Logo

dev-resources.site

for different kinds of informations.

πŸš€ HackPrinceton 2024: Building the Urgent Care Coordinator App

Published at
11/11/2024
Categories
hackathon
hackprinceton
mlh
Author
poetryofcode
Categories
3 categories in total
hackathon
open
hackprinceton
open
mlh
open
Author
12 person written this
poetryofcode
open
πŸš€ HackPrinceton 2024: Building the Urgent Care Coordinator App

Last weekend, I had the opportunity to participate in HackPrinceton alongside my talented teammates Maria Pasaylo, Shuti, and Samuel. Urgent Care Coordinator is a smart tool designed to help users locate the nearest urgent care center with the shortest wait time, aiming to streamline patient distribution and improve healthcare accessibility.

❗ Problem

Urgent care centers often face unpredictable patient inflow, leading to prolonged wait times and uneven distribution of patients. This inefficiency can cause delays in care and place strain on healthcare staff, impacting the quality of service.

πŸ₯ Solution

Our solution uses machine learning to predict patient demand at various urgent care locations, allowing for the redistribution of incoming patients to centers with lower wait times. By analyzing real-time data and predicting patient influx, our tool can direct users to the best urgent care center based on current and anticipated demand, enhancing patient experience and operational efficiency.

πŸ’» Features

Nearest Urgent Care Finder: Finds the nearest urgent care facilities to the user’s location.

Real-Time Wait Time Estimation: Provides estimated wait times based on real-time patient data.

Smart Redistribution: Suggests alternate urgent care locations with shorter wait times to balance patient load.

Demand Prediction: Uses machine learning to forecast patient influx, allowing for dynamic adjustment of recommendations.

Urgent Care Info Cards: Displays urgent care center information on interactive cards, including name, address, and estimated wait time.

Machine Learning Model for Wait Times: Implements a predictive model to estimate wait times.

🎯 Target Market:

Individuals seeking efficient access to urgent care facilities.

🧠 How It Works

Data Collection: The system gathers real-time data on patient count, wait times, and peak hours at nearby urgent care centers.

Machine Learning Prediction Model: A machine learning model analyzes current data and historical trends to predict patient influx and wait times.

Recommendation Engine: The tool recommends urgent care centers with minimal wait times and optimal capacity.

User Notification: Users receive instant recommendations via an intuitive interface with information cards.

πŸ’Ύ Tech Stack

Frontend: React for the user interface.

Backend: Node.js for the server and API calls.

Machine Learning: Python with Scikit-Learn for demand and wait time prediction.

APIs: Google Maps API for location-based services and Maps integration.

πŸ›΄ Exploring Princeton

Image description

Recently, I watched Oppenheimer, and there’s a scene featuring Einstein so I was on the lookout for the spot. In the process, I was captivated by Princeton's stunning architecture and history like the father of computer science, Alan Turing earned his Ph.D here, which made the experience even more inspiring.

Image description

https://github.com/craftingweb/HackPrinceton

mlh Article's
30 articles in total
Favicon
πŸš€ HackPrinceton 2024: Building the Urgent Care Coordinator App
Favicon
My Experience at Boston Hackathon: AstroTunes 🎢
Favicon
New Journey begins with MLH Fellowship 2024 Fall B
Favicon
Sharing MLH Survey (chances to win a brand new laptop)!
Favicon
All-In-Africa: (Hackathon)
Favicon
Title: Techack Chronicles: A Day of Innovation, Connections, and Code
Favicon
Stepping into the World of Machine Learning
Favicon
Unveiling Innovation: A Trail of Contributions to Facebook Glean πŸš€πŸš€
Favicon
My Journey at Global Hack Week: A First-Timer’s Perspective
Favicon
Ultimate Guide to Unleashing Your Inner Creativity: Transforming Ideas into Masterpieces
Favicon
Unlocking Seamless User Authentication with Appwrite: A Comprehensive Guide
Favicon
Matplotlib
Favicon
My Major League Hacking (MLH) Hackcon 2022 Experience
Favicon
My MLH (Major League Hacking) Top 50 Experience + Journey
Favicon
How the Y2K Problem Led to Growth of NLP Development In the World
Favicon
When try to apply to MLH Fellow ...
Favicon
My first MLH hackathon experience!
Favicon
Hacking at MLH HackCon
Favicon
Unused to Reuse - SustainHacks
Favicon
AI And ML in E-Commerce And Retail: Trends And Tendencies in 2022
Favicon
Applying to MLH Fellowship - Tips & Tricks
Favicon
Machine learning in healthcare got popular
Favicon
A week into Local Hack Day: Learn 2021
Favicon
How I cracked MLH Fellowship in my first attempt: Journey & Tips
Favicon
MLH Fellowship – The Amazing Experience of Becoming An MLH Fellow
Favicon
CTFs are Fun
Favicon
Plans for the 2022 Hackathon Season
Favicon
Plans for Major League Hacking Hackathon 2022 Season
Favicon
2022 Hackathon Season Plans
Favicon
MLH : Share. What a time for virtual hackathons!

Featured ones: