Amazon Quick now supports Amazon S3 table buckets as a data source — enabling users to build dashboards, run conversational analytics, and explore Apache Iceberg tables stored in S3 table buckets. With no intermediate data warehouse or OLAP layers required, users can now interoperate with their lakehouse data in Amazon Quick for both agentic AI and BI workloads — all through a simplified data architecture.
Paired with Zero-ETL from sources like Salesforce, SAP, and Amazon Kinesis Data Firehose directly into S3 table buckets, users get near real-time insights with minimal pipeline dependencies. Getting started is straightforward: admins configure S3 table bucket permissions once, and authors can immediately create datasets and start building. S3 table bucket datasets are fully accessible through Amazon Quick’s Dataset Q&A — ask a natural language question and get answers grounded in your data lake as the source of truth.
Amazon S3 table buckets as a data source in Amazon Quick is now available in all AWS Regions where Amazon Quick is available. To get started, see this blog post.
Categories:
Source: Amazon Web Services
Latest Posts
- Amazon Bedrock Guardrails announces a new API targeting agentic AI workflows

- Amazon FSx for Lustre Intelligent-Tiering storage class is now available in 13 additional AWS Regions

- Amazon S3 Vectors now supports up to 10,000 similarity search results per query

- Amazon S3 adds annotations to provide AI agents and analytics tools with context for data discovery






