14 bayesian-object-detection research jobs at Delft University of Technology (TU Delft) in Netherlands
Sort by
Refine Your Search
-
economics (must have been awarded by the agreed-upon starting date). Prior research experience in electrolysis-based plant modelling, techno-economic assessment and heat management, and/or multi-objective
-
such as multiple objectives, the robustness of designs and the transparency of the design recommendation process. The position is offered in the context of the Mobility DesAIgn Lab, a project that
-
on the legal basis of the GDPR: performing a public task in the public interest. You can find more information about this assessment on our website about knowledge security. Please do not contact us for
-
of the risk assessment is carried out on the legal basis of the GDPR: performing a public task in the public interest. You can find more information about this assessment on our website about knowledge security
-
notice (order of months) is required. An excellent ability to think conceptually and quantitatively. An excellent ability to write and communicate in English. An intrinsic motivation to cooperate in a
-
of personal data in the context of the risk assessment is carried out on the legal basis of the GDPR: performing a public task in the public interest. You can find more information about this assessment on our
-
into actionable design specifications. Your approach will embed bias detection and explainable AI techniques to make system reasoning fair and intelligible, empowering public servants to understand and steer how
-
instrumented building models (impervious and with openings). Experiments will use Phase-Detection Probes, high-speed imaging and force/pressure measurements to simultaneously capture detailed air-water features
-
methodological development. Be comfortable with Python or similar programming languages (e.g., for use with the Brightways LCA modelling software). Enjoy thinking creatively to find unconventional solutions
-
. At MPRR, you'll find an open and friendly environment, with opportunities for professional development and training to successfully develop your academic skills. We do not distinguish between hierarchical