Building Machine Learning Pipelines With Amazon Sagemaker
In this session, we’ll cover the key technology agnostic considerations when building out automated machine learning pipelines as well as incorporating CI/CD practices into your machine learning pipelines. To showcase a specific implementation, we’ll dive deeper into Amazon SageMaker Pipelines & Projects.
speaker: Shelbee Eigenbrode (AWS)
Principal AI and Machine Learning Specialist Solutions Architect at Amazon Web Services (AWS).
Website: https://www.aicamp.ai/event/eventdetails/W2021101310
Видео Building Machine Learning Pipelines With Amazon Sagemaker канала AICamp
speaker: Shelbee Eigenbrode (AWS)
Principal AI and Machine Learning Specialist Solutions Architect at Amazon Web Services (AWS).
Website: https://www.aicamp.ai/event/eventdetails/W2021101310
Видео Building Machine Learning Pipelines With Amazon Sagemaker канала AICamp
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