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From: Sheng Jiang <jiangsheng@huawei.com>
To: "idnet@ietf.org" <idnet@ietf.org>
CC: yanshen <yanshen@huawei.com>, Toerless Eckert <toerless.eckert@huawei.com>, Albert Cabellos <albert.cabellos@gmail.com>, =?ks_c_5601-1987?B?yKu/67HZ?= <yghong@etri.re.kr>, "laurent.ciavaglia@nokia-bell-labs.com" <laurent.ciavaglia@nokia-bell-labs.com>, "granville@inf.ufrgs.br" <granville@inf.ufrgs.br>, "Liubing (Leo)" <leo.liubing@huawei.com>
Thread-Topic: Informal on-site meeting in IETF99 for applying AI/ML into network management
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<p class=3D"MsoNormal"><span lang=3D"EN-US">Hi, all,<o:p></o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US">Although there was a few effort=
s to organize AI-relevant works in IETF/IRTF, so far we have not convergent=
 on a solid common interest area that some of us could start to work togeth=
er towards some-level of standardization.
 Let=A1=AFs try again with a smaller scope. We would like to call interests=
 on applying AI/ML into NETWORK MANAGEMENT. The target would be to have a d=
edicated session to discuss AI-based network management in the NMRG in IETF=
100 or IETF101.<o:p></o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US">I am trying set up a meeting pl=
ace for Tuesday or Thursday before the morning session. These who are inter=
ested please send me an email with your preferred day. I will send the info=
rmation later to on-site participants
 who expressed interests directly. Giving that the meetecho is only for for=
mal WG/RG meetings, I am afraid it is almost impossible for remote particip=
ant. In the past, we did use webex. But the quality is bad without professi=
onal meeting equipment. It was bad
 to bridge four people on site with one remote participant.<o:p></o:p></spa=
n></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US">Regards,<o:p></o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US">Sheng<o:p></o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US"><o:p>&nbsp;</o:p></span></p>
</div>
</body>
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From nobody Thu Jul 13 18:01:19 2017
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From: Lisandro Zambenedetti Granville <granville@inf.ufrgs.br>
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Date: Thu, 13 Jul 2017 06:54:57 -0300
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Cc: "idnet@ietf.org" <idnet@ietf.org>, yanshen <yanshen@huawei.com>, Toerless Eckert <toerless.eckert@huawei.com>, Albert Cabellos <albert.cabellos@gmail.com>, =?utf-8?B?7ZmN7Jqp6re8?= <yghong@etri.re.kr>, "laurent.ciavaglia@nokia-bell-labs.com" <laurent.ciavaglia@nokia-bell-labs.com>,  "Liubing (Leo)" <leo.liubing@huawei.com>
To: Sheng Jiang <jiangsheng@huawei.com>
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Subject: Re: [Idnet] Informal on-site meeting in IETF99 for applying AI/ML into network management
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Sheng,

Let me know once you find a place for the meeting and I=E2=80=99ll be =
there.

Lisandro

> Em 13 de jul de 2017, =C3=A0(s) 00:34, Sheng Jiang =
<jiangsheng@huawei.com> escreveu:
>=20
> Hi, all,
> =20
> Although there was a few efforts to organize AI-relevant works in =
IETF/IRTF, so far we have not convergent on a solid common interest area =
that some of us could start to work together towards some-level of =
standardization. Let=E2=80=99s try again with a smaller scope. We would =
like to call interests on applying AI/ML into NETWORK MANAGEMENT. The =
target would be to have a dedicated session to discuss AI-based network =
management in the NMRG in IETF100 or IETF101.
> =20
> I am trying set up a meeting place for Tuesday or Thursday before the =
morning session. These who are interested please send me an email with =
your preferred day. I will send the information later to on-site =
participants who expressed interests directly. Giving that the meetecho =
is only for formal WG/RG meetings, I am afraid it is almost impossible =
for remote participant. In the past, we did use webex. But the quality =
is bad without professional meeting equipment. It was bad to bridge four =
people on site with one remote participant.
> =20
> Regards,
> =20
> Sheng


--Apple-Mail=_350E3C3D-5C43-4679-8EDE-E1ECAB0D4541
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<html><head><meta http-equiv=3D"Content-Type" content=3D"text/html =
charset=3Dutf-8"></head><body style=3D"word-wrap: break-word; =
-webkit-nbsp-mode: space; -webkit-line-break: after-white-space;" =
class=3D"">Sheng,<div class=3D""><br class=3D""></div><div class=3D"">Let =
me know once you find a place for the meeting and I=E2=80=99ll be =
there.</div><div class=3D""><br class=3D""></div><div =
class=3D"">Lisandro</div><div class=3D""><br class=3D""><div><blockquote =
type=3D"cite" class=3D""><div class=3D"">Em 13 de jul de 2017, =C3=A0(s) =
00:34, Sheng Jiang &lt;<a href=3D"mailto:jiangsheng@huawei.com" =
class=3D"">jiangsheng@huawei.com</a>&gt; escreveu:</div><br =
class=3D"Apple-interchange-newline"><div class=3D""><div =
class=3D"WordSection1" style=3D"page: WordSection1; font-family: =
Helvetica; font-size: 12px; font-style: normal; font-variant-caps: =
normal; font-weight: normal; letter-spacing: normal; text-align: start; =
text-indent: 0px; text-transform: none; white-space: normal; =
word-spacing: 0px; -webkit-text-stroke-width: 0px;"><div style=3D"margin: =
0cm 0cm 0.0001pt; text-align: justify; font-size: 10.5pt; font-family: =
Calibri, sans-serif;" class=3D""><span lang=3D"EN-US" class=3D"">Hi, =
all,<o:p class=3D""></o:p></span></div><div style=3D"margin: 0cm 0cm =
0.0001pt; text-align: justify; font-size: 10.5pt; font-family: Calibri, =
sans-serif;" class=3D""><span lang=3D"EN-US" class=3D""><o:p =
class=3D"">&nbsp;</o:p></span></div><div style=3D"margin: 0cm 0cm =
0.0001pt; text-align: justify; font-size: 10.5pt; font-family: Calibri, =
sans-serif;" class=3D""><span lang=3D"EN-US" class=3D"">Although there =
was a few efforts to organize AI-relevant works in IETF/IRTF, so far we =
have not convergent on a solid common interest area that some of us =
could start to work together towards some-level of standardization. =
Let=E2=80=99s try again with a smaller scope. We would like to call =
interests on applying AI/ML into NETWORK MANAGEMENT. The target would be =
to have a dedicated session to discuss AI-based network management in =
the NMRG in IETF100 or IETF101.<o:p class=3D""></o:p></span></div><div =
style=3D"margin: 0cm 0cm 0.0001pt; text-align: justify; font-size: =
10.5pt; font-family: Calibri, sans-serif;" class=3D""><span lang=3D"EN-US"=
 class=3D""><o:p class=3D"">&nbsp;</o:p></span></div><div style=3D"margin:=
 0cm 0cm 0.0001pt; text-align: justify; font-size: 10.5pt; font-family: =
Calibri, sans-serif;" class=3D""><span lang=3D"EN-US" class=3D"">I am =
trying set up a meeting place for Tuesday or Thursday before the morning =
session. These who are interested please send me an email with your =
preferred day. I will send the information later to on-site participants =
who expressed interests directly. Giving that the meetecho is only for =
formal WG/RG meetings, I am afraid it is almost impossible for remote =
participant. In the past, we did use webex. But the quality is bad =
without professional meeting equipment. It was bad to bridge four people =
on site with one remote participant.<o:p =
class=3D""></o:p></span></div><div style=3D"margin: 0cm 0cm 0.0001pt; =
text-align: justify; font-size: 10.5pt; font-family: Calibri, =
sans-serif;" class=3D""><span lang=3D"EN-US" class=3D""><o:p =
class=3D"">&nbsp;</o:p></span></div><div style=3D"margin: 0cm 0cm =
0.0001pt; text-align: justify; font-size: 10.5pt; font-family: Calibri, =
sans-serif;" class=3D""><span lang=3D"EN-US" class=3D"">Regards,<o:p =
class=3D""></o:p></span></div><div style=3D"margin: 0cm 0cm 0.0001pt; =
text-align: justify; font-size: 10.5pt; font-family: Calibri, =
sans-serif;" class=3D""><span lang=3D"EN-US" class=3D""><o:p =
class=3D"">&nbsp;</o:p></span></div><div style=3D"margin: 0cm 0cm =
0.0001pt; text-align: justify; font-size: 10.5pt; font-family: Calibri, =
sans-serif;" class=3D""><span lang=3D"EN-US" =
class=3D"">Sheng</span></div></div></div></blockquote></div><br =
class=3D""></div></body></html>=

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From nobody Sun Jul 16 11:01:04 2017
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From: Sheng Jiang <jiangsheng@huawei.com>
To: "idnet@ietf.org" <idnet@ietf.org>
Thread-Topic: Re://Informal on-site meeting in IETF99 for applying AI/ML into network management
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Date: Sun, 16 Jul 2017 18:00:51 +0000
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Subject: Re: [Idnet] //Informal on-site meeting in IETF99 for applying AI/ML into network management
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I am trying set up a meeting place for Tuesday (July 18th) morning 8am~9am,=
 will send the meeting room information later to these who expressed their =
interests for on-site meeting directly, including these who preferred Thurs=
day morning. If there are any people would like to join, please contact me =
before the meeting time.=0A=
=0A=
Regards,=0A=
=0A=
Sheng=0A=
=0A=
Hi, all,=0A=
=0A=
Although there was a few efforts to organize AI-relevant works in IETF/IRTF=
, so far we have not convergent on a solid common interest area that some o=
f us could start to work together towards some-level of standardization. Le=
t=92s try again with a smaller scope. We would like to call interests on ap=
plying AI/ML into NETWORK MANAGEMENT. The target would be to have a dedicat=
ed session to discuss AI-based network management in the NMRG in IETF100 or=
 IETF101.=0A=
=0A=
I am trying set up a meeting place for Tuesday or Thursday before the morni=
ng session. These who are interested please send me an email with your pref=
erred day. I will send the information later to on-site participants who ex=
pressed interests directly. Giving that the meetecho is only for formal WG/=
RG meetings, I am afraid it is almost impossible for remote participant. In=
 the past, we did use webex. But the quality is bad without professional me=
eting equipment. It was bad to bridge four people on site with one remote p=
articipant.=0A=
=0A=
Regards,=0A=
=0A=
Sheng=


From nobody Sun Jul 16 12:13:40 2017
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Subject: Re: [Idnet] //Informal on-site meeting in IETF99 for applying AI/ML into network management
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Hello Sheng,

most of my activities target to facilitate AI/ML "some day"=2E It is a lon=
g route and most call that work "boiling the sea" in respect to minimal via=
ble solutions, so I would come and listen, if you reach a critical mass of =
10+ attendees=2E Are you able to estimate number of participants?

Viele Gr=C3=BC=C3=9Fe,

Henk=20

On July 16, 2017 8:00:51 PM GMT+02:00, Sheng Jiang <jiangsheng@huawei=2Eco=
m> wrote:
>I am trying set up a meeting place for Tuesday (July 18th) morning
>8am~9am, will send the meeting room information later to these who
>expressed their interests for on-site meeting directly, including these
>who preferred Thursday morning=2E If there are any people would like to
>join, please contact me before the meeting time=2E
>
>Regards,
>
>Sheng
>
>Hi, all,
>
>Although there was a few efforts to organize AI-relevant works in
>IETF/IRTF, so far we have not convergent on a solid common interest
>area that some of us could start to work together towards some-level of
>standardization=2E Let=E2=80=99s try again with a smaller scope=2E We wou=
ld like to
>call interests on applying AI/ML into NETWORK MANAGEMENT=2E The target
>would be to have a dedicated session to discuss AI-based network
>management in the NMRG in IETF100 or IETF101=2E
>
>I am trying set up a meeting place for Tuesday or Thursday before the
>morning session=2E These who are interested please send me an email with
>your preferred day=2E I will send the information later to on-site
>participants who expressed interests directly=2E Giving that the meetecho
>is only for formal WG/RG meetings, I am afraid it is almost impossible
>for remote participant=2E In the past, we did use webex=2E But the qualit=
y
>is bad without professional meeting equipment=2E It was bad to bridge
>four people on site with one remote participant=2E
>
>Regards,
>
>Sheng
>_______________________________________________
>IDNET mailing list
>IDNET@ietf=2Eorg
>https://www=2Eietf=2Eorg/mailman/listinfo/idnet

--=20
Sent from my Android device with K-9 Mail=2E Please excuse my brevity=2E
------ELM91GPXDTK0NS3YCYIITJ8C08RQUH
Content-Type: text/html; charset="utf-8"
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<html><head></head><body>Hello Sheng,<br>
<br>
most of my activities target to facilitate AI/ML &quot;some day&quot;=2E I=
t is a long route and most call that work &quot;boiling the sea&quot; in re=
spect to minimal viable solutions, so I would come and listen, if you reach=
 a critical mass of 10+ attendees=2E Are you able to estimate number of par=
ticipants?<br>
<br>
Viele Gr=C3=BC=C3=9Fe,<br>
<br>
Henk <br><br><div class=3D"gmail_quote">On July 16, 2017 8:00:51 PM GMT+02=
:00, Sheng Jiang &lt;jiangsheng@huawei=2Ecom&gt; wrote:<blockquote class=3D=
"gmail_quote" style=3D"margin: 0pt 0pt 0pt 0=2E8ex; border-left: 1px solid =
rgb(204, 204, 204); padding-left: 1ex;">
<pre class=3D"k9mail">I am trying set up a meeting place for Tuesday (July=
 18th) morning 8am~9am, will send the meeting room information later to the=
se who expressed their interests for on-site meeting directly, including th=
ese who preferred Thursday morning=2E If there are any people would like to=
 join, please contact me before the meeting time=2E<br /><br />Regards,<br =
/><br />Sheng<br /><br />Hi, all,<br /><br />Although there was a few effor=
ts to organize AI-relevant works in IETF/IRTF, so far we have not convergen=
t on a solid common interest area that some of us could start to work toget=
her towards some-level of standardization=2E Let&rsquo;s try again with a s=
maller scope=2E We would like to call interests on applying AI/ML into NETW=
ORK MANAGEMENT=2E The target would be to have a dedicated session to discus=
s AI-based network management in the NMRG in IETF100 or IETF101=2E<br /><br=
 />I am trying set up a meeting place for Tuesday or Thursday before the mo=
rning session=2E These who are interested please send me an email with your=
 preferred day=2E I will send the information later to on-site participants=
 who expressed interests directly=2E Giving that the meetecho is only for f=
ormal WG/RG meetings, I am afraid it is almost impossible for remote partic=
ipant=2E In the past, we did use webex=2E But the quality is bad without pr=
ofessional meeting equipment=2E It was bad to bridge four people on site wi=
th one remote participant=2E<br /><br />Regards,<br /><br />Sheng<br /><hr =
/><br />IDNET mailing list<br />IDNET@ietf=2Eorg<br /><a href=3D"https://ww=
w=2Eietf=2Eorg/mailman/listinfo/idnet">https://www=2Eietf=2Eorg/mailman/lis=
tinfo/idnet</a><br /></pre></blockquote></div><br>
-- <br>
Sent from my Android device with K-9 Mail=2E Please excuse my brevity=2E</=
body></html>
------ELM91GPXDTK0NS3YCYIITJ8C08RQUH--


From nobody Sun Jul 16 14:33:02 2017
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From: =?UTF-8?B?SsOpcsO0bWUgRnJhbsOnb2lz?= <jerome.francois@inria.fr>
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Subject: Re: [Idnet] Informal on-site meeting in IETF99 for applying AI/ML into network management
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Hi,


Le 13/07/2017 à 05:34, Sheng Jiang a écrit :
>
> Hi, all,
>
>  
>
> Although there was a few efforts to organize AI-relevant works in
> IETF/IRTF, so far we have not convergent on a solid common interest
> area that some of us could start to work together towards some-level
> of standardization. Let’s try again with a smaller scope. We would
> like to call interests on applying AI/ML into NETWORK MANAGEMENT. The
> target would be to have a dedicated session to discuss AI-based
> network management in the NMRG in IETF100 or IETF101.
>
That would be great to maintain our effort at IETF.
>
>  
>
> I am trying set up a meeting place for Tuesday or Thursday before the
> morning session. These who are interested please send me an email with
> your preferred day. I will send the information later to on-site
> participants who expressed interests directly. Giving that the
> meetecho is only for formal WG/RG meetings, I am afraid it is almost
> impossible for remote participant. In the past, we did use webex. But
> the quality is bad without professional meeting equipment. It was bad
> to bridge four people on site with one remote participant.
>
Better Tuesday for me.

Best regards,
jerome
>
>  
>
> Regards,
>
>  
>
> Sheng
>
>  
>
>
>
> _______________________________________________
> IDNET mailing list
> IDNET@ietf.org
> https://www.ietf.org/mailman/listinfo/idnet


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    Hi,<br>
    <br>
    <br>
    <div class="moz-cite-prefix">Le 13/07/2017 à 05:34, Sheng Jiang a
      écrit :<br>
    </div>
    <blockquote
cite="mid:5D36713D8A4E7348A7E10DF7437A4B927CDFDD89@NKGEML515-MBX.china.huawei.com"
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        <p class="MsoNormal"><span lang="EN-US">Hi, all,<o:p></o:p></span></p>
        <p class="MsoNormal"><span lang="EN-US"><o:p> </o:p></span></p>
        <p class="MsoNormal"><span lang="EN-US">Although there was a few
            efforts to organize AI-relevant works in IETF/IRTF, so far
            we have not convergent on a solid common interest area that
            some of us could start to work together towards some-level
            of standardization. Let’s try again with a smaller scope. We
            would like to call interests on applying AI/ML into NETWORK
            MANAGEMENT. The target would be to have a dedicated session
            to discuss AI-based network management in the NMRG in
            IETF100 or IETF101.<o:p></o:p></span></p>
      </div>
    </blockquote>
    That would be great to maintain our effort at IETF.<br>
    <blockquote
cite="mid:5D36713D8A4E7348A7E10DF7437A4B927CDFDD89@NKGEML515-MBX.china.huawei.com"
      type="cite">
      <div class="WordSection1">
        <p class="MsoNormal"><span lang="EN-US"><o:p> </o:p></span></p>
        <p class="MsoNormal"><span lang="EN-US">I am trying set up a
            meeting place for Tuesday or Thursday before the morning
            session. These who are interested please send me an email
            with your preferred day. I will send the information later
            to on-site participants who expressed interests directly.
            Giving that the meetecho is only for formal WG/RG meetings,
            I am afraid it is almost impossible for remote participant.
            In the past, we did use webex. But the quality is bad
            without professional meeting equipment. It was bad to bridge
            four people on site with one remote participant.</span></p>
      </div>
    </blockquote>
    Better Tuesday for me.<br>
    <br>
    Best regards,<br>
    jerome<br>
    <blockquote
cite="mid:5D36713D8A4E7348A7E10DF7437A4B927CDFDD89@NKGEML515-MBX.china.huawei.com"
      type="cite">
      <div class="WordSection1">
        <p class="MsoNormal"><span lang="EN-US"><o:p></o:p></span></p>
        <p class="MsoNormal"><span lang="EN-US"><o:p> </o:p></span></p>
        <p class="MsoNormal"><span lang="EN-US">Regards,<o:p></o:p></span></p>
        <p class="MsoNormal"><span lang="EN-US"><o:p> </o:p></span></p>
        <p class="MsoNormal"><span lang="EN-US">Sheng<o:p></o:p></span></p>
        <p class="MsoNormal"><span lang="EN-US"><o:p> </o:p></span></p>
      </div>
      <br>
      <fieldset class="mimeAttachmentHeader"></fieldset>
      <br>
      <pre wrap="">_______________________________________________
IDNET mailing list
<a class="moz-txt-link-abbreviated" href="mailto:IDNET@ietf.org">IDNET@ietf.org</a>
<a class="moz-txt-link-freetext" href="https://www.ietf.org/mailman/listinfo/idnet">https://www.ietf.org/mailman/listinfo/idnet</a>
</pre>
    </blockquote>
    <br>
  </body>
</html>

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From nobody Sun Jul 16 14:44:20 2017
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Date: Mon, 17 Jul 2017 06:44:03 +0900
From: Pedro Martinez-Julia <pedro@nict.go.jp>
To: Sheng Jiang <jiangsheng@huawei.com>
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Dear Sheng Jiang,

Please infirm me. Thank you.

Regards,
Pedro

-- 
Pedro Martinez-Julia
Network Science and Convergence Device Technology Laboratory
Network System Research Institute
National Institute of Information and Communications Technology (NICT)
4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
Email: pedro@nict.go.jp
---------------------------------------------------------
*** Entia non sunt multiplicanda praeter necessitatem ***


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From: Sheng Jiang <jiangsheng@huawei.com>
To: Henk Birkholz <henk.birkholz@sit.fraunhofer.de>, "idnet@ietf.org" <idnet@ietf.org>
Thread-Topic: [Idnet] //Informal on-site meeting in IETF99 for applying AI/ML into network management
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Subject: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Dear all,

Thanks Sheng for having organized the meeting. As we are running out of
time, here are some comments I want to share:
- in the figure with the loop, data to be used could be from other
sources of data out from the network to enrich the analysis
- regarding use cases, it was unclear for me what is your or the group
plan. I think many of us express interests for other use cases but I'm
not sure how to contribute / select use cases (and if we have to ? ->
see next item)
- the immediate plan is to organize a regular workshop (probably within
NMRG). I fully support the idea as this helps to federate the community
first to ambition then coordinated actions (regarding the issues with
datasets for example). But recall that that will be workshop within a RG
group and it is probably too early to identify what should be
standardized  (or look at a WG in that case). Looking at the experience
with flow measurement workshop (within NMRG as well), it should be more
open for presentations and discussions and if a potential standard is
identified, this can be targeted afterwards.=20

Best regards,
jerome


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Date: Fri, 21 Jul 2017 02:19:08 +0900
From: Pedro Martinez-Julia <pedro@nict.go.jp>
To: =?utf-8?B?SsOpcsO0bWUgRnJhbsOnb2lz?= <jerome.francois@inria.fr>
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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On Thu, Jul 20, 2017 at 07:05:17PM +0200, JÃ©rÃ´me FranÃ§ois wrote:
> Dear all,

Dear Jerome,

Thank you very much for your comments. Please find below some hints from
my side.

> Thanks Sheng for having organized the meeting. As we are running out of
> time, here are some comments I want to share:
> - in the figure with the loop, data to be used could be from other
> sources of data out from the network to enrich the analysis

This is delicate since, strictly speaking, such data cannot form part of
the "control loop" because it is not a variable to control. However, in
a practical view it will be connected to the input of the loop (and I am
currently working on solutions that consider such information in such
point), but it must be clear that it will not form part of the closure
of the loop.

> - regarding use cases, it was unclear for me what is your or the group
> plan. I think many of us express interests for other use cases but I'm
> not sure how to contribute / select use cases (and if we have to ? ->
> see next item)

To my experience, the best option is to find some common requirements to
all use cases we are taking into account and then try to find a smaller
use case that reflects only those requirements. We can then "vote" which
aspects must be considered from the beginning and which can be left for
future use cases.

> - the immediate plan is to organize a regular workshop (probably within
> NMRG). I fully support the idea as this helps to federate the community
> first to ambition then coordinated actions (regarding the issues with
> datasets for example). But recall that that will be workshop within a RG
> group and it is probably too early to identify what should be
> standardized  (or look at a WG in that case). Looking at the experience
> with flow measurement workshop (within NMRG as well), it should be more
> open for presentations and discussions and if a potential standard is
> identified, this can be targeted afterwards.

That is nice, but has some risks. We must first set a strong topic or we
can find a too high diversion from the issues that IDNET must resolve.

I agree with you in that it is good to gather proposals to resolve the
dataset issues and it can be the main (I propose that only) topic of the
first workshop on IDNET.

Those are my 2 cents. Thanks for reading.

> Best regards,
> jerome

Regards,
Pedro

-- 
Pedro Martinez-Julia
Network Science and Convergence Device Technology Laboratory
Network System Research Institute
National Institute of Information and Communications Technology (NICT)
4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
Email: pedro@nict.go.jp
---------------------------------------------------------
*** Entia non sunt multiplicanda praeter necessitatem ***


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From: yanshen <yanshen@huawei.com>
To: =?iso-8859-1?Q?J=E9r=F4me_Fran=E7ois?= <jerome.francois@inria.fr>, "idnet@ietf.org" <idnet@ietf.org>
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Dear Jerome,

Thanks for your comment. Please find the reply in below.=20

> -----Original Message-----
> From: IDNET [mailto:idnet-bounces@ietf.org] On Behalf Of J=E9r?me Fran?oi=
s
> Sent: Friday, July 21, 2017 1:05 AM
> To: idnet@ietf.org
> Subject: [Idnet] IETF99 for applying AI/ML into network management: Follo=
w-up
>=20
> Dear all,
>=20
> Thanks Sheng for having organized the meeting. As we are running out of t=
ime,
> here are some comments I want to share:
> - in the figure with the loop, data to be used could be from other source=
s of data
> out from the network to enrich the analysis

It is significant. The data indeed is from not only the network itself but =
also from other sources. Sometimes I ever thought the "non-network data" in=
fluence more, for example, a popular movie or online sales may detonate the=
 traffic. In details, different users can utilize their private data to bui=
ld their requirements. Such as, a content provider may use subscribers' dat=
a to train and optimize its delivery strategy. From the view of standardiza=
tion, more data source could expand the impact and attract more players joi=
ning in the work.


> - regarding use cases, it was unclear for me what is your or the group pl=
an. I think
> many of us express interests for other use cases but I'm not sure how to
> contribute / select use cases (and if we have to ? -> see next item)
> - the immediate plan is to organize a regular workshop (probably within N=
MRG). I
> fully support the idea as this helps to federate the community first to a=
mbition
> then coordinated actions (regarding the issues with datasets for example)=
. But
> recall that that will be workshop within a RG group and it is probably to=
o early to
> identify what should be standardized  (or look at a WG in that case). Loo=
king at
> the experience with flow measurement workshop (within NMRG as well), it
> should be more open for presentations and discussions and if a potential
> standard is identified, this can be targeted afterwards.

I support the regular workshop (whatever in any form). I fully understand y=
our worried about the "too early". However, I think it is better to find a =
common or say a potential standardized point to concentrate the focus. Afte=
r that, we can expand our focus to other valuable area. A details point may=
 help us to clear up the thought, during which we may evolve a clear method=
ology for the future work. Of course I totally agree with your open attitud=
e. I mean only to concentrate the topic firstly.=20

>=20
> Best regards,
> Jerome

Thanks for reading. And I hope I have caught up all your points here.

Yansen


>=20
> _______________________________________________
> IDNET mailing list
> IDNET@ietf.org
> https://www.ietf.org/mailman/listinfo/idnet


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From: yanshen <yanshen@huawei.com>
To: Pedro Martinez-Julia <pedro@nict.go.jp>
CC: "idnet@ietf.org" <idnet@ietf.org>
Thread-Topic: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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From nobody Fri Jul 21 02:17:50 2017
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Date: Fri, 21 Jul 2017 18:17:30 +0900
From: Pedro Martinez-Julia <pedro@nict.go.jp>
To: yanshen <yanshen@huawei.com>
Cc: "idnet@ietf.org" <idnet@ietf.org>
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Dear Yanshen,

Please find my reply below.

On Fri, Jul 21, 2017 at 08:52:33AM +0000, yanshen wrote:
> Dear Pedro,
> 
> Thanks for your hints. Please find some hints from my side.
> 
> I am not sure whether you means that there should be an "interface" or
> an "entity" between the other source data and control loop?

I'm sorry, I mean that, by definition, a "closed control loop" intends
to maintain a particular variable within some defined values by reading
it and enforcing the necessary actions to affect it. Any external data
cannot be considered as such variable so they cannot be part of the
closed control loop. However, it can be used to help controlling other
variables, but it must be clearly defined how the external data is
integrated and derived into the changes to the other variable.

> BTW, have you ever obtain some achievement about such point that can
> be shared?

My results are trivial and do not shed any light to this issue and I do
not try to fit external data into the closed control loop, I just use it
to complement the control of the "load" variable.

> I think that since NMRG may be a probably choice, it is better to
> explore via this thread. 

So let's go that way.

> Thanks for reading. 
> 
> Regards,
> 
> Yansen

Regards,
Pedro

-- 
Pedro Martinez-Julia
Network Science and Convergence Device Technology Laboratory
Network System Research Institute
National Institute of Information and Communications Technology (NICT)
4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
Email: pedro@nict.go.jp
---------------------------------------------------------
*** Entia non sunt multiplicanda praeter necessitatem ***


From nobody Mon Jul 24 01:44:15 2017
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From: yanshen <yanshen@huawei.com>
To: Pedro Martinez-Julia <pedro@nict.go.jp>
CC: "idnet@ietf.org" <idnet@ietf.org>
Thread-Topic: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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--_002_6AE399511121AB42A34ACEF7BF25B4D29786F4DGGEMM505MBSchina_
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Dear Pedro,=20

> -----Original Message-----
> From: IDNET [mailto:idnet-bounces@ietf.org] On Behalf Of Pedro Martinez-J=
ulia
> Sent: Friday, July 21, 2017 5:18 PM
> To: yanshen <yanshen@huawei.com>
> Cc: idnet@ietf.org
> Subject: Re: [Idnet] IETF99 for applying AI/ML into network management:
> Follow-up
>=20
> Dear Yanshen,
>=20
> Please find my reply below.
>=20
> On Fri, Jul 21, 2017 at 08:52:33AM +0000, yanshen wrote:
> > Dear Pedro,
> >
> > Thanks for your hints. Please find some hints from my side.
> >
> > I am not sure whether you means that there should be an "interface" or
> > an "entity" between the other source data and control loop?
>=20
> I'm sorry, I mean that, by definition, a "closed control loop" intends to=
 maintain a
> particular variable within some defined values by reading it and enforcin=
g the
> necessary actions to affect it. Any external data cannot be considered as=
 such
> variable so they cannot be part of the closed control loop. However, it c=
an be
> used to help controlling other variables, but it must be clearly defined =
how the
> external data is integrated and derived into the changes to the other var=
iable.
>=20

Indeed. So that there should be a little complement in the loops. [see the =
attachment]

For compatible, there may be an interface or device to "receive" the extern=
al data?=20

Regards,=20

Yansen


> > BTW, have you ever obtain some achievement about such point that can
> > be shared?
>=20
> My results are trivial and do not shed any light to this issue and I do n=
ot try to fit
> external data into the closed control loop, I just use it to complement t=
he control
> of the "load" variable.
>=20
> > I think that since NMRG may be a probably choice, it is better to
> > explore via this thread.
>=20
> So let's go that way.
>=20
> > Thanks for reading.
> >
> > Regards,
> >
> > Yansen
>=20
> Regards,
> Pedro
>=20
> --
> Pedro Martinez-Julia
> Network Science and Convergence Device Technology Laboratory Network
> System Research Institute National Institute of Information and Communica=
tions
> Technology (NICT) 4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
> Email: pedro@nict.go.jp
> ---------------------------------------------------------
> *** Entia non sunt multiplicanda praeter necessitatem ***
>=20
> _______________________________________________
> IDNET mailing list
> IDNET@ietf.org
> https://www.ietf.org/mailman/listinfo/idnet

--_002_6AE399511121AB42A34ACEF7BF25B4D29786F4DGGEMM505MBSchina_
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From nobody Mon Jul 24 02:00:11 2017
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Date: Mon, 24 Jul 2017 17:59:57 +0900
From: Pedro Martinez-Julia <pedro@nict.go.jp>
To: yanshen <yanshen@huawei.com>
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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On Mon, Jul 24, 2017 at 08:44:01AM +0000, yanshen wrote:
> Dear Pedro, 

Dear Yanshen,

> Indeed. So that there should be a little complement in the loops. [see
> the attachment]

I see and I find it a perfect representation and fit for the role that
external data would have (fed directly to the brain!).

> For compatible, there may be an interface or device to "receive" the
> external data?

I think it would be nice to have such interface and standardize it so
data producers/owners can be easily plugged to data consumers, promoting
the proliferation of different solutions that could be exchanged and/or
complemented to each other...

> Regards, 
> 
> Yansen

Regards,
Pedro

-- 
Pedro Martinez-Julia
Network Science and Convergence Device Technology Laboratory
Network System Research Institute
National Institute of Information and Communications Technology (NICT)
4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
Email: pedro@nict.go.jp
---------------------------------------------------------
*** Entia non sunt multiplicanda praeter necessitatem ***


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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Hi,

Le 21/07/2017 =E0 09:32, yanshen a =E9crit :
> - the immediate plan is to organize a regular workshop (probably within=
 NMRG). I
> fully support the idea as this helps to federate the community first to=
 ambition
> then coordinated actions (regarding the issues with datasets for exampl=
e). But
> recall that that will be workshop within a RG group and it is probably =
too early to
> identify what should be standardized  (or look at a WG in that case). L=
ooking at
> the experience with flow measurement workshop (within NMRG as well), it=

> should be more open for presentations and discussions and if a potentia=
l
> standard is identified, this can be targeted afterwards.
> I support the regular workshop (whatever in any form). I fully understa=
nd your worried about the "too early". However, I think it is better to f=
ind a common or say a potential standardized point to concentrate the foc=
us. After that, we can expand our focus to other valuable area. A details=
 point may help us to clear up the thought, during which we may evolve a =
clear methodology for the future work. Of course I totally agree with you=
r open attitude. I mean only to concentrate the topic firstly.=20
>
>
So, why not targeting a WG (rather than a RG because in my understanding
primary focus of RG is not standardization) ?


best regards,
jerome


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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Hi

>> I'm sorry, I mean that, by definition, a "closed control loop" intends to maintain a
>> particular variable within some defined values by reading it and enforcing the
>> necessary actions to affect it. Any external data cannot be considered as such
>> variable so they cannot be part of the closed control loop. However, it can be
>> used to help controlling other variables, but it must be clearly defined how the
>> external data is integrated and derived into the changes to the other variable.
>>
> Indeed. So that there should be a little complement in the loops. [see the attachment]
>
> For compatible, there may be an interface or device to "receive" the external data? 
>
> Regards, 
>
> Yansen
>
>
>
I'm not sure wheter the external data loop should be linked to the brain
or data analysis or both.

jerome


From nobody Tue Jul 25 17:12:18 2017
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Date: Wed, 26 Jul 2017 09:12:09 +0900
From: Pedro Martinez-Julia <pedro@nict.go.jp>
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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On Tue, Jul 25, 2017 at 04:28:08PM +0200, JÃ©rÃ´me FranÃ§ois wrote:
> I'm not sure wheter the external data loop should be linked to the brain
> or data analysis or both.

It is supposed to be already analyzed (not raw data but events), so it
is better to be inputted to the brain.

> jerome

Regards,
Pedro

-- 
Pedro Martinez-Julia
Network Science and Convergence Device Technology Laboratory
Network System Research Institute
National Institute of Information and Communications Technology (NICT)
4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
Email: pedro@nict.go.jp
---------------------------------------------------------
*** Entia non sunt multiplicanda praeter necessitatem ***


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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Dear Yanshen,

Thanks for your answer, do not worry about the timing, and find my
answer in-line :-).

On Tue, Jul 25, 2017 at 02:10:26PM +0000, yanshen wrote:
> Dear Pedro,
> 
> Sorry for replying late. 
> 
> Recently I meet an interesting question is what data should belong to
> internal and what data should be external?

For me that depends on the algorithmic representation. We have two types
of variables:

- Measurable and controllable variables, such as the load of a resource
  managed by the solution, which can be known and can be altered by some
  decision of such solution (increase/decrease the amount of resources).

- Measurable but non-controllable, which are outside the control of the
  solution. They can be known and used to take decisions but cannot be
  altered (directly or indirectly) by the solution. A simple example can
  be found in the occurrence of some event that can affect to a system,
  such as the number of attendees to a baseball match. The management
  solution cannot control such variable but uses it to determine the
  amount of network resources assigned to the network of the stadium.

> A simple case is the ML algorithm, such as reinforcement learning,
> needs "rewards" to  correct the error and improve its model during
> iterations. Some reward parameters may be from subscribers. For
> example, when we use the QoE value to present the reward in each
> period. These feedback QoE values should be internal or external? 

Those rewards are "controllable variables", and thus must be introduced
to the whole loop, so the management solution uses them, and maybe other
information, to determine actions that will change/improve them.

> BTW, I think there should be some methods to support the "reward"
> feedback. For instance, there is some proposal to use RSVP protocol's
> option to transmit the QoS value. And in the scenarios of video
> transmission, some proposal uses TCP option to feedback the QoS of
> current flow.

That is a good option for a new draft, but it would be more related to
other WG than to IDNET "per se". I find it very interesting so, if you
plan to work on it, please count on me. I think we can circulate some
initial version to the NMRG and from there we can see where it fits.

> Maybe there is room for the future.
> 
> Thanks for your reply and suggestions.
> 
> Yansen

Let's be in contact...

Regards,
Pedro

-- 
Pedro Martinez-Julia
Network Science and Convergence Device Technology Laboratory
Network System Research Institute
National Institute of Information and Communications Technology (NICT)
4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
Email: pedro@nict.go.jp
---------------------------------------------------------
*** Entia non sunt multiplicanda praeter necessitatem ***


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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Hi Pedro,

Le 26/07/2017 Ã  02:12, Pedro Martinez-Julia a Ã©crit :
> On Tue, Jul 25, 2017 at 04:28:08PM +0200, JÃ©rÃ´me FranÃ§ois wrote:
>> I'm not sure wheter the external data loop should be linked to the brain
>> or data analysis or both.
> It is supposed to be already analyzed (not raw data but events), so it
> is better to be inputted to the brain.
Assuming the case where you have flow records (raw event) you want to
label regarding the matching of IP addresses in external blacklists, I
would say it has to be done to the data analysis.

jerome
>> jerome
> Regards,
> Pedro
>


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From: Sheng Jiang <jiangsheng@huawei.com>
To: =?iso-8859-1?Q?J=E9r=F4me_Fran=E7ois?= <jerome.francois@inria.fr>, yanshen <yanshen@huawei.com>, "idnet@ietf.org" <idnet@ietf.org>
Thread-Topic: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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> > - the immediate plan is to organize a regular workshop (probably
> > within NMRG). I fully support the idea as this helps to federate the
> > community first to ambition then coordinated actions (regarding the
> > issues with datasets for example). But recall that that will be
> > workshop within a RG group and it is probably too early to identify
> > what should be standardized  (or look at a WG in that case). Looking
> > at the experience with flow measurement workshop (within NMRG as
> > well), it should be more open for presentations and discussions and if =
a
> potential standard is identified, this can be targeted afterwards.
> > I support the regular workshop (whatever in any form). I fully understa=
nd your
> worried about the "too early". However, I think it is better to find a co=
mmon or
> say a potential standardized point to concentrate the focus. After that, =
we can
> expand our focus to other valuable area. A details point may help us to c=
lear up
> the thought, during which we may evolve a clear methodology for the futur=
e
> work. Of course I totally agree with your open attitude. I mean only to
> concentrate the topic firstly.
> >
> >
> So, why not targeting a WG (rather than a RG because in my understanding
> primary focus of RG is not standardization) ?

Hi, Jerome,

Of course, we would like to target a WG if we could. However, so far, we ha=
ve not converged at all. It seems there are full of possibilities to apply =
AI/ML in networks. It seems everybody is talking about their own use cases.=
 Until we converged with one or two very specific use cases that are also g=
eneric and significance, or we might find some fundamental functionalities =
that are generically support various AI use cases, we may not have anything=
 to standardized. So far, we are still in the way to find these work items.=
 So, let's keep discussing use cases and fundamental functionalities. Hopef=
ully, with more discussion, we could reduce our scope to be more and more f=
ocus. Then we may have concrete work items to form a WG.

Best regards,

Sheng

> best regards,
> jerome
>=20
> _______________________________________________
> IDNET mailing list
> IDNET@ietf.org
> https://www.ietf.org/mailman/listinfo/idnet


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From: Sheng Jiang <jiangsheng@huawei.com>
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Hi, all,

Please find the below figure that I shared in the IDN discussion meeting la=
st week in Prague. This illustrates the IDN architecture in a very generic =
way. The on-site participants had the very similar understanding that the u=
pper left box - the unified and selected data is should be the prior work t=
owards standardization. Also, the participants shared the same opinion that=
 the data structure may be various among use cases. So, we should keep disc=
ussing on use cases with the target to converge on one or two significant a=
nd specific use cases.
[cid:image001.png@01D30643.900DB7F0]

Regards,

Sheng

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<p class=3D"MsoNormal"><span lang=3D"EN-US">Hi, all,<o:p></o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US">Please find the below figure th=
at I shared in the IDN discussion meeting last week in Prague. This illustr=
ates the IDN architecture in a very generic way. The on-site participants h=
ad the very similar understanding that
 the upper left box &#8211; the unified and selected data is should be the =
prior work towards standardization. Also, the participants shared the same =
opinion that the data structure may be various among use cases. So, we shou=
ld keep discussing on use cases with the
 target to converge on one or two significant and specific use cases.<o:p><=
/o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US"><img width=3D"1229" height=3D"6=
66" id=3D"_x56fe__x7247__x0020_1" src=3D"cid:image001.png@01D30643.900DB7F0=
"></span><span lang=3D"EN-US"><o:p></o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US">Regards,<o:p></o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US"><o:p>&nbsp;</o:p></span></p>
<p class=3D"MsoNormal"><span lang=3D"EN-US">Sheng<o:p></o:p></span></p>
</div>
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	creation-date="Wed, 26 Jul 2017 11:38:09 GMT";
	modification-date="Wed, 26 Jul 2017 11:38:09 GMT"
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From nobody Wed Jul 26 12:35:37 2017
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From: =?UTF-8?B?SsOpcsO0bWUgRnJhbsOnb2lz?= <jerome.francois@inria.fr>
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Hi,

> Of course, we would like to target a WG if we could. However, so far, w=
e have not converged at all. It seems there are full of possibilities to =
apply AI/ML in networks. It seems everybody is talking about their own us=
e cases. Until we converged with one or two very specific use cases that =
are also generic and significance, or we might find some fundamental func=
tionalities that are generically support various AI use cases, we may not=
 have anything to standardized. So far, we are still in the way to find t=
hese work items. So, let's keep discussing use cases and fundamental func=
tionalities. Hopefully, with more discussion, we could reduce our scope t=
o be more and more focus. Then we may have concrete work items to form a =
WG.
>
>
I agree that before formally targeting a WG, we need something specific
to be address. I said "something" because it could be a use case where
AI is applied, a generic problem across use case, interfaces....

But my little concern is that I would avoid that planned workshop would
be stricly limited to particular use cases, problems or architecture.
In my opinion, we have to take care of the two items (community building
with the workshop and scope refinement) in parallel but we could, of
course, expect that the workshop gives us some input to refine our
target in the proper way.

jerome


From nobody Wed Jul 26 17:45:23 2017
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From: Pedro Martinez-Julia <pedro@nict.go.jp>
To: Sheng Jiang <jiangsheng@huawei.com>
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Dear Sheng,

First of all, and considering my recent experience with the Network
Slicing work, I think we have some aspects of our work that are probably
essential for the IETF and network technology in general:

- As you mention and all of us know well, we need to standardize the
  data format, so it is a good opportunity to define some ontology and
  the corresponding YANG model that structures such data.

- We have also a good opportunity to define a "benchmarking framework"
  that can be used with whatever dataset we can gather in the future in
  order to validate some approach. This would be a combination of YANG
  model and work protocols (not network, but procedure protocols) that
  would be required to ensure the results are universally valid and can
  be contrasted to other results. This is essential in any discipline,
  as we can find in areas such as multimedia communications or computer
  vision, but the networking area does not have anything like it.

- The definition of "wire protocols", interfaces, and the format of data
  exchanged (also as YANG models) that are easily identified in the IDN
  architecture figure that I think all of us support to some extent.

- Of course, the IDN reference architecture (but this has been deeply
  discussed).

As you can perceive, I am trying to be practical. This somehow contrasts
with my typical views, which are normally quite abstract, but those work
are quite obvious, are not defined elsewhere, and can be a good starting
point to form a WG in the future. For the moment, we can address such
work through other RG/WG (e.g. NMRG) so we can begin the writing of some
drafts-of-drafts for IETF 100. If you are interested on doing it, please
let me know and we can define some schedule and some rough ToC for those
documents. Thank you very much.

Regards,
Pedro

On Wed, Jul 26, 2017 at 11:38:09AM +0000, Sheng Jiang wrote:
> Hi, all,
> 
> Please find the below figure that I shared in the IDN discussion meeting last week in Prague. This illustrates the IDN architecture in a very generic way. The on-site participants had the very similar understanding that the upper left box - the unified and selected data is should be the prior work towards standardization. Also, the participants shared the same opinion that the data structure may be various among use cases. So, we should keep discussing on use cases with the target to converge on one or two significant and specific use cases.
> [cid:image001.png@01D30643.900DB7F0]
> 
> Regards,
> 
> Sheng



> _______________________________________________
> IDNET mailing list
> IDNET@ietf.org
> https://www.ietf.org/mailman/listinfo/idnet


-- 
Pedro Martinez-Julia
Network Science and Convergence Device Technology Laboratory
Network System Research Institute
National Institute of Information and Communications Technology (NICT)
4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
Email: pedro@nict.go.jp
---------------------------------------------------------
*** Entia non sunt multiplicanda praeter necessitatem ***


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To: Pedro Martinez-Julia <pedro@nict.go.jp>
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Thread-Topic: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Thread-Topic: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Date: Thu, 27 Jul 2017 01:59:02 +0000
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Hi Jerome,

> -----Original Message-----
> From: J=E9r=F4me Fran=E7ois [mailto:jerome.francois@inria.fr]
> Sent: Tuesday, July 25, 2017 10:26 PM
> To: yanshen <yanshen@huawei.com>; idnet@ietf.org
> Subject: Re: [Idnet] IETF99 for applying AI/ML into network management:
> Follow-up
>=20
> Hi,
>=20
> Le 21/07/2017 =E0 09:32, yanshen a =E9crit :
> > - the immediate plan is to organize a regular workshop (probably
> > within NMRG). I fully support the idea as this helps to federate the
> > community first to ambition then coordinated actions (regarding the
> > issues with datasets for example). But recall that that will be
> > workshop within a RG group and it is probably too early to identify
> > what should be standardized  (or look at a WG in that case). Looking
> > at the experience with flow measurement workshop (within NMRG as
> > well), it should be more open for presentations and discussions and if =
a
> potential standard is identified, this can be targeted afterwards.
> > I support the regular workshop (whatever in any form). I fully understa=
nd your
> worried about the "too early". However, I think it is better to find a co=
mmon or
> say a potential standardized point to concentrate the focus. After that, =
we can
> expand our focus to other valuable area. A details point may help us to c=
lear up
> the thought, during which we may evolve a clear methodology for the futur=
e
> work. Of course I totally agree with your open attitude. I mean only to
> concentrate the topic firstly.
> >
> >
> So, why not targeting a WG (rather than a RG because in my understanding
> primary focus of RG is not standardization) ?

I am troubled in finding a satisfied WG. Any suggestion? For example, in me=
asurement area.

Thanks for your reply.

Regards,

Yansen

>=20
>=20
> best regards,
> jerome


From nobody Wed Jul 26 19:16:29 2017
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Date: Thu, 27 Jul 2017 11:16:22 +0900
From: Pedro Martinez-Julia <pedro@nict.go.jp>
To: yanshen <yanshen@huawei.com>
Cc: "idnet@ietf.org" <idnet@ietf.org>
Message-ID: <20170727021622.GD18300@spectre>
References: <015d4fb0-496a-a9a0-e8c5-7fcf6c52caee@inria.fr> <20170720171907.GF15832@spectre> <6AE399511121AB42A34ACEF7BF25B4D29783BD@DGGEMM505-MBS.china.huawei.com> <20170721091729.GJ15832@spectre> <6AE399511121AB42A34ACEF7BF25B4D29786F4@DGGEMM505-MBS.china.huawei.com> <20170724085956.GI18300@spectre> <6AE399511121AB42A34ACEF7BF25B4D2978A40@DGGEMM505-MBS.china.huawei.com> <20170726002417.GZ18300@spectre> <6AE399511121AB42A34ACEF7BF25B4D2978F9C@DGGEMM505-MBS.china.huawei.com>
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Dear Yanshen,

Thanks for your comments, please find my reply in-line.

On Thu, Jul 27, 2017 at 01:54:58AM +0000, yanshen wrote:
> > For me that depends on the algorithmic representation. We have two types of
> > variables:
> > 
> > - Measurable and controllable variables, such as the load of a resource
> >   managed by the solution, which can be known and can be altered by some
> >   decision of such solution (increase/decrease the amount of resources).
> > 
> > - Measurable but non-controllable, which are outside the control of the
> >   solution. They can be known and used to take decisions but cannot be
> >   altered (directly or indirectly) by the solution. A simple example can
> >   be found in the occurrence of some event that can affect to a system,
> >   such as the number of attendees to a baseball match. The management
> >   solution cannot control such variable but uses it to determine the
> >   amount of network resources assigned to the network of the stadium.
> 
> I have a similar thought. I try to divide the variables into objective
> and subjective (may corresponding to your controllable and
> non-controllable. Perhaps a little different). 
> 
> 	- The objective data means that we can capture, input or measure it
> 	periodically from any source (whatever it is). This class of data
> 	needs to be focused and formatted, including the context and format
> 	and so on. One of the cases is QoS value which I just mentioned. 
> 
> 	- The subjective data means that it is imported into the machine
> 	(AI/Brain/Knowledge system) temporarily or irregularly. This class
> 	of data may be high-level and diversity. The solution for them I
> 	think should be pushed to application layer. It is not our dishes.
> 	Another thought is that we should try to obtain more subjective data
> 	by objective way, for example, we should try to change the way of
> 	obtaining the "reward" feedback from "user randomly report" to
> 	"periodically capture". Unless such, it should not be included into
> 	our consideration. 
> 
> I think it is significant to combine our two dimensions into one. Of
> course other dimensions may also considerable.

They are different aspects and, of course, they must be combined. My
classification is based on the "control theory", which clearly states
what a controlled variable means and the strict definition of the loop
closure (closed-loop controller), which implies to check such variables
and confirm they are changed according to the intended objective after
some change/s is/are applied to the controlled environment.

On the other hand, your view is more practical in terms of the scope of
the information in relation to the AI algorithm and its needs. It would
be good to simplify/unify both dimensions but also to simplify/unify the
differences within them. I mean that it would be probably a good option
to consider any kind of data homogeneously. I am using a simple ontology
to resolve such problem, so we could probably use it and a corresponding
YANG model, as I proposed in my other message, to achieve such unified
view. Please, let me know your thoughts. Thank you very much.

Regards,
Pedro

-- 
Pedro Martinez-Julia
Network Science and Convergence Device Technology Laboratory
Network System Research Institute
National Institute of Information and Communications Technology (NICT)
4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
Email: pedro@nict.go.jp
---------------------------------------------------------
*** Entia non sunt multiplicanda praeter necessitatem ***


From nobody Wed Jul 26 20:08:15 2017
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References: <015d4fb0-496a-a9a0-e8c5-7fcf6c52caee@inria.fr> <20170720171907.GF15832@spectre> <6AE399511121AB42A34ACEF7BF25B4D29783BD@DGGEMM505-MBS.china.huawei.com> <20170721091729.GJ15832@spectre> <6AE399511121AB42A34ACEF7BF25B4D29786F4@DGGEMM505-MBS.china.huawei.com> <20170724085956.GI18300@spectre> <6AE399511121AB42A34ACEF7BF25B4D2978A40@DGGEMM505-MBS.china.huawei.com> <20170726002417.GZ18300@spectre> <6AE399511121AB42A34ACEF7BF25B4D2978F9C@DGGEMM505-MBS.china.huawei.com> <20170727021622.GD18300@spectre>
From: Simone Ferlin <simone@ferlin.io>
Date: Thu, 27 Jul 2017 12:04:58 +0900
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To: Pedro Martinez-Julia <pedro@nict.go.jp>
Cc: yanshen <yanshen@huawei.com>, "idnet@ietf.org" <idnet@ietf.org>
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Hello everyone,

I have been following this list for some time, but I have not been in
the meetings (f2f nor online) yet due to lack of time.
Do you have a summary of these meetings, including the topics
discussed at IETF'99, so that people like me could engage in the
discussions? I see you started a thread here, but not with much I
could understand the starting point.

Thanks and cheers,
Simone

On Thu, Jul 27, 2017 at 11:16 AM, Pedro Martinez-Julia <pedro@nict.go.jp> wrote:
> Dear Yanshen,
>
> Thanks for your comments, please find my reply in-line.
>
> On Thu, Jul 27, 2017 at 01:54:58AM +0000, yanshen wrote:
>> > For me that depends on the algorithmic representation. We have two types of
>> > variables:
>> >
>> > - Measurable and controllable variables, such as the load of a resource
>> >   managed by the solution, which can be known and can be altered by some
>> >   decision of such solution (increase/decrease the amount of resources).
>> >
>> > - Measurable but non-controllable, which are outside the control of the
>> >   solution. They can be known and used to take decisions but cannot be
>> >   altered (directly or indirectly) by the solution. A simple example can
>> >   be found in the occurrence of some event that can affect to a system,
>> >   such as the number of attendees to a baseball match. The management
>> >   solution cannot control such variable but uses it to determine the
>> >   amount of network resources assigned to the network of the stadium.
>>
>> I have a similar thought. I try to divide the variables into objective
>> and subjective (may corresponding to your controllable and
>> non-controllable. Perhaps a little different).
>>
>>       - The objective data means that we can capture, input or measure it
>>       periodically from any source (whatever it is). This class of data
>>       needs to be focused and formatted, including the context and format
>>       and so on. One of the cases is QoS value which I just mentioned.
>>
>>       - The subjective data means that it is imported into the machine
>>       (AI/Brain/Knowledge system) temporarily or irregularly. This class
>>       of data may be high-level and diversity. The solution for them I
>>       think should be pushed to application layer. It is not our dishes.
>>       Another thought is that we should try to obtain more subjective data
>>       by objective way, for example, we should try to change the way of
>>       obtaining the "reward" feedback from "user randomly report" to
>>       "periodically capture". Unless such, it should not be included into
>>       our consideration.
>>
>> I think it is significant to combine our two dimensions into one. Of
>> course other dimensions may also considerable.
>
> They are different aspects and, of course, they must be combined. My
> classification is based on the "control theory", which clearly states
> what a controlled variable means and the strict definition of the loop
> closure (closed-loop controller), which implies to check such variables
> and confirm they are changed according to the intended objective after
> some change/s is/are applied to the controlled environment.
>
> On the other hand, your view is more practical in terms of the scope of
> the information in relation to the AI algorithm and its needs. It would
> be good to simplify/unify both dimensions but also to simplify/unify the
> differences within them. I mean that it would be probably a good option
> to consider any kind of data homogeneously. I am using a simple ontology
> to resolve such problem, so we could probably use it and a corresponding
> YANG model, as I proposed in my other message, to achieve such unified
> view. Please, let me know your thoughts. Thank you very much.
>
> Regards,
> Pedro
>
> --
> Pedro Martinez-Julia
> Network Science and Convergence Device Technology Laboratory
> Network System Research Institute
> National Institute of Information and Communications Technology (NICT)
> 4-2-1, Nukui-Kitamachi, Koganei, Tokyo 184-8795, Japan
> Email: pedro@nict.go.jp
> ---------------------------------------------------------
> *** Entia non sunt multiplicanda praeter necessitatem ***
>
> _______________________________________________
> IDNET mailing list
> IDNET@ietf.org
> https://www.ietf.org/mailman/listinfo/idnet


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From: Sheng Jiang <jiangsheng@huawei.com>
To: =?iso-8859-1?Q?J=E9r=F4me_Fran=E7ois?= <jerome.francois@inria.fr>, yanshen <yanshen@huawei.com>, "idnet@ietf.org" <idnet@ietf.org>
Thread-Topic: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Hi, Jerome,

I do understand your concern. One of the historic stories is that we had tw=
o NMRG sessions/workshops back to IETF 88, 89. It served us both purposes -=
 community building and scope refinement well. Because these two sessions, =
we developed two RFC 7575 & 7576. It gives us good foundation to form ANIMA=
 WG. The problem we have now is actually TOO open and wide. If we could con=
vergent on GENERIC problem across use case, interfaces, foundation function=
alities, it would be the best. If we don't know what might be GENERIC for n=
ow, we may have to deeply study various use cases, then try to find the com=
mon among them.

Regards,

Sheng

> -----Original Message-----
> From: J=E9r=F4me Fran=E7ois [mailto:jerome.francois@inria.fr]
> Sent: Thursday, July 27, 2017 3:35 AM
> To: Sheng Jiang; yanshen; idnet@ietf.org
> Subject: Re: [Idnet] IETF99 for applying AI/ML into network management:
> Follow-up
>=20
> Hi,
>=20
> > Of course, we would like to target a WG if we could. However, so far, w=
e have
> not converged at all. It seems there are full of possibilities to apply A=
I/ML in
> networks. It seems everybody is talking about their own use cases. Until =
we
> converged with one or two very specific use cases that are also generic a=
nd
> significance, or we might find some fundamental functionalities that are
> generically support various AI use cases, we may not have anything to
> standardized. So far, we are still in the way to find these work items. S=
o, let's
> keep discussing use cases and fundamental functionalities. Hopefully, wit=
h
> more discussion, we could reduce our scope to be more and more focus. The=
n
> we may have concrete work items to form a WG.
> >
> >
> I agree that before formally targeting a WG, we need something specific t=
o be
> address. I said "something" because it could be a use case where AI is ap=
plied,
> a generic problem across use case, interfaces....
>=20
> But my little concern is that I would avoid that planned workshop would b=
e
> stricly limited to particular use cases, problems or architecture.
> In my opinion, we have to take care of the two items (community building =
with
> the workshop and scope refinement) in parallel but we could, of course, e=
xpect
> that the workshop gives us some input to refine our target in the proper =
way.
>=20
> jerome


From nobody Fri Jul 28 03:04:10 2017
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Subject: Re: [Idnet] IETF99 for applying AI/ML into network management: Follow-up
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Hi Sheng,

That's fine with me. So maybe, my suggestion would to have NMRG session
where people present their own use cases without giving details about
specific obtained results or ML algorithms but with a focus of what are
the different processing steps, interfaces among them, data to be
used... in an ideal case trying to see how this fits with the proposed loop.

Would that be a good plan ?

jerome

Le 27/07/2017 à 13:25, Sheng Jiang a écrit :
> Hi, Jerome,
>
> I do understand your concern. One of the historic stories is that we had two NMRG sessions/workshops back to IETF 88, 89. It served us both purposes - community building and scope refinement well. Because these two sessions, we developed two RFC 7575 & 7576. It gives us good foundation to form ANIMA WG. The problem we have now is actually TOO open and wide. If we could convergent on GENERIC problem across use case, interfaces, foundation functionalities, it would be the best. If we don't know what might be GENERIC for now, we may have to deeply study various use cases, then try to find the common among them.
>
> Regards,
>
> Sheng
>
>> -----Original Message-----
>> From: Jérôme François [mailto:jerome.francois@inria.fr]
>> Sent: Thursday, July 27, 2017 3:35 AM
>> To: Sheng Jiang; yanshen; idnet@ietf.org
>> Subject: Re: [Idnet] IETF99 for applying AI/ML into network management:
>> Follow-up
>>
>> Hi,
>>
>>> Of course, we would like to target a WG if we could. However, so far, we have
>> not converged at all. It seems there are full of possibilities to apply AI/ML in
>> networks. It seems everybody is talking about their own use cases. Until we
>> converged with one or two very specific use cases that are also generic and
>> significance, or we might find some fundamental functionalities that are
>> generically support various AI use cases, we may not have anything to
>> standardized. So far, we are still in the way to find these work items. So, let's
>> keep discussing use cases and fundamental functionalities. Hopefully, with
>> more discussion, we could reduce our scope to be more and more focus. Then
>> we may have concrete work items to form a WG.
>>>
>> I agree that before formally targeting a WG, we need something specific to be
>> address. I said "something" because it could be a use case where AI is applied,
>> a generic problem across use case, interfaces....
>>
>> But my little concern is that I would avoid that planned workshop would be
>> stricly limited to particular use cases, problems or architecture.
>> In my opinion, we have to take care of the two items (community building with
>> the workshop and scope refinement) in parallel but we could, of course, expect
>> that the workshop gives us some input to refine our target in the proper way.
>>
>> jerome


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From: yanshen <yanshen@huawei.com>
To: Simone Ferlin <simone@ferlin.io>
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From nobody Fri Jul 28 03:13:24 2017
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Subject: Re: [Idnet] Architecture and standard opportunities of IDN
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Hi,

Le 27/07/2017 =E0 02:45, Pedro Martinez-Julia a =E9crit :
> Dear Sheng,
>
> First of all, and considering my recent experience with the Network
> Slicing work, I think we have some aspects of our work that are probabl=
y
> essential for the IETF and network technology in general:
>
> - As you mention and all of us know well, we need to standardize the
>   data format, so it is a good opportunity to define some ontology and
>   the corresponding YANG model that structures such data.
Do you imagine kind of a transformation process in the architecture as
data to be used can come with pre-existing various data formats ?
> - We have also a good opportunity to define a "benchmarking framework"
>   that can be used with whatever dataset we can gather in the future in=

>   order to validate some approach. This would be a combination of YANG
>   model and work protocols (not network, but procedure protocols) that
>   would be required to ensure the results are universally valid and can=

>   be contrasted to other results. This is essential in any discipline,
>   as we can find in areas such as multimedia communications or computer=

>   vision, but the networking area does not have anything like it.
Fully agree, this is essential for comparing results. This is well
linked to datasets issues as well and in general with reproducible
experiments.
> - The definition of "wire protocols", interfaces, and the format of dat=
a
>   exchanged (also as YANG models) that are easily identified in the IDN=

>   architecture figure that I think all of us support to some extent.
>
> - Of course, the IDN reference architecture (but this has been deeply
>   discussed).
>
> As you can perceive, I am trying to be practical. This somehow contrast=
s
> with my typical views, which are normally quite abstract, but those wor=
k
> are quite obvious, are not defined elsewhere, and can be a good startin=
g
> point to form a WG in the future. For the moment, we can address such
> work through other RG/WG (e.g. NMRG) so we can begin the writing of som=
e
> drafts-of-drafts for IETF 100. If you are interested on doing it, pleas=
e
> let me know and we can define some schedule and some rough ToC for thos=
e
> documents. Thank you very much.
>
> Regards,
> Pedro
>
> On Wed, Jul 26, 2017 at 11:38:09AM +0000, Sheng Jiang wrote:
>> Hi, all,
>>
>> Please find the below figure that I shared in the IDN discussion meeti=
ng last week in Prague. This illustrates the IDN architecture in a very g=
eneric way. The on-site participants had the very similar understanding t=
hat the upper left box - the unified and selected data is should be the p=
rior work towards standardization. Also, the participants shared the same=
 opinion that the data structure may be various among use cases. So, we s=
hould keep discussing on use cases with the target to converge on one or =
two significant and specific use cases.
>> [cid:image001.png@01D30643.900DB7F0]
>>
>> Regards,
>>
>> Sheng
>
>
>> _______________________________________________
>> IDNET mailing list
>> IDNET@ietf.org
>> https://www.ietf.org/mailman/listinfo/idnet
>



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From: yanshen <yanshen@huawei.com>
To: =?iso-8859-1?Q?J=E9r=F4me_Fran=E7ois?= <jerome.francois@inria.fr>
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Hi Jerome,

> -----Original Message-----
> From: IDNET [mailto:idnet-bounces@ietf.org] On Behalf Of J=E9r?me Fran?oi=
s
> Sent: Friday, July 28, 2017 6:13 PM
> To: idnet@ietf.org
> Subject: Re: [Idnet] Architecture and standard opportunities of IDN
>=20
> Hi,
>=20
> Le 27/07/2017 =E0 02:45, Pedro Martinez-Julia a =E9crit :
> > Dear Sheng,
> >
> > First of all, and considering my recent experience with the Network
> > Slicing work, I think we have some aspects of our work that are
> > probably essential for the IETF and network technology in general:
> >
> > - As you mention and all of us know well, we need to standardize the
> >   data format, so it is a good opportunity to define some ontology and
> >   the corresponding YANG model that structures such data.
> Do you imagine kind of a transformation process in the architecture as da=
ta to be
> used can come with pre-existing various data formats ?

My two cents. I ever think about that. The proposed data format should be e=
asily "re-constructed" via existing data formats. The new attributes in the=
 new format should can be auto-filled. Like the transformation of "XML sche=
ma" to "YANG".

> > - We have also a good opportunity to define a "benchmarking framework"
> >   that can be used with whatever dataset we can gather in the future in
> >   order to validate some approach. This would be a combination of YANG
> >   model and work protocols (not network, but procedure protocols) that
> >   would be required to ensure the results are universally valid and can
> >   be contrasted to other results. This is essential in any discipline,
> >   as we can find in areas such as multimedia communications or computer
> >   vision, but the networking area does not have anything like it.
> Fully agree, this is essential for comparing results. This is well linked=
 to datasets
> issues as well and in general with reproducible experiments.
> > - The definition of "wire protocols", interfaces, and the format of dat=
a
> >   exchanged (also as YANG models) that are easily identified in the IDN
> >   architecture figure that I think all of us support to some extent.
> >
> > - Of course, the IDN reference architecture (but this has been deeply
> >   discussed).
> >
> > As you can perceive, I am trying to be practical. This somehow
> > contrasts with my typical views, which are normally quite abstract,
> > but those work are quite obvious, are not defined elsewhere, and can
> > be a good starting point to form a WG in the future. For the moment,
> > we can address such work through other RG/WG (e.g. NMRG) so we can
> > begin the writing of some drafts-of-drafts for IETF 100. If you are
> > interested on doing it, please let me know and we can define some
> > schedule and some rough ToC for those documents. Thank you very much.
> >
> > Regards,
> > Pedro
> >
> > On Wed, Jul 26, 2017 at 11:38:09AM +0000, Sheng Jiang wrote:
> >> Hi, all,
> >>
> >> Please find the below figure that I shared in the IDN discussion meeti=
ng last
> week in Prague. This illustrates the IDN architecture in a very generic w=
ay. The
> on-site participants had the very similar understanding that the upper le=
ft box -
> the unified and selected data is should be the prior work towards standar=
dization.
> Also, the participants shared the same opinion that the data structure ma=
y be
> various among use cases. So, we should keep discussing on use cases with =
the
> target to converge on one or two significant and specific use cases.
> >> [cid:image001.png@01D30643.900DB7F0]
> >>
> >> Regards,
> >>
> >> Sheng
> >
> >
> >> _______________________________________________
> >> IDNET mailing list
> >> IDNET@ietf.org
> >> https://www.ietf.org/mailman/listinfo/idnet
> >
>=20
>=20
> _______________________________________________
> IDNET mailing list
> IDNET@ietf.org
> https://www.ietf.org/mailman/listinfo/idnet


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From: yanshen <yanshen@huawei.com>
To: =?utf-8?B?6rmA66+87ISd?= <mskim16@etri.re.kr>, Pedro Martinez-Julia <pedro@nict.go.jp>
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