COURSE DESCRIPTION
Learn about remanufacturing in this short introduction course. After you have completed this course you will be able to define what remanufacturing is and explain its drivers and challenges. The course also brings up industrial remanufacturing examples from all around the world.
About the course
This course describe what remanufacturing is by defining it and showing existing industrial remanufacturing examples. It also brings up drivers and challenges to remanufacturing and what the economic and environmental aspects that are connected to remanufacturing.
Topic covered by the course
When you have passed this MOOC you will be able to:
- define remanufacturing
- give industrial examples of remanufacturing
- explain drivers and challenges to remanufacturing
- connect economic and environmental aspects to remanufacturing
Who can take the course?
The course is open to everyone and free. There are no requirements for prior knowledge or special qualifications to participate in the course.
Course structure
The course is an online course where teaching is completely by remote methods, using a web-based platform. It consists of several pre-recorded lectures, readings and exercises.
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