How AI Could Empower Any Business | Andrew Ng | TED

00:11:17
https://www.youtube.com/watch?v=reUZRyXxUs4

Resumen

TLDRThe video parallels the rise of AI to the rise of literacy, underscoring the need to democratize AI access much like society did with reading and writing. Currently, AI development is primarily in the hands of highly skilled engineers within big tech companies, as AI projects are costly. This concentration limits the development of valuable small-scale AI applications. The speaker uses analogies and examples, such as a small pizza store using AI for inventory management, to emphasize small businesses' potential gains from AI. Furthermore, the 'long-tail problem' is introduced, highlighting that many valuable AI projects are neglected because they aren't scalable or profitable for tech giants. To democratize AI, emerging platforms focus on data input rather than coding, potentially enabling broader AI development. The impact of democratized AI, much like literacy, could transform societal wealth distribution. The speaker envisions a future where everyone can create AI solutions, thus participating in building societal wealth.

Para llevar

  • 📖 AI's rise is likened to literacy's rise, both transformative for society.
  • 🏢 AI is currently concentrated in big tech due to high costs.
  • 🍕 Small businesses can harness AI for unique, impactful applications.
  • 📈 The 'long-tail problem' in AI highlights neglected small-scale projects.
  • 🛠 New AI platforms ease development by focusing on data, not code.
  • 🤝 Democratizing AI access distributes societal wealth broadly.
  • 🔍 Non-technical users can build AI through user-friendly platforms.
  • 📈 AI holds massive potential value across diverse, localized industries.
  • 💡 Future AI democratization could mirror the broad societal shifts of literacy.
  • 🚀 The potential for individual AI development heralds an exciting future.

Cronología

  • 00:00:00 - 00:05:00

    The speaker compares the rise of AI to the historical rise of literacy, arguing that just as widespread literacy enriched society, democratizing AI could do the same. Currently, AI is mainly controlled by large tech companies due to the high costs associated with its development. However, by enabling individuals and small businesses to leverage AI, they could significantly enhance their operations through data-driven insights, using examples such as a local pizza store or a T-shirt company.

  • 00:05:00 - 00:11:17

    The speaker addresses the challenges faced by non-tech sectors in adopting AI by highlighting the need for custom AI solutions tailored to specific needs, rather than one-size-fits-all systems used by big tech companies. To address this, the speaker suggests the development of user-friendly AI platforms that allow users with minimal technical skills to build personalized AI systems. This approach could democratize AI access, leading to widespread wealth creation and improved efficiencies in various industries, from clothing manufacturing to local farming. It emphasizes the potential for widespread empowerment and economic benefits if AI becomes accessible to everyone, much like literacy did in the past.

Mapa mental

Mind Map

Preguntas frecuentes

  • Why is AI largely concentrated in big tech companies?

    AI projects are expensive to build and typically require many skilled engineers, making them more feasible for large tech companies to invest in.

  • What example did the speaker use to demonstrate AI's potential for small businesses?

    The speaker used the example of a local pizza store that could use AI to analyze sales data and adjust pizza inventory accordingly.

  • What is the 'long-tail problem' in AI?

    The 'long-tail problem' refers to the large number of unique, valuable AI projects across various industries that are not being pursued because they don't apply to the masses like tech giants' AI solutions.

  • How can small businesses benefit from AI, according to the video?

    Small businesses can use AI to improve processes like demand forecasting, product placement, supply chain management, and quality control, thus enhancing their efficiency and competitiveness.

  • What is the emerging new way to build AI systems mentioned in the video?

    The new method involves using AI development platforms that facilitate providing data over writing extensive code, making AI development more accessible.

  • What is the significance of democratising access to AI?

    Democratizing AI ensures that its wealth and benefits can be widely distributed across society, enabling more individuals and small businesses to take advantage of AI.

  • What analogy is used to describe the current state of AI development?

    The analogy used is comparing the rise of AI to the rise of literacy, with AI currently in the hands of 'high priests and priestesses' analogous to early scribes.

  • What role do AI development platforms play?

    These platforms make it easier for non-technical individuals to create AI systems by focusing on inputting data rather than coding.

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  • 00:00:04
    When I think about the rise of AI,
  • 00:00:07
    I'm reminded by the rise of literacy.
  • 00:00:10
    A few hundred years ago,
  • 00:00:11
    many people in society thought
  • 00:00:13
    that maybe not everyone needed to be able to read and write.
  • 00:00:17
    Back then, many people were tending fields or herding sheep,
  • 00:00:20
    so maybe there was less need for written communication.
  • 00:00:23
    And all that was needed
  • 00:00:24
    was for the high priests and priestesses and monks
  • 00:00:26
    to be able to read the Holy Book,
  • 00:00:28
    and the rest of us could just go to the temple or church
  • 00:00:31
    or the holy building
  • 00:00:32
    and sit and listen to the high priest and priestesses read to us.
  • 00:00:35
    Fortunately, it was since figured out that we can build a much richer society
  • 00:00:39
    if lots of people can read and write.
  • 00:00:42
    Today, AI is in the hands of the high priests and priestesses.
  • 00:00:46
    These are the highly skilled AI engineers,
  • 00:00:48
    many of whom work in the big tech companies.
  • 00:00:51
    And most people have access only to the AI that they build for them.
  • 00:00:55
    I think that we can build a much richer society
  • 00:00:58
    if we can enable everyone to help to write the future.
  • 00:01:03
    But why is AI largely concentrated in the big tech companies?
  • 00:01:08
    Because many of these AI projects have been expensive to build.
  • 00:01:11
    They may require dozens of highly skilled engineers,
  • 00:01:14
    and they may cost millions or tens of millions of dollars
  • 00:01:17
    to build an AI system.
  • 00:01:19
    And the large tech companies,
  • 00:01:20
    particularly the ones with hundreds of millions
  • 00:01:22
    or even billions of users,
  • 00:01:24
    have been better than anyone else at making these investments pay off
  • 00:01:28
    because, for them, a one-size-fits-all AI system,
  • 00:01:33
    such as one that improves web search
  • 00:01:35
    or that recommends better products for online shopping,
  • 00:01:38
    can be applied to [these] very large numbers of users
  • 00:01:41
    to generate a massive amount of revenue.
  • 00:01:44
    But this recipe for AI does not work
  • 00:01:47
    once you go outside the tech and internet sectors to other places
  • 00:01:52
    where, for the most part,
  • 00:01:53
    there are hardly any projects that apply to 100 million people
  • 00:01:57
    or that generate comparable economics.
  • 00:02:00
    Let me illustrate an example.
  • 00:02:03
    Many weekends, I drive a few minutes from my house to a local pizza store
  • 00:02:09
    to buy a slice of Hawaiian pizza
  • 00:02:11
    from the gentleman that owns this pizza store.
  • 00:02:14
    And his pizza is great,
  • 00:02:15
    but he always has a lot of cold pizzas sitting around,
  • 00:02:19
    and every weekend some different flavor of pizza is out of stock.
  • 00:02:23
    But when I watch him operate his store,
  • 00:02:25
    I get excited,
  • 00:02:27
    because by selling pizza,
  • 00:02:29
    he is generating data.
  • 00:02:31
    And this is data that he can take advantage of
  • 00:02:34
    if he had access to AI.
  • 00:02:37
    AI systems are good at spotting patterns when given access to the right data,
  • 00:02:43
    and perhaps an AI system could spot if Mediterranean pizzas sell really well
  • 00:02:47
    on a Friday night,
  • 00:02:48
    maybe it could suggest to him to make more of it on a Friday afternoon.
  • 00:02:53
    Now you might say to me, "Hey, Andrew, this is a small pizza store.
  • 00:02:56
    What's the big deal?"
  • 00:02:58
    And I say, to the gentleman that owns this pizza store,
  • 00:03:01
    something that could help him improve his revenues
  • 00:03:03
    by a few thousand dollars a year, that will be a huge deal to him.
  • 00:03:08
    I know that there is a lot of hype about AI's need for massive data sets,
  • 00:03:14
    and having more data does help.
  • 00:03:17
    But contrary to the hype,
  • 00:03:19
    AI can often work just fine
  • 00:03:21
    even on modest amounts of data,
  • 00:03:23
    such as the data generated by a single pizza store.
  • 00:03:26
    So the real problem is not
  • 00:03:28
    that there isn’t enough data from the pizza store.
  • 00:03:30
    The real problem is that the small pizza store
  • 00:03:33
    could never serve enough customers
  • 00:03:34
    to justify the cost of hiring an AI team.
  • 00:03:39
    I know that in the United States
  • 00:03:41
    there are about half a million independent restaurants.
  • 00:03:44
    And collectively, these restaurants do serve tens of millions of customers.
  • 00:03:48
    But every restaurant is different with a different menu,
  • 00:03:51
    different customers, different ways of recording sales
  • 00:03:53
    that no one-size-fits-all AI would work for all of them.
  • 00:03:58
    What would it be like if we could enable small businesses
  • 00:04:01
    and especially local businesses to use AI?
  • 00:04:05
    Let's take a look at what it might look like
  • 00:04:07
    at a company that makes and sells T-shirts.
  • 00:04:10
    I would love if an accountant working for the T-shirt company
  • 00:04:14
    can use AI for demand forecasting.
  • 00:04:16
    Say, figure out what funny memes to prints on T-shirts
  • 00:04:19
    that would drive sales,
  • 00:04:20
    by looking at what's trending on social media.
  • 00:04:23
    Or for product placement,
  • 00:04:25
    why can’t a front-of-store manager take pictures of what the store looks like
  • 00:04:29
    and show it to an AI
  • 00:04:30
    and have an AI recommend where to place products to improve sales?
  • 00:04:34
    Supply chain.
  • 00:04:35
    Can an AI recommend to a buyer whether or not they should pay 20 dollars
  • 00:04:39
    per yard for a piece of fabric now,
  • 00:04:41
    or if they should keep looking
  • 00:04:43
    because they might be able to find it cheaper elsewhere?
  • 00:04:46
    Or quality control.
  • 00:04:47
    A quality inspector should be able to use AI
  • 00:04:50
    to automatically scan pictures of the fabric they use to make T-shirts
  • 00:04:55
    to check if there are any tears or discolorations in the cloth.
  • 00:04:59
    Today, large tech companies routinely use AI to solve problems like these
  • 00:05:04
    and to great effect.
  • 00:05:06
    But a typical T-shirt company or a typical auto mechanic
  • 00:05:11
    or retailer or school or local farm
  • 00:05:15
    will be using AI for exactly zero of these applications today.
  • 00:05:19
    Every T-shirt maker is sufficiently different from every other T-shirt maker
  • 00:05:24
    that there is no one-size-fits-all AI that will work for all of them.
  • 00:05:28
    And in fact, once you go outside the internet and tech sectors
  • 00:05:33
    in other industries, even large companies
  • 00:05:35
    such as the pharmaceutical companies,
  • 00:05:37
    the car makers, the hospitals,
  • 00:05:39
    also struggle with this.
  • 00:05:42
    This is the long-tail problem of AI.
  • 00:05:46
    If you were to take all current and potential AI projects
  • 00:05:50
    and sort them in decreasing order of value and plot them,
  • 00:05:55
    you get a graph that looks like this.
  • 00:05:57
    Maybe the single most valuable AI system
  • 00:05:59
    is something that decides what ads to show people on the internet.
  • 00:06:02
    Maybe the second most valuable is a web search engine,
  • 00:06:05
    maybe the third most valuable is an online shopping product recommendation system.
  • 00:06:09
    But when you go to the right of this curve,
  • 00:06:12
    you then get projects like T-shirt product placement
  • 00:06:15
    or T-shirt demand forecasting or pizzeria demand forecasting.
  • 00:06:20
    And each of these is a unique project that needs to be custom-built.
  • 00:06:24
    Even T-shirt demand forecasting,
  • 00:06:26
    if it depends on trending memes on social media,
  • 00:06:29
    is a very different project than pizzeria demand forecasting,
  • 00:06:34
    if that depends on the pizzeria sales data.
  • 00:06:37
    So today there are millions of projects
  • 00:06:39
    sitting on the tail of this distribution that no one is working on,
  • 00:06:43
    but whose aggregate value is massive.
  • 00:06:46
    So how can we enable small businesses and individuals
  • 00:06:49
    to build AI systems that matter to them?
  • 00:06:52
    For most of the last few decades,
  • 00:06:54
    if you wanted to build an AI system, this is what you have to do.
  • 00:06:58
    You have to write pages and pages of code.
  • 00:07:00
    And while I would love for everyone to learn to code,
  • 00:07:03
    and in fact, online education and also offline education
  • 00:07:06
    are helping more people than ever learn to code,
  • 00:07:09
    unfortunately, not everyone has the time to do this.
  • 00:07:13
    But there is an emerging new way
  • 00:07:16
    to build AI systems that will let more people participate.
  • 00:07:20
    Just as pen and paper,
  • 00:07:22
    which are a vastly superior technology to stone tablet and chisel,
  • 00:07:26
    were instrumental to widespread literacy,
  • 00:07:29
    there are emerging new AI development platforms
  • 00:07:32
    that shift the focus from asking you to write lots of code
  • 00:07:35
    to asking you to focus on providing data.
  • 00:07:39
    And this turns out to be much easier for a lot of people to do.
  • 00:07:43
    Today, there are multiple companies working on platforms like these.
  • 00:07:47
    Let me illustrate a few of the concepts using one that my team has been building.
  • 00:07:51
    Take the example of an inspector
  • 00:07:54
    wanting AI to help detect defects in fabric.
  • 00:07:58
    An inspector can take pictures of the fabric
  • 00:08:00
    and upload it to a platform like this,
  • 00:08:03
    and they can go in to show the AI what tears in the fabric look like
  • 00:08:07
    by drawing rectangles.
  • 00:08:09
    And they can also go in to show the AI
  • 00:08:11
    what discoloration on the fabric looks like
  • 00:08:14
    by drawing rectangles.
  • 00:08:16
    So these pictures,
  • 00:08:17
    together with the green and pink rectangles
  • 00:08:19
    that the inspector's drawn,
  • 00:08:21
    are data created by the inspector
  • 00:08:23
    to explain to AI how to find tears and discoloration.
  • 00:08:28
    After the AI examines this data,
  • 00:08:30
    we may find that it has seen enough pictures of tears,
  • 00:08:32
    but not yet enough pictures of discolorations.
  • 00:08:35
    This is akin to if a junior inspector had learned to reliably spot tears,
  • 00:08:39
    but still needs to further hone their judgment about discolorations.
  • 00:08:43
    So the inspector can go back and take more pictures of discolorations
  • 00:08:47
    to show to the AI,
  • 00:08:48
    to help it deepen this understanding.
  • 00:08:50
    By adjusting the data you give to the AI,
  • 00:08:53
    you can help the AI get smarter.
  • 00:08:56
    So an inspector using an accessible platform like this
  • 00:09:00
    can, in a few hours to a few days,
  • 00:09:03
    and with purchasing a suitable camera set up,
  • 00:09:07
    be able to build a custom AI system to detect defects,
  • 00:09:11
    tears and discolorations in all the fabric
  • 00:09:13
    being used to make T-shirts throughout the factory.
  • 00:09:16
    And once again, you may say,
  • 00:09:19
    "Hey, Andrew, this is one factory.
  • 00:09:22
    Why is this a big deal?"
  • 00:09:23
    And I say to you,
  • 00:09:25
    this is a big deal to that inspector whose life this makes easier
  • 00:09:28
    and equally, this type of technology can empower a baker to use AI
  • 00:09:32
    to check for the quality of the cakes they're making,
  • 00:09:35
    or an organic farmer to check the quality of the vegetables,
  • 00:09:39
    or a furniture maker to check the quality of the wood they're using.
  • 00:09:44
    Platforms like these will probably still need a few more years
  • 00:09:47
    before they're easy enough to use for every pizzeria owner.
  • 00:09:51
    But many of these platforms are coming along,
  • 00:09:53
    and some of them are getting to be quite useful
  • 00:09:56
    to someone that is tech savvy today,
  • 00:09:58
    with just a bit of training.
  • 00:10:00
    But what this means is that,
  • 00:10:02
    rather than relying on the high priests and priestesses
  • 00:10:04
    to write AI systems for everyone else,
  • 00:10:07
    we can start to empower every accountant,
  • 00:10:10
    every store manager,
  • 00:10:11
    every buyer and every quality inspector to build their own AI systems.
  • 00:10:17
    I hope that the pizzeria owner
  • 00:10:19
    and many other small business owners like him
  • 00:10:22
    will also take advantage of this technology
  • 00:10:24
    because AI is creating tremendous wealth
  • 00:10:28
    and will continue to create tremendous wealth.
  • 00:10:30
    And it's only by democratizing access to AI
  • 00:10:33
    that we can ensure that this wealth is spread far and wide across society.
  • 00:10:39
    Hundreds of years ago.
  • 00:10:41
    I think hardly anyone understood the impact
  • 00:10:44
    that widespread literacy will have.
  • 00:10:47
    Today, I think hardly anyone understands
  • 00:10:50
    the impact that democratizing access to AI will have.
  • 00:10:54
    Building AI systems has been out of reach for most people,
  • 00:10:58
    but that does not have to be the case.
  • 00:11:01
    In the coming era for AI,
  • 00:11:03
    we’ll empower everyone to build AI systems for themselves,
  • 00:11:06
    and I think that will be incredibly exciting future.
  • 00:11:10
    Thank you very much.
  • 00:11:11
    (Applause)
Etiquetas
  • AI development
  • democratization
  • big tech
  • small businesses
  • data
  • platforms
  • long-tail problem
  • accessibility
  • wealth distribution
  • innovation