Sort by
Refine Your Search
-
Listed
-
Category
-
Country
- United States
- Germany
- Portugal
- France
- United Kingdom
- Sweden
- Poland
- Belgium
- Norway
- Netherlands
- Denmark
- Austria
- Spain
- Switzerland
- Singapore
- United Arab Emirates
- Italy
- Luxembourg
- Romania
- Australia
- Czech
- Estonia
- Finland
- Morocco
- Canada
- Japan
- Brazil
- China
- Croatia
- Ireland
- Lithuania
- Saudi Arabia
- Slovenia
- 23 more »
- « less
-
Program
-
Field
- Computer Science
- Economics
- Medical Sciences
- Engineering
- Mathematics
- Science
- Biology
- Materials Science
- Business
- Chemistry
- Earth Sciences
- Law
- Environment
- Education
- Arts and Literature
- Linguistics
- Psychology
- Social Sciences
- Physics
- Electrical Engineering
- Humanities
- Sports and Recreation
- Design
- Philosophy
- 14 more »
- « less
-
institutions, and a research and development provider for numerous companies throughout the world. The INM is a member of the Leibniz Association and has about 250 employees. The INM Energy Materials Group
-
a EU programme Reference Number BAP-2026-72 Is the Job related to staff position within a Research Infrastructure? No Offer Description This project investigates vibration-based methods for monitoring
-
comparative insights that enhance research conclusions from Hope observations. Develop Machine Learning methods and run numerical simulations on NYUAD’s High-Performance Computing (HPC) system. Support
-
Grant(s) (RG) in the scope of R&D projects FireLSF - Development of predictive models for the fire resistance of light steel frame walls - an integrated experimental, numerical and machine learning
-
the development and application of probabilistic inference methods and machine learning techniques for quantitative uncertainty modeling and for the integration of heterogeneous climate data
-
deployment enabling validation and demonstration of real-world applications. For more details, please view https://www.ntu.edu.sg/erian We are looking for a Research Associate to conduct numerical modelling
-
discipline. Strong background in heat transfer and thermal transport modelling. Experience with numerical methods for transport equations (e.g. BTE, kinetic methods, finite-volume / finite-difference
-
at companies or the public sector. 5.2 — The score obtained in the curricular evaluation method is expressed on a numerical scale from 0 to 20, considering the valuation to the nearest hundredth. 5.3 — The jury
-
, statistical thermodynamics, and numerical methods for partial differential equations. Experience or a strong interest in the study of stochastic fluid models is required. Knowledge of scientific programming
-
Mechanical Engineering or equivalent qualification The ideal candidate will have a master's degree in mechanical engineering, with a solid background in fluid dynamics, thermodynamics, and numerical methods