-
driving excellence in biology-, technology-, and data-driven research, SciLifeLab fuels innovation across health care, environmental sustainability, industry, and society, thereby ensuring that Sweden
-
in artificial intelligence (AI) to join our growing biomedical innovation team. In this pivotal role, you will lead and contribute to the design, development, and deployment of machine learning
-
), imaging, electronic health care records, longitudinal patient and population registries and biobanks. The applicant is expected to have a strong computational focus on innovative development and application
-
. Project description: DDLS Fellows Program Data-driven life science (DDLS) uses data, computational methods and artificial intelligence to study biological systems and processes at all levels, from molecular
-
Do you want to contribute to improving human health? Computational methods and artificial intelligence on large-scale molecular data are transforming the study of biological systems at all levels
-
care records, longitudinal patient and population registries and biobanks. The applicant is expected to have a strong computational focus on innovative development and application of novel data-driven
-
infrastructure and research community, bringing together groundbreaking life science technologies with data and AI expertise. Computational methods and artificial intelligence applied to large-scale molecular data
-
, the Faculty of Science and the regional university healthcare, within a broad range of medical topics and disease areas, as well as cutting-edge infrastructures , high-capacity computational resources
-
, amplifying our global impact, accelerating innovation and maximizing scientific progress and societal benefit. The SciLifeLab Fellows Program The SciLifeLab Fellows program is a shared initiative since 2013
-
developing computational methods, analyzing complex datasets, and contributing to integrative omics efforts in close collaboration with researchers from various disciplines. The roles offer significant