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Cake day: June 30th, 2023

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  • IMO the most valid argument is that there are way more people making a middling income than people making a high income, so any reduction in taxes for those people would need a proportionally much larger increase in the upper brackets to maintain the same level of tax revenue, if it’s possible to make the numbers work at all depending on how much of a tax break you want to give. The minimum amount to be taxed is set based on where the tail end of the bell curve is, the number of people who are poor enough not to be taxed is small.

    Of course there’s also the fact that the richest people don’t get their money from having a job at all, it’s all in investments, so messing with income tax rates doesn’t even affect them.


  • The biggest reason that is often overlooked is wealth inequality. The rich keep accumulating wealth, and real estate is a scarce form of wealth that holds value, produces a return, and can be accumulated. It probably accelerated recently because of the large amount of money that was dumped into the system around covid; that was yet another opportunity for the wealthy to grab a bigger share of the pie.

    If things keep going this way, we’re going to get into a situation where regular people don’t own houses anymore, and rent is a much larger percentage of your income.


  • that is not the … available outcome.

    It demonstrably is already though. Paste a document in, then ask questions about its contents; the answer will typically take what’s written there into account. Ask about something you know is in a Wikipedia article that would have been part of its training data, same deal. If you think it can’t do this sort of thing, you can just try it yourself.

    Obviously it can handle simple sums, this is an illustrative example

    I am well aware that LLMs can struggle especially with reasoning tasks, and have a bad habit of making up answers in some situations. That’s not the same as being unable to correlate and recall information, which is the relevant task here. Search engines also use machine learning technology and have been able to do that to some extent for years. But with a search engine, even if it’s smart enough to figure out what you wanted and give you the correct link, that’s useless if the content behind the link is only available to institutions that pay thousands a year for the privilege.

    Think about these three things in terms of what information they contain and their capacity to convey it:

    • A search engine

    • Dataset of pirated contents from behind academic paywalls

    • A LLM model file that has been trained on said pirated data

    The latter two each have their pros and cons and would likely work better in combination with each other, but they both have an advantage over the search engine: they can tell you about the locked up data, and they can be used to combine the locked up data in novel ways.


  • Ok, but I would say that these concerns are all small potatoes compared to the potential for the general public gaining the ability to query a system with synthesized expert knowledge obtained from scraping all academically relevant documents. If you’re wondering about something and don’t know what you don’t know, or have any idea where to start looking to learn what you want to know, a LLM is an incredible resource even with caveats and limitations.

    Of course, it would be better if it could also directly reference and provide the copyrighted/paywalled sources it draws its information from at runtime, in the interest of verifiably accurate information. Fortunately, local models are becoming increasingly powerful and lower barrier of entry to work with, so the legal barriers to such a thing existing might not be able to stop it for long in practice.