About this job
Senior Scientist, Machine Learning and Virtual Screening
Schrödinger, a technology leader specializing in software solutions for life science research and development, is seeking a computational scientist with outstanding skills in empirical scoring function development, parameterization and validation. The ideal candidate is a scientist experienced in the application, development, and refinement of methods to rapidly predict protein-ligand complex geometries and ligand activities. The candidate should also have a demonstrated ability to adapt modern machine learning methods to virtual screening applications. The candidate should also work well in a collaborative environment and be eager to adopt good software engineering practices.
Benefits include medical, dental, 401(k), flexible spending account, vacation, tuition reimbursement, and a flexible work schedule.
Skills & requirements
Required qualifications include:
- Ph.D. in computational chemistry, chemical physics, or related fields
- Unix/Linux, Fortran/C/C++, and Python experience
- Peer-reviewed publications in computational chemistry and/or chemical physics
- Experience using modern machine learning methods including Random Forest, Support Vector Machines, and/or Deep Learning
- Experience developing empirical scoring functions for predicting protein-ligand complex geometries and binding affinities
- Excellent communication skills, both written and verbal
Life at Schrödinger
Schrödinger is a leader in computational chemistry, providing software solutions and services for life sciences and materials research.
Schrödinger is an equal opportunity employer.
- Flexible Spending Account
- 3+ Weeks Vacation
- Tuition Reimbursement