Friday, May 5, 2023

The coronation of King Charles III: 5 Essential reads on the big royal bash – and what it all means

A yarn of pomp and pageantry. Planet One Images/UCG/Universal Images Group via Getty Images
Matt Williams, The Conversation

The United Kingdom is about to embark on an orgy of flag-waving pomp and pageantry in celebration of King Charles III’s coronation.

Charles is already the ruling monarch, having ascended to the throne following the death of his mother Queen Elizabeth II in 2022. So this is more of a chance for him and everyone else to dress up and have a bit of an old-fashioned royal knees-up.

Despite events taking place in a relatively small island off the coast of mainland Europe, the footage of King Charles being anointed with oil and accepting the regalia of state will be broadcast across the world. Here is The Conversation’s guide on what to expect.

1. 3 days of celebration

Not content with dedicating just one day to the coronation, the Brits are putting on a three-day extravaganza starting May 6, 2023. As Pauline Maclaran from the Royal Holloway University of London explained, that Saturday will be dedicated to the actual formal proceedings. Sunday will give way to street parties across the U.K. The final installment takes place on Monday, a day when the British public will be excused from work but encouraged to spend the day volunteering.

A postcard of King Charles III.
A souvenir of the big occasion. Mike Kemp/In Pictures via Getty Images

But it won’t just be Brits marking the occasion, especially at the central event on Saturday. As Maclaran noted: “In testimony to the monarchy’s ‘soft power,’ foreign dignitaries and world leaders will be among the 2,000 anticipated guests taking their places in the abbey alongside members of the royal family. …”

2. A notable no-show

There will be one notable absence among the overseas well-wishers at the coronation: President Joe Biden.

The U.S. leader’s decision not to attend has resulted in some U.K. newspapers’ raising a stink over a “royal snub.” Not so, wrote Arianne Chernock, a royal watcher at Boston University. In fact, no U.S. president has ever attended a British monarch’s coronation.

But, Chernock notes, what is perhaps of more importance is whom the U.S. leader sends in his stead. Delving through the experiences of Biden’s predecessors, she noted: “If history is a guide, who is sent across the Atlantic will telegraph particular American ideas and aspirations. The delegation will also reflect the president’s own personal agenda.”

In the past, that has meant signaling America’s disgust at the rise of European fascism and recognizing the changing role of women in society.

3. But look who is going

Some have put Biden’s decision not to attend down to a purported animosity “Irish Joe” feels toward the British. That far-fetched theory seems even more so when you look at who is attending.

Michelle O'Neill, president of Sinn Féin – a political party that has as a central aim the end of British rule in Northern Ireland – noted in her response to the invite that while she is an Irish republican, she recognizes “there are many people on our island for whom the coronation is a hugely important occasion.”

As Peter John McLoughlin at Queen’s University Belfast pointed out, in framing language in an all-Ireland context, O'Neill was signaling her refusal to accept Ireland’s partition. But her presence nonetheless points at a meaningful commitment to the Northern Ireland peace process.

“Charles’ invitation to Sinn Féin to attend his coronation is in keeping with this process of reconciliation and the normalization of relations between Britain and Ireland. Sinn Féin’s acceptance of the invitation is part of the same effort, but also has a more political intent,” McLoughlin wrote.

4. Charles’ transatlantic cousins

Most Americans did not got an invite for the coronation. But that shouldn’t stop residents of Buckingham, Virginia, or Westminster, Colorado, from joining in the fun alongside the folk of their place namesakes in the U.K. Indeed, there might be one or two people there who can legitimately lay claim to having a bit of royal blood themselves.

Turi King, professor of genetics and public engagement at the University of Leicester in the U.K., did the number crunching and found that for those who claim any British ancestry, “the chances that not one of your 13-times great grandparents was directly descended from Edward III are tiny.” It’s all down to math, you see.

“It’s fair to ask what it really means to say that someone is a direct descendant of royalty,” King pondered. “My experience is that it means something different to each person. As a geneticist I would find it fascinating to know how I’m related to royalty, but I’d be equally interested to know about the lives of my other many ancestors. To me the most thought-provoking aspect is that we’re all related to one another.”

5. What next for Charles?

So what comes after the coronation party? For Charles it may be a right-royal hangover – one hundreds of years in the making.

Tobias Harper of Arizona State University noted that Charles faces major challenges. Many countries, including those that are part of the Commonwealth, are reevaluating their colonial past – and that leads to uncomfortable questions about the role of the British monarchy and what role, if any, the current king should have.

Meanwhile at home, he has inherited a United Kingdom that looks decidedly un-united amid the fallout of Brexit and growing fissures between the four nations it represents. And then there is Charles’ own perceived faults – his meddling in politics, which stand in contrast to his mother’s political neutrality.

“If being king in 2022 sounds tricky, it’s because it is,” wrote Harper. “Charles will struggle to serve all his constituencies well. There are many ways he can fail. It’s not even clear what ‘success’ means for a British monarch in the 21st century. Is it influence? Harmony? Reflecting society? Setting a good example? Survival?”

Matt Williams, Senior Breaking News and International Editor, The Conversation

This article is republished from The Conversation under a Creative Commons license. 

Thursday, May 4, 2023

Prepárese para salvar una vida: Comprender los 2 pasos de la RCP solo con las manosv

Cada año, 350,000 personas mueren a causa de un paro cardíaco en Estados Unidos. Sin embargo, la intervención práctica de emergencia, como la reanimación cardiopulmonar (o RCP), por parte de un testigo presencial puede marcar la diferencia entre la vida y la muerte en emergencias de paro cardíaco repentino.

De hecho, si la RCP se realiza de inmediato, puede duplicar o triplicar las posibilidades de supervivencia de la víctima de un paro cardíaco, según la American Heart Association (Asociación Americana del Corazón). Durante los primeros minutos que una persona sufre un paro cardíaco, las compresiones torácicas pueden ayudar a mantener activo el flujo sanguíneo y empujar el oxígeno restante a través del cuerpo para mantener vivos los órganos vitales, lo que amplía las oportunidades de una reanimación exitosa una vez que llegue el personal médico capacitado.

Debido a que el 88 % de los paros cardíacos (una falla eléctrica en el corazón que provoca un latido cardíaco irregular (arritmia) e interrumpe el flujo de sangre al cerebro, los pulmones y otros órganos) ocurren en el hogar, a menudo es un amigo o familiar quien presencia cómo un hijo, cónyuge, padre o amigo sufre un paro cardíaco. Dado que la supervivencia puede depender de la rapidez con la que se inicia la RCP, se recomienda la RCP solo con compresiones o RCP solo con las manos a personas que ven a un adolescente o un adulto colapsar repentinamente en un entorno extrahospitalario, como en el hogar o en el trabajo, o en un parque.

“Al capacitar a las personas en RCP solo con las manos, las estamos preparando para que actúen si un ser querido necesita ayuda, ya que la mayoría de los paros cardíacos ocurren en el hogar”, dijo el Dr. Anezi Uzendu, MD, Cardiólogo intervencionista y voluntario de la American Heart Association.

Como parte de la iniciativa del Día Nacional de la Reanimación Cardíaca (Restart a Heart Day), la American Heart Association tiene como objetivo aumentar la conciencia sobre la importancia de la RCP por parte de testigos presenciales a través de su campaña de RCP solo con las manos, respaldada a nivel nacional por Elevance Health Foundation, y proporciona estos dos sencillos pasos:

  • Llame al 911 (o envíe a alguien para que lo haga).
  • Presione fuerte y rápido en el centro del pecho de la persona que sufre un paro cardíaco.

Usar el ritmo de una canción familiar que tenga de 100 a 120 pulsos por minuto, como “Stayin' Alive” de los Bee Gees, puede ayudarle a mantener el ritmo de las compresiones necesarias.

"Poder realizar RCP solo con las manos de manera eficiente en el momento puede significar la diferencia entre la vida y la muerte, y al seguir estos dos sencillos pasos podemos aumentar las posibilidades de que una persona sobreviva a un paro cardíaco", dijo Shantanu Agrawal, MD, Médico de Urgencias y Emergencias certificado por la Junta y responsable de salud de Elevance Health. "Como colaboradores de larga data de la American Heart Association, seguimos enfocados en trabajar juntos para mejorar las desigualdades en salud en nuestras comunidades al ampliar el acceso a la capacitación y aumentar la cantidad de personas que aprenden y se sienten seguras al realizar RCP solo con las manos para salvar vidas".

Para encontrar más información y recursos, visite heart.org/CPR.

Barra lateral: Seis eslabones de la cadena de supervivencia extrahospitalaria en adultos
Cuando se ejecuta correctamente, una fuerte cadena de supervivencia (o una serie de acciones) puede mejorar las posibilidades de supervivencia y recuperación de las víctimas de un paro cardíaco repentino. La RCP solo con las manos es un paso crítico en la Cadena de Supervivencia de la American Heart Association, que también incluye:

  • Activación de respuesta de emergencia: reconozca los síntomas de un paro cardíaco y llame al 911.
  • RCP de alta calidad: presione fuerte y rápido en el centro del pecho de la víctima hasta que llegue el personal de emergencia.
  • Desfibrilación: utilice un desfibrilador externo automático (automated external defibrillator, AED) para reiniciar el corazón de la víctima y restablecerlo a un ritmo saludable.
  • Reanimación avanzada: los profesionales médicos proporcionan servicios médicos adicionales que salvan vidas.
  • Atención posterior al paro cardíaco: traslade a la víctima a un hospital o centro de tratamiento apropiado para optimizar la supervivencia, la función de los órganos y la recuperación neurológica.
  • Recuperación: los sobrevivientes reciben tratamiento adicional, observación, rehabilitación y apoyo psicológico para ayudar en la recuperación y ayudar a prevenir paros cardíacos recurrentes.


SOURCE:
American Heart Association

Small businesses seek to avoid possible credit crunch as Federal Reserve raises rates once more

Most small businesses rely on loans to finance at least some of their operations. Westend61/Getty Images
D. Brian Blank, Mississippi State University and Brandy Hadley, Appalachian State University

Small businesses – the heartbeat of the U.S. economy – are beginning to feel the pinch of tighter credit conditions as the Federal Reserve continues to increase borrowing costs.

A flurry of headlines in recent weeks has suggested a credit crunch – meaning the availability of lending gets scarcer – is already happening.

That’s in large part brought on by the actions of the Federal Reserve, which has been raising borrowing costs for companies and consumers for over a year in an effort to tame inflation and lifted rates by another quarter point on May 3, 2023. Concerns about the availability of credit have also risen as a result of a spate of bank failures, including that of First Republic on May 1.

A decline in the availability of loans and other financing poses problems for all types of companies. But this can be particularly detrimental to small businesses, which have limited resources to sustain their growth and rely heavily on regional bank financing, currently the most stressed pocket of lending.

Small but mighty

Despite their size, small businesses – typically defined as companies with under 500 employees – are a very important part of the U.S. economy.

Almost all of them, however, employ fewer than 20. And yet collectively they account for half of all private-sector workers and 44% of private-sector output.

And virtually all for-profit companies are considered small businesses.

Small businesses don’t borrow a lot of money, with the average size of their debt just US$195,000. Altogether, though, it really adds up. At the end of 2022, small businesses owed nearly $18 trillion in debt.

About 70% of small businesses have at least some outstanding debt, which they use to help cover basic operating expenses like wages, rent and inventory, as well as to invest in new equipment and the like. After individual savings, the second-most common source of capital to start a business is loans from a bank, so the ability to access capital is crucial for businesses – a lack of financing is often cited as the primary reason for failure.

While large companies have a range of financing options at their disposal, such as raising capital by selling stock or issuing convertible bonds, small businesses generally rely on bank loans for over 90% of their financing.

Consequently, if bank lending becomes harder to come by, they may need to cut spending or seek alternative sources of more expensive capital to continue investing and expanding. This could have implications for employment and commercial real estate, leading to further slowdowns in growth.

The last time small businesses faced similar financing challenges was during the 2008 financial crisis, when 1.8 million small businesses failed.

Signs of credit tightening

Whether or not the current banking turmoil is creating a serious credit crunch for small businesses remains an open question.

The stories warning of a crunch point to a variety of statistics. For example, the money supply is shrinking at the fastest pace since 1960. Bank lending fell in March by the most since the Fed began compiling the data in 1975. And the share of U.S. banks that say they’re tightening credit standards versus loosening them is at a level that has preceded the past few recessions.

But the money supply was already very elevated, commercial bank lending has recovered somewhat since March, and this is the first time in decades that credit has tightened as a result of rate increases, which is different from other recent recessions. In those cases, credit tightening may very well have been the consequence of the downturn, as opposed to the cause.

In addition, a monthly survey on small business economic trends conducted by the National Federation of Independent Business, a lobbying group, found that overall optimism remained high in March, the latest data available.

Yet the survey did find that more business owners reported that it was harder to get a loan than in the past. Banks continue to tighten their lending standards to levels approaching those seen during the pandemic as policymakers consider stricter regulations to prevent the bank crisis from spreading.

This tightening of credit could lead to decreased capital expenditures and slower payroll growth in the future. These challenges for small businesses may ultimately end up causing the economy to decelerate further after a sluggish first quarter.

When companies have limited cash during a potential downturn, bankruptcy and company failures can occur, which is almost what happened in March, when Silicon Valley Bank was on the brink of causing many companies to lose the deposits they needed to make payroll.

Room for optimism

On the bright side, companies have been bracing for reduced access to credit since at least March 2022, when the Fed began raising rates.

What’s more, they’ve been anticipating that higher rates could drive the U.S. into recession. That means they should have had plenty of time to prepare to weather most potential storms.

In addition, strong consumer spending, overall healthy bank balance sheets, steady growth in new business creation and a regulatory response that aims to ensure credit doesn’t dry up too much could help avert a credit crisis for small businesses.

But with a fourth bank failing and lingering uncertainty as to whether the quarter-point hike on May 3 will be the Fed’s last, we believe small businesses – and the U.S. economy – aren’t out of the woods quite yet.

Still, with the number of new business applications growing, we anticipate more businesses next year than the U.S. has today, and that may be welcome news for an economy trudging through a challenging environment.

This article was updated to include details of Fed rate hike.

D. Brian Blank, Assistant Professor of Finance, Mississippi State University and Brandy Hadley, Associate Professor of Finance and the David A. Thompson Distinguished Scholar in Applied Investments, Appalachian State University

This article is republished from The Conversation under a Creative Commons license. 

Why are so many Gen Z-ers drawn to old digital cameras?

A student on a school bus holding a digital point-and-shoot camera. Jason Zhang/Wikimedia Commons
Tim Gorichanaz, Drexel University

The latest digital cameras boast ever-higher resolutions, better performance in low light, smart focusing and shake reduction – and they’re built right into your smartphone.

Even so, some Gen Z-ers are now opting for point-and-shoot digital cameras from the early 2000s, before many of them were born.

It’s something of a renaissance, and not just for older cameras. The digital camera industry as a whole is seeing a resurgence. Previously, industry revenue peaked in 2010 and was shrinking annually through 2021. Then it saw new growth in 2022, and it is projected to continue growing for the coming years.

But why?

One explanation is nostalgia, or a yearning for the past. And indeed, nostalgia can be an effective coping strategy in times of change and upheaval – the COVID-19 pandemic is just one of the disorienting shifts of the past few decades.

But my research on people’s experiences with technology, which includes photography, suggests a deeper explanation: seeking meaning.

It’s not that these Gen Z-ers are longing to return to childhood, but that they are finding and expressing their values through their technological choices. And there’s a lesson here for everyone.

The human need for meaning

Humans have many needs – food, shelter, sex and so on. But humans also feel the urge to find meaning in life.

Meaning is different from happiness. Though happiness and meaning are often correlated, meaning doesn’t necessarily include the pleasure that characterizes happiness. Meaningful pursuits may involve struggle, suffering or even sacrifice. Meaning also lasts longer, whereas happiness is fleeting.

What does meaning do for people?

At its core, meaning is about identifying one’s values and making choices to develop oneself as a person. It allows a person to engage with the various aspects of their personality – “the multitudes” contained therein, as Walt Whitman wrote.

Put differently, meaning is about weaving a personal narrative from the facts of life. And it really is a need, not just something that’s nice to have. Meaning is what makes life feel valuable and worth living.

Seeking meaning with technology

Why do people adopt one technology over another? According to what scholars call the technology acceptance model, people consider two major aspects when choosing a technology: its perceived usefulness and its perceived ease of use.

But certainly there are other considerations, especially for personal technologies. People choose some technologies for the way they contribute to meaning. And the search for meaning extends beyond choosing a technology to the way a person uses and experiences it. For example, many people use social media in constructing their sense of self.

In my own research, I discerned four themes involved in people’s meaningful experiences with technology:

  1. Presence: People choose formats and technologies that will help them be more present and attentive during the experience.
  2. Centripetal force: A person’s relationship with the technology begins with a central practice but gradually expands to become a bigger part of their life. For example, as a person’s photography practice becomes more meaningful, they may find themselves printing photos, curating their collection and shopping for more equipment.
  3. Curiosity: A sense of wonder and interest guides the experience.
  4. Self-construction: Meaningful experiences with technology contribute to the person’s sense of self.

In my research on ultra-distance runners, who run races even longer than marathons, I saw all these elements at play. Runners chose particular shoes, GPS watches, sensors and software – or avoided them – in part to be more present with their bodies.

This can make the running itself more meaningful, along with other activities such as writing race recaps, keeping a training log and sharing photos.

Runner wearing orange pinnie checks watch.
Marathoner Youssef Sbaai checks his watch after winning the Sofia Marathon in October 2020. Artur Widak/NurPhoto via Getty Images

Over time, running becomes a central part of a person’s identity – they become “a runner.” In the end, long-distance running is not always enjoyable, but it is definitely meaningful.

And so technology, whether it’s the kind associated with running or some other activity, becomes a key way people can discern their values and make choices that support and better embody those values.

The meaning within old digital cameras

In this context, using a standalone digital camera immediately enhances the meaningfulness of an experience. Meaning is about exercising choice, and nowadays most people don’t own a camera at all – they just use their smartphone.

Digital cameras also enable presence: You need to remember to carry the camera around, and in return it won’t give you notifications or show you other apps while you’re shooting.

A sleek and minimalist point-and-shoot digital camera from 2008.
A 2008 Nikon Coolpix S520, one example of the kinds of digital cameras seeing a resurgence today. Simon Speed/Wikimedia Commons

That goes for any standalone camera. But old cameras, in particular, have a set of qualities that help users make meaning.

First, the image quality is poorer. But on social media, photos that get posted are less about polish and precision and more about sharing experiences and telling stories. As social media theorist Nathan Jurgenson writes in his book “The Social Photo,” “As a medium, social photography becomes an important means to experience something not representable as an image but instead as a social process: an appreciation of impermanence for its own sake.”

As a person chooses which photos to share and how to edit them, they are expressing their values and developing their sense of self. To some extent, smartphone photo filters allow for some of this expression, but old digital cameras produce different kinds of visual effects and lack the automated features designed to professionalize the look of each image.

Older cameras also introduce challenges in getting the images onto social media. They require cables, software and multiple steps to transfer the images. It’s a far cry from one-click image generation with artificial intelligence. What this means is that photography involves many more activities beyond simply taking photos. Photography becomes a bigger part of one’s life.

All this friction increases a person’s involvement in the process, inviting choices along the way. This is precisely the thinking behind the slow technology movement, which aims to design technology for goals like self-reflection, rather than efficiency or productivity. Research on meaningful design shows people form stronger attachments to products when they have to make more choices or get more involved.

When it comes to finding meaning in older forms of photography – whether you use a digital camera or a film camera – the slower process of creating and sharing images outweighs the speed, efficiency and crisp imagery of smartphone cameras.

Crafting a more meaningful life

The meaning hidden within old digital cameras contains broader lessons.

In recent years, critics have bemoaned the rupturing of social institutions and the transformation of digital platforms into places that merely serve as vehicles to sell ads and collect data from users. During the pandemic, life itself threatened to go digital with all the hype surrounding the metaverse.

I believe that a key to living well in the near future is to identify where you can create choices, so you don’t feel like you’re drifting along at the mercy of algorithms and the whims of Big Tech.

Perhaps you could start a chapter of the Luddite Club – as a group of teens in Brooklyn recently did – and play board games in the park on weekends. Perhaps you could opt for a paper book rather than a podcast, specifically because you can’t do something else while you’re reading it.

On the surface, deliberately rejecting the latest, flashiest forms of technology may seem like a problem – “You’ll be left behind and miss out!”

But on the other hand, slowing down life by engaging with slower technology creates space to make choices more thoughtfully in relation to your values – and cultivate more meaningful involvement in your own life.

Tim Gorichanaz, Assistant Teaching Professor of Information Studies, Drexel University

This article is republished from The Conversation under a Creative Commons license.

Wednesday, May 3, 2023

Automation threatens to replace some workers but can grow overall employment. The one sure thing is that technology will change how we labor.

Back in the 1990s, when US banks started installing automated teller machines in a big way, the human tellers who worked in those banks seemed to be facing rapid obsolescence. If machines could hand out cash and accept deposits on their own, around the clock, who needed people?

The banks did, actually. It’s true that the ATMs made it possible to operate branch banks with many fewer employees: 13 on average, down from 20. But the cost savings just encouraged the parent banks to open so many new branches that the total employment of tellers actually went up.

The robots are coming: SpaceX founder Elon Musk, and the late physicist Stephen Hawking both publicly warned that machines will eventually start programming themselves, and trigger the collapse of human civilization.

You can find similar stories in fields like finance, health care, education and law, says James Bessen, the Boston University economist who called his colleagues’ attention to the ATM story in 2015. “The argument isn’t that automation always increases jobs,” he says, “but that it can and often does.”

That’s a lesson worth remembering when listening to the increasingly fraught predictions about the future of work in the age of robots and artificial intelligence. Think driverless cars, or convincingly human speech synthesis, or creepily lifelike robots that can run, jump and open doors on their own: Given the breakneck pace of progress in such applications, how long will there be anything left for people to do?

That question has been given its most apocalyptic formulation by figures such as Tesla and SpaceX founder Elon Musk and the late physicist Stephen Hawking. Both have publicly warned that the machines will eventually exceed human capabilities, move beyond our control and perhaps even trigger the collapse of human civilization. But even less dramatic observers are worried. In 2014, when the Pew Research Center surveyed nearly 1,900 technology experts on the future of work, almost half were convinced that artificially intelligent machines would soon lead to accelerating job losses — nearly 50 percent by the early 2030s, according to one widely quoted analysis. The inevitable result, they feared, would be mass unemployment and a sharp upswing in today’s already worrisome levels of income inequality. And that could indeed lead to a breakdown in the social order.

“It’s always easier to imagine the jobs that exist today and might be destroyed than it is to imagine the jobs that don’t exist today and might be created.”

Jed Kolko

Or maybe not. “It’s always easier to imagine the jobs that exist today and might be destroyed than it is to imagine the jobs that don’t exist today and might be created,” says Jed Kolko, chief economist at the online job-posting site Indeed. Many, if not most, experts in this field are cautiously optimistic about employment — if only because the ATM example and many others like it show how counterintuitive the impact of automation can be. Machine intelligence is still a very long way from matching the full range of human abilities, says Bessen. Even when you factor in the developments now coming through the pipeline, he says, “we have little reason in the next 10 or 20 years to worry about mass unemployment.”

So — which way will things go?

There’s no way to know for sure until the future gets here, says Kolko. But maybe, he adds, that’s not the right question: “The debate over the aggregate effect on job losses versus job gains blinds us to other issues that will matter regardless” — such as how jobs might change in the face of AI and robotics, and how society will manage that change. For example, will these new technologies be used as just another way to replace human workers and cut costs? Or will they be used to help workers, freeing them to exercise uniquely human abilities like problem-solving and creativity?

“There are many different possible ways we could configure the state of the world,” says Derik Pridmore, CEO of Osaro, a San Francisco-based firm that makes AI software for industrial robots, “and there are a lot of choices we have to make.”

Automation and jobs: lessons from the past

In the United States, at least, today’s debate over artificially intelligent machines and jobs can’t help but be colored by memories of the past four decades, when the total number of workers employed by US automakers, steel mills and other manufacturers began a long, slow decline from a high of 19.5 million in 1979 to about 17.3 million in 2000 — followed by a precipitous drop to a low of 11.5 million in the aftermath of the Great Recession of 2007–2009. (The total has since recovered slightly, to about 12.7 million; broadly similar changes were seen in other heavily automated countries such as Germany and Japan.) Coming on top of a stagnation in wage growth since about 1973, the experience was traumatic.

True, says Bessen, automation can’t possibly be the whole reason for the decline. “If you go back to the previous hundred years,” he says, “industry was automating at as fast or faster rates, and employment was growing robustly.” That’s how we got to millions of factory workers in the first place. Instead, economists blame the employment drop on a confluence of factors, among them globalization,the decline of labor unions, and a 1980s-era corporate culture in the United States that emphasized down-sizing, cost-cutting and quarterly profits above all else.

But automation was certainly one of those factors. “In the push to reduce costs, we collectively took the path of least resistance,” says Prasad Akella, a roboticist who is founder and CEO of Drishti, a start-up firm in Palo Alto, California, that uses AI to help workers improve their performance on the assembly line. “And that was, ‘Let’s offshore it to the cheapest center, so labor costs are low. And if we can’t offshore it, let’s automate it.’”

AI and robots in the workplace

Automation has taken many forms, including computer-controlled steel mills that can be operated by just a handful of employees, and industrial robots, mechanical arms that can be programmed to move a tool such as a paint sprayer or a welding torch through a sequence of motions. Such robots have been employed in steadily increasing numbers since the 1970s. There are currently about 2 million industrial robots in use globally, mostly in automotive and electronics assembly lines, each taking the place of one or more human workers.

The distinctions among automation, robotics and AI are admittedly rather fuzzy — and getting fuzzier, now that driverless cars and other advanced robots are using artificially intelligent software in their digital brains. But a rough rule of thumb is that robots carry out physical tasks that once required human intelligence, while AI software tries to carry out human-level cognitive tasks such as understanding language and recognizing images. Automation is an umbrella term that not only encompasses both, but also includes ordinary computers and non-intelligent machines.

AI’s job is toughest. Before about 2010, applications were limited by a paradox famously pointed out by the philosopher Michael Polanyi in 1966: “We can know more than we can tell” — meaning that most of the skills that get us through the day are practiced, unconscious and almost impossible to articulate. Polanyi called these skills tacit knowledge, as opposed to the explicit knowledge found in textbooks.

Imagine trying to explain exactly how you know that a particular pattern of pixels is a photograph of a puppy, or how you can safely negotiate a left-hand turn against oncoming traffic. (It sounds easy enough to say “wait for an opening in traffic” — until you try to define an “opening” well enough for a computer to recognize it, or to define precisely how big the gap must be to be safe.) This kind of tacit knowledge contained so many subtleties, special cases and things measured by “feel” that there seemed no way for programmers to extract it, much less encode it in a precisely defined algorithm.

Today, of course, even a smartphone app can recognize puppy photos (usually), and autonomous vehicles are making those left-hand turns routinely (if not always perfectly). What’s changed just within the past decade is that AI developers can now throw massive computer power at massive datasets — a process known as “‘deep learning.” This basically amounts to showing the machine a zillion photographs of puppies and a zillion photographs of not-puppies, then having the AI software adjust a zillion internal variables until it can identify the photos correctly.

Although this deep learning process isn’t particularly efficient — a human child only has to see one or two puppies — it’s had a transformative effect on AI applications such as autonomous vehicles, machine translation and anything requiring voice or image recognition. And that’s what’s freaking people out, says Jim Guszcza, US chief data scientist at Deloitte Consulting in Los Angeles: “Wow — things that before required tacit knowledge can now be done by computers!” Thus the new anxiety about massive job losses in fields like law and journalism that never had to worry about automation before. And thus the many predictions of rapid obsolescence for store clerks, security guards and fast-food workers, as well as for truck, taxi, limousine and delivery van drivers.

Meet my colleague, the robot

The fact is that, even now, it’s very hard to completely replace human workers.

But then, bank tellers were supposed to become obsolete, too. What happened instead, says Bessen, was that automation via ATMs not only expanded the market for tellers, but also changed the nature of the job: As tellers spent less time simply handling cash, they spent more time talking with customers about loans and other banking services. “And as the interpersonal skills have become more important,” says Bessen, “there has been a modest rise in the salaries of bank tellers,” as well as an increase in the number of full-time rather than part-time teller positions. “So it’s a much richer picture than people often imagine,” he says.

Similar stories can be found in many other industries. (Even in the era of online shopping and self-checkout, for example, the employment numbers for retail trade are going up smartly.) The fact is that, even now, it’s very hard to completely replace human workers.

Steel mills are an exception that proves the rule, says Bryan Jones, CEO of JR Automation, a firm in Holland, Michigan, that integrates various forms of hardware and software for industrial customers seeking to automate. “A steel mill is a really nasty, tough environment,” he says. But the process itself — smelting, casting, rolling, and so on — is essentially the same no matter what kind of steel you’re making. So the mills have been comparatively easy to automate, he says, which is why the steel industry has shed so many jobs.

When people are better

“Where it becomes more difficult to automate is when you have a lot of variability and customization,” says Jones. “That’s one of the things we’re seeing in the auto industry right now: Most people want something that’s tailored to them,” with a personalized choice of color, accessories or even front and rear grills. Every vehicle coming down the assembly line might be a bit different.

It’s not impossible to automate that sort of flexibility, says Jones. Pick a task, and there’s probably a laboratory robot somewhere that has mastered it. But that’s not the same as doing it cost-effectively, at scale. In the real world, as Akella points out, most industrial robots are still big, blind machines that go through their motions no matter who or what is in the way, and have to be caged off from people for safety’s sake. With machines like that, he says, “flexibility requires a ton of retooling and a ton of programming — and that doesn't happen overnight.”

Contrast that with human workers, says Akella. The reprogramming is easy: “You just walk onto the factory floor and say, ‘Guys, today we’re making this instead of that.’” And better still, people come equipped with abilities that few robot arms can match, including fine motor control, hand-eye coordination and a talent for dealing with the unexpected.

All of which is why most automakers today don’t try to automate everything on the assembly line. (A few of them did try it early on, says Bessen. But their facilities generally ended up like General Motors’ Detroit-Hamtramck assembly plant,which quickly became a debugging nightmare after it opened in 1985: Its robots were painting each other as often as they painted the Cadillacs.) Instead, companies like Toyota, Mercedes-Benz and General Motors restrict the big, dumb, fenced-off robots to tasks that are dirty, dangerous and repetitive, such as welding and spray-painting. And they post their human workers to places like the final assembly area, where they can put the last pieces together while checking for alignment, fit, finish and quality — and whether the final product agrees with the customer’s customization request.

To help those human workers, moreover, many manufacturers (and not just automakers) are investing heavily in collaborative robots, or “cobots” — one of the fastest-growing categories of industrial automation today.

Collaborative robots: Machines work with people

Cobots are now available from at least half a dozen firms. But they are all based on concepts developed by a team working under Akella in the mid-1990s, when he was a staff engineer at General Motors. The goal was to build robots that are safe to be around, and that can help with stressful or repetitive tasks while still leaving control with the human workers.

To get a feel for the problem, says Akella, imagine picking up a battery from a conveyor belt, walking two steps, dropping it into the car and then going back for the next one — once per minute, eight hours per day. “I've done the job myself,” says Akella, “and I can assure you that I came home extremely sore.” Or imagine picking up a 150-pound “cockpit” — the car’s dashboard, with all the attached instruments, displays and air-conditioning equipment — and maneuvering it into place through the car’s doorway without breaking anything.

Devising a robot that could help with such tasks was quite a novel research challenge at the time, says Michael Peshkin, a mechanical engineer at Northwestern University in Evanston, Illinois, and one of several outside investigators that Akella included in his team. “The field was all about increasing the robots’ autonomy, sensing and capacity to deal with variability,” he says. But until this project came along, no one had focused too much on the robots’ ability to work with people.

So for their first cobot, he and his Northwestern colleague Edward Colgate started with a very simple concept: a small cart equipped with set of lifters that would hoist, say, the cockpit, while the human worker guided it into place. But the cart wasn’t just passive, says Peshkin: It would sense its position and turn its wheels to stay inside a “virtual constraint surface” — in effect, an invisible midair funnel that would guide the cockpit through the door and into position without a scratch. The worker could then check the final fit and attachments without strain.

Another GM-sponsored prototype replaced the cart with a worker-guided robotic arm that could lift auto components while hanging from a movable suspension point on the ceiling. But it shared the same principle of machine assistance plus worker control — a principle that proved to be critically important when Peshkin and his colleagues tried out their prototypes on General Motors’ assembly line workers.

“We expected a lot of resistance,” says Peshkin. “But in fact, they were welcoming and helpful. They totally understood the idea of saving their backs from injury.” And just as important, the workers loved using the cobots. They liked being able to move a little faster or a little slower if they felt like it. “With a car coming along every 52 seconds,” says Peshkin, “that little bit of autonomy was really important.” And they liked being part of the process. “People want their skills to be on display,” he says. “They enjoy using their bodies, taking pleasure in their own motion.” And the cobots gave them that, he says: “You could swoop along the virtual surface, guide the cockpit in and enjoy the movement in a way that fixed machinery didn’t allow.”

AI and its limits

Akella’s current firm, Drishti, reports a similarly welcoming response to its AI-based software. Details are proprietary, says Akella. But the basic idea is to use advanced computer vision technology to function somewhat like a GPS for the assembly line, giving workers turn-by-turn instructions and warnings as they go. Say that a worker is putting together an iPhone, he explains, and the camera watching from overhead believes that only three out of four screws were secured: “We alert the worker and say, ‘Hey, just make sure to tighten that screw as well before it goes down the line.’”

This does have its Big Brother aspects, admits Drishti’s marketing director, David Prager. “But we’ve got a lot of examples of operators on the floor who become very engaged and ultimately very appreciative,” he says. “They know very well the specter of automation and robotics bearing down on them, and they see very quickly that this is a tool that helps them be more efficient, more precise and ultimately more valuable to the company. So the company is more willing to invest in its people, as opposed to getting them out of the equation.”

This theme — using technology to help people do their jobs rather than replacing people — is likely to be a characteristic of AI applications for a long time to come. Just as with robotics, there are still some important things that AI can’t do.

Take medicine, for example. Deep learning has already produced software that can interpret X rays as well as or better than human radiologists, says Darrell West, a political scientist who studies innovation at the Brookings Institution in Washington, DC. “But we’re not going to want the software to tell somebody, ‘You just got a possible cancer diagnosis,’” he says. “You're still going to need a radiologist to check on the AI, to make sure that what it observed actually is the case” — and then, if the results are bad, a cancer specialist to break the news to the patient and start planning out a course of treatment.

Likewise in law, where AI can be a huge help in finding precedents that might be relevant to a case — but not in interpreting them, or using them to build a case in court. More generally, says Guszcza, deep-learning-based AI is very good at identifying features and focusing attention where it needs to be. But it falls short when it comes to things like dealing with surprises, integrating many diverse sources of knowledge and applying common sense — “all the things that humans are very good at.”

And don’t ask the software to actually understand what it’s dealing with, says Guszcza. During the 2016 election campaign, to test Google’s Translate utility, he tried a classic experiment: Take a headline — “Hillary slams the door on Bernie” — then ask Google to translate it from English to Bengali and back again. Result: “Barney slam the door on Clinton.” A year later, after Google had done a massive upgrade of Translate using deep learning, Guszcza repeated the experiment with the result: “Hillary Barry opened the door.”

“I don’t see any evidence that we’re going to achieve full common-sense reasoning with current AI,” he says, echoing a point made by many AI researchers themselves. In September 2017, for example, deep learning pioneer Geoffrey Hinton, a computer scientist at the University of Toronto, told the news site Axios that the field needs some fundamentally new ideas if researchers ever hope to achieve human-level AI.

Job evolution

AI’s limitations are another reason why economists like Bessen don’t see it causing mass unemployment anytime soon. “Automation is almost always about automating a task, not the entire job,” he says, echoing a point made by many others. And while every job has at least a few routine tasks that could benefit from AI, there are very few jobs that are all routine. In fact, says Bessen, when he systematically looked at all the jobs listed in the 1950 census, “there was only one occupation that you could say was clearly automated out of existence — elevator operators.” There were 50,000 in 1950, and effectively none today.

On the other hand, you don’t need mass unemployment to have massive upheaval in the workplace, says Lee Rainie, director of internet and technology research at the Pew Research Center in Washington, DC. “The experts are hardly close to a consensus on whether robotics and artificial intelligence will result in more jobs, or fewer jobs,” he says, “but they will certainly change jobs. Everybody expects that this great sorting out of skills and functions will continue for as far as the eye can see.”

Worse, says Rainie, “the most worried experts in our sample say that we’ve never in history faced this level of change this rapidly.” It’s not just information technology, or artificial intelligence, or robotics, he says. It’s also nanotechnology, biotechnology, 3-D printing, communication technologies — on and on. “The changes are happening on so many fronts that they threaten to overwhelm our capacity to adjust,” he says.

Preparing for the future of work

If so, the resulting era of constant job churn could force some radical changes in the wider society. Suggestions from Pew’s experts and others include an increased emphasis on continuing education and retraining for adults seeking new skills, and a social safety net that has been revamped to help people move from job to job and place to place. There is even emerging support in the tech sector for some kind of guaranteed annual income, on the theory that advances in AI and robotics will eventually transcend the current limitations and make massive workplace disruptions inevitable, meaning that people will need a cushion.

This is the kind of discussion that gets really political really fast. And at the moment, says Rainie, Pew’s opinion surveys show that it’s not really on the public’s radar: “There are a lot of average folks, average workers saying, ‘Yeah, everybody else is going to get messed up by this — but I’m not. My business is in good shape. I can’t imagine how a machine or a piece of software could replace me.’”

But it’s a discussion that urgently needs to happen, says West. Just looking at what’s already in the pipeline, he says, “the full force of the technology revolution is going to take place between 2020 and 2050. So if we make changes now and gradually phase things in over the next 20 years, it’s perfectly manageable. But if we wait until 2040, it will probably be impossible to handle.”

Editor’s note: This story was updated on August 1 to correct the details of an experiment by Jim Guszcza. The story originally said that an experiment during the 2016 election campaign was conducted to see how much deep learning had improved Google’s Translate ability; in fact, the 2016 experiment was conducted before Google had fully upgraded Translate with deep learning. The initial test was done with the headline “Hillary slams the door on Bernie,” not “Bernie slams the door on Hillary” as originally stated. The headline that resulted after translation from English to Bengali and back again was "Barney slam the door on Clinton," not “Barry is blaming the door at the door of Hillary's door.” The deep-learning improvements were tested a year later with the same initial headline and the resulting headline after the translation to Bengali and back was “Hillary Barry opened the door.”

This article originally appeared in Knowable Magazine, an independent journalistic endeavor from Annual Reviews. 

Humans beat robots, hands down

We can readily manipulate all kinds of objects; for them, versatility is a huge struggle. They need better mechanics — and a lot more of the intelligence that goes into handling things.

Like it or not, we’re surrounded by robots. Thousands of Americans ride to work these days in cars that pretty much drive themselves. Vacuum cleaners scoot around our living rooms on their own. Quadcopter drones automatically zip over farm fields, taking aerial surveys that help farmers grow their crops. Even scary-looking humanoid robots, ones that can jump and run like us, may be commercially available in the near future.

Robotic devices are getting pretty good at moving around our world without any intervention from us. But despite these newfound skills, they still come with a major weakness: The most talented of the bunch can still be stopped in their tracks by a simple doorknob.

The issue, says Matt Mason, a roboticist at Carnegie Mellon University, is that for all of robots’ existing abilities to move around the world autonomously, they can’t yet physically interact with objects in a meaningful way once they get there.

“What have we learned from robotics? The number one lesson is that manipulation is hard. This is contrary to our individual experience, since almost every human is a skilled manipulator,” writes Mason in a recent review article.

It’s a fair point. We humans manipulate the world around us without thinking. We grab, poke, twist, chop and prod objects almost unconsciously, thanks in part to our incredibly dexterous hands. As a result, we’ve built our worlds with those appendages in mind. All the cellphones, keyboards, radios and other tools we’ve handled throughout our lifetime have been designed explicitly to fit into our fingers and palms.

Not so for existing robots. At the moment, one of the most widely used robotic hand designs, called a “gripper,” is more or less identical to ones imagined on TV in the 1960s: a device made of two stiff metal fingers that pinch objects between them.

In a controlled environment like an assembly line, devices like these work just fine. If a robot knows that every time it reaches for a specific part, it’ll be in the same place and orientation, then grasping it is trivial. “It’s clear what kind of part is going to come down the conveyor belt, which makes sensing and perception relatively easy for a robot,” notes Jeannette Bohg, a roboticist at Stanford University.

The real world, on the other hand, is messy and full of unknowns. Just think of your kitchen: There may be piles of dishes drying next to the sink, soft and fragile vegetables lining the fridge, and multiple utensils stuffed into narrow drawers. From a robot’s perspective, Bohg says, identifying and manipulating that vast array of objects would be utter chaos.

“This is in a way the Holy Grail, right? Very often, you want to manipulate a wide range of objects that people commonly manipulate, and have been made to be manipulated by people,” says Matei Ciocarlie, a robotics researcher and mechanical engineer at Columbia University. “We can build manipulators for specific objects in specific situations. That’s not a problem. It’s versatility that’s the difficulty.”

To deal with the huge number of unique shapes and physical properties of those materials — whether they’re solid like a knife, or deformable, like a piece of plastic wrap — an ideal robotic appendage would necessarily be something that resembles what’s at the end of our arms. Even with rigid bones, our hands bend and flex as we grasp items, so if a robot’s hand can do the same, it could “cage” objects inside its grasp, and move them around on a surface by raking at them like an infant does her toys.

Engineering that versatility is no small feat. When engineers at iRobot — the same company that brought you the Roomba vacuum cleaner — developed a flexible, three-fingered “hand” several years ago, it was hailed as a major feat. Today, roboticists continue to turn away from a faithful replica of the human hand, looking toward squishy materials and better computational tools like machine learning to control them.

The quest for soft, flexible “hands”

“Humanlike grippers tend to be much more delicate and much more expensive, because you have a lot more motors and they’re packed into a small space,” says Dmitry Berenson, who studies autonomous robotic manipulation at the University of Michigan. “Really, you’ve got to have a lot of engineering to make it work, and a lot of maintenance, usually.” Because of those limitations, he says, existing humanlike hands aren’t widely used by industry.

For a robotic hand to be practical and even come close to a human’s in ability, it would have to be firm but flexible; be able to sense cold, heat and touch at high resolutions; and be gentle enough to pick up fragile objects but robust enough to withstand a beating. Oh, and on top of all that, it would have to be cheap.

To get around this problem, some researchers are looking to create a happy medium. They’re testing hands that mimic some of the traits of our own, but are far simpler to design and build. Each one uses soft latex “fingers” driven by tendon-like cables that pull them open and closed. The advantage of these sorts of designs is their literal flexibility — when they encounter an object, they can squish around it, form to its complex shape, and scoop it up neatly.

Such squishy “hands” offer a major improvement over a hard metal gripper. But they only begin to solve the issue. Although a rubbery finger works great for picking up all sorts of objects, it will struggle with fine motor skills needed for simple tasks like placing a coin into a slot — which involves not just holding the coin, but also feeling the slot, avoiding its edges, and sliding the coin inside. For that reason, says Ciocarlie, creating sensors that tell robots more about the objects they touch is an equally important part of the puzzle.

Our own fingertips have thousands of individual touch receptors embedded within the skin. “We don’t really know how to build those kinds of sensors, and even if we did, we would have a very hard time wiring them and getting that info back out,” Ciocarlie says.

The sheer number of sensors required would raise a second, even knottier issue: what to do with all that information once you have it. Computational methods that let a robot use huge amounts of sensory data to plan its next move are starting to emerge, says Berenson. But getting those abilities up to where they need to be may trump all other challenges researchers face in achieving autonomous manipulation. Building a robot that can use its “hands” quickly and seamlessly — even in completely novel situations — may not be possible unless engineers can endow it with a form of complex intelligence.

That brainpower is something many of us humans take for granted. To pick up a pencil on our desk, we simply reach out and grab it. When eating dinner, we use tongs, forks, and chopsticks to grab our food with grace and precision. Even amputees who have lost upper limbs can learn to use prosthetic hooks for tasks that require fine motor skills.

“They can tie their shoes, they can make a sandwich, they can get dressed — all with the simplest mechanism. So we know it’s possible if you have the right intelligence behind it,” Berenson says.

Teaching the machine

Getting to that level of intelligence in a robot may require a leap in the current methods researchers use to control them, says Bohg. Until recently, most manipulation software has involved building detailed mathematical models of real-world situations, then letting the robot use those models to plan its motion. One recently built robot tasked with assembling an Ikea chair, for example, uses a software model that can recognize each individual piece, understand how it fits together with its neighbors, and compare it to what the final product looks like. It can finish the assembly job in about 20 minutes. Ask it to assemble a different Ikea product, though, and it’ll be completely flummoxed.

Humans develop skills very differently. Instead of having deep knowledge on a single narrow topic, we absorb knowledge on the fly from example and practice, reinforcing attempts that work, and dismissing ones that don’t. Think back to the first time you learned how to chop an onion — once you figured out how to hold the knife and slice a few times, you likely didn’t have to start from scratch when you encountered a potato. So how does one get a robot to do that?

Bohg thinks the answer may lie in “machine learning,” a sort of iterative process that allows a robot to understand which manipulation attempts are successful and which aren’t — and enables it to use that information to maneuver in situations it’s never encountered.

“Before machine learning entered the field of robotics, it was all about modeling the physics of manipulation — coming up with mathematical descriptions of an object and its environment,” she says. “Machine learning lets us give a robot a bunch of examples of objects that someone has annotated, showing it, ‘Here is good place to grab.’” A robot could use these past data to look at an entirely new object and understand how to grasp it.

This method represents a major change from previous modeling techniques, but it may be a while before it’s sophisticated enough to let robots learn entirely on their own, says Berenson. Many existing machine-learning algorithms need to be fed vast amounts of data about possible outcomes — like all the potential moves in a chess game — before they can start to work out the best possible plan of attack. In other cases, they may need hundreds, if not thousands, of attempts to manipulate a given object before they stumble across a strategy that works.

That will have to change if a robot is to move and interact with the world as quickly as people can. Instead, Berenson says, an ideal robot should be able to develop new skills in just a few steps using trial and error, or be able to extrapolate new actions from a single example.

“The big question to overcome is, how do we update a robot’s models not with 10 million examples, but one?” he says. “To get it to a point where it says, ‘OK, this didn’t work, so what do I do next?’ That’s the real learning question I see.”

Mason, the roboticist from Carnegie Mellon, agrees. The challenge of programming robots to do what we do mindlessly, he says, is summed up by something called Moravec’s paradox (named after the robotics pioneer Hans Moravec, who also teaches at Carnegie Mellon). It states, in short, that what’s hard for humans to do is often handled with ease by robots, but what’s second nature for us is incredibly hard to program. A computer can play chess better than any person, for instance — but getting it to recognize and pick up a chess piece on its own has proved to be staggeringly difficult.

For Mason, that still rings true. Despite the gradual progress that researchers are making on robotic control systems, he says, the basic concept of autonomous manipulation may be one of the toughest nuts the field has yet to crack.

“Rational, conscious thinking is a relatively recent development in evolution,” he says. “We have all this other mental machinery that over hundreds of millions of years developed the ability to do amazing things, like locomotion, manipulation, perception. Yet all those things are happening below the conscious level.

“Maybe the stuff we think of as higher cognitive function, like being able to play chess or do algebra — maybe that stuff is dead trivial compared to the mechanics of manipulation.”

Editor's note: This story was updated on August 24, 2018, to correct a caption describing the Apollo robot experiment. Jeannette Bohg is not the person shifting the box in the video; it is another researcher.

This article originally appeared in Knowable Magazine, an independent journalistic endeavor from Annual Reviews. 

Rejected Oklahoma plea for death penalty commutation highlights clemency’s changing role in US death penalty system

Protesters demonstrate against the conviction and death sentence of Richard Glossip. Larry French/Getty Images for MoveOn.org
Austin Sarat, Amherst College

When the Oklahoma Pardon and Parole Board decided not to recommend clemency for death row inmate Richard Glossip, the case highlighted the role clemency plays in the death penalty system.

Glossip had asked the board to commute the sentence he had been given for his role in an alleged murder-for-hire plot. He was convicted of paying his co-defendant, Justin Sneed, to kill Barry Van Treese in 1997. Van Treese owned the motel where Glossip was the manager.

The board, which met April 26, 2023, was split 2-2 over recommending that Glossip’s sentence be changed to life in prison. The fifth member of the board recused himself because his spouse was involved in Glossip’s prosecution. A majority vote of three is required for a favorable clemency recommendation.

Because Oklahoma law does not permit clemency without a positive recommendation from the board, its decision sets the stage for Glossip’s execution on May 18.

From the start, Glossip, who had never before been arrested for any crime, maintained his innocence. His case has attracted wide attention, including from some of Oklahoma’s most conservative Republican legislators, who contend that if the state puts him to death it will be executing an innocent man.

Oklahoma’s case against Glossip rested on the testimony of Sneed, who was induced to be a witness with a promise of a reduced sentence. In addition, the prosecution destroyed evidence that would have supported Glossip’s claim of innocence, and new witnesses have come forward who further undermine confidence in the verdict.

An independent investigation by a law firm engaged by state legislators concluded that “no reasonable juror hearing the complete record would have convicted Richard Glossip of first-degree murder” and that his trial could not “provide a basis for the government to take … [his] life.”

Even the state’s Republican attorney general, Gentner Drummond, has said Glossip is probably innocent and that “it would be a grave injustice to allow the execution of a man whose trial was plagued by many errors.”

Drummond asked the Oklahoma Court of Criminal Appeals to vacate Glossip’s conviction and grant him a new trial. The court refused on April 20, 2023, which led to the parole board hearing the following week.

As someone who has studied the history of clemency in capital cases, I see three elements that make this case noteworthy: Attorney General Drummond’s actions, the attempt to use clemency to prevent a miscarriage of justice, and the fact that grants of clemency in death cases are today quite rare.

The role of the attorney general

A man in a suit and tie.
Oklahoma Attorney General Gentner Drummond. AP Photo/Sue Ogrocki

Clemency hearings like Glossip’s are proceedings in which opposing sides – representing the condemned and the government prosecutors – present evidence and arguments. In Oklahoma, family members of the victim are also given time to make their views known.

In 1998, the U.S. Supreme Court gave its approval to that kind of procedure when it held that clemency hearings must afford due process to the participants. The court said the condemned person must be given an opportunity to convince a clemency board that the government should not put them to death – just as the government gets to defend its decision to do so.

And, as my research indicates, that is what the government has almost always done when its representatives participate in such a process.

But not in the Glossip case. Drummond, his state’s top prosecutor, took the unprecedented step of siding with the petitioner – even against other state officials.

“I want to acknowledge how unusual it is for the state to support a clemency application of a death row inmate,” Drummond told the Pardon and Parole Board. “I’m not aware of any time in our history that an attorney general has appeared before this board and argued for clemency. I’m also not aware of any time in the history of Oklahoma when justice would require it.”

Clemency as grace – or justice

I believe Drummond’s reference to justice would have surprised many of this country’s founders.

For them, doing justice was a matter for the courts. Clemency was about something else.

In United States v. Wilson, a decision from 1833 and the first case about clemency to be decided by the United States Supreme Court, Chief Justice John Marshall made that distinction clear. Instead of equating clemency and justice, he called clemency an “act of grace, proceeding from the power entrusted with the execution of the laws.”

Clemency, Marshall continued, “exempts the individual on whom it is bestowed from the punishment the law inflicts for a crime he has committed. It is … delivered to the individual for whose benefit it is intended, and not communicated officially to the court.”

A little more than 20 years after Marshall wrote that, another Supreme Court justice, James Wayne, reinforced this separation of clemency and justice. He noted that clemency was about “forgiveness, release and remission.” Wayne said it was a “work of mercy … [that] forgiveth any crime, offense, punishment, execution, right, title, debt or duty, temporal or ecclesiastical.”

But over the course of American history, both public and judicial understandings of the purpose of clemency have changed, with grace, forgiveness and mercy being replaced by justice.

Clemency, especially in capital cases, has come to be associated almost exclusively with correcting errors made in trials and other legal proceedings. Clemency hearings are now generally just another arena to which inmates like Richard Glossip can appeal for justice.

This view reached its height in the 1989 Supreme Court decision Herrera v. Collins, in which the court said that “A proper remedy for the claim of actual innocence … would be executive clemency” – a commutation or a pardon granted by a governor or the president.

Clemency, the court continued – using language that neither Marshall nor Wayne would have recognized – “is the historic remedy for preventing miscarriages of justice where judicial process has been exhausted.”

One example of this use of clemency occurred in 1998, when Gov. George W. Bush commuted the death sentence of Henry Lee Lewis after what Bush said were “serious concerns … about his guilt in this case.”

Clemency is rare in capital cases

A man in a T-shirt
Richard Glossip. Oklahoma Department of Corrections via AP

Glossip, joined by Attorney General Drummond, sought clemency in the hope of preventing a miscarriage of justice like the one Bush cited as a reason to save Lewis’ life. Given the facts of Glossip’s case, what the Pardon and Parole Board did shocked many observers. But, from the perspective of clemency’s recent record in capital cases, the result should not have been surprising.

As my research has shown, a century ago clemency was granted in about 25% of capital cases. But in more recent years, according to the nonprofit Death Penalty Information Center, clemencies in capital cases have been “rare.” The center notes, “Aside from the occasional blanket grants of clemency by governors concerned about the overall fairness of the death penalty, less than two have been granted on average per year since 1976. In the same period, more than 1,500 cases have proceeded to execution.”

While the center does not indicate how often clemency was sought in those cases, requesting clemency is often a standard part of the efforts death penalty defense lawyers make to try to save their clients.

It is hard to get clemency in capital cases because, as the center explains, “Governors are subject to political influence, and even granting a single clemency can result in harsh attacks.” As a result, “clemencies in death penalty cases have been unpredictable and immune from review.”

And what is true nationwide is also true in Oklahoma where during the past half-century there have been only five grants of clemency in capital cases.

Following the denial of clemency, Glossip’s lawyers have promised to keeping fighting and are asking both state and federal courts to stay his execution. Meanwhile Gov. Kevin Stitt has said he will do nothing to delay Glossip’s date with death.

Austin Sarat, William Nelson Cromwell Professor of Jurisprudence and Political Science, Amherst College

This article is republished from The Conversation under a Creative Commons license. 

The Importance of Mental Wellness for a Healthy Heart and Brain

Research shows anxiety, stress and depression can have a negative impact on physical health and may even increase the risk for heart disease and stroke.

In fact, the American Heart Association, the world’s leading nonprofit organization focused on heart and brain health, identified a strong interconnection between the mind, heart and body in its scientific statement, “Psychological Health, Well-Being and the Mind-Heart-Body Connection.”

“Research has clearly demonstrated negative psychological factors, personality traits and mental health disorders can negatively impact cardiovascular health,” said volunteer chair of the statement writing committee Glenn N. Levine, M.D., FAHA, master clinician and professor of medicine at Baylor College of Medicine and chief of the cardiology section at the Michael E. DeBakey VA Medical Center. “The body’s biological reaction to stress, anxiety and other types of poor mental health can manifest physically through an irregular heart rate or rhythm, increased blood pressure and inflammation throughout the body. Negative psychological health is also associated with health behaviors that are linked to an increased risk for heart disease and stroke, such as smoking, lower levels of physical activity, unhealthy diet, being overweight and not taking medications as prescribed.”

Studies have found some people, including people of color, may face a greater risk of poor health outcomes due to chronic stress, depression and anxiety linked to psychosocial stressors, particularly those related to social and economic inequality, discrimination, systemic racism and other societal factors. A study published in the “Journal of the American Heart Association” found U.S. adults who reported feeling highly discriminated against at work had an increased risk of developing high blood pressure compared to those who reported low discrimination at work.

“Mental health includes our emotional, psychological and social well-being,” Levine said. “It affects how we think, feel and act. It also helps determine how we handle stress, relate to others and make choices. Practicing mindfulness in all forms allows one to be more aware of and have more control over emotional responses to the experiences of daily life.”

Consider these tips from Levine to improve your mind-heart-body connection:

  • Practice meditation regularly. Even simple actions such as communing with nature or sitting quietly and focusing on your breath can have a positive impact.
  • Get plenty of good, restful sleep. Set a regular bedtime, turn off or dim electronics as bedtime approaches and form a wakeup routine.
  • Make connections and stay in touch. Reach out and connect regularly with family and friends, or engage in activities to meet new people.
  • Practice mindful movement. There are many types of gentle mindful practices like yoga and Tai chi that can be done about anywhere with no special equipment to help ease your soul and muscles.
  • Spend time with your furry friend. Companion animals are often beloved members of the family and research shows pets may help reduce physiological reactions to stress as well as support improved physical activity.
  • Work it out. Regular physical activity – a recommended 150 minutes of moderate activity, 75 minutes of vigorous activity or a mix of both weekly – can help relieve tension, anxiety and depression, and give you an immediate exercise “high.”

“Wellness is more than simply the absence of disease,” Levine said. “It is an active process directed toward a healthier, happier and more fulfilling life. When we strive to reduce negative aspects of psychological health, we are promoting an overall positive and healthy state of being.”

Learn more about the importance of heart health at heart.org

SOURCE:
American Heart Association