We are seeking a Postdoctoral Research Associate who will focus on AI-enabled plant ecophysiology to improve mechanistic understanding and predictions of ecosystem responses to environmental change. This position resides in the Ecosystem Processes Group in the Environmental Sciences Division at Oak Ridge National Laboratory (ORNL). The selected candidate will work with Dr. Jeffrey Warren and Dr. Lianhong Gu and collaborate with researchers in the ORNL Terrestrial Ecosystem Science (TES) Scientific Focus Area (SFA) to integrate experimental measurements and trait databases to assess ecosystem response to environmental forcing. The primary research focus is AI-forward, experiment-driven. This position encourages leveraging AI/ML methods to assess plant physiological responses to current or imposed environmental conditions. Research may leverage laboratory, growth chamber and field experimental data, and/or new measurements to quantify molecular to ecosystem scale responses to warming, drought, and elevated CO2 (e.g., gas exchange, fluorescence, hydraulics, respiration, water potential, thermal tolerance); trait synthesis at scale (e.g., using trait databases TRY, FRED, LeafWeb, Sapfluxnet, PSInet) to translate trait variation into model parameter priors and functional constraints, and to explore parameter relationships with environmental conditions; and hybrid modeling that combines mechanistic ecophysiology with AI, such as physics-informed machine learning and neural networks to investigate plant physiological / abiotic relationships, Bayesian statistics and neural and Gaussian-process emulators for accelerating parameter estimation and uncertainty propagation, and selective cross-scale evaluation using complementary ecosystem observations (e.g., experiments) to test how AI-informed analyses can contribute to ecosystem-scale simulations.
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Job Type
Full-time
Career Level
Entry Level
Education Level
Ph.D. or professional degree