Raw LLM Responses
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Hi. most AI experts do not speak about one of the largest and most non talked ab…
ytc_UgwhX78gF…
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The trolly car problem. No decision would be made by robot as this would interfe…
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Hank I solved the utopia problem and it involves literal enlightenment. We are a…
ytc_UgyXzt7wW…
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The AI poison being called “Nightshade” just sounded poisonous to me, and I fina…
ytc_UgwRuK6Fv…
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Look, I own a tesla 2016, i just have it for a month or so. I have to say this t…
ytc_UgxlDYVe1…
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I will take a smart, eager junior developer over AI, a cheap unmotivated mid-lev…
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My sister watched u a lot when we were young and now im watching u destroy ai ar…
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That's exactly the rabbithole transhumanist technocrats want you to go down.
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ytr_Ugwd2JMac…
Comment
as someone who works in the field (of AI), I think what's most startling about this kind of work is seemingly how unaware people are of both its prominence and utility.
the beauty of something like malignant cancer (... fully cognizant of how that sounds; I mean "beauty" in the context of training artificial intelligence) is that if you have the disease, it's not self-limiting. the disease *will* progress, and, even if you "miss" the cancer in earlier stages, it'll show up eventually.
as a result, assuming you have high-res photos/data on a vast number of patients, and that patient follow-up is reliable, you'll end up with a huge amount of radiographic *and* target data; i.e., you'll have all of the information you need from before, and you'll know whether or not the individual developed cancer.
training any kind of model with data like this is almost trivial -- I wouldn't doubt it if a simple random forest produces pretty damn solid results ("solid" in this case is definitely subjective -- with cancer diagnoses, peoples' lives are on the line, so false negatives are highly, highly penalized).
a lot of people here are spelling doom and gloom for radiologists, though I'm not quite sure I buy that -- I imagine what'll end up happening is a situation where data scientists work in collaboration with radiologists to improve diagnostic algorithms; the radiologists themselves will likely spend less time manually reviewing images and will instead focus on improving radiographic techniques and handling edge cases. though, if the cost of a false positive is low enough (i.e. patient follow-up, additional diagnostics; NOT chemotherapy and the like), it'd almost be ridiculous to not just treat all positives as true.
the job market for radiologists will probably shrink, but these individuals are still highly trained and invaluable in treating patients, so they'll find work somehow!
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Coding Result
| Dimension | Value |
|---|---|
| Responsibility | none |
| Reasoning | unclear |
| Policy | none |
| Emotion | approval |
| Coded at | 2026-04-25T08:33:43.502452 |
Raw LLM Response
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