FMOps/LLMOps for FMs with Amazon SageMaker and Amazon Bedrock
Fill form to unlock content
Error - something went wrong!
You're seconds away from accessing all on-demand Innovate: Generative AI + Data Edition on-demand sessions. Fill out the form below for full access.
Thank you! Enjoy the on-demand sessions.
Creating reliable and repeatable workflows for generative AI applications requires additional tooling and practices that build on traditional MLOps.
In this session, get a comprehensive overview of lifecycle management for foundation models from Amazon SageMaker JumpStart and Amazon Bedrock that power your generative AI applications.
Dive deep into operational efficiencies across the lifecycle, including model selection and customization, model evaluation, model deployment, augmentation workflows, monitoring and traceability, and ongoing management. Explore multiple Amazon SageMaker MLOps services (such as SageMaker Experiments, SageMaker Pipelines, SageMaker Model Registry, and Model Monitor) for the reference architectures presented in this session.