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Intel completed a study of several generations of products to learn how product forecasts and plans
are managed, how demand risks manifest themselves, and how business processes contend with, and
sometimes contribute to, demand risk. The study identified one critical area prone to breakdown:
the aggregation of market insight from customers. Information collected from customers and then
rolled up through sales, marketing, and business planning teams is often biased, and it can lead to
inaccurate forecasts, as evidenced by historical results.
A research effort launched in 2005 sought to introduce new methodologies that might help crack the
bias in demand signals. We worked with our academic partners to develop a new application, a form
of prediction market, integrated with Intel's regular short-term forecasting processes. The process
enables product and market experts to dynamically negotiate product forecasts in an environment
offering anonymity and performance-based incentives. To the extent these conditions curb bias and
motivate improved performance, the system should alleviate demand miscalls that have resulted in
inventory surpluses or shortages in the past. Results of early experiments suggest that market-developed
forecasts are meeting or beating traditional forecasts in terms of increased accuracy and
decreased volatility, while responding well to demand shifts. In addition, the new process is
training Intel's experts to improve their use and interpretation of information.
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