-
industrial waste streams, encompassing water recycling, mineral reclamation, and energy recovery. The postdoc is expected to have experience in process design, scale-up, process modeling or optimization
-
driven methods. The Post Doc will be working with the latter. The model structure will be founded on first principles models with parameters that ideally possess physical significance. Parameters
-
may be invited to an interview and/or asked to give a trial lecture. When the employment process has been terminated, a final rejection will be sent to the applicants who are not considered
-
Postdoc in statistics to develop Bayesian privacy metrics for synthetic health data (2024-224-05725)
. Qualification requirements: You should hold a PhD degree in computer science, statistics, physics, mathematics, engineering, or a field of science relating to data science with emphasis on statistical
-
to comment on their own assessment, and may be invited to an interview and/or asked to give a trial lecture. When the employment process has been terminated, a final rejection will be sent to the applicants