Approximation Algorithms Part II
Approximation algorithms, Part 2 This is the continuation of Approximation algorithms, Part 1. Here you will learn linear programming duality applied to the...
By Claire Mathieu on Coursera
About This Course
Approximation algorithms, Part 2 This is the continuation of Approximation algorithms, Part 1. Here you will learn linear programming duality applied to the design of some approximation algorithms, and semidefinite programming applied to Maxcut. By taking the two parts of this course, you will be exposed to a range of problems at the foundations of theoretical computer science, and to powerful design and analysis techniques. Upon completion, you will be able to recognize, when faced with a new combinatorial optimization problem, whether it is close to one of a few known basic problems, and will be able to design linear programming relaxations and use randomized rounding to attempt to solve your own problem. The course content and in particular the homework is of a theoretical nature without any programming assignments. This is the second of a two-part course on Approximation Algorithms.
Topics Covered
Frequently Asked Questions
How much does Approximation Algorithms Part II cost?
Visit the Approximation Algorithms Part II course page for current pricing and available discounts.
Who teaches Approximation Algorithms Part II?
Approximation Algorithms Part II is taught by Claire Mathieu, École normale supérieure.
What skill level is Approximation Algorithms Part II for?
This course is designed for all levels learners.
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