Sort by
Refine Your Search
-
, and uncertainty-aware algorithms for autonomous driving systems. The position focuses on developing robust decision-making, planning, and control methods that address uncertainty arising from perception
-
place technologies and to develop digital twin algorithms to assist clinicians in developing treatment plans for patients with chronic diseases. Analyzes complex sensor data, works with a
-
impairment capturable with digital interfaces. Experience with agentic large language models. Experience in artificial intelligence to develop the algorithms for digital twins. Experience with both qualitative
-
algorithms (convex/nonconvex, stochastic/robust, MPC) for real-time dispatch, frequency regulation, and DER coordination. Integrate data-driven and physics-informed approaches for state estimation, forecasting
-
Job Title Postdoctoral Research Associate Agency Texas A&M University Health Science Center Department Cell Biology and Genetics Proposed Minimum Salary Commensurate Job Location College Station
-
or cell biology. One year of postdoctoral experience is preferable. Training in molecular biology, genetics or biochemistry. Responsibilities: Research - Aid in the exploration of the following: Develop
-
skills Excellent scientific writing ability and good communication skills Knowledge of scientific programming language(s), computer simulation, and quantum computing algorithms All tasks and job
-
network excitability following traumatic brain injury using a variety of techniques, including in vivo whole-cell recording and two-photon microscopy, brain slice physiology, and genetic manipulation
-
behavioral experiments, executing genetic manipulations, and generating novel fly lines. The ideal candidate will have experience mentoring students and collaborating within research teams, with additional
-
structural biology will be well-suited for this role. You’ll apply your specialized skills using advanced genetic mouse models and techniques like confocal imaging, brain-slice electrophysiology, in vivo