Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
100%, Zurich, fixed-term The Chair of Infrastructure Management led by Professor Dr. Bryan T. Adey in the Institute of Construction and Infrastructure Management of the Department of Civil
-
precision and minimal interruptions throughout a life cycle. Incorporating predictive models and advanced control using data opens up exciting new possibilities in this domain. The research activities within
-
microbiology, as well as bioinformatics and the analysis of big datasets. Moreover, the Biozentrum offers excellent internal support from various core facilities with expert staff, and a structured PhD program
-
balloon system and assisting with UAV/floating balloon operations. Analyzing in situ data (holographic imagers) and ground-based remote-sensing data (cloud radar) to derive ice crystal growth rates via
-
. Empa is a research institution of the ETH Domain. Our Centre for X-ray Analytics developsX-ray analytical and imaging methods for understanding materials structure in material, life- and medical sciences
-
-docs, post-graduates or apprentices. Altogether, PSI employs 2300 people. The structural integrity group investigates the influence of material ageing phenomena on the lifetime and structural integrity
-
, and limiting the potential benefits of automation. To address this, the project leverages advanced data sources (e.g., high-resolution position sensors, accelerometers, force and power sensors
-
. This project will center on high-entropy oxides, a promising class of catalysts, to help transform CO2 into valuable hydrocarbons. The work is part of a broader initiative aimed at advancing materials
-
100%, Zurich, fixed-term The Nonlinear optics for Epitaxial growth of Advanced Thin films (NEAT) laboratory within the institute of Multifunctional Ferroic Materials in the Materials Department is
-
challenges. Our core research topics include but not limited to the following topics: Interpretability and explainability of AI models in clinical settings Fairness and bias mitigation in pediatric AI