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hello and welcome back to patrick boyle
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on finance so this week in the news
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legendary investor jim simons has
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stepped down as the chairman of
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renaissance technologies
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which is of course the most successful
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quant hedge fund in history
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now simons hasn't been in charge of the
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day-to-day running there
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for probably over a decade but he has
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stayed on as the chairman of the fund up
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until this january
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jim's retirement marks the end of an era
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in finance simon's career and the fund
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that he launched
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proved that the finance textbooks which
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claim that markets are perfectly
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efficient were wrong
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obviously the trading strategies at
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renaissance are secret
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but let's look at simon's career and see
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what lessons we can learn
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so simons didn't have a fancy upbringing
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he was a middle class kid from
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massachusetts
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his father was the manager of a shoe
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factory in brookline massachusetts just
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outside of boston he excelled at school
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graduating high school in three years
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then skipping the first year of
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mathematics while at mit
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and eventually earning his phd from
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berkeley at the young age of 23.
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so simons was clearly a very smart guy
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but he was also
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focused and hard-working and he found
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something he was interested in
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mathematics and really pursued it
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simon's then went on to teach
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mathematics for a few years at harvard
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university
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before famously working at the nsa as a
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codebreaker
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while he was at the nsa simon's noticed
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that his brilliant colleagues
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weren't hired in for their experience
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but instead just for their sheer brain
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power and he realized that you can teach
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a person how to do a job
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but you can't necessarily teach someone
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to be smart and this realization was one
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of the keys to his later success
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when you look at the reasons that
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renaissance is so successful
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it's not actually down to just one great
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genius the success was driven by simon's
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hiring a series of the best people that
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he could find
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it reminds me a little bit of the career
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of david bowie he was a great musician
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on his own
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but he always picked the most capable
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musicians to work with
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in various styles of music and then he
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stayed relevant by moving with the times
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and we see this exact same
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characteristic when we look
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at jim simons while using computers to
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break codes for the nsa
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simons began thinking that you could
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possibly use them
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and use these mathematical approaches to
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analyze and trade markets
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he did some early investing and trading
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from that point forward
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but he really didn't hit his stride for
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quite a while
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after his time at the nsa simons was
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hired to lead the math department at
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suny stony brook i think he was around
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30 years old
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at the time his contributions to
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geometry and topology while he was there
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led to him winning the oswald veblen
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prize in geometry in 1976.
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this is a prize that's only awarded
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every three years
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it's a very big deal in the world of
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mathematics
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while he was at stony brook his talent
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for hiring
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became clear he quickly built a
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world-class mathematics department at
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stony brook
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including hiring james axe away from
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cornell university and
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ivy league university axe had won the
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prestigious coal prize
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in number theory at this point in
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simon's career
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he was 40 years old he'd been a star
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cryptographer
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scaled the heights of mathematics and
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academia and he then quit
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much to the surprise and disgust of his
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colleagues
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to start his fourth career opening an
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investment firm which he named
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money metrics a combination of money and
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econometrics
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we can see at this point in the story
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that he wasn't someone to just rest on
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his laurels he looked for new challenges
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his mathematician friends thought that
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this was just crazy but he did it anyway
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he just
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followed his vision he had an idea he
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wanted to go with it
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you'd probably guess that he had great
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success right away right because
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we wouldn't be telling his story if
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things didn't work out
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but that's not exactly how things went
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he did all of the right things he hired
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the smartest people initially partnering
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with an old codebreaking friend of his
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leonard baum
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who had co-developed the bomb welsh
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algorithm one of the most notable
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advances
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in machine learning they worked on
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developing a probabilistic
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approach to trading using hidden markov
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models a year after that he recruited
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james
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axe the star professor that he had lured
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to stony brook he heard him a way
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to join them this was 1978.
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they had very little luck early on
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building quantitative trading models
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and they drifted towards trading on news
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and on their instincts about markets
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james act stuck the most to the quant
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approach
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and developed some crude trend following
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strategies
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but they weren't necessarily what you
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would have expected from a team of
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brilliant mathematicians
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they weren't exactly innovative either
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even at the time
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in 1982 simon's renamed the firm
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renaissance technologies away from money
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metrics
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partially to reflect his interest in
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making technology venture capital
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investments
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from 1978 through to 1984
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they didn't really make an awful lot of
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progress and they didn't they definitely
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didn't earn the kind of returns that you
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associate today with jim simons after a
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40
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loss in bonds in 1984 an
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automatic clause in their agreement was
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triggered where lenny bomb's positions
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were liquidated
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ending the partnership a year later in
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1985
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james axe moved to california forming a
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new company called
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axcom limited and simons would receive
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a quarter of the profits for providing
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trading help
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and dealing with the firm's clients he
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would continue on with his vc deals that
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was kind of his main thing at this point
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while the california team would focus on
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quant trading
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now some good things did happen over
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this slow period
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they did hire some good people sandor
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strauss for example was a stony brook
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professor
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who was brought on as a computer
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specialist in 1982.
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it turned out that he had a passion for
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data and he began
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collecting market data wherever he could
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get it he would buy pricing data from
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exchanges from the federal reserve
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he would extract it from old newspapers
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and he would organize and clean the data
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he even started collecting his own tick
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data from a market feed back then
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something that really no one else was
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doing at the time
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henry laufer was another stony brook
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mathematician who came on board back
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then as well
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and was developing computer simulations
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to test
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strategies simon's once again at the
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good sense to hire these bright
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and driven people and to let them do the
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things they did best he didn't
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hire average people and micromanage them
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he hired the best people that he could
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find
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and then let them do their thing within
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reason
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by 1986 xcom was trading 21 different
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futures contracts using a mix of
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quantitative strategies
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and judgment calls they had mixed
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results and they weren't really doing
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very much
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new research to improve their trading
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strategies
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the team didn't yet fully believe in
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their big idea the idea of quant trading
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and they were often overriding the
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system or trading just based on instinct
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in 1987 they brought on a guy named
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renny carmona
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who was able to work with the data
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strauss had collected
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and he started building a model that
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looked for similar market environments
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in the past
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and then built forecasts for the future
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based upon that
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this was an early machine learning
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approach and the team were initially
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very uneasy with this
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uh to begin with there were lots of
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squabbles within the group back then
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and in truth squabbling between team
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members has been an
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issue up until the present day at rentec
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in truth it's just never going to be
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easy to manage the type of smart hard
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charging and
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frankly prickly people that you find in
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organizations like this
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in 1988 elwyn berlecamp joined the team
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another brilliant mind who had worked
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with claude shannon at
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mit and with john kelly at bell labs
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the team that had developed the kelly
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criterion influencing ed torp the father
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of quantitative trading
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i made a video about that topic a few
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months ago
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interestingly ed torp happened to be
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winding up his fund right around the
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time that these guys were getting going
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they weren't the first obviously to try
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a quantitative approach
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they just went on to become the very
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best
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added so up until now returns had not
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been amazing and
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investors in the fund had grown
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frustrated with jim's venture capital
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investments
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so he sold all of those off and launched
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a new fund
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and this fund was named medallion in
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honor of the mathematical medals that
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both simon's and axe had won
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they had around 20 million dollars in
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assets under management at the time
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and they had the right team in place it
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was 1988 they'd been working on this for
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around 10 years at this point
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the first few months for medallion fund
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did not go well
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they had early losses of around 30 and
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simon's had to halt trading
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he and acts were at each other's throats
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they hired lawyers and hurled lawsuits
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at each other
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and so early on it just looked like this
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wasn't going to work everything would
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have to wind up
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burl camp in order to keep things going
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bought most of axe's shares
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in the partnership i think x had hung on
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to 10 percent
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berle camp now owned 40 and simon's own
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25
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and the rest were split up amongst the
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team they shut down
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ax's trend following system now focusing
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on burl camp
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and carmona's black box approach it's
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worth noting that simons was nervous
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about this approach at
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the time as the signals didn't seem to
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make much sense to him they weren't sort
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of linear signals that could be
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clearly understood as to why the system
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was doing what it was doing
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there were other difficulties in the
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early days too
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like when they discovered that floor
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traders were front running their trades
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in the pits
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which was cutting into their ability to
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generate profits
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1989 was unfortunately a down year for
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medallion investors in fact it was the
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only down year that they had but i'm
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getting ahead of myself
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in 1990 they returned 55
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and that's after fees of 5 and 20. the
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return before fees was
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i think around 78 at this point they
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were managing 45 million dollars
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they traded commodities and currencies
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and had an
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average holding period of around a day
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and a half
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and they'd continue to trade this
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product mix with roughly this holding
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period for another decade
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simon's after the big up year set out to
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raise more investor capital in the early
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1990s
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and he didn't really have much luck at
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all investors felt that his fees were
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much too high
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that he didn't have a long enough track
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record and they were outraged that
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simon's would not explain how the models
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worked and that's often a difficulty for
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quant traders throughout the 1990s they
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continued to hire well
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and they consistently improved their
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approach the system at this point was a
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living thing it was constantly being
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improved
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they analyzed things like slippage they
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improved analysis and execution
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the team had lots of discussions trying
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to understand
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if their strategy was winning who out
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there was losing
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it didn't appear to be floor traders or
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hedge funds most of these guys seem to
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be making money at the time
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and so they came to the conclusion that
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they were picking up the pennies that
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other investors were dropping
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through being too cocky and through
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making behavioral mistakes
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they decided it was most likely dentists
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who were losing the money that they were
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making
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most investors approached the market
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filled with their own cognitive biases
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they let their emotions get the better
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of them the systematic approach avoided
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emotion
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the computer never had too much to drink
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the night before trading and it
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never traded badly because it had an
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argument with its girlfriend
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they found that they did best in very
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turbulent markets
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as in times of stress human behavior
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became even more predictable
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as the fund grew they stopped taking on
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new investors
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they increased the fees for existing
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investors and they put a lot of work
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into modeling slippage
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when you're trading in very large size
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your trades start to move the market
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and they aim to be invisible in markets
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they broke all of their trades up into
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smaller trades
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and they aimed to trade just the right
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amount that would erase the
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inefficiencies that they found in
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markets
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but have no additional impact on the
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markets
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their competitors would analyze the data
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and never even see the trades they had
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done
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the idea was that they could step in and
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out of markets with such
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care that a competitor would not see
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that an
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inefficiency had existed and been armed
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away
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does their competitors when doing
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analysis wouldn't even know that an
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opportunity had existed and thus they'd
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never compete with them for phil's the
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next time it came
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up now simon's had seeded a guy named
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robert frye
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a former morgan stanley pairs trader and
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had set him up with a fund called kepler
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financial management
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fry's approach was to deconstruct the
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movement of stocks
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identifying the factors responsible for
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their moves it was
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kind of a more sophisticated approach uh
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to
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traditional pairs trading which was done
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back then at morgan stanley in fact i
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think
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the morgan stanley process uh what they
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call process driven trading team
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uh might have even invented the idea of
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pairs trading
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so fry's idea was we'll take an example
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like exxon
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he he would have worked out that exxon
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was possibly driven by
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oil prices by interest rates and by
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growth in gdp
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and then he would look and see if those
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factors moved
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but exxon hasn't moved as much as you'd
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expect it to have
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he would then be able to trade based
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upon this
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and his approach worked but it never
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seemed to work on
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size a medallion up until around 2000
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was a futures trading fund
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but it had just reached a point where
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they could no longer bring in additional
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capital they'd reached capacity
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and simon's wanted to grow the business
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and felt that he could put a lot of
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capital to work in equities
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but he just couldn't find a good trading
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strategy he hired in the
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brilliant team of robert mercer peter
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brown and david maegerman
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and they had been building innovative
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voice recognition software at ibm
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using probabilistic models in fact
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models developed by
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simon's old partner lenny baum
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the bom welch algorithm i think i
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mentioned it
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earlier they also had been involved in
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the
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deep blue team at ibm these guys were
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different to the existing team
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at renaissance in that they knew how to
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build this kind of
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big business software system that would
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be used at a firm like ibm
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they were able to take all of fry's
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individual studies and signals
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and build them into a much more
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efficient piece of software that could
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trade really well the software was able
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to find
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signals take execution factors like
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liquidity or shorting restrictions into
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account
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apply risk management and correctly size
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the trades
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and this was really a new error for
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medallion this was when medallion took
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a further leap forward by 2003
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stock trading was responsible for
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two-thirds of medallions profits
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up from zero the year before the big
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lesson that we can learn here
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is we can see how willing they were to
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change and the importance of teamwork
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within the organization
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we can equally see that simon's worked
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away at getting this to work like
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initially he couldn't get more equities
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to work for years
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and then finally he just worked away it
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got the right people
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in eventually he got it to work so
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shortly after that renaissance began
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trading international stocks too
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and this allowed them to put more
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capital to work but it also added
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greater diversification to the portfolio
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meaning it reduced the volatility
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giving them a sharp ratio of six in 2003
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which is just an amazing risk return
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ratio
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in particular when you consider that
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they were managing 5 billion
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at the time a big lesson that we can
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take away from this
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is just that adding international stocks
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for diversification purposes
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is a good idea for all investors now
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renaissance had many other tricks up
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their slaves too
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in the early 2000s they negotiated with
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barclays bank and with deutsche bank
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to trade basket options instead of
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actually buying and selling the stocks
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needed in their portfolio what they did
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was they bought basket options which are
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options on a basket of stocks
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from the banks that represented their
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portfolio
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the banks allowed them to constantly
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change the constituents in the basket so
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they were essentially able to
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actively trade within the structure of
00:17:47
this options contract
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now this had a number of interesting
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effects for one it gave them more
00:17:53
leverage gave them way more leverage
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than was available to them before
00:17:57
in fact i think up to 20 times leverage
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on their stock portfolio at times now
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i should note that they were not usually
00:18:04
that levered
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in addition it pushed a lot of the
00:18:07
portfolio's risk to the banks
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as the most that they could lose was the
00:18:12
premium that they had paid for these
00:18:13
basket options
00:18:15
most importantly though these options
00:18:18
had long enough expirations that they
00:18:20
converted the short-term capital gains
00:18:22
of all the trading
00:18:24
into long-term capital gains as the
00:18:26
options lasted longer than a year
00:18:28
i'm actually a little bit surprised that
00:18:30
the banks even agreed to do this deal
00:18:33
so shortly after losing a ton of money
00:18:35
with long-term capital management in
00:18:38
1998
00:18:39
but they did this structure added tax
00:18:42
efficiency saving them over 6.8 billion
00:18:44
dollars
00:18:45
in taxes now all investors obviously do
00:18:48
need to pay attention to the tax
00:18:50
efficiency of their investments
00:18:53
and you do need to look at the
00:18:54
investment returns after fees and after
00:18:57
taxes in order to compare them
00:18:59
the track record of medallion fund is
00:19:01
just phenomenal it's it's unbelievable
00:19:04
they started out with high fees
00:19:06
the fees only got higher over time after
00:19:08
2002
00:19:10
the fees were 5 and 44. now traditional
00:19:13
high hedge fund fees are 2 and 20. they
00:19:15
were 5
00:19:16
and 44. but the after fee returns were
00:19:20
still
00:19:20
industry beating the after fee returns
00:19:23
for medallion funds since it launched in
00:19:25
1988
00:19:27
were 39.1 per year
00:19:30
with only one down year and two years
00:19:32
where the returns were below
00:19:34
10 and one of those was the down year
00:19:37
there were many difficulties of course
00:19:39
along the way that the great returns
00:19:41
might appear to cover up
00:19:43
at one point trading strategies and code
00:19:45
were stolen by
00:19:46
ex-employees in addition there were
00:19:49
severe losses during the dot-com crash
00:19:51
and the quant quake of 2007.
00:19:54
renaissance was likely a very difficult
00:19:57
place to work with many disagreements
00:19:59
between staff members at the firm
00:20:01
the enduring lesson for me is that hard
00:20:04
work pays off
00:20:05
some of the most successful employees at
00:20:07
the firm had murphy beds in their
00:20:09
offices
00:20:10
where they could take naps while working
00:20:12
through the night on improving
00:20:14
strategies
00:20:15
and these people did that for year after
00:20:17
year you know it wasn't a short-term
00:20:19
thing one of the big differences it's
00:20:22
worth noting between
00:20:23
renaissance and an awful lot of other
00:20:25
quant firms and in fact
00:20:26
even between renaissance and a lot of
00:20:28
other multi-strategy firms
00:20:30
is that at renaissance all employees had
00:20:33
access to all
00:20:34
of the trading code while they were
00:20:36
secretive
00:20:37
to the outside world there were no
00:20:39
secret trading strategies internally
00:20:42
huge gains came from this collaborative
00:20:44
environment the way they were able to
00:20:46
work together and improve each other's
00:20:47
work
00:20:48
but it also meant that you couldn't have
00:20:50
a higher and fire culture like you
00:20:52
sometimes see at other firms
00:20:54
or you'd lose your competitive edge they
00:20:56
had to hire very carefully
00:20:59
and to keep their team happy so that
00:21:01
these guys wouldn't leave
00:21:03
if you want to learn more of this story
00:21:05
i've only really scratched the surface
00:21:06
of it in this video
00:21:08
you should read the man who solved the
00:21:10
market by
00:21:11
greg zuckerman in fact this is why i
00:21:14
can't work in advertising on
00:21:17
the just dust cover so you should read
00:21:19
the man who solved the market
00:21:21
uh by gregory zuckerman it's a really
00:21:24
excellent book
00:21:25
on this topic i think it's a bestseller
00:21:28
right now
00:21:29
um it's worth noting that you know it's
00:21:31
not all smooth sailing like it's not
00:21:33
just a hero story if a guy comes up with
00:21:35
a great idea and grows really rich
00:21:38
when you when you read the story you see
00:21:40
that simon's had
00:21:41
many difficulties in his life in fact
00:21:43
there's one um
00:21:45
there's one line in there where he says
00:21:48
to a friend after a personal tragedy
00:21:50
says
00:21:50
for my life is all either aces or deuces
00:21:53
you know things either go really well or
00:21:56
really horribly for me anyhow i strongly
00:21:59
recommend the book i'll put a link to it
00:22:02
in the video description
00:22:03
below don't forget to like and subscribe
00:22:06
and i'll see you guys again next week
00:22:10
bye
00:22:16
[Music]
00:22:18
you