It can be quite profitable. A ChatGPT subscription is $20/m right now, or $240/year. A software engineer in the US is between $200k and $1m with all benefits and support costs considered. If that $200k engineer can use ChatGPT to save 2.5 hours in a year, then it pays for itself.
It’s quite funny that you think ChatGPT is making a profit on that 20$ subscription if you replace a software dev with it.
The bust won’t be because it’s not profitable to use AI but because the companies selling the service cannot do so at rates which are both profitable and actually marketable. Case in point: OpenAI has not made a single cent of profit so far (or at least not reported a profit). The way AI is currently shoved in everywhere is not sustainable because the cost of running an AI model cannot be recuperated by most of these new platforms.
OpenAI is a non-profit. Further, US tech companies usually take many years to become profitable. It’s called reinvesting revenue, more companies should be doing that instead of stock buybacks.
Let’s suppose hosted LLMs like ChatGPT aren’t financially sustainable and go bust though. As a user, you can also just run them locally, and as smaller models improve, this is becoming more and more popular. It’s likely how Apple will be integrating LLMs into their devices, at least in part, and Microsoft is going that route with “Copilot+ PCs” that start shipping next week. Integration aside, you can run 70B models on an overpriced $5k MacBook Pro today that are maybe half as useful as ChatGPT. The cost to do so exceeds the cost of a ChatGPT subscription, but to use my numbers from before, a $5k MacBook Pro running llama 3 70B would have to save an engineer one hour per week to pay for itself in the first year. Subsequent years only the electrical costs would matter, which for a current gen MacBook Pro would be about equivalent to the ChatGPT subscription in expensive energy markets like Europe, or half that or less in the US.
In short, you can buy overpriced Apple hardware to run your LLMs, do so with high energy prices, and it’s still super cheap compared to a single engineer such that saving 1 hour per week would still pay for itself in the first year.
Yeah I don’t know why you keep going on about people using AI when my point was entirely that most of the companies offering AI services don’t have a sustainable business model. Being able to do that work locally if anything strengthens my point.
ChatGPT isn’t gonna replace software engineers anytime soon. It can increase productivity though, that’s the value LLMs provide. If someone made a shitty pull request filled with obvious ChatGPT output, that’s on them and not the technology. Blaming ChatGPT for a programmer’s bad code is like blaming the autocomplete in their editor for bad code: just because the editor suggests it doesn’t mean you have or should accept it if it’s wrong.
It can be quite profitable. A ChatGPT subscription is $20/m right now, or $240/year. A software engineer in the US is between $200k and $1m with all benefits and support costs considered. If that $200k engineer can use ChatGPT to save 2.5 hours in a year, then it pays for itself.
It’s quite funny that you think ChatGPT is making a profit on that 20$ subscription if you replace a software dev with it.
The bust won’t be because it’s not profitable to use AI but because the companies selling the service cannot do so at rates which are both profitable and actually marketable. Case in point: OpenAI has not made a single cent of profit so far (or at least not reported a profit). The way AI is currently shoved in everywhere is not sustainable because the cost of running an AI model cannot be recuperated by most of these new platforms.
OpenAI is a non-profit. Further, US tech companies usually take many years to become profitable. It’s called reinvesting revenue, more companies should be doing that instead of stock buybacks.
Let’s suppose hosted LLMs like ChatGPT aren’t financially sustainable and go bust though. As a user, you can also just run them locally, and as smaller models improve, this is becoming more and more popular. It’s likely how Apple will be integrating LLMs into their devices, at least in part, and Microsoft is going that route with “Copilot+ PCs” that start shipping next week. Integration aside, you can run 70B models on an overpriced $5k MacBook Pro today that are maybe half as useful as ChatGPT. The cost to do so exceeds the cost of a ChatGPT subscription, but to use my numbers from before, a $5k MacBook Pro running llama 3 70B would have to save an engineer one hour per week to pay for itself in the first year. Subsequent years only the electrical costs would matter, which for a current gen MacBook Pro would be about equivalent to the ChatGPT subscription in expensive energy markets like Europe, or half that or less in the US.
In short, you can buy overpriced Apple hardware to run your LLMs, do so with high energy prices, and it’s still super cheap compared to a single engineer such that saving 1 hour per week would still pay for itself in the first year.
Yeah I don’t know why you keep going on about people using AI when my point was entirely that most of the companies offering AI services don’t have a sustainable business model. Being able to do that work locally if anything strengthens my point.
I’ve seen pull requests filled with ChatGPT code. I consider my dev job pretty safe.
ChatGPT isn’t gonna replace software engineers anytime soon. It can increase productivity though, that’s the value LLMs provide. If someone made a shitty pull request filled with obvious ChatGPT output, that’s on them and not the technology. Blaming ChatGPT for a programmer’s bad code is like blaming the autocomplete in their editor for bad code: just because the editor suggests it doesn’t mean you have or should accept it if it’s wrong.