Community Data Science Workshops (Spring 2014)/Saturday May 31st projects: Difference between revisions
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There will be three options: |
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In the afternoon sessions, there will once again be three options: |
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* '''Option 2:''' [[Community_Data_Science_Workshops/Saturday_May_31st_Matplotlib_Session|Data visualization with Matplotlib]] — In this session we will focus on making beautiful and nuanced plots using a powerful graphing library within Python. We'll be using a dataset with examples from analysis using the gender of subjects of 180,000 biography articles on Wikipedia |
* '''Option 2:''' [[Community_Data_Science_Workshops/Saturday_May_31st_Matplotlib_Session|Data visualization with Matplotlib]] — In this session we will focus on making beautiful and nuanced plots using a powerful graphing library within Python. We'll be using a dataset with examples from analysis using the gender of subjects of 180,000 biography articles on Wikipedia |
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* '''Option 3:''' ''Self-directed project room |
* '''Option 3:''' '''Self-directed project room''' — If you have an idea for a project to build or analyze a dataset and you think you can work 70-80% indepedently on it, this is the room for you. Mentors will be around to help you as you get stuck and to give you advice! |
Latest revision as of 22:08, 15 March 2015
In the afternoon sessions, there will once again be three options:
- Option 1: More advanced data munging and visualization using Python and Google Docs — This talk will continue directly from lecture and we will use the same dataset of the metadata from all the Wikipedia articles about Harry Potter.
- Option 2: Data visualization with Matplotlib — In this session we will focus on making beautiful and nuanced plots using a powerful graphing library within Python. We'll be using a dataset with examples from analysis using the gender of subjects of 180,000 biography articles on Wikipedia
- Option 3: Self-directed project room — If you have an idea for a project to build or analyze a dataset and you think you can work 70-80% indepedently on it, this is the room for you. Mentors will be around to help you as you get stuck and to give you advice!