Ever more frequently network management tasks apply machine learning on network traffic. Both the accuracy of a machine learning model and its effectiveness in practice ultimately depend on the representation of raw network traffic as features. Often, the representation of the traffic is as important as the choice of the model itself; furthermore, the features that the model relies on will ultimately determine where (and even whether) the model can be deployed in practice. This paper develops a new framework and system that enables a joint evaluation of both the conventional notions of machine learning performance (e.g., model accuracy) and the systems-level costs of different representations of network traffic. We highlight these two dimen...
Bandwidth Management is the process of measuring and controlling the communications on a network to ...
This paper stresses the importance of network traffic classification for ISPs in managing network ap...
With in community of internet, it may be essential to recognize whatever programs are flowing via th...
International audienceNetwork management often relies on machine learning to make predictions about ...
Learning underlying network dynamics from packet-level data has been deemed an extremely difficult t...
The appliance of machine learning to TCP/IP traffic flows is not new. However, this projects aims to...
Network traffic classification is the operation of giving appropriate identification to the every tr...
The task of network management and monitoring relies on an accurate characterization of network traf...
With machine learning and especially deep learning rising to prevalence in many domains such as comp...
Generalizing machine learning (ML) models for network traffic dynamics tends to be considered a lost...
International audienceNowadays, Machine Learning (ML) tools are commonly used in every area of scien...
Recent network traffic classification methods benefit from machine learning (ML) technology. However...
We introduce optimization through protocol selection (OPS) as a technique to improve bulk-data trans...
Abstract — In this paper, we propose a machine learning-based approach for estimating available band...
Traffic Classification System (TCS) allows inferring the application that is generating given networ...
Bandwidth Management is the process of measuring and controlling the communications on a network to ...
This paper stresses the importance of network traffic classification for ISPs in managing network ap...
With in community of internet, it may be essential to recognize whatever programs are flowing via th...
International audienceNetwork management often relies on machine learning to make predictions about ...
Learning underlying network dynamics from packet-level data has been deemed an extremely difficult t...
The appliance of machine learning to TCP/IP traffic flows is not new. However, this projects aims to...
Network traffic classification is the operation of giving appropriate identification to the every tr...
The task of network management and monitoring relies on an accurate characterization of network traf...
With machine learning and especially deep learning rising to prevalence in many domains such as comp...
Generalizing machine learning (ML) models for network traffic dynamics tends to be considered a lost...
International audienceNowadays, Machine Learning (ML) tools are commonly used in every area of scien...
Recent network traffic classification methods benefit from machine learning (ML) technology. However...
We introduce optimization through protocol selection (OPS) as a technique to improve bulk-data trans...
Abstract — In this paper, we propose a machine learning-based approach for estimating available band...
Traffic Classification System (TCS) allows inferring the application that is generating given networ...
Bandwidth Management is the process of measuring and controlling the communications on a network to ...
This paper stresses the importance of network traffic classification for ISPs in managing network ap...
With in community of internet, it may be essential to recognize whatever programs are flowing via th...