Categories
News

In 2024, artificial intelligence was all about putting AI tools to work


By MATT O’BRIEN and SARAH PARVINI, the Related Press

If 2023 was a yr of surprise about artificial intelligence, 2024 was the yr to attempt to get that surprise to do one thing helpful with out breaking the financial institution.

There was a “shift from putting out fashions to really constructing merchandise,” mentioned Arvind Narayanan, a Princeton College laptop science professor and co-author of the brand new e book “AI Snake Oil: What Artificial Intelligence Can Do, What It Can’t, and How to Inform The Distinction.”

The primary 100 million or so individuals who experimented with ChatGPT upon its launch two years in the past actively sought out the chatbot, discovering it amazingly useful at some duties or laughably mediocre at others.

Now such generative AI expertise is baked into an growing variety of expertise companies whether or not we’re on the lookout for it or not — for example, by means of the AI-generated answers in Google search outcomes or new AI methods in photograph enhancing tools.

“The primary factor that was incorrect with generative AI final yr is that firms had been releasing these actually highly effective fashions with out a concrete means for individuals to make use of them,” mentioned Narayanan. “What we’re seeing this yr is step by step constructing out these merchandise that may benefit from these capabilities and do helpful issues for individuals.”

On the identical time, since OpenAI launched GPT-4 in March 2023 and rivals launched equally performing AI massive language fashions, these fashions have stopped getting considerably “greater and qualitatively higher,” resetting overblown expectations that AI was racing each few months to some type of better-than-human intelligence, Narayanan mentioned. That’s additionally meant that the general public discourse has shifted from “is AI going to kill us?” to treating it like a standard expertise, he mentioned.

AI’s sticker shock

On quarterly earnings calls this yr, tech executives usually heard questions from Wall Road analysts on the lookout for assurances of future payoffs from large spending on AI analysis and growth. Constructing AI techniques behind generative AI tools like OpenAI’s ChatGPT or Google’s Gemini requires investing in energy-hungry computing systems working on highly effective and expensive AI chips. They require a lot electrical energy that tech giants introduced offers this yr to tap into nuclear power to assist run them.

“We’re speaking about lots of of billions of {dollars} of capital that has been poured into this expertise,” mentioned Goldman Sachs analyst Kash Rangan.

One other analyst on the New York funding financial institution drew consideration over the summer season by arguing AI isn’t fixing the advanced issues that may justify its prices. He additionally questioned whether or not AI fashions, at the same time as they’re being skilled on a lot of the written and visible information produced over the course of human historical past, will ever have the opportunity to do what people achieve this properly. Rangan has a extra optimistic view.

“We had this fascination that this expertise is simply going to be completely revolutionary, which it has not been within the two years because the introduction of ChatGPT,” Rangan mentioned. “It’s costlier than we thought and it’s not as productive as we thought.”



Source link

Leave a Reply

Your email address will not be published. Required fields are marked *