Dear Zeyu,
Thank you for your interest in this work. Unfortunately, the datasets
are quite large and cannot be shared via e-mail. Note that files under
the "nsfnetbw/tfrecords/train/" directory include 889M of data.
The main difference between both datasets you mention (v0 and v1) is in
the topologies they include (see README files with the descriptions).
Also, 'datasets_v0' include 500 iterations for each combination of
routing+traffic intensity. Note that each iteration uses a different
input traffic matrix (TM) of a given traffic intensity (TI). The method
to generate these traffic matrices is described in Section 4.1 of [1].
In the case of 'datasets_v1', each file includes 125 iterations. In this
case, a file includes a collection of traffic matrices with a range of
traffic intensities (<lower lambda max>-<upper lambda max>). Also, these
latter datasets include the following information:
"5.- Average per-packet neperian logarithm of the delay over the packets
transmitted in each source-destination pair".
Which can be useful to make probabilistic modeling. For instance, to
parameterize a Gamma distribution that models the delay distribution on
each source-destination pair.
Overall, if you want to reproduce the experiments of a paper I recommend
you use the datasets used in the paper. Otherwise, you will need to
modify the code to read datasets with a different format. For instance:
"Challenging the generalization capabilities of Graph Neural Networks
for network modeling" -> datasets_v0
(
https://github.com/knowledgedefinednetworking/NetworkModelingDatasets/tree/…)
Also, for the paper "Unveiling the potential of Graph Neural Networks
for network modeling and optimization in SDN" you should use the
datasets at the following link:
https://github.com/knowledgedefinednetworking/Unveiling-the-potential-of-GN…
This paper presents the first version of RouteNet
(
https://github.com/knowledgedefinednetworking/net2vec/tree/RouteNet-SOSR/ro…),
which did not have support for variable link capacity. For this reason,
in these latter datasets all the links in the different topologies have
the same capacity. You can check the link capacities used in the "*.ned"
files that describe each topology.
[1] Krzysztof Rusek, José Suárez-Varela, Albert Mestres, Pere
Barlet-Ros, Albert Cabellos-Aparicio; "Unveiling the potential of Graph
Neural Networks for network modeling and optimization in SDN," in and in
ACM Symposium on SDN Research (SOSR) , pp. 140-151, 209. Link:
https://github.com/knowledgedefinednetworking/Unveiling-the-potential-of-GN…
Regards,
José
On 14/02/20 08:00, tjuzeyuluan wrote:
Dear Professor,
I’m Zeyu, a PhD student from UC Berkeley. I am really interested
in your work related in Graph Neural Networks -based routing
optimization. I am trying to repeat your experiment. However, the
download speed from the URL(path
='/home/datasets/SIGCOMM/nsfnetbw/tfrecords/train/') is so slow. Could
you please transfer the zip package via the e-mail? Thank you very much!
Another question is that what’s the difference between dataset v0
and dataset v1. I am a little confused. Could you please explain
further? Thanks a lot!
tjuzeyuluan
tjuzeyuluan(a)163.com
<https://maas.mail.163.com/dashi-web-extend/html/proSignature.html?ftlId=1&name=tjuzeyuluan&uid=tjuzeyuluan%40163.com&iconUrl=https%3A%2F%2Fmail-online.nosdn.127.net%2Fqiyelogo%2FdefaultAvatar.png&items=%5B%22tjuzeyuluan%40163.com%22%5D>
签名由 网易邮箱大师 <https://mail.163.com/dashi/dlpro.html?from=mail81>
定制
_______________________________________________
Kdn-users mailing list
Kdn-users(a)knowledgedefinednetworking.org
https://mail.n3cat.upc.edu/cgi-bin/mailman/listinfo/kdn-users