Nvidia Finally Reveals The Future Of AI In 2025...

00:13:19
https://www.youtube.com/watch?v=4veTNJ0Qgfc

Resumen

TLDRNvidia's CEO Jensen Wang delivered a significant address at an AI Summit in India, highlighting future directions in AI. His talk focused on three main areas: inference timing, AI agents, and physical AI involving humanoid robots. Wang explained that improving inference time in AI involves the concept of system thinking, where models need to go through more deliberative reasoning to produce higher quality responses. He projected that by 2025, AI agents will transform workplaces by automating many tasks, offering goods and services, and enhancing productivity. Nvidia's platforms, AI Enterprise and Omniverse, were introduced as pivotal for developing these AI agents. Nvidia Nemo enables the full lifecycle management of these agents, from creation to deployment. In terms of physical AI, Wang illustrated the future of humanoid robots and artificial intelligence in interacting with the real world, using Nvidia's suite of tools like DGX for model training, Omniverse for virtual simulations, and AGX Jetson for executing robotics systems. The broader application of physical AI in industries includes robotic operations in factories and collaboration in heavy industries, aiming to reduce costs and optimize processes through digital twins and robotic systems. Overall, the talk presented a compelling vision of AI's role in both digital and physical realms, setting the stage for transformative changes across global industries.

Para llevar

  • 🤖 Nvidia envisions a future where AI agents and humanoid robots transform industries.
  • 🚀 By 2025, AI agents are expected to automate workplace tasks and services.
  • 📈 Improved AI inference involves more deliberate reasoning, akin to human thinking processes.
  • 💻 Nvidia's DGX, Omniverse, and AGX Jetson are key to developing and applying physical AI.
  • 🤝 AI agents will enhance productivity, acting as 'super employees' in workplaces.
  • 🏭 Physical AI will optimize industrial operations, leveraging robots and digital twins.
  • 🌐 Nvidia's platforms, AI Enterprise and Omniverse, support the creation of AI capabilities.
  • 🛠️ AI agents require onboarding and lifecycle management, facilitated by Nvidia Nemo.
  • 🤖 Physical AI includes industrial robots and self-driving vehicles collaborating with humans.
  • 🌟 Jensen Wang's insights align with Nvidia's strategy to revolutionize AI across sectors.

Cronología

  • 00:00:00 - 00:05:00

    Jensen Wang's address at an AI Summit in India covered key AI advancements: a new inference time AI paradigm that distinguishes 'system one' (quick responses) and 'system two' (deliberate reasoning) thinking models, illustrating that longer deliberation equals higher quality responses. He highlighted the onset of autonomous AI agents by 2025 in workplaces, capable of performing diverse tasks, supported by platforms like Nvidia AI Enterprise and Nvidia Omniverse for building and operating these agents. AI agents would learn and be integrated into company workflows, enhancing employee productivity through cognitive augmentation.

  • 00:05:00 - 00:13:19

    Wang discussed the evolution from digital to physical AI, introducing 'humanoid robots' executing tasks in the physical world. Nvidia's infrastructure facilitates this through platforms like DGX (training models), Omniverse (creating a physics-based virtual world for training robots), and Jetson AGX (executing trained AI models in real-world systems). This transition to physical AI aims at transforming industries by developing robots capable of industrial tasks, reducing operational risks and costs, and implementing AI-driven optimizations in various industrial settings, as demonstrated through Nvidia's comprehensive approach integrating AI with robotics across industrial spaces.

Mapa mental

Mind Map

Preguntas frecuentes

  • What were the key topics covered by Nvidia's CEO in his AI Summit address?

    The address covered inference timing, AI agents, and physical AI with humanoid robots.

  • What is Nvidia's approach to improving AI inference time?

    Nvidia compares the approach to system one (quick responses) and system two (deliberative reasoning) thinking, aiming for higher quality answers with extended reasoning.

  • How do AI agents impact the workplace according to the talk?

    AI agents are expected to take on various tasks in workplaces by 2025, enhancing productivity and providing numerous goods and services.

  • What platforms did Jensen Wang introduce for developing AI agents?

    He introduced Nvidia AI Enterprise and Nvidia Omniverse, which support AI development and simulation.

  • How are AI agents created and managed according to Nvidia's plan?

    Using Nvidia Nemo, agents are created, onboarded, and integrated into a lifecycle of continuous improvement and deployment.

  • What is physical AI, as discussed in the summit?

    Physical AI involves the use of AI in physical tasks through humanoid robots and other robotic systems to interact with the real world.

  • What role do Nvidia's three computers play in developing physical AI?

    The computers, DGX, Omniverse, and AGX Jetson, are used for training AI models, virtual world simulation, and running robotic systems.

  • What is the significance of Nvidia Omniverse for physical AI?

    Omniverse provides a physics-based operating system for simulation, allowing robots to learn and fine-tune their abilities in a virtual environment.

  • What industrial applications are mentioned for physical AI?

    Physical AI is used for self-driving cars, industrial tasks, and factory operations, embodying robots capable of collaborating with humans.

  • How does physical AI benefit heavy industries, according to Nvidia?

    By transforming industrial processes with robots for monitoring, task execution, and digital twins for risk and cost reduction.

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Desplazamiento automático:
  • 00:00:00
    so nvidia's CEO Jensen Wang did a
  • 00:00:02
    special address at an AI Summit in India
  • 00:00:05
    now this talk was rather fascinating
  • 00:00:07
    because it was one of those talks that
  • 00:00:08
    gives you an Insight with as to where we
  • 00:00:10
    headed overall in AI I know most talks
  • 00:00:13
    are about AI this or AI that but this
  • 00:00:15
    one covered three key topics that I
  • 00:00:17
    think most people aren't focused on one
  • 00:00:19
    of them was the inference time with the
  • 00:00:21
    new paradigm that AI is moving towards
  • 00:00:23
    as you know the new 01 model thinks
  • 00:00:26
    before it actually talks and that means
  • 00:00:27
    that the model gets smarter with its
  • 00:00:29
    responses there was also the talk about
  • 00:00:31
    agents and how they're going to impact
  • 00:00:33
    the workplace and lastly we got a really
  • 00:00:35
    cool look at how physical AI is going to
  • 00:00:38
    change the world in the future with
  • 00:00:39
    humanoid robots so this talk is going to
  • 00:00:41
    be a shortened summary and I'm going to
  • 00:00:43
    give you guys the key details you need
  • 00:00:44
    to know so coming in at the first point
  • 00:00:46
    one of the first talks that he actually
  • 00:00:48
    gives was about the new inference time
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    AI this is where he speaks about how
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    This Ti of AI is quite different it's
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    basically like how you have system one
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    and system two thinking system one being
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    that short Snappy where someone ask you
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    something immediately you immediately
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    know the response but system 2 is kind
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    of deliberative and you know planning
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    and reasoning through certain steps to
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    get to your response and this is a SCA
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    scaling law at a time of inference the
  • 00:01:12
    longer you think the higher quality
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    answer you can produce this is not
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    illogical this is very very intuitive to
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    all of us if you were to ask me what's
  • 00:01:21
    my favorite uh Indian food I would tell
  • 00:01:23
    you chicken briani okay and I don't have
  • 00:01:26
    to think about that very much and I
  • 00:01:27
    don't have to reason about that I just
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    know it and there are many things that
  • 00:01:31
    you can ask it like for example what's
  • 00:01:33
    Nvidia good at Nvidia is good at
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    building AI supercomputers nvidia's
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    great at building gpus and those are
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    things that you know that it's encoded
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    into your knowledge however there are
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    many things that requires reasoning you
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    know for example if I had to travel from
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    uh Mumbai to California I I want to do
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    it in the in a way that allows me to
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    enjoy four other cities along the way
  • 00:01:58
    you know today uh got here at 3:00 a.m.
  • 00:02:01
    this morning uh I got here through
  • 00:02:04
    Denmark I I and right before Denmark I
  • 00:02:06
    was in Orlando Florida and before
  • 00:02:09
    Orlando Florida I was in California that
  • 00:02:11
    was two days ago and I'm still trying to
  • 00:02:13
    figure out what day we're in right now
  • 00:02:15
    but anyways I'm happy to be here uh if I
  • 00:02:19
    were to to tell it I would like to go
  • 00:02:21
    from California uh to Mumbai uh I would
  • 00:02:24
    like to do it within uh 3 days uh and I
  • 00:02:27
    give it all kinds of constraints about
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    what time I'm willing to leave and able
  • 00:02:30
    to leave what hotels I like to stay at
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    so on so forth uh the people I have to
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    meet the number of permutations of that
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    of course uh quite high and so the
  • 00:02:39
    planning of that process coming up with
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    a optimal plan is very very complicated
  • 00:02:45
    and so that's where thinking reasoning
  • 00:02:48
    planning comes in and the more you
  • 00:02:50
    compute the higher quality answer uh you
  • 00:02:53
    could provide and so we now have two
  • 00:02:55
    fundamental scaling laws that is driving
  • 00:02:57
    our technology development first for
  • 00:03:00
    training and now for inference next this
  • 00:03:04
    is where we actually get to speak about
  • 00:03:06
    agents now agents are something that are
  • 00:03:08
    right on the horizon 2025 will largely
  • 00:03:11
    be the year that autonomous AI takes
  • 00:03:13
    over and you'll see them in the
  • 00:03:14
    workplace it's likely you'll see them
  • 00:03:16
    being able to do a various different
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    amount of things for you as an
  • 00:03:19
    individual it's quite likely that
  • 00:03:21
    towards the end of 2025 you're going to
  • 00:03:23
    see a number of autonomous AI agent
  • 00:03:26
    systems paid and free come online and be
  • 00:03:28
    able to offer you a variety of different
  • 00:03:31
    goods and
  • 00:03:32
    services okay so I'm going to introduce
  • 00:03:34
    a couple of other ideas and so earlier I
  • 00:03:36
    told you that we have Blackwell we have
  • 00:03:40
    all of the libraries acceleration
  • 00:03:41
    libraries that we were talking about
  • 00:03:43
    before but on top there are two very
  • 00:03:46
    important platforms we working on one of
  • 00:03:47
    them is called Nvidia AI Enterprise and
  • 00:03:49
    the other is called Nvidia Omniverse and
  • 00:03:52
    I'll explain each one of them very Qui
  • 00:03:54
    quickly first Nvidia AI Enterprise this
  • 00:03:57
    is a time now where the large language
  • 00:04:01
    models and the fundamental AI
  • 00:04:02
    capabilities have reached a level of
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    capabilities we're able to now create
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    what is called agents large language
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    models that understand understand the
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    data that of course is being presented
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    it could be it could be streaming data
  • 00:04:15
    could video data language model data it
  • 00:04:17
    could be data of all kinds the first
  • 00:04:19
    stage is perception the second is
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    reasoning about given its
  • 00:04:25
    observations uh what is the mission and
  • 00:04:28
    what is the task it has to perform
  • 00:04:29
    perform in order to perform that task
  • 00:04:32
    the agent would break down that task
  • 00:04:35
    into steps of other tasks and uh it
  • 00:04:38
    would reason about what it would take
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    and it would connect with other AI
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    models some of them are uh good at prod
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    for example understanding PDF maybe it's
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    a model that understands how to generate
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    images maybe it's a model that uh uh is
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    able to retrieve information AI
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    information AI semantic data from a uh
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    proprietary database so each one of
  • 00:05:02
    these uh large language models are
  • 00:05:05
    connected to the central reasoning large
  • 00:05:07
    language model we call agent and so
  • 00:05:09
    these
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    agents are able to perform all kinds of
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    tasks uh some of them are maybe uh
  • 00:05:15
    marketing agents some of them are
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    customer service agents some of them are
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    chip design agents Nvidia has Chip
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    design agents all over our company
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    helping us design chips maybe there're
  • 00:05:23
    software engineering uh agents uh maybe
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    uh uh maybe they're able to do marketing
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    campaigns uh Supply Chain management and
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    so we're going to have agents that are
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    helping our employees become super
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    employees these agents or agentic AI
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    models uh augment all of our employees
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    to supercharge them make them more
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    productive now when you think about
  • 00:05:46
    these
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    agents it's really the way you would
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    bring these agents into your company is
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    not unlike the way you would onboard uh
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    someone uh who's a new employee you have
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    to give them train training curriculum
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    you have to uh fine-tune them teach them
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    how to use uh how to perform the skills
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    and the understand the vocabulary of
  • 00:06:08
    your of your company uh you evaluate
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    them and so they're evaluation systems
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    and you might guardrail them if you're
  • 00:06:15
    accounting agent uh don't do marketing
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    if you're a marketing agent you know
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    don't report earnings at the end of the
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    quarter so on so forth and so each one
  • 00:06:24
    of these agents are guard railed um that
  • 00:06:27
    entire process we put into to
  • 00:06:30
    essentially an agent life cycle Suite of
  • 00:06:34
    libraries and we call that Nemo our
  • 00:06:37
    partners are working with us integrate
  • 00:06:38
    these libraries into their platforms so
  • 00:06:42
    that they could enable agents to be
  • 00:06:44
    created
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    onboarded deployed improved into a life
  • 00:06:49
    cycle of agents and so this is what we
  • 00:06:52
    call Nvidia Nemo we have um on the one
  • 00:06:56
    hand the libraries on the other hand
  • 00:06:58
    what comes out of the output of it is a
  • 00:07:02
    API inference microservice we call Nims
  • 00:07:06
    essentially this is a factory that
  • 00:07:09
    builds
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    AIS and Nemo is a suite of libraries
  • 00:07:14
    that on board and help you operate the
  • 00:07:16
    AIS and ultimately your goal is to
  • 00:07:19
    create a whole bunch of agents this is
  • 00:07:20
    where we got the very fascinating talk
  • 00:07:23
    about how we're going to get physical AI
  • 00:07:25
    of course once you do have agents in AI
  • 00:07:28
    it's very good because they are digital
  • 00:07:29
    and they're able to move at hypers speed
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    but how do you impact the physical world
  • 00:07:34
    how do you manipulate physical objects
  • 00:07:35
    and Achieve things in the real physical
  • 00:07:37
    world whilst maintaining that scale of
  • 00:07:40
    course it's humanoid robot and physical
  • 00:07:42
    AI this is where he gives the
  • 00:07:44
    interesting insight into where physical
  • 00:07:46
    AI is truly headed what happens after
  • 00:07:49
    agents now remember every single company
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    has
  • 00:07:54
    employees but most companies the goal is
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    to build something to produce something
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    something to make something and that
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    those things that people make could be
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    factories it could be warehouses it
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    could be cars and planes and trains and
  • 00:08:09
    uh ships and so on so forth all kinds of
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    things computers and servers the servers
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    that Nvidia builds it could be
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    phones most companies in the largest of
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    Industries ultimately produces something
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    sometimes produ production of service
  • 00:08:25
    which is the IT industry but many of
  • 00:08:28
    your customers are about producing
  • 00:08:29
    something those that next generation of
  • 00:08:33
    AI needs to understand the physical
  • 00:08:35
    world we call it physical AI in order to
  • 00:08:39
    create physical AI we need three
  • 00:08:41
    computers and we created three computers
  • 00:08:43
    to do so the dgx computer which
  • 00:08:47
    Blackwell for example is is a reference
  • 00:08:49
    design an architecture for to create
  • 00:08:51
    things like dgx computers for training
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    the model that model needs a place to be
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    refined it needs needs a place to learn
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    and needs the place to apply its
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    physical capability its robotics
  • 00:09:05
    capability we call that Omniverse a
  • 00:09:08
    virtual world that obeys the laws of
  • 00:09:11
    physics where robots can learn to be
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    robots and then when you're done with
  • 00:09:17
    the training of it that AI model could
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    then run in the actual robotic system
  • 00:09:23
    that robotic system could be a car it
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    could be a robot it could be AV it could
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    be a autonomous moving robotic could be
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    a a picking arm uh it could be an entire
  • 00:09:33
    Factory or an entire Warehouse that's
  • 00:09:35
    robotic and that computer we call agx
  • 00:09:38
    Jetson agx dgx for training and then
  • 00:09:42
    Omniverse for doing the digital twin now
  • 00:09:45
    here here in India we've got a really
  • 00:09:47
    great ecosystem who is working with us
  • 00:09:50
    to take this infrastructure take this
  • 00:09:53
    ecosystem of capabilities to help the
  • 00:09:56
    world build physical AI systems then we
  • 00:09:59
    got a very short summary about the
  • 00:10:01
    entire talk this is from software 1 to
  • 00:10:03
    software 2.0 about her AI agents and
  • 00:10:05
    mainly about how the humanoid robot is
  • 00:10:08
    going to go completely crazy Nvidia are
  • 00:10:10
    actually doing so much in that area that
  • 00:10:12
    I can't wait to show you guys a new
  • 00:10:13
    video I've been working on that covers
  • 00:10:15
    how the Nvidia company is about to
  • 00:10:16
    change the entire AI ecosystem so take a
  • 00:10:19
    look at this because this one gives you
  • 00:10:21
    pretty much everything you need to know
  • 00:10:23
    for 60 years software 1.0 code written
  • 00:10:27
    by programmers ran on general purpose
  • 00:10:29
    purp
  • 00:10:30
    CPUs then software 2.0 arrived machine
  • 00:10:34
    learning neural networks running on
  • 00:10:36
    gpus this led to the Big Bang of
  • 00:10:39
    generative AI models that learn and
  • 00:10:41
    generate
  • 00:10:42
    anything today generative AI is
  • 00:10:45
    revolutionizing $ 100 trillion in
  • 00:10:48
    Industries knowledge Enterprises use
  • 00:10:51
    agentic AI to automate digital work
  • 00:10:53
    hello I'm James a digital human
  • 00:10:56
    Industrial Enterprises use physical AI
  • 00:10:58
    to autom physical work physical AI
  • 00:11:02
    embodies robots like self-driving cars
  • 00:11:04
    that safely navigate the real world
  • 00:11:07
    manipulators that perform complex
  • 00:11:09
    industrial tasks and humanoid robots who
  • 00:11:13
    work collaboratively alongside us plants
  • 00:11:16
    and factories will be embodied by
  • 00:11:18
    physical AI capable of monitoring and
  • 00:11:21
    adjusting its operations or speaking to
  • 00:11:23
    us Nvidia builds three computers to
  • 00:11:26
    enable developers to create physical AI
  • 00:11:29
    the models are first trained on djx then
  • 00:11:32
    the AI is fine-tuned and tested using
  • 00:11:35
    reinforcement learning physics feedback
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    in Omniverse and the trained AI runs on
  • 00:11:40
    Nvidia Jetson agx robotics
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    computers Nvidia Omniverse is a
  • 00:11:46
    physics-based operating system for
  • 00:11:48
    physical AI simulation robots learn and
  • 00:11:51
    fine-tune their skills in Isaac lab a
  • 00:11:54
    robot gym built on Omniverse this is
  • 00:11:57
    just one robot future Factor fact will
  • 00:11:59
    orchestrate teams of robots and monitor
  • 00:12:02
    entire operations through thousands of
  • 00:12:05
    sensors for factory digital twins they
  • 00:12:08
    use an Omniverse blueprint called Mega
  • 00:12:11
    with mega the factory digital twin is
  • 00:12:13
    populated with virtual robots and their
  • 00:12:15
    AI models the robots brains the robots
  • 00:12:19
    execute a task by perceiving their
  • 00:12:21
    environment reasoning planning their
  • 00:12:24
    next motion and finally converting it to
  • 00:12:27
    actions these actions are simulated in
  • 00:12:29
    the environment by the world simulator
  • 00:12:31
    in Omniverse and the results are
  • 00:12:33
    perceived by the robot brains through
  • 00:12:35
    Omniverse sensor
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    simulation based on the sensor
  • 00:12:38
    simulations the robot brains decide the
  • 00:12:41
    next action and the loop continues while
  • 00:12:44
    Mega precisely tracks the state and
  • 00:12:46
    position of everything in the factory
  • 00:12:48
    digital twin this software in the loop
  • 00:12:51
    testing brings software Define processes
  • 00:12:54
    to physical spaces and embodiments
  • 00:12:56
    letting Industrial Enterprises simulate
  • 00:12:58
    and validate changes in an Omniverse
  • 00:13:01
    digital twin before deploying to the
  • 00:13:03
    physical world saving massive risk and
  • 00:13:07
    cost the era of physical AI is here
  • 00:13:11
    transforming the world's heavy
  • 00:13:12
    Industries and Robotics
Etiquetas
  • AI
  • Jensen Wang
  • Nvidia
  • Inference
  • AI Agents
  • Omniverse
  • Nemo
  • Humanoid Robots
  • Physical AI
  • Digital Twin