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[r/ML] [D] How do you document your ML system architecture?

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Summary

This r/ML discussion explores how experienced practitioners document their machine learning system architectures, moving beyond just the modeling side. The user specifically asks whether teams maintain architecture diagrams for components like training pipelines, RAG systems, or batch scoring setups, and how these diagrams are created and kept updated in practice. It highlights a common challenge in MLOps regarding system design and documentation best practices.

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