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  1. Product-Price-Prediction-Advanced-Machine-Learning Product-Price-Prediction-Advanced-Machine-Learning Public

    Using just the ingredient makeup and brand for a skincare product, can we predict price? Yes. Within $13. Also a streamlit app to dupe your favorite products.

    Jupyter Notebook 1

  2. Neural-Networks-Image-Classification-Pokemon Neural-Networks-Image-Classification-Pokemon Public

    A Pokédex can tell you everything about a Pokémon just by scanning it. Can a neural network do the same? Using convolutional neural networks to classify Pokémon by type.

    Jupyter Notebook 2

  3. Book-Recommendation-Engine Book-Recommendation-Engine Public

    You just finished a book! Now what? Using KNN and NLP, I can give you the next five books on your reading list based on the one you just finished. 

    Jupyter Notebook 1

  4. Churn-Rate-Machine-Learning Churn-Rate-Machine-Learning Public

    How can we anticipate which customers will take their business elsewhere? Finding key predictors of customer churn via machine learning.

    Jupyter Notebook 1

  5. Regression-Analysis-Real-Estate Regression-Analysis-Real-Estate Public

    Looking at real estate data from King County, WA, determine, through regression analysis, the best zip codes for an average family to purchase in. Made in partnership with @emgerber88

    Jupyter Notebook 1

  6. Movie-Release-EDA Movie-Release-EDA Public

    Advise Microsoft on the kinds of films it should invest in making to break into a saturated market using data analysis.

    Jupyter Notebook 2