Amazon Web Services

In this video, Emily demonstrates how to get started with Amazon SageMaker Studio, a fully managed IDE for machine learning. She showcases the platform's ability to decouple the UI from applications, allowing users to browse foundation models, explore applications, and use various tools like Jupyter Lab and VS Code. Emily navigates through SageMaker Studio Online, highlighting features such as JumpStart, which provides access to many foundation models from leading providers. She demonstrates deploying and testing inference on a Mixrtal 8x7B Instruct model, showcasing SageMaker Studio's capabilities in handling multi-GPU machines and processing inference requests. The video serves as an introduction to SageMaker Studio's powerful features for machine learning development and model deployment.

product-information
skills-and-how-to
generative-ai
ai-ml
sagemaker
Show 2 more

Up Next

VideoThumbnail
30:23

T3-2 Amazon SageMaker Canvasで始めるノーコード機械学習 (Level 200)

Jun 27, 2025
VideoThumbnail
31:49

T2-3 AWS を使った生成 AI アプリケーション開発 (Level 300)

Jun 27, 2025
VideoThumbnail
26:05

T4-4: AWS 認定 受験準備の進め方 AWS Certified Solutions Architect – Associate 編 後半

Jun 26, 2025
VideoThumbnail
32:15

T3-1: はじめてのコンテナワークロード - AWS でのコンテナ活用の第一歩

Jun 26, 2025
VideoThumbnail
29:37

BOS-09: はじめてのサーバーレス - AWS Lambda でサーバーレスアプリケーション開発 (Level 200)

Jun 26, 2025