LimitedButler¶
- class lsst.daf.butler.LimitedButler¶
Bases:
ABCA minimal butler interface that is sufficient to back
PipelineTaskexecution.Attributes Summary
This is a Generation 3 Butler.
Structure managing all dimensions recognized by this data repository (
DimensionUniverse).Methods Summary
datasetExistsDirect(ref)Return
Trueif a dataset is actually present in the Datastore.getDirect(ref, *[, parameters, storageClass])Retrieve a stored dataset.
getDirectDeferred(ref, *[, parameters, ...])Create a
DeferredDatasetHandlewhich can later retrieve a dataset, from a resolvedDatasetRef.markInputUnused(ref)Indicate that a predicted input was not actually used when processing a
Quantum.pruneDatasets(refs, *[, disassociate, ...])Remove one or more datasets from a collection and/or storage.
putDirect(obj, ref)Store a dataset that already has a UUID and
RUNcollection.Attributes Documentation
- GENERATION: ClassVar[int] = 3¶
This is a Generation 3 Butler.
This attribute may be removed in the future, once the Generation 2 Butler interface has been fully retired; it should only be used in transitional code.
- dimensions¶
Structure managing all dimensions recognized by this data repository (
DimensionUniverse).
Methods Documentation
- datasetExistsDirect(ref: DatasetRef) bool¶
Return
Trueif a dataset is actually present in the Datastore.- Parameters:
- ref
DatasetRef Resolved reference to a dataset.
- ref
- Returns:
- exists
bool Whether the dataset exists in the Datastore.
- exists
- getDirect(ref: DatasetRef, *, parameters: Dict[str, Any] | None = None, storageClass: StorageClass | str | None = None) Any¶
Retrieve a stored dataset.
Unlike
Butler.get, this method allows datasets outside the Butler’s collection to be read as long as theDatasetRefthat identifies them can be obtained separately.- Parameters:
- ref
DatasetRef Resolved reference to an already stored dataset.
- parameters
dict Additional StorageClass-defined options to control reading, typically used to efficiently read only a subset of the dataset.
- storageClass
StorageClassorstr, optional The storage class to be used to override the Python type returned by this method. By default the returned type matches the dataset type definition for this dataset. Specifying a read
StorageClasscan force a different type to be returned. This type must be compatible with the original type.
- ref
- Returns:
- obj
object The dataset.
- obj
- Raises:
- AmbiguousDatasetError
Raised if
ref.id is None, i.e. the reference is unresolved.
- getDirectDeferred(ref: DatasetRef, *, parameters: dict | None = None, storageClass: StorageClass | str | None = None) DeferredDatasetHandle¶
Create a
DeferredDatasetHandlewhich can later retrieve a dataset, from a resolvedDatasetRef.- Parameters:
- ref
DatasetRef Resolved reference to an already stored dataset.
- parameters
dict Additional StorageClass-defined options to control reading, typically used to efficiently read only a subset of the dataset.
- storageClass
StorageClassorstr, optional The storage class to be used to override the Python type returned by this method. By default the returned type matches the dataset type definition for this dataset. Specifying a read
StorageClasscan force a different type to be returned. This type must be compatible with the original type.
- ref
- Returns:
- obj
DeferredDatasetHandle A handle which can be used to retrieve a dataset at a later time.
- obj
- Raises:
- AmbiguousDatasetError
Raised if
ref.id is None, i.e. the reference is unresolved.
- markInputUnused(ref: DatasetRef) None¶
Indicate that a predicted input was not actually used when processing a
Quantum.- Parameters:
- ref
DatasetRef Reference to the unused dataset.
- ref
Notes
By default, a dataset is considered “actually used” if it is accessed via
getDirector a handle to it is obtained viagetDirectDeferred(even if the handle is not used). This method must be called after one of those in order to remove the dataset from the actual input list.This method does nothing for butlers that do not store provenance information (which is the default implementation provided by the base class).
- abstract pruneDatasets(refs: Iterable[DatasetRef], *, disassociate: bool = True, unstore: bool = False, tags: Iterable[str] = (), purge: bool = False) None¶
Remove one or more datasets from a collection and/or storage.
- Parameters:
- refs
IterableofDatasetRef Datasets to prune. These must be “resolved” references (not just a
DatasetTypeand data ID).- disassociate
bool, optional Disassociate pruned datasets from
tags, or from all collections ifpurge=True.- unstore
bool, optional If
True(Falseis default) remove these datasets from all datastores known to this butler. Note that this will make it impossible to retrieve these datasets even via other collections. Datasets that are already not stored are ignored by this option.- tags
Iterable[str], optional TAGGEDcollections to disassociate the datasets from. Ignored ifdisassociateisFalseorpurgeisTrue.- purge
bool, optional If
True(Falseis default), completely remove the dataset from theRegistry. To prevent accidental deletions,purgemay only beTrueif all of the following conditions are met:This mode may remove provenance information from datasets other than those provided, and should be used with extreme care.
- refs
- Raises:
- TypeError
Raised if the butler is read-only, if no collection was provided, or the conditions for
purge=Truewere not met.
- abstract putDirect(obj: Any, ref: DatasetRef) DatasetRef¶
Store a dataset that already has a UUID and
RUNcollection.- Parameters:
- obj
object The dataset.
- ref
DatasetRef Resolved reference for a not-yet-stored dataset.
- obj
- Returns:
- ref
DatasetRef The same as the given, for convenience and symmetry with
Butler.put.
- ref
- Raises:
- TypeError
Raised if the butler is read-only.
- AmbiguousDatasetError
Raised if
ref.id is None, i.e. the reference is unresolved.
Notes
Whether this method inserts the given dataset into a
Registryis implementation defined (someLimitedButlersubclasses do not have aRegistry), but it always adds the dataset to aDatastore, and the givenref.idandref.runare always preserved.