This repository is structured as follows:
├── api
│ ├── ...
│ ├── geni_utilities
| | ├── geni-lib-updated
| ├── requirements.txt
│ └── mystique
├── examples
├── frontend
| ├── src/components
| ├── App.js
│ └── src/utilities
└── manage.py
Analyzing what each directory contains:
manage.py
is the script used for running the backend.examples
contains the results of the experiment run into GENI and examples.frontend/src/App.js
is the entry point of the frontend react applicationfrontend/src/components
containts GoJS, Topology, and Settings components.frontend/src/utilities
containts CSS and the classes used for passing parameters from the frontend to the backend.api/geni_utilities/my_context.py
containts the GENI configuration username and PW used in this projectapi/geni_utilities/config_geni.py
containts EVERY call used to interact with GENIapi/geni_utilities/geni-lib-updated
contains the files changed to allow geni-lib to run in python3 (it was designed to run in python2 only.)
However, the overall project uses some material in:
While the main code is in this first repository, the second public repository is used only for minor purposes like GENI node (controller, switches, host) configuration.
To run the project it is needed to follow these steps:
- Run the virtual environment with all the backend requirements
- Run the backend
- Run the frontend
The virtual environment is useful to create a container where to install requirements without inserting it in the real machine.
For running the backend you need to install: api/requirements.txt
.
Then probably you have to change some files in the "venv/geni-lib" as reported in "geni-lib-updated". (See also 'edit to geni-lib for working with python3').
$ virtualenv venv
$ source venv/bin/activate
$ which python -> should show venv version
$ pip3 install -r requirements.txt
$ deactivate
in '.../venv/lib/python3.8/site-packages/geni/aggregate/context.py' on line 63
in '/venv/lib/python3.8/site-packages/geni/aggregate/context.py' on line 234
-> update wb+ to w+
in '.../venv/lib/python3.8/site-package/geni/rspec/pg.py, on line 90
in '.../venv/lib/python3.8/site-packages/geni/rspec/pgmanifest.py' on line 259 in writeXML
-> change w+ to wb+
'Document is Empty' -> rm -rf .bssw/
From api/geni_utilities/mycontext.py
it is possible to specify the keys and certificates needed for the geni-lib for communicationg with GENI testbed.
After the registration to GENI testbed, login and get the following information. From the Profile/Account_Summary and project:
- user.name = "..."
- user.urn = "urn:publicid:IDN+ch.geni.net+user+..."
- context.project = "..."
From SSL download the 'geni.pem' file and insert the path into:
- framework.cert = ".../geni-.pem"
- framework.key = ".../geni-.pem"
It is important to upload the public key into GENI (SSH Keys). Futhermore, insert the path of the public key into :
- user.addKey(".../id_ed25519.pub")
For generating the key pair I suggest: https://docs.github.com/en/authentication/connecting-to-github-with-ssh/generating-a-new-ssh-key-and-adding-it-to-the-ssh-agent
You can explore the RLVNA algorithm from: docker push enrico2docker/ubuntu-mystique:1.4
Since some paths are defined starting from the RLVNA directory it's important you run everything from this directory.
(venv)$ ~/RLVNA$ python3 manage.py runserver
In this case, run the command from the frontend directory.
~/RLVNA/frontend$ npm install
~/RLVNA/frontend$ npm run dev
Now, going to http://127.0.0.1:8000/ you can access the web platform.
Once the backend is running, you can use the button on the frontend (Work in progress) or you can execute a curl request.
Before starting, you can customize some geni settings.
In api/config.ini
it is possible to change the slice name you want to create and the aggregate to use (
https://geni-lib.readthedocs.io/en/latest/_modules/geni/aggregate/instageni.html#IGCompute
).
NOTE: It's important to create a slice from GENI portal, in order to pass the slice name.
To create a new slice, this is an example of a curl request:
curl -i -v -X POST \
-H "Content-Type: application/json" \
-d '{"topology":"{\"ctrl\":{\"c0\":{\"s0\":[\"h0\",\"h1\"],\"s1\":[\"h2\",\"h3\"],\"s2\":[\"h4\",\"h5\"],\"s3\":[],\"s4\":[],\"s5\":[],\"s6\":[\"h6\",\"h7\"],\"s7\":[\"h8\",\"h9\"]}},\"links\":{\"s0\":[\"s1\",\"s2\",\"s3\"],\"s1\":[\"s0\",\"s7\"],\"s2\":[\"s0\",\"s4\",\"s5\"],\"s3\":[\"s0\",\"s6\",\"s7\"],\"s7\":[\"s1\",\"s3\",\"s5\"],\"s4\":[\"s2\",\"s6\"],\"s5\":[\"s2\",\"s6\",\"s7\"],\"s6\":[\"s3\",\"s4\",\"s5\"]},\"num_ctrl\":1,\"num_sw\":8,\"num_h\":10,\"num_link\":32}"}' \
"127.0.0.1:8000/api/topology"
As you can see, the topology requested is parsed in JSON and sent as a body in the POST request.
Through this curl request, the "create_topology()" function from the config_geni.py file is invoked. All the needed nodes are requested to the target aggregate and when they are ready, they are also configured. In particular, the controller node downloads the docker engine and the image; the OVS switches nodes map the physical port with the OVS port and set the IP address of the controller. The host nodes download the available scripts for the traffic generator. Both tree kind of nodes download and uses the scripts available in the public repository NGI-support.
Once the nodes are correctly reserved, you need further configuration. Other scripts in NGI-support are invoked.
Inside the GENI controller node, you have a docker (see below) which contains all the code available to run the RLVNA algorithm. Before run the RLVNA algorithm, you have to run the configuration, such that the config.ini files are properly generated.
To create configure Ryu, this is an example of a curl request:
curl -i -v -X POST \
-H "Content-Type: application/json" \
-d '{"support_switches":"s3,s5","data_frequency":1}' \
"127.0.0.1:8000/api/ryu"
In this example, you are configuring the Ryu controller to have two support switches 's3' and 's5' and, to collect data every '1 second'.
Inside the GENI controller node, you have a docker which contains all the code available to run the RLVNA algorithm. Before run the RLVNA algorithm, you have to run the configuration, such that the config.ini files are properly generated. In the docker, consider that 'Miniconda' are already provided. This tool is mandatory to run 'Keras' and 'TensorFlow' needed in the machine learning model present in RLVNA algorithm.
To create and configure the model, this is an example of a curl request:
curl -i -v -X POST \
-H "Content-Type: application/json" \
-d '{"num_support_switches":2,"op_penalty":300, "helped_switches":"4,1,2", "data_frequency":1}' \
"127.0.0.1:8000/api/model"
In this example, you are configuring the model to have two support switches, to ask for collected data every '1 second', a list of helped switches, and the overprovisioning penalty to use.
IMPORTANT NOTE: Be careful that another parameter to configure is hidden for the moment. The idea is to automatize it but for the moment you have to configure the number of interfaces available in the whole network manually! You can find this parameters inside config_geni.py / configure_model() / NumIntf=...
The GENI host nodes have the scripts available in NGI-support and the proper requirements (like iperf3) already installed.
This is an example of a curl request:
curl -i -v -X POST \
-H "Content-Type: application/json" \
-d '{"iperf_num":"15","traffic_type":"train"}' \
"127.0.0.1:8000/api/traffic"
This request was designed for running the traffic generator in each node, but it doesn't work. After many hours of testing, we realized that you have to manually open many shells and run each with ssh and the script for generating the traffic.
This curl request for the moment, generates the SSH command of each host and their IP addresses inside api/minor_utilities/login*.txt
NOTE: For now on, you could even shut down the backend(and frontend of course).
Once generated the ssh login.txt file, you could open one shell window for each host and two for the controller. You can use also api/minor_utilities/login.sh
for support.
IMPORTANT NOTE: We realized that iperf3 is not good for testing RTT. We decided to use netperf.
You can find an example in NGI-support/config_host_static.py
In this case, you don't have to run the model. Open the controller ssh and access inside the docker container for running the Ryu controller:
s279434@c0:~$ sudo docker container ls
s279434@c0:~$ sudo docker exec -it mystique bash
root@f1518a123e80:/mystique# cd ryu_controller/
root@f1518a123e80:/mystique/ryu_controller# ryu-manager controller.py
These commands, access the docker and run the controller.py which deletes previous flows and configures the default shortest paths on each OVS switch.
Now, all OVS switches have their flows. It's possible to run the traffic generator.
NOTE: If you use an aggregate different from clemson-ig, you should change it in 'omni hack' in /network/configuration_v1.py
Run this command - adapting what needs to be adapted - in each ssh host shell:
s279434@h0:~$ python3 /NGI-support-main/config_host_static.py test 10 h0 192.168.0.2,192.168.0.4,192.168.0.9,192.168.0.11,192.168.0.15,192.168.0.17,192.168.0.30,192.168.0.32,192.168.0.37,192.168.0.39
config_host_static.py available in NGI-support, needs the kind of traffic (train/test), the amount of experiment for each bandwidth (10 * 10Mbps, 10 * 20Mbps, etc), the host who is running the script (h0, h1, etc) and the list of all hosts separated by a comma.
When the script terminates, you can find in h0 the measurement. You have to download this file (and remove it before run the next experiment).
To download the file, this is the curl request:
curl -i -v -X POST \
-H "Content-Type: application/json" \
-d '{"file":"traffic"}' \
"127.0.0.1:8000/api/download"
The download files, are inside collected_data/exp/
. Remove from this directory before downloading next files.
In this case, you have to run the model. Open two controller ssh and access inside the docker container for running the ryu controller and the mode:
SHELL 1
s279434@c0:~$ sudo docker container ls
s279434@c0:~$ sudo docker exec -it mystique bash
root@f1518a123e80:/mystique# cd ryu_controller/
root@f1518a123e80:/mystique/ryu_controller# ryu-manager controller.py
SHELL 2
s279434@c0:~$ sudo docker container ls
s279434@c0:~$ sudo docker exec -it mystique bash
root@f1518a123e80:/mystique# cd model/
root@f1518a123e80:/mystique/model# conda activate conda_venv
(conda_venv)root@f1518a123e80:/mystique/model# python3 train_centralized.py
-and later -
(conda_venv)root@f1518a123e80:/mystique/model# python3 test_centralized.py
These commands, access the docker and run the Ryu controller.py which deletes previous flows and configures the default shortest paths on each OVS switch. Then activate the conda virtual environment (Keras, TensorFlow) and execute the train or the test.
Now, all OVS switches have their flows. It's possible to run the traffic generator.
NOTE: If you use an aggregate different from clemson-ig, you should change it in 'omni hack' in /network/configuration_v1.py
Run this command - adapting what needs to be adapted - in each ssh host shell:
s279434@h0:~$ python3 /NGI-support-main/config_host_static.py train 5 h0 192.168.0.2,192.168.0.4,192.168.0.9,192.168.0.11,192.168.0.15,192.168.0.17,192.168.0.30,192.168.0.32,192.168.0.37,192.168.0.39
config_host_static.py available in NGI-support, needs the kind of traffic (train/test), the amount of experiment for each bandwidth (5 * 10Mbps, 5 * 20Mbps, etc), the host who is running the script (h0, h1, etc) and the list of all hosts separated by a comma.
When the script terminates, you can find in h0 the measurement. You have to download this file (and remove it before running the next experiment).
To download the measurement and the reward, this is the curl request:
curl -i -v -X POST \
-H "Content-Type: application/json" \
-d '{"file":"traffic"}' \
"127.0.0.1:8000/api/download"
curl -i -v -X POST \
-H "Content-Type: application/json" \
-d '{"file":"reward"}' \
"127.0.0.1:8000/api/download"
The downloaded files are inside collected_data/exp/
. Remove from them before downloading next files.
In this case, since the model is activated, sometimes mystique's action 1 is available and it means that an alternative path is available for reaching the destination.
NOTE: Try to have several traffic generator for each bandwidth comparable with the time of the model. Example: each iperf3 is 2 min; if you want 2 times for each band, 2 * 2 min * 10 bandwidth = 40 minutes. You have to adapt the sim_time and episodes inside the train_centralized.py and test_centralized.py to take at least 40 minutes
NOTE: For now on, you could even shut down the backend(and frontend of course).
Once generated the ssh login.txt file, you could open one shell window for each SWITCH and two for the controller.
Inside the controller node, run this command for resetting all flows:
s279434@c0:~$ sudo docker exec -it mystique bash
root@f1518a123e80:/mystique# cd ryu_controller/
root@f1518a123e80:/mystique/ryu_controller# ryu-manager controller.py
Run this command - adapting what needs to be adapted - in each ssh switch shell:
s279434@s0:~$ sudo ovs-ofctl dump-flows s0
This commands, shows all the flows present in the switches.
Finally, run this command in ALL switches to check which path is used for communication:
s279434@s0:~$ sudo tcpdump -i any host h1 or host h2 or host h3 or host h4 or host h5 or host h6 or host h7 or host h8 or host h9
Of course, while using this command in the switches, remember to run iperf3/ping in an host.
NOTE: For further details you can contact me at: [email protected]