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Elasticsearch AI : Vector search engine with full-text capabilities

Elasticsearch AI : Vector search engine with full-text capabilities

Elasticsearch AI : Vector search engine with full-text capabilities

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Elasticsearch AI: in summary

Elasticsearch is a distributed search and analytics engine best known for full-text search, log analysis, and real-time data exploration. In recent years, it has also become a viable vector database, supporting approximate nearest neighbor (ANN) search for AI-powered applications like semantic search, recommendation systems, and anomaly detection.

Part of the Elastic Stack (ELK), Elasticsearch is used by developers, data engineers, and MLOps teams across industries such as e-commerce, cybersecurity, finance, and SaaS. It combines traditional structured and unstructured data search with dense vector similarity search, enabling hybrid retrieval from a single engine.
Key advantages include:

  • Unified support for text, metadata, and vector queries

  • Scalable and distributed by design

  • Native integration with ML and inference pipelines

What are the main features of Elasticsearch?

Hybrid search: text, metadata, and vectors

Elasticsearch allows combining semantic search with keyword filters and full-text queries in a single request.

  • Index and search dense vectors (e.g., OpenAI embeddings)

  • Use knn and knn_vector fields for approximate nearest neighbor search

  • Combine with Boolean, range, and term queries on structured data

Scalable vector search architecture

Elasticsearch offers distributed vector indexing for large-scale similarity search with stable latency.

  • Supports HNSW (Hierarchical Navigable Small World) indexing

  • Configurable ef_search and m parameters for performance tuning

  • Automatic sharding and replication for horizontal scalability

Real-time indexing and updates

Elasticsearch is designed for dynamic data environments with fast indexing and near-real-time availability.

  • Insert and search new vectors in seconds

  • Support for vector updates and deletes

  • Works with streaming and batch data pipelines

Integration with ML frameworks and Elastic tools

Elasticsearch integrates with external ML systems and includes native tools for model deployment.

  • Compatible with Python-based ML workflows (e.g., scikit-learn, PyTorch, Hugging Face)

  • Elastic’s inference API supports model deployment within the stack

  • Use with Kibana for visualization and analytics

Flexible deployment and API access

Elasticsearch is available both as a managed service (Elastic Cloud) and for on-premises installation.

  • RESTful API and Elasticsearch Query DSL for flexible queries

  • Deployment via Docker, Kubernetes, or native packages

  • Integrates easily with application backends and data pipelines

Why choose Elasticsearch?

  • Hybrid search in a single engine: Combine text, metadata, and vector search without switching systems.

  • Scalable and proven infrastructure: Mature, distributed architecture used in high-throughput production environments.

  • Extensive ecosystem and community: Strong documentation, tools (like Kibana), and plugin support.

  • Real-time data handling: Suitable for use cases where data changes frequently.

  • Enterprise-grade flexibility: Runs on cloud, on-premises, or in hybrid environments with full observability support.

Elasticsearch AI: its rates

Standard

Rate

On demand

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