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AWS S3 Now Stores AI Vectors Natively

Summary

  • AWS S3 now offers native vector storage and search.
  • Service scales to 2 billion vectors per index, 20 trillion per bucket.
  • Potential to reduce vector storage costs by up to 90%.
AWS S3 Now Stores AI Vectors Natively

Amazon Web Services (AWS) has announced the general availability of Amazon S3 Vectors, integrating native vector storage and similarity search directly into its S3 object storage service. This move aims to simplify AI infrastructure by eliminating the need for separate vector databases for many applications. The service has seen dramatic scaling since its preview, now supporting up to 2 billion vectors per index and 20 trillion vectors per bucket, significantly increasing capacity from its initial launch.

AWS highlights that S3 Vectors could reduce the total cost of storing and querying vectors by up to 90% compared to specialized vector database solutions. While AWS positions S3 Vectors as a complementary tier rather than a direct replacement, it offers a compelling option for workloads tolerating around 100 milliseconds of latency, such as semantic search and agent memory extensions. For latency-sensitive applications, traditional vector databases like Amazon OpenSearch are still recommended.

The launch introduces a tiered performance framework for enterprise architects, allowing them to architect vector storage based on specific workload requirements. This approach mirrors the evolution of tabular data in data lakes, where specialized databases coexist with cost-effective object storage. AWS plans further performance and scale improvements for S3 Vectors, signaling its growing importance in the AI data landscape.

Disclaimer: This story has been auto-aggregated and auto-summarised by a computer program. This story has not been edited or created by the Feedzop team.
Amazon S3 Vectors allows users to store and query vector embeddings directly within Amazon S3 object storage, enabling AI applications like semantic search without separate databases.
AWS positions S3 Vectors as a complementary storage tier, ideal for workloads not requiring ultra-low latency, while specialized databases remain for high-performance needs.
AWS claims S3 Vectors can reduce the total cost of storing and querying vectors by up to 90% compared to specialized vector database solutions.

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