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  1. satyatumati/Collaborative-Filtering satyatumati/Collaborative-Filtering Public

    The increasing importance of the web as a medium for electronic and business transactions has served as a driving force for the development of recommender systems technology. An important catalyst …

    Jupyter Notebook 1 1

  2. satyatumati/RegressionAnalysis satyatumati/RegressionAnalysis Public

    Regression analysis is a statistical procedure for estimating the relationship between a target variable and a set of potentially relevant variables. In this project, we explore basic regression mo…

    Jupyter Notebook

  3. satyatumati/TwitterPopularityPrediction satyatumati/TwitterPopularityPrediction Public

    Twitter, with its public discussion model, is a good platform to perform such analysis. With Twitter’s topic structure in mind, the problem can be stated as: knowing current (and previous) tweet a…

    Jupyter Notebook

  4. CS205-Activity-Monitoring CS205-Activity-Monitoring Public

    In this project, we use accelerometer and gyroscope sensor information obtained via a smartwatch and build a model that successfully determines the type of user activity. We have considered four di…

    Jupyter Notebook

  5. Twitter-Sentiment-Analysis Twitter-Sentiment-Analysis Public

    Sentiment analysis of tweets using TF-IDF vectors and Naive Bayes Classifier

    Python 1

  6. Music-Genre-Classification Music-Genre-Classification Public

    Classifying 1000 music samples into 10 genres using traditional machine learning classifiers and deep learning techniques such as CNNs and CRNNs.

    Jupyter Notebook