Approximation Algorithms

EIT Digital
via Coursera
Save (0)
ClosePlease login

No account yet? Register

Many real-world algorithmic problems cannot be solved efficiently using traditional algorithmic tools, for example because the problems are NP-hard. The goal of this course is to become familiar with important algorithmic concepts and techniques needed to effectively deal with such problems. These techniques apply when we don’t require the optimal solution to certain problems, but an approximation that is close to the optimal solution. We will see how to efficiently find such approximations.

The material for this course is based on the course notes that can be found under the resources tab. We will not cover everything from the course notes. The course notes are there both for students who did not fully understand the lectures as well as for students who would like to dive deeper into the topics.

The video lectures contain a few very minor mistakes. A list of these mistakes can be found under resources (in the document called “Errata”). If you think you found an error, report a problem by clicking the square flag at the bottom of the lecture or quiz where you found the error.

Instructor(s)

Mark de Berg
EIT Digital
via Coursera
Free (audit)
English
Paid Certificate Available
Approx. 15 hours to complete
Self paced
Intermediate Level
Subtitles: Subtitles: English