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by imiric
1325 days ago
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Depends on what you want to focus on. My point is that there are plenty of roles adjacent to the core of ML that are still needed to make ML function. Think about data storage for models, maintaining CI pipelines for training, UIs for curation and labeling, packaging and deploying models, data version control systems, etc. None of these are tasks data scientists should be concerned about, and viceversa, data science is not something engineers should necessarily be concerned about either. It doesn't make either role superior; they just complement each other well. |
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