CurrMana

Dynamic Programming and Stochastic Control

6.231 · Electrical Engineering and Computer Science · Graduate · Fall 2015

Prof. Dimitri Bertsekas

MIT · Tier 1

The course covers the basic models and solution techniques for problems of sequential decision making under uncertainty (stochastic control). We will consider optimal control of a dynamical system over both a finite and an infinite number of stages. This includes systems with finite or infinite state spaces, as well as perfectly or imperfectly observed systems. We will also discuss approximation methods for problems involving large state spaces. Applications of dynamic programming in a variety …

Electrical EngineeringMathematicsSystems EngineeringComputer ScienceBusiness & ManagementSystems Thinking

The syllabus, on MIT OpenCourseWare

The full course — syllabus, assigned readings, problem sets, exams, and lecture notes — lives on OCW. These open the real thing:

Attribution

Prof. Dimitri Bertsekas. 6.231 Dynamic Programming and Stochastic Control. Fall 2015. Massachusetts Institute of Technology: MIT OpenCourseWare, https://ocw.mit.edu. License: CC BY-NC-SA 4.0.

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