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  1. weightedClustSuite weightedClustSuite Public

    PUBLISHED -R- Package titled : weightedClustSuite . Check out the Instruction PDF! Package for Easy Performance of Unsupervised Machine Learning Density Clustering & Validation when given unique ca…

    R 2

  2. Deep-Learning-to-Estimate-Forest-Tree-Density Deep-Learning-to-Estimate-Forest-Tree-Density Public

    I am personally developing a Deep Learning Classifier to estimate Tree Forest Density from Drone Analysis [Python, MATLAB]. Neural Net is based on Perspective Crowd Counting Deep Learning Architect…

    Python 4 1

  3. Bladder-Cancer-Classification-using-ML-and-Computer-Vision-Research Bladder-Cancer-Classification-using-ML-and-Computer-Vision-Research Public

    I worked as an ML & Computer Vision Research Assistant for the Computer-Aided Diagnosis Lab of Michigan Medicine [C++, C, Weka, MS Excel]. My work Findings resulted as Primary Author in two Publica…

    1

  4. Contamination-Data-Heatmap-with-Interactive-Web-Dashboard Contamination-Data-Heatmap-with-Interactive-Web-Dashboard Public

    constructed a heatmap visualization for consumer use of contamination levels in Michigan counties analyzed from 400,000+ publicly available unstructured EPA datapoints [Python, HTML]. Currently wo…

    HTML 1

  5. Model-Country-Happiness-Rank-with-ML-Analytics Model-Country-Happiness-Rank-with-ML-Analytics Public

    I used Machine Learning regression and clustering analysis to predict a countries world happiness ranking from geographic/ political/ structural data as opposed to demographic data [R, Python]

    Python 1