Bob Friday of Juniper Network on the AI w Maribel Lopez Podcast
What is an AI-Native Networking Platform?
Bob Friday discusses how AI is changing the networking landscape and the big ways your company can benefit from the latest advances, like an AI-Native Networking Platform.
You’ll learn
How recent changes in AI are impacting the networking industry
About AI for IT Operations (AIOps)
The benefits of an AI-Native Networking Platform
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Transcript
0:03 hello and welcome back to the podcast
0:06 I'm marabel Lopez and this is the AI
0:08 with Marbel Lopez podcast and today we
0:11 are joined here with Bob Friday who is
0:14 the chief AI officer and CTO of the
0:17 Enterprise for Juniper Networks hey Bob
0:19 how are you y doing great marille great
0:22 to be here and as I tell people I never
0:24 believe I end my career as a chiefa
0:26 officer but here we are you know Bob
0:29 I've seen you through a lot lot of
0:30 different iterations of the career and
0:31 it's always been something new and
0:33 exciting and it actually doesn't
0:34 surprise me at all that you're in AI
0:36 that you would have found that and that
0:37 it would have found you and that
0:39 probably leads us to our first question
0:42 and that's you know in in my opinion
0:44 you've been at the Forefront of working
0:46 with AI in the networking field for some
0:49 time uh and that used to be an AI always
0:52 spoke about was chips and everything was
0:53 about gpus and CPUs that maybe could act
0:56 like gpus but I thought maybe you could
0:58 spend a moment discussing in what you
1:00 believe has changed in the AI landscape
1:02 since you've been in it from a
1:04 networking standpoint maybe tell us for
1:07 example um what we couldn't do several
1:09 years ago that we can now do today or
1:11 how you see that whole thing
1:13 evolving yeah know you know for me
1:15 personally right you know I started my
1:16 career in the wireless space you know
1:18 and this whole Adventure really started
1:20 back at the during the Cisco Adventure
1:22 we were talking to some big customers
1:24 about putting some customer experiencing
1:27 on their Network and they basically told
1:29 sud he's like we're not putting anything
1:31 on this network until you can promise US
1:33 you know that things are not going to
1:35 crash you can give code to us faster and
1:37 more importantly you know you can
1:39 basically guarantee that the user is
1:40 going to have a great experience you
1:42 know and that's kind of where the change
1:44 started that paradigm shift from
1:46 managing Network elements to really
1:48 managing this in toin user experience
1:50 and that's where AI Ops actually got to
1:52 the thingss you know and what I've seen
1:54 has changed you know the 30 some years
1:56 I've been doing this um you know 30
1:58 years ago I did my Master's and actually
2:00 did it with the neural networks and you
2:03 know I you know so what I've seen
2:05 personally change as these neural
2:06 networks have gotten really big now that
2:09 they could do something interesting
2:10 right and and I think that's what we're
2:13 seeing with AIA you know it's really
2:14 this the next step in the evolution of
2:17 automation right and that is what is
2:19 changing and if you really look at the
2:20 Google data this interesting data point
2:22 you know when did this AI thing take off
2:25 if you look at Google it took off in
2:26 around
2:27 2014 that's when all the MLS searches
2:30 and if you look back in 2014 what really
2:32 came together was a combination of Open
2:36 Source right we saw all the libraries
2:38 come out that let us start to build
2:40 interesting AI things models got big
2:43 enough right that's kind of when all the
2:46 cloud got big enough where he had enough
2:48 compute and storage you know 30 years
2:51 ago I was shipping software on a Linux
2:53 Box
2:55 Bar yeah you know now I've got access to
2:58 AWS Google
3:00 you know there is no limit to Computing
3:02 the storage now it's just a a matter of
3:04 how much your how much your Amazon bill
3:05 is going to be at month so I would say
3:07 that is the big change I've seen over my
3:09 30 years is things have come together
3:12 now where you can actually build things
3:13 that we talked about 30 years ago thank
3:16 goodness and and I agree with you and
3:18 and cloud has been a big part of that so
3:21 what we see happening now is there's a
3:22 great deal of AI Marketing in the tech
3:24 space I mean it's everywhere basically
3:26 everyone is rolling out an AI enabled
3:28 product and it seems hard for Enterprise
3:32 buyers to understand and evaluate the
3:34 various Solutions because everybody says
3:36 they're doing AI so you've been in this
3:39 for a while and you have some
3:40 perspectives of what may be AI what may
3:42 not be AI but just from your perspective
3:45 what are some examples of functionality
3:47 or criteria that companies should be
3:49 looking for an AI
3:51 Solutions yeah so so this is another
3:53 funny story remember when I you know
3:55 when I talked to analysts like you they
3:56 were like hey Bob I we canot tell the
3:58 difference between your PowerPoint and
4:00 your competitor's PowerPoint from a
4:02 PowerPoint perspective it all looks the
4:04 same now I could tell you one of the
4:07 reasons and people ask me say you know
4:09 why did we decide you know why did suj
4:11 and I decide to build an access point
4:13 when we started Miss right it's not
4:16 because I thought the world needed
4:17 another wireless access point uh it's
4:21 because I really wanted to make sure I
4:22 could get the data I needed to answer
4:24 the question of why are you having a bad
4:28 internet experience
4:30 and so if you look at back to your other
4:32 question what's the difference between
4:33 now and you know 30 years ago 20 years
4:36 ago when I did
4:37 airspace one of the differen is the data
4:39 we're sending back right you know 20
4:41 years ago I was sending back data every
4:44 minute or two minutes back to a
4:46 controller synchronously you know one of
4:49 the Paradigm shifts here I missed now
4:50 I'm now sing data back on the user
4:53 asynchronous you know we're keeping
4:54 track of every user minute on the
4:56 network not the network element but the
4:58 user minute so I think that is one thing
5:01 when I talk to people about data making
5:03 sure you know does the vendor you have
5:05 the right data you need to answer the
5:07 question you're trying to answer I think
5:09 the other thing I've learned you know
5:11 and leaving Cisco to do miss was I knew
5:14 I had to build this real time Cloud
5:18 architecture you know that forced me to
5:20 you know okay I got to get a blank sheet
5:21 of paper uh but the other thing was
5:24 really about I had to organizationally
5:26 change making sure my data science team
5:28 could work with my customer support team
5:31 because when you move to This Cloud AI
5:34 model really the support team is a proxy
5:37 for your customers you know and what I
5:39 tell most customers of people you know
5:42 you should ask your vendor are they
5:43 actually using their own AI op solution
5:45 for their support team if they're not
5:48 they have not started the journey to
5:50 Cloud aops you know so the first step on
5:53 starting that journey is trying to make
5:55 your own support team happy because the
5:58 fewer support tickets that they see is
6:00 the fewer support tickets your customers
6:01 are sending you so that is the first
6:04 step on the journey to Cloud a
6:06 offs so let's just stop there for a
6:08 second because some people that are
6:11 listening to the podcast may have
6:12 varying levels of familiarity with the
6:15 term AI Ops could you define the term AI
6:18 Ops for the
6:19 audience yeah I mean so when I say AI
6:21 Ops usually what I talked about and I
6:24 agree with you people are confused
6:25 because really this is just the next
6:27 step in what they've been doing for 30
6:29 years right you know we've been
6:30 automating networks doing all a lot of
6:33 machine learning regression algorithms
6:35 we've been doing that for a long time
6:38 the fundamental difference that what
6:39 we're doing now is we're starting to
6:41 build solutions that have the cogon
6:44 reasoning skills of a human right we're
6:47 building solutions that can deploy and
6:50 operate networks on par with human it
6:52 domain experts and so the subtle
6:55 difference between the automation we're
6:57 doing now with deep learning versus
6:59 machine machine learning and when I say
7:01 deep learning these are actual models
7:03 that we train with tons of data this is
7:05 like that chat GPT thing right this is
7:09 you know where we're taking zoom and
7:10 teams data and building models that can
7:12 actually predict your user experience so
7:15 I think that is the subtle difference
7:16 when people try to understand the
7:17 difference
7:19 between ml machine learning and the
7:22 difference between these new deep
7:24 learning models and so when I say AI Ops
7:27 we're usually talking about some sort of
7:28 Deep where we're continuously learning
7:31 something about the network and these
7:33 tools that the IT department is going to
7:35 use they're almost like hiring a person
7:37 right you know you're bringing on this
7:39 virtual AI
7:41 assistant that doesn't do the same thing
7:43 every day in the old times we built
7:45 things that were very deterministic you
7:47 buil a model and it did it now we're
7:49 bringing on these AI assistants that
7:52 feel more like an a new intern you know
7:55 someone you have to learn to trust you
7:57 have to learn what they can and cannot
7:58 do and you got to trust they're going to
8:00 get better at what they're doing and
8:02 that's that continuous learning you know
8:04 that this AI assistant model is going to
8:06 learn your network and get better at
8:08 what it's doing well what I loved what
8:10 you just spoke about as well is also the
8:12 fact that it's the network connecting to
8:14 the app it's a full you know OSI stack
8:17 experience right so we're starting to
8:19 see that whole Loop come together which
8:22 I think the app was very disc connected
8:23 from that before so that's another good
8:25 piece of insight so one of the things
8:28 that we're seeing in the marketplace is
8:30 that companies are looking to have
8:32 strategic vendors to build platforms
8:34 that run the business so we have this uh
8:36 sort of pendulum where we go back and
8:38 forth between whether or not we want
8:39 lots of best breed whether or not we
8:41 want platforms it seems like we're in a
8:43 platform phase and I know that Juniper
8:47 Networks has specifically talked about
8:49 building something called an AI native
8:52 networking platform uh that's a lot of
8:55 words together AI native networking
8:56 platform but can you tell us what that
8:58 is and and what it means for
9:01 customers yeah you know the funny thing
9:03 is you know like when sui and I were at
9:05 Cisco you know we're trying to make this
9:06 decision right you know should we stay
9:08 you know do this at Cisco go off and
9:11 start a company and so when you say AI
9:14 native it's really like saying you would
9:16 need to start with a blank sheet of
9:17 paper right and what people don't fully
9:20 appreciate is you know if you're going
9:23 to build an AI native Foundation what we
9:26 realized is we really needed a blank
9:28 sheet of paper to build a new real-time
9:31 architecture right I knew I had to build
9:34 an architecture that could ingest data
9:36 real time and do something with that
9:38 data right that turns out and it also a
9:41 different software architecture right
9:44 you know when you go from kind of
9:46 building software on a Linux box to
9:49 building microservices in the cloud that
9:52 that by itself brings a ton of value to
9:54 customers right just getting data to the
9:56 cloud brings a lot more visibility and
9:58 observability
9:59 but it also brings a lot of
10:01 reliability right that's what's the
10:03 difference between a cloud environment
10:05 and a controller environment is that
10:07 software architecture those blast radius
10:09 get smarter so my location crashes it
10:12 doesn't affect my controller wireless
10:14 piece of the puzzle right so that is
10:17 kind of the thing I T think is different
10:19 when people say AI native um and I think
10:22 you actually look what's going on in the
10:24 marketplace right now I think it kind of
10:26 reflects where we are right now you know
10:29 how did Miss become a leader it was
10:31 basically that bet that there really was
10:34 an architectural change happening in the
10:35 industry right moving to Cloud AI Ops is
10:38 not something you're just going to pull
10:40 onto an existing framework you really
10:42 need to go down to that native
10:43 foundation and start from
10:48 scratch you know I agree that this is
10:50 something that's so important it's
10:52 almost like we're at the opportunity
10:54 with so many parts of this text stack to
10:56 just hit a refresh button and say okay
10:58 let's if we were going to do it from
11:00 today onward what would it look like and
11:02 I think that to me is what AI native
11:05 means just like Cloud native was sort of
11:07 the iteration before this you know now
11:08 we've got AI native so uh Insight
11:12 automation virtual assistance
11:14 conversational interfaces these are all
11:16 really hot topics in the AI space and
11:19 you have a product in the space called
11:21 Marvis um I love that name by the
11:24 way it's such a cool name uh can you
11:27 explain to the audience what Marvis is
11:29 is and how it's evolved since its
11:31 introduction yeah you know so Marvis is
11:34 basically a culation cumulation of all
11:38 the different attributes we've been
11:39 talking about here right you know so
11:42 conversational interface is one of those
11:44 attributes of next assistant and what I
11:46 tell people is if you look back over the
11:49 last 20 years we kind of moveed from CIS
11:53 to dashboards the next really next user
11:56 interface is really going to be these
11:58 natural langu anguage user interfaces to
12:01 really help people interact not just
12:03 with networking I think you're going to
12:04 see it across all the industry right
12:06 this is going to become the next big
12:08 thing and that's what chat gbt really
12:10 brought we always had kind of the
12:12 natural understanding piece what we
12:14 didn't have is a natural generation
12:16 piece right and that is what chat TPT is
12:19 really bringing that natural language
12:20 chat TPT that we actually can start
12:22 interacting you know with people and it
12:24 teams in a very more very much more
12:26 natural way I think the other thing
12:29 attribut to Marvis is this continuous
12:32 learning right and this is that piece of
12:34 you know hey we're moving from machine
12:35 learning and moving to this deep
12:38 learning automation where you're
12:40 continuously learning a network right
12:43 you're continuously building models
12:44 you're continuously adjusting Zoom data
12:47 teams data right so as the network
12:49 changes or something changes the models
12:51 are continuously adapting to what those
12:53 changes are you know so that's kind of
12:56 the Contin conversational inter phase
12:58 continu and finally there is the action
13:00 frame this action framework at the end
13:02 of the day you want to take all these
13:04 insights and turn it into some
13:05 recommendation or some action and I
13:07 think that's the industry change we're
13:09 seeing also is we're moving from that
13:11 SNMP Raw event world where we used to
13:14 send up thousands of events up to
13:17 something above us to where these
13:19 systems are now sending up more AI
13:21 relevant events right we're not setting
13:23 up raw events we're taking these raw
13:25 events from the network and actually
13:26 translating them into something that is
13:28 actionable so I think those are the
13:30 three main attributes of Marvis going
13:32 forward think conversational interface
13:34 think Marvis action framework and
13:37 continuous learning that is the new
13:39 piece that's disrupting everything okay
13:42 so in a way we can think of this is the
13:44 evolution of what we originally talked
13:47 about as self-driving
13:49 networks yeah I mean if you think about
13:51 self we're on that Journey right now and
13:54 the analysis I give to people you know
13:56 when it comes to Ai and uh I don't know
14:00 I suspect you're not a skeptic right I
14:01 would tell you the number of AI Skeptics
14:03 has gone down but I think what people
14:05 are seeing now you look at the healthc
14:07 care right you know I don't think I
14:10 think anybody who goes to their doctor
14:12 they're going to want to know that that
14:13 doctor is using the latest and greatest
14:16 AI for helping diagnose their disease
14:20 cancer right and we're seeing it with
14:22 cars right say we may not be a
14:24 self-driving cars but you're going to
14:25 want to know that that car has the
14:27 latest and greatest AI if you're going
14:29 to buy a car for your kid who's learning
14:31 Drive you're going to want to make sure
14:32 it has all the latest and greatest
14:34 safety so I think the same thing is
14:35 happened in a networking industry you
14:37 know when you connect to a network
14:39 you're going to want to know that it's
14:40 using the latest and greatest AI to make
14:42 sure that we have a great Zoom internet
14:45 experience makes total sense and like we
14:49 said earlier you know connecting it up
14:50 to the app and what you're trying to do
14:51 so we we've been talking about um
14:54 experience I know you and I talked about
14:56 experienced person atw working a while
14:58 ago and it seems like AI actually helps
15:01 us get one click deeper into that so so
15:04 we have Marvis now we've got Marva minis
15:06 I think that's actually quite cool too
15:08 so so so um when people hear marvous
15:12 minis you were just outling U outlining
15:15 the Marvis framework tell me where
15:16 marvus minis fits into that yeah so
15:19 Marvis we started I mean Marvis does a
15:21 great job when you have users on the
15:23 network trying to understand if they're
15:24 having a good experience or not right
15:27 you know and when I you know for those
15:29 who know me I make a barrel of wine
15:30 every year and it's like you know great
15:32 wine starts with great grapes great AI
15:34 starts with great data so the question
15:36 is what do you do when there's no one on
15:37 your network you know you need data
15:41 still have data to do any great AI so
15:43 Marvis minis is our answer to the
15:45 problem of day one networking how do we
15:48 make sure that network is going to work
15:50 before we turn it on how do we make sure
15:52 that network is ready to go at 8:00 in
15:54 the morning when all the users are going
15:55 to come on it so you think of minis as a
15:57 synthetic user user in the network that
16:00 Marvis can send around and gather up the
16:02 data needs to make sure that you're
16:04 going to have a great internet
16:05 connection on day one 8 o'clock whenever
16:08 you're ready to get on that Network so
16:10 that's Marva minis coming coming to the
16:13 market you know it's interesting because
16:15 um there's particularly as we think
16:17 about the AI landscape in general
16:20 there's been a lot of talk about digital
16:21 Twins and this is sort of the concept of
16:23 digital twinning for the network you
16:24 know trying to simulate something see
16:26 what happens I also like theide because
16:29 I think there's a great opportunity to
16:33 take synthetic data and test all
16:34 different kinds of things which is
16:36 basically exactly what you you said um
16:38 Marvis minis is going to do you help
16:40 people simulate or have a have a user
16:43 that simulates what the experience might
16:44 look like on a network before the
16:46 network goes live and you know we see
16:48 lots of opportunities in AI to have
16:51 either this type of experience or if you
16:53 don't have the data you need to actually
16:55 create synthetic data that you can run
16:56 with models to try to create the type of
16:58 model that you want to do so pretty
17:00 exciting work you guys are doing and I
17:02 think it's going to be really
17:03 interesting for uh people as they think
17:05 of Next Generation networks right
17:07 because it's it's a different animal
17:09 than what we've had in the past now we
17:12 say that the market is changing very
17:13 rapidly I know that you see the markets
17:15 changing very rapidly uh maybe you could
17:17 give us a bit of a look ahead you know
17:19 what are some of the things that Juniper
17:21 is looking forward to maybe it's topics
17:24 like AI Ops or other key topics you'd
17:27 like to address
17:29 yeah I mean back to the three attributes
17:30 of Marvis I think you're going see
17:32 conversational interfaces become that
17:35 standard interface going forward you
17:37 know I think it's a slow progression as
17:40 you know like it's hard to move people
17:42 off CLI we've been trying to get people
17:43 off CIS for 20 years so that's anline
17:46 interface will never die folks never die
17:49 but I think we're GNA see you know
17:51 natural language interfaces becoming
17:53 used for both public documents you know
17:56 trying to basically find out what's
17:57 going on you're going see become a u
18:00 even an alternative for business
18:02 intelligence right for exploring your
18:04 network data you know and you're going
18:06 to start to see that natur that
18:07 conversational interface become part of
18:09 your realtime troubleshooting experience
18:12 uh so you're going to see that evolve I
18:14 think what we're going to see evolve
18:15 even faster is this continuous learning
18:18 you know we saw what happened with chat
18:20 GPT when these models got big right you
18:23 kind of saw you know he we start to get
18:25 bigger and bigger models more data
18:26 training uh we we're going to start to
18:28 see that continuous learning part in
18:30 networking get more powerful just like
18:33 we saw with chat gbt and that all
18:35 results into more self-driving action
18:38 Frameworks networks that going forward
18:40 so that's where I see us heading
18:42 networking is that next step in the
18:44 evolution like I said before automation
18:46 right we're just gonna we're taking
18:47 automation to the next
18:50 level so I I love the way that you've
18:52 kind of Capstone some of the changes in
18:55 AI but if there's like one or two things
18:57 that you'd like to to close with it
18:58 you'd like to leave the audience
19:00 thinking about with AI what would it be
19:02 yeah you know when I try to summarize
19:04 more of us I usually try to remind them
19:05 you know like I said with the wine you
19:07 need to have the right data you know
19:09 that leads to the right response
19:12 recommendation and on top of that you
19:14 have to have an AI native infrastructure
19:16 secure
19:18 infrastructure makes perfect sense to me
19:20 we call those uh Righttime experiences
19:22 right information right person right
19:24 time on the right device so very similar
19:27 concept
19:28 now we usually like to leave the
19:30 audience with a new learning opportunity
19:32 and I know that you do a lot of learning
19:34 yourself as do I um is there a book a
19:36 podcast an activity that you'd like to
19:39 recommend to the audience could be Tech
19:41 related or not yeah it's you know so of
19:44 late I've been working on LM and uh I
19:46 met someone named alar antech right and
19:49 he had been working doing great work on
19:51 llm um and for networking type of things
19:54 and he's actually written a book called
19:56 machine learning for network and Cloud
19:58 engineers get ready for the era of
20:00 network automation so that's on my
20:02 latest reading list right now uh and it
20:04 kind of plays into that theme of next
20:06 generation of automation right awesome
20:11 well Bob thank you for your time and
20:12 attention and we always look forward to
20:14 hearing what you're building and what
20:15 you'll build next if anybody wants to
20:18 connect to you where can they reach out
20:21 yeah well you know AI op this is my
20:23 latest topic dear to my heart I would
20:25 just reach out to me on LinkedIn always
20:26 have to chop chat about AI Ops awesome
20:30 Bob Friday Juniper Networks Marbel Lopez
20:33 Lopez research thanks for listening
20:35 until next
20:38 time