16 cognitive-radio-networks Postdoctoral research jobs at Chalmers University of Technology
Sort by
Refine Your Search
-
, and environmental sustainability. As a postdoc, you will become part of a dynamic team that offers a stimulating and flexible work environment, with opportunities for collaboration and networking both
-
and flexible work environment, with opportunities for collaboration and networking both within Chalmers and internationally. Chalmers is an employer that actively promotes equal opportunities for women
-
network of national and international collaborators. Project overview The aim of this two-year project is to validate and further develop advanced numerical models (originally developed at Chalmers
-
, and engage with a vibrant network of national and international collaborators. The recruited candidate will work in the AIMLeNS lab lead by Assoc. Prof. Dr. Simon Olsson at Chalmers University
-
entities Preferred qualifications Experience in biomechanics, particularly head/skull injury mechanics or impact biomechanics Knowledge of material characterization techniques and experimental mechanics
-
promotes knowledge and technical solutions for a sustainable world. Through global commitment and entrepreneurship, we foster an innovative spirit, in close collaboration with wider society. Chalmers
-
, particularly head/skull injury mechanics or impact biomechanics Knowledge of material characterization techniques and experimental mechanics Familiarity with optimization algorithms and design of experiments
-
education in engineering, science, shipping and architecture. With scientific excellence as a basis, Chalmers promotes knowledge and technical solutions for a sustainable world. Through global commitment and
-
and written English Strong academic record with publications or clear potential for publishing in top-tier journals Advanced knowledge of one or more qualitative and/or quantitative research methods
-
digital twin framework, adaptable to: The level of detail available for ship modelling, The quality of risk-related data, and Quantified model and data uncertainties. The project will advance knowledge