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  "documentTitle": "2025 Executive Perspectives Unlocking Impact from AI Driving Sustaingable Cost Advantage with AI",
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      "text": "Context: A leading Asia-Pacific oil and gas company was looking to improve maintenance operations, revamp its preventative maintenance strategy, and reduce its backlog. This required a granular view of asset health, specifically failure rates. Failure data was unstructured, free-text equipment notifications, which required multiple staff-hours and a complex rule-based system to analyze and draw insights",
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      "text": "Actions taken: Developed a GPT-4 tool that analyzes over 200,000 equipment notifications in two days. The solution was used to summarize notifications in standard formats that surface insights for engineers and technicians. GPT-4 was used to enhance the existing event classification process with its ability to consider the broader context of each sentence and provide reasoning for each classification. It was also used to identify equipment failures from reading notifications. Client integrated GPT-4 into a live production-grade tool to improve quality and usability",
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      "text": "Case example 4 – Significant field forces | An oil and gas company developed a GPT-4 tool to optimize maintenance operations",
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