
Elasticsearch AI : Vector search engine with full-text capabilities
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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