Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
-bacterial electron transfer in these systems. By combining cultivation-based microbiology with electrochemical approaches and high-resolution imaging, the work will directly probe how energy metabolism is
-
imaging environment, investigating the transport and adsorption of emerging contaminants under groundwater-relevant conditions. Responsibilities As a key member of our team, you will contribute to a Novo
-
, that can be documented by a publication record in relevant venues. Solid understanding of state-of-the-art embedded machine learning techniques. Experience in system-level programming, developing prototype
-
, load modelling, soil–structure interaction, and relevant degradation and failure mechanisms over extended service periods. Within the scope of the project, a small-scale prototype will be tested in AAU
-
laboratory facilities for culturing as well as experimental work on microalgae in temperature-controlled rooms, advanced microscopy and imaging labs as well as a molecular lab. The post doc will collaborate
-
(reNEW ), placed in modernised research facilities and include state-of-the-art laboratories, pleasant office facilities and access to high-quality core facilities in transcriptomics, imaging, flow
-
segmentation of organs from medical images; generation of simulation-ready surface and volumetric meshes from segmentations; and modelling realistic boundary conditions, particularly the interaction between
-
’ at BMB and the ‘Danish National Mass Spectrometry Platform for Proteomics and Biomolecular Imaging’ (PLATO), which provides a highly international, collaborative, ambitious and innovative research
-
. Nature Physics20, 970 (2024)). You will also work on expanding our coherent imaging methodology to look at dynamics and phase switching in materials at the nanoscale (Johnson et al. Nature Physics19, 215
-
Postdoctoral position in the development of an AI-based phenotyping system for high-throughput sc...
resistant and susceptible plants. Develop an AI-assisted image-based phenotyping pipeline to automatically quantify aphid performances on the plants. This software will automatically count for aphids and