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  • Verizon India
  • Chennai

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  1. hangman hangman Public

    Hangman game where you need to guess the word to save the guy

    JavaScript 1

  2. Sentiment-Analysis-using-RNN Sentiment-Analysis-using-RNN Public

    Since we are using a time series data we are going to implement sentiment analysis using Recurrent Neural Network.

    Jupyter Notebook 1

  3. Customer-churn-analysis-for-bank-customer-data Customer-churn-analysis-for-bank-customer-data Public

    This project is used to predict whether a customer will stay or leave a bank using Artificial Neural Networks ie MLP. Here we are using a kaggle dataset to get the details about customer leaving or…

    Jupyter Notebook

  4. Handwriting-Classification-Problem Handwriting-Classification-Problem Public

    Handwriting classification is a major NLP problem that can be used for object detection and for converting a handwritten document to a digital word document. Handwriting classification is the first…

    Jupyter Notebook

  5. Kinematic-Analysis-of-Hyper-Redundant-Robotic-Manipulator Kinematic-Analysis-of-Hyper-Redundant-Robotic-Manipulator Public

    Inverse Kinematic Simulation for a hyper redundant robotic manipulator.

    Python 1

  6. Mammogram-classification-as-Benign-or-Malignant Mammogram-classification-as-Benign-or-Malignant Public

    Classification of mammogram data as benign or malignant. We are going to use diffrent machine learning techniques and measure the accuracy using K-fold cross validation with k =10

    Jupyter Notebook