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> The other group assumes the first group is complaining about right now, and thinks they're being ridiculous.

Except this is obviously not the case, as "the other group" is aware that many of these large training companies, such as Microsoft, have committed to being net negative on carbon by 2030, and are actively making progress with this whereas the other group seems to be motivated by flailing for anything they can use to point at AI and call it bad.

How many carbon-equivalent tons does training an AI in a net negative datacenter produce? Once the datacenters run on sunlight what is the new objection which will be found?

The rest of the world does not remain static with only the AI investments increasing.




> many of these large training companies, such as Microsoft, have committed to being net negative on carbon by 2030

Are you claiming that by 2030, the majority of AI will be trained in a carbon-neutral-or-better environment?

If not, then my point stands.

If so, I think that's an unrealistic claim. I'm willing to put my money where my mouth is. I'll bet you $1000 that by the year 2030, fewer than half of (major, trailed-from-scratch) models are trained in a carbon-neutral-or-better environment. Money goes to charity of the winner's choice.


I'm willing to take this bet, if we can figure out what the heck "major" trained-from-scratch models are and if we can figure out some objective source for tracking. Right now I believe I am on the path to easily win given that both the major upcoming models, (GPT-5 and Claude 4?) are training in large companies actively working on reducing their carbon output (Microsoft and Amazon data centers)

Mistral appears to be using the Leonardo supercomputer, which doesn't seem to have direct numbers available, but I did find this quote upon its launch in 2022:

> One of the most powerful supercomputers in the world – and definitely Europe’s largest – was recently unveiled in Bologna, Italy. Powerful machine Leonardo (which aptly means “lion-hearted”, and is also the name of the famous Italian artist, engineer and scientist Leonardo da Vinci) is a €120 million system that promises to utilise artificial intelligence to undertake “unprecedented research”, according to the European Commission. Plus, the system is sustainably-focused, and equipped with tools to enable a dynamical adjustment of power consumption. It also uses a water-cooling system for increased energy efficiency.

You might have a greater chance to win the bet if we think about all models trained in 2030, not just flagship/cutting-edge models, as it's likely that all the GPUs which are frantically being purchased now will be depreciated and sold to hackers by the truckload here in 4-5 years, the same way some of us collect old servers from 2018ish now. But even that is a hard calculation to make--do we count old H100s running at home but on solar power as sustainable? Will the new hardware running in sustainable datacenters continue to vastly outpace the old depreciated?

For cutting-edge models which almost by definition require huge compute infrastructure, a majority of them will be carbon neutral by 2030.

A better way to frame this bet might be to consider it in percentages of total energy generation? It might be easier to actually get that number in 2030. Like Dirty AI takes 3% of total generation and clean AI 3.5%?

Something else to consider is the algorithmic improvements between now and 2030. From Yann LeCunn: Training LLaMA 13B emits 24 times less greenhouse gases than training GPT-3 175B yet performs better on benchmarks.

I haven't done longbets before, but I think that's what we're supposed to use for stuff like this? :) My email is in my profile.

One more thing to consider before we commit is that the current global share of renewable energy is something close to 29%. You should probably factor in overall renewable growth by 2030, if >50% of energy is renewable by then, I win by default but that doesn't exactly seem sporting.


> if we can figure out what the heck "major" trained-from-scratch models are and if we can figure out some objective source for tracking

Hmm. Yeah, we'll need to hammer out a solid definition. Further complicating things are models that may not be publicly available and are internally used by companies, though those may not be trained from scratch.

I would be fine with your suggestion to frame it in terms of percent power generation, though it might be hard to disentangle training costs from usage costs from that number. I would argue that including usage energy cleanliness is in the "spirit" of the bet but I'm happy to try to disentangle it as I originally proposed training-only.

> Something else to consider is the algorithmic improvements between now and 2030. From Yann LeCunn: Training LLaMA 13B emits 24 times less greenhouse gases than training GPT-3 175B yet performs better on benchmarks.

This is an excellent point, and definitely works in your favor. Really I'm on the good side of this bet. I win either way :) either my charity makes money, or I'm pleasantly surprised by climate impacts.

I've also not used longbets before. I would think we want to hammer out exact terms here before we set something up there?




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