ABSTRACT
The paper presents the classification method for multimedia applications, based on three statistical parameters (length, type, time) of I/O requests to storage system, using methods of data mining. The aim of this classification is to provide the necessary priorities and guaranteed bandwidth to multimedia applications in real time.
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Index Terms
- Analysis and classification of multimedia I/O requests to storage system
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