Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
interdisciplinary team at the Technische Universität Dresden, focusing on the integration of multi-omics data to better understand, diagnose, and treat metabolic diseases (i.e. obesity, diabetes, metabolic
-
, international and impact-oriented team. We have world-leading expertise in the philosophy, history and social studies of biology, biomedicine and environmental science; Open Science; data-intensive research; and
-
generally. Data sources for our work in this area are large-scale electronic health record data, medical claims data, mortality registries, and epidemiological cohort studies. The researcher will be expected
-
disabilities in its workforce and therefore encourages applications from such qualified individuals. Please submit your written application (cover letter, curriculum vitae with list of publications, references
-
, especially if they reside abroad. Fellows are provided with private offices at CAIS and rent-free, fully furnished apartments. In addition, CAIS will cover travel expenses for one return-trip to Bochum
-
, family allowances Type C - Postdoctoral Students (Research in Germany): 2,400 euros per month Type D - Senior Scientists (Research in Germany): 2,760 euros per month Further information For further
-
with hosts in other countries. Programme information for postdocs (PDF, 132 KB) Programme information for experienced researchers (PDF, 138 KB) Search for potential hosts in the Humboldt Network (German
-
towards health, accident and personal liability insurance cover Contribution towards travel expenses Selection An independent selection committee consisting of specialist scientists reviews applications
-
(cover letter, CV, list of publications, research outline, other credentials/diplomas/certificates) as one Pdf file that should not exceed 15 pages (except for the completed GIGA application form
-
system. Through state-of-the-art fieldwork, archival research, and laboratory analyses, data compilation, and quantitative modelling it connects observations from the deep past to present planning and