# scriptconfig **Repository Path**: mirrors_Kitware/scriptconfig ## Basic Information - **Project Name**: scriptconfig - **Description**: No description available - **Primary Language**: Unknown - **License**: Apache-2.0 - **Default Branch**: main - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2020-08-09 - **Last Updated**: 2026-03-14 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README ScriptConfig ============ .. # TODO Get CI services running on gitlab .. #|CircleCI| |Travis| |Codecov| |ReadTheDocs| |GitlabCIPipeline| |GitlabCICoverage| |Appveyor| |Pypi| |PypiDownloads| +------------------+--------------------------------------------------+ | Read the docs | https://scriptconfig.readthedocs.io | +------------------+--------------------------------------------------+ | Gitlab (main) | https://gitlab.kitware.com/utils/scriptconfig | +------------------+--------------------------------------------------+ | Github (mirror) | https://github.com/Kitware/scriptconfig | +------------------+--------------------------------------------------+ | Pypi | https://pypi.org/project/scriptconfig | +------------------+--------------------------------------------------+ * Define concise CLI or function signatures. * Instantiate configs with YAML, cli-args, or kwargs. * Can generate equivalent argparse (can help to prototype and be replaced with pure-argparse). * Nested configuration trees (although flat configuration is recommended when possible). With ``scriptconfig``, define a flat key/value CLI with defaults using a dictionary or dataclass-like syntax. Values can simply be the default value, or a special ``scriptconfig.Value`` class that allows for metadata storage (e.g. help, positional, required, etc...). The configuration can instantiated by either: 1. Updating it with another Python dictionary (e.g. ``kwargs``) 2. Reading a YAML/JSON configuration file, or 3. Inspecting values on ``sys.argv``, in which case we provide a powerful command line interface (CLI). The simplest way to create a script config is to create a class that inherits from ``scriptconfig.DataConfig``. Then, use class variables to define the expected keys and default values. .. code-block:: python import scriptconfig as scfg class ExampleConfig(scfg.DataConfig): """ The docstring will be the description in the CLI help """ # Wrap defaults with `Value` to provide metadata option1 = scfg.Value('default1', help='option1 help') option2 = scfg.Value('default2', help='option2 help') option3 = scfg.Value('default3', help='option3 help') # Wrapping a default with `Value` is optional option4 = 'default4' An instance of a config object will work similarly to a dataclass, but it also implements methods to duck-type a dictionary. Thus a scriptconfig object can be dropped into code that uses an existing dictionary configuration or an existing argparse namespace configuration. .. code-block:: python # Use as a dictionary with defaults config = ExampleConfig(option1=123) print(config) # Can access items like a dictionary print(config['option1']) # OR Can access items like a namespace print(config.option1) Use the ``.cli`` classmethod to create an extended argparse command line interface. Options to the ``cli`` method are similar to ``argparse.ArgumentParser.parse_args``. .. code-block:: python # Use as a argparse CLI config = ExampleConfig.cli(argv=['--option2=overruled']) print(config) After all that, if you still aren't loving scriptconfig, or you can't use it as a dependency in production, you can ask it to convert itself to pure-argparse via ``print(ExampleConfig().port_to_argparse())``, and it will print out: .. code-block:: python import argparse parser = argparse.ArgumentParser( prog='ExampleConfig', description='The docstring will be the description in the CLI help', formatter_class=argparse.RawDescriptionHelpFormatter, ) parser.add_argument('--option1', help='option1 help', default='default1', dest='option1', required=False) parser.add_argument('--option2', help='option2 help', default='default2', dest='option2', required=False) parser.add_argument('--option3', help='option3 help', default='default3', dest='option3', required=False) parser.add_argument('--option4', help='', default='default4', dest='option4', required=False) Of course, the above also removes extra features of scriptconfig - so its not exactly 1-to-1, but it's close. It's also a good tool for transferring any existing intuition about ``argparse`` to ``scriptconfig``. Similarly there is a method which can take an existing ArgumentParser as input, and produce a scriptconfig definition. Given the above ``parser`` object, ``print(scfg.Config.port_from_argparse(parser, style))`` will print out: .. code-block:: python import ubelt as ub import scriptconfig as scfg class MyConfig(scfg.DataConfig): """ The docstring will be the description in the CLI help """ option1 = scfg.Value('default1', help='option1 help') option2 = scfg.Value('default2', help='option2 help') option3 = scfg.Value('default3', help='option3 help') option4 = scfg.Value('default4', help='') Goal ---- The idea is we want to be able to start writing a simple program with a simple configuration and allow it to evolve with minimal refactoring. In the early stages we will insist that there be little-to-no boilerplate, but as a program evolves we will add boilerplate to enhance the featurefull-ness of our program. When we start coding we should aim for something like this: .. code-block:: python def my_function(): config = { 'simple_option1': 1, 'simple_option2': 2, } # Early algorithmic and debugging logic ... As we evolve our code, we can plug scriptconfig in like this: .. code-block:: python def my_function(): default_config = { 'simple_option1': 1, 'simple_option2': 2, } import scriptconfig class MyConfig(scriptconfig.DataConfig): __default__ = default_config config = MyConfig() # Transition algorithmic and debugging logic ... It's not pretty, but it gives us the ability to a fairly advanced CLI right away (i.e by calling the ``.cli`` classmethod) without any major sacrifice to code simplicity. However, as a project evolves we may eventually want to refactor our CLI to gain full control over the metadata in our configuration an CLI. Scriptconfig has a tool to help with this too. Given this janky definition, we can port to a more elegant style. We can run ``print(config.port_to_dataconf())`` which prints: .. code-block:: python import ubelt as ub import scriptconfig as scfg class MyConfig(scfg.DataConfig): """ argparse CLI generated by scriptconfig 0.7.12 """ simple_option1 = scfg.Value(1, help=None) simple_option2 = scfg.Value(2, help=None) And then use that to make the refactor much easier. The final state of a scriptconfig program might look something like this: .. code-block:: python import ubelt as ub import scriptconfig as scfg class MyConfig(scfg.DataConfig): """ This is my CLI description """ simple_option1 = scfg.Value(1, help=ub.paragraph( ''' A reasonably detailed but concise description of an argument. About one paragraph is reasonable. ''') simple_option2 = scfg.Value(2, help='more help is better') @classmethod def main(cls, argv=1, **kwargs): config = cls.cli(argv=argv, data=kwargs) my_function(config) def my_function(config): # Continued algorithmic and debugging logic ... Note that the fundamental impact on the ``...`` -- i.e. the intereting part of the function -- remain completely unchanged! From it's point of view, you never did anything to the original ``config`` dictionary, because scriptconfig duck-typed it at every stage. Installation ------------ The `scriptconfig `_ package can be installed via pip: .. code-block:: bash pip install scriptconfig To install with argcomplete and rich-argparse support, either install these packages separately or use: .. code-block:: bash pip install scriptconfig[optional] Features -------- - Serializes to JSON - Dict-like interface. By default a ``Config`` object operates independent of config files or the command line. - Can create command line interfaces - Can directly create an independent argparse object - Can use special command line loading using ``self.load(cmdline=True)``. This extends the basic argparse interface with: - Can specify options as either ``--option value`` or ``--option=value`` - Default config options allow for "smartcasting" values like lists and paths - Automatically add ``--config``, ``--dumps``, and ``--dump`` CLI options when reading cmdline via ``load``. - Fuzzy hyphen matching: e.g. ``--foo-bar=2`` and ``--foo_bar=2`` are treated the same for argparse options (note: modal commands do not have this option yet) - Inheritance unions configs. - Modal configs (see scriptconfig.modal) - Integration with `argcomplete `_ for shell autocomplete. - Integration with `rich_argparse `_ for colorful CLI help pages. Example Script -------------- Scriptconfig is used to define a flat configuration dictionary with values that can be specified via Python keyword arguments, command line parameters, or a YAML config file. Consider the following script that prints its config, opens a file, computes its hash, and then prints it to stdout. .. code-block:: python import scriptconfig as scfg import hashlib class FileHashConfig(scfg.DataConfig): """ The docstring will be the description in the CLI help """ fpath = scfg.Value(None, position=1, help='a path to a file to hash') hasher = scfg.Value('sha1', choices=['sha1', 'sha512'], help='a name of a hashlib hasher') def main(**kwargs): config = FileHashConfig.cli(data=kwargs) print('config = {!r}'.format(config)) fpath = config['fpath'] hasher = getattr(hashlib, config['hasher'])() with open(fpath, 'rb') as file: hasher.update(file.read()) hashstr = hasher.hexdigest() print('The {hasher} hash of {fpath} is {hashstr}'.format( hashstr=hashstr, **config)) if __name__ == '__main__': main() If this script is in a module ``hash_demo.py`` (e.g. in the examples folder of this repo), it can be invoked in these following ways. Purely from the command line: .. code-block:: bash # Get help python hash_demo.py --help # Using key-val pairs python hash_demo.py --fpath=$HOME/.bashrc --hasher=sha1 # Using a positional arguments and other defaults python hash_demo.py $HOME/.bashrc From the command line using a YAML config: .. code-block:: bash # Write out a config file echo '{"fpath": "hashconfig.json", "hasher": "sha512"}' > hashconfig.json # Use the special `--config` cli arg provided by scriptconfig python hash_demo.py --config=hashconfig.json # You can also mix and match, this overrides the hasher in the config with sha1 python hash_demo.py --config=hashconfig.json --hasher=sha1 Lastly you can call it from good ol' Python. .. code-block:: python import hash_demo hash_demo.main(fpath=hash_demo.__file__, hasher='sha512') Modal CLIs ---------- A ModalCLI defines a way to group several smaller scriptconfig CLIs into a single parent CLI that chooses between them "modally". E.g. if we define two configs: do_foo and do_bar, we use ModalCLI to define a parent program that can run one or the other. Let's make this more concrete. Consider the code in ``examples/demo_modal.py``: .. code-block:: python #!/usr/bin/env python # PYTHON_ARGCOMPLETE_OK import scriptconfig as scfg class DoFooCLI(scfg.DataConfig): option1 = scfg.Value(None, help='option1') @classmethod def main(cls, argv=1, **kwargs): self = cls.cli(argv=argv, data=kwargs) print('Called Foo with: ' + str(self)) class DoBarCLI(scfg.DataConfig): option1 = scfg.Value(None, help='option1') @classmethod def main(cls, argv=1, **kwargs): self = cls.cli(argv=argv, data=kwargs) print('Called Bar with: ' + str(self)) class MyModalCLI(scfg.ModalCLI): __version__ = '1.2.3' do_foo = DoFooCLI do_bar = DoBarCLI if __name__ == '__main__': MyModalCLI().main() Running: ``python examples/demo_modal.py --help``, results in: .. code-block:: usage: demo_modal.py [-h] [--version] {do_foo,do_bar} ... options: -h, --help show this help message and exit --version show version number and exit (default: False) commands: {do_foo,do_bar} specify a command to run do_foo argparse CLI generated by scriptconfig 0.8.5 do_bar argparse CLI generated by scriptconfig 0.8.5 And if you specify a command, ``python examples/demo_modal.py do_bar --help``, you get the help for that subcommand: .. code-block:: usage: demo_modal.py do_bar [-h] [--option1 OPTION1] argparse CLI generated by scriptconfig 0.8.5 options: -h, --help show this help message and exit --option1 OPTION1 option1 (default: None) Autocomplete ------------ If you installed the optional `argcomplete `_ package you will find that pressing tab will autocomplete registered arguments for scriptconfig CLIs. See project instructions for details, but on standard Linux distributions you can enable global completion via: .. code:: bash pip install argcomplete mkdir -p ~/.bash_completion.d activate-global-python-argcomplete --dest ~/.bash_completion.d source ~/.bash_completion.d/python-argcomplete And then add these lines to your ``.bashrc``: .. code:: bash if [ -f "$HOME/.bash_completion.d/python-argcomplete" ]; then source ~/.bash_completion.d/python-argcomplete fi Lastly, ensure your Python script has the following two comments at the top: .. code:: python #!/usr/bin/env python # PYTHON_ARGCOMPLETE_OK Project Design Goals -------------------- * Write Python programs that can be invoked either through the commandline or via Python itself. * Drop in replacement for any dictionary-based configuration system. * Intuitive parsing (currently working on this), ideally improve on argparse if possible. This means being able to easily specify simple lists, numbers, strings, and paths. To get started lets consider some example usage: .. code-block:: python >>> import scriptconfig as scfg >>> # In its simplest incarnation, the config class specifies default values. >>> # For each configuration parameter. >>> class ExampleConfig(scfg.DataConfig): >>> num = 1 >>> mode = 'bar' >>> ignore = ['baz', 'biz'] >>> # Creating an instance, starts using the defaults >>> config = ExampleConfig() >>> assert config['num'] == 1 >>> # Or pass in known data. (load as shown in the original example still works) >>> kwargs = {'num': 2} >>> config = ExampleConfig.cli(default=kwargs, argv=False) >>> assert config['num'] == 2 >>> # The `load` method can also be passed a JSON/YAML file/path. >>> config_fpath = '/tmp/foo' >>> open(config_fpath, 'w').write('{"mode": "foo"}') >>> config.load(config_fpath, cmdline=False) >>> assert config['num'] == 2 >>> assert config['mode'] == "foo" >>> # It is possible to load only from CLI by setting argv=True >>> # or by setting it to a custom sys.argv >>> config = ExampleConfig.cli(argv=['--num=4']) >>> assert config['num'] == 4 >>> # Note that using `config.load(cmdline=True)` will just use the >>> # contents of sys.argv Notice in the above example the keys in your default dictionary are command line arguments and values are their defaults. You can augment default values by wrapping them in ``scriptconfig.Value`` objects to encapsulate information like help documentation or type information. .. code-block:: python >>> import scriptconfig as scfg >>> class ExampleConfig(scfg.Config): >>> __default__ = { >>> 'num': scfg.Value(1, help='a number'), >>> 'mode': scfg.Value('bar', help='mode1 help'), >>> 'mode2': scfg.Value('bar', type=str, help='mode2 help'), >>> 'ignore': scfg.Value(['baz', 'biz'], help='list of ignore vals'), >>> } >>> config = ExampleConfig() >>> # smartcast can handle lists as long as there are no spaces >>> config.load(cmdline=['--ignore=spam,eggs']) >>> assert config['ignore'] == ['spam', 'eggs'] >>> # Note that the Value type can influence how data is parsed >>> config.load(cmdline=['--mode=spam,eggs', '--mode2=spam,eggs']) (Note the above example uses the older ``Config`` usage pattern where attributes are members of a ``__default__`` dictionary. The ``DataConfig`` class should be favored moving forward past version 0.6.2. However, the ``__default__`` attribute is always available if you have an existing dictionary you want to wrap with scriptconfig. Nested Configs -------------- As of version 0.9.0 scriptconfig supports **nested configuration trees**. This lets you build hierarchical Config/DataConfig structures while keeping selector-aware CLI parsing and simple dotted overrides. Nested configs are experimental, and some details may be subject to change. .. code-block:: python import scriptconfig as scfg class Adam(scfg.DataConfig): lr = 1e-3 beta1 = 0.9 class Sgd(scfg.DataConfig): lr = 1e-2 momentum = 0.9 class TrainCfg(scfg.DataConfig): optim = Adam epochs = scfg.Value(10, type=int) if __name__ == '__main__': config = TrainCfg.cli(verbose=True) The idea is that when the value of a config option is another Config class, that indicates a nested config. You can swap the nested node *and* override leaf values from the CLI: .. code-block:: bash python train.py --optim=Sgd --optim.momentum=0.8 --epochs=20 For a longer walkthrough (including YAML/JSON examples), see ``docs/source/manual/nested_configs.rst``. Gotchas ------- **CLI Values with commas:** When using ``scriptconfig`` to generate a command line interface, it uses a function called ``smartcast`` to try to determine input type when it is not explicitly given. If you've ever used a program that tries to be "smart" you'll know this can end up with some weird behavior. The case where that happens here is when you pass a value that contains commas on the command line. If you don't specify the default value as a ``scriptconfig.Value`` with a specified ``type``, if will interpret your input as a list of values. In the future we will change the behavior of ``smartcast``, or prevent it from being used as a default. This new behavior can be achived by explicitly passing the keyword argument ``type='smartcast:v1'`` to ``Value``. **Boolean flags and positional arguments:** ``scriptconfig`` always provides a key/value way to express arguments. However, it also recognizes that sometimes you want to just type ``--flag`` and not ``--flag=1``. We allow for this for ``Values`` with ``isflag=1``, but this causes a corner-case ambituity with positional arguments. For the following example: .. code:: python class MyConfig(scfg.DataConfig): arg1 = scfg.Value(None, position=1) flag1 = scfg.Value(False, isflag=True, position=1) For ``--flag 1`` We cannot determine if you wanted ``{'arg1': 1, 'flag1': False}`` or ``{'arg1': None, 'flag1': True}``. This is fixable by either using strict key/value arguments, expressing all positional arguments before using flag arguments, or using the `` -- `` construct and putting all positional arguments at the end. As of version 0.9.0, this ambiguous combination is rejected (an error is raised) to prevent unintended usage. FAQ --- Question: How do I override the default values for a scriptconfig object using JSON file? Answer: This depends if you want to pass the path to that JSON file via the command line or if you have that file in memory already. There are ways to do either. In the first case you can pass ``--config=`` (assuming you have set the ``argv=True`` keyword arg when creating your config object e.g.: ``config = MyConfig(argv=True)``. In the second case when you create an instance of the scriptconfig object pass the ``default=`` when creating the object: e.g. ``config = MyConfig(default=json.load(open(fpath, 'r')))``. But the special ``--config`` ``--dump`` and ``--dumps`` CLI arg is baked into script config to make this easier. Related Software ---------------- I've never been completely happy with existing config / argument parser software. I prefer to not use decorators, so click and to some extend hydra are no-gos. Fire is nice when you want a really quick CLI, but is not so nice if you ever go to deploy the program in the real world. The builtin argparse in Python is pretty good, but I with it was easier to do things like allowing arguments to be flags or key/value pairs. This library uses argparse under the hood because of its stable and standard backend, but that does mean we inherit some of its quirks. The configargparse library - like this one - augments argparse with the ability to read defaults from config files, but it has some major usage limitations due to its implementation and there are better options (like jsonargparse). It also does not support the use case of calling the CLI as a Python function very well. The jsonargparse library is newer than this one, and looks very compelling. It has strong support for hierarchical configs and is worth a look. However, its type strictness has caused issues, thus we implement a similar but slightly different solution. In Version 0.9.0, scriptconfig now supports nested config trees via ``SubConfig`` (including selector-aware CLI parsing and dotted overrides), so choose whichever fits your project's constraints and style. See ``docs/source/manual/nested_configs.rst`` for more details. Hydra - https://hydra.cc/docs/intro/ OmegaConf - https://omegaconf.readthedocs.io/en/latest/index.html Argparse - https://docs.python.org/3/library/argparse.html JsonArgparse - https://jsonargparse.readthedocs.io/en/stable/index.html Fire - https://pypi.org/project/fire/ Click - https://pypi.org/project/click/ ConfigArgparse - https://pypi.org/project/ConfigArgParse/ Tyro - https://github.com/brentyi/tyro Typer - https://typer.tiangolo.com/ TODO ---- - [x] Nested Modal CLI's - [ ] Fuzzy hyphens in ModelCLIs - [X] Policy on nested hierarchies - (selector-aware CLI + dotted overrides, similar to jsonargparse) - [ ] Policy on smartcast (currently enabled, behavior will change in version 1.0) - [ ] Find a way to gracefully way to make smartcast do less. (e.g. no list parsing, but int is ok, we may think about accepting YAML) - [X] Policy on positional arguments (currently experimental) - we have implemented them permissively with one undefined corner case. - [X] Fixed length - nope - [X] Variable length - [X] Can argparse be modified to always allow for them to appear at the beginning or end? - Probably not. - [x] Can we get argparse to allow a positional arg change the value of a prefixed arg and still have a sane help menu? - [x] Policy on boolean flags - See the ``isflag`` argument of ``scriptconfig.Value`` - [x] Improve over argparse's default autogenerated help docs (needs exploration on what is possible with argparse and where extensions are feasible) .. |GitlabCIPipeline| image:: https://gitlab.kitware.com/utils/scriptconfig/badges/main/pipeline.svg :target: https://gitlab.kitware.com/utils/scriptconfig/-/jobs .. |GitlabCICoverage| image:: https://gitlab.kitware.com/utils/scriptconfig/badges/main/coverage.svg :target: https://gitlab.kitware.com/utils/scriptconfig/commits/main .. # See: https://ci.appveyor.com/project/jon.crall/scriptconfig/settings/badges .. |Appveyor| image:: https://ci.appveyor.com/api/projects/status/br3p8lkuvol2vas4/branch/main?svg=true :target: https://ci.appveyor.com/project/jon.crall/scriptconfig/branch/main .. |Codecov| image:: https://codecov.io/github/Erotemic/scriptconfig/badge.svg?branch=main&service=github :target: https://codecov.io/github/Erotemic/scriptconfig?branch=main .. |Pypi| image:: https://img.shields.io/pypi/v/scriptconfig.svg :target: https://pypi.python.org/pypi/scriptconfig .. |PypiDownloads| image:: https://img.shields.io/pypi/dm/scriptconfig.svg :target: https://pypistats.org/packages/scriptconfig .. |ReadTheDocs| image:: https://readthedocs.org/projects/scriptconfig/badge/?version=latest :target: http://scriptconfig.readthedocs.io/en/latest/