만원
Deploying DeepSeek V3 and DeepSeek-R1 on Amazon SageMaker
AI
AWS 스타트업
생성형 AI
기계 학습
SageMaker
기술
-
-
대면
Supreeth S Angadi | GenAI/ML Startups Solution Architect, AWS, Pradipta Dash | Senior Startups Solutions Architect, AWS, Sourabh Jain | Sr. GenAI Startups Account Manager, AWS
English
만원 - 이 이벤트는 정원에 도달함
300 - 고급, 400 - 전문가
발표자
Are you a startup founder or machine learning (ML) engineer looking to effectively deploy and manage AI models while optimizing costs?
Join us for an intensive hands-on workshop exploring Amazon SageMaker Studio's unified ML development environment and learn production-ready strategies for model deployment.
DeepSeek is a cutting-edge family of large language models that has gained significant attention in the AI community for its impressive performance, cost-effectiveness, and open-source nature. DeepSeek offers a range of models including the powerful DeepSeek-V3, the reasoning-focused DeepSeek-R1, and various distilled versions. These models stand out for their innovative architecture, utilizing techniques like Mixture-of-Experts and Multi-Head Latent Attention to achieve high performance with lower computational requirements.
In this hands-on workshop, you'll learn about Amazon SageMaker Studio's comprehensive toolkit to self-host large language models from DeepSeek while maintaining cost efficiency.
Who is this for? This workshop is ideal for:
- Startup founders and technical leaders creating AI solutions
- ML Engineers and Data Scientists
- DevOps professionals managing GenAI/ML infrastructure
- Technical decision-makers evaluating GenAI/ML platforms
- Developers interested in self-hosting open-source LLMs
- Engineers looking to optimize their GenAI/ML infrastructure costs
During this hands-on workshop, you'll learn how to leverage Amazon SageMaker Studio's unified environment to streamline your ML workflows and implement cost-effective model deployment strategies.
Key highlights:
- Master Amazon SageMaker Studio's unified interface and development environment
- Hands-on implementation of self-hosting DeepSeek and similar models
- Deploy cost-optimization strategies including scale-to-zero capabilities
- Enhance inference performance using Fast Model Loader and container caching
- Best practices for managing GenAI/ML development lifecycle
- Real-world examples of production GenAI/ML infrastructure optimization
- Interactive troubleshooting and optimization sessions
This workshop is specifically designed for startup teams who want to productionze GenAI/ML infrastructure while maintaining cost efficiency. You'll gain hands-on experience with Amazon SageMaker's advanced features and learn practical strategies for managing GenAI/ML workloads.
Prerequisites:
- Laptop with adequate specifications for hands-on exercises
- Basic understanding of machine learning concepts
- Familiarity with Python programming
- AWS account access
- Basic knowledge of container technologies
- Understanding of ML deployment concepts.
By registering, you agree to the AWS Event Terms & Conditions and AWS Code of Conduct.