The AWS Developers Podcast
Episode 164
May 09, 25 • 00:40:28
With Germaine Ong, Startup Solution Architect, and Jarett Yeo, Startup Solution Architect
In this episode of the AWS Developers Podcast, we dive into the different ways to deploy large language models (LLMs) on AWS. From self-managed deployments on EC2 to fully managed services like SageMaker and Bedrock, we break down the pros and cons of each approach. Whether you're optimizing for compliance, cost, or time-to-market, we explore the trade-offs between flexibility and simplicity. You'll hear practical insights into instance selection, infrastructure management, model sizing, and prototyping strategies. We also examine how services like SageMaker Jumpstart and serverless architectures like Bedrock can streamline your machine learning workflows. If you're building or scaling AI applications in the cloud, this episode will help you navigate your options and design a deployment strategy that fits your needs.
Links
Here are the links to the tools, technologies, or articles we mentioned in this episode.
Blog: Deploying Deepseek R1 Distill on Amazon EC2
Blog: Deploying DeepSeek R1 Distill on Amazon Sagemaker Jumpstart
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Open Web UI
Doc: deploy your own model on Amazon Sagemaker
Doc: deploy your own model on Amazon Bedrock