Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
to the Collective Bargaining Agreement amounts to EUR 3.714,80; In the case of a normal weekly working time of less than 40 hours the salary shall be prorated.) and will be enrolled in the department's PhD program in
-
intelligence, and high-performance computing to study metabolic networks and optimize microbes for biotechnological applications. The PhD project aims to predict the optimal compartmentalization of a production
-
their curiosity and their continuous pursuit of excellence, engage in international cutting-edge research and teaching. With us, you will also find space to unfold your potential. We are looking for a/an PhD
-
and determination? We are currently seeking a/an PhD in AI-assisted proteomic data analysis applied to Human Health 50 Faculty of Life Sciences Job vacancy starting: 01.09.2025 (MM-DD-YYYY) | Working
-
, a competitive salary, and opportunities for professional growth in an international, dynamic setting. Key Responsibilities: Develop and complete a PhD dissertation on geohazard modelling (physical
-
computational software development. You enjoy working in a team where you contribute your expertise and skill set to deliver an ambitious research vision and where you can contribute to the training of PhD and
-
information and to submit your application, see: https://visess.univie.ac.at/phd-programme/funding-possibilities/visess-completion-grants/ . Your future tasks: You actively participate in research, teaching
-
, which means: • Developing a third-party funded project to be submitted to a competitive programme (e.g. Marie Curie, FWF individual project, FWF Esprit) • Further developing your academic profile
-
well as the late, medieval, and Neo-Latin language and literature. At the core of the program is a thorough education in Greek and Latin that enables critical evaluation of historical texts, along with
-
are currently looking for PhD candidates for 5 different research topics. The position advertised here focuses on affordances of open science infrastructures. Data sharing is central to contemporary science. As