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  <rdfs:label>AI Measurement</rdfs:label>
  <skos:altLabel>AI Evaluation Metrics</skos:altLabel>
  <skos:altLabel>AI Performance Metrics</skos:altLabel>
  <skos:prefLabel>AI Evaluation Standards</skos:prefLabel>
  <skos:definition>AI Measurement refers to the methods and metrics used to evaluate the performance and effectiveness of artificial intelligence systems. These measurements typically assess the accuracy, precision, recall, and other relevant performance metrics to ensure the AI system meets its intended goals and operates reliably in various conditions.</skos:definition>
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