The Next Wave: Using AI to Build Better Marketing Campaigns
As the
digital revolution keeps on turning, cutting-edge companies are looking to
artificial intelligence to spur the next wave of change. This specialized
technology holds great promise for those willing to employ it, but it also
comes with challenges. Consumers are familiar with AI in the form of Google’s
Alexa, Apple’s Siri or IBM’s Watson. Jordan Bitterman is the chief marketing
officer for The Weather Company, an IBM business. He recently spoke to
Catharine Hays, executive director of the Wharton Future of
Advertising Program, about
creativity and marketing in the realm of technology for a segment on the Marketing Matters radio show, which airs
on SiriusXM channel 111.
An edited transcript of the
conversation follows.
Catharine Hays: We like to say that marketers have some of the most
interesting backgrounds. Tell us about your journey to get to this role.
Jordan Bitterman: Mine has been a little nontraditional. I spent most
of my career at large advertising agencies. That part isn’t necessarily
nontraditional, but I did it as a media planner and media strategist. My job
was not to create the ads but to determine where the ads go. Most people who
follow a CMO track come from account management, which is the team that leads
all of the client relationships.
My past was through media, and I started at a
time when media was beginning to change in major ways. It was back in the time
when a media person simply had to understand an audience, a demographic such as
women or men, 18 to 34. But early in my career, understanding audiences started
to get far more dynamic and more sophisticated, and that was largely driven by
the advent of digital. It became harder to reach people, and it meant that
those of us who did media for a living had to become far more strategic
ourselves.
Digital media changed everything throughout
the advertising industry. I have found that being involved in these leading-edge
areas, whether it be web or mobile or social or content, really interested me
and helped me along in my career.
Hays: How did you get connected with The Weather Channel?
Bitterman: I joined Weather after the acquisition with IBM.
I’ve been here for a little less than a year. I had started thinking about,
what does the second half of my career look like? Is it on the agency side or
somewhere else? I really zeroed in on the publisher side. But I didn’t want to
just work for a publisher who was a content creator solely, I was really drawn
to the idea of weather, but more importantly the idea of AI and the Internet of
Things. I saw both of those areas incredibly burgeoning. They were areas that I
really wanted to focus on. The idea of data as a business, not just content as
a business, was something that really appealed to me.
Hays: Maybe you can give us a little background? I’ve
been calling it The Weather Channel, but it’s The Weather Company. Why did IBM
acquire The Weather Company?
Bitterman: It’s a confusing point that a lot of people mistake
from time to time. It requires a very simple explanation, which is that IBM
acquired The Weather Company inclusive of everything The Weather Company has
with the exception of the cable network that is The Weather Channel. They are
now a client of ours. We license them our meteorology, and that’s how they run
their cable network. But everything else — the app, the website, all of the
data — were purchased by IBM. The main reason for that is that weather is a
huge driver of business outcomes.
If you were to look at the earning statements
from companies across the board, weather is often a primary reason cited for
businesses not hitting their targets for a quarter. IBM, being in the business
of helping businesses make better decisions, drive outcomes, obviously saw that
as an opportunity. We’re not just forecasts. There’s an underlying platform
that fits as a foundation element. IBM is now investing heavily in IOT and
cognitive analytics. That was the reason why we were an attractive acquisition
for IBM.
Hays: Tremendous amount of data, tremendous impact on
businesses, and a tremendous predictive capability as well — those are three
really powerful reasons for gaining all of that wealth.
Bitterman: Absolutely. I’ll give you a couple of
statistics. These are things I did not know when I took this job, and they are
data points that I have put in front of our clients and customers. We do
roughly 25 billion forecast calls per day, and those originate from all sorts
of data sources around the world. We do around two to 2.2 billion on an average
day of location. Those 25 billion forecast calls are originating, pinging to
and from two billion locations a day. It makes us one of the largest IOT
platforms in the world.
Hays: In what regard is that IOT?
Bitterman: For instance, we do a lot of business with the
airline industry, so the data sources need to come from not just Chicago,
Illinois or Philadelphia. They need to come from towers and sensors and pings
all over the place in order to be able to realistically have a chance at
identifying whether they should put a plane in the air or if they should keep
it on the ground. There are sensors inside of the planes. There are sensors
throughout the United States. That is the Internet of Things at least in many
ways…. When we get down to it, the real mission-critical, bread-and butter
elements of IOT are what is sitting in elevators and airplanes and turbines.
Hays: Watson is The Weather Company’s new best friend.
Give us a brief history of Watson, which I think really has been this country’s
first interaction with artificial intelligence.
Bitterman: It’s almost a foregone conclusion that someone who
talks about Watson will start with talking about “Jeopardy!” It started as a
way of demonstrating whether it could work or not, and almost internally than
externally. It started as one natural language, QA, question and answer,
application program interface (API). Today, it is represented by a whole
diverse set of Watson’s services that span everything from language to speech
to vision, etc.
You may recall that Watson went on
“Jeopardy!” and won. It was the first time that we, as a technical society,
really started thinking in many ways that computing can get into more than just
binary. Watson is best understood by thinking about it through the three eras
of computing. The first was the tabulating era. Think about Imitation
Game, the movie about Alan Turing. It was essentially calculations. That’s
practically up to the 1950s. Punch cards, etc.
From there we went into the programming era,
and that was about using computers to help solve equations where we know what
the answers are, or we know generally where the answers are going to lie, but
we want to get there faster and more easily. When I think about the programing
era, I think about Excel. But you could pretty much think about any other piece
of software that we’ve used over the decades.
But now we’ve entered the cognitive era. What
separates the tabulating era and the programming era from the cognitive era is
that we can use structured and unstructured data. It’s not just zeroes and
ones. We can lean into unstructured data like video or audio or faces,
expressions. The idea that you and I could be sitting across a table from each
other and I can read and react to your expressions based on whether you think
I’m saying something smart or something kind of off. Computers can start to do
that now, and that’s really what Watson is trying to do. It’s trying to learn,
understand, reason and interact back. A definition of cognitive that I
particularly like is: Programming is where people program computers, but
cognitive is where computers program themselves. Certainly, with the aid of
people, but they can start to program themselves, and that’s when things get
super interesting.
Hays: That’s a really good distinction. Tell us about how
Watson has pervaded IBM. Help us to navigate how IBM is thinking and organizing
around it.
Bitterman: Obviously, IBM is a very big company with many
divisions that solve problems and challenges for clients across the world.
Watson is two things. It’s divisions within IBM, and it’s also offerings that
help drive some of the other divisions within IBM. The Watson content and IOT
platform is part of a broader Watson ecosystem, and that broader ecosystem
addresses health care, financial services, retail, education, legal. There is
development that goes on at Watson. There are teams of engineers and
technologists who are building out more aspects of the program. It launched in
one language, but it’s being trained in eight additional languages now
including German and Korean. It’s a diverse set of services that span language
and speech.
For our group specifically, we’re made up of
a few different parts of the business. We’re made up of an IOT platform. I
liken it a lot to the Romans and the aqueducts. There was water. We knew we
needed water. We had to get water from one place to another because without it
you couldn’t irrigate your fields, you couldn’t drink the water, you couldn’t
make wine. Once you built the aqueducts, all of a sudden water was set free and
could be used in so many places. That’s what we’re doing with the IOT platform
as it relates to data. How can we take data and make it more useful? Certainly,
there’s data that is useful all over the place right now; we’re not really
stretching for data in this world. But there’s so much more data, like the data
I’ve talked about before that come from elevators and airplanes, that we’re not
using enough of yet. That IOT platform is charged with that.
A large part of our business is The Weather
Company and being able to build solutions that might start with weather but
don’t end with weather. How do we enrich it with cognitive technology, and how
do we put that to use for our clients?
Hays: Watson also is getting into the business of
advertising. As if agencies and advertisers don’t have enough threats, here
comes artificial intelligence. Tell us how AI has impacted advertising
generally and what role IBM and Watson are playing in that field.
Bitterman: At IBM when we talk about AI, we don’t actually use
the term artificial intelligence. We use the term augmented intelligence. It
might sound like marketing spin, but words matter. When we think about
augmented intelligence, we don’t think about any of the solutions that we have
putting agencies or putting anyone out of business. We actually see it as
benefitting them. If we go back to the programming era, computers didn’t put
advertising agencies out of business. Computers spawned an entirely new way to
do advertising, both to display advertising but also to go about creating media
plans, etc.
We think about how AI needs to be put to use
in the advertising world. We started out with something we called Watsons Ads,
and it’s a creative tool in a lot of ways. You could think of it as one of the
world’s coolest rich media units, and you probably know rich media as just a
more robust kind of creative technology. When we launched Watson Ads just about
a year ago, we did so with the idea that much like Watson itself, which is all
about learning and understanding and reasoning and interacting, our ads would
be able to do the exact same thing. Picture an ad wherever you are, on a mobile
device or on a website. We’ve all seen the ads, and a lot of times we don’t
want to interact with the ads because we feel like they aren’t helpful to our
session on our mobile devices. They’re actually hurtful. They’re interruptive.
But in this case, we want them to be conversational. We want to bring value to
people. For instance, with Campbell’s, you are able to tell the ad what
ingredients you have in your home, and the Watson ad will give you a recipe
that you can make with those ingredients. What makes it cognitive is that the
ad can’t possibly know all the combinations that you’re going to ask. It
doesn’t know that you have leeks, curry and chicken. But it’s cognitive, so it
learns the kinds of things that are great combinations to put together. It
works by giving you a helpful result, and it gets smarter as it learns.
Hays: Is that voice activated?
Bitterman: Yeah, it doesn’t have to be. You can type into it.
But one of the really interesting aspects of cognitive technologies is that it
does have natural language recognition skills, so a lot of the clients that
we’ve worked with on Watson Ads have taken advantage of that API. Because why
not, why wouldn’t you want to give people that option?
Hays: Especially if you’re starting to cook. Your hands
are dirty and you don’t want to type. Voice interface makes a ton of sense in
many applications.
Bitterman: It does. We see that with Amazon with the Echo, and
we see it with Google with Home. Those are very much consumer applications. IBM
and Watson are not in the consumer business. The Weather Channel does have consumer
apps, but for the most part when we put Watson to work, even on our own
properties, we’re doing it with the idea that it’s a solution for enterprise
that we will take advantage of. In this case for Watson Ads, it’s a solution
that Campbell’s or GlaxoSmithKline or whomever can take advantage of to
interact with their customers.
Hays: You’re redefining what an advertisement is, which
is part of what we talk about all the time and why we called our book Beyond
Advertising, because it is creating value. It’s not the
typical ad. You’re not saying that it’s trying to come up with whether it’s red
or pink or yellow, whether it’s a bull or a chicken or something else. You’re
saying that it’s this interface, this interaction between the audience and the
brand where something good is happening for both.
Bitterman: We are not shying away. In fact, we are going to
have more products, more cognitive advertiser offerings that we’re going to be
launching in just about a month. But we started out with one that we thought
Watson Ads, the creative that I just described, would do a really good job of
emotionally connecting not only with the audiences that our clients are trying
to reach, but also our clients themselves. For them to understand this is where
the future of advertising is going. Watson Ads has been able to telegraph that
in a very meaningful way.
Hays: Are you finding advertisers generally hesitant or
excited about AI?
Bitterman: It varies, which I know is the worst answer to ever
get. It depends. The most innovative brands are leaning in very hard on Watson
Ads because they see it as an opportunity in exploring new technologies and
using our technology to engage audiences in new and breakthrough ways. But
building a Watson ad takes a little bit of time and a very considered approach.
If you have a marketing team of two and a lot of things that you’re trying to
accomplish, then you’ve just got to stay real focused on getting those things
done.
But if you’re a bigger brand — Campbell’s,
GlaxoSmithKline, Toyota and Unilever have all worked with us — they have higher
risk thresholds because they are open to trying things and experimenting. I
don’t mean to suggest that what we’re doing won’t work, but it certainly takes
a leap of faith. It’s not the first thing on your plan. Just like me as a
marketer, the first thing on my plan is the acquisition marketing. What is
going to drive revenue or drive traffic to our consumer properties? I need to
have bigger budgets and a bigger risk threshold to try to ride the crest of the
wave and do something new and different and move into the future of
advertising. The bigger clients understand that.
Hays: It’s almost riskier at this point not to start
jumping into the game, not to start understanding how it can be relevant for
your business and how it can enhance what you’re doing from a marketing
perspective. Do you think it’s too early for some companies, or do you think
everybody should at least try getting started in this field?
Bitterman: I’ve been in our business a long time, and I’ve got
the gray hairs to prove it, and I’ve had the good fortune to have lived through
the digital revolution and the mobile revolution and the social revolution. If
you think about all of those parts of our industry, those times of our industry
where we have seen so much change, we have arrived at a place now where all
three of those areas — digital, mobile, social — are all mature industries.
I do remember working with colleagues and
with clients when I was on the agency side who were either indifferent to those
areas or were sort of scared of those areas. Those areas have all become big
businesses with anywhere from two to five billion people on the planet consumed
by it. But if you think about AI, AI is going to consume the total population
of the planet. The reason why that’s true is because you don’t necessarily opt
into AI the way you opt into social when you create a Twitter account or a
Facebook account. You either opt into AI because you’re wearing a Fitbit or
you’re giving a company permission to use the data that’s coming out of your
dishwasher or it’s working with you in an ambient way. It’s changing the traffic
light grid in your city. Whether we know it or not, whether we opt in or not,
AI is touching all of us and will touch every person on the planet.
Hays: It’s what’s powering some of the most interesting
technologies. As you were saying before, you can’t have IOT without augmented
intelligence. In that regard, it truly is becoming pervasive. So how about the
risks, especially from an ambient perspective, something that you’re not opting
in but it is checking your biometrics as you’re walking past? What are the
risks that you are seeing and the responsibility that a company like IBM has?
Bitterman: Our company has an ethical and moral standard that
is unlike I’ve ever seen before. Some days in my job it actually frustrates me
a bit because the bar is so high in terms of what we can put out and what we
can’t. But even though the day to day can be frustrating on that particular
topic sometimes, it’s really best that we have big companies that think that
way.
Back during Mobile World Congress in the
spring, the
CEO of SoftBank had a slide up in his presentation, and
he said that there were 12 threats to civilization. One of them was AI. But he
said the only threat among the 12 that actually is an antidote to the other 11
is AI. AI can help solve those challenges. We do have to regulate, and I
believe that the government is behind in even thinking about this. Companies at
this point are self-regulating, and that’s a good thing. We’ve got a lot of
companies in our world that have great intentions and they’re on it. They might
not be on it all the way, but I know I can speak for IBM when I can say that we
are. But over time, we as a society have to think about these things. What are
the challenges that we want to solve for? And let’s make sure that while we’re
solving for some of those challenges we’re not creating new challenges in the
process.
Hays: Could you tell us about the Toyota
ad campaign and what you learned from it as we’re
at these early stages of augmented intelligence.
Bitterman: Sure. You can ask the ad pretty much any question
you want about the Prius. For instance, I wondered about the charging process.
I live in New York City and my garage doesn’t necessarily have access to
special charging docks. I asked it a series of questions in my own voice as to
how I need to charge, what kind of outlets I need to use, how long does a
charge take, how long does it last? All those answers came back, similar to
when we were talking about Campbell’s and the ingredients. But they get you to
a point where you feel more connected to the brand, to the specific model. As a
marketer, I know my job is to diminish the distance that exists between an
audience member, a customer and a sale. If I can find the way to diminish that
distance, to make that point A to B shorter, in this case get people to come in
and take a test drive, then I’ve done my job. That’s what Toyota Prius and
their Watson ad is all about.
I can’t speak to Toyota specifically because
that would be their right, it’s their data. But I can tell you in aggregate
when we look at the various Watson ads that we’ve created, a number of things
have happened. No. 1, we’re seeing one to two minutes of active engagement with
the ads on average. Some people spend a lot more time with it. But one to two
minutes with an ad is a lot of time. That exceeds digital industry time-spent
benchmarks.
We’re also revealing lots of interesting
product insights, like consumers tend to engage more deeply when they’re
submitting what we might call non-intuitive ingredients for a recipe
suggestion, or when they’re asking questions that are outside of the box of
what someone might normally engage in with an ad for a car manufacturer. Not
only do all those things they help an advertiser understand how the ad is
working, but it also could create lots of insights for how they might want to
revamp their product brochure or their social strategy. Because these are all
tells that couldn’t be had in any other way.
Hays: Speaking of humanizing these sorts of things, if
the Watson ad gets flummoxed and you have a question that it doesn’t know how
to answer, is there a human interface?
Bitterman: It’s all in how you architect the ad itself, but
the ad keeps working. It keeps trying to answer your question. It will ask you
to ask it in a different way. It will give you a suggestion. When we architect
the ads, we want to make sure that we’re deep-linking people into a very
specific experience based on what we’re hearing about them. You can think that
the technology that’s in a Watson ad could absolutely take someone deeper, that
you are basically closing the sale or taking someone further from engagement
into consideration, or from consideration into purchase. The goal is, how do we
get people and diminish that distance between where they are now and where they
need to be?
Hays: What do you see as the top three trends that we
should be looking out for in this space?
Bitterman: You mentioned before the issues around privacy and
security. All of us in this industry need to be thinking about that because if
we don’t, it’s going to be done for us. It will probably be done for us anyway,
but we should be building an ecosystem that is really right for the long term,
for what we want to build, not just for where we are right now.
I think we need to focus. Focusing is very
important. Right now, AI is very large and kind of like digital in itself. Back
in the day someone would ask, how much does a website cost? How much time does
it take to build a website? This goes back to the early to mid-1990s. Right now,
some of those same very broad questions are being asked to AI. Do I need AI?
How much does an AI ad cost? The goal here has to be to focus. We have to be
able to focus both as a provider of AI services, but also as marketers who are
out there trying to engage with us. We have to both sell more focus and we have
to buy more focus in order to get to where we need to go.
http://knowledge.wharton.upenn.edu/article/ibms-watson-future-ai/?utm_source=kw_newsletter&utm_medium=email&utm_campaign=2017-08-10
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