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Many organizations want to get to autonomous networks, essentially networks that will take care
of themselves. Now, if we look at the networks of today, they haven't really
reached that level yet. They do typically have some level of automation and
some level of machine learning and some amount of AI, but there's
still a ways to go to reach autonomy. Now, the fact is IT networks, they
just generate an awful lot of data, more data than
humans can parse in real time. And that data, it moves places, it moves across domains and
in and out of network silos, which means the data is not always visible or accessible to us. And it
also inhibits our ability to transform network operations to keep up with the data and demands
and AI for networking can help with all this. But before I explain how, let's better understand the
problem that networks face today. And the first of those is signal
versus noise. So think about a network operation center on a busy day, there's screens
flashing and there's all sorts of alerts that are flying in. Now the
thing is most of those alerts will never be investigated. In fact they're just going to get
ignored. And why is that? Well, it's not because the teams don't care. It's because those
teams are drowning in noise. And most of those alerts that are actually
going to be false positive alerts anyway. And that really masks the real
issues that need urgent attention. And it just kind of leaves teams guessing which signals
actually matter. So that's one factor. Another factor to consider is data
volume and accessibility. Just the amount of data. All of this data that's coming in,
the velocity of it and the complexity of this telemetry data is overwhelming. There is just so
much of it. And much of that data is siloed data. It's all over the
place. And that makes it very difficult to get at different vendor and network domains where that
data is. And it makes cross-domain analysis pretty tricky to do. So that's the problem.
How can AI for networking actually help with this? Now look on this channel we try to make the point
that AI isn't magic. It's not some black box that fixes everything. So what we mean by AI
for networking is actually a combination of some form of AI added
in with some form of automation as well, and then adding on to that,
some form of analytics. That's really what we're talking about building. And the goal
here is that we will combine these things to create networks that can, to
some extent, actually understand what's going on within that network,
and then also decide what to do and then also
act on that decision and to do that on their own. And a good way to explain how
and where they do this is through the day zero and
day one and day two structure. So if we think about this
day zero that is planning and design. This is before you
even buy the gear. Now, in the context of day zero AI here, that
means optimizing network design to make smarter CapEx decisions. And in case you're wondering,
CapEx that's that just means capital expense. So one time purchases like routers and switches. So
what's happening here is the AI analyzes historical patterns and it builds designs
optimized for efficient operations. And if it works, instead of overbuilding everywhere you get
right sized performance and better CapEx efficiency. That's day zero now. Day one
that is build and deployment. So now you're deploying new services. You're configuring
devices, you're bringing new capacity online. And when it comes to day one AI here, I
can accelerate all of this through dynamic network optimization. And it does that by
validating configurations before they go into production, by optimizing service paths in real
time, and by learning from each deployment. When we get down to day two, that is
operations. Now this is where actually most of the AI work really happens.
And that includes high fidelity anomaly detection. And that uses
our old friend, agentic AI. Yes, I
got this many minutes into the video before mentioning agentic AI. That may be a personal
best. Now, agentic AI here. That means an AI that can reason about problems rather than just
flagging them in just data across all of those siloed domains and vendors that I mentioned
earlier. And it uses domain tuned models, which is AI specifically trained on network data
to find the real issues. So rather than just saying, here's an alert, something went wrong. What
this will actually do is give us a root cause of the problem. And
that root cause was derived through a chain of reasoning which bounds the model with network
guardrails. And agents do, of course, have agency. So once the root cause is
identified, the agentic AI can do something about it, which is to say it can trigger
remediation. And that remediation will use existing automation tools to try to
fix the problem. So where does all this lead? Well, most organizations do
start at day two and that's operations. And why
do they start at day two? Well, because that's where most of the everyday pain is. The tickets,
the outages, your 3 a.m. wake up calls. But get this, once Day two is working.
The AI starts feeding intelligence backwards. All of that operational data,
all those patterns of what actually breaks, well, that becomes training data for better day
zero planning and for better day one
building. The AI learns the networks specific behavior. Those capacity models that get smarter,
that right size performance gets more right sized. It's basically a continuous
feedback loop. Now remember the end game here? What we're trying to get is a
network that can kind of take care of itself, which we're calling network autonomy.
Now you can tell the network here what you want, let's say prioritize
network traffic or optimize for lowest latency, and this autonomous network will figure out
how. And it can be done with humans in the loop as well, so the
AI can handle some of the grunt work. The repetitiveness of all those similar tickets and
human teams can focus on the complex stuff, these strategic decisions. So look, AI for networking
isn't magic. It's pattern recognition at a scale that no human team alone could ever match. It
means networks that learn and adapt and resolve issues on their own. And in a world of siloed
data and false positive alerts, a system that can handle all of that well, it might be all the magic,
that we really need.
Ready to become a certified Developer - Robotic Process Automation? Register now and use code IBMTechYT20 for 20% off of your exam → https://ibm.biz/Bde3FS Learn more about Network Automation here → https://ibm.biz/Bde3Fv Learn more about Network Intelligence here → https://ibm.biz/Bde3FK 💻 Can networks truly take care of themselves? Martin Keen explains how Agentic AI transforms network operations by combining intelligent automation with reasoning. Learn how AI for networking reduces false positives, resolves complex issues, and builds smarter, self-healing systems. AI news moves fast. Sign up for a monthly newsletter for AI updates from IBM → https://ibm.biz/Bde3Fa #agenticai #automation #networking