Sort by
Refine Your Search
-
Listed
-
Field
-
, a large initiative funded by the Danish Ministry of Foreign Affairs and managed by Danida Fellowship Council. Ethio-Nature aims to optimize the use of machine learning and remote sensing to site
-
industrial and academic partners. The overall goal of the project is to optimize the design of water eletrolyzers for efficient green energy production. You will be conducting Computational Fluid Dynamic (CFD
-
carriers within defects. The charge transport will be implemented stochastically to mimic nature. A significant focus of the project will be to apply machine learning techniques to optimize the model and
-
potential and to optimize the chassis for protein production. The generated data will enable you to address research questions such as: Which traits are key for robustness, and can they be identified early in
-
Postdoctoral Researcher Position in Digitalization of Metal Additive Manufacturing and CO2 Impact...
unique opportunity to bridge cutting-edge digital manufacturing technologies with real-world industrial sustainability challenges. If you are passionate about advanced manufacturing, process optimization
-
data workflow protocols to implement the rCTOOL model at the farm scale in Danish mineral soils. Therefore, your tasks will involve building necessary data infrastructure, optimizing carbon input