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  • Ph.D. Student - Wildfire Technology Hub at University of Nevada, Reno
    Civil Engineering
    University of Nevada, Reno

    We invite applicants for multiple cross-disciplinary Ph.D. positions to conduct research in technological and scientific aspects of Wildfire Engineering across the Pre-Fire, Active-Fire, and Post-Fire domains. Our goal is to develop new capabilities for stakeholders to effectively prepare for, respond to, and recover from wildfires. We seek dynamic individuals who are curious and interested in this problem, willing to work within a multidisciplinary team in a fast-paced research and development environment, learn new skills, interact with stakeholders, and produce high-quality research and technology products. The positions are part of a cluster hire in support of the Hub. The candidates will interact with other research teams at the Hub as well as faculties at UNR and other partnering institutes and agencies. Depending on the background, candidates can be admitted and hosted within Civil and Environmental Engineering, Mechanical Engineering, or Computer Science Departments.   


    For Pre-Fire problem domain, we seek candidates with strong interest in engineering risk, reliability, and stochastic simulation concepts. For Active-Frie problem domain, we seek candidates with strong interest in analytical and computational methods related to physics-based wildfire simulation, fuel modeling, data-driven methods, artificial intelligence, and real-time applications. In the post-fire domain, we seek modeling capabilities for assessing how post-wildfire runoff, smoke deposition, altered vegetation and hydrology, and targeted restoration activity affect functioning and shape recovery.


    Required Qualifications



    • M.S. in Engineering, Physics, Computer Science, Ecology and Forestry, Earth Science, or related fields.

    • A master’s degree with GPA > 3.5.

    • Excellent English-language communication skills (oral and written).

    • Demonstrated ability to perform research and publish results in peer-reviewed literature.


    Preferred Qualifications


    Candidates should have a solid background in one or more of the following subjects: 



    • Computer programming – past experience with MATLAB, Python, and/or C++.

    • Experience with cloud computing, GPU-based computing, and a working knowledge in Linux.

    • Machine learning, neural networks, and artificial intelligence.

    • Spatial data analysis.

    • Computer vision techniques.

    • Statistics, probability, reliability, and engineering risk assessment.

    • Methods for stochastic simulation and uncertainty quantification.

    • Fire sciences.


    Application / Review Process


    Please send your complete C.V. along with your academic transcripts to hebrahimian@unr.edu.


     


     


 


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