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Hi! I Have Question About Data Managment Part Of Clearml. Does Clearml Support Data Versioning Like In Lakefs ?) Is It Similar ? Maybe There Is Some Interesting Pros And Cons?


You mean does one solution is better than combining maintaining and automating 3+ solutions (dvc/lakefs + mlflow + cubeflow/airflow)
Yes I'd say it is. BTW if you have airflow running for other automations you can very easily combine the automation with clearml and have a single airflow automation for everything, but the main difference now airflow only launches logic, never actual compute/data (which are launched and scaled via clearml
Does that make sense?

  
  
Posted 7 months ago
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7 months ago
7 months ago