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torch.js· 2026
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viz.analysis.KDEResult

export interface KDEResult {
  /** Evaluation points (x values) */
  x: Float32Array;
  /** Density estimates (y values) */
  density: Float32Array;
  /** Bandwidth used */
  bandwidth: number;
  /** Kernel type used */
  kernel: KernelType;
  /** Number of data points */
  numSamples: number;
  /** Peak density value */
  maxDensity: number;
  /** Mode (x value at peak density) */
  mode: number;
}
x(Float32Array)
– Evaluation points (x values)
density(Float32Array)
– Density estimates (y values)
bandwidth(number)
– Bandwidth used
kernel(KernelType)
– Kernel type used
numSamples(number)
– Number of data points
maxDensity(number)
– Peak density value
mode(number)
– Mode (x value at peak density)

Result of KDE computation.

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