What primary constraint governs the performance and reliability of a machine learning model concerning its fuel source?
Answer
The sufficiency, narrowness, or bias present in the data set
Machine learning models rely on vast quantities of information to find statistical relationships; if the data is poor quality, insufficient, or biased, the resulting model will inherit these flaws, leading to poor generalization.

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