This is a Python implementation for the Particle Accelerator Lattice Standard (PALS).
To define the PALS schema, Pydantic is used to map to Python objects, perform automatic validation, and serialize/deserialize data classes to/from many modern file formats. Various modern file formats (e.g., YAML, JSON, TOML, XML, etc.) are supported, which makes the implementation of the schema-following files in any modern programming language easy (e.g., Python, Julia, C++, LUA, Javascript, etc.). Here, we do Python.
This project is a work-in-progress and evolves alongside the Particle Accelerator Lattice Standard (PALS).
This project implements the PALS schema in a file-agnostic way, mirrored in data objects. The corresponding serialized files (and optionally, also the corresponding Python objects) can be human-written, human-read, and automatically validated.
PALS files follow a schema and readers can error out on issues. Not every PALS implementation needs to be as detailed as this reference implementation in Python. Nonetheless, you can use this implementation to convert between differnt file formats or to validate a file before reading it with your favorite YAML/JSON/TOML/XML/... library in your programming language of choice.
This will enable us to:
- exchange lattices between codes;
- use common GUIs for defining lattices;
- use common lattice visualization tools (2D, 3D, etc.).
Why use Pydantic for this implementation?
Implementing directly against a specific file format is possible, but cumbersome.
By using a widely-used schema engine, such as Pydantic, we can get serialization/deserialization to/from various file formats, conversion, and validation "for free".
Preliminary roadmap:
- Define the PALS schema, using Pydantic.
- Document the API.
- Reference implementation in Python. 3.1. Attract additional reference implementations in other languages.
- Add supporting helpers, which can import existing MAD-X, Elegant, SXF files.
4.1. Try to be as feature complete as possible in these importers. - Reuse the reference implementations and implement readers in community codes for beamline modeling (e.g., the BLAST codes).
In order to run the tests and examples locally, please follow these steps:
- Create a conda environment from the
environment.yml
file:conda env create -f environment.yml
- Activate the conda environment:
Please double check the environment name in the
conda activate pals-python
environment.yml
file. - Run the tests locally:
The command line option
pytest tests -v
-v
increases the verbosity of the output. You can also use the command line option-s
to display any test output directly in the console (useful for debugging). Please refer to pytest's documentation for further details on the available command line options and/or runpytest --help
. - Run the examples locally (e.g.,
fodo.py
):python examples/fodo.py