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Spam-Classifier-using-Naive-Bayes
The project main goal is to classify an email as spam or not using Naive Bayes Algorithm.Finding-Lanes-Advanced-Driver-Assistance-System-ADAS
Lane Detection System using OpenCV and PythonQuantizationInDeepLearning
This project is about using the Quantization-Aware Training method to train a keras model for Edge DevicesAvocado-Prices-Prediction
This project is about to predict the price of avocado sold in the US using historical dataset and Facebook Prophet(open source software released by Facebook’s Core Data Science team)MarketBasketOptimisation
Using Apriori Algorithm for Market Basket OptimisationCredit-Card-Frauid-Detection-using-Deep-Learning
The objective of this project is to identify the fraudulent transactions happening in E-Commerce industry using deep learning.Yelp-Review-Analysis-using-Natural-Language-Processing-NLP
In this project, Natural Language Processing (NLP) strategies will be used to analyze Yelp reviews dataObject_Tracking_APIs_Python
Generative-Adversial-Networks-GANs
Image-Segmentation-Using-UNET
Nuclei Image Segmentation using UNETDeep-Learning-on-ARM-Processors
Implementing Neural Networks on ARM ProcessorsFake-News-Detection
In this project, a TFID Passive aggressive classifier is designed to detect fake news.Traffic-Sign-Classification-Using-LeNet
In this project, a Deep Network known as LeNet will be used for traffic sign images classification.Breast-Cancer-Classification
This project is to classify breast cancer using SVM-Classifier and further improving the model using GridSearchPredict-Crime-Rate-in-Chicago
Predicting the Crime Rate in Chicago using Facebook's Open Source Software "Prophet".Fashion-Class-Classification
In this project, we use CNN to classify Fashion MNIST data into different categories.Movie-Recommender-System
In this project, a movie recommendation system is built using Item-based Collaborative Filter.Love Open Source and this site? Check out how you can help us