Trace Id is missing
Skip to main content
Azure

Azure AI Search

Simplify how agents connect to enterprise data. Build high-impact AI apps with one centralized solution for agentic retrieval-augmented generation (RAG) workflows.
Overview

Power agentic RAG, search and retrieval

  • Focus on exponential growth with an enterprise-ready vector database that comes with security, compliance, and responsible AI practices built in.
  • Build better applications with sophisticated retrieval strategies backed by decades of research and customer validation.
  • Accelerate AI app development and simplify your RAG pipeline with seamless platform and data integrations for data sources, AI models, and frameworks.
FEATURES

 Deliver relevant responses with search for AI

Simplified data ingestion

Automatically upload data from a wide range of supported Azure and third-party sources.
a computer-generated image of several objects
Back to tabs
USE CASES

Explore common applications to get started

Generative AI app with real-time audio

Build a VoiceRAG application for speech-to-speech interactions with the Azure OpenAI gpt-4o-real time preview model.

Vector search

Move beyond text to create image search engines and multimodal experiences for images, PDFs, and audio.

AI assistant

Gain better analytics and improve support with an agent that provides relevant information to answer a question fast.

Retrieval-augmented generation (RAG)

Ground your generative AI application with proprietary data.
Security

Built-in security and compliance 

Microsoft has committed to investing USD20 billion in cybersecurity over five years.
We employ more than 8,500 security and threat intelligence experts across 77 countries.
Azure has one of the largest compliance certification portfolios in the industry.
A woman sitting on a bench holding a laptop and a cup of coffee.
Pricing

Azure AI Search pricing

Azure AI Search has pricing tiers that scale to meet the storage and throughput needs of large scale RAG applications.
RELATED PRODUCTS

Azure products work better together

Find your AI solution

Discover Azure AI—a portfolio of AI services and machine learning models designed for developers and data scientists.
Customer stories

See how customers innovate with Azure AI Search

RESOURCES

Get the latest Azure AI Search news and resources

FAQ

Frequently asked questions

  • Azure AI Search is an enterprise knowledge retrieval system that powers sophisticated retrieval-augmented generation (RAG) applications and enterprise search engines. With advanced AI and search technology, and seamless platform integrations, Azure AI Search delivers end-to-end RAG systems built for app excellence, enterprise-readiness, and speed to market.
    • RAG excellence: Set the bar for app excellence with the latest rigorously tested AI technology, delivered ahead of the market.
    • Velocity: Built for end-to-end RAG development, move from idea to production fast with integrations and features across the toolchain.
    • Enterprise scale: Deliver high-performance RAG applications without compromising scale or cost.
  • Hybrid search in Azure AI Search executes a query for both text search (or keyword search) and vector search in one request. The results are then merged together using Reciprocal Rank Fusion (RRF). Hybrid search is useful for RAG scenarios—vector search is effective at finding information from queries posed in natural language and full text search is able to find specific data like someone’s name or a product code.
  • RAG is an AI technique that combines retrieval-based techniques with generative models to produce accurate and contextually relevant responses. It retrieves information from external sources like databases, documents, or the web to enhance the generation of results. This ensures that responses generated by large language models are accurate, relevant, and enriched with the most up-to-date information. Learn more about RAG here and RAG in Azure AI Search here.
  • Azure AI Search is available in more than 30 countries and regions worldwide, with new locations added regularly.
  • Built-in indexers are available for Azure Cosmos DB, Azure SQL Database, Azure Blob Storage, and Microsoft SQL Server hosted in Azure Virtual Machines. Use Azure Data Factory, with more than 80 connectors, or Azure Logic Apps to connect to your data source. Alternatively, push data into an Azure AI Search index, which has no restrictions on data source type.
  • Azure AI Search works with several popular formats, including Microsoft Word, PowerPoint, and Excel; Adobe PDF; and PNG, RTF, JSON, HTML, and XML.
  • Azure AI Search is an enterprise retrieval and search engine used in custom apps that supports vector, full-text, and hybrid search over an indexed database. It’s used in RAG-based applications on Azure and integrates with Azure OpenAI and Azure AI Foundry models. Microsoft Search enables the ability to search across Microsoft 365 apps, such as Outlook and SharePoint, to help users find relevant information within their organisation.
  • Azure AI Search and Azure OpenAI are two different services.
    Azure AI Search is a knowledge base and retrieval system built for RAG and enterprise search applications. Azure OpenAI provides AI models and agent development tools for enterprise applications. Azure AI Search and Azure OpenAI are used together for AI agents that rely on private, enterprise data.
  • Azure AI Search supports vector search, keyword search, and hybrid search, combining vector and non-vector fields in the same search corpus. It stores the data you query over, allowing it to function as a vector store for applications that require long-term memory, a knowledge base, or grounding data for retrieval-augmented generation (RAG) architecture. This makes Azure AI Search a versatile tool that can be used as a vector database when needed.
  • Azure AI Search uses advanced algorithms like exhaustive k-nearest neighbors (KNN) and Hierarchical Navigable Small World (HNSW) for approximate nearest neighbor (ANN) search, enabling vector similarity queries to find semantically similar information. It also employs BM25 relevance scoring for full-text search, computing search scores based on the strength of the match.
  • Azure AI Search is built on an enterprise-ready foundation that supports diverse data types and retrieval methods. It integrates vector, full-text, and hybrid search capabilities, enabling developers to store, index, and deliver search applications over various data formats. The system supports advanced indexing, JSON document indexing, and AI enrichment through cognitive skills, enhancing search relevance with semantic ranking.
  • Azure AI Search provides native indexing support for multiple databases, including SQL databases like Azure SQL Database and Azure SQL Managed Instance, as well as NoSQL databases and various data stores such as Azure Blob Storage, ADLS Gen2, and Azure Tables through built-in indexers. For other data sources, content can be integrated into AI Search indexes using Azure Logic App connectors. The Azure AI Search Push API allows for maximum flexibility by enabling data to be pushed in a specific format regardless of the source.
  • As of November 2023, Azure Cognitive Search is now Azure AI Search. All existing deployments, configurations, and integrations continue to function as they previously did. There are no changes to pricing and no breaking changes to APIs or SDKs.
A woman holding a tablet.
Next steps

Choose the Azure account that’s right for you 

Pay as you go or try Azure free for up to 30 days.
A woman in a white shirt pointing at a computer screen.
Azure Solutions

Azure cloud solutions

Solve your business problems with proven combinations of Azure cloud services, as well as sample architectures and documentation.
A woman in glasses looking at a laptop.
Business Solutions Hub

Find the right Microsoft Cloud solution

Browse the Microsoft Business Solutions Hub to find the products and solutions that can help your organisation reach its goals.