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Welcome to the Volunteer-Based System for Research on the Internet!
Welcome to the Volunteer-Based System for Research on the Internet!
This system is designed to provide detail data about applications used in the Internet. This information can be used for:
- obtaining the knowledge which applications are most frequently used in the network
- providing the users some basic statistics about their Internet connection usage (for example for which kinds of applications their connection is used the most)
- creating scientific profiles of traffic generated by different applications or different groups of applications
- creating a traffic generator, to imitate traffic generated by particular applications, or to imitate the real traffic in the network
- implementing smart assessment of QoS in the network at the users' level and in the core of the network
- obtaining precise data needed to train Machine Learning Algorithms
- many more cases :-)
Stochastic discrete event system analysis and verification are essential in order to ensure reliability in such systems. However, models that cannot be constructed with an hand-made process need to be learned. Thus, the SDES toolbox proposes an automated solution that is embedded in Matlab to learning and analisis generalized semi-Markov processes.
A project aims to develop a system which trains LDA model in distributed enviorenment. I studied Hadoop based solution and found that Hadoop is not fit for distributed LDA training case. In this project I implement a platform based on socket.