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Management science
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== Applications == {{more citations needed section|date=March 2019}} Management science's applications are diverse allowing the use of it in many fields.<ref>{{Cite book |last=III |first=B.W.T (2018). |title=Introduction to Management Science |publisher=Pearson Education (US). |isbn=9780134731315 |edition=13th |location=US}}</ref> Below are examples of the applications of management science. In [[finance]], management science is instrumental in portfolio optimization, [[risk management]], and investment strategies. By employing mathematical models, analysts can assess market trends, optimize asset allocation, and mitigate [[financial risk]]s, contributing to more informed and strategic decision-making. In healthcare, management science plays a crucial role in optimizing resource allocation, patient scheduling, and [[facility management]]. Mathematical models aid healthcare professionals in streamlining operations, reducing waiting times, and improving overall efficiency in the delivery of care. [[Logistics]] and [[supply chain management]] benefit significantly from management science applications. Optimization algorithms assist in route planning, [[Inventory management software|inventory management]], and [[demand forecasting]], enhancing the efficiency of the entire [[supply chain]]. In manufacturing, management science supports process optimization, [[production planning]], and [[quality control]]. Mathematical models help identify bottlenecks, reduce production costs, and enhance overall productivity. Furthermore, management science contributes to strategic decision-making in [[project management]], [[marketing]], and [[human resources]]. By leveraging quantitative techniques, organizations can make data-driven decisions, allocate resources effectively, and enhance overall performance across diverse functional areas.
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