SAS for Demand-Driven Planning and Optimization
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چکیده
SAS for Demand-Driven Planning and Optimization Listen to customers, focus on the market and respond to demand in near-real time • Quickly and easily visualize market signals and data to predict outcomes. Sense near-real-time market data to understand shifts in demand for your products. Simulate future demand by varying the values for price, sales promotions, marketing events and other related factors using what-if scenario analyses.
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