Alan Kay Speaks at BAAI Conference
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 see here do you know
 welcome to the BAA I a
 conference and we
 are going to have this you know almost an
 hour you to talk about few things
 you right away here is a
 very enthusiastic about
 particular you know you you have this particular
 note of how the big hall
 so I assume you
 have a presentation first and now let's go the
 presentation then we will come back with our dialogue
 ok I'm gonna need to share my screen
 sure here
networking yes perfect okay
 okay so this
 is just a few notes
 to help lead
 us into the discussion which is the main point of this
 and these five topics and questions
 were ones that were part
 of the context I was given for this
 little talk in discussion and in order
 to
 help
 we all felt that this white
 paper I wrote last year for a MacArthur
 Foundation here in
 the UK which
 is all about large
 challenges
 and they were interested in how are
 some really large challenges dealt with in the past and
 there's something that can we learn for it can we help
 educate the politician so I'm
 presuming most people haven't read this
 so I picked a few things from this
 here on
 the screen is one of the URLs
 to get this but
 possibly the UL URL has already been
 sent around so
 anyway this is a white
 paper looking at some
 of the big back to them
 efforts on intense
 critical challenges in the past
and
 when I think about these things I
 always try and think about what's the larger
 culture that any problem
 is embedded in because larger
 surround often gets lost and
 for the stuff I think about I always
 start with humans and all
 of the cultures on the planet so we
 have several thousand cultures and
 within these cultures and we are in
 ours besides
 all the things that we're doing we
 have duties to society those are things we need to think
 about when we're allocating our time we
 all have duties to bringing up the next generation
 of children whether we have children or not
here are world
 views we have to deal with most of the
 disagreements between people of goodwill
 comes from them actually
 having different world views and
 we have sort of an think
have the same world view as we do but we don't so
 you have to take that into consideration we
 have to understand what schooling is and what it should be
 there's this idea of richness
 where it's
 not about work it's not
 about duties richness is
 expanding our ability to have an
 emotional connections to things and
 then there's
 this problem of how do we get
 from day to day with our basic
 needs so these
 are
six seven things
 that I treat as a context and especially
 for here but also the way
 I think about things I think of these is being embedded
 in large issues
 but I just picked
 12 of them
 so you can pick your favorite one the
 problem is all twelve of them have
 been let to get into disastrous
 straits
 so we really have to work on all 12 of
them and that's one of the big problems is how
 not to get distracted for
 instance we have a health problem
 which is very important people are not doing well
 at it but it's also distracting from
 other issues that
 have to do with the planet like the planet itself is
 starting to die in various ways and so another
 issue that's hiding there that's
going to have a much bigger impact on human beings
 then the the pandemic is
 going to be the climate problem
 and if we imagine a child
 being born this year well
 at the end of the century there'll be only be 80
 they'll still be alive we have to wonder
 how are they going to get there could they
 get there with the planet in better shape than it is now
 rather than in worse shape
so one of the
 biggest problems here is imagination
 and
 using conventional thinking so
 Einstein one of my favorite lines from Einstein
 is we cannot solve our problems with the same levels of
use to create them so
 however we got here whatever
 we think of is normal which is how we got
 here it's not going to work to get us past
 this to fix
 these things and so right away one
 of our biggest issues is to deal with stuff that
 is outside of what our society thinks
 is normal and people
 use the term crazy for stuff
 that's outside of normal so that's what we have we
 have to learn how to be crazy in really
 good ways and
the
 thing that comes along with this is
if you haven't learned how to think skillfully
 and to realize where you are requires
 strong thinking you are in big trouble and this
 is where most of the human race is
o here's where most people think we are
 some memory from childhood in the
 past take this as the
 planet it's no longer so green it's
 really kind of like this but
 in fact we have these glasses on so we can't see
 even where things are now
and the problem is we have to imagine into the future
 what's likely to happen on the current
 set of things it could be the future of the pandemic I'm
 picking the climate as a big thing
 so we have to be able to deal with all three
 of these views at the same time
and the
 problem is that science is our imagination
 amplifier but most people aren't scientists
 especially most politicians
 most of the boating public in the United States
 are not scientists or in the UK and
 they do not
 like thinking outside their
on the other hand what
 has happened over the years is
 that every time
 there has been a threat that is
recognized by the general public including
 the politicians there's usually a big response
 to it war is the favorite one
you because
 should be epidemics too but
 most people are not taking co-head
 seriously at this point
 few places have but
 most most places haven't especially
 my country two countries
 US and the UK really haven't taken
 it seriously so if we look
 in the past here too
big
 projects
 all of them have had
 some sort of threat involved
 with them I suck the Empire State Building there because it's
 one of my favorite engineering projects ever
 the the whole building from
 the raising
 of the site the demolishing of the previous
 site to occupancy was less than a year
 and it was done by less than
 3000 people it's one of the great building
 in designing and planning jobs in history
 and the reason it was done that way was
 because the Depression Great
 Depression in the US had
 hit the very year this got funded
 so part of the motivation here is we have to
 get this thing up in a hurry and another part of the motivation
show everybody what building a tall building is
 really like because another one like this is
 not going to be built for decades so
 the other entries
 here which are all described in this white paper are
 from world
 war ii and the Cold War
 so atomic energy Bletchley
 Park the UK and
 us joint project
 on radar which was the prime
 technology for World War two and
 then a lot of funding continued
 from the in the Cold War
 and part
 of that funded ARPA 1957
 and ARPA funded a an
 agency to do
 non-structured
 research research that was not top-down
 looking into information
 systems and Xerox PARC
 was one of these groups just funded
 by Xerox about ten years later so
 the process
 of this right hand panel
 in the Cold War came out of what
 the group doing radar learned about
 how to do science and engineering together on
 a large scale to
 combine research into the unknown with
 doing practical engineering so
 most of the successes in the realm of computers
 research in the u.s. many
 of them came out of the
 process and it was taught to grad students generation
 after generation
 so a key thing about this kind of unrestricted
 spending without
 a lot of top-down supervision
 that a key thing that is missed is
 the amount
 of wealth that came out of doing this spending
 was spent to deal with a war but
 in fact the most of the
 industries in the u.s.
 happened after World War two happened
 because of World War two most of the technologies
 that are prominent today came about
 because of World War two and so
 an incredible amount of wealth that has been generated
 far far more than what the outlay there
 was no need for Wars to
 do this at all but
 that's just the way we are and
 to give you a sense here Park
 came out of the ARPA community ARPA
 research started in
 1962 so
 they're 12 to 14 years to get
 the payoff and the larger
 community started before here's a
 larger look at the
 DoD ARPA merging into Park
 the two groups key
 from Park came out of the Arco community the
 internet was a joint project
 and most of the technologies
 that we did at Parc came out of
 prior research at ARPA including some of our PhD
 theses
if we take an even closer look at park we can see most
echnologies that we're still using today
 that I'm using to give this talk and
 so we call
 it eight and a half inventions the half is the Internet
amazingly
 all of this was done by about two dozen researchers
 just 25 researchers
 for the for these inventions
 really inexpensive
 about 15 million dollars a year in today's dollars
 sheep returned
 so far has been over 40 trillion dollars
 and
 this recreate created industries rather
 than increments
o this prior art and all of these things but each
 of these created industries of their own and
valuations in the stock market
 of American companies came about because these
 inventions so what's interesting is crazy
 funding of research that
 nobody believes in and believe it believe me nobody
 did when we were at Clark they thought we were crazy
 here are funding
people who are up to the task and you're willing to take
 thirty percent of the results you're
 going to get an enormous return
 just monetarily but
 also you're going to get an even bigger return for
 society and that's what we're talking about today so
 people say well Xerox
 make any money on this but in fact they made billions
 on the laser printer and paid for park many
 many times over 50 or 60 times over
okay so here's the key point and
 that is if you're interested in doing
oodness of the results you're going to get correlates
 most strongly with the goodness of the funders and this
 is not in terms of money most
 funding today in the United States is
 not good funding
 in the terms I'm using good here
 it's mainly funding for
 goals picked ahead of time
 stun top-down it has
 making money as an end result and so forth so
 what I mean by goodness of the funders here is
 the funders actually understand this
other process which we're talking about today of
 how do you get stuff that hasn't been seen before
 and here's one of the great
 ones of all time the guy
 who set up the ARPA eye PTO funding
 in 1962 and he
 was a visionary
and he would not talk about goals you did not
 have goals visions and
 a vision is something that gives you a sense
 of what the thing what the desire is but
 nothing specific there's nothing you can work on directly
 we have to pick the problems from the
vision so here is his vision that set off all of this
 stuff computers are destined to become interactive
 intellectual amplifiers for everyone
 university universally networked
 worldwide that's all he would ever say
 yeah when they ask well how
going to do this he said well I don't know but I'm just going to give
 money to people that think they can help
 and will take a percentage of the results
 and given what we're trying to fund if 30
 or 40% of the results are successful
 we will change the entire world now that's exactly what
 happened so what so these
 visions they're kind of like little magnetic
 fields hidden behind the mountains
 researchers can feel these magnetic
 fields and if you're over on this side you
 can feel
 north appeal the magnet going
you're over on this side you can feel the magnet going everybody
 starts moving towards the magnet and you get
 a lot of different ways of approaching what this vision
 is and that is what happened
so whenever you get into trouble what
 you need to do is to realize that most problem
 statements come out of the current context
 but most of the solutions you need come out
 of a context that it has to be invented so
 you need to retreat from goals and problems to visions
 visions of how things should be and those
 will help think wider so how did this
 stuff work back then well this is the Pentagon
 Department of Defense and there's a US Congress
 every country has something like this
 in 1957 the
 Russians put up a satellite and scared
 people and that
 fear was enough to set up the Advanced Research
 Projects Agency in 1957 and
 these were the days of the Cold
 War and so instead of putting bureaucrats
 in there all the ARPA directors were scientists
 mostly physicists and
 in 1962 they funded the
information processing techniques part of ARPA
 also stocked with scientists and a new guy
 every two years the ideas if you stay in too
 long it becomes your job no
 your job is to be a scientist and what you're doing is doing service
 so you do two years of service
 helping the country and then you go back otherwise
you start buying a house and get a house Morgan's you can
 start worrying about your job it's losing your job now
 of course Congress still
 wanted to be a watchdog they
 wanted to be the top down so they'd all ask well
how is this relevant tell me why this work that you're doing is
 relevant to the Department of Defense and unlike
 today these guys would
that's not the right question to ask because
 they didn't care about getting fired no that's
 not the right question to ask the right question is how
 is this going to help the country or this technology
 or our society or our culture in general and by the
 way these are direct quotes and
 Bob Taylor who is an onlooker
 there said well they'd stand up to the Congress
 and in a polite civilized way attack
 their nearsightedness their myopia because
 they were scientific Statesman
so Bob talked
 to Charlie Hertzfeld here Charlie
 said well what do you want Bob and Bob said well
 this network is what I want to do this is like 1966-67
 and
 Hertzfeld didn't ask
 him what it was he said okay
Bob said well I was a 15-minute
 conversation with my boss and
 then Charlie said well
need to get this off the ground and Bob said oh about a
 million dollars or so that would be like six or seven million
 dollars today just to get it started and
 Hertz fellows response
 was okay and as
 Bob said there was no R per order written there's
 no bureaucracy nothing
 the paperwork work was done about
 a year later but they're able to start the
 same day that Bob had this meeting and
 that network that he wanted is
in case you don't get the joke here the
joke is this is how this thing that we're using that's
 all over the planet was actually funded without
 a proposal
just two people who trusted each other and it
 was part of this vision of lick lighters
and what's key to this story besides what happened with
 ARPA was that Bob then went on to set up computing
 research at Xerox PARC and
 so he took this way of doing things
 into this Industrial Research Lab
 and hired a bunch
 of us to do the work so here's a key idea being
 responsible doesn't mean you should try to control
 this is the biggest mistake that almost everybody
 in charge in bureaucracy makes
 because they are held accountable by their boss and they're
 buying a house and they're afraid of getting fired but
 basically you
 can't do it because
 in the case of unusual research
 if you're a funder you don't know enough
 to come up with good problems believe me you're
 in the wrong place and the wrong the
 people who know enough to come up with good problems are out
research without messing
 around with money they're not doing politics so
 you just cannot do top-down on this
 stuff and get anything
 and it's the great people who come up with the
 great goals what you do is support them so
 being responsible means you try to manage
 the support of these people who are thinking
 about what should be done
 realizing that perhaps 60%
 of their efforts are not going to succeed
 and the other thing that ARPA
 chose to do was to
 have no peer review
 and the reason is that even great people
often poor judges
 of other people's work just from rivalries
 or just there in the different context
 it doesn't seem relevant so peer review just
 doesn't work at these top levels it
 only works for mediocre stuff even
 if you get peers and
 in the u.s. like at NSF and it's after you never
professors
 here and there who do it you
 never get a peer
 so key idea top-down control kills
 unusual research lots of money
 gets spent you'll set up research labs all over
 the place people will get hired people do things in the
 US at least it is essentially
 never worked
no labs had had a sign
all over going
 down the stairs and walls the
 sign would say either do something very
 beautiful or very useful that
 was the sign at Bell Labs either
 very beautiful we don't care
 if it's useful or very
 very useful
 but take it out there and go
 to one extreme or the other so what you need here
 is you need unusual thunders you
 need unusual research managers and you
 need unusual researchers
 so back when I was operating
 in the 60s and 70s it was ARPA
 office of naval research Xerox unusual
 research managers like Licklider Sutherland and Taylor
 now the unusual researchers
 interestingly enough are easier to find but
 they won't do anything without
 these first two slots being taken
 care of so if you want a championship
 football team you get a Beckham
 you just don't go out and get somebody randomly
 you get the best football player
 in the world and hire him for your team and if
 you want to do a Xerox PARC you get a butler
 this is Butler Lampson
stratospherically Abel
 and if you
 look at the bell curve here
what you're looking for
 people that are for your research labs are one
 in a hundred thousand one in a million one in ten
 million ten one in ten million while China has
 140 of them pick
 something to be unusual in China has
 140 in this almost 5 Sigma
 case and if you want to do this stuff
 you have to find them and nurture them
and some
like this some of the researchers will be like
 top scientists some of them be
like top engineers but some of them are going to be like this and what
 I'm showing this this is an ad that I suggested
 Apple make back 40 years ago as
 to what personal computing should be about and
 what I meant when I tried to get them to do was
 to do this because
 the real process here is not to have a domain
 of right brain and left brain the
 real process here is to have the
 ability to fluidly
 merge all the different thinking kinds
 of thinking you have an aesthetic thinking you have
 into the thinking you're doing
so here's another key point
ARPA spent a lot of money
net generation of researchers
 consider that one
 of the main research results I had to fight Congress
 on it but they
 said hey this doing
 this vision is going to take 10 15
 maybe 20 years so
 we have to we we have to grow the next generation
 of researchers and we can grow them in this
in fact almost all the computer people at
 Xerox PARC came from this ARPA process
 we were all young I was the oldest person there I was
old everybody else was
 younger butler is only 27 that's what
 Bob Taylor wanted he had seen all of us do our PhDs
 okay last idea
 here is this idea of mad money
 mad money is money that
 you have in your pocket
 that you spend on a win
you
 can spend it on something it might not even wind up working and you don't
it's
 money that is not aimed
 at any purpose so
 the number one thing you have to ask is
 in any organization or country
 is how much mad money is there
 if you have a country that is SuperDuper organized
 they will tell you we
 have no mad money
we plan for every cent we can tell
where we spend every cent on this and we'll show you in the master
 playing with okay so that's not very creative
 and most companies
 want to show the stock holders
 that they've been spending this money wisely and
 here's the pre turn on this investment they hate to show
 line items where there's no return on investment
 for five years okay some add
 money so here's the way to compute
 it for a company Ardi
 and a company is usually five to fifteen percent of revenues
 most of it goes towards product
mad money is
 1% to 5% of that
 so the range here
 is about
 it was just tiny fractions
 of our total revenues
 in a company and if Xerox PARC
 was about 50 million dollars a year today
 that means that
 taking the stingiest approach
 to this we're only gonna take 5%
 of revenues for R&D and 1% of that form
 and money still the first 14
 fortune 418 companies
 are going to afford to do a Xerox PARC not
 a single one of them half
 no matter how much money they have
 and if you go to the higher end fifteen
percent of revenues like technology companies do
 and you're going to spend five percent of that on the
 art on the mad money
 like Xerox did that
 means every single one of the
 fortune 500
fortune 1000 companies
 so let's look at it four countries
 so
 if we start with say Japan and Germany or so large
 countries on up spend a hundred billion
 to five hundred billion for
 country R&D I think
 China's is about two hundred and forty
 or two hundred and fifty billion dollars a year the
 US has maybe closer to five hundred or something
 but it's about two percent whatever it is it's around two
 percent of the GNP
and so
 we take the same mad money figure 1
 to 5% bad
 money for the lower-end is 1 billion a year to 5
 billion a year of stuff you should spend without
 worrying about what happens like Japan
spending a billion dollars a year without worrying
 about what happens
and so a billion dollars a year is
 66 Xerox parks
eems like should do
 it right and
 for a large company like China
 or the u.s. it's over 300 -
 over 1,600 Xerox parks for each country
 what this means is
the world collectively
 and especially the large
 countries getting their act together
actually have plenty
 of funding have plenty of
 potential talent to
 actually deal in an unconventional way with these
 enormous problems we have the problem is is that
 most of the people in the world cannot see that we have these
 problems or cannot see them as threats
 or fears or whatever it takes and
 so I'll leave you with the final quote by Einstein here
 which is insanity is doing
 the same thing over and over and expecting different results
that's what's been
 going on for the last 40 or 50 years in computing
 for sure and
 I daresay in most
 things and most especially for
 these 12 critical issues
 that we have to deal with right now so
 thank you very much and I
 guess that was about a half an hour rather than
I talk thank
 you well thank you very much Alan
for the great talk and very very unlikely
 the what
 what do you just talk
about a large part of it that you actually summarized
 very well your note the
 big hall and you asked me list of
 you know 19 roots of
 Rd management to solve immense war
 challenges and but you also mentioned
 you also I to summarize the very well
 but you didn't mention your talk is that
 there are tremendous barriers and for
 people to follow through your advice and that
 90 rules including you know give
 you the money you give all along and
 the mad money and give
 the meta money and the less of great people to the great thing
don't ask them how much they have professor
 made and but
 people just couldn't do it so you measured
 about this barriers and you have this
 concept of a six core buyers in the so-called
 oestrogen paradox
 could you talk about that a little bit well
 so a good a good place good
 reference for all this
 is the Wikipedia article
 that is called cognitive biases
 I should have put that up in a
 slide cognitive biases and at
 lists I guess probably closer
 to 200 things that are wrong with
 human brains so this is the
 result of anthropology and psychology
 over the last few hundred years one
 of the things we've been interested it is
 why are we such poor thinkers why
 do we require so much training
 to do good thinking
 why was science only invented a few hundred years ago instead
 of a hundred thousand years ago and so forth and
 so there are many so
 something that every scientist knows about
 is called confirmation bias so
 when you have a theory
 confirmation bias and scientists do it to is
 any evidence that will strengthen
 the thing you already believe you
 give it much more weight than evidence against
 the thing you already believe it really costs people
 something to unbeliev something and of
science you're not supposed to believe things but we
 do anyway so the ostrich syndrome
 we've seen it in
 responses to the pandemic
 well it's not there
 it's not important well even if it
 is there we can't do anything about it
 so all of these things are
 there are expansions of one
 of the things that is deeply built into all mammals
 that probably
 most animals that can move is
 when you're in trouble basically
 you should either find
 a place to hide from it
 or you should prepare to fight so
 it's called fight or flight and this stands
 in my way people deal with things verbally
 so it's it's a part of human
 nature and people are willing to get
past their human nature when they're really frightened like in
 a war yeah and
 you mrs. battle people you know when
 people really got a frettin they are see another
 story you mentioned about
you know Dhamma today what we call it
 a modern time it started was because
 code walk because the is a threat people
 filled from silly union that time and also the
 fact that so it is launched and sfotch so
 uh you know when when people says
 it's danger then they may start
 to act and acting in the right way you
 know so uh fear my question
 is it's been damaged you know the last four
months or five months now it has
 coughs the were so much trouble you know economic
 wise and people like wise
 thing you know is that big enough threat that
 you think you know can waking people up and
 start doing things in the right way
 doesn't seem to be
 has depended on
 how the government
 governments structured
 like New Zealand did the right thing and did it quickly
 the u.s. didn't do the
 right thing and is doing the wrong thing
 still
 and it going in another wave of
 it so but I think overall
 the expecting
 you
 know mainstream people to
 do the right thing here they just can't imagine
 it until for
 instance maybe a relative gets it
 so when a relative gets the
 disease and baby dies from it or has a terrible
 time with it or they do then
 they have this local way of assessing things
 but for war
 is prevalent in human
 history and so
 the threat of war has
 been enough in the past for instance it was enough
radar started in the
 UK seven
 or eight years ahead of the Battle of Britain
 yeah when the rest of the country
 did not believe if there was going to be a war with Germany
 and the politicians were trying to avoid it but the people
 who did the radar did it anyway and Britain
 came out on top when
 the Nazis did fly over so that
 that
 was a reaction of what you might
 call eccentrics who had some
funding who had the ears of some people but
 a certain radar was not a national priority in
 the UK nor was Bletchley Park
 until there was an actual shooting
 war but both of them had been set up ahead
 of simile in the United States there was a billionaire
yeah who got radar started
 in the US because the government wouldn't fund
 it and he didn't care he happened to also be
 a physicist and he also funded the start
 of the joint project with with MIT before
 the US was officially in the war so
 that made an enormous difference but you
 can't give the US government any points
 con you can't give Congress any
 points for reacting to what was actually
 going on u.s. in those days was completely
 isolationist okay
 yeah
 we have talked about the
 kind of a history of modern
 computer science development teeth from
 the tapa days and that's
 did I just say one thing got on the deep
 but when the D the D was put on to
 ARPA yeah it wasn't ARPA anymore
 okay
 too because Parker has ARPA
 in it McCain's nothin
 because what that when the D got put
 on the processes
 that had been going on before it got changed
 so uh wait
 a minute is that yes today it
 was that D and the processes changed
 that got Taylor to try and get money from
 a company that's how Xerox PARC happened okay
 that's important Xerox
 PARC happened because of DARPA couldn't
 do it anymore okay oh yeah
 but you know in
inth a say they accident remove the default a
 while for a few years and then they put
 back so and not less let's
to you you also mentioned in passing
 very quickly you say the last week two years of
 computer science the research you know there are there are awful
 things that if they use old tricks and 20
 so uh yeah that's
 uh that's not long little
 discouraging but uh you know but
 I I still dare to ask e how
 do you feel about a to loss to
 sixty years progress in AI
 Oh aye that's easy
 because again if you're a biologist
 and
 I used to be and
 you know something about
 the human way the human brain works
 an enormous ly large part
 of every mammalian brain that most
 brains are like
 machine learning
 they're basically quick
 correlators
 and so
 a big machine learning system is kind of like a super
 pigeon and you
get a lot of good things out of a super pigeon and in order
 to do something right now that
 we would call real intelligence
 the name AI got stolen now
 now it's called general AI
 this is one way of telling that things have
 gotten very very wrong so I
 even lost four years well
 I'm with you when the people are who are doing
 it co-opted the
 name with a subset of the meaning to claim success
Wisie called AI well people
 wanted to have success and so they decide
work on the hard problems which of course are the cognitive
 parts and so the
 cognitive stuff has been very poorly funded
 over the last 40 years really
 poorly I'm speaking from the standpoint of the
 US okay because I'm mad weird
 and you know some
 people have worked at it one
 way or another the the
 people at Vulcan Labs we're looking at cognitive
 AI Doug Linnet
 of the site project looking at cognitive AI but and some
 people have started looking at now with this drive
 towards explanation
 and drive
 towards having a user interface
 that humans can deal with that
 user interface if it's going to work in human
 terms it has to have a context similar to
common sense world that human beings have hardly
 any work has been done on this percentage-wise
 in the last 40 years and so
 I think that the
 what ml
 has done is
 impressive and fun and it's
needed but I wouldn't confuse it with real AI
 not even a little bit
whoa at
 least you agree you know machine learning as Pascal
 you know through the tremendous progress in the last ten
 years and the deep learning in particular
 yeah now we finally have some networks
 that can work can solve problems
 you know now you have machines that can recognize faces better
 than most of humans and
 solve a lot of real-world
 problems but do you have a pass
 am I like some song you know and then
 let me come back for the Cosima of the means theme of the conference
 here is the next decade of AI so
 what's your prediction Oh excitation
 oh your region you meant about
 vision or Cisco I think the first thing is
 to take the term intelligence seriously
 really seriously just
 like one of the problems with
 the thing called computer science is
 that term science was taken seriously
 in the 60s and
 the 70s but now it means engineering in
United States at least if you talk to any
 computer science graduate student and ask them what their
 field is they'll give you an engineering explanation
 not a science why so that you
term that got co-opted is object-oriented
 meant something
 in the 60s and when it became popular
 because it was very successful Xerox PARC
 everybody wanted it and so an enormous number
 of languages started appearing that were called object-oriented
 that weren't at all see this happens
over again because people want to be successful they
 want to feel part of the winning team
 you can buy jeans you
 know jeans that we wear that have
 the Harvard logo on the back do
 you want to feel successful I'm
 conniving cotwell this is part of the brain
 it's called the magic of contagion
 is these guys are successful I
 want to do what I'm gonna claim I'm doing it I'll do a subset
 so yeah so take it seriously
 draw a high threshold for what it
 means and don't worry about you know quit writing
 papers on stuff that
 isn't interesting what about one
 of the reasons that ml got going yeah
 is because of kohonen
 showing that certain
 kinds of matrix math was
 equivalent to certain kinds of perceptrons all
 of a sudden academics could write papers with math in
 them if you look at what that math
 does it's not that interesting or impressive it's
 basically a big correlator whereas
 judea pearl who I think is
 a guest of your conference I hope he's
 a great play yes he calls
 ml curve fitting
 yeah if you call it what it is you
 might want to work on something more if you're
working in the field of AI if you're calling the little thing
 you're doing AI even though it's using
 thousands of machine cycles and special chips and
everything but if you already working on a subset you can't claim
 anything interesting about the large field so
 you know main advice to give
 to any young researchers hey get real
 don't worry about yeah
 there's always  no question about
 having the right papers to get your PhD and
 having a deal look the people who
make the breakthroughs here are people who just don't care
 about that yeah I don't want
 I don't mind the funders funding
 everybody else but if the funders omit funding
 the people who can do the breakthroughs because of
 the orthodoxy of this stuff that
 isn't it then it's a disaster and
 I think of a lot of what's been going on in computing the
 last 20 to 25 years in general as a complete
 disaster a great
 point you know I I'm sure many audience
 I have heard you uh you know many
 in the audience has heard your demise and
 I want you you know your
 memory data but you know you you you you misses some query good point
 you're not on paying too much attention on
 paper publications and papers and
 today maybe citations all those things so
 one question I have for you is when
 you were at a park right
 when you were working on this the graphical user interface
 you know and there's
 not you know you people will argue they're not much but
 much massing it you know that this is not
 use differentiation a differential equation
 and and how
 do you convince your boss now this
work there's going to be a picture and in this change
 the entire interactive mode of computing
 and that will lead today you
 know internet whatever in mobile devices
 you know read the paper look at my talk I
 never had to convince my boss of one
 not one thing
 because the bar and
 the boss who's Taylor he
 just hired me and said follow your instincts that's
 the only direction that's the
 and Taylor never told any researcher at Parc
 any project that he was that he
us to do never great great
 high teen don't make me talk or
 neither did you think about my in so far
take a good with other and whatnot what am I know
 I was paraphrasing what
 are you your sister said in Chinese yeah but then
 let me follow up on this same
 topic you know how do you then generally
 carry your idea be accepted in the community
well
 you know and that that's more important right ya
 basta you don't have to do whatever you want do better then how
 do people come yes they your stuff it's
 great okay now most of my ideas haven't
 been accepted in the community that's okay but
 is there a few right that your what you
 got rented programming and there's a graphic interface those
 not the
 the main things that are called object-oriented
 languages aren't anything like how
 I described object-oriented no I lost
 on that one because I thought
 people thought they knew how to program and
 the graphical
 user interface at Parc and that's an interesting
 different talk because we can run
 all that software on today's
 machines I give I give talks
 using the exact software
 from Xerox PARC in fact that Steve Jobs saw
 so people can see what he saw and
 if I were to do it you would be shocked at
 some of the things I could do that I can't
 do in a PowerPoint or
 or keynote
 for instance you could the whole thing was
 live it wasn't a static presentation the
 whole every part of it was programmable
 and every part of it
 was safely examinable so none of that
 stuff is around today
 so no what happened was
 if you look at the these technologies
 coming out of park ones where
 there was no competitor
 even really opinion wise
 those made
 it like an example of that well for instance there was nothing
 like the laser printer right nothing
 so company
immediately doing that there's nothing like the Ethernet
 right everybody had tried to
 do a local area network that is the only one that ever worked
 and so that was
 easy people thought they knew had a program
 so the new programming techniques and
languages and stuff that we did a part were
 more or less rejected
 and people adapted the user-interface
 to a subset of it partly
 because the Mac was so weak
 compared to the what we what we had in
 park that it could only do a part of the problem so what
 you're getting out as a subset the
thing to take
 a look at is how bad the web and the web browser is
 compared to the software of
 the 80s forty years
till think so well
 the web web and the web browser go back to like nineteen ninety-three
 so a twenty seven twenty seven
 years and in most cases you still
 can't do WYSIWYG editing in the web browser
 that's pathetic and web and
 the web was developed on machines
 that had WYSIWYG editing on them
 so what you're seeing here is a bathtub setting
 and failure of people to
 do the work okay since
 we are on this topic the graphical user interface
 right and there you also mentioned object-oriented
 programming idea yeah people did
you know people do their own a different way wrong
 way and so you know just just a
 little bit gaza yeah so what are you preciate lasting
 jobs actually stoning your idea and let it angel
 man look I I told both
 Steve and Bill Gates
 take the whole I remember we were
 today the public domain Xerox
 let us write papers wasn't
 a secret visit I wrote a scientific American article that
 was published two years before Steve
up that showed the whole user interface and everything
 everything he saw in 79 was out
 in the world two years earlier so there
 was nothing secret about when I told this guy both
 of these guys is look take the whole idea
 don't take a subset of it and mess
 it up take say stealing
 I don't yeah no we're not none
 of us had Park tried to get
 rich that's okay by
 the way to your point about you know don't
 you care about X Y & Z no I
 myself by the quality of the effort I put into
 anything that's the only thing I control control
 other people's opinion right boy great
 plan the second thing is that the
 people at Park and in
 the ARPA community in general had an aesthetic Comeau connection
 we really
 really loved Lick Leiter's vision
 I mean loved it like you
 love a lover we
 really wanted it wasn't it was an emotional
 need that we had that we were called to it like
 people are called to religion or to being a doctor
 or to art and
 so what so what we and the
 the hiring the
 selection process Taylor was looking for people who are essentially
 artists who happened to have deep
 scientific backgrounds
 and like I said
 there are there are people like that I was one of them many
 of the people at Park were like that and boy
 an artist
 might be a little disappointed if somebody doesn't like
 their
 painting but not much
 like because that
 isn't why you're not painting it for to
sell the thing yeah artist
 art is about I I
 have these feelings that I would like to
 manifest so that
 other people get that's what you're doing
 and if if you feel like you've done the highest quality
 effort you can possibly do on this work
 what what more can you do you can't
 let some okay hi
 III need to pull your bag of it I better you know so
 you you have you know in park on your
 peel in your career you have event little awkward ideas yeah
but there was a story you actually went to visit
 y combinator in the
 in 2015 you did a graffiti on
 their slogan yes they say they
 will invent the product people
 want and you you cross
 out want and put a leak so
what is what was your thinking behind it and
 yeah well we want sugar
 we want that we
 want salt
 we want companionship these
 are biological need biological wants
 there dries we want stories
 so
 way to make money is to
 make a technological amplifier for any human want
 because a technological amplifier
 in the Industrial Revolution creates
 essentially a legal drug
 1/2 can you have these things
 we have to have these things so let me just explain
 the last thing and they don't quit although
 what a need is is something like education
 everybody needs deep
 education but many
 children don't want it marketing
 people hate the idea of needs marketing
 people want to sell to people's wants
 educators are trying
need and they're trying to figure out how to help them
 gain this what they need but it's
 we it generally requires a lot of work to
 deal with a need and much less work to deal with a lot
 say so our society
 is messed up in the over balance
between the fact that you could make easy money supplying
 nee supplying wants but
 it's gotten out of the habit of doing work necessary
 to take on a new need like
 learning lots of things you didn't know before
 that are completely new ok great
 you know the interest
 of time you know I I need to stop here
I want to stop with one last question you you only
 have you know you only need to answer you one sentence you know
 if you if you want to name one great
 product now you have a seen in the
 last 20 years what that
great product
 well
 the most the most fun thing that
 can be found online right
 now it's a company
 it's probably going to be a product
 but you can use it right now for free
 so the most
 fun thing I think over the last 20 years in the
 computer realm is is
 called croquet
 croquet is
this
 version is the fifth of five deep
 research efforts over the last 20
 years to see if
 the thesis of Dave
 Reed at MIT and the 70s would actually work so
 it's a mass of something
 that is as large as the Internet and
 massive deployment of pseudo time
 computations is this is up at
 the level of importance with tcp/ip
 ok also I
 have to cut off here and again
I was thank you very much for your enlightening talk and
 the interactions we have and I know
 we can chat back space for another hour or
 two you know and there are also many questions on the audience
 but I have to cut it here was thank you so
 much and hopefully next year in the be a conference
 will inviting you coming again and we
 have another fireside chat thank you Thanks
 with a bid and
 salud even a jab
 you know a machine apart you know show me doc hi
Alan
 just wait a few minutes we want to yeah
 okay yeah we should take
 a photo yeah so this is a virtue a
 way of taking photos kind
 of sweet oh yeah oh yeah yeah oh
 yeah oh yeah
 well
 first I need a wing one here
 anyway I want to see how
there's
 one question from our director
 of the BAA I okay
 Alice thank you very much for your presentation
 in fact I believe we represent where is higher
 many people in China but I
 have a question question is that why I
 don't know Biagio that
 have okay but only why and
 Park in the world No ten
 knots many market
 than what so what what the what is the reason but
 I I want to further extend your
 idea on the Med money you know even we spend
 for example in China a firm present but
 it meant money but this do not park in
 China what the reason for that that way
 I think so I'm the last thing I think
 the thing is to look to see what the researchers
 think their goals actually are I
 believe
 the reasons that let's say the
 other ninety-five
 presents money is no more money
 compared with your mad money but
 the clever people is limited
 follow
 the no more money they cannot spend
 their time on free it's flow its
 flow region so that's why no parking no
 real you know me occasionally
 so princess in
 biology and exam there are several examples
 of things in biology that
 are like Xerox PARC one
 of them is called Jane Elliott labs in
 outside of Washington
 DC it was set up by the Nobel Prize winner Sydney
 Brenner and
 yeah
 but generally so
 one of the interesting things that has happened is
 certain people like Paula Helen who
 is one of the Microsoft guys he
 decided to and he has billions
 so he decided that he
 was going to set up what he called Xerox
 PARC done right and he
 set it up in Palo Alto and he hired a lot of Xerox falcata
 interval it's called interval yes and
 well after
 about six months or a year or so they invited me to
 visit and
I was there for about a minute and I said well this isn't like
 Xerox PARC at all yes
 just then looking around
 they had
some of these people who are so productive at
 Xerox PARC er they were not being productive at all it
 was easy to trace it back up to Paul Allen
 who was not
 content with just funding it he wanted to be one
 of the guys and I
 said to him I said Paul you you're a billionaire
 you've done this that and the other thing but really
 don't you admit that you've never done any real
computer science research in your entire life
 know about it and especially what do you
know about it now why are you
 trying to meddle with what's
going on you have to you're
 not good if you're not going to actually try and use
process that Xerox PARC don't call interval
 Xerox PARC done right you're
 not going to get it and so the
 thing I would do with with your young scientists is
 for instance one of the problems
 in graduate school today in the US
 is the fact that the housing market
 in the US has expanded
 an additional factor of 10
 in cost
 over everything else by
 inflation what this means is no
 graduate student
 at Stanford can afford to buy a house in Palo
 Alto when they get out and get a job they
 can't do it they have to go to Google
 and even there it's
 hard to buy a house and pal so the this
 some almost nobody wants
 to stay in and do research and if you
in and do research who is going to fund you well
 not NSF because NSF
 funding in computing is almost entirely like
 engineering proposal left in your proposal
 you have to explain to them how you're going to solve the problem this
 is the proposal whereas
 at ARPA you would scribble something
 on the back of an envelope and say here's
 the issue I want to work on and if they
 thought you were a good guy they would or a good
 gal they would say yeah that's that
 was was in a response to the question
 there now nobody ever asked me to justify a
 single thing yet when
 I was in grad school or at Xerox PARC they
 just I walked in there they gave me the equivalent
 of a two million dollar a year budget and I was
 one year out of my PhD right
 so one year but
 they thought I had
 potential and know
 if I stub my toe on the thing while I was
 just one of a bunch there and
 the theory there was
 was it's like going
 out on a in a farm
 what you're interested there is yield
 not every single
 thing being right you you're
 growing everything as well as you can but
 not everything is going to grow and no farmer
 cries about that it's kind of the overhead
 and the same thing is not
 succeeding in your research when
you're doing this kind of research it's not failure its
 overhead it's the overhead
 it's like in football
 the percentage of
 goals made by a football player is really
 low compared to the shots on goal
 right missing
 a shot on goal when you're playing football that's
 not an error that's overhead it's
 a difficult game and you're willing to pay
 people immense amounts of money to
 every once in a while score goal
 in a game that's the way it works the
 sports world understands is completely
 because what you what
 you're trying to do is something difficult a big
 problem with bureaucracies especially large
 ones is they are hiring so
they have to dip into the middle of the bell curve so
 you're getting people that have to be managed
 and all of a sudden you have started having layers
 good point and you have
 you have accountability ya
 know you're much better off so in America there's the American
 MacArthur Foundation
probably heard of that they have this thing called genius
 grants so every year
 they give five years of support to
 35 artists in some field period
 there
 are no goals behind its whatever the artist does it's
 just to get artists artists can't not do their art
 right that's the definition of an
 artist so if you get somebody who takes direction
 in this area you
 don't want them yeah nothing you don't
 want them because they're not following their art what
 you want is to get the best artists you
 can get in there and take 30% of the result and be
 happy
 in lighting you know extensions
 hander you know there
 is one thing I hear
 is you know I look at through your 19 rules of
 you know managing
 the great lab
 operated research or math managing man money
I think you imagine a number of them meter no control
 don't contract control bill Domingo don't don't matter
 are wrong and also funding people
 not project which is which is exactly
 what Pai is doing so
 we're not funding project we have found in people and
 we're also funding young people and
 we don't want people apply we say you're
because you're gonna hear some money so uh
 so high I remembered and
 next time when I've got a challenge how
 say you know dr. Allen case said
 that okay so thank you very much Alan
 and I hope well
 I will hope to be alive the
 next time this comes up oh that would be very still
 that's thank you thank you
ha see ya see
 ya Thank you Thank You Alan thank
 you John thank you ah one
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