We’re already using AI more than we realize

Vox
28 Feb 202406:31

Highlights

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Transcripts

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Of all the interactions you have with technology in a day,

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interacting with artificial intelligence —

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or not — feels like a choice.

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But in some ways it isn't.

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Over the past decade, we've become surrounded by AI systems

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that perceive our world,

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that support our decisions and that mimic our ability to create.

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Whether we're aware of it or not is another story.

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Imagine a day like this.

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You do some exercise with a smartwatch, put on a suggested playlist,

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go to a friend's house and ring their camera

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doorbell, browse recommended shows on Netflix.

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Check your spam folder for an email you've been waiting for.

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And when you can't find it, talk to a customer support chatbot.

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Each of those things are made possible by technologies

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that fall under the umbrella of artificial intelligence.

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But when a Pew survey

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asked Americans to identify whether each of those used AI

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or not, they only got it right

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about 60% of the time.

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Some of these applications of AI have become fairly ubiquitous.

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They almost exist in the background, and it's not terribly apparent to folks

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that the tools or services they're using are being powered

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by this technology.

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That's Alec Tyson, one of the researchers behind that Pew study.

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When Tyson and his team asked respondents how often they think they use AI,

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almost half didn't think they regularly interact with it at all.

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Some of them might be right, but most probably just don't know it.

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We know about 85% of US adults are online every day, multiple times a day.

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Some folks are online almost all the time.

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This suggests a bit of a gap where there seem to be some folks

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who really must be interacting with a AI, but it's never salient to them.

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They don't perceive it.

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So why does that gap exist?

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Part of the problem is that the term artificial

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intelligence has been used to refer to a lot of different things.

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Artificial intelligence is totally this giant umbrella tent term

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that now has become a kitchen sink of everything.

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That’s Karen Hao. She's a reporter who covers artificial intelligence and society.

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In the past, there were distinct disciplines

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about which aspect of the human brain do we want to recreate?

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Like do we want to recreate the vision part?

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Do we want to recreate our ability to hear? Our ability to write and speak?

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Giving the machine the ability to see became the field of computer vision.

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Giving the machine the ability to write and speak

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became the field of natural language processing.

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But on their own, these tasks still required a machine to be programed.

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If we wanted machines to recognize spam emails, we had to explicitly program them

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to look out for specific things, like poor spelling and urgent phrasing.

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That meant the tools weren't very adaptable to complex situations.

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But that all changed when we

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started recreating the brain's ability to learn.

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This became the subfield of machine learning,

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where computers are trained on massive amounts of data so that instead of

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needing to hand-code rules about what to see or speak or write,

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those computers can develop rules on their own.

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With machine learning, a computer could learn to recognize new spam emails

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by reviewing thousands of existing emails that humans have labeled as spam.

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The machine recognizes patterns in this structured

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data and creates its own rules to help identify those patterns.

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When the training data hasn't been structured and labeled by humans,

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that method is called “deep learning.”

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Most of the time people talk about AI now,

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they're not talking about the whole field, but specifically these two methods.

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We'll hear more about that

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after a word from this video’s sponsor.

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This episode is presented by Microsoft Copilot

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for Microsoft 365, your AI assistant at work.

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And it's all built on Microsoft's comprehensive approach to security,

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Microsoft does not influence the editorial process of our videos,

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To learn more, you can go to Microsoft.com/copilotforwork.

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Now back to our video.

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Improvements in computing power, together with the massive amounts of data

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generated on the Internet, made possible a whole new generation of technologies

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that leveraged machine learning. And existing ones swapped out

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their algorithms for machine learning too.

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A lot of the “how” in the back has been swapped into AI over time

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because people have realized, “oh wait, we can actually get an even better

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performance of this product if we just swap our original algorithm,

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our original code out for a deep learning model.”

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Now, machine learning and deep learning models power recommendation

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for shows, music, videos, products and advertisements.

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They determine the ranking of items every time we browse search results

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or social media feeds. They recognize images like faces to unlock phones

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or use filters, and the handwriting on remote deposit checks.

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They recognize speech in transcription,

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voice assistants, and voice-enabled

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TV remotes. And they predict text in autocomplete and autocorrect.

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But AI is seeping into more than that.

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There has been this tendency over the last ten plus years

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where people have started

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putting AI into absolutely everything.

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Machine learning algorithms are already

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being used to decide which political ads we see, which jobs we qualify for,

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and whether we qualify for loans or government benefits,

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and often carry the same biases as the human decisions that preceded them.

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Are you actually automating the poor decision

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making that happened in the past and just bringing it into the future?

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If you're going to use historical data to predict

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what's going to happen in the future,

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you're just going to end up with a future that looks like the past.

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And that's part of the reason why it matters to close that gap

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between those who knowingly interact with the AI every day

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and those who don't quite know it yet.

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Awareness needs to grow for folks to be able to participate

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in some of these conversations about the moral and ethical boundaries,

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what air should be used for, and what it shouldn't be used for.

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Over the past decade,

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we've become surrounded by AI systems that perceive our worlds

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that support our decisions, and that mimic our ability

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to create.

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Over the past

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decade, we've become surrounded by AI systems that perceive our worlds,

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that support our decisions, and that mimic our ability to create.

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But over the past decade, we've become surrounded by AI systems

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that perceive our worlds, that support our decisions

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and that mimic our ability to create.

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Over the past decade, we've become surrounded by AI systems

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that perceive our worlds,

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that support our decisions, and that mimic our ability to create.

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Whether we're aware of it or not is another story.

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But when a Pew survey asked Americans to identify whether these technologies use

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AI, they only got it right about 60% of the time.

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But when a Pew survey asked

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Americans to identify whether these technologies use AI,

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they only got it right about 60% of the time.

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But when but when a.

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But when a Pew survey

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but when a Pew survey asked.

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But when a pew.

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But when a Pew survey asked.

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But when a Pew survey asked Americans

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to identify whether these technologies use AI,

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they only got it right about 60% of the time.

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But when a Pew survey asked Americans

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but when a Pew survey asked

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Americans to identify whether these technologies use AI,

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they only got it right about 60% of the time.

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We'll hear more about that

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after a word from this video sponsor.

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We'll hear

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we're going to hear more about that after.

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We'll hear more about that after a word from this video's sponsor.

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We'll hear more about that.

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We'll hear more about that after a word from this video sponsor

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now, machine learning.

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Now machine learning and deep learning.

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Now, machine learning and deep learning models Power, recommendations

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for shows, recommendations.

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Recommendations for shows.

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Recommendations

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We'll hear more about.

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We'll hear more about that after a word from this video sponsor.

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We'll hear more about that.

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We'll hear more about that after a word from this video

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sponsor.

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Okay,

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great.

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Hi, I'm

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Karen Howe and I am a reporter that's been covering

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artificial intelligence for over five years.

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And I am currently also working on a book about opening

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AI for Penguin Press

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and totally,

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yeah,

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yeah,

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yeah.

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Artificial Intelligence is totally this giant umbrella tent term that now

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it's become a kitchen sink of everything but the origins of the term.

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And this sort of helps to understand why it's so broad.

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The origins of the term are from an academic field, the founding

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of an academic field called A.I., and that happened in the 1950s,

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and it was a group of academics in the US that actually had a meeting

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at Dartmouth University to decide that they wanted to create a brand new field.

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They wanted to be the founding fathers of this field, and specifically

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they wanted to try and attain human level intelligence in computers.

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And there were there have been over the decades, many different hypotheses

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from like a scientific perspective about how to do this.

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From what?

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Like one of those hypotheses

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is that we are intelligent because we know things,

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and so we should build intelligent computers by encoding

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all of the rules that we know about the universe into a computer.

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Another theory has been we are intelligent because we can learn very quickly,

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so we should build intelligent computers by building learning machines.

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And so that theory that second one has become

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the dominant paradigm of everything.

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Basically everything that we see today

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and those learning machines is now called machine learning

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and machine learning has continued to advance

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in the last decade and a half or so from just simple machine

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learning like statistical calculations to deep learning, which means

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fancier statistical calculations.

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And there's a whole range of commercial products that have spun out of this

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particular technology

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that have really nothing to do with trying to recreate the human brain.

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But more just companies can make money off of it.

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And so they're going to keep doing that.

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So deep learning technologies include things like voice assistants,

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self-driving cars, facial recognition

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and all the way up today to gravity and stable diffusion.

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All of these count as deep learning.

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And what deep learning ultimately is doing

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is it's these techniques that allow

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to become fairly ubiquitous.

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They almost exist in the background, and it's not terribly apparent to folks

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that what they're the tools or services they're using are being

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powered by this technology.

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And I return to the point we talked about earlier that there are others

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where it's more apparent

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chatbots, for example, we didn't get it into generative AI

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in this example,

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but that's one where it's more front and center

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that that a computer is doing some thinking

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or at least mimicking some thinking in a way that's very directly

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more associated with artificial intelligence, where

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some of the consumer technology has become a little bit more in the background.

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And it's harder for folks to perceive that AI is influencing or helping them

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go about their lives

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and it

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well, one thing that we know

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is a question we ask very simple question how much have you heard or read about?

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A You know, on the one hand, 90% of Americans say, well, I've heard

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at least a little about it, but only a third say they've heard a lot about it.

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Sort of a deep or rich knowledge in this matters, Right. Why?

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Why do we care about awareness? Why do we study it?

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It's really the first step towards a broader public engagement

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with the host of moral and ethical questions that A.I.

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raises for society.

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So we're at a really interesting moment here

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where most Americans are generally aware of artificial intelligence,

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But deep knowledge, intimate knowledge is still fairly modest.

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And it is growing. Absolutely, it's growing.

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But it needs to grow for folks to be able to participate

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in some of these conversations about the moral and ethical boundaries.

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What I should be used for and what it shouldn't be used for.

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So that's part of why we study awareness at the center

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and why we feel it's important.

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Know Yeah,

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well, one thing that we do know is that not everyone brings

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the same level of awareness to understanding

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something like artificial intelligence and a really big factor.

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Probably the biggest factor is level of formal education, right?

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Where college graduates and those with post-graduate degrees,

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they express higher self-reported awareness

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and they score better on our awareness sort of scale that we've developed.

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And that's important.

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It just sort of underscores that

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these conversations are a bit different depending on what circles you're in,

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whether it's you're in a formal education

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setting or a job that requires this technology

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or maybe you're not in those settings.

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So absolutely, there are differences across the public that reflect things

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like formal education, job type and even types of conversation

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or social circles that really matter when it comes to where folks are in terms

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of understanding, interpreting and how they feel about artificial intelligence.

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So, well, look, there's so many big questions

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with artificial intelligence, but access and equity are certainly among them.

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We'll folks who do understand this technology, who can use it well

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and leverage it to their advantage, these prime equity and access questions.

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And there's the conversation around that or the solutions are very complex.

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But that's certainly one thing at play here

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is there's immense power with some of these technologies.

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They may not be equally available or understood by all

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spheres of the public in Is that okay?

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That's a public conversation to have.

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That's part of what our research can do

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is provide a foundation for having that conversation right.

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So, well, I'm in trouble now.

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I've gone too far with Shad to find a way to take back at all.

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I hear the heavy hand of lies and deceit.

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Absolutely.

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I mean, part of what we do

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at the center, an enormous amount of time goes into question or development.

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The ultimate question we end up on really represents a fraction

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of all the versions and items and ideas being discussed.

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And we had to balance considerations here.

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One is we have to make this accessible to folks

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we can't use necessarily highly technical or almost esoteric examples

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which don't resonate well with folks who are giving their time to take a survey.

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So there's many other ways of imagining an awareness index

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and there's more to do on this front, both by us and others.

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But we thought a good first step would be to try and identify

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some applications that are fairly well known in everyday life,

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or at least these of the tools they're powering are fairly widely used.

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We thought that was a good first place to start.

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There may be other ways to go deeper.

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Some of the more complex or technical or industry specific uses,

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that's a great opportunity for future research.

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But we wanted to start with ten folks even recognize where this technology

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is, that play and even some of the most common.

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We use tools online today, like online shopping, like email, like fitness

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trackers.

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Let's start there and see what we can learn.

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Well, that's

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that is the question is as folks become more aware, as expressions of

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I increasingly shape the way we work live, how are attitudes going to change?

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What do we need to understand going forward?

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Right now, there's a fair amount of caution

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among the public about A.I., right?

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Far more say they're concerned and excited about its growing role in life.

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How will that change going forward?

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A little more awareness only reinforce or grow concern or a critic go in the other

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direction, whereas the more aware folks get, the more positive they get.

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We've seen examples of both in our past research there.

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There is it's a story that's yet to be written, right?

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But it's one that's important to follow.

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Early indications are even in the past year or two,

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that the public is actually more concerned, not less, as they become

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a bit more aware of the ways in which air is involved in their own life.

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Spaces like health and medicine, spaces like jobs and hiring,

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perhaps some potential uses in law enforcement right there.

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There's some concern out there among Americans

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about how this is all going to play out

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in the.

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Yeah, absolutely.

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And they're really sort of multiple prongs to our research plan here at the center,

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which is for some of the most controversial uses of I like A.I.

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and Health and medicine,

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we focus a little bit less on awareness and more about attitudes.

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How would you feel?

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Would you feel comfortable with air and your own primary care?

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Would you be open to using AI and something like an image review

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and skin cancer detection?

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So in some of the most you could call the most

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perhaps potentially impactful on people's own lives, we go directly to attitudes.