Amazon Web Services

This session introduces Machine Learning Operations (MLOps), focusing on the challenges of operationalizing AI and the differences between DevOps and MLOps practices. The presenter, John, discusses the importance of collaboration between data scientists, ML engineers, and DevOps teams to successfully implement MLOps. He covers key aspects such as data preparation, model training, deployment, and monitoring, emphasizing the need for automated workflows and governance. The talk also explores the four stages of MLOps maturity, from initial experimentation to scalable, production-ready systems. Throughout the presentation, John highlights how AWS services like SageMaker can facilitate MLOps processes and help organizations mature their ML practices.

product-information
skills-and-how-to
generative-ai
ai-ml
devtools
Show 4 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