How to Actually Use Cost Effective AI in Your Business
MLOps Community Mini Summit #9! We talked to AWS' Principal Solutions Architect, Annapurna ML, Scott Perry and Outerbounds' Data Scientist, Eddie Mattia brought to us by @awsdevelopers.
// Abstract
Successfully deploying AI applications into production requires a strategic approach that prioritizes cost efficiency without compromising performance. In this one-hour mini-summit, we'll explore how to optimize costs across the key elements of AI development and deployment. Discover how AWS AI chips, Trainium and Inferentia, offer high-performance, cost-effective compute solutions for training and deploying foundation models.
Learn how Outerbounds' platform streamlines AI workflows and makes the most of underlying compute resources, ensuring efficient and cost-effective development.
Gain insights into the latest advancements in cost-efficient AI production and learn how to drive innovation while minimizing expenses.
// Bio:
Eddie Mattia
Eddie is a data scientist with experience in building and scaling data-driven solutions. From wrestling SLURM clusters in grad school to dealing with massive cloud operations at startups and big companies alike, Eddie has years of experience building solutions to customers' data science and cloud infrastructure challenges.
Scott Perry
Scott Perry is a Principal Solutions Architect on the Annapurna ML accelerator team at AWS. Based in Canada, he helps customers deploy and optimize deep learning training and inference workloads using AWS Inferentia and AWS Trainium. Prior to joining AWS in 2017, Scott worked in a variety of solution architecture and consulting roles, spanning data center infrastructure, telecommunications, and computational genomics research.
// Related links
https://aws.amazon.com/blogs/containers/train-llama2-with-aws-trainium-on-amazon-eks/
https://aws.amazon.com/blogs/machine-learning/develop-and-train-large-models-cost-efficiently-with-metaflow-and-aws-trainium/
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