QuantaAdjuster¶
- class lsst.pipe.base.QuantaAdjuster(task_label: str, pipeline_graph: PipelineGraph, skeleton: QuantumGraphSkeleton)¶
- Bases: - object- A helper class for the - PipelineTaskConnections.adjust_all_quantahook.- Parameters:
- task_labelstr
- Label of the task whose quanta are being adjusted. 
- pipeline_graphpipeline_graph.PipelineGraph
- Pipeline graph the quantum graph is being built from. 
- skeletonquantum_graph_skeleton.QuantumGraphSkeleton
- Under-construction quantum graph that will be modified in place. 
 
- task_label
 - Attributes Summary - The number of quanta that have been removed by this helper. - The label this task has been configured with. - The node for this task in the pipeline graph. - Methods Summary - add_input(quantum_data_id, connection_name, ...)- Add a new input to a quantum. - expand_quantum_data_id(data_id)- Expand a quantum data ID to include implied values and dimension records. - get_inputs(quantum_data_id)- Return the data IDs of all regular inputs to a quantum. - Iterate over the data IDs of all quanta for this task." - remove_quantum(data_id)- Remove a quantum from the graph. - Attributes Documentation - n_removed¶
- The number of quanta that have been removed by this helper. 
 - task_label¶
- The label this task has been configured with. 
 - task_node¶
- The node for this task in the pipeline graph. 
 - Methods Documentation - add_input(quantum_data_id: DataCoordinate, connection_name: str, dataset_data_id: DataCoordinate) None¶
- Add a new input to a quantum. - Parameters:
- quantum_data_idDataCoordinate
- Data ID of the quantum to add an input to. 
- connection_namestr
- Name of the connection (the task-internal name, not the butler dataset type name). 
- dataset_data_idDataCoordinate
- Data ID of the input dataset. Must already exist in the graph as an input to a different quantum of this task, and must be a regular input, not a prerequisite input or init-input. 
 
- quantum_data_id
 - Notes - If two connections have the same dataset type, the current implementation assumes the set of datasets is the same for the two connections. This limitation may be removed in the future. 
 - expand_quantum_data_id(data_id: DataCoordinate) DataCoordinate¶
- Expand a quantum data ID to include implied values and dimension records. - Parameters:
- quantum_data_idDataCoordinate
- A data ID of a quantum already in the graph. 
 
- quantum_data_id
- Returns:
- expanded_data_idDataCoordinate
- The same data ID, with implied values included and dimension records attached. 
 
- expanded_data_id
 
 - get_inputs(quantum_data_id: DataCoordinate) dict[str, list[lsst.daf.butler.dimensions._coordinate.DataCoordinate]]¶
- Return the data IDs of all regular inputs to a quantum. - Parameters:
- data_idDataCoordinate
- Data ID of the quantum to get the inputs of. 
 
- data_id
- Returns:
- inputsdict[str,list[DataCoordinate] ]
- Data IDs of inputs, keyed by the connection name (the internal task name, not the dataset type name). This only contains regular inputs, not init-inputs or prerequisite inputs. 
 
- inputs
 - Notes - If two connections have the same dataset type, the current implementation assumes the set of datasets is the same for the two connections. This limitation may be removed in the future. 
 - iter_data_ids() Iterator[DataCoordinate]¶
- Iterate over the data IDs of all quanta for this task.” - Returns:
- data_idsIterator[DataCoordinate]
- Data IDs. These are minimal data IDs without dimension records or implied values; use - expand_quantum_data_idto get a full data ID when needed.
 
- data_ids
 
 - remove_quantum(data_id: DataCoordinate) None¶
- Remove a quantum from the graph. - Parameters:
- data_idDataCoordinate
- Data ID of the quantum to remove. All outputs will be removed as well. 
 
- data_id