Since heavy flows account for a significant fraction of network traffic, being able to predict heavy flows has benefited many network management applications for mitigating link congestion, scheduling of network capacity, exposing network attacks and so on. Existing machine learning based predictors are largely implemented on the control plane of Software Defined Networking (SDN) paradigm. As a result, frequent communication between the control and data planes can cause unnecessary overhead and additional delay in decision making. In this paper, we present pHeavy, a machine learning based scheme for predicting heavy flows directly on the programmable data plane, thus eliminating network overhead and latency to SDN controller. Considering th...
Learning underlying network dynamics from packet-level data has been deemed an extremely difficult t...
Communication networks provide the foundational services on which our modern economy depends. These ...
Machine learning is gaining growing momentum in various recent models for the dynamic analysis of in...
Since heavy flows account for a significant fraction of network traffic, being able to predict heavy...
Recently, machine learning has been considered an important tool for various networkingrelated use c...
Abstract—Network Processors have exploited all aspects of architecture design, such as employing mul...
The radical increase of multimedia applications such as voice over Internet protocol (VOIP), image p...
Science networks and their hosted applications require large and frequent data transfers, but these ...
National audienceDuring last decade, data processing has rapidly shifted from corporate computing sy...
Network processors have exploited many aspects of architecture design, such as employing multi-core,...
Meeting the future requirements of higher bandwidth while providing ever more complex functions, fut...
The appliance of machine learning to TCP/IP traffic flows is not new. However, this projects aims to...
The availability of Software Defined Network’s (SDNs) flow rule entry in the flow table is considere...
In this paper, we propose a broad learning system based on the sparrow search algorithm. Firstly, in...
Detecting Heavy Hitter (HH) flows, i.e., flows exceeding a pre-determined threshold in a time window...
Learning underlying network dynamics from packet-level data has been deemed an extremely difficult t...
Communication networks provide the foundational services on which our modern economy depends. These ...
Machine learning is gaining growing momentum in various recent models for the dynamic analysis of in...
Since heavy flows account for a significant fraction of network traffic, being able to predict heavy...
Recently, machine learning has been considered an important tool for various networkingrelated use c...
Abstract—Network Processors have exploited all aspects of architecture design, such as employing mul...
The radical increase of multimedia applications such as voice over Internet protocol (VOIP), image p...
Science networks and their hosted applications require large and frequent data transfers, but these ...
National audienceDuring last decade, data processing has rapidly shifted from corporate computing sy...
Network processors have exploited many aspects of architecture design, such as employing multi-core,...
Meeting the future requirements of higher bandwidth while providing ever more complex functions, fut...
The appliance of machine learning to TCP/IP traffic flows is not new. However, this projects aims to...
The availability of Software Defined Network’s (SDNs) flow rule entry in the flow table is considere...
In this paper, we propose a broad learning system based on the sparrow search algorithm. Firstly, in...
Detecting Heavy Hitter (HH) flows, i.e., flows exceeding a pre-determined threshold in a time window...
Learning underlying network dynamics from packet-level data has been deemed an extremely difficult t...
Communication networks provide the foundational services on which our modern economy depends. These ...
Machine learning is gaining growing momentum in various recent models for the dynamic analysis of in...