Bringing ML Workflows to Heterogeneous Cloud Native Machine Learning Platforms Using Intermediate Representation

Bringing ML Workflows to Heterogeneous Cloud Native Machine Learning Platforms Using Intermediate Representation

Linux Foundation via YouTube Direct link

Pillars of Al Lifecycle - Datasets, Models...

2 of 22

2 of 22

Pillars of Al Lifecycle - Datasets, Models...

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Bringing ML Workflows to Heterogeneous Cloud Native Machine Learning Platforms Using Intermediate Representation

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  1. 1 Intro
  2. 2 Pillars of Al Lifecycle - Datasets, Models...
  3. 3 and Pipelines
  4. 4 Define Pipeline with Python SDK
  5. 5 Argo Workflows
  6. 6 Kubeflow Pipelines with Tekton hits v1.0
  7. 7 Benefits of metadata and artifact tracking
  8. 8 Lineage Tracking
  9. 9 TensorFlow Extended-Using MLMD as metadata store
  10. 10 Kubeflow Pipelines v2 main goals
  11. 11 Machine Learning Metadata in v1
  12. 12 Pipeline Spec in v1
  13. 13 Intermediate Representation in v2
  14. 14 New Orchestration Controllers
  15. 15 Components
  16. 16 Abstraction Layer for Orchestration Engines
  17. 17 Abstraction Layer Benefits
  18. 18 Abstraction Layer Features: Execution Client
  19. 19 Abstraction Layer Features: Execution Spec
  20. 20 Summary
  21. 21 References
  22. 22 Smart Runtime

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