408 parallel-computing-numerical-methods positions at University of Sheffield in United Kingdom
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
- Computer Science
- Engineering
- Economics
- Materials Science
- Medical Sciences
- Biology
- Chemistry
- Mathematics
- Arts and Literature
- Electrical Engineering
- Psychology
- Education
- Linguistics
- Business
- Humanities
- Philosophy
- Physics
- Science
- Earth Sciences
- Law
- Social Sciences
- Sports and Recreation
- 12 more »
- « less
-
to plasticity. (assessed at: application/interview) Experience in computational mechanics, especially numerical methods for solving field equations relevant to material mechanics, i.e., Finite Element schemes
-
Exciting Fully Funded PhD: Computational Modelling for High-Pressure, Low-Carbon Storage Technologies. Be a Key Player in Shaping the Future of Clean Energy Storage! School of Mechanical, Aerospace
-
of such program could be done in case of it was necessary. For instance, for the linkage of new material models or certain numerical features such as a new finite element. This research will benefit from excellent
-
Neuro-Symbolic Methods for Explanation-Based Reasoning with Large Language Models
-
the machining induced damage in a MMC and its service life using experimental and numerical methods Funding Notes 1st or 2:1 degree in Engineering, Materials Science, Physics, Chemistry, Applied Mathematics
-
to basis set size. We are working on methods that will allow us to solve the time-dependent Schrödinger equation more quickly. In this project you will develop new (parallel) methods based around accelerated
-
Application Deadline: Applications accepted all year round Details Computational Wind Engineering has been developed rapidly over the last decades. Among the numerical techniques, Large Eddy Simulation (LES) is
-
demonstrate good knowledge of mathematics, numerical modelling, fluid dynamics and signal processing and be a proficient user of a programming language, e.g. Python or Matlab. Main duties and responsibilities
-
for classical imagery inspections (e.g. CCTV) in sewer pipes treated with CIPP lining employing powerful semi-analytical and hybrid (numerical+analytical) acoustic simulations. During the project lifetime
-
Artificial intelligence and machine learning methods for model discovery in the social sciences School of Electrical and Electronic Engineering PhD Research Project Self Funded Prof Robin Purshouse