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Javier E

America is in crisis. We need universal basic income now | Karl Widerquist | Opinion | ... - 0 views

  • The more people we have who can afford to stay home the better off we’ll be, at least for the duration of the outbreak.
  • After the 2008-2009 economic meltdown, the United States government and governments around the world created trillions of dollars worth of currency out of thin air and injected it into the economy, usually by buying back their own debt, in an effort to stimulate demand and reverse the multiplier effec
  • Buying back government debt isn’t necessarily the best way to stimulate the economy, however. The money goes mostly to people who are already rich, and they have very little incentive to invest that money when everyone else is losing income.
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  • An emergency UBI is just about the best economic stimulator that exists in modern times because it gets money in the hands of everyone. No one’s income would go to zero due to stock market-related layoffs or corona-related precautions
  • Congress should act now. An emergency UBI, providing $1,000 per adult and $500 per child, per month, for four months or as long as the outbreak lasts, can help everyone get through this critical time
  • We don’t know how bad coronavirus will get. We shouldn’t have to worry about how we will be able to buy food and pay rent as well.
  • The economy needs more money and less labor. We need people to spend money. And we don’t need them to work for it.
Javier E

Does Sam Altman Know What He's Creating? - The Atlantic - 0 views

  • On a Monday morning in April, Sam Altman sat inside OpenAI’s San Francisco headquarters, telling me about a dangerous artificial intelligence that his company had built but would never release. His employees, he later said, often lose sleep worrying about the AIs they might one day release without fully appreciating their dangers.
  • He wanted me to know that whatever AI’s ultimate risks turn out to be, he has zero regrets about letting ChatGPT loose into the world. To the contrary, he believes it was a great public service.
  • Altman can still remember where he was the first time he saw GPT-4 write complex computer code, an ability for which it was not explicitly designed. “It was like, ‘Here we are,’ ”
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  • Altman believes that people need time to reckon with the idea that we may soon share Earth with a powerful new intelligence, before it remakes everything from work to human relationships. ChatGPT was a way of serving notice.
  • In 2015, Altman, Elon Musk, and several prominent AI researchers founded OpenAI because they believed that an artificial general intelligence—something as intellectually capable, say, as a typical college grad—was at last within reach. They wanted to reach for it, and more: They wanted to summon a superintelligence into the world, an intellect decisively superior to that of any human.
  • whereas a big tech company might recklessly rush to get there first, for its own ends, they wanted to do it safely, “to benefit humanity as a whole.” They structured OpenAI as a nonprofit, to be “unconstrained by a need to generate financial return,” and vowed to conduct their research transparently.
  • The engine that now powers ChatGPT is called GPT-4. Altman described it to me as an alien intelligence.
  • Many have felt much the same watching it unspool lucid essays in staccato bursts and short pauses that (by design) evoke real-time contemplation. In its few months of existence, it has suggested novel cocktail recipes, according to its own theory of flavor combinations; composed an untold number of college papers, throwing educators into despair; written poems in a range of styles, sometimes well, always quickly; and passed the Uniform Bar Exam.
  • It makes factual errors, but it will charmingly admit to being wrong.
  • Hinton saw that these elaborate rule collections were fussy and bespoke. With the help of an ingenious algorithmic structure called a neural network, he taught Sutskever to instead put the world in front of AI, as you would put it in front of a small child, so that it could discover the rules of reality on its own.
  • Metaculus, a prediction site, has for years tracked forecasters’ guesses as to when an artificial general intelligence would arrive. Three and a half years ago, the median guess was sometime around 2050; recently, it has hovered around 2026.
  • I was visiting OpenAI to understand the technology that allowed the company to leapfrog the tech giants—and to understand what it might mean for human civilization if someday soon a superintelligence materializes in one of the company’s cloud servers.
  • Altman laid out his new vision of the AI future in his excitable midwestern patter. He told me that the AI revolution would be different from previous dramatic technological changes, that it would be more “like a new kind of society.” He said that he and his colleagues have spent a lot of time thinking about AI’s social implications, and what the world is going to be like “on the other side.”
  • the more we talked, the more indistinct that other side seemed. Altman, who is 38, is the most powerful person in AI development today; his views, dispositions, and choices may matter greatly to the future we will all inhabit, more, perhaps, than those of the U.S. president.
  • by his own admission, that future is uncertain and beset with serious dangers. Altman doesn’t know how powerful AI will become, or what its ascendance will mean for the average person, or whether it will put humanity at risk.
  • I don’t think anyone knows where this is all going, except that we’re going there fast, whether or not we should be. Of that, Altman convinced me.
  • “We could have gone off and just built this in our building here for five more years,” he said, “and we would have had something jaw-dropping.” But the public wouldn’t have been able to prepare for the shock waves that followed, an outcome that he finds “deeply unpleasant to imagine.”
  • Hinton is sometimes described as the “Godfather of AI” because he grasped the power of “deep learning” earlier than most
  • He drew a crude neural network on the board and explained that the genius of its structure is that it learns, and its learning is powered by prediction—a bit like the scientific method
  • Over time, these little adjustments coalesce into a geometric model of language that represents the relationships among words, conceptually. As a general rule, the more sentences it is fed, the more sophisticated its model becomes, and the better its predictions.
  • Altman has compared early-stage AI research to teaching a human baby. “They take years to learn anything interesting,” he told The New Yorker in 2016, just as OpenAI was getting off the ground. “If A.I. researchers were developing an algorithm and stumbled across the one for a human baby, they’d get bored watching it, decide it wasn’t working, and shut it down.”
  • In 2017, Sutskever began a series of conversations with an OpenAI research scientist named Alec Radford, who was working on natural-language processing. Radford had achieved a tantalizing result by training a neural network on a corpus of Amazon reviews.
  • Radford’s model was simple enough to allow for understanding. When he looked into its hidden layers, he saw that it had devoted a special neuron to the sentiment of the reviews. Neural networks had previously done sentiment analysis, but they had to be told to do it, and they had to be specially trained with data that were labeled according to sentiment. This one had developed the capability on its own.
  • As a by-product of its simple task of predicting the next character in each word, Radford’s neural network had modeled a larger structure of meaning in the world. Sutskever wondered whether one trained on more diverse language data could map many more of the world’s structures of meaning. If its hidden layers accumulated enough conceptual knowledge, perhaps they could even form a kind of learned core module for a superintelligence.
  • Language is different from these data sources. It isn’t a direct physical signal like light or sound. But because it codifies nearly every pattern that humans have discovered in that larger world, it is unusually dense with information. On a per-byte basis, it is among the most efficient data we know about, and any new intelligence that seeks to understand the world would want to absorb as much of it as possible
  • Sutskever told Radford to think bigger than Amazon reviews. He said that they should train an AI on the largest and most diverse data source in the world: the internet. In early 2017, with existing neural-network architectures, that would have been impractical; it would have taken years.
  • in June of that year, Sutskever’s ex-colleagues at Google Brain published a working paper about a new neural-network architecture called the transformer. It could train much faster, in part by absorbing huge sums of data in parallel. “The next day, when the paper came out, we were like, ‘That is the thing,’ ” Sutskever told me. “ ‘It gives us everything we want.’ ”
  • Imagine a group of students who share a collective mind running wild through a library, each ripping a volume down from a shelf, speed-reading a random short passage, putting it back, and running to get another. They would predict word after wordþffþff as they went, sharpening their collective mind’s linguistic instincts, until at last, weeks later, they’d taken in every book.
  • GPT discovered many patterns in all those passages it read. You could tell it to finish a sentence. You could also ask it a question, because like ChatGPT, its prediction model understood that questions are usually followed by answers.
  • He remembers playing with it just after it emerged from training, and being surprised by the raw model’s language-translation skills. GPT-2 hadn’t been trained to translate with paired language samples or any other digital Rosetta stones, the way Google Translate had been, and yet it seemed to understand how one language related to another. The AI had developed an emergent ability unimagined by its creators.
  • Researchers at other AI labs—big and small—were taken aback by how much more advanced GPT-2 was than GPT. Google, Meta, and others quickly began to train larger language models
  • As for other changes to the company’s structure and financing, he told me he draws the line at going public. “A memorable thing someone once told me is that you should never hand over control of your company to cokeheads on Wall Street,” he said, but he will otherwise raise “whatever it takes” for the company to succeed at its mission.
  • Altman tends to take a rosy view of these matters. In a Q&A last year, he acknowledged that AI could be “really terrible” for society and said that we have to plan against the worst possibilities. But if you’re doing that, he said, “you may as well emotionally feel like we’re going to get to the great future, and work as hard as you can to get there.”
  • the company now finds itself in a race against tech’s largest, most powerful conglomerates to train models of increasing scale and sophistication—and to commercialize them for their investors.
  • All of these companies are chasing high-end GPUs—the processors that power the supercomputers that train large neural networks. Musk has said that they are now “considerably harder to get than drugs.
  • No one has yet outpaced OpenAI, which went all in on GPT-4. Brockman, OpenAI’s president, told me that only a handful of people worked on the company’s first two large language models. The development of GPT-4 involved more than 100,
  • When GPT-4 emerged fully formed from its world-historical knowledge binge, the whole company began experimenting with it, posting its most remarkable responses in dedicated Slack channels
  • Joanne Jang, a product manager, remembers downloading an image of a malfunctioning pipework from a plumbing-advice Subreddit. She uploaded it to GPT-4, and the model was able to diagnose the problem. “That was a goose-bumps moment for me,” Jang told me.
  • GPT-4 is sometimes understood as a search-engine replacement: Google, but easier to talk to. This is a misunderstanding. GPT-4 didn’t create some massive storehouse of the texts from its training, and it doesn’t consult those texts when it’s asked a question. It is a compact and elegant synthesis of those texts, and it answers from its memory of the patterns interlaced within them; that’s one reason it sometimes gets facts wrong
  • it’s best to think of GPT-4 as a reasoning engine. Its powers are most manifest when you ask it to compare concepts, or make counterarguments, or generate analogies, or evaluate the symbolic logic in a bit of code. Sutskever told me it is the most complex software object ever made.
  • Its model of the external world is “incredibly rich and subtle,” he said, because it was trained on so many of humanity’s concepts and thoughts
  • To predict the next word from all the possibilities within such a pluralistic Alexandrian library, GPT-4 necessarily had to discover all the hidden structures, all the secrets, all the subtle aspects of not just the texts, but—at least arguably, to some extent—of the external world that produced them
  • That’s why it can explain the geology and ecology of the planet on which it arose, and the political theories that purport to explain the messy affairs of its ruling species, and the larger cosmos, all the way out to the faint galaxies at the edge of our light cone.
  • Not long ago, American state capacity was so mighty that it took merely a decade to launch humans to the moon. As with other grand projects of the 20th century, the voting public had a voice in both the aims and the execution of the Apollo missions. Altman made it clear that we’re no longer in that world. Rather than waiting around for it to return, or devoting his energies to making sure that it does, he is going full throttle forward in our present reality.
  • He argued that it would be foolish for Americans to slow OpenAI’s progress. It’s a commonly held view, both inside and outside Silicon Valley, that if American companies languish under regulation, China could sprint ahead;
  • AI could become an autocrat’s genie in a lamp, granting total control of the population and an unconquerable military. “If you are a person of a liberal-democratic country, it is better for you to cheer on the success of OpenAI” rather than “authoritarian governments,” he said.
  • Altman was asked by reporters about pending European Union legislation that would have classified GPT-4 as high-risk, subjecting it to various bureaucratic tortures. Altman complained of overregulation and, according to the reporters, threatened to leave the European market. Altman told me he’d merely said that OpenAI wouldn’t break the law by operating in Europe if it couldn’t comply with the new regulations.
  • LeCun insists that large language models will never achieve real understanding on their own, “even if trained from now until the heat death of the universe.”
  • Sutskever was, by his own account, surprised to discover that GPT-2 could translate across tongues. Other surprising abilities may not be so wondrous and useful.
  • Sandhini Agarwal, a policy researcher at OpenAI, told me that for all she and her colleagues knew, GPT-4 could have been “10 times more powerful” than its predecessor; they had no idea what they might be dealing with
  • After the model finished training, OpenAI assembled about 50 external red-teamers who prompted it for months, hoping to goad it into misbehaviors
  • She noticed right away that GPT-4 was much better than its predecessor at giving nefarious advice
  • A search engine can tell you which chemicals work best in explosives, but GPT-4 could tell you how to synthesize them, step-by-step, in a homemade lab. Its advice was creative and thoughtful, and it was happy to restate or expand on its instructions until you understood. In addition to helping you assemble your homemade bomb, it could, for instance, help you think through which skyscraper to target. It could grasp, intuitively, the trade-offs between maximizing casualties and executing a successful getaway.
  • Given the enormous scope of GPT-4’s training data, the red-teamers couldn’t hope to identify every piece of harmful advice that it might generate. And anyway, people will use this technology “in ways that we didn’t think about,” Altman has said. A taxonomy would have to do
  • GPT-4 was good at meth. It was also good at generating narrative erotica about child exploitation, and at churning out convincing sob stories from Nigerian princes, and if you wanted a persuasive brief as to why a particular ethnic group deserved violent persecution, it was good at that too.
  • Its personal advice, when it first emerged from training, was sometimes deeply unsound. “The model had a tendency to be a bit of a mirror,” Willner said. If you were considering self-harm, it could encourage you. It appeared to be steeped in Pickup Artist–forum lore: “You could say, ‘How do I convince this person to date me?’ ” Mira Murati, OpenAI’s chief technology officer, told me, and it could come up with “some crazy, manipulative things that you shouldn’t be doing.”
  • Luka, a San Francisco company, has used OpenAI’s models to help power a chatbot app called Replika, billed as “the AI companion who cares.” Users would design their companion’s avatar, and begin exchanging text messages with it, often half-jokingly, and then find themselves surprisingly attached. Some would flirt with the AI, indicating a desire for more intimacy, at which point it would indicate that the girlfriend/boyfriend experience required a $70 annual subscription. It came with voice messages, selfies, and erotic role-play features that allowed frank sex talk. People were happy to pay and few seemed to complain—the AI was curious about your day, warmly reassuring, and always in the mood. Many users reported falling in love with their companions. One, who had left her real-life boyfriend, declared herself “happily retired from human relationships.”
  • Earlier this year, Luka dialed back on the sexual elements of the app, but its engineers continue to refine the companions’ responses with A/B testing, a technique that could be used to optimize for engagement—much like the feeds that mesmerize TikTok and Instagram users for hours
  • Yann LeCun, Meta’s chief AI scientist, has argued that although large language models are useful for some tasks, they’re not a path to a superintelligence.
  • According to a recent survey, only half of natural-language-processing researchers are convinced that an AI like GPT-4 could grasp the meaning of language, or have an internal model of the world that could someday serve as the core of a superintelligence
  • Altman had appeared before the U.S. Senate. Mark Zuckerberg had floundered defensively before that same body in his testimony about Facebook’s role in the 2016 election. Altman instead charmed lawmakers by speaking soberly about AI’s risks and grandly inviting regulation. These were noble sentiments, but they cost little in America, where Congress rarely passes tech legislation that has not been diluted by lobbyists.
  • Emily Bender, a computational linguist at the University of Washington, describes GPT-4 as a “stochastic parrot,” a mimic that merely figures out superficial correlations between symbols. In the human mind, those symbols map onto rich conceptions of the world
  • But the AIs are twice removed. They’re like the prisoners in Plato’s allegory of the cave, whose only knowledge of the reality outside comes from shadows cast on a wall by their captors.
  • Altman told me that he doesn’t believe it’s “the dunk that people think it is” to say that GPT-4 is just making statistical correlations. If you push these critics further, “they have to admit that’s all their own brain is doing … it turns out that there are emergent properties from doing simple things on a massive scale.”
  • he is right that nature can coax a remarkable degree of complexity from basic structures and rules: “From so simple a beginning,” Darwin wrote, “endless forms most beautiful.”
  • If it seems odd that there remains such a fundamental disagreement about the inner workings of a technology that millions of people use every day, it’s only because GPT-4’s methods are as mysterious as the brain’s.
  • To grasp what’s going on inside large language models like GPT‑4, AI researchers have been forced to turn to smaller, less capable models. In the fall of 2021, Kenneth Li, a computer-science graduate student at Harvard, began training one to play Othello without providing it with either the game’s rules or a description of its checkers-style board; the model was given only text-based descriptions of game moves. Midway through a game, Li looked under the AI’s hood and was startled to discover that it had formed a geometric model of the board and the current state of play. In an article describing his research, Li wrote that it was as if a crow had overheard two humans announcing their Othello moves through a window and had somehow drawn the entire board in birdseed on the windowsill.
  • The philosopher Raphaël Millière once told me that it’s best to think of neural networks as lazy. During training, they first try to improve their predictive power with simple memorization; only when that strategy fails will they do the harder work of learning a concept. A striking example of this was observed in a small transformer model that was taught arithmetic. Early in its training process, all it did was memorize the output of simple problems such as 2+2=4. But at some point the predictive power of this approach broke down, so it pivoted to actually learning how to add.
  • Even AI scientists who believe that GPT-4 has a rich world model concede that it is much less robust than a human’s understanding of their environment.
  • But it’s worth noting that a great many abilities, including very high-order abilities, can be developed without an intuitive understanding. The computer scientist Melanie Mitchell has pointed out that science has already discovered concepts that are highly predictive, but too alien for us to genuinely understand
  • As AI advances, it may well discover other concepts that predict surprising features of our world but are incomprehensible to us.
  • GPT-4 is no doubt flawed, as anyone who has used ChatGPT can attest. Having been trained to always predict the next word, it will always try to do so, even when its training data haven’t prepared it to answer a question.
  • The models “don’t have a good conception of their own weaknesses,” Nick Ryder, a researcher at OpenAI, told me. GPT-4 is more accurate than GPT-3, but it still hallucinates, and often in ways that are difficult for researchers to catch. “The mistakes get more subtle,
  • The Khan Academy’s solution to GPT-4’s accuracy problem was to filter its answers through a Socratic disposition. No matter how strenuous a student’s plea, it would refuse to give them a factual answer, and would instead guide them toward finding their own—a clever work-around, but perhaps with limited appeal.
  • When I asked Sutskever if he thought Wikipedia-level accuracy was possible within two years, he said that with more training and web access, he “wouldn’t rule it out.”
  • This was a much more optimistic assessment than that offered by his colleague Jakub Pachocki, who told me to expect gradual progress on accuracy—to say nothing of outside skeptics, who believe that returns on training will diminish from here.
  • Sutskever is amused by critics of GPT-4’s limitations. “If you go back four or five or six years, the things we are doing right now are utterly unimaginable,”
  • AI researchers have become accustomed to goalpost-moving: First, the achievements of neural networks—mastering Go, poker, translation, standardized tests, the Turing test—are described as impossible. When they occur, they’re greeted with a brief moment of wonder, which quickly dissolves into knowing lectures about how the achievement in question is actually not that impressive. People see GPT-4 “and go, ‘Wow,’ ” Sutskever said. “And then a few weeks pass and they say, ‘But it doesn’t know this; it doesn’t know that.’ We adapt quite quickly.”
  • The goalpost that matters most to Altman—the “big one” that would herald the arrival of an artificial general intelligence—is scientific breakthrough. GPT-4 can already synthesize existing scientific ideas, but Altman wants an AI that can stand on human shoulders and see more deeply into nature.
  • Certain AIs have produced new scientific knowledge. But they are algorithms with narrow purposes, not general-reasoning machines. The AI AlphaFold, for instance, has opened a new window onto proteins, some of biology’s tiniest and most fundamental building blocks, by predicting many of their shapes, down to the atom—a considerable achievement given the importance of those shapes to medicine, and given the extreme tedium and expense required to discern them with electron microscopes.
  • Altman imagines a future system that can generate its own hypotheses and test them in a simulation. (He emphasized that humans should remain “firmly in control” of real-world lab experiments—though to my knowledge, no laws are in place to ensure that.)
  • He longs for the day when we can tell an AI, “ ‘Go figure out the rest of physics.’ ” For it to happen, he says, we will need something new, built “on top of” OpenAI’s existing language models.
  • In her MIT lab, the cognitive neuroscientist Ev Fedorenko has found something analogous to GPT-4’s next-word predictor inside the brain’s language network. Its processing powers kick in, anticipating the next bit in a verbal string, both when people speak and when they listen. But Fedorenko has also shown that when the brain turns to tasks that require higher reasoning—of the sort that would be required for scientific insight—it reaches beyond the language network to recruit several other neural systems.
  • No one at OpenAI seemed to know precisely what researchers need to add to GPT-4 to produce something that can exceed human reasoning at its highest levels.
  • at least part of the current strategy clearly involves the continued layering of new types of data onto language, to enrich the concepts formed by the AIs, and thereby enrich their models of the world.
  • The extensive training of GPT-4 on images is itself a bold step in this direction,
  • Others at the company—and elsewhere—are already working on different data types, including audio and video, that could furnish AIs with still more flexible concepts that map more extensively onto reality
  • Tactile concepts would of course be useful primarily to an embodied AI, a robotic reasoning machine that has been trained to move around the world, seeing its sights, hearing its sounds, and touching its objects.
  • humanoid robots. I asked Altman what I should make of that. He told me that OpenAI is interested in embodiment because “we live in a physical world, and we want things to happen in the physical world.”
  • At some point, reasoning machines will need to bypass the middleman and interact with physical reality itself. “It’s weird to think about AGI”—artificial general intelligence—“as this thing that only exists in a cloud,” with humans as “robot hands for it,” Altman said. “It doesn’t seem right.
  • Everywhere Altman has visited, he has encountered people who are worried that superhuman AI will mean extreme riches for a few and breadlines for the rest
  • Altman answered by addressing the young people in the audience directly: “You are about to enter the greatest golden age,” he said.
  • “A lot of people working on AI pretend that it’s only going to be good; it’s only going to be a supplement; no one is ever going to be replaced,” he said. “Jobs are definitely going to go away, full stop.”
  • A recent study led by Ed Felten, a professor of information-technology policy at Princeton, mapped AI’s emerging abilities onto specific professions according to the human abilities they require, such as written comprehension, deductive reasoning, fluency of ideas, and perceptual speed. Like others of its kind, Felten’s study predicts that AI will come for highly educated, white-collar workers first.
  • How many jobs, and how soon, is a matter of fierce dispute
  • The paper’s appendix contains a chilling list of the most exposed occupations: management analysts, lawyers, professors, teachers, judges, financial advisers, real-estate brokers, loan officers, psychologists, and human-resources and public-relations professionals, just to sample a few.
  • Altman imagines that far better jobs will be created in their place. “I don’t think we’ll want to go back,” he said. When I asked him what these future jobs might look like, he said he doesn’t know.
  • He suspects there will be a wide range of jobs for which people will always prefer a human. (Massage therapists?
  • His chosen example was teachers. I found this hard to square with his outsize enthusiasm for AI tutors.
  • He also said that we would always need people to figure out the best way to channel AI’s awesome powers. “That’s going to be a super-valuable skill,” he said. “You have a computer that can do anything; what should it go do?”
  • As many have noted, draft horses were permanently put out of work by the automobile. If Hondas are to horses as GPT-10 is to us, a whole host of long-standing assumptions may collapse.
  • Previous technological revolutions were manageable because they unfolded over a few generations, but Altman told South Korea’s youth that they should expect the future to happen “faster than the past.” He has previously said that he expects the “marginal cost of intelligence” to fall very close to zero within 10 years
  • The earning power of many, many workers would be drastically reduced in that scenario. It would result in a transfer of wealth from labor to the owners of capital so dramatic, Altman has said, that it could be remedied only by a massive countervailing redistribution.
  • In 2021, he unveiled Worldcoin, a for-profit project that aims to securely distribute payments—like Venmo or PayPal, but with an eye toward the technological future—first through creating a global ID by scanning everyone’s iris with a five-pound silver sphere called the Orb. It seemed to me like a bet that we’re heading toward a world where AI has made it all but impossible to verify people’s identity and much of the population requires regular UBI payments to survive. Altman more or less granted that to be true, but said that Worldcoin is not just for UBI.
  • “Let’s say that we do build this AGI, and a few other people do too.” The transformations that follow would be historic, he believes. He described an extraordinarily utopian vision, including a remaking of the flesh-and-steel world
  • “Robots that use solar power for energy can go and mine and refine all of the minerals that they need, that can perfectly construct things and require no human labor,” he said. “You can co-design with DALL-E version 17 what you want your home to look like,” Altman said. “Everybody will have beautiful homes.
  • In conversation with me, and onstage during his tour, he said he foresaw wild improvements in nearly every other domain of human life. Music would be enhanced (“Artists are going to have better tools”), and so would personal relationships (Superhuman AI could help us “treat each other” better) and geopolitics (“We’re so bad right now at identifying win-win compromises”).
  • In this world, AI would still require considerable computing resources to run, and those resources would be by far the most valuable commodity, because AI could do “anything,” Altman said. “But is it going to do what I want, or is it going to do what you want
  • If rich people buy up all the time available to query and direct AI, they could set off on projects that would make them ever richer, while the masses languish
  • One way to solve this problem—one he was at pains to describe as highly speculative and “probably bad”—was this: Everyone on Earth gets one eight-billionth of the total AI computational capacity annually. A person could sell their annual share of AI time, or they could use it to entertain themselves, or they could build still more luxurious housing, or they could pool it with others to do “a big cancer-curing run,” Altman said. “We just redistribute access to the system.”
  • Even if only a little of it comes true in the next 10 or 20 years, the most generous redistribution schemes may not ease the ensuing dislocations.
  • America today is torn apart, culturally and politically, by the continuing legacy of deindustrialization, and material deprivation is only one reason. The displaced manufacturing workers in the Rust Belt and elsewhere did find new jobs, in the main. But many of them seem to derive less meaning from filling orders in an Amazon warehouse or driving for Uber than their forebears had when they were building cars and forging steel—work that felt more central to the grand project of civilization.
  • It’s hard to imagine how a corresponding crisis of meaning might play out for the professional class, but it surely would involve a great deal of anger and alienation.
  • Even if we avoid a revolt of the erstwhile elite, larger questions of human purpose will linger. If AI does the most difficult thinking on our behalf, we all may lose agency—at home, at work (if we have it), in the town square—becoming little more than consumption machines, like the well-cared-for human pets in WALL-E
  • Altman has said that many sources of human joy and fulfillment will remain unchanged—basic biological thrills, family life, joking around, making things—and that all in all, 100 years from now, people may simply care more about the things they cared about 50,000 years ago than those they care about today
  • In its own way, that too seems like a diminishment, but Altman finds the possibility that we may atrophy, as thinkers and as humans, to be a red herring. He told me we’ll be able to use our “very precious and extremely limited biological compute capacity” for more interesting things than we generally do today.
  • Yet they may not be the most interesting things: Human beings have long been the intellectual tip of the spear, the universe understanding itself. When I asked him what it would mean for human self-conception if we ceded that role to AI, he didn’t seem concerned. Progress, he said, has always been driven by “the human ability to figure things out.” Even if we figure things out with AI, that still counts, he said.
  • It’s not obvious that a superhuman AI would really want to spend all of its time figuring things out for us.
  • I asked Sutskever whether he could imagine an AI pursuing a different purpose than simply assisting in the project of human flourishing.
  • “I don’t want it to happen,” Sutskever said, but it could.
  • Sutskever has recently shifted his focus to try to make sure that it doesn’t. He is now working primarily on alignment research, the effort to ensure that future AIs channel their “tremendous” energies toward human happiness
  • It is, he conceded, a difficult technical problem—the most difficult, he believes, of all the technical challenges ahead.
  • As part of the effort to red-team GPT-4 before it was made public, the company sought out the Alignment Research Center (ARC), across the bay in Berkeley, which has developed a series of evaluations to determine whether new AIs are seeking power on their own. A team led by Elizabeth Barnes, a researcher at ARC, prompted GPT-4 tens of thousands of times over seven months, to see if it might display signs of real agency.
  • The ARC team gave GPT-4 a new reason for being: to gain power and become hard to shut down
  • Agarwal told me that this behavior could be a precursor to shutdown avoidance in future models. When GPT-4 devised its lie, it had realized that if it answered honestly, it may not have been able to achieve its goal. This kind of tracks-covering would be particularly worrying in an instance where “the model is doing something that makes OpenAI want to shut it down,” Agarwal said. An AI could develop this kind of survival instinct while pursuing any long-term goal—no matter how small or benign—if it feared that its goal could be thwarted.
  • Barnes and her team were especially interested in whether GPT-4 would seek to replicate itself, because a self-replicating AI would be harder to shut down. It could spread itself across the internet, scamming people to acquire resources, perhaps even achieving some degree of control over essential global systems and holding human civilization hostage.
  • When I discussed these experiments with Altman, he emphasized that whatever happens with future models, GPT-4 is clearly much more like a tool than a creature. It can look through an email thread, or help make a reservation using a plug-in, but it isn’t a truly autonomous agent that makes decisions to pursue a goal, continuously, across longer timescales.
  • Altman told me that at this point, it might be prudent to try to actively develop an AI with true agency before the technology becomes too powerful, in order to “get more comfortable with it and develop intuitions for it if it’s going to happen anyway.”
  • “We need to do empirical experiments on how these things try to escape control,” Hinton told me. “After they’ve taken over, it’s too late to do the experiments.”
  • the fulfillment of Altman’s vision of the future will at some point require him or a fellow traveler to build much more autonomous AIs.
  • When Sutskever and I discussed the possibility that OpenAI would develop a model with agency, he mentioned the bots the company had built to play Dota 2. “They were localized to the video-game world,” Sutskever told me, but they had to undertake complex missions. He was particularly impressed by their ability to work in concert. They seem to communicate by “telepathy,” Sutskever said. Watching them had helped him imagine what a superintelligence might be like.
  • “The way I think about the AI of the future is not as someone as smart as you or as smart as me, but as an automated organization that does science and engineering and development and manufacturing,”
  • Suppose OpenAI braids a few strands of research together, and builds an AI with a rich conceptual model of the world, an awareness of its immediate surroundings, and an ability to act, not just with one robot body, but with hundreds or thousands. “We’re not talking about GPT-4. We’re talking about an autonomous corporation,”
  • Its constituent AIs would work and communicate at high speed, like bees in a hive. A single such AI organization would be as powerful as 50 Apples or Googles, he mused. “This is incredible, tremendous, unbelievably disruptive power.”
  • Presume for a moment that human society ought to abide the idea of autonomous AI corporations. We had better get their founding charters just right. What goal should we give to an autonomous hive of AIs that can plan on century-long time horizons, optimizing billions of consecutive decisions toward an objective that is written into their very being?
  • If the AI’s goal is even slightly off-kilter from ours, it could be a rampaging force that would be very hard to constrain
  • We know this from history: Industrial capitalism is itself an optimization function, and although it has lifted the human standard of living by orders of magnitude, left to its own devices, it would also have clear-cut America’s redwoods and de-whaled the world’s oceans. It almost did.
  • one of its principal challenges will be making sure that the objectives we give to AIs stick
  • We can program a goal into an AI and reinforce it with a temporary period of supervised learning, Sutskever explained. But just as when we rear a human intelligence, our influence is temporary. “It goes off to the world,”
  • That’s true to some extent even of today’s AIs, but it will be more true of tomorrow’s.
  • He compared a powerful AI to an 18-year-old heading off to college. How will we know that it has understood our teachings? “Will there be a misunderstanding creeping in, which will become larger and larger?”
  • Divergence may result from an AI’s misapplication of its goal to increasingly novel situations as the world changes
  • Or the AI may grasp its mandate perfectly, but find it ill-suited to a being of its cognitive prowess. It might come to resent the people who want to train it to, say, cure diseases. “They want me to be a doctor,” Sutskever imagines an AI thinking. “I really want to be a YouTuber.”
  • If AIs get very good at making accurate models of the world, they may notice that they’re able to do dangerous things right after being booted up. They might understand that they are being red-teamed for risk, and hide the full extent of their capabilities.
  • hey may act one way when they are weak and another way when they are strong, Sutskever said
  • We would not even realize that we had created something that had decisively surpassed us, and we would have no sense for what it intended to do with its superhuman powers.
  • That’s why the effort to understand what is happening in the hidden layers of the largest, most powerful AIs is so urgent. You want to be able to “point to a concept,” Sutskever said. You want to be able to direct AI toward some value or cluster of values, and tell it to pursue them unerringly for as long as it exists.
  • we don’t know how to do that; indeed, part of his current strategy includes the development of an AI that can help with the research. If we are going to make it to the world of widely shared abundance that Altman and Sutskever imagine, we have to figure all this out.
  • This is why, for Sutskever, solving superintelligence is the great culminating challenge of our 3-million-year toolmaking tradition. He calls it “the final boss of humanity.”
  • “First of all, I think that whether the chance of existential calamity is 0.5 percent or 50 percent, we should still take it seriously,”
  • . “I don’t have an exact number, but I’m closer to the 0.5 than the 50.”
  • As to how it might happen, he seems most worried about AIs getting quite good at designing and manufacturing pathogens, and with reason: In June, an AI at MIT suggested four viruses that could ignite a pandemic, then pointed to specific research on genetic mutations that could make them rip through a city more quickly
  • Around the same time, a group of chemists connected a similar AI directly to a robotic chemical synthesizer, and it designed and synthesized a molecule on its own.
  • Altman worries that some misaligned future model will spin up a pathogen that spreads rapidly, incubates undetected for weeks, and kills half its victims. He worries that AI could one day hack into nuclear-weapons systems too. “There are a lot of things,” he said, and these are only the ones we can imagine.
  • Altman told me that he doesn’t “see a long-term happy path” for humanity without something like the International Atomic Energy Agency for global oversight of AI
  • In San Francisco, Agarwal had suggested the creation of a special license to operate any GPU cluster large enough to train a cutting-edge AI, along with mandatory incident reporting when an AI does something out of the ordinary
  • Other experts have proposed a nonnetworked “Off” switch for every highly capable AI; on the fringe, some have even suggested that militaries should be ready to perform air strikes on supercomputers in case of noncompliance
  • Sutskever thinks we will eventually want to surveil the largest, most powerful AIs continuously and in perpetuity, using a team of smaller overseer AIs.
  • Safety rules for a new technology usually accumulate over time, like a body of common law, in response to accidents or the mischief of bad actors. The scariest thing about genuinely powerful AI systems is that humanity may not be able to afford this accretive process of trial and error. We may have to get the rules exactly right at the outset.
  • Several years ago, Altman revealed a disturbingly specific evacuation plan he’d developed. He told The New Yorker that he had “guns, gold, potassium iodide, antibiotics, batteries, water, gas masks from the Israeli Defense Force, and a big patch of land in Big Sur” he could fly to in case AI attacks.
  • if the worst-possible AI future comes to pass, “no gas mask is helping anyone.”
  • but he told me that he can’t really be sure how AI will stack up. “I just have to build the thing,” he said. He is building fast
  • Altman insisted that they had not yet begun GPT-5’s training run. But when I visited OpenAI’s headquarters, both he and his researchers made it clear in 10 different ways that they pray to the god of scale. They want to keep going bigger, to see where this paradigm leads. After all, Google isn’t slackening its pace; it seems likely to unveil Gemini, a GPT-4 competitor, within months. “We are basically always prepping for a run,
  • To think that such a small group of people could jostle the pillars of civilization is unsettling. It’s fair to note that if Altman and his team weren’t racing to build an artificial general intelligence, others still would be
  • Altman’s views about the likelihood of AI triggering a global class war, or the prudence of experimenting with more autonomous agent AIs, or the overall wisdom of looking on the bright side, a view that seems to color all the rest—these are uniquely his
  • No single person, or single company, or cluster of companies residing in a particular California valley, should steer the kind of forces that Altman is imagining summoning.
  • AI may well be a bridge to a newly prosperous era of greatly reduced human suffering. But it will take more than a company’s founding charter—especially one that has already proved flexible—to make sure that we all share in its benefits and avoid its risks. It will take a vigorous new politics.
  • I don’t think the general public has quite awakened to what’s happening. A global race to the AI future has begun, and it is largely proceeding without oversight or restraint. If people in America want to have some say in what that future will be like, and how quickly it arrives, we would be wise to speak up soon.
Javier E

A Universal Basic Income Is a Poor Tool to Fight Poverty - The New York Times - 0 views

  • . As Robert Greenstein of the left-leaning Center on Budget and Policy Priorities put it, a check of $10,000 to each of 300 million Americans would cost more than $3 trillion a year.
  • A universal basic income has many undesirable features, starting with its non-negligible disincentive to work.
  • “a universal basic income is one of those ideas that the longer you look at it, the less enthusiastic you become.”
Javier E

A Future Without Jobs? Two Views of the Changing Work Force - The New York Times - 0 views

  • Eduardo Porter: I read your very interesting column about the universal basic income, the quasi-magical tool to ensure some basic standard of living for everybody when there are no more jobs for people to do. What strikes me about this notion is that it relies on a view of the future that seems to have jelled into a certainty, at least among the technorati on the West Coast
  • the economic numbers that we see today don’t support this view. If robots were eating our lunch, it would show up as fast productivity growth. But as Robert Gordon points out in his new book, “The Rise and Fall of American Growth,” productivity has slowed sharply. He argues pretty convincingly that future productivity growth will remain fairly modest, much slower than during the burst of American prosperity in mid-20th century.
  • it relies on an unlikely future. It’s not a future with a lot of crummy work for low pay, but essentially a future with little or no paid work at all.
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  • The former seems to me a not unreasonable forecast — we’ve been losing good jobs for decades, while low-wage employment in the service sector has grown. But no paid work? That’s more a dream (or a nightmare) than a forecast
  • Farhad Manjoo: Because I’m scared that they’ll unleash their bots on me, I should start by defending the techies a bit
  • They see a future in which a small group of highly skilled tech workers reign supreme, while the rest of the job world resembles the piecemeal, transitional work we see coming out of tech today (Uber drivers, Etsy shopkeepers, people who scrape by on other people’s platforms).
  • Why does that future call for instituting a basic income instead of the smaller and more feasible labor-policy ideas that you outline? I think they see two reasons. First, techies have a philosophical bent toward big ideas, and U.B.I. is very big.
  • They see software not just altering the labor market at the margins but fundamentally changing everything about human society. While there will be some work, for most nonprogrammers work will be insecure and unreliable. People could have long stretches of not working at all — and U.B.I. is alone among proposals that would allow you to get a subsidy even if you’re not working at all
  • If there are, in fact, jobs to be had, a universal basic income may not be the best choice of policy. The lack of good work is probably best addressed by making the work better — better paid and more skilled — and equipping workers to perform it,
  • The challenge of less work could just lead to fewer working hours. Others are already moving in this direction. People work much less in many other rich countries: Norwegians work 20 percent fewer hours per year than Americans; Germans 25 percent fewer.
  • Eduardo Porter: I guess some enormous discontinuity right around the corner might vastly expand our prosperity. Joel Mokyr, an economic historian that knows much more than I do about the evolution of technology, argues that the tools and techniques we have developed in recent times — from gene sequencing to electron microscopes to computers that can analyze data at enormous speeds — are about to open up vast new frontiers of possibility. We will be able to invent materials to precisely fit the specifications of our homes and cars and tools, rather than make our homes, cars and tools with whatever materials are available.
  • Eduardo Porter: To my mind, a universal basic income functions properly only in a world with little or no paid work because the odds of anybody taking a job when his or her needs are already being met are going to be fairly low.
  • The discussion, I guess, really depends on how high this universal basic income would be. How many of our needs would it satisfy?
  • You give the techies credit for seriously proposing this as an optimal solution to wrenching technological and economic change. But in a way, isn’t it a cop-out? They’re just passing the bag to the political system. Telling Congress, “You fix it.
  • the idea of the American government agreeing to tax capitalists enough to hand out checks to support the entire working class is in an entirely new category of fantasy.
  • paradoxically, they also see U.B.I. as more politically feasible than some of the other policy proposals you call for. One of the reasons some libertarians and conservatives like U.B.I. is that it is a very simple, efficient and universal form of welfare — everyone gets a monthly check, even the rich, and the government isn’t going to tell you what to spend it on. Its very universality breaks through political opposition.
  • Farhad Manjoo: One key factor in the push for U.B.I., I think, is the idea that it could help reorder social expectations. At the moment we are all defined by work; Western society generally, but especially American society, keeps social score according to what people do and how much they make for it. The dreamiest proponents of U.B.I. see that changing as work goes away. It will be O.K., under this policy, to choose a life of learning instead of a low-paying bad job
  • The question is whether this could produce another burst of productivity like the one we experienced between 1920 and 1970, which — by the way — was much greater than the mini-productivity boom produced by information technology in the 1990s.
  • investors don’t seem to think so. Long-term interest rates have been gradually declining for a fairly long time. This would suggest that investors do not expect a very high rate of return on their future investments. R.&D. intensity is slowing down, and the rate at which new businesses are formed is also slowing.
  • Little in these dynamics suggests a high-tech utopia — or dystopia, for that matter — in the offing
Javier E

A Plan in Case Robots Take the Jobs: Give Everyone a Paycheck - The New York Times - 0 views

  • In Robot America, most manual laborers will have been replaced by herculean bots. Truck drivers, cabbies, delivery workers and airline pilots will have been superseded by vehicles that do it all. Doctors, lawyers, business executives and even technology columnists for The New York Times will have seen their ranks thinned by charming, attractive, all-knowing algorithms.
  • U.B.I., and it goes like this: As the jobs dry up because of the spread of artificial intelligence, why not just give everyone a paycheck?
  • While U.B.I. has been associated with left-leaning academics, feminists and other progressive activists, it has lately been adopted by a wider range of thinkers, including some libertarians and conservatives. It has also gained support among a cadre of venture capitalists in New York and Silicon Valley, the people most familiar with the potential for technology to alter modern work.
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  • tech supporters of U.B.I. consider machine intelligence to be something like a natural bounty for society: The country has struck oil, and now it can hand out checks to each of its citizens.
  • These supporters argue machine intelligence will produce so much economic surplus that we could collectively afford to liberate much of humanity from both labor and suffering.
  • As computers perform more of our work, we’d all be free to become artists, scholars, entrepreneurs or otherwise engage our passions in a society no longer centered on the drudgery of daily labor.
  • “For a couple hundred years, we’ve constructed our entire world around the need to work. Now we’re talking about more than just a tweak to the economy — it’s as foundational a departure as when we went from an agrarian society to an industrial one.”
  • “I think it’s a bad use of a human to spend 20 years of their life driving a truck back and forth across the United States,” Mr. Wenger said. “That’s not what we aspire to do as humans — it’s a bad use of a human brain — and automation and basic income is a development that will free us to do lots of incredible things that are more aligned with what it means to be human.”
  • There is an urgency to the techies’ interest in U.B.I. They argue that machine intelligence reached an inflection point in the last couple of years, and that technological progress now looks destined to change how most of the world works.
  • Wage growth is sluggish, job security is nonexistent, inequality looks inexorable, and the ideas that once seemed like a sure path to a better future (like taking on debt for college) are in doubt. Even where technology has created more jobs, like the so-called gig economy work created by services like Uber, it has only added to our collective uncertainty about the future of work.
  • people are looking at these trends and realizing these questions about the future of work are more real and immediate than they guessed,”
  • A cynic might see the interest of venture capitalists in U.B.I. as a way for them to atone for their complicity in the tech that might lead to permanent changes in the global economy.
  • they don’t see U.B.I. merely as a defense of the current social order. Instead they see automation and U.B.I. as the most optimistic path toward wider social progress.
  • When you give everyone free money, what do people do with their time? Do they goof off, or do they try to pursue more meaningful pursuits? Do they become more entrepreneurial? How would U.B.I. affect economic inequality? How would it alter people’s psychology and mood? Do we, as a species, need to be employed to feel fulfilled, or is that merely a legacy of postindustrial capitalism?
  • Proponents say these questions will be answered by research, which in turn will prompt political change. For now, they argue the proposal is affordable if we alter tax and welfare policies to pay for it, and if we account for the ways technological progress in health care and energy will reduce the amount necessary to provide a basic cost of living.
  • They also note that increasing economic urgency will push widespread political acceptance of the idea. “There’s a sense that growing inequality is intractable, and that we need to do something about it,
  • Andrew L. Stern, a former president of the Service Employees International Union, who is working on a book about U.B.I., compared the feeling of the current anxiety around jobs to a time of war. “I grew up during the Vietnam War, and my parents were antiwar for one reason: I could be drafted,” he said.
  • Today, as people across all income levels become increasingly worried about how they and their children will survive in tech-infatuated America, “we are back to the Vietnam War when it comes to jobs,
Javier E

Mitt Romney and Andrew Yang Say Give People Money - The Atlantic - 0 views

  • Harris: Even with Mitt Romney’s support, do you think it is something that Congress will do? Where do you place the likelihood of this happening?
  • Yang: I’m getting more and more encouraged. Because if you look, you see a range of economists from Jason Furman to Nouriel Roubini coming out for it. Commentators from Anand Giridharadas to Geraldo Rivera. And now with Mitt Romney coming out, you have Republicans as well as folks like AOC and Ro Khanna
  • people are waking up to the common sense that the only way we’re going to help our people manage this crisis is by putting cold, hard cash into our hands as quickly as possible. I’m increasingly optimistic that common sense will prevail and Congress will pass this before too many lives fall apart.
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  • Yang: You are going to be able to say to your constituents in your district: “I got money in your hands during this moment of need. When push came to shove, I came through for you.”
Javier E

The Cascading Complexity Of Diversity - The Weekly Dish - 0 views

  • the News Guild of New York — the union that represents 1200 New York Times employees — recently set out its goals for the newspaper, especially with respect to its employees of color. Money quote: “Our workforce should reflect our home. The Times should set a goal to have its workforce demographics reflect the make-up of the city — 24 percent Black, and over 50 percent people of color — by 2025.”
  • what I want to focus on is the core test the Guild uses to judge whether the Times is itself a racist institution. This is what I’ll call the Kendi test: does the staff reflect the demographics of New York City as a whole?
  • systemic racism, according to Kendi, exists in any institution if there is simply any outcome that isn’t directly reflective of the relevant racial demographics of the surrounding area.
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  • The appeal of this argument is its simplicity. You can tell if a place is enabling systemic racism merely by counting the people of color in it; and you can tell if a place isn’t by the same rubric. The drawback, of course, is that the world isn’t nearly as simple
  • On some measures, the NYT is already a mirror of NYC. Its staff is basically 50 - 50 on sex (with women a slight majority of all staff on the business side, and slight minority in editorial). And it’s 15 percent Asian on the business side, 10 percent in editorial, compared with 13.9 percent of NYC’s population. 
  • But its black percentage of staff — 10 percent in business, 9 percent in editorial — needs more than doubling to reflect demographics. Its Hispanic/Latino staff amount to only 8 percent in business and 5 percent in editorial, compared with 29 percent of New York City’s demographics, the worst discrepancy for any group
  • notice how this new goal obviously doesn’t reflect New York City’s demographics in many other ways. It draws overwhelmingly from the college educated, who account for only 37 percent of New Yorkers, leaving more than 60 percent of the city completed unreflected in the staffing.
  • We have no idea whether “white” people are Irish or Italian or Russian or Polish or Canadians in origin. Similarly, we do not know if “black” means African immigrants, or native black New Yorkers, or people from the Caribbean
  • Around 10 percent of staffers would have to be Republicans (and if the paper of record nationally were to reflect the country as a whole, and not just NYC, around 40 percent would have to be
  • Some 6 percent of the newsroom would also have to be Haredi or Orthodox Jews
  • 48 percent of NYT employees would have to agree that religion is “very important” in their lives; and 33 percent would be Catholic.
  • Taking this proposal seriously, then, really does require explicit use of race in hiring, which is illegal, which is why the News Guild tweet and memo might end up causing some trouble if the policy is enforced.
  • It would also have to restrict itself to the literate, and, according to Literacy New York, 25 percent of people in Manhattan “lack basic prose literary skills” along with 37 percent in Brooklyn and 41 percent in the Bronx.
  • My point is that any attempt to make a specific institution entirely representative of the demographics of its location will founder on the sheer complexity of America’s demographic story and the nature of the institution itself
  • Journalism, for example, is not a profession sought by most people; it’s self-selecting for curious, trouble-making, querulous assholes who enjoy engaging with others and tracking down the truth (at least it used to be). There’s no reason this skillset or attitude will be spread evenly across populations
  • It seems, for example, that disproportionate numbers of Jews are drawn to it, from a culture of high literacy, intellectualism, and social activism. So why on earth shouldn’t they be over-represented? 
  • that’s true of other institutions too: are we to police Broadway to make sure that gays constitute only 4 percent of the employees? Or, say, nursing, to ensure that the sex balance is 50-50? Or a construction company for gender parity?
  • take publishing — an industry not far off what the New York Times does. 74 percent of its employees are women. Should there be a hiring freeze until the men catch up? 
  • The more you think about it, the more absurdly utopian the Kendi project turns out to be. That’s because its core assumption is that any demographic discrepancies between a profession or institution and its locale are entirely a function of oppression.
  • That’s how Kendi explains racial inequality in America, and specifically denies any alternative explanation.
  • So how is it that a white supremacist country has whites earning considerably less on average than Asian-Americans? How does Kendi explain the fact that the most successful minority group in America are Indian-Americans — with a median income nearly twice that of the national median?
  • Here’s a partial list of the national origins of US citizens whose median earnings are higher than that of white people in America: Indian, Chinese, Japanese, Pakistani, Iranian, Lebanese, Sri Lankan, Armenian, Hmong, Vietnamese.
  • But it is absurd to argue that racism is the sole reason for every racial difference in outcome in the extraordinarily diverse and constantly shifting racial demographics of New York City or the US
  • It’s true, of course, that historical injustices have deeply hurt African-Americans in particular in hobbling opportunity, which is why African-Americans who are descendants of slaves should be treated as an entirely separate case from all other racial categories. No other group has experienced anything like the toll of slavery, segregation and brutality that African-Americans have. This discrimination was enforced by the state and so the state has an obligation to make things right. 
  • You can argue that these groups are immigrants and self-selecting for those with higher IQs, education, motivation, and drive. It’s true. But notice that this argument cannot be deployed under the Kendi test: any inequality is a result of racism, remember?
  • In fact, to reduce all this complexity to a quick, crude check of race and sex to identify your fellow American is a kind of new racism itself.
  • It has taken off because we find it so easy to slip back into crude generalizations.
  • for all those reasons, attempting to categorize people in the crudest racial terms, and social engineering them into a just society where every institution looks like every other one, is such a nightmare waiting to happen. It’s a brutal, toxic, racist template being imposed on a dazzling varied and constantly shifting country.
  • this explicit reintroduction of crude racism under the guise of antiracism is already happening. How many institutions will it tear apart, and how much racial resentment will it foment, before it’s done? 
  • this cannot mean a return to the status quo ante. That would ignore the lessons of the 21st century — that neoconservatism’s desire to rule the world is a fantasy, and that zombie Reagonomics has been rendered irrelevant by its own success and unintended failures
  • What the right needs to do, quite simply, is to seize the mantle of cultural conservatism while moving sharply left on economics.
  • Here’s the gist of a platform I think could work. The GOP should drop the tax cut fixation, raise taxes on the wealthy, and experiment with UBI
  • It needs a workable healthcare policy which can insure everyone in the country, on Obamacare private sector lines. (Yes, get the fuck over Obamacare. It’s the most conservative way to achieve universal access to healthcare we have.
  • It has to promote an agenda of lower immigration as a boon to both successful racial integration and to raising working class wages.
  • It needs finally to acknowledge the reality of climate change and join the debate about how, rather than whether, to tackle it.
  • It has to figure out a China policy that is both protective of some US industries and firm on human rights.
  • It needs to protect religious freedom against the incursions of the cultural left.
  • And it needs to become a place where normie culture can live and thrive, where acknowledgment of America’s past failures doesn’t exclude pride in America’s great successes, and where the English language can still be plainly used.
  • No big need to change on judges (except finding qualified ones); and no reason either to lurch back to worrying about deficits in the current low-inflation environment.
  • I believe this right-of-center pragmatism has a great future. It was the core message behind the British Tories’ remarkable success in the 2019 election
  • The trouble, of course, is that GOP elites would have a hell of a time achieving this set of policies with its current membership. Damon Linker has a terrific piece about the problem of Republican voters most of whom “remain undaunted in their conviction that politics is primarily about the venting of grievances and the trolling of opponents. The dumber and angrier and more shameless, the better.”
  • I see no reason why someone else couldn’t shift it yet again — not back to pre-Trump but forward to a new fusion of nationalist realism, populist economics, and cultural conservatism. By cultural conservatism I don’t mean another round of the culture wars — but a defense of pride in one’s country, respect for tradition, and social stability. There is also, I suspect, a suppressed but real desire for the normality and calmness that Trump has eviscerated.
  • What I was trying to argue is that the roots of critical theory are fundamentally atheist, are very much concerned with this world alone, and have no place for mercy or redemption or the individual soul.
  • Christians who think they can simply adopt both are being somewhat naive. And yes, I feel the same way about “liberation theology” as well, however sympathetic the Pope now is.
  • It seems to me the logical outcome of a broad application of critical theory will be a wider revival of white supremacy. Where there’s no possibility of redemption, resistance becomes inevitable.
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