{"id":174793,"date":"2016-12-25T22:55:29","date_gmt":"2016-12-26T03:55:29","guid":{"rendered":"http:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/beyond-automation-hbr-org\/"},"modified":"2016-12-25T22:55:29","modified_gmt":"2016-12-26T03:55:29","slug":"beyond-automation-hbr-org","status":"publish","type":"post","link":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/automation\/beyond-automation-hbr-org\/","title":{"rendered":"Beyond Automation &#8211; hbr.org"},"content":{"rendered":"<p><p>Idea in Brief              The Threat        <\/p>\n<p>      Automation has traditionally displaced workers, forcing them      onto higher ground that machines have not yet claimed. Today,      as artificial intelligence encroaches on knowledge work, it      can be hard to see how humans will remain employed in large      numbers.    <\/p>\n<p>      The outlook is grim if computers continue to chip away      relentlessly at the tasks currently performed by      well-educated people. But if we reframe the use of machines      as augmentation, human work can flourish and      accomplish what was never before possible.    <\/p>\n<p>      Some knowledge workers will step up to even higher      levels of cognition; others will step aside and draw      on forms of intelligence that machines lack. Some will      step in, monitoring and adjusting computers      decision making; others will step narrowly      into highly specialized realms of expertise. Inevitably, some      will step forward by creating next-generation      machines and finding new ways for them to augment human      strengths.    <\/p>\n<p>    After hearing of a recent Oxford University     study on advancing automation and its potential to displace    workers, Yuh-Mei Hutt, of Tallahassee, Florida, wrote, The    idea that half of todays jobs may vanish has changed my view    of my childrens future. Hutt was reacting not only as a    mother; she heads a business and occasionally blogs about    emerging technologies. Familiar as she is with the upside of    computerization, the downside looms large. How will they    compete against AI? she asked. How will they compete against    a much older and experienced workforce vying for even fewer    positions?  <\/p>\n<p>    Suddenly, it seems, people in all walks of life are becoming    very concerned about advancing automation. And they should be:    Unless we find as many tasks to give humans as we find to take    away from them, all the social and psychological ills of    joblessness will grow, from economic recession to youth    unemployment to individual crises of identity. Thats    especially true now that automation is coming to knowledge    work, in the form of artificial intelligence. Knowledge    workwhich well define loosely as work that is more mental    than manual, involves consequential decision making, and has    traditionally required a college educationaccounts for a large    proportion of jobs in todays mature economies. It is the high    ground to which humanity has retreated as machines have taken    over less cognitively challenging work. But in the very    foreseeable future, as the Gartner analyst Nigel Rayner says,    many of the things executives do today will be automated.  <\/p>\n<\/p>\n<p>    What if we were to reframe the situation? What if, rather than    asking the traditional questionWhat tasks currently performed    by humans will soon be done more cheaply and rapidly by    machines?we ask a new one: What new feats might people achieve    if they had better thinking machines to assist them? Instead of    seeing work as a zero-sum game with machines taking an ever    greater share, we might see growing possibilities for    employment. We could reframe the threat of automation    as an opportunity for augmentation.  <\/p>\n<p>    The two of us have been looking at cases in which knowledge    workers collaborate with machines to do things that neither    could do well on their own. And as automation makes greater    incursions into their workplaces, these people respond with a    surprisingly broad repertoire of moves. Conventional wisdom is    that as machines threaten their livelihood, humans must invest    in ever higher levels of formal education to keep ahead. In    truth, as we will discuss below, smart people are taking five    approaches to making their peace with smart machines.  <\/p>\n<p>    David Autor, an economist at MIT who closely tracks the effects    of automation on labor markets, recently complained    that journalists and expert commentators overstate the extent    of machine substitution for human labor and ignore the strong    complementarities that increase productivity, raise earnings,    and augment demand for skilled labor. He pointed to the    immense challenge of applying machines to any tasks that call    for flexibility, judgment, or common sense, and then pushed his    point further. Tasks that cannot be substituted by    computerization are generally complemented by it, he wrote.    This point is as fundamental as it is overlooked.  <\/p>\n<p>    A search for the complementarities to which Autor was referring    is at the heart of what we call an augmentation strategy. It    stands in stark contrast to the automation strategies that    efficiency-minded enterprises have pursued in the past.    Automation starts with a baseline of what people do in a given    job and subtracts from that. It deploys computers to chip away    at the tasks humans perform as soon as those tasks can be    codified. Aiming for increased automation promises cost savings    but limits us to thinking within the parameters of work that is    being accomplished today.  <\/p>\n<p>        Smart machines can be our partners        and collaborators in creative problem solving.      <\/p>\n<p>    Augmentation, in contrast, means starting with what humans do    today and figuring out how that work could be deepened rather    than diminished by a greater use of machines. Some thoughtful    knowledge workers see this clearly. Camille Nicita, for    example, is the CEO of Gongos, a company in metropolitan    Detroit that helps clients gain consumer insightsa line of    work that some would say is under threat as big data reveals    all about buying behavior. Nicita concedes that sophisticated    decision analytics based on large data sets will uncover new    and important insights. But, she says, that will give her    people the opportunity to go deeper and offer clients context,    humanization, and the why behind big data. Her shop will    increasingly go beyond analysis and translate that data in a    way that informs business decisions through synthesis and the    power of great narrative. Fortunately, computers arent very    good at that sort of thing.  <\/p>\n<p>    Intelligent machines, Nicita thinksand this is the core belief    of an augmentation strategydo not usher people out the door,    much less relegate them to doing the bidding of robot    overlords. In some cases these machines will allow us to take    on tasks that are superiormore sophisticated, more fulfilling,    better suited to our strengthsto anything we have given up. In    other cases the tasks will simply be different from anything    computers can do well. In almost all situations, however, they    will be less codified and structured; otherwise computers would    already have taken them over.  <\/p>\n<p>    We propose a change in mindset, on the part of both workers and    providers of work, that will lead to different outcomesa    change from pursuing automation to promoting augmentation. This    seemingly simple terminological shift will have deep    implications for how organizations are managed and how    individuals strive to succeed. Knowledge workers will come to    see smart machines as partners and collaborators in creative    problem solving.  <\/p>\n<p>    This new mindset could change the future.  <\/p>\n<p>    Lets assume that computers are going to make their mark in    your line of work. Indeed, lets posit that software will soon    perform most of the cognitive heavy lifting you do in your job    and, as far as the essential day-to-day operation of the    enterprise is concerned, make decisions as good as (probably    better than) those made by 90% of the people who currently hold    it. What should your strategy be to remain gainfully employed?    From an augmentation perspective, people might renegotiate    their relationship to machines and realign their contributions    in five ways.  <\/p>\n<p>    Your best strategy may be to head for still higher intellectual    ground. There will always be jobs for people who are capable of    more big-picture thinking and a higher level of abstraction    than computers are. In essence this is the same advice that has    always been offered and taken as automation has encroached on    human work: Let the machine do the things that are beneath you,    and take the opportunity to engage with higher-order concerns.  <\/p>\n<p>    Niven Narain, a cancer researcher, provides a great example. In    2005 he cofounded Berg, a start-up in Framingham,    Massachusetts, to apply artificial intelligence to the    discovery of new drugs. Bergs facility has high-throughput    mass spectrometers that run around the clock and produce    trillions of data points from their analysis of blood and    tissue, along with powerful computers that look for patterns    suggesting that certain molecules could be effective. The last    thing you want to do now, Narain told a     reporter in March 2015, is have a hundred    biochemistsgoing through this data and saying, Oh, I kind of    like this one over here. But he also employs a hundred    biochemists. Their objective is not to crunch all those numbers    and produce a hypothesis about a certain molecules potential.    Rather, they pick up at the point where the math leaves off,    the machine has produced a hypothesis, and the investigation of    its viability begins.  <\/p>\n<p>    Narain stepped up by seeing an opportunity to develop drugs in    a new way. That takes lots of experience, insight, and the    ability to understand quickly how the world is changing.    Likewise, one interpretation of the success of todays    ultrarich Wall Street investment bankers and hedge fund titans    is that they have stepped up above automated trading and    portfolio management systems.  <\/p>\n<\/p>\n<p>    If stepping up is your chosen approach, you will probably need    a long education. A masters degree or a doctorate will serve    you well as a job applicant. Once inside an organization, your    objective must be to stay broadly informed and creative enough    to be part of its ongoing innovation and strategy efforts.    Ideally youll aspire to a senior management role and thus    seize the opportunities you identify. Listen to Barney Harford,    the CEO of Orbitza business that has done more than most to    eliminate knowledge worker jobs. To hire for the tasks he still    requires people to do, Harford looks for     T-shaped individuals. Orbitz needs people who can go    really deep in their particular area of expertise, he says,    and also go really broad and have that kind of curiosity about    the overall organization and how their particular piece of the    pie fits into it. Thats good guidance for any knowledge    worker who wants to step up: Start thinking more    syntheticallyin the old sense of that term. Find ways to rely    on machines to do your intellectual spadework, without losing    knowledge of how they do it. Harford has done that by applying    machine learning to the generation of algorithms that match    customers with the travel experiences they desire.  <\/p>\n<p>    Stepping up may be an option for only a small minority of the    labor force. But a lot of brain work is equally valuable and    also cannot be codified. Stepping aside means using mental    strengths that arent about purely rational cognition but draw    on what the psychologist Howard Gardner has called our    multiple intelligences. You might focus on the    interpersonal and intrapersonal intelligencesknowing how    to work well with other people and understanding your own    interests, goals, and strengths.  <\/p>\n<p>    The legendary thoroughbred trainer D. Wayne Lukas cant    articulate exactly how he manages to see the potential in a    yearling. He just does. Apples revered designer Jonathan Ive    cant download his taste to a computer. Ricky Gervais makes    people laugh at material a machine would never dream up. Do    they all use computers in their daily work lives?    Unquestionably. But their genius has been to discover the    ineffable strengths they possess and to spend as much time as    possible putting them to work. Machines can perform numerous    ancillary tasks that would otherwise encroach on the ability of    these professionals to do what they do best.  <\/p>\n<p>    We dont want to create the impression that stepping aside is    purely for artists. Senior lawyers, for example, are thoroughly    versed in the law but are rarely their firms deep-dive experts    on all its fine points. They devote much of their energy to    winning new work (usually the chief reason they get promoted)    and acting as wise counselors to their clients. With machines    digesting legal documents and suggesting courses of action and    arguments, senior lawyers will have more capacity to do the    rest of their job well. The same is true for many other    professionals, such as senior accountants, architects,    investment bankers, and consultants.  <\/p>\n<p>    Take the realm of elder care, in which robotics manufacturers    see great potential for automation. This isnt often treated as    a nuanced or a particularly intellectual line of human work. We    were struck, therefore, by a recent essay    by the teacher, coach, and blogger Heather Plett. She wrote of    her mothers palliative care provider, She was holding    space for us, and explained: What does it mean to    hold space for someone else? It means that we are    willing to walk alongside another person in whatever journey    theyre on without judging them, making them feel inadequate,    trying to fix them, or trying to impact the outcome. When we    hold space for other people, we open our hearts, offer    unconditional support, and let go of judgement and control.  <\/p>\n<p>    True, hospice care is an extreme example of a situation    requiring the human touch. But empathy is valuable in any    setting that has customers, coworkers, and owners.  <\/p>\n<p>    If stepping aside is your strategy, you need to focus on your    uncodifiable strengths, first discovering them and then    diligently working to heighten them. In the process you should    identify other masters of the tacit trade youre pursuing and    find ways to work with them, whether as collaborator or    apprentice. You may have to develop a greater respect for the    intelligences you have beyond IQ, which decades of schooling    might well have devalued. These, too, can be deliberately    honedthey are no more or less God-given than your capacity for    calculus.  <\/p>\n<p>    Back in 1967, having witnessed the first attempts to automate    knowledge work, Peter Drucker declared of the computer: Its a    total moron. Its a lot less moronic now, but its relentless    logic still occasionally arrives at decisions whose improvement    wouldnt require a human genius.  <\/p>\n<p>    Perhaps you saw a 2014 story in the     New York Times about a man who had just changed jobs    and applied to refinance his mortgage. Even though hed had a    steady government job for eight years and a steady teaching job    for more than 20 years before that, he was turned down for the    loan. The automated system that evaluated his application    recognized that the projected payments were well within his    income level, but it was smart enough to seize on a risk    marker: His new career would involve a great deal more    variation and uncertainty in earnings.  <\/p>\n<p>    Or maybe that system wasnt so smart. The man was Ben Bernanke,    a former chairman of the U.S. Federal Reserve, who had just    signed a book contract for more than a million dollars and was    headed for a lucrative stint on the lecture circuit. This is a    prime example of why, when computers make decisions, we will    always need people who can step in and save us from their worst    tendencies.  <\/p>\n<p>        A lot of brain workincluding        empathycannot be codified.      <\/p>\n<p>    Those capable of stepping in know how to monitor and modify the    work of computers. Taxes may increasingly be done by computer,    but smart accountants look out for the mistakes that automated    programsand the programs human usersoften make. Ad buying in    digital marketing is almost exclusively automated these days,    but only people can say when some programmatic buy would    actually hurt the brand and how the logic behind it might be    tuned.  <\/p>\n<p>    Here you might ask, Just who is augmenting whom (or what) in    this situation? Its a good moment to emphasize that in an    augmentation environment, support is mutual. The human ensures    that the computer is doing a good job and makes it better. This    is the point being made by all those people who encourage more    STEM (science, technology, engineering, and math) education.    They envision a work world largely made up of stepping-in    positions. But if this is your strategy, youll also need to    develop your powers of observation, translation, and human    connection.  <\/p>\n<p>    This approach involves finding a specialty within your    profession that wouldnt be economical to automate. In Boston,    near the headquarters of Dunkin Donuts, a reporter recently    peered into the secret world of the Dunkin Donuts franchise    kings. One of them, Gary Joyal, makes a good living (if his    Rolls-Royce is any indication) by connecting buyers and sellers    of Dunkin Donuts franchises. As the Boston Globe     put it, Joyal uses his encyclopedic knowledge of    franchiseesand often their family situations, income    portfolios, and estate plansto make himself an indispensable    player for buyers and sellers alike. So far he has helped to    broker half a billion dollars worth of deals.  <\/p>\n<p>    Could Joyals encyclopedic knowledge be encoded in software?    Probably. But no one would make enough doing so to put a Rolls    in the driveway. Its just too small a category. The same is    true of Claire Bustarrets work. Johns    Hopkins Magazine reports that Bustarret has made a    career out of knowing paper like other French people know    wine. Her ability to determine from a sheets texture, feel,    and fibers when and where the paper was made is extremely    valuable to historians and art authenticators. Maybe what she    knows could be put in a database, and her analytical techniques    could be automated. But in the meantime, she would have learned    more.  <\/p>\n<p>    Those who step narrowly find such niches and burrow deep inside    them. They are hedgehogs to the stepping-up foxes among us.    Although most of them have the benefit of a formal education,    the expertise that fuels their earning power is gained through    on-the-job trainingand the discipline of focus. If this is    your strategy, start making a name for yourself as the person    who goes a mile deep on a subject an inch wide. That wont mean    you cant also have other interests, but professionally youll    have a very distinct brand. How might machines augment you?    Youll build your own databases and routines for keeping    current, and connect with systems that combine your very    specialized output with that of others.  <\/p>\n<p>    Finally, stepping forward means constructing the next    generation of computing and AI tools. Its still true that    behind every great machine is a personin fact, many people.    Someone decides that the Dunkin Franchise Optimizer is a bad    investment, or that the application of AI to cancer drug    discovery is a good one. Someone has to build the next great    automated insurance-underwriting solution. Someone intuits the    human need for a better system; someone identifies the part of    it that can be codified; someone writes the code; and someone    designs the conditions under which it will be applied.  <\/p>\n<p>    Clearly this is a realm in which knowledge workers need strong    skills in computer science, artificial intelligence, and    analytics. In his book Data-ism, Steve Lohr offers stories of some    of the people doing this work. For example, at the E. & J.    Gallo Winery, an executive named Nick Dokoozlian teams up with    Hendrik Hamann, a member of IBMs research staff, to find a way    to harness the data required for precision agriculture at    scale. In other words, they want to automate the painstaking    craft of giving each grapevine exactly the care and feeding it    needs to thrive. This isnt amateur hour. Hamann is a physicist    with a thorough knowledge of IBMs prior application of    networked sensors. Dokoozlian earned his doctorate in plant    physiology at what Lohr informs us is the MIT of wine    sciencethe University of California at Davisand then taught    there for 15 years. Were tempted to say that this team knows    wine the way some French people know paper.  <\/p>\n<p>    Stepping forward means bringing about machines next level of    encroachment, but it involves work that is itself highly    augmented by software. A glance at Hamanns LinkedIn page is    sufficient to make the point: Hes been endorsed by contacts    for his expert use of simulations, algorithms, machine    learning, mathematical modeling, and more. But spotting the    right next opportunity for automation requires much more than    technical chops. If this is your strategy, youll reach the top    of your field if you can also think outside the box, perceive    where todays computers fall short, and envision tools that    dont yet exist. Someday, perhaps, even a lot of software    development will be automated; but as Bill Gates recently    observed, programming is safe for now.  <\/p>\n<p>    Our conversations to date with professionals in a wide range of    fieldsradiologists, financial advisers, teachers, architects,    journalists, lawyers, accountants, marketers, and other experts    of many kindssuggest that whatever the field, any of the five    steps weve just laid out is possible. Not all of them are    right for a given individual, but if you can figure out which    one is right for you, youll be on your way to an augmentation    strategy.  <\/p>\n<p>    You might not get very far, however, if employers in your field    dont buy in to augmentation. The world suffers from an    automation mindset today, after all, because businesses have    taken us down that path. Managers are always acutely aware of    the downside of human employeesor, to use the technologists    favored dysphemism for them, wetware. Henry Ford famously    said, Why is it every time I ask for a pair of hands, they    come with a brain attached?  <\/p>\n<p>    For augmentation to work, employers must be convinced that the    combination of humans and computers is better than either    working alone. That realization will dawn as it becomes    increasingly clear that enterprise success depends much more on    constant innovation than on cost efficiency. Employers have    tended to see machines and people as substitute goods: If one    is more expensive, it makes sense to swap in the other. But    that makes sense only under static conditions, when we can    safely assume that tomorrows tasks will be the same as    todays.  <\/p>\n<p>    Yuh-Mei Hutt told us that in her small business (Golden    Lighting, a manufacturer of residential fixtures), automation    has made operations much more efficient. But that means    profitability depends now more than ever on the creativity of    her people. Her designers need to know about trends in the    interior design world and in lighting technology and must find    fresh ways to pull them together. Her salespeople rely on CRM    software, but their edge comes from how well they connect in    person with retail buyers.  <\/p>\n<p>    In an era of innovation, the emphasis has to be on the upside    of people. They will always be the source of next-generation    ideas and the element of operations that is hardest for    competitors to replicate. (If you think employees today lack    loyalty, you havent noticed how fast software takes up with    your rivals.) Yes, people are variable and unpredictable;    capable of selfishness, boredom, and dishonesty; hard to teach    and quick to tireall things that robots are not. But with the    proper augmentation, you can get the most out of the positive    qualities on which they also hold a monopoly. As    computerization turns everything that can be programmed into    table stakes, those are the only qualities that will set you    apart.  <\/p>\n<p>    To be sure, many of the things knowledge workers do today will    soon be automated. For example, the future role of humans in    financial advising isnt fully clear, but its unlikely that    those who remain in the field will have as their primary role    recommending an optimal portfolio of stocks and bonds. In a    recent conversation, one financial adviser seemed worried: Our    advice to clients isnt fully automated yet, he said, but    its feeling more and more robotic. My comments to clients are    increasingly supposed to follow a script, and we are strongly    encouraged to move clients into the use of these online tools.    He expressed his biggest fear outright: Im thinking that over    time they will phase us out altogether. But the next words out    of his mouth more than hinted at his salvation: Reading    scripts is obviously something a computer can do; convincing a    client to invest more money requires some more skills. Im    already often more of a psychiatrist than a stockbroker.  <\/p>\n<p>    Thats not a step down. Its at least a step aside, and    probably a step up. The adviser and his firm need only to see    it that way and then build on it. For the foreseeable future,    prompting savers and investors to make wiser financial choices    will not be an automated task.  <\/p>\n<p>    The strategy that will work in the long term, for employers and    the employed, is to view smart machines as our partners and    collaborators in knowledge work. By emphasizing augmentation,    we can remove the threat of automation and turn the race with    the machine into a relay rather than a dash. Those who are able    to smoothly transfer the baton to and from a computer will be    the winners.  <\/p>\n<p><!-- Auto Generated --><\/p>\n<p>Read this article:<\/p>\n<p><a target=\"_blank\" rel=\"nofollow\" href=\"https:\/\/hbr.org\/2015\/06\/beyond-automation\" title=\"Beyond Automation - hbr.org\">Beyond Automation - hbr.org<\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p> Idea in Brief The Threat Automation has traditionally displaced workers, forcing them onto higher ground that machines have not yet claimed. Today, as artificial intelligence encroaches on knowledge work, it can be hard to see how humans will remain employed in large numbers.  <a href=\"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/automation\/beyond-automation-hbr-org\/\">Continue reading <span class=\"meta-nav\">&rarr;<\/span><\/a><\/p>\n","protected":false},"author":8,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[187732],"tags":[],"class_list":["post-174793","post","type-post","status-publish","format-standard","hentry","category-automation"],"_links":{"self":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/posts\/174793"}],"collection":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/users\/8"}],"replies":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/comments?post=174793"}],"version-history":[{"count":0,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/posts\/174793\/revisions"}],"wp:attachment":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/media?parent=174793"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/categories?post=174793"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/tags?post=174793"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}