Rahul Kejriwal's Projects
It's a SECRET!
Exploring features that help identify if a video is clickbait or not.
Scraped data of videos on YouTube and built a predictive model using sklearn - Machine Learing! - Currently at an accuracy of 83.77%
A project to generate predictions for Penn State Food Services to help them predict the incoming number of customers in certain locations.
Penn State Image Classifier Capstone Project:
GitHub Practice for STAT 184
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Geico
Basic implementation of Flask and React with MySQL.
Fantasy App for Indian Premier League. Still a work in progress.
Implementation of Jaya, Particle Swarm Optimization and Teaching Learning Based Optimization on a mechanical engineering problem where we need to optimize surface roughness.
Basic application which uses leaflet js library and Esri's arcGIS library. Created to test Leaflet's performance with ArcGIS on a large scale application.
Comparing MCMC vs SMC performance on different problems
A collection of New Grad full time roles in SWE, Quant, and PM.
Just a fun project to create a virtualized list using react-window with some sorting and filtering abilities.
A course information management system prototype
Testing OpenLayers to see how it works with ArcGIS and handles huge amount of points to see if it is suitable for a large scale application
Integrating OpenLayers with Vue. Created a basic navbar using Vue on OpenStreetMap as the base layer.
My submission for the Sales prediction challenge on Kaggle.
Classification into different product groups using a dataset obtained from CMPSC 448 with XGBoost
Implementing a ResNet model on the cifar dataset from PyTorch using Google Colaboaratory
Training my ResNet model that I built for CIFAR-100 on kaokore dataset. Achieved 88% status classification testing accuracy.
Planning to build on this resume builder for Vandra.
Pure React rich text WYSIWYG editor based on draft-js.
Training a model on a very limited dataset to classify data obtained from Reddit posts into different topics and testing it on a large dataset.
Keeping things interesting