Finding life we can't imagine | Christoph Adami

44,026 views ・ 2011-10-04

TED


Please double-click on the English subtitles below to play the video.

00:15
So, I have a strange career.
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I know it because people come up to me, like colleagues, and say,
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"Chris, you have a strange career."
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(Laughter)
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And I can see their point,
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because I started my career as a theoretical nuclear physicist.
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And I was thinking about quarks and gluons and heavy ion collisions,
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and I was only 14 years old --
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No, no, I wasn't 14 years old.
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But after that,
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I actually had my own lab
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in the Computational Neuroscience department,
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and I wasn't doing any neuroscience.
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Later, I would work on evolutionary genetics,
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and I would work on systems biology.
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But I'm going to tell you about something else today.
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I'm going to tell you about how I learned something about life.
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And I was actually a rocket scientist.
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I wasn't really a rocket scientist,
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but I was working at the Jet Propulsion Laboratory
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in sunny California, where it's warm;
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whereas now I am in the mid-West, and it's cold.
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But it was an exciting experience.
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One day, a NASA manager comes into my office,
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sits down and says,
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"Can you please tell us, how do we look for life outside Earth?"
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And that came as a surprise to me,
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because I was actually hired to work on quantum computation.
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Yet, I had a very good answer.
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I said, "I have no idea."
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(Laughter)
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And he told me, "Biosignatures, we need to look for a biosignature."
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And I said, "What is that?"
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And he said, "It's any measurable phenomenon
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that allows us to indicate the presence of life."
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And I said, "Really?
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Because isn't that easy?
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I mean, we have life.
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Can't you apply a definition,
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for example, a Supreme Court-like definition of life?"
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And then I thought about it a little bit, and I said,
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"Well, is it really that easy?
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Because, yes, if you see something like this,
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then all right, fine, I'm going to call it life --
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no doubt about it.
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But here's something."
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And he goes, "Right, that's life too. I know that."
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Except, if you think that life is also defined by things that die,
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you're not in luck with this thing,
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because that's actually a very strange organism.
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It grows up into the adult stage like that
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and then goes through a Benjamin Button phase,
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and actually goes backwards and backwards until it's like a little embryo again,
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and then actually grows back up, and back down and back up --
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sort of yo-yo -- and it never dies.
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So it's actually life,
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but it's actually not as we thought life would be.
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And then you see something like that.
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And he was like, "My God, what kind of a life form is that?"
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Anyone know?
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It's actually not life, it's a crystal.
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So once you start looking and looking at smaller and smaller things --
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so this particular person wrote a whole article and said,
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"Hey, these are bacteria."
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Except, if you look a little bit closer,
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you see, in fact, that this thing is way too small to be anything like that.
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So he was convinced, but, in fact, most people aren't.
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And then, of course, NASA also had a big announcement,
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and President Clinton gave a press conference,
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about this amazing discovery of life in a Martian meteorite.
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Except that nowadays, it's heavily disputed.
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If you take the lesson of all these pictures,
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then you realize, well, actually, maybe it's not that easy.
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Maybe I do need a definition of life
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in order to make that kind of distinction.
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So can life be defined?
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Well how would you go about it?
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Well of course, you'd go to Encyclopedia Britannica and open at L.
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No, of course you don't do that; you put it somewhere in Google.
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And then you might get something.
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(Laughter)
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And what you might get --
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and anything that actually refers to things that we are used to,
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you throw away.
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And then you might come up with something like this.
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And it says something complicated with lots and lots of concepts.
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Who on Earth would write something as convoluted and complex and inane?
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Oh, it's actually a really, really, important set of concepts.
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So I'm highlighting just a few words
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and saying definitions like that rely on things
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that are not based on amino acids or leaves or anything that we are used to,
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but in fact on processes only.
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And if you take a look at that,
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this was actually in a book that I wrote that deals with artificial life.
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And that explains why that NASA manager was actually in my office to begin with.
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Because the idea was that, with concepts like that,
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maybe we can actually manufacture a form of life.
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And so if you go and ask yourself, "What on Earth is artificial life?",
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let me give you a whirlwind tour of how all this stuff came about.
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And it started out quite a while ago,
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when someone wrote one of the first successful computer viruses.
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And for those of you who aren't old enough,
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you have no idea how this infection was working --
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namely, through these floppy disks.
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But the interesting thing about these computer virus infections
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was that, if you look at the rate at which the infection worked,
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they show this spiky behavior that you're used to from a flu virus.
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And it is in fact due to this arms race
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between hackers and operating system designers
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that things go back and forth.
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And the result is kind of a tree of life of these viruses,
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a phylogeny that looks very much like the type of life
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that we're used to, at least on the viral level.
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So is that life?
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Not as far as I'm concerned.
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Why? Because these things don't evolve by themselves.
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In fact, they have hackers writing them.
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But the idea was taken very quickly a little bit further,
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when a scientist working at the Santa Fe Institute decided,
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"Why don't we try to package these little viruses
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in artificial worlds inside of the computer
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and let them evolve?"
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And this was Steen Rasmussen.
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And he designed this system, but it really didn't work,
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because his viruses were constantly destroying each other.
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But there was another scientist who had been watching this, an ecologist.
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And he went home and says, "I know how to fix this."
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And he wrote the Tierra system,
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and, in my book,
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is in fact one of the first truly artificial living systems --
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except for the fact that these programs didn't really grow in complexity.
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So having seen this work, worked a little bit on this,
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this is where I came in.
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And I decided to create a system that has all the properties
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that are necessary to see, in fact, the evolution of complexity,
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more and more complex problems constantly evolving.
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And of course, since I really don't know how to write code, I had help in this.
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I had two undergraduate students
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at California Institute of Technology that worked with me.
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That's Charles Ofria on the left, Titus Brown on the right.
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They are now, actually, respectable professors
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at Michigan State University,
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but I can assure you, back in the day, we were not a respectable team.
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And I'm really happy that no photo survives
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of the three of us anywhere close together.
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But what is this system like?
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Well I can't really go into the details,
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but what you see here is some of the entrails.
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But what I wanted to focus on is this type of population structure.
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There's about 10,000 programs sitting here.
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And all different strains are colored in different colors.
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And as you see here, there are groups that are growing on top of each other,
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because they are spreading.
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Any time there is a program that's better at surviving in this world,
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due to whatever mutation it has acquired,
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it is going to spread over the others and drive the others to extinction.
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So I'm going to show you a movie
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where you're going to see that kind of dynamic.
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And these kinds of experiments are started with programs that we wrote ourselves.
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We write our own stuff, replicate it, and are very proud of ourselves.
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And we put them in, and what you see immediately
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is that there are waves and waves of innovation.
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By the way, this is highly accelerated,
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so it's like a 1000 generations a second.
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But immediately, the system goes like, "What kind of dumb piece of code was this?
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This can be improved upon in so many ways, so quickly."
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So you see waves of new types taking over the other types.
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And this type of activity goes on for quite a while,
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until the main easy things have been acquired by these programs.
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And then, you see sort of like a stasis coming on
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where the system essentially waits
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for a new type of innovation, like this one,
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which is going to spread over all the other innovations that were before
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and is erasing the genes that it had before,
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until a new type of higher level of complexity has been achieved.
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And this process goes on and on and on.
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So what we see here
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is a system that lives in very much the way we're used to how life goes.
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But what the NASA people had asked me really was,
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"Do these guys have a biosignature?
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Can we measure this type of life?
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Because if we can,
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maybe we have a chance of actually discovering life somewhere else
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without being biased by things like amino acids."
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So I said, "Well, perhaps we should construct a biosignature
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based on life as a universal process.
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In fact, it should perhaps make use of the concepts that I developed
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just in order to sort of capture what a simple living system might be."
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And the thing I came up with --
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I have to first give you an introduction about the idea,
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and maybe that would be a meaning detector,
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rather than a life detector.
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And the way we would do that --
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I would like to find out how I can distinguish text
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that was written by a million monkeys, as opposed to text that is in our books.
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And I would like to do it in such a way
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that I don't actually have to be able to read the language,
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because I'm sure I won't be able to.
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As long as I know that there's some sort of alphabet.
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So here would be a frequency plot
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of how often you find each of the 26 letters of the alphabet
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in a text written by random monkeys.
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And obviously, each of these letters comes off about roughly equally frequent.
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But if you now look at the same distribution in English texts,
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it looks like that.
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And I'm telling you, this is very robust across English texts.
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And if I look at French texts, it looks a little bit different,
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or Italian or German.
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They all have their own type of frequency distribution,
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but it's robust.
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It doesn't matter whether it writes about politics or about science.
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It doesn't matter whether it's a poem or whether it's a mathematical text.
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It's a robust signature,
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and it's very stable.
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As long as our books are written in English --
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because people are rewriting them and recopying them --
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it's going to be there.
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So that inspired me to think about, well, what if I try to use this idea
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in order, not to detect random texts from texts with meaning,
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but rather detect the fact that there is meaning
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in the biomolecules that make up life.
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But first I have to ask:
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what are these building blocks,
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like the alphabet, elements that I showed you?
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Well it turns out, we have many different alternatives
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for such a set of building blocks.
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We could use amino acids,
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we could use nucleic acids, carboxylic acids, fatty acids.
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In fact, chemistry's extremely rich, and our body uses a lot of them.
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So that we actually, to test this idea,
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first took a look at amino acids and some other carboxylic acids.
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And here's the result.
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Here is, in fact, what you get
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if you, for example, look at the distribution of amino acids
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on a comet or in interstellar space or, in fact, in a laboratory,
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where you made very sure that in your primordial soup,
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there is no living stuff in there.
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What you find is mostly glycine and then alanine
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and there's some trace elements of the other ones.
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That is also very robust --
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what you find in systems like Earth
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where there are amino acids, but there is no life.
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But suppose you take some dirt and dig through it
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and then put it into these spectrometers,
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because there's bacteria all over the place;
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or you take water anywhere on Earth,
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because it's teaming with life,
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and you make the same analysis;
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the spectrum looks completely different.
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Of course, there is still glycine and alanine,
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but in fact, there are these heavy elements, these heavy amino acids,
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that are being produced because they are valuable to the organism.
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And some other ones that are not used in the set of 20,
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they will not appear at all in any type of concentration.
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So this also turns out to be extremely robust.
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It doesn't matter what kind of sediment you're using to grind up,
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whether it's bacteria or any other plants or animals.
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Anywhere there's life,
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you're going to have this distribution,
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as opposed to that distribution.
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And it is detectable not just in amino acids.
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Now you could ask:
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Well, what about these Avidians?
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The Avidians being the denizens of this computer world
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where they are perfectly happy replicating and growing in complexity.
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So this is the distribution that you get if, in fact, there is no life.
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They have about 28 of these instructions.
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And if you have a system where they're being replaced one by the other,
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it's like the monkeys writing on a typewriter.
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Each of these instructions appears with roughly the equal frequency.
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But if you now take a set of replicating guys
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like in the video that you saw,
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it looks like this.
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So there are some instructions
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that are extremely valuable to these organisms,
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and their frequency is going to be high.
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And there's actually some instructions that you only use once, if ever.
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So they are either poisonous
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or really should be used at less of a level than random.
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In this case, the frequency is lower.
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And so now we can see, is that really a robust signature?
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I can tell you indeed it is,
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because this type of spectrum, just like what you've seen in books,
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and just like what you've seen in amino acids,
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it doesn't really matter how you change the environment,
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it's very robust, it's going to reflect the environment.
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So I'm going to show you now a little experiment that we did.
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And I have to explain to you,
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the top of this graph
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shows you that frequency distribution that I talked about.
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Here, that's the lifeless environment
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where each instruction occurs at an equal frequency.
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And below there, I show, in fact, the mutation rate in the environment.
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And I'm starting this at a mutation rate that is so high
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that even if you would drop a replicating program
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that would otherwise happily grow up to fill the entire world,
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if you drop it in, it gets mutated to death immediately.
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So there is no life possible at that type of mutation rate.
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But then I'm going to slowly turn down the heat, so to speak,
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and then there's this viability threshold
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where now it would be possible for a replicator to actually live.
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And indeed, we're going to be dropping these guys into that soup all the time.
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So let's see what that looks like.
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So first, nothing, nothing, nothing.
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Too hot, too hot.
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Now the viability threshold is reached,
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and the frequency distribution has dramatically changed
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and, in fact, stabilizes.
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And now what I did there
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is, I was being nasty, I just turned up the heat again and again.
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And of course, it reaches the viability threshold.
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And I'm just showing this to you again because it's so nice.
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You hit the viability threshold.
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The distribution changes to "alive!"
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And then, once you hit the threshold
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where the mutation rate is so high that you cannot self-reproduce,
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you cannot copy the information forward to your offspring
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without making so many mistakes that your ability to replicate vanishes.
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And then, that signature is lost.
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What do we learn from that?
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Well, I think we learn a number of things from that.
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One of them is,
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if we are able to think about life in abstract terms --
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and we're not talking about things like plants,
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and we're not talking about amino acids,
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and we're not talking about bacteria,
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but we think in terms of processes --
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then we could start to think about life
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not as something that is so special to Earth,
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but that, in fact, could exist anywhere.
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Because it really only has to do with these concepts of information,
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of storing information within physical substrates --
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anything: bits, nucleic acids, anything that's an alphabet --
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and make sure that there's some process
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so that this information can be stored for much longer than you would expect --
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the time scales for the deterioration of information.
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And if you can do that, then you have life.
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So the first thing that we learn
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is that it is possible to define life in terms of processes alone,
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without referring at all to the type of things that we hold dear,
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as far as the type of life on Earth is.
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And that, in a sense, removes us again,
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like all of our scientific discoveries, or many of them --
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it's this continuous dethroning of man --
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of how we think we're special because we're alive.
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Well, we can make life; we can make life in the computer.
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Granted, it's limited,
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but we have learned what it takes in order to actually construct it.
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And once we have that,
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then it is not such a difficult task anymore
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to say, if we understand the fundamental processes
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that do not refer to any particular substrate,
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then we can go out and try other worlds,
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figure out what kind of chemical alphabets might there be,
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figure enough about the normal chemistry, the geochemistry of the planet,
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so that we know what this distribution would look like in the absence of life,
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and then look for large deviations from this --
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this thing sticking out, which says, "This chemical really shouldn't be there."
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Now we don't know that there's life then,
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but we could say,
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"Well at least I'm going to have to take a look very precisely at this chemical
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and see where it comes from."
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And that might be our chance of actually discovering life
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when we cannot visibly see it.
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And so that's really the only take-home message that I have for you.
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Life can be less mysterious than we make it out to be
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when we try to think about how it would be on other planets.
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And if we remove the mystery of life,
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then I think it is a little bit easier for us to think about how we live,
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and how perhaps we're not as special as we always think we are.
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And I'm going to leave you with that.
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And thank you very much.
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(Applause)
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About this website

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