corgidrp.walker#
Attributes#
Functions#
|
Automatically create a recipe and process the input filelist. |
|
Automatically creates a recipe (or recipes) by identifyng and populating a template. |
|
Guesses what template should be used to process a specific image |
|
Saves the dataset or image that has currently been outputted by the last step function. |
|
Run the specified recipe |
Module Contents#
- corgidrp.walker.walk_corgidrp(filelist, CPGS_XML_filepath, outputdir, template=None)[source]#
Automatically create a recipe and process the input filelist. Does both the autogen_recipe and run_recipe steps.
- Parameters:
filelist (list of str) – list of filepaths to files
CPGS_XML_filepath (str) – path to CPGS XML file for this set of files in filelist
outputdir (str) – output directory folderpath
template (str or json) – custom template. It can be one of three things * the full json object, * a filename of a template that’s already in the recipe_templates folder * a filepath to a template on disk somewhere
- Returns:
the JSON recipe (or list of JSON recipes) that was used for processing
- Return type:
json or list
- corgidrp.walker.autogen_recipe(filelist, outputdir, template=None)[source]#
Automatically creates a recipe (or recipes) by identifyng and populating a template. Returns a single recipe unless there are multiple recipes that should be produced.
- Parameters:
filelist (list of str) – list of filepaths to files
outputdir (str) – output directory folderpath
template (json) – enables passing in of custom template, if desired
- Returns:
the JSON recipe (or list of recipes) that the input filelist will be processed with
- Return type:
json list
- corgidrp.walker.guess_template(dataset)[source]#
Guesses what template should be used to process a specific image
- Parameters:
dataset (corgidrp.data.Dataset) – a Dataset to process
- Returns:
the best template filename, a list of multiple template filenames, or a list of template chains bool: whether multiple recipes are chained together. If True, the output of the first recipe
should be used as the input to the second recipe. If False, the same input should be used for all recipes. This keyworkd is irrelevant if only a single recipe is returned.
- Return type:
str or list
- corgidrp.walker.save_data(dataset_or_image, outputdir, suffix='', ram_heavy_save=False)[source]#
Saves the dataset or image that has currently been outputted by the last step function. Records calibration frames into the caldb during the process
- Parameters:
dataset_or_image (corgidrp.data.Dataset or corgidrp.data.Image) – data to save
outputdir (str) – path to directory where files should be saved
suffix (str) – optional suffix to tack onto the filename. E.g.: test.fits with suffix=”dark” becomes test_dark.fits
ram_heavy_save (bool) – If True, the input is assumed to have no data loaded into memory. (Only metadata was manipulated in step leading up to save_data.) The data is loaded from the filepath frame by frame, and each Image is saved to outputdir. Defaults to False.
- corgidrp.walker.run_recipe(recipe, save_recipe_file=True)[source]#
Run the specified recipe
- Parameters:
recipe (dict or str) – either the filepath to the recipe or the already loaded in recipe
save_recipe_file (bool) – saves the recipe as a JSON file in the outputdir (true by default)
- Returns:
list of filepaths to the saved files, or None if no files were saved
- Return type:
list