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In 2001, a group of software developers got together at a ski resort in the Wasatch mountains of Utah and drew up a document they called the “Agile Manifesto.” In the digital age, the amount of information driving demand forecasts has increased, and demand data has flowed faster and more efficiently than ever before.
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