Designing knowledge plane to optimize leaf and spine data center

09/17/2020
by   Mujahid Sultan, et al.
0

In the last few decades, data center architecture evolved from the traditional client-server to access-aggregation-core architectures. Recently there is a new shift in the data center architecture due to the increasing need for low latency and high throughput between server-to-server communications, load balancing and, loop-free environment. This new architecture, known as leaf and spine architecture, provides low latency and minimum packet loss by enabling the addition and deletion of network nodes on demand. Network nodes can be added or deleted from the network based on network statistics like link speed, packet loss, latency, and throughput. With the maturity of Open Virtual Switch (OvS) and OpenFlow based Software Defined Network (SDN) controllers, network automation through programmatic extensions has become possible based on network statistics. The separation of the control plane and data plane has enabled automated management of network and Machine Learning (ML) can be applied to learn and optimize the network. In this publication, we propose the design of an ML-based approach to gather network statistics and build a knowledge plane. We demonstrate that this knowledge plane enables data center optimization using southbound APIs and SDN controllers. We describe the design components of this approach - using a network simulator and show that it can maintain the historical patterns of network statistics to predict future growth or decline. We also provide an open-source software that can be utilized in a leaf and spine data center to provide elastic capacity based on load forecasts.

READ FULL TEXT

page 1

page 2

page 3

research
01/10/2020

SDN-controlled and Orchestrated OPSquare DCN Enabling Automatic Network Slicing with Differentiated QoS Provisioning

In this work, we propose and experimentally assess the automatic and fle...
research
12/20/2021

Performance analysis of SDN controllers: POX, Floodlight and Opendaylight

The IP network is time-consuming for configuration and troubleshooting b...
research
07/19/2020

Adaptive Control Plane Load Balancing in vSDN Enabled 5G Network

In this work, we have formulated a controllerhypervisor (C-H) pair deplo...
research
02/12/2020

Taurus: An Intelligent Data Plane

Emerging applications – cloud computing, the internet of things, and aug...
research
11/17/2017

P4-compatible High-level Synthesis of Low Latency 100 Gb/s Streaming Packet Parsers in FPGAs

Packet parsing is a key step in SDN-aware devices. Packet parsers in SDN...
research
08/05/2019

Concury: A Fast and Light-weighted Software Load Balancer

A load balancer (LB) is a vital network function for cloud services to b...
research
02/07/2019

BFT Protocols for Heterogeneous Resource Allocations in Distributed SDN Control Plane

Distributed Software Defined Networking (SDN) controllers aim to solve t...

Please sign up or login with your details

Forgot password? Click here to reset