Amazon Keyspaces (for Apache Cassandra) now provides CDC iterator position
Share
Services
Amazon Keyspaces (for Apache Cassandra) now returns an iterator position in the GetRecords response for change data capture (CDC) streams, indicating whether a consumer has reached the tip of the stream or whether additional records may be available. Amazon Keyspaces is a scalable, serverless, and managed Apache Cassandra-compatible database service that lets customers run Cassandra workloads on AWS without managing infrastructure. CDC streams capture row-level changes to Keyspaces tables so customers can integrate with downstream analytics, replication, and event-driven applications. Previously, customers polled CDC streams at a fixed cadence regardless of whether new records were available, leading to inefficient resource usage and unnecessary CDC consumption costs. With iterator position, customers can now adapt polling frequency based on whether the iterator is at the tip of the stream or has records pending, lowering CDC consumption costs while maintaining timely data processing. The GetRecords response now includes an iteratorDescription structure with an iteratorPosition field that returns either AT\_TIP or BEHIND\_TIP, enabling customers to optimize their data integration pipelines and event-driven architectures. This feature is available in all AWS Regions where Amazon Keyspaces CDC is supported. To use it, customers need to update to the latest AWS SDK. To learn more, visit the [Amazon Keyspaces product page](https://aws.amazon.com/keyspaces/) and see [Working with change data capture (CDC) streams](https://docs.aws.amazon.com/keyspaces/latest/devguide/keyspaces-records-cdc.html) in the Amazon Keyspaces Developer Guide.
What else is happening at Amazon Web Services?
AWS Step Functions adds AgentCore-powered agentic reasoning step
about 2 hours ago
Services
Share
Read update
Services
Share
Amazon SageMaker Unified Studio now supports a localized experience in twelve languages
about 6 hours ago
Services
Share
Amazon SageMaker AI launches multi-turn reinforcement learning for AI agent model customization
about 7 hours ago
Services
Share
Read update
Services
Share