AWS Big Data Blog
Best practices for querying Apache Iceberg data with Amazon Redshift
In this post, we discuss the best practices that you can follow while querying Apache Iceberg data with Amazon Redshift
Enrich, standardize, and translate streaming data in Amazon Redshift with generative AI
Amazon Redshift ML is a feature of Amazon Redshift that enables you to build, train, and deploy machine learning (ML) models directly within the Redshift environment. Now, you can use pretrained publicly available large language models (LLMs) in Amazon SageMaker JumpStart as part of Redshift ML, allowing you to bring the power of LLMs to analytics. You can use pretrained publicly available LLMs from leading providers such as Meta, AI21 Labs, LightOn, Hugging Face, Amazon Alexa, and Cohere as part of your Redshift ML workflows. By integrating with LLMs, Redshift ML can support a wide variety of natural language processing (NLP) use cases on your analytical data, such as text summarization, sentiment analysis, named entity recognition, text generation, language translation, data standardization, data enrichment, and more. Through this feature, the power of generative artificial intelligence (AI) and LLMs is made available to you as simple SQL functions that you can apply on your datasets. The integration is designed to be simple to use and flexible to configure, allowing you to take advantage of the capabilities of advanced ML models within your Redshift data warehouse environment.
Run queries concurrently and see query history using Amazon Redshift Query Editor v2
Amazon Redshift is a fast, fully managed, petabyte-scale cloud data warehouse. You have the flexibility to choose from provisioned and serverless compute modes. You can start loading and querying large datasets conveniently in Amazon Redshift using Amazon Redshift Query Editor v2, a web-based SQL client application. Query Editor v2 empowers your technical and business teams […]
Use Amazon Redshift Spectrum with row-level and cell-level security policies defined in AWS Lake Formation
Data warehouses and data lakes are key to an enterprise data management strategy. A data lake is a centralized repository that consolidates your data in any format at any scale and makes it available for different kinds of analytics. A data warehouse, on the other hand, has cleansed, enriched, and transformed data that is optimized […]
Automate Amazon Redshift Cluster management operations using AWS CloudFormation
Amazon Redshift is a fast, petabyte-scale cloud data warehouse delivering the best price-performance. Tens of thousands of customers run business-critical workloads on Amazon Redshift. Amazon Redshift offers many features that enable you to build scalable, highly performant, cost-effective, and easy-to-manage workloads. For example, you can scale an Amazon Redshift cluster up or down based on […]



