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Postdoctoral Scholar - AI in Earth and Environmental Sciences
Job in
Syracuse, Onondaga County, New York, 13201, USA
Listed on 2026-06-07
Listing for:
Syracuse University
Full Time
position Listed on 2026-06-07
Job specializations:
-
Science
Data Scientist, Geology / Geoscience
Job Description & How to Apply Below
The successful candidate will contribute to two complementary research directions. One direction uses AI/ML, data science, and geologic/environmental datasets to assess energy and environmental systems, including oil and gas well condition, characterization, and integrity-related questions. The second direction focuses on characterizing global water and elemental cycles, with emphasis on terrestrial and catchment systems. Together, these projects will use large geochemical, hydrologic, geospatial, regulatory, and environmental datasets to advance predictive, interpretable, and transferable approaches for Earth and environmental sciences.
A key intellectual theme of the position is the development and application of AI/ML and foundation-model approaches for complex Earth and environmental systems, including subsurface energy infrastructure, riverine hydrogeochemistry, watershed elemental cycles, water quality, terrestrial water and solute fluxes, and prediction across watershed and river-network scales.
This position is part of a bargaining unit and is represented by the union SEIU, Local 200
United.
Qualifications
* Ph.D. in geoscience, hydrology, geochemistry, environmental science, civil/environmental engineering, data science, computational geoscience, Earth system science, or a closely related field by the anticipated start date.
* Demonstrated experience in artificial intelligence, machine learning, environmental data science, statistical modeling, or related quantitative methods.
* Strong quantitative, programming, and data analysis skills.
* Ability to work with complex environmental, geospatial, hydrologic, geochemical, or Earth system datasets.
* Ability to develop reproducible computational workflows.
* Evidence of scientific communication through publications, presentations, reports, software, datasets, or related scholarly products.
* Ability to work both independently and collaboratively in an interdisciplinary research environment.
Job Specific Qualifications
Preferred qualifications include experience or interest in one or more of the following:
* AI/ML, statistical modeling, or data science applications in energy and environmental systems.
* Oil and gas well datasets, well characterization, well integrity assessment, subsurface energy systems, environmental risk assessment, or related geologic/environmental infrastructure questions.
* Foundation AI models, representation learning, transfer learning, self-supervised learning, deep learning, interpretable machine learning, uncertainty quantification, data assimilation, or related AI/ML approaches for scientific datasets.
* Application of AI/ML or foundation-model approaches to catchment sciences, hydrology, hydrogeochemistry, water quality, watershed elemental cycles, river networks, or Earth system prediction.
* Experience working with large environmental, geochemical, hydrologic, geospatial, regulatory, remote sensing, or Earth system datasets.
* Experience integrating diverse datasets such as stream chemistry, discharge, hydroclimatic forcings, land cover, lithology, soils, well records, regulatory data, remote sensing products, geospatial attributes, monitoring data, or modeled Earth system outputs.
* Experience developing predictive, interpretable, and transferable models for environmental, geologic, energy, or Earth system applications.
* Experience with scientific programming in Python, R, or similar languages.
* Experience using reproducible research tools such as Git/Git Hub, Jupyter notebooks, R Markdown/Quarto, workflow managers, open-science repositories, cloud computing, or high-performance computing resources.
* Research experience or strong interest in hydrology, geochemistry, terrestrial water and elemental cycles, energy/environmental systems, catchment sciences, or Earth system science.
* Experience mentoring students or collaborating in interdisciplinary research teams.
* Strong written and oral communication skills.
Responsibilities
The postdoctoral scholar will be expected to:
* Develop and apply artificial intelligence, machine learning, statistical modeling, foundation-model, and environmental data science approaches to large geochemical, hydrologic, geospatial, regulatory, and related Earth system datasets.
* Develop AI/ML-enabled workflows to characterize energy and environmental systems, including oil and gas well condition and integrity-related questions, using geologic, environmental, and publicly available or regulatory datasets.
* Investigate the potential application of foundation AI models in catchment sciences, including riverine hydrogeochemistry,…
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