There are no reviews yet. Be the first to send feedback to the community and the maintainers!
PGDDS-Capstone-Project
Credit Card Fraud Detection ProjectTimeSeries-Inventory-Forecasting
Time Series forecasting model for predicting the unitโs movement of the inventory in the warehouses and stores in order to do capacity planning and prepare for peak volume at the granularity level of week/channel/location.deploy-yolov3-aws
We deploy an object detection model on AWS using flask.deploy-docker-gesture-recognition
We aim to deploy gesture recognition model on docker with FlaskSVM-Email-Spam-Classifier-
Linear and Non-Linear SVM based Email Spam ClassifierVehicle-detection-tracking-and-classification
Vehicle detection, tracking and classification from video feedSimpleCreditCardAnomalyDetector
Primitive anomaly detection system for credit card transactions using statistical measureslinearRegressionCarPricePredictionAssignment
Data Science Project: To build a multiple linear regression model for the prediction of car prices.census_income_prediction
The case study is a traditional supervised binary classification problem based on the UCI Machine Learning Repository "adult" dataset.multipleLinearRegressionHousingCaseStudy
Data Science Project :To use the data to optimize the sale prices of the properties based on important factors such as area, bedrooms, parking, etc.chat-with-web-llm-app
Frog Bot - It is a conversational AI application built using Streamlit and LangChain technologies. It allows users to interact with an AI agent trained on website content to provide informative responses to user queries.MIMIC_EHR_Predictor
This is implementation of my Masters thesis work and aims at predicting the patient mortality from the MIMIC-III v1.4 DatabaseEcommerce-Recommendation-System-
Recommendation System for an Online Beer CompanyRFM_CLTV_Customer_Analysis
Goal i s here to create RFM customer segments and find CLTV for existing customersner-lstm-iob2
This project leverages LSTM neural networks to perform NER on the IOB2 dataset.Love Open Source and this site? Check out how you can help us