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  1. Amazon-Computer-Project Amazon-Computer-Project Public

    This project aims to aid those looking to purchase a gaming computer from Amazon make a more informed decision by estimating the price of a computer based on brand, processor type, RAM, and other a…

    Jupyter Notebook

  2. Fetal-Health-Classifier-Project Fetal-Health-Classifier-Project Public

    This project aims to predict the health condition of fetal babies being normal, suspect, or pathological (potential for having a disease or some unhealthy condition).

    Jupyter Notebook 1 1

  3. Steam-Elden-Ring-Reviews-Project Steam-Elden-Ring-Reviews-Project Public

    NLP project focused on sentiment analysis and topic modeling of Elden Ring reviews from Steam which also utilizes deep learning for sentiment classification.

    Jupyter Notebook 1

  4. CarvanaCarsProject CarvanaCarsProject Public

    This project uses used car data scraped from Carvana's website of cars from across the United States in attempt to predict the price of cars sold by Carvana.

    Jupyter Notebook

  5. CryptoTimeSeriesProject CryptoTimeSeriesProject Public

    This project comprises of automating creating an LSTM as well choosing certain tickers from Yahoo! Finance into a Streamlit app to display results for Auto ARIMA and LSTM models for making predicti…

    Jupyter Notebook

  6. Airline-Passenger-Satisfaction-Clustering-Classification Airline-Passenger-Satisfaction-Clustering-Classification Public

    Generated clusters as well as a classifier model using data from airline passenger reviews to identify market segments as well as predicting flight satisfaction experience.

    Jupyter Notebook