Course abstract
- Basic facts of maxima & minima & convex optimization.
- Important classes of convex optimization problems.
- Convex sets & convex functions
- Differentiable convex functions
- Projection on a convex set and normal cone
- Sub differential of a convex.
- Saddle point Conditions.
- Karush-kuhn-Tucker Conditions
- Lagrangian duality and examples.
- Strong duality & consequences.
- Linear programming, basics & examples.
- Basic results and the fundamental theorems of linear programming
- Simplex method
- Introduction to interior point methods
- Short step path following method .
- Semi definite programming
- Approximate solutions.
Course Instructor
Teaching Assistant(s)
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Course Duration : Apr-Jun 2015
Enrollment : 06-Apr-2015 to 30-Jun-2015
Exam registration : 23-Apr-2015 to 12-Jun-2015
Exam Date : 05-Jul-2015, 12-Jul-2015