Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
interdisciplinary work, for example in medicine or life sciences, who address key issues in AI such as reproducibility, safety, trustworthiness and robustness, and who engage with the theoretical and algorithmic
-
utilization. The successful candidate will play a significant role in the EU‑funded TIMBERHAUS project (www.timberhaus.eu). Your tasks Develop machine learning models and computer vision algorithms for wood
-
to work with leading experts across Europe to develop solutions for Decentralised Critical Infrastructure Asset Monitoring and Condition Assessment . This position focuses on next-generation distributed
-
, algorithms, AI) in society. We are in particular looking for candidates who have interest and experience with STS and humanities pedagogy in the context of a technical university and in developing research and
-
. This position offers the exciting opportunity to join the NorSCAPE project, which aims to disentangle the physiological mechanisms underpinning resilience and vulnerability across its distribution range. In
-
collaboration with the Intelligent Maintenance and Operations Systems (IMOS) Laboratory at EPFL (Prof. Olga Fink). IMOS focuses on the development of intelligent algorithms designed to improve the performance
-
The Robotic Materials group at ETH Zurich Department of Materials is looking for three postdocs and one PhD for the project funded by ERC Starting Grant : "Distributed Addressable Robotic Material
-
various stakeholders, including student teams Support in creating and distributing communication materials Various administrative tasks Profile 2nd-year ETH bachelor student or above, with some professional
-
resettlement. The position is part of an innovative project using machine learning and matching algorithms to improve the resettlement process for refugees and asylum seekers. We are developing GeoMatch , a
-
workflow Developing seismic monitoring strategies for CO₂ injection, including the design and analysis of surface-based and borehole distributed acoustic sensing (DAS) measurements in preparation