94 parallel-computing-numerical-methods positions at University of Tennessee at Chattanooga
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
candidates at the Assistant, Associate, or Full Professor level to develop and lead a vibrant and impactful research program focused on advanced composite materials and manufacturing. The successful candidate
-
didactic teaching of veterinary students, interns, and residents; clinical service in diagnostic imaging; development of a basic science or clinical research program commensurate with effort allocation
-
. Application Instructions Interested applicants should send inquiries to Prof. Khalid Hattar (TIBML director) and Prof. Brian Wirth (Governor’s Chair Professor in Computational Nuclear Engineering) at khattar
-
four (4) classes per semester in sustainability at the lower and upper division levels using in-person and fully online delivery modes. The Sustainability Program consists of a Sustainability major with
-
faculty appointment at the Assistant Professor level using molecular, genetic, biochemical, ecophysiological, computational, mathematical modeling, and/or cell biology approaches to study microbes
-
computational boundary plasma physics and multiscale materials modeling techniques ranging from the SOL-PS and GITR codes for boundary plasma and impurity modeling, in addition to first principles- based
-
, scholarship, and engagement with society. Successful candidates will be expected to teach classes and carry out a program of research and scholarship. They will also be expected to be actively engaged in
-
complementary research interests in artificial intelligence (AI), health informatics, health information and communication, epidemiology, environmental engineering, systems modeling, natural language processing
-
one-year appointment for a Lecturer in Geographic Information Science & Technology (GIS&T), with the possibility for renewal. The instructor will be expected to teach four (4) classes per semester
-
Sustainable Environment, and so on. Departmental strengths include optimization, data analytics, machine learning, quantum computing, reliability and maintainability, and operational excellence and their