Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
Your position Our group conducts research at the intersection of artificial intelligence (AI) and pediatric healthcare, developing AI and machine learning (ML) methods to address real-world clinical
-
developing personal projects, students gain valuable hands-on experience and learn essential skills for their future. That’s why we’ve created an ecosystem where students - Bachelor’s, Master’s, and Doctoral
-
ETH’s Center for Manufacturing, which is to be founded in the coming months.The selected candidate will support in the development and execution of educational and mentoring activities as
-
to enable the scientists at ETH Zurich to develop new technologies necessary for their successful research. Curious? So are we. Starting date: The anticipated start date for this position is January 2026 with
-
We offer you The Department of Biomedicine is an equal opportunity employer and a cutting-edge research facility that provides excellent training and career development opportunities for his
-
." This project aims to develop data-driven tools to assess supply chain vulnerabilities for critical medicines, using pharmaceutical Bills of Materials (BOMs), trade flows, and production data. The work is part of
-
team, capable to work independently, and stay committed for at least a year. With a service-oriented mindset and the ability to follow instructions, they are proactive in asking questions and developing
-
quality—while also being willing to handle the operational work required to make it happen—this position is for you. Project background This position is part of the strategic teaching development initiative
-
experiments to gain a better quantitative understanding of the disorder and to develop intelligent mechatronic shunt systems. In line with our values , ETH Zurich encourages an inclusive culture. We promote
-
" (D2M). This innovative project is a collaboration between the University of Basel, the Bern University of the Arts, and the FHNW. The goal is to develop a highly automated, reproducible pipeline