Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
software, and applying computational methods and analysis tools, including finite element analysis (FEA), to optimise designs. Providing leadership and supervision to engineering staff, ensuring research
-
for simulations, we aim to explore solution strategies to calculate the amount of water given meteorological data and map data. Here, in addition to traditional discretization methods such as finite elements and
-
satisfactory performance. Essential Duties Perform applied research duties, including advanced finite element modeling and simulation, engineering design and analysis, crash testing, and project coordination and
-
elements, heat exchangers, fluid delivery systems, and combustion is highly desired Working knowledge of solid-modeling CAD software and finite element analysis tools is desired Your working location will be
-
reporting. Experience in nuclear fusion or fission technology or a closely related field is a plus. Experience with mechanical (finite element) and/or thermal/fluid (computational fluid dynamics) simulation
-
of finite element analysis (FEA) software and data analysis • Project or program management experience • Due to the requirements of our research contracts with the U.S. federal government, candidates
-
an Innovate UK-funded KTP project (assessed at application) Desirable criteria Experience of working on high voltage power electronic systems (assessed at application/interview) Experience with finite element
-
computational mechanics and numerical modeling methods such as finite element analysis (FEA) and multi-body dynamics for hydro-mechanical drilling systems Proficient in structural dynamics modeling and system
-
- Computer Science EE 301: Digital Systems Design with HDL Position: Lecturer - Academic Year Semester: Fall 2025 Days/Times: Varies multiple sections Modality: In-person College: College of Science, Technology
-
(variational multiscale, multiscale finite elements, etc.), structure preserving numerical methods, stochastic optimization, analysis of machine learning methodologies, multilevel methods, scale-bridging and