Great, thanks for this. I am trying to get the ACM version of the paper now.
Regards
Nathan
On 25 Sep 2019, at 11:55, Jose Suárez-Varela
<jsuarezv(a)ac.upc.edu> wrote:
Dear Nathan,
Probably you read our work-in-progress version uploaded at ArXiv. Please, check the last
version published in the proceedings of ACM SOSR
(
https://dl.acm.org/citation.cfm?id=3314357). Here, we make the evaluation also in GBN.
Sorry for the possible misunderstanding. We uploaded the README page
(
https://github.com/knowledgedefinednetworking/Unveiling-the-potential-of-GN…)
to provide the link to ACM SOSR.
Regarding the GBN topology, unfortunately we didn't prepare a figure. However, you
can find an image of this topology at the following paper (Figure 4):
J. Pedro, J. Santos, and J. Pires, “Performance evaluation of integrated otn/dwdm
networks with single-stage multiplexing of optical channel data units,” in Proceedings of
ICTON, 2011, pp. 1–4.
I hope it will be useful.
Regards,
José
El 25/09/2019 a las 12:14, Nathan Sowatskey escribió:
> Thank you Jose. I have read the paper (many times :-)). I have seen the details of
the evaluation with the Geant2 network, but there is no mention of the GBN network in the
paper.
>
> I am perfectly comfortable with processing the data (you can see my code here:
https://github.com/Data-Science-Projects/demo-routenet).
>
> Specifically for the GBN network, I wanted to see what the topology looks like. I
have the NED file, but I can’t use that NED file with OMNet (for reasons discussed
elsewhere).
>
> I can, of course, manually reverse engineer the NED file. But I wanted to ask if
there was already a topology diagram just to save me the effort.
>
> Regards
>
> Nathan
>
>> On 25 Sep 2019, at 11:07, Jose Suárez-Varela <jsuarezv(a)ac.upc.edu> wrote:
>>
>> Hello Nathan,
>>
>> All these datasets where used in our paper:
>>
>> 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 Proceedings of ACM Symposium on SDN Research
(SOSR) , pp. 140-151, April 2019.
>>
>> Particularly, we trained RouteNet only with samples of the NSFNET dataset to
predict the delay and jitter. Then, we evaluate the accuracy of the models already
trained. This evaluation is made separately on the three datasets (NSFNET, GBN and GEANT2)
to test the generalization capability of the model.
>>
>> Please, find more details in Section 4 (Evaluation of the accuracy of the GNN
model) of the paper.
>>
>> Also, you can find information on how to process the datasets at the following
link:
>>
>>
http://knowledgedefinednetworking.org/data/README_gnn.pdf
>>
>>
>> Regards,
>>
>> José
>>
>> El 22/09/2019 a las 16:55, Nathan Sowatskey escribió:
>>> Hi
>>>
>>> On this page:
>>>
>>>
https://github.com/knowledgedefinednetworking/Unveiling-the-potential-of-GN…
>>>
>>> I have seen that there is this data set:
>>>
>>>
http://knowledgedefinednetworking.org/data/GBN.zip
>>>
>>> It is described as having been used for evaluation, but I can’t find anything
else that refers to it.
>>>
>>> Can anyone tell me more please?
>>>
>>> Many thanks
>>>
>>> Nathan
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