| ▲ | ethmarks 2 days ago | |||||||
That's a great point, and I think I was being vague before. To clarify, I was making a broad statement about automation in general. Running an automated loom is more efficient in every way that getting humans to weave cloth by hand. For most tasks, automation is more efficient. However, there are tasks that humans can still do more efficiently than our current engines of automation. Go is a good example because humans are really good at it and it AlphaGo can only sometimes beat the top players despite massive training and inference costs. On the other hand, I would dispute that LLMs fall into this category, at least for most tasks, because we have to factor in marginal setup costs too. I think that raising from infancy all of the humans needed to match the output speed of an LLM has a greater cost than training the LLM. Even if you include the cost of mining the metal and powering the factories necessary to build the machines that the LLMs run on. I'm not 100% confident in this statement, but I do think that it's much closer than you seem to think. Supporting the systems that support the systems that support humans takes a lot of resources. To use your blueberries example, while the cost of keeping the blueberries cold isn't much, growing a single serving of blueberries requires around 95 liters of water[1]. In a similar vein, the efficiency of the human brain is almost irrelevant because the 20 watts of energy consumed by the brain is akin from a resource consumption perspective to the electricity consumed by the monitor to read out the LLM's output: it's the last step in the process, but without the resource-guzzling system behind it, it doesn't work. Just as the monitor doesn't work without the data center which doesn't work without electricity, your brain doesn't work without your body which doesn't work without food which doesn't get produced without water. As sramam mentioned, these kinds of utilitarian calculations tend to seem pretty inhuman. However, most of the time, the calculations turn out in favor of automation. If they didn't, companies wouldn't be paying for automated systems (this logic doesn't apply to hype-based markets like AI. I'm talking more about markets that are stably automated like textile manufacturing). If you want an anti-automation argument, you'll have a better time arguing based on ethics instead of efficiency. Again, thanks for the Go example. I genuinely didn't consider the tasks where humans are more efficient than automation. [1]: https://watercalculator.org/water-footprint-of-food-guide/  | ||||||||
| ▲ | runarberg a day ago | parent [-] | |||||||
I‘m not convinced this exercise in what to and what not to include in this cost-benefit-analysis will lead to anything. We can always arbitrarily include an extra item to include to shift the calculations in our favor. For example I could simply add the cost of creating the data which is fed into the training set of an LLM, that creation is done by our human biological machinery and hence has the cost of the frozen blueberries, the rigid fiber insulations, the machinery that dug the waterpipe for their shower, etc. Instead I would like to shift the focus on the benefits of LLM. I know the costs are high, very very very high, but you seem to think that the benefits are also so high measured in time saved. That is the amount of tasks automated are enough to save humans doing similar tasks by miles. If that is what you think I disagree. LLMs have yet to prove them selves with real world application. We are seeing when we actually do measure how much LLMs save work-hours, that it the effects are at best negligible (see e.g. https://news.ycombinator.com/item?id=44522772). Worse, generative AI is disrupting our systems in worse way, where e.g. teachers, peer-reviewers, etc. have to put in a bunch of extra work to verify that the submitted work was actually written by that person, and not simply generated by AI. Just last Friday I read that arXiv will no longer accept submissions unless they have been previously peer-reviewed because they are overwhelmed by AI generated submissions[1]. There are definitely technologies which have saved us time and created a much more efficient system then was previously possible. The loom is a great example of one, I would claim the railway is another, and even the digital calculator for sure. But LLMs, and generative AI more generally are not that. There may be utilities for this technology, but automation and energy/work savings is not one of them. 1: https://blog.arxiv.org/2025/10/31/attention-authors-updated-...  | ||||||||
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