20 parallel-computing-numerical-methods-"Prof" research jobs at University of Sheffield
Sort by
Refine Your Search
-
Country
-
Program
-
Field
-
relevant Cluster Lead a 1-page expression of interest indicating the type of long-term fellowship they would like to apply to; how their research programme would enhance the activities in the School
-
this emerging research programme Applicants should be familiar with methods for estimating comparative effectiveness using RWD, e.g., NICE’s TSD 17 , NICE’s RWE framework . You will be encouraged to develop your
-
Post-embryonic development and anatomy of the zebrafish inner ear School of Biosciences PhD Research Project Self Funded Prof T T Whitfield, Dr E Noel Application Deadline: Applications accepted
-
Programme: Hybrid CFD and process simulation for process intensification of post-combustion CO2 capture School of Mechanical, Aerospace and Civil Engineering PhD Research Project Self Funded Prof
-
Overview We are seeking a highly motivated, experienced individual for the position of Research Assistant in Prof. Helen Bryant’s laboratory, within a vibrant scientific environment at
-
with career stage). Essential Interview / Application / Test In-depth knowledge of Computational Intelligence/Machine Learning systems and methods, in particular those relevant to Explainable AI, Physics
-
contribute to advancing simulation-based testing methods for ADS. You will contribute to cutting-edge research projects, including the EPSRC-funded SimpliFaiS: Simplification of Failure Scenarios for Machine
-
contribute to advancing simulation-based testing methods for ADS. You will contribute to cutting-edge research projects, including the EPSRC-funded SimpliFaiS: Simplification of Failure Scenarios for Machine
-
Experimental and Modelling Study of Amine Degradation in the Post-Combustion CO2 Capture Process School of Mechanical, Aerospace and Civil Engineering PhD Research Project Self Funded Prof Mohamed
-
contribute to advancing simulation-based testing methods for ADS. You will contribute to cutting-edge research projects, including the EPSRC-funded SimpliFaiS: Simplification of Failure Scenarios for Machine