The human skills we need in an unpredictable world | Margaret Heffernan

200,489 views ・ 2019-09-10

TED


Please double-click on the English subtitles below to play the video.

00:12
Recently, the leadership team of an American supermarket chain
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decided that their business needed to get a lot more efficient.
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So they embraced their digital transformation with zeal.
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Out went the teams supervising meat, veg, bakery,
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and in came an algorithmic task allocator.
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Now, instead of people working together,
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each employee went, clocked in, got assigned a task, did it,
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came back for more.
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This was scientific management on steroids,
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standardizing and allocating work.
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It was super efficient.
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Well, not quite,
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because the task allocator didn't know
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when a customer was going to drop a box of eggs,
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couldn't predict when some crazy kid was going to knock over a display,
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or when the local high school decided
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that everybody needed to bring in coconuts the next day.
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(Laughter)
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Efficiency works really well
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when you can predict exactly what you're going to need.
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But when the anomalous or unexpected comes along --
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kids, customers, coconuts --
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well, then efficiency is no longer your friend.
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This has become a really crucial issue,
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this ability to deal with the unexpected,
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because the unexpected is becoming the norm.
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It's why experts and forecasters are reluctant to predict anything
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more than 400 days out.
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Why?
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Because over the last 20 or 30 years,
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much of the world has gone from being complicated
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to being complex --
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which means that yes, there are patterns,
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but they don't repeat themselves regularly.
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It means that very small changes can make a disproportionate impact.
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And it means that expertise won't always suffice,
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because the system just keeps changing too fast.
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So what that means
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is that there's a huge amount in the world
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that kind of defies forecasting now.
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It's why the Bank of England will say yes, there will be another crash,
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but we don't know why or when.
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We know that climate change is real,
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but we can't predict where forest fires will break out,
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and we don't know which factories are going to flood.
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It's why companies are blindsided
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when plastic straws and bags and bottled water
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go from staples to rejects overnight,
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and baffled when a change in social mores
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turns stars into pariahs and colleagues into outcasts:
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ineradicable uncertainty.
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In an environment that defies so much forecasting,
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efficiency won't just not help us,
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it specifically undermines and erodes our capacity to adapt and respond.
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So if efficiency is no longer our guiding principle,
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how should we address the future?
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What kind of thinking is really going to help us?
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What sort of talents must we be sure to defend?
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I think that, where in the past we used to think a lot about just in time management,
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now we have to start thinking about just in case,
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preparing for events that are generally certain
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but specifically remain ambiguous.
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One example of this is the Coalition for Epidemic Preparedness, CEPI.
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We know there will be more epidemics in future,
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but we don't know where or when or what.
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So we can't plan.
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But we can prepare.
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So CEPI's developing multiple vaccines for multiple diseases,
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knowing that they can't predict which vaccines are going to work
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or which diseases will break out.
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So some of those vaccines will never be used.
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That's inefficient.
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But it's robust,
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because it provides more options,
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and it means that we don't depend on a single technological solution.
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Epidemic responsiveness also depends hugely
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on people who know and trust each other.
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But those relationships take time to develop,
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time that is always in short supply when an epidemic breaks out.
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So CEPI is developing relationships, friendships, alliances now
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knowing that some of those may never be used.
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That's inefficient, a waste of time, perhaps,
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but it's robust.
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You can see robust thinking in financial services, too.
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In the past, banks used to hold much less capital
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than they're required to today,
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because holding so little capital, being too efficient with it,
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is what made the banks so fragile in the first place.
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Now, holding more capital looks and is inefficient.
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But it's robust, because it protects the financial system against surprises.
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Countries that are really serious about climate change
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know that they have to adopt multiple solutions,
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multiple forms of renewable energy,
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not just one.
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The countries that are most advanced have been working for years now,
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changing their water and food supply and healthcare systems,
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because they recognize that by the time they have certain prediction,
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that information may very well come too late.
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You can take the same approach to trade wars, and many countries do.
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Instead of depending on a single huge trading partner,
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they try to be everybody's friends,
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because they know they can't predict
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which markets might suddenly become unstable.
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It's time-consuming and expensive, negotiating all these deals,
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but it's robust
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because it makes their whole economy better defended against shocks.
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It's particularly a strategy adopted by small countries
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that know they'll never have the market muscle to call the shots,
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so it's just better to have too many friends.
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But if you're stuck in one of these organizations
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that's still kind of captured by the efficiency myth,
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how do you start to change it?
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Try some experiments.
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In the Netherlands,
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home care nursing used to be run pretty much like the supermarket:
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standardized and prescribed work
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to the minute:
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nine minutes on Monday, seven minutes on Wednesday,
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eight minutes on Friday.
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The nurses hated it.
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So one of them, Jos de Blok,
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proposed an experiment.
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Since every patient is different,
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and we don't quite know exactly what they'll need,
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why don't we just leave it to the nurses to decide?
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Sound reckless?
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(Laughter)
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(Applause)
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In his experiment, Jos found the patients got better
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in half the time,
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and costs fell by 30 percent.
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When I asked Jos what had surprised him about his experiment,
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he just kind of laughed and he said,
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"Well, I had no idea it could be so easy
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to find such a huge improvement,
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because this isn't the kind of thing you can know or predict
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sitting at a desk or staring at a computer screen."
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So now this form of nursing has proliferated across the Netherlands
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and around the world.
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But in every new country it still starts with experiments,
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because each place is slightly and unpredictably different.
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Of course, not all experiments work.
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Jos tried a similar approach to the fire service
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and found it didn't work because the service is just too centralized.
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Failed experiments look inefficient,
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but they're often the only way you can figure out
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how the real world works.
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So now he's trying teachers.
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Experiments like that require creativity
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and not a little bravery.
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In England --
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I was about to say in the UK, but in England --
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(Laughter)
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(Applause)
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In England, the leading rugby team, or one of the leading rugby teams,
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is Saracens.
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The manager and the coach there realized that all the physical training they do
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and the data-driven conditioning that they do
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has become generic;
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really, all the teams do exactly the same thing.
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So they risked an experiment.
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They took the whole team away, even in match season,
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on ski trips
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and to look at social projects in Chicago.
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This was expensive,
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it was time-consuming,
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and it could be a little risky
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putting a whole bunch of rugby players on a ski slope, right?
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(Laughter)
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But what they found was that the players came back
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with renewed bonds of loyalty and solidarity.
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And now when they're on the pitch under incredible pressure,
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they manifest what the manager calls "poise" --
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an unflinching, unwavering dedication
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to each other.
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Their opponents are in awe of this,
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but still too in thrall to efficiency to try it.
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At a London tech company, Verve,
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the CEO measures just about everything that moves,
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but she couldn't find anything that made any difference
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to the company's productivity.
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So she devised an experiment that she calls "Love Week":
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a whole week where each employee has to look for really clever,
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helpful, imaginative things
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that a counterpart does,
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call it out and celebrate it.
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It takes a huge amount of time and effort;
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lots of people would call it distracting.
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But it really energizes the business
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and makes the whole company more productive.
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Preparedness, coalition-building,
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imagination, experiments,
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bravery --
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in an unpredictable age,
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these are tremendous sources of resilience and strength.
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They aren't efficient,
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but they give us limitless capacity
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for adaptation, variation and invention.
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And the less we know about the future,
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the more we're going to need these tremendous sources
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of human, messy, unpredictable skills.
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But in our growing dependence on technology,
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we're asset-stripping those skills.
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Every time we use technology
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to nudge us through a decision or a choice
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or to interpret how somebody's feeling
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or to guide us through a conversation,
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we outsource to a machine what we could, can do ourselves,
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and it's an expensive trade-off.
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The more we let machines think for us,
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the less we can think for ourselves.
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The more --
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(Applause)
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The more time doctors spend staring at digital medical records,
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the less time they spend looking at their patients.
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The more we use parenting apps,
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the less we know our kids.
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The more time we spend with people that we're predicted and programmed to like,
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the less we can connect with people who are different from ourselves.
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And the less compassion we need, the less compassion we have.
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What all of these technologies attempt to do
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is to force-fit a standardized model of a predictable reality
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onto a world that is infinitely surprising.
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What gets left out?
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Anything that can't be measured --
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which is just about everything that counts.
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(Applause)
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Our growing dependence on technology
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risks us becoming less skilled,
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more vulnerable
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to the deep and growing complexity
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of the real world.
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Now, as I was thinking about the extremes of stress and turbulence
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that we know we will have to confront,
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I went and I talked to a number of chief executives
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whose own businesses had gone through existential crises,
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when they teetered on the brink of collapse.
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These were frank, gut-wrenching conversations.
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Many men wept just remembering.
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So I asked them:
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"What kept you going through this?"
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And they all had exactly the same answer.
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"It wasn't data or technology," they said.
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"It was my friends and my colleagues
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who kept me going."
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One added, "It was pretty much the opposite of the gig economy."
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But then I went and I talked to a group of young, rising executives,
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and I asked them,
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"Who are your friends at work?"
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And they just looked blank.
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"There's no time."
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"They're too busy."
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"It's not efficient."
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Who, I wondered, is going to give them
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imagination and stamina and bravery
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when the storms come?
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Anyone who tries to tell you that they know the future
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is just trying to own it,
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a spurious kind of manifest destiny.
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The harder, deeper truth is
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that the future is uncharted,
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that we can't map it till we get there.
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But that's OK,
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because we have so much imagination --
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if we use it.
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We have deep talents of inventiveness and exploration --
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if we apply them.
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We are brave enough to invent things we've never seen before.
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Lose those skills,
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and we are adrift.
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But hone and develop them,
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we can make any future we choose.
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Thank you.
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(Applause)
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