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When I think about the rise of AI,
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I'm reminded by the rise of literacy.
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A few hundred years ago,
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many people in society thought
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that maybe not everyone needed
to be able to read and write.
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Back then, many people were
tending fields or herding sheep,
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so maybe there was less need
for written communication.
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And all that was needed
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was for the high priests
and priestesses and monks
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to be able to read the Holy Book,
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and the rest of us could just go
to the temple or church
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or the holy building
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and sit and listen to the high priest
and priestesses read to us.
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Fortunately, it was since figured out
that we can build a much richer society
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if lots of people can read and write.
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Today, AI is in the hands
of the high priests and priestesses.
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These are the highly skilled AI engineers,
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many of whom work
in the big tech companies.
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And most people have access
only to the AI that they build for them.
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I think that we can build
a much richer society
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if we can enable everyone
to help to write the future.
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But why is AI largely concentrated
in the big tech companies?
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Because many of these AI projects
have been expensive to build.
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They may require dozens
of highly skilled engineers,
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and they may cost millions
or tens of millions of dollars
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to build an AI system.
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And the large tech companies,
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particularly the ones
with hundreds of millions
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or even billions of users,
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have been better than anyone else
at making these investments pay off
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because, for them,
a one-size-fits-all AI system,
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such as one that improves web search
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or that recommends better products
for online shopping,
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can be applied to [these] very
large numbers of users
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to generate a massive amount of revenue.
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But this recipe for AI does not work
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once you go outside the tech
and internet sectors to other places
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where, for the most part,
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there are hardly any projects
that apply to 100 million people
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or that generate comparable economics.
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Let me illustrate an example.
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Many weekends, I drive a few minutes
from my house to a local pizza store
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to buy a slice of Hawaiian pizza
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from the gentleman
that owns this pizza store.
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And his pizza is great,
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but he always has a lot
of cold pizzas sitting around,
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and every weekend some different flavor
of pizza is out of stock.
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But when I watch him operate his store,
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I get excited,
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because by selling pizza,
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he is generating data.
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And this is data
that he can take advantage of
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if he had access to AI.
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AI systems are good at spotting patterns
when given access to the right data,
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and perhaps an AI system could spot
if Mediterranean pizzas sell really well
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on a Friday night,
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maybe it could suggest to him
to make more of it on a Friday afternoon.
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Now you might say to me,
"Hey, Andrew, this is a small pizza store.
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What's the big deal?"
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And I say, to the gentleman
that owns this pizza store,
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something that could help him
improve his revenues
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by a few thousand dollars a year,
that will be a huge deal to him.
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I know that there is a lot of hype about
AI's need for massive data sets,
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and having more data does help.
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But contrary to the hype,
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AI can often work just fine
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even on modest amounts of data,
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such as the data generated
by a single pizza store.
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So the real problem is not
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that there isn’t enough data
from the pizza store.
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The real problem is
that the small pizza store
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could never serve enough customers
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to justify the cost of hiring an AI team.
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I know that in the United States
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there are about half a million
independent restaurants.
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And collectively, these restaurants
do serve tens of millions of customers.
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But every restaurant is different
with a different menu,
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different customers,
different ways of recording sales
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that no one-size-fits-all AI
would work for all of them.
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What would it be like
if we could enable small businesses
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and especially local businesses to use AI?
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Let's take a look
at what it might look like
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at a company that makes
and sells T-shirts.
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I would love if an accountant working
for the T-shirt company
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can use AI for demand forecasting.
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Say, figure out what funny memes
to prints on T-shirts
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that would drive sales,
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by looking at what's trending
on social media.
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Or for product placement,
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why can’t a front-of-store manager
take pictures of what the store looks like
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and show it to an AI
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and have an AI recommend
where to place products to improve sales?
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Supply chain.
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Can an AI recommend to a buyer
whether or not they should pay 20 dollars
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per yard for a piece of fabric now,
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or if they should keep looking
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because they might be able to find
it cheaper elsewhere?
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Or quality control.
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A quality inspector
should be able to use AI
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to automatically scan pictures
of the fabric they use to make T-shirts
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to check if there are any tears
or discolorations in the cloth.
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Today, large tech companies routinely
use AI to solve problems like these
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and to great effect.
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But a typical T-shirt company
or a typical auto mechanic
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or retailer or school or local farm
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will be using AI for exactly zero
of these applications today.
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Every T-shirt maker is sufficiently
different from every other T-shirt maker
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that there is no one-size-fits-all AI
that will work for all of them.
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And in fact, once you go outside
the internet and tech sectors
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in other industries, even large companies
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such as the pharmaceutical companies,
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the car makers, the hospitals,
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also struggle with this.
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This is the long-tail problem of AI.
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If you were to take all current
and potential AI projects
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and sort them in decreasing
order of value and plot them,
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you get a graph that looks like this.
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Maybe the single most valuable AI system
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is something that decides what ads
to show people on the internet.
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Maybe the second most valuable
is a web search engine,
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maybe the third most valuable is an online
shopping product recommendation system.
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But when you go
to the right of this curve,
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you then get projects
like T-shirt product placement
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or T-shirt demand forecasting
or pizzeria demand forecasting.
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And each of these is a unique project
that needs to be custom-built.
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Even T-shirt demand forecasting,
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if it depends on trending memes
on social media,
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is a very different project
than pizzeria demand forecasting,
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if that depends
on the pizzeria sales data.
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So today there are millions of projects
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sitting on the tail of this distribution
that no one is working on,
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but whose aggregate value is massive.
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So how can we enable
small businesses and individuals
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to build AI systems that matter to them?
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For most of the last few decades,
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if you wanted to build an AI system,
this is what you have to do.
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You have to write pages
and pages of code.
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And while I would love
for everyone to learn to code,
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and in fact, online education
and also offline education
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are helping more people
than ever learn to code,
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unfortunately, not everyone
has the time to do this.
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But there is an emerging new way
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to build AI systems
that will let more people participate.
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Just as pen and paper,
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which are a vastly superior technology
to stone tablet and chisel,
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were instrumental to widespread literacy,
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there are emerging new
AI development platforms
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that shift the focus from asking you
to write lots of code
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to asking you to focus on providing data.
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And this turns out to be much easier
for a lot of people to do.
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Today, there are multiple companies
working on platforms like these.
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Let me illustrate a few of the concepts
using one that my team has been building.
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Take the example of an inspector
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wanting AI to help
detect defects in fabric.
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An inspector can take
pictures of the fabric
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and upload it to a platform like this,
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and they can go in to show the AI
what tears in the fabric look like
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by drawing rectangles.
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And they can also go in to show the AI
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what discoloration
on the fabric looks like
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by drawing rectangles.
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So these pictures,
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together with the green
and pink rectangles
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that the inspector's drawn,
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are data created by the inspector
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to explain to AI how to find
tears and discoloration.
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After the AI examines this data,
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we may find that it has seen
enough pictures of tears,
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but not yet enough pictures
of discolorations.
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This is akin to if a junior inspector
had learned to reliably spot tears,
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but still needs to further hone
their judgment about discolorations.
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So the inspector can go back
and take more pictures of discolorations
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to show to the AI,
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to help it deepen this understanding.
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By adjusting the data you give to the AI,
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you can help the AI get smarter.
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So an inspector using
an accessible platform like this
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can, in a few hours to a few days,
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and with purchasing
a suitable camera set up,
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be able to build a custom AI system
to detect defects,
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tears and discolorations in all the fabric
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being used to make T-shirts
throughout the factory.
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And once again, you may say,
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"Hey, Andrew, this is one factory.
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Why is this a big deal?"
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And I say to you,
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this is a big deal to that inspector
whose life this makes easier
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and equally, this type of technology
can empower a baker to use AI
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to check for the quality
of the cakes they're making,
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or an organic farmer to check
the quality of the vegetables,
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or a furniture maker to check
the quality of the wood they're using.
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Platforms like these will probably
still need a few more years
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before they're easy enough to use
for every pizzeria owner.
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But many of these platforms
are coming along,
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and some of them
are getting to be quite useful
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to someone that is tech savvy today,
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with just a bit of training.
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But what this means is that,
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rather than relying
on the high priests and priestesses
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to write AI systems for everyone else,
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we can start to empower every accountant,
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every store manager,
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every buyer and every quality inspector
to build their own AI systems.
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I hope that the pizzeria owner
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and many other small
business owners like him
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will also take advantage
of this technology
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because AI is creating tremendous wealth
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and will continue to create
tremendous wealth.
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And it's only by
democratizing access to AI
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that we can ensure that this wealth
is spread far and wide across society.
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Hundreds of years ago.
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I think hardly anyone
understood the impact
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that widespread literacy will have.
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Today, I think hardly anyone understands
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the impact that democratizing
access to AI will have.
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Building AI systems has been
out of reach for most people,
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but that does not have to be the case.
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In the coming era for AI,
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we’ll empower everyone to build
AI systems for themselves,
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and I think that will be
incredibly exciting future.
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Thank you very much.
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(Applause)