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  • Everybody's talking about artificial intelligence these days, AI.

  • Machine learning is another hot topic.

  • Are they the same thing or are they different?

  • And if so, what are those differences?

  • And deep learning is another one that comes into play.

  • I actually did a video on these three, artificial intelligence, machine learning, and deep learning, and talked about where they fit.

  • And there were a lot of comments on that, and I read those comments, and I'd like to address some of the most frequently asked questions so that we can clear up some of the myths and misconceptions around this.

  • In addition, something else has happened since that video was recorded, and that is this, the absolute explosion of this area of generative AI.

  • Things like large language models and chat bots have seemed to be taking over the world.

  • We see them everywhere.

  • Really interesting technology.

  • And then also things like deep fakes.

  • These are all within the realm of AI, but how do they fit within each other?

  • How are they related to each other?

  • We're going to take a look at that in this video and try to explain how all these technologies relate and how we can use them.

  • First off, a little bit of a disclaimer.

  • I'm going to have to simplify some of these concepts in order to not make this video last for a week.

  • So those of you that are really deep experts in the field, apologies in advance, but we're going to try to make this simple, and that will involve some generalizations.

  • First of all, let's start with AI.

  • Artificial intelligence is basically trying to simulate with a computer something that would match or exceed human intelligence.

  • What is intelligence?

  • Well, it could be a lot of different things, but generally we tend to think of it as the ability to learn, to infer, and to reason, things like that.

  • So that's what we're trying to do in the broad field of AI, of artificial intelligence.

  • And if we look at a timeline of AI, it really kind of started back around this timeframe.

  • And in those days, it was very premature.

  • Most people had not even heard of it.

  • And it basically was a research project.

  • But I can tell you as an undergrad, which for me was back during these times, we were doing AI work.

  • In fact, we would use programming languages like Lisp or Prolog.

  • And these kinds of things were kind of the predecessors to what became later expert systems.

  • And this was a technology, again, some of these things existed previous, but that's when it really hit kind of a critical mass and became more popularized.

  • So expert systems of the 1980s, maybe in the 90s.

  • And again, we use technologies like this.

  • All of this was something that we did before we ever touched in to the next topic I'm going to talk about.

  • And that's the area of machine learning.

  • Machine learning is as its name implies, the machine is learning.

  • I don't have to program it.

  • I give it lots of information and it observes things.

  • So for instance, if I started doing this, if I give you this and then ask you to predict what's the next thing that's going to be there, well, you might get it, you might not.

  • You have very limited training data to base this on.

  • But if I gave you one of those and then ask you what to predict would happen next, well, you're probably going to say this, and then you're going to say it's this.

  • And then you think you got it all figured out.

  • And then you see one of these.

  • And then all of a sudden I give you one of those and throw you a curve ball.

  • So this, in fact, and then maybe it goes on like this.

  • So a machine learning algorithm is really good at looking at patterns and discovering patterns within data.

  • The more training data you can give it, the more confident it can be in predicting.

  • So predictions are one of the things that machine learning is particularly good at.

  • Another thing is spotting outliers like this and saying, oh, that doesn't belong in, it looks different than all the other stuff because the sequence was broken.

  • So that's particularly useful in cybersecurity, the area that I work in, because we're looking for outliers.

  • We're looking for users who are using the system in ways that they shouldn't be or ways that they don't typically do.

  • So this technology, machine learning is particularly useful for us.

  • And machine learning really came along and became more popularized in this timeframe, in the 2010s.

  • And again, back when I was an undergrad, riding my dinosaur to class, we were doing this kind of stuff.

  • We never once talked about machine learning.

  • It might have existed, but it really hadn't hit the popular mindset yet.

  • But this technology has matured greatly over the last few decades.

  • And now it becomes the basis of a lot we do going forward.

  • The next layer of our Venn diagram involves deep learning.

  • Well, it's deep learning.

  • We use these things called neural networks.

  • Neural networks are ways that in a computer, we simulate and mimic the way the human brain works, at least to the extent that we understand how the brain works.

  • And it's called deep because we have multiple layers of those neural networks.

  • And the interesting thing about these is they will simulate the way a brain operates.

  • But I don't know if you've noticed, but human brains can be a little bit unpredictable.

  • You put certain things in, you don't always get the very same thing out.

  • And deep learning is the same way.

  • In some cases, we're not actually able to fully understand why we get the results we do because there are so many layers to the neural network.

  • It's a little bit hard to decompose and figure out exactly what's in there.

  • But this has become a very important part and a very important advancement that also reached some popularity during the 2010s.

  • And as something that we use still today as the basis for our next area of AI.

  • The most recent advancements in the field of artificial intelligence, all really are in this space, the area of generative AI.

  • Now, I'm going to introduce a term that you may not be familiar with.

  • It's the idea of foundation models.

  • Foundation models is where we get some of these kinds of things.

  • For instance, an example of a foundation model would be a large language model, which is where we take language and we model it.

  • And we make predictions in this technology, where if I see certain types of words, then I can sort of predict what the next set of words will be.

  • I'm going to oversimplify here for the sake of simplicity.

  • But think about this as a little bit like the autocomplete.

  • When you start typing something in, and then it predicts what your next word will be.

  • Except in this case, with large language models, they're not predicting the next word.

  • They're predicting the next sentence, the next paragraph, the next entire document.

  • So there's a really an amazing exponential leap in what these things are able to do.

  • And we call all of these technologies generative because they are generating new content.

  • Some people have actually made the argument that the generative AI isn't really generative, that these technologies are really just regurgitating existing information and putting it in different format.

  • Well, let me give you an analogy.

  • If you take music, for instance, then every note has already been invented.

  • So in a sense, every song is just a recombination, some other permutation of all the notes that already exist already, and just putting them in a different order.

  • Well, we don't say new music doesn't exist.

  • People are still composing and creating new songs from the existing information.

  • I'm going to say AI is similar.

  • It's an analogy, so there'll be some imperfections in it, but you get the general idea.

  • Actually, new content can be generated out of these.

  • And there are a lot of different forms that this can take.

  • Other types of models are audio models, video models, and things like that.

  • Well, in fact, these we can use to create deepfakes.

  • And deepfakes are examples where we're able to take, for instance, a person's voice and recreate that and then have it seem like the person said things they never said.

  • Well, it's really useful in entertainment situations, in parodies and things like that.

  • Or if someone's losing their voice, then you could capture their voice and then they'd be able to type and you'd be able to hear it in their voice.

  • But there's also a lot of cases where this stuff could be abused.

  • The chatbots, again, come from this space.

  • The deepfakes come from this space.

  • But they're all part of generative AI and all part of these foundation models.

  • And this, again, is the area that has really caused all of us to really pay attention to AI.

  • The possibilities of generating new content, or in some cases, summarizing existing content and giving us something that is bite-sized and manageable.

  • This is what has all of the attention.

  • This is where the chatbots and all of these things come in.

  • In the early days, AI's adoption started off pretty slowly.

  • Most people didn't even know it existed.

  • And if they did, it was something that always seemed like it was about five to 10 years away.

  • But then machine learning, deep learning, and things like that came along, and we started seeing some uptick.

  • Then foundation models, gen AI, and the like came along, and this stuff went straight to the moon.

  • These foundation models are what have changed the adoption curve, and now you see AI being adopted everywhere.

  • And the thing for us to understand is where this is, where it fits in, and make sure that we can reap the benefits from all of this technology.

  • If you like this video and want to see more like it, please like and subscribe.

  • If you have any questions or want to share your thoughts about this topic, please leave a comment below.

  • Thank you.

Everybody's talking about artificial intelligence these days, AI.

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AI, Machine Learning, Deep Learning and Generative AI Explained

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    Adam Lin posted on 2024/11/29
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