Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Employer
- Fraunhofer-Gesellschaft
- ;
- Cranfield University
- Ghent University
- Lulea University of Technology
- University of Nottingham
- ; The University of Edinburgh
- AALTO UNIVERSITY
- Chalmers University of Technology
- DAAD
- Forschungszentrum Jülich
- Nature Careers
- University of British Columbia
- University of Twente
- ; Anglia Ruskin University
- ; Cranfield University
- ; Loughborough University
- ; The University of Manchester
- ; University of Bristol
- ; University of Leeds
- ; University of Nottingham
- Duke University
- Linköping University
- Ludwig-Maximilians-Universität München •
- Monash University
- NTNU - Norwegian University of Science and Technology
- National Research Council Canada
- Radboud University
- Technical University of Denmark
- Technische Universität Berlin
- The University of Chicago
- University of Copenhagen
- University of Nebraska–Lincoln
- University of Oxford
- University of Southern Denmark
- Yeshiva University
- 26 more »
- « less
-
Field
-
on solid state devices cooperate and actively work as a theorist with experimental partners improving quantum hardware design and implement optimization techniques for full-stack implementation of quantum
-
work together with the PhD candidate. Applicants are encouraged to familiarize themselves with our existing publications . In this work, there is also an expectation to be innovation-oriented, to help us
-
of Information Technology and Electrical Engineering. Knowledge of fundamentals of C++ programming. Competence in code optimization. Knowledge of hardware/software co-design principles, and computer architectures. Good
-
innovation and active participation. For TUD diversity is an essential feature and a quality criterion of an excellent university. Accordingly, we welcome all applicants who would like to commit themselves
-
control, human-robot collaboration, and smart grids. For this reason, their design and deployment should be accompanied by a formal check of correct behaviour. The Research Training Group on Continuous
-
hardware and geometric features. Force protection, physical security, and threat mitigation strategies. Motorsports safety. Product development and innovation. Rail crashworthiness and safety. Run-off-road
-
to co-design algorithms and circuits to develop efficient neuromorphic hardware, tailored to target tasks. In detail, you will: develop circuit-plausible training/inference algorithms and analyze in
-
develop methods to steer developments of large AI systems in such a way that they are environmentally sustainable. To this end, different designs of AI systems should be assessed during the design phase
-
effectors (https://www.youtube.com/watch?v=A_CTqVFJ7Jc). At the Rolls-Royce UTC, we have a unique capability to design, model, and develop robotic systems tailored for operations in restrictive environments
-
diverse patient population. Einstein is home to many Centers of Excellence, including 7 NIH-designated research centers and has annual NIH grant funding of $192M (FY2024). Review of applications will start