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  1. Fashion_MNIST_Classification_CNN Fashion_MNIST_Classification_CNN Public

    This project is about developing a Deep Learning Model based on Fashion-MNIST dataset using Convolutional Neural Networks to classify images according to their type.

    Jupyter Notebook 1

  2. Shoes_Classification_Using_CNN Shoes_Classification_Using_CNN Public

    Using Convolutional Neural Network for shoes classification. The classifier model is trained on images of three categories of Shoes namely : Boots, Sandals and Slippers and can classify each catego…

    Jupyter Notebook 1 1

  3. Crop_Production_Prediction Crop_Production_Prediction Public

    A Jupyter python notrbook with EDA, Visualisations of Crop Production of India and Production Predictor model for a specific crop.

    Jupyter Notebook

  4. Sentiment_Analysis_Using_RNN Sentiment_Analysis_Using_RNN Public

    This repository contains google colab notebook developed over visualization, data preprocessing and Recurrent Neural Network model building to predict the sentiment of a tweet.

    Jupyter Notebook 1

  5. Crops_Image_Classifcation Crops_Image_Classifcation Public

    We will develop a a Crops Image Classifier based on Artificial Neural Networks and Convolutional Neural Networks, compare them and select the best and test the classifier.

    Jupyter Notebook

  6. face_recognition_openCV face_recognition_openCV Public

    A python code developed using openCV to store multiple users face data and detect them with user defined confidence threshold.

    Jupyter Notebook