Sciweavers

ETFA
2008
IEEE

Using neural networks for quality management

14 years 5 months ago
Using neural networks for quality management
We present a method for fine grain QoS control of multimedia applications. This method takes as input an application software composed of actions. The execution times are unknown increasing functions of quality level parameters. Our method allows the construction of a Quality Manager which computes adequate action quality levels, so as to meet QoS requirements for a given platform. These include requirements for safety (action deadlines are met) as well as optimality (maximization and smoothness of quality levels). In this paper, we use learning techniques for computation of quality management policies. Given input parameters of the actions, a neural network is used to refine online pre-computed average execution times. Using refine average execution times allows a better control of the application, which leads to a reduction of fluctuations of CPU load. We present experimental results including the implementation of the method and benchmarks for an MPEG4 video encoder.
Mohamad Jaber, Jacques Combaz, Loïc Strus, Je
Added 29 May 2010
Updated 29 May 2010
Type Conference
Year 2008
Where ETFA
Authors Mohamad Jaber, Jacques Combaz, Loïc Strus, Jean-Claude Fernandez
Comments (0)