When simplifying data models, critical business semantics are lost, causing AI systems to make incorrect assumptions because they cannot fill in the removed contextual meaning; for example, the term 'completed' in an order context may mean shipped, delivered, invoiced, or paid, and losing this semantic distinction leads to ambiguous interpretations and wrong predictions at scale.
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Why simplifying your data model breaks AIAjouté :
So, for example, when we are talking or asking, "Is this order completed?" what do we actually mean by completed? Is it when the order has been shipped, or delivered, invoiced, or paid?
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