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  "documentTitle": "2025 The AI Dossier",
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      "text": "Safe and secure: Because price, margin information, and negotiation strategies are consumed by the model, it must be secured to prevent the leakage of sensitive commercial data. Fair and impartial: The data used to train and fuel the model may be dated, leaving new target groups and small but growing customer segments potentially underrepresented. As a result of this latent bias, the model may be challenged to provide commensurate accuracy for all groups and segments.",
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      "text": "Driving efficiency: By using AI to augment preparing and sorting materials, the organization promotes efficiency in trade promotion processes. Trade promotion effectiveness: Leveraging AI can help improve allocation of resources across price, promotion, and negotiation strategies. Data-driven decision-making: Using AI to create materials for trade negotiations enables human workers to access much more information and make more informed, data driven decisions.",
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