Sort by
Refine Your Search
-
Listed
-
Employer
- Chalmers University of Technology
- KTH Royal Institute of Technology
- Lunds universitet
- Karolinska Institutet (KI)
- Nature Careers
- Chalmers tekniska högskola
- Umeå University
- University of Lund
- Linköping University
- Sveriges lantbruksuniversitet
- Swedish University of Agricultural Sciences
- Umeå universitet
- Göteborgs universitet
- Linköpings universitet
- Lulea University of Technology
- Luleå University of Technology
- Luleå tekniska universitet
- Mälardalen University
- Mälardalens universitet
- SciLifeLab
- Sveriges Lantbruksuniversitet
- Umeå universitet stipendiemodul
- Uppsala universitet
- chalmers tekniska högskola
- 14 more »
- « less
-
Field
-
properties. Collaborating closely with research teams in CMPS and NanoLund, integrating expertise from chemistry, biophysics, and semiconductor materials science. Contributing to grant applications and seeking
-
star formation rate models. Working with survey databases, handling large and complex datasets, and integrating data from multiple instruments. Data analysis and programming, including statistical
-
height can be used to derive urban morphology types and assess their links to climate resilience. You will develop and apply data-driven methods to integrate satellite, aerial, and ancillary geospatial
-
on fairness and privacy. The second phase will explore integrating AI governance and policy with the outcomes achieved in the first phase. The successful candidate will be part of the Responsible Artificial
-
diabetes genetics and genomics. The methodological research may include but is not limited to statistical models using genetic data from family-based studies as well as -omics data for integrative
-
, integrating expertise from chemistry, biophysics, and semiconductor materials science. Contributing to grant applications and seeking additional external research funding as part of personal academic
-
, with good working conditions and attractive benefits. Equality, diversity and equal opportunities are essential to quality and form an integral part of KTH’s core values as a university and public
-
, integrating expertise from chemistry, biophysics, and semiconductor materials science. Contributing to grant applications and seeking additional external research funding as part of personal academic
-
. Within privacy, we are interested in different types of privacy measures and models (differential and integral privacy, k-anonymity), different scenarios (centralized and decentralized data; local and
-
, and for relevant duties/assignments within the subject area. Additional useful qualifications include experience in improving diagnostic platforms for disease, integration of multi-omics data and