< Return to Video

The mathematician who cracked Wall Street

  • 0:00 - 0:03
    Chris Anderson: You were something of
    a mathematical phenom.
  • 0:03 - 0:06
    You had already taught
    at Harvard and MIT at a young age.
  • 0:06 - 0:09
    And then the NSA came calling.
  • 0:09 - 0:11
    What was that about?
  • 0:11 - 0:15
    Jim Simons: Well the NSA --
    that's the National Security Agency --
  • 0:15 - 0:18
    they didn't exactly come calling.
  • 0:18 - 0:22
    They had an operation at Princeton,
    where they hired mathematicians
  • 0:22 - 0:25
    to attack secret codes
    and stuff like that.
  • 0:25 - 0:28
    And I knew that existed.
  • 0:28 - 0:30
    And they had a very good policy
  • 0:30 - 0:33
    because you could do half your time
    at your own mathematics
  • 0:33 - 0:37
    and at least half your time
    working on their stuff.
  • 0:38 - 0:39
    And they paid a lot.
  • 0:39 - 0:42
    So that was an irresistible pull.
  • 0:42 - 0:44
    So, I went there.
  • 0:44 - 0:46
    CA: So you were a code-cracker.
  • 0:46 - 0:46
    JS: I was.
  • 0:46 - 0:48
    CA: Until you got fired.
  • 0:48 - 0:49
    JS: Well, I did get fired. Yes.
  • 0:49 - 0:51
    CA: How come?
  • 0:51 - 0:53
    JS: Well, how come?
  • 0:54 - 0:58
    I got fired because,
    well the Vietnam War was on,
  • 0:58 - 1:04
    and the boss of bosses in my organization
    was a big fan of the war
  • 1:04 - 1:09
    and wrote a New York Times article,
    a magazine section cover story,
  • 1:09 - 1:11
    about how we're going
    to win in Vietnam.
  • 1:11 - 1:14
    And I didn't like that war,
    I thought it was stupid.
  • 1:14 - 1:16
    And I wrote a letter to the Times,
    which they published,
  • 1:16 - 1:20
    saying not everyone
    who works for Maxwell Taylor,
  • 1:20 - 1:25
    if anyone remembers that name,
    agrees with his views.
  • 1:25 - 1:27
    And I gave my own views.
  • 1:27 - 1:29
    CA: Oh, OK. I can see that would --
  • 1:29 - 1:32
    JS: Which were different
    from General Taylor's.
  • 1:32 - 1:34
    But in the end nobody said anything.
  • 1:34 - 1:38
    But then, I was 29 years old at this time
    and some kid came around
  • 1:38 - 1:41
    and said he was a stringer
    from Newsweek magazine
  • 1:41 - 1:46
    and he wanted to interview me
    and ask what I was doing about my views.
  • 1:46 - 1:50
    And I told him, I said,
    "I'm doing mostly mathematics now,
  • 1:50 - 1:54
    and when the war is over
    then I'll do mostly their stuff."
  • 1:54 - 1:57
    Then I did the only
    intelligent thing I'd done that day --
  • 1:57 - 2:01
    I told my local boss
    that I gave that interview.
  • 2:01 - 2:03
    And he said, "What'd you say?"
  • 2:03 - 2:04
    And I told him what I said.
  • 2:04 - 2:06
    And then he said,
    "I've got to call Taylor."
  • 2:06 - 2:09
    He called Taylor; that took 10 minutes.
  • 2:09 - 2:12
    I was fired five minutes after that.
  • 2:12 - 2:13
    CA: OK.
  • 2:13 - 2:14
    JS: But it wasn't bad.
  • 2:14 - 2:16
    CA: It wasn't bad, because
    you went on to Stony Brook
  • 2:16 - 2:20
    and stepped up your mathematical career.
  • 2:20 - 2:23
    You started working
    with this man here. Who is this?
  • 2:24 - 2:26
    JS: Oh, [Shiing-Shen] Chern.
  • 2:26 - 2:29
    Chern was one of the great
    mathematicians of the century.
  • 2:29 - 2:34
    I had known him when
    I was a graduate student at Berkeley.
  • 2:34 - 2:36
    And I had some ideas,
  • 2:36 - 2:38
    and I brought them to him
    and he liked them.
  • 2:38 - 2:45
    Together, we did this work
    which you can easily see up there.
  • 2:45 - 2:46
    There it is.
  • 2:47 - 2:51
    CA: It led to you publishing
    a famous paper together.
  • 2:51 - 2:54
    Can you explain at all what that work was?
  • 2:55 - 2:56
    JS: No.
  • 2:56 - 2:58
    (Laughter)
  • 2:59 - 3:01
    JS: I mean, I could
    explain it to somebody.
  • 3:01 - 3:02
    (Laughter)
  • 3:03 - 3:05
    CA: How about explaining this?
  • 3:05 - 3:08
    JS: But not many.
    Not many people.
  • 3:09 - 3:11
    CA: I think you told me
    it had something to do with spheres,
  • 3:11 - 3:13
    so let's start here.
  • 3:13 - 3:17
    JS: Well, it did,
    but I'll say about that work --
  • 3:17 - 3:21
    it did have something to do with that,
    but before we get to that --
  • 3:21 - 3:24
    that work was good mathematics.
  • 3:24 - 3:28
    I was very happy with it; so was Chern.
  • 3:28 - 3:33
    It even started a little subfield
    that's now flourishing.
  • 3:33 - 3:38
    But, more interestingly,
    it happened to apply to physics,
  • 3:38 - 3:42
    something we knew nothing about --
    at least I knew nothing about physics,
  • 3:42 - 3:44
    and I don't think Chern
    knew a heck of a lot.
  • 3:44 - 3:48
    And about 10 years
    after the paper came out,
  • 3:48 - 3:53
    a guy named Ed Witten in Princeton
    started applying it to string theory
  • 3:53 - 3:58
    and people in Russia started applying it
    to what's called "condensed matter."
  • 3:58 - 4:03
    Today, those things in there
    called Chern-Simons invariants
  • 4:03 - 4:04
    have spread through a lot of physics.
  • 4:04 - 4:06
    And it was amazing.
  • 4:06 - 4:07
    We didn't know any physics.
  • 4:07 - 4:11
    It never occurred to me
    that it would be applied to physics.
  • 4:11 - 4:14
    But that's the thing about mathematics --
    you never know where it's going to go.
  • 4:14 - 4:16
    CA: This is so incredible.
  • 4:16 - 4:20
    So, we've been talking about
    how evolution shapes human minds
  • 4:20 - 4:23
    that may or may not perceive the truth.
  • 4:23 - 4:26
    Somehow, you come up
    with a mathematical theory,
  • 4:26 - 4:28
    not knowing any physics,
  • 4:28 - 4:31
    discover two decades later
    that it's being applied
  • 4:31 - 4:34
    to profoundly describe
    the actual physical world.
  • 4:34 - 4:35
    How can that happen?
  • 4:35 - 4:36
    JS: God knows.
  • 4:36 - 4:38
    (Laughter)
  • 4:39 - 4:42
    But there's a famous physicist
    named [Eugene] Wigner,
  • 4:42 - 4:47
    and he wrote an essay on the
    unreasonable effectiveness of mathematics.
  • 4:48 - 4:49
    Somehow, this mathematics,
  • 4:49 - 4:52
    which is rooted in the real world
    in some sense --
  • 4:52 - 4:56
    we learn to count, measure,
    everyone would do that --
  • 4:56 - 4:59
    and then it flourishes on its own.
  • 4:59 - 5:02
    But so often it comes back
    to save the day.
  • 5:02 - 5:04
    General relativity is an example.
  • 5:04 - 5:08
    [Hermann] Minkowski had this geometry,
    and Einstein realized,
  • 5:08 - 5:12
    hey, it's the very thing
    in which I can cast General Relativity.
  • 5:12 - 5:15
    So, you never know. It is a mystery.
  • 5:15 - 5:16
    It is a mystery.
  • 5:16 - 5:20
    CA: So, here's a mathematical
    piece of ingenuity.
  • 5:20 - 5:21
    Tell us about this.
  • 5:21 - 5:27
    JS: Well, that's a ball -- it's a sphere,
    and it has a lattice around it --
  • 5:27 - 5:30
    you know, those squares.
  • 5:31 - 5:35
    What I'm going to show here was
    originally observed by [Leonhard] Euler,
  • 5:35 - 5:38
    the great mathematician, in the 1700's.
  • 5:38 - 5:43
    And it gradually grew to be
    a very important field in mathematics:
  • 5:43 - 5:47
    algebraic topology, geometry.
  • 5:47 - 5:51
    That paper up there had its roots in this.
  • 5:51 - 5:53
    So, here's this thing:
  • 5:53 - 5:58
    it has eight vertices,
    12 edges, six faces.
  • 5:58 - 6:01
    And if you look at the difference --
    vertices minus edges plus faces --
  • 6:01 - 6:03
    you get two.
  • 6:03 - 6:05
    OK, well, two? That's a good number.
  • 6:05 - 6:09
    Here's a different way of doing it --
    these are triangles covering --
  • 6:09 - 6:18
    this has 12 vertices and 30 edges
    and 20 faces, 20 tiles.
  • 6:18 - 6:23
    And vertices minus edges
    plus faces still equals two.
  • 6:23 - 6:26
    And in fact you could
    do this any which way,
  • 6:26 - 6:29
    cover this thing with all kinds
    of polygons and triangles
  • 6:29 - 6:31
    and mix them up.
  • 6:31 - 6:34
    And you take vertices minus edges
    plus faces -- you'll get two.
  • 6:34 - 6:36
    Here's a different shape.
  • 6:36 - 6:40
    This is a torus, the surface of a donut,
  • 6:40 - 6:43
    16 vertices covered by these rectangles,
  • 6:43 - 6:46
    32 edges, 16 faces.
  • 6:46 - 6:49
    Vertices minus edges comes out 0.
  • 6:49 - 6:51
    It'll always come out 0.
  • 6:51 - 6:55
    Every time you cover a torus
    with squares or triangles
  • 6:55 - 7:00
    or anything like that,
    you're going to get 0.
  • 7:00 - 7:03
    So, this is called
    the Euler characteristic.
  • 7:03 - 7:07
    And it's what's called
    a topological invariant.
  • 7:07 - 7:08
    It's pretty amazing.
  • 7:08 - 7:11
    No matter how you do it,
    you're always get the same answer.
  • 7:11 - 7:16
    So that was the first sort of thrust,
    from the mid-1700s,
  • 7:16 - 7:21
    into a subject which is now
    called algebraic topology.
  • 7:21 - 7:23
    CA: And your own work
    took an idea like this
  • 7:23 - 7:26
    and moved it into
    higher-dimensional theory,
  • 7:26 - 7:30
    higher-dimensional objects,
    and found new invariants?
  • 7:30 - 7:34
    JS: Yes. Well, there were already
    higher-dimensional invariants:
  • 7:34 - 7:39
    Pontryagin classes --
    actually, there were Chern classes.
  • 7:39 - 7:42
    There were a bunch
    of these types of invariants.
  • 7:42 - 7:46
    I was struggling to work on one of them
  • 7:46 - 7:51
    and model it sort of combinatorially
  • 7:51 - 7:53
    instead of the way it was typically done,
  • 7:53 - 7:58
    and that led to this work
    and we uncovered some new things.
  • 7:58 - 8:05
    But if it wasn't for Mr. Euler --
    who wrote almost 70 volumes of mathematics
  • 8:05 - 8:07
    and had 13 children
  • 8:07 - 8:13
    who he apparently would dandle on his knee
    while he was writing --
  • 8:13 - 8:20
    if it wasn't for Mr. Euler, there wouldn't
    perhaps be these invariants.
  • 8:20 - 8:24
    CA: OK, so that's at least given us
    a flavor of that amazing mind in there.
  • 8:25 - 8:27
    Let's talk about Renaissance.
  • 8:27 - 8:31
    Because you took that amazing mind
    and having been a code-cracker at the NSA,
  • 8:31 - 8:36
    you started to become a code-cracker
    in the financial industry.
  • 8:36 - 8:39
    I think you probably didn't buy
    efficient market theory.
  • 8:39 - 8:45
    Somehow you found a way of creating
    astonishing returns over two decades.
  • 8:45 - 8:46
    The way it's been explained to me,
  • 8:46 - 8:50
    what's remarkable about what you did
    wasn't just the size of the returns,
  • 8:50 - 8:54
    it's that you took them
    with surprisingly low volatility and risk
  • 8:54 - 8:56
    compared with other hedge funds.
  • 8:56 - 8:58
    So how on earth did you do this, Jim?
  • 8:58 - 9:02
    JS: I did it by assembling
    a wonderful group of people.
  • 9:02 - 9:06
    When I started doing trading, I had
    gotten a little tired of mathematics.
  • 9:06 - 9:09
    I was in my late 30s.
    I had a little money.
  • 9:09 - 9:13
    I started trading and it went very well.
  • 9:13 - 9:16
    I made quite a lot of money
    with pure luck.
  • 9:16 - 9:18
    I mean, I think it was pure luck.
  • 9:18 - 9:20
    It certainly wasn't mathematical modeling.
  • 9:20 - 9:24
    But in looking at the data,
    after a while I realized:
  • 9:24 - 9:26
    it looks like there's some structure here.
  • 9:26 - 9:30
    And I hired a few mathematicians,
    and we started making some models --
  • 9:30 - 9:34
    just the kind of thing we did back
    at IDA [Institute for Defense Analyses].
  • 9:34 - 9:37
    You design an algorithm,
    you test it out on a computer.
  • 9:37 - 9:39
    Does it work? Doesn't it work? And so on.
  • 9:39 - 9:41
    CA: Can we take a look at this?
  • 9:41 - 9:45
    Because here's a typical graph
    of some commodity.
  • 9:46 - 9:51
    I look at that, and I say,
    That's just a random, up-and-down walk --
  • 9:51 - 9:53
    maybe a slight upward trend
    over that whole period of time.
  • 9:53 - 9:55
    How on earth could you trade,
  • 9:55 - 9:58
    looking at that and see something
    that wasn't just random?
  • 9:58 - 10:01
    JS: In the old days -- this is
    kind of a graph from the old days,
  • 10:01 - 10:06
    commodities or currencies
    had a tendency to trend.
  • 10:06 - 10:11
    Not necessarily the very light trend
    you see here, but trending in periods.
  • 10:11 - 10:17
    And if you decided, OK, I'm going
    to predict today, by the average move
  • 10:17 - 10:21
    in the past 20 days -- there's 20 days --
  • 10:21 - 10:24
    maybe that would be a good prediction,
    and I'd make some money.
  • 10:24 - 10:29
    And in fact, years ago
    such a system would work --
  • 10:29 - 10:32
    not beautifully, but it would work.
  • 10:32 - 10:33
    You'd make money,
    you'd lose money,
  • 10:33 - 10:34
    you'd make money.
  • 10:34 - 10:37
    But this is a year's worth of days,
  • 10:37 - 10:41
    and you'd make a little money
    during that period.
  • 10:41 - 10:44
    It's a very vestigial system.
  • 10:45 - 10:48
    CA: So you would test
    a bunch of lengths of trends in time
  • 10:48 - 10:51
    and see whether, for example,
  • 10:51 - 10:55
    a 10-day trend or a 15-day trend
    was predictive of what happens next.
  • 10:55 - 11:01
    JS: Sure, you would try all those things
    and see what worked best.
  • 11:02 - 11:05
    Trend-following would've
    been great in the '60s,
  • 11:05 - 11:10
    and it was sort of OK in the '70s.
    By the '80s, it wasn't.
  • 11:10 - 11:12
    CA: Because everyone could see that.
  • 11:12 - 11:15
    So, how did you stay ahead of the pack?
  • 11:15 - 11:21
    JS: We stayed ahead of the pack
    by finding other approaches --
  • 11:21 - 11:24
    shorter-term approaches to some extent.
  • 11:24 - 11:28
    The real thing was to gather
    a tremendous amount of data,
  • 11:28 - 11:32
    and we had to get it by hand
    in the early days.
  • 11:32 - 11:36
    We went down to the Federal Reserve
    and copied interest rate histories
  • 11:36 - 11:37
    and stuff like that.
  • 11:37 - 11:39
    Because it didn't exist on computers.
  • 11:39 - 11:41
    We got a lot of data.
  • 11:41 - 11:45
    And very smart people -- that was the key.
  • 11:45 - 11:49
    I didn't really know how
    to hire people to do fundamental trading.
  • 11:49 - 11:53
    I had hired a few -- some made money,
    some didn't make money.
  • 11:53 - 11:55
    I couldn't make a business out of that.
  • 11:55 - 11:57
    But I did know how to hire scientists,
  • 11:57 - 12:00
    because I have some taste
    in that department.
  • 12:00 - 12:02
    So, that's what we did.
  • 12:02 - 12:05
    And gradually these models
    got better and better,
  • 12:05 - 12:07
    and better and better.
  • 12:07 - 12:10
    CA: You're credited with doing
    something remarkable at Renaissance,
  • 12:10 - 12:13
    which is building this culture,
    this group of people,
  • 12:13 - 12:16
    who weren't just hired guns
    who could be lured away by money.
  • 12:16 - 12:20
    Their motivation was
    doing exciting mathematics and science.
  • 12:20 - 12:22
    JS: Well I'd hoped that might be true.
  • 12:22 - 12:25
    But some of it was money.
  • 12:25 - 12:27
    CA: They made a lot of money.
  • 12:27 - 12:30
    JS: I can't say that
    no one came because of the money.
  • 12:30 - 12:32
    I think a lot of them
    came because of the money.
  • 12:32 - 12:34
    But they also came
    because it would be fun.
  • 12:34 - 12:37
    CA: What role did machine learning
    play in all of this?
  • 12:37 - 12:40
    JS: In a certain sense,
    what we did was machine learning.
  • 12:40 - 12:47
    You look at a lot of data, and you try
    to simulate different predictive schemes
  • 12:47 - 12:49
    until you get better and better at it.
  • 12:49 - 12:53
    It doesn't necessarily feed back on itself
    the way we did things.
  • 12:53 - 12:56
    But it worked.
  • 12:56 - 13:00
    CA: So these different predictive schemes
    can be really quite wild and unexpected.
  • 13:00 - 13:02
    I mean, you look at everything, right?
  • 13:02 - 13:06
    You look at the weather,
    length of dresses, political opinion.
  • 13:06 - 13:07
    JS: Yes, length of dresses we didn't try.
  • 13:07 - 13:09
    (Laughter)
  • 13:09 - 13:10
    CA: What sort of things?
  • 13:10 - 13:12
    JS: Well, everything.
  • 13:12 - 13:17
    Everything is grist for the mill --
    except hem lengths.
  • 13:17 - 13:19
    Weather, annual reports,
  • 13:19 - 13:24
    quarterly reports, historic data itself,
    volumes, you name it.
  • 13:24 - 13:25
    Whatever there is.
  • 13:25 - 13:28
    We take in terabytes of data a day.
  • 13:28 - 13:33
    And store it away, massage it,
    get it ready for analysis.
  • 13:33 - 13:35
    You're looking for anomalies.
  • 13:35 - 13:37
    You're looking for, like you said,
  • 13:37 - 13:40
    the efficient market
    hypothesis is not correct.
  • 13:40 - 13:43
    CA: But any one anomaly
    might be just a random thing,
  • 13:43 - 13:47
    so is the secret here
    to just look at multiple strange anomalies
  • 13:47 - 13:50
    and see when they align?
  • 13:50 - 13:53
    JS: Any one anomaly
    might be a random thing.
  • 13:53 - 13:56
    However, if you have enough data
    you can tell that it's not.
  • 13:56 - 14:00
    You can see an anomaly that's persistent
    for a sufficiently long time --
  • 14:00 - 14:05
    the probability
    of it being random is not high.
  • 14:05 - 14:09
    But these things fade after a while.
  • 14:09 - 14:13
    Anomalies can get washed out;
    you have to keep on top of the business.
  • 14:13 - 14:16
    CA: A lot of people look
    at the hedge fund industry now
  • 14:16 - 14:19
    and are sort of --
  • 14:19 - 14:20
    shocked by it,
  • 14:20 - 14:22
    by how much wealth is created there
  • 14:22 - 14:24
    and how much talent is going into it.
  • 14:24 - 14:30
    Do you have any worries
    about that industry
  • 14:30 - 14:32
    and perhaps the financial
    industry in general?
  • 14:32 - 14:35
    Kind of being on a runaway train that's --
  • 14:35 - 14:39
    I don't know, helping increase inequality?
  • 14:39 - 14:44
    How would you champion what's happening
    in the hedge fund industry?
  • 14:44 - 14:46
    JS: I think in the last
    three of four years,
  • 14:46 - 14:48
    hedge funds have not done especially well.
  • 14:48 - 14:49
    We've done dandy,
  • 14:49 - 14:53
    but the hedge fund industry as a whole
    has not done so wonderfully.
  • 14:53 - 14:59
    The stock market has been on a roll,
    going up as everybody knows,
  • 14:59 - 15:01
    and price-earnings ratios have grown.
  • 15:01 - 15:05
    So an awful lot of the wealth
    that's been created in the last,
  • 15:05 - 15:08
    let's say, five or six years
    has not been created by hedge funds.
  • 15:08 - 15:12
    People would ask me,
    "What's a hedge fund?"
  • 15:12 - 15:14
    And I'd say, "One and 20."
  • 15:14 - 15:17
    Which means -- now it's two and 20 --
  • 15:17 - 15:21
    it's two percent fixed fee
    and 20 percent of profits.
  • 15:21 - 15:23
    Hedge funds are all different
    kinds of creatures.
  • 15:23 - 15:26
    CA: Rumor has it you charge
    slightly higher fees than that.
  • 15:26 - 15:28
    (Laughter)
  • 15:28 - 15:31
    JS: We charged the highest
    fees in the world at one time.
  • 15:31 - 15:34
    Five and 44, that's what we charge.
  • 15:34 - 15:35
    CA: Five and 44.
  • 15:35 - 15:39
    So 5 percent flat,
    44 percent of upside.
  • 15:39 - 15:41
    You still made your investors
    spectacular amounts of money.
  • 15:41 - 15:43
    JS: We made good returns, yes.
  • 15:43 - 15:44
    People got very mad at my investors.
  • 15:44 - 15:46
    "How could you charge such high fees?"
  • 15:46 - 15:48
    I said, "OK, you can withdraw."
  • 15:48 - 15:50
    "But how can I get more?"
  • 15:50 - 15:52
    (Laughter)
  • 15:52 - 15:54
    But at a certain point, as I told you,
  • 15:54 - 15:59
    we bought out all the investors
    because there's a capacity to the fund.
  • 15:59 - 16:02
    CA: But should we worry
    about the hedge fund industry
  • 16:02 - 16:06
    attracting too much
    of the world's great mathematical
  • 16:06 - 16:08
    and other talent to work on that
  • 16:08 - 16:11
    as opposed to the many
    other problems in the world?
  • 16:11 - 16:13
    JS: Well it's not just mathematical.
  • 16:13 - 16:15
    We hire astronomers and physicists
    and things like that.
  • 16:16 - 16:22
    I don't think we should worry too much.
    It's still a pretty small industry.
  • 16:22 - 16:28
    And in fact, bringing science
    into the investing world
  • 16:28 - 16:30
    has improved that world.
  • 16:30 - 16:34
    It's reduced volatility.
    It's increased liquidity.
  • 16:34 - 16:37
    Spreads are narrower because
    people are trading that kind of stuff.
  • 16:37 - 16:42
    So I'm not too worried about Einstein
    going off and starting a hedge fund.
  • 16:43 - 16:47
    CA: You're at a phase in your life now
    where you're actually investing, though,
  • 16:47 - 16:50
    at the other end of the supply chain --
  • 16:50 - 16:54
    in boosting mathematics across America.
  • 16:54 - 16:56
    This is your wife, Marilyn.
  • 16:56 - 17:01
    You're working on
    philanthropic issues together.
  • 17:01 - 17:02
    Tell me about that.
  • 17:02 - 17:06
    JS: Well, Marilyn started --
  • 17:06 - 17:10
    there she is up there,
    my beautiful wife --
  • 17:10 - 17:13
    she started the foundation
    about 20 years ago.
  • 17:13 - 17:14
    I think '94.
  • 17:14 - 17:16
    I claim it was '93,
    she says it was '94,
  • 17:16 - 17:18
    but it was one of those two years.
  • 17:18 - 17:21
    (Laughter)
  • 17:21 - 17:23
    We started the foundation
  • 17:23 - 17:28
    just as a convenient way to give charity.
  • 17:28 - 17:31
    She kept the books, and so on.
  • 17:31 - 17:37
    We did not have a vision at that time,
    but gradually a vision emerged --
  • 17:37 - 17:43
    which was to focus on math and science,
    to focus on basic research.
  • 17:43 - 17:46
    And that's what we've done.
  • 17:46 - 17:53
    Six years ago or so, I left Renaissance
    and went to work at the foundation.
  • 17:53 - 17:54
    So that's what we do.
  • 17:54 - 17:56
    CA: And so Math for America here
  • 17:56 - 17:59
    is basically investing in math teachers
    around the country,
  • 17:59 - 18:04
    giving them some extra income,
    giving them support and coaching.
  • 18:04 - 18:07
    And really trying
    to make that more effective
  • 18:07 - 18:09
    and make that a calling
    to which teachers can aspire.
  • 18:09 - 18:11
    JS: Yeah, yeah.
  • 18:11 - 18:14
    Instead of beating up the bad teachers --
  • 18:14 - 18:19
    which has created morale problems
    all through the educational community,
  • 18:19 - 18:22
    in particular in math and science --
  • 18:22 - 18:28
    we focus on celebrating the good ones
    and giving them status.
  • 18:28 - 18:31
    Yeah, we give them extra money,
    15,000 dollars a year.
  • 18:31 - 18:35
    We have 800 math and science teachers
    in New York City in public schools today
  • 18:35 - 18:37
    as part of a core.
  • 18:37 - 18:43
    There's a great morale among them.
    They're staying in the field.
  • 18:43 - 18:46
    Next year, it'll be 1,000 [teachers],
    and that'll be 10 percent
  • 18:46 - 18:50
    of the math and science teachers
    in New York public schools.
  • 18:50 - 18:54
    (Applause)
  • 18:55 - 18:59
    CA: Jim, here's another project
    that you've supported philanthropically:
  • 18:59 - 19:03
    Research into origins of life, I guess.
    What are we looking at here?
  • 19:03 - 19:06
    Well, I'll save that for a second.
  • 19:06 - 19:08
    And then I'll tell you
    what you're looking at.
  • 19:08 - 19:13
    Origins of life is a fascinating question.
    How did we get here?
  • 19:13 - 19:15
    Well, there's two questions.
  • 19:15 - 19:21
    One is, What is the root
    from geology to biology?
  • 19:21 - 19:23
    How did we get here?
  • 19:23 - 19:25
    And the other question is,
    What did we start with?
  • 19:25 - 19:28
    What material, if any,
    did we have to work with on this route?
  • 19:28 - 19:32
    Those are two very,
    very interesting questions.
  • 19:32 - 19:38
    The first question is a tortuous path
    from geology up to RNA
  • 19:38 - 19:40
    or something like that --
    how did that all work?
  • 19:40 - 19:42
    And the other,
    What do we have to work with?
  • 19:42 - 19:44
    Well, more than we think.
  • 19:44 - 19:50
    So what's pictured there
    is a star in formation.
  • 19:50 - 19:53
    Now every year in our Milky Way,
    which has 100 billion stars,
  • 19:53 - 19:56
    about two near stars are created.
  • 19:56 - 19:58
    Don't ask me how, but they're created.
  • 19:58 - 20:02
    And it takes them
    about a million years to settle out.
  • 20:02 - 20:05
    So, in steady state,
  • 20:05 - 20:08
    there's about 2 million stars
    in formation at any time.
  • 20:08 - 20:12
    That one is somewhere along
    this settling down period.
  • 20:12 - 20:15
    And there's all this crap
    sort of circling around it.
  • 20:15 - 20:17
    Dust and stuff.
  • 20:17 - 20:21
    And it'll form probably a solar system,
    or whatever it forms.
  • 20:21 - 20:24
    But here's the thing --
  • 20:24 - 20:29
    in this dust that surrounds a forming star
  • 20:29 - 20:36
    have been found, now,
    significant organic molecules.
  • 20:36 - 20:42
    Molecules not just like methane
    but formaldehyde and cyanide --
  • 20:42 - 20:49
    things that are the building blocks,
    the seeds, if you will, of life.
  • 20:49 - 20:52
    So, that may be typical.
  • 20:52 - 20:59
    And it may be typical
    that planets around the universe
  • 20:59 - 21:04
    start off with some of these
    basic building blocks.
  • 21:04 - 21:07
    Now, does that mean
    there's going to be life all around?
  • 21:07 - 21:08
    Maybe.
  • 21:08 - 21:12
    But it's a question
    of how tortuous this path is
  • 21:12 - 21:17
    from those frail beginnings,
    those seeds, all the way to life.
  • 21:17 - 21:22
    And most of those seeds
    will fall on fallow planets.
  • 21:22 - 21:23
    CA: So for you, personally,
  • 21:23 - 21:26
    finding an answer to this question
    of where we came from,
  • 21:26 - 21:30
    of how did this thing happen,
    that is something you would love to see.
  • 21:30 - 21:32
    JS: Would love to see. And like to know.
  • 21:33 - 21:38
    If that path is tortuous enough,
    and so improbable
  • 21:38 - 21:43
    that no matter what you start with,
    we could be a singularity.
  • 21:43 - 21:45
    But, on the other hand,
  • 21:45 - 21:48
    given all this organic dust
    that's floating around,
  • 21:48 - 21:53
    we could have lots of friends out there.
  • 21:53 - 21:54
    It'd be great to know.
  • 21:54 - 21:56
    CA: Jim, a couple of years ago,
  • 21:56 - 22:01
    I got the chance to speak with Elon Musk,
    and I asked him the secret of his success.
  • 22:01 - 22:05
    He said taking physics seriously was it.
  • 22:05 - 22:09
    Listening to you, what I hear you saying
    is taking math seriously,
  • 22:09 - 22:12
    that has infused your whole life.
  • 22:12 - 22:17
    It's made you an absolute fortune,
    and now it's allowing you to invest
  • 22:17 - 22:21
    in the futures of thousands and thousands
    of kids across America and elsewhere.
  • 22:21 - 22:27
    Could it be that science actually works?
    That math actually works?
  • 22:27 - 22:32
    JS: Well, math certainly works.
    Math certainly works.
  • 22:32 - 22:33
    But this has been fun.
  • 22:33 - 22:38
    Working with Marilyn and giving it away
    has been very enjoyable.
  • 22:38 - 22:41
    CA: I just find it --
    it's an inspirational thought to me,
  • 22:41 - 22:45
    that by taking knowledge seriously,
    so much more can come from it.
  • 22:45 - 22:48
    So thank you for your amazing life,
    and for coming here to TED.
  • 22:48 - 22:49
    Thank you.
  • 22:49 - 22:50
    Jim Simons.
  • 22:50 - 22:54
    (Applause)
Title:
The mathematician who cracked Wall Street
Speaker:
Jim Simons
Description:

more » « less
Video Language:
English
Team:
closed TED
Project:
TEDTalks
Duration:
23:03
  • Well, I'll save that for a second.
    ->
    JS: Well, I'll save that for a second.

    JS: I think in the last
    three of four years,
    ->
    JS: I think in the last
    three or four years,

  • Thank you, Yasush! The corrections have been made.

  • *Please note the following updates to the English subtitles as of 9/13/15:

    14:43 - 14:45

    JS: I think in the last
    three OR four years,

    19:04 - 19:05

    JS: Well, I'll save that for a second. (speaker's initials were previously missing)

  • Please note error on line 6:47, which must be the following:

    Vertices minus edges PLUS FACES come out to zero - (16-32+16=0)

    Jim Simons speaks too fast...

  • 6:46:53
    Vertices minus edges comes out to be zero. -> Vertices minus edges plus faces comes out to be zero.

    You can see it in the presentation and also calculating it.

English subtitles

Revisions Compare revisions