Sort by
Refine Your Search
-
Category
-
Country
-
Employer
- Delft University of Technology (TU Delft)
- Technical University of Munich
- University of Basel
- Cranfield University
- Forschungszentrum Jülich
- Tallinn University of Technology
- Vrije Universiteit Brussel
- Auburn University
- CNRS
- Centre de Mise en Forme des Matériaux (CEMEF)
- ETH Zürich
- Edge Hill University
- Empa
- IC2MP
- Inria, the French national research institute for the digital sciences
- KU LEUVEN
- Leiden University
- Loughborough University;
- Ludwig-Maximilians-Universität München •
- Mälardalen University
- NTNU Norwegian University of Science and Technology
- Nature Careers
- Norwegian University of Life Sciences (NMBU)
- REQUIMTE - Rede de Quimica e Tecnologia
- UTTOP
- Universidade de Coimbra
- Universite de Montpellier
- University of Amsterdam (UvA)
- University of Bremen •
- University of Cambridge;
- University of Dundee;
- University of Sheffield
- University of Texas at El Paso
- University of Twente
- University of Twente (UT)
- 25 more »
- « less
-
Field
-
parameters for year-round thermal comfort. This objective focuses on developing parametric design workflows to systematically evaluate how urban form, surface materiality, and vegetation influence dynamic
-
precursors in the total exposure scenario, and the potential effects on physiology and reproductive parameters. In collaboration with partners at NINA, the results will be applied to model the possible effects
-
with high-dimensional, often noisy, data sets; and mathematical modelling approaches that reduce the dimensionality of parameter spaces and produce mechanistically realistic, experimentally testable
-
of the applied currents, leading to large parameter spaces for applications. To optimize tACS towards a technique of network stimulation in the human brain, we use computational modeling at the population level
-
Analyze dynamical states of spiking complex neuron networks with respect to network topology and neuron parameters Development of learning rules considering the strong non-linearities of the neurons
-
Centre de Mise en Forme des Matériaux (CEMEF) | Sophia Antipolis, Provence Alpes Cote d Azur | France | 3 months ago
of material deposited, while maintaining the expected accuracy. Part of the activity will also involve implementing Artificial Intelligence (AI) methods similar to computer vision to facilitate this prediction
-
vision imaging technologies and machine learning methods to estimate physiological parameters (eat-readiness, shelf-life) of fruits at industrial sorting speeds. The work will include creating an accurate
-
of the position is the use and extension of the TU Delft Astrodynamics Toolbox (Tudat) open-source astrodynamics toolbox for state estimation and orbit/parameter determination, enabling rigorous fusion
-
over open water. The central challenge lies in recovering reliable environmental parameters from water-surface imagery in which multiple physical factors are tightly coupled. Illumination angle, spectral
-
is open, in the last five years or the extended period requested, if accepted by the committee, with a weight of 80%, based on the following parameters: IV.2.1.1. Scientific, technological, cultural