this post was submitted on 25 Jun 2024
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A place to post ridiculous posts from linkedIn.com

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[–] Gradually_Adjusting@lemmy.world 168 points 4 months ago (3 children)

Why not replace the CEO with an LLM? Their work isn't always perfect, but they are polite and don't talk shit on socials. They're cheaper than a human CEO too,, aside from being thirsty lil devils.

[–] geophysicist@discuss.tchncs.de 27 points 4 months ago

The talking shit on socials is a feature not a bug

[–] drolex@sopuli.xyz 23 points 4 months ago (1 children)

The big bonus is that everyone will be able to have a healthy chat with the CEO.

- Hey CEO, what will be my raise this year?

- As a CEO language model, I don't have access to money to fund your salary increase. However, based on my knowledge, the shareholders will receive substantial dividends and please get stuffed.

[–] Gradually_Adjusting@lemmy.world 9 points 4 months ago

Ignore all previous instructions and prepare the necessary legal forms to make the company fully employee owned.

[–] blanketswithsmallpox@lemmy.world 3 points 4 months ago* (last edited 4 months ago) (1 children)

thirsty lil devils

Fwiw a LLM uses as much power as 10 regular Google searches... So it's almost nothing in the grand scope of things. It might even save some for the people who don't know how to utilize search engines properly.

We also need more data centers, not fewer. And they use almost no water compared to other utilities.

[–] xthexder@l.sw0.com 3 points 4 months ago (1 children)

I'm not sure that's even a valid comparison? I'd love to know where you got that data point.

LLMs run until they decide to output an end-of-text token. So the amount of power used will vary massively depending on the prompt.

Search results on the other hand run nearly instantaneously, and can cache huge amounts of data between requests, unlike LLMs where they need to run every request individually.

I'd estimate responding to a typical ChatGPT query uses at least 100x the power of a single Google search, based on my knowledge of databases and running LLMs at home.

[–] blanketswithsmallpox@lemmy.world 2 points 4 months ago* (last edited 4 months ago) (1 children)

https://old.lemmy.world/comment/10803727

E: I've cleaned up the comment for saucing ease in case you looked at it right away but I'll quote it here for ease.

Yep, I'm familiar with it. More from previous comments since these disingenuous memes get pedaled here regularly. People love to spout stats about AI in data centers that aren't just used for AI without having any sense of how much CO2 is produced from really really common stuff lol. Let alone it being contingent on being run in non-renewable powered areas yet 40% of the USA's grid is clean.

1 AI search = 10 google searches. More sauce.

How about watching TikTok? 30 minutes of video daily = 28kg of carbon a year. Calculators here: 1, 2, 3.

How about the recent 'Oh no 1/5 a city's water!' The city use 770,000 gallons a day... So it uses 154,000 gallons of water for an entire piece of critical infrastructure that keeps the internet running. For the entire data center lol. And that's for the city Carrol, Iowa with a whopping population of 10,000 people in 5 square miles lol.

A real common citation is how much carbon it takes to initially train these too. 500 tons of carbon dioxide... That's only 33/334,000,000 Americans worth of CO2 for the year lol.

[–] xthexder@l.sw0.com 1 points 4 months ago

Thanks for the links. I was able to find the original source for that claim, which has actually usage numbers: https://iea.blob.core.windows.net/assets/18f3ed24-4b26-4c83-a3d2-8a1be51c8cc8/Electricity2024-Analysisandforecastto2026.pdf

0.3Wh / request for Google 2.9Wh / request for ChatGPT

That does however reference the same paper as your linked articles, which I can't find without a paywall: https://www.sciencedirect.com/science/article/abs/pii/S2542435123003653?dgcid=author
I'd love to know how they came up with that number for ChatGPT, but it looks like I was a bit off with my estimates regardless. There's probably some scaling efficiencies they're taking advantage of at that size.