Typographic Ecosystems

[Image: From Google Maps].

Many weeks ago, after listening to the podcast S-Town, I got to looking around on Google Maps for the now-legendary hedge maze designed by the podcast’s protagonist, John B. McLemore. Other people, of course, had already found it.

As these things always go, however, I began panning around the map of the region, following waterways and forests to various places, zooming in on interesting geological features and more, and eventually found myself looking at a strange patch of forest on the Arkansas/Missouri border. In a place called the Big Lake Wildlife Management Area, huge glyphs have been cut into the trees, in repetitive shapes that appear to be letters or runes.

There are distended Ss, upside-down Us that resemble hoofprints, cross-like forms that could be lower-case ts or + signs, and simply large, empty blocks. The figures repeat across the forest in no apparent pattern, but they are clearly artificial. I figured these were a property-marking system of some sort, or perhaps some kind of recreational landscape, leading to a series of unusually elaborate hunting blinds; but they could also have been—who knows—an optical calibration system for satellites, cut deep in the woods, or perhaps, if we let our imaginations roam, some secret government design agency performing unregulated typographic experiments in the forest… Perhaps it was really just SETI.

Then I stopped thinking about them.

[Image: From Google Maps].

When I mentioned these to my friend Wayne the other night, however, he was quick to dig up the real explanation: “the odd shapes are part of a habitat restoration project,” local news channel KAIT reported back in 2013.

“In wildlife management, you know, disturbance is a good thing,” biologist Lou Hausman explained to KAIT. “When you put sunlight to the forest floor, that’s one of the basic components of habitat management. It stimulates growth in the understorage and stimulates growth on the ground.”

The different shapes or letters were thus chosen for research purposes, the goal being to learn which ones produced the best “edge effects” for plants and wildlife on the ground. If the S shape allowed more efficient access to sunlight, in other words, well, then S shapes would be used in the future to help stimulate forest recovery due to their particular pattern of sunlight.

Think of it as ecosystem recovery through typography—or, heliocentric graphic design as a means for returning forests to health. Kerning as a wildlife management concern.

This perhaps suggests a unique variation on artist Katie Holten’s “Tree Alphabet” project, but one in which alphabetic incisions into a forest canopy are done not for their literary power but for their strategic ecosystem effects. Golem-like sections of wilderness, brought back to health through language.

(Thanks to Wayne Chambliss for his champion-league Googling skills).

Cabin Fever

[Image: “Shear House” by STPMJ; photo by Song Yousub].

One more cabin! This one is designed by STPMJ architects for a site in South Korea.

[Image: “Shear House” by STPMJ; photo by Song Yousub].

Called “Shear House,” the project uses a shifted roof and angled interior walls to play with the geometric effect of each room. In the architects’ words, although the rooms “are rectangular in plan, walls are triangles, parallelograms, and trapezoids in elevation.”

[Image: “Shear House” by STPMJ; photo by Song Yousub].

As I’m simply posting a few projects I think are cool, you’ll find more information—including further photographs and plans—over at Dezeen.

Social Architecture

[Image: Photo by Haylie Chan & Zelig Fok, via Dezeen].

Students at the Yale School of Architecture have realized a really impressive residential project, noteworthy both for its refined appearance and for its social mission: intended to house local homeless families, the project kicks off “a five-year collaboration with Columbus House, a New Haven-based homelessness services provider.”

The two-family home is constructed from prefabricated units, and is “sited on a formerly vacant corner lot on Adeline Street” in New Haven. It includes “two units that are separated by a walkway, but under the same roof, and adorned with large windows that balance the needs of openness and privacy.”

[Image: Photo by Haylie Chan & Zelig Fok, via Dezeen].

As Dezeen explains, “The building was designed by students in the Jim Vlock First Year Building Project, a programme established in 1967. The course involves designing and building low-cost homes in New Haven, the city where Yale is located. First-year architecture students are required to participate in the programme as part of the school’s curriculum.” Here is a house from 2015, for example.

This particular structure is the first in what I understand to be a series of projects undertaken with funding and planning input from Columbus House. In a press release, the organization’s president remarked that their goal “is to end homelessness, and we do that by getting people housed… Every unit that we add toward the affordable housing stock in New Haven helps us come closer to that goal. We are delighted with the house on Adeline Street and with the relationship with Yale School of Architecture that has grown out of this project.”

[Image: Photo by Haylie Chan & Zelig Fok, via Dezeen].

On the most basic level, it’s exciting to see a student project inspired by such a clear social mission, especially one that has also resulted in a building I’d be thrilled to live in myself.

Read more courtesy of Yale University or Dezeen.

Conversion Moment

[Image: Proposal for a converted residential water tower in Utrecht, by Zecc Architects; rendering by 3D Studio Prins, based on a photo by Stijnstijl Fotografie].

While we’re looking at work by Zecc Architects, it’s worth checking out their proposed renovation of a water tower in Utrecht.

A circular room with panoramic views of the city, and a modern fireplace in the center? Yes, please.

[Image: Proposal for a converted residential water tower in Utrecht, by Zecc Architects; rendering by 3D Studio Prins].

I even love where the tower’s original brick core is revealed, despite appearing in something as mundane as a restaurant.

[Image: Proposal for a converted residential water tower in Utrecht, by Zecc Architects; rendering by 3D Studio Prins].

As a very brief aside, meanwhile, one of many things that remains amazing to me about the architectural world today is that these sorts of buildings—grandiose brick megastructures, from water towers to old tobacco warehouses to classic New York brownstones—are immensely popular as domestic renovations or large-scale residential conversions, but they otherwise seem to be completely beyond the pale for architects to consider designing from scratch in the present day. Even when contemporary architects do take on such commissions, they seem to leave their creativity at the door.

As a former New Yorker, it always blew me away that incredible building stock existed in neighborhoods such as DUMBO—that is, huge warehouses featuring recessed arched windows, ornamented brick, and, at times, gorgeous exterior buttressing—or that even the most random online image search for historical warehouse districts pop up such incredible and evocative buildings. Yet there seems to be no appetite, either amongst developers or architects, to explore what architects could do with these same styles and languages today.

Even just imagining a 21st-century brick super-warehouse (or circular tower) built from scratch in New York City—or Boston, or Bermondsey, or Hamburg—featuring modern interiors and finishes, and designed to avoid the headaches of older building stock, makes my head swoon, and there is no doubt in my mind that elaborate, architecturally complex brick megastructures could be realized today without falling into kitsch or postmodern quotation. And there is also, in fact, no inherent reason why creating brickwork residential super-projects should lead to an emerging financial ecosystem for absent investors in the process.

But, hey: I’m not a real estate developer and I have no way to change the game.

Shuttered

[Image: Cabin by Zecc Architects and Roel van Norel; photo by Laura Mallonee, courtesy Dwell].

Here’s another cabin, this time by Zecc Architects and Roel van Norel for a client in the Netherlands.

[Image: Cabin by Zecc Architects and Roel van Norel; photo by Laura Mallonee, courtesy Dwell].

“Building atop the foundation of a previous greenhouse was a cost-cutting measure,” according to Dwell; this “allowed the project to be considered a renovation and thereby qualify for a temporary tax reduction. Its traditional, gabled form also pays homage to the original structure.”

[Images: Cabin by Zecc Architects and Roel van Norel; photos by Laura Mallonee, courtesy Dwell].

The shutters are awesome, I think, and the effect at night is otherworldly, like an inhabited lantern.

[Image: Cabin by Zecc Architects and Roel van Norel; photo by Laura Mallonee, courtesy Dwell].

For more photos of the project, check out Dwell or ArchDaily.

(I am under the impression that these photos were taken by Laura Mallonee, but the attribution at Dwell leaves this somewhat ambiguous; apologies if I have misattributed someone else’s work).

Lodge

[Image: The “Bjellandsbu” cabin, named after its client, by Snøhetta; photo by James Silverman, courtesy Snøhetta].

I have cabins, retreats, and small houses on the brain, and this remote Norwegian hunting lodge designed by Snøhetta, complete with green roof and local timber, is one of many recent projects that caught my eye.

[Image: “Bjellandsbu” by Snøhetta; photo by James Silverman, courtesy Snøhetta].

According to the architects, the structure is “accessible only by foot or horseback,” and apparently features enough bunk beds to sleep up to 21 people.

[Image: “Bjellandsbu” by Snøhetta; photo by James Silverman, courtesy Snøhetta].

While at first glance, you might think it’s a relic from a J.R.R. Tolkien-infused 1970s counterculture, it was actually completed in 2013.

[Image: “Bjellandsbu” by Snøhetta; photo by James Silverman, courtesy Snøhetta].

For more shots of the cabin in the wild, meanwhile, check out the #bjellandsbu hashtag on Instagram.

(All photos in this post by James Silverman, courtesy of Snøhetta).

Worth the Weight

In the midst of a long New York Times article about the serial theft of offensive cyberweapons from the National Security Agency, there’s a brief but interesting image. “Much of [a core N.S.A. group’s] work is labeled E.C.I., for ‘exceptionally controlled information,’ material so sensitive it was initially stored only in safes,” the article explains. “When the cumulative weight of the safes threatened the integrity of N.S.A.’s engineering building a few years ago, one agency veteran said, the rules were changed to allow locked file cabinets.”

It’s like some undiscovered Italo Calvino short story: an agency physically deformed by the gravitational implications of its secrets, its buildings now bulbous and misshapen as the literal weight of its mission continues to grow.

Nature Machine

[Image: Illustration by Benjamin Marra for the New York Times Magazine].

As part of a package of shorter articles in the New York Times Magazine exploring the future implications of self-driving vehicles—how they will affect urban design, popular culture, and even illegal drug activity—writer Malia Wollan focuses on “the end of roadkill.”

Her premise is fascinating. Wollan suggests that the precision driving enabled by self-driving vehicle technology could put an end to vehicular wildlife fatalities. Bears, deer, raccoons, panthers, squirrels—even stray pets—might all remain safe from our weapons-on-wheels. In the process, self-driving cars would become an unexpected ally for wildlife preservation efforts, with animal life potentially experiencing dramatic rebounds along rural and suburban roads. This will be both good and bad. One possible outcome sounds like a tragicomic Coen Brothers film about apocalyptic animal warfare in the American suburbs:

Every year in the United States, there are an estimated 1.5 million deer-vehicle crashes. If self-driving cars manage to give deer safe passage, the fast-reproducing species would quickly grow beyond the ability of the vegetation to sustain them. “You’d get a lot of starvation and mass die-offs,” says Daniel J. Smith, a conservation biologist at the University of Central Florida who has been studying road ecology for nearly three decades… “There will be deer in people’s yards, and there will be snipers in towns killing them,” [wildlife researcher Patricia Cramer] says.

While these are already interesting points, Wollan explains that, for this to come to pass, we will need to do something very strange. We will need to teach self-driving cars how to recognize nature.

“Just how deferential [autonomous vehicles] are toward wildlife will depend on human choices and ingenuity. For now,” she adds, “the heterogeneity and unpredictability of nature tends to confound the algorithms. In Australia, hopping kangaroos jumbled a self-driving Volvo’s ability to measure distance. In Boston, autonomous-vehicle sensors identified a flock of sea gulls as a single form rather than a collection of individual birds. Still, even the tiniest creatures could benefit. ‘The car could know: “O.K., this is a hot spot for frogs. It’s spring. It’s been raining. All the frogs will be moving across the road to find a mate,”’ Smith says. The vehicles could reroute to avoid flattening amphibians on that critical day.”

One might imagine that, seen through the metaphoric eyes of a car’s LiDAR array, all those hopping kangaroos appeared to be a single super-body, a unified, moving wave of flesh that would have appeared monstrous, lumpy, even grotesque. Machine horror.

What interests me here is that, in Wollan’s formulation, “nature” is that which remains heterogeneous and unpredictable—that which remains resistant to traditional representation and modeling—yet this is exactly what self-driving car algorithms will have to contend with, and what they will need to recognize and correct for, if we want them to avoid colliding with a nonhuman species.

In particular, I love Wollan’s use of the word “deferential.” The idea of cars acting with deference to the natural world, or to nonhuman species in general, opens up a whole other philosophical conversation. For example, what is the difference between deference and reverence, and how we might teach our fellow human beings, let alone our machines, to defer to, even to revere, the natural world? Put another way, what does it mean for a machine to “encounter” the wild?

Briefly, Wollan’s piece reminded me of Robert MacFarlane’s excellent book The Wild Places for a number of reasons. Recall that book’s central premise: the idea that wilderness is always closer than it appears. Roadside weeds, overgrown lots, urban hikes, peripheral species, the ground beneath your feet, even the walls of the house around you: these all constitute “wilderness” at a variety of scales, if only we could learn to recognize them as such. Will self-driving cars spot “nature” or “wilderness” in sites where humans aren’t conceptually prepared to see it?

The challenge of teaching a car how to recognize nature thus takes on massive and thrilling complexity here, all wrapped up in the apparently simple goal of ending roadkill. It’s about where machines end and animals begin—or perhaps how technology might begin before the end of wilderness.

In any case, Wollan’s short piece is worth reading in full—and don’t miss a much earlier feature she wrote on the subject of roadkill for the New York Times back in 2010.

The Ghost of Cognition Past, or Thinking Like An Algorithm

[Image: Wiring the ENIAC; via Wired]

One of many things I love about writing—that is, engaging in writing as an activity—is how it facilitates a discovery of connections between otherwise unrelated things. Writing reveals and even relies upon analogies, metaphors, and unexpected similarities: there is resonance between a story in the news and a medieval European folktale, say, or between a photo taken in a war-wrecked city and an 18th-century landscape painting. These sorts of relations might remain dormant or unnoticed until writing brings them to the foreground: previously unconnected topics and themes begin to interact, developing meanings not present in those original subjects on their own.

Wildfires burning in the Arctic might bring to mind infernal images from Paradise Lost or even intimations of an unwritten J.G. Ballard novel, pushing a simple tale of natural disaster to new symbolic heights, something mythic and larger than the story at hand. Learning that U.S. Naval researchers on the Gulf Coast have used the marine slime of a “300-million-year old creature” to develop 21st-century body armor might conjure images from classical mythology or even from H.P. Lovecraft: Neptunian biotech wed with Cthulhoid military terror.

In other words, writing means that one thing can be crosswired or brought into contrast with another for the specific purpose of fueling further imaginative connections, new themes to be pulled apart and lengthened, teased out to form plots, characters, and scenes.

In addition, a writer of fiction might stage an otherwise straightforward storyline in an unexpected setting, in order to reveal something new about both. It’s a hard-boiled detective thriller—set on an international space station. It’s a heist film—set at the bottom of the sea. It’s a procedural missing-person mystery—set on a remote military base in Afghanistan.

Thinking like a writer would mean asking why things have happened in this way and not another—in this place and not another—and to see what happens when you begin to switch things around. It’s about strategic recombination.

I mention all this after reading a new essay by artist and critic James Bridle about algorithmic content generation as seen in children’s videos on YouTube. The piece is worth reading for yourself, but I wanted to highlight a few things here.

[Image: Wiring the ENIAC; via Wired]

In brief, the essay suggests that an increasingly odd, even nonsensical subcategory of children’s video is emerging on YouTube. The content of these videos, Bridle writes, comes from what he calls “keyword/hashtag association.” That is, popular keyword searches have become a stimulus for producing new videos whose content is reverse-engineered from those searches.

To use an entirely fictional example of what this means, let’s imagine that, following a popular Saturday Night Live sketch, millions of people begin Googling “Pokémon Go Ewan McGregor.” In the emerging YouTube media ecology that Bridle documents, someone with an entrepreneurial spirit would immediately make a Pokémon Go video featuring Ewan McGregor both to satisfy this peculiar cultural urge and to profit from the anticipated traffic.

Content-generation through keyword mixing is “a whole dark art unto itself,” Bridle suggests. As a particular keyword or hashtag begins to trend, “content producers pile onto it, creating thousands and thousands more of these videos in every possible iteration.” Imagine Ewan McGregor playing Pokémon Go, forever.

What’s unusual here, however, and what Bridle specifically highlights in his essay, is that this creative process is becoming automated: machine-learning algorithms are taking note of trending keyword searches or popular hashtag combinations, then recommending the production of content to match those otherwise arbitrary sets. For Bridle, the results verge on the incomprehensible—less Big Data, say, than Big Dada.

This is by no means new. Recall the origin of House of Cards on Netflix. Netflix learned from its massive trove of consumer data that its customers liked, among other things, David Fincher films, political thrillers, and the actor Kevin Spacey. As David Carr explained for the New York Times back in 2013, this suggested the outline of a possible series: “With those three circles of interest, Netflix was able to find a Venn diagram intersection that suggested that buying the series would be a very good bet on original programming.”

In other words, House of Cards was produced because it matched a data set, an example of “keyword/hashtag association” becoming video.

The question here would be: what if, instead of a human producer, a machine-learning algorithm had been tasked with analyzing Netflix consumer data and generating an idea for a new TV show? What if that recommendation algorithm didn’t quite understand which combinations would be good or worth watching? It’s not hard to imagine an unwatchably surreal, even uncanny television show resulting from this, something that seems to make more sense as a data-collection exercise than as a coherent plot—yet Bridle suggests that this is exactly what’s happening in the world of children’s videos online.

[Image: From Metropolis].

In some of these videos, Bridle explains, keyword-based programming might mean something as basic as altering a few words in a script, then having actors playfully act out those new scenarios. Actors might incorporate new toys, new types of candy, or even a particular child’s name: “Matt” on a “donkey” at “the zoo” becomes “Matt” on a “horse” at “the zoo” becomes “Carla” on a “horse” at “home.” Each variant keyword combination then results in its own short video, and each of these videos can be monetized. Future such recombinations are infinite.

In an age of easily produced digital animations, Bridle adds, these sorts of keyword micro-variants can be produced both extremely quickly and very nearly automatically. Some YouTube producers have even eliminated “human actors” altogether, he writes, “to create infinite reconfigurable versions of the same videos over and over again. What is occurring here is clearly automated. Stock animations, audio tracks, and lists of keywords being assembled in their thousands to produce an endless stream of videos.”

Bridle notes with worry that it is nearly impossible here “to parse out the gap between human and machine.”

Going further, he suggests that the automated production of new videos based on popular search terms has resulted in scenes so troubling that children should not be exposed to them—but, interestingly, Bridle’s reaction here seems to be based on those videos’ content. That is, the videos feature animated characters appearing without heads, or kids being buried alive in sandboxes, or even the painful sounds of babies crying.

What I think is unsettling here is slightly different, on the other hand. The content, in my opinion, is simply strange: a kind of low-rent surrealism for kids, David Lynch-lite for toddlers. For thousands of years, western folktales have featured cannibals, incest, haunted houses, even John Carpenter-like biological transformations, from woman to tree, or from man to pig and back again. Children burn to death on chariots in the sky or sons fall from atmospheric heights into the sea. These myths seem more nightmarish—on the level of content—than some of Bridle’s chosen YouTube videos.

Instead, I would argue, what’s disturbing here is what the content suggests about how things should be connected. The real risk would seem to be that children exposed to recommendation algorithms at an early age might begin to emulate them cognitively, learning how to think, reason, and associate based on inhuman leaps of machine logic.

Bridle’s inability “to parse out the gap between human and machine” might soon apply not just to these sorts of YouTube videos but to the children who grew up watching them.

[Image: Replicants in Blade Runner].

One of my favorite scenes in Umberto Eco’s novel Foucault’s Pendulum is when a character named Jacopo Belbo describes different types of people. Everyone in the world, Belbo suggests, is one of only four types: there are “cretins, fools, morons, and lunatics.”

In the context of the present discussion, it is interesting to note that these categories are defined by modes of reasoning. For example, “Fools don’t claim that cats bark,” Belbo explains, “but they talk about cats when everyone else is talking about dogs.” They get their references wrong.

It is Eco’s “lunatic,” however, who offers a particularly interesting character type for us to consider: the lunatic, we read, is “a moron who doesn’t know the ropes. The moron proves his [own] thesis; he has a logic, however twisted it may be. The lunatic, on the other hand, doesn’t concern himself at all with logic; he works by short circuits. For him, everything proves everything else. The lunatic is all idée fixe, and whatever he comes across confirms his lunacy. You can tell him by the liberties he takes with common sense, by his flashes of inspiration…”

It might soon be time to suggest a fifth category, something beyond the lunatic, where thinking like an algorithm becomes its own strange form of reasoning, an alien logic gradually accepted as human over two or three generations to come.

Assuming I have read Bridle’s essay correctly—and it is entirely possible I have not—he seems disturbed by the content of these videos. I think the more troubling aspect, however, is in how they suggest kids should think. They replace narrative reason with algorithmic recommendation, connecting events and objects in weird, illogical bursts lacking any semblance of internal coherence, where the sudden appearance of something completely irrelevant can nonetheless be explained because of its keyword-search frequency. Having a conversation with someone who thinks like this—who “thinks” like this—would be utterly alien, if not logically impossible.

So, to return to this post’s beginning, one of the thrills of thinking like a writer, so to speak, is precisely in how it encourages one to bring together things that might not otherwise belong on the same page, and to work toward understanding why these apparently unrelated subjects might secretly be connected.

But what is thinking like an algorithm?

It will be interesting to see if algorithmically assembled material can still offer the sort of interpretive challenge posed by narrative writing, or if the only appropriate response to the kinds of content Bridle describes will be passive resignation, indifference, knowing that a data set somewhere produced a series of keywords and that the story before you goes no deeper than that. So you simply watch the next video. And the next. And the next.