Eugene Yan's latest post addresses common questions about the practical application of data science within business contexts. He clarifies that business requirements and desired outcomes are established early in projects to ensure deliverables are utilized. Yan notes that while simpler models are preferred initially, more complex 'black box' methods become acceptable as trust is built. He also touches on feature engineering, data engineering roles, and the challenge of determining when a model is sufficiently optimized. AI
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RANK_REASON This is an opinion piece by a named author discussing practical aspects of data science in business.