Assistant Professor of Physiology (Computational/AI Focus)
The Department of Physiology invites applications for a full-time, Assistant Professor position. We seek a dynamic, innovative researcher utilizing Large Language Models (LLMs), Generative AI, or advanced natural language processing (NLP) to advance mechanistic understanding in Neuroscience, or Gastrointestinal/Endocrinology, or Reproduction, or Respiratory Physiology. The successful candidate will establish an externally funded research program, contribute to high-quality teaching, and leverage computational approaches to revolutionize physiological research.
- Research: Establish and maintain a vigorous, independently funded research program focusing on the application of Large Language Models (LLMs) to physiological data, such as mining literature for mechanistic insights, modeling system interactions, or developing AI-driven diagnostic/predictive tools in their specialized field (Neuro/GI/Repro/Resp).
- Teaching: Deliver high-quality instruction in physiology courses to graduate and professional (medical/dental) students. Develop curriculum incorporating computational physiology and AI literacy.
- Mentorship: Mentor graduate students, postdoctoral fellows, and undergraduate trainees in both traditional lab techniques and computational methodology.
- Service: Participate in departmental, university, and professional society committees. Collaborate with clinical departments to foster translational AI initiatives.
- Ph.D. in Physiology, or Neuroscience, or Gastrointestinal/Endocrinology, or Reproduction, or Respiratory Physiology or Computational Biology, Data Science, or a closely related discipline.
- Demonstrated expertise in applying Large Language Models (LLMs), AI, or machine learning to biomedical datasets.
- A strong record of research publications in high-impact physiology or computational journals.
- Evidence of, or strong potential to obtain, extramural funding.
- Excellent written and verbal communication skills.
- Postdoctoral training in a physiology-related field.
- Experience in bridging traditional bench-top physiology with AI/computational modeling.
- Prior teaching experience in medical or graduate-level physiology is preferred.
- Cover Letter
- Curriculum Vitae
- Research Statement (including future funding plans)
- Teaching Statement
- List of three professional references
Please upload CV in ENGLISH ONLY