Sort by
Refine Your Search
-
collaborate with national and international partners to advance research and innovation transfer of research outcomes to horticultural production systems supervision of Bachelor’s, Master’s and PhD students
-
). Mentoring will be provided by Prof. Dr. Markus Feuerer (LIT) and Prof. Gerhard Krönke (Charité and DRFZ) to ensure scientific and translational success and career development. Your Profile PhD and/or MD
-
is using state of the art machine learning tools to extract interpretable latent dynamics. We seek a highly motivated PhD student to develop a predictive computational model using recurrent neural
-
The Leibniz-Institut für Analytische Wissenschaften - ISAS - e. V. develops efficient analytical methods for health research. Thus, it contributes to the improvement of the prevention, early
-
area from the simulated measurements using mathematical methods and compare the various combinations and placements of the virtual instruments. You will summarise the results in a report/publication
-
of novel sample preparation strategies and the establishment of state-of-the-art analysis pipelines Your qualifications: PhD in Biology, Chemistry, Biochemistry, or a related discipline; several years
-
stakeholders involved in sustainable soil and farm management. This network is intended to promote the exchange of knowledge and practical methods so that farmers can make well-founded decisions about their
-
manufacturing machines, sintering devices, etc. characterization of synthesized materials using various analytical methods, e.g. transmission and scanning electron microscopy, X-ray diffraction analysis, etc
-
policy impact evaluation, systematic reviews, or evidence synthesis is an asset; Knowledge in statistical software (e.g., R, STATA, or Python) is an asset; A sound understanding of econometrics, meta
-
The Leibniz-Institut für Analytische Wissenschaften - ISAS - e. V. develops efficient analytical methods for health research. Thus, it contributes to the improvement of the prevention, early