Sort by
Refine Your Search
-
Listed
-
Program
-
Employer
-
Field
-
. Participation in research activities, such as seminars, workshops, networks and conferences. Contributing to administrative responsibilities of the Department and CBS-wide tasks. Communicating findings
-
large international network. Furthermore, we collaborate extensively with other groups, including both clinical and basic pharmacology researchers as well as environmental medicine specialists
-
national and international research networks time spent abroad working at one or more internationally recognised research institutions. Finally, applicants are asked to provide a proposal for research to be
-
fresh perspective on how specialized brain networks can identify and categorize causes of sensory inputs, integrate information with other networks, and adapt to new stimuli. It proposes that perception
-
and workshops. Collaborate with researchers from other institutions within our various collaborative grants and networks to advance the overall project goals. We expect you to: be motivated and
-
his peer network, including at the Massachusetts Institute of Technology (MIT) and elsewhere in the US, Europe, and Asia. Salary and terms of employment The appointment will be based on the collective
-
research. The project will provide opportunities for collaboration on high-impact publications, networking with leading experts in business power and public policy, and participation in international
-
encourages open discussion, critical thinking, and knowledge sharing across fields * A professional and supportive work environment with opportunities for networking and social activities * A workplace
-
supportive, dynamic and ambitious research environment with a strong scientific and social network for postdoctoral fellows and good mentoring opportunities. Furthermore, you will have access to state
-
new coding languages will be preferred. Proficiency with advanced statistical analysis techniques, demonstrated through mastery of one or more of complex modelling techniques (e.g., multilevel models