""" *************************************************************************** * * * This program is free software; you can redistribute it and/or modify * * it under the terms of the GNU General Public License as published by * * the Free Software Foundation; either version 2 of the License, or * * (at your option) any later version. * * * *************************************************************************** """ from typing import Any, Optional from qgis.core import ( QgsFeatureSink, QgsProcessing, QgsProcessingAlgorithm, QgsProcessingContext, QgsProcessingException, QgsProcessingFeedback, QgsProcessingParameterFeatureSink, QgsProcessingParameterFeatureSource, ) from qgis import processing class ExampleProcessingAlgorithm(QgsProcessingAlgorithm): """ This is an example algorithm that takes a vector layer and creates a new identical one. It is meant to be used as an example of how to create your own algorithms and explain methods and variables used to do it. An algorithm like this will be available in all elements, and there is not need for additional work. All Processing algorithms should extend the QgsProcessingAlgorithm class. """ # Constants used to refer to parameters and outputs. They will be # used when calling the algorithm from another algorithm, or when # calling from the QGIS console. INPUT = "INPUT" OUTPUT = "OUTPUT" def name(self) -> str: """ Returns the algorithm name, used for identifying the algorithm. This string should be fixed for the algorithm, and must not be localised. The name should be unique within each provider. Names should contain lowercase alphanumeric characters only and no spaces or other formatting characters. """ return "myscript" def displayName(self) -> str: """ Returns the translated algorithm name, which should be used for any user-visible display of the algorithm name. """ return "My Script" def group(self) -> str: """ Returns the name of the group this algorithm belongs to. This string should be localised. """ return "Example scripts" def groupId(self) -> str: """ Returns the unique ID of the group this algorithm belongs to. This string should be fixed for the algorithm, and must not be localised. The group id should be unique within each provider. Group id should contain lowercase alphanumeric characters only and no spaces or other formatting characters. """ return "examplescripts" def shortHelpString(self) -> str: """ Returns a localised short helper string for the algorithm. This string should provide a basic description about what the algorithm does and the parameters and outputs associated with it. """ return "Example algorithm short description" def initAlgorithm(self, config: Optional[dict[str, Any]] = None): """ Here we define the inputs and output of the algorithm, along with some other properties. """ # We add the input vector features source. It can have any kind of # geometry. self.addParameter( QgsProcessingParameterFeatureSource( self.INPUT, "Input layer", [QgsProcessing.SourceType.TypeVectorAnyGeometry], ) ) # We add a feature sink in which to store our processed features (this # usually takes the form of a newly created vector layer when the # algorithm is run in QGIS). self.addParameter( QgsProcessingParameterFeatureSink(self.OUTPUT, "Output layer") ) def processAlgorithm( self, parameters: dict[str, Any], context: QgsProcessingContext, feedback: QgsProcessingFeedback, ) -> dict[str, Any]: """ Here is where the processing itself takes place. """ # Retrieve the feature source and sink. The 'dest_id' variable is used # to uniquely identify the feature sink, and must be included in the # dictionary returned by the processAlgorithm function. source = self.parameterAsSource(parameters, self.INPUT, context) # If source was not found, throw an exception to indicate that the algorithm # encountered a fatal error. The exception text can be any string, but in this # case we use the pre-built invalidSourceError method to return a standard # helper text for when a source cannot be evaluated if source is None: raise QgsProcessingException( self.invalidSourceError(parameters, self.INPUT) ) (sink, dest_id) = self.parameterAsSink( parameters, self.OUTPUT, context, source.fields(), source.wkbType(), source.sourceCrs(), ) # Send some information to the user feedback.pushInfo(f"CRS is {source.sourceCrs().authid()}") # If sink was not created, throw an exception to indicate that the algorithm # encountered a fatal error. The exception text can be any string, but in this # case we use the pre-built invalidSinkError method to return a standard # helper text for when a sink cannot be evaluated if sink is None: raise QgsProcessingException(self.invalidSinkError(parameters, self.OUTPUT)) # Compute the number of steps to display within the progress bar and # get features from source total = 100.0 / source.featureCount() if source.featureCount() else 0 features = source.getFeatures() for current, feature in enumerate(features): # Stop the algorithm if cancel button has been clicked if feedback.isCanceled(): break # Add a feature in the sink sink.addFeature(feature, QgsFeatureSink.Flag.FastInsert) # Update the progress bar feedback.setProgress(int(current * total)) # To run another Processing algorithm as part of this algorithm, you can use # processing.run(...). Make sure you pass the current context and feedback # to processing.run to ensure that all temporary layer outputs are available # to the executed algorithm, and that the executed algorithm can send feedback # reports to the user (and correctly handle cancellation and progress reports!) if False: buffered_layer = processing.run( "native:buffer", { "INPUT": dest_id, "DISTANCE": 1.5, "SEGMENTS": 5, "END_CAP_STYLE": 0, "JOIN_STYLE": 0, "MITER_LIMIT": 2, "DISSOLVE": False, "OUTPUT": "memory:", }, context=context, feedback=feedback, )["OUTPUT"] # Return the results of the algorithm. In this case our only result is # the feature sink which contains the processed features, but some # algorithms may return multiple feature sinks, calculated numeric # statistics, etc. These should all be included in the returned # dictionary, with keys matching the feature corresponding parameter # or output names. return {self.OUTPUT: dest_id} def createInstance(self): return self.__class__()