Lex Fridman Podcast - #118 – Grant Sanderson: Math, Manim, Neural Networks & Teaching with 3Blue1Brown
Episode Date: August 24, 2020Grant Sanderson is a math educator and creator of 3Blue1Brown. Support this podcast by supporting our sponsors: - Dollar Shave Club: https://dollarshaveclub.com/lex - DoorDash: download app & use cod...e LEX - Cash App: download app & use code "LexPodcast" Episode links: 3Blue1Brown: http://youtube.com/3blue1brown Grant's Twitter: https://twitter.com/3blue1brown If you would like to get more information about this podcast go to https://lexfridman.com/podcast or connect with @lexfridman on Twitter, LinkedIn, Facebook, Medium, or YouTube where you can watch the video versions of these conversations. If you enjoy the podcast, please rate it 5 stars on Apple Podcasts, follow on Spotify, or support it on Patreon. Here's the outline of the episode. On some podcast players you should be able to click the timestamp to jump to that time. OUTLINE: 00:00 - Introduction 05:13 - Richard Feynman 09:41 - Learning deeply vs broadly 13:56 - Telling a story with visualizations 18:43 - Topology 23:52 - Intuition about exponential growth 32:28 - Elon Musk's exponential view of the world 40:09 - SpaceX and space exploration 45:28 - Origins of the Internet 49:50 - Does teaching on YouTube get lonely? 54:31 - Daily routine 1:00:20 - Social media 1:10:38 - Online education in a time of COVID 1:27:03 - Joe Rogan moving to Spotify 1:32:09 - Neural networks 1:38:30 - GPT-3 1:46:52 - Manim 1:51:01 - Python 1:56:21 - Theory of everything 2:03:53 - Meaning of life
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The following is a conversation with Grant Sanderson, his second time on the podcast.
He's known to millions of people as the mind behind 3 Blue 1 Brown, a YouTube channel where
he educates and inspires the world with the beauty and power of mathematics.
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Let me say as a side note, I think that this pandemic challenged millions of educators
to rethink how they teach, to rethink the nature of education.
As people know, Grant is a master elucidator of mathematical concepts that may otherwise
seem difficult or out of
reach for students and curious minds.
But he's also an inspiration to teachers, researchers, and people who just enjoy sharing
knowledge, like me, for what is worth.
It's one thing to give a semester's worth of multi-hour lectures.
It's another to extract from those lectures the most important, interesting, beautiful,
and difficult concepts
and present them in a way that makes everything fall into place.
That is the challenge that is worth taking on.
My dream is to see more and more of my colleagues at MIT and world experts across the world,
someone there inner, three blue one brown, and create the canonical explainer videos
on a topic that they know more than almost anyone else in the world.
I miss the political division, the economic pain, the psychological medical toll of the
virus, masterfully crafted educational content, feels like one of the beacons of hope that
we can hold on to.
If you enjoy this thing, subscribe on YouTube, review it with 5,000 Apple podcasts, follow
on Spotify, support on Patreon, or connect with me on Twitter, at Lex Friedman, of course, after you go immediately,
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And now here's my conversation with Grant Sanderson. You've spoken about Richard Feynman as someone you admire.
I think last time we spoke, we ran out of time.
So I wanted to talk to you about him.
Who is Richard Feynman to you and your eyes?
What impact did he have on you? I mean, I think a ton of people Richard Feynman to you and your eyes, what impact did he have on you?
I mean, I think a ton of people like Feynman,
he's probably, it's a little bit cliché
to say that you like Feynman, right?
That's almost like when you don't know what to say
about sports and you just point to the Super Bowl
or something, or something you enjoy watching.
But I do actually think there's a layer to Feynman
that sits behind the iconography.
One thing that just really struck me was this letter that he wrote
to his wife two years after she died. So during the Manhattan Project, she had polio, tragically she
died. They were just young, madly in love. And the icon of Feynman is this, almost as like mildly
sexist womanizing filanderer, at least on the personal side.
But you read this letter, and I can try to pull it up for you if I want.
And it's just this absolutely heartfelt letter
to his wife saying how much he loves her,
even though she's dead,
and kind of what she means to him,
how no woman can ever measure up to her.
And it shows you that the fineman that we've all seen
in like, surely you're joking,
is different from the finenman in reality.
And I think the same kind of goes in his science
where he kind of sometimes has this output
of being this aw-shocks character.
Like everyone else is coming in this
with these fancy, flutin' formulas,
but I'm just gonna try to whittle it down to its essentials,
which is so appealing,
because we love to see that kind of thing.
But when you get into it,
like what he was doing was actually quite deep,
very much mathematical.
That should go without saying,
but I remember reading a book about Feynman and a cafe once,
and this woman looked at me and was like,
saw that it was about Feynman, she was like,
oh, I love him, I read Julia joking.
And she started explaining to me
how he was never really a math person.
And I don't understand how that can possibly be a public perception
about any physicist, but for whatever reason that worked into his or that he sort of
shoved off math and in place of true science. The reality of it is he was deeply in love with math
and was much more going in that direction and had a clicking point into seeing that physics was a
way to realize that and all the creativity that he could output in that direction was instead
poured towards things like fundamental,
not even fundamental theories,
just emergent phenomenon and everything like that.
So to answer your actual question,
like what I like about his way of going at things,
is this constant desire to reinvent it for himself,
like when he would consume papers the way he'd describe it,
he would start to see what problem he was trying to solve,
and then just try to solve it himself to get a sense of personal ownership.
And then from there, see what others had done.
Is that how you see problems yourself?
Like that's actually an interesting point when you first are inspired by a certain idea
that you maybe want to teach or visualize or just explore on your own.
I'm sure you're captured by some possibility of magic of it. Do you read the work of others like do you go through the proofs of you?
Do you try to rediscover everything yourself?
So I think the things that I've learned best and have the deepest ownership of
are the ones that have some element of rediscovery.
The problem is that really slows you down.
And this is for my part, it's actually a big fault.
Like this is part of why I'm not an active researcher.
I'm not like at the depth of the field.
A lot of other people are the stuff that I do learn.
I try to learn it really well.
But other times you do need to get through
at a certain pace.
You do need to get to a point of a problem
you're trying to solve.
So obviously you need to be well equipped
to read things without that reinvention component
and see how others have done it.
But I think if you choose a few core building blocks
along the way and you say,
I'm really gonna try to approach this
before I see how this person went at it.
I'm really gonna try to approach it for myself.
No matter what you gain all sorts of inarticulatable
intuitions about that topic,
which aren't gonna be there
if you simply go through the proof.
For example, you're gonna be trying to come up
with counter examples, you're gonna try to come up with intuitive examples, all sorts of things where you're
populating your brain with data, and the ones that you come up with are likely to be different
than the one that the text comes up with, and that lends at a different angle. So that aspect also
slowed Feynman down in a lot of respects. I think there was a period when the rest of physics
was running away from him, but in so far it got him to where he was. I kind of resonate with that. I just, I would,
I would be nowhere near it because I've not like him at all, but it's like a state to aspire to.
You know, just to think of a small point you made, that you're not a quote unquote active researcher.
small point you made, that you're not a quote unquote active researcher.
Do you hear swimming often in reasonably good depth about a lot of topics?
Do you sometimes want to like dive deep at the certain moment and say like,
because you probably built up a hell of an amazing intuition about what isn't isn't true within these worlds.
Do you ever want to just dive in and see if you can discover something new? Yeah, I think one of my biggest regrets from undergrad is not having built better relationships with the professors I had there.
And I think a big part of success in research is that element of like mentorship and like people giving you the kind of scaffolded problems
to carry along.
For my own goals right now, I feel like I'm pretty good
at exposing math to others and want to continue doing that.
For my personal learning, I,
are you familiar with the hedgehog fox dynamic?
I think this was either the ancient Greeks came up with it
or it was pretended to be something
drawn from the ancient Greeks that I don't know who to point it to, but they probably marked
one.
It is that you've got two types of people, especially two types of researchers.
There's the fox that knows many different things, and then the hedgehog that knows one thing
very deeply.
So, like von Neumann would have been the fox. He's someone who knows many different things,
just very foundational in a lot of different fields.
Einstein would have been more of a headshot,
thinking really deeply about one particular thing.
And both are very necessary for making progress.
So between those two, I would definitely see myself
as like the fox where I'll try to get my paws
in like a whole bunch of different things.
And at the moment, I just think I don't know enough
of anything to make like a significant contribution
to any of them.
But I do see value in like having a decently deep
understanding of a wide variety of things.
Like most people who know computer science really deeply
don't necessarily know physics very deeply
or many of the aspects, like different fields and math even.
Let's say you have like an analytic number
theory versus an algebraic number theory.
Like these two things end up being related
to very different fields, like some of them
more complex analysis, some of them more like algebraic
geometry.
And then when you just go out so far as to take those
adjacent fields, place one, you know, PhD student
into a seminar of another ones, they don't understand
what the other one's saying at all.
Like you take the complex analysis specialist
inside the algebraic geometry seminar, there is lost as your eye would be.
But I think going around and like trying to have some sense of what this big picture
is, certainly has personal value for me.
I don't know if I would ever make like new contributions in those fields, but I do think
I could make new like expositional contributions where there's kind of a notion of things that
are known, but like haven't been explained very well
First of all, I think most people would agree your videos you're teaching the way you see the world is
Fundamentally often new like you're creating something new
And it almost feels like research even just like the visualizations
The multi-dimensional visualization we'll talk about.
I mean, you're revealing something very interesting that, yeah, just feels like research, feels
like science, feels like the cutting edge of the very thing of which like new ideas and
you discoveries are made of.
I do think you're being a little bit more generous than is necessarily.
And I promise that's not even false humility because I sometimes think when I research a video,
I'll learn like 10 times as much as I need for the video itself and it ends up feeling kind of
elementary. So I have a sense of just how far away like the stuff that I cover is from the actual
depth. I think that's natural, but I think that could also be a mathematics thing.
I feel like in the machine learning world,
you like two weeks in, you feel like you've basically
mastered that field.
And mathematics is like,
well, everything is either trivial or impossible.
And it's like a shockingly thin line between the two,
where you can find something that's totally impenetrable
and then after you get a feel for it's like,
oh yeah, that whole subject is actually trivial
in some way.
So maybe that's what goes on.
Every researcher is just on the other end of that hump and it feels like it's so far away,
but one step actually gets them there.
What do you think about sort of Feynman's teaching style or another perspective of the use
of visualization?
Well, his teaching style is interesting because people have
described like the Feynman effect where while you're watching his lectures or while
you're reading his lectures, everything makes such perfect sense. So as an
entertainment session, it's wonderful because it gives you this this intellectual
satisfaction that you don't get from anywhere else that you like finally
understand it. But the Feynman effect is that you can't really recall what it is that gave you that insight,
you know, even a week later.
And this is true of a lot of books and a lot of lectures where the retention is never
quite what we hope it is.
So, there is a risk that the stuff that I do also fits that same bill, where at best it's
giving this kind of intellectual candy on giving a glimpse of feeling like you understand something.
But unless you do something active, like reinventing it yourself, like doing problems to solidify
it, even things like space repetition memory to just make sure that you have the building
blocks of what do all the terms mean.
Unless you're doing something like that, it's not actually going to stick. So
the very same thing that's so admirable about Feynman's lectures, which is how damn satisfying they are to consume might actually also reveal a little bit of the flaw that we should, as educators,
all look out for, which is that that does not correlate with long-term learning.
We'll talk about it a little bit. I think what you've done some interactive
stuff. I mean, even in your videos, the awesome thing that Feynman couldn't do at the time
is you could, since it's programmed, you can like tinker, like, play with stuff. You could
take this value and change it. You can like, here, let's take the value of this variable
and change it to build up an intuition, to move along the surface or to change the shape of something.
I think that's almost an equivalent of you doing it yourself.
It's not quite there, but as a viewer, do you think there's some value in that interactive
element?
Yeah, well, so what's interesting is you're saying that, and the videos are non-interactive
in the sense that there's a play button and a pause button, and you could ask, like,
hey, while you're programming these things, why don't you program it into an interactable
version that, you know, make it a Jupyter notebook that people can play with, which I should
do, and that, like, would be better.
I think the thing about interactives, though, is most people consuming them just sort of
consume what the author had in mind. And that's kind of what they want.
Like I have a ton of friends who make interactive explanations. And when you look into the
analytics of how people use them, there's a small sliver that genuinely use it as a playground
to have experiments. And maybe that small sliver is actually who you're targeting and the rest
don't matter. But most people consume it just as a piece of like well constructed literature that maybe you tweak with the example a little bit to see what it's getting at.
But in that way, I do think like a video can get most of the benefits of the interactive, like the interactive app, I made this video about SIR models for epidemics.
And it's like this agent-mace bottling thing
where you tweak some things about how the epidemic spreads
and you wanna see how that affects its evolution.
My format for making that was very different than others
where rather than scripting it ahead of time,
I just made the playground and then I played a bunch
and then I saw what stories there were to tell within that.
Yeah, that's cool. So your video had that kind of structure, it had five or six stories or whatever it was.
And it was basically, okay, here's a simulation, here's a model. What can we discover with this model?
And here's five things I found after playing with it.
Well, because the thing is a way that
you could do that project is you make the model and then you put it out and you say here's a thing
for the world to play with like come to my website where you interact with this thing. And people
did sort of remake it in a JavaScript way so that you can go to that website and you can test
your own hypotheses. But I think a meaningful part of the value to add is not just the technology,
but to give the story around it as well. And like, that's kind of my job. It's not just to like,
make the visuals that someone will look at. It's to be the one to decide what's the interesting
thing to walk through here. And even though there's lots of other interesting paths that one could
take, that can be kind of daunting when you're just sitting there in a sandbox and you're given this
tool with like five different sliders
and you're told to like play and discover things.
It's like, where do you do?
What do you start?
What are my hypotheses?
What should I be asking?
Like a little bit of guidance in that direction
can be what actually sparks curiosity
to make someone want to imagine more about it.
A few videos I've seen you do, I don't know how often you do it,
but there's almost a 10-gen show,
like pause where you... Here's a cool thing, you say, like, here's a cool thing, but it's outside
a scope of this video, essentially, but I'll leave it to you as homework, essentially, to like,
figure out it's a cool thing to explore. I wish I could say that wasn't a function of laziness,
right? And that's like, it worked so hard on making the 20 minutes already that to extend it out
even further would take more time.
And one of your cooler videos, the homomorphic, like from the Mobius strip to this 3D.
What do you mean?
The Stripe rectangle?
Yeah, that's a super.
And you're like, yeah, you can't transform the Mobius strip into a surface without intersecting itself.
But I'll leave it to you to see why that is.
Well, I hope that's not exactly how I phrased it because I think what I hope would be is
that I leave it to you to think about why you would expect that to be true.
And then to want to know what aspects of a mobile strip
do you want to formalize such that you can prove that
intuition that you have?
Because at some point, now you're starting
to invent algebraic topology.
If you have these vague instincts,
like I want to get this mobile strip,
I want to fit it such that it's all above the plane,
but it's boundary sits exactly on the plane. I don't think I can
do that without crossing itself, but that feels really vague. How do I formalize it? And
as you're starting to formalize that, that's what it's going to get you to try to come up
with a definition for what it means to be orientable or non-orientable. And like once you have
that motivation, a lot of the otherwise arbitrary things that are sitting at the very beginning
of a topology textbook start to make a little more sense. Yeah, and I mean that whole video beautifully was a motivation for topology school.
That was my hope with that.
I feel like topology is, I don't want to say it's taught wrong, but I do think sometimes
it's popularized in the wrong way, where you know, you'll hear these things with people
saying, oh, topologists, they're very interested in surfaces that you can bend and stretch,
but you can't cut or glue.
Are they?
Why?
There's all sorts of things you can be interested in with random, like, imaginative
manipulations of things.
Is that really what, like, mathematicians are into?
And the short answer is not, not really.
That's, uh, it's not as if someone was sitting there thinking, like, I wonder what the
properties of clay are.
If I had some arbitrary rules about what,
when I can't cut it and when I can't glue it.
Instead, there's a ton of pieces of math
that can actually be equivalent to,
like these very general structures that's like geometry,
except you don't have exact distances,
you just want to maintain a notion of closeness.
And once you get it to those general structures, constructing mappings between them, translate
into non-trivial facts about other parts of math.
And that, I don't think that's actually popularized.
I don't even think it's emphasized well enough when you're starting to take a topology class
because you kind of have these two problems.
Like, either it's too squishy, you're just talking about coffee mugs and donuts or it's a little bit too rigor first. And you're talking about the
axiom systems with open sets. And an open set is not the opposite of closed set. So,
sorry about that, everyone. We have a notion of clopin sets for ones that are both at the
same time. And just it's not it's not an intuitive axiom system in comparison to other fields
of math. So you as the student really have to walk through mud
to get there.
And you're constantly confused about how this relates
to the beautiful things about coffee mugs
and movia strips and such.
And it takes a really long time to actually see
like sea topology in the way that mathematician see topology.
But I don't think it needs to take that time.
I think there's, this is making me feel like
I need to make more videos on the topic.
Because I think I've been in that scene. I think there's, this is making me feel like I need to make more videos on the topic because I think I've been in that state.
I'm 100% you do. But, you know, I've also seen it in my narrow view of like, I find game
theory very beautiful. And I know topology has been used elegantly to prove things in game theory.
Yeah, you have like facts that seem very strange. Like, I could tell you you stir your coffee.
And after you stir it and like, let's say, all the molecule settled to not moving again, one of the molecules will be basically
in the same position it was before. You have all sorts of fixed point theorems like this,
right? That kind of fixed point theorem, directly relevant to Nash equilibrium, right? So,
you can imagine popularizing it by describing the coffee fact, but then you're left to wonder,
like, who cares about it from molecule of coffee
like stays in the same spot?
Is this what we're paying our mathematicians for?
You have this very elegant mapping onto economics
in a way that's very concrete.
I shouldn't say concrete, very tangible.
Like, actually adds value to people's lives
through the predictions that it makes.
But that line isn't always drawn because,
you have to get a little bit technical in order to properly draw that line out.
And often, I think, popularized forms of media just shy away from being a little too technical.
For sure. By the way, for people who are watching the video, I do not condone the message in the smug.
The only way I can, which is the snuggle is real.
By the way, for anyone watching, I do condone the message of that mug. the snuggle is real. By the way, for anyone watching,
I do condone the message of that mug.
The snuggle is real.
The snuggle is real.
Okay, so you mentioned the SIR model.
I think there are certain ideas there of growth,
of exponential growth.
What maybe have you learned about
pandemics from making that video? Because it was kind of exploratory,
we're kind of building up an intuition.
And it's again, people should watch the video,
it's kind of an abstract view,
it's not really modeling in detail.
The whole field of epidemiology,
those people, they go really far in terms of modeling
Like how people move about I don't know if you've seen it, but like there is their mobility patterns like how like
Like how many people you encounter and in a certain situations when you go to a school when you go to a mall
They like model every aspect of that for a particular site like they have maps of actual city streets
They model it really well and natural patterns of the people have
It's crazy. So you don't do any of that. You're just doing an abstract model to explore different ideas of simple pedigree
Well, because I don't want to pretend like an epidemi I'm an epidemiologist like we have a ton of armchair epidemiologists and
The spirit of that was more like
Can we through a little bit of play draw like reasonable
ish conclusions?
And also just like get ourselves in a position where we can judge the validity of a model.
Like I think people should look at that and they should criticize it.
They should point to all the ways that it's wrong because it's definitely naive, right?
In the way that it's set up.
But to say like what, what, what lessons
from that hold, like, thinking about the R&D value and what that represents and what it
can apply.
That's R&D.
So R&D is, if you are infectious and you're in a population, which is completely susceptible,
what's the average number of people that you're going to infect during your infectiousness?
So certainly during the beginning of an epidemic,
this basically gives you kind of the exponential growth rate.
Like if every person infects two others,
you've got that one, two, four, eight,
exponential growth pattern.
As it goes on and let's say it's something endemic
where you've got like a ton of people who have had it
and are recovered,
then you would, the RNOT value doesn't tell you that as directly because a lot
of the people you interact with aren't susceptible, but in the early phases it does.
And this is like the fundamental constant that it seems like epidemiologists look
at and you know, the whole goal is to get that down.
If you can get it below one, then it's no longer epidemic.
If it's equal to one, then it's endemic, and it's above one, then you're epidemic. So, like, just teaching
what that value is and giving some intuitions on how do certain changes in behavior change
that value, and then what does that imply for exponential growth? I think those are general
enough lessons, and they're like resilient to all of the chaos of the world that it's still
like valid to take from the video.
I mean one of the interesting aspects of that is just exponential growth.
And we think about growth.
Is that one of the first times you've done a video on, no, of course not the whole,
well there's identity.
Okay, so.
Sure.
I guess I've been a lot of videos about exponential growth
in the circular direction, only minimal in the normal
direction.
I mean, not another way to ask, like, do you think we're able
to reason intuitively about exponential growth?
It's funny.
I think it's extremely intuitive to humans, and then we train it out of ourselves
such that it's then really not intuitive. And then I think it can become intuitive again
when you study a technical field. So what I mean by that is, have you ever heard of
these studies where in a anthropological setting where you're studying a group that has
been disassociated from a lot of like modern society, and you ask, what number is between one and nine?
And maybe you had asked, you've got one rock
and you've got nine rocks.
You're like, what pile is halfway in between these?
And our instinct is usually to say five.
That's the number that sits right between one and nine.
But sometimes when numeracy and the kind of
just basic arithmetic that we have isn't in a society.
The natural instinct is three because it's in between in an exponential sense and a geometric sense
that one is three times bigger and then the next one is three times bigger than that.
So it's like what's, you know, if you have one friend versus a hundred friends, what's in between that?
Yeah, 10 friends seems like the social status in between those two states.
So that's like deeply intuitive to us to think log rhythmically like that.
And for some reason, we kind of trained it out of ourselves to start thinking one
yearly about things.
So in the sense, yeah, the early, early basic math is, yeah,
it forces us to take a step back.
It's the same criticism if there's any of science is the lessons of science make us like
see the world in a slightly narrow sense to where we have an over exaggerated confidence
that we understand everything as opposed to just understanding a small slice of it.
But I think that probably only really goes for small numbers because the real counter
and two of the thing about exponential growth is like as the number is starting to get big
So I bet if you took that same setup and you asked them oh if I keep tripling the size of this rock pile, you know
Seven times how big will it be I bet it would be surprisingly big even to like and a society without numeracy
And that's the side of it that I think is pretty counterintuitive to us
And that's the side of it that I think is pretty counterintuitive to us, but that you can basically train into people. Like, I think computer scientists and physicists, when they're looking at the early numbers of, like, COVID,
were, they were the ones thinking, like, oh, God, this is following an exact exponential curve.
Yeah.
And I heard that from a number of people.
So it's, and almost all of them are like techies in some capacity, probably just because I believe
in the Bay Area.
But for sure, they're cognizant of this kind of growth
as president, a lot of natural systems,
and a lot of systems.
I don't know if you've seen, like, I mean,
there's a lot of ways to visualize this, obviously.
But Ray Kurzweil, I think, was the one
that had this like chessboard where every square on the chessboard, you doubled the number of
stones or something in that chessboard.
I heard this is like an old proverb where someone, the king offered him a gift and he
said, ah, the only gift I would like very modest, give me a single grain of rice.
Right.
So the first chessboard and then two grains of rice for the next square, then twice that
for the next square and just continue on.
That's my only modest asker's I.
And like, it's all, you know, more grains of rice than there are anything in the world
by the time you get to the end.
And I'd mind tuition falls apart there.
Like, I would have never predicted that. Like, for some reason, that's a really compelling
illustration how poorly breaks down, just like you said, maybe we're okay for the first few piles,
but of rocks, but after a while, it's game over. You know the other classic example for
gauging someone's intuitive understanding of exponential growth is I've got like a lily pad on a on the lake really big lake
Like Lake Michigan and that lily pad replicates it doubles
One day and then it doubles the next day and it doubles the next day and after 50 days
It actually is going to cover the entire lake, okay? So after how many days does it cover half the lake?
49 so you you have a good instinct for exponential growth, right? So after how many days does it cover half the lick? 49.
So you have a good instinct for exponential growth.
So I think a lot of like the knee jerk reaction is sometimes to think that it's like half
the amount of time or to at least be like surprised that like after 49 days you've only
covered half of it.
Yeah, I mean, the reason you heard a pause for me, I literally thought that can't be right.
Right, exactly.
So even when you know the fact and you do the division,
it's like, wow, so you've gotten like that whole time,
and then day 49, it's only covering half,
and then after that it gets the whole thing.
But I think you can make that even more visceral
if rather than going one day before you say,
how long until it's covered one percent of the lake, right?
And it's, so what would that be?
How many times you have to double to get over 100,
like, seven, six and a half times, something like that?
Right, so at that point, you're looking at 43, 44 days into it.
You're not even at 1% of the lake.
So you've experienced, you know, 44 out of 50 days.
And you're like, yeah, that little bit bad.
It's just 1% of the lake.
But then next thing you know, it's the entire lake.
You're wearing a SpaceX shirt.
So let me ask you.
Let me ask you one person who talks about exponential,
you know, just the miracle of the exponential function
in general is Elon Musk.
So he kind of advocates the idea of exponential thinking, realizing that technological development
can, at least in the short term, follow exponential improvement, which breaks apart our intuition,
our ability to reason about what isn't, isn't impossible.
So he's a big one, it's a good leadership kind of style of saying like, look, the thing that everyone thinks
isn't possible is actually possible because exponentials.
But what's your sense about that kind of way to see the world?
Well, so I think it can be very inspiring to note when something like Moore's Law is
another great example where you have this exponential pattern that holds shockingly well. And it enables just better lives to be
led. I think the people who took Moore's Law seriously in the 60s were seeing that,
wow, it's not going to be too long before like these giant computers that are either
batch processing or time-shared. You could actually have one small enough to put on your
desk on top of your desk and you could do things. And if they took it seriously, like you
have people predicting smartphones like a long time ago.
And it's only out of this, I don't want to say faith in exponentials, but an understanding
that that's what's happening.
What's more interesting, I think, is to really understand why exponential growth happens,
and that the mechanism behind it is when the rate of change is proportional to the thing
in and of itself.
So the reason the technology would grow exponentially is only going to be if the rate of progress is proportional to the amount that you have.
So that the software you write enables you to write more software.
And I think we see this with the internet.
Like the advent of the internet makes it faster to learn things, which makes it faster to create new things.
I think this is oftentimes why investment will grow exponentially
that the more resources a company has,
if it knows how to use them well,
the more it can actually grow.
So I mean, you know, your reference Elon Musk,
I think he seems to really be
intervertically integrating his companies.
I think a big part of that is because you have the sense
what you want is to make sure that the things that you develop,
you have ownership of, and they enable
further development of the adjacent parts.
So it's not just this, you see a curve
and you're blindly drawing a line through it.
What's much more interesting is to ask,
when do you have this proportional growth property?
Because then you can also recognize when it breaks down, like in an epidemic, as you approach saturation, that would break down, as you do anything that
skews what that proportionality constant is, you can make it, maybe not break down as being
an exponential, but it can seriously slow what that exponential rate is.
So the opposite of a pandemic is you want, in terms of ideas, you want to minimize barriers that
prevent the spread. You want to maximize the spread of impact. So like you
want it to grow when you're doing technological development is so that you do
hold up that rate holds up. And that's almost like an operational
challenge of like how you run a company, how you run a group
of people, is that any one invention has a ripple that's unstopped.
And that ripple effect then has its own ripple effects and so on.
And that continues.
Yeah, like more is a lot of fascinating.
Like on a psychological level and a human level, because it's not exponential. It's just a consistent set of like what you call like S curves,
which is like it's constantly like breakthrough innovations
nonstop. That's a good point. Like it might not actually be an example of exponentials because of something which grows in
proportion to itself, but instead it's almost like a benchmark that was set out that everyone's been pressured to meet. And it's like all these innovations in micro inventions along the
way, rather than some consistent sit back and just let the Lily pad grow across the lake
phenomenon.
And it's also the, there's a human psychological level for sure of like the four minute
mile. Like it's something about it. Like saying that look there is
You know more's law it's a law
So like it's it's certainly an achievable thing
You know, we achieved the for the last decade for last two decades for the three decades you just keep going
And it somehow makes it happen. I mean it makes people I'm continuously surprised in this world how few people do the best work in the world,
like in that particular, whatever that field is.
Like it's very often that like the genius,
I mean, you could argue that community matters,
but it's certain like, I've been in groups of engineers
where like one person is clearly like doing
an incredible amount of work and just is the genius.
And it's fascinating to see,
basically, it's kind of the Steve Jobs idea
is maybe the whole point is to create an atmosphere
where the genius can discover themselves.
Like, like, how do the opportunity do the best work of their life?
And yeah, and that the exponential is just milking that.
It's like rippling the idea that it's possible,
and that idea that it's possible finds the right people for the four-minute mile,
and the idea that it's possible finds the right runners to run it and then explodes a number of people who can run faster than four minutes.
It's kind of interesting to, I don't know, basically the positive way to see that is most
of us are way more intelligent, have way more potential than we ever realize.
I guess that's kind of depressing.
But I mean, like the ceiling for most of us is much higher than we ever realized. That is true. A good book to read if you want that sense is peak, which
essentially talks about peak performance in a lot of different ways, like, you know,
chess, London cab drivers, how many pushups people can do, short-term memory tasks.
And if there's one, it's meant to be like a concrete manifesto about deliberate practice
and such, but the one
sensation you come out with is, wow, no matter how good people are at something, they can
get better and way better than we think they could.
I don't know if that's actually related to exponential growth, but I do think it's
a true phenomenon that's interesting.
Yeah, I mean, there's certainly no law of exponential growth and human innovation.
Well, I don't know.
Well, kind of there is.
Like there's, I think it's really interesting to see when innovations in one field
allow for innovations in another.
Like the advent of computing seems like a prerequisite for the advent of chaos
theory. You have this truth about physics and the world that in theory could
be known, you could find Lorenzo's equations without computers.
But in practice, it was just never gonna be analyzed
that way, unless you were doing like a bunch of simulations
and that you could computationally see these models.
So it's like physics allowed for computers,
computers allowed for better physics
and you know, watch Rinse and repeat.
That self-reportionality, that's exponential.
So I think I wouldn't,
it's, I think it's too far to say that that's a law of some kind
Yeah, a fundamental law of the universe is that these descendants of apes
well
Exponentially improve their technology and one day take be taken over by the aji
That's something that's built in the same way. They'll make the video game fun over creative
this thing. So I mean, since you're wearing a space actually, let me ask.
I didn't realize it. Apologize. It's on top of it.
Yeah. So Crew Dragon, the first crewed mission out into space since the space shuttle.
And just by first time ever, by a commercial company,
I mean, it's an incredible accomplishment, I think.
But it's also just an incredible,
and it inspires imagination amongst people that this is the first step in a long,
like vibrant journey of humans into space.
Oh, yeah. So what do you, how do you feel? Is this, you know, is this exciting to you?
Yeah, it is. I think it's great. The idea of seeing it basically done by smaller entities,
instead of by governments. I mean, it's a, it's a heavy collaboration between SpaceX and NASA in
this case, but moving in the direction of not necessarily requiring an entire country and its government to make it happen, but that you can have something
closer to a single company doing it. We're not there yet because it's not like they're
unilaterally saying like we're just treating people up in this space. It's just a sign
that we're able to do more powerful things with smaller groups of people. I find that
inspiring.
And evade quickly. I hope we see people land
on Mars in my lifetime.
Do you think we will?
I think so.
I mean, I think there's a ton of challenges there, right?
Like radiation being kind of the biggest one.
And I think there's a ton of people who look at that
and say, why?
Why would you want to do that?
Let's let the robots do the science for us.
But I think there's enough people
who are like genuinely inspired about broadeningening the worlds that we've touched, or people who think
about things like backing up the light of consciousness with super long term versions
of terraforming. As long as it's-
Shining up the light of consciousness.
Yeah, the thought that if Earth goes to hell, we've got to have a backup somewhere. A lot of people see that as pretty out there,
and it's like not in the short-term future,
but I think that's an inspiring thought.
I think that's a reason to get up in the morning
and I feel like most employees at SpaceX feel that way too.
Do you think we'll call it as Mars one day?
No idea.
Either AGI kills us first, or if we're allowed,
I don't know if it'll take us.
Before allowed.
Well, honestly, it would take such a long time.
Like, okay, you might have a small colony, right?
Something like what you see in the Martian, but not like people living comfortably there.
But if you want to talk about actual like second earth kind of stuff, that's just like way
far out there.
And the future moves so fast that it's hard to predict.
We might just kill ourselves before that even becomes viable.
Yeah, I mean, there's a lot of possibilities where it could be just, it doesn't have to be on a planet,
it could be floating out in space, have a space-faring backup solution.
That doesn't have to deal with the constraints
that are planned.
I mean, a plan provides a lot of possibilities and resources, but also some constraints.
Now, I mean, for me, for some reason, it's a deeply exciting possibility.
Oh, yeah.
Yeah, all of the people who were like skeptical about it or like, why do we care about
going to Mars?
Like, what makes you care about anything?
Exactly. Exactly. like, why do we care about going to Mars? Like, what makes you care about anything? That's exactly.
Exactly.
It's hard.
It's hard to hear that because exactly
as you put it on a philosophical level,
it's hard to say, why do anything?
I don't know.
It's like the people say, like, you know,
I've been doing like an insane challenge
last 30 something days.
Your pull-ups?
And the pull-ups push ups and like,
a bunch of people are like awesome.
You're insane, but awesome.
And then some people are like, why?
Why do anything?
I don't know.
There's a calling.
I'm with JFK a little bit,
is because we do these things because they're hard.
There's something in the human spirit that says like, same with a math problem.
There's something you fail once, and it's like this feeling that, you know what, I'm not
going to bag down from this.
There's something to be discovered in overcoming this thing.
Well, so what I like about it is, and I also like this about the moon missions, sure,
it's kind of arbitrary, but you can't move the target.
So you can't make it easier and say that you've accomplished the goal.
And when that happens, it just demands actual innovation, right?
Like protecting humans from the radiation in space on the flight there, while there,
heart problem, demands innovation.
You can't move the goalpost to make that easier.
Almost certainly, the innovations required for things like that
will be relevant in a bunch of other domains too.
So the idea of doing something merely because it's hard,
it's loosely productive, great.
But as long as you can't move the goalposts,
there's probably going to be the secondary benefits
that we should all strive for.
Yeah, I mean, it's hard to formulate the Mars colonization problem as something that has
a deadline, which is the problem.
But if there was a deadline, then the amount of things we would come up with by forcing
ourselves to figure out how to colonize that place would be just incredible.
This is what people, like the internet didn't get created
because people sat down and tried to figure out
how do I send TikTok videos of myself dancing to people.
They, you know, there's an application.
I mean, actually, I don't even know how.
What do you think the application for the internet was when it was?
It must have been very low level basic network communication with Indarta,
like military-based, like, how do I send, like a networking?
How do I send information securely between two places?
Maybe it was an encryption.
I'm totally speaking totally outside of my knowledge,
but like, it was probably intended
for a very narrow small group of people.
Well, so I mean, there was the small community
of people who were really interested
in time sharing computing and interactive computing
in contrast with batch processing.
And then the idea that as you set up
like a time sharing center,
basically meaning you have multiple people logged in
and using that central computer, why not make it accessible to others? And this was kind of multiple people like logged in and using that like central computer.
Why not make it accessible to others? And this was kind of what I'd always thought like, oh, is this like fringe group that was interested in this new kind of computing and they all like
got themselves together. But the thing is like DARPA wouldn't act, you wouldn't have the US
government funding that just for the funds of it, right? But in some sense, that's what ARPA was
all about was like just really advanced research for
the sake of having advanced research, and it doesn't have to pay out with utility soon.
But the core parts of its development were happening in the middle of the Vietnam War,
when there was budgetary constraints all over the place.
I only learned this recently, actually, like, if you look at the documents, basically
justifying the budget for the ARPANET
as they were developing it,
and not just keeping it where it was,
but actively growing it,
while all sorts of other departments
were having their funding cut because of the war.
A big part of it was national defense
in terms of having like a more robust communication system.
Like the idea of packet switching
versus circuit switching,
you could kind of make this case
that in some calamitous circumstance where where, you know, a central location gets
nuked, this is a, this is a much more resilient way to still have your communication lines
that, like traditional telephone lines weren't as resilient to, which I just found very interesting
that that even something that we see is so happy, go lucky is just a bunch of computer nerds trying to get like interactive computing out there.
The actual like thing that made it funded and thing that made it advance when it did was
because of this direct national security question and concern.
I don't know if you've read it.
I haven't read it.
I've been meaning to read it, but Neil deGrasse Tyson actually came out with a book that
talks about like science and the context of the military, like basically saying all the
great science we've done in the 20th century was like because of the military. I mean,
he paints a positive, it's not like a critical, it's not, you know, a lot of people say like
military industrial complex and so on. Another way to see the military and national security
is like a source of like you said deadlines
and like hard things you can't move.
Like almost, you know, almost like scaring ourselves
into being productive.
It is that.
I mean, Manhattan Project is a perfect example.
Probably the quintessential example.
That one is a little bit more macabre than others
because of like what they were building.
But in terms of how many focused, smart hours of human intelligence get pointed towards
a topic per day, you're just maxing it out with that sense of worry.
And that context, everyone there was saying, like, we've got to get the bomb before Hitler
does.
And that just lights a fire under you that,, again, like the circumstances, Macabre,
but I think that's actually pretty healthy, especially for researchers that are otherwise
going to be really theoretical to take these like theorizers and say, make this real
physical thing happen.
Meaning a lot of it is going to be unsexy.
A lot of it's going to be like young firemen sitting there kind of inventing a notion of
computation in order to like compute what they needed to compute
more quickly with the rudimentary automated tools
that they had available.
I think you see this with Bell Labs also
where you've got otherwise very theorizing minds
in very pragmatic contexts
that I think is really helpful for the theory
as well as for the applications.
So I think that stuff can be positive for progress.
You mentioned Bell Labs and Manhattan Project.
This kind of makes me curious,
for the things you create which are quite singular.
Like if you look at all YouTube,
or just not YouTube,
it doesn't matter what it is.
It's just teaching content, art doesn't matter.
It's like, yep, that's
grant, right? That's unique. I know you're teaching style and everything. Does it? Manhattan
project and Bell Labs was like famously a lot of brilliant people, but there's a lot of them.
They play off of each other. So like, my question for you is that does it get lonely?
Honestly that right there I think is the biggest part of my life that I would like to change in some way that I
Look at about lab type situation and like goddamn. I love that whole situation
And I'm so jealous of it and you're like reading about hamming and then you see that he also shared enough with was Shannon
And you're like of course he did of course they shared enough is that's how these ideas get like.
And they actually probably very likely worked separately.
Yeah, totally, totally separate, but there's a literally, and sorry to interrupt,
there's a literally magic that happens when you run into each other, like on the way
to like getting a snack or something.
Conversations you over here, it's other projects you're pulled into,
it's like puzzles that colleagues are sharing, like all of that. I have some extent of it,
just because they try to stay well connected in communities of people who think in similar ways,
but it's not in the day-to-day in the same way, which I would like to fix somehow. That's one of the, I would say one of the biggest,
well, one of the many drawbacks,
negative things about this current pandemic
is that whatever the term is, but like chance collisions
are significantly reduced.
I saw, I don't know why I saw this,
but on my brother's work calendar,
he had a scheduled slot with someone
that he scheduled a meeting,
and the title of the whole meeting was,
no specific agenda, I just missed the happens
hand serendipitous conversations that we used to have,
which the pandemic and remote work
has so cruelly taken away from us.
That's brilliant.
That was the whole title of the meeting.
That's brilliant. I'm like, that's the way to do it. You just schedule those Really? That was the only title of the video.
That's brilliant.
That's the way to do it.
You just schedule those things.
You just schedule the serendipitous interaction.
It's like, I mean, you can't do an academic setting, but it's basically like going to a bar
and sitting there just for the strangers you might meet, just the strangers or striking up
conversation or strangers on the train. Harder to do when you're deeply, like maybe myself, or maybe a lot of academic types who
are like introverted and avoid human contact as much as possible.
So it's nice when it's forced to those chance collisions, but maybe scheduling is a possibility.
But for the most part, do you work alone?
Like, I'm sure you struggle.
Like, a lot.
Like, this, like, you probably hit moments when you,
you look at this and say, like, this is the wrong way.
To show it is the wrong way to visualize it.
I'm making it too hard for myself.
I'm going down the wrong direction.
This is too long. This is too short. All those self-doubt that can be paralyzing.
Think, what do you do in those moments?
Honestly, I actually much prefer work
to be a solitary affair for me.
That's like a personality work.
I would like it to be in an environment with others
and collaborative in the sense of ideas exchanged.
But those phenomena you're describing when you say
this is too long, this is too short, this visualization sucks.
It's way easier to say that to yourself
than it is to say to a collaborator.
And I know that's just a thing that I'm not good at.
So in that way, it's very easy to just throw away a script
because the script isn't working.
It's hard to tell someone else they should do the same.
Actually last time we talked,
I think it was like very close to me talking Don Canuth,
it was kind of cool cool like two people that
No, can I brag about something please?
My favorite thing is Don Canooth after did the interview he offered to go out to hot dogs with me
That was never like people asking what's the favorite interview you've ever done? I mean, that has to be, but
unfortunately, I couldn't. I had a thing after. So I had to turn
down Don canoe with you missed canoe dogs, canoe dogs. Sorry, so
that was a little bragging, but the hot dogs, he said, just
sweet. So, but the reason I bring that up is he he works through
problems alone, as well.
He prefers that struggle, the struggle of it.
Writers, like Stephen King, often talk about their process
of what they do, what they eat when they wake up.
Like when they sit down, like how they like their desk,
and on a perfectly productive day,
like what they like to do, how long they like to work for,
what enables them to think deeply,
all that kind of stuff.
Hunter Thompson did a lot of drugs.
Everybody has their own thing.
What's, do you have a thing?
Is there, if you were to lay out a perfect productive day, what would
that schedule look like, do you think?
Part of that's hard to answer because the mode of work I do changes a lot from day to
day.
Like, some days I'm writing.
The thing I have to do is write a script.
Some days I'm animating.
The thing I have to do is animate.
Sometimes I'm working on the animation library.
The thing I have to do is a little, I'm not a software engineer, but something in the direction of
software engineering. Some days it's like a very into research. It's like, learn this topic well and
try to learn it differently. So those is like four very different modes of what it,
some days it's like get through the email backlog of people I've been, the tasks I've been putting off.
It goes research scripting, like the idea starts with research
and then they're scripting and then there's programming
and then there's the showtime.
And the research side by the way,
like what's, I think a problematic way to do it
is to say I'm starting this project
and therefore I'm starting the research.
Instead it should be that you're like
ambient learning a ton of things just in the background and then whence you feel like you have the understanding for one, you put it on
the list of things that there can be a video for. Otherwise, either you're going to end up roadblock
forever or you're just not going to have a good way of talking about it. But still, some of the days,
it's like the thing to do is learn new things. So what's the most painful one? I think you mentioned
scripting. Scripting is, yeah, that's the worst. Yeah, writing is new things. So what's the most painful one? I think you mentioned scripting.
Scripting is, yeah, that's the worst.
Yeah, right writing is the worst.
So what's your, on a perfectly, so let's take the hardest one.
What's a perfectly productive day?
You wake up and it's like, dammit, this is the day I need to do some scripting.
And like you didn't do anything last two days, so you came up with excuses to procrastinate,
so today must be the day.
Yeah, I wake up early, I guess I exercise, and then I turn the internet off. If we're
writing, yeah, that's what's required, is having the internet off, and then maybe you
keep notes on the things that you want to Google when you're allowed to have the internet
again. I'm not great about doing that, but when I do, that makes it happen.
And then when I hit writer's block,
like the solution to writer's block is to read.
Doesn't even have to be related,
just read something different.
Just for like 15 minutes, half an hour,
and then go back to writing.
That when it's a nice cycle,
I think can work very well.
And when you're writing the script,
you don't know where it ends, right?
Like you have a, like problem solving videos I know where it ends, expositional videos you don't know where it ends.
Problem solving videos I know where it ends, expositional videos I don't know where it ends.
Coming up with the magical thing that ties this whole story together.
When does that happen?
That's the thing that makes it such that a topic gets put on the list of like,
exactly.
Oh, that's an issue.
You shouldn't start the project unless there's one of those.
You have so many nice bags.
You haven't such a big bag of aha moments already that you could just pull at it.
That's one of the things and one of the sad things about time and that nothing lasts forever
and that we're all mortal. Let's not get into that.
forever and that we're all mortal. Let's not get into that.
Discussion is, you know, if I see like, even when I asked for people to ask,
like, ask, I did a call for questions that people want to ask you questions. And so many requests from people about like certain videos it would love you to do.
It's such a pile. And I think that's a, that's a sign of admiration for people for sure.
But it makes me sad because whenever I see them, people give ideas, they're all very often really good ideas.
And it's such a, it makes me sad in the same kind of way when I go through a library or through a bookstore.
You see all these amazing books that you'll never get to open.
So yeah, so you did, yeah, you have to enjoy the ones that you have.
Enjoy the books that are open and don't let yourself lament the ones that stay closed.
What else is there any other magic to that day?
Do you try to dedicate like a certain number of hours?
Do, um, uh, uh, Cal Newport has this deep work kind of idea?
I'm, there's systematic people who like get really on top of,
you know, they check list of what they're gonna do in the day
and they like count their hours.
And I am not a systematic person in that way.
It's, which is probably a problem.
I very likely would get more done if I was systematic
in that way,
but that doesn't happen. So you talked to me later in life and maybe I'll change my ways and
give you a very different answer. I think Benjamin Fankin later in life figured out the
rigor is these very rigorous schedules on how to be productive. I think those schedules are
much more fun to write. It's very fun to write a schedule
and make a blog post about the perfect productive day.
It might work for one person,
but I don't know how much people get out of reading them
or trying to adopt someone else's style.
And I'm not even sure that they've ever followed.
Yeah, exactly.
Like you're always gonna write it
as the best version of yourself.
You're not going to explain the phenomenon of like wanting to
get out of the bed, but not really wanting to get out of the bed and all of that. And just like
zoning out for random reasons or or the one that people probably don't touch at all is I try to
check social media once a day, but I'm like only so I post and that's it. When I post, I check the previous days.
That's what I try to do.
That's what I do, like, 90% of the days, but then I'll have a two-week period, where it's
just like, I'm checking the internet, like, I mean, it's probably some scary number of times.
I mean, a lot of people can resonate with that.
I think it's a legitimate addiction.
It's like, it's a dopamine addiction.
And I don't know if it's a problem
because as long as it's a kind of socializing,
like if you're actually engaging with friends
and engaging with other people's ideas,
I think it can be really useful.
Well, I don't know.
So like for sure, I agree with you.
But it's definitely an addiction
because for me, I think it's true for a lot of people.
I am very cognizant of the fact I just don't feel that happy.
If I look at a day where I've checked social media a lot, like if I just aggregate, I did
a self-report.
I'm sure I would find that I'm just like literally on like the less happy with my life and myself after I've done that check.
When I check it once a day, I'm very like I'm happy.
I even like, cause I've seen it,
okay one way to measure that is when somebody says something
not nice to you on the internet,
is like when I check it once a day,
I'm able to just like, like I smile,
like I virtually, I think about them positively, empath I'm able to just like, like I smile like I virtually,
I think about them positively, empathetically,
I send them love.
I don't, I don't have a response,
but I just feel positively about the whole thing.
If I check, if I check like more than that,
it starts eating at me.
Like, it starts, there's an eating thing that happens
like anxiety.
It occupies a part of your mind that's not, doesn't seem to be healthy.
Same with, I mean, you, you, you to put stuff out on YouTube.
I think it's important.
I think you have a million dimensions.
They're interesting to you, but yet one, one of the interesting ones is the study of
education and the psychological aspect of putting stuff up on YouTube. I like now, I've
completely stopped checking statistics of any kind. I've released an episode 100 with my
dad, conversational my dad. He checks, he's probably listening to this, stop. He checks the number
of views on his video, on his conversation.
So he discovered like a reason he's new to this whole addiction and he just checks and
he like he'll text me or write to me, I just pass Dawkins.
In the top.
Oh my God.
I love that so much.
Yeah.
So he's...
Can I tell you a funny story in that effect of like parental use of YouTube.
Early on in the channel,
my mom would like text me,
she's like,
the channel has had 990,000 views.
The channel has had 991,000 views.
I'm like, oh, that's cute.
She's going to the little part on the about page
where you see the total number of channel views.
No, she didn't know about that.
She had been going every day through all the videos and then adding them up. Adding
them. And she thought she was like doing me this favor, providing me this like global
analytic that otherwise wouldn't be visible. That's nice. It's just like this addiction
where you have some number you want to follow. And like, yeah, it's one of your dad had this.
I think a lot of people have it. I think that's probably a beautiful thing for like parents because they're legitimately
They're proud. Yeah, they're and it's born of love. It's great
The downside I feel one one of them is this is one
interesting experience that you probably don't know much about because comments on your videos are super positive
but you probably don't know much about, because comments on your videos are super positive.
But people judge the quality of how something went,
like I see that with these conversations,
by the comments.
Like, I'm not talking about,
people in their 20s and their 30s,
I'm talking about like CEOs of major companies
who don't have time.
They basically, they literally, this is their
evaluation metric. They're like, oh, the comments seem to be positive. And that's really concerning to me.
Most important lesson for any content creator to learn is that the commenting public is not
representative of the actual public. And this is easy to see. Ask yourself, how often do you write
comments on YouTube videos? Most people will realize, I never do it. Some people realize they do, but the people who realize they never do it
should understand that that's assigned the kind of people who are like you aren't the ones leaving
comments. And I think there's an important number of respects. Like, in my case, I think I would think
my content was better than it was if I just read comments because people are super nice. The thing
is the people who are bored by it are put off by by it in some way or frustrated by it, usually they
just go away. They're certainly not going to watch the whole video, much less leave a comment
on it. So there's a huge underrepresentation of negative feedback, well intentioned negative
feedback because very few people actively do that. Watch the whole thing that they just
like figure out what they disliked, articulate what they dislike. There's plenty of negative feedback that's not well-intentioned, but
for that golden kind. I think a lot of YouTuber friends I have at least have gone through
phases of anxiety about the nature of comments that stem from basically just this, that it's
like people who aren't necessarily representative of who they were going for, misinterpreted what they were trying to say or whatever have you,
or were focusing on things like personal appearances as opposed to substance.
And they come away thinking like, oh, that's what everyone thinks, right? That's what everyone's
response to this video was. But a lot of the people who had the reaction you wanted them to have,
like they probably didn't write it down. So very important to learn.
It also translates to realizing that you're not as important as you might think you are
because all of the people commenting are the ones who love you the most and are like really
asking you to like create certain things or like mad that you didn't create like a past
thing.
I don't know.
I have such a problem, like I have a very real problem with making promises about a type of content that I'll make, and then
either not following up on it soon, or just never following up on it.
Yeah, you actually last time we talked, I think, I'm not sure.
I promise to me that you'll have music incorporated into your...
I'll share it with you a private link.
But there's an example of what I had in mind.
I did a version of it, and I'm it. I think there's a better version of this
that might exist one day.
So it's now on the back burner.
It's sitting there.
There was a live performance at this one thing.
Next circumstance that I'm doing
another recorded live performance
that fits having that in a better recording.
I mean, maybe I'll make it nice in public.
Maybe a while.
But exactly, right?
The point I was going to make those,
I know I'm bad about following up on stuff,
which is an actual problem.
It's born of the fact that I have a sense of what
will be good content when it won't be.
But this can actually be credibly disheartening
because a ton of comments that I see are people who are frustrated
usually in a benevolent way that I haven't followed through on
X and X, which I get. And I should do that. But what's comforting thought for me is that when there's
a topic I haven't promised, but I am working on and I'm excited about, it's like the people who would
really like this don't know that it's coming and don't know to comment to that effect. And the
commenting project that I'm seeing is not representative of like who I think this other project will touch meaningfully.
Yeah, so focus on the future on the thing you're creating now, just like the art of it.
One of the people is really inspiring to me in that regard, because I've really seen it
in person, Joe Rogan. He doesn't read comments, but not just that. He doesn't give a damn.
He like legitimate.
He's not like clueless about it.
He's like just like the richness and the depth of a smile he has when he just experiences
the moment with you, like offline.
You can tell.
He doesn't give a damn about like, like, about anything,
about what people think about,
whether it's on a podcast you talk to him
or whether offline about just, it's not there.
Like what other people think, how, how,
even like what the rest of the day looks like
is just deeply in the moment.
Or like, especially like, is what we're doing,
gonna make for a good Instagram photo or something like that.
It doesn't think like that at all.
It's, I think for actually quite a lot of people,
he's in inspiration in that way, but it was,
in real life, a show that you can be very successful,
not giving a damn about comments.
And it sounds bad, not to read comments because it's like, well,
there's a huge number of people who are deeply passionate about what you do. So you're
what ignoring them. But at the same time, the nature of our platforms is such that the
cost of listening to all the positive people who are really close to you, who are incredible people have been, you know, made a great community that you can learn a lot from. The cost of listening
to those folks is also the cost of your psychology slowly being degraded by the natural underlying
toxicity of the internet. Engaged with a handful of people deeply,
rather than as many people as you can in a shallow way.
I think that's a good lesson for social media usage.
Like platforms and generally.
Choose just a handful of things to engage with
and engage with it very well in a way that you feel proud of
and don't worry about the rest.
Honestly, I think the best social media platform
is texting.
That's my favorite, that's my go-to social media platform.
Well, yeah, the best social media interaction is like real life. Not social media, but social
interaction. Well, yeah, no question there. I think everyone should agree with that.
Which sucks because it's been challenged now with the current situation. And we're trying to
figure out what kind of platform can be created that we can do remote communication? That's still as effective. It's important for education
It's important for just that is the question of education right now. Yeah
So on that topic you've done a series of last streams called lockdown math and
You know you want live which is different than you usually do.
Maybe one, can you talk about how that teal, what's that experience like?
Like, in your own, when you look back, like, is that an effective way?
Did you find being able to teach?
And if so, is there lessons for this world where all of these educators are now trying
to figure out how the hack to I teach remotely?
For me, it was very different. As different as you can get, I'm on camera, which I'm usually not. I'm doing it live, which is nerve-wracking.
It was a slightly different level of topics, although realistically, I'm just talking about things I'm interested in no matter what.
I think the reason I did that was this thought that a ton of people are looking to learn remotely,
the rate at which I usually put out content is too slow to be actively helpful.
Let me just do some biweekly lectures that if you're looking for a place to point your
students, if you're a student looking for a place to be edified about math, just tune in
at these times.
And in that sense, I think it was a success for those who followed with it.
It was a really rewarding experience for me to see how people engaged with it.
Part of the fun of the live interaction was to actually, like, I do these live quizzes and see how people would answer and try to shape the lesson based on that.
Or see what questions people were asking in the audience. I would love to, if I did more things like that in the future, kind of tighten that feedback loop even more.
I think for, you know, you ask about like,
if this can be relevant to educators, like 100%,
online teaching is basically a form of live streaming now.
And usually it happens through Zoom.
I think if teachers view what they're doing
as a kind of performance and a kind of live stream performance,
that would probably be pretty healthy
because Zoom can be kind of awkward.
And I wrote up this little blog post
actually just on like, just what our setup looked like
if you want to adopt it yourself
and how to integrate like the broadcasting software,
OBS with Zoom or things like that.
It was really started to pause on that.
I mean, yeah, maybe we could look at the blog post,
but it looked really nice.
The thing is, I knew nothing about any of that stuff
before I started.
I had a friend who knew a fair bit and nothing about any of that stuff before I started.
I had a friend who knew a fair bit, and so he kind of helped show me the ropes.
One of the things that I realized is that you could, as a teacher, it doesn't take that
much to make things look and feel pretty professional.
One component of it is, as soon as you hook things up with the broadcasting software,
rather than just doing screen sharing, you can set up different scenes and then you can like have keyboard shortcuts to transition
between those scenes.
So you don't need a production studio with a director calling like go to camera 3, go
to camera 2, like onto the screen.
Instead, you can have control of that and it took a little bit of practice and I would mess
it up now and then.
But I think I had a decently smooth such that, you know, I'm talking to the camera and
then we're doing something on the paper, then we're doing like a playing with a Desmos graph or something.
And something that I think in the past would have required a production team, you can actually
do as a solo operation, and in particular as a teacher.
And I think it's worth it to try to do that because two reasons.
One, you might get more engagement from the students.
But the biggest reason, I think one of the like best things that can come out of this
pandemic education-wise
is if we turn a bunch of teachers into content creators,
and if we take lessons that are usually done
in these one-off settings and like start to get in the habit
of sometimes I'll use the phrase commoditizing explanation,
where what you want is whatever a student wants to learn,
it just seems inefficient to me that that lesson is taught
Millions of times over in parallel across many different classrooms in the world like year to year
You've got a given algebra one lesson. It's just taught like literally millions of times
By different people
What should happen is that there's the small handful of explanations online
That exists so that once someone needs that explanation,
they can go to it.
That the time and classroom is spent on all of the parts of teaching and education that
aren't explanation, which is most of it.
And the way to get there is to basically have more people who are already explaining, publish
their explanations and have it in a publicized forum.
So if during a pandemic, you can have people automatically creating online content
because it has to be online, but getting a habit of doing it in a way that doesn't just
feel like a Zoom call that happened to be recorded, but it actually feels like a piece
that was always going to be publicized to more people than just your students. That can
be really powerful. And there's an improvement process there. Like, so being self-critical and growing,
like, you know, I guess the YouTubers go through this process
of like putting out some content and like nobody
caring about it. And then trying to figure out, like,
basically improving, figure out like, why did nobody care?
What can I, you know, and they
come up with all kinds of answers which may or may not be correct, but doesn't matter
because the answer leads to improvement. So you're being constantly self-critical, self-analytical
that should better to say, so you think of like how can I make the audio better, like
all the basic things. Maybe one question to ask because because well, by way of Russ Stedrick,
he's a robotics professor at MIT,
one of my favorite people,
Big Fan of Yours,
he watched our first conversation.
I just interviewed him a couple weeks ago.
He teaches this course in the underactuated robotics,
which is like robotic systems when you can't control
everything. Like when you're like we assume it's when we walk we're always falling forward,
which means like it's gravity, you can't control it, you just hope you can catch yourself
but that's not all guaranteed, it depends on the server. So like that's under-actuated,
you can't control everything. The number of actuators, the degrees of freedom you have is not enough
to fully control the system.
So I don't know.
It's a really, I think, beautiful, fascinating class.
He puts it online.
It's quite popular.
He does an incredible job teaching.
He puts it online every time.
But he's kind of been interested in like crisping it up, like, you know, making it, you know, innovating
in different kinds of ways. And he was inspired by work he do because I think in his work,
he can do similar kind of explanations as you're doing, like revealing the beauty of it
and spending like months and preparing a single video. And he's interested in how to do
that. That's why I listen to the conversation. He's playing with Manum.
But he had this question of, you know,
like in my apartment,
where we did the interview, I have like curtains,
like a black curtain, not this.
This is a Jason Manchin that we're in that I also.
But you basically just have, I have a black curtain, whatever.
It makes it really easy to set up a filming situation with cameras that we have here, these microphones.
He was asking, you know, what kind of equipment do you recommend?
I guess like your blog post is a good one.
I said, I don't recommend this is excessive and actually really hard to work with.
I wonder, I mean, is there something you would recommend in terms of equipment?
Like, is it, do you think like lapel mics, like USB mics? What do you, for my narration,
I use a USB mic for the streams I use to lapel mic. The narration, it's a blue Yeti.
I'm forgetting actually the name of the lapel mic,
but it was probably like a road of some kind.
But is it hard to figure out how to make the audio sound good?
Oh, I mean, listen to all the early videos on my channel
and clearly like I'm terrible at this.
For some reason, I just couldn't get audio for a while.
I think it's weird when you hear your own voice,
yeah, so here you're like, this sounds weird. And it's hard to notice it sounds weird because
you're not used to your own voice, or they're like actual audio artifacts, I play. So,
and then video is just for the lockdown, just the camera. Like you said, it was probably streaming
somehow through the... Yeah, there were two GH5 cameras, one that was mounted overhead over a piece of paper.
You could also use like an iPad or a wake-up tablet
to do your writing electronically,
but I just wanted the paper feel.
On the face, there's two, again, I don't know.
I'm like just not actually the one to ask this
because I like animate stuff usually,
but each of them has a compressor object
that makes it such that the camera output
goes into the computer USB, but it's compressed before it does that.
The live aspect of it, do you regret doing it live?
Not at all.
I do think the content might be much less sharp and tight than if it were something, even
that I just
recorded like that and then edited later.
But I do like something that I do to be out there to show like, hey, this is what it's
like raw.
This is what it's like when I make mistakes.
This is like the pace of thinking.
I like the live interaction of it.
I think that made it better.
I probably would do it on a different channel.
I think if I did series like that in the future, just because it's a different style, it's probably a different target audience and kind of keep
clean what three blue and brown is about versus the benefits of live lectures.
Do you suggest, like in this time of COVID that people like us or other educators try to go
like the shorter, like 20 minute videos that are like really
well planned out or scripted, you really think through, you slowly design, so it's not
live.
Do you see like that being an important part of what they do?
Yeah, well, I think teachers like Rest2Do is choose the small handful of topics that they're
going to do just really well.
They want to create the best short explanation of it in the world that will be one of those
handfuls in a world where you have commoditized explanation, right?
Most of the lectures should be done just normally.
I still put thought and planning into it.
I'm sure he's a wonderful teacher and like knows all about that.
But maybe choose those small handful of topics.
What's beneficial for me sometimes is if I do sample lessons
with people on that topic to get some sense of how other people think about it, let that
inform how you want to edit it or script it or whatever format you want to do.
Some people are comfortable just explaining it and editing later.
I'm more comfortable like writing it out and thinking in that setting.
Yeah, it's kind of, sorry, I tend to have to. It's a little bit sad to me to see how much knowledge is lost.
Like, just as you can mention, there's professors,
like we can take my dad, for example,
to blow up his ego a little bit, but he's a great teacher.
And he knows plasma, plasma chemistry, plasma physics,
really well, so he can very simply explain some beautiful,
but otherwise complicated concepts.
And it's sad that like if you Google plasma or like for plasma physics, like there's no videos.
And just imagine if every one of those excellent teachers like your father or like Russ,
even if they just chose one top one video.
One video. Just they're like, I'm going gonna make the best video that I can on this topic.
If every one of the great teachers did that,
the internet would be replete.
And it's already replete with great explanations,
but it would be even more so
with all the niche great explanations
and like anything you wanna learn.
And there's a self interest to it
for it in terms of teachers.
In terms of even, so if you take Ross, for example,
it's not that he's teaching something,
like he teaches his main thing,
his thing he's deeply passionate about. And from a selfish perspective, it's also just
like, I mean, it's a, it's a, it's like publishing a paper in a really, like nature has like
letters, like accessible publication, it's just going to
guarantee that your work, that your passion is seen by a huge number of people.
Whatever the definition of huges doesn't matter. It's much more than it otherwise
would be. And it's those lectures that tell early students what to be
interested in. At the moment, I think students are disproportionately interested
in the things that are well represented on YouTube.
So to any educator out there, if you're wondering,
hey, I want more like grad students in my department,
like what's the best way to recruit grad students?
It's like make the best video you can
and then wait eight years.
And then you're gonna have a pile of like excellent grad
students for that department.
And one of the lessons I think your channel teaches
is there is appeal of explaining just something
beautiful, explaining it cleanly, technically,
not doing a marketing video about why topology is great.
There's people interested in this stuff.
I mean, one of the greatest channels,
like Matt, it's not even a
math channel, but the channel with greatest math content is Vsus. You're like interviewed. If
imagine you were to propose making a video that explains the Bannock-Tarsky paradox,
substantively, right? Not, not shying around. It may be not describing things in terms of,
like, the group theoretic terminology that you'd usually seen in paper, but the actual results that went into this idea of like breaking a part of
sphere, proposing that to like a network TV station, saying, yeah, I'm gonna,
I'm gonna do this in-depth talk of the Benochtarski paradox. I'm pretty sure it's
gonna reach 20 million people. It's like get out of here. Like no, no one cares
about that. No one's interested in anything even anywhere near that.
But then you have Michael's quirky personality around it.
And just people that are actually hungry for that kind of depth, then you don't need the
approval of some higher network.
You can just do it and let the people speak for themselves.
So I think, if your father was to make something on plasma physics, or if we were to have
like, underactualized robotics, that would underactuated.
Underactuated. Yes, not underactualized.
Plenty actualized underactuated robotics.
And most robotics is underactualized car.
So even if it's things that you might think are niche, I bet you'll be surprised by how many people
actually engage with it really deeply.
Although I just psychologically watching them,
I can't speak for a lot of people,
I can speak for my dad, I think there's a little bit
of a skill gap, but I think that could be overcome.
That's pretty basic.
No, none of us know how to make videos when we start.
The first thing I made was terrible in a number of respects.
Look at the earliest videos I did in the YouTube channel,
except for Captain Disillusion.
And they're all like terrible versions of whatever they are now.
But the thing I've noticed, especially like with world
experts, is it's the same thing that I'm sure you went through,
which is like fear of like embarrassment.
Like they definitely, it's the same reason,
like I feel that anytime I put out a video,
I don't know if you still feel that,
but like, I don't know, it's this imposter syndrome,
like who am I to talk about this?
And that's true for like even things
that you've studied for like your whole life.
I don't know, it's scary to post that on YouTube.
It is scary.
I honestly wish that more of the people who had that
modesty to say, who am I to post this,
were the ones actually posting it.
That's right.
I mean, the honest problem is like a lot of the educational
content is post-play people who,
like we're just starting to research it two weeks ago and are on a certain schedule and who maybe should think like who am I to explain,
choose your favorite topic, quantum mechanics or something. And the people who have the self-awareness
to not post are probably the people also best positioned to give a good honest explanation of it. That's why there's a lot of value in a channel like NumberFile or they basically trap
a really smart person and force them to explain stuff on a branch, sheet of paper.
So, but of course, that's not scalable as a single channel. If there's anything beautiful that
it could be done as people take it in their own hands educators.
Which is again circling back. I do think the pandemic will serve to force a lot of people's hands. You're going to be making online content anyway. It's happening, right? Just hit that
publish button and see how it goes. Yeah, see how it goes. The cool thing about YouTube is it might not go for a while, but like 10 years later,
right? Yeah. It'll be like this, the thing, these people don't understand with YouTube, at
least for now, at least that's my hope with it is it's a leg, it's literally better than
publishing a book in terms of the legacy. It will live for a long, long time. Of course, it's one of the things,
I mentioned Joe Rogan before, it's kind of, there's a sad thing because I'm a fan. He's moving
to Spotify. Yeah, nine digit numbers will do that to you. Yeah. But he doesn't really, he's
one a person that doesn't actually care about money much about money. Like, having talked to him, it wasn't because of money.
It's because he legitimately thinks that they're going to do like a better job.
So from his perspective, YouTube, you have to understand what they're coming from.
YouTube has been cracking down on people who they, you know, Joe Rogan
talks to Alex Jones in conspiracy theories and stuff. And YouTube is really like careful
of that kind of stuff. And that's not a good feeling. Like, and Joe doesn't feel like YouTube
is on his side. You know, he's often has videos that they don't put in trending that like, obviously should be in trending
because they're nervous about like,
you know, if this content is this content going to,
you know, upset people that all that kind of stuff
have misinformation.
And that's not a good place for a person to be in
and Spotify is giving them,
we're never going to censor you we're never going to do that but the
reason I bring that up whatever you think about that I personally think as bullshit because podcasts
things should be free and not constrained to a platform it's pirate radio with the hell you can't as
much as I lost Spotify you can't just you can't put fences around it.
But anyway, the reason I bring that up is Joe's gonna remove his entire library from YouTube.
Whoa, really?
That's a cool one.
His full length, the clips are gonna stay,
but the full length videos are all,
I mean, me private or deleted, that's part of the deal.
And that's the first time where I was like,
oh, YouTube videos might not live forever.
Things you find, like, okay.
This is why you need IPFS or something
where it's like, if there's a content link,
are you familiar with the system at all?
Right now, if you have a URL that points to a server,
there's like a system where the address points to content
and then it's like distributed.
So you can't actually delete what's at address
because it's content addressed.
And as long as there's someone on the network
who hosts it, it's always accessible
that the address that it once was.
But I mean, that raises a question.
I'm not gonna put you on the spot,
but like somebody like Vsauce, right?
Spotify comes along and gives him,
let's say, $100 billion.
Okay, let's say some crazy number
and then removes it from YouTube, right?
It's made me, I don't know.
For some reason I thought YouTube is forever.
I don't think it will be.
I mean, you know, another variant that this might take
is like that, you know, you fast forward 50 years
and, you know, Google or Al alphabet isn't the company that it once
was and it's kind of struggling to make ends meet and it's been supplanted by whoever wins
on the AR game or whatever it might be.
And then they're like, you know, all of these videos that we're hosting are pretty costly.
So we're just, we're going to start deleting the ones that aren't watched that much and
tell people to like try to back them up on their own or whatever it is.
Or even if it does exist in some form forever, it's like if people are not habituated to
watching YouTube in 50 years, they're watching something else, which seems pretty likely,
like it would be shocking if YouTube remained as popular as it is now indefinitely into
the future. So it won't be forever.
It makes me sad still, but because it's such a nice, it's like just like you said, of
the canonical videos.
Sorry, I don't mean didn't know.
Do you know, you should get Juan Bennett on the thing and then talk to him about permanence.
I think you would have a good conversation.
Who's that?
So he's the one that founded this thing called IPFS that I'm talking about. And if you have him talk about basically what you're describing like, oh, it's
said that this isn't forever, then you'll get some articulate, pontification around it. Yeah.
It's like been pretty well thought through. But yeah, I do see you too, just like you said,
as a place, like what your channel creates, which is like a set of canonical videos on a topic. Now, others could create
videos on that topic as well, but as a collection, it creates a nice set of places to go
if you're curious about a particular topic. And it seems like
coronavirus is a nice opportunity to put that knowledge out there in the world
at MIT and beyond.
I have to talk to you a little bit about machine learning,
deep learning, and so on.
Again, we talked about last time.
You have a set of beautiful videos on neural networks.
Let me ask you first, what is the most beautiful aspect
of neural networks and machine learning to you?
Like, for making those videos, from watching how they feel disavolving,
is there something mathematically or an applied sense just beautiful to you about them?
Well, I think what I would go to is the layered structure and how you can have,
we'll feel like qualitatively distinct things happening going from one layer to another.
But that are following the same mathematical rule because you look at it as a pieceizations that Chris Ola has done with respect to
like convolutional nets that have been trained on ImageNet trying to say, what does this neuron do?
What does this family of neurons do? What you can see is that the ones closer to the input side
are picking up on very low-level ideas like the texture, right? And then as you get further back,
you have higher-level ideas like what is the where the eyes in this picture? And then how do the eyes form like an animal as this animal, a cat,
or a dog or a deer? You have this series of qualitatively different things happening even though
it's the same piece of math on each one. So that's a pretty beautiful idea that you can have like a
generalizable object that runs through the layers of abstraction, which in some sense constitute
intelligence is having those many different layers of an understanding to something.
Yeah, a form of abstractions in an automated way.
Exactly.
It's automated abstracting, which I mean, that just feels very powerful.
And the idea that it can be so simply mathematically represented.
I mean, a ton of like and mild research seems a little bit,
like you do a bunch of ad hoc things,
then you decide which one worked,
and then you retrospectively come up with the mathematical reason
that it always had to work.
But who cares how you came to it?
When you have that elegant piece of math,
it's hard not to just smile, seeing work in action.
Well, and when you talked about topology before,
one of the really interesting things is as beginning to be investigated under kind of
the field of like science and deep learning, which is like the craziness of the surface
that is trying to be optimized in your own networks.
I mean, the amount of local, minimal local optimal there is in these surfaces.
And somehow a dumb gradient descent algorithm is able to find really good solutions. That's
like, that's really surprising.
Well, so on the one hand it is, but also it's like not, it's not terribly surprising that
you have these interesting points that exist when you make your space so high dimensional.
Like GPT-3, what did it have?
175 billion parameters.
So it doesn't feel as mesmerizing to think about, oh, there's some surface of intelligent
behavior in this crazy high dimensional space.
It's like there's so many parameters that, of course, but what's more interesting is
like, how is it that you're able to efficiently get there?
Which is maybe what you're describing that something as dumb as gradient descent does
it. But like the reason the gradient descent works well with neural networks and not just,
you know, choose however you want to parameterize this space and then like apply gradient descent
to it, is that that layered structure lets you decompose the derivative in a way that makes
it computationally feasible. Yeah, it's just that there's so many good solutions, probably infinitely, infinitely many
good solutions, not best solutions, but good solutions.
That's what's interesting.
It's similar to Stephen Wolfram as this idea of like the, if you just look at all space
of computations, of all space of
basically algorithms, that you'd be surprised how many of them are actually intelligent.
Like if you just randomly pick from the bucket, that's surprising.
We tend to think like a tiny, tiny minority of them would be intelligent, but his sense
is like, it seems weirdly easy to find computations
that do something interesting.
Well, okay, so that from like a Comma Gore of Complexity standpoint, almost everything
will be interesting.
What's fascinating is to find the stuff that's describable with low information, but still
does interesting things.
Like one fun example of this, you know,
Shannon's noisy coding in theorem,
noisy coding theorem and information theory.
That basically says, if I wanna send some bits to you,
maybe some of them are gonna get flipped,
there's some noise along the channel,
I can come up with some way of coding it
that's resilient to that noise that's very good.
And then he quantitatively
describes what very good is. What's funny about how he proves the existence of good error correction
codes is rather than saying like here's how to construct it, or even like a sensible non-constructive
proof. The nature of his non-constructive proof is to say, if we chose a random encoding, it would be
almost at the limit, which is weird, because
then it took decades for people to actually find any that were anywhere close to the limit.
And what his proof was saying is choose a random one, and it's like the best kind of encoding
you'll ever find.
But what that tells us is that sometimes when you choose a random element from this ungodly
huge set, that's a very different task from finding an efficient way to actively describe it. Because in that case, the random element
to actually implement it as a bit of code, you would just have this huge table of like telling
you how to encode one thing into another that's totally computationally infeasible. So on the
side of like how many possible programs are interesting in some way. It's like, yeah, all tons of them.
But the much, much more delicate question is when you can have a low information description of something that
still becomes interesting. And thereby, this kind of gives you a blueprint for auto-engineer,
that kind of thing. Right. Yeah. Okay. Yes, there is another good instance there where it's like,
yeah, a ton of things are hard to describe. But how do you have ones that have a simple set of
governing equations that remain like arbitrarily hard to describe?
Well, let me ask you, you mentioned GPT-3.
It's interesting to ask, what are your thoughts about the recently released OpenAI GPT-3 model
that I believe is already trying to learn how to communicate like Grant Sanison?
You know, I think I got an email there to go about someone who wanted to try to use GPT
three with Manum, where you would like give it a high level description of something.
And then it'll like automatically create the mathematical animation, like trying to put
me out of a job here.
I mean, you probably won't put you out of a job, but it'll create something visually
beautiful for sure.
I would be surprised if that worked as stated, but maybe there's like variance of it that
you can get to.
I mean, like a lot of those demos, it's interesting.
I think there's a lot of failed experiments, like depending on how you prime the thing,
you're going to have a lot of failed.
I'm certainly with code and with program synthesis, most of it won't even run.
But eventually, I think if you pick the right examples, you'll be able to generate something
cool. And I think that even that's good enough, even though if you're being very selective,
it's still cool that something can be generated.
Yeah, that's huge value.
I mean, think of the writing process.
Sometimes a big part of it is just getting a bunch of stuff on the page,
and then you can decide what to whittle down to.
So if it can be used in a man-machine symbiosis
where it's just giving you a spew of potential ideas
that then you can refine down.
It's serving as the generator,
and then the human service is the refiner.
That seems like a pretty powerful dynamic.
Yeah. Have you gotten a chance to see any of the demos like on Twitter? Is there a favorite you've seen?
Oh, my absolute favorite. Yeah. So Tim Blay, who runs a channel called alcapel science, he was like tweeting a bunch about playing with it.
And so GPT-3 was trained on the internet from before COVID. So in a sense,
it doesn't know about the coronavirus. So what he seated it with was just a short description
about like a novel virus emerges in Wuhan, China and starts to spread around the globe. What
follows is a month by month description of what happens. January colon. Right? That's what he sees it with. So then what GPDGenerates is like January
then a paragraph of description February and such.
And it's the funniest thing you'll ever read
because it predicts a zombie apocalypse,
which of course it would because it's drained
on like the internet data and some of the stories.
But what you see unfolding is a description of COVID-19
if it were a zombie apocalypse. And like the
early aspects of it are kind of shockingly in line with what's reasonable. And then it gets
out of the kitchen so quickly. And the other flip side of that is I wouldn't be surprised
if it's onto something at some point here. You know, 2020 has been full surprise.
But we know it's like we might all be in like this crazy militarized zone as it predicts just a couple months off.
Yeah, I think it's definitely an interesting tool
of storytelling.
It has struggle with mathematics, which is interesting,
or in just even numbers.
It's not able to generate like patterns,
you know, like you give it,
like five digit numbers and it's not able to figure out the sequence, you know, or like I didn't look in too much, but I'm talking about like sequences like
the Fibonacci numbers and to see how far I can go, because obviously it's leveraging stuff from
the internet and it starts to lose it, but it is also cool that I've seen it able to generate some interesting patterns that are mathematically correct.
Yeah, I honestly haven't dug into like what's going on within it in a way that I can speak
intelligently to.
I guess it doesn't surprise me that it's bad at numerical patterns because maybe I
should be more impressed with it, but that requires having a weird combination
of intuitive and formulaic worldview.
So you're not just going off of intuition
when you see Fibonacci numbers.
You're not saying intuitively,
what do I think we'll follow the 13?
I've seen patterns a lot where 13s are followed by 21s.
Instead, the way you're starting to see a shape of things
is by knowing what hypotheses to test, where you're saying, oh, maybe it's generated based
on the previous terms, or maybe it's generated based on multiplying by a constant, or whatever it is,
you have a bunch of different hypotheses, and your intuitions are around those hypotheses,
but you still need to actively test it. And it seems like GPT-3 is extremely good at
test it. And it seems like GPT-3 is extremely good at, like, that sort of pattern matching recognition that usually is very hard for computers, that is what humans get good at through expertise
and exposure to lots of things. It's why it's good to learn from as many examples as you
can, rather than just from the definitions, it's to get that level of intuition. But to
actually concretize it into a piece of math, you do need to test
your hypotheses.
And if not prove it, have an actual explanation for what's going on, not just a pattern
that you've seen.
And then the flip side to play devil's advocate, that's a very kind of probably correct, intuitive
understanding of just like we said, a few layers creating abstractions,
but it's been able to form something that looks like a compression of the data that it's seen
that looks awfully a lot like it understands what the heck is talking about.
Well, I think a lot of understanding is like I don't mean to denigrate pattern recognition.
Pattern recognition is most of understanding and it's super important and it's super hard.
And so, like, when it's demonstrating this kind of real understanding, compressing down
some data, like that might be pattern recognition at its finest.
My only point would be that, like, what differentiates math, I think, to a large extent is that
the pattern recognition isn't sufficient,
and that the kind of patterns that you're recognizing are not like the end goals, but instead
they're the little bits and paths that get you to the end goal.
That's certainly true for mathematics in general.
It's an interesting question if that might, for a certain kinds of series of numbers,
it might not be true.
Like you might, because that's a basic,
like Taylor's, like certain kinds of series,
it feels like compressing the internet
is enough to figure out,
because those patterns in some form appear
in the text somewhere.
Well, I mean, there's all sorts of wonderful examples of false patterns in math, where one
of the earliest videos I put on the channel was talking about, you can kind of dividing
a circle up using these chords, and you see this pattern of one, two, four, eight, sixteen.
I was like, oh, you're pretty easy to see what that pattern is.
It's powers of two.
You've seen it a million times.
But it's not powers of two.
The next term is 31.
And so it's like almost a power of two, but it's not powers of two. The next term is 31. And so it's like almost a power
of two, but it's a little bit shy. And there's actually a very good explanation for what's
going on. But I think it's a good test of whether you're thinking clearly about mechanistic
explanations of things, how quickly you jump to thinking it must be powers of two. Because
the problem itself, there's really no good way to,
I mean, there can't be a good way to think about it
as like doubling a set because ultimately it doesn't.
But even before it starts to,
it's not something that screams out
as being a doubling phenomenon.
So at best, if it did turn out to be powers of two,
it would have only been so very subtly.
And I think the difference between like, you know,
a math student making the mistake
and a mathematician who's experienced
seeing that kind of pattern, is that they, they'll have
a sense from what the problem itself is whether the pattern that they're observing is reasonable
and how to test it.
And like, I would just be very impressed if there was any algorithm that was actively accomplishing
that goal.
Yeah, like a learning based algorithm.
Yeah, like a learning based algorithm.
Yeah, like a little scientist, I guess, basically. Yeah, it's a fascinating thought
because the GPT-3, these language models
are already accomplishing way more than I've expected.
So I'm learning not to doubt.
But I bet we'll get there.
Yeah, I'm not saying I'd be impressed,
but like, surprised, like I'll be impressed,
but I think we'll get there on
Algorithms doing math like that
So one of the
amazing things you've done for the world is
To some degree open sourcing the tooling that you used to make your videos
with Madam
This Python library
Now it's quickly evolving because I think you're inventing new things every time you make a video with Madam, this Python library.
Now it's quickly evolving because I think you're inventing new things every time you make
a video.
In fact, I've been working on playing around with something.
I wanted to do like an ode to 3 blue on brown, like I love playing Hendrix.
I wanted to do like a cover, you know, of a concept I wanted to visualize and use Madam.
And I saw that you had like a little piece of code on
like Mobius strip. I tried to do some cool things with spinning
a Mobius strip, like continue twisting it, I guess, is the
term. And it was easier to, it was tough. So I haven't
figured out, yeah, well, so I guess the question I want to ask is so many people love it that you've put
that out there.
They want to do the same things I do with Hendrix.
I want to cover it.
They want to explain an idea using the tool, including Russ.
How would you recommend they try to, I'm very sorry, they try to go, they try to go
by about it.
And what kind of choices should they choose to be most effective?
That I can answer.
So I always feel guilty if this comes up because I think of it like this crappy tool that's
like a math teacher who put together some code, people asked what it was so they made it
open source and they kept scrapping it together.
And there's a lot of things about it that make it harder to work with than it needs to be
that are a function of me not being a software engineer.
I've put some work this year trying to make it better and more flexible
that it's still just kind of like a work in process.
One thing I would love to do is just get my act together about
properly integrating
with what the community wants to work with and what stuff I work on and making that not
like deviate.
And just like actually fostering that community in a way that I've been like shamefully
neglected for love.
So I've just always guilty if it comes up.
So let's put that guild aside.
Okay, great.
Send like, I pretend like it isn't terrible for someone like Russ.
I think step one is like,
make sure that what you're animating should be done so
programmatically,
because a lot of things maybe shouldn't.
Like, if you're just making a quick graph of something,
if it's a graphical intuition that maybe has a little
motion to it, use Desmos, use Grapher, use Geojibra,
use Mathematica,
certain things that are like oriented around Grafford.
Geogebra is kind of cool.
I think that's the plan.
It's amazing.
You can get very, very far with it.
And in a lot of ways, it would make more sense
for some stuff that I do to just do in Geogebra.
But I kind of have this cycle of
like, you can try to improve Manum by doing videos and such.
So do as I say, not as I do.
The original thought I had in making Manum
was that there's so many different ways
of representing functions other than graphs,
in particular things like transformations,
like use movement over time to communicate relationships
between inputs and outputs instead of like
extramarital direction and y direction,
or like vector fields or things like that.
So I wanted something that was flexible enough
that you didn't feel constrained
into a graphical environment. By graphical, I mean, like graphs
with like x coordinate y coordinate kind of stuff. But also make sure that you're taking
advantage of the fact that it's programmatic. You have loops, you have conditionals, you
have abstraction. If any of those are like well fit for what you want to teach to, you know,
have a scene type that you tweak a little bit based on parameters or to have
Conditional so that things can go one way or another or loops so that you can create these things of like arbitrarily increasing complexity.
That's the stuff that's like meant to be animated programmatically. If it's just like writing some text on the screen or shifting around objects or something like that,
things like that you should probably just use keynote.
You'd be a lot simpler.
So try to find a workflow that distills down that which should be
programmatic into Manum and that which doesn't need to be
into other domains.
Again, do as I say, not as I do.
I mean Python is an integral part of it.
Just for the fun of it, let me ask, what's your most and least favorite aspects of Python?
Ooh, most end least.
I mean, I love that it's like object-oriented and functional, I guess, that you can kind of
get both of those benefits for how you structure things.
So if you would just want to quickly whip something together, the functional aspects are nice.
It's your primary language, like for programmatically generating stuff.
Yeah, it's home for me. It's home. Yeah. Sometimes you travel, but it's home. Got it.
It's home. I mean, the biggest disadvantage is that it's slow. So when you're doing computationally
intensive things, either you have to like think about it more than you showed how to make it efficient
or just like takes long. Do you run into that at all, like with your work?
Well, so certainly old man, I'm as like way slower than it needs to be because of
how it renders things on the back and is like kind of absurd.
I've rewritten things such that it's all done with like shaders in such a way
that it should be just like live and actually like interactive while you're
coding it. If you want to, you have like a 3D scene you can move around. You can have elements respond to where your
mouse is or things. That's not something that user of a video is going to get to experience
because there's just a play button and a pause button. But while you're developing that can be nice.
So it's gotten better in speed in that sense, but that's basically because the hard work is being
done in the language that's not Python, but GLSL, right?
But yeah, there are sometimes when it's like a, there's just a lot of data that goes into
the object that I want to animate that, then it's just like Python is slow.
Well, let me ask, click, please ask, what do you think about the wireless operator if you're
familiar with it all?
The reason is interesting.
There's a new operator in Python 3.8. I find it psychologically interesting because the toxicity over it
led Guido to resign, the step down from it to be true. Is that actually true or was it like there's
a bunch of surrounding things that also, was it actually the walrus operator that, well, it was,
it was a, it was an accumulation of toxicity, but that was the, the most but that was the most toxic one.
Like the discussion, that's the most number of Python core developers that were opposed
to Guitars decision.
He didn't particularly, I don't think, carried about either way.
He just thought it was a good idea, just to put it where you approve it.
And like the structure of the idea of a BDFL is like, you listen here everybody out, you make a decision,
and you move forward.
And he didn't like the negativity that burdened him after that.
People like some parts of the benevolent dictator
for life mantra, but once the dictator does things different
than you want, suddenly, dictatorship doesn't seem so great.
Yeah, I mean, they still like that.
He just couldn't, because he truly is the bee
in the benevolent.
He really is a nice guy.
I mean, and I think he can't,
it's a lot of toxicity.
He's difficult.
It's a difficult job.
That's why Lanna's trouble.
This is perhaps the way he is.
You have to have a thick skin to fight off,
fight off the worrying masses.
It's kind of surprising to me how many people can
like threaten to murder each other over whether we should have braces or not or whether.
I'm like, it's incredible.
Yeah, I mean, that's my knee-jerk reaction to the wall of the software. It is like, I don't
actually care that much. Either way, I'm not going to get really passionate. My initial reaction
was like, yeah, this seems to make things more confusing to read. But then again, so does list comprehension until you're used to it. So like if there's a use for it, great, if not,
great. But like, let's just all calm down about our spaces versus tabs debates here and like
be chill. Yeah. To me, it just represents the value of great leadership, even in open source
communities. Doesn't represent that if he stepped down as a leader? Well, he fought for it.
No, he got it passed.
I guess, but I guess I could represent multiple things to it can represent like failed dictatorships
or it can represent a lot of things.
But to me, great leaders take risks, even if it, even if it's a mistake at the end, like
you have to make decisions.
The thing is, this world won't go anywhere.
Whenever there's a divisive thing, you wait until the division is no longer there.
That's the paralysis we experience with Congress and political systems.
It's good to be slow.
When there's indecision, when there's people disagree, it's good to take
your time, but like at a certain point in results in paralysis and you just have to make a decision.
The background of the site, whether it's yellow, blue or red, it can cause people to like
go to war over each other. I've seen this with design. People are very touch on color,
color choices. At the end of the day, just make a decision and go with
that. I think that that's what the waters operator represents to me. It represents the fighter pilot
instinct of like quick action is more important than just like carrying everybody out and really
think it through it because that's going to lead to paralysis. Yeah, like if that's the actual case that you know it's something we're consciously hearing
people's disagreement, disagreeing with that disagreement and saying he wants to move
forward anyway.
That's an admirable aspect of leadership.
So we don't have much time but I want to ask just because it's some beautiful mathematics involved. 2020 brought us a couple of in the physics world theories of everything.
Eric Weinstein kind of, it's been working for probably decades, but he put out this idea of
geometric unity or started sort of publicly thinking and talking about it more.
Stephen Wolfram put out his physics project,
which is kind of this hypergraph view of a theory of everything. Do you find interesting, beautiful
things to these theories of everything? What do you think about the physics world and sort of
the beautiful, interesting, insightful mathematics in that world, whether we're talking about quantum
mechanics, which you touched on in a bunch of your videos a little bit, like, a little
bit, like, just the mathematics involved, or the general relativity, which is more about
surfaces and topology, all that stuff.
Well, I think, as far as, like, popularized sciences concerned, people are more interested
in theories of everything than they should be.
Like, because the problem is whether we're talking about trying to make sense of Weinstein's
lectures or Wolfram's project, or let's just say like listening to Whitten talk about string
theory, whatever proposed path to a theory of everything, you're not actually going to
understand it.
Some physicists will, but like, you're just not actually going to understand the substance
of what they're saying. What I think is way, way more productive is to let yourself get
really interested in the phenomena that are still deep, but which you have a chance of
understanding. Because the path to getting to like even understanding what questions these
theories of everything are trying to answer involves like walking down that. I mean, I was
watching a video before I came here about
from Steve Mould talking about why sugar polarizes light
in a certain way.
So fascinating, like really, really interesting.
It's not like this novel theory of everything type thing,
but to understand what's going on there really requires
digging in in depth to certain ideas.
And if you let yourself think past what the video tells you
about what does circularly polarize light mean and things like that, it actually would get you to a pretty good
appreciation of like two state states and quantum systems in a way that just trying to
read about like, oh, what's the, what are the hard parts about resolving quantum field
theories with general relativity is never going to get you.
So as far as popularizing science is concerned, the audience should
be less interested than they are in the years of everything. The popularizers should be
less emphatic than they are about that. For actual practicing physicists, I might be the
case maybe more people should think about fundamental questions. But it's difficult to create
a three blue one brown video on the theory of everything.
So basically, we should really try to find the beauty and mathematics of physics by looking at concepts that are within reach.
Yeah, I think that's super important.
I mean, so you see this in math too with the big unsolved problems.
So like the clay millenniums, Riemann hypothesis.
Have you ever done a video on Fermat last year?
No, I have not yet.
But if I did, do you know what I would do?
I would talk about proving Fermat last year
in the specific case of N equals 3.
Is that still accessible though?
Yes, actually.
Barely.
Mathologer might be able to do a great job on this.
He's has a good job of taking stuff
that's barely accessible and making it. But the core ideas of proving it for N equals to be are hard,
but they do get you real ideas about algebraic number theory. It involves looking at a number field
that's, it lives in the complex plane. It looks like a hexagonal lattice and he start asking questions
about factoring numbers in this hexagonal lattice. So it takes a while, but I've talked about this sort of like lattice arithmetic in other
contexts.
And you can get to a okay understanding of that.
And the things that make Fermat's less theum hard are actually quite deep.
And so the cases that we can solve it for, it's like you can get these broad sweeps based
on some hard but like accessible bits of number theory.
But before you can even understand why the general cases
as hard as it is, you have to walk through those.
And so any other attempt to describe it would just end up
being like shallow and not really productive
for the viewers time.
I think the same goes for most like unsolved problem type things
where I think, you know, as a kid,
I was actually very inspired by the Twin Prime Conjecture. That like totally sucked me in. It's this thing that
was understandable. I kind of had this dream like, oh, maybe I'll be the one to prove the
Twin Prime Conjecture. And new math that I would learn would be like viewed through this lens
of like, oh, maybe I can apply it to that in some way. But you sort of mature to a point where you
realize that you should spend your brain cycles on problems
that you will see resolved,
because then you're gonna grow to see what it feels
like for these things to be resolved,
rather than spending your brain cycles on something
where it's not gonna pan out.
And the people who do make progress towards these things,
like James Maynard, is a great example here
of like young creative mathematician
who pushes in the direction of things
like the twin-primed from texture
rather than hitting that head on.
Just see all the interesting questions that are hard
for similar reasons but become more tractable
and let themselves really engage with those.
So I think people should get in that habit.
I think the popularization of physics should encourage
that habit through things like
the physics of simple everyday phenomena
because it can get quite deep. And yeah, I think, you know, that have it through things like the physics of simple everyday phenomena
because it can get quite deep.
I've heard a lot of the interest that people send me messages
asking to explain Mindstein's thing or asking to explain Wolfram's thing.
One, I don't understand them, but more importantly,
it's too big a bite to...
You shouldn't be interested in those, right?
The giant sort of ball of interesting ideas, there's probably a million of interesting
ideas in there that individually could be explored effectively.
And to be clear, you should be interested in fundamental questions.
I think that's a good habit to ask what the fundamentals of things are, but I think
it takes a lot of steps to...
Like certainly you shouldn't be trying to answer
unless you actually understand quantum field theory and you actually understand general relativity.
That's the cool thing about like your videos, people who haven't done mathematics.
Like if you really give it time, watch it a couple of times and like try to try to reason about it,
you can actually understand the concept of this being explained.
And it's not a coincidence that the things I'm describing aren't, like the most up-to-date
progress on the Raman hypothesis cousins or like there's context in which the analog
of the Raman hypothesis has been solved in like more discreet feeling finite settings
that are more well behaved.
I'm not describing that because it just takes a ton to get there and instead I think it'll
be like productive
to have an actual understanding of something that you can pack into 20 minutes.
I think that's beautifully put. Ultimately, that's where the most satisfying thing is when you
really understand, really understand. Build a habit of feeling what it's like to actually come to
resolution. Yeah. Yeah. As opposed to, which can also be enjoyable,
but just being in awe of the fact
that you don't understand anything.
Yeah, but it's not like, I don't know,
maybe people get entertainment out of that,
but it's not as fulfilling as understanding.
You won't grow.
Yeah.
And, but also just the fulfilling.
It really does feel good.
When you first don't understand something and then you do,
that's a beautiful feeling.
Hey, let me ask you one last,
last time we got awkward and weird about a fear of mortality,
which you made fun of me of,
but let me ask you on the other absurd question is,
what do you think is the meaning of our life,
of meaning of life? I'm sorry if I made fun of you about words.
No, you didn't. I'm just joking. It was great.
I don't think life has a meaning. I think like meaning I don't understand the question.
I think meaning is something that's described to stuff that's created with purpose.
There's a meaning to like this water bottle label and that someone created it with a purpose of conveying meaning. And there was one consciousness that wanted to get its ideas into another consciousness.
Most things don't have that property.
It's a little bit like if I ask you, what is the height?
So it's all relative.
You'd be like the height of what?
You can't ask what is the height without an object.
You can't ask what is the meaning of life without an
intentful consciousness putting it, I guess,
revealing I'm not very religious.
But the mathematics of everything seems kind of beautiful.
It seems like there's some kind of structure relative to
which you could calculate the height.
Well, but what I'm saying is I don't understand the question, what is the meaning of life,
and that I think people might be asking something very real, I don't understand what they're asking.
Are they asking like, why does life exist?
Like, how did it come about? What are the natural laws?
Are they asking, as I'm making decisions day by day for what should I do?
What is the guiding light that inspires like, what should I do?
I think that's what people are kind of asking. But also like why the thing that gives you joy about education, about mathematics, what the hell is that?
Like what?
Interactions with other people. Interactions with like-minded people I think is the meaning of in that sense.
Bringing others joy essentially. Like in something you've created, it connects with others
somehow, and the same in the vice versa. I think that is what when we use the word meaning to
mean, you sort of filled with the sense of happiness and energy to create more things. I have so
much meaning taken from this. That's what fuels my pump at least. So a life alone on a deserted island
will be kind of meaningless. You want to be alone together with someone. I think we're all alone
together. I think there's no better way to end a grant. You've been first time with talks.
It's amazing. Again, it's a huge honor that you make time for me. I appreciate talk with you.
Thanks for having me. Awesome. Thanks for listening to this conversation with Grand Sanderson and thank you to our sponsors,
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at Lex Friedman.
And now let me leave you with some words from Richard Feynman.
I have a friend who's an artist, and is sometimes taking a view, which I don't agree with very
well.
He'll hold up a flower and say, look how beautiful it is, and I'll agree.
Then he says, I as an artist can see how beautiful this is, but you, as a scientist,
take this all apart and it becomes a dull thing.
And I think he's kind of nutty.
First of all, the beauty that he sees is available to other people and to me too, I believe.
Although I may not be quite as refined aesthetically as he is, I can appreciate the beauty of a flower.
At the same time, I see much more about the flower than he sees.
I can imagine the cells in there, the complicated actions inside, which also have a beauty.
I mean, it's not just beauty at this dimension, at one centimeter, there's also beauty at
smaller dimensions.
The inner structure, also the processes.
The fact that the colors in the flower evolved in order to attract insects to pollinate
is interesting.
It means that insects can see the color.
It adds a question, does this aesthetic sense also exist in the lower forms?
Why is it aesthetic?
All kinds of interesting questions which the science knowledge only adds to the excitement,
the mystery and the all of the flower. It only adds to the excitement, the mystery and the all of a flower.
It only adds.
I don't understand how it subtracts.
Thank you.