Sort by
Refine Your Search
-
Listed
-
Employer
-
Field
-
Measurements and Data Processing as per December 15, 2025, or as soon as possible thereafter. The position is available for a period of 1 year, with the possibility of extension. In electronic engineering
-
(lubricants, gear oils etc.) from machinery like wind turbines. When we want to remove oil droplets, we need them to merge (coalesce) as big drops are easy to remove. Surfactants can either promote or hinder
-
applications. The project investigates two complementary reuse strategies: Repurposing of large blade segments into structural elements (e.g., beams, panels) Material recycling of shredded fibers for use as
-
scientific journals. Your profile We are searching for a highly motivated candidate who has A PhD in remote sensing, data science, agriculture, environmental sciences or similar Collaborative skills and
-
, contribution in book chapters or intellectual properties Requirements for the position Employment as a postdoctoral fellow for this position requires a PhD-degree or equivalent within in chemistry / chemical
-
, which might just be the right project for you. The project is integrated in a large effort financed by the Novo Nordisk Foundation. It is led by the Department of Plant Biology at the University
-
academic or industry leadership roles. Your profile Applicants should hold a PhD in Computer Science, Electrical Engineering, Computer Engineering, Telecommunications, or a similar field, with a strong
-
epigenetic mechanisms of cellular aging, resilience, and fibrosis. Responsibilities Develop and implement analytical pipelines for large-scale single-cell, spatial, and multi-omics data integration Build and
-
work in close collaboration with a large, interdisciplinary team of quantum scientists, engineers, and biomedical researchers. Your key responsibilities will be to: Conduct research that will bridge
-
this project, we will develop neural diffusion techniques to design materials with targeted optical properties, scaling to large systems through efficient representations and GPU parallelization. We will also