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Mathematical optimization / Operations research / Equations / Dynamic programming / Optimal control / Systems engineering / Stochastic programming / Bellaterra / JavaScript / Recursion / Dynamics / Lars Ljungqvist
Date: 2016-07-28 04:30:07
Mathematical optimization
Operations research
Equations
Dynamic programming
Optimal control
Systems engineering
Stochastic programming
Bellaterra
JavaScript
Recursion
Dynamics
Lars Ljungqvist

Course: Dynamic Programming and Business Cycles Faculty:

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