Skip to content

Joint placement and scaling of bidirectional network services with stateful virtual or physical network functions

Notifications You must be signed in to change notification settings

qarawlus/B-JointSP

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

66 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Build Status

B-JointSP

B-JointSP is an optimization problem focusing on the joint scaling and placement (called embedding) of NFV network services, consisting of interconnected virtual network functions (VNFs). The exceptional about B-JointSP is its consideration of realistic, bidirectional network services, in which flows return to their sources. It even supports stateful VNFs, that need to be traversed by the same flows in both upstream and downstream direction. Furthermore, B-JointSP allows the reuse of VNFs across different network services and supports physical network functions.

Cite this work

If you use B-JointSP in your research, please cite our work:

Sevil Dräxler, Stefan Schneider, Holger Karl: "Scaling and Placing Bidirectional Services with Stateful Virtual and Physical Network Functions". IEEE Conference on Network Softwarization (NetSoft), Montreal, CA (2018)

Note: For the source code originally implemented and submitted to IEEE NetSoft 2018, refer to the corresponding release or branch. The master branch contains only the heuristic, not the MIP, and is greatly extended compared to the original code.

Setup

python setup.py install

Requires Python 3.5+

Usage

Type bjointsp -h for usage help. This should print:

usage: bjointsp [-h] -n NETWORK -t TEMPLATE -s SOURCES [-f FIXED]

B-JointSP heuristic calculates an optimized placement

optional arguments:
  -h, --help            show this help message and exit
  -n NETWORK, --network NETWORK
                        Network input file (.graphml)
  -t TEMPLATE, --template TEMPLATE
                        Template input file (.yaml)
  -s SOURCES, --sources SOURCES
                        Sources input file (.yaml)
  -f FIXED, --fixed FIXED
                        Fixed instances input file (.yaml)
  -p PREV_EMBEDDING, --prev PREV_EMBEDDING
                        Previous embedding input file (.yaml)                     

As an example, you can run the following command from the project root folder (where README.md is located):

bjointsp -n src/bjointsp/parameters/networks/Abilene.graphml -t src/bjointsp/parameters/templates/fw1chain.yaml -s src/bjointsp/parameters/sources/source0.yaml

This should start the heuristic and create a result in the results/bjointsp directory in form of a yaml file.

Contact

Lead developer: Stefan Schneider (@StefanUPB)

For questions or support, please use GitHub's issue system.

About

Joint placement and scaling of bidirectional network services with stateful virtual or physical network functions

Resources

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 100.0%