Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
project The successful candidate carry out will research in the field of theoretical continuous-variable quantum computation. In particular, the focus will be on bosonic codes, classical simulation
-
, manage infrastructure as code, and troubleshoot source code. If you have a solid foundation in Unix/Linux and are ready to dive into complex technical challenges, then you are the one we are looking
-
, manage infrastructure as code, and troubleshoot source code. If you have a solid foundation in Unix/Linux and are ready to dive into complex technical challenges, then you are the one we are looking
-
challenges, and we are currently moving the code to a new python based High Performance Computing enabled modelling framework. This is an exciting opportunity to contribute to a high-impact scientific codebase
-
, and expertise in the development of reproducible code by using code sharing platforms, workflow languages and container solutions is a strong merit. Consideration will also be given to how
-
environments, safety monitoring for autonomous systems, and code review analysis driven by eye tracking. The division has strong collaborations both locally within Lund University, internationally with other
-
code by using code sharing platforms, version control, workflow languages and container solutions is a merit. Terms of employment The employment is full-time and until further notice. Probationary
-
equality and diversity as a strength and an asset. Subject description Development of quantum chemical methods and computational codes for the accurate description of the electronic structure of large
-
computer simulations. Experience in coding in FORTRAN and Python. Experience in simulations used to interpret experimental data on microgel systems. Consideration will also be given to good collaborative
-
, demonstrated experience of coding in programming languages such as R and Python is considered particularly advantageous. Examples of computationally intensive methods central to IAS and IDA are data-driven text