Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
Switzerland's position in AI innovation. Job description As a machine learning research engineer, you will be responsible for developing and maintaining software for training large-scale neural networks, such as
-
-modal signal monitoring (including respiration). Your research could potentially be applied in sports and health. Project background Your research will aim to conceive and design innovative solutions
-
-based microbiology, designing and conducting courses in human medicine, dentistry, and natural sciences (Bachelor's, Master's, and PhD programs), as well as establishing and maintaining interdisciplinary
-
enhancing an existing MATLAB software package to Python. Designing and implementing user-friendly graphical user interfaces (GUIs) for data interaction and visualization. Optimizing software performance using
-
reliability-based design optimization and hierarchical Bayesian inversion. This specific PhD position focuses on the challenges within hierarchical Bayesian inference. Job description As the successful
-
existing methods, our technique aims to use laser energies that are safe for biological tissues, ensuring both efficacy and safety. To achieve these goals, two PhD projects have been designed. One of them
-
on and improving one's own behavior; serving Swiss society and society as a whole; integrating sustainability into daily actions Driving innovation - being courageous, open and curious; being flexible and
-
cascading effects throughout the entire project, potentially increasing costs and delaying development, ultimately slowing down innovation within the railway system. A new ETH project “ProCargo”, co-funded by
-
parameters, which makes engineering of the material and nanostructure extremely important to realize highly tunable and designable optical properties. Job description The student will be involved in tasks
-
transfer, and experimental design to develop materials – and scalable methods for their fabrication – that not only substantially outperform conventional sensible heat-based thermal energy storage media but