Students will build a comprehensive workflow that automates molecular dynamics simulations for drug discovery applications. The project involves simulating interactions between proteins and potential drug molecules, calculating interaction features from these simulations, and implementing machine learning models to rank design ideas by predicted binding affinity.
Students will work with real pharmaceutical datasets and validate their methods against experimental results. The goal is to create an accessible computational tool that can accelerate the early stages of drug development by identifying promising compounds through simulation rather than expensive laboratory experiments.
- Fall mentor time: Thursday: 11:30 AM Eastern
- Fall lab time: Tuesday: 11:30 AM Eastern
- Spring mentor time: Thursday: 11:30 AM Eastern
- Spring lab time: Tuesday: 11:30 AM Eastern
- Industry: Chemicals
- Tools: git, github, python
- Topics: biology, chemistry, machine learning, medicine, pharmacy, statistical modeling, visualizations
- Requirements:
Participation in this project is open to students who are eligible to receive export-controlled technical information under applicable U.S. regulations, without requiring a license. Verification of eligibility may be requested prior to or during the project.