| Hi! :) It appears you have some issues with my article, and I'm happy to provide some help. "Egregious errors in previous articles" is not a valid argument against current arguments, nor do I agree there were those errors. Nevertheless, we're discussing one particular article today! "I didn't read the entire gish gallop, but spot-checked a few paragraphs here and there. It's just the kind of innumerate tripe that you should expect from Zitron based on their past performance." Well that's not very nice! It also means that your argument is made on incomplete data. "... Sorry, what? Reducing operating costs does not increase revenue. And I don't know how the author thinks that reducing cost of services would not reduce operating costs." I'm afraid you misread what I said, likely because you (and I quote) "spot-checked a few paragraphs." One of the problems OpenAI has is that their cost of revenue - and we don't know it to be exact - is extremely high, higher than the revenue they're actually gaining, otherwise known as an "operating loss." As a result, even if they increase revenue, they'll actually lose more money. On top of that, the argument I was making is that if there's a race to the bottom (one that's already started), they will have to cut costs, making them less money even if they get more customers. "Reducing prices does not increase costs."
Does reducing prices reduce operating expenses? Because if it doesn't, it actually does increase costs, because you're taking home less cash for the same cost. It could be that 4oMini is somehow more efficient - i can find no evidence that that's the case, and if it exists, I will happily update my article. "So, here's a prime example of the author basing the "analysis" on them personally "seeing no signs" of something they have no expertise to evaluate. There's no source for this claim, and it's pretty crucial for their conclusions that transformers have hit a wall." I can find no examples of radically-different functionality in GPT or other mass-market transformer-based models. In the event I am wrong, I would be fascinated to read about them, but I would need to understand A) how these functionalities are different and B) how they can be productized. After that, I'd need to understand how this would be profitable, and in turn how this would scale into something truly world-changing. "But for a given quality of model, haven't the inference costs already gone down by like 90% this year?"
Have they? "It should be pretty obvious to somebody who can read publicly available data that all of the increase over 5 years can't be attributed to AI." I too read publicly-available data, and my source in this case is "Google." Forgive the messy copy-paste. https://www.gstatic.com/gumdrop/sustainability/google-2024-e... In 2023, our total GHG emissions were 14.3 million tCO2e, representing a 13% year-overyear increase and a 48% increase compared to our 2019 target base year. This result was primarily due to increases in data center
energy consumption and supply chain emissions. As we further integrate AI into
our products, reducing emissions may be challenging due to increasing energy demands from the greater intensity of AI compute, and the emissions associated with the expected increases in our technical infrastructure investment. |
> I'm afraid you misread what I said, likely because you (and I quote) "spot-checked a few paragraphs."
I quoted what you wrote, it wasn't out of context, and it was obvious nonsense. That you can't catch such obvious nonsense is exactly why nothing you write can be trusted.
> One of the problems OpenAI has is that their cost of revenue - and we don't know it to be exact - is extremely high, higher than the revenue they're actually gaining, otherwise known as an "operating loss." As a result, even if they increase revenue, they'll actually lose more money. On top of that, the argument I was making is that if there's a race to the bottom (one that's already started), they will have to cut costs, making them less money even if they get more customers.
None of that seems to bear any relation to what you actually wrote: "As a result, OpenAI's revenue might climb, but it's likely going to climb by reducing the cost of its services rather than its own operating costs". That is you claiming that reducing the cost of its services would increase revenue.
That is not you talking about operating income, or margin, or cost of revenue. These words have actual meaning, you can't just randomly one for another and expect it to make sense. Again, a recurring pattern.
> I too read publicly-available data, and my source in this case is "Google."
Yes, you already bragged in the article that you know how to read publicly available data, which is why that's the qualifier I used. I don't dispute that you're able to read. I will, however, claim that you either do not understand much what you read or are intentionally choosing to misrepresent that. Let's look at this example:
> In 2023, our total GHG emissions were 14.3 million tCO2e, representing a 13% year-overyear increase and a 48% increase compared to our 2019 target base year. This result was primarily due to increases in data center energy consumption and supply chain emissions. As we further integrate AI into our products, reducing emissions may be challenging due to increasing energy demands from the greater intensity of AI compute, and the emissions associated with the expected increases in our technical infrastructure investment.
What part of that supports your claim of AI being the cause of the 48% increase? None of it. It is only attributed to "supply chain emissions" and "data center energy consumption". The mention of AI is entirely forward-looking. Let's take it for granted that you indeed read the text you copy-pasted. Why is your claim about what it says so obviously incorrect?
Did you really not understand the text? It's not that complex. Did you understand it and just lie about it because it supported the narrative you had in mind, and nobody checks the sources anyway? Seems like a bad plan. Either way, it again demonstrates that you are not cut out for doing any kind of analysis.