At Salesforce, building powerful generative AI models requires a laser focus on performance, scale, and iteration speed. But training these models is compute- intensive, and orchestrating thousands of GPUs used to be a major operational challenge. With Amazon SageMaker HyperPod, Salesforce now taps into what feels like a supercomputer at their fingertips. The managed service enables rapid, large-scale deployment of training infrastructure—turning isolated nodes into a high-performance GPU fabric. By eliminating DevOps overhead and offering advanced training stack recipes out of the box (FSDP + LoRA + context parallel), HyperPod dramatically accelerates model training cycles, helping Salesforce innovate faster for their customers.
Learn more on how Salesforce is innovating with AWS:
http://go.aws/3Jk1Yeh
Subscribe to AWS: https://go.aws/subscribe
Create a free AWS account: https://go.aws/signup
Try AWS for free: https://go.aws/free
Connect with an expert: https://go.aws/contact
Explore more: https://go.aws/more
Next steps:
Explore on AWS in Analyst Research: https://go.aws/reports
Discover, deploy, and manage software that runs on AWS: https://go.aws/marketplace
Join the AWS Partner Network: https://go.aws/partners
Learn more on how Amazon builds and operates software: https://go.aws/library
Do you have technical AWS questions?
Ask the community of experts on AWS re:Post: https://go.aws/3lPaoPb
Why AWS?
Amazon Web Services is the world’s most comprehensive and broadly adopted cloud, enabling customers to build anything they can imagine. We offer the greatest choice of innovative cloud capabilities and expertise, on the most extensive global infrastructure with industry-leading security, reliability, and performance.
#AWS #SageMakerHyperPod #GenerativeAI #MachineLearning #AITraining #Salesforce #Scalability #MLInfrastructure #AmazonWebServices #CloudComputing