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Robust Optimization
Paritosh Mokhasi
In this presentation, Paritosh Mokhasi describes robust optimization, a framework for solving optimization problems in the presence of uncertainties. He covers the concept of robust optimization and how the problems are formulated, showing examples that demonstrate how the new Wolfram Language function RobustConvexOptimization can be used to solve these problems. A brief description of the different methods used to solve these problems is also provided.
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Channels: Technology Conference
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