Performance Metrics
Clusters
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Auto-Discovered
Exemplars
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Cluster Representatives
Silhouette
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Weak separation
Damping
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Convergence control
Duration
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Compute Time
About Affinity Propagation
Unlike K-Means, Affinity Propagation automatically discovers the number of clusters. It identifies exemplars – actual data points that serve as cluster centers – through a message-passing algorithm. Points "vote" for their preferred exemplars via "responsibility" and "availability" messages.
Interactive Visualization
Cluster Visualization
Interactive scatter plot with cluster centroids
Run training to render the scatter plot
Advanced Analysis
Deep Dive Analysis
Advanced metrics and interpretation tools
Recent Jobs
Job History
Recent jobs — auto-pruned to keep 10 per type
No jobs recorded yet. Run a clustering, classification, or pipeline job to see results here.