PREDICTIVE PLANNING IN THE OIL AND GAS INDUSTRY: TRENDS AND BARRIERS
Keywords:
supply chain, planning, predictive planning, Artificial Intelligence, Big Data, Internet of Things, blockchain, Cloud ComputingAbstract
Modern technologies make it possible to develop a new concept of supply chain planning that can almost completely automate the planning process. This article introduces the concept of predictive planning as the latest stage in supply chain planning. The main tools of predictive planning are proposed, which ensure a synergistic effect in improving demand forecast accuracy and reducing forecasting errors. The article also examines the main barriers to their effective implementation.
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