Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
The TU/e Built Environment chair of Smart Architectural Technologies is looking for a postdoctoral researcher to study smart living solutions and collaborate in the development of decision-making
-
algorithms in the simulation environment with grid use-case scenarios Integrate and validate solutions in the virtual grid environment. RT2: AI-driven state estimation and prediction This research aims
-
Position Assistant Professor Irène Curie Fellowship No Department(s) Built Environment Reference number V38.7473 Job description Architectural Design and Engineering (ADE) is looking
-
other societal stakeholders. Research environment In this PhD project, you will conduct innovative multidisciplinary research at the intersection between industrial engineering/operations management and
-
well as theoretical areas of cryptology. Our team is especially known for our contributions to post-quantum cryptography. We provide an excellent environment for collaboration and support each other in continuous
-
Validation of the developed algorithms in the simulation environment with grid use-case scenarios Integrate and validate solutions in the virtual grid environment. See for the other 3 reseach tracks below
-
industry-grade etch and deposition equipment. These facilities and the associated expertise are considered to be unique in an academic research environment. The project is supported with the infrastructure
-
starting package for its new faculty members. The city of Eindhoven offers a relaxed, multicultural environment, a high quality of life, and many options for extra-curricular activities. The city has a mild
-
environment. See for the other 3 reseach tracks below: PhD1 / RT1: Synthetical data generation using multivariate models . PhD3 / RT3: Stochastic modelling and reliability assessment . PhD4 / RT4: Grid-edge
-
of an agent-based modelling environment for scenario-based analysis; 3) Validation of the models against real-world user-design case studies; 4) Optimization algorithms for combined charging infrastructure