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Dono

Made by Rajiv Anisetti, Sanketh Hegde, Raymond Kwan, Kareem Nosseir, and Ritesh Pendekanti. Previously named Donation Station

Awarded Second Place at Hack-A-Wish 2019

About

Donation Station is an online platform built at Hack-A-Wish 2019 that enables the Make-A-Wish foundation to quickly and efficiently identify potential donors and volunteers.

How it works

Donation Station uses a variety of different machine learning classification models to determine which potential donors and volunteers are most likely to donate based on previously gathered information, including factors such as age, occupation, gender, marital status, and more. The models used include the following:

  • Neural networks
  • Logistic regression
  • Random Forest classifier
  • K-Nearest-Neighbors (KNN)

The default model used is the Random Forest classifier, as we found that with our mock data it tended to be the most accurate. However, the user has the option to switch between all 4 models and determine which is best for their dataset based on the accuracy we display.

How to run

Follow the steps below to get Donation Station up and running!

Front-end

npm install

npm start

Back-end

python3 ./app.py

Screenshots