The core of the orchestration we think ends up pretty similar whether you're doing basic data pipeline or machine learning infrastructure. It's really important for an orchestra to be able to handle these kind of patterns that show up in machine learning but don't show up as much in traditional data pipelines. This ability to do this kind of iteration, stop in the middle, pick up where you left off or pick up and pursue a different line of experimentation is really important. We have an integration with MLflow that we think is useful for tracking the results of machine learning experiments.

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