QuantumGraph¶
- class lsst.pipe.base.QuantumGraph(quanta: Mapping[TaskDef, set[lsst.daf.butler._quantum.Quantum]], metadata: Mapping[str, Any] | None = None, universe: DimensionUniverse | None = None, initInputs: Mapping[TaskDef, Iterable[DatasetRef]] | None = None, initOutputs: Mapping[TaskDef, Iterable[DatasetRef]] | None = None, globalInitOutputs: Iterable[DatasetRef] | None = None, registryDatasetTypes: Iterable[DatasetType] | None = None)¶
Bases:
objectQuantumGraph is a directed acyclic graph of
QuantumNodeobjects.This data structure represents a concrete workflow generated from a
Pipeline.- Parameters:
- quanta
Mapping[TaskDef,set[Quantum] ] This maps tasks (and their configs) to the sets of data they are to process.
- metadataOptional
Mappingofstrto primitives This is an optional parameter of extra data to carry with the graph. Entries in this mapping should be able to be serialized in JSON.
- universe
DimensionUniverse, optional The dimensions in which quanta can be defined. Need only be provided if no quanta have data IDs.
- initInputs
Mapping, optional Maps tasks to their InitInput dataset refs. Dataset refs can be either resolved or non-resolved. Presently the same dataset refs are included in each
Quantumfor the same task.- initOutputs
Mapping, optional Maps tasks to their InitOutput dataset refs. Dataset refs can be either resolved or non-resolved. For intermediate resolved refs their dataset ID must match
initInputsand QuantuminitInputs.- globalInitOutputsiterable [
DatasetRef], optional Dataset refs for some global objects produced by pipeline. These objects include task configurations and package versions. Typically they have an empty DataId, but there is no real restriction on what can appear here.
- registryDatasetTypesiterable [
DatasetType], optional Dataset types which are used by this graph, their definitions must match registry. If registry does not define dataset type yet, then it should match one that will be created later.
- quanta
- Raises:
- ValueError
Raised if the graph is pruned such that some tasks no longer have nodes associated with them.
Attributes Summary
All the data set type names that are present in the graph (
tuple[str]).A graph representing the relations between all the
QuantumNodeobjects (networkx.DiGraph).The ID generated by the graph at construction time (
str).The nodes that are inputs to the graph (iterable [
QuantumNode]).Whether all of the nodes in the graph are connected, ignoring directionality of connections (
bool).The nodes that are outputs of the graph (iterable [
QuantumNode]).A graph representation of the tasks and dataset types in the quantum graph.
A graph representing the relations between the tasks inside the quantum graph (
networkx.DiGraph).Dimension universe associated with this graph (
DimensionUniverse).Methods Summary
Create a header that would be used in a save of this object and prints it out to standard out.
checkQuantumInGraph(quantum)Check if specified quantum appears in the graph as part of a node.
Return a graph of the specified node and all the ancestor nodes directly reachable by walking edges.
Return a graph of
QuantumNodethat are direct inputs and outputs of a specified node.Return a set of
QuantumNodethat are direct inputs to a specified node.Return a set of
QuantumNodethat are direct outputs of a specified node.Check a graph for the presense of cycles and returns the edges of any cycles found, or an empty list if there is no cycle.
findQuantaWithDSType(datasetTypeName)Return all the
Quantumthat contain a specifiedDatasetTypeName.findTaskDefByLabel(label)Determine which
TaskDefobjects in this graph are associated with astrrepresenting a tasks label.findTaskDefByName(taskName)Determine which
TaskDefobjects in this graph are associated with astrrepresenting a task name (looks at thetaskNameproperty ofTaskDefobjects).findTaskWithOutput(datasetTypeName)Find all tasks that have the specified dataset type name as an output.
findTasksWithInput(datasetTypeName)Find all tasks that have the specified dataset type name as an input.
getNodesForTask(taskDef)Return all the
QuantumNodes associated with aTaskDef.getNumberOfQuantaForTask(taskDef)getQuantaForTask(taskDef)getQuantumNodeByNodeId(nodeId)Lookup a
QuantumNodefrom an id associated with the node.Create summary of graph.
get_init_input_refs(task_label)Return the DatasetRefs for the given task's init inputs.
get_init_output_refs(task_label)Return the DatasetRefs for the given task's init outputs.
get_task_quanta(label)Return the quanta associated with the given task label.
Return DatasetRefs for global InitOutputs.
initInputRefs(taskDef)Return DatasetRefs for a given task InitInputs.
initOutputRefs(taskDef)Return DatasetRefs for a given task InitOutputs.
init_output_run(butler[, existing])Initialize a new output RUN collection by writing init-output datasets (including configs and packages).
Iterate over the
taskGraphattribute in topological order.load(file[, universe, nodes, graphID, ...])Read
QuantumGraphfrom a file that was made bysave.loadUri(uri[, universe, nodes, graphID, ...])Read
QuantumGraphfrom a URI.make_init_qbb(butler_config, *[, ...])Construct an quantum-backed butler suitable for reading and writing init input and init output datasets, respectively.
readHeader(uri[, minimumVersion])Read the header of a
QuantumGraphpointed to by the uri parameter and return it as a string.Return dataset types used by this graph, their definitions match dataset types from registry.
save(file)Save QuantumGraph to a file.
saveUri(uri)Save
QuantumGraphto the specified URI.subset(nodes)Create a new graph object that contains the subset of the nodes specified as input.
Generate a list of subgraphs where each is connected.
tasksWithDSType(datasetTypeName)Find all tasks that are associated with the specified dataset type name.
updateRun(run, *[, metadata_key, ...])Change output run and dataset ID for each output dataset.
writeDotGraph(output)Write out the graph as a dot graph.
write_configs(butler[, compare_existing])Write the config datasets for all tasks in the quantum graph.
write_init_outputs(butler[, skip_existing])Write the init-output datasets for all tasks in the quantum graph.
write_packages(butler[, compare_existing])Write the 'packages' dataset for the currently-active software versions.
Attributes Documentation
- allDatasetTypes¶
All the data set type names that are present in the graph (
tuple[str]).These types do not include global init-outputs.
- graph¶
A graph representing the relations between all the
QuantumNodeobjects (networkx.DiGraph).The graph should usually be iterated over, or passed to methods of this class, but sometimes direct access to the
networkxobject may be helpful.
- inputQuanta¶
The nodes that are inputs to the graph (iterable [
QuantumNode]).These are the nodes that do not depend on any other nodes in the graph.
- isConnected¶
Whether all of the nodes in the graph are connected, ignoring directionality of connections (
bool).
- metadata¶
Extra data carried with the graph (mapping [
str] orNone).The mapping is a dynamic view of this object’s metadata. Values should be able to be serialized in JSON.
- outputQuanta¶
The nodes that are outputs of the graph (iterable [
QuantumNode]).These are the nodes that have no nodes that depend on them in the graph.
- pipeline_graph¶
A graph representation of the tasks and dataset types in the quantum graph.
- taskGraph¶
A graph representing the relations between the tasks inside the quantum graph (
networkx.DiGraph).
- universe¶
Dimension universe associated with this graph (
DimensionUniverse).
Methods Documentation
- buildAndPrintHeader() None¶
Create a header that would be used in a save of this object and prints it out to standard out.
- checkQuantumInGraph(quantum: Quantum) bool¶
Check if specified quantum appears in the graph as part of a node.
- Parameters:
- quantum
lsst.daf.butler.Quantum The quantum to search for.
- quantum
- Returns:
- in_graph
bool The result of searching for the quantum.
- in_graph
- determineAncestorsOfQuantumNode(node: QuantumNode) _T¶
Return a graph of the specified node and all the ancestor nodes directly reachable by walking edges.
- Parameters:
- node
QuantumNode The node for which all ancestors are to be determined.
- node
- Returns:
- ancestorsgraph of
QuantumNode Graph of node and all of its ancestors.
- ancestorsgraph of
- determineConnectionsOfQuantumNode(node: QuantumNode) _T¶
Return a graph of
QuantumNodethat are direct inputs and outputs of a specified node.- Parameters:
- node
QuantumNode The node of the graph for which connected nodes are to be determined.
- node
- Returns:
- graphgraph of
QuantumNode All the nodes that are directly connected to specified node.
- graphgraph of
- determineInputsToQuantumNode(node: QuantumNode) set[lsst.pipe.base.graph.quantumNode.QuantumNode]¶
Return a set of
QuantumNodethat are direct inputs to a specified node.- Parameters:
- node
QuantumNode The node of the graph for which inputs are to be determined.
- node
- Returns:
- inputs
setofQuantumNode All the nodes that are direct inputs to specified node.
- inputs
- determineOutputsOfQuantumNode(node: QuantumNode) set[lsst.pipe.base.graph.quantumNode.QuantumNode]¶
Return a set of
QuantumNodethat are direct outputs of a specified node.- Parameters:
- node
QuantumNode The node of the graph for which outputs are to be determined.
- node
- Returns:
- outputs
setofQuantumNode All the nodes that are direct outputs to specified node.
- outputs
- findCycle() list[tuple[lsst.pipe.base.graph.quantumNode.QuantumNode, lsst.pipe.base.graph.quantumNode.QuantumNode]]¶
Check a graph for the presense of cycles and returns the edges of any cycles found, or an empty list if there is no cycle.
- Returns:
- result
listoftupleof [QuantumNode,QuantumNode] A list of any graph edges that form a cycle, or an empty list if there is no cycle. Empty list to so support if graph.find_cycle() syntax as an empty list is falsy.
- result
- findQuantaWithDSType(datasetTypeName: DatasetTypeName) set[lsst.daf.butler._quantum.Quantum]¶
Return all the
Quantumthat contain a specifiedDatasetTypeName.- Parameters:
- Returns:
- result
setofQuantumNodeobjects A
setofQuantumNodes that contain specifiedDatasetTypeName.
- result
- Raises:
- KeyError
Raised if the
DatasetTypeNameis not part of theQuantumGraph.
- findTaskDefByLabel(label: str) TaskDef | None¶
Determine which
TaskDefobjects in this graph are associated with astrrepresenting a tasks label.
- findTaskDefByName(taskName: str) list[lsst.pipe.base.pipeline.TaskDef]¶
Determine which
TaskDefobjects in this graph are associated with astrrepresenting a task name (looks at thetaskNameproperty ofTaskDefobjects).Returns a list of
TaskDefobjects as aPipelineTaskmay appear multiple times in a graph with different labels.
- findTaskWithOutput(datasetTypeName: DatasetTypeName) TaskDef | None¶
Find all tasks that have the specified dataset type name as an output.
- Parameters:
- Returns:
- Raises:
- KeyError
Raised if the
DatasetTypeNameis not part of theQuantumGraph.
- findTasksWithInput(datasetTypeName: DatasetTypeName) Iterable[TaskDef]¶
Find all tasks that have the specified dataset type name as an input.
- Parameters:
- Returns:
- Raises:
- KeyError
Raised if the
DatasetTypeNameis not part of theQuantumGraph.
- getNodesForTask(taskDef: TaskDef) frozenset[lsst.pipe.base.graph.quantumNode.QuantumNode]¶
Return all the
QuantumNodes associated with aTaskDef.- Parameters:
- Returns:
- nodes
frozenset[QuantumNode] A
frozensetofQuantumNodethat is associated with the specifiedTaskDef.
- nodes
- getQuantaForTask(taskDef: TaskDef) frozenset[lsst.daf.butler._quantum.Quantum]¶
- getQuantumNodeByNodeId(nodeId: UUID) QuantumNode¶
Lookup a
QuantumNodefrom an id associated with the node.- Parameters:
- nodeId
NodeId The number associated with a node.
- nodeId
- Returns:
- node
QuantumNode The node corresponding with input number.
- node
- Raises:
- KeyError
Raised if the requested nodeId is not in the graph.
- getSummary() QgraphSummary¶
Create summary of graph.
- Returns:
- summary
QgraphSummary Summary of QuantumGraph.
- summary
- get_init_input_refs(task_label: str) list[lsst.daf.butler._dataset_ref.DatasetRef]¶
Return the DatasetRefs for the given task’s init inputs.
- Parameters:
- task_label
str Label of the task.
- task_label
- Returns:
- refs
list[lsst.daf.butler.DatasetRef] Dataset references. Guaranteed to be a new list, not internal state.
- refs
- get_init_output_refs(task_label: str) list[lsst.daf.butler._dataset_ref.DatasetRef]¶
Return the DatasetRefs for the given task’s init outputs.
- Parameters:
- task_label
str Label of the task.
- task_label
- Returns:
- refs
list[lsst.daf.butler.DatasetRef] Dataset references. Guaranteed to be a new list, not internal state.
- refs
- get_task_quanta(label: str) Mapping[UUID, Quantum]¶
Return the quanta associated with the given task label.
- globalInitOutputRefs() list[lsst.daf.butler._dataset_ref.DatasetRef]¶
Return DatasetRefs for global InitOutputs.
- Returns:
- refs
list[DatasetRef] DatasetRefs for global InitOutputs.
- refs
- initInputRefs(taskDef: TaskDef) list[lsst.daf.butler._dataset_ref.DatasetRef] | None¶
Return DatasetRefs for a given task InitInputs.
- Parameters:
- taskDef
TaskDef Task definition structure.
- taskDef
- Returns:
- refs
list[DatasetRef] orNone DatasetRef for the task InitInput, can be
None. This can return either resolved or non-resolved reference.
- refs
- initOutputRefs(taskDef: TaskDef) list[lsst.daf.butler._dataset_ref.DatasetRef] | None¶
Return DatasetRefs for a given task InitOutputs.
- Parameters:
- taskDef
TaskDef Task definition structure.
- taskDef
- Returns:
- refs
list[DatasetRef] orNone DatasetRefs for the task InitOutput, can be
None. This can return either resolved or non-resolved reference. Resolved reference will match Quantum’s initInputs if this is an intermediate dataset type.
- refs
- init_output_run(butler: LimitedButler, existing: bool = True) None¶
Initialize a new output RUN collection by writing init-output datasets (including configs and packages).
- Parameters:
- butler
lsst.daf.butler.LimitedButler A limited butler data repository client.
- existing
bool, optional If
Truecheck or ignore outputs that already exist. IfFalse, always raise if an output dataset already exists.
- butler
- Raises:
- lsst.daf.butler.registry.ConflictingDefinitionError
Raised if there are existing init output datasets, and either
existing=Falseor their contents are not compatible with this graph.
- iterTaskGraph() Generator[TaskDef, None, None]¶
Iterate over the
taskGraphattribute in topological order.
- classmethod load(file: BinaryIO, universe: DimensionUniverse | None = None, nodes: Iterable[UUID] | None = None, graphID: BuildId | None = None, minimumVersion: int = 3) QuantumGraph¶
Read
QuantumGraphfrom a file that was made bysave.- Parameters:
- file
io.IOof bytes File with data open in binary mode.
- universe
DimensionUniverse, optional If
Noneit is loaded from theQuantumGraphsaved structure. If supplied, theDimensionUniversefrom the loadedQuantumGraphwill be validated against the supplied argument for compatibility.- nodesiterable of
uuid.UUIDorNone UUIDs that correspond to nodes in the graph. If specified, only these nodes will be loaded. Defaults to None, in which case all nodes will be loaded.
- graphID
strorNone If specified this ID is verified against the loaded graph prior to loading any Nodes. This defaults to None in which case no validation is done.
- minimumVersion
int Minimum version of a save file to load. Set to -1 to load all versions. Older versions may need to be loaded, and re-saved to upgrade them to the latest format before they can be used in production.
- file
- Returns:
- graph
QuantumGraph Resulting QuantumGraph instance.
- graph
- Raises:
- TypeError
Raised if data contains instance of a type other than
QuantumGraph.- ValueError
Raised if one or more of the nodes requested is not in the
QuantumGraphor if graphID parameter does not match the graph being loaded or if the supplied uri does not point at a validQuantumGraphsave file.
- classmethod loadUri(uri: str | ParseResult | ResourcePath | Path, universe: DimensionUniverse | None = None, nodes: Iterable[UUID] | None = None, graphID: BuildId | None = None, minimumVersion: int = 3) QuantumGraph¶
Read
QuantumGraphfrom a URI.- Parameters:
- uriconvertible to
ResourcePath URI from where to load the graph.
- universe
DimensionUniverse, optional If
Noneit is loaded from theQuantumGraphsaved structure. If supplied, theDimensionUniversefrom the loadedQuantumGraphwill be validated against the supplied argument for compatibility.- nodesiterable of
uuid.UUIDorNone UUIDs that correspond to nodes in the graph. If specified, only these nodes will be loaded. Defaults to None, in which case all nodes will be loaded.
- graphID
strorNone If specified this ID is verified against the loaded graph prior to loading any Nodes. This defaults to None in which case no validation is done.
- minimumVersion
int Minimum version of a save file to load. Set to -1 to load all versions. Older versions may need to be loaded, and re-saved to upgrade them to the latest format before they can be used in production.
- uriconvertible to
- Returns:
- graph
QuantumGraph Resulting QuantumGraph instance.
- graph
- Raises:
- TypeError
Raised if file contains instance of a type other than
QuantumGraph.- ValueError
Raised if one or more of the nodes requested is not in the
QuantumGraphor if graphID parameter does not match the graph being loaded or if the supplied uri does not point at a validQuantumGraphsave file.- RuntimeError
Raise if Supplied
DimensionUniverseis not compatible with theDimensionUniversesaved in the graph.
- make_init_qbb(butler_config: Config | str | ParseResult | ResourcePath | Path, *, config_search_paths: Iterable[str] | None = None) QuantumBackedButler¶
Construct an quantum-backed butler suitable for reading and writing init input and init output datasets, respectively.
This requires the full graph to have been loaded.
- Parameters:
- Returns:
- qbb
QuantumBackedButler A limited butler that can
getinit-input datasets andputinit-output datasets.
- qbb
- classmethod readHeader(uri: str | ParseResult | ResourcePath | Path, minimumVersion: int = 3) str | None¶
Read the header of a
QuantumGraphpointed to by the uri parameter and return it as a string.- Parameters:
- uriconvertible to
ResourcePath The location of the
QuantumGraphto load. If the argument is a string, it must correspond to a validResourcePathpath.- minimumVersion
int Minimum version of a save file to load. Set to -1 to load all versions. Older versions may need to be loaded, and re-saved to upgrade them to the latest format before they can be used in production.
- uriconvertible to
- Returns:
- header
strorNone The header associated with the specified
QuantumGraphit there is one, elseNone.
- header
- Raises:
- ValueError
Raised if the extension of the file specified by uri is not a
QuantumGraphextension.
- registryDatasetTypes() list[lsst.daf.butler._dataset_type.DatasetType]¶
Return dataset types used by this graph, their definitions match dataset types from registry.
- Returns:
- refs
list[DatasetType] Dataset types for this graph.
- refs
- save(file: BinaryIO) None¶
Save QuantumGraph to a file.
- Parameters:
- file
io.BufferedIOBase File to write data open in binary mode.
- file
- saveUri(uri: str | ParseResult | ResourcePath | Path) None¶
Save
QuantumGraphto the specified URI.- Parameters:
- uriconvertible to
ResourcePath URI to where the graph should be saved.
- uriconvertible to
- subset(nodes: QuantumNode | Iterable[QuantumNode]) _T¶
Create a new graph object that contains the subset of the nodes specified as input. Node number is preserved.
- Parameters:
- nodes
QuantumNodeor iterable ofQuantumNode Nodes from which to create subset.
- nodes
- Returns:
- graphinstance of graph type
An instance of the type from which the subset was created.
- subsetToConnected() tuple[_T, ...]¶
Generate a list of subgraphs where each is connected.
- Returns:
- result
listofQuantumGraph A list of graphs that are each connected.
- result
- tasksWithDSType(datasetTypeName: DatasetTypeName) Iterable[TaskDef]¶
Find all tasks that are associated with the specified dataset type name.
- Parameters:
- Returns:
- Raises:
- KeyError
Raised if the
DatasetTypeNameis not part of theQuantumGraph.
- updateRun(run: str, *, metadata_key: str | None = None, update_graph_id: bool = False) None¶
Change output run and dataset ID for each output dataset.
- Parameters:
- run
str New output run name.
- metadata_key
strorNone Specifies matadata key corresponding to output run name to update with new run name. If
Noneor if metadata is missing it is not updated. If metadata is present but key is missing, it will be added.- update_graph_id
bool, optional If
Truethen also update graph ID with a new unique value.
- run
- writeDotGraph(output: str | BufferedIOBase) None¶
Write out the graph as a dot graph.
- Parameters:
- output
strorio.BufferedIOBase Either a filesystem path to write to, or a file handle object.
- output
- write_configs(butler: LimitedButler, compare_existing: bool = True) None¶
Write the config datasets for all tasks in the quantum graph.
- Parameters:
- butler
lsst.daf.butler.LimitedButler A limited butler data repository client.
- compare_existing
bool, optional If
Truecheck configs that already exist for consistency. IfFalse, always raise if configs already exist.
- butler
- Raises:
- lsst.daf.butler.registry.ConflictingDefinitionError
Raised if an config dataset already exists and
compare_existing=False, or if the existing config is not consistent with the config in the quantum graph.
- write_init_outputs(butler: LimitedButler, skip_existing: bool = True) None¶
Write the init-output datasets for all tasks in the quantum graph.
- Parameters:
- butler
lsst.daf.butler.LimitedButler A limited butler data repository client.
- skip_existing
bool, optional If
True(default) ignore init-outputs that already exist. IfFalse, raise.
- butler
- Raises:
- lsst.daf.butler.registry.ConflictingDefinitionError
Raised if an init-output dataset already exists and
skip_existing=False.
- write_packages(butler: LimitedButler, compare_existing: bool = True) None¶
Write the ‘packages’ dataset for the currently-active software versions.
- Parameters:
- butler
lsst.daf.butler.LimitedButler A limited butler data repository client.
- compare_existing
bool, optional If
Truecheck packages that already exist for consistency. IfFalse, always raise if the packages dataset already exists.
- butler
- Raises:
- lsst.daf.butler.registry.ConflictingDefinitionError
Raised if the packages dataset already exists and is not consistent with the current packages.