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    12
  • Rank 1,597,372 (Top 32 %)
  • Language
    Jupyter Notebook
  • Created almost 6 years ago
  • Updated almost 6 years ago

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Repository Details

A machine learning project trying to predict whether or not a Kickstarter campaign succeeds. Final report in PDF as well. Includes original dataset in csv and Jupyter Notebook

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