Young and Profiting with Hala Taha - Dr. Fei-Fei Li: Turn AI Into Humanity's Greatest Ally, Not Its Biggest Threat | Artificial Intelligence | AI Vault
Episode Date: November 7, 2025Now on Spotify Video! As a Stanford AI scientist, Dr. Fei-Fei Li realized that artificial intelligence had advanced to a point where it was transforming society faster than most people could understan...d. Confronted with the ethical, social, and economic risks of this rapid growth, she felt a deep responsibility to guide AI toward serving humanity. This inspired her to co-found the Stanford Institute for Human-Centered AI, developing a framework that prioritizes humankind. In this episode of the AI Vault series, Dr. Fei-Fei shares how we can harness AI responsibly and design technology that enhances, not replaces, human potential. In this episode, Hala and Dr. Fei-Fei will discuss: (00:00) Introduction (02:33) The Evolution and Limits of Artificial Intelligence (09:56) How AI Models Like ChatGPT Are Trained (14:12) Dr. Fei-Fei’s Journey and Responsibility in AI (19:15) How Computer Vision Brings AI to Life (25:59) Ethical AI, Human Dignity, and the Future of Work (32:57) The Three Pillars of Human-Centered AI (35:10) Confronting Fears of AI in Action (39:59) AI in Business: How Entrepreneurs Can Thrive Dr. Fei-Fei Li is a professor of computer science at Stanford University and co-director of the Stanford Institute for Human-Centered AI. Her groundbreaking work in computer vision AI has shaped how machines see and understand the world. Dr. Fei-Fei is the author of The World's I See, a memoir that weaves together her personal journey with the history and development of artificial intelligence. Sponsored By: Indeed - Get a $75 sponsored job credit to boost your job's visibility at Indeed.com/PROFITING Shopify - Start your $1/month trial at Shopify.com/profiting. Quo - Get 20% off your first 6 months at Quo.com/PROFITING Revolve - Head to REVOLVE.com/PROFITING and take 15% off your first order with code PROFITING Merit Beauty - Go to meritbeauty.com to get your free signature makeup bag with your first order. DeleteMe - Remove your personal data online. Get 20% off DeleteMe consumer plans at to joindeleteme.com/profiting Spectrum Business - Visit Spectrum.com/FreeForLife to learn how you can get Business Internet Free Forever. Airbnb - Find yourself a cohost at airbnb.com/host Resources Mentioned: Dr. Fei-Fei's Book, The Worlds I See: bit.ly/WorldsISee Stanford Human-Centered AI Institute Website: hai.stanford.edu/ Active Deals - youngandprofiting.com/deals Key YAP Links Reviews - ratethispodcast.com/yap YouTube - youtube.com/c/YoungandProfiting Newsletter - youngandprofiting.co/newsletter LinkedIn - linkedin.com/in/htaha/ Instagram - instagram.com/yapwithhala/ Social + Podcast Services: yapmedia.com Transcripts - youngandprofiting.com/episodes-new Entrepreneurship, Entrepreneurship Podcast, Business, Business Podcast, Self Improvement, Self-Improvement, Personal Development, Starting a Business, Strategy, Investing, Sales, Selling, Psychology, Productivity, Entrepreneurs, AI, Artificial Intelligence, Technology, Marketing, Negotiation, Money, Finance, Side Hustle, Startup, Mental Health, Career, Leadership, Mindset, Health, Growth Mindset, AI Marketing, Prompt, Generative AI, AI for Entrepreneurs, AI Podcast
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Even as an AI scientist, I feel that I can hardly catch up with the progress of AI.
There's a quote from 1970s about AI.
The most advanced computer AI algorithm will still play a good chess move when the room is on fire.
Dr. Fay-Fei Lee is a professor of computer science at Stanford University,
as well as the co-director of the Stanford Institute for Human-Centered AI.
We're going to discuss how she's creating
eyes for AI with computer visioning.
There's just so much public discourse about AI,
and many of them are ill-informed, and that's dangerous.
Everything that has consciousness has eyes.
If AI starts to have eyes,
wouldn't it just be that they're living and sentient at that point?
AI as a technology can be used by the badness.
So from that point of view, I do have fear.
It can go very wrong.
If you don't know anything about AI,
It is important to educate yourself because...
What's up, Yap Gang?
Welcome back to another episode of our AI Vault series.
Joining me today is none other than the godmother of AI, Dr. Fay-Fei Lee.
She's a Stanford professor, co-director of the Human-Centered AI Institute,
and pioneering scientists behind ImageNet.
Dr. Lee believes that AI is a powerful tool to help us solve important problems,
and she believes that AI should empower and enhance our human well-being.
In this conversation, we'll talk about how computer vision models are trained, what they can and cannot do,
and why ethics and AI isn't optional. It's essential. You'll hear stories of how AI is already saving lives, spotting disease, and even helping in rescue missions, but also where we face risks and what guardrails we need if AI is going to work for people and not against them.
So grab your coffee, grab your notebooks, settle in, and join me for this incredible conversation with the godmother of AI, Dr. Fay-Fa-Lee herself.
Thank you, Hala. I'm very excited to join this show. Likewise, I'm so honored to talk to somebody like you, given all your credentials. In fact, Wired named you one of a tiny group of scientists, perhaps small enough to fit around a kitchen table, who's responsible for AI's recent remarkable advances. So it feels like AI is changing every day. There's new developments all the time. So my first question to you is, can you walk us through the development of AI? Like, what can it currently do now?
And what can't it do right now?
Yeah, great question.
It's true.
Even as an AI scientist, I feel that I can hardly catch up with the progress of AI, right?
So it is a young field of around 70 years old, but it's progressing really, really fast.
So what can I do right now?
First of all, it's already everywhere.
It's around us.
Another name for AI that is a little less of a hype name is machine learning.
It's really just mathematical models built by computer programs so that the program can iterate
and learn to make the model predict or decide on data better.
So it's fundamentally machine learning.
For example, if we shop on Amazon app, the kind of recommendation,
we get is through machine learning or AI.
If you go from place A to place B,
the algorithm that gets through the road,
to map out the path is machine learning.
If you go to Netflix, there is a recommendation
that's machine learning.
If you watch a movie, there is a lot of machine learning,
computer vision, computer graphics,
to make special effects, to make special effects,
to make animations, that's machine learning.
So machine learning and AI is already everywhere.
What cannot do?
Well, no machines today can help me to fold my laundry or cook my omelette.
It cannot take away complex human reasoning.
It cannot create in a way humans create in the combination of both reasoning, logic,
but also, you know, beauty, emotion.
There is a quote from 1970s about AI, and I think that quote still is true today.
It says that the most advanced computer AI algorithm will still play a good chess move when the room is on fire.
It's a quote to show that machines are programmed to do tasks, but it's an unlike,
humans, we have a much more fluid, organic, contextual, situational awareness of our own thinking,
our own emotion, as well as the surrounding. And that is not what AI is today.
So insightful. And I love that you said that it's sort of like an evolution of machine learning
because I always wondered, like, well, what's the difference between machine learning and
AI? It sounds pretty similar. So machine learning was almost like the basics of
of AI.
The tool of AI.
AI is, you know, it's a little bit, think about physics, right?
Physics in Newtonian time, the most important tool of physics was calculus,
and yet we call the field physics.
So artificial intelligence is a scientific field that is researching and developing technology
to make machines think like humans.
But the tools we use, the mathematical computer science,
tool is dominated by machine learning, especially neural network algorithms. So good. So AI is actually
fresh on my mind because two days ago I interviewed Dr. Stephen Wolfram. I don't know if you know him.
Mathematica? Yeah, he did the Wolfram project and computer language Wolfram. Yeah. So I just
interviewed him and we talked about ChatGBT and how ChatGPT works. And he was explaining to me
that when they were developing ChatGBTGBT, what was surprising is that they found out
that these like simple rules would would create all this complexity, that they could give
Chachypiti simple rules and then it could write like a human. And it turns out that we actually
still don't really understand how AI learns, which to me is like mind boggling. How did we create
something and yet we don't even know how it really works? Can you elaborate on that a bit?
Yeah, it really at the end of the day, there are things we understand. There are things we don't.
So it's not like completely we don't.
So it's neither a white box or black box.
I would call it a gray box.
And depending on your understanding of the AI technology,
it's either darker gray or lighter gray.
So the things we know is that it is,
it's neural network algorithm that is behind, say,
a chat GPT model or a large language model.
Of course, you hear the names of transformer models, sequence to sequence, and all that.
At the end of the day, these models take data, like document data, and it learns how the words
and sometimes even subwords, right, parts of words are connected with each other.
There are patterns to see, right?
If you see the word how, it tends to be followed by R, and then it tends to be followed by you.
So how are you is a frequently occurring sequence.
So that pattern is learned.
And once you learn enough in a big, huge neural network,
your ability to predict the next word when you're given a word is really,
really quite amazing, amazingly high to the point that it can converse,
like more or less like a human.
And because in the training data, it has so much.
knowledge, whether it's chemistry or movie reviews or, you know, geopolitical facts, it has
memorized all of them. And so it can give out very, very good answers. So those are the
things we know. We know how the algorithm works. We know it needs training. We know that
it's learning and predicting pattern. What we don't know is that because these models are huge,
there are billions and billions, hundreds of billions of parameters.
And then inside these models, there are these little nodes.
Each one of them have a little mathematical function that connects to each other.
So how do we know exactly how these billions and billions of parameters learn the pattern
and where is the pattern stored and why sometimes it hallucinates a pattern versus
it gives out a correct answer.
There is no, not yet precise mathematical explanation.
We don't know at the level of, there's no equation that can tell us, oh, I know exactly
why at this moment the chat GPT gives you the word, how are you versus how is he,
you know, so that's where the grayness come from.
these are large models with behaviors that are not precisely explained mathematically.
So for my understanding, these neural networks are made to sort of replicate how the human brain works,
basically.
I would now use the word replicate.
They're inspired.
It's inspired.
It's inspired.
It has resemblance.
For example, they're made by small neural nodes.
They're connected in hierarchies.
But human brains fundamentally work in a chemical-electrical way, the way the neuron-neuron
communication are very complex.
Sometimes it's through spike.
Sometimes the spike also releases chemicals.
You know, like there is just these kind of nuanced function and also the connectivity, how
one area of the brain is connected to others, are not the same as neural network.
So we're inspired, but not replicate.
That's a really, really helpful distinction right there.
Yes.
So talk to us about how AI models are trained.
Like how does AI learn typically?
So typically, AI model is given a vast amount of data.
And then some of the data are labeled with human supervision.
Like if I give AI models millions and millions of images, some are labeled cats, dogs,
microwaves, chairs, and all that.
And they learn to associate the pattern with the labels.
Sometimes in recent, especially in language domain, what we call self-supervision.
You give it millions and millions, trillions of documents.
And it just keeps learning to predict the next syllabus, the next word,
because all the training data is showing you all these sequences of words.
And there you don't have to give additional label.
You just give the documents.
And that's called self-supervised learning.
So whether it's supervised with additional labels or supervised without additional
label is self-supervised, it starts with data.
Now, data goes into the algorithm.
and the algorithm has to have an objective to learn.
Typically, in the language model, the objective is to predict the next syllabus as accurately as the training data shows you.
In the case of images with cat labels, for example, is to predict an image that has a cat with the right label cat instead of the wrong label microwave.
And then because it has this objective, it, if during training, if it makes a mistake, you know, if I didn't predict the next word right, or if I label the cat wrong, it goes back and iterates and updates its parameters based on the mistake.
It has some mathematical rules or learning rules to update.
And then it just keeps doing that till it, you know, when humans ask it to stop or it no longer updates, you know, whatever stop criteria.
And then you're left with a ginormous neural network that's already trained by ginormous amount of data.
And in that neural network, it has all the parameters, the mathematical parameters that's already learned.
Now, you can take this and now you have a new sentence.
come in. And then it goes through this model, because it has all the parameter it has learned,
it predicts what I should say given a new sentence. Like, hello, halla, how is your breakfast
today? And it would predict I had a great breakfast today or whatever. So that's how it's
going to be used. So it's so interesting. Like basically like chaty-b-t, it's just predicting the
next word and the next word and the next word and the next word based on all the different.
patterns and trying to figure out what makes sense to come next.
So that's super clear.
What I don't understand with something like ChatGBT, GBT, is that it's so good at
writing human language, but it's known to make, like, simple math mistakes, right?
How is it possible that it's good at doing human language, but then on math, for example,
it's known to make, like, stupid mistakes?
It's because math, the way we do math in human mind is different from the way we do math.
do language. Language has a very clear pattern of sequence to sequence. Like I say the word how,
you know, the word R and you typically follow, but sometimes it doesn't, right? So I have to learn
these patterns. But if I say the word one plus, it's not like five typically follows or two
typically follows, right? Like there is actually a deeper rule of one plus two equals three. Of course,
When it has seen enough of that, it should predict three for today's language model.
And actually, it does.
This is too simple an example.
But the point is that math takes a higher level of reasoning than just following statistical patterns.
And large language model by in large follows statistical patterns.
So some of the mathematical reasoning is lacking.
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And you say that the worlds you see are in different dimensions.
So can you talk to us about why you titled the book this way?
Yeah, this title came about after I finished writing the book.
And I realized the journey of writing the book is really peeling into different experiences.
There is the world of AI that I, you know, experience as a scientist.
The book is the coming of age, of a year.
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But there is also the world as an immigrant, right?
Like I go through life in different parts of the world, and how do I handle or go through
that?
And then there is, like, more subtle but profound world like learning to be a human.
I know that sounds silly, but especially in the context of an AI scientist, it's really
important part of the book is exploring my journey of living and taking care of alien parents
and how that experience, you know, build my own character, how we help each other, support
each other, and at the towards the end of the book, how that experience made me see my science
in a different light compared to maybe other scientists who haven't had this human, very profound
human experience. So it really is different worlds that I experience and it's blended into the book.
I love that. And I love how you call it a science memoir. And so you say that you're involved in the
science of AI, but you're also involved in the social aspect of AI. So what do you mean by the
social aspect exactly? I started in AI as a very personal journey. It's just a young science nerd.
loves an obscure niche, you know, like nobody knows, field.
But I'm just fascinated in a private way that how do we make machines think?
How do we make machines see?
And that I was happy.
And I would have been content with that, you know, through the rest of my life, honestly.
Even if nobody in the world has heard of AI, I would be happily in my lap being a scientist.
But what really changed is around 2017, 2018, I felt like me as a scientist and the tech world
woke up and realized, oh, wow, this technology has come to a maturation point that is impacting
society.
And because it's AI, it has so much, it's inspired by human thinking, it's inspired by human
behavior. It has so much human implication at the individual level as well as the society level.
So as a scientist, I feel I was thrusted into a messier reality that I never really realized.
Now, I have a choice. A lot of my fellow scientists would just continue to stay in the lab,
which I think is very admirable and respectful, respected.
and still just focused on the size.
But my other choice is to recognize as a scientist, as an educator, as a citizen, I have social responsibility.
My responsibility is more focused on what I need to educate young people.
And while I can teach them equations and coding and all that, I also want to share with
what the social implications are of this size, because it's my responsibility. I also
has a responsibility to communicate with the world, because even starting quite a few years ago,
now it's even worse because of the large language model. There's just so much public discourse
about AI, and many of them are ill-informed, and that's dangerous, right? That's unfair, that's dangerous.
it tends to harm people who are not in the position of power, and I have a responsibility
to communicate.
And then third, I also feel Stanford, especially as one of America's higher institutions,
have a responsibility to help make the world better, to help our policymakers, to help civil
society to help companies, to help entrepreneurs, to educate, to inform, and to give insights.
And that, all this is the messiness of meeting the real world. And I feel I shouldn't shy away
from that. I should take on that responsibility. Yeah, for sure. You're one of the most
knowledgeable people about AI. We need you to tell us what are the, you know, the roadblocks that we
need to look out for and how can we make sure that we use AI for good and not for bad and
take the steps to do that. So let's talk about computer vision next. So you are a computer vision
AI scientist. So what first got you interested in this and what is computer vision AI?
Yeah. Well, in one sentence, computer vision AI is part of AI. Is the specific part of AI that makes
computer see and understand what it sees. And this is very profound. When humans open our eyes,
we see the world not only in colors and shades, we see it in meaning, right? Like I'm looking at my
messy desk right now. It has cell phones. It has, you know, a cup. It has, you know, monitor. It has,
you know, my allergy medicine. And it's, it has a lot of meaning. And more than that, we can also
construct, you know, especially even if we're not the best artists, we, you know, humans since
the dawn of civilization have been drawing about the world, has been sculpting about the world,
has been building bridges and monuments, and has created the visual and the world. So the ability
to see and visually create and understand is so innate in humans. And wouldn't it be great if
computers have that ability? And that is what computer vision is. So interesting. And, you know,
when I think about consciousness, everything that has consciousness has eyes. And I always,
this always, like, freaked me out, like bugs have eyes, fish have eyes. And the eyes look like
our eyes, like fish eyes, look like our eyes. And that's so, like, scary, weird, the fact that
all these living things have eyes. If AI starts to have eyes, wouldn't it just be that they're
living and sentient at that point? So, first of all, you touched on something really, really
profound, because visual sensing is one of the oldest, evolutionarily speaking. So 540 million years ago,
animals to start it developing ice. It was a pinhole, you know, that collects light,
but it evolved into the kind of ice, the fish, the octopus, the elephant, the eyes we have.
So you actually touch on something really profound. This is extremely innate, embedded,
into our development of our intelligence.
And of course, you also ask a philosophically really profound question.
Everything has eyes as consciousness.
Actually, a neuroscientist or neurophilosopher will probably, you should invite one to debate
with you.
For example, does a tiny shrimp using eyes doing things, does it have consciousness or it has
just perception?
I don't have an answer, honestly.
How do you measure consciousness?
Just because the shrimp can see the rock and climb around,
does it mean it's just a sensory reflex or it has a deeper consciousness?
I don't know.
So just because machines have eyes, does it develop consciousness?
It's a topic we can talk about,
but I just want to make sure that we are at least on the same page
that just seeing itself doesn't mean it has consciousness.
But the kind of visual intelligence we have,
like I just described, to understand, to create,
to build, to represent a world with such visual complexity,
at least in humans, it does take consciousness.
Yeah, it's, every,
that you're saying is just so interesting. Even that shrimp example, it's true. It's like even though
it's like navigating, swimming around rocks and whatever, it doesn't mean that it's actually conscious.
It could be to your point. Just all like reflexes. And that makes it a little less scary if machines end up having eyes.
So how are you replicating biological processes like vision in computers now? Yeah. So again, I think a lot of
computer vision is biologically inspired, and it's inspiring in at least two areas.
One is the algorithm itself, so the whole neural network algorithm, in fact, back in the 1950s and
60s, the computer scientists were inspired by vision neuroscientists. When they were studying
cat, mammalian visual system, they discover the kind of hierarchical neurons, and it's
Because of that, it inspired computer scientists to build neural network algorithms.
So the visual, the animal visual structure in the brain is very much the foundational inspiration to today's AI technology.
So that's one area.
The second inspiration come from functionality, right?
The ability to see, what do we see?
Like, humans are not that good at seeing color, for example.
We see color rich enough, but the truth is there's infinite wavelength that defines infinite colors,
but we have only probably dozens of colors.
So clearly we're not seeing just colors in the same way like if I use a machine to register wavelength.
But on the other hand, we see meaning, we see emotion, we see all these things.
And it's just incredibly inspiring that we can build.
these functionality into machines. And that is another part of biological inspiration. It's the
functional inspiration. And with that, I think there is a lot to imagine. For example,
you know, first of a visually impaired patients, if we help them with artificial visual system
to understand the world, rich world we see, it will be tremendously helpful.
for machines, right?
I don't know, do you have a Rumba in your house?
Yeah, yeah.
Right.
So it almost is kind of seeing, it's not seeing the same way we are,
but it's kind of seeing and mapping.
But one day I hope I not only have a Rumba,
I also have a cleaning robot, right?
Like then it needs to see my house in a much more complex way.
And then the most important, right, for example, rescue robots,
There are so many situations that puts humans in danger.
Or humans are already in danger and you want to rescue humans,
but you don't want to put more humans in danger.
Think about that Fukushima nuclear leak incident.
People had to really sacrifice to go in there to stop the leak and all that.
It would be amazing if robots can do that.
And that needs seen.
It needs visual intelligence in much deeper ways.
That's so interesting, and it's helpful for you to say that because my first reaction is like, why are we giving robots this much power or like losing our power as humans?
But to your point, it can help humans.
And I know that's a whole, like what you talk about is human-centered AI, right?
So can you define what human-centered AI is in your own words?
Yeah, human-centered AI is a framework of developing and using AI.
And that framework puts human values, human dignity in the center so that we're not developing
technology that's harmful to humans.
So it's really a way to see technology or use technology in a benevolent way.
Now, I'm not naive.
I know technology is a double-edged sword.
I know that double-edged sword can be used intentionally.
or unintentionally in bad ways.
So human-centered AI is really trying to underscore
that we have a collective responsibility
to focus on the good development and good use of AI.
And it was really inspired by my timing industry
when I was on sabbatical as a professor,
is seeing the incredible business opportunities.
that is already opening the floodgate of AI back in 2018.
And knowing that when business started to use AI,
it impacts lives of every individual, right?
So I went back to Stanford and together with my colleagues,
we realized as a thought leadership institution,
as Americans' higher education plays to educate the next generation students,
And we should really have a point of view to develop and stay at the forefront of the development
of this technology.
This is how we formulated the human-centered AI framework.
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Yeah, bam, one of the best parts of my job is that it takes me everywhere.
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that's Shopify.com slash profiting. And one of the biggest fears that people have with AI is that
AI is going to replace all of our jobs.
Now, AI is probably going to create a lot of jobs,
and I've talked a lot about that with other guests on the podcast.
But how do you suggest that we make jobs and take consideration into making sure
that AI doesn't take all the jobs?
Yeah, so several things, Hala.
First of all, why do we have jobs?
It's really important to think about it.
I think jobs is part of human prosperity because we need that to translate into financial,
financial, you know, rewards so that we have the prosperity that our family and we need.
It also is part of human dignity.
It's beyond this money is the meaning, for many people, it's the meaning of, you know, life and self-respect.
So from that point of view, I think we have to recognize jobs shift.
throughout human history, technology makes, and also other factors, creates, destroys,
morphs, transforms jobs.
But what doesn't change is the need for human prosperity and human dignity.
So I think when we think about AI and it's impacting jobs, it's important to go to the very
core of what jobs are and means and what technology can do.
So when it comes to, say, human dignity, for example, I do a lot of healthcare research with AI,
and it's so clear to me that many of the jobs that our clinicians and healthcare workers do
are part of humans caring for humans.
And that emotional bond, that dignity, that respect can never be replaced.
What is also clear to me is that American healthcare workers, especially nurses, are overfateeked, overworked, and if technology can be a positive force to help them, to help them take care of patients better, to reduce their workload, especially some of the repetitive, thankless work like constant charting or walking miles and miles a day to fetch pharmacy,
medicines and all that. If those parts of the job, the tasks, can be augmented by machines,
it is really truly intended to protect the human prosperity and dignity, but augment human capabilities.
So from that point of view, I think there is a lot of opportunity for AI to play a positive role.
But again, it depends on how we truly, first of all, it depends on how we design AI.
In my lab, we did a very interesting research.
We were trying to create a big robotics project to do a thousand human everyday tasks.
But at the beginning of this project, it was very important to us that we are creating robots to do.
these tasks that humans want help. For example, buying a wedding ring. I don't think even if you
have the best robot in the world, who wants a robot to choose a wedding ring or opening Christmas
gift? It's not that hard to open a box, but the human emotion, the joy, the family bond, the moment
is not about opening a silly box. So we actually ask people to rank for us thousands and thousands
of tasks and tell us which tasks they want robots help. For example, like cleaning toilet.
Everybody wants robots help. So we focus on those tasks that humans prefer robotic help rather
than those tasks that humans care and want to do themselves. And that is a way of thinking
about human center air. How do we create technology that is beneficial welcomed by humans,
rather than I just go in and tell you I'm using robot to replace everything you care about.
Another layer, just to finish this topic, is policy layer, right?
Like economic, social, well-being is so important.
And technologists don't know it all.
And we shouldn't feel we know it all.
We should be collaborating with civil society, legal world, policy world,
economists to try to understand the nuance and the profoundness of jobs and tasks and AI's impact.
And this is also why our Human Center AI Institute at Stanford has a digital economy lab.
We work with policymakers and thinking about these issues.
We try to inform them and provide information and to help move these topics forward in a positive way.
I feel like you're touching on a lot of, you have three aspects to your human-centered AI framework, right?
So AI is interdisciplinary.
AI needs to be, you know, trying to make sure that we have human dignity and, you know, using it for human good.
And then there's also one about intelligence.
Can you break down your three pillars of your human-centered AI framework?
Yeah, the three pillars of the human-centered AI framework is really about thought leadershiping AI.
and focusing on what higher education institute like Stanford can do.
One we talked about is that interdisciplinary,
recognizing the interdisciplinary nature of AI welcoming the multi-stakeholder
studies, research, and education policy outreach to make sure that AI is
embedded in the fabric of our society today and tomorrow in a benevolent way.
The second one is what you said, is focusing on
augmenting humans, creating technology that enhances human capability and human well-being and
human dignity rather than taking away. The third one is about continue to be inspired by human
intelligence and develop technology, AI technology that is compatible with humans. Because,
you know, human intelligence is very complex, it's very rich. We talked a lot about emotion,
intention, compassion.
And today's AI is lacks most of that.
It's pretty far from that.
Being inspired by this can help us to create.
And also, by the way, there's another thing about today's AI that is far worse than humans.
It draws a lot of energy.
Humans, our brain works around 20 watts.
That is like dimmer than the dimest light bulb in your house.
Yet we can do so many things.
We can create the pyramid.
We can, you know, come up with E equals MC square.
We can, you know, write beautiful music and all that.
AI today is very, very energy consuming.
It's bulky.
It's huge.
So there's a lot in human intelligence that can inspire the next generation AI to do better.
Every time I have an AI episode, I feel like I learned so much.
that I didn't really realize before.
And, you know, we've had conversations with other people on the show about how a lot of people
are scared of AI getting like apex intelligence, that it's going to be so much smarter than
humans, it's going to take over the world, it's going to control humans.
Do you have any fears around that?
I do have fears.
I think, you know, who lives in 2024 and don't have fears, you know?
And as a citizen of the world, I think our civilization, our species is always defined by the struggle
of dark and light and by the struggle in good and bad.
I think we have incredible benevolence in our DNA, but we also have incredible badness in our DNA.
And AI as a technology can be used by the badness.
So from that point of view, I do have fear.
The way I cope with fear is try to be constructively helpful, is try to advocate for the benevolent use of this technology and to use this technology to combat the badness.
At the end of the day, any hope I have for AI is not about AI.
It's about humans.
To paraphrase Dr. King, the arc of history is long.
But it does bend towards justice and benevolence in general.
But to come down from that abstract thinking, I think we have work to do.
I honestly, because if AI is in the hands of bad actors, if AI is concentrated in only
a few powerful people's hand, it can go very wrong, right?
We don't need to wait for sanctioned AI.
Even today's car, imagine there is a bad person who is in charge of building 50% of America's car.
And that person just wants to make all the car brakes malfunction.
Or add a sensor and say, if you see a pedestrian, run it over.
Actually, today's technology can do that.
You don't need sensor AI.
But the fact that we don't have that dystopian scenario,
is first of all, human nature is buying large goods.
You know, our car factory workers, our business leaders in building cars,
nobody thinks about doing that, right?
Yeah.
We also have laws, right?
If someone is trying to do harm, we have societal constraints.
We also try to educate the population towards good things, right?
So all this is hard work, and we need that hardworking AI to ensure it doesn't do bad.
Yeah.
So I just want to give an example that when I was talking to Stephen Wolfram, because the interview is fresh in my head.
And he said something that made me feel a little bit about at ease with AI and the fact that it could get really smart.
He said, we're living in AI.
We live in nature.
Nature is so complex.
We can't control it.
It has simple processes that are really, really complex.
We can predict it all we want,
we'll never really know what nature is going to do.
And already we live in a world where we're interacting with nature every day
and we have to just deal with the fact that we don't control it.
And it's smarter than us to a degree.
And he's like, that's what maybe AI will be like in the future.
It will be there.
It will be its own system.
What are your thoughts on that?
That's a very interesting way to put it.
Okay, first time I heard that.
I like his way.
I like his way of saying that humans in the face of complexity and powerful things,
that we still have a way to cohabitat with it.
I don't agree nature's AI in the sense that nature is not programmable,
and I don't think nature has a collective intention.
It's not like the earth wants to be a bigger earth or bluer earth.
So from that point of view, it's very, very different.
But I appreciate the way he says that.
And I also think using his analogy, we also live with other humans.
And there are humans who are more stronger than us, smarter than us, do better, whatever than us.
But yet, by in large, our world is not everyone killing each other, right?
Like by in large.
Now, this is where we do see the darkness.
And this has nothing to do with AI.
human nature has darkness and we harm each other. And the hope is, it's not just the hope,
the work is that when we create machines that resemble our intelligence, we should
prevent it to do similar harms to us, to each other, and try to, you know, bring out the
better part of ourselves. As we wrap up this interview, because I need to get you out on time,
I wanted to ask you a couple of questions.
So first off, to all the young entrepreneurs,
you're talking to a lot of young entrepreneurs right now
and people who want to be entrepreneurs,
what's your advice to them about how to embrace this AI world?
So first of all, I hope you read my book,
The Worlds I See, because the book is written to young people
for young people.
It's a coming of age of a scientist,
but the true theme of the book is finding your North Star.
is finding your passion and believing in that against all odds and chase after the North Star.
And that is the core of what entrepreneurship is about, is that you believe in bringing something to the world.
And against all odds, you want to make it happen.
And that should be your North Star.
In terms of AI, it's an incredibly powerful tool.
So it depends on what business and products you're making.
It either can empower you or it's an essential part of your core product or it keeps you competitive.
So it's so horizontal that for most entrepreneurs out there, if you don't know anything about AI,
it is important to educate yourself because it's possible that AI will play either in your favor or in your competitive.
favor, so knowing that is important. Yeah. Okay. And since we're just about time here, I'm just going to
ask you one last question. And this is really about visioning. Okay. Let's vision a world 10 years from now,
2034, where there's human-centered AI. And let's also try to visualize a world 10 years from now
where maybe it's not human-centered AI. Maybe it got in the bad hands of some folks.
The world that's human-centered AI, I think it's not too far from at least the North America world we live in, even though I know we're not perfect, is that we still have a strong democracy.
We still believe in individual dignity and, you know, by large, free market capitalism, that we are allowed as individual to pursue our happy.
and prosperity and respect each other.
And AI helps us to do better scientific discovery,
to have self-driving cars, to help people who can't drive,
or reduce traffic, to make life easier,
to make education more personalized,
to empower our teachers and healthcare workers,
to discover a cure for diseases,
to alleviate our aging population problems,
to make agriculture more effective, to find climate solutions.
There is so much AI can do in the world that we still have the good foundation.
The dystopia world is AI can be used as a bad tool to topple democracy, right?
Disinformation is an incredibly harmful way of harming democracy,
and the civil life we have right now.
If it's completely concentrated in power,
whether it's state power or individual power,
it makes the rest of the society much more subject
to the will and possibly wrath of that power,
whether it's AI or not.
We have seen in human history that concentration,
concentrated power is always bad.
And concentrated power using powerful technology is not a recipe for good.
Yeah.
Well, Dr. Lee, I'm so happy we have somebody like you who's helping us to navigate the AI
world, who's also helping to shape the AI world in a way that hopefully is going to be good for humans.
Please let us know where we can learn more about you and everything that you do.
Thank you, Hala.
Thank you for promoting my book.
And please constantly checking with Stanford Human Center AI.
Institute, newsletter, and websites.
Amazing. We'll stick all those things in the show notes.
Dr. Lee, thank you for joining us on Young and Profiting Podcast.
Thank you, Hala.
