Methods for Predicting Behavior of Elephant Flows in Data Center Networks

11/15/2019
by   Aymen Hasan Alawadi, et al.
0

Several Traffic Engineering (TE) techniques based on SDN (Software-defined networking) proposed to resolve flow competitions for network resources. However, there is no comprehensive study on the probability distribution of their throughput. Moreover, there is no study on predicting the future of elephant flows. To address these issues, we propose a new stochastic performance evaluation model to estimate the loss rate of two state-of-art flow scheduling algorithms including Equalcost multi-path routing (ECMP), Hedera besides a flow congestion control algorithm which is Data Center TCP (DCTCP). Although these algorithms have theoretical and practical benefits, their effectiveness has not been statistically investigated and analyzed in conserving the elephant flows. Therefore, we conducted extensive experiments on the fat-tree data center network to examine the efficiency of the algorithms under different network circumstances based on Monte Carlo risk analysis. The results show that Hedera is still risky to be used to handle the elephant flows due to its unstable throughput achieved under stochastic network congestion. On the other hand, DCTCP found suffering under high load scenarios. These outcomes might apply to all data center applications, in particular, the applications that demand high stability and productivity.

READ FULL TEXT
research
12/06/2018

A Proactive Flow Admission and Re-Routing Scheme for Load Balancing and Mitigation of Congestion Propagation in SDN Data Plane

The centralized architecture in software-defined network (SDN) provides ...
research
03/01/2022

An Adaptable and Agnostic Flow Scheduling Approach for Data Center Networks

Cloud applications have reshaped the model of services and infrastructur...
research
02/21/2018

CECT: Computationally Efficient Congestion-avoidance and Traffic Engineering in Software-defined Cloud Data Centers

The proliferation of cloud data center applications and network function...
research
10/01/2020

CAFT: Congestion-Aware Fault-Tolerant Load Balancing for Three-Tier Clos Data Centers

Production data centers operate under various workload sizes ranging fro...
research
04/27/2021

Flow aware Forwarding in SDN Datacenters Using a Knapsack PSO Based Solution

With the rapid growth of different massive applications and parallel flo...
research
07/19/2022

P4TE: PISA Switch Based Traffic Engineering in Fat-Tree Data Center Networks

This work presents P4TE, an in-band traffic monitoring, load-aware packe...
research
09/10/2019

A Study of Deep Learning for Network Traffic Data Forecasting

We present a study of deep learning applied to the domain of network tra...

Please sign up or login with your details

Forgot password? Click here to reset