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DAT4 Student Repository

Student work for General Assembly's Data Science course in Washington, DC (12/15/14 - 3/16/15).

View course materials in the main course repository.

Guidelines for contributing

  • Use valid Markdown in your Markdown files
  • When naming files, never use spaces and generally avoid capital letters
  • Don't add large files unless absolutely necessary (e.g., resize your images to a reasonable size)

Initial setup

  1. Fork the primary DAT4-students repo on GitHub
  2. git clone URL_of_your_fork: copy your fork to your local computer (automatically defines your fork as the remote origin)
  3. cd DAT4-students: change into the DAT4-students subdirectory that was just created
  4. git remote add upstream URL_of_primary_repo: define the primary DAT4-students repo as the remote upstream

Recipe for submitting homework

  1. git pull upstream master: fetch changes from the master branch of upstream, and merge those changes into your master branch
  2. Copy your homework file(s) to your folder
  3. git add . or git add name_of_file: stage file modifications, additions, and deletions
  4. git status: check that you staged what you intended to stage
  5. git commit -m "message about commit": commit any changes that have been staged
  6. git push origin master: push your changes to the origin
  7. On GitHub, create a pull request: ask the upstream to merge your changes into its master branch

Other useful commands

  • git status: view the status of files in your repo (untracked, modified, staged)
  • git log: view the detailed commit history (type q to quit)
    • git log -1: only show the last commit (you can use any number)
    • git log --oneline: show each commit on a single line
  • git remote -v: view your remotes
  • Detailed reference guide
  • Quick reference guide

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Student work for General Assembly's Data Science course in Washington, DC

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  • Jupyter Notebook 72.7%
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