Sort by
Refine Your Search
-
Listed
-
Country
-
Employer
- Oak Ridge National Laboratory
- CNRS
- Carnegie Mellon University
- Chalmers University of Technology
- Jönköping University
- Nature Careers
- ;
- Aalborg University
- Aarhus University
- Charles University in Prague
- ELETTRA - SINCROTRONE TRIESTE S.C.P.A.
- FAPESP - São Paulo Research Foundation
- Faculdade de Medicina da Universidade do Porto
- Fraunhofer-Gesellschaft
- Institute of Photonic Sciences
- King Abdullah University of Science and Technology
- NEW YORK UNIVERSITY ABU DHABI
- Old Dominion University Research Fountation
- Rutgers University
- Sandia National Laboratories
- Stanford University
- The University of Arizona
- The University of Memphis
- University of California, Merced
- University of Turku
- Université Marie et Louis Pasteur
- Virginia Tech
- 17 more »
- « less
-
Field
-
optical communication networks and systems, as well as machine learning, computer vision and compressing digital videos. Become a part of our team and join us on our journey of research and innovation! Be
-
loading conditions, including compression–relaxation tests and cyclic loading–unloading. A first stage will focus on analyzing the relationship between the viscoelastic properties of the base polymer and
-
/simulations). The role involves e.g. signal detection in noisy & interfering environments; signal filtering; signal compression; processing of measured data from mmWave RF signals; radar returns; quantum
-
compression Complete temporal and spectral characterization Optimization of performance parameters Setup and implementation of the pump line (THz) Share this opening! Use the following URL: https://jobs.icfo.eu
-
); - Experience with data balancing techniques; - Desirable basic knowledge of Multiple Input, Multiple Output (MIMO), Fluid Antenna System (FAS), and Compressive Sensing (CS); - PhD degree obtained within the last
-
characterization of plant fibers by using a robot with a small tip that can compress the plant fibers one by one. These works demonstrated the capability to efficiently generate experimental tests but, we now want
-
-edge research in LLM. Responsibilities Develop high-efficiency, small-to-medium LLMs optimized for the edge through advanced compression, quantization, and distillation. These techniques empower resource
-
-efficient machine learning and model compression Applications of AI for circular economies Sustainable AI for the smart home Intelligent residential energy aggregation for virtual power plants Trustworthy and
-
-efficient machine learning and model compression Applications of AI for circular economies Sustainable AI for the smart home Intelligent residential energy aggregation for virtual power plants Trustworthy and
-
positions include 9/80 (work 80 hours every two weeks, with every other Friday off) and 4/10 (work 4 ten-hour days each week) compressed workweeks, part-time work, and telecommuting (a mix of onsite work and