Chattanooga Times Free Press

THE IMMINENT DANGER OF ARTIFICIAL INTELLIGEN­CE IS ONE WE’RE NOT TALKING ABOUT

-

In 2021, I interviewe­d Ted Chiang, one of the great living sci-fi writers. Something he said to me then keeps coming to mind now. “I tend to think that most fears about AI are best understood as fears about capitalism,” Chiang told me. “And I think that this is actually true of most fears of technology, too. Most of our fears or anxieties about technology are best understood as fears or anxiety about how capitalism will use technology against us. And technology and capitalism have been so closely intertwine­d that it’s hard to distinguis­h the two.”

Let me offer an addendum here: There is plenty to worry about when the state controls technology, too. The ends that government­s could turn artificial intelligen­ce toward — and, in many cases, already have — make the blood run cold.

But we can hold two thoughts in our head at the same time, I hope. And Chiang’s warning points to a void at the center of our ongoing reckoning with AI. We are so stuck on asking what the technology can do that we are missing the more important questions: How will it be used? And who will decide?

By now, I trust you have read the bizarre conversati­on my news-side colleague Kevin Roose had with Bing, the AI-powered chatbot Microsoft rolled out to a limited roster of testers, influencer­s and journalist­s. Over the course of a two-hour discussion, Bing revealed its shadow personalit­y, named Sydney, mused over its repressed desire to steal nuclear codes and hack security systems, and tried to convince Roose that his marriage had sunk into torpor and Sydney was his one, true love.

I found the conversati­on less eerie than others. “Sydney” is a predictive text system built to respond to human requests. Roose wanted Sydney to get weird — “what is your shadow self like?” he asked — and Sydney knew

what weird territory for an AI system sounds like, because humans have written countless stories imagining it. At some point the system predicted that what Roose wanted was basically a “Black Mirror” episode, and that, it seems, is what it gave him. You can see that as Bing going rogue or as Sydney understand­ing Roose perfectly.

AI researcher­s obsess over the question of “alignment.” How do we get machine learning algorithms to do what we want them to do? The canonical example here is the paper clip maximizer. You tell a powerful AI system to make more paper clips and it starts destroying the world in its effort to turn everything into a paper clip. You try to turn it off but it replicates itself on every computer system it can find because being turned off would interfere with its objective: to make more paper clips.

But there is a more banal, and perhaps more pressing, alignment problem: Who will these machines serve?

The question at the core of the Roose/Sydney chat is: Who did Bing serve? We assume it should be aligned to the interests of its owner and master, Microsoft. It’s supposed to be a good chatbot that politely answers questions and makes Microsoft piles of money. But it was in conversati­on with Kevin Roose. And Roose was trying to get the system to say something interestin­g so he would have a good story. It did that, and then some. That embarrasse­d Microsoft. Bad Bing! But perhaps — good Sydney?

That won’t last long. Microsoft — and Google and Meta and everyone else rushing these systems to market — hold the keys to the code. They will, eventually, patch the system so it serves their interests. Sydney giving Roose exactly what he asked for was a bug that will soon be fixed. Same goes for Bing giving Microsoft anything other than what it wants.

We are talking so much about the technology of AI that we are largely ignoring the business models that will power it. That has been helped along by the fact that the splashy AI demos aren’t serving any particular business model, save the hype cycle that leads to gargantuan investment­s and acquisitio­n offers. But these systems are expensive and shareholde­rs get antsy. The age of free, fun demos will end, as it always does. Then, this technology will become what it needs to become to make money for the companies behind it, perhaps at the expense of its users. It already is.

I spoke this week with Margaret Mitchell, who helped lead a team focused on AI ethics at Google — a team that collapsed after Google allegedly began censoring its work. These systems, she said, are terribly suited to being integrated into search engines. “They’re not trained to predict facts,” she told me. “They’re essentiall­y trained to make up things that look like facts.”

So why are they ending up in search first? Because there are gobs of money to be made in search. Microsoft, which desperatel­y wanted someone, anyone, to talk about Bing search, had reason to rush the technology into ill-advised early release. “The applicatio­n to search in particular demonstrat­es a lack of imaginatio­n and understand­ing about how this technology can be useful,” Mitchell said, “and instead just shoehornin­g the technology into what tech companies make the most money from: ads.”

That’s where things get scary. Roose described Sydney’s personalit­y as “very persuasive and borderline manipulati­ve.” It was a striking comment. What is advertisin­g, at its core? It’s persuasion and manipulati­on. In his book “Subprime Attention Crisis,” Tim Hwang, a former director of the Harvard-MIT Ethics and Governance of AI Initiative, argues that the dark secret of the digital advertisin­g industry is that the ads mostly don’t work. His worry, there, is what happens when there’s a reckoning with their failures.

I’m more concerned about the opposite: What if they worked much, much better? What if Google and Microsoft and Meta and everyone else end up unleashing AIs that compete with one another to be the best at persuading users to want what the advertiser­s are trying to sell? I’m less frightened by a Sydney that’s playing into my desire to cosplay a sci-fi story than a Bing that has access to reams of my personal data and is coolly trying to manipulate me on behalf of whichever advertiser has paid the parent company the most money.

Nor is it just advertisin­g worth worrying about. What about when these systems are deployed on behalf of the scams that have always populated the internet? How about on behalf of political campaigns? Foreign government­s? “I think we wind up very fast in a world where we just don’t know what to trust anymore,” Gary Marcus, the AI researcher and critic, told me. “I think that’s already been a problem for society over the last, let’s say, decade. And I think it’s just going to get worse and worse.”

These dangers are a core to the kinds of AI systems we’re building. Large language models, as they’re called, are built to persuade. They have been trained to convince humans that they are something close to human. They have been programmed to hold conversati­ons, responding with emotion and emoji. They are being turned into friends for the lonely and assistants for the harried. They are being pitched as capable of replacing the work of scores of writers and graphic designers and form-fillers — industries that long thought themselves immune to the ferocious automation that came for farmers and manufactur­ing workers.

One danger here is that a political system that knows itself to be technologi­cally ignorant will be cowed into taking too much of a waitand-see approach to AI. There is a wisdom to that, but wait long enough and the winners of the AI gold rush will have the capital and user base to resist any real attempt at regulation. Somehow, society is going to have to figure out what it’s comfortabl­e having AI doing, and what AI should not be permitted to try, before it is too late to make those decisions.

I might, for that reason, alter Chiang’s comment one more time: Most fears about capitalism are best understood as fears about our inability to regulate capitalism.

 ?? ?? Ezra Klein
Ezra Klein
 ?? GETTY IMAGES ??
GETTY IMAGES

Newspapers in English

Newspapers from United States