Tenure-Track Positions in AI/ML Agriculture and Forestry Systems Assistant, Associate
Listed on 2026-02-01
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Education / Teaching
University Professor, Academic
Tenure-Track Positions in AI/ML for Agriculture and Forestry Systems Assistant, Associate, or Full Professor - Fall 2026 (1/2)
Location: Knoxville, TN, United States
Open Date: Sep 3, 2025
The Min H. Kao Department of Electrical Engineering and Computer Science (EECS) at The University of Tennessee, Knoxville (UTK) is seeking candidates for two tenure-track faculty positions at the assistant, associate, or full professor level in artificial intelligence and machine learning (AI/ML) with applications to agriculture and forestry systems. These positions are part of strategic cluster hires in the Resilient Agriculture and Forestry Systems (RAFS) and Plant Ecosystem Resilience in a Changing Environment (PERCE) clusters, which aim to address critical challenges in food security and environmental sustainability through data-driven solutions.
We seek exceptional candidates with expertise in AI/ML who can develop innovative computational solutions to address challenges in agricultural and forestry systems. Areas of particular interest include precision agriculture technologies, remote sensing and geospatial imaging, multi-sensor data fusion, IoT and sensor networks for environmental monitoring, autonomous agricultural systems, disaster risk assessment and mitigation, predictive modeling, and data analytics for agricultural decision support systems.
Candidates will be expected to:
- establish and maintain an internationally recognized, externally funded research program;
- actively participate in interdisciplinary collaborations within the RAFS/PERCE clusters and across the university;
- publish high-impact scholarly research;
- teach undergraduate and graduate courses in computer science, computer engineering, or electrical engineering;
- mentor graduate and undergraduate students;
- contribute to departmental, college, and university service.
- Ten UT Ag Research and Education Centers across Tennessee, providing real-world testbeds for agricultural technology deployment
- State‑of‑the‑art computing resources, including high‑performance computing clusters and GPU resources for AI/ML research
- Strong partnerships with Oak Ridge National Laboratory, including access to supercomputing facilities and collaborative research opportunities
- The AI Tennessee Initiative, providing interdisciplinary connections and resources for AI research and education
- Collaborative opportunities with faculty across EECS, Biosystems Engineering and Soil Science (BESS), Entomology and Plant Pathology (EPP), Forestry, Wildlife and Fisheries (FWF), and other departments
- Access to extensive agricultural and forestry datasets from statewide research stations and industry partners
Applicants must hold a Ph.D. in Computer Science, Computer Engineering, Data Science, Electrical Engineering, or a closely related field at the time of appointment. Candidates should demonstrate expertise in artificial intelligence, machine learning, or data science, with a strong publication record commensurate with the rank of appointment.
For an Assistant Professor rank, the candidate is expected to demonstrate potential for securing funding for research programs and for participating in interdisciplinary teams, effective, high‑quality teaching skills, and the ability to mentor undergraduate and graduate students.
For an Associate Professor rank, the candidate is expected to have conducted nationally/internationally recognized research and demonstrate strong leadership potential, effective teaching skills, and the ability to mentor students.
For a Full Professor rank, the candidate is expected to demonstrate established leadership in their field with a strong track record of funded research, high‑impact publications, and successful mentorship of junior faculty and students, with the vision and capability to lead major interdisciplinary initiatives bridging AI/ML with agricultural and forestry applications.
Preferred qualifications include demonstrated experience applying AI/ML to agricultural, forestry, or environmental systems; a track record of interdisciplinary collaboration; experience with grant funding from agencies such as NSF, USDA,…
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