Learn more.Īmazon Redshift Integration for Apache Spark: This feature makes it easy to build and run Apache Spark applications on Amazon Redshift data, enabling customers to open up the data warehouse for a broader set of analytics and machine learning solutions. With Redshift ML, you can use SQL statements to create and train Amazon SageMaker models on your data in Amazon Redshift and then use those models for predictions such as churn detection, financial forecasting, personalization, and risk scoring directly in your queries and reports. Redshift ML: Redshift ML makes it easy for data analysts, data scientists, BI professionals, and developers to create, train, and deploy Amazon SageMaker models using SQL. You can license access to flat files, data in Amazon Redshift, and data delivered through APIs, all with a single subscription. If you are a data provider, access is automatically granted when a subscription starts and revoked when it ends, invoices are automatically generated when payments are due, and payments are collected through AWS. As soon as a provider makes an update, the change is visible to subscribers. You can subscribe to Redshift cloud data warehouse products in AWS Data Exchange. Learn more.ĪWS Data Exchange for Amazon Redshift: Query Amazon Redshift datasets from your own Redshift cluster without extracting, transforming, and loading (ETL) the data. You can securely share live data with Redshift clusters in the same or different AWS accounts and across regions. Data sharing provides live access to data so your users always see the most current and consistent information as it’s updated in the data warehouse. Data sharing enables instant, granular, and fast data access across Redshift clusters without the need to copy or move it. Learn more.ĭata Sharing: Amazon Redshift data sharing allows you to extend the ease of use, performance, and cost benefits of Amazon Redshift in a single cluster to multi-cluster deployments while being able to share data. Amazon Redshift offers optimizations to reduce data movement over the network and complements it with its massively parallel data processing for high-performance queries. You can join data from your Redshift data warehouses, data in your data lakes, and data in your operational stores to make better data-driven decisions. Query live data across one or more Amazon Relational Database Service (RDS), Aurora PostgreSQL, RDS MySQL, and Aurora MySQL databases to get instant visibility into the full business operations without requiring data movement. Federated query: With the new federated query capability in Amazon Redshift, you can reach into your operational relational databases.
0 Comments
Leave a Reply. |
AuthorWrite something about yourself. No need to be fancy, just an overview. ArchivesCategories |