There鈥檚 no such thing as Artificial Intelligence

NO ONE SELLS the future more masterfully than the tech industry. According to its proponents, we will all live in the 鈥渕etaverse,鈥 build our financial infrastructure on 鈥渨eb3鈥 and power our lives with 鈥渁rtificial intelligence.鈥 All three of these terms are mirages that have raked in billions of dollars, despite bite back by reality.
Artificial intelligence (AI) in particular conjures the notion of thinking machines. But no machine can think, and no software is truly intelligent. The phrase alone may be one of the most successful marketing terms of all time.聽
Last week OpenAI , a major upgrade to the technology underpinning ChatGPT. The system sounds even more humanlike than its predecessor, naturally reinforcing notions of its intelligence. But GPT-4 and other large language models like it are simply mirroring databases of text 鈥 for the previous model 鈥 whose scale is difficult to contemplate. Helped along by an reprograming it with corrections, the models glom words together based on probability. That is not intelligence.
These systems are trained to generate text that sounds plausible, yet they are marketed as new oracles of knowledge that can be plugged into search engines. That is foolhardy when GPT-4 continues to make errors, and it was only a few weeks ago that Microsoft Corp. and Alphabet, Inc.鈥檚 Google both in which their new search engines glitched on facts.
Not helping matters: Terms like 鈥渘eural networks鈥 and 鈥渄eep learning鈥 only bolster the idea that these programs are humanlike. Neural networks aren鈥檛 copies of the human brain in any way; they are only loosely inspired by its workings. Long-running efforts to try and replicate the human brain with its roughly 85 billion neurons have all failed. The closest scientists have come is to emulating the , with 302 neurons.
We need a different lexicon that doesn鈥檛 propagate magical thinking about computer systems, and doesn鈥檛 absolve the people designing those systems from their responsibilities. What is a better alternative? Reasonable technologists have tried for years to replace 鈥淎I鈥 with 鈥渕achine learning systems,鈥 but that doesn鈥檛 trip off the tongue in quite the same way.
Stefano Quintarelli, a former Italian politician and technologist , 鈥淪ystemic Approaches to Learning Algorithms and Machine Inferences鈥 or SALAMI, to underscore the ridiculousness of the questions people have been posing about AI: Is SALAMI sentient? Will SALAMI ever have supremacy over humans?
The most hopeless attempt at a semantic alternative is probably the most accurate: 鈥渟oftware.鈥
鈥淏ut,鈥 I hear you ask, 鈥淲hat is wrong with using a little metaphorical shorthand to describe technology that seems so magical?鈥
The answer is that ascribing intelligence to machines gives them undeserved independence from humans, and it abdicates their creators of responsibility for their impact. If we see ChatGPT as 鈥渋ntelligent,鈥 then we are less inclined to try and hold San Francisco startup OpenAI LP, its creator, to account for its inaccuracies and biases. It also creates a fatalistic compliance among humans who suffer technology鈥檚 damaging effects; though 鈥淎I鈥 will not take your job or plagiarize your artistic creations 鈥 other humans will.
The issue is ever more pressing now that companies from Meta Platforms, Inc. to Snap, Inc. to to plug chatbots and text and image generators into their systems. Spurred by its new arms race with Google, Microsoft is putting OpenAI鈥檚 language model technology, still largely untested, , including Word, Outlook, and Excel. 鈥淐opilot will fundamentally change how people work with AI and how AI works with people,鈥 Microsoft of its new feature.
But for customers, the promise of working with intelligent machines is almost misleading. 鈥淸AI is] one of those labels that expresses a kind of utopian hope rather than present reality, somewhat as the rise of the phrase 鈥榮mart weapons鈥 during the first Gulf War implied a bloodless vision of totally precise targeting that still isn鈥檛 possible,鈥 says Steven Poole, author of the book Unspeak, about the dangerous power of words and labels.
Margaret Mitchell, a computer scientist who was fired by Google after publishing a paper that criticized the biases in large language models, has reluctantly described her work as being based in 鈥淎I鈥 over recent years. 鈥淏efore鈥 people like me said we worked on 鈥榤achine learning.鈥 That鈥檚 a great way to get people鈥檚 eyes to glaze over,鈥 she admitted to a conference panel on Friday.
Her former Google colleague and founder of the Distributed Artificial Intelligence Research Institute, Timnit Gebru, said she also only started saying 鈥淎I鈥 around 2013: 鈥淚t became the thing to say.鈥
鈥淚t鈥檚 terrible but I鈥檓 doing this too,鈥 Mitchell added. 鈥淚鈥檓 calling everything that I touch 鈥楢I鈥 because then people will listen to what I鈥檓 saying.鈥
Unfortunately, 鈥淎I鈥 is so embedded in our vocabulary that it will be almost impossible to shake, the obligatory air quotes difficult to remember. At the very least, we should remind ourselves of how reliant such systems are on human managers who should be held accountable for their side effects.
Author Poole says he prefers to call chatbots like ChatGPT and image generators like Midjourney 鈥済iant plagiarism machines鈥 since they mainly recombine prose and pictures that were originally created by humans. 鈥淚鈥檓 not confident it will catch on,鈥 he says.
In more ways than one, we really are stuck with 鈥淎I.鈥
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