Everyday AI Podcast – An AI and ChatGPT Podcast - EP 230: AI News That Matters - March 18, 2024
Episode Date: March 18, 2024Awesome Stuff From Our Partner, NVIDIA -Register for the FREE virtual NVIDIA GTC Conference or buy tickets to the in-person event and fill out this form here: https://www.youreverydayai.com/nvidia-giv...eaway/Should we be worried about what OpenAI said about Sora? What does Google's new video game-playing model mean about agents? (Almost) Every week, we dive deep into the AI news and developments to help you keep up with what really matters.Newsletter: Sign up for our free daily newsletterMore on this Episode: Episode PageJoin the discussion: Ask Jordan questions on AIRelated Episodes:Ep 211: OpenAI’s Sora – The larger impact that no one’s talking aboutUpcoming Episodes: Check out the upcoming Everyday AI Livestream lineupWebsite: YourEverydayAI.comEmail The Show: info@youreverydayai.comConnect with Jordan on LinkedInTimestamps:01:50 Google DeepMind enters the world of AI agents.03:56 OpenAI Sora data concerns09:40 Apple develops multimodal language model in 3 sizes.14:42 Generative AI breakthrough in smartphone productivity discussed.20:18 Free GPU chip giveaway25:36 Inadequate multitasking skills; admiration for AI capabilities.27:39 NVIDIA GTC AI event with industry leaders and breakthroughs.Topics Covered in This Episode:1. Google DeepMind's New AI Model, Sima2. Scrutiny Around OpenAI's Sora Model3. Figure 01, by OpenAI and Figure4. Apple's New Large Language Model, MM1Keywords:Figure AI, real-time conversations, ChatGPT, large language model, OpenAI, NVIDIA, GTC conference, San Jose, California, AI advancements, keynote, CEO, AI in financial services, generative AI, robotics, AI-powered transportation, GPU giveaway, Apple, m m one, multimodal large language model, image recognition, natural language reasoning, Google's Gemini, GPT 4, edge computing, on-device AI, Siri, iPhone, former employees of OpenAI, Boston Dynamics, Tesla, Microsoft, humanoid robots, visual recognition, Tesla's Optimus bots, Google DeepMind, Sima, video games, natural language instructions, video game studios, agents, smart AI, SoRA, text to video model, training data accuracy.Send Everyday AI and Jordan a text message. (We can't reply back unless you leave contact info) Start Here ▶️Not sure where to start when it comes to AI? Start with our Start Here Series. You can listen to the first drop -- Episode 691 -- or get free access to our Inner Cricle community and all episodes: StartHereSeries.com Also, here's a link to the entire series on a Spotify playlist.
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This is the Everyday AI Show, the everyday podcast where we simplify AI and bring its power to your fingertips.
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Is Google deep mind building agents?
And Apple finally has a large language model, kind of.
And there's a new humanoid robot that uses chat GPT and interacts in real time flawlessly.
There's so much going on in the world of AI news.
And you can spend hours every single day trying to keep up or you can just tune in with us.
We do this almost every Monday.
So welcome to Everyday AI.
My name's Jordan Wilson and I am the host.
And if you're new here, well, everyday AI, it's for you.
It's to help everyday people learn what's going on in the world of generative AI and how we can all leverage that to grow our companies and to grow our career.
So if you're new here, joining us on the podcast, thank you.
We normally do this every Monday as long as we're not on the road somewhere else.
Speaking of being on the road, we are on the road, but more on that here in a bit.
So let's get going.
And just as a reminder, if you haven't already, go to Your EverydayAI.com.
You know, if you can't catch us every day, don't worry.
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Go check that out at Your Everyday AI.com.
All right, but let's get into the AI News That Matters.
And if you're joining us live, thank you like Peter Scuda.
Thanks for joining us.
If you have any questions, get them in there.
It should be a fun show.
There's a lot going on.
So let's just dive straight into the news that matters for the week of March 18th.
All right.
So first and foremost, Google DeepMind has introduced SEMA, an AI agent that plays video games.
So Google DeepMind has announced this new AI model called SEMA, and it can play video games based on natural language instructions.
So this model has been trained with the help of eight video game studios and can
perform over 600 basic skills, making it more efficient than models trained on one specific
game. So Seema is a generalist AI agent that can play video games based on natural language commands.
So the ultimate goal from DeepMind here is for the AI to be able to play games by itself.
So you might be thinking, all right, why does this matter?
Well, this is kind of, I think, the first official foray from Google into what could be
considered agents, right? So this new initiative from DeepMind is widely being reported as Google
for semi-official for a into agents or smart AI that can make human-like decisions in real time
without any human input, right? So that is kind of the big trend of 2024 so so far is
autonomous agents and, you know, this AI being able to work without much human input really at
all. So this thing from Google deep line, a lot of people are just looking at this is,
okay, Google's, you know, creating an AI that can play video games just to showcase its ability,
but it's really much more than that.
This is kind of a fun and engaging testing ground for what we all expect to be the next
phase of generative AI, which is agents.
All of the big companies are working on this.
And when you combine it with humanoids, yeah, it's going to get wild.
Some more on that here in a second.
All right.
Our next piece of AI news.
And if you caught this a couple days ago, you might have been scratching your head kind of like
I was.
All right.
So OpenAI's CTO gave some mixed.
answers on training data for its AI image model SORA.
All right.
So if you don't know, Open AI's new text to video model, SORA, has sparked controversy for
the sources used for its training data.
And CTO Mira Maratai avoided questions about the subject in a recent interview.
All right.
So if you don't know SORA, don't worry, I'll give you the super high level overview.
So they just started, Open AI just started releasing kind of new outputs.
just about a month or two ago.
So right now it is not open to the public,
but Open AI researchers as well as select few kind of designers
and motion graphic artists have use or have the ability to use SORA right now.
So essentially you can, with text prompts,
create some very impressive AI videos.
And kind of the big thing that has separated SORA from other,
you know, text to video kind of offerings so far is the quality, right?
So we've seen from runway, we've seen from PICA Labs and others, the ability to create some still, you know, very usable, very inspiring, I might even say, text to video with their different generative AI models.
However, SORA, it blows it out of the water.
So we've, we've, you know, shown comparisons before.
That's not what this is about.
But, you know, in general, a lot of people were wondering because of the high quality of the output when Open AI just released this is, you know, how did they train this?
this. And in this interview, it's a little interesting. So we're going to play a clip here,
but it was in a recent interview with the Wall Street Journal. So Open AI, CTO Mira Muratai,
avoided questions about the sources used for SORAs training data, claiming that it was just
publicly available and licensed. All right. So I'm going to go ahead and play a clip here and
let you all hear kind of in real time. So this is a reporter from the Wall Street Journal asking
OpenAI, CTO Mira Muratai about SORA's training data.
All right, let's go ahead and take a listen.
What data was used to train SORA?
We used publicly available data and licensed data.
So videos on YouTube?
I'm actually not sure about that.
Videos from Facebook, Instagram?
You know, if they were publicly available,
available yet publicly available to use,
there might be the data, but I'm not sure.
All right.
So we'll go ahead and link this out from the Wall Street Journal reporter in today's newsletter.
But yeah, a lot of people were kind of taken aback by her response, as was I.
You know, it almost seemed like she wasn't full.
prepared for that question, probably knowing that that would be one of the main things that someone
would be asking you about when sitting down, just because all of the conversation so far around
Open AIs, SORA has been, how are they so far ahead of everyone else in terms of quality?
So the training data has been a topic of debate before this interview with the Wall Street
Journal. So definitely, it's definitely worth talking about. And yeah, if you're listening on the
podcast. So Juan here joining live. So thanks for joining Juan said. The facial reaction says it all.
So yes, when asked about the training, the training data, Mira had a very uncomfortable look
on her face. And yeah, it's already been making the meme rounds on the internet. But yeah,
this to me is a pretty big miss from Open AI. I think if you're going to go out and have a sit-down
interview about a model that has really taken, you know, the creative and the advertising, the marketing,
the AI worlds by storm, you have to be prepared to answer some basic questions about training data.
So yeah, the facial reaction, it kind of like what Mike Forgey here is saying live as well,
that mouth drop is a guilty signal.
Yeah, it was a little, it was a little cringy if you were watching on the live stream.
But yeah, don't worry.
If you didn't see that yet, we're going to be linking that out in the newsletter.
All right.
Let's keep going with more AI news that matters.
and a big one, a big one.
I actually intentionally plop this in the middle of the show,
just in case a couple of y'all joined in late.
All right.
So Apple has released a paper previewing its large language model.
MM1.
Yes, that's right.
So it's an interesting approach here on Apple's release of this,
but let's just go ahead and go over the details first.
So Apple researchers have released a paper previewing their new large language model,
or actually it's their new MLLM or multimodal large language model.
So yeah, we're going to be hearing and in shifting that conversation probably over the next year
from LLMs to MLLM.
So the difference being, you know, with multimodal inputs.
So Apple's research team has developed a new highly capable multimodal large language model called MM1.
All right.
So interesting naming so far.
So we're not sure if this is going to be the name when Apple, when it's,
if Apple finally releases this. However, a little confusing, you know, in my opinion, just because
Apple's new chips, you know, that they debuted about, you know, two or three years ago, were called
the M1. So there was a lot of talk around M1 chips. So now you have the M1 model. So again,
we're not sure if that's what it will ultimately be called, but that is what is being referred to now.
So right now, this model comes in three sizes and outperforms most competitors on tasks.
such as image recognition and natural language reasoning,
but it still lags behind Google's Gemini and OpenAI's GPT4.
So right now, MM1 is a multi-modal large language model developed by Apple, like I said,
in three different sizes.
So they have a $3 billion parameter model, so much smaller,
$7 billion parameter, and $30 billion parameter.
So even the larger one, at least right now at 30 billion parameters,
is still a fraction of the size of, you know, Google Gemini, Ultra, 1.5, as well as GPD4 Turbo,
which is reportedly 1.8 trillion parameters.
All right.
So again, right now, this is as far as I know, at least as of, you know, a couple hours ago when I checked last,
you know, you can't go out and use this model at least right now.
It is not publicly available.
So all we have right now, which is important to talk about,
and which I think it hasn't been grabbing so many headlines just yet,
is because this is just a research paper,
kind of showing some different results,
inputs that they generated and outputs that they were able to get from those inputs.
And kind of looking at the multimodal aspect of it.
And I think one of the things that Apple is seemingly stressing about its models
kind of focus in the paper at least,
and as you'll see on screen here,
is the ability to better kind of both work seamlessly,
within text and images and also images within text, which I think, you know, if you want to have a
highly capable multimodal large language model, it has to be able to both read and understand
text in photos as well. So it seemed like that was one kind of key differentiator that Apple was
really pushing with its new MM1. But yeah, I'd love to hear, yeah, a big, agree with Carolyn here
They're saying it's a big reveal.
So I did kind of mention that because it was interesting, right?
Because we've been hearing now for months, right?
And I've said it all along.
Apple is never first to the party, right?
So, you know, we didn't expect, you know, Apple to release a large language model, you know,
months after chat GPT or anything like that.
Apple has been historically known to not be the first person at the party, but to be the coolest kid.
and to usually have the most polished interface, the best user experience, et cetera.
So there have been many reports that Apple has been spending millions.
Yes, millions with an S, millions of dollars a day on development of their generative AI,
on development of their large language model.
So again, we're not sure if this is all they have, if this is just an early iteration,
and what may eventually make its way to our devices, right?
That's what is most important.
And I think, you know, the obvious thing on why this matters for all of you out there listening is because of Siri and because of the future of edge of edge computing, edge AI or on device AI, right?
And I think that's, you know, even by looking at the parameters of the model, you have to think that that's where this is heading, right?
So the reason why, you know, something like a GPD4 turbo is so incredibly powerful because it is a large, it is a large.
it is a huge language model with, you know, reportedly 1.8 trillion parameters.
So when you look at these kind of three reported sizes or these three kind of published sizes that were in the paper of 3 billion, 7 billion and 30 billion parameters, presumably these are models that could fit on devices.
So similar to how Google's Gemini Ultra now lives locally on their Samsung S24 phone.
And that really changes what you can do with a large language model.
it changes the capabilities of generative AI by to be able to run something locally.
As an example, I was, you know, over the last two weeks, I've been on probably 25 hours worth of
flights or maybe 20 hours with flights.
I can't do the math right now.
But, you know, I couldn't use a large language model.
I probably would have liked to, but, you know, you have to have a very fast, you know,
internet connection, which as an example, you know, airplanes don't.
But, you know, I think when you talk about Apple,
where this really is important is the next iPhone, right?
So we've been talking about the WWDC,
the Worldwide Developer Conference from Apple in June.
Presumably they will be announcing what they're going to be doing with this,
whether it is this MM1, large language model,
whether they're going to be releasing a couple.
But presumably what's going to happen is this.
You're going to have a Siri that is actually smart, right?
So I know I know all the hard sometimes on, you know,
smart assistants like Siri and Alexa.
But if you use large language models a lot,
like I know a lot of our audience does.
And then when you use something like Siri or Alexa,
there's a lot to be desired.
However, I do think even just by looking at the parameters
and the sizes of these three flavors of MM1 from Apple,
you have to think that this is coming to edge.
This is coming to on-device AI.
And to be able to run a model locally as an example on your iPhone,
on your smartphone is really a game changer in terms of productivity and also how we all interact
with generative AI. And that's something that I talk about a lot here on the show because I don't
think people fully realize or understand even the importance of something like prompting.
So what happens now when we have these, you know, maybe MM1 coming to our phone?
You have to be able to learn how a model works and how to be able to work with it to get the most out of it.
So this is really going to be a common theme that we're going to continue to see.
But we did expect, you know, kind of some more announcements from Apple.
But it was an interesting announcement that they did this via a research paper release.
It's not the normal Apple Playbook, right?
So normally you get complete silence and you get a big reveal at a conference or maybe you
get some leaks ahead of time, something like that, you know, a spicy promo video that makes
people ooh and ah. So this is an interesting approach here from Apple to go the scientific paper
route. Personally, I like it. We even saw with Google with their original Gemini. I think they
really botched its release. A lot of people, myself included, really criticized Google heavily
for it heavily, you know, heavily edited and marketing and not to tell you the truth,
not super truthful representation of their Gemini model.
You know, in their original marketing video that came out, I believe, like December 5th,
it was kind of showing all these, you know, capabilities or reported capabilities for
Google Gemini that it could not actually do.
So I don't hate the approach here from Apple, but an interesting approach nonetheless to go
the scientific paper route.
All right.
And, hey, let me know from the live stream audience.
What do you guys think?
What do you guys think of Apple's approach here?
Do you like it?
Is it confusing?
Have you read the paper?
Again, we'll be linking to the paper if you can't find it.
Don't worry.
We already dug it up off the internet.
So we'll be linking to that in our newsletter today as well.
So make sure you sign up at your everyday AI.com.
All right.
Our next piece of news.
And this one, as crazy as it sounds, this one might be the biggest piece of news that
we're talking about today.
So, a figure has demoed.
It's chat GPT powered.
humanoid bot figure 01.
So we've talked about figure 01 here on the everyday AI show a couple of times.
But up until, you know, up until a couple of days ago when this demo was first released,
all we really had or all we really saw were specs, you know, all we saw and heard were promised.
So anyways, let's go into a little bit on figure 01.
And then we're actually going to play a little demo as well.
So you guys can hear and see and watch this.
as well. But figure 01 is equipped with an advanced AI and visual recognition capabilities,
and it showcases its ability to perform tasks and engage in conversations with a human. That's the
key differentiator and potentially revolutionizing many industries. All right, we have to pay attention
to this. It is going to, I think, be a, I hate using the word game changer. So I will just say
this. I think it is going to greatly impact the future of how we all worked. So the
Figure O1 robot is equipped with what figure is calling a new visual language model.
So VLM.
We have so many acronyms today, right?
We have LLM, MLM, and now we have visual language model.
So the visual language model allows figure O1 to smoothly interact with humans and perform tasks
simultaneously.
So its developers over there at figure have included those that have worked at companies like
OpenAI, Boston Dynamics, and Tesla.
have very ambitious goals for their humanoid robots to control.
And yeah, billions, with it be, billions of robots.
Yeah, crazy, right?
But this is also why they have some of the largest investors in the world,
including, I believe, we talked about this on the show two weeks ago,
but Microsoft, Open AI are both huge investors.
Nvidia, Salesforce.
I mean, it's a who's who of who is investing in figure and their new figure 01.
So let's just go ahead and let's just show a quick little demo here.
And if you're listening all the podcasts, I'm going to play about a minute of this.
Like I said, we're going to go ahead and link this full video in today's newsletter.
But hopefully, even if you're listening on the podcast, you can kind of understand what we're talking about just from this short little clip.
Let's go ahead and take a watch and take a quick listen.
I see a red apple on a plate in the center of the table, a drying rack with cups and a plate.
and you standing nearby with your hand on the table.
Great. Can I have something to eat?
Sure thing.
Great.
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On it.
So I gave you the apple because it's the only edible item I could provide you with from the
table. Great. So based on the scene right now, where do you think the dishes in front of you go next?
The dishes on the table like that plate and cup are likely to go into the drying rack next.
Y'all, is anyone else, was anyone else just extremely impressed with that demo or is it just me?
So let's talk about if you weren't joining us live, if you're listening on the podcast, you can
probably assume what was happening there.
But again, this is said to be real time, which is always important because, you know,
again, like we saw with the Google Gemini and with just all new generative AI systems in
general, you always have to know exactly what is going on behind the scenes.
So presumably this is in real time.
Yeah.
And like Juan is saying here, and everyone, yeah, everyone's saying, wow, Monica's saying,
Unreal. Cecilia with the PG-13 language. Edited, though, so I love it. Yeah, it's,
yeah, Tara says, sign me up, love his voice. So, I mean, what is literally happening here is
presumably this is in real time. And the figure 01 is powered by chat GBT. So aside from, yes,
this seems like a very realistic conversation. But what's wild to me is, you know,
when we talk about AI and the capabilities of AI, I think this is something that we,
overlook is having someone that can both help with everyday tasks.
So on that side, hey, who wouldn't love a humanoid robot?
I think all it takes right now is like a quarter million dollars and probably a minimum
order.
But who wouldn't love a humanoid robot to be able to go around and put your dishes away,
right?
Like that would be fantastic or to be able to fold laundry.
So speaking of that, I do have to now draw a comparison because with figure 01,
at least with the demo so far, it can operate independently and is not necessarily pre-programmed.
Speaking of folding laundry, it was Tesla's optimist bots that went viral a couple months ago
for simply folding a t-shirt, but that was something that it was programmed to do.
So I can't state loudly enough how impressive this demo is with Figure 01 powered by ChatGPT.
here's why.
We've been talking about, you know, robotics on this show for a while.
We actually have a great robotic show for you later this week, which I'll get to here in a second.
But I think that for the most part, you know, kind of these humanoids or robots or whatever we're supposed to be calling them, they've been very limited in scope.
So they've maybe been trained to perform a series of tasks.
But for the most part, that is not a relationship per se or that is not something that is really applicable across different fields, whether it's in home, work, automation, manufacturing, etc.
Because guess what happens in real life? Things don't go according to plan. So, you know, as an example with Tesla's optimist bot, if it was folding laundry and, you know, there was a huge gust of wind. Could it continue to fold the laundry? I don't know. Presumably it could, right? But that's why I'm in.
I am super impressed so far with figure 01 and what it's been able to do because it is,
as you just saw there in the in the demo or as you just listened to, it is having a real
time conversation with a human.
Again, presumably it's real time, a real time human conversation and an interaction.
And not just that, but being able to explain its rationale.
The thing I love is in that demo when the gentleman asked figure 01, kind of why it did
what it did, he asked it to do it while putting trash away. Guess what? I'd hate to admit this.
I wouldn't be able to do that. I would make a mistake. I am terrible at multitasking, right?
Like if my wife is asking me to, you know, a question while I'm putting dishes away, I'm definitely
either going to put the dish away in the wrong spot or I'm not going to be able to fully process
her question. So that is why I think it is extremely impressive because in this demo, figure
was able to not only complete a task, but also to hold a conversation about something that was
unrelated to the task. So when we talk about the future of generative AI, when we talk about even
the real, like the real world application of large language models, right? This is powered by Chad
ChbT. This does not work without, you know, a large language model like chat chbt. So it is using,
it's ability to process information and then to speak the information as well.
And if you didn't check out our kind of AI and five video last week, Open AI and Chad TPT
did just unveil a whole lot of new features for its kind of its ability to speak back with
you with some much more realistic human voices.
So if you heard that, that voice there, super realistic.
It doesn't sound very AI generated, kind of a smooth voice, right?
Yeah, it's kind of like what Juan's saying, having a Rosie the Robot back from the Jetsons.
Yeah, I can't.
Tanya also can't wait until I can afford one of these to clean my garage.
Yeah, I would love for it to clean my garage.
All right.
Let's wrap this up and talk about one more piece of AI news that matters.
And that is the Nvidia GTC.
All right.
If you are joining live, you might notice my setups a little different here.
Maybe even if you're listening on the podcast, maybe my audio quality isn't as
crisp as normal.
But that is because I'm on the road right now.
Just a couple blocks away from Nvidia's GTC.
But let's talk about what's going on.
So Nvidia is having its first in-person GTC conference in five years to be held right here
where I am today in San Jose, California.
And this event will bring together AI leaders and top companies across various industries
to showcase breakthroughs and advancements in AI.
We have the Jensen Wong keynote today, which should be extremely exciting.
I'll be there.
So if you have questions, I'm probably either going to be on LinkedIn or maybe on Twitter.
So make sure that you're following us there and ask questions too.
What do you want to know?
I believe I'm going to have an opportunity tomorrow to do a kind of informal Q&A in a small group with the NVIDIA CEO.
So I'd love to hear from you.
What do you want to know from NVIDIA?
what questions do you have?
Where do you see everything going?
So pretty exciting.
And this is, I would say, one of the most anticipated kind of tech conferences.
I'd say it's got to be top five in the last 10 years, right?
Nvidia hasn't had an in-person conference since 2019 because of the pandemic.
But also, I mean, here's the reality as well, right?
Five or six years ago, a lot of people maybe thought of Nvidia just as a chipmaker, right?
Maybe you thought of Nvidia if you're a gamer and you know, you need a certain chip or if you're a video editor and you need a better graphics card, right?
That is not what Nvidia is anymore.
I had an episode last year where I literally told people that Nvidia was the most important company in the United States and it was the most important company to the American economy.
Guess what happened after, you know, after that show.
Nvidia has almost tripled in market cap in less than a year, which is historic.
And the reason why this is such a highly anticipated conference is because right now,
Nvidia has an unfair advantage over everyone else.
All of the large language models, right?
So even, you know, presumably the figure 01 because it's powered by Open AI, Open AI,
one of its biggest partners is Open AI.
So everyone is, or sorry, Nvidia, you know, everyone is using Nvidia's GPUs to power the future of AI,
to power large language models, to power generative AI image.
video models, everything. So NVIDIA is actually the epicenter of the future of tech,
marketing and business and how business is getting done. So it is a highly anticipated conference.
I'm extremely excited for today's keynote as well as the conference. All right. So speaking of the
NVIDIA GCC conference, if you haven't already, go ahead and check out our show notes.
We have a link on there where you can register for free.
And unless you're from San Jose or San Francisco, it's probably too late to come in person,
but maybe you're listening and you are. You can still buy tickets.
but you can also attend the free virtual events.
All right.
So again, check out the link we have here in the description of the live stream and our
newsletter and our podcast.
You can go ahead and sign up.
And at the same time, you know, we have instructions there to enter into a giveaway for a
free GPU.
So yeah, maybe your computer's a little slow or maybe you want to run in video's new chat
with RTX.
But you need a certain chip to do that.
So go ahead and, you know, just by signing up for the free conference, you can enter into
the giveaway.
All right. So here's what we have this week. Speaking of InVidia, I told you, I'm in a different
location. Yeah. So here's what we have a lot going on this week, some special shows, some exclusive
interviews that I am extremely excited about. And also, if you are an avid, you know,
viewer of our live stream, can't thank you enough. But today or this week, we're going to be doing
double duty even today.
So make sure to check out our newsletter that we sent out last night with our complete
schedule.
But tomorrow we will be having Malcolm DeMaio, the vice president of global financial services
at VDiA, talking about making money moves and how NVIDIA is using AI to change financial
services.
Wednesday, we're going to be talking with an NVIDIA partner, Evan Sparks, about the how
to create and capture value throughout your biz with generative.
AI. That is one I am going to be extremely excited about. Everyone's always asking, how can I create
value or how can I actually use generative AI? And then how can you tell of its impact? We're going to be
bringing that to you on Wednesday. And then on Thursday, speaking of robotics, we are literally
talking with the director of robotics at Nvidia. This is going to be a great conversation with
Emmett Guell talking about robots among us, how Nvidia is building the future of robotics.
And then last but not least, on Friday, driving the future forward,
Nvidia's vision for an AI powered transportation.
All right.
So so many great conversations planned for this week.
We're going double time.
So maybe we had a little break from live streams.
Maybe you missed the live streams.
So we're just doubling down.
We have a lot of great shows planned for you this week.
I hope this show was helpful.
If so, please consider sharing this.
repost this. If you're listening here on LinkedIn, we spend hours sometime for each show to put it
together. It takes you about 10 seconds to go ahead and click repost or maybe on Twitter,
etc. Or if this is helpful, please leave us a review. So that is it. So I hope to see you back
even today and every single day this week for more info and more action and announcements
and breaking news from the Nvidia GTC. And we hope to see you back every day for more everyday AI.
Thanks, y'all.
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That's a wrap for today's edition of Everyday AI.
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