Sort by
Refine Your Search
-
Program
-
Employer
-
Field
-
position within a Research Infrastructure? No Offer Description PhD Researcher in Labour Economics The KOF Swiss Economic Institute at the ETH Zurich is the leading institute for applied research in
-
. The team uses innovative large datasets and applies rigorous empirical methods to estimate causal effects. The successful candidate(s) will be part of the PhD programme of the Department of Management
-
Research Associate in DAO ResearchOpen Position: Research Associate (PhD Student)Start Date: Flexible (target Q3 2024)Duration: Yearly Contract, up to three yearsOverviewDecentralized autonomous
-
letter (max. 1 page),- Detailed transcript of records (both Bachelor’s and Master’s)to [email protected], indicating in the subject “PhD Application PI-ML – Your Name” until July 15th 2024
-
predictivity of animal models as a consequence of species-dependent BBB differences between humans and animals. Job description In this project, we aim at exploring how in vitro models can be leveraged
-
: Experimental Physics. The Research Fellowship Programme is aimed at PhD holders in the fields of experimental physics which have up to 6 years’ experience after obtaining their PhD degree. Research Fellowships
-
: Applied Physics and Engineering. The Research Fellowship Programme is aimed at PhD holders, in the fields of applied science and engineering, with a maximum of 3 years of experience after obtaining
-
fabrication and experimental campaign. - Dissemination in journals and international conferences. Requirements: - PhD degree in Civil/Mechanical Engineering, Applied Mechanics, Physics or related areas
-
of material fabrication and experimental campaign.- Dissemination in journals and international conferences.Requirements:- PhD degree in Civil/Mechanical Engineering, Applied Mechanics, Physics or related areas
-
scientific and industry partners. You will support our PhD students, publish in scientific journals, and participate in conferences. Your tasks Design and implement digital twins for district energy systems