Sort by
Refine Your Search
-
Listed
-
Country
-
Field
-
, and fairness attacks, as well as to increase the trust that their users have in these systems, while accounting for different phases of the AI life cycle, starting from data collection through training
-
generalization. You will be embedded within the Ethio-Nature project, funded by the Danish Ministry of Foreign Affairs and managed by Danida Fellowship Council. Ethio-Nature aims to apply deep learning based
-
of multi-modal collaborative knowledge production? Are you an energetic team player, and passionate about developing theoretical synergies from different ethnographic subprojects? Postdoctoral position in
-
their strategies. Do you want to know more about LIST? Check our website: https://www.list.lu/ How will you contribute? You will be part of LIST’s Remote sensing and natural resources modelling group Embedded in
-
Utløpsdato: Session Navn: _cfuvid Leverandør: .hsforms.com Databehandlingsansvarlig: Microsoft, ASP.NET Formål: Støtter integrering eller "embedding" av en tredjepartsplattform på nettsiden. Personvernregler
-
dementia. The research is performed in a multidisciplinary environment, and candidates from different backgrounds are welcome to apply. Description of the project You will join the Umeå University priority
-
from June 2026 or later in 2026 by agreement and will have a duration of up to three years. The place of employment will be in Odense. Research profiles and tasks We are looking for different candidates
-
non-state actors in the migration field, especially in the 1970s. This is an independent research position embedded in a larger collaborative project. You will have the freedom to pursue your own
-
photosynthesis. Major Duties/Responsibilities: Compile and organize diverse multiscale datasets from plant genomics to phenomics. Develop and test different tokenization and embedding strategies for multimodal
-
. Methods include field sampling, taxonomic identification, stomach content analyses, and eDNA techniques. The position is embedded in several funded national projects, providing access to rich datasets