
AI In Times of Crisis [Podcast]

Daisy Founder and CEO Gary Saarenvirta joins the Innovation Calling podcast to discuss how AI can help in times of crisis, and how companies can use data during the COVID-19 pandemic. This episode also covers what innovation means in the retail space, and how companies can make changes now that will set them up for a long term future.
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Innovation Calling Podcast Transcription
Erin:
All right, we've got another great episode of
innovation calling your way, but before we do, we've got
to address the giant elephant in the room, which I guess
is coronavirus and some things have changed. We're so
diligently promoting events for GLO, the Global Leaders
Organization, for our live podcast recording, and I'm sure
it comes to no surprise that we've had to do some
postponing, and some shifting. So, all of our live
podcasting events will be postponed. However, Syya I do
want to talk about what we're doing, which I think is so
unique and so fun for GLO.
Syya:
Yes. So, we've gone to a full digital platform.
Yes, GLO already had a digital presence for our global
audience, but now we're taking the local chapters and
digitizing that as well. So, when we are now hosting our
weekly events, we're going to actually have breakout
rooms, Erin. And so, there will be a Dallas, a dedicated
Dallas chapter room.
Erin:
Yeah, we have, in those weekly events, I mean,
we have an incredible lineup of speakers coming. You're
definitely gonna want to just head over to
innovationcalling.com as we announce these weekly, you're
going to be able to register. Typically, these events are
going to be closed to non-members. If you're a member or a
first-time guest you can come, but we're opening these to
everyone. However, with the, you know, insider meetings,
that Syya just mentioned, those will be for members only.
So, we know this is a time of stress for many of you, for
concern of many of, for many of you, and we really want to
help to bring a community together, provide great content,
help you to get the help you need right now, and that's
what the content is going to be for, and then specifically
in these breakout rooms. Syya anything else you want to
add?
Syya:
Yeah, I do really want to emphasize, you guys,
Global Leaders Organization is a business networking
organization, it's not just a meetup group, and now more
than ever, because we are all business owners and leaders,
and I'm certain all of us are going to have some
challenges with our business through coronavirus. We've
worked through this pandemic. We really need to be there
to support each other, and that's why we're really
emphasizing, you know, participate, um, you know, join in
the dialogue, you know, give Erin and me feedback of what
everyone needs, because I'm sure Dallas, even though we're
the Dallas chairs, I'm sure everyone else probably can get
the same feedback, and we can share that as well. So,
that's my two cents about Global Leaders Organization and
why we're so passionate about it.
Introducing Gary
Erin:
Yeah, so once again this is definitely
changing, not changing quickly, but we're moving at a much
faster pace than typical with, with weekly events. So,
head over to innovationcalling.com, we'll have those
posted there. You'll be able to register and that's going
to be the best kind of centralized place for this
information. So, all right. Speaking of coronavirus, and
speaking of changing, we had a great conversation with,
with Gary. Syya, who do we talk to in this particular
episode?
Syya:
Yes. So, I absolutely loved our conversation
with Gary Saarenvirta. He is the founder and CEO of Daisy
Intelligence, basically one of the most kick booty
companies that built AI platforms largely around the
retail and Aerospace Industries, really known for the
retail space. Gary is a preeminent authority on artificial
intelligence here in North America, over 25 years’
experience working with, you know, corporations, large
global to mid-tier enterprise, and has helped them reach
profitable growth. You know, all their delivery for
revenue targets, etcetera. So, he founded Daisy back in
2003. And I just got to tell you, Erin, I just loved his
insights on how he can leverage Corona, well, leverage
intelligence in the age of coronavirus pandemic.
Erin:
Yeah, I mean, how many, I mean, how many ways
can a company pivot? I mean, there's just you, you are in
dire, so many retail, I can't even get these words out,
but so many retailers are just, they're in a lot of
trouble right now, and, you know predicting, we joke about
toilet paper, but, I mean, I've never in all my life
walked into multiple grocery stores to see bare items, and
how do you predict that? And how do you ensure, there's a
shift now happening and an increase in sales, but what's
going to happen when people have 50 rolls of toilet paper
stocked up and now, they're not going to buy it for a
while? And, you know, these grocery stores are working off
very old, ancient data. So, you know, you got to innovate
to survive. It's more important than ever in the retail
industry, more important now more than ever too.
Syya:
Right. And as Gary pointed out, it's not just
this situation that's happening, it's going to be after
the fact. So, the most successful businesses are the ones
that are going to be able to pivot and adjust those, that
new data that has been unprecedented before to be
successful in the future. So, without further ado, welcome
to the show Mr. Gary Saarenvirta over at Daisy
Intelligence.
What Daisy Does
Erin:
Alright. So, Gary, Welcome to Innovation
Calling. We're so happy you're here.
Gary:
Thanks for having me, looking forward to this
chat.
Erin:
Well, we definitely are too. Before you jumped
on, Syya and I were doing, you know, a ton of talking
about this because, as we're recording this, is it, March
25th I believe it is. But we are all social distancing,
we're all recording this remotely because we are not
allowed to be in the same room together. And it's because
of the coronavirus, which I'm gonna have you just talk a
little bit about what Daisy intelligence does in just a
moment, but I feel like what you do is going to be more
important now than it ever has been. And we're going to
see, you know, things that I don't know if they were
predictable with AI, we'll talk about that just a moment,
but, I mean, just something that's happened that is just
like something that we've never seen in our lifetimes. So,
to kick it off, can you just give us a brief overview of
what Daisy intelligence does, and who you specifically
serve?
Gary:
So, for our retail solutions, we work for the
retail category managers and merchants. They're our users.
We help them execute processes and make decisions that are
beyond human ability. So, the idea of deciding what
products to promote every week. It's really the
combination of products that matters, and in the past what
we've learned is that customers don't buy products they
buy solutions. So, it's the combinations, if you're
promoting ground beef, that customer who's making an
Italian dinner will buy pasta, tomato sauce, bread,
cheese. If you're making hamburgers, you’re buying buns,
condiments, produce. Ground beef is a product where the
use case is large, nobody just eats raw ground beef.
Contrast that to a case of water, you don't need to have
another product, to purchase another product to use water,
so it has a small use case. And so, it's the combinations
that matter, and furthermore, you know, if you promote one
brand, if, you know, you promote Coca Cola, Pepsi sales
will go down, and vice versa. When it's on sale, people
stock up, lots of stocking up going on now, right? And so,
all those ripple effects are practically infinite, and if
you had, if you had 50,000 products as a brochure, and you
had to choose the best 2000 combinations to promote,
competent toric mass says 50,000 choose 2000, is 10 to the
power of 3600 possible combinations. And there's only 10
to the 80 molecules in the universe. So, this is really
beyond human ability is what I'm trying to illustrate, and
that’s where the technology can help, and then add on top
of that, what combination of prices should be charged?
Because the combination, pricing is the same issue, you
know, if you promote chips and discount chips, pop sales
will go up, even though pop is at full price because of
these product relationships. So, add price to that,
deciding what combination of prices to charge, and then
figuring out how much inventory to allocate, you know,
what's the forecast? how much should I put in every store?
Those are the three things that Daisy does, helps
retailers decide what combination of products to promote,
what combination of prices, both promotional and regular,
they should charge every day, and how much inventory, you
should allocate to the stores. Those are core three weekly
deliverables most clients plan weekly, and we just give
the answer. So, our vision is to take the human out of the
loop, let people do what people are really good at, and
let machines do what machines are really good at. And so,
that's what Daisy does, we deliver the answer, and we know
that the machine can do better than people. On average,
our clients see 3 to 5% total company growth using only
50% of our recommendations, because people are still in
the mix and kind of poking their fingers in where we
believe, in the long run, they shouldn't.
The Advantage to Using AI
Erin:
So, we're talking about ripple effects. We're
talking about, you know, we're seeing something and these
past few weeks’ grocery stores, bare, were joking about
the toilet paper, right? I mean, there's, so with your
analytics, and with any analytics and AI, we're using a
ton of data in order to be able to make those decisions.
How does something, like what has happened in, with the
whole coronavirus, how does that impact the business, and
is there an advantage or disadvantage to utilizing AI to
be able to make these decisions?
Gary:
I think it's a complete advantage to use AI.
Because again, it's beyond human ability. Especially in a
time there’s dynamic change, and, you know, lots of
change. So, you need to be able to monitor the changes.
So, the things that the Daisy AI system learns from our
clients’ point of sale receipts. It learns what's the halo
of every item. So, what are all the items bought with a
cheese block or bought with toilet paper. So, we know the
Halo, we know what the price elasticity is, if you
discount it, how much more is sold? We know what products
get cannibalized, if you buy brand A, what brands get
cannibalized. Or if you buy coffee, what does that
displace? you, and people don't buy, they buy less tea.
So, those are all the patterns the system looks at every
single day. And we can see the changes and those patterns.
And so, if you spot the changes and those patterns, then
you can take advantage that, and that'll help you stock
your shelves better, help you forecast demand better. Now,
in a black swan event, it's going to be a crapshoot
forecasting what's going to happen, but at least tracking
this very granular change right down to the every store
level, if you could respond more quickly on a daily or
weekly basis to have some inkling of what to do, that's a
huge advantage. Because this behavior is going to stop,
and it's gonna go back to something closer to norm, and
you want to be able to be on top of that and see when
that, you know, because the curve will flatten. We've been
talking about flattening the curve in healthcare, the
curve will flatten in retail too, and you want to be able
to see when that's about to happen, so you don't order 10
truckloads of toilet paper and be sit with five extra
truckloads for the next six months.
The Difference Between AI and Predictive Analytics
Syya:
So, if I can take one step back here. So, we're
looking at the historical data, if you will, of just the
trends that you've seen with, with particular items and
products. With Daisy, your application, your software does
is not just looking at historical data, it's actually
leveraging, and predicting, and anticipating, right? Cause
I want to make sure I understand the difference between,
you know, the talk about data analysis and analytics,
etcetera, and then artificial intelligence. I feel like
sometimes they get interchanged, and could you correct me
on that? Or verify?
Gary:
Sure. Yeah. I think the vast majority of what
people call AI is just statistical analysis. I'd say 99.9%
of when companies say AI, they mean statistics, only model
what you've seen in history. So, the downside of
statistics is you can only model what you've seen, you
could never do anything you've never done before, because
you have no, no data. It requires examples from the past.
So, to learn anything new, you have to go do something new
in the market, measure it, test it. So, learning happens
only at the pace of time. Right? And it's a model, it's
like, it's not, it's a one shot, you look at one pattern,
see if you can learn from that. It's not really scalable
to say does it model what happens to the business? And so,
what the difference between what Daisy does is we do what
the aerospace industry does. My background, I’m aerospace
engineer. And so, you know, when Neil Armstrong landed the
lunar lander on the moon, he didn't actually land it. He
just said this is what I want to do, and then the computer
figured out how to execute the flight instruction. So,
we’d, we’d say that’s, you know, autonomous flight
intelligence is the computer flying that lander, and then
the human is the pilot. So, it's human oversight of
autonomous machine intelligence. And so, in the same way,
and then in the case of the lunar lander, it’s the laws of
physics govern how the world works. And with the laws of
physics, you can say what will happen if I do this? even
though I've never done it before, because you have these
mathematical laws. In the same way, we've created
mathematical laws of retail, which are, encompass some of
the things I talked about, halo, cannibalization, pantry
loading, seasonality. You know, people buy different
things at Christmas than they do in the summer, price
elasticity, promotional elasticity, competitive effects.
Those are the fundamental truths in retail. Everybody
knows that. But we've assembled it into a set of
mathematical laws that are like the laws of physics. And
so, those laws are independent of the data, and I could
simulate what's gonna happen if I do something different.
And what we use the data for is to calculate the
properties. Like in the laws of physics, you'd say, what's
the force of gravity? You would measure that and plug it
into the laws of physics. You'd say, how heavy is the
Earth? you would plug that into the equations. So, from
the historical data we calculate the features like halo,
elasticity. We're just calculating these features and then
we plug them into the math. And now we can simulate, say
if you promoted this combination, what's going to happen?
If you charge this price, this set of prices, what's going
to happen? And we're modeling the whole company. So, with
AI, you could do what you've never done before. So,
because you can simulate, I can, I can learn faster than
the pace of time. I don't have to go do it the
marketplace, I can test it in the computer, I can do 100
million years of retail in one hour if I have enough
computing power, because my simulation allows me to
evaluate what's going to happen. Whereas predictive
analytics, you're doing only what you've seen before,
right? And with, the other difference is with, with
statistical analysis, there's no action tied to it, so you
build a model that says this customer is more likely to
buy Coca Cola with an 80% probability, but what do you do
with that? Does that say you're supposed to do something?
There's no decision wrapped in it. Whereas, within the
simulation, the decision is if I promote these products,
what's going to happen? Well, the decision is promote
those products. So, built into the AI is actually the
action to take. So, it's a fully autonomous system. So,
those are the differences. You could simulate faster than
the pace of time, you don't have to have historical
labeled examples to, to, to see what's happened before,
the decision is part of the system, it's completely
autonomous. And I'd say that’s what aerospace engineering
calls optimal control, you know. And the, then human is
the pilot, and then what do the detailed actions to take
is what the system does, that 10 to the 3600, which is,
you know, the computer figures out how to move all those
levers and the human says, I want to grow sales, I want to
build a flyer every week, I want to be the best baby
category and fresh, and I want to be lowest price in the
market. So, the human is the pilot, says this is what I
want to do, and the AI figures out what's the best way to
achieve that.
How AI is Leveraged by Daisy Clients
Syya:
So, I mean this sounds great. And if I'm a
Daisy customer right now, I'd imagine they'd have to have
some level of competitive edge right now over their
competitors. How are your customers and clients
leveraging, you know, Daisy's technology?
Gary:
Yeah, I mean we help our clients to answer
those three questions, what products to promote every
week, what prices, how much inventory to allocate, even
how to layout your stores. And so, customers that have
that intelligence, because their sales have grown, we've
been able to, on average, I said grow customer total
company sales by 3 to 5%, which if you're a billion dollar
company, that's 30 to 50 million dollars, If you're a 10
billion dollar company that's 300 to 500 million dollars.
So, massive gains. Grocery’s a 1% net margin business, so
a 3% sales increase doubles your net income. So, companies
who are getting 3% sales growth, that's coming from
somewhere, it's, it's not like, the food industry isn't
growing at 3 to 5%. It’s growing with, I mean, with
population growth, and inflation, but you're typically
stealing that from other customers. That means you're
doing better promotions; you're doing better pricing that
attracts more customers. So, yeah, it's a total advantage.
Customers who have this will, will grow faster, decline
less, they’ll be more competitively strong, and be part of
putting the customers who don't do this out of business.
Was Daisy Able to Predict COVID Shopping Trends? And COVID’s Effects on Retail
Erin:
So, I'm curious too. Were you able to look at
the, I mean, going back to what's been happening, you
know, the Black Swan, we'll call it, worldwide, you saw
the kind of movement, you it saw go from Asia, you know,
through Europe, and now we're dealing with the North, you
know, in North America, and of course it's like Australia
is just gone on shut down and stuff too. But were you able
to predict, like seeing what was happening throughout
Asia, like be able to help customers say okay, we see, you
know, A, B and C happening, we see people stocking up,
it's time to make sure bottles of water are stocked,
etcetera. Like were you, or price it a certain way, were
you able to help predict any of that or give any insight
into what was about to come?
Gary:
I mean the majority of our customers are in
North America, so it's been --
Erin:
Ok.
Gary:
And, right, we have a, we have one customer in
Europe and one customer in New Zealand. And, you, you
know, so it wasn't, it's not that I have, if I had a more
global market share and I was like everywhere, we probably
could have taken the learnings from one area to another.
Now, product purchase behaviors and different in different
parts of the world. Although, we know that toilet paper,
water, and all these staple items are being stocked up, so
certainly you could on an aggregate level see what's
happening across, across different retailers over time.
And our goal is to be the biggest AI company in the world.
I think over time we will be able to do that and have,
kind of, a surveillance capability to see what's happening
in some parts of the world and respond to that. And that's
a value add that we can offer as we get bigger and bigger.
Erin:
So, in the industry. You know, we talked a
little bit about this before I hit record and I want to
make sure we cover this too. This, I mean, you're talking
low margins. You're talking about, you know, retailers
have to innovate, or you're seeing them die, right? Like
they have to. So, in a situation like this where you're
seeing this huge peak of sales happening in the, like, how
can retailers manage to maneuver or shift in order to be
able to survive after things? Kind of, you know, we can
probably expect what goes up must come down, right?
Gary:
Yup.
Erin:
As we settle out, what can they do in this
situation to, to survive?
Gary:
Well, I think they need to, you know, on a very
granular level, track what's going on. So, what's
happening now is sales is going up, people are stocking
up, and, what we call pantry loading or forward buying,
and that's going to stop at some point, and then we'll
decline, and it'll drop below, all the sales will drop
below the pre-crisis levels. Because now people have
stocked up, and they're using their stock up supply, and
then it'll slowly start to return back towards the
pre-normal, but I think the post-normal is going to be
different than the, the pre-normal because of all the
people getting laid off. I think the product mix is going
to move to more basics and essentials. And the average
transaction size, the average basket, will get smaller
because people are being more economical. The transactions
will go up because you can eat at restaurants, there will
be more people buying food and stuff. But I think the
overall effect is that, that the increase of transactions
and the offset in the basket mix. And for some cases will
be less than the pre-norm. Now, if your business is
already struggling, and you don't come back to that norm,
that's an issue. And you need to be today, like we've seen
a lot of retailers start to pull their flyer in the short
term. They’re, they, they’ve like paused on the flyer and
promotions, and we think that's completely the wrong
strategy. A because you want to, you want to communicate
to your customers and make them feel safe. That's number
one. It's like, you know, in, in Canada 80% of households
read the flyer, in the U.S. its still a big number as
well, read the grocery flyer. And so, having customers see
the norm. That's great. It's an opportunity to communicate
to them. You need to then be offering discounts on basic
items, telling them, hey, this is where we're on top of
the supply chain, we're doing our best to stock up, we're
gonna limit your purchases, we're, and we're focused on
giving you discounts on these core items and we want to
help you. I think that kind of communication with
customers is super important, rather than stopping. When
you stop fliers, what does that mean? Are you charging
full price for everything? Is that, are you, are you're
not, maybe you're not. You need to tell people what you're
doing and communicate, because if you don't, customers
will go to the big discounters, and the guys who discount
a lot are going to win. Walmart's gonna win for sure. And
then, if you're a customer, and you're not paying
attention to how many transactions are happening as it
starts to return to the norm, you might have lost some of
your customers. So, you need to be fighting for your
customers right now, because otherwise those customers are
going to the discounters, going to the cheap deal, going
to where they get the merchandise. And so, it's a fight
for your life right now. Like everyone says, start early.
You should have social distanced early, you should be
fighting for your life right this second, and that means
communicating to your customers, giving them great deals,
telling them you support them, you value them, you want
them to keep coming. Because if you don't, the retailers
that do this, are gonna disproportionately win. And so, I
think that's where AI can help, is help fight that battle
now for those mid-market guys, and I feel, I feel for some
of those mid-market guys. I think, yeah, they're, they're
gonna really struggle. I think we'll see a raft of
bankruptcies and retail sales, especially outside of the
grocery industry for sure. I mean, we'll see lots of
apparel and other retailers, but I think you'll see a raft
of mid-market grocers going bankrupt in the next six to
nine months. I find, unfortunately feel that way, and I'm,
we're trying to convince our customers to follow some of
our advice. And, you know, it sounds self-serving, you
know, and this is what we do and we want them to keep
using us, but we're not the only one saying this. If you
read the McKinsey report that they published on what
grocers need to do to survive, you listen to some of the
pundits, the time to innovate is now. If you haven't done
it already, do it now and get on this.
Barriers in Implementing Daisy’s Technology
Syya:
So, you mentioned the SMB market space, right?
I think, I agree hundred percent of the big box retail
retailers, they probably have the infrastructure, they
have the resources, they probably have their own data
scientists internally that can augment whatever, you know,
with what Daisy’s, you know, offers. I feel like if I were
a small grocer, for example, and I have a very modest IT
budget, and I don't have necessarily the most robust data
science group or if anybody, for that matter, can Daisy
help those types of organizations. Is it, is there a
barrier of entry to even take advantage of this level of,
of data?
Gary:
Yeah, we want, so, I mean, we are going out
there to try to help mid-market retailers for a really low
price and say look, we're going to help you. We want to do
this, kind of, analyze the changing mix, try to forecast
what's going to happen, help them keep their customers,
and we're offering this, you know, we want to survive as a
business too. I mean, we're struggling, you know,
employees are working from home, some of our customers
have paused, and, you know, they're, they're concerned.
You know, so we're looking for ways to be creative, and we
want to add more value. So, customers who aren't, clients
aren’t ours today, we want to offer for, you know, 10 K to
do this analysis and deliver them daily, weekly trend
changes, and all these things that I talked about, so they
can help them survive. And then if we go all in and help
you today, then maybe on the back end of this you'll be
thankful and we can figure out how to work together in the
long run. So, we're seeing this as an investment in the
future. We want to go all in with our customers and new
prospects to help as many of them survive and succeed as
possible and give customers great choice in the future.
And we're here if anybody wants to take me up on that. I'm
more than happy to, you know, to help out anywhere. And
our, as, our orientation as a company, we just want to
help, you know. I mean, we, I find it sometimes
frustrating with our customers. We're trying to help them
do better and it's this huge change management struggle to
get the help, you know. We're not here to do anything
other than help them succeed, and make more money, you
know, which means service customers better, you know.
How Daisy’s Technology is Implemented in Businesses
Erin:
Yeah. So, it's actually an interesting
question. To implement AI, a lot of people probably are
very intimidated by it, you know. Are we, to the first, to
Syya’s first point, you know, are we big enough for AI?
Should it even apply to us? And secondly, like, are we
capable of actually implementing something of AI within
our company? What kind of manpower, what kind of systems,
does it take to be able to implement something in a, you
know, smaller business?
Gary:
I mean, we are a software as a service, so our
clients have to do nothing internally, except give us the
data and do some process change. You know, every retailer
today they promote, every, every retailer promotes, they
all charge prices, they all do inventory allocation. So,
we're just, instead of promoting milk, bread, and eggs,
we're saying do milk, cheese, and pop this week and next
week. You know, we're just giving them what they already
have. They have a list of 100 items, we're giving them a
list with a, with a different 100 items, so they can
simply execute what, what they're, what they're, you know,
they can do it already. We have all the, the systems, so
they don't have to buy any systems, we just need to get
their transaction log receipts, the, every single receipt
on e-commerce and bricks and mortar. Our smallest customer
has four stores. And is, you know, is like a $60 million a
year business. We could do this for one store business,
right? I say, if, if 1% of sales is a compelling number to
you, you know, the cost of what we do at the low end could
be 100 grand a year at the low end to do for a small
retailer. And in the short term, we're willing to help
anybody for, as I said, you know, 10 K onetime fee. Let's
get your data and see if we can help you take advantage of
this. And we're up and running in, you know, within, this,
this onetime analysis, we'd be delivering in a week, give
you answers in a week. We can just load the data into our
system. And for, for bigger permanent let's, let's help
you optimize flyer, and price, and promotions, and all of
that, that would take, you know, a month to two months to
get set up. And then start to deliver in a really big way.
But in the short term we could be up and running and
helping somebody in a week.
Syya:
And that was gonna be my next question is, is
how quickly can you ramp up? Because, I mean, Erin, Erin
has been part of, like, you know, AI type projects. And
it's been frustrating to her because of the level
investment and time it takes. So, is there a, you say a
week that you could roll this out, where you start looking
at data and analyzing. If I am a retailer, again I'll say
grocers small, smaller, I'll say 4 stores, like your
example that you've given, and I don't necessarily have a
robust infrastructure, I mean, it is like spreadsheets
upon spreadsheets of just who knows what's in there, is it
that simple? Or do you need a little bit more organized
data in order to process?
Gary:
Well, I think --
Erin:
Can I add to that question?
Gary:
Sure.
Erin:
Not even organized data, but like organized
people too, like.
Gary:
Yeah, the human, the human part of it is really
difficult, but most retailers, if you have an electronic
point of sale, so you have electronic cash registers, they
capture data. Most companies centralize that data because
they do financial reporting. So, that's the core data that
we start with, and then, you know, we capture their
product master, so the description of this barcode equals
this product. So, that data can be sometimes a mess in
small retailers, but we know how to deal with that. And in
this short term up and running in a week, you don't need
to make everything perfect. The goal is to, that we can
start to help them quickly. In the months to two months to
get up and running, we fix all of the gaps in their data.
And, you know, the big challenge is people, but I would
say that the answer, if it's taking you months and years
to build an AI system it’s not because it's not AI. If
you'd need to bring 100 people in and build something from
scratch, how the heck is that AI? We're bringing in a
robot that's already built. It's in a computer software.
I’m not building that, it exists, it's a product. I don't
drop 50 consultants. I don't have consultants, and my
employees, they’re not like building stuff on the fly,
it's built. And so, we just pump data into our system and
the week is how long it takes to get the data from you, to
me, us to run it through our computer systems, and then
look at it, make sure there's nothing insane in the way we
loaded it, and then it's like, after that it's just keep
feeding it data and it keeps spitting out answers. That's
because it's a productized AI, optimal control and
reinforcement learning is what we do. The rest of them are
really statistical systems that bring data scientists
sitting at a laptop. When it's 10 to the 3600, you can't
have a million analysts sitting at a laptop figuring out
what to do. It's, it's a ludicrous, I find it completely
delusional the current view on what AI is, because it’s,
they haven't figured out yet that it doesn't work. I kind
of had this epiphany 25 years ago, because I've been
playing with this tech for 25 years. 25 years ago, as I'm
playing with neural nets and machine learning, all these
people are playing with today, and I realized in about two
or three years playing with it, it doesn't really work. I
think the whole world is having the learning moment I had
20 years ago just by accident very luckily, and I've kind
of moved away from that into what we, this aerospace stuff
that I talked about.
Is Moore’s Law Dead?
Erin:
So, we're looking at the keynote computational
data as it's being analyzed, you know, we're talking about
Moore's Law right? our comp, our ability to compute just
pure raw data has, I mean, I have heard arguments that
people tell me Moore's law is dead, that we can no longer
see that level of doubling performance every 18 months, do
you agree or disagree with that?
Gary:
It’s flattened out for sure. I mean, there's
laws of physics limits, but I mean, I mean, so when I was
an undergrad in the 1980s, you know, the computer power I
had then compared to now it's been, it's astronomically
different. Even when I founded Daisy in 2003, the computer
equipment I own today would’ve cost like $2 billion in
2003. The amount of computing we do today is astronomical
compared to what I used to do in the 80s. I used to drive
around, parallel computing for me in the 80s was, I had
three IBM X 86’s, like the very first ones. And one at my
lab, one at my house, one at one of my buddies’ house. I'd
be driving my car from computer to computer to run stuff.
It would run for like days, weeks, months, right? And
today on my phone, I can do on my phone what I used to do
with like supercomputers at the University of Toronto in
the 1980s. So, although Moore's law has flattened out,
we've also learned how to use GPUs and FPGAs, new hardware
architectures that speed things up. But it's a big compute
world, there's enough computing to do the computing that I
talked about. And we, the computing we do today, you know,
we don't have a gigantic GPU infrastructure, and when we
scale and get more and more, you know, I think there's no
limits. It's not a big data world. This, this hype of big
data is completely misguided.
Misconceptions About AI
Erin:
Can we talk more about the hype of, and the
misconceptions of big data AI? What about jobs? So, a lot
of people are probably freaking out. How dare you, you
come in and you take this technology, and all these great
people who would have been doing all that work before are
now unemployed. Can you talk about that misconception?
Gary:
Yeah, sure. I don't think people will be
unemployed. Like I said, it's, the humans the pilot,
right? And so, we're elevating the human being to play a
more significant role. I think that the job of deciding
what to promote every week, and what the price week after
week after week, you got to pick. Okay, I’m the meat
manager, what's going in, what's going in the promotion
this week? Oh my god, I’ll do sirloin tips and roast beef.
What am I doing next week? Oh my god, week after week
after week, with really little knowledge of what's going
to work or not work, except that I know if I sell this at
a buck, I know I'll sell 1000 pounds of it, but that's it.
It doesn't mean that the business is going to do well or
not well. That's so difficult. Now, if we elevate the
person to say, my goal is, these are my objectives, these
are my goals, this is my strategy, and then the AI figures
out the details, I think that elevates the role of the
human. It lets the human be the, be the pilot, and
elevates them. Now, in, in some, in retail, there's a lot
of manual data entry. Unfortunately, some of that will be
replaced, because retails been kind of laggard. All the
planning is done by people entering thousands of lines
into spreadsheets, and unfortunately that will go away.
You know, and other industries will have less, kind of,
human displacement. But it's not the AI, I think part of
it is just that it, retail has been laggard in
implementing automation, and, you know, data, automating
data entry could have been done decades ago. It's just
that the retail hasn't invested in that. And for you to
survive, if your priority is to survive as a business,
then I think you need to, need to look at this technology.
And some people will be displaced, but what that allows
you to do is be more profitable. And when you're more
profitable, you can lower your prices, as smart retailers
don't bank that money, they lower their prices to stay
competitive. That means the cost of living for consumers
goes down for you and me. My real mission at Daisy is to
lower the cost of living for humanity and reduce poverty.
Because if we make retailers smart and be efficient,
prices will go down. If we help insurance companies, we
work in insurance as well, if we help eliminate fraud and
set the right prices, the cost of insurance will go down.
Cost of banking, cost of health care. If we lower the cost
of everything by using Intelligent Systems, then the cost
of living goes down for all of us. That's the game stakes
for AI, and that's what we should be focused on. That's
what we're trying to do with our customers.
Erin:
Can I be evil and nefarious? And say like –
Gary:
Sure.
Syya:
I understand what you're saying, but wouldn't
it be as, if I were a CEO beholden to the stocks, you
know, price and all that good stuff, If I can just
increase my profitability, and not necessarily transfer it
to lower pricing, wouldn't that be something that most
people that are of that mindset do to just make more
money?
Gary:
No, you’ll lose, you’ll lose market share. I
mean, look at what Walmart, Walmart is a super smart
company. Every five years they go we're reducing prices
15%, right? It’s a race to the bottom in price in retail,
and the way to do that is to get efficient. And because
low, lower pricing, it creates a perception with consumers
that you'll track more market share. So, if you don't
lower your prices and stay competitive to the market,
unless you're a very specialty boutique offering, if
you're a general kind of grocer or retailer, you need to
stay price competitive, otherwise you'll lose market
share. So, you can, and I think if most retailers are very
afraid to increase prices, they're like, they err on the
side of being way less price, which is why margins are
less than 1%. So, the smart CEO is not going to bank the
money, they're gonna invest in innovation and price. And I
think, I think that's the way to the future, invest more
in innovation in the short term, so you can do more of
what we've been talking about here today.
How Daisy Can Help Companies Innovate
Syya:
Are there any other things, you know, you talk
about, about, like being able to, I can't remember the
term you use and I'm sorry, but like, I know if you put
chips on sale soda is gonna increase. You talked about
that, being able to predict certain times of year. Are
there any other things you can help companies with, based
on the data that you serve, that can be bucketed under
innovation? I think a lot of times companies say what does
that mean? And the word innovation is just thrown out, you
got to innovate. Well, what exactly does that mean? and
how, again, your company by serving the data, how can they
help do that outside of what we are doing?
Gary:
That's executing all the processes you execute
efficiently. So, in store, how should you lay out your
products on the shelves? So, you put product in the front
page of your flyer, on the front landing page of your
website. What goes on the end caps in your store? What
goes in the middle aisles? For how, to what height, which
shelf do you put it on? You put on the top shelf, the
middle shelf, the bottom shelf? So, how to layout the
stores. What's the assortment? How many brands should you
have in every category? All those decisions. How much
labor should you have on the, on the, in the store. Maybe
you should make less price changes. One of our, one of our
prospects said, you know, I spent $5 million labor a year
changing those little price tags, sticky tags on the
shelves. And they said, if you can reduce the price,
number of price changes I do to save me two and a half
million labor, I'll split the money with you, right? And
so, what we do can also optimize labor and store. How to
layout the store, how much labor should you have, how much
sales people you should have, when in the store, when does
the traffic ebb and flow, where should you put your
stores, you know, close to the population. The whole value
chain around running retail, around all these core
processes, you know, supply chain, you know, how much
inventory should you have on hand, what's your safety
stock, when should you replenish, should you replenish at
10 units, five units, or 20 units. You know, all of these
kinds of decisions are all optimization decisions, and
that's what AI does and what our system does, because we
have the laws of retail, we would use the same mathematics
for every one of those problems. And that's a benefit of
having a system, like an autonomous AI system like I
described, because if you're doing statistical modeling,
you have a different statistical model for every problem,
who’s to say they're not working at odds with each other.
Vendor A and vendor B are building two different models
that are actually cannibalizing each other, and the net
effect is zero. That's what I feel the effects of
statistics is. The current branch brand of AI has this net
effect of zero, because nobody takes into account the
interaction effects between supply chain and this. For
example, if I price pizza, frozen pizzas at a buck 99, I
might sell more units than I have refrigerator space for
the store. So, shouldn't I take into account refrigerator
space? How can I do space planning without knowing the,
the price I'm going to charge? How should I know what
price to charge if I don't know how much space I have?
What if the pizza manufacturer can only make 5000 units a
week, and I think of putting a price that sells 10,000?
Well, I need to know my supply chain’s ability to meet it
to me. How long does it take the pizza maker to get the
pizza from his factory to my store? Right? Like all of
that needs to be considered and needs to be done with one
central brain. Our vision is to have the central brain to
make these really complex, these million moving parts
decisions, and let the business decide the strategy. Like,
what's my branding, what am I best at, etcetera, etcetera.
You know, that's the role of a human.
The False Positive Issue: Why Predictive Analytics Doesn’t Work
Erin:
So, you've articulated that there are other,
maybe competitors, that are arguing 95% accuracy in AI.
Are you, is this part of what you are talking to, or
alluding to? That it's, 95% accuracy is not as impressive
as you would think?
Gary:
yeah, I mean, if I do the simple math, like,
when you're predicting things, you're predicting rare
events. Anything worth predicting is a rare event. Like if
you live in, if you live in the UK, you will, you take an
umbrella every day because it's going to rain 30% of the
time. If it rained 1% of the time, you'd want to go I want
to predict the weather, because I want to decide should I
bother to carry an umbrella or not. So, anything that's a
rare event, you want to predict. So, like a 1%, I'll do,
I’ll do 90% and 1% just for easy math. So, let's say
you're trying to predict the, out of, out of a million
transactions, you want to know how many transactions are
going to have, I’ll use Coca Cola again, a caffeine free
vanilla flavored coke. Let's say 1% of a million
transactions has that, 10,000 transactions will have the
vanilla flavored coke. And you want to build a predictive
model that says, you know, with 90% accuracy, let's see if
I can predict which transactions are going to have the
coke, because I want to give them a special offer that'll
make more money, let's say that's an example. So, 90%
accuracy means on the 10,000, you got 9000 out of the
10,000 right. Awesome, right? But you got 10% of the
999,000 wrong, right? The 990,000 left over, you know, of
the million transactions, 10% wrong, you got 99,000 wrong.
So, you got 9000 right, 1000 wrong out of the 10,000, and
99,000 wrong out of the, the big group. So, it, actually
your 90% model is less than 10% accurate, because you got
this false positive issue, right? and that's the issue. If
false positives cost nothing, like you want to carpet bomb
the world with emails, there's no, there's no negative,
there's some customer negative impact, but there's no cost
of doing this, it’s inexpensive to send, send emails, then
you can go do, that that false positive rates no issue.
But if a false positive rate is has a cost to it, like
you, you, like in the case of medicine, you know, if you
diagnose somebody with a false positive and you put them
through all this medical testing, or you do fraud
detection and you have to spend money investigating that
prediction, and rare events is a huge issue. Lookup false
positive breaking events for autonomous cars, you'll find
a whole bunch of videos of cars just randomly breaking,
and the car manufacturers have turned those braking
systems nearly off. I've seen videos of two cars driving
60 miles an hour, one pulls over and there's a parked car
in front. You know, it was a test, the cardboard car, and
the car behind drives right through without even touching
the brakes, because of false positive issue. If you're
using statistics to decide when to hit a break, you know,
like emergency braking is less than, it’s a 0.01% event.
So, using predictive analytics is completely the wrong
problem. Nobody talks about that; it slays my mind how
nobody talks about the false positive issue. In, in, in
any, and everything is a rare event. Anything worth
predicting is a rare event. Otherwise you just carry your
umbrella with you every day. And nobody talks, I like, do
they not know? Or do they know and they don't want to tell
us? Like either one of those scares the hell out of me, I
don't, I don't get it.
Will COVID Bring About Further Innovation?
Syya:
That’s absolutely fascinating because you
think, you would think that in an industry, again, I'm
picking on retail, when the razor thin margins are so
razor thin that there is no room for error, I'm shocked
right now that you're, you're even telling me this. But
I'm not surprised at the same time, because retail does
tend to lag behind technology. So, what would it, do you
think, do you believe this whole coronavirus pandemic, do
you think this is going to be that, you know, straw that
broke the camel's back for this entire industry to become
much more than, you know, embracing of technology?
Gary:
I wish I could see yes. I mean, I don't know. I
hope so, because I think that would be a boom for
businesses like us, it would help us, it would help them,
you know. I hope that this is the one, because if not,
there'll be more and more people going out of business
over the coming years, because the world is not going to
get any less complex. It's not going to get any less
competitive, and technology will continue to improve, so
how long do you wait till you invest in technology. And
the, the cost of the technology is going down. Like the
cost of our stuff is, you know, we're like a, a, a
fraction of a penny of what like the big IT vendors would
charge to go build a system like this, you know. And I
tell my customers for every dollar you pay us, you should
get at least 10 in net margin dollars back. And if not,
I'll quit, I'll fire myself, I’ll apologize for wasting
your time, I'll give you your money back, you know,
because I know this stuff works, it's a no brainer. It's
just your willingness to, to act and have people play
along. It's the human change that's our big struggle.
Who are Daisy’s Customers?
Syya:
Okay. And I know we're getting late on time
here, so I want to be respectful, if I were a business
owner and I see Daisy, and I say this makes sense, I'm
interested. Out of curiosity, where do you sit? Do you,
who do you talk to? Is it the IT guys to get access to the
data? Is it the marketing guys who, who, you know,
leverage that data? Who is your actual customer in this
context?
Gary:
I mean, so the buying customer who buys is
typically the C level people, you know, in mid-market
retail. So, we get access to the CEO, or the CFO, or the
chief merchant, right? The head merchant might be a C
title, or an SVP of merchandising. So, those are the
people we talk to. And they're, they're bought into net
income growth, right? So, but if the CEO says yes, and
we've had this happen, the CEOs like I'm all in. And then
we struggle with the users who are the day to day category
managers merchants. So, it's like we're trying to build
what's the value proposition for the day to day users,
because they're afraid of their job. And so, we're working
on trying to make the experience using our system, more,
more fun if you can call fun doing work, but more
pleasant, less threatening, convince them that it's a,
it's a job elevation opportunity. And so, we're working
hard at putting an interface on the technology that makes
it more user friendly, because the C suites bought in. But
if the users don't buy in, then we won't achieve the
results that we have, you know, the ideas is take the
people out of the way, right?
How to Contact Gary and Conclusion
Syya:
Exactly, exactly. So, if, you know, I'm a
business leader and I want to learn more about Daisy.
Gary, how can we get a hold of you?
Gary:
Yeah, you can go to our website
daisyintelligence.com and look at, there's, you know, my
email address is there. You can find me on LinkedIn. Look
up my last name, Saarenvirta. S, double A, R, E, N, V, I,
R, T, A. I’m the only one, me and my brother, and my son,
and my daughters. You'll find me, my email, my work email
address is at my LinkedIn profile. I’d be more than happy
to talk and see if we can help, you know.
Erin:
Thank you, Gary. Very much. We’ll of course
include that all over, at our notes page over at
innovation calling.com. Syya, do you have any other
questions?
Syya:
I do not have any other questions. Gary, thank
you so much for your time, and it looks like that wraps it
up for another episode of Innovation Calling.
