- Instructions (individual activity)
- Do the in-class activity
- Submit the deliverable via Canvas, in the format specified by the instructor within 24 hours of class
- Instructions (group activity)
- Do the in-class activity
- Before the end of class, choose one group member to submit the deliverable for the whole group
- The designated group member will submit the deliverable via Canvas, in the format specified by the instructor within 24 hours of class
- Note: Make sure to list the full names of all group members in the Canvas post!
Late deliverables will never be accepted, and in the case of group activities, everyone in the group will lose points. So make sure you choose someone reliable to turn the assignment in!
Weekly reading reflections[edit]
This course will introduce you to cutting edge research and opinion from major thinkers in the domain of human centered data science. By reading and writing about this material, you will have an opportunity to explore the complex intersections of technology, methodology, ethics, and social thought that characterize this budding field of research and practice.
As a participant in the course, you are responsible for intellectually engaging with all assigned readings and developing an understanding of the ideas discussed in them.
The weekly reading reflections assignment is designed to encourage you to reflect on these works and make connections during our class discussions. To this end, you will be responsible for posting reflections on the previous week's assigned reading before the next class session.
There will generally be multiple readings assigned each week. You are responsible for reading all of them. However, you only need to write a reflection on one reading per week. Unless your instructor specifies otherwise, you can choose which reading you would like to reflect on.
These reflections are meant to be succinct but meaningful. Follow the instructions below, demonstrate that you engaged with the material, and turn the reflection in on time, and you will receive full credit. Late reading reflections will never be accepted.
- Instructions
- Read all assigned readings.
- Select a reading to reflect on.
- In at least 2-3 full sentences, answer the question "How does this reading inform your understanding of human centered data science?"
- Using full sentences, list at least 1 question that this reading raised in your mind, and say why the reading caused you to ask this question.
- Post your reflection to Canvas before the next class session.
You are encouraged, but not required, to make connections between different readings (from the current week, from previous weeks, or other relevant material you've read/listened to/watched) in your reflections.
Scheduled assignments[edit]
This section provides basic descriptions of all scheduled course assignments (everything you are graded on except for weekly in-class activities and reading reflections). The instructor will make specific rubrics and requirements for each of these assignments available on Canvas the day the homework is assigned.
A1: Data curation[edit]
The goal of this assignment is to construct, analyze, and publish a dataset of monthly traffic on English Wikipedia from January 1 2008 through September 30 2018. All analysis should be performed in a single Jupyter notebook and all data, documentation, and code should be published in a single GitHub repository.
The purpose of the assignment is to demonstrate that you can follow best practices for open scientific research in designing and implementing your project, and make your project fully reproducible by others: from data collection to data analysis.
For this assignment, you combine data about Wikipedia page traffic from two different Wikimedia REST API endpoints into a single dataset, perform some simple data processing steps on the data, and then analyze that data.
Step 0: Read about reproducibility[edit]
Read Chapter 2 "Assessing Reproducibility" and Chapter 3 "The Basic Reproducible Workflow Template" from The Practice of Reproducible Research University of California Press, 2018.
Step 1: Data acquisition[edit]
In order to measure Wikipedia traffic from 2008-2018, you will need to collect data from two different API endpoints, the Legacy Pagecounts API and the Pageviews API.
- The Legacy Pagecounts API (documentation, endpoint) provides access to desktop and mobile traffic data from December 2007 through July 2016.
- The Pageviews API (documentation, endpoint) provides access to desktop, mobile web, and mobile app traffic data from July 2015 through last month.
For each API, you will need to collect data for all months where data is avaiable and then save the raw results into 5 separate JSON source data files (one file per API query type) before continuing to step 2.
To get you started, you can refer to this example Notebook that contains sample code for API calls (view the notebook, download the notebook). This sample code is licensed CC0 so feel free to re-use any of the code in that notebook without attribution.
Your JSON-formatted source data file must contain the complete and un-edited output of your API queries. The naming convention for the source data files is:
apiname_accesstype_firstmonth-lastmonth.json
For example, your filename for monthly page views on desktop should be:
pagecounts_desktop-site_200712-201809.json
Important notes:
- As much as possible, we're interested in organic (user) traffic, as opposed to traffic by web crawlers or spiders. The Pageview API (but not the Pagecount API) allows you to filter by agent=user. You should do that.
- There was about 1 year of overlapping traffic data between the two APIs. You need to gather, and later graph, data from both APIs for this period of time.
Step 2: Data processing[edit]
You will need to perform a series of processing steps on these data files in order to prepare them for analysis. These steps must be followed exactly in order to prepare the data for analysis. At the end of this step, you will have a single CSV-formatted data file that can be used in your analysis (step 3) with no significant additional processing.
- For data collected from the Pageviews API, combine the monthly values for mobile-app and mobile-web to create a total mobile traffic count for each month.
- For all data, separate the value of timestamp into four-digit year (YYYY) and two-digit month (MM) and discard values for day and hour (DDHH).
Combine all data into a single CSV file with the following headers:
Column | Value |
---|---|
year | YYYY |
month | MM |
pagecount_all_views | num_views |
pagecount_desktop_views | num_views |
pagecount_mobile_views | num_views |
pageview_all_views | num_views |
pageview_desktop_views | num_views |
pageview_mobile_views | num_views |
For all months with 0 pageviews for a given access method (e.g. desktop-site, mobile-app), that value for that (column, month) should be listed as 0. So for example all values of pagecount_mobile_views for months before October 2014 should be 0, because mobile traffic data is not available before that month.
The final data file should be named:
en-wikipedia_traffic_200712-201809.csv
Step 3: Analysis[edit]
For this assignment, the "analysis" will be fairly straightforward: you will visualize the dataset you have created as a time series graph.
Your visualization will track three traffic metrics: mobile traffic, desktop traffic, and all traffic (mobile + desktop).
In order to complete the analysis correctly and receive full credit, your graph will need to be the right scale to view the data; all units, axes, and values should be clearly labeled; and the graph should possess a key and a title. You must also generate a .png or .jpeg formatted image of your final graph.
You should graph the data in Python or R, in your notebook.
Step 4: Documentation[edit]
Follow best practices for documenting your project, as outlined in the Week 3 slides and in Chapter 2 "Assessing Reproducibility" and Chapter 3 "The Basic Reproducible Workflow Template" from The Practice of Reproducible Research.
Your documentation will be done in your Jupyter Notebook, a README file, and a LICENSE file.
At minimum, your Jupyter Notebook should:
- Provide a short, clear description of every step in the acquisition, processing, and analysis of your data in full Markdown sentences (not just inline comments or docstrings)
At minimum, you README file should
- Describe the goal of the project.
- List the license of the source data and a link to the Wikimedia Foundation REST API terms of use: https://www.mediawiki.org/wiki/REST_API#Terms_and_conditions
- Link to all relevant API documentation
- Describe the values of all fields in your final data file.
- List any known issues or special considerations with the data that would be useful for another researcher to know. For example, you should describe that data from the Pageview API excludes spiders/crawlers, while data from the Pagecounts API does not.
Submission instructions[edit]
- Create the data-512-a1 repository on GitHub w/ your code and data.
- Complete and add your README and LICENSE file.
- Submit the link to your GitHub repo to: https://canvas.uw.edu/courses/1244514/assignments/4376106
Required deliverables[edit]
A directory in your GitHub repository called data-512-a1 that contains the following files:
- 5 source data files in JSON format that follow the specified naming convention.
- 1 final data file in CSV format that follows the specified naming convention.
- 1 Jupyter notebook named hcds-a1-data-curation that contains all code as well as information necessary to understand each programming step.
- 1 README file in .txt or .md format that contains information to reproduce the analysis, including data descriptions, attributions and provenance information, and descriptions of all relevant resources and documentation (inside and outside the repo) and hyperlinks to those resources.
- 1 LICENSE file that contains an MIT LICENSE for your code.
- 1 .png or .jpeg image of your visualization.
Helpful tips[edit]
- Read all instructions carefully before you begin
- Read all API documentation carefully before you begin
- Experiment with queries in the sandbox of the technical documentation for each API to familiarize yourself with the schema and the data
- Ask questions on Slack if you're unsure about anything
- When documenting/describing your project, think: "If I found this GitHub repo, and wanted to fully reproduce the analysis, what information would I want? What information would I need?"
A2: Bias in data[edit]
The goal of this assignment is to explore the concept of bias through data on Wikipedia articles - specifically, articles on political figures from a variety of countries. For this assignment, you will combine a dataset of Wikipedia articles with a dataset of country populations, and use a machine learning service called ORES to estimate the quality of each article.
You are expected to perform an analysis of how the coverage of politicians on Wikipedia and the quality of articles about politicians varies between countries. Your analysis will consist of a series of tables that show:
- the countries with the greatest and least coverage of politicians on Wikipedia compared to their population.
- the countries with the highest and lowest proportion of high quality articles about politicians.
You are also expected to write a short reflection on the project, that describes how this assignment helps you understand the causes and consequences of bias on Wikipedia.
A repository with a README framework and examples of querying the ORES datastore in R and Python can be found here
Getting the article and population data[edit]
The first step is getting the data, which lives in several different places. The wikipedia dataset can be found on Figshare. Read through the documentation for this repository, then download and unzip it.
The population data is on Dropbox. Download this data as a CSV file (hint: look for the 'Microsoft Excel' icon in the upper right).
Getting article quality predictions[edit]
Now you need to get the predicted quality scores for each article in the Wikipedia dataset. For this step, we're using a Wikimedia API endpoint for a machine learning system called ORES ("Objective Revision Evaluation Service"). ORES estimates the quality of an article (at a particular point in time), and assigns a series of probabilities that the article is in one of 6 quality categories. The options are, from best to worst:
- FA - Featured article
- GA - Good article
- B - B-class article
- C - C-class article
- Start - Start-class article
- Stub - Stub-class article
For context, these quality classes are a sub-set of quality assessment categories developed by Wikipedia editors. If you're curious, you can read more about what these assessment classes mean on English Wikipedia. We will talk about what these categories mean, and how the ORES model predicts which category an article goes into, next week in class. For this assignment, you only need to know that these categories exist, and that ORES will assign one of these 6 categories to any article you send it.
The ORES API is configured fairly similarly to the pageviews API we used last assignment; documentation can be found here. It expects a revision ID, which is the third column in the Wikipedia dataset, and a model, which is "wp10". The sample iPython notebooks for this assignment provide examples of a correctly-structured API query that you can use to understand how to gather your data, and also to examine the query output.
In order to get article predictions for each article in the Wikipedia dataset, you will need to read page_data.csv into Python (or R), and then read through the dataset line by line, using the value of the last_edit column in the API query. If you're working in Python, the CSV module will help with this.
When you query the API, you will notice that ORES returns a prediction value that contains the name of one category, as well as probability values for each of the 6 quality categories. For this assignment, you only need to capture and use the value for prediction. We'll talk more about what the other values mean in class next week.
Combining the datasets[edit]
Some processing of the data will be necessary! In particular, you'll need to - after retrieving and including the ORES data for each article - merge the wikipedia data and population data together. Both have fields containing country names for just that purpose. After merging the data, you'll invariably run into entries which cannot be merged. Either the population dataset does not have an entry for the equivalent Wikipedia country, or vice versa. You will need to remove the rows that do not have matching data.
Consolidate the remaining data into a single CSV file which looks something like this:
Column |
---|
country |
article_name |
revision_id |
article_quality |
population |
Note: revision_id here is the same thing as last_edit, which you used to get scores from the ORES API.
Analysis[edit]
Your analysis will consist of calculating the proportion (as a percentage) of articles-per-population and high-quality articles for each country. By "high quality" articles, in this case we mean the number of articles about politicians in a given country that ORES predicted would be in either the "FA" (featured article) or "GA" (good article) classes.
Examples:
- if a country has a population of 10,000 people, and you found 10 articles about politicians from that country, then the percentage of articles-per-population would be .1%.
- if a country has 10 articles about politicians, and 2 of them are FA or GA class articles, then the percentage of high-quality articles would be 20%.
Tables[edit]
The tables should be pretty straightforward. Produce four tables that show:
- 10 highest-ranked countries in terms of number of politician articles as a proportion of country population
- 10 lowest-ranked countries in terms of number of politician articles as a proportion of country population
- 10 highest-ranked countries in terms of number of GA and FA-quality articles as a proportion of all articles about politicians from that country
- 10 lowest-ranked countries in terms of number of GA and FA-quality articles as a proportion of all articles about politicians from that country
Embed them in the iPython notebook.
Writeup[edit]
Write a few paragraphs, either in the README or in the notebook, reflecting on what you have learned, what you found, what (if anything) surprised you about your findings, and/or what theories you have about why any biases might exist (if you find they exist). You can also include any questions this assignment raised for you about bias, Wikipedia, or machine learning. Particular questions you might want to answer:
- What biases did you expect to find in the data, and why?
- What are the results?
- What theories do you have about why the results are what they are?
Submission instructions[edit]
- Complete your Notebook and datasets in Jupyter Hub.
- Create the data-512-a2 repository on GitHub w/ your code and data.
- Complete and add your README and LICENSE file.
- Submit the link to your GitHub repo to: https://canvas.uw.edu/courses/1244514/assignments/4376107
Required deliverables[edit]
A directory in your GitHub repository called data-512-a2 that contains the following files:
- 1 final data file in CSV format that follows the formatting conventions.
- 1 Jupyter notebook named hcds-a2-bias that contains all code as well as information necessary to understand each programming step, as well as your writeup (if you have not included it in the README) and the tables.
- 1 README file in .txt or .md format that contains information to reproduce the analysis, including data descriptions, attributions and provenance information, and descriptions of all relevant resources and documentation (inside and outside the repo) and hyperlinks to those resources, and your writeup (if you have not included it in the notebook). A prototype framework is included in the sample repository
- 1 LICENSE file that contains an MIT LICENSE for your code.
Helpful tips[edit]
- Read all instructions carefully before you begin
- Read all API documentation carefully before you begin
- Experiment with queries in the sandbox of the technical documentation for the API to familiarize yourself with the schema and the data
- Explore the data a bit before starting to be sure you understand how it is structured and what it contains
- Ask questions on Slack if you're unsure about anything. Please email Os to set up a meeting, or come to office hours, if you want to! This time is set aside specifically for you - it is not an imposition.
- When documenting/describing your project, think: "If I found this GitHub repo, and wanted to fully reproduce the analysis, what information would I want? What information would I need?"
A3: Crowdwork ethnography[edit]
For this assignment, you will go undercover as a member of the Amazon Mechanical Turk community. You will preview or perform Mechanical Turk tasks (called "HITs"), lurk in Turk worker discussion forums, and write an ethnographic account of your experience as a crowdworker, and how this experience changes your understanding of the phenomenon of crowdwork.
The full assignment description is available as a Google doc and as a PDF.
A4: Final project plan[edit]
For examples of datasets you may want to use for your final project, see HCDS_(Fall_2017)/Datasets.
For this assignment, you will write up a study plan for your final class project. The plan will cover a variety of details about your final project, including what data you will use, what you will do with the data (e.g. statistical analysis, train a model), what results you expect or intend, and most importantly, why your project is interesting or important (and to whom, besides yourself).
A5: Final project presentation[edit]
For this assignment, you will give an in-class presentation of your final project. The goal of this assignment is to demonstrate that you are able to effectively communicate your research questions, methods, conclusions, and implications to your target audience.
A6: Final project report[edit]
For this assignment, you will publish the complete code, data, and analysis of your final research project. The goal is to demonstrate that you can incorporate all of the human-centered design considerations you learned in this course and create research artifacts that are understandable, impactful, and reproducible.