Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
26 Feb 2025 Job Information Organisation/Company ETH Zürich Research Field Economics » Management studies Economics » Other Engineering » Industrial engineering Engineering » Mechanical engineering
-
Enable real-time decision-making in production environments Job description Design and implement data augmentation techniques to enhance model performance Implement efficient parametrization methods
-
, adapt, optimize and validate analytical methodologies for quantifying microplastics in complex food matrices. Identifying the relevant types of plastics and their origins Prepare and execute together
-
Materials development for MedTech application, involving state-of-the-art synthesis and analytics Acquisition of research grants and writing of scientific publications Supervision of students and interns
-
Postdoctoral researcher position on Resilient Energy Infrastructures for the Swiss Energy Transition
include collecting data and relevant information, contributing in the project directions and modelling needs and presenting results. Finally, you will be expected to lead the writing of reports and
-
process conditions. Explore, adapt, refine, and validate analytical methodologies for FTIR, GC, and OES. Develop and propose original research ideas within the project’s framework. Interact closely with
-
studies, science and technology studies, digital humanities, computer science, literary studies, philology, cultural studies, history and philosophy of science and technology, information studies, or other
-
animal-free, human-relevant New Approach Methodologies (NAMs). This includes NAM data analyses, strategic publications (e.g. on Adverse Outcome Pathway or other concepts for DART evaluation), networking
-
of fiber optics in the 1970s has revolutionized the telecommunications industry upon the replacement of copper wires and played a major role in the advent of the Information Age - One high bandwidth fiber
-
ability to conduct archival research on English materials ranging from 1300-1950; Experience working with large quantities of data and/or with databases; Excellent organisational skills; The ability to work