PatchMatchedSummaryConnections¶
- class lsst.faro.summary.PatchMatchedSummaryConnections(*, config: PipelineTaskConfig | None = None)¶
Bases:
CatalogSummaryBaseConnectionsAttributes Summary
Mapping holding all connection attributes.
Set of dimension names that define the unit of work for this task.
Set with the names of all
InitInputconnection attributes.Set with the names of all
InitOutputconnection attributes.Set with the names of all
connectionTypes.Inputconnection attributes.Connection for output dataset.
Class used for declaring PipelineTask input connections.
Set with the names of all
Outputconnection attributes.Set with the names of all
PrerequisiteInputconnection attributes.Methods Summary
adjustQuantum(inputs, outputs, label, data_id)Override to make adjustments to
lsst.daf.butler.DatasetRefobjects in thelsst.daf.butler.Quantumduring the graph generation stage of the activator.adjust_all_quanta(adjuster)Customize the set of quanta predicted for this task during quantum graph generation.
buildDatasetRefs(quantum)Build
QuantizedConnectioncorresponding to inputQuantum.Return the names of regular input and output connections whose data IDs should be used to compute the spatial bounds of this task's quanta.
Return the names of regular input and output connections whose data IDs should be used to compute the temporal bounds of this task's quanta.
Attributes Documentation
- allConnections: Mapping[str, BaseConnection] = {'measurement': Output(name='metricvalue_{agg_name}_{package}_{metric}', storageClass='MetricValue', doc='{agg_name} {package}_{metric}.', multiple=False, deprecated=None, _deprecation_context='', dimensions=('instrument', 'tract', 'band'), isCalibration=False), 'measurements': Input(name='metricvalue_{package}_{metric}', storageClass='MetricValue', doc='{package}_{metric}.', multiple=True, deprecated=None, _deprecation_context='', dimensions=('tract', 'patch', 'instrument', 'band'), isCalibration=False, deferLoad=False, minimum=1, deferGraphConstraint=False, deferBinding=False)}¶
Mapping holding all connection attributes.
This is a read-only view that is automatically updated when connection attributes are added, removed, or replaced in
__init__. It is also updated after__init__completes to reflect changes ininputs,prerequisiteInputs,outputs,initInputs, andinitOutputs.
- defaultTemplates = {'agg_name': None, 'metric': None, 'package': None}¶
- deprecatedTemplates = {}¶
- dimensions: set[str] = {'band', 'instrument', 'skymap', 'tract'}¶
Set of dimension names that define the unit of work for this task.
Required and implied dependencies will automatically be expanded later and need not be provided.
This may be replaced or modified in
__init__to change the dimensions of the task. After__init__it will be afrozensetand may not be replaced.
- initInputs: set[str] = frozenset({})¶
Set with the names of all
InitInputconnection attributes.See
inputsfor additional information.
- initOutputs: set[str] = frozenset({})¶
Set with the names of all
InitOutputconnection attributes.See
inputsfor additional information.
- inputs: set[str] = frozenset({'measurements'})¶
Set with the names of all
connectionTypes.Inputconnection attributes.This is updated automatically as class attributes are added, removed, or replaced in
__init__. Removing entries from this set will cause those connections to be removed after__init__completes, but this is supported only for backwards compatibility; new code should instead just delete the collection attributed directly. After__init__this will be afrozensetand may not be replaced.
- measurement¶
Connection for output dataset.
- measurements¶
Class used for declaring PipelineTask input connections.
- Attributes:
- name
str The default name used to identify the dataset type.
- storageClass
str The storage class used when (un)/persisting the dataset type.
- multiple
bool Indicates if this connection should expect to contain multiple objects of the given dataset type. Tasks with more than one connection with
multiple=Truewith the same dimensions may want to implementPipelineTaskConnections.adjustQuantumto ensure those datasets are consistent (i.e. zip-iterable) inPipelineTask.runQuantumand notify the execution system as early as possible of outputs that will not be produced because the corresponding input is missing.- dimensionsiterable of
str The
lsst.daf.butler.Butlerlsst.daf.butler.Registrydimensions used to identify the dataset type identified by the specified name.- deferLoad
bool Indicates that this dataset type will be loaded as a
lsst.daf.butler.DeferredDatasetHandle. PipelineTasks can use this object to load the object at a later time.- minimum
bool Minimum number of datasets required for this connection, per quantum. This is checked in the base implementation of
PipelineTaskConnections.adjustQuantum, which raisesNoWorkFoundif the minimum is not met forInputconnections (causing the quantum to be pruned, skipped, or never created, depending on the context), andFileNotFoundErrorforPrerequisiteInputconnections (causing QuantumGraph generation to fail).PipelineTaskimplementations may provide customadjustQuantumimplementations for more fine-grained or configuration-driven constraints, as long as they are compatible with this minium.- deferGraphConstraint
bool, optional If
True, do not include this dataset type’s existence in the initial query that starts the QuantumGraph generation process. This can be used to make QuantumGraph generation faster by avoiding redundant datasets, and in certain cases it can (along with careful attention to which tasks are included in the same QuantumGraph) be used to work around the QuantumGraph generation algorithm’s inflexible handling of spatial overlaps. This option has no effect when the connection is not an overall input of the pipeline (or subset thereof) for which a graph is being created, and it never affects the ordering of quanta.- deferBinding
bool, optional If
True, the dataset will not be automatically included in the pipeline graph,deferGraphConstraintis implied. The custom QuantumGraphBuilder is required to bind it and add a corresponding edge to the pipeline graph. This option allows to have the same dataset type as both input and output of a quantum.
- name
- Raises:
- TypeError
Raised if
minimumis greater than one butmultiple=False.- NotImplementedError
Raised if
minimumis zero for a regularInputconnection; this is not currently supported by our QuantumGraph generation algorithm.
- outputs: set[str] = frozenset({'measurement'})¶
Set with the names of all
Outputconnection attributes.See
inputsfor additional information.
- prerequisiteInputs: set[str] = frozenset({})¶
Set with the names of all
PrerequisiteInputconnection attributes.See
inputsfor additional information.
Methods Documentation
- adjustQuantum(inputs: dict[str, tuple[lsst.pipe.base.connectionTypes.BaseInput, collections.abc.Collection[lsst.daf.butler._dataset_ref.DatasetRef]]], outputs: dict[str, tuple[lsst.pipe.base.connectionTypes.Output, collections.abc.Collection[lsst.daf.butler._dataset_ref.DatasetRef]]], label: str, data_id: DataCoordinate) tuple[collections.abc.Mapping[str, tuple[lsst.pipe.base.connectionTypes.BaseInput, collections.abc.Collection[lsst.daf.butler._dataset_ref.DatasetRef]]], collections.abc.Mapping[str, tuple[lsst.pipe.base.connectionTypes.Output, collections.abc.Collection[lsst.daf.butler._dataset_ref.DatasetRef]]]]¶
Override to make adjustments to
lsst.daf.butler.DatasetRefobjects in thelsst.daf.butler.Quantumduring the graph generation stage of the activator.- Parameters:
- inputs
dict Dictionary whose keys are an input (regular or prerequisite) connection name and whose values are a tuple of the connection instance and a collection of associated
DatasetRefobjects. The exact type of the nested collections is unspecified; it can be assumed to be multi-pass iterable and supportlenandin, but it should not be mutated in place. In contrast, the outer dictionaries are guaranteed to be temporary copies that are truedictinstances, and hence may be modified and even returned; this is especially useful for delegating tosuper(see notes below).- outputs
Mapping Mapping of output datasets, with the same structure as
inputs.- label
str Label for this task in the pipeline (should be used in all diagnostic messages).
- data_id
lsst.daf.butler.DataCoordinate Data ID for this quantum in the pipeline (should be used in all diagnostic messages).
- inputs
- Returns:
- adjusted_inputs
Mapping Mapping of the same form as
inputswith updated containers of inputDatasetRefobjects. Connections that are not changed should not be returned at all. Datasets may only be removed, not added. Nested collections may be of any multi-pass iterable type, and the order of iteration will set the order of iteration withinPipelineTask.runQuantum.- adjusted_outputs
Mapping Mapping of updated output datasets, with the same structure and interpretation as
adjusted_inputs.
- adjusted_inputs
- Raises:
- ScalarError
Raised if any
InputorPrerequisiteInputconnection hasmultipleset toFalse, but multiple datasets.- NoWorkFound
Raised to indicate that this quantum should not be run; not enough datasets were found for a regular
Inputconnection, and the quantum should be pruned or skipped.- FileNotFoundError
Raised to cause QuantumGraph generation to fail (with the message included in this exception); not enough datasets were found for a
PrerequisiteInputconnection.
Notes
The base class implementation performs important checks. It always returns an empty mapping (i.e. makes no adjustments). It should always called be via
superby custom implementations, ideally at the end of the custom implementation with already-adjusted mappings when any datasets are actually dropped, e.g.:def adjustQuantum(self, inputs, outputs, label, data_id): # Filter out some dataset refs for one connection. connection, old_refs = inputs["my_input"] new_refs = [ref for ref in old_refs if ...] adjusted_inputs = {"my_input", (connection, new_refs)} # Update the original inputs so we can pass them to super. inputs.update(adjusted_inputs) # Can ignore outputs from super because they are guaranteed # to be empty. super().adjustQuantum(inputs, outputs, label_data_id) # Return only the connections we modified. return adjusted_inputs, {}
Removing outputs here is guaranteed to affect what is actually passed to
PipelineTask.runQuantum, but its effect on the larger graph may be deferred to execution, depending on the context in whichadjustQuantumis being run: if one quantum removes an output that is needed by a second quantum as input, the second quantum may not be adjusted (and hence pruned or skipped) until that output is actually found to be missing at execution time.Tasks that desire zip-iteration consistency between any combinations of connections that have the same data ID should generally implement
adjustQuantumto achieve this, even if they could also run that logic during execution; this allows the system to see outputs that will not be produced because the corresponding input is missing as early as possible.
- adjust_all_quanta(adjuster: QuantaAdjuster) None¶
Customize the set of quanta predicted for this task during quantum graph generation.
- Parameters:
- adjuster
QuantaAdjuster A helper object that implementations can use to modify the under-construction quantum graph.
- adjuster
Notes
This hook is called before
adjustQuantum, which is where built-in checks forNoWorkFoundcases and missing prerequisites are handled. This means that the set of preliminary quanta seen by this method could include some that would normally be dropped later.
- buildDatasetRefs(quantum: Quantum) tuple[lsst.pipe.base.connections.InputQuantizedConnection, lsst.pipe.base.connections.OutputQuantizedConnection]¶
Build
QuantizedConnectioncorresponding to inputQuantum.- Parameters:
- quantum
lsst.daf.butler.Quantum Quantum object which defines the inputs and outputs for a given unit of processing.
- quantum
- Returns:
- getSpatialBoundsConnections() Iterable[str]¶
Return the names of regular input and output connections whose data IDs should be used to compute the spatial bounds of this task’s quanta.
The spatial bound for a quantum is defined as the union of the regions of all data IDs of all connections returned here, along with the region of the quantum data ID (if the task has spatial dimensions).
- Returns:
- connection_names
collections.abc.Iterable[str] Names of collections with spatial dimensions. These are the task-internal connection names, not butler dataset type names.
- connection_names
Notes
The spatial bound is used to search for prerequisite inputs that have skypix dimensions. The default implementation returns an empty iterable, which is usually sufficient for tasks with spatial dimensions, but if a task’s inputs or outputs are associated with spatial regions that extend beyond the quantum data ID’s region, this method may need to be overridden to expand the set of prerequisite inputs found.
Tasks that do not have spatial dimensions that have skypix prerequisite inputs should always override this method, as the default spatial bounds otherwise cover the full sky.
- getTemporalBoundsConnections() Iterable[str]¶
Return the names of regular input and output connections whose data IDs should be used to compute the temporal bounds of this task’s quanta.
The temporal bound for a quantum is defined as the union of the timespans of all data IDs of all connections returned here, along with the timespan of the quantum data ID (if the task has temporal dimensions).
- Returns:
- connection_names
collections.abc.Iterable[str] Names of collections with temporal dimensions. These are the task-internal connection names, not butler dataset type names.
- connection_names
Notes
The temporal bound is used to search for prerequisite inputs that are calibration datasets. The default implementation returns an empty iterable, which is usually sufficient for tasks with temporal dimensions, but if a task’s inputs or outputs are associated with timespans that extend beyond the quantum data ID’s timespan, this method may need to be overridden to expand the set of prerequisite inputs found.
Tasks that do not have temporal dimensions that do not implement this method will use an infinite timespan for any calibration lookups.