Tuesday, February 7, 2017

Youtube daily report Feb 7 2017

Hi, everyone! I'm dancer In-Gyu, Park. Today let's learn about the "If I Do" by GOT7.

Firstly let me explain the intro & 1st verse part A in details.

This intro part is starting with solo dance by member Yu-Gyeom.

Look at the left side and lift up your head.

Look at the front, step forward slowly.

Down, cross behind and pull down hands.

Bring up right hand to the chest and hold up your cloth.

Also bring up left and hold it up as well.

According to the meaning of the lyrics in this part, just release them what you hold.

Move around for 8 counts.

Spread up your hands and jump.

Attach hands on your chest and bend down.

Cross behind with right and up, left hand behind and point to the front with right hand.

Place down right hand to the left.

Stand up and pull right hand to up to make ok gesture with it.

Eyes look at the left at the same time.

Round up right hand and draw a line around your neck.

Move your head from the left to right and from right to left at the same time.

Let's do these again.

Open your right hand and put it on the chest. Cross left, down and steps,

firstly let me explain about the footsteps.

Cross step with left, step right, left, right, kick and stamp.

Let's do these together with hands.

Open your right hand and put it on the chest, put left hand on the chest.

Pull them down and bring up right hand to lips when you kick.

Next lyrics is "말하는데, malhaneunde(Say that)",

so just far away hand from the lips to express the meaning of it and turn to right.

Jump backward and place feet together, put down hands.

Step right to the front to take pose as run. Move in place.

Next lyrics is "눈물, nunmul(Tears)"

so place right hand to eyes and wipe your eyes with it. Eyes go to the left and down.

Hit down right hand. For footsteps, twist out right knee and in, out again.

Wipe your eyes, stamp right, hit down, one, two.

Stand up, move your head from right to left and right with body down.

Down your body for 3 counts then look at the front.

Drag right foot and move your neck right and left to stand up slowly.

This time, let me explain the intro part & 1st verse part A with counts.

For more infomation >> [Kpop Cover Dance Training] GOT7 - If You Do #1 : Intro & 1st Verse Part A - Duration: 7:51.

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[Kpop Cover Dance Training] GOT7 - If You Do #2 : 1st Verse Part B - Duration: 4:22.

Hi, everyone! I'm dancer In-Gyu, Park. Today let's learn about the "If I Do" by GOT7.

Let me explain the 1st verse part B in details.

From the last motion, stand up slowly.

Kick and stamp. Step and step.

Push down your hands from the chest, step and step.

Pull your hands, put palms together and lift them up. Lift up left foot at the same time when lifting up hands.

Pull down hands behind, kick left foot to backward and jump down.

Lift up and jump down.

Touch the floor with left hand and move it to the left.

Stand up and move your position.

Next lyrics is "절벽, jeolbyeog(cliff)"

and all members are looking at the back except Yu-Gyeom.

He is doing his solo dance after falling off gesture.

Fall off, walk to the front. Make full turn to the left.

Put right hand on your chest and bounce it.

Walk around to move the position.

Head up with hands. Hold in fists, place them on top, center and bottom.

Move your position for next 2 counts.

This time, let me explain the 1st verse part B with counts.

For more infomation >> [Kpop Cover Dance Training] GOT7 - If You Do #2 : 1st Verse Part B - Duration: 4:22.

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Floor on Fire - Battle of Styles - Duration: 12:51.

Hi, great we meet today!

But not in New York, Rio or Tokyo.

But in my hometown,

Dresden!

Where dancers from many nations,

compete in the dance battle of their lifes.

classical Ballet vs brazilian passinho,

who meet contemporary dance,

and are mixed up with urban Breakdance

 to blend into a firework!

welcome to

I am not allowed to watch into the camera?

SH**

Dance is simply my life,

that' s how it is!

I believe dance is everything

It enchrichens your life,

but it can also just keep you on your feet.

My name is Dallier.

I am a classical educated ballet dancer.

Originally I am from Tajikistan.

To battle against someone Face to Face,

and to improvise,

is completely new for us.

My specialty are acrobatic power moves,

everything that rotates,

handstand, saltos.

In classical dance you do a pirouette on the toes.

In breakdance on your wrist.

Contemporary dance is what´s inbetween.

I am very happy that it will be honest.

When dancer battle there is nothing artifical.

To capture the dance,

use breaks,

invent new things.

We are used to battle, of course.

But the challenge is to bring out

something else, something hidden,

That´s super cool.

Passinho is a mix from different styles.

Passinho was born out of battle and improvisation.

My name is Pablo.

I started dancing when I was 8 years old.

I like to dance every style.

I just love it!

There are dancers from all possible styles.

Those are being mixed in couples.

But your partner has to dance another style.

In the battle the couples battle against each other.

A jury will decide, who moves to the next round.

I dance with a breakdancer in a team.

Dennis!

He´s also here for the first time.

I got the chance. Right!

Today I will hit the floor.

A classical dancer and a breaker in one team?

A classical dancer and a breaker in one team? It has to be great!

It has to be great!

The special thing is that different styles clash.

Which press their own mustard in the mix,

so that a new kind of mustard is created!

I am so excited for the firework to come.

Awesome!

I am very tensed.

nervous.

The couples are mixed and have 1 hour for preparation.

The back fever rises

everybody does his own thing, warms and push up.

The feeling shortly before,

this is great,

indescribable!

You don´t know who you are dancing with.

And you don´t know which music will be played.

That means even if your preperation is perfect,

The DJ plays Britney Spears and you are out.

Haven´t I told you, we meet today?

Excactly, that is me.

My task?

You wanna see Floor on Fire - Battle of Styles?

I put the heat on the audience.

Introduce them to the dancers.

And the rest?

Happens all by itself!

Ok there is a breakdancer,

who performs a technical trick.

And you know: I can do this and I can´t do the other,

But what could I use and remix to answer.

Just one team goes to the next round.

Jury?

The first battle was amazing.

It´s my first time and

I don´t know what to say.

I imagined what to do beforehand.

But the second I went on the stage

Everything erased, forgotten.

I just hoped to hurt nobody.

The winning team takes two into the final battle.

You don´t need any drugs when you do that.

It gives you a feeling,

as if you could fly.

10

9

8

What an amazing format, Floor on Fire,

Check it out!

It´s like a clash of cultures but in the end,

but in the end we all fit together

like small pieces in a big puzzle.

Something like that can´t be created by one style.

It´s an amazing fusion.

I just want to do it a nother 1000 times.

I just want to do it another 1000 times.

Sometimes you don´t speak the same language.

But then you know:

You understand each other with dance.

This is fascinating.

Different cultures, styles, movements and languages,

fight for the next round.

In the end we do not fight to beat each other.

We fight to break our borders,

to learn something

because in the end,

we are in one boat on the same earth,

and should rather dance with each other,

than alone.

For more infomation >> Floor on Fire - Battle of Styles - Duration: 12:51.

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La démocratie permanente - Comment ça marche - Duration: 2:58.

For more infomation >> La démocratie permanente - Comment ça marche - Duration: 2:58.

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2017 Lexus® LC Commercial

For more infomation >> 2017 Lexus® LC Commercial

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Kat Von D Lock It Podkład/Baza + tańszy identyczny! Zamiennik Hot or Not??? - Duration: 23:35.

For more infomation >> Kat Von D Lock It Podkład/Baza + tańszy identyczny! Zamiennik Hot or Not??? - Duration: 23:35.

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Structuring information with ERCO light - Duration: 3:29.

It was long apparent that the year 2016 would be marked across Germany

with the five hundredth anniversary of the German purity law.

That was reason enough for us in an own exhibition project

to once again focus the public's attention on the fact

that North Germany also

plays a major role in the history of German beer.

Fundamentally, the exhibition is split into eleven thematic issues,

and we're underway across a large time span

from beer brewing in the mediaeval centre of Hamburg

to the craft beer brewing of the present.

We've set up various showcases here that guide visitors into the exhibition.

This means they can work their way forward

to get to the central part of the exhibition – the brewing kettle.

This is a copper brewing kettle from the eighteenth century.

It's been given a central place in the exhibition,

and these lines mark the flow of information guiding to the various blocks of themes.

We've illuminated the graphics with linear light,

and set a focus point at the end to attract the observer into the exhibition.

This is also supported by the horizon that's been flooded with uniform light distribution.

We set single spots to create a rhythm –

as can be seen here on the graphics or with individual exhibits.

We worked with oval light distribution on the walls to place quotes in the foreground.

The level of light is relatively high in the theme cubes.

This means there's an attracting effect.

If observers are interested in the thematic issue,

they can enter this light tank via a small,

dark opening where they can experience the content directly.

The experience rooms are sealed with a translucent gauze on one side

that only opens if somebody is standing at a ninety degree angle to the gauze –

they can then imagine certain things.

In terms of design the exhibition is kept together with the exterior walls

that we comprehend as a "suggestion level",

where we don't communicate exhibition contents but quotes applying to the topic,

which are in turn supported by icons depicting the fundamentals of brewing.

The basic idea of our design was a dark room,

where sequentially illuminated zones are elevated with differing amounts of emphasis.

For us, light is an absolutely necessary and important tool in terms of design.

It's also a very flexible system that we could use here, and was exceedingly helpful.

Something important is simply creating atmosphere.

For me it was important that it shouldn't be an exhibition

with an educational or didactic approach,

but should atmospherically make visitors want to immerse themselves into this topic –

a really "boozy" exhibition I might say.

For more infomation >> Structuring information with ERCO light - Duration: 3:29.

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Still life with beer jug in ERCO light - Duration: 2:07.

Here we've got one of the objects that we always wish for with such a topic:

there really is a painting from a Hamburg artist

from the seventeenth century who painted beer.

If we were to ask a brewer what he thought about it, he'd say

"That really is an excellent beer."

At least visually – unfortunately we can't taste it though.

For this object, a loan from the Hamburg Kunsthalle,

it was important for example that we meet the conservation requirements,

for example with the lighting.

It should be well-lit so the observer can see the picture very well;

and it should also primarily show the true colours of the painting.

Here we have everything we want to see with such an exhibit,

and I think it's also perfectly displayed and illuminated.

We can see very well for example how the glass is drawn here,

how the upper edge of the lips reflected

and how you can see this domed base of the glass.

It's wonderful how the artist managed to depict the transparency of the liquid!

These still lives belong to the Vanitas still life style –

these are paintings intended to express the transience of our own existence.

The bread rolls are broken apart or cut, the beer is half empty,

and these indicate to the viewer: you are finite as well,

your existence will come to an end at some time,

as has happened to these objects in the painting.

That's the interpretation of the piece itself.

For more infomation >> Still life with beer jug in ERCO light - Duration: 2:07.

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La démocratie permanente - Comment ça marche - Duration: 2:58.

For more infomation >> La démocratie permanente - Comment ça marche - Duration: 2:58.

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Mediaeval "water art" in ERCO light - Duration: 2:03.

This model shows the situation at around 1530 on the so-called Resendamm.

That's the dam where the Jungfernstieg is located today.

It was built around 1200 to dam the Alster and to run the mills.

People always think it's a modern invention, but daming the Alster

happened in mediaeval times to operate the mills that were here.

Not only were mills used here for producing malt grist but also the so-called water art.

This water art is especially important

because you can't have good beer without good water,

which was also the case in Hamburg.

Right at the beginning brewers tried to get good water into the city using long pipes.

That soon became too complicated, which was the reason they built a water tower here.

From there the water was distributed to the various breweries by natural pressure.

For the purpose of water pipes they used long, bored-out tree trunks.

This model is central for explaining water supply for beer brewing –

and looks particularly attractive here I think.

Initially you might think there were luminaires directly in the model here,

but in actual fact we've successfully installed lighting

from above without causing glare – all the details can be seen and it looks like

the model has been freshly made just for the purpose.

A small jewel in the cabinet, so to speak.

For more infomation >> Mediaeval "water art" in ERCO light - Duration: 2:03.

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CVLF - Salade de chou kale - Duration: 4:03.

For more infomation >> CVLF - Salade de chou kale - Duration: 4:03.

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Data Science Careers, or, how to land a 6-figure Wall Street job - Duration: 25:19.

Careers and data science.

Hi, I'm Dr. Werner Krebs, Ph.D., CEO of Acculation.

Acculation dot com.

[https://www.acculation.com] Hopefully, you'll subscribe

to our YouTube channel here and checkout one of these other videos on our channel

when you're done with this one, and if you like this video be sure to click

that like button.

So, what not to do when applying for a job.

A couple of approaches don't work.

"Hi, I'm a really bright guy.

Hire me!

I have a new idea!"

With the possible exception of strategy consultants, academics, and think

tanks, companies generally don't hire people just because they're smart.

They hire people because they have an existing business process need.

So, they're making widgets or making software and

they have to too many order for the widgets or

their software.

And so they look at Bob and they say,

"Okay, well, we've got too many orders coming in."

"So, what we want to do is: We want to take Bob over there and clone him."

Except, of course, human cloning is illegal.

So they take a step back and decide:

"Well, we can't clone Bob even though he's really good at making widgets."

"So, what else can we do?"

Well, they look at the job market and they say,

"Can we find someone who is just like Bob?"

"So, that we can meet our customer demand?" and

so along those lines: "Hi, I'm a really bright"

or, "Hi, I graduated summa cum laude in English!

You should hire me because I have this very impressive summa cum laude English degree!"

That doesn't work, right?

So, for most people that very impressive summa cum laude

degree in English means that the only thing they're really comfortable with is

writing.

And writing, unfortunately, by itself, does not pay very well because

there are a lot of other writers out there.

So, if you want to be hired just for being bright or for having a very

impressive college degree consider consider consulting.

And they'll usually hire you because you have an MBA or other application of

strategy consultant.

If you want to be hired because you have a new idea that

you think will revolutionize the market consider doing a start up.

Go through an accelerator or incubator.

Then, you'll be employed by investors backing your new idea.

And, I mentioned a couple of the other things that do employ people just because

they're very bright: academics, universities, and think-tanks

So, who am I?

I'm Werner G. Krebs I began programming at a very early age.

I was a University of Chicago undergraduate math

major worked for a Nobel Laureate in economics.

Did a Yale PhD in the this new field of bioinformatics, technically

Molecular Biophysics & Biochemistry, So

bioinformatics is computer science plus biology.

And this led to a career as a computer science or a data scientist worked for

some very famous people, did some time in academia, at a software company and then

on to finance as a senior analyst at what is now Bank of America

managing their billion hedging portfolio.

And, then, went on to the hedge fund Madison Tyler, now

known as Virtu Financial, of the top high frequency trading

firms in the world according to Wikipedia.

I led a team at a firm did marketing consulting for 90%

of Fortune 100 CMOs and learned marketing modeling from some of the

best people in the world in academic marketing.

Math and programming made all of this possible.

I managed a team of engineers and have now started my

own company Acculation dot com which does data science, artificial intelligence consulting

and software development among other things.

So, am a graduate of the Founders' Institute startup

accelerator.

This not easy: 60% of the people in my program didn't make it to

through.

So, it's been compared to survivor.

I have interviewed hundreds of people at different companies and hedge funds

and marketing and consulting group where I was hiring

manager.

I have been told in the past that over a hundred people were interviewed

for a position that i was eventually selected

for.

I'm going to point out again that the important thing to understand is that

businesses have business process.

They hire people to fill those business process needs.

They prefer people that can start right away, but what

they generally don't do is hire people simply because they're smart or have

a specific college degree without reference to those pre-existing

business needs.

I'll say a little bit more about now, and a little bit more at

the end.

So, I'm going to throw some books out at you.

"Thinking, Fast and Slow" is a 2011 book by Daniel Kahenman

Its central thesis is that there's an dichotomy between these two modes

of thinking: what he called System I are

the fast, instinctual, and emotional system.

This is the process that makes decisions when you're in a hurry, when you're being

chased by a lion.

It's about making decisions from the seat of your pants because

you're being chased by a lion.

And the is System II which is the more

slow, more deliberate, more logical system.

People do not behave as predicted by classical economics.

Those of you who were econ majors, you know were

brought up in this rational decision-making framework.

The truth is organizations tend to behave rationally

and there's a lot of evolutionary pressure on organizations: the tribe, the

family, corporations, governments to behave rationally.

Those organizations that do not behave rationally tend not to survive.

Evolution does not work on individuals.

At least for animals, It does not work on individuals.

It works on the species or it works on groups.

And, as a result, the evolutionary pressure to be

rational was not applied at the individual level.

There is actually a lot of evolutionary pressure for individuals

not to be rational.

That evolutionary pressure was applied at the group level:

on families, on tribes, and there's a lot of evidence that

individuals do not behave rationally.

Individuals are loss adverse.

They are more likely to act to avert a loss than

to achieve a gain.

Thinking slow: so, the scientific method is a form of thinking

deliberately to find the truth.

Is an outcome repeatable and reproducible, is it

option falsifiable?

It is the opposite of superstition.

The opposite of science is superstition.

Astrology which is one of the few religions that can be disproved.

These things that appeal to emotion or system one: that fast

way thinking.

Examples in political science are global warming and it's politically

motivated deniers.

Thinking slow by thinking fast at the same time: so, if you have the

resources --- you have employees and software like an Excel spreadsheet, you

have trainin, you have MBAs, you have the inclination: business processes and

incentive, survival, profit.

They try to think "slow" whenever possible if you're a company.

So you going to try to use computer models.

For example, Excel or spreadsheets for thinking

slow.

Business frequently try to formalize the most important and most

competitive processes to try to ensure quality.

Some examples are forms, procedures, assembly lines, quality

assurance inspection tests.

Ideally, businesses would like their most important, frequent

analyses to think both slow and fast: to think slow in a sense of thinking that is

deliberative and rational.

And, also fast, not because they're using System I, but

or thinking intuitively, but fast because the thing is being done

I computer model that can think very quickly.

Examples are high-frequency trading, marketing analytics.

So, another book for you!

"The Signal and the Noise" which is the 2012 bestseller by Nate

Silver.

The full title is: "The signal and the Noise:Why most prediction fail but

some don't."

And, it talks about building mathematical models.

The synopsis is to build a really good mathematical model you

really need to understand the field.

For example, in the baseball statistics in the

example he cites, knowing which parameters are important

and are reliable to select for in

that model, rather than relying purely on [automated] statistical tests.

And using a Bayesian approach to model building.

Another example is Moneyball both the book and the movie.

And, of course, Lewis the author also did some books on trading and

and high frequency trading, where mention some people I've worked with.

Big data: so another book: "Big Data: the revolution that will transform

how we live, work, and think" came out in 2013.

It talks about Big Data being a consequence of Kryder's Law, which is Moore's

Law for disk space.

We can now store, slice, and analyze complete data sets.

For example, all of Amazon purchases.

We have enough data to build the statistical models

on some obscure phenomenon, something that was not

previously possible.

It's only become possible in the last two years.

Previously, we needed to subsample data to build statistical models.

Now, we can program a computer to go through all of

that data, build it's own statistical models, and

try to discover correlation and causation.

For example, Google discovering certain queries where highly correlated to Swine

Flu Virus.

Modeling and political Science.

So example, of a business is Robert Pape's 2005 book: "Dying to Win:

the strategic logic of suicide terrorism."

Robert Pape from the University of Chicago.

Most suicidal terrorists,

according to his research, are altruistic, well-educated, nationalist, motivated, and

they're fully witting, and dedicated to their fatal mission as a service to their

community.

So, this is an example of where you can you use big data to discover

things and use that to try to learn things about what motivates people and

how you can potentially discourage this.

Another example in political science is something I was a little bit involved

with, which is Prof. Heckman's work on the Job

Training Partnership Act (JTPA).

And, this was used to tweak legislated eligibility requirements to try

to maximize access to the intended audience, which in this case with the the truly

unemployed needing skills, and try to minimize free-riders.

Some of the potential free riders were seasonally

unemployed teachers who might appear eligible because of that summer break, and

then people who are potentially quitting their jobs try to meet

the requirements for getting this potentially very valuable training.

By using data they were able to tweak the

legislation so that seasonally unemployed teachers would not be eligible by

requiring the person the unemployed for more than three months and putting in certain

other things to try to ensure that the people who are applying really needed the

training.

So people ask me, "What should you know to get a career in data?" at a

minimum possible you should try to learn SQL and things that are SQL-like

as well as NoSQL databases these days.

Now, people ask, "What if you only want to learn

one programming language?

What should it be?"

The lowest common denominator for analysts

these days is VBA.

This is the programming language that is built into

Excel.

So, if you own a copy of Excel spreadsheet, there's a programming

language built in, and it's called Visual Basic

for Applications [VBA].

Every analyst at a Wall Street firm at a minimum is expected to

know that programming language.

If there is just one programming language that

you put on your resume, this should be it.

Moving up from VBA, you've got Java, Python, Ruby, C++, others like C#, and

visual basic dot net [VB.net].

Visual basic dot net is something very different from VBA, although

they're both Microsoft products.

Perl, statistical programming, so R and

everything else: SAS, Stata, SPSS, Eviews, Gretl.

Mathematical programming: Numerical Python [numpy], SAGE, Matlab, Octave

Mathematica, Maple.

In the last two years we've also seen Scala become important

in part because it's the preferred way of interacting with the Apache Spark

toolkit for doing data science in the cloud.

Engineering software and hardware, hacking for speed reliability, and then

software tricks: algorithms, compilers, network latency optimization, cloud, non-

cloud, and then hardware tricks: even implementing algorithms in hardware

like Field Programmable Arrays [FPA].

Modeling methods: you've got regression and modifications, classical

statistical techniques like linear regression are still very important.

These can be partially automated through

things like statistical stepwise significant testing, although this can

violate statistical assumptions.

You've got segmented regressions, manual partition decision

trees, low-data regressions, waited average multi-models, nonlinear regression transforms,

log-log, automated shape discovery with software that tries to figure out what type

of transform to apply (for example a log-log transform)

to make linear regression effective.

What is the advantage of linear regression?

Well, it's computationally very easy and this becomes very important when dealing with

large amounts of data.

Then there's the new stuff right?

Machine learning: this tends to require a lot more data, computation

is slower, and it obscures the parameter meaning.

You've got Hidden Markov Models [HMMs], fuzzy logic, neural

networks, genetic algorithm, Bayesian networks, and then manually constructed

expert systems, which are low data, high-expertise, and tend to

be Bayesian or manual decision trees.

Clustering techniques, decision-tree related related, you've also got self-organizing

maps and parameter selection through Principal Component Analysis [PCA].

techniques, and of course, in the last few years, we also have Deep Learning.

There's the Pareto Rule of Efficiency. were twenty percent of your efforts gets you

80% of your results.

You can use all of these relatively simple and transparent

techniques that I've just described, like classical statistical regression, fuzzy logic,

symbolic artificial intelligence, to come up with a first model, often a very

fast model that will get you 80 percent of your accuracy for twenty percent of

your effort and then you can use Deep Learning to use a neural network

to correct those errors in that models.

So that twenty percent of time when that simple first step is wrong can be

corrected by the neural network.

This is a very powerful technique based on the way to

human brain works.

It's been proven very effective.

Getting a job on Wall Street . So, I already mentioned SQL and Excel VBA

typically going to be minimum requirement for analysts.

If you put down only two skills on your resume put down

SQL and Excel VBA, and, if [you're limited to] only one programming

skill, I would say Excel VBA.

Know those well, because you will be asked questions

about them.

Some mathematics and finance background, a math/econ/stat degree

CFA candidate, MBA, quantitative PhD are all very helpful as are hard programming

skills like Java, C/C++, Python, Scala, in general, are all useful.

Don't lie on your resume,

don't put programming languages that you've never used, don't claim you can

program when you can't.

You can programming from books, online videos, websites.

What's employable: MBAs JDs, MDs,, and PhDs in most quantitative fields

tend to get taken a lot more seriously than people who just have Bachelors [degrees].

People who just have Bachelors are taken a lot

more seriously than people who just have high school.

And people would have actually graduated from high school are

taken a lot more seriously than people that have gotten the GED degree.

like JD/MBAs, PhD/JD, PhD/MBAs, and PhD/MD MD/MBA tend to get taken a lot more seriously.

MD and JDs are licensed professions: the degree

you get tends to be a lot less important than having the license.

The degree is required for the license.

This is in contrast to MBA.

Salaries for MBAs tend to be highly variable.

Stanford MBA graduates typically make as much 120K a year

on average at graduation, whereas

someone from a lower tier MBA school might only make on average 40,000.

(This is as of a few years ago.)

Most of the top-earning MBAs a few years back went to Wall Street.

Today it might be more consulting.

The low paying MBAs tend to be found at non-profits.

Historically, military veterans with an honorable

discharge and demonstrated technical skills were taken more seriously than

high school graduates and in some cases more seriously than bottom tier college

graduates Military officers often became CEOs especially after business

school.

This may be changing.

Starbucks pointed out that military veterans have twice

the unemployment rate of the general population.

This might be because of the psychological trauma of warfare and

something present-day that wasn't seen in military veterans two decades ago.

Quantitative and programming skills are always in demand.

They get taken very seriously.

Working at famous companies, institutions, and [with famous] people, especially

in positions that are highly selective and

hard to attain.

You can follow Warren Buffett's advice of ignoring the salary

and working where you will learn the most.

So working for some famous person in some field, even if that

doesn't pay as much as well as working for someone who's not famous

was not as educational of an experience, but pays

well.

What if you can't program [and] you can't do

quantitative?

Well, an MBA is the good as it doesn't require as much quantitative [skill].

Sales and marketing skills can also be very

employable.

These are people skills similar to being an actor.

Some people call them "expressives."

These can be very high risk.

Although some salespeople make six-figure salaries, unlike programmers there

are a lot of people making very low salaries of 20,000 or less, and salespeople

are in one of the few occupations that are potentially exempt from minimum wage.

So you have some salespeople that are making that are purely on commission

making a salary of 0 and this is not uncommon in commercial real estate, for

example, where a person might be very happy to do one big deal a year, and,

until/when they make that deal they'll get a 40 thousand dollar

commission, but don't spend most of the year trying to make that deal on a salary of 0.

It's very high stress as you imagine.

Related to sales and often requiring an MBA is business development.

So, this is a sales person who tries to negotiate

deals between startups and potential partners.

This is a good person for an engineer to partner with if you want to do a startup.

So, yeah, what not to do when applying for

a job.

"Hi there, I'm a really bright guy!

Hire me because I'm really smart!"

Or, "Hire me I have a new idea!

Hire me, I graduated summa cum laude in English!"

Why?

We've already gone over why these approaches

aren't that good, right?

Companies look for people that are similar people to people they've already

hired.

They look for Bob the Widget Maker and they want someone similar to Bob the Widget

Maker.

So let me throw another book out there for you it's called "The Black Swan."

This is the nonfiction bestseller by Taleb, not

the fictional movie with Natalie Portman.

So, in "The Black Swan," Taleb talks about why professions have different risk levels.

The extreme value distribution is

counter-intuitive to the human psyche.

Many "media" professions like acting, writing generally don't make as much, because

they have an extreme value distribution in their salary, which is counter-intuitive.

A tiny fraction of the very best dominate the

media and they tend to make huge salaries while the rest starve.

So if you think you're a good actor you might make

a good salesperson.

They have similar personalities and actors hock a lot of

merchandise.

Salespeople, however, tend to have a less variability in

their salaries than actors Non-"media" professionals like lawyers and doctors

tend to have even more even salaries.

Unlike an actor

who typically makes very little, doctors, lawyers, and programmers tend to do very

well.

While the best doctors don't make that much more than the average doctor, and

the best doctors make a lot less than the very best actors, even though the

average actor makes a lot less than the average doctor.

So, for every one JK Rowling billionaire author, there are

hundreds or thousands -- maybe millions of starving writers out there.

If you want to make it as an actor or a writer

it helps to get into the best acting and writing programs, because these give you

credibility and name recognition of the top of the field and visibility to people

that can actually hire you into the most lucrative positions.

Startup accelerators: if you're adventurous and want to get funding for

your company you can apply to accelerator.

The terms accelerator and incubators technically mean different things

but in practice are used interchangeably.

The most famous are Y Combinator TechStars, and Founders Institute.

But there are many others out there.

Several out here locally [in Los Angeles] are Amplify

LaunchPad and Science.

It helps to have a high IQ or have attended an Ivy League

University.

It's almost a requirement at some of these startup incubators.

Knowing programming or marketing sales, or -management is also very helpful.

This [doing a startup] is very high-risk.

Ninety percent of startups fail

according to some statistics and in contrast Y-combinator historically

(this may be changing) but historically Y-combinator would accept less than 1%

of its applicants, while 90% of its program typically went on to achieve

multi-million dollar valuations.

So, getting into Y-combinator usually changes the

risk profile: you go from something where the odds are you're

going, to fail something where the odds are that you're very likely to succeed.

That's why these are potentially useful.

internet of things.

A few years back a $35 computer came out.

The Raspberry Pi It ran Linux, it's connected to hdmi TV, it

had ethernet, a USB for keyboard, and you can

even have WiFi.

It used an SD card for its hard drive and an old smartphone charger

for its power supply.What is the take home lesson?

Well, if computers cost only thirty-five dollars, they are going to be

in everything.

Everything, everywhere.

My bio again: programming at an early age,

Yale PhD in bioinformatics-related or a data science-related field

and sometime, in academia, a software company, and then a lot of finance.

Was a senior analyst at a major bank,

worked at a major hedge fund, did work for a leading marketing firm that

later went on to become NYSE- listed and have now started my own company

which does data science and artificial intelligence consulting among

other things.

Thank you so much for your time.

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