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  <rdfs:label>AI Lifecycle Systems</rdfs:label>
  <skos:altLabel>AI Development Lifecycle</skos:altLabel>
  <skos:altLabel>AI System Lifecycle</skos:altLabel>
  <skos:altLabel>Intelligent System Lifecycle</skos:altLabel>
  <skos:altLabel>Machine Learning Pipeline</skos:altLabel>
  <skos:prefLabel>Artificial Intelligence Lifecycle Systems</skos:prefLabel>
  <skos:definition>AI Lifecycle Systems encompass the processes and methodologies involved in the development, deployment, and maintenance of artificial intelligence systems. These systems include various stages such as data collection, model training, evaluation, and continuous improvement to ensure effective and ethical AI performance.</skos:definition>
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