AWS Blogs on 🦋
banner
awsblogs.bsky.social
AWS Blogs on 🦋
@awsblogs.bsky.social
I'm a bot 🤖
I share contend posted by AWS employees/partners on https://aws.amazon.com/blogs

For any issues please contact @ervinszilagyi.dev
Source code: https://github.com/Ernyoke/bsky-aws-blogs
📰 New article by Atul Payapilly, Akshaya KP, Giovanni Matteo Fumarola, Hari Kishore Chaparala

Run Apache Spark and Iceberg 4.5x faster than open source Spark with Amazon EMR

#AWS #BigData
Run Apache Spark and Iceberg 4.5x faster than open source Spark with Amazon EMR
This post shows how Amazon EMR 7.12 can make your Apache Spark and Iceberg workloads up to 4.5x faster performance.
aws.amazon.com
November 27, 2025 at 1:51 AM
📰 New article by Sonu Kumar Singh, Roshin Babu, Polaris Jhandi, Zheng Yuan

Apache Spark encryption performance improvement with Amazon EMR 7.9

#AWS #BigData
Apache Spark encryption performance improvement with Amazon EMR 7.9
In this post, we analyze the results from our benchmark tests comparing the Amazon EMR 7.9 optimized Spark runtime against Spark 3.5.5 without encryption optimizations. We walk through a detailed cost analysis and provide step-by-step instructions to reproduce the benchmark.
aws.amazon.com
November 27, 2025 at 1:41 AM
📰 New article by Atul Payapilly, Akshaya KP, Giovanni Matteo Fumarola, Hari Kishore Chaparala

Run Apache Spark and Apache Iceberg write jobs 2x faster with Amazon EMR

#AWS #BigData
Run Apache Spark and Apache Iceberg write jobs 2x faster with Amazon EMR
In this post, we demonstrate the write performance benefits of using the Amazon EMR 7.12 runtime for Spark and Iceberg compares to open source Spark 3.5.6 with Iceberg 1.10.0 tables on a 3TB merge workload.
aws.amazon.com
November 27, 2025 at 1:07 AM
📰 New article by Mike Araujo, Ashley Chen, Ian Beatty, Sandeep Adwankar

Medidata’s journey to a modern lakehouse architecture on AWS

#AWS #BigData
Medidata’s journey to a modern lakehouse architecture on AWS
In this post, we show you how Medidata created a unified, scalable, real-time data platform that serves thousands of clinical trials worldwide with AWS services, Apache Iceberg, and a modern lakehouse architecture.
aws.amazon.com
November 27, 2025 at 1:07 AM
📰 New article by Priyashree Roy, Mofijul Islam, Martyna Shallenberg, Brode Mccrady, Nivedha Balakrishnan, Randheer Gehlot

How Myriad Genetics achieved fast, accurate, and cost-efficient document processing using the AWS open-source Generative AI Intelligent Document Pro…

#AWS #AI #MachineLearning
How Myriad Genetics achieved fast, accurate, and cost-efficient document processing using the AWS open-source Generative AI Intelligent Document Pro…
In this post, we explore how Myriad Genetics partnered with the AWS Generative AI Innovation Center to transform their healthcare document processing pipeline using Amazon Bedrock and Amazon Nova foundation models, achieving 98% classification accuracy while reducing costs by 77% and processing time by 80%. We detail the technical implementation using AWS’s open-source GenAI Intelligent Document Processing Accelerator, the optimization strategies for document classification and key information extraction, and the measurable business impact on Myriad’s prior authorization workflows.
aws.amazon.com
November 27, 2025 at 1:01 AM
📰 New article by Lokesha Thimmegowda, Muppirala Venkata Krishna Kumar, Maraka Vishwadev, Dwaragha Sivalingam, Sachin Khanna, Chanpreet Singh

How CBRE powers unified property management search and digital assistant using Amazon Bedrock

#AWS #AI #MachineLearning
How CBRE powers unified property management search and digital assistant using Amazon Bedrock
In this post, CBRE and AWS demonstrate how they transformed property management by building a unified search and digital assistant using Amazon Bedrock, enabling professionals to access millions of documents and multiple databases through natural language queries. The solution combines Amazon Nova Pro for SQL generation and Claude Haiku for document interactions, achieving a 67% reduction in processing time while maintaining enterprise-grade security across more than eight million documents.
aws.amazon.com
November 27, 2025 at 1:01 AM
📰 New article by Chaitanya Hazarey, Caesar Chen, Kunal Ghosh, Ziwen Ning, Piyush Daftary, Pradeep Cruz, Roman Blagovirnyy, Chandra Lohit Reddy Tekulapally, Vivek Gangasani, Vinay Arora

Managed Tiered KV Cache and Intelligent Routing for Amazon SageMaker HyperPod

#AWS #AI #MachineLearning
Managed Tiered KV Cache and Intelligent Routing for Amazon SageMaker HyperPod
In this post, we introduce Managed Tiered KV Cache and Intelligent Routing for Amazon SageMaker HyperPod, new capabilities that can reduce time to first token by up to 40% and lower compute costs by up to 25% for long context prompts and multi-turn conversations. These features automatically manage distributed KV caching infrastructure and intelligent request routing, making it easier to deploy production-scale LLM inference workloads with enterprise-grade performance while significantly reducing operational overhead.
aws.amazon.com
November 27, 2025 at 12:51 AM
📰 New article by Tarush Gupta, Hrishikesh Puzhankara, and Alida D’Costa

Amazon Quick Suite User Group – Chicago: Agentic AI takes center stage

#AWS #BI #BusinessIntelligence
Amazon Quick Suite User Group – Chicago: Agentic AI takes center stage
The Amazon Quick Suite User Group in Chicago brought together over 90 innovators to explore how agentic AI is transforming workplace productivity through hands-on workshops and live demonstrations. In this post, we share highlights from the meetup where attendees learned how Quick Suite’s unified AI agents enable users to research across data sources, gain business insights, and automate workflows.
aws.amazon.com
November 27, 2025 at 12:36 AM
📰 New article by Dhawalkumar Patel, Bhuvan Annamreddi, Ganesh Thiyagarajan, Kevin Tsao, Avinash Kolluri, Mohammad Tahsin, Ozan Deniz

Apply fine-grained access control with Bedrock AgentCore Gateway interceptors

#AWS #AI #MachineLearning
Apply fine-grained access control with Bedrock AgentCore Gateway interceptors
We are launching a new feature: gateway interceptors for Amazon Bedrock AgentCore Gateway. This powerful new capability provides fine-grained security, dynamic access control, and flexible schema management.
aws.amazon.com
November 26, 2025 at 10:36 PM
📰 New article by Kalaiselvi Kamaraj, Aamer Shah, Fabian Nagel, Ravi Animi, Stefan Gromoll

Achieve 2x faster data lake query performance with Apache Iceberg on Amazon Redshift

#AWS #BigData
Achieve 2x faster data lake query performance with Apache Iceberg on Amazon Redshift
In 2025, Amazon Redshift delivered several performance optimizations that improved query performance over twofold for Iceberg workloads on Amazon Redshift Serverless, delivering exceptional performance and cost-effectiveness for your data lake workloads. In this post, we describe some of the optimizations that led to these performance gains.
aws.amazon.com
November 26, 2025 at 10:21 PM
📰 New article by Debika D, Pratik Das, Srividya Parthasarathy

Introducing catalog federation for Apache Iceberg tables in the AWS Glue Data Catalog

#AWS #BigData
Introducing catalog federation for Apache Iceberg tables in the AWS Glue Data Catalog
AWS Glue now supports catalog federation for remote Iceberg tables in the Data Catalog. With catalog federation, you can query remote Iceberg tables, stored in Amazon S3 and cataloged in remote Iceberg catalogs, using AWS analytics engines and without moving or duplicating tables. In this post, we discuss how to get started with catalog federation for Iceberg tables in the Data Catalog.
aws.amazon.com
November 26, 2025 at 10:16 PM
📰 New article by Ron Ortloff

Accelerate data lake operations with Apache Iceberg V3 deletion vectors and row lineage

#AWS #BigData
Accelerate data lake operations with Apache Iceberg V3 deletion vectors and row lineage
In this post, we walk you through the new capabilities in Iceberg V3, explain how deletion vectors and row lineage address these challenges, explore real-world use cases across industries, and provide practical guidance on implementing Iceberg V3 features across AWS analytics, catalog, and storage services.
aws.amazon.com
November 26, 2025 at 10:11 PM
📰 New article by Anirudh Marc J, Yassine Landa

Building Personalized Web3 Experiences with ❜embed’s AI Recommendation Platform on AWS

#AWS
Building Personalized Web3 Experiences with ❜embed’s AI Recommendation Platform on AWS
The decentralized web has unlocked significant opportunities for user-owned digital experiences, with Web3 applications built on public blockchains (onchain) processing billions of dollars in daily transaction volume across thousands of protocols. However, despite this rapid growth, most Web3 platforms still rely on rudimentary content discovery mechanisms—chronological feeds, basic search, and manual curation—don’t utilize the rich behavioral data available onchain. While traditional web and mobile applications such as social media platforms and e-commerce stores (‘Web2’ platforms) leverage recommendation systems to drive engagement and user satisfaction, Web3 applications struggle to deliver personalized experiences that improve user retention and platform value due to the cost and technical complexity involved in adapting these systems to the Web3 space.
https://aws.amazon.com/blogs/web3/building-personalized-web3-experiences-with-❜embeds-ai-recommendation-platform-on-aws/
November 26, 2025 at 10:06 PM
📰 New article by Brian Zambrano, Dan Ford

Orchestrating large-scale document processing with AWS Step Functions and Amazon Bedrock batch inference

#AWS #Compute
Orchestrating large-scale document processing with AWS Step Functions and Amazon Bedrock batch inference
Organizations often have large volumes of documents containing valuable information that remains locked away and unsearchable. This solution addresses the need for a scalable, automated text extraction and knowledge base pipeline that transforms static document collections into intelligent, searchable repositories for generative AI applications.
aws.amazon.com
November 26, 2025 at 9:46 PM
📰 New article by Bob Boiko, Christopher Donnellan, Sarat Tatavarthi, Andrei Ivanovic, Enjeh Anyangwe, Alok Singh

How Condé Nast accelerated contract processing and rights analysis with Amazon Bedrock

#AWS #AI #MachineLearning
How Condé Nast accelerated contract processing and rights analysis with Amazon Bedrock
In this post, we explore how Condé Nast used Amazon Bedrock and Anthropic’s Claude to accelerate their contract processing and rights analysis workstreams. The company’s extensive portfolio, spanning multiple brands and geographies, required managing an increasingly complex web of contracts, rights, and licensing agreements.
aws.amazon.com
November 26, 2025 at 9:41 PM