Many of our customers are telling us they want to move away from commercial database vendors to avoid expensive costs and burdensome licensing terms. But migrating away from commercial and legacy databases can be time-consuming and resource-intensive. When migrating your databases, you can automate the migration of your database schema and data using the AWS Schema Conversation Tool and AWS Database Migration Service. But there is always more work to do to migrate the application itself, including rewriting application code that interacts with the database. Motivation is there, but costs and risks are often limiting factors. Today, we are making Babelfish for Aurora PostgreSQL available. Babelfish allows Amazon Aurora PostgreSQL-Compatible Edition to understand the SQL Server wire protocol. It allows you…
Tag: AWS News Blog
New – Attribute-Based Instance Type Selection for EC2 Auto Scaling and EC2 Fleet
The first AWS service I used, more than ten years ago, was Amazon Elastic Compute Cloud (Amazon EC2). Over time, EC2 has added a wide selection of instance types optimized to fit different use cases, with a varying combination of CPU/GPU, memory, storage, and networking capacity to give you the flexibility to choose the appropriate mix of resources for your applications. One of the key advantages of the cloud is elasticity. With EC2 Fleet, you can synchronously request capacity across multiple instance types and purchase options, launching your instances across multiple Availability Zones, using the On-Demand, Reserved, and Spot Instances together. With EC2 Auto Scaling, you can automatically add or remove EC2 instances according to conditions you define and add…
New – EC2 Instances Powered by Gaudi Accelerators for Training Deep Learning Models
There are more applications today for deep learning than ever before. Natural language processing, recommendation systems, image recognition, video recognition, and more can all benefit from high-quality, well-trained models. The process of building such a model is iterative: construct an initial model, train it on the ground truth data, do some test inferences, refine the model and repeat. Deep learning models contain many layers (hence the name), each of which transforms outputs of the previous layer. The training process is math and processor intensive, and places demands on just about every part of the systems used for training including the GPU or other training accelerator, the network, and local or network storage. This sophistication and complexity increases training time and…
AWS Local Zones Are Now Open in Las Vegas, New York City, and Portland
Today, we are opening three new AWS Local Zones in Las Vegas, New York City (located in New Jersey), and Portland metro areas. We are now at a total of 14 Local Zones in 13 cities since Jeff Barr announced the first Local Zone in Los Angeles in December 2019. These three new Local Zones join the ones in full operation in Boston, Chicago, Dallas, Denver, Houston, Kansas City, Los Angeles, Miami, Minneapolis, and Philadelphia. Local Zones are one of the ways we bring select AWS services much closer to large populations and geographic areas where major industries come together. By having this proximity, you can deploy latency-sensitive workloads such as real-time gaming platforms, financial transaction processing, media and entertainment…