- The following is a
conversation with Eric Schmidt.
He was the CEO of Google for 10 years
and a chairman for six more,
guiding the company through
an incredible period of growth
and a series of
world-changing innovations.
He is one of the most impactful leaders
in the era of the internet
and the powerful voice for
the promise of technology
in our society.
It was truly an honor to speak with him
as part of the MIT course on
artificial general intelligence
and the Artificial Intelligence podcast.
And now, here's my
conversation with Eric Schmidt.
What was the first moment
when you fell in love with technology?
- I grew up in 1960's as a boy
where every boy wanted to be an astronaut
and part of the space program.
So like everyone else of my age,
we would go out to the cow
pasture behind my house,
which was literally a cow pasture,
and we would shoot model rockets off,
and that I think is the beginning.
And of course generationally today,
it would be video games and
all of the amazing things
that you can do online with computers.
- [Lex] There's a
transformative inspiring aspect
of science and math that maybe rockets
would instill in individuals.
You mentioned yesterday
that eighth grade math
is where the journey through
mathematical universe
diverges for many people.
It's this fork in the roadway.
There's a professor of math
at Berkeley, Edward Franco.
I'm not sure if you're familiar with him.
- I am.
- [Lex] He has written this amazing book
I recommend to everybody
called Love and Math.
Two of my favorite words.
(laughs)
He says that if painting
was taught like math,
then students would be
asked to paint a fence.
It's just his analogy of
essentially how math is taught.
So you never get a chance to discover
the beauty of the art of painting
or the beauty of the art of math.
So how, when, and where did
you discover that beauty?
- I think what happens
with people like myself
is that you're math-enabled pretty early,
and all of the sudden you discover
that you can use that to
discover new insights.
The great scientists
will all tell a story.
The men and women who are fantastic today,
it's somewhere when they were
in high school or in college
they discovered that they could
discover something themselves.
And that sense of building something,
of having an impact that you own
drives knowledge acquisition and learning.
In my case, it was programming
and the notion that I could build things
that had not existed,
that I had built that had my name of it.
And this was before open-source,
but you could think of it as
open-source contributions.
So today if I were a 16
or a 17-year-old boy,
I'm sure that I would aspire
as a computer scientist
to make a contribution
like the open-source heroes
of the world today.
That would be what would be driving me,
and I would be trying and learning,
and making mistakes and so
forth in the ways that it works.
The repository that GitHub represents
and that open-source libraries represent
is an enormous bank of knowledge
of all of the people who are doing that.
And one of the lessons
that I learned at Google
was that the world is a very big place,
and there's an awful lot of smart people.
And an awful lot of
them are underutilized.
So here's an opportunity, for example,
building parts or programs,
building new ideas,
to contribute to the greater of society.
- [Lex] So in that moment in the 70's,
the inspiring moment
where there was nothing
and then you cerated
something through programming,
that magical moment.
So in 1975, I think, you
created a program called Lex,
which I especially like
because my name is Lex.
So thank you, thank you
for creating a brand
that established a reputation
that's long-lasting, reliable,
and has a big impact on the
world and is still used today.
So thank you for that.
But more seriously, in that time,
in the 70's as an engineer
personal computers were being born.
Did you think you would be able to predict
the 80's, 90's and the noughts
of where computers would go?
- I'm sure I could not and
would not have gotten it right.
I was the beneficiary of the great work
of many many people who
saw it clearer than I did.
With Lex, I worked with a
fellow named Michael Lesk
who was my supervisor,
and he essentially helped me architect
and deliver a system
that's still in use today.
After that, I worked at Xerox
Palo Alto Research Center
where the Alto was invented,
and the Alto is the predecessor
of the modern personal computer,
or Macintosh and so forth.
And the Altos were very rare,
and I had to drive an hour
from Berkeley to go use them,
but I made a point of skipping classes
and doing whatever it took
to have access to this
extraordinary achievement.
I knew that they were consequential.
What I did not understand was scaling.
I did not understand what would happen
when you had 100 million
as opposed to 100.
And so since then, and I have
learned the benefit of scale,
I always look for things
which are going to scale to platforms,
so mobile phones, Android,
all of those things.
The world is a numerous,
there are many many people in the world.
People really have needs.
They really will use these platforms,
and you can build big
businesses on top of them.
- [Lex] So it's interesting,
so when you see a piece of technology,
now you think what will
this technology look like
when it's in the hands
of a billion people.
- That's right.
So an example would be that the
market is so competitive now
that if you can't figure out a way
for something to have a million
users or a billion users,
it probably is not going to be successful
because something else will
become the general platform
and your idea will become a lost idea
or a specialized service
with relatively few users.
So it's a path to generality.
It's a path to general platform use.
It's a path to broad applicability.
Now there are plenty of good
businesses that are tiny,
so luxury goods for example,
but if you want to have
an impact at scale,
you have to look for things
which are of common value,
common pricing, common distribution,
and solve common problems.
They're problems that everyone has.
And by the way, people
have lots of problems.
Information, medicine, health,
education, and so forth,
work on those problems.
- [Lex] Like you said,
you're a big fan of the middle class--
- 'Cause there's so many of them.
- [Lex] There's so many of them.
- By definition.
- [Lex] So any product, any
thing that has a huge impact
and improves their lives is
a great business decision,
and it's just good for society.
- And there's nothing
wrong with starting off
in the high-end as long as you have a plan
to get to the middle class.
There's nothing wrong with starting
with a specialized market in order
to learn and to build and to fund things.
So you start luxury market
to build a general purpose market.
But if you define yourself
as only a narrow market,
someone else can come along
with a general purpose market
that can push you to the corner,
can restrict the scale of operation,
can force you to be a lesser
impact than you might be.
So it's very important to think in terms
of broad businesses and broad impact,
even if you start in a
little corner somewhere.
- [Lex] So as you look to the 70's
but also in the decades to
come and you saw computers,
did you see them as tools,
or was there a little
element of another entity?
I remember a quote saying AI began
with our dream to create the gods.
Is there a feeling when
you wrote that program
that you were creating another entity,
giving life to something?
- I wish I could say otherwise,
but I simply found the
technology platforms so exciting.
That's what I was focused on.
I think the majority of the
people that I've worked with,
and there are a few exceptions,
Steve Jobs being an example,
really saw this a great
technological play.
I think relatively few of the
technical people understood
the scale of its impact.
So I used MCP which is
a predecessor to TCP/IP.
It just made sense to connect things.
We didn't think of it
in terms of the internet
and then companies and then Facebook
and then Twitter and then
politics and so forth.
We never did that build.
We didn't have that vision.
And I think most people,
it's a rare person who can
see compounding at scale.
Most people can see,
if you ask people to predict the future,
they'll give you an answer
of six to nine months or 12 months
because that's about as
far as people can imagine.
But there's an old saying,
which actually was attributed
to a professor at MIT a long time ago,
that we overestimate what
can be done in one year.
We underestimate was
can be done in a decade.
And there's a great deal of evidence
that these core platforms
of hardware and software take a decade.
So think about self-driving cars.
Self-driving cars were
thought about in the 90's.
There were projects around them.
The first DARPA Grand
Challenge was roughly 2004.
So that's roughly 15 years ago.
And today we have
self-driving cars operating
at a city in Arizona, so 15 years.
And we still have a ways to go
before they're more generally available.
- [Lex] So you've spoken
about the importance,
you just talked about
predicting into the future.
You've spoken about the importance
of thinking five years ahead
and having a plan for those five years.
- The way to say it is that
almost everybody has a one-year plan.
Almost no one has a proper five-year plan.
And the key thing to have
on the five-year plan
is having a model for
what's going to happen
under the underlying platforms.
So here's an example.
Moore's law as we know it,
the thing that powered improvement
in CPUs has largely halted
in its traditional shrinking mechanisms
because the costs have just gotten so high
and it's getting harder and harder.
But there's plenty of
algorithmic improvements
and specialized hardware improvements.
So you need to understand the
nature of those improvements
and where they'll go
in order to understand
how it will change the platform.
In the area of network conductivity,
what are the gains that are
to be possible in wireless?
It looks like there's
an enormous expansion
of wireless conductivity
at many different bands
and that we will primarily,
historical I've always thought
that we were primarily
going to be using fiber,
but now it looks like
we're going to be using
fiber plus very powerful high bandwidth
sort of short distance conductivity
to bridge the last mile.
That's an amazing achievement.
If you know that,
then you're going to build
your systems differently.
By the way, those networks have
different latency properties
because they're more symmetric.
The algorithms feel
faster for that reason.
- [Lex] And so when you think about,
whether it's fiber or just
technologies in general,
so there's this Barbara
Wootton poem or quote
that I really like.
It's from the champions of the impossible,
rather than the slaves of the possible,
that evolution draws its creative force.
So in predicting the next five years,
I'd like to talk about the
impossible and the possible.
- Well, and again, one of the
great things about humanity
is that we produce dreamers.
We literally have people who
have a vision and a dream.
They are, if you will,
disagreeable in the sense
that they disagree with the,
they disagree with what
the sort of zeitgeist is.
They say there is another way.
They have a belief.
They have a vision.
If you look at science,
science is always marked by such people
who went against some conventional wisdom,
collected the knowledge at the time,
and assembled it in a way that
produced a powerful platform.
- [Lex] And you've been
amazingly honest about,
in an inspiring way,
about things you've been
wrong about predicting,
and you've obviously been
right about a lot of things.
But in this kind of tension,
how do you balance as a company predicting
the next five years
planning for the impossible,
listening to those crazy dreamers,
letting them run away and
make the impossible real,
make it happen,
and you know that's how
programmers often think,
and slowing things down and saying
well this is the rational,
this is the possible,
the pragmatic, the dreamer
versus the pragmatist that is.
- So it's helpful to have a model
which encourages a
predictable revenue stream
as well as the ability to do new things.
So in Google's case,
we're big enough and well
enough managed and so forth
that we have a pretty good sense
of what our revenue will be
for the next year or two,
at least for a while.
And so we have enough cash generation
that we can make bets.
And indeed, Google has become Alphabet,
so the corporation is
organized around these bets.
And these bets are in areas
of fundamental importance to the world,
whether it's artificial intelligence,
medical technology, self-driving cars,
conductivity through
balloons, on and on and on.
And there's more coming and more coming.
So one way you could express this
is that the current business
is successful enough
that we have the luxury of making bets.
And another one that you could say
is that we have the wisdom
of being able to see
that a corporate structure
needs to be created
to enhance the likelihood of
the success of those bets.
So we essentially turned
ourselves into a conglomerate
of bets and then this
underlying corporation, Google,
which is itself innovative.
So in order to pull this off,
you have to have a
bunch of belief systems,
and one of them is that you have to have
bottoms up and tops down.
The bottoms up we call 20% time,
and the idea is that people
can spend 20% of the time
on whatever they want.
And the top down is that
our founders in particular
have a keen eye on technology,
and they're reviewing things constantly.
So an example would be
they'll hear about an idea
or I'll hear about something
and it sounds interesting.
Let's go visit them,
and then let's begin
to assemble the pieces
to see if that's possible.
And if you do this long enough,
you get pretty good at
predicting what's likely to work.
- [Lex] So that's a beautiful
balance that's struck.
Is this something that
applies at all scale?
- Seems to be.
Sergey, again 15 years ago,
came up with a concept
called 10% of the budget
should be on things that are unrelated.
It was called 70/20/10.
70% of our time on core business,
20% on adjacent business,
and 10% on other.
And he proved mathematically,
of course he's a brilliant mathematician,
that you needed that 10% to
make the sum of the growth work.
And it turns out that he was right.
- [Lex] So getting into the world
of artificial intelligence,
you've talked quite
extensively and effectively
to the impact in the near term,
the positive impact of
artificial intelligence,
especially machine learning
in medical applications and education
and just making information
more accessible.
In the AI community,
there is a kind of debate.
There's this shroud of uncertainty
as we face this new world
of artificial intelligence.
And there is some people like
Elon Musk you've disagreed on,
at least in the degree of emphasis
he places on the existential threat of AI.
So I've spoken with Stuart
Russell, Max Tegmark,
who share Elon Musk's view,
and Yoshua Bengio,
Steven Pinker who do not.
And so there's a lot of very smart people
who are thinking about this stuff,
disagreeing, which is
really healthy, of course.
So what do you think is the healthiest way
for the AI community to,
and really for the general
public to think about AI
and the concern of the technology
being mismanaged in some kind of way.
- So the source of education
for the general public
has been robot killer movies
and Terminator, etcetera.
And the one thing I can
assure you we're not building
are those kinds of solutions.
Furthermore, if they were to show up,
someone would notice and unplug them.
So as exciting as those movies are,
and they're great movies,
were the killer robots to start,
we would find a way to stop them,
so I'm not concerned about that.
And much of this has to do
with the timeframe of conversation.
So you can imagine a
situation 100 years from now
when the human brain is fully understood
in the next generation
and next generation of
brilliant MIT scientists
have figured all this out,
we're gonna have a large
number of ethics questions
around science and thinking and robots
and computers and so forth and so on.
So it depends on the
question of the timeframe.
In the next five to 10 years,
we're not facing those questions.
What we're facing in the
next five to 10 years
is how do we spread this
disruptive technology
as broadly as possible to gain
the maximum benefit of it?
The primary benefit should be
in healthcare and in education.
Healthcare because it's obvious.
We're all the same even though
we somehow believe we're not.
As a medical matter,
the fact that we have
big data about our health
will save lives,
allow us to deal with skin
cancer and other cancers,
ophthalmological problems.
There's people working
on psychological diseases
and so forth using these techniques.
I can go on and on.
The promise of AI in
medicine is extraordinary.
There are many many companies
and start-ups and funds
and solutions and we will all
live much better for that.
The same argument in education.
Can you imagine that for each generation
of child and even adult
you have a tutor educator.
It's AI based that's not a human
but is properly trained
that helps you get smarter,
helps you address your
language difficulties
or your math difficulties
or what have you.
Why don't we focus on those two?
The gain societally of
making humans smarter
and healthier are enormous.
And those translate for
decades and decades,
and we'll all benefit from them.
There are people who are
working on AI safety,
which is the issue that you're describing,
and there are conversations
in the community
that should there be such problems
what should the rules be like?
Google, for example, has
announced its policies
with respect to AI safety,
which I certainly support,
and I think most everybody would support.
And they make sense.
So it helps guide the research.
But the killer robots are
not arriving this year,
and they're not even being built.
- [Lex] And on that line of thinking,
you said the timescale.
In this topic or other topics
have you found a useful,
on the business side or
the intellectual side,
to think beyond five to 10 years,
to think 50 years out?
Has it ever been useful or productive--
- In our industry there
are essentially no examples
of 50 year predictions
that have been correct.
Let's review AI.
AI, which was partially
invented here at MIT
and a couple of other
universities in 1956, 1957, 1958,
the original claims were a decade or two.
And when I was a PhD
student, I studied AI,
and it entered during my looking at it
a period which is known as AI winter
which went on for about 30 years,
which is a whole generation
of science, scientists,
and a whole group of people
who didn't make a lot of progress
because the algorithms had not improved
and the computers had not improved.
It took some brilliant mathematicians
starting with a fellow names Geoff Hinton
at Toronto and Montreal
who basically invented
this deep learning model
which empowers us today.
The seminal work there was 20 years ago,
and in the last 10 years
it's become popularized.
So think about the timeframes
for that level of discovery.
It's very hard to predict.
Many people think that
we'll be flying around
in the equivalent of flying cars.
Who knows?
My own view, if I want
to go out on a limb,
is to say we know a couple of things
about 50 years from now.
We know that they'll be more people alive.
We know that we'll have to have platforms
that are more sustainable
because the earth is limited
in the ways we all know,
and that the kind of platforms
that are gonna get built
will be consistent with the
principles that I've described.
They will be much more
empowering of individuals.
They'll be much more
sensitive to the ecology
'cause they have to be.
They just have to be.
I also think that humans
are going to be a great deal smarter,
and I think they're gonna be a lot smarter
because of the tools that
I've discussed with you,
and of course people will live longer.
Life extension is continuing at a pace,
a baby born today has a reasonable
chance of living to 100,
which is pretty exciting.
It's well past the 21st century,
so we better take care of them.
- [Lex] And you've mentioned
an interesting statistic
on some very large percentage,
60%, 70% of people may live in cities.
- Today more than half
the world lives in cities,
and one of the great stories of humanity
in the last 20 years has been
the rural to urban migration.
This has occurred in the United States.
It's occurred in Europe.
It's occurring in Asia, and
it's occurring in Africa.
When people move to cities,
the cities get more crowded,
but believe it or not
their health gets better.
Their productivity gets better.
Their IQ and educational
capabilities improve.
So it's good news that
people are moving to cities,
but we have to make them livable and safe.
- [Lex] So first of all, you
are but you've also worked with
some of the greatest leaders
in the history of tech.
What insights do you draw
from the difference in
leadership styles of yourself,
Steve Jobs, Elon Musk, Larry Page,
now the new CEO, Sundar Pichai and others,
from the I would say calm
sages to the mad geniuses.
- One of the things that I
learned as a young executive
is that there's no single
formula for leadership.
They try to teach one, but
that's not how it really works.
There are people who just
understand what they need to do
and they need to do it quickly.
Those people are often entrepreneurs.
They just know, and they move fast.
There are other people
who are systems thinkers and planners.
That's more who I am,
somewhat more conservative,
more thorough in execution,
a little bit more risk-adverse.
There's also people who
are sort of slightly insane
in the sense that they are
emphatic and charismatic
and they feel it and they
drive it and so forth.
There's no single formula to success.
There is one thing that unifies
all of the people that you named,
which is very high intelligence.
At the end of the day, the
thing that characterizes
all of them is that they saw
the world quicker, faster.
They processed information faster.
They didn't necessarily
make the right decisions all the time,
but they were on top of it.
And the other thing that's interesting
about all of those people
is that they all started young.
So think about Steve Jobs starting Apple
roughly at 18 or 19.
Think about Bill Gates
staring at roughly 20, 21.
Think about by the time they were 30,
Mark Zuckerburg a good
example at 19 or 20,
by the time they were
30, they had 10 years,
at 30 years old they had
10 years of experience
of dealing with people and products
and shipments and the press
and business and so forth.
It's incredible how
much experience they had
compared to the rest of us
who are busy getting our PhDs.
- [Lex] Yes, exactly.
- So we should celebrate these people
because they've just
had more life experience
and that helps them form the judgment.
At the end of the day,
when you're at the top
of these organizations,
all of the easy questions
have been dealt with.
How should we design the buildings?
Where should we put the
colors on our products?
What should the box look like?
That's why it's so interesting
to be in these rooms.
The problems that they face
in terms of the way they operate,
the way they deal with their
employees, their customers,
their innovation are
profoundly challenging.
Each of the companies is
demonstrably different culturally.
They are not, in fact, cut of the same.
They behave differently based on input.
Their internal cultures are different.
Their compensation schemes are different.
Their values are different.
So there's proof that diversity works.
- [Lex] So when faced
with a tough decision
in need of advice,
it's been said that the
best thing one can do
is to find the best person in the world
who can give that advice
and find a way to be in a room
with them one-on-one and ask.
So here we are.
And let me ask in a long-winded way.
I wrote this down.
In 1998, there were many
good search engines:
Lycos, Excite, AltaVista, InfoSeek,
Ask Jeeves maybe, Yahoo even.
So Google stepped in and
disrupted everything.
They disrupted the nature of search,
the nature of our access to information,
the way we discover new knowledge.
So now it's 2018, actually 20 years later.
There are many good
personal AI assistants,
including, of course,
the best from Google.
So you've spoken in medical and education
the impact of such an AI
assistant could bring.
So we arrive at this question.
So it's a personal one for me,
but I hope my situation
represents that of many other
as we said dreamers and
the crazy engineers.
So my whole live I've dreamed
of creating such an AI assistant.
Every step I've taken has
been towards that goal.
Now I'm a research scientist
in human-centered AI here at MIT.
So the next step for me as
I sit here facing my passion
is to do what Larry and Sergey did in '98,
the simple start-up.
And so here's my simple question.
Given the low odds of success,
the timing and luck required,
the countless other factors
that can't be controlled or predicted,
which is all the things
that Larry and Sergey faced,
is there some calculation,
some strategy to follow in the step?
Or do you simply follow the passion
just because there's no other choice?
- I think the people
who are in universities
are always trying to study
the extraordinarily chaotic nature
of innovation and entrepreneurship.
My answer is that they didn't
have that conversation.
They just did it.
They sensed a moment when
in the case of Google,
there was all of this data
that needed to be organized,
and they had a better algorithm.
They had invented a better way.
So today, with human-centered AI,
which is your area of research,
there must be new approaches.
It's such a big field.
There must be new approaches different
from what we and others are doing.
There must be start-ups to fund.
There must be research projects to try.
There must be graduate students
to work on new approaches.
Here at MIT, there are people
who are looking at learning
from the standpoint of
looking at child learning.
How do children learn starting
at age one and two--
- Josh Tenenbaum and others.
- And the work is fantastic.
Those approached are different
from the approach that
most people are taking.
Perhaps that's a bet that you should make,
or perhaps there's another one.
But at the end of the day,
the successful entrepreneurs
are not as crazy as they sound.
They see an opportunity
based on what's happened.
Let's use Uber as an example.
As Travis tells the story,
he and his co-founder
were sitting in Paris,
and they had this idea 'cause
they couldn't get a cab.
And they said we have smartphones,
and the rest is history.
So what's the equivalent
of that Travis Eiffel
Tower where is a cab moment
that you could as an
entrepreneur take advantage of,
whether it's in human-centered
AI or something else?
That's the next great start-up.
- [Lex] And the psychology of that moment.
So when Sergey and Larry talk about,
in listening to a few interviews,
it's very nonchalant.
Well here's a very fascinating web data,
and here's an algorithm we have.
We just kind of want to
play around with that data,
and it seems like that's a really nice way
to organize this data.
- Well I should say
what happened, remember,
is that they were graduate
students at Stanford,
and they thought this was interesting.
So they build a search engine
and they kept it in their room.
And they had to get power
from the room next door
'cause they were using too
much power in their room,
so they ran an extension cord over
and then they went and they found a house
and they had Google world headquarters
of five people to start the company.
And they raised $100,000
from Andy Bechtolsheim,
who is the Sun founder to do this
and Dave Cheriton and a few others.
The point is their
beginnings were very simple,
but they were based on a powerful insight.
That is a replicable
model for any start-up.
It has to be a powerful insight,
the beginnings are simple,
and there has to be an innovation.
In Larry and Sergey's
case, it was PageRank,
which was a brilliant idea,
one of the most sited
papers in the world today.
What's the next one?
- [Lex] So you're one of, if I may say,
richest people in the world,
and yet it seems that money
is simply a side effect
of your passions and not an inherent goal.
But you're a fascinating person to ask.
So much of our society
at the individual level
and at the company level and as nations
is driven by the desire for wealth.
What do you think about this drive,
and what have you learned about,
if I may romanticize the notion,
the meaning of life
having achieved success
on so many dimensions?
- There have been many
studies of human happiness,
and above some threshold,
which is typically relatively
low for this conversation,
there's no difference in
happiness about money.
The happiness is correlated
with meaning and purpose,
a sense of family, a sense of impact.
So if you organize your life,
assuming you have enough to get around
and have a nice home and so forth,
you'll be far happier if you figure out
what you care about and work on that.
It's often being in service to others.
There's a great deal of evidence
that people are happiest
when they're serving
others and not themselves.
This goes directly against
the sort of press-induced excitement
about powerful and wealthy
leaders of the world,
and indeed these are consequential people.
But if you are in a situation
where you've been very
fortunate as I have,
you also have to take
that as a responsibility
and you have to basically
work both to educate others
and give them that opportunity
but also use that wealth
to advance human society.
In my case, I'm particularly interested
in using the tools of
artificial intelligence
and machine learning
to make society better.
I've mentioned education.
I've mentioned inequality in middle class
and things like this, all of
which are a passion of mine.
It doesn't matter what you do.
It matters that you believe in it,
that it's important to you,
and your life can be far more satisfying
if you spend your life doing that.
- [Lex] I think there's
no better place to end
than a discussion of the meaning of life.
- Eric, thank you so much.
- Thank you very much, Lex.
