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  "documentTitle": "FULL VALUE. FULL STOP How to scale innovation and achieve full value with Future Systems",
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      "text": "Inference Approach: First, we define and group companies into Future System Leaders and Laggards... Definition of Leaders and Laggards: We create a Future Systems Score... Calculation of the Performance difference: Using the definitions above...",
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      "text": "ABOUT THE RESEARCH",
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