Amazon Redshift, the most widely used cloud data warehouse, now enables a secure and easy way to share live data across Amazon Redshift clusters. Data sharing enables instant, granular, and high-performance data access across Amazon Redshift clusters without the need to copy or move data. Data Sharing provides live access to the data so that your users always see most up-to-date and consistent information as it is updated in the data warehouse.
Announcing preview of AWS Lake Formation features: Transactions, Row-level Security, and Acceleration
AWS Lake Formation transactions, row-level security, and acceleration are now available for preview. These capabilities are available via new, open, and public update and access APIs for data lakes. These APIs extend AWS Lake Formation’s governance capabilities with row-level security. In addition, with this preview, we introduce governed tables – a new Amazon S3 table type that supports atomic, consistent, isolated, and durable (ACID) transactions. AWS Lake Formation transactions simplify ETL script and workflow development, and allow multiple users to concurrently and reliably insert, delete, and modify rows across multiple governed tables. AWS Lake Formation automatically compacts and optimizes storage of governed tables in the background to improve query performance.
Amazon Redshift announces Automatic Table Optimization
Amazon Redshift, the most widely used cloud data warehouse, announces general availability of Automatic Table Optimization, a new self-tuning capability that optimizes the physical design of tables by automatically setting sort and distribution keys to improve query speed. You can use Automatic Table Optimization to get started with Amazon Redshift easily or optimize production workloads by decreasing the administrative effort required to get the best possible performance.
Amazon Redshift announces native console integration with partners (Preview)
Amazon Redshift, a fully-managed cloud data warehouse, now supports native integration with select AWS partners from within the Amazon Redshift Console. With the new console partner integration, you can accelerate data onboarding and create valuable business insights in minutes by integrating with select partner solutions. With these solutions, you can bring data from applications like SalesForce, Google Analytics, Facebook Ads, Slack, Jira, Splunk, and Marketo into your Amazon Redshift data warehouse in an efficient and streamlined way. It also enables you to join these disparate datasets and analyze them together to produce actionable insights.
Announcing new Amazon EC2 G4ad instances, powered by AMD Radeon Pro V520 GPUs, with the best price performance for graphics intensive applications in the cloud
We are excited to announce the availability of Amazon EC2 G4ad instances that provide the best price performance for graphics intensive applications in the cloud. G4ad instances are powered by AMD Radeon Pro V520 GPUs and second-generation AMD EPYC processors, and provide up to 45% better price performance over G4dn instances for graphics intensive applications such as virtual workstations, game streaming, and graphics rendering.
Amazon EMR Studio makes it easier for data scientists to build and deploy code
Today we are announcing the public preview of EMR Studio, an integrated development environment (IDE) that makes it easy for data scientists and data engineers to develop, visualize, and debug data engineering and data science applications written in R, Python, Scala, and PySpark. EMR Studio provides fully managed Jupyter Notebooks, and tools like Spark UI and YARN Timeline Service to simplify debugging.
AWS Global Accelerator launches custom routing
AWS Global Accelerator announces custom routing accelerator, a new type of accelerator that allows you to use your own application logic to route user traffic to a specific Amazon EC2 destination, while still leveraging the benefits of Global Accelerator.
AWS introduces Amazon SageMaker Edge Manager – Model Management for Edge Devices
Amazon SageMaker Edge Manager is a new feature of Amazon SageMaker that enables developers with the tools for model management across your fleets of edge devices so you can optimize, secure, monitor, and maintain machine learning models on fleets of edge devices such as smart cameras, robots, personal computers, and mobile devices.
Announcing new capabilities for Amazon SageMaker Debugger with real-time monitoring of system resources and profiling training jobs
We’re excited to announce new capabilities with Amazon SageMaker Debugger with real-time monitoring of system resources for efficient utilization. With these new capabilities, you can now get automatic recommendations to re-allocate resources for your training jobs, helping you train better and reduce time and costs.
Announcing Amazon Lookout for Metrics
Amazon Lookout for Metrics uses machine learning (ML) to detect anomalies, or unexpected changes in your metrics, helping you proactively monitor the health of your business, diagnose issues and find opportunities quickly – with no ML experience required.