Dr. Sanju Purohit
1 year ago
Coastal science, wildfire impacts, agriculture UC Santa Cruz in United States
Degree Level
PhD
Field of study
Computer Science
Funding
Fully funded position
Deadline
Expired
Country
United States
University
University Name
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Where to contact
Official Email
Keywords
Computer Science
Machine Learning
Ecology
Environmental Science
Agriculture
Biology
Remote Sensing
Geography
Urban Planning
Coastal Engineering
Applied statistics
Engineering
Wildfire Impacts
About this position
Funding details
Fully funded position
How to apply
Send CV, personal statement, and unofficial transcripts to Dr. Bo Yang at [email protected]
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The GeoFly Lab at UCSC’s Environmental Studies Department is offering a fully funded PhD position starting Fall 2025. This position, part of a larger interdisciplinary project supported by NSF, NASA, and USDA, focuses on using GIS, remote sensing, machine learning, and AI to study coastal science, wildfire impacts, and agriculture.
Who should apply? Candidates from fields like geography, computer science, urban planning, GIS, statistics, ecology, and environmental studies are encouraged. The role involves high-resolution UAS and aerial imagery analysis to model seagrass and wildfire dynamics, plus collaboration with UCSC researchers and partners across ecology, biology, and engineering.
?? Deadline for initial interest: November 15, 2024
?? Send your CV, a personal statement, and unofficial transcripts to Dr. Bo Yang at [email protected] .
Note: Although I’m not affiliated with UCSC or involved in hiring, I’m based in the USA and can guide or support interested applicants as a volunteer.
# PhDopportunity # remotesensing # GIS # environmentalstudies # machinelearning