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  "documentTitle": "TEI Microsoft Agentic AI",
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      "text": "Interviewees said that prior to building AI agents with Microsoft's solutions, their organizations experienced a range of challenges they wanted to address with an enterprisewide, wholistic agentic-AI program.",
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      "text": "Past attempts at innovation that partially failed; Extending the benefits realized with genAI; Data protection risk because of unsanctioned tools; Dissatisfied customers.",
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