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Configure clusters

Add client side feature reduction on a point feature layer that is not pre-configured with clustering.

Use case

Feature clustering can be used to dynamically aggregate groups of points that are within proximity of each other in order to represent each group with a single symbol. Such grouping allows you to see patterns in the data that are difficult to visualize when a layer contains hundreds or thousands of points that overlap and cover each other. Users can add feature clustering to point feature layers. This is useful when the layer does not have the feature reduction defined or when the existing feature reduction properties need to be overridden.

How to use the sample

Tap the Draw clusters button to set new feature reduction object on the feature layer. Interact with the controls to customize clustering feature reduction properties. Tap on any clustered aggregate geoelement to see the cluster feature count and aggregate fields in the popup.

How it works

  1. Create a map from a web map PortalItem.
  2. Create a ClassBreaksRenderer and define a FieldName and DefaultSymbol. FieldName must be one of the summary fields in the AggregateFields collection.
  3. Add ClassBreak objects each with an associated SimpleMarkerSymbol to the renderer.
  4. Create a ClusteringFeatureReduction using the renderer.
  5. Add AggregateField objects to the feature reduction where the FieldName is the name of the field to aggregate and the StatisticType is the type of aggregation to perform.
  6. Define the MinSymbolSize and MaxSymbolSize for the feature reduction. If these are not defined they default to 12 and 70 respectively.
  7. Add the ClusteringFeatureReduction to the FeatureLayer.
  8. Create a LabelDefinition with a SimpleLabelExpression and TextSymbol to define the cluster label.
  9. Configure a GeoViewTapped event handler on the MapView to display feature cluster information in a PopupViewer.

Relevant API

  • AggregateGeoElement
  • ClassBreaksRenderer
  • FeatureLayer
  • FeatureReduction
  • GeoElement
  • IdentifyLayerResult
  • PopupViewer

About the data

This sample uses a web map that displays residential data for Zurich, Switzerland.

Tags

aggregate, bin, cluster, group, merge, normalize, popup, reduce, renderer, summarize