Article
Culture
Film & TV
Monsters
Weirdness
Zombies
5 min read

Zombies: a philosopher's guide to the purpose-driven undead

Don’t dismiss zombiecore as lowbrow.

Ryan is the author of A Guidebook to Monsters: Philosophy, Religion, and the Paranormal.

A regency woman dabs her mouth with a bloody hankerchief.
Lilly James in Pride and Prejudice and Zombies.
Lionsgate.

Writing from his new book, A Guidebook to Monsters, Ryan Stark delves into humanity’s fascination for all things monsterous. In the second of a two-part series, he asks what and where zombies remind us of, and why they caught the eyes of C.S. Lewis and Salvador Dali 

 

On how Frankenstein’s monster came to life nobody knows for sure, but he is more urbane than zombies tend to be. Nor do Jewish golems and Frosty the Snowman count as zombiecore. The latter sings too much, and both are wrongly formulated. Frosty comes from snow, obviously, and the golems—from mere loam, not what the Renaissance playwrights call “gilded loam,” that is, already pre-assembled bodies, which is a zombie requirement. Tolkien’s orcs function likewise as golem-esque monsters, cast from miry clay and then enlivened by the grim magic of Mordor. We do not, for instance, discover scenes with orc children. 

And neither is Pinocchio a zombie, nor Pris from Blade Runner, but dolls, automatons, and C3POs border upon the land of zombies insofar as they all carry a non-human tint. Zombies, however, carry something else as well, a history of personhood, and so in their present form appear as macabre parodies of the human condition writ large. They are gruesome undead doppelgangers, reminding us of who we are not and perhaps—too—of where we are not. Hell is a place prepared for the Devil and his angels, Christ tells us in the book of Matthew. And maybe, subsequently, for zombies. 

Kolchak, in an episode of Kolchak: The Night Stalker aptly titled “The Zombie,” correctly discerns the grim scenario at hand: “He, sir, is from Hell itself!”  

C.S. Lewis pursues a similar line of thinking in The Problem of Pain: “You will remember that in the parable, the saved go to a place prepared for them, while the damned go to a place never made for men at all. To enter Heaven is to become more human than you ever succeeded in being on earth; to enter Hell is to be banished from humanity. What is cast (or casts itself) into Hell is not a man: it is ‘remains.’” Lewis makes an intriguing point, which has as its crescendo the now-famous line about the doors of Hell: “I willingly believe that the damned are, in one sense, successful, rebels to the end; that the doors of Hell are locked on the inside by zombies.” I added that last part about zombies. 

I make this point—in part—to correct those in the cognoscenti who dismiss zombies as a subject too lowbrow for serious consideration.

Not everyone believes in Hell, of course, yet most concede that some people behave worse than others, which also helps our cause. Indeed, part of zombiecore’s wisdom is to show that bad people often produce more horror than the zombies themselves. Such is the character of Legendre Murder, a case in point from the film White Zombie. Not fortunate in name, Mr. Murder runs a dark satanic mill populated by hordes of zombie workers, which is the film’s heavy-handed critique of sociopathic industrialization. The truth to be gleaned, here, is that zombies did not invent the multinational corporation; rather, they fell prey to it. 

We might think, too, of Herman Melville’s dehumanized characters from Bartleby the Scrivener: Nippers, Turkey, Ginger Nut, and the other functionaries whose nicknames themselves indicate the functions. From an economic standpoint, their value becomes a matter of utility, not essence, which is Melville’s reproach of the despairingly corporate drive to objectify personhood—of which zombies are an example beyond the pale. They might as well be fleshy mannequins, in fact, and as such provide the perfect foil for the human being properly conceived. 

Here, then, is why we do not blame zombies for eating brains, nor do we hold them accountable for wearing white pants after Labor Day, as some inevitably do. They cannot help it—in ethics and in fashion. Perhaps especially in fashion. The best we can hope for in the realm of zombie couture is Solomon Grundy, the quasi-zombie supervillain who holds up his frayed pants with a frayed rope, a fashion victory to be sure, however small it might be, though “zombie fashion” is a misnomer in the final analysis. They wear clothes, but not for the same reasons we do. 

The point holds true for Salvador Dali’s zombies as well, most of whom find themselves in nice dresses. I make this point—in part—to correct those in the cognoscenti who dismiss zombies as a subject too lowbrow for serious consideration. Not so. Exhibit A: the avant-garde Dali, darling of the highbrow, or at least still of the middlebrow, now that his paintings appear on t-shirts and coffee mugs. Burning giraffe. Mirage. Woman with Head of Roses. All zombies, too ramshackle and emaciated to live, never mind the missing head on the last one, and yet there they are posed for the leering eye, not unlike those heroin-chic supermodels from Vogue magazine in the late 1990s. Necrophilia never looked so stylish. 

The zombie’s gloomy predicament bears a striking resemblance to that of the Danaids in the classical underworld, those sisters condemned to fill a sieve with water for all eternity...

But never let it be said that zombies are lazy. They are tired, to be sure. Their ragged countenances tell us this, but they are not indolent. Zombies live purpose-driven undead lives. They want to eat brains, or any human flesh, depending on the mythos, and their calendars are organized accordingly. No naps. No swimming lessons. Just brains.  

But we quickly discern that no amount of flesh will satisfy. There is always one more hapless minimart clerk to ambush, one more sorority girl in bunny slippers to chase down the corridor. In this way, the zombie’s gloomy predicament bears a striking resemblance to that of the Danaids in the classical underworld, those sisters condemned to fill a sieve with water for all eternity, an emblem of the perverse appetite unchecked, which has at its core the irony of insatiable hunger. And as the pleasure becomes less and less, the craving becomes more and more. The law of diminishing returns. So, it is with all vices. The love of money demands more money, and the love of brains, more brains. 

And so, in conclusion, a prayer. God bless the obsessive-compulsive internet shoppers, the warehouse workers on unnecessarily tight schedules, and the machine-like managers of the big data algorithms. God bless the students who sedate themselves in order to survive their own educations, taking standardized test after standardized test. And God bless the Emily Griersons of the world, who keep their petrified-boyfriend corpses near them in the bedroom, an emblem of what happens when one tries too mightily to hold on to the past. And God help us, too, when we see in our own reflections a zombie-like affectation, the abyss who stares back at us and falsely claims that we are not the righteousness of God, as Paul says we are in 2 Corinthians. And, finally, Godspeed to Gussie Fink-Nottle from the P.G. Wodehouse sagas: “Many an experienced undertaker would have been deceived by his appearance, and started embalming on sight.”  

  

From A Guidebook to Monsters, Ryan J. Stark.  Used by permission of Wipf and Stock Publishers.   

Essay
AI
Culture
9 min read

Here’s why AI needs a theology of tech

As AI takes on tasks once exclusively human, we start to doubt ourselves. We need to set the balance right.

Oliver Dürr is a theologian who explores the impact of technology on humanity and the contours of a hopeful vision for the future. He is an author, speaker, podcaster and features in several documentary films.

In the style of an icon of the Council of Nicea, theologians look on as a cyborg and humanoid AI shake hands
The Council of Nicaeai, reimagined.
Nick Jones/Midjourney.ai

AI is all the rage these days. Researchers branching into natural and engineering sciences are thriving, and novel applications enter the market every week. Pop culture explores various utopian and dystopian future visions. A flood of academic papers, journalistic commentary and essays, fills out the picture.  

Algorithms are at the basis of most activities in the digital world. AI-based systems work at the interface with the analogue world, controlling self-driving cars and robots. They are transforming medical practices - predicting, preventing, diagnosing and supporting therapy. They even support decision-making in social welfare and jurisprudence. In the business sector, they are used to recruit, sell, produce and ship. Much of our infrastructure today crucially depends on algorithms. But while they foster science, research, and innovation, they also enable abuse, targeted surveillance, regulation of access to information, and even active forms of behavioural manipulation. 

The remarkable and seemingly intellectual achievements of AI applications uniquely confront us with our self-understanding as humans: What is there still categorically that distinguishes us from the machines we build? 

In all these areas, AI takes on tasks and functions that were once exclusive to humans. For many, the comparison and competition between humans and (algorithmically driven) machines are obvious. As these lines are written, various applications are flooding the market, characterized by their ‘generative' nature (generative AI). These algorithms, such OpenAI’s the GPT series, go further than anyone expected. Just a few years ago, it was hard to foresee that mindless computational programs could autonomously generate texts that appear meaningful, helpful, and in many ways even ‘human’ to a human conversation partner. Whether those innovations will have positive or negative consequences is still difficult to assess at this point.  

For decades, research has aimed to digitally model human capabilities - our perception, thinking, judging and action - and allow these models to operate autonomously, independent of us. The most successful applications are based on so-called deep learning, a variant of AI that works with neural networks loosely inspired by the functioning of the brain. Technically, these are multilayered networks of simple computational units that collectively encode a potentially highly complex mathematical function.  

You don’t need to understand the details to realize that, fundamentally, these are simple calculations but cleverly interconnected. Thus, deep learning algorithms can identify complex patterns in massive datasets and make predictions. Despite the apparent complexity, no magic is involved here; it is simply applied mathematics. 

Moreover, this architecture requires no ‘mental' qualities except on the part of those who design these programs and those who interpret their outputs. Nevertheless, the achievements of generative AI are astonishing. What makes them intriguing is the fact that their outputs can appear clever and creative – at least if you buy into the rhetoric. Through statistical exploration, processing, and recombination of vast amounts of training data, these systems generate entirely new texts, images and film that humans can interpret meaningfully.  

The remarkable and seemingly intellectual achievements of AI applications uniquely confront us with our self-understanding as humans: Is there still something categorically that distinguishes us from the machines we build? This question arises in the moral vacuum of current anthropology. 

Strictly speaking, only embodied, living and vulnerable humans really have problems that they solve or goals they want to achieve... Computers do not have problems, only unproblematic states they are in. 

The rise of AI comes at a time when we are doubting ourselves. We question our place in the universe, our evolutionary genesis, our psychological depths, and the concrete harm we cause to other humans, animals, and nature as a whole. At the same time, the boundaries between humans and animals and those between humans and machines appear increasingly fuzzy.  

Is the human mind nothing more than the sum of information processing patterns comparable to similar processes in other living beings and in machine algorithms? Enthusiastic contemporaries believe our current AI systems are already worthy of being called ‘conscious’ or even ‘personal beings.’ Traditionally, these would have been attributed to humans exclusively (and in some cases also to higher animals). Our social, political, and legal order, as well as our ethics, are fundamentally based on such distinctions.  

Nevertheless, companies such as OpenAI see in their product GPT-4 the spark of ‘artificial general intelligence,’ a form of intelligence comparable to or even surpassing humans. Of course, such statements are part of an elaborate marketing strategy. This tradition dates to John McCarthy, who coined the term “AI” and deliberately chose this over other, more appropriate, descriptions like “complex information processing” primarily because it sounded more fundable. 

Such pragmatic reasons ultimately lead to an imprecise use of ambiguous terms, such as ‘intelligence.’ If both humans and machines are indiscriminately called ‘intelligent,’ this generates confusion. Whether algorithms can sensibly be called ‘intelligent’ depends on whether this term refers to the ability to perform simple calculations, process data, the more abstract ability to solve problems, or even the insightful understanding (in the sense of Latin intellectus) that we typically attribute only to the embodied reason of humans.  

However, this nuanced view of ‘intelligence’ was given up under the auspices of the quest for an objectively scientific understanding of the subject. New approaches deliberately exclude the question of what intelligence is and limit themselves to precisely describing how these processes operate and function.  

Current deep learning algorithms have become so intricate and complex that we can’t always understand how they arrive at their results. These algorithms are transparent but not in how they reach a specific conclusion; hence, they are also referred to as black-box algorithms. Some strands in the cognitive sciences understand the human mind as a kind of software running on the hardware of the body. If that were the case, the mind could be explained through the description of brain states, just like the software on our computers.  

However, these paradigms are questionable. They cannot explain what it feels like to be a conscious person, to desire things, be abhorred by other things and to understand when something is meaningful and significant. They have no grasp on human freedom and the weight of responsibility that comes with leading a life. All of these human capacities require, among other things, an understanding of the world, that cannot be fully captured in words and that cannot be framed as a mathematical function.  

There are academic studies exploring the conception of embodied, embedded, enactive, and extended cognition, which offer a more promising direction. Such approaches explore the role of the body and the environment for intelligence and cognitive performance, incorporating insights from philosophy, psychology, biology, and robotics. These approaches think about the role our body as a living organism plays in our capacity to experience, think and live with others. AI has no need for such a living body. This is a categorical difference between human cognition and AI applications – and it is currently not foreseeable that those could be levelled (at least not with current AI architectures). Therefore, in the strictest sense, we cannot really call our algorithms ‘intelligent' unless we explicitly think of this as a metaphor. AI can only be called 'intelligent' metaphorically because these applications do not 'understand' the texts they generate, and those results do not mean anything to them. Their results are not based on genuine insight or purposes for the world in which you and I live. Rather they are generated purely based on statistical probabilities and data-based predictions. At most, they operate with the human intelligence that is buried in the underlying training data (which human beings have generated).  

However, all of this generated material has meaning and validity only for embodied humans. Strictly speaking, only embodied, living and vulnerable humans really have problems that they solve or goals they want to achieve (with, for example, the help of data-based algorithms). Computers do not have problems, only unproblematic states they are in. Therefore, algorithms appear 'intelligent' only in contexts where we solve problems through them. 

 When we do something with technology, technology always also does something to us. 

AI does not possess intrinsic intelligence and simulates it only due to human causation. Therefore, it would be more appropriate to speak of ‘extended intelligence': algorithms are not intelligent in themselves, but within the framework of human-machine systems, they represent an extension of human intelligence. Or even better would be to go back behind McCarthy and talk about 'complex information processing.’ 

Certainly, such a view is still controversial today. There are many philosophical, economic, and socio-political incentives to attribute human qualities to algorithms and, at the same time, to view humans as nothing more than biological computers. Such a view already shapes the design of our digital future in many places. Putting it bluntly, calling technology ‘intelligent’ makes money. 

What would an alternative, more holistic view of the future look like that took the makeup of humanity seriously?  

A theology of technology (Techniktheologie) tackles this question, ultimately placing it in the horizon of belief in God. However, it begins by asking how technology can be integrated into our lives in such a way that it empowers us to do what we truly want and what makes life better. Such an approach is neither for or against technology but rather sober and critical in the analytical sense. Answering those questions requires a realistic understanding of humans, technology, and their various entanglements, as well as the agreement of plural societies on the goals and values that make a good life.  

When we do something with technology, technology always also does something to us. Technology is formative, meaning it changes our experience, perception, imagination, and thus also our self-image and the future we can envision. AI is one of the best examples of this: designing AI is designing how people can interact with a system, and that means designing how they will have to adapt to it. Humans and technology cannot be truly isolated from each other. Technology is simply part of the human way of life.  

And yet, we also need to distinguish humans from technology despite all the entanglements: humans are embodied, rational, free, and endowed with incomparable dignity as images of God, capable of sharing values and articulating goals on the basis of a common (human) way of life. Even the most sophisticated deep learning applications are none of these. Only we humans live in a world where responsibility, sin, brokenness, and redemption matter. Therefore it is up to us to agree on how we want to shape the technologized future and what values should guide us on this path.  

Here is what theology can offer the development of technology. Theology addresses the question of the possible integration of technology into the horizon of a good life. Any realistic answer to this question must combine an enlightened understanding of technology with a sober view of humanity – seeing both human creative potential and their sinfulness and brokenness. Only through and with humans will our AI innovations genuinely serve the common good and, thus, a better future for all.  

 

Find out more about this topic: Assessing deep learning: a work program for the humanities in the age of artificial intelligence