16 high-performance-quantum-computing-"https:"-"https:"-"https:"-"https:" positions at Chalmers University of Technology
Sort by
Refine Your Search
-
Listed
-
Category
-
Field
-
Are you excited about pioneering experimental quantum computing? Do you want to be part of a world-class research environment developing the next generation of superconducting quantum processors? We
-
of clean-room fabrication processes for high-quality superconducting processors Experimental quantum computing Software development Contract terms Full time permanent employment. What we offer Chalmers
-
contribute to exciting research in scaling up quantum computers in a collaborative and dynamic environment. About us The Department of Microtechnology and Nanoscience advances the frontiers in quantum
-
to develop complement/augment classical CFD methods with quantum algorithms/techniques. The work lies at the intersection of multiphase flow physics, numerical modeling, and quantum computing. Who we
-
This project focuses on the development of quantum–classical modeling strategies for multiphase flow systems. The PhD topic is on exploring how emerging quantum computing methods can be integrated with classical
-
mode and encodes arbitrary quantum information within the logical subspace. At the Applied Quantum Physics Laboratory (AQPL) , we work on theoretical aspects of future high-performance nano-electronic
-
algorithms/techniques. The work lies at the intersection of multiphase flow physics, numerical modeling, and quantum computing. Who we are looking for The following requirements are mandatory: A doctoral
-
modeling strategies for multiphase flow systems. The PhD topic is on exploring how emerging quantum computing methods can be integrated with classical numerical models to improve the simulation of complex
-
computational methodologies, ranging from atomistic and electronic-structure–based materials modeling and characterization, via machine-learning and high-throughput methods, to ab initio calculation
-
Join us for an exciting Doctoral student journey that will combine systems biology, computational modeling, and industrial biotechnology to solve a key challenge in sustainable biomanufacturing