Sparse vector search in Elasticsearch
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When working with sparse vectors in Elasticsearch, you'll use the Elastic Learned Sparse Encoder (ELSER) at index and query time to expand content into semantically related, weighted terms.
This approach preserves explainability while adding semantic understanding, with each document or query expanded into a set of weighted terms.
Sparse vector search with ELSER is ideal for:
- Enhanced keyword search with semantic expansion
- Use cases requiring explainable results
- Domain-specific search
- Large-scale deployments
Tip
Using the semantic_text
field type provides automatic model management and sensible defaults. Learn more.
Sparse vector search with ELSER expands both documents and queries into weighted terms. To use sparse vectors in Elasticsearch:
- Index documents with ELSER
- Deploy and configure the ELSER model
- Use the
sparse_vector
field type - See this overview for implementation options
- Query the index using the
sparse_vector
query.