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torch.js· 2026
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viz.analysis.KMeansResult

export interface KMeansResult {
  /** Cluster assignments for each point [N] */
  labels: Uint32Array;
  /** Cluster centroids [K, D] */
  centroids: Float32Array;
  /** Inertia (sum of squared distances) */
  inertia: number;
  /** Number of iterations until convergence */
  iterations: number;
}
labels(Uint32Array)
– Cluster assignments for each point [N]
centroids(Float32Array)
– Cluster centroids [K, D]
inertia(number)
– Inertia (sum of squared distances)
iterations(number)
– Number of iterations until convergence
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