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E135: Wagner rebels, SCOTUS ends AA, AI M&A, startups gone bad, spacetime warps & more

July 01, 2023 / 01:36:57

This episode discusses the recent Wagner Group rebellion in Russia, the implications for the Ukraine conflict, and the Supreme Court's ruling on affirmative action. Guests include General David Sacks, J Cal, and others.

The hosts recap the events surrounding the Wagner Group's armed insurrection against the Russian government, led by Yevgeny Prigozhin. They analyze the factors that led to the rebellion and its impact on the stability of the Russian regime.

They also touch on the Supreme Court's decision to strike down affirmative action in college admissions, discussing its potential effects on universities and private enterprises.

Throughout the episode, the hosts share their perspectives on the political landscape, the future of the Ukraine conflict, and the implications of the Supreme Court ruling.

The conversation is lively, with humor and banter among the hosts, making for an engaging discussion on these current events.

TL;DR

The episode covers the Wagner Group rebellion in Russia and the Supreme Court's ruling against affirmative action in college admissions.

Video

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this is going to be a feisty episode
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is it
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two of us are on Greenwich Mean Time two
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of us are in Pacific J Cal still would
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sleep in his head I'm good actually you
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good I'm good all right well great to be
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back welcome to the all conspiracy
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podcast where we repeat false statements
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and help spin them into Tales of
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struggling Against The Establishment the
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elite and the mainstream media we will
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deliver to you the people the revolution
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against the powers that be unless it
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offends
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still trying to get my invite for next
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week
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we'll also enjoy sharing with you
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fantastic stories of opulence let's be
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neutral opulence Leisure and benevolent
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greed here we go joining me today are my
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co-hosts General David sacks commander
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of the fourth Battalion of the internet
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tweet Brigade General welcome
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joining us from a remote location in
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Moscow has there been like an
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establishment takeover of the Pod
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yeah every argument they make against us
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you're basically just conceding is true
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I know exactly from his 12th century
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Mediterranean Castle ill Duce
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welcome to moth how is the Mediterranean
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diet treating you
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uh blue blue
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and Emperor Nero calcanus ruler over
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podcasts paid events entrepreneurial
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universities and dental spvs emperor
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thank you for letting me sit in your
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throne today it's good to be here thank
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you Dental sbps shout out to my dentists
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well you say king of STDs
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she says PVS oh spvs Central spvs yeah
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that's the thing with certain STDs where
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once you're working you're going to be
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king for life
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[Music]
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Rain Man David
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we open source it to the fans and
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they've just gone crazy
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[Music]
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the syndicate.com yeah thank you you've
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been doing you said five shows a week
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lately your voice is shot I your voice
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is starting to go so I asked you if
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you'd moderate and you thankfully said
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yes I've got the energy I missed last
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week I enjoyed listening to you guys
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with uh BG great episode sorry I
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couldn't join but let's kick it off
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that's funny I still haven't watched the
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episode that I missed you're not
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interested he's like I'm not on the show
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I'm not interested I've got enough time
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to participate I don't really have time
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to watch it the truth is sax why don't
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you admit to everyone that where you're
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in a show you probably watch it four or
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five times
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all right so let's kick this off
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obviously you guys recorded right before
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the Wagner group attempted coup or
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potential coup or theorized coup began
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last week so sax you kind of sent out a
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text saying the show is already stale
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because you know kind of missed that uh
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that news cycle by publishing right
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after it started but you recorded right
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before so let's do
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just a quick recap of what happened with
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Russia
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Ukraine and particularly it's Wagner
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Wagner group Rebellion
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last Friday the Wagner Group which is a
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Russian paramilitary organization led by
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Evgeni pregosian launched what seemed
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like an armed Insurrection against
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Russia Wagner had occupied portions of
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rostov vondan a city of over a million
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people a regional capital and
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headquarters of Russia's Southern
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military District before setting off
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towards Moscow and then abruptly
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stopping I think about 200 kilometers
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before reaching Moscow City at that
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point there was supposedly a negotiation
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the president of Belarus got involved
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and pregosian decided to step down Putin
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said I'm not going to persecute or I'm
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not going to prosecute you for these
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crimes he was given immunity and it was
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announced that all the members of the
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Wagner group were given the option of
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returning home or joining the Russian
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military and the Wagner group was going
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to be dissolved sax maybe you can kind
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of give us your summary of the events
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that took place
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and then we'll talk a little bit about
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the interpretation of what we think this
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means for the conflict in Ukraine well
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you're right that this Rebellion took
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place just after we dropped our last
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episode and so everybody both on Twitter
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and in the comments was dunking on me
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for my take on last week's episode that
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the much hyped Ukrainian
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counter-offensive was was not succeeding
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that it was in fact failing I think
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there's abundant evidence for that which
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hasn't changed even CNN had written an
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article basically supporting the idea
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that the counter-offensive was not
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living up to what had been promised and
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so everyone was in the comments saying
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that my take had basically aged like
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milk and this armed Rebellion or Mutiny
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by fregosian was evidence that the
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Russian regime was about to collapse
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that Russia was
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in fact on the verge of Civil War and
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you saw the exact same people who had
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oversold the counter-offensive now
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overselling this Mutiny as something
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that would bring down the Russian
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regime and and the war and of course
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that that did not happen
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it was certainly a highly unusual event
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and I've read takes now from every
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different corner of the internet about
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what it was and what took place you have
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people speculating that this is all
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staged I do not believe that I do
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believe that it was an Insurrection or
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Mutiny by progosian I think the trigger
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for it was the fact that his Wagner
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organization was being merged in with
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the ministry of defense and the regular
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Russian army and his men were all being
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made to sign contracts with the ministry
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of defense that would have resulted in a
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giant loss of income and status for
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pregosian simultaneously for months now
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he's been criticizing the ministry of
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Defense specifically the the minister of
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defense shoigu and the
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Chief general of the general staff
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gerasimov so he's been vocally critical
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of them and I think that this basically
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erupted into a mutiny by him where he
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basically tried to leverage his position
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like you said he marched what they now
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think are about 8 000 men which is about
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a quarter of Wagner into rostov on Don
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he then took the ministry headquarters
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and sent about three thousand of his men
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on a convoy to Moscow I think that
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although this is probably best described
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as a mutiny I think that it did have
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coup optionality to it I think that
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pagosian was seeking to find out how
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much support Putin had and who might
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join him and he had put out a number of
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statements that I think from the Russian
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regime's point of view could be
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described as seditious
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that morning and he there's a lot of
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evidence that he staged this attack on
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his base he claimed that there was a
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missile attack by the ministry of
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defense and that's what launched this
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March for justice and in his comments
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he was careful not to criticize Putin
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directly but he had a lot to say about
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Ministry defense and the overall conduct
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of the war and it was I think harshly
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critical
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indirectly of of Putin and I think he
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was looking to see who might support him
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and what happened is that on the way to
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Moscow during this Convoy nobody
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supported him in fact all the statements
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came out from the other generals
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including sir vegan including all the
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regional governors
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of members of the Duma and other
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important figures in Russian society and
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there wasn't a single person willing to
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publicly support for Goshen and that's
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when Putin went on TV called this
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basically an act of treason and a stab
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in the back and at that point I think
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progressions options were pretty limited
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and he basically took a deal
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that was brokered by lukashenko in which
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he would go into Exile in Belarus in
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exchange for basically being allowed to
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live that was basically the deal that
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was ultimately cut and so I think where
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things stand today is that although I
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think this was an embarrassment and a
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black eye for the Russian regime it
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never looks good for regime to have any
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kind of mutiny or insurrection
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and I think that it does raise questions
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that poon's now gonna have to answer to
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his various allies and supporters about
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how stable his regime is I think
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ultimately Putin has ended up in a place
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of consolidating Russian Society behind
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him like I said there were no power
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centers that supported this Mutiny they
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all rallied to Putin's defense and the
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people of Russia even though Ferguson is
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a popular figure being kind of a war
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hero from the Battle of bakmut the the
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Russian Society supported Putin I think
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he's at something like 80 percent poll
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numbers so I think where are things
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well like Lovato Center which is an
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independent polling Agency for example
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these are not the Russian regime's own
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numbers would you say in a poll that you
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don't support Putin
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well I don't know how levada Center what
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their methodology is but these numbers
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when the numbers are bad are cited by
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Western sources but there are other
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forms of evidence too you may have seen
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this video that went viral over the past
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few days of this song that's now the
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number one chart Buster in in Russia
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where it's this very patriotic Russian
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song where they're basically singing I
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am Russian that's sort of the main
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chorus Nick can you pull up the song I'd
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like to see this please coming at you
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95.5 I love Russia oh my God this is
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some serious propaganda
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wow yeah
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[Music]
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yeah I mean that looks like a pretty
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good party
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if you look up the the lyrics to the
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song the English translation of the
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lyrics the gist of it is I I'm basically
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proud to be a Russian and I don't care
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who doesn't like it that's basically the
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the lyrics of it how do you get invited
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to that party
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I got so many jokes I'm not gonna make
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them I know you gotta be careful be
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careful here folks you gotta be careful
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here why it looks like a fun party it's
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a catchy song
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I mean I love to dress up and show up
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tell me where to show up Putin I think
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the point here is that Russian Society
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is United behind the state and wanting
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to fight this war and I think that part
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of the reason why Ferguson's Mutiny was
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so oversold as an imminent coup that
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would bring about the collapse of the
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Putin regime and of the Russian war
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effort and of their front line is
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because at least since the beginning of
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this war we've had this narrative that
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if we applied enough pressure to Russia
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that there'd be a palace Intrigue and a
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palace coup and that liberal forces
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inside of Russia would rise up and
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topple the dictator Putin and basically
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get them out of this war and I think
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what's happened is fairly predictable
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but it's the opposite of that which is
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the Russian people are rallying around
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the flag and rallying around Putin the
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war leader and they are a patriotic
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people just like the ukrainians and I
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think both these countries that both the
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Russians and the ukrainians are proud
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people and I think they're in a fight to
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the death and I think that both
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countries okay regardless as existential
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and we have basically stuck ourselves in
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the middle of this fight to the death
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between these two countries and I don't
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see this working out very well okay so
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look I I will make an admission I
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consider myself a modestly well-read
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person modestly well-informed I had
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never heard of the Wagner group or
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pregosian prior to this coup attempt
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last week Jay Cal had you guys heard of
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this person before
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and the Wagner group yeah yeah
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oh well maybe I'm an idiot or I'm just
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not interested I think what was so
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surprising was like how out of the blue
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the story seemed to be last week that
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there was this disagreement between this
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person that commanded this paramilitary
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organization who then turned around
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against Putin and stood up against him
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and marched back towards Moscow and it
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felt to me like it came a little bit out
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of the blue and was such like a a weird
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kind of shocking event did it feel kind
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of like that to you guys that there was
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surprising instability and the
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surprising potential Revolution
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happening locally I think stepping back
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here and just looking at the news cycle
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obviously it I don't think many people
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expected this this was a wild card and
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so people could be humble in you know
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their belief of like how much they
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actually understand about what's going
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on there
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the Russian soldiers are not in favor of
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this war this is a war that's very
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unpopular in Russia actually and for the
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Ukraine having been invaded by Russia
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they're fighting for their land and
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they're gonna they are much more
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motivated I wouldn't believe any of this
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propaganda but this is a bit of a raw
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shock test everybody on the left got on
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Twitter and said this is the end of
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Putin everybody's gonna rise up in the
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streets and they overplayed that you
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know angle of the story and then of
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course the right or people who are
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pro-russian or anti the West backing
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this war are going to take the other
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side Freeburg they're going to take the
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side of
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you know oh everybody loves Russia 80 of
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people are voting for this it's
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ridiculous to think that anybody in
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Russia is going to answer
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do you like Putin do you support Putin
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on a survey can you imagine a Putin's a
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murderous dictator who kills all of his
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enemies and he controls through violence
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nobody's answering a survey correctly
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this you know top song is complete
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propaganda Putin has control of the
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entire media apparatus there
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with this showed actually if you step
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back and you look at you go to the party
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though if you were invited well I mean
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are there going to be potential LPS
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there
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last week
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it's just a joke folks but stepping back
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if you look at modern day dictators they
00:13:49
tend to stay in power for about three
00:13:50
decades Putin's in his third
00:13:53
and uh I think we're gonna see in uh the
00:13:57
next 10 years
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Putin lose power and he's going to be
00:14:02
out of power
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and when we look back on it it's going
00:14:05
to be one of two causes it's going to be
00:14:07
either cancer which you know the
00:14:08
speculation is has had cancer and that's
00:14:10
why he disappears from View
00:14:12
because he might be getting treatment
00:14:14
and we'll look back on us that the end
00:14:17
of his power will be and his control of
00:14:21
Russia which he controlling these
00:14:24
controlling through violence and fear of
00:14:27
violence the threat of violence is
00:14:28
exhausting you have to be paranoid and
00:14:30
that's why it generally doesn't last
00:14:31
that long especially compared to the
00:14:33
west where we have a democracy and
00:14:34
people last about a half decade
00:14:37
he will will look back on his end which
00:14:39
will be in the next 10 years either
00:14:41
through cancer or through his invasion
00:14:44
of Ukraine this is the biggest blunder
00:14:46
he's ever made and and this is a really
00:14:49
crazy sign that somebody would actually
00:14:52
attempt or even float a coup is insane
00:14:56
he's murdered every single person who
00:14:58
has ever even
00:15:00
challenges Authority in a minor way the
00:15:03
fact that his one of his right hand men
00:15:05
this is one of his tight Inner Circle
00:15:08
the fact that one of the people in his
00:15:10
tight Inner Circle would actually start
00:15:13
heading towards Moscow is insane so to
00:15:17
say this wasn't a big deal and Putin's
00:15:19
you know now Consolidated power and
00:15:21
everybody's in the street dancing
00:15:24
this is just simply not true I never
00:15:27
said it wasn't a big deal I wasn't
00:15:28
talking about you I was talking about
00:15:29
the mids on Twitter I never mentioned
00:15:31
your name I think that um your point J
00:15:34
Cal at the beginning that this doesn't
00:15:36
really seem to change anyone's point of
00:15:38
view on the Outlook your point of view
00:15:39
sounds like it's the same as it was a
00:15:41
week ago sacked your point of view is
00:15:43
probably the same as it was a week ago I
00:15:45
think there are a couple of takeaways
00:15:47
here first of all
00:15:48
they've had polling of opinion in Russia
00:15:51
for a long time and like I said when the
00:15:53
polls go the way that the Western
00:15:55
sources want no one questions their
00:15:58
accuracy again I don't know exactly the
00:16:00
methodology but levada Center is an
00:16:02
independent pollster that Western
00:16:04
Publications do trust I hear them repeat
00:16:07
it over and over again and you know by
00:16:10
their methodology which I assume hasn't
00:16:12
changed I think Putin's popularity
00:16:13
before the war is around 65 percent now
00:16:16
they're showing it at about 83 percent
00:16:17
Jason you may not like the war and you
00:16:20
know I certainly don't like them nobody
00:16:23
likes the war but I I think it is simply
00:16:25
a fact that the Russian people have
00:16:27
rallied around the flag and they do
00:16:29
support this war and and Putin as the
00:16:33
leader now I do think he has egg on his
00:16:36
face here from this pagosian Uprising in
00:16:38
terms of did I see this coming no I
00:16:39
didn't have this on my bingo card I
00:16:41
don't think anybody else did either
00:16:42
however did I know who provision is
00:16:44
certainly I mean I've been tracking
00:16:45
progosian statements
00:16:47
since around February he's been vocally
00:16:49
criticizing the ministry of Defense
00:16:51
specifically shoigu and jarasimov in
00:16:54
increasingly insubordinate and you could
00:16:56
argue even seditious ways I'm really
00:16:59
kind of surprised in a way that he
00:17:01
wasn't dealt with before this and I'm
00:17:03
sure that the Kremlin is kicking itself
00:17:04
for probably not dealing with it sooner
00:17:07
but in terms of why he stole alive I
00:17:10
think that Putin had a really tough
00:17:11
decision to make about you quash this
00:17:14
Rebellion completely which would have
00:17:17
led to horrific images of you know
00:17:20
violence potentially in Moscow or
00:17:22
Russians and Russians killing Russians
00:17:25
that might have actually led the the
00:17:27
Russian front to question itself or
00:17:29
collapse so I think he did the expedient
00:17:31
thing which is he cut a deal he got
00:17:33
lukashenko to help broker and he cut a
00:17:35
deal and I think at the end of the day I
00:17:37
think that he made the cool-headed
00:17:39
decision that was in his and in Russian
00:17:43
interest which was to avoid this to
00:17:45
getting to the point of a bloody
00:17:47
Insurrection okay any um any point of
00:17:51
view shift for you coming out of the
00:17:53
pregosian event of the last week on
00:17:56
Russia Ukraine I mean I want to know how
00:17:59
much he got paid
00:18:00
to stop marching towards Moscow yeah I
00:18:03
mean it is like I mean it must have been
00:18:05
it must have been a lot
00:18:08
not bad for a guy that was what Putin's
00:18:11
caterer a few years ago right he started
00:18:13
a catering business I spent nine years
00:18:15
in jail this guy's life been nine years
00:18:17
in jail it's like The Sopranos he went
00:18:19
to jail for nine years for selling
00:18:20
illegal hot dogs or something and all of
00:18:22
a sudden I mean I got just paid billions
00:18:25
of dollars to basically stop his
00:18:27
paramilitary group from taking over one
00:18:29
of the largest countries in the world
00:18:30
it's the largest I mean nuclear Arsenal
00:18:32
in the world yeah
00:18:33
just so you know who this guy is I mean
00:18:36
he he really is the street Thug that
00:18:39
Putin is always accused of being
00:18:41
he was a street dog he did go to jail
00:18:44
he was one of these guys who came up
00:18:47
in Russia as a businessman when to be a
00:18:49
businessman you had to be so tough
00:18:51
businessmen were getting murdered left
00:18:52
and right by gangsters you almost had to
00:18:54
be a gangster yourself apparently he
00:18:57
made some money in the supermarket chain
00:18:59
business and that led him to create a
00:19:01
catering business which brought him to
00:19:03
Putin's attention and he started
00:19:05
catering for the Kremlin he's sometimes
00:19:07
called Putin's Chef I don't think he was
00:19:09
a chef himself he was the guy who owned
00:19:11
he owned the business and then from
00:19:13
there he was given the license to create
00:19:15
this PMC this private uh military
00:19:17
corporation
00:19:19
Bogner group he wasn't the only founder
00:19:21
of it he had a co-founder who was
00:19:23
actually the military man behind it but
00:19:25
Wagner became this this group of
00:19:28
mercenaries who do all sorts of business
00:19:30
in Africa mainly where they are working
00:19:33
on behalf of governments there
00:19:36
to protect mineral resources or oil
00:19:38
wells all sorts of things a Sopranos
00:19:41
Captain who would he be like Phil
00:19:42
leotardo just like 20 years in jail
00:19:44
comes out I think it's sort of like John
00:19:46
Gotti going against Michael Corleone
00:19:47
yeah I think that Putin is sort of the
00:19:50
very cold right rational guy with
00:19:53
everything in his head who's very
00:19:54
calculated it doesn't reveal much right
00:19:57
more like a Michael Corleone whereas I
00:19:59
think that is emotional erratic he's
00:20:03
been saying these statements for months
00:20:04
here which I don't see how they lose
00:20:06
constantly Loose Cannon and the crazy
00:20:08
thing though is is that what you saw on
00:20:10
Twitter and social media was
00:20:12
unrestrained Glee really delirium over
00:20:16
the idea that pagosian my topple Putin
00:20:18
and become the custodian of Russia's
00:20:21
thousands of nuclear weapons yeah and
00:20:23
you know so my comment on this whole
00:20:25
thing is be careful what you wish for
00:20:27
why in the world would Americans want
00:20:30
that we'd be jumping out of the frying
00:20:32
pan Into the Fire you know I've been
00:20:33
saying since the beginning of the war
00:20:34
that this fantasy that Putin is going to
00:20:36
be toppled by a palace goo and you're
00:20:38
getting a replacement with navalny or
00:20:39
something like that we're going to get
00:20:41
Gorbachev 2.0 I said that was always
00:20:43
unrealistic and what you're much more
00:20:45
likely to end up with is an even worse
00:20:47
dictator or possible or a hardliner and
00:20:51
I think that is what would happen if
00:20:52
Ferguson had taken over I think would
00:20:54
have been much worse for the West the
00:20:55
final point is what's the takeaway from
00:20:57
here is I think this is going to put
00:20:59
more pressure on Putin to conduct the
00:21:02
war in a more violent way I I know that
00:21:05
people already think that the war is
00:21:06
horrible and violent but Putin has been
00:21:08
criticized by hardliners on his right
00:21:11
for basically making the war a special
00:21:13
military operation instead of an all-out
00:21:15
war and progosian I think expected to
00:21:18
find more support among the sort of
00:21:21
ultra nationalists in Russia and among
00:21:23
the military who have been critical of
00:21:25
Putin for waging the war in what they
00:21:27
consider to be too half-hearted or an
00:21:30
incomplete way they would like to see
00:21:32
this declared to be a war they would
00:21:33
like to see the full mobilization of
00:21:35
Russian society and this is the problem
00:21:38
that I see now is that I think Putin
00:21:40
already knew but this has to underscore
00:21:42
for him that this war is existential for
00:21:44
him personally if he loses it's the end
00:21:47
of not only his regime but probably his
00:21:49
life in Russia and I think he's going to
00:21:51
do whatever it takes to win this war and
00:21:53
I think you could see now over the next
00:21:55
few months a full mobilization in Russia
00:21:57
and I think that this could lead us to
00:21:59
the next point of escalation in this war
00:22:01
that is if this Ukrainian
00:22:02
counteroffensive actually is successful
00:22:04
on some level right now it is it is not
00:22:06
succeeding so there's no reason there's
00:22:08
no reason for Putin to do that but if if
00:22:10
this counter offensive succeeds you will
00:22:12
see the next level of escalation the
00:22:13
fact you did a great job stringing six
00:22:15
points together I think my key takeaway
00:22:17
is which is now 18 points you've made so
00:22:21
you can retire for the rest of the show
00:22:22
my key takeaway from your series of
00:22:25
statements however
00:22:26
is an important one which is to watch
00:22:28
the potential escalation driven by Putin
00:22:30
here
00:22:31
any wrap up otherwise I'm going to move
00:22:33
forward
00:22:34
you know go ahead thinking about this
00:22:36
like
00:22:37
there's a famous Sun Tzu quote the
00:22:39
Supreme Art of War is to subdue the
00:22:41
enemy without fighting
00:22:43
this is a big mistake and we need to
00:22:46
make sure that we don't get into a war
00:22:48
with Taiwan and China and China over
00:22:51
Taiwan so okay we have to avoid these
00:22:53
things and then that's what and I are in
00:22:55
alignment Sun Tzu calacanus we heard it
00:22:57
here first let's uh move forward with
00:23:00
peace I can only hope that the conflict
00:23:01
ends soon as I've always said I realized
00:23:05
over the last week how little I know
00:23:06
about the Russian military conflict with
00:23:09
Ukraine and I appreciate
00:23:12
Sexes contributions super helpful I went
00:23:15
to Cal UC Berkeley
00:23:18
1997 fall in 97 and it was the last year
00:23:22
that Cal had affirmative action
00:23:24
Admissions and I remember at that time
00:23:27
there was a big case a guy named Baki
00:23:30
was rejected by the University of
00:23:31
California Davis Medical School and he
00:23:33
alleged reverse discrimination in 1974
00:23:36
and sued the University of California
00:23:39
and eventually it became a landmark U.S
00:23:41
Supreme Court case Regents of the
00:23:43
University of California versus Baki and
00:23:45
in 1995 the UC Regents voted to
00:23:48
eliminate affirmative action
00:23:50
so the year that I was at Cal I think
00:23:52
was the last year of affirmative action
00:23:54
Admissions and it's obviously been a
00:23:57
pretty hot topic
00:24:00
here in California
00:24:03
for the past you know 25 uh 30 years
00:24:06
this morning the Supreme Court ruled on
00:24:08
two separate cases regarding using race
00:24:12
as an admissions criteria in college
00:24:15
admissions and the votes were six to
00:24:17
three against affirmative action in the
00:24:19
University of North Carolina case in six
00:24:21
to two against affirmative action in the
00:24:23
Harvard case
00:24:24
katanji Brown Jackson recused herself
00:24:26
because she previously served on
00:24:28
Harvard's Board of overseers all the
00:24:30
conservative as their you know kind of
00:24:32
characterized judges voted to strike
00:24:34
down affirmative action and all the as
00:24:36
their characterized liberal judges voted
00:24:38
to keep it both of these cases were
00:24:40
filed in 2014 by a group called students
00:24:42
for fair admissions
00:24:43
and effectively the court said that at
00:24:47
Harvard at UNC the schools were
00:24:49
systematically discriminating against
00:24:51
Asian Americans in violation of civil
00:24:53
rights laws by using uh their race as a
00:24:56
as a system for for profiling excluding
00:24:59
and trying to be more inclusive of a
00:25:01
more diverse and racially diverse
00:25:04
set of applicants so tomorrow I'd love
00:25:07
your read I guess on the surprise or
00:25:10
this was an accept expected case I think
00:25:13
Saxon I mentioned this before but I
00:25:15
think we both expected this to happen
00:25:18
I think it's probably important to maybe
00:25:22
set up a more practical explainer
00:25:26
Friedberg so Nick if you want to just
00:25:28
throw up that
00:25:29
image that I just sent you we can sort
00:25:32
of explain the Genesis of the lawsuit so
00:25:36
what you can see here
00:25:39
is admit rates into Harvard
00:25:42
by race
00:25:44
ethnicity but also by academic decile
00:25:47
yeah and so what it basically shows in a
00:25:49
nutshell is an African-American student
00:25:52
in the 40th percentile of the academic
00:25:55
index is actually more likely to get in
00:25:58
than an Asian student at the 100th
00:26:00
percentile
00:26:02
and so that at the core is sort of sorry
00:26:04
that means that means that the Asian
00:26:07
American student had better scores than
00:26:10
99
00:26:11
of other applicants and still didn't get
00:26:15
in right right
00:26:18
so you have to go back I think to 2003
00:26:23
when essentially what the Supreme Court
00:26:25
said is like look we're going to allow
00:26:27
this affirmative action stuff to last
00:26:29
roughly for another 25 years
00:26:32
but by that point we expect that the
00:26:35
work that needed to be done will have
00:26:36
been done again this is them saying this
00:26:39
not me
00:26:40
and so I think what today does is
00:26:43
actually
00:26:44
quite important not just for what it
00:26:47
means for universities
00:26:49
but also what it means for private
00:26:51
Enterprises so just to take a second on
00:26:53
this I think what happens today
00:26:56
is the pretty obvious stuff which is
00:26:58
that you have to change University
00:27:00
applications you have to change all of
00:27:03
the admissions profiling all of the
00:27:05
stuff that you would normally do
00:27:08
you probably I'm not even sure if you
00:27:09
can even have a box where you can
00:27:11
declare race maybe you can or cannot I
00:27:13
don't even know
00:27:14
but all of that changes today
00:27:16
so then the question is well what's the
00:27:18
first order derivative what changes next
00:27:20
and I called someone who's a pretty well
00:27:23
known
00:27:24
constitutional supreme court lawyer on
00:27:26
this and
00:27:28
The Next Step
00:27:30
is probably going to be around Athletics
00:27:33
based and legacy-based admissions
00:27:35
so Athletics based admissions are pretty
00:27:37
obvious which is you don't really have
00:27:39
great grades
00:27:41
but you're really stupendous at a sport
00:27:44
that's important to that school
00:27:46
so then they let you in because they
00:27:48
want to compete inside sport for
00:27:50
whatever reason
00:27:51
the Legacy one is even more prickly
00:27:53
which is not you're kind of a dummy but
00:27:55
your parents are rich and or went to the
00:27:57
school before
00:27:58
and so then they let you in as well
00:28:01
and
00:28:03
his thought on this is that those things
00:28:07
will go away because if you can't use
00:28:10
race-based admissions to kind of balance
00:28:13
the scales then it'll become pretty
00:28:16
quick where somebody launches a
00:28:17
legacy-based lawsuit or an athletic
00:28:20
based bias lawsuit and wins that as well
00:28:23
so that's the first order derivative so
00:28:26
you know the thought are those because
00:28:27
those aren't constitutionally
00:28:31
protected whereas equality based on race
00:28:35
but it becomes a huge headache for these
00:28:36
schools
00:28:37
right and so you're going to be fighting
00:28:39
these admission standards constantly
00:28:42
changing and so if you're not going to
00:28:44
let you know
00:28:45
a bunch of poor minority black and brown
00:28:48
kids in but you're letting in the Sons
00:28:51
and Daughters of Rich important people I
00:28:55
think that that's going to paint that
00:28:56
school in a very bad light so I think
00:28:58
that's so important white typically
00:29:01
white typically white although one would
00:29:03
say the great thing over the last couple
00:29:06
of decades is there have been a lot of
00:29:07
minorities that have gotten into these
00:29:09
very elite schools which means this
00:29:12
their kids would be the first generation
00:29:14
that's eligible for legacy but you're
00:29:15
gonna wipe that away so I think from a
00:29:18
just a social stigma perspective and I
00:29:21
have a solution for this which I'll get
00:29:22
to at the end for those people but so I
00:29:24
think that's the first order derivative
00:29:25
the second order derivative is now what
00:29:27
lawsuits get launched and what are the
00:29:29
implications for private companies right
00:29:31
so right now this affects any
00:29:34
institution that receives Federal
00:29:35
funding and that includes all the
00:29:37
universities so there's no private or
00:29:39
public university really except for a
00:29:40
handful that don't take this money so
00:29:42
they'll all have to do this
00:29:44
but the really important question after
00:29:46
that will be what happens to companies
00:29:48
like apple or Facebook or Exxon who have
00:29:52
race-based programs to try to attract
00:29:56
African-American Engineers or
00:29:59
Hispanic
00:30:01
chemists whatever whatever the program
00:30:02
is that you want to come up with
00:30:05
will those get challenged and will those
00:30:07
companies have to change and my friends
00:30:10
thoughts on that were that yes that
00:30:11
those would also change and that's going
00:30:14
to have a really important impact on
00:30:16
private Enterprise and how they approach
00:30:17
this stuff and how Dei stuff works and
00:30:20
frankly Downstream how ESG works because
00:30:23
all these ESG check boxes now some of
00:30:25
them will actually become illegal right
00:30:27
so I think the importance of decision
00:30:30
can't be really understated it's going
00:30:32
to the changes will be slow and then
00:30:36
they'll be fast they'll first touch
00:30:38
higher ed but then I think they'll touch
00:30:39
private Enterprise and so I think it was
00:30:41
a it was a very important
00:30:44
decision in America that just happened
00:30:46
what is
00:30:48
what is the right ethics and and values
00:30:51
I mean what do you guys I guess we could
00:30:53
just do this around the table Jacob
00:30:54
maybe you kick it off
00:30:56
should we I mean from your point of view
00:30:58
do you think that values should include
00:31:02
racial diversity in Admissions and
00:31:06
universities yeah this is like the
00:31:08
ultimate or is the values about equality
00:31:10
of opportunity for everyone regardless
00:31:12
of race right you're asking the exact
00:31:14
right question I think that's the
00:31:17
world's greatest moderator but yeah
00:31:18
doing a solid job so far and this
00:31:20
creates a lot of cognitive dissonance
00:31:22
for people right because you you really
00:31:24
want to
00:31:25
believe that the world is a meritocracy
00:31:28
and uh you know if you were to take
00:31:30
other
00:31:31
Pursuits in the world you'd never say
00:31:33
like we should let race gender
00:31:36
age affect people's performance in the
00:31:39
100 yard dash or their their
00:31:41
compensation at a company right all of
00:31:43
that should be based on achievement
00:31:46
and so there is a question on what
00:31:48
achievements should be taken into
00:31:50
account when you apply to a school
00:31:52
and it's pretty obvious the Legacy thing
00:31:55
you know is
00:31:57
you know a back door into these schools
00:31:59
but we want to feel like we're also
00:32:02
making progress because listen the world
00:32:04
has been unfair
00:32:06
the world was built on slavery and our
00:32:10
country has you know it's only 150 years
00:32:12
past that and Civil Rights Act was what
00:32:15
1964 or 65 like we've we've we really
00:32:18
want to see everybody achieve here so I
00:32:20
think you have to pause for a second and
00:32:21
say well if the goal is you want to see
00:32:25
you know black Americans perform better
00:32:27
and I think that's the the underlying
00:32:31
concern here
00:32:33
and it is based on the legacy of America
00:32:35
well how do you do that and I think
00:32:38
we're looking way too far down in the
00:32:41
educational pipeline
00:32:43
the solution here is really Child Care
00:32:45
the solution here is Nursery schools
00:32:46
pre-k
00:32:47
elementary school education and those
00:32:49
things need competition and that's where
00:32:51
people fall behind to be looking at this
00:32:53
at the end of the academic journey is I
00:32:56
think crazy so you know when I'm
00:32:58
president I'm going to have 365 day a
00:33:02
year you know child care and
00:33:05
Pre-K and that's where we should if we
00:33:07
really want to try to make up for some
00:33:09
wrongs in the history of this country
00:33:11
and try to have better outcomes we need
00:33:13
competition in schools
00:33:15
which means probably breaking some of
00:33:16
these unions and giving people vouchers
00:33:18
and choice and then we have to invest
00:33:20
more in the earliest stages of Education
00:33:23
and I think everybody wants to see a
00:33:26
better system here Dei to chamat's point
00:33:29
is
00:33:30
it is illegal to hire people based on
00:33:33
race gender any of those criteria
00:33:35
obviously and the Dai programs are
00:33:38
trying to fill more applicants so their
00:33:41
goal typically in the way they don't
00:33:43
break the law is to just try to in their
00:33:46
best cases find more applicants and but
00:33:51
even that does feel like there's many
00:33:54
times in life when
00:33:56
um people will say things in Corporate
00:33:58
America like we have too many white guys
00:34:00
in this these positions we need we
00:34:02
cannot hire another white guy so the
00:34:04
reality of Dei that I've seen up close
00:34:06
and personal when I was at AOL I've told
00:34:08
the story before
00:34:09
somebody said to me there's no way for
00:34:11
us to make you an EVP you have to stay
00:34:14
at SVP and I said why is that like I'm
00:34:16
doing all this EVP level work and they
00:34:17
said because you're a white guy
00:34:19
and the entire company is white guys at
00:34:21
EVP and we cannot add another white guy
00:34:24
there but we'll just give you the same
00:34:25
bonus compensation so don't worry about
00:34:27
it
00:34:28
and so there's all kinds of games being
00:34:29
played here but I think it's great that
00:34:31
we're having this conversation right
00:34:32
it's a hard conversation for America to
00:34:33
have for me the
00:34:36
I've talked about this in the past I've
00:34:38
always had
00:34:40
concern
00:34:41
when we make the shift away from
00:34:44
equality of opportunity to a quality of
00:34:46
outcome
00:34:47
because we all have this objective that
00:34:49
we want to see everyone have equal
00:34:52
rights to success in some way in the
00:34:55
United States the question is at what
00:34:57
point do you move Beyond opportunity
00:34:59
where everyone is given an equal
00:35:01
opportunity in this country
00:35:04
to
00:35:05
invest themselves in transforming their
00:35:07
own lives versus a
00:35:10
quality of outcome where regardless of
00:35:13
how much you do how much effort or
00:35:17
your trials you were given the same as
00:35:19
everyone else and that ends up looking a
00:35:21
lot like socialism and it's very
00:35:22
concerning because I think it limits
00:35:24
progress and opportunity for everyone
00:35:26
the real challenge with this particular
00:35:28
topic is college admissions
00:35:31
about outcome or is about opportunity
00:35:34
it's outcome in the sense that you spend
00:35:36
12 years going to elementary school and
00:35:39
high school and working hard to get
00:35:41
yourself into college
00:35:42
so it's the outcome of all of that
00:35:44
effort and some people aren't given the
00:35:46
opportunity to have success during those
00:35:49
12 years and you know
00:35:52
and it is an outcome what do you think
00:35:54
we should do and it's an opportunity
00:35:56
because it's about going to college
00:35:57
because without having a great College
00:35:58
cycle you may have a more tougher time
00:36:00
getting into a into the workforce so it
00:36:02
that is why it's a hard value question
00:36:04
for me I I don't have a great answer on
00:36:06
this
00:36:07
but I'm just pointing out it's a lot
00:36:08
like the abortion argument where both
00:36:11
sides have some
00:36:14
value-oriented point of view that feels
00:36:16
like it's negating the other person's
00:36:18
point of view
00:36:19
but at the end of the day they're both
00:36:21
coming from either this is an
00:36:22
opportunity or it's an outcome decision
00:36:24
and that's what makes it so challenging
00:36:25
the National Bureau of economic research
00:36:27
did a study in 2019 that they published
00:36:31
and what they found was that 43 so 4 3
00:36:35
43 of white students admitted to Harvard
00:36:38
were athletes
00:36:41
or Legacy students or children of
00:36:44
faculty and staff or had a relative that
00:36:48
were donors to the school
00:36:50
43 wait it's rigged and then they found
00:36:53
on top of that that 75 of those white
00:36:56
students admitted from those four
00:36:58
categories would have been rejected if
00:37:01
they had been treated as a normal
00:37:02
applicant so I think for all the people
00:37:05
that are looking at all the black and
00:37:07
brown kids that may not get into a place
00:37:09
like Harvard
00:37:10
if you don't look at these other
00:37:12
categories
00:37:13
it is a it's a bit of a gross Injustice
00:37:16
quite honestly so I think that these
00:37:17
institutions have to evolve and if
00:37:19
you're going to be forced to be
00:37:21
meritocratic then actually be
00:37:23
meritocratic and by the way I actually
00:37:25
am fine with legacies and donors but I
00:37:28
think what should happen is you should
00:37:29
just publish a rate card and you should
00:37:31
make it hyper transparent and so I love
00:37:34
it for the rich guy who's got an idiot
00:37:36
son or daughter let's just be upfront
00:37:38
and honest with everybody it costs 50
00:37:40
million dollars to get into Stanford it
00:37:42
costs 80 million dollars to get into
00:37:44
Harvard we all know these numbers so we
00:37:46
should just publish them you should pay
00:37:48
the price and be done with it and for
00:37:50
Harvard and Stanford and Yale and all
00:37:52
these schools
00:37:53
having an extra 10 or 20 dummies but an
00:37:55
extra two or three billion may be a
00:37:57
reasonable trade-off but at least it
00:37:58
would be transparent and fair right this
00:38:01
is an important free market question as
00:38:03
well because these are private
00:38:04
institutions they're privately funded
00:38:06
not if they take federal dollars or not
00:38:08
agreed yes but if they take federal
00:38:09
dollars they're not and then it becomes
00:38:11
a government processing it's government
00:38:13
influence it's a state school all those
00:38:15
is there a separate category here just
00:38:17
like country clubs or any private
00:38:20
membership club where the members of the
00:38:22
club get to decide who they want to
00:38:24
admit to the club and is that
00:38:26
Un-American and should the Supreme Court
00:38:28
and should our Constitution have a role
00:38:30
in defining how private institutions
00:38:33
make decisions about who gets it no
00:38:34
Harvard could absolutely return all the
00:38:36
federal funding the billions of dollars
00:38:37
a year they get that's totally
00:38:39
reasonable then they even decide to just
00:38:40
focus on Legacy admits
00:38:43
that's totally reasonable it's within
00:38:44
their rights
00:38:45
sacks like we got it I know that I know
00:38:48
that you used up your quote your
00:38:49
speaking quota already well yeah I
00:38:51
didn't want to I didn't want to butt in
00:38:52
it give him four on my points you get
00:38:56
four of Jake house minutes go ahead
00:38:58
so yeah two points I guess so on the
00:39:01
Legacy thing I agree with jamas that we
00:39:03
should get rid of it it's not
00:39:04
meritocratic I think that if they did
00:39:07
publish a rate card that would be more
00:39:08
honest but they would be too embarrassed
00:39:10
and ashamed to do that but I think
00:39:12
making that argument exposes the
00:39:13
hypocrisy of it
00:39:15
I've already told my kids I'm not
00:39:16
helping them get into college so they're
00:39:18
going to do it on their own and so look
00:39:20
I think by the way that's the best gift
00:39:22
you can give kids yeah that that
00:39:24
perspective sorry go ahead sex so that's
00:39:27
that's Point number one fully agreed on
00:39:28
on the Legacy thing with respect to the
00:39:30
decision itself that I'm sorry can I
00:39:32
just clarify that do you believe that
00:39:34
the Legacy thing should be like in
00:39:37
federal law I mean is that a government
00:39:38
thing or do you think that that's how
00:39:40
those institutions should behave because
00:39:42
those are different I mean I'm asking
00:39:44
are you suggesting that the law should
00:39:45
be involved that the government should
00:39:46
be involved I don't know if it's a legal
00:39:48
thing because I don't know how to
00:39:49
implement that law but um I think it's
00:39:51
something they should stop doing one way
00:39:52
or another maybe it should be a law but
00:39:54
I think it should stop so I think that's
00:39:55
important Legacy thing for privacy for
00:39:57
private membership so just let me just
00:40:00
double click on that do you think that
00:40:02
should extend to private membership
00:40:03
clubs like country clubs as well that
00:40:04
they shouldn't be allowed to decide who
00:40:06
they let in and don't let in what makes
00:40:08
it different that it's Harvard is it
00:40:09
because it's education versus any other
00:40:11
private membership because it takes
00:40:13
Federal funding
00:40:17
for some person to be able to get into a
00:40:20
school they don't deserve to get into
00:40:21
just because their parent went there or
00:40:24
just because their parents wrote a check
00:40:26
that's unreasonable and if they don't
00:40:28
take Federal funding these schools take
00:40:30
so much Federal funding that they're
00:40:31
quasi-public institutions even the
00:40:33
private ones so that's the distinction
00:40:35
that's the distinction for you just to
00:40:36
be clear yeah and also there is a strong
00:40:40
meritocracy opportunity argument on this
00:40:43
and I think it's why that whole parents
00:40:46
College admissions Scandal was was such
00:40:48
a big deal is that for a lot of people
00:40:50
in this country the ability to have your
00:40:53
kids Advance themselves by being the
00:40:56
first to get into college or going to
00:40:57
college or going to a better college
00:40:59
that is a big part of creating
00:41:01
opportunity in this country so for
00:41:02
people to try and defraud that I think
00:41:04
create a huge backlash so look I think
00:41:08
that the Legacy thing just needs to end
00:41:10
one way or another I don't know exactly
00:41:11
what the right legal
00:41:14
implementation is I have two questions
00:41:17
for the panel number one should you be
00:41:19
able to say by geography Hey listen
00:41:21
we're Harvard over Stanford we want to
00:41:23
have a representation of people from
00:41:25
around the world so we're gonna you know
00:41:27
have the top three students from each
00:41:29
country or you know or by population
00:41:31
however you do it
00:41:33
you know mathematically
00:41:35
come in so a little bit of geography
00:41:37
because I did hear from one of these
00:41:38
coaches that cost like six figures to
00:41:41
get your kids into the college they said
00:41:43
the best thing you can do is like move
00:41:44
to Kentucky
00:41:46
you know and then Harvard and Stafford
00:41:50
are looking to get a certain number of
00:41:51
students from each state I don't know
00:41:52
how true that is but they said that's
00:41:54
like one of the the top ways to do it
00:41:55
and then well do you remember Jason just
00:41:56
to build on your point I don't know if
00:41:58
you guys remember but a few years ago
00:41:59
the the in fashion thing to do was to
00:42:02
learn to play squash and I remember all
00:42:05
these parents telling me that and they
00:42:07
had kids that were older than my kids
00:42:08
and they were they were hiring full-time
00:42:11
squash coaches because apparently squash
00:42:14
was like yeah it was all angle shots
00:42:16
yeah I think like stop with the angle
00:42:19
shooting guys yes the gun should go off
00:42:21
you should run the race and your time is
00:42:24
your time and you should go to whatever
00:42:26
the best school is that you deserve to
00:42:28
get into based on your academic ability
00:42:29
now going back
00:42:31
the big problem and I think Jason you
00:42:33
really nailed it on the head
00:42:35
trying to fix it with affirmative action
00:42:38
at the University
00:42:39
is still quite unfair in the sense that
00:42:42
there are so many black and brown kids I
00:42:44
think with tons of potential that don't
00:42:45
even get there
00:42:47
and so the real question is what are you
00:42:49
doing at the grade school and at the
00:42:50
high school and at the preschool
00:42:53
so that you actually get more of these
00:42:55
kids to the starting line because fixing
00:42:57
it when they're 18 I think is a little
00:43:00
too late yeah right fixing it for 300
00:43:03
three four and five years old that's
00:43:05
when they deserve and need all the help
00:43:07
in the world to yourself that's why we
00:43:09
need school choice we need Charter
00:43:10
Schools we need to break the Monopoly
00:43:12
that the unions have over the schools
00:43:14
running it running for their own benefit
00:43:16
if you Define institutional racism as
00:43:20
conditions that trap people on
00:43:21
conditions of poverty across Generations
00:43:23
I'd say the abysmal quality of our
00:43:26
public schools are number one number one
00:43:29
two and three and the reason is because
00:43:30
there's no competition and the unions
00:43:32
run it for their own benefit how long do
00:43:34
they shut down these schools for in
00:43:35
California because they didn't want to
00:43:37
work because they're afraid don't know
00:43:38
don't see the c word we just got a label
00:43:41
enabled
00:43:45
for the benefit of kids and it wasn't
00:43:46
even medically necessary that was a
00:43:48
benefit they saw for themselves yeah
00:43:49
Jacob you come you come from a family
00:43:51
yep that were members of unions because
00:43:55
they worked for fire for police yeah um
00:43:57
is that right yeah
00:44:00
we speak negatively about the effects of
00:44:02
the teachers unions on our public
00:44:03
education system and it I I think it's
00:44:06
absolutely correct
00:44:08
but how do you share the point of view
00:44:11
from the other side if you're a teacher
00:44:13
and you're a member of the union and the
00:44:14
union takes care of you what's the
00:44:17
argument yeah sure to say this Union is
00:44:20
damaging public education and the
00:44:22
teacher that's working in the union and
00:44:23
a member of the union says this is
00:44:25
necessary for my livelihood to protect
00:44:27
me for my benefit
00:44:29
help us share the point of view because
00:44:31
we all have the strongly held point of
00:44:33
view that the unions are destroying and
00:44:34
eroding public education
00:44:37
people have the right
00:44:39
to form unions
00:44:41
but what we all do is we are forced to
00:44:43
be consumers of one educational product
00:44:46
because of how we pay taxes we pay taxes
00:44:48
in yeah I think in my in California we
00:44:50
each pay sixteen thousand dollars into
00:44:52
the educational system and so if you're
00:44:54
a parent you should get that 16k back
00:44:56
and be able to choose what you do with
00:44:58
it so there's competition so the unions
00:45:00
can have protection but there still
00:45:01
should be competition for these services
00:45:04
and I I think there are two separate
00:45:07
issues yeah there's one other thing
00:45:09
which is
00:45:11
I just want to give a shout out to
00:45:13
a non-profit that I support called smash
00:45:15
Academy smash.org it's done by Mitch and
00:45:18
Freda Kapoor the Mitch Kapoor
00:45:22
founded Lotus one two three if you're uh
00:45:24
under the age of 40 you might not know
00:45:27
and what they do is they realize that a
00:45:29
lot of the students who do get into good
00:45:31
colleges
00:45:32
it turns out a lot of the black and
00:45:33
brown students they get accepted and
00:45:35
they're behind in math and so what smash
00:45:38
has done is they have a three-year
00:45:39
program
00:45:40
and I go speak at it sometimes and I
00:45:42
donate money to it and I encourage you
00:45:44
to do the same they have this intensive
00:45:46
summer program so before you go to
00:45:47
college tomorrow if you were one of
00:45:49
those students
00:45:51
you know you might get into college and
00:45:52
then they drop out or even worse they
00:45:55
switch from a stem degree to a non-stem
00:45:58
degree because they're two years behind
00:46:01
on stem or a year behind on stem and so
00:46:03
the Kapoor has found this like little
00:46:05
opportunity to kind of catch people up
00:46:07
and I think that's what we have to do we
00:46:09
have to address this much earlier and
00:46:11
not put a Band-Aid on it yeah in the
00:46:14
system the ivy league system
00:46:16
um you know needs to well it's not
00:46:19
societies right I'm sure it's not just
00:46:20
pick on Harvard but it's like it's like
00:46:22
the elite institutions which we talk
00:46:24
about institutions okay all institutions
00:46:26
that receive federal funding they need
00:46:28
to take a deep look in the mirror and
00:46:29
say are we doing the best thing for
00:46:31
society the second question I had for
00:46:32
the panel was well I'm not getting the
00:46:34
feeling by the way but yeah but our Pure
00:46:37
academics the best way to accept people
00:46:39
into a college or should there be some
00:46:41
blend of it like putting Sports aside
00:46:43
because that's an obvious one but you
00:46:45
know is there's academics but then
00:46:47
there's also creativity you know if you
00:46:48
you might be terrible on your SATs test
00:46:51
and you might be an incredible virtuoso
00:46:53
pianist so I think what is the criteria
00:46:56
and making that criteria fair is what we
00:46:58
all want and it feels tremendously
00:47:00
unfair my point of view is if the
00:47:04
government is funding these schools then
00:47:06
the government certainly has to have a
00:47:08
point of view on what's the reasonable
00:47:10
model for admissions the government's
00:47:13
not funding the schools I Love A
00:47:15
diversity
00:47:16
in a Marketplace I love having different
00:47:19
schools having different admissions
00:47:21
criteria that allow different people to
00:47:24
find their path
00:47:25
through different institutions to your
00:47:27
point Juilliard does not care perhaps as
00:47:30
much what you did on you know your sat
00:47:34
and chemistry
00:47:36
and art schools do not care as much how
00:47:39
well you did in math and stem schools
00:47:43
don't care whether or not you want an
00:47:44
art competition and I think that that's
00:47:46
the important thing that we need to
00:47:48
preserve we need to preserve optionality
00:47:51
for institutions to Define what sorts of
00:47:54
individuals they want to try and recruit
00:47:56
and progress and train and get ready for
00:47:59
the workforce and the path in life that
00:48:01
they then choose versus trying to create
00:48:03
a cookie cutter model for what the
00:48:05
government says it's fair for everyone
00:48:07
and as much as we can take Government
00:48:09
funding out of these institutions and
00:48:11
out of these systems and give them the
00:48:12
freedom to set their own admissions
00:48:14
criteria and create differential
00:48:16
Educational Systems I think that's going
00:48:19
to create the best diversity of a
00:48:21
Workforce
00:48:22
and I'm I would kind of be more excited
00:48:25
about that sort of
00:48:26
an Institutional system than one that is
00:48:29
standardized by the government you know
00:48:30
why that'll never happen
00:48:33
because the profit motive of these
00:48:35
universities is really to be Shadow
00:48:37
organizations for their endowments
00:48:40
and the thing with endowments is that
00:48:42
the people that work there very much
00:48:44
want to
00:48:46
get paid and behave like profit
00:48:49
generating organizations and I think
00:48:52
the issue is that if their sole job was
00:48:55
to really fund
00:48:57
the
00:49:00
operational expenses of the University
00:49:02
then the endowments would be run very
00:49:04
differently right like take again I just
00:49:06
looked up on the internet but Harvard
00:49:08
has about
00:49:09
the operating expenses are roughly
00:49:12
five and a half billion dollars a year
00:49:14
but the revenues are about five and a
00:49:16
half billion dollars a year right so if
00:49:18
instead you had to basically fund you
00:49:20
know there was essentially no Revenue
00:49:22
per se right there's there is very
00:49:24
little tuition and you didn't take any
00:49:25
federal funding you'd have to come up
00:49:27
with five billion dollars a year so you
00:49:29
just basically take that as a draw
00:49:32
from your endowment the endowment would
00:49:34
be run very differently it would be a
00:49:36
don't lose money endowment
00:49:38
that would generate
00:49:40
very low Vol returns I think the problem
00:49:43
with that is that that's not how the
00:49:45
endowment at Harvard works
00:49:47
they wouldn't necessarily make risk
00:49:49
seeking investments in things like
00:49:51
private equity and hedge funds and
00:49:52
Venture Capital into the extent they did
00:49:54
they would just make much much fewer
00:49:55
much much smaller or both
00:49:57
so I think what you're saying could be
00:49:59
possible
00:50:01
but the problem are probably the
00:50:03
endowments at these universities okay
00:50:05
well 53 billion dollars moving Harvard's
00:50:07
endowment now so yeah it would be ten
00:50:10
percent can anyone tell me who the
00:50:11
largest real estate owner is in San
00:50:13
Francisco
00:50:14
you're not working on the internet oh no
00:50:16
I know I know it's that Art Institute
00:50:19
The Academy of Art University I knew
00:50:21
this because they uh kept buying things
00:50:23
and using them I think she used all the
00:50:26
profit over the years to buy more real
00:50:28
estate and she accumulated the largest
00:50:30
real estate portfolio yeah yeah yeah
00:50:32
sorry who is she the founder I forgot
00:50:34
her name
00:50:35
this is a for-profit university or a
00:50:37
private or I mean a non-profit
00:50:39
University yeah there's a lot of artists
00:50:41
that come out of Academy Art and they
00:50:42
work in a lot of different Industries
00:50:44
including industrial design including
00:50:46
animation is what I'm saying is it like
00:50:49
RISD or is it like actually an art
00:50:51
school oh no it's a great art school
00:50:52
yeah Academy of Art
00:50:55
anyway let's keep going so look speaking
00:50:57
of stem
00:50:58
making a big pivot away from art
00:51:01
to AI a couple big news items you know
00:51:06
the AI frenzy continues here in Silicon
00:51:09
Valley all the way from early to growth
00:51:12
stage funding through to M A events we
00:51:15
saw this week data Brits which is a
00:51:19
privately held data infrastructure
00:51:20
company announced that they were
00:51:21
acquiring Mosaic ml for 1.3 billion
00:51:24
dollars that headline number is based on
00:51:27
a cash and stock purchase price where
00:51:30
the value of the stock that was being
00:51:32
used to acquire Mosaic ml
00:51:35
was based off of the last round's
00:51:36
valuation for data bricks which was 38
00:51:39
billion dollars from a fundraising that
00:51:41
they did in 2021 so arguably the
00:51:43
valuation should be lower and the
00:51:44
overall purchase price could be
00:51:45
considered lower but that's besides the
00:51:47
point Mosaic ml as you guys may remember
00:51:50
is a company I mentioned a number of
00:51:52
episodes ago
00:51:53
led by the founder of Nirvana which was
00:51:57
an early AI business that was acquired
00:52:00
by Intel and then he started Mosaic ML
00:52:02
and he offers
00:52:04
open source models and I shared the
00:52:06
performance data of their most recent
00:52:08
announcement on the show
00:52:10
a few weeks ago
00:52:12
you know there's rumors I don't have any
00:52:14
confirmed reports but there's rumors
00:52:16
that Mosaic ml saw
00:52:18
their ARR grow from 1 million to 20
00:52:21
million dollars since January there was
00:52:23
other rumors that said they were only at
00:52:24
6 million of Revenue regardless
00:52:26
databricks is paying a pretty hefty
00:52:28
premium and I think it begs the question
00:52:30
what do data infrastructure database
00:52:33
companies end up looking like in the
00:52:35
future if AI has to become part of the
00:52:37
core infrastructure of every Enterprise
00:52:39
and this is creating a big shift so Saks
00:52:42
as our Enterprise
00:52:44
software
00:52:46
investor expert maybe you can share with
00:52:49
us what this means for the sector does
00:52:50
this buoy excitement for AI
00:52:53
infrastructure startups does this change
00:52:56
the investing landscape is it just
00:52:59
reinforcing what folks are already doing
00:53:01
I think it's a reinforcement I mean the
00:53:04
space is probably the hottest Spate
00:53:05
where you're talking about like AI
00:53:06
infrastructure for Enterprises I think
00:53:08
it's probably the hottest space right
00:53:10
now in in Venture Land we actually
00:53:12
looked at this deal we had a small
00:53:14
allocation in our next round they had a
00:53:16
term sheet for a series B
00:53:19
emergence was actually an elite it and
00:53:21
this is Mosaic ml yeah yeah I don't know
00:53:25
if I'm supposed to be telling you all
00:53:26
this but yeah
00:53:29
it's not great this is why people see it
00:53:31
in breaking news that a term sheet from
00:53:35
emergence to raise 50 million at 400
00:53:38
posts wow and we yeah and we were gonna
00:53:40
have a small allocation in that and as I
00:53:43
recall
00:53:44
the valuation was somewhere around 30 to
00:53:48
35 times ARR which actually is not that
00:53:50
insane for a very fast scoring company
00:53:52
in a hot space so that implies about 10
00:53:55
million of ARR I don't remember the
00:53:57
exact figure but I think that's sort of
00:53:58
the ballpark but growing very very
00:54:00
quickly I mean up from like one or two
00:54:03
at the beginning of the year right
00:54:05
so I actually understand why someone
00:54:09
would want to acquire or invest in this
00:54:11
company like I said I think we wanted to
00:54:13
invest and while we were sort of you
00:54:15
know trying our best you didn't say
00:54:17
anything when I talked about him on the
00:54:18
show a few weeks ago you were just
00:54:19
sitting there mum's a word or actually I
00:54:21
knew that this deal was was basically in
00:54:23
the works because the founder called us
00:54:26
up and he had already promised us a
00:54:27
small allocation around
00:54:29
Naveen did and he called up and said
00:54:31
actually I've got this deal so we're
00:54:33
putting the round on hold and so I
00:54:36
didn't think I should say anything
00:54:37
because obviously it was still ongoing
00:54:40
but yeah we knew about this deal that
00:54:42
was kind of coming down the pipe I
00:54:44
didn't know for sure that it would
00:54:45
happen but but yeah we we heard it was
00:54:47
in the ballpark of this like 1.2 1.3
00:54:49
billion dollar number which like you
00:54:51
said because databricks is a private
00:54:53
stock maybe it's only
00:54:55
10 or 750 or something like that who
00:54:57
knows it's still a great deal but you
00:54:59
know a lot of people are saying it's a
00:55:00
crazy deal I don't think it's a crazy
00:55:01
deal because before this happened after
00:55:05
Naveen signed the term sheet for the
00:55:07
series B an investor came over the top
00:55:10
to invest at a 700 million dollar
00:55:12
valuation wow so people were kind of
00:55:14
going crazy now I don't think that's
00:55:16
necessarily a rational Behavior I think
00:55:18
that's more of evidence of a Mania going
00:55:21
on but I think that what he got offered
00:55:23
is obviously a fantastic deal and I
00:55:25
think what it's evidence of is that
00:55:27
these big Enterprise infra companies are
00:55:30
going to try and build an end-to-end
00:55:32
tool chain here and I think Mosaic ml
00:55:35
had a very very important part of the
00:55:38
tool set which is training up these
00:55:40
models basically maximizing GPU
00:55:43
efficiency because gpus are basically
00:55:45
the scarce item right now we have a GPU
00:55:47
shortage and it's probably not going to
00:55:49
get better for a year or two if that so
00:55:52
this is a very important part of the of
00:55:54
the stack and I think it's probably a
00:55:57
smart acquisition for both yeah I mean
00:55:59
remember snow snowflake which competes
00:56:01
with data breaks also acquired Neva
00:56:04
which was founded by one of my
00:56:05
colleagues a guy I work with uh and a
00:56:07
new really great guy sweetheart for 150
00:56:10
million dollars last month that deal was
00:56:12
announced and the pattern recognition
00:56:15
that seems to emerge here is that if
00:56:16
you're in the data infrastructure
00:56:19
business it seems like it's becoming
00:56:21
critical to level up that it's not just
00:56:23
about storing and moving and
00:56:25
manipulating data but the interpretation
00:56:28
of data through models and the tooling
00:56:31
to build those models becomes a critical
00:56:33
component think of all of these toolkits
00:56:36
that these software companies have to
00:56:37
provide to their by software companies
00:56:39
and it's a big leveling up that's
00:56:40
necessary which seems to me there's
00:56:42
other companies out there like them that
00:56:44
are also going to need to strap on tools
00:56:47
like this
00:56:48
to make themselves competitive in this
00:56:50
marketscape which means that there are
00:56:52
more Acquisitions still to come yeah
00:56:54
Jacob you guys agree or have a different
00:56:57
point of view looking at it it's a it's
00:57:00
a big number the headline number but I
00:57:02
agree with Saks that the actual numbers
00:57:03
half the number so if it was you know if
00:57:05
you look at the number of Engineers they
00:57:07
had based on LinkedIn data and pitchbook
00:57:09
data probably 60 70 employees 80
00:57:12
employees and then 40 50 of them are
00:57:14
Engineers so that puts it at 30 million
00:57:16
dollars per engineer and that's one way
00:57:18
to look at these acquisitions
00:57:21
and I think you know probably three to
00:57:25
ten million dollars per engineer for
00:57:27
like really high-end Engineers is more
00:57:29
the going price but if this is half that
00:57:31
amount because they bought it with
00:57:33
Monopoly money in other words they're
00:57:34
2021 price for their company it's great
00:57:37
and then they get nailed it um Freeburg
00:57:39
what's happening is
00:57:41
this layer of uh natural language on top
00:57:45
of
00:57:46
any service whether it's something as
00:57:49
simple as Yelp or something as
00:57:50
complicated as a giant financial company
00:57:53
with tons of transaction data being able
00:57:56
to talk to it and understand it and then
00:57:59
have your machine learning team build
00:58:02
tools so business owners don't have to
00:58:05
hire data scientists the actual Business
00:58:06
Leaders can talk to the data and get
00:58:09
back answers or just say hey tell me
00:58:12
about our customers how have they
00:58:13
changed over the year and then hey
00:58:15
that's pretty interesting tell me more
00:58:16
about our customers and you know how are
00:58:19
they reacting to these three new
00:58:22
products
00:58:23
and you will get back in intelligence
00:58:26
that previously was unable
00:58:29
to be accessed and so I was uh I was
00:58:34
just at Sequoia yesterday with uh or two
00:58:36
days ago with the latest seven graduates
00:58:38
from our accelerator we bring them to
00:58:40
meet with sax and his team and bring
00:58:41
them to meet with Sequoia and when we
00:58:43
were at Sequoia
00:58:45
I realized that of the seven companies
00:58:47
four of them would not have been
00:58:49
possible before these machine learning
00:58:52
apis were available and open AI is but
00:58:55
one there are now in the companies I'm
00:58:57
talking to they're they're trialing
00:58:59
Freeburg on average six seven eight
00:59:01
language models before they pick one and
00:59:03
they're not picking open AI every time
00:59:05
putting that aside these businesses were
00:59:07
not possible before this technology was
00:59:10
introduced and available via API in the
00:59:12
last six to 12 months
00:59:14
and I think there's a bunch of
00:59:15
businesses that economically would not
00:59:17
work that now work I can give one
00:59:20
example
00:59:22
there are countless meetings that are
00:59:25
recorded over uh Zoom right
00:59:27
think like a local school board
00:59:30
well nobody could ever make a database
00:59:32
of all the discussions going on at local
00:59:34
school boards and then analyze all that
00:59:37
but now because all of those are saved
00:59:40
uh on zoom and they occur on zoom and
00:59:42
they're available for public record you
00:59:44
can ingest every single one of those and
00:59:46
then build a Bloomberg terminal of every
00:59:48
discussion happening at every school
00:59:50
board everywhere in the United States
00:59:52
and do that with chat GPT or any of the
00:59:56
language models and then get really
00:59:57
great insights from it that would be too
01:00:00
costly to transcribe at you know a
01:00:02
hundred dollars every hour to a
01:00:04
normalize let alone to analyze and so
01:00:07
I'm looking at
01:00:09
businesses as an investor what I'm
01:00:12
looking at right now is businesses that
01:00:13
were previously not economically viable
01:00:16
before this technology and then that are
01:00:19
now economically viable if that makes
01:00:21
sense and um I'm just looking at each
01:00:23
company under that lens right now and
01:00:26
I'm finding a lot of interesting
01:00:27
startups they seem to have that in
01:00:28
common similar news supporting this very
01:00:32
quick Evolution further up the value
01:00:34
stack so we were just talking about
01:00:36
these companies that are providing
01:00:38
effectively tooling as infrastructure
01:00:41
a little bit more up the value stack is
01:00:44
inflection AI which was started by
01:00:46
Mustafa Suleiman and Reed Hoffman uh who
01:00:50
was a co-founder while mistafa was
01:00:52
working with him as a
01:00:55
Venture partner at Greylock but Mustafa
01:00:57
as you guys know was the co-founder of
01:01:00
deepmind which Google bought for 400
01:01:01
million dollars really created the core
01:01:03
of Google's AI capability and is
01:01:06
considered one of the kind of preeminent
01:01:08
thought leaders and entrepreneurs built
01:01:10
that has built in this space he started
01:01:12
inflection
01:01:14
and the business just announced today
01:01:16
that they've just closed a 1.3 billion
01:01:18
dollar funding round LED by Microsoft
01:01:19
Reed Hoffman Bill Gates Eric Schmidt
01:01:22
Nvidia uh with an intention
01:01:25
of building the largest AI cluster in
01:01:27
the world 22 000 Nvidia h100s as part of
01:01:31
the build out but I think you've shared
01:01:34
chamoth historically that these big
01:01:36
funding rounds for these AI businesses
01:01:37
that haven't necessarily been launched
01:01:39
the product yet
01:01:40
don't make sense is this still you know
01:01:43
kind of reinforce your point and you
01:01:46
know what's your read on on the
01:01:47
inflection funding well the list price
01:01:50
of an h100 is about 30 odd thousand but
01:01:53
the street price so it's very hard to
01:01:55
get it so if you go to the if you go to
01:01:56
like eBay and try to buy an h100 it's
01:01:58
like 40 or 45
01:02:00
000. so if you have a 22 000 cluster of
01:02:04
h100s that's about 900 million dollars
01:02:08
of capex just that
01:02:10
and then you know all the sundry stuff
01:02:12
around it call it roughly plus or minus
01:02:15
a billion dollars
01:02:17
and so of the one and a half billion
01:02:19
they've raised let's say a billion goes
01:02:21
into building this 22 000 node cluster
01:02:24
you have 500 million for SG a and so
01:02:27
what that leaves behind is basically two
01:02:29
and a half billion of Enterprise value
01:02:31
for their chatbot
01:02:33
so I don't know I mean I've never used
01:02:35
Pi has anybody any of you guys used it
01:02:37
do you guys know if it's good Jason I'm
01:02:40
sure you've experimented with it have
01:02:41
you experimented with it or not really
01:02:42
which one
01:02:43
pie
01:02:45
that's what they're that's what their
01:02:47
chat bot is called pipe yeah I think
01:02:49
it's like api.com or something I think I
01:02:52
did try it once
01:02:53
and it was
01:02:55
not memorable Oh you mean po no not po
01:02:59
no no no no
01:03:01
personal one where you talk to it and I
01:03:04
say hey how are you doing and their
01:03:05
concept is like you have this one
01:03:07
relationship so it's like one chat
01:03:09
thread it's not kind of how I like to
01:03:11
work with the I use threads and I share
01:03:14
threads with my team so I'm not a fan of
01:03:16
this like you have one relationship with
01:03:17
one assistant I think the thing is it's
01:03:19
interesting to note that
01:03:21
very rarely when you invest money in the
01:03:24
billions of dollars
01:03:26
does the capex or purchase of one
01:03:29
specific form of equipment take up
01:03:31
literally
01:03:33
25 of the Enterprise Value that's
01:03:36
atypical
01:03:38
at least for a startup
01:03:40
if you're if you're buying a fixed plant
01:03:41
of a slow cash flow generating business
01:03:43
then maybe you know a bunch of that has
01:03:46
some value so that's what stood out to
01:03:48
me and all of these things Freeburg is
01:03:49
again increasingly this is all just a
01:03:52
pass through to Nvidia
01:03:55
it's probably in some ways a pass
01:03:57
through to the big cloud providers so
01:03:59
whenever I see a chip maker and a cloud
01:04:01
provider come together to put in a lot
01:04:02
of money it's essentially round-tripping
01:04:04
cash they're giving the money which then
01:04:06
they use to buy their services and then
01:04:08
you know you just you're just pumping
01:04:09
Revenue so I hope it works wishing the
01:04:13
best but you know that's the that's what
01:04:15
we just talked about where the
01:04:16
infrastructure companies that are
01:04:18
increasingly
01:04:20
looking like more commodity service
01:04:22
providers if they don't up level with AI
01:04:25
tooling
01:04:26
acquiring Mosaic ML and acquiring
01:04:31
Neva
01:04:32
do you think that that's an indication
01:04:34
of more emana to come and if so doesn't
01:04:38
that justify The increased funding The
01:04:41
increased valuation and the activity
01:04:43
that we're seeing in the early stage
01:04:44
with some of these businesses I think
01:04:45
for sure there's going to be more M A
01:04:47
and I think the valuations will be high
01:04:49
not because these companies have a lot
01:04:50
of Revenue yet but because it's very
01:04:52
strategic for these big infra companies
01:04:54
to assemble the end to end
01:04:56
tool chain I think we should explain to
01:04:58
folks what that means enterprise
01:05:00
software companies provide software to
01:05:03
businesses that are not traditionally
01:05:04
technology companies they also provide
01:05:06
software to other businesses to help
01:05:08
them build new tools to help them build
01:05:10
out their business so an Enterprise
01:05:12
software company can sell to United
01:05:13
Airlines or consult a Visa or consult a
01:05:15
Ford and that software can then be used
01:05:18
by that company to build tools that are
01:05:20
powered by the database or powered by
01:05:23
the data analytics or increasingly
01:05:25
powered by AI tools and so they can
01:05:28
build AI applications and AI
01:05:30
capabilities into their business whether
01:05:32
it's United Airlines or Expedia or Visa
01:05:35
or whomever and that's why this these
01:05:37
companies are so critical in terms of
01:05:40
enabling the transformation of
01:05:41
Industries with AI tooling and and why
01:05:44
you know getting AI tooling into their
01:05:46
capability set is so critical right now
01:05:47
it's important to note though guys that
01:05:49
whenever you have the emergence of a new
01:05:51
sector
01:05:52
Sox I think you are right that M A goes
01:05:54
up
01:05:55
but it tends to be that the valuations
01:05:57
go down Peak M A froth happens at the
01:06:00
beginning of the cycle when hype is at
01:06:02
maximum and facts are at the minimum
01:06:06
and that's okay you know that's good for
01:06:08
the startup it's marginally negative for
01:06:11
the existing shareholder of a large
01:06:13
company and then over time it gets
01:06:15
itself sorted out when the facts are
01:06:17
more obvious so yeah it's kind of like
01:06:20
you guys remember when the optical
01:06:21
networking craze oh my God had these
01:06:24
multi-billion dollar Acquisitions and
01:06:26
where did they go they went they went
01:06:27
nowhere they just disappeared we
01:06:30
actually have like a market map that we
01:06:31
did that I think can explain this
01:06:33
concept of a end-to-end tool chain so
01:06:35
this is a slide that our growth team
01:06:39
shout out to Mike Robinson and chemical
01:06:41
Borough they put this together in
01:06:43
preparation and part of the investment
01:06:44
memo for Mosaic and I think to explain
01:06:48
the point you were kind of making
01:06:49
Freeburg like why do Enterprises need
01:06:53
the services one really simple way of
01:06:56
thinking about it right now is that
01:06:57
every Enterprise would like to roll out
01:06:59
its own chat GPT they would all like to
01:07:01
have their own internal version of chat
01:07:03
GPT where their employees for example
01:07:05
could ask questions and get answers
01:07:08
that's where all the action is right now
01:07:09
every Enterprise would buy that tomorrow
01:07:11
if it existed in the way
01:07:15
sex yeah give an example the idea would
01:07:17
be that you know any employee in the
01:07:19
company could ask questions to the AI
01:07:21
model the way you can ask chat GPT
01:07:23
questions and it would have all the
01:07:24
Enterprises data and it would also
01:07:26
understand their permissions and have
01:07:27
all the security settings so that only
01:07:30
there I feel could get the right
01:07:31
information that's the kind of
01:07:32
intelligence they want to unlock I mean
01:07:34
there are lots of other use cases but
01:07:36
that's a really simple one a corporate
01:07:38
Oracle so I can if I'm in HR I can ask
01:07:40
hey tell me about our you know
01:07:42
composition yeah totally co-pilot for
01:07:45
the CEO I think there's gonna be lots of
01:07:46
these I think the sales team is gonna
01:07:48
have their own co-pilot I think the
01:07:49
marketing team's gonna have their own
01:07:50
co-pilot and customer support has it
01:07:52
already yeah this customer support will
01:07:54
have it
01:07:56
there's gonna be a lot of these but I
01:07:58
think Enterprises want one at the level
01:08:00
of the call it the company intranet
01:08:02
where employees could just ask it
01:08:03
questions and but they do not want to
01:08:06
share their data with open AI That's
01:08:08
like very clear they want to roll out
01:08:09
their own models
01:08:10
so the question is well how do you roll
01:08:12
out your own model and what this shows
01:08:13
here is the different pieces of the
01:08:15
stack that you have to have so first you
01:08:16
capture all of your data you got to
01:08:18
label it to be classified right for the
01:08:20
model you've got to store it somewhere
01:08:22
then you need to get one of these open
01:08:24
source AI models off the shelf and
01:08:26
there's a probably the most prominent
01:08:28
site for this called a hugging face
01:08:30
which already has something like I think
01:08:32
a two billion dollar valuation that's
01:08:34
another like really crazy valuation to
01:08:37
ARR multiple but hugging face has kind
01:08:40
of all the open source models it's very
01:08:42
active and so people grab the latest
01:08:44
open source model that's the best fit
01:08:46
for them and then they need to train
01:08:48
that model and that's really where
01:08:50
Mosaic played and there's a ton of
01:08:51
activity right now in this last mile
01:08:54
problem of how do you customize a model
01:08:56
to make it suitable for your use whether
01:08:58
you're an Enterprise whether you're a
01:09:00
customer service team whether you're a
01:09:03
SAS app that wants to incorporate AI
01:09:05
capabilities into your app that's where
01:09:08
all the action is right now is
01:09:09
customizing these open source models
01:09:10
models that then leads to basically
01:09:13
being able to get the right inferences
01:09:15
and there's sort of a separate category
01:09:17
around Hardware that is you know we
01:09:19
don't play there but this is kind of the
01:09:21
end-to-end tool chain and I think these
01:09:22
big tech companies are going to be
01:09:24
racing to put this whole thing together
01:09:25
to fill it out yeah yeah and that's so
01:09:28
there'll be more M A is your prediction
01:09:29
which means more startup valuation
01:09:31
booming more Capital deploying there was
01:09:33
a uh
01:09:35
a couple of Articles this week and
01:09:37
tomorrow this is your red meat as much
01:09:39
as Ukraine is Saks is
01:09:41
because you've talked about this at
01:09:43
length social messaging startup IRL is
01:09:46
shutting down after a board
01:09:47
investigation found 95 percent of its
01:09:49
claimed 20 million users were actually
01:09:51
fake this is a company that in June of
01:09:53
2021 raised 170 million dollar series C
01:09:57
at evaluation of over a billion dollars
01:09:58
making it one of the many proclaimed
01:10:00
unicorns of Silicon Valley led by
01:10:02
softbanks Vision fund the investor who
01:10:04
was sitting on the board said that they
01:10:06
didn't know if we've ever given an
01:10:08
investment term sheet to a startup
01:10:10
faster than SoftBank gave to IRL at the
01:10:12
time at the same time different story
01:10:14
but in the same week a company called
01:10:17
baiju which you have talked about in the
01:10:19
past was once valued at 22 billion
01:10:21
dollars and claimed to be India's most
01:10:24
valuable startup is in turmoil as
01:10:25
shareholders and creditors are seeking
01:10:27
to dilute the founder and he's rushing
01:10:30
to find Capital and raise a billion
01:10:32
dollars to try and buoy the company
01:10:34
process one of the investors Mark the
01:10:36
company's valuation down to 5.1 billion
01:10:38
so down 75 percent
01:10:40
I guess the question is overall are we
01:10:43
still seeing this kind of turmoil in
01:10:46
Silicon Valley from the zerp era funding
01:10:49
of startups in Stark juxtaposition to
01:10:52
the excitement and the frenzy around AI
01:10:53
it's a characteristic of the exact same
01:10:55
thing meaning if you replaced AI with
01:10:59
crypto
01:11:00
it's the exact same thing if you're
01:11:02
placed
01:11:03
AI with
01:11:05
co-working if you replaced AI with
01:11:10
I don't know synthetic biology if you
01:11:13
replaced AI with SAS this has all
01:11:17
happened before I think it's important
01:11:18
to identify what this is
01:11:21
what this is is that there aren't enough
01:11:23
checks and balances and there are
01:11:25
fundamentally people
01:11:27
who are deeply inexperienced who are in
01:11:30
the wrong job
01:11:32
and in the few key moments
01:11:34
where the venture capitalist is supposed
01:11:37
to add value that person is ill-equipped
01:11:40
and unprepared why because they were the
01:11:42
VP of X Y and Z at some startup
01:11:45
and they got hired through no fault of
01:11:47
their own
01:11:48
into a dynamic because these Venture
01:11:50
funds wanted to raise larger and larger
01:11:52
amounts of money
01:11:54
so what happens you don't even know how
01:11:57
to ask the basic questions or even more
01:12:00
insidiously you don't have the courage
01:12:01
to say
01:12:03
the hard thing
01:12:04
and so these things happen that are
01:12:08
frankly inexcusable
01:12:10
right so in the case of one of these
01:12:13
companies and I've mentioned this before
01:12:15
they approached us for financing and
01:12:18
when we asked for a data room we got a
01:12:21
Google doc link to a spreadsheet
01:12:24
now there's no reasonable World in which
01:12:26
a company is that unsophisticated when
01:12:29
it comes to understanding their business
01:12:31
right a data room should include an
01:12:34
enormous amount of operational and
01:12:36
financial metrics that you can use to
01:12:38
come to your own conclusion so that you
01:12:40
can present it transparently to the
01:12:42
investor
01:12:43
the idea that boards wouldn't even hold
01:12:46
these companies accountable is just a
01:12:48
sign that the board members themselves
01:12:50
are pretty fundamentally inexperienced
01:12:52
people
01:12:53
and I think the thing that we do which
01:12:55
is a mistake is we say oh well X Y and Z
01:12:57
firm LED this deal yeah that may be true
01:13:01
but really what it means is that firm
01:13:05
in a grab to get the money
01:13:07
hired some person that checked some
01:13:10
boxes put them in the job that person
01:13:12
LED around and there just wasn't any
01:13:15
infrastructure to either teach that
01:13:17
person or then that person to have the
01:13:20
courage to hold the founder responsible
01:13:21
that will play out in AI as well it's
01:13:24
just that we're at the beginning of the
01:13:25
hype cycle
01:13:26
right because we replace AI again as I
01:13:30
said with any of these other things we
01:13:31
sat here
01:13:32
a little bit hand-wringing when we saw
01:13:34
these crazy valuations for these nft
01:13:36
projects where are those now
01:13:38
right so you name it zero this is about
01:13:41
fundamentally inexperienced people doing
01:13:44
a job that seems pretty easy from the
01:13:46
outside
01:13:47
but in Practical reality there are only
01:13:49
a few Legends in our business most
01:13:51
people and I think it was shy Goldman
01:13:53
that did the math on this most people do
01:13:55
not know how to run these businesses
01:13:57
well Nick will find that tweet you can
01:13:59
show
01:14:00
I think it's like two and a half percent
01:14:02
of all of the funds that are in
01:14:05
pitchbook so over 800 of them have ever
01:14:07
generated more than 3x and two funds
01:14:10
so this is a hard business it turns out
01:14:12
you can't just wake up and be an
01:14:13
investor it turns out and
01:14:16
that's what we're finding so I don't
01:14:18
know it's not very surprising in the end
01:14:19
none of this is surprising
01:14:21
had a really good point in the middle
01:14:23
there is that there is a generation of
01:14:25
venture capitalists who were added
01:14:26
during the boom who were operators but
01:14:28
they've never been taught to have the
01:14:30
discipline of capital allocators and one
01:14:33
of those key pieces of discipline is
01:14:35
asking uncomfortable questions and doing
01:14:37
uncomfortable
01:14:39
diligence and you can trust people but
01:14:42
you need to verify that is a key part of
01:14:45
the job you can trust the founders but
01:14:47
you have to verify that the data you
01:14:49
have is correct
01:14:50
the fact that SoftBank did is that
01:14:52
incredible valuation and the person who
01:14:54
did this deal never checked that the
01:14:58
customers were real
01:15:00
is uh makes you unfit to serve in the
01:15:03
job and I will do diligence and during
01:15:06
that time period Freeburg I had many
01:15:08
Founders say to me you're asking for
01:15:10
more diligence than the lead and this
01:15:13
deal is closing and we are over
01:15:15
subscribed and I said okay and they said
01:15:18
okay so you're not gonna you're not
01:15:19
going to require assistance I said oh no
01:15:21
we require this diligence we want to see
01:15:22
your you know very basic stuff your bank
01:15:25
statements your p l we want to talk to
01:15:27
why don't you give us a list of your
01:15:28
first thousand give us a list of 500
01:15:31
customers from last month we'll give you
01:15:32
five numbers we're going to talk to five
01:15:34
random customers like people did not
01:15:35
want to do this stuff we do that this
01:15:37
work at our firm when we start to own
01:15:39
five ten percent of this and we train
01:15:40
our Founders to do to be ready for
01:15:42
proper diligence all that diligence is
01:15:44
happening now now in the early stages
01:15:46
there's not much to go on but you can
01:15:48
check stuff
01:15:49
during this period people Founders used
01:15:52
the hot Market to not
01:15:55
participate in the due diligence process
01:15:57
and when you look at companies
01:15:59
a lot of times people will suspend
01:16:01
disbelief you know this company uh buy
01:16:03
you I don't know a ton about it but it
01:16:05
seems to have
01:16:07
you know like an educational app like a
01:16:09
company brilliant.org that chamoth and I
01:16:11
are um early investors in and Jama
01:16:13
incubated
01:16:15
great great business
01:16:17
um and but then their business and their
01:16:19
revenue seems to be based on a series of
01:16:21
like Kumon like in-person instruction oh
01:16:24
that's not a high gross margin business
01:16:25
sorry if you have to have a storefront
01:16:28
you're not a software business anymore
01:16:30
and so people started giving valuations
01:16:33
and this is the second part and I'll
01:16:34
just wrap on this people started giving
01:16:35
valuations to these companies that were
01:16:37
real world businesses that were low
01:16:38
margin businesses direct to Consumer
01:16:41
whatever it was they suspended disbelief
01:16:43
and they gave them valuations for high
01:16:46
growth
01:16:47
high gross margin businesses and that
01:16:49
was another mistake and you put those
01:16:51
two things together
01:16:52
not doing diligence and then just
01:16:55
misvaluing of actual assets that's the
01:16:58
cleanup work that's been that's going on
01:17:00
right now and it takes years I mean it
01:17:01
took decades for them to pinch Bernie
01:17:04
Madoff it can take 10 years for these
01:17:06
frauds to come out there was a guy who
01:17:08
kept telling the SEC about Bernie Madoff
01:17:10
I think he was like nine years since the
01:17:12
first time he he let them know
01:17:14
that the you know perfect returns were
01:17:17
just not possible statistically
01:17:19
so it it takes time but they're they're
01:17:21
picking these uh Folks up everywhere
01:17:24
dokwan got picked up at Montenegro you
01:17:26
know the guy from Luna
01:17:27
and it's going to take a decade to clean
01:17:29
up all of the fraud in our space I think
01:17:32
this was sort of mentioned by chamoth
01:17:34
but I think it needs to be a bigger
01:17:35
point which is the influence of fund
01:17:37
size on these decisions
01:17:39
I mean crash funds are in the six to
01:17:42
seven hundred million range so when we
01:17:44
write a check it's usually 10 15 20
01:17:46
million dollar check in a series a
01:17:49
company
01:17:50
that's like a big check for us we're
01:17:52
really going to sweat that decision for
01:17:54
SoftBank at 10 to 20 million dollar
01:17:56
check in a hundred billion dollar fund
01:17:58
which is what they had
01:18:00
it doesn't even make sense it's a waste
01:18:01
of their time it's not even a rounding
01:18:03
error for them to basically make a ten
01:18:06
thousand dollar check for you yeah
01:18:08
exactly so for them they had to write
01:18:10
200 million dollar checks if to justify
01:18:13
their time managing 100 billion dollars
01:18:15
and so the mistake when they make a
01:18:17
mistake is 20 times bigger than it
01:18:19
should be that should have been maybe a
01:18:21
10 million mistake not a 200 million
01:18:24
dollar mistake but their Fun Size force
01:18:26
them to basically write these gigantic
01:18:28
checks and they're writing them into
01:18:29
companies that were effectively seed
01:18:32
stage or series a companies if it was
01:18:34
into a growth stage company I think
01:18:36
that's fine there's a lot more data and
01:18:38
there's a lot more customer references
01:18:40
that you can check at a later Stage
01:18:41
Company by the way the number one part
01:18:43
of diligence I'd say for us other than
01:18:45
looking at metrics which is anyone can
01:18:47
do is the offsheet references talking to
01:18:50
customers from a list that you figured
01:18:53
out yourself not from the company itself
01:18:55
is probably the single most important
01:18:57
qualitative part of of diligence
01:19:00
so I don't know what happened here but
01:19:02
it's not stated explicitly but I think
01:19:04
it's important David you have
01:19:05
credibility So when you say something
01:19:08
sucks people listen because you have
01:19:10
Bona fides that are undeniable
01:19:12
same thing with jcal same thing with you
01:19:14
Freeburg I think you know and this may
01:19:16
sound mean but it's like most of these
01:19:17
people
01:19:18
are just XYZ mid-level VPS from a
01:19:22
startup and that's a great thing
01:19:24
but it's not necessarily going to give
01:19:27
you the gravitas especially if that's
01:19:29
not what you were forced to do to help
01:19:31
build that company and when push comes
01:19:33
to shove inside of a boardroom or in the
01:19:36
middle of diligence
01:19:38
there has to be conflict I think it's a
01:19:40
necessary feature of good decisions and
01:19:43
that conflict arises internally within
01:19:45
your investment team but it also has to
01:19:46
come externally with the executives of
01:19:49
the startup and with the CEO themselves
01:19:51
because when you're Prosecuting a good
01:19:53
decision it's unbelievable that you
01:19:54
agree on 100 of things and there has to
01:19:56
be certain things that are controversial
01:19:58
otherwise by definition that company
01:19:59
isn't really even pushing the boundary
01:20:01
so I just think that these are all
01:20:04
skills that are poorly taught
01:20:07
while you are building a business it is
01:20:09
not the reason why you should have been
01:20:11
in charge of allocating 50 and 100
01:20:13
million dollar checks into companies
01:20:14
that is just crazy town
01:20:16
I love your point sacks though about Fun
01:20:19
Size Dynamics Fun Size Dynamics our
01:20:21
destiny right it really is and and the
01:20:24
optimal Fun Size for Venture is
01:20:26
somewhere between 250 and 600 million
01:20:30
according to everybody who's been doing
01:20:32
this for you know more than a decade or
01:20:34
two and who's successful whether it's
01:20:36
when the costs are coming down so as the
01:20:37
input costs come down whether it's for
01:20:39
engineers and co-pilots and and hardware
01:20:41
and abstraction layers then
01:20:43
theoretically
01:20:44
greater outcomes should be generated
01:20:46
with fewer dollars in which would again
01:20:48
tell you that fund sizes should actually
01:20:50
go down not up that the reason they go
01:20:52
up is because you get paid an annual
01:20:54
management fee and so obviously the way
01:20:56
to wait the way to make more money is to
01:20:59
get two percent on a larger fixed number
01:21:01
every year versus two percent on a
01:21:02
smaller number or you know for example
01:21:05
what we did was we were like we're gonna
01:21:07
go and hit grand slams and so I traded
01:21:10
off management fee in return for 30
01:21:12
carry and that turned out to be
01:21:14
literally a multi-billion dollar smart
01:21:18
decision because I gave up tens of
01:21:19
millions of dollars up front for back
01:21:21
end now the back end could have gone to
01:21:23
zero and maybe it still can so who knows
01:21:25
but you know most folks wouldn't do that
01:21:28
most folks take the sort of
01:21:30
risk-adjusted bet and say you know what
01:21:32
I'll just take the two percent and I'll
01:21:33
raise a 200 million then a 500 million
01:21:35
then a billion then a two billion
01:21:37
dollars
01:21:38
yeah and they stack them all and they
01:21:40
get the two percent and all of a sudden
01:21:41
the profits don't matter which means the
01:21:43
outcomes don't matter which means the
01:21:45
diligence is perfunctory and it becomes
01:21:47
a theatrical expose that you can use you
01:21:51
know this sort of thin fig Leaf you can
01:21:53
point to LPS and say we did our work
01:21:56
here give us more money for this next
01:21:58
fund that's the rat race that the
01:22:00
Venture Community is in and it's going
01:22:02
to get played out in companies like IRL
01:22:04
and baijus and a lot of these AI
01:22:06
companies quite honestly well and it the
01:22:08
chickens have come home tours for all
01:22:09
the questions is not different is I
01:22:11
think what I'm trying to say this time
01:22:12
is not different did you guys see there
01:22:14
was some article that reported that
01:22:17
fundraising for late stage funds is just
01:22:19
like cratered dead so Insight was trying
01:22:22
to raise a 10 billion dollar fund and
01:22:23
they've only been able to raise two
01:22:24
according to this article no no it was
01:22:26
it was 22 down to 10 and of which
01:22:28
they've raised two okay so 10 and then
01:22:31
tiger was trying to raise 12 they cut it
01:22:34
to six and then they can only raise two
01:22:36
makes sense yeah so basically that's
01:22:39
like a whatever uh 80 to 90 reduction in
01:22:43
the size of these funds yeah meanwhile
01:22:45
the sovereigns where they were going for
01:22:47
this money or buying sports teams
01:22:48
they're like you know what instead of
01:22:49
tech let's just buy sports teams and
01:22:51
they're buying series a and they're
01:22:53
buying Manchester United and they're
01:22:55
buying distressed portfolios yeah and
01:22:57
the but there's a sovereign crunch
01:22:58
there's a huge we've talked about it
01:23:00
before but there's a huge crunch in late
01:23:01
stage financing it's only going to get
01:23:02
worse over the next 18 months I asked
01:23:05
Brad last week like how many of these
01:23:07
zombie courts do you think there are
01:23:09
these are the 1400 he said 30 to 40
01:23:11
percent yeah I think he might be you
01:23:13
know it could be look out of 1400 I
01:23:16
think it could be 700 or zombie coins I
01:23:17
think it's at least 700 I think I think
01:23:19
it's probably 60 yeah it's and then the
01:23:22
other 40 let's say how many of them have
01:23:25
a Down Round coming I think 60 go to
01:23:28
zero
01:23:29
of the remaining 40 half of them
01:23:32
probably return money
01:23:34
and then of the remaining half half of
01:23:37
those maybe get one and a half X
01:23:40
and then you get a geometric
01:23:41
distribution from there which means the
01:23:43
Blended return of that entire stream of
01:23:45
unicorns will be about 1.1 x but it'll
01:23:48
be very massively distributed I think
01:23:49
that is exactly right tomorrow I I would
01:23:51
yeah everybody's getting their money
01:23:53
back except if you don't have
01:23:55
diversification yeah it's it's the I
01:23:57
think the market is sending a very clear
01:23:59
message which is these are usage
01:24:02
everybody's getting no no no most people
01:24:04
won't get their money most people get
01:24:05
their money back but on average it's
01:24:07
going to be one extra turn yeah so it's
01:24:08
not going to be evenly distributed
01:24:09
correct
01:24:10
well I'm glad that the term zombie corn
01:24:12
has held guys um we are coming up on our
01:24:15
time do you guys want to do science
01:24:16
corner or do you want to
01:24:18
um
01:24:19
yeah the three of us need to use the
01:24:20
bathroom break so go ahead and just
01:24:24
if you could just go do it we're gonna
01:24:25
go and take a leak and we'll come back
01:24:27
and make a Uranus joke
01:24:31
so look it's been great it's been great
01:24:33
being your host we crashed yourself give
01:24:35
us the science quitter give us you don't
01:24:37
hug me you don't embrace me you know
01:24:38
you're gonna love my contribution free
01:24:40
book I actually I posted a clip of RFK
01:24:43
talking about vaccines I'd love for you
01:24:45
to listen to it and actually give us the
01:24:47
critique
01:24:48
yes I will
01:24:50
that's going viral right now he did such
01:24:52
a good job explaining his position on
01:24:54
that he did such a good job yeah look do
01:24:57
you guys read the offit piece I forward
01:24:58
it to you and I said please read this
01:25:01
if you guys read that piece I'll watch
01:25:03
his clip and let's talk about it next
01:25:04
week is that cool
01:25:07
yeah he is a vaccine scientist who RFK
01:25:10
Jr references often as someone that he
01:25:13
met with and spoke with and says I
01:25:14
caught him in a lie and often basically
01:25:16
said here's exactly what happened here's
01:25:18
the conversation here's the data here's
01:25:20
the fact here's the science
01:25:22
and I would really really encourage you
01:25:25
guys to read that please
01:25:27
and then I'll watch his clip and like
01:25:28
let's have a real kind of analytical
01:25:30
conversation about statements that are
01:25:33
good questions to ask and good things to
01:25:35
interrogate and things that are being
01:25:37
said that maybe aren't factually correct
01:25:40
and I think that we need to kind of
01:25:41
really as a service to ourselves and to
01:25:43
people that listen to us really do that
01:25:45
work
01:25:46
so let's do that and come back and talk
01:25:47
about it next week if that's cool
01:25:49
but I'd encourage everyone to read often
01:25:51
he put it on substack Nick we'll put the
01:25:53
link in the the notes Here continue
01:25:56
dialogue continue exactly I think that's
01:25:58
the most important you want to talk
01:25:59
about that certain Senator that all of a
01:26:01
sudden just basically gave us the
01:26:03
Heisman no we've had a lot of those by
01:26:05
the way so let me just be clear that's
01:26:06
not the only Heisman we've received on
01:26:08
the all in Summit I will say that the
01:26:10
speaker list for the all-in summit it's
01:26:13
looking fantastic
01:26:16
we're gonna have a great time
01:26:19
and I'm really excited for the
01:26:20
conversation but you're saying some
01:26:22
folks Heisman does because of our
01:26:24
support of RFK
01:26:26
that did happen and specifically the
01:26:29
fact that that's really open-minded yeah
01:26:31
and then there were other folks who were
01:26:33
insulted by things or said about them by
01:26:36
people on the show So Soft you guys want
01:26:38
to hear about the the nanograph release
01:26:41
that came out yesterday okay I'll cover
01:26:42
this one real quick what about this like
01:26:44
slow Hummer that we're all getting what
01:26:46
is that that's it it's a slow Hummer
01:26:48
exactly okay are you talking about like
01:26:51
the new H3 EV but it only goes up to 50
01:26:53
miles per hour
01:26:55
what is that the new Hummer the new HV
01:26:57
you know they have an EV they're coming
01:26:59
out with an EV event oh you're kidding
01:27:01
it's hilarious yeah it's like a great
01:27:03
troll I remember when Schwarzenegger got
01:27:05
the Hummer back in the 90s and
01:27:06
everyone's like oh my God it's amazing
01:27:09
and then the Hummer was the coolest car
01:27:11
to drive yeah
01:27:16
Okay so yesterday a paper was published
01:27:20
by an international
01:27:22
um scientific Consortium this group is
01:27:24
called nanograph
01:27:26
and they've been using a series of
01:27:27
instruments to measure pulsars including
01:27:31
a 500 meter radio telescope array
01:27:34
um which allows them to see what's so
01:27:37
funny no I just had like three Uranus
01:27:40
jumps one sentence and I had to stop
01:27:42
myself
01:27:44
the nanograph data that was released is
01:27:47
15 years of data from pulsars and
01:27:49
pulsars are neutron stars which are
01:27:52
stars that have collapsed on themselves
01:27:53
and are basically super dense and start
01:27:55
spinning and then these pulsars you know
01:27:58
you basically like a lighthouse you can
01:27:59
see the light so it looks like a almost
01:28:01
like a strobe light and we can see
01:28:03
thousands of these Across the Universe
01:28:05
and we can observe them and the rate at
01:28:07
which the pulsing is coming out of these
01:28:09
pulsars tells us a lot about what is
01:28:12
happening in the space between Earth and
01:28:16
those pulsars and when you collect
01:28:18
enough data over a long enough period of
01:28:20
time which is what these folks have just
01:28:21
released as 15 years worth of this data
01:28:23
you can start to see really interesting
01:28:27
patterns in the data that support the
01:28:31
theory that space time itself is slowly
01:28:36
vibrating being stretched being
01:28:38
compressed being pulled apart being
01:28:40
pushed back together because of very
01:28:42
large gravitational events happening
01:28:45
around the universe and what that means
01:28:47
is you guys have all seen
01:28:49
you know that kind of two-dimensional
01:28:50
image of a black hole and Nick if you
01:28:52
could find one online and pull it up
01:28:54
where it looks like hey at the middle of
01:28:55
a black hole space itself collapses in
01:28:57
and it collapses down and what happens
01:28:59
is space and time gets significantly
01:29:02
elongated when they're really close to
01:29:04
gravity gravity actually pulls space
01:29:06
sucks it in sucks in time and it becomes
01:29:09
distorted and so when you have large
01:29:12
black holes around the universe spinning
01:29:14
and running past each other they're
01:29:16
actually pulling and stretching space
01:29:18
time itself and that sends out ripples
01:29:20
throughout the Universe ripples that are
01:29:23
slowly undulating space and time itself
01:29:27
so by observing all of these pulsars
01:29:29
around the universe and the rate at
01:29:31
which these pulsars are pulsing and
01:29:33
seeing slight variations we can start to
01:29:37
measure and actually see those waves
01:29:39
those very slow waves of space time
01:29:43
itself undulating and being pushed and
01:29:45
compressed and so it supports Einstein's
01:29:48
general theory of relativity which
01:29:50
indicated that space-time itself can be
01:29:52
warped by gravity and it provides a
01:29:54
really interesting picture on the
01:29:56
universe itself that all around us we
01:29:59
have large masses that are many many
01:30:01
millions or billions of light years away
01:30:03
that are creating waves in space and
01:30:06
time itself that we as humans will never
01:30:08
kind of observe realize or feel
01:30:10
ourselves but as part of the fabric and
01:30:13
the underlying nature of our universe
01:30:15
with space and time being slowly warped
01:30:18
and slowly elongated slowly compressed
01:30:20
and it's a really fascinating picture of
01:30:22
the universe over time as scientists
01:30:24
gather more and more of this data
01:30:26
it will provide insights into where in
01:30:29
the universe these massive black hole
01:30:31
events May Be occurring and also provide
01:30:33
insights into the early picture and the
01:30:35
large-scale structure of the universe
01:30:37
which helps us better understand how
01:30:39
everything started and where we're all
01:30:41
coming from so it was a really
01:30:42
fascinating data release I think it's a
01:30:45
really kind of profound thing if you
01:30:46
take a little time and think about it
01:30:48
it's super exciting it's getting a lot
01:30:50
of press coverage today and
01:30:52
encourage us all to pull our heads out
01:30:54
of the Ukraine war and Silicon Valley
01:30:56
and money and all this stuff and realize
01:30:58
that there are things of extraordinary
01:30:59
scale and structure that are that are
01:31:01
happening around us let me ask you two
01:31:02
questions
01:31:03
number one why does it matter
01:31:06
and number two any theories here of what
01:31:09
we might discover you know if this you
01:31:12
know goes 10x or 100x in terms of the
01:31:15
the information we're getting many years
01:31:17
ago it was theorized that there's what's
01:31:19
called a cosmic microwave background
01:31:21
radiation the CMB and what that is it's
01:31:25
the leftover heat from the formation of
01:31:28
the Universe from the universe when the
01:31:29
Big Bang happened yep and these
01:31:31
scientists figured out how to create
01:31:32
really sensitive radio telescopes and um
01:31:35
put them in the the uh in orbit and they
01:31:38
started to observe the background
01:31:40
radiation and what that showed us was
01:31:42
the fingerprint of the universe the
01:31:44
original structure of the universe that
01:31:46
created ultimately all the galaxies
01:31:48
super galaxies and then ultimately all
01:31:50
the stars and then the planets and
01:31:51
everything that that came from that
01:31:53
this could be the beginning of seeing a
01:31:55
gravitational background of the universe
01:31:58
where we could actually start to see
01:32:00
perhaps the fingerprint of the
01:32:02
space-time
01:32:03
of the whole universe of what the actual
01:32:06
structure of space itself and time
01:32:08
itself looks like throughout the
01:32:09
Universe with the perturbations being
01:32:11
driven by some very large massive
01:32:13
supermassive black holes there was a
01:32:15
black hole discovered this week that's
01:32:16
30 billion times the mass of our sun
01:32:20
there are these massive objects out
01:32:22
there that are actively distorting
01:32:24
space-time and we're going to start to
01:32:26
get a fingerprint of that with this sort
01:32:28
of data and over time that just gives us
01:32:30
a better sense of what the overall
01:32:32
structure of the universe looks like not
01:32:34
just from the heat energy that we're
01:32:35
collecting but also the gravitational
01:32:37
waves that we're now able to observe
01:32:39
through the inference of this data
01:32:40
collection let's just make deepens our
01:32:42
understanding of the universe but
01:32:43
there's no structure of the universe
01:32:44
yeah which is amazing and interesting
01:32:47
but and and it validates and proves the
01:32:50
general theory of relativity which if
01:32:51
you think about the application of that
01:32:53
down the road that may lead to things
01:32:55
like close to or as fast as like travel
01:32:58
or things related to time travel or you
01:33:01
know there's a lot of things that people
01:33:02
have theorized for decades about
01:33:05
you know black holes and the warping of
01:33:07
space-time itself I'm not saying that
01:33:09
any of this stuff is did you see the
01:33:11
three body problem trailer
01:33:13
oh yeah it looks amazing it looks
01:33:15
amazing it's amazing what a great what a
01:33:17
great can't believe we have to wait so
01:33:19
long I hate it when they put out
01:33:20
trailers so how long when is it coming
01:33:22
out next year oh wow yeah oh I still
01:33:26
haven't seen your movie the guys your
01:33:28
movie that you wanted me to see
01:33:30
which one better try oh everything
01:33:32
everywhere all at once I got a better
01:33:33
movie for you I got a great pull for you
01:33:35
uh it's on Pay-per-view right now the
01:33:38
movie call about BlackBerry
01:33:40
it tells the story of black oh I heard
01:33:42
it's like an independent film it is
01:33:44
awesome
01:33:45
I just reviewed it on this week in
01:33:47
startups it's called just on his
01:33:49
BlackBerry called Blackberry yeah I
01:33:52
think okay well guys this has been
01:33:53
episodes amazing 135 of the all-in Pod I
01:33:57
really appreciate it
01:33:58
are oh my God my time together just
01:34:01
enough time to get you back to your
01:34:03
Nirvana concert
01:34:04
Leo
01:34:06
what's the background on this one is
01:34:07
that a rival what is that what's that
01:34:09
background what movie that's a black
01:34:12
hole that's a black hole just a black
01:34:14
hole okay
01:34:15
no I think that that's from
01:34:18
might be event might be a matter with
01:34:20
Sax's hair because he looks like did you
01:34:21
get it cut sacks he got a cut did you
01:34:24
cut it no you broke I got a mild
01:34:27
sloughing shower show us the floor let's
01:34:30
go let's see
01:34:36
just keep growing it out man Jacob you
01:34:39
want to take us out you do a better
01:34:40
outro all right everybody for David
01:34:42
sacks the architect coming at you Z100
01:34:46
boarding Zoo
01:34:47
for Tuesdays Tears for Fears coming up
01:34:50
and free bird with the science project
01:34:52
all right traveling back in time with
01:34:55
David Friedberg two for Tuesday Jackson
01:34:58
Browne the lowdown here we go
01:35:04
the greatest moderator
01:35:07
I'm the world's greatest modern I can do
01:35:09
my MPR voice if you like dude all right
01:35:12
closing us out here episode 135 pcrw
01:35:16
92.3 The Sound of Santa Monica this
01:35:19
Sunday at the Venice uh Farmers Market
01:35:22
two for one on the organic milk go check
01:35:25
it out and uh we'll see you all later on
01:35:28
the politics of culture David sacks uh
01:35:32
coming in on the Republican GOP position
01:35:34
which we did consider Friedberg deeply
01:35:37
going into science
01:35:39
on wealth disparity for everybody I am
01:35:44
your host here at KCRW
01:35:46
is the world's most moderate moderator
01:35:49
we'll see you next time KCRW
01:35:52
I can do any of these radio bits
01:35:56
love you guys
01:35:58
we'll let your winners ride
01:36:02
[Music]
01:36:15
besties
01:36:17
[Music]
01:36:32
it's like this like sexual tension that
01:36:35
we just need to release somehow
01:36:40
[Music]
01:36:47
[Music]
01:36:51
I'm going all in

Badges

This episode stands out for the following:

  • 70
    Most shocking
  • 65
    Most intense
  • 60
    Most dramatic
  • 60
    Best overall

Episode Highlights

  • The Wagner Group Rebellion
    A surprising armed insurrection against Russia led by the Wagner Group's Evgeni Prigozhin.
    “This was a wild card and surprising instability.”
    @ 12m 20s
    July 01, 2023
  • Putin's Popularity Amidst Chaos
    Despite the rebellion, Putin's support remains strong among the Russian people.
    “The Russian people have rallied around the flag and support this war.”
    @ 16m 33s
    July 01, 2023
  • Putin's Existential War
    The ongoing conflict in Ukraine is a personal battle for Putin's survival.
    “This war is existential for him personally.”
    @ 21m 40s
    July 01, 2023
  • Supreme Court Ruling on Affirmative Action
    The Supreme Court ruled against affirmative action in college admissions, impacting diversity efforts.
    “The votes were six to three against affirmative action.”
    @ 24m 17s
    July 01, 2023
  • Legacy Admissions Under Scrutiny
    A study reveals that a significant percentage of white students admitted to Harvard are legacy students.
    “43% of white students admitted to Harvard were athletes or legacy students.”
    @ 36m 35s
    July 01, 2023
  • Addressing Institutional Racism
    Highlighting the impact of public school quality on generational poverty and institutional racism.
    “the abysmal quality of our public schools are number one”
    @ 43m 29s
    July 01, 2023
  • Endowment Management Issues
    Discussion on how university endowments are managed and their impact on educational funding.
    “the endowments would be run very differently”
    @ 49m 04s
    July 01, 2023
  • Inflection AI's Major Funding
    Inflection AI, co-founded by Mustafa Suleiman, raises $1.3 billion to build the largest AI cluster.
    “They've just closed a 1.3 billion dollar funding round led by Microsoft.”
    @ 01h 01m 16s
    July 01, 2023
  • The Importance of Diligence
    Investors must verify data accuracy to avoid pitfalls seen in past funding frenzies.
    “You can trust the founders but you have to verify that the data you have is correct.”
    @ 01h 14m 47s
    July 01, 2023
  • The Long Cleanup of Fraud
    Cleaning up fraud in the investment space can take decades, as seen with Bernie Madoff.
    “It takes years to clean up fraud in our space.”
    @ 01h 17m 00s
    July 01, 2023
  • Revolutionary Findings on Space-Time
    Recent data suggests that space-time is vibrating and being distorted by massive gravitational events.
    “Space-time itself is slowly vibrating, being stretched and compressed.”
    @ 01h 28m 36s
    July 01, 2023
  • Gravitational Background of the Universe
    New data may allow us to observe the gravitational background of the universe, revealing its structure.
    “This could be the beginning of seeing a gravitational background of the universe.”
    @ 01h 31m 55s
    July 01, 2023

Episode Quotes

Key Moments

  • Wagner Group Rebellion03:19
  • Surprising Instability12:20
  • Putin's Popularity16:33
  • Prigozhin's Journey18:11
  • Supreme Court Ruling24:17
  • Space-Time Vibrations1:28:36
  • Gravitational Waves1:31:55
  • The Greatest Moderator1:35:04

Words per Minute Over Time

Vibes Breakdown

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