Unpopular opinion: The best MLOps is the MLOps you don't need. Before building a complex ML pipeline, ask: 1. Can a sim
Unpopular opinion: The best MLOps is the MLOps you don't need. Before building a complex ML pipeline, ask: 1. Can a simpler model solve this? 2. Do you actually need real-time inference? 3. Is batch processing good enough? 4. Can you use a managed API instead? 90% of the time, the answer to at least one of these is 'yes'. Stop over-engineering.
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