Energy Saving in Cloud by Using Enhanced Instance Based Learning (EIBL) for Resource Prediction

Author:

Pelluri Sudha,Sirandas Ramachandram

Publisher

Springer International Publishing

Reference64 articles.

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5. Cloud AEC. Web page at http://aws.amazon.com/ec2 . Date of last access: 14 Sept 2010.

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