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    • Home
    • What is in this curriculum?
    • DSSG Locations
      • What is in this manual
      • Goals of the Fellowship
      • The DSSG Environment
      • Summer overview
      • Code of conduct
      • What is in this curriculum
      • Sample curriculum for Summer 2019
        • Ethics, Bias, Fairness
          • Intro
          • Presentations
          • Writing reports
          • Visualization
          • User interface
          • Intro
          • Good repos, good code
          • Legible, good code
          • Writing tests
          • Reproducible software
          • Pimp my dotfiles!
        • Domain Understanding
        • Scoping overview
        • Project workflow
        • Data Maturity evaluation
      • Project deliverables
        • Software you need
        • Software setup session
        • Command line intro
          • What is it?
          • Basic tutorial
          • Group tutorial
          • Advanced notes
          • Git Workflow
          • Git branching
          • Basic Python
          • Python, Pandas and Viz
          • Python and SQL
          • SQL Basics
          • Postgres Tips and Pitfalls
        • Good repos
        • Technical workflow
        • Intro
        • Data security
          • APIs and scrapping
          • Working with images
          • Working with text
          • Flat files
          • ETL - cleaning, loading
            • Why a DB?
            • Designing a DB
            • Getting data in
            • Getting data out
            • Analyzing data (SQL)
          • Other types of DBs
          • Record linkage
        • Introduction to EDA
        • Visualization
        • SQL
        • Python/Pandas
        • GIS
        • Text
        • Network
        • Tableau
        • Data stories concept and code
        • ML as a data exploration tool (Clustering)
        • Intro
        • Machine Learning
        • Causal inference methods
        • Social science methods
        • Other statistical analysis methods
        • OR/optimization methods
      • Problem Templates in Social Good and Public Policy
          • ML pipeline I
          • ML problem formulation
          • ML Checklist
          • Templates of policy problems
          • One or many
          • Implications of a label
          • Feature engineering
          • Workshop on feature engineering
          • Case studies
          • Process and goal
          • K-fold cross-validation
          • Temporal cross-validation
          • Field trials
          • Overview
          • Examples
          • Machine learning methods
          • Practical tips on how to use them, parameters, etc.
          • Audition
            • Performance
            • Stability
            • Interpretability
            • Bias
          • Model understanding
          • Feature importance
          • Comparing different models
          • Comparing lists
          • Error analysis
          • Bias analysis
          • Experiment design
          • Case studies
        • How to deploy
        • Monitor
        • Update
        • Advanced pipelines
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