/**
 * Finds the nearest neighbors to a given query embedding from a list of samples
 * based on the specified distance/similarity method.
 *
 * `'cosine'`: Cosine similarity (higher = more similar, range: [-1, 1]).
 *
 * `'euclidean'`: Euclidean distance (lower = closer, ≥ 0).
 *
 * `'manhattan'`: Manhattan distance (lower = closer, ≥ 0).
 *
 * @public
 * @param {number[]} queryEmbedding - The embedding vector to compare against.
 * @param {{ embedding: number[], label: string }[]} samples - An array of samples, each with an `embedding` and a `label`.
 * @param {object} [options={}] - Optional settings.
 * @param {number} [options.topK=1] - Number of top results to return. Default is 1.
 * @param {number} [options.threshold] - Minimum similarity score threshold for results (cosine) or maximum distance threshold (euclidean/manhattan).
 * @param {'cosine' | 'euclidean' | 'manhattan'} [options.method='cosine'] - The metric to compute:

 * @returns {{ embedding: number[], label: string, similarityScore?: number, distance?: number }[]} - An array of nearest neighbors with scores/distances.
 * @example
 * const samples = [
 *   { embedding: [1, 0], label: 'A' },
 *   { embedding: [0, 1], label: 'B' },
 *   { embedding: [1, 1], label: 'C' },
 * ];
 *
 * // Default cosine similarity
 * findNearestNeighbors([1, 0], samples);
 * // => [{ embedding: [1, 0], label: 'A', similarityScore: 1 }]
 *
 * // Euclidean distance
 * findNearestNeighbors([1, 0], samples, { method: 'euclidean', topK: 2 });
 * // => [
 * //   { embedding: [1, 0], label: 'A', distance: 0 },
 * //   { embedding: [1, 1], label: 'C', distance: 1 }
 * // ]
 *
 * // Manhattan distance with threshold
 * findNearestNeighbors([1, 0], samples, { method: 'manhattan', threshold: 1.5 });
 * // => [{ embedding: [1, 0], label: 'A', distance: 0 }, { embedding: [1, 1], label: 'C', distance: 1 }]
 *
 * // Cosine with threshold
 * findNearestNeighbors([1, 0], samples, { threshold: 0.9 });
 * // => [{ embedding: [1, 0], label: 'A', similarityScore: 1 }]
 */
export function findNearestNeighbors(queryEmbedding: number[], samples: {
    embedding: number[];
    label: string;
}[], options?: {
    topK?: number | undefined;
    threshold?: number | undefined;
    method?: "cosine" | "euclidean" | "manhattan" | undefined;
}): {
    embedding: number[];
    label: string;
    similarityScore?: number;
    distance?: number;
}[];
/**
 * Ranks all samples by similarity/distance to the query embedding.
 * Does NOT apply threshold or topK filtering.
 * @public
 * @param {number[]} queryEmbedding - The embedding vector to compare against.
 * @param {{ embedding: number[], label: string }[]} samples - Samples with embeddings and labels.
 * @param {object} [options={}] - Optional settings.
 * @param  {'cosine' | 'euclidean' | 'manhattan'} [options.method='cosine'] - Distance/similarity method to use. Default is 'cosine'.
 * @returns {{ embedding: number[], label: string, similarityScore?: number, distance?: number }[]} Sorted by best match first.
 * @example
 * const samples = [
 *   { embedding: [1, 0], label: 'A' },
 *   { embedding: [0, 1], label: 'B' },
 *   { embedding: [1, 1], label: 'C' },
 * ];
 *
 * // Default cosine similarity
 * rankBySimilarity([1, 0], samples);
 * // => [
 * //   { embedding: [1, 0], label: 'A', similarityScore: 1 },
 * //   { embedding: [1, 1], label: 'C', similarityScore: 0.707... },
 * //   { embedding: [0, 1], label: 'B', similarityScore: 0 }
 * // ]
 *
 * // Euclidean distance
 * rankBySimilarity([1, 0], samples, { method: 'euclidean' });
 * // => [
 * //   { embedding: [1, 0], label: 'A', distance: 0 },
 * //   { embedding: [1, 1], label: 'C', distance: 1 },
 * //   { embedding: [0, 1], label: 'B', distance: 1.414... }
 * // ]
 *
 * // Manhattan distance
 * rankBySimilarity([0, 1], samples, { method: 'manhattan' });
 * // => [
 * //   { embedding: [0, 1], label: 'B', distance: 0 },
 * //   { embedding: [1, 1], label: 'C', distance: 1 },
 * //   { embedding: [1, 0], label: 'A', distance: 2 }
 * // ]
 */
export function rankBySimilarity(queryEmbedding: number[], samples: {
    embedding: number[];
    label: string;
}[], options?: {
    method?: "cosine" | "euclidean" | "manhattan" | undefined;
}): {
    embedding: number[];
    label: string;
    similarityScore?: number;
    distance?: number;
}[];
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