PSyclone is a source-to-source Fortran compiler designed to programmatically optimise, parallelise and instrument HPC applications via user-provided transformation scripts. By encapsulating the performance-portability aspects (e.g. whether to parallelise with OpenMP or OpenACC), these scripts enable a separation of concerns between the scientific implementation and the optimisation choices. This allows each aspect to be explored and developed largely independently. Additionally, PSyclone supports the development of kernel-based Fortran-embedded DSLs following the PSyKAl model developed in the GungHo project.
PSyclone is currently used to support the LFRic mixed finite-element PSyKAl DSL for the UK MetOffice's next generation modelling system and the GOcean finite-difference PSyKAl DSL for a prototype 2D ocean modelling system. It is also used to insert GPU offloading directives into existing directly-addressed MPI applications such as the NEMO ocean model.
For more detailed information see the psyclone.pdf in this directory or the PSyclone User Guide.
You can install the latest release of psyclone from PyPI by using:
$ pip install psyclone
or, if you want an isolated installation in a python virtual environment:
$ python -m venv <virtual_env_name>
$ source <virtual_env_name>/bin/activate
$ pip install psyclone
Alternatively, you can install the latest upstream version of psyclone by cloning this repository and using:
$ pip install .
For more information about the installation process see this section of the User Guide.
Path | Description |
---|---|
bin/ | Top-level driver scripts for PSyclone and the PSyclone kernel tool |
changelog | Information on changes between releases |
doc/ | Documentation source using Sphinx |
examples/ | Simple examples |
psyclone.pdf | Generated documentation |
README.md | This file |
README.gource | Information on how to generate a gource video from the repository |
README.uml | Information on how to create UML class diagrams from the source using pyreverse |
src/psyclone | The Python source code |
src/psyclone/tests/ | Unit and functional tests using pytest |
tutorial/notebooks | Tutorial using Jupyter notebooks |
tutorial/practicals | Hands-on exercises using a local installation of PSyclone |