Amazon Web Services

This video provides a comprehensive guide on getting started with Amazon SageMaker Studio, an integrated development environment for machine learning. It walks through the process of setting up a SageMaker domain, creating user profiles with appropriate permissions, and establishing shared spaces for collaborative work. The video explains how to launch SageMaker Studio and access its various features, including data preparation tools, pre-trained models, and MLOps capabilities. It emphasizes the importance of proper domain setup and user management to enable effective team collaboration and resource sharing within SageMaker Studio.

The tutorial demonstrates how to create and manage user profiles within a SageMaker domain, highlighting the ability to customize execution roles and access permissions for each user. It also showcases the shared spaces feature, which allows multiple users to work together in real-time on notebooks and share model artifacts seamlessly. The video concludes by showing how to launch SageMaker Studio and navigate its interface, providing a foundation for users to begin their machine learning projects using AWS's powerful ML development environment.

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

Up Next

VideoThumbnail
37:15

Contextual Retrieval 기반 RAG와 AWS 구성 방안

Jun 27, 2025
VideoThumbnail
40:18

ML 엔지니어를 클라우드 환경에서의 효율적인 LLM 배포 전략: vLLM, Amazon LMI, 그리고 SageMaker

Jun 27, 2025
VideoThumbnail
35:02

고급 프롬프트 엔지니어링 방법 및 Tool Use 활용 가이드

Jun 27, 2025
VideoThumbnail
30:02

Builders 온라인 시리즈 | Amazon VPC와 온프레미스 네트워크 연결하기

Jun 27, 2025
VideoThumbnail
26:52

Builders 온라인 시리즈 | 당신의 아키텍처는 Well-Architected 한가요?

Jun 27, 2025