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  "documentTitle": "Making finance the predictive powerhouse How to create an agile finance function",
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      "text": "Scenario planning became a key requirement for CFOs during the pandemic and has increased in importance. With more quality, diverse data—and the power of AI—FP&A teams can perform what-if scenario analyses on business models and macro factors. These insights are key for understanding the impact on future business outcomes and where they can make changes to achieve optimal outcomes. Enterprise digital twins are an emerging capability in this area. They make it possible for FP&A teams to model complex interdependencies that current scenario planning solutions don’t address.",
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      "text": "This flexible and adaptable data foundation makes it possible for finance to manage data in “layers”. The first layer, such as business intelligent (BI), must be structured, standardized and available on demand, with no exceptions. The next data layer, which is more flexible, enables organizations to unleash insights through forecasting or scenario planning. This requires human judgment, analytics, data science and AI. By making this data widely available and supporting self-service, the finance organization democratizes data and supports data-driven operations. At every turn, planning teams with agility collaborate with IT on data strategy. They work together to develop a strategic approach for prioritized use cases and create an inventory of data sources and the type of data in the organization. Doing this makes it possible to assign the right level of ownership and accountability across all the teams that interact with data.",
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      "text": "With AI, agile FP&A teams can uncover hidden patterns from structured and unstructured data and augment finance managers with new insights. This augmentation increases the speed and accuracy of forecasting and financial planning. As AI augments finance personnel, it helps them become more productive and frees up time to focus on knowledge and domain-specific activities that deliver new value.",
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