davidshapiro_youtube_transcripts
/
America to hit 82 Unemployment I have the data to back it up_transcript.csv
text,start,duration | |
all right so there's a bit to unpack,0.659,4.081 | |
here but before we get started I want to,2.76,4.26 | |
uh profess this whole thing with take it,4.74,5.04 | |
with a gigantic grain of salt uh my,7.02,5.1 | |
methods are highly dubious and my data,9.78,6.54 | |
quality is uh abysmal let's say but it's,12.12,5.34 | |
an interesting thought experiment so,16.32,2.58 | |
let's dive in,17.46,2.579 | |
um all right so we'll start with the,18.9,3.48 | |
conclusion and then work backwards,20.039,6.48 | |
so right now at least May 2022 so just,22.38,6.719 | |
over a year ago 13 months ago America,26.519,7.081 | |
had 147 million employees ish 148,29.099,8.841 | |
million now based on the current,33.6,8.279 | |
capabilities of AI what this includes,37.94,5.74 | |
all machine automation robotics,41.879,3.981 | |
artificial intelligence,43.68,5.76 | |
my estimate is that we could automate,45.86,8.14 | |
away almost 25 million jobs today,49.44,8.88 | |
now that requires the deployment of new,54.0,6.3 | |
products and services so those products,58.32,4.559 | |
and services do not exist yet but the,60.3,5.34 | |
underpinning technology does which means,62.879,5.28 | |
that the only thing preventing us from,65.64,5.1 | |
from getting that employment is just,68.159,4.921 | |
inertia the time that it takes to,70.74,4.559 | |
develop the products and software,73.08,4.74 | |
the time to get it approved and the time,75.299,4.14 | |
to implement it and then make those,77.82,5.7 | |
changes so as of right now almost 25,79.439,6.421 | |
million jobs are vulnerable to AI with,83.52,5.7 | |
the capabilities of GPT 3.5 turbo and,85.86,6.24 | |
gpt4 and then of course all the other,89.22,5.52 | |
open source uh and and Commercial,92.1,5.339 | |
competitors that are near peer,94.74,7.14 | |
adversaries now that being said if you,97.439,7.561 | |
look at the jobs that uh based on a,101.88,5.599 | |
job's intrinsic requirement for humans,105.0,5.579 | |
uh basically you look at the the kinds,107.479,4.661 | |
of jobs that you're going to pay to have,110.579,4.08 | |
a person doing regardless of what the AI,112.14,4.92 | |
is capable of this is these are the jobs,114.659,3.78 | |
that are going to be vulnerable just by,117.06,3.199 | |
virtue of the fact that you don't really,118.439,5.46 | |
necessarily need a human doing it the,120.259,6.341 | |
numbers become a little bit scarier and,123.899,4.92 | |
uh my estimate this is worst case,126.6,6.42 | |
scenario is that in the near future 77,128.819,6.901 | |
million jobs out of the 140 seven,133.02,5.1 | |
million jobs are vulnerable to be to,135.72,3.9 | |
being automated away,138.12,4.8 | |
basically this calculation is a rough,139.62,6.06 | |
estimate on market demand how much do,142.92,4.92 | |
you actually want a human doing that,145.68,3.72 | |
particular job,147.84,3.3 | |
which means that in the worst case,149.4,5.4 | |
scenario we go from 148 million employed,151.14,7.319 | |
to 70 million employed that is more than,154.8,6.6 | |
50 percent lost so I have been,158.459,5.28 | |
repeatedly saying you know we could face,161.4,5.1 | |
70 unemployment 80 and other people say,163.739,4.86 | |
80 unemployment here's the numbers to,166.5,3.959 | |
back it up all right now,168.599,3.481 | |
since I got your attention let me tell,170.459,3.901 | |
you how I did this and again remember,172.08,4.799 | |
this is incredibly dubious so take it,174.36,4.5 | |
with a huge grain of salt but basically,176.879,5.301 | |
what I did was I took the,178.86,6.239 | |
gpt40613 model,182.18,5.139 | |
and I gave it instructions I said you,185.099,5.341 | |
are a BLS chat bot and you're trying to,187.319,5.581 | |
assess the risk of having jobs automated,190.44,3.42 | |
away,192.9,4.619 | |
uh yada yada yada the tldr is that I,193.86,8.58 | |
asked it to uh judge jobs or occupations,197.519,7.381 | |
based on job activities and I had it,202.44,5.28 | |
break it down into percentages uh based,204.9,4.919 | |
on three categories so the first,207.72,4.92 | |
category is is dexterity so this is high,209.819,5.881 | |
friction uh in in physical space that,212.64,6.0 | |
requires compliance uh manual dexterity,215.7,4.98 | |
uh kinetic intelligence that sort of,218.64,4.679 | |
stuff because yes we do have a few,220.68,5.04 | |
robots that can do this but there are as,223.319,4.321 | |
of right now no general purpose robots,225.72,4.379 | |
that are capable of operating anywhere,227.64,4.679 | |
near human level in terms of dexterity,230.099,4.441 | |
there are no general purpose surgical,232.319,3.901 | |
robots there are no general purpose,234.54,5.52 | |
labor robots uh just doesn't exist,236.22,6.18 | |
now that being said you can robotically,240.06,4.319 | |
automate like a skid steer or a tractor,242.4,4.08 | |
or something that's fine that's not what,244.379,3.78 | |
I'm talking about,246.48,3.6 | |
um I'm talking about what a human can do,248.159,4.381 | |
with your hands and body and then the,250.08,4.379 | |
second category is solo work so this is,252.54,3.539 | |
work that can be done in front of a,254.459,4.68 | |
computer or otherwise electronically by,256.079,5.88 | |
yourself uh you know on your phone on a,259.139,4.981 | |
computer that sort of thing and then the,261.959,4.141 | |
third category of job activities is,264.12,3.78 | |
group stuff so this is communication,266.1,4.44 | |
collaboration face-to-face time with,267.9,3.9 | |
other humans,270.54,3.5 | |
and so those three categories break down,271.8,5.82 | |
and and kind of Judge the that's part of,274.04,6.34 | |
what I use to judge the vulnerability of,277.62,5.94 | |
a job so if it if it has low dexterity,280.38,5.58 | |
it is much at much greater risk of being,283.56,4.859 | |
automated away uh just with today's,285.96,6.12 | |
technology uh if it is mostly solo work,288.419,5.701 | |
it is much higher risk of being,292.08,4.32 | |
automated away and if it's a high group,294.12,4.079 | |
activity then it's a much lower risk,296.4,4.079 | |
because that indicates that the human,298.199,4.381 | |
com the human connection component is a,300.479,4.201 | |
big part of it and then finally the,302.58,4.14 | |
vulnerability score is a standalone,304.68,6.86 | |
score which is used to uh basically uh,306.72,7.74 | |
assess how how much you want a human,311.54,5.379 | |
doing that job what is the intrinsic uh,314.46,4.32 | |
need for that job and if the number is,316.919,3.78 | |
lower if that means it's less vulnerable,318.78,4.62 | |
which means you're more likely to really,320.699,4.861 | |
want to have a human in that job and,323.4,4.44 | |
you're willing to pay for that whereas,325.56,4.44 | |
if it's a high vulnerability score then,327.84,3.78 | |
that means that there's no intrinsic,330.0,4.5 | |
economic or personal or whatever there's,331.62,5.28 | |
no intrinsic demand to have a human in,334.5,4.1 | |
that job if you could automate it away,336.9,5.28 | |
then you might as well and so this is,338.6,6.099 | |
like machine shop workers right you,342.18,3.84 | |
don't need a whole heck of a lot of,344.699,3.78 | |
empathy or communication skills and I,346.02,3.72 | |
can hear all the machinists saying yeah,348.479,2.421 | |
like hell,349.74,4.26 | |
because machine is a machinists actually,350.9,4.72 | |
do have to do a tremendous amount of,354.0,4.74 | |
communication that being said the actual,355.62,5.46 | |
Hands-On machine stuff that that part,358.74,4.08 | |
could be automated away,361.08,3.839 | |
if of course the machines become more,362.82,3.9 | |
dexterous right because dexterity is a,364.919,3.06 | |
huge component of that so that's why I,366.72,2.88 | |
broke it down into these four categories,367.979,5.521 | |
of vulnerability and I had chat GPT just,369.6,6.06 | |
kind of do these rough estimates,373.5,5.46 | |
and it did a pretty good job using gpt4,375.66,7.02 | |
so I ran I downloaded the data from BLS,378.96,7.739 | |
and I excluded the detail in Broad ones,382.68,5.82 | |
because they're they're they're very,386.699,4.141 | |
very highly specific and I noticed that,388.5,4.8 | |
it was like okay the job duties really,390.84,4.919 | |
didn't change so I only focused on the,393.3,4.56 | |
minor and major categories which ended,395.759,3.66 | |
up being,397.86,6.3 | |
um let's see that was 116 categories so,399.419,8.4 | |
that's still 116 categories uh that it,404.16,5.7 | |
was used to estimate,407.819,4.021 | |
um in terms of vulnerability and I've,409.86,3.779 | |
got it all color coded so I'll tell you,411.84,5.52 | |
how to interpret the data in a second,413.639,5.34 | |
um here's the here's the thing so the,417.36,4.2 | |
first thing uh the first sorry good,418.979,3.901 | |
grief I'm going too fast here's the,421.56,4.259 | |
repository the first step of this is to,422.88,5.819 | |
break it down uh it just it's very very,425.819,4.861 | |
simple you open the data,428.699,5.641 | |
the CSV data pipe it in you get the,430.68,6.84 | |
result it pipes it back out in Json and,434.34,5.1 | |
I can show you an example of the debug,437.52,4.88 | |
here so I just it captures everything,439.44,5.46 | |
occupation code description and,442.4,4.72 | |
employment so that's what it gives it so,444.9,3.66 | |
that it understands and of course chat,447.12,3.18 | |
GPT already knows what all the,448.56,3.72 | |
occupation codes actually mean because,450.3,4.2 | |
it's baked into the training data and so,452.28,4.5 | |
if you go and talk to like chat gbt and,454.5,4.58 | |
say like hey what is BLS occupation code,456.78,5.34 | |
17-1000 mean give me some examples and,459.08,4.54 | |
it'll it can give you a good explanation,462.12,6.66 | |
now one thing that I had it do was to in,463.62,9.18 | |
the output it actually tells me why it,468.78,5.759 | |
made the judgments that it did so this,472.8,3.78 | |
is where explainability comes in,474.539,5.28 | |
so uh here's an example of the final,476.58,6.08 | |
output for uh code,479.819,5.1 | |
41-3000 sales representatives and,482.66,5.379 | |
services total current employment is 2.1,484.919,6.601 | |
million uh dexterity rather low you know,488.039,5.701 | |
you got to call some people,491.52,4.079 | |
um you know a significant portion of,493.74,3.359 | |
their work can be done solo on a,495.599,3.421 | |
computer such as managing customer,497.099,3.841 | |
databases and orders which make it,499.02,4.019 | |
susceptible to automation however a,500.94,3.96 | |
large part of their job about 60 percent,503.039,3.301 | |
involves group collaboration and,504.9,2.699 | |
communication such as face-to-face,506.34,3.479 | |
meetings negotiations which is difficult,507.599,4.38 | |
to automate the intrinsic technological,509.819,4.441 | |
vulnerability is estimated at 40 so it's,511.979,5.221 | |
a relatively low vulnerability uh job,514.26,4.92 | |
because yes there are some things that,517.2,5.339 | |
you can automate away but in general you,519.18,5.099 | |
want to be talking to a human sales rep,522.539,4.081 | |
it to close the deal,524.279,5.161 | |
so in this case uh the the numbers kind,526.62,5.159 | |
of all come together to say okay uh,529.44,5.22 | |
let's see we uh this estimated that we,531.779,4.801 | |
might lose about twenty six thousand,534.66,4.14 | |
jobs,536.58,6.06 | |
um or no sorry uh 255 000 jobs uh,538.8,6.9 | |
leaving 1.86 million instead of the 2.1,542.64,5.16 | |
million because again if you can,545.7,4.68 | |
automate if you can automate away a,547.8,5.88 | |
third or you know a quarter or a half of,550.38,5.04 | |
a job that reduces the demand for people,553.68,4.38 | |
doing that and if you have tools that,555.42,4.32 | |
can accelerate it and make it easier,558.06,4.5 | |
then you uh then of course you have less,559.74,4.86 | |
demand for someone in that role now that,562.56,3.36 | |
being said this vulnerability score,564.6,3.419 | |
means that in general you still want to,565.92,4.32 | |
have a human there even if you have less,568.019,4.44 | |
demand for humans overall aggregate,570.24,3.539 | |
demand so think of it in terms of,572.459,2.82 | |
aggregates,573.779,6.721 | |
okay so uh that is how I achieved that,575.279,7.921 | |
and um let's see I kind of lost my train,580.5,4.14 | |
of thought okay I guess we can go over,583.2,3.0 | |
the code it's all pretty straightforward,584.64,3.54 | |
I've got it documented,586.2,4.319 | |
um it it dumps it all out into the yaml,588.18,4.44 | |
files here so you can look at all,590.519,4.401 | |
however many there are,592.62,4.68 | |
116 so you can look at the reasoning,594.92,4.24 | |
that it used for each one and you can,597.3,3.42 | |
you can monkey around with this if you,599.16,3.84 | |
want uh you can rerun it all the code is,600.72,5.34 | |
there to regenerate this data but then I,603.0,7.8 | |
got it all into this and so this is uh,606.06,6.0 | |
the total data and I've got it color,610.8,4.86 | |
coded so I have total number of jobs,612.06,6.18 | |
lost and this is color coded so that the,615.66,4.739 | |
the higher the number the darker or the,618.24,4.74 | |
more red it is and of course it's not,620.399,4.201 | |
proportionate so I added a percentage,622.98,5.039 | |
lost and so this is this column here the,624.6,5.22 | |
jobs lost in percentage loss this is,628.019,4.921 | |
most likely based on some really rough,629.82,7.26 | |
numbers uh based on what AI what I know,632.94,6.0 | |
AI is capable of today and so remember,637.08,4.5 | |
here's my credibility I was an I.T,638.94,4.74 | |
automation engineer I've deployed,641.58,4.499 | |
servers and software and cloud and,643.68,5.399 | |
everything to automate uh and and,646.079,5.581 | |
support businesses and and I've,649.079,3.961 | |
integrated all these systems I know what,651.66,3.419 | |
it takes to run these systems and to do,653.04,4.739 | |
the job of like a DBA and business,655.079,5.041 | |
analyst and you know Financial you know,657.779,4.74 | |
comptroller I I talked to everyone when,660.12,4.92 | |
I was in a corporate job so,662.519,4.801 | |
that being said remember like I'm,665.04,3.78 | |
basically throwing wet spaghetti at the,667.32,5.459 | |
wall so this is a educated guess uh as,668.82,6.18 | |
to percentage of jobs that could be,672.779,4.261 | |
automated away obviously I'm less,675.0,4.2 | |
familiar with uh blue collar jobs with,677.04,4.14 | |
manual labor jobs I have done them in,679.2,4.5 | |
the past uh I've I've worked nights in,681.18,4.68 | |
in stores and warehouses so I kind of,683.7,4.68 | |
have a feel for that that being said,685.86,4.08 | |
um you know I have poured concrete but,688.38,4.62 | |
not professionally so you know take some,689.94,5.04 | |
of that with a grain of salt now percent,693.0,3.72 | |
loss you see some of the higher ones,694.98,3.299 | |
computer and mathematical operations,696.72,3.84 | |
okay yeah that makes sense,698.279,3.961 | |
um stuff with a low percentage loss,700.56,3.18 | |
occupational therapy and physical,702.24,4.2 | |
therapists assistance and AIDS this is,703.74,6.18 | |
at a very very very low risk of being,706.44,7.38 | |
automated away because it is one it's a,709.92,7.5 | |
highly dexterous job and you also very,713.82,6.24 | |
much want a human I've dated a physical,717.42,5.539 | |
therapist before and it is an intensely,720.06,5.279 | |
emotional job and it has to do with,722.959,4.841 | |
communication verbal and non-verbal,725.339,5.461 | |
communication there's tremendous amount,727.8,4.979 | |
of human connection involved in that so,730.8,4.32 | |
I totally agree with the result here,732.779,5.041 | |
where you know health support and stuff,735.12,4.98 | |
so all these numbers are jobs that are,737.82,4.86 | |
at very very low vulnerability,740.1,5.28 | |
uh for being automated away,742.68,4.26 | |
um and then you see oh wait here's a big,745.38,4.8 | |
chunk here so Communications uh clerks,746.94,6.12 | |
information uh handling material,750.18,5.7 | |
recording secretaries uh other office,753.06,5.88 | |
and admin all at high very high risk of,755.88,4.62 | |
getting automated away because again,758.94,3.3 | |
these are things that you primarily do,760.5,3.079 | |
in front of a computer,762.24,4.5 | |
agricultural workers this is uh you know,763.579,5.021 | |
eight and a half percent because again,766.74,3.96 | |
you know some of it will be automated,768.6,4.919 | |
away and you see most of them are around,770.7,6.0 | |
kind of like the 10 to 12 percent range,773.519,5.281 | |
um you know with a few few categories,776.7,4.56 | |
being much much more vulnerable to,778.8,3.659 | |
automation,781.26,5.28 | |
now that being said there is uh I have a,782.459,5.701 | |
second sheet and in the second sheet,786.54,3.359 | |
what I did was I removed all the major,788.16,3.479 | |
categories,789.899,3.981 | |
um so you see like it's,791.639,5.181 | |
11-10011-2000 so I removed,793.88,5.86 | |
11-000 so that we would have a finer,796.82,6.819 | |
grain view to look at the total data for,799.74,6.839 | |
each of the the the minor categories,803.639,5.161 | |
and so here,806.579,4.141 | |
um it's it's the same same pattern,808.8,3.42 | |
obviously I just removed some of the,810.72,3.059 | |
stuff so that we'd have more accurate in,812.22,3.059 | |
terms of total numbers,813.779,5.101 | |
now what I did was I uh you know I,815.279,5.701 | |
estimated total jobs lost that could be,818.88,4.44 | |
automated away right now so that's right,820.98,5.039 | |
here uh so that's that's how I arrived,823.32,5.28 | |
at that data is okay based on all these,826.019,5.101 | |
vulnerabilities scores and stuff what is,828.6,4.799 | |
the what is the maximum jobs loss that,831.12,4.56 | |
we could anticipate here,833.399,4.5 | |
uh and then of course you just take that,835.68,4.8 | |
away from you know total remaining etc,837.899,3.661 | |
etc,840.48,5.28 | |
simple simple arithmetic now over here I,841.56,6.18 | |
said okay let's ignore what Ai and,845.76,4.44 | |
Robotics are capable of today and let's,847.74,6.0 | |
just look at the uh the aggregate demand,850.2,6.42 | |
for humans in a particular job and so,853.74,4.8 | |
for instance in computer occupations,856.62,4.68 | |
there's not really a strong need to have,858.54,4.62 | |
humans doing that to do most of those,861.3,4.5 | |
jobs uh you know if the computer works,863.16,6.0 | |
nobody cares uh as as an example and as,865.8,5.7 | |
a former I.T specialist I can tell you,869.16,5.88 | |
that my Humanity didn't really matter uh,871.5,5.399 | |
it was as long as as long as the lights,875.04,3.72 | |
were on and the you know the registers,876.899,3.961 | |
were running nobody cares,878.76,5.22 | |
uh drafters engineering techs a little,880.86,4.86 | |
bit less demand,883.98,3.299 | |
um let's see,885.72,4.14 | |
there's some yeah so what are these,887.279,5.161 | |
uh Communications operation operators,889.86,4.919 | |
clerks these are at super high risk,892.44,4.259 | |
agricultural workers so this is this is,894.779,3.3 | |
one of the ones that's kind of a paradox,896.699,4.44 | |
because on the one hand right now it's,898.079,6.661 | |
at a very low risk because it requires a,901.139,6.541 | |
tremendous amount of dexterity but,904.74,4.74 | |
as long as the food gets on the table it,907.68,3.779 | |
doesn't matter who put it there so in,909.48,4.14 | |
terms of intrinsic vulnerability it is a,911.459,4.44 | |
very high intrinsic vulnerability so,913.62,3.18 | |
that's why I've got all these color,915.899,3.0 | |
coded here,916.8,5.099 | |
um let's see uh yep so there that's that,918.899,5.101 | |
and so what I used there was to say like,921.899,3.841 | |
what is the maximum possible attrition,924.0,4.92 | |
we could see based on you know okay if,925.74,5.219 | |
we can get rid of 20 of Executives,928.92,3.3 | |
that's so that's basically what this,930.959,3.781 | |
means is that the aggregate demand for,932.22,5.52 | |
uh Executives for top Executives goes,934.74,5.58 | |
down by 20 because we can automate away,937.74,5.279 | |
a lot of it and you know make the things,940.32,4.92 | |
easier and faster and so on and so forth,943.019,4.081 | |
so that means we could have an attrition,945.24,4.38 | |
of seven hundred thousand Executives,947.1,5.539 | |
leaving us with 2.9 Million Executives,949.62,5.94 | |
uh and you know but then you go down and,952.639,4.241 | |
because this is Imagining the future,955.56,2.7 | |
where it's like okay,956.88,3.24 | |
let's take the Farm Workers the,958.26,5.28 | |
agricultural workers uh for example and,960.12,7.079 | |
so right now we have uh looks like we've,963.54,7.08 | |
got a total employment of 390 000.,967.199,6.121 | |
um but there's only so much demand for,970.62,5.64 | |
that so imagine we put AI in every John,973.32,6.36 | |
Deere tractor every combine every Hopper,976.26,6.18 | |
system and you basically have you know,979.68,5.04 | |
Farm entire Farms with no humans that's,982.44,4.5 | |
what this .85 means so we'd have an,984.72,5.52 | |
attrition rate of 85 percent leaving,986.94,7.019 | |
only 58 000 farmers in America total now,990.24,5.339 | |
of course this does not include seasonal,993.959,4.94 | |
labor so that's uh slightly different,995.579,5.7 | |
construction workers this is another,998.899,4.36 | |
example where,1001.279,3.781 | |
um the it's kind of it's kind of a mixed,1003.259,3.901 | |
bag so the attrition rate here would be,1005.06,4.32 | |
expected to be about 40 percent but then,1007.16,4.14 | |
again like this is a super highly,1009.38,4.259 | |
dexterous thing with with that is,1011.3,5.64 | |
primarily uh collaborative work so this,1013.639,5.041 | |
is going to be a very very very,1016.94,3.24 | |
difficult one to automate away because,1018.68,4.26 | |
it's very high risks if a robot makes a,1020.18,4.56 | |
mistake an I-beam gets dropped on,1022.94,3.899 | |
someone and they get killed right and so,1024.74,3.42 | |
it actually you'll probably have a,1026.839,4.441 | |
threshold where it'll be safer and,1028.16,5.1 | |
cheaper to just take humans off the job,1031.28,5.639 | |
site entirely now that being said we are,1033.26,5.46 | |
already seeing that a little bit with,1036.919,5.101 | |
like the 3D printing home printers where,1038.72,5.16 | |
it's like a robotic Gantry that just,1042.02,3.419 | |
sits over there it's got its pile of,1043.88,3.12 | |
material and it just builds the house,1045.439,3.961 | |
with no humans involved at all and so,1047.0,4.02 | |
that's what we have to look out for is,1049.4,3.72 | |
that in some of these cases there's,1051.02,3.779 | |
going to be this saltatory leap where it,1053.12,3.36 | |
goes from you know four and a half,1054.799,4.141 | |
million employees to zero very quickly,1056.48,4.319 | |
because as these new technologies rolled,1058.94,3.359 | |
out you're going to replace them all,1060.799,3.541 | |
wholesale there is some things are not,1062.299,3.181 | |
going to lend themselves to being,1064.34,3.48 | |
gradualistically replaced truckers are,1065.48,4.02 | |
going to be the same thing once we,1067.82,4.14 | |
figure out how to automate trucks truck,1069.5,4.14 | |
driving it's just not going to make,1071.96,3.9 | |
sense to have truck drivers now that,1073.64,4.26 | |
being said that's a very high threshold,1075.86,3.96 | |
but once to reach that threshold it's a,1077.9,3.54 | |
step change so that's what I mean by,1079.82,3.54 | |
saltatory leaps that's that's a step,1081.44,3.96 | |
change it's a more common term versus,1083.36,3.66 | |
gradualistic where you kind of replace,1085.4,3.2 | |
people slowly,1087.02,3.96 | |
in some cases where you replace people,1088.6,4.3 | |
slowly that could be like I.T staff,1090.98,2.939 | |
right,1092.9,3.659 | |
as a former automation engineer I can,1093.919,4.26 | |
tell you that I have personally reduced,1096.559,4.441 | |
head count in infrastructure departments,1098.179,5.161 | |
by automating away jobs which reduce the,1101.0,4.919 | |
demand but it was over time right it was,1103.34,4.079 | |
like okay well we can do more with less,1105.919,3.301 | |
let me automate a little bit more and,1107.419,3.421 | |
then we can do more with less and so on,1109.22,3.0 | |
and so forth and then eventually it was,1110.84,3.18 | |
basically just me running the whole,1112.22,3.48 | |
department by myself as an automation,1114.02,4.08 | |
engineer not everything lends itself to,1115.7,4.8 | |
that but that being said the amount of,1118.1,4.14 | |
logic that goes into making decisions,1120.5,4.5 | |
even financial decisions or executive,1122.24,4.86 | |
decisions or HR decisions a lot of this,1125.0,4.1 | |
is now within the realm of possibility,1127.1,6.54 | |
of GPT Technologies so when I say that,1129.1,7.0 | |
we could we could get rid of almost 25,1133.64,5.22 | |
million jobs right now,1136.1,5.28 | |
that's a number that I will stand behind,1138.86,4.439 | |
again it's going to take time because,1141.38,4.32 | |
there's inertia but then in terms of,1143.299,5.281 | |
total risk of jobs that might go away,1145.7,6.0 | |
for good looking at 77 million jobs in,1148.58,5.7 | |
America leaving us with only 70 million,1151.7,4.44 | |
jobs and we have a population of what,1154.28,4.5 | |
350 million or 400 million right now so,1156.14,4.32 | |
that's an employment rate that is very,1158.78,3.54 | |
very low that's a very high unemployment,1160.46,5.219 | |
rate if if that comes to pass and again,1162.32,5.88 | |
some of these things are dependent upon,1165.679,4.5 | |
robotic advancements that are actively,1168.2,4.38 | |
being worked on construction robots,1170.179,4.86 | |
surgical robots general purpose domestic,1172.58,5.76 | |
robots so that the aggregate demand for,1175.039,6.0 | |
human labor is going to fall off a,1178.34,5.76 | |
freaking Cliff that being said like okay,1181.039,6.781 | |
you know what happens with when you have,1184.1,6.42 | |
70 million people which is less than a,1187.82,5.16 | |
third of uh the Americans out there,1190.52,4.38 | |
let's see what is it,1192.98,3.72 | |
um I don't remember the population but,1194.9,3.5 | |
let's say we have 380,1196.7,5.64 | |
million Americans right now and,1198.4,7.24 | |
we end up with only 70 million jobs,1202.34,6.86 | |
um oh wait uh,1205.64,3.56 | |
where's the invert there we go so that,1209.6,6.24 | |
is a that is only 18 of our current,1212.0,5.82 | |
employment so that means we'd be having,1215.84,5.64 | |
an unemployment rate of about 82 percent,1217.82,7.739 | |
um yeah so we go if if we end up with an,1221.48,7.199 | |
unemployment rate of 82 percent uh that,1225.559,5.281 | |
is not good uh based on current,1228.679,3.961 | |
paradigms and so when people say oh well,1230.84,3.78 | |
you know Dave you keep advocating for,1232.64,3.24 | |
Universal basic income and that's,1234.62,3.9 | |
socialism well if one out of if only one,1235.88,4.44 | |
out of five people have a job,1238.52,4.68 | |
we got to do something right if there,1240.32,4.5 | |
it's that simple,1243.2,3.24 | |
um now one thing that I wanted to point,1244.82,3.359 | |
out is that people are like well where's,1246.44,3.0 | |
the money going to come from where does,1248.179,3.781 | |
money already come from money is created,1249.44,4.92 | |
through uh through minting money and,1251.96,4.8 | |
giving loans to central banks and who do,1254.36,4.08 | |
the central banks give money to they,1256.76,2.94 | |
lend it out to other Banks and,1258.44,3.359 | |
corporations that's where money comes,1259.7,3.78 | |
down from it doesn't come from the,1261.799,4.141 | |
bottom up money is created at the center,1263.48,4.26 | |
of the economic system and then it,1265.94,4.619 | |
percolates outwards so when I when I,1267.74,5.16 | |
mention in another video recently that,1270.559,4.74 | |
uh B2B transactions are going to be what,1272.9,3.96 | |
drives the economy that's what I'm,1275.299,4.981 | |
referring to uh because you know if a,1276.86,5.34 | |
company lends money to another company,1280.28,4.44 | |
or bank or whatever and then they have,1282.2,4.859 | |
goods and products and services the,1284.72,4.319 | |
aggregate consumer demand is only part,1287.059,4.681 | |
of that uh part of that equation uh,1289.039,4.14 | |
because if if you have a lights out,1291.74,2.58 | |
company that's selling goods and,1293.179,2.701 | |
services to another lights out company,1294.32,3.96 | |
the economy is going to be red hot even,1295.88,5.039 | |
though there's no humans involved so,1298.28,5.3 | |
that's why I mentioned in my in my uh,1300.919,4.801 | |
macroeconomics or sorry post labor,1303.58,4.12 | |
economics video that we're going to need,1305.72,3.24 | |
new kpi,1307.7,2.7 | |
and we're also going to need to,1308.96,4.079 | |
redistribute that because right now the,1310.4,4.139 | |
only way that money gets into the hands,1313.039,4.62 | |
of consumers is through either the the,1314.539,5.461 | |
very few uh entitlement programs that we,1317.659,5.88 | |
do have uh which are relatively weak or,1320.0,5.94 | |
through uh employment through money,1323.539,5.701 | |
coming by force of extraction downwards,1325.94,4.979 | |
uh through the through the grapevine,1329.24,4.5 | |
from the central banks to the regional,1330.919,4.861 | |
Banks to the corporations and then,1333.74,5.04 | |
finally to us but if we if we reverse,1335.78,5.46 | |
that if instead so this is basically,1338.78,5.1 | |
what Universal basic income is to me if,1341.24,6.24 | |
instead of lending money to from uh from,1343.88,5.64 | |
you know the Federal Reserve to the,1347.48,4.26 | |
central banks to the regional Banks what,1349.52,4.92 | |
if we instead uh take about half of that,1351.74,4.86 | |
and just give it instead of lending it,1354.44,4.08 | |
out to Banks we just give it to,1356.6,3.54 | |
Consumers,1358.52,3.36 | |
and you just you just flip the the,1360.14,5.1 | |
system uh on its head and so then the,1361.88,5.58 | |
total amount of economic change is,1365.24,3.72 | |
pretty much identical you're not,1367.46,2.94 | |
printing any more money than you already,1368.96,2.459 | |
were,1370.4,4.2 | |
anyways this is all very uh getting very,1371.419,6.421 | |
abstract point is uh there's a lot of,1374.6,4.86 | |
change coming and here's some numbers to,1377.84,4.64 | |
back it up thanks for watching,1379.46,3.02 | |