--- navigation_title: "Knn" mapped_pages: - https://www.elastic.co/guide/en/elasticsearch/reference/current/query-dsl-knn-query.html --- # Knn query [query-dsl-knn-query] Finds the *k* nearest vectors to a query vector, as measured by a similarity metric. *knn* query finds nearest vectors through approximate search on indexed dense_vectors. The preferred way to do approximate kNN search is through the [top level knn section](docs-content://solutions/search/vector/knn.md) of a search request. *knn* query is reserved for expert cases, where there is a need to combine this query with other queries, or perform a kNN search against a [semantic_text](/reference/elasticsearch/mapping-reference/semantic-text.md) field. ## Example request [knn-query-ex-request] ```console PUT my-image-index { "mappings": { "properties": { "image-vector": { "type": "dense_vector", "dims": 3, "index": true, "similarity": "l2_norm" }, "file-type": { "type": "keyword" }, "title": { "type": "text" } } } } ``` 1. Index your data. ```console POST my-image-index/_bulk?refresh=true { "index": { "_id": "1" } } { "image-vector": [1, 5, -20], "file-type": "jpg", "title": "mountain lake" } { "index": { "_id": "2" } } { "image-vector": [42, 8, -15], "file-type": "png", "title": "frozen lake"} { "index": { "_id": "3" } } { "image-vector": [15, 11, 23], "file-type": "jpg", "title": "mountain lake lodge" } ``` 2. Run the search using the `knn` query, asking for the top 10 nearest vectors from each shard, and then combine shard results to get the top 3 global results. ```console POST my-image-index/_search { "size" : 3, "query" : { "knn": { "field": "image-vector", "query_vector": [-5, 9, -12], "k": 10 } } } ``` ## Top-level parameters for `knn` [knn-query-top-level-parameters] `field` : (Required, string) The name of the vector field to search against. Must be a [`dense_vector` field with indexing enabled](/reference/elasticsearch/mapping-reference/dense-vector.md#index-vectors-knn-search), or a [`semantic_text` field](/reference/elasticsearch/mapping-reference/semantic-text.md) with a compatible dense vector inference model. `query_vector` : (Optional, array of floats or string) Query vector. Must have the same number of dimensions as the vector field you are searching against. Must be either an array of floats or a hex-encoded byte vector. Either this or `query_vector_builder` must be provided. `query_vector_builder` : (Optional, object) Query vector builder. A configuration object indicating how to build a query_vector before executing the request. You must provide either a `query_vector_builder` or `query_vector`, but not both. Refer to [Perform semantic search](docs-content://solutions/search/vector/knn.md#knn-semantic-search) to learn more. If all queried fields are of type [semantic_text](/reference/elasticsearch/mapping-reference/semantic-text.md), the inference ID associated with the `semantic_text` field may be inferred. `k` : (Optional, integer) The number of nearest neighbors to return from each shard. {{es}} collects `k` results from each shard, then merges them to find the global top results. This value must be less than or equal to `num_candidates`. Defaults to search request size. `num_candidates` : (Optional, integer) The number of nearest neighbor candidates to consider per shard while doing knn search. Cannot exceed 10,000. Increasing `num_candidates` tends to improve the accuracy of the final results. Defaults to `1.5 * k` if `k` is set, or `1.5 * size` if `k` is not set. `filter` : (Optional, query object) Query to filter the documents that can match. The kNN search will return the top documents that also match this filter. The value can be a single query or a list of queries. If `filter` is not provided, all documents are allowed to match. The filter is a pre-filter, meaning that it is applied **during** the approximate kNN search to ensure that `num_candidates` matching documents are returned. `similarity` : (Optional, float) The minimum similarity required for a document to be considered a match. The similarity value calculated relates to the raw [`similarity`](/reference/elasticsearch/mapping-reference/dense-vector.md#dense-vector-similarity) used. Not the document score. The matched documents are then scored according to [`similarity`](/reference/elasticsearch/mapping-reference/dense-vector.md#dense-vector-similarity) and the provided `boost` is applied. `rescore_vector` : (Optional, object) Functionality in [preview]. Apply oversampling and rescoring to quantized vectors. ::::{note} Rescoring only makes sense for quantized vectors; when [quantization](/reference/elasticsearch/mapping-reference/dense-vector.md#dense-vector-quantization) is not used, the original vectors are used for scoring. Rescore option will be ignored for non-quantized `dense_vector` fields. :::: `oversample` : (Required, float) Applies the specified oversample factor to `k` on the approximate kNN search. The approximate kNN search will: * Retrieve `num_candidates` candidates per shard. * From these candidates, the top `k * oversample` candidates per shard will be rescored using the original vectors. * The top `k` rescored candidates will be returned. See [oversampling and rescoring quantized vectors](docs-content://solutions/search/vector/knn.md#dense-vector-knn-search-rescoring) for details. `boost` : (Optional, float) Floating point number used to multiply the scores of matched documents. This value cannot be negative. Defaults to `1.0`. `_name` : (Optional, string) Name field to identify the query ## Pre-filters and post-filters in knn query [knn-query-filtering] There are two ways to filter documents that match a kNN query: 1. **pre-filtering** – filter is applied during the approximate kNN search to ensure that `k` matching documents are returned. 2. **post-filtering** – filter is applied after the approximate kNN search completes, which results in fewer than k results, even when there are enough matching documents. Pre-filtering is supported through the `filter` parameter of the `knn` query. Also filters from [aliases](docs-content://manage-data/data-store/aliases.md#filter-alias) are applied as pre-filters. All other filters found in the Query DSL tree are applied as post-filters. For example, `knn` query finds the top 3 documents with the nearest vectors (k=3), which are combined with `term` filter, that is post-filtered. The final set of documents will contain only a single document that passes the post-filter. ```console POST my-image-index/_search { "size" : 10, "query" : { "bool" : { "must" : { "knn": { "field": "image-vector", "query_vector": [-5, 9, -12], "k": 3 } }, "filter" : { "term" : { "file-type" : "png" } } } } } ``` ## Hybrid search with knn query [knn-query-in-hybrid-search] Knn query can be used as a part of hybrid search, where knn query is combined with other lexical queries. For example, the query below finds documents with `title` matching `mountain lake`, and combines them with the top 10 documents that have the closest image vectors to the `query_vector`. The combined documents are then scored and the top 3 top scored documents are returned. + ```console POST my-image-index/_search { "size" : 3, "query": { "bool": { "should": [ { "match": { "title": { "query": "mountain lake", "boost": 1 } } }, { "knn": { "field": "image-vector", "query_vector": [-5, 9, -12], "k": 10, "boost": 2 } } ] } } } ``` ## Knn query inside a nested query [knn-query-with-nested-query] `knn` query can be used inside a nested query. The behaviour here is similar to [top level nested kNN search](docs-content://solutions/search/vector/knn.md#nested-knn-search): * kNN search over nested dense_vectors diversifies the top results over the top-level document * `filter` over the top-level document metadata is supported and acts as a pre-filter * `filter` over `nested` field metadata is not supported A sample query can look like below: ```js { "query" : { "nested" : { "path" : "paragraph", "query" : { "knn": { "query_vector": [ 0.45, 45 ], "field": "paragraph.vector", "num_candidates": 2 } } } } } ``` ## Knn query with aggregations [knn-query-aggregations] `knn` query calculates aggregations on top `k` documents from each shard. Thus, the final results from aggregations contain `k * number_of_shards` documents. This is different from the [top level knn section](docs-content://solutions/search/vector/knn.md) where aggregations are calculated on the global top `k` nearest documents.