AWS Storage Blog
Category: AWS Glue
How to consume tabular data from Amazon S3 Tables for insights and business reporting
When was the last time you found yourself trying to look at rows and rows of data in a spreadsheet struggling to interpret and draw conclusions? Many analysts and engineers experience the same challenge every day. Whether it’s analyzing sales trends, monitoring operational metrics, or understanding customer behavior, the challenge lies not just in interpreting […]
How Pendulum achieves 6x faster processing and 40% cost reduction with Amazon S3 Tables
Pendulum is an AI-powered analytics platform that aggregates and analyzes real-time data from social media, news, and podcasts. Designed to help organizations stay ahead, it enables reputation monitoring, early crisis detection, and influencer activity tracking. Using machine learning (ML) enables Pendulum to surface key insights from multiple channels, providing a comprehensive view of the digital […]
Bringing more to the table: How Amazon S3 Tables rapidly delivered new capabilities in the first 5 months
Amazon S3 redefined data storage when it launched as the first generally available AWS service in 2006 to deliver highly reliable, durable, secure, low-latency storage with virtually unlimited scale. While designed to deliver simple storage, S3 has proven to be built to handle the explosive growth of data we have seen in the last 19 […]
Connect Snowflake to S3 Tables using the SageMaker Lakehouse Iceberg REST endpoint
Organizations today seek data analytics solutions that provide maximum flexibility and accessibility. Customers need their data to be readily available using their preferred query engines, and break down barriers across different computing environments. At the same time, they want a single copy of data to be used across these solutions, to track lineage, be cost […]
Build a data lake for streaming data with Amazon S3 Tables and Amazon Data Firehose
Businesses are increasingly adopting real-time data processing to stay ahead of user expectations and market changes. Industries such as retail, finance, manufacturing, and smart cities are using streaming data for everything from optimizing supply chains to detecting fraud and improving urban planning. The ability to use data as it is generated has become a critical […]
Access data in Amazon S3 Tables using PyIceberg through the AWS Glue Iceberg REST endpoint
Modern data lakes integrate with multiple engines to meet a wide range of analytics needs, from SQL querying to stream processing. A key enabler of this approach is the adoption of Apache Iceberg as the open table format for building transactional data lakes. However, as the Iceberg ecosystem expands, the growing variety of engines and languages has […]
How Amazon Ads uses Iceberg optimizations to accelerate their Spark workload on Amazon S3
In today’s data-driven business landscape, organizations are increasingly relying on massive data lakes to store, process, and analyze vast amounts of information. However, as these data repositories grow to petabyte scale, a key challenge for businesses is implementing transactional capabilities on their data lakes efficiently. The sheer volume of data requires immense computational power and […]
How Delhivery migrated 500 TB of data across AWS Regions using Amazon S3 Replication
Delhivery is one of the largest third-party logistics providers in India. It fulfills millions of packages every day, servicing over 18,000 pin codes in India and powered by more than 20 automated sort centers, 90 warehouses, with over 2800 delivery centers. Data is at the core of the Delhivery’s business. In anticipating of potential regulatory […]
Derive insights from AWS DataSync task reports using AWS Glue, Amazon Athena, and Amazon QuickSight
Update (10/30/2024): On October 30, 2024, AWS DataSync launched Enhanced mode tasks, prompting updates to this blog. Updates include a new step in the “Step 2: Populate Glue catalog with task reports data using a Glue crawler” section and detailed information on the new capabilities in “Updated steps for working with task reports of new […]
Use generative AI to query your Amazon S3 data lake for insights
Businesses store large volumes of data in their data lakes and rely on this data to extract insights and make important business decisions. However, business stakeholders sometimes lack the technical skills required to run complex queries against their data lakes. Instead, they rely on data scientists or analysts to build reports and dashboards or to […]