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Semantic query

Serverless Stack 9.0.0

Note

We don't recommend this legacy query type for new projects. Use the match query (with QueryDSL or ESQL) instead. The semantic query remains available to support existing implementations.

The semantic query type enables you to perform semantic search on data stored in a semantic_text field. This query accepts natural-language text and uses the field’s configured inference endpoint to generate a query embedding and match documents.

For an overview of all query options available for semantic_text fields, see Querying semantic_text fields.

The target field of semantic query must be mapped as semantic_text and associated with an inference endpoint. At query time, the inference endpoint is chosen as follows:

  • If search_inference_id is defined, the semantic query uses that endpoint to embed the query.
  • If no search_inference_id is defined, inference_id is used for both indexing and search.
  • If no endpoint is specified at mapping, inference_id defaults to .elser-2-elasticsearch.

The underlying vector type (dense or sparse) is determined by the endpoint automatically. No extra query parameters are required.

				GET my-index-000001/_search
					{
  "query": {
    "semantic": {
      "field": "inference_field",
      "query": "Best surfing places"
    }
  }
}
		
field
(Required, string) The semantic_text field to perform the query on.
query
(Required, string) The query text to be searched for on the field.

Refer to this tutorial to learn more about semantic search using semantic_text and semantic query.

The semantic query can be used as a part of a hybrid search where the semantic query is combined with lexical queries. For example, the query below finds documents with the title field matching "mountain lake", and combines them with results from a semantic search on the field title_semantic, that is a semantic_text field. The combined documents are then scored, and the top 3 top scored documents are returned.

				POST my-index/_search
					{
  "size" : 3,
  "query": {
    "bool": {
      "should": [
        {
          "match": {
            "title": {
              "query": "mountain lake",
              "boost": 1
            }
          }
        },
        {
          "semantic": {
            "field": "title_semantic",
            "query": "mountain lake",
            "boost": 2
          }
        }
      ]
    }
  }
}
		

You can also use semantic_text as part of Reciprocal Rank Fusion to make ranking relevant results easier:

				GET my-index/_search
					{
  "retriever": {
    "rrf": {
      "retrievers": [
        {
          "standard": {
            "query": {
              "term": {
                "text": "shoes"
              }
            }
          }
        },
        {
          "standard": {
            "query": {
              "semantic": {
                "field": "semantic_field",
                "query": "shoes"
              }
            }
          }
        }
      ],
      "rank_window_size": 50,
      "rank_constant": 20
    }
  }
}