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so this morning my alarm went off at
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6:00 a.m. as soon as it ran I got up
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really quickly I chose to go for a quick
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run I decided on a healthy breakfast of
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yogurt and fruit while listening to
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classical music I chose to spend some
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quality time with my children because I
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would not see that much today I got
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dressed with the outfit I had laid out
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the night before got in the car and
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decided to drive here while listening to
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a mindfulness podcast to calm myself for
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giving this talk I'm kidding of course
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once the alarm went off in the unholy
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hour of 6:00 a.m. I press the snooze
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button until was no longer possible I
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dragged myself out of bed in a foul mood
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and then I texted my friend to complain
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about it why do I have to do this
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you know I debated then for quite a long
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time was whether I should leave my hair
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down or put it up I got ready very
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quickly and then I decided to ask my
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husband to drive her here so that I
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could spend the ride looking at my notes
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calling my mom and all these things so
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what does this story tell us first that
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I need to get a bit more organized
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second that I like the rest of you make
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decisions all the time I have been
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talking for about two minutes now and
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probably you think you have not made any
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decisions since I started talking but
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actually you have whether to scratch
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your nose whether to respond to that
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notification on your phone you have also
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already probably decided whether my talk
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will be interesting and whether you will
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commit to it or whether you will start
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playing with your phone talking to the
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person next to you whom I hope you know
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or just keep looking at the time until
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the coffee break all day every day
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whether you realize it or not you make a
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lot of decisions our decision-making is
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largely based on
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things we have learned an experience in
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the past on associations we have made in
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our brains and sometimes they are even
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based on the pros and cons balancing
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them looking at alternatives calculating
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probabilities and making a decision that
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will maximize benefit in the long term
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not so often though right
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most often our decisions are based on
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our impulses what we feel our mood our
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biases sometimes even how much we have
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had to drink right remember that text we
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all have that text so the way we make
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decisions it's about to fundamentally
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change as we enter this new era of
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technological advancements the era of
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digital the era of big data one big
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change that is about to come away is
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around the way we humans will be making
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decisions both small and big ones in the
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era of big data decision-making will
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move away from impulsive intuitive and
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sometimes guided by drinking to
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decisions based on data and evidence and
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our partners for making all these
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decisions will be intelligent machines
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so firstly what is this big data I keep
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talking about why is everyone talking
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about it and how is it linked to
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decision making big data describes large
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and diverse sets of information that
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basically keep growing because as you
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very well know every aspect of our lives
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has now been digitalized the way we work
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they will communicate the way we
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socialize even the way we fall in love
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has been digitalized the word is now
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full of data all activity that will
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perform can now be locked and saved and
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as a result the word now is packed with
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an inconceivable amount of digital
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records which we now call big data big
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data is well big it's fast
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and it comes in many different forms it
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can be numbers it can be text can be
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images that can be videos but what does
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this have to do with decision making let
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me share with you a story a bit more
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than a decade ago two researchers at the
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University of Cambridge in the UK
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decided to investigate whether those
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digital records of human behavior could
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be used to predict someone's personality
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what they wanted to see whether was
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whether you could predict things like
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openness and intelligence or even other
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more intrusive things like sexual
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orientation ethnic origin and political
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views the digital records which they
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would use would be simply people's
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Facebook Likes couple of years later
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they published a study where they showed
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the results on data that they had
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collected from 58,000 people who had
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given them access to their Facebook
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profiles and had also answered some
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personality tests the results were
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amazing they showed that on the basis of
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only Facebook Likes the computer could
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predict someone's skin colour with 95
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percent accuracy and someone's gender
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with 93 percent accuracy and what else
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they did was that they showed what kind
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of likes could be linked and could be
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predictive of some personality traits
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for example they showed that like that
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were predictive of a high IQ where on
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pages are just the lord of the rings'
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science and kerry fries coincidentally
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all things i like in contrast like that
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could predict a low IQ where are you
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worried
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on pages related to makeup to
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motorcycles and on I like being a Manny
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groups I do like those even more
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remarkably in a study the same
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researchers published a couple of years
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later what they did was that they asked
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colleagues relatives and friends of the
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participants to give their judgments of
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the participants personalities and then
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they compared them with the computers
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judgments who do you think won
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they showed remarkably that with only
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ten likes the computer knew you better
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and your colleague with only seventy
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likes the computer you do better than
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your friend with only a hundred and
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fifty likes the computer you do better
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than a relative and with 300 likes the
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computer knew you better than your
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partner the analysis they used were
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really not that sophisticated and I hope
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they're not watch yet they managed to
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build a system that could make better
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decisions than humans how did they
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manage to do that
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they managed it because they had big
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data by having this big data set and
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being able to analyze it they were able
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to draw conclusions that were
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statistically valid and to build an
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intelligent decision making machine to
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basically create artificial intelligence
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the equation usually looks like this
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data big data plus fancy or not so fancy
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algorithms or months' equals artificial
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intelligence the maps have been around
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for a long time what we now have
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available to us is big data and they are
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already being used for effective our
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decision-making Amazon is doing it
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Amazon has been doing it for years they
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have been shaping our shopping decisions
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for years by giving us personalized
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recommendations on products who might be
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interested in buying using data of our
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own past purchases and the past
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purchases of people who are similar to
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us Netflix is also doing it
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for recommending a series or movies we
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are likely to like both Amazon and
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Netflix make these recommendations using
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big data and artificial intelligence
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methodologies making our everyday
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decision-making much much easier so
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christmas is coming up my 9 year old is
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obsessed with Harry Potter so he's
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getting a Harry Potter Lego set but
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you're not supposed to tell so what else
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can i buy him to go with it
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do I need to worry about it no because
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Amazon has filtered down all the choices
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for me making that my decision-making
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much much easier potential employers may
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now be making decisions about us without
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us knowing using our digital records if
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Facebook Likes are so linked with
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personality traits why not use digital
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records like Facebook likes to see if I
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will be resilient employee and a good
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team player you could this photo come
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back and bite me and yes I'm in the
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haircut in the future
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sometimes intelligent decisions maybe
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even made before weaving knew that the
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decision had to be made while I was
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working as a researcher at the
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University of Oxford part of my research
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had to do with developing intelligent
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tools to facilitate decision-making in
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healthcare a project I was working on
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had to do with use using a big data set
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of health data from hospital patients in
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order to build intelligent systems that
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could predict whether something bad was
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about to happen to someone while they
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were in hospital how these systems
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worked was by learning what combinations
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of physiological characteristics could
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signal future health crises and then
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unalloyed was being generated now for
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someone in hospital something bad
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happening is not totally unexpected but
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let's consider this scenario you're
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peacefully sitting in your living room
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watching a David Attenborough
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documentary or Maria is today
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you're watching the Kardashians so you
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have been feeling a bit uneasy all day
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but you are dismissing your symptoms
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because you had a long day you don't
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want to bother anyone you don't want to
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make a fuss and suddenly you hear an
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ambulance and there's a knock on the
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door an intelligent system predicted
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that you are about to have a heart
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attack and they have come to take into
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hospital making the right decision for
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you
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in those cases artificial intelligence
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can literally proved to be a lifesaver
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so as we enter this new era of digital
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Big Data machine based decisions how
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would my morning routine look like was
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probably my sleep time in wake time
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would have been optimized for me using
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some fancy maths and the text message to
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my friend could have been sent for me
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using some prediction algorithm of what
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I would be likely to want to tell my
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friends my outfit would have been chosen
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for me using a personalized algorithm
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and the music I would listen to in the
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car while coming here would have been
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selected from me based on my
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physiological signals as detected by my
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car seat great huh actually the machine
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could even give this talk for me in the
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future but are we ready for all this are
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we ready for data-driven and
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evidence-based decision-making the
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answer is not really because we humans
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are not really built to be data-driven
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decision makers technology is changing
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our lives in a very fast pace but our
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DNA has not really yet caught up
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let's consider this scenario our
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ancestors and sitting in the white
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around the fire and they suddenly hear a
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strange sound what could it be is it a
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lion preparing for his evening meal
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meaning us or is it some juicy prey that
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could feed our family for a few days had
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that been a world driven by artificial
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intelligence our ancestors would have
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pulled
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their smartphones and would have checked
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what the alcohol said that would have
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made the decision according to the
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algorithm with great accuracy in actual
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fact our decisions had to make the
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decision had to be made quickly with
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little or no information at hand who do
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you think survived the ones who stood up
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and impulsively started running or the
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ones who sticked around to make a
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probabilistic assessment of the
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situation let's have a show of hands who
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thinks the impulsive ones who run away
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survived okay who thinks the analysts
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survived you're just trying to ruin my
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point so most of you have common sense
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and you've realized that it was the
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impulsive ones who survived and that is
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why we the descendants have evolved to
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be largely impulsive decision makers
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this impulsiveness along with many
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biases we are carrying have plagued
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human judgment and decision-making for
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thousands of years as someone who works
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on developing artificial intelligence
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and on helping people and organizations
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use it I can tell you for certain that
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while those systems are not perfect in
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many many situations machine based
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decisions I excellent and they are
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better than human decisions embracing
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artificial intelligence can definitely
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make our lives better if you want to
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adapt to this new world and to benefit
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from artificial intelligence in my
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opinion there is two things you need to
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accept the first is that for artificial
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intelligence to work for you you have to
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accept to expose yourself by sharing
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your own personal data and secondly that
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you will have to learn to trust
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artificial intelligence even when it
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goes against your own instincts and
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impulses the recipe for success is not
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allowing yourself to be passively swept
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by this big day dine
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artificial-intelligence wave with no
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control of the situation
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stay vigilant and educate yourselves
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about which decisions you can trust at
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the end of the day the decision about
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whether you should follow the machines
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decision should be yours and yours only
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[Applause]
00:15:54
[Applause]