A Fireside Chat with Turing Award Winner Geoffrey Hinton, Pioneer of Deep Learning (Google I/O'19)

Ғылым және технология

In this rare interview since (jointly) winning the 2018 Turing Award for his work on neural networks, hear about the conceptual and engineering breakthroughs that have made deep neural networks a critical element of computing. Their research has allowed artificial intelligence technologies to progress at a rate that was not possible in the past and has reinvented the way technology is built.
Watch more #io19 here: Inspiration at Google I/O 2019 Playlist → goo.gle/2LkBwCF
TensorFlow at Google I/O 2019 Playlist → bit.ly/2GW7ZJM
Google I/O 2019 All Sessions Playlist → goo.gle/io19allsessions
Learn more on the I/O Website → google.com/io
Subscribe to the TensorFlow Channel → bit.ly/TensorFlow1
Get started at → www.tensorflow.org/
Speaker(s): Geoffrey Hinton, Nicholas Thompson
TDAA69 event: Google I/O 2019; re_ty: Publish; fullname: Geoffrey Hinton, Nicholas Thompson;

Пікірлер: 52

  • @jsn355
    @jsn3555 жыл бұрын

    25:04 How excited he gets when asked about dreams :) just an amazing scientist

  • @PS1212
    @PS12124 жыл бұрын

    I AM SOOOO GLAD I WATCHED THIS!!!

  • @jossydere3930
    @jossydere39303 жыл бұрын

    Geoffrey Hinton is living legend of this century period !!!

  • @graysonyin8955
    @graysonyin89554 жыл бұрын

    A great conversation comes from good understanding from both sides, insightful questions and insightful answers. Seems like the interviewer could have understand Deep Learning and Hinton's work better before starting the interview.

  • @PistachoGirasol
    @PistachoGirasol4 жыл бұрын

    Oh, I get it, he is from WIRED...

  • @sukyansingh2910

    @sukyansingh2910

    3 жыл бұрын

    ad hominem fallacy

  • @ShaulKedem
    @ShaulKedem5 жыл бұрын

    This was excellent, thank you both

  • @BR-hi6yt
    @BR-hi6yt8 ай бұрын

    I love the way Geoffrey thinks, almost the way I do rather than using mathematical language to describe stuff that's computational. Universe uses computation rather than math imo.

  • @gyimahfrancis60
    @gyimahfrancis605 жыл бұрын

    Love this Geoffrey guy

  • @luisluiscunha
    @luisluiscunha5 жыл бұрын

    This was great. Thank you very much. Nice interview. And no need to be so humble, as at about 14:20, although I understand, given the guest being Hinton.

  • @deeXaeed
    @deeXaeed4 жыл бұрын

    Hinton says 'bound'. Subtitles say 'band'.

  • @littech4637
    @littech46374 жыл бұрын

    The discussion about machine and dreams reminds me of a scene from i-Robot.

  • @hafty9975
    @hafty99752 жыл бұрын

    realized halfway through I had automatic captions on which are there because of the discoveries he's talking about

  • @royeyono6512
    @royeyono65125 жыл бұрын

    I want to hear the remaining 2 theories

  • @peter_castle
    @peter_castle4 жыл бұрын

    awesome!

  • @franciscolima278
    @franciscolima2783 жыл бұрын

    How about "could you PLEASE explain"?

  • @dhoroniboruah
    @dhoroniboruah4 ай бұрын

    19:14 Biochemistry and Molecular Biology.

  • @user-xq8si8pz3h
    @user-xq8si8pz3h5 жыл бұрын

    I would like to translate this video, is it possible to open for translation?

  • @diannashuller5692
    @diannashuller56926 ай бұрын

    39:01 come in a little late but I am thrilled to listen to your presentation I think it's supports My photographs that are holographic views of rocks that have the history of our world magnified by computers and knowing that the removal of input in my life has possibly created the connection recognition to dreams and other realms not fully recognized by the society where I live thank you for sharing fully enjoyed it

  • @zhuuxi
    @zhuuxi4 жыл бұрын

    Was this video shoot in 120 fps?

  • @JeremiahTownsend
    @JeremiahTownsend5 жыл бұрын

    The interviewer seemed to have walked in with (incorrect) assumptions, and when the interview didn’t go as planned, he couldn’t adapt. Really took away from the presentation.

  • @blasttrash

    @blasttrash

    4 жыл бұрын

    Well the Hinton dude was also missing out some questions early on. Like the interviewer asked at what stage in Hinton;s life did he come up with this idea or think that this is how brain might work, Hinton kept dodging the question. I really wanted the answer for that.

  • @TheReferrer72

    @TheReferrer72

    4 жыл бұрын

    @@blasttrash why is it a dodge, every kid knows how the brain works.... they just don't know the fined detail.

  • @babeeshmohanan7686

    @babeeshmohanan7686

    4 жыл бұрын

    It's seems like he is interrogating instead of interviewing..

  • @OHOHOHCOME
    @OHOHOHCOME4 жыл бұрын

    13:50 There is a handful of researchers developing neural networks that perform reasoning, and last year Stanford published one of the first reasoning models that work for visual reasoning. In the next few years I believe we will see their technology applied to other areas and whoever can capitalize on this will be the next millionaire. I also think we should invest more into making use of graph structures as all knowledge can be modelled with graphs.

  • @BiancaAguglia
    @BiancaAguglia4 жыл бұрын

    At 37:08 the transcript for the videos says, "AI, which meant you're logic inspired and you do manipulations of cymbal strings." 😁 So that's the reason AI systems are not as advanced as we want them to be: they're manipulating cymbal strings instead of working on symbol strings. #funny_closed_captioning_fails 😁 Great interview. Geoff is one of those people who can talk about complex concepts in a way that even non-experts can understand.

  • @d_wigglesworth

    @d_wigglesworth

    4 жыл бұрын

    Isn't it ironic? A, presumably, deep learning (ie a non-logic-based) AI System made this particular error while transcribing informed, expert comments on the shortcomings of logic-based AI systems. Furthermore, "Cymbal" is just another name for a gong... GONG! .... But I totally respect the apparent promise of the deep learning approach to AI. ... imho, It will take merely (?) sufficient training of a suitably structured deep learning NN to automatically produce comments like this one.

  • @jorjiang1
    @jorjiang13 жыл бұрын

    anyone got a link to dream theory 3 and 4?

  • @abstractTYPE
    @abstractTYPE5 жыл бұрын

    aha, mhm, yeap, right, ok...

  • @TheAcolossus

    @TheAcolossus

    5 жыл бұрын

    you missed 'ha'

  • @GautamSingh-yn9cb
    @GautamSingh-yn9cb4 жыл бұрын

    Is it viva going on in school ?

  • @hakankanplay
    @hakankanplay5 жыл бұрын

    Aye das my prof

  • @mattizzle81
    @mattizzle815 жыл бұрын

    I love the way he explains things. Explanations straight from the mind of one of the pioneers. If I ever get into a 'debate' with someone over AI who doesn't know who this man is, yet says he is wrong, I just laugh, and yes there are a lot of know-it-alls out there who are saying neural nets are bunk and 'not related at all' to how the human brain works. He says right out it is *inspired* by the human brain. Not an exact true to life replica (yet), but inspired by it. Yet some will say it is bunk and AI is a fraud, etc etc blah blah blah. Well, the tech he is explaining right now is put into practice and works every day.

  • @babeeshmohanan7686
    @babeeshmohanan76864 жыл бұрын

    Really helpful for understanding Real AI . He is right we are making AI not a Brain. We are just taking brain as a model for creating a auto self learning and understanding machine

  • @waqasakram117
    @waqasakram1175 жыл бұрын

    Today my deep nets predict 2 dreams that i will dream tonight.

  • @muralisethuraman5754
    @muralisethuraman57545 жыл бұрын

    Is there a specific paper that Geoffrey Hinton is referring to at 6:22?

  • @cheukkinpoon4428

    @cheukkinpoon4428

    5 жыл бұрын

    I didnt read any paper but I GUESS by band he may mean something like bandwidth of signals sending through the network. Data could be considered as signals passing into the network and the number sending through the links are signals. So you can plot the distribution of those incoming signals for each neuron and you can tell how the distributions are. If there are many extreme values in the plot, it could probably mean that there are many extreme cases that "surprise" the neuron too much. For a sigmoid activation, there is no big difference between a "surprise" and a very big "surprise", in another words the neuron would not be able to pass on the information about the difference of those data points.

  • @conorheins8880

    @conorheins8880

    4 жыл бұрын

    @@cheukkinpoon4428 the word is 'bound', as in an upper bound on surprise. This is the same as negative (log) evidence. by approximating the log evidence with a bound, you implement approximate bayesian inference. so it's not a property of the distributions of incoming signals, the bound on surprise is a functional of the generative model embodied by the neural network itself (the whole configuration of its weights). this bound he's referring to is called the variational free energy. the line of work that works on optimizing this 'bound on surprise' was developed by people like Geoff Hinton, Richard Zemel, and Radford Neal in the 1990s. there are several papers that he was referring to with this comment. the most famous one is called 'the helmholtz machine'

  • @cheukkinpoon4428

    @cheukkinpoon4428

    4 жыл бұрын

    @@conorheins8880 thanks for pointing to the right dirrction!

  • @user-ic1vr8dk6z
    @user-ic1vr8dk6z5 ай бұрын

    Review settings

  • @alfcnz
    @alfcnz4 жыл бұрын

    14:14 Nicholas Thompson: «The human brain is not necessarily the most efficient computational machine ever created» WHATTTT??? You must be kidding me, or, you have no whatsoever clue what you're actually saying. God. I'm speechless.

  • @willrocks41

    @willrocks41

    4 жыл бұрын

    It's clearly not in some cases. E.g think about how much energy it takes for a human brain to do long division vs a computer. Regardless, I think he fumbled his words a bit there, the sentiment is more that the human brain is not the most efficient computational machine that could be created. Which, I think, is hard to argue against.

  • @alfcnz

    @alfcnz

    4 жыл бұрын

    @@willrocks41, a human brain is not optimised for divisions (or algebraic computations). The things that it performs astonishingly well is perception, which we managed to tackle only recently with our machines, and we still struggle to be as efficient as our brains. So... about divisions, I'd argue the most efficient machine is my portable CASIO calculator. But then, that would be a non general purpose processor. So, I think I'm still of the opinion that the brain is indeed the most computationally efficient general purpose machine ever created / existed. Or is it not?

  • @AnthonyBecker9
    @AnthonyBecker93 жыл бұрын

    31:18 Google I/O 2020 lmao

  • @limitless.discomfort

    @limitless.discomfort

    3 жыл бұрын

    Lol here looking for I/O 2020/2021 Lmao

  • @deeXaeed
    @deeXaeed4 жыл бұрын

    The interviewer could have learnt a bit more about AI.

  • @caglardemir5339
    @caglardemir53394 жыл бұрын

    Awful interviewer

  • @AnthonyBecker9

    @AnthonyBecker9

    3 жыл бұрын

    He's not that bad. He keeps him talking and doesn't interrupt too much, and lets the audience clap.

  • @VinBhaskara_
    @VinBhaskara_5 жыл бұрын

    terrible interviewer

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