Build an open data foundation for agentic AI
With an open, scalable infrastructure, your agents can find, trust, and act on your data wherever it lives, at any scale.
Open data architecture
AI agents rarely work in isolation and need to exchange data across systems, tools, and services to get the job done.
AWS gives them the freedom to do it—with the broadest portfolio of managed open-source data technologies and open table formats that allow you to leverage your data across any system, tool, or environment. No vender lock-in. No data re-formatting. Just interoperability and the best value by default.
Explore Apache Iceberg on AWS | PostgreSQL with Amazon Aurora | Apache Spark with Amazon EMR | Apache Kafka with Amazon MSK | OpenSearch with Amazon OpenSearch Service | MCP | and A2A.
The best place for opensource technologies
Foundational excellence at scale
AI agents drive 1,000x data growth and demand always-on, dynamically scaling infrastructure. AWS delivers with automatic resource allocation, zero-tuning price performance, and the reliability and scale that millions of customers have trusted for over 20 years.
Trusted data for AI
AI agents need accurate data to deliver trustworthy results. AWS is designed to be the most secure cloud infrastructure with data encryption by default and fine-grained access controls where context-rich data can flow securely across humans, AI agents, and apps—even for the most sensitive workloads.
Learn more about Amazon SageMaker platform
Four data use cases to help you deploy and scale agentic AI
Data workloads migration
Join thousands of customers that moved on-premises Microsoft SQL server and Oracle databases to Amazon RDS to reduce infrastructure management burden, minimize downtime, and fast-track agentic AI adoption.
Build agentic AI apps
Prepare your data for AI, explore it using natural language, and create agentic workflows through our open platform—without worrying about which tool to use or complex schema designs.
Search and vector
Experience vector search across our portfolio of data services to power your AI applications and agents with intelligent, context-aware retrieval.
Start building performant reliable AI applications on Amazon OpenSearch Service
Iceberg open data architecture
Leverage Iceberg at every layer of the data and AI stack for interoperability across different query engines and processing frameworks—no data modification required.
What's new in data and analytics
See how customers are making their data AI-ready
Millions of customers are building an open data foundation on AWS to power agentic AI and transform the way they work—from accelerating software development, to boosting employee productivity, research and innovation, and business processes.
Build your data foundation on AWS
FAQs
Page topics
- What is an open data foundation for agentic AI?
- Why do AI agents need an open data architecture?
- How does AWS help make enterprise data AI-ready?
- Why is trusted data important for agentic AI?
- How does vector search support agentic AI applications?
- What role does Apache Iceberg play in an open data foundation?
What is an open data foundation for agentic AI?
An open data foundation for agentic AI is a scalable, interoperable data architecture that lets AI agents find, access, trust, and act on data across systems. It uses open-source technologies, open table formats, and managed data services so organizations can avoid vendor lock-in, reduce data reformatting, and support agents that operate across databases, applications, analytics tools, and AI workflows.
Why do AI agents need an open data architecture?
AI agents need an open data architecture because they often work across multiple systems, tools, and services to complete tasks. Open architectures make data usable across environments without forcing proprietary formats or duplicate pipelines. This improves interoperability, supports cross-system agent workflows, and helps organizations connect operational data, analytics data, search indexes, and AI applications more efficiently.
How does AWS help make enterprise data AI-ready?
AWS helps make enterprise data AI-ready by combining managed databases, analytics services, open-source technologies, vector search, governance, and security controls. Services such as Amazon Aurora, Amazon RDS, Amazon EMR, Amazon MSK, Amazon OpenSearch Service, Amazon DynamoDB, Amazon ElastiCache, and Amazon SageMaker support scalable data processing, retrieval, access control, and agentic AI application development.
Why is trusted data important for agentic AI?
Trusted data is essential for agentic AI because agents use data to make decisions, generate responses, trigger workflows, and take action. Inaccurate, inaccessible, or poorly governed data can reduce reliability. AWS supports trusted data with encryption by default, fine-grained access controls, and secure data movement across humans, applications, and AI agents, including sensitive enterprise workloads.
How does vector search support agentic AI applications?
Vector search supports agentic AI by enabling context-aware retrieval from large volumes of unstructured and structured data. It helps agents find semantically relevant information, not just exact keyword matches, which improves retrieval-augmented generation, search experiences, recommendations, and task execution. Amazon OpenSearch Service provides vector search capabilities for building performant and reliable AI applications.
What role does Apache Iceberg play in an open data foundation?
Apache Iceberg supports an open data foundation by providing an open table format that works across different query engines and processing frameworks. This allows organizations to use the same data across analytics and AI workloads without modifying or reformatting it for each tool. On AWS, Iceberg can be used across the data and AI stack to improve interoperability.
Additional resources
Winning agentic AI with your commercial data estates
Discover how organizations are moving SQL Server and Oracle to Amazon RDS to build agentic AI-ready data foundations—with less effort and more operational value.
Gartner 2025 Magic Quadrant
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