Farag, MohamedMarcelin, JoshHanumaiah, AdiLau, AntonioHe, KevinKwon, Eugene2023-12-102023-12-10https://hdl.handle.net/10919/117169Across Virginia Tech’s campus, finding parking is consistently a source of frustration for students and faculty. During peak hours, locating free parking spots becomes a challenging task; leading to significant delays and increased traffic around campus. Leveraging modern data-driven technologies such as Smart City infrastructure and Intelligent Transportation, we can alleviate some of the school’s congestion and enhance the parking experience for Virginia Tech residents. The proposed solution is a web app that users can integrate into their daily commute. With the help of live data, the app will give real-time parking recommendations as well various other helpful insights. It will analyze the live data at each of the garages, to predict the occupancy of the garages at a given time of arrival. Machine learning will allow us to estimate the occupancy of each of the garages a given time into the future, depending on the distance to each garage, and provide a recommendation for which garage to target. The application will also allow for more effective collection of data for parking services and could eventually take into account more factors such as schedules and live traffic.en-USAttribution 4.0 InternationalParkingMachine LearningGaragePredictionParking PredictionParking Spaces Occupancy PredictionParking Garages Occupancy PredictionReport