
OpenAI has unveiled its latest AI model, GPT-4.5, but the firm’s boss says it is running out of hardware to power it. If ever-larger AI can no longer be run at scale, then are we looking at the end of the technology’s rapid progress, and perhaps even the bursting of a bubble?
There are certainly signs that things aren’t going as planned within OpenAI. As recently as 12 February, CEO Sam Altman that the company’s product offering had created a confusing picture – at the time of writing, OpenAI offered – and expressed a desire to return to a “magic unified intelligence” instead. That unified model was intended to be GPT-5, and it was to be offered at a limited level to even non-paying customers of OpenAI.
But at a launch event yesterday, OpenAI instead offered an incrementally updated version of GPT-4. A company called GPT-4.5 its “largest and best model for chat yet”, but Altman said a lack of computing capacity meant it could only offer the product to a small number of customers. “It is a giant, expensive model,” . “We’ve been growing a lot and are out of GPUs [processors that provide the computing power for AI].”
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As a result of this, its new model high. GPT-4.5 costs $75 per 1,000,000 tokens of input, and $150 per output. Its cheapest model costs $0.15 and $0.60 respectively.
Altman’s comments suggest GPT-4.5 is far larger than previous models, despite it being more than 10 times more efficient than GPT-4, according to . OpenAI didn’t respond to a request for comment or clarification.
The constant scaling-up that has delivered rapid progress in AI cannot go on forever, says at AI company Hugging Face. “The current way of training and deploying LLMs [large language models] is grossly inefficient – it’s essentially brute-forcing intelligence. Of course that’s bound to hit a wall,” she says.
While Altman’s claimed that GPT-4.5 has “a magic to it I haven’t felt before”, Luccioni is unconvinced. “Using terms like ‘magic’ and ‘AGI’ [artificial general intelligence] makes the people making these models seem all-powerful,” says Luccioni. “But I would argue more that Altman is the Wizard of Oz, distracting us so that we don’t look behind the curtain.”
Indeed, AI companies are reluctant to open up their models to scientific study, partly due to protection of corporate secrets but perhaps also because they don’t want to expose the sources of their training data.
They are similarly cagey when it comes to revealing exact hardware requirements, energy use or cost. When details are released, such as for DeepSeek – the chinese model that was claimed to match the performance of cutting-edge models at a fraction of the cost and computational power – they are hard to verify. In truth, the industry is impenetrable to objective analysis.
at the University of Surrey, UK, says the industry’s approach over the past five years, to grow ever-larger, consume more energy and feed in more training data, was inevitably going to bump into constraints at some point, but there are efforts underway to overcome or side-step them. “If the cost is too high [and] the compute requirement is too high, then it makes it non-viable as a business,” says Rogoyski. “So it’s in everyone’s interest to bring that down.”
Rogoyski doesn’t see current LLMs as the long-term future of AI. Techniques such as distillation, which slim down AI models while retaining functionality, may make future models more efficient and cheaper to run. But there are also new architectures on the horizon that could run even existing models faster, including neuromorphic computing, and even quantum computers.
Whether or not companies can become profitable fast enough to remain in business is the “64-trillion-dollar question”, says Rogoyski. “It’s a bit of a Darwinian soup of ideas at the moment, and there’ll be those that survive and thrive and those that die away.”