Extending AI to Enterprise Routing
Extending AI to Enterprise Routing
Extending AI to Enterprise Routing with Bob Friday & Kanika Atri | Juniper Networks
You’ll learn
Why Juniper is extending its AI Native platform to enterprise routing
How organizations can benefits from Juniper AIOPs in the WAN
A glimpse at Juniper’s long-term AI strategy
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Transcript
0:06 hello and welcome to extending AI to
0:09 Enterprise routing I'm Bob La liberte
0:11 principal analyst with the cube research
0:14 and today I'm joined by some special
0:15 guests Bob Friday the chief AI officer
0:17 in CTO Enterprise of Juniper Networks
0:20 and Kena Atri the senior director
0:22 product management also of Juniper
0:25 Networks and we're here to discuss the
0:27 latest announcements uh around Juniper's
0:29 introduction of native AI onto Edge
0:32 routers and that would include both
0:34 uniper missed routing assurance and
0:36 Marvis for routing so welcome Bob and
0:39 Kena thank you for having us happy to be
0:42 here Bob thank you yeah absolutely well
0:45 let's get started you know when I think
0:47 about Juniper Networks you know really
0:48 from its Inception decades ago it's
0:50 really been instrumental in driving
0:52 innovation in the routing market and you
0:54 know when we think about Innovation
0:56 today that really means AI technology
0:58 and certainly we follow Juniper for a
1:00 long time and you've been pioneering the
1:02 use of AI Ops through the in the network
1:04 space and in fact I think it was just a
1:07 few months ago You released the AI
1:08 native networking platform which
1:11 delivers both extensibility and value
1:13 across the entire network so you know
1:17 when I when I think about why that's
1:19 needed and what's going on from an
1:21 analyst perspective you know I really
1:22 start thinking about the changes that
1:24 have occurred in the modern it and
1:26 application environments and that being
1:28 you know they've become highly dynamic
1:30 and also highly distributed right
1:32 applications are deployed across
1:33 multiple data centers multiple public
1:35 clouds and numerous Edge locations and
1:39 the unfortunate part of this is it means
1:41 the environment has become far more
1:42 complex it also means that the network
1:45 plays a much more significant role
1:47 especially across those wide area
1:49 networks right and making sure that
1:51 these distributed environments are able
1:53 to have a positive experience and
1:55 they're able to enable the business but
1:58 before we jump into a full-on AI
2:01 discussion I thought it would be good if
2:03 we could provide some context for the
2:05 audience and I believe it was just a few
2:07 years ago that Juniper Networks
2:09 announced its client to Cloud Vision um
2:12 and it really focused on providing great
2:14 experiences to end users so I'm
2:17 wondering if you could share maybe you
2:20 know the vision behind that approach and
2:22 how Juniper brings that Vision to life
2:25 yeah you know Bob let me jump in here
2:27 you know for me personally you know the
2:29 cloud AI ADV Venture started when I was
2:31 really at Cisco you know I was talking
2:33 to a bunch of large retail customers you
2:36 know and what they told me when I was
2:37 back then they said hey Bob if if we're
2:39 going to put like a connected mobile
2:41 experience onto this network you know a
2:44 business critical app they're like you
2:46 got to promise me that your controllers
2:47 are not going to crash you got to make
2:49 sure you can deliver code more than once
2:52 or twice a year and more importantly
2:54 you've got to guarantee that there's
2:56 going to be a great mobile experience
2:57 when we connect to that Network you know
3:00 and that is when I realized there was a
3:01 fundamental Paradigm Shift right where
3:04 we were going yes we have to keep AP
3:06 switches and routers got to keep
3:07 everything up and running in green but
3:09 what was more important was we had to
3:11 make sure that that user is going to
3:13 have a great experience and that's when
3:15 I realize that we're really going into a
3:17 day two real-time operation mode in
3:20 addition to day zero day one we really
3:22 had to make sure that day2 experience
3:24 was going to be great you know and
3:26 that's when suj and I decided to leave
3:27 Cisco because we decided that this is
3:30 really going to be an architectural
3:31 change in the industry you know this
3:34 really required a blank sheet of paper
3:36 where we could start from scratch and
3:37 building a new microservices Cloud
3:40 architecture on which we could do
3:41 real-time data processing you know and
3:44 that is why we started with the access
3:46 point because we were trying to answer
3:48 the question of why is that user having
3:50 a poor internet experience and it turns
3:53 out that the access point or the edge of
3:55 the network has a lot of the data you
3:57 need to answer that question and the
3:59 reason we built an access point wasn't
4:01 because we thought the industry needed
4:03 another one it was really around making
4:05 sure we get the data to answering that
4:07 question you know and since join Juniper
4:09 in 2019 what you've seen us do we
4:12 basically have extended that cloud AI
4:14 Ops coverage across the Enterprise
4:17 portfolio right going from the AP to the
4:20 switch to the router you know what we're
4:22 talking about here today is extending
4:23 that across the WAN router inside the
4:25 Enterprise these are these large uh
4:28 routers we see in the Enterprise so that
4:30 is really where the vision started you
4:32 know I think the other inspiration was I
4:34 tell people you remember Watson playing
4:36 Jeopardy I figured hey guys if they can
4:38 play Jeopardy we should be able to play
4:40 networking so that's how the vision got
4:42 started you know since join Juniper
4:44 we're basically just a continuing that
4:46 adventure and extending that cloud AI
4:48 Ops across the complete Enterprise
4:51 portfolio and now extending across SP
4:53 and data center
4:55 domains excellent yeah that makes that
4:57 makes a lot of sense and Kena I wonder
5:00 if you could maybe talk to us a little
5:01 bit about the announcement that you have
5:03 today obviously we're extending those AI
5:06 C capabilities into Enterprise routing
5:08 so maybe you could give us a little of
5:09 the details about what you're bringing
5:11 out absolutely Bob it's a great uh
5:14 momentous occasion for us to launch
5:16 missed routing assurance and this is a
5:19 classic story of 1 + 1 equal to 11 we're
5:22 already number one uh in terms of
5:25 innovation leadership in the routing
5:26 space uh with very very loved platforms
5:30 like the MX like the PDX serving up the
5:33 edge um and then we're already number
5:35 one in the AI op space with mist you
5:38 know Trail blazing in every imaginable
5:41 gner magic quadrant that there is what
5:44 happens when you bring them together
5:46 magic right so that's what we are
5:48 launching today is missed Enterprise
5:51 routing Assurance which is targeted for
5:53 our Enterprise customers uh who are
5:56 buying a lot of the routing uh layer
5:58 from us serving in different use cases
6:00 whether it's the private one Edge
6:03 whether it's the edge of the data center
6:05 whether it's their Cloud connect or
6:07 appearing in all those roles now these
6:11 customers can hook up their mxs acxs
6:14 ptxs all are Juniper routing gear right
6:17 onto the Mist infrastructure and benefit
6:19 from
6:21 that yeah absolutely I think you know
6:23 extending support to that routing space
6:25 to the W it really seems like a natural
6:27 evolution of where you're going and the
6:30 vision of what you want to do and being
6:31 able to I think as Ramy likes to say you
6:34 know just adds to that flywheel effect
6:35 of value the more domains you can bring
6:37 in the more context you can provide the
6:39 more value it delivers to
6:42 organizations um I'm wondering um you
6:45 know how how will Wan data complement
6:49 now saying that how will that complement
6:51 your endtoend AI op strategy Bob yeah
6:54 you know so you look at a great example
6:56 of what we announced last week so last
6:58 new week we announced something called
6:59 continuous learning for zoom and teams
7:02 you know and similar to you look how
7:04 open AI took trillions of words to train
7:07 chat GPT to predict the next word you
7:10 know what we're doing with our deep
7:11 learning here we're taking billions of
7:14 video collaboration data points and
7:16 training these deep learning models now
7:18 to predict the actual user experience on
7:21 video collaboration zoom and teams you
7:23 know and we're combining that Zoom teams
7:25 data with network features right so the
7:28 more Network features we get into the
7:30 model the better we can get to the
7:32 granular root cause so what the WAN
7:34 network brings is really a visibility
7:36 into the the WAN component you know when
7:39 you look at that client to Cloud
7:41 experience there's a couple of key
7:43 components here right we have that
7:44 client side the wireless link the land
7:48 and that Wan provider is the other area
7:50 that can cause pain to our customers so
7:52 what the WAN is bringing to us now is
7:54 visibility into that W connection so we
7:56 can really make better predictions on a
7:58 user experience in get to the root cause
8:00 of exactly why they're having a poor
8:02 user
8:03 experience yeah I think that makes a lot
8:05 of sense and if I can don't mind the pun
8:06 you're demistifying what's happening in
8:09 that in that W environment and being
8:12 able to provide context for users
8:13 especially when they're using I I think
8:15 you know you can honestly say zoom and
8:16 those other video collaboration tools
8:18 are mission critical and these days when
8:20 people are working in a hybrid mode and
8:21 working remote they need to be up they
8:23 need to be delivering a positive
8:24 experience so I think all that makes a
8:26 lot of sense Nique I want to go back to
8:29 you you know why are you doing this now
8:33 what are some of the trends that you're
8:34 seeing in this Wan Edge space that
8:37 really require Enterprise routing
8:39 architectures to be
8:41 changed absolutely so uh if we focus on
8:45 this particular uh customer segment uh
8:48 representing the
8:50 Enterprises they number one they
8:53 themselves are going through uh their
8:54 own digitization Journey that started
8:57 almost you know a decade ago and now we
9:00 see that you know even doubling down on
9:02 it especially accelerated by this AI era
9:06 around us where the Enterprises want to
9:08 consume more and more AI applications so
9:11 on one hand you know this with this
9:13 Enterprise digitization the van Network
9:17 their van Edge becomes even more
9:20 important and it needs to be very high
9:23 performance right so that's part one
9:26 second um the Enterprise they are not in
9:30 the business of selling networks for
9:32 them the network is an enabler helping
9:35 them sell what they do right whether
9:37 it's a retail whether it's a healthc
9:39 care whether it's a education vertical
9:42 they're not in the business of making
9:43 money using networks so what they really
9:45 want is a network that just
9:48 works and it's even more important
9:52 because there is a talent shortage right
9:55 uh in order to run complex ipms based
9:58 networks uh there is a talent shortage
10:00 right so to do that they really are
10:04 heavily relying on automation to help
10:07 them uh basically not have to even worry
10:10 about the network right uh load it shut
10:13 it forget it and then it takes care of
10:15 itself right and that is where AI Ops
10:18 and automation really help them in their
10:21 journey and the third thing from an
10:23 Enterprise perspective right the
10:26 sustainability goals have become uh have
10:28 come on the Forefront now not only is it
10:31 about meeting ESG mandates but even in
10:34 terms of the whole uh network operations
10:37 and the total cost of running their
10:39 entire infrastructure they need to start
10:42 thinking about optimizing that power
10:45 that space that longevity and the whole
10:47 TCO related to
10:49 sustainability uh and in doing so you
10:52 know uh Juniper is actually working on
10:55 all these three missions of performance
10:57 automation sustainability to help
11:00 reimagine that W Edge
11:04 architecture yeah I think that makes a
11:06 lot of sense you know a lot of those
11:07 challenges you brought up we see as well
11:09 that you know difficulty finding skilled
11:11 resources um that ability to overcome
11:14 the complexity and so those are a lot of
11:16 the things that AI Ops is specifically
11:18 designed to help with so to be able to
11:21 have the same number of resources be
11:23 able to manage a much larger and much
11:25 more complex
11:27 environment um and it's also great the
11:30 fact the other thing I like up from my
11:31 product management days I always had
11:33 something I referred to is that
11:34 principle of least astonishment so as
11:36 you continue your flywheel effect and as
11:38 you extend your AI tools and your um
11:42 Marvis assistant across all of those it
11:44 becomes that principle of least
11:45 astonishment if you have to work in
11:47 different domains you're going to be
11:48 extremely comfortable and familiar with
11:50 the network management tools and the
11:51 assistance that are available to help
11:53 you do
11:54 that um one of the other things I wanted
11:57 to drill down into a little bit you know
11:58 some same lines of looking at the trends
12:00 and what's happening do you see any
12:03 specific organizations that will benefit
12:05 most from having this AI Ops in the WAN
12:08 or is it Universal across all of them
12:11 yeah I mean I think what we're seeing in
12:12 the Enterprise space right now is that
12:14 our large campus customers right you
12:16 know when you look at higher ed
12:18 Healthcare large financial institutions
12:21 all these institutions have large Wan
12:24 routers complex back call systems in
12:26 them you know if you look what's
12:28 happening in inside these big
12:29 organizations right all those
12:31 applications that used to run in the
12:33 data sign all those applications have
12:35 moved out to the cloud what this is
12:37 requiring is very complex R landan
12:39 routing U pipes or underlays overlays
12:42 and getting traffic between data centers
12:45 between campuses so big large Enterprise
12:48 campuses are biding from this I've
12:49 talked to one Enterprise uh customer you
12:52 know and what he just wanted to do is he
12:54 wanted to make sure that he was getting
12:55 the data from those W routers back to
12:57 the cloud you know so before you even
13:00 get to AI half the value is getting the
13:03 data you need back to the cloud for
13:05 visibility and observability and that by
13:08 itself brings value once you get that
13:09 data exposed to a larger group I would
13:12 say the other class of customers we're
13:13 seeing that see value in this is
13:15 probably our tier 2 service providers
13:18 msps which to some extent look like
13:20 large Enterprises you know and what
13:22 they're really looking for is turn
13:24 reduction right they're looking at user
13:26 experiences that making sure there's no
13:28 turn reduction so I think we see our
13:30 large Enterprise campus customers seeing
13:33 value and bringing the WAN data back to
13:35 their team zoom models and then on the
13:38 MSP service Rider side we're seeing our
13:40 tier two seeing value and helping them
13:42 deliver better user experiences and
13:44 reducing turn in their
13:46 business excellent no that that makes a
13:49 lot of sense and so for all those
13:51 industries that are looking to to get
13:53 these
13:54 capabilities I was wondering if you
13:56 could tell us a little bit more about
13:58 the specific capabilities that will be
14:01 offered through mist and are available
14:02 to the customers at the launch today so
14:05 capabilities which products it will
14:06 cover Etc sure uh so we're launching
14:10 with uh support for our largest uh
14:13 hottest sellers like MX 204
14:16 mx34 and the access routers in the ACX
14:20 family like ACX
14:22 7024 um all of these uh will now uh
14:26 customers can use them on this very
14:28 familiar mist Qi what the use case that
14:31 we will be supporting primarily is
14:33 around the observability and insights
14:35 like uh you know Bob already mentioned
14:38 uh from here we're going to take it uh
14:40 towards delivering service experience
14:43 level metrics and really being able to
14:45 pinpoint you know um where the customer
14:48 experience is breaking and why it is
14:50 breaking and from there of course you
14:52 know we're going to leverage all the
14:54 power uh of Marvis AI Ops to solve W
14:57 routing problems for for these
15:00 Enterprises got it and and how do you
15:03 expect some of these early deployments
15:05 what type of benefits do you expect
15:07 those organizations to achieve by
15:08 deploying this have you spoken to any of
15:10 your early adopters and and what they're
15:12 seeing absolutely great question so let
15:15 me actually step back and break it down
15:17 uh from sort of where AI starts making
15:20 sense in the WAN network right the very
15:23 first step is to be able to spot
15:25 anomalies right uh AI models will be
15:28 able to tell for example oh there is a
15:30 service degradation somewhere right and
15:33 then step two is you start correlating
15:36 and now ai tells you I correlated it and
15:39 I actually saw service degration not
15:41 just you know where you saw the alarm
15:42 but I saw it in four other places it's
15:44 affecting 20 customers and by the way
15:48 after correlation turns out that this is
15:50 related to a particular link uh that is
15:53 you know servicing then AI comes in and
15:57 does a Diagnostics again some models and
15:59 turns out well there was some software
16:01 upgrade that happened and the
16:03 configuration was changed and that's the
16:05 root cause for this service degradation
16:08 and then the last part is the actions
16:10 where it would recommend in this
16:12 scenario fix the config and here is the
16:14 few lines of code that you need to push
16:17 would you like me to do it or do you
16:19 want to do a human assisted action here
16:21 right so when you look at the whole end
16:23 to end life cycle of where AI plays a
16:26 role it's really about day two
16:27 operations help helping customers spot
16:31 problems much faster so reducing that
16:33 meantime to
16:35 know helping customers diagnose and find
16:39 the accurate root root cause much faster
16:42 and much higher degree of accuracy and
16:45 then actually taking actions to close
16:47 the loop and fix the problem and do it
16:49 in much faster than humans much
16:51 accurately and over the course of time
16:53 learn what what those problems are and
16:56 actually you know make this whole
16:59 seamless towards a self-driving Network
17:01 so that's what the benefits we are
17:03 hoping to deliver to our Enterprise
17:05 customers uh uh through the Miss
17:08 platform yeah I think that's great and
17:10 one of the things you mentioned I just
17:11 want to touch upon for everyone who's
17:13 watching the closed loop system that you
17:15 have enabled in your solution I think is
17:18 a great way to make sure that humans are
17:21 an integral part of the AI and
17:23 essentially as you're going through and
17:25 doing this right it gives you the
17:26 ability to say yes this was right no it
17:28 wasn't provid feedback be able to
17:30 improve the solution be able to leverage
17:32 the knowledge that you have of your
17:33 individual Network to provide feedback
17:35 back to Juniper so it's constantly
17:37 improving so that's just a little
17:39 takeaway that I've I've learned from
17:40 working with you over the time and I
17:42 think it's an important part for helping
17:43 to adopt AI in in a faster time frame so
17:48 that's wanted to switch gears a little
17:50 bit earlier we were talking about that
17:52 sustainability aspect and I've been to a
17:55 lot of shows this this spring clearly AI
17:58 comes up and when I say AI referring to
18:00 those gen AI environments right those
18:02 large language models and the one thing
18:03 that's really clear is it's going to
18:05 consume a ton of power and so you've
18:08 talked about what you can do so clearly
18:10 organizations you know there a lot of
18:12 these data center environments looking
18:13 at are we going to be limited by the
18:15 power we have so every little bit of
18:17 power that can be saved is going to be
18:18 important I wonder if you could focus a
18:20 little bit on how your helping those
18:23 organizations to free up power in their
18:26 data centers in your Edge router
18:28 environment absolutely I would say this
18:30 is one of the most important missions
18:32 where we are investing and byy
18:34 intentionally designing our products to
18:36 meet sustainability goals um let me
18:39 break it up into few Dimensions at the
18:42 very core of it you know the way we
18:44 design the Silicon uh itself it means uh
18:47 with every new generation we can make it
18:49 much much more power efficient for
18:51 example our latest silicon uh is 77% uh
18:55 better uh lower power consumption around
18:58 65 % you know lower space required as
19:01 you build modular or fixed platforms
19:04 around it right um so the Silicon has a
19:06 big role to play second part is the
19:08 design itself that's where the uh
19:11 platform and the form factor and the
19:14 footprint all of these can contribute
19:16 you know to again the total cost uh
19:18 savings and the overall energy
19:20 consumption the other part is designing
19:24 platforms for the long run we call this
19:26 longevity you don't want to be investing
19:28 in platforms that you have to rep
19:30 replace every six years or five years
19:32 right so at Juniper we are very proud
19:34 even of our uh long-standing MX platform
19:37 that is in some networks been there for
19:39 15 plus years um so you know for us
19:42 really building that two times the cost
19:45 Savings in terms of sustainable power
19:47 efficiency space efficiency and two
19:50 times the life cycle and then the third
19:53 dimension is at in the operation stage
19:56 right how automation can help deliver
19:58 these sustainability goals so there our
20:00 thought processes you know not only can
20:02 we help identify where the network not
20:05 being used for example some links at
20:07 night are not getting enough uh capacity
20:10 can we turn them down dynamically bring
20:12 them up uh back up in the morning um
20:16 similarly can we Route traffic to a more
20:19 cost efficient path so these are all
20:21 some uh Innovative angles that we are
20:24 approaching sustainability with both
20:26 starting from the core of the Silicon to
20:28 to the system design to the whole
20:30 operation uh planed with
20:33 automation excellent that's great I
20:36 really I it's it's really going to be
20:37 important moving forward that
20:39 organizations continue to strive to
20:40 drive that sustainability and reduce
20:42 their power consumption and look for
20:43 ways to drive additional efficiencies
20:45 clearly you're taking a lot of steps to
20:47 get organizations and help them get
20:49 there so as we think about wrapping up
20:52 here um let's talk a little bit more
20:55 about the long-term evolution of mist
20:57 and how Jun uner AI will really help
21:00 deliver that self-driving network from
21:02 an endtoend perspective so Bob maybe you
21:05 could maybe you could give all the
21:06 viewers your take on how you see Miss
21:09 continuing to evolve yeah I see a couple
21:11 of vectors here on where Miss is going
21:13 to be involving Cloud aops uh the first
21:15 is around gen Ai and llm right we all
21:18 saw what happened when chat GPT came to
21:20 Market 2021 2022 um I personally believe
21:25 and I believed it since we started miss
21:26 that conversational interfaces are going
21:28 to be the next user interface you know
21:31 for networking and for other verticals
21:33 so I think we're going to start to see
21:35 that technology start to evolve more
21:38 we're already starting to see do magical
21:39 things uh you know at Miss Marvis we
21:42 started with a 2018 with natural
21:45 language understanding you know what
21:46 chat G PT really brings is a voice to
21:48 Marvis now so we're going to see that
21:51 extend over time I think the other thing
21:53 what we're going to see is these deep
21:55 learning models what we're seeing with
21:56 zoom and teams you know the same
21:59 transformation we saw them do inside of
22:01 the language space you know we're
22:02 starting to see that in networking right
22:04 models that can actually accurately
22:06 predict a user's performance that's what
22:08 leads to actually be able to get to
22:10 predicting and get to cause the problems
22:13 so if I look forward in the future you
22:15 know natural language is going to be a
22:16 big part of it deep learning is going to
22:18 be the technology that starts to disrupt
22:21 the networking space and bring more
22:22 functionality into Marvis and
22:26 networking sounds like an exciting
22:28 future I'm looking forward to seeing how
22:30 it all all comes out listen that's all
22:33 the time we have for today so thank you
22:35 for watching extending AI to Enterprise
22:38 routing um on the cube research for more
22:41 information on Juniper's AI native
22:43 platform and routing Assurance Solutions
22:45 please visit the Juniper website
22:54 [Music]