Sort by
Refine Your Search
-
Listed
-
Employer
-
Field
-
Post doc position in theory of machine learning at Department of Computer Science, Aarhus University
A post doc position in theory of machine learning is available. The post doc is under the supervision of Professor Kasper Green Larsen, Aarhus University, Denmark. The focus of the research project
-
methods to enhance the understanding of the Greenland Ice Sheet, peripheral glaciers, and their contribution to sea level rise using finite element models such as the Ice-sheet and Sea-level System Model
-
conferences You will report to the Markus Rinschen, MD, Associate Professor. Your competences You have a background within Biomedicine and experience with molecular biology, bioinformatics, or other biomedical
-
conferences You will report to the Markus Rinschen, MD, Associate Professor. Your competences You have a background within Biomedicine and experience with molecular biology, bioinformatics, or other biomedical
-
• Knowledge and experience using the DVI software and DVI guide from INTERPOL Place of employment The Section of Forensic Pathology carries out medico-legal autopsies and clinical forensic examinations
-
position, please contact Professor Karsten Juhl Jørgensen, e-mail kj@cochrane.dk, telephone: +45 31 21 10 35 or Professor/Head of Centre Asbjørn Hróbjartsson, ahrobjartsson@health.sdu.dk , telephone: +45 24
-
10 Postal Code 1350 E-Mail mpu@geus.dk STATUS: EXPIRED X (formerly Twitter) Facebook LinkedIn Whatsapp More share options E-mail Pocket Viadeo Gmail Weibo Blogger Qzone YahooMail
-
universities around the world. Job Info Job Identification 5019 Job Category VIP A Posting Date 04/07/2025, 08:43 AM Apply Before 04/23/2025, 05:59 PM Locations Søltofts Plads , Kgs Lyngby, 2800, DK
-
4719 Job Category VIP A Posting Date 02/21/2025, 07:43 AM Apply Before 03/07/2025, 10:59 PM Locations Ørsteds Plads, Kgs. Lyngby, 2800, DK
-
methodologies for understanding the role of RNA modifications in gene regulation.These positions are part of the Novo Nordisk Foundation–funded project “Probabilistic Modelling Approaches for Deciphering Post