Spatio-temporal data prediction using GAN
In this project, we aim to develop GAN based models to predict spatio-temporal evolution using open human mobility datasets – SafeGraph (https://www.safegraph.com/).
This is an UNPAID research project.
Faculty Advisor
- Professor: Sharon Di
- Center/Lab: CEEM
- Location: Mudd 630
- autonomous driving, deep learning in transportation
Project Timeline
- Earliest starting date: 9/1/2022
- End date: 8/30/2023
- Number of hours per week of research expected during Fall 2022: ~20
Candidate requirements
- Skill sets:
M.S. are welcome to register my research credits during the semesters and summer. The student involved in this project will develop GAN based models that can predict. spatio-temporal evolution of human mobility. Students with coding skills and past experience in analyzing spatio-temporal data and training GAN models are preferred. Skill requirements are:
- Familiar with Python. Generating figures, graphs, tables, or statistical models to present results with python.
- Familiar with GAN and its variant models.
- Having past experience in doing research and demonstrating independent research capabilities.
- Student eligibility:
freshman,sophomore,junior,senior, master’s - International students on F1 or J1 visa: NOT eligible
- Academic Credit Possible: Yes