Raw LLM Responses
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G
So if the scientists that are creating and working on AI are also giving dire wa…
ytc_UgwS_ucbt…
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I don't think people realize how bad this next decade is going to be... (AI tota…
ytc_UgzWAKjD4…
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As usual.... Mother Nature WINS! Blessing us Humans with these Powerful Minds th…
ytc_UgzmXA_El…
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bankers most certainly lost jobs… a whole chase branch may have 2 people working…
ytc_Ugy-LtSpv…
G
@happydome8304 Well take a look at the Loki janitor, maid robot. Clearly AI is a…
ytr_UgwpWvipU…
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My concern is the training and testing process of AIs. Above the story of the b…
ytc_Ugxska7cd…
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One of the dumbasses in my friend group seems to think that all the arguments I …
ytc_UgzsSqAhb…
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The issue with the premise is there isn't a manual override for such a situation…
ytc_UgjokRxbp…
Comment
It's highly unlikely generative AI could ever replace an industry requiring so much higher-order logical evaluation and iterative problem solving, on both fundamental and systemic levels. It's important to remember that the computers aren't thinking, even though we, the consumers and generative AI marketing teams, like to convince ourselves otherwise. While generative AI models can create functional code to solve unique problems, it's also important to remember that the things generated by these models are based on probabilities derived from existing training data, irrespective of whether or not a valid solution truly exists for a given input or if a solution is the best, most accurate, or even correct. We can add tools to generative models, to correct syntax, style, and everything a compiler might check to reach runnable code, but the computer still isn't **thinking** about the solution it's generating - it isn't evaluating the logic, unrolling the loops, considering efficiency, evaluating the security of the code, adding verbose error handling, handling inputs with any amount of robustness, writing readable code that can be meaningfully documented, and these are generally issues that cannot be solved with LLM's. The computer isn't "writing" code with any meaningful "intent" or "thinking" about how to solve a problem, and these are things that won't improve over time; they border on fundamental and practical impossibility.
Another thing to consider: the granularity and control of the code produced by generative AI can only be as specific and detailed as the prompts provided to it. We are currently coping by saying "It's not perfect, and what it generates is usually pretty basic, but it will get better over time", but all we are really doing is confusing ourselves into believing this will be the next low or no-code language (which is the best-case scenario, with the worst-case logical translation process). Sure, having it generate boilerplate typescript for a mult
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Coding Result
| Dimension | Value |
|---|---|
| Responsibility | none |
| Reasoning | deontological |
| Policy | none |
| Emotion | approval |
| Coded at | 2026-04-25T08:33:43.502452 |
Raw LLM Response
[
{"id":"rdc_ktupso1","responsibility":"none","reasoning":"consequentialist","policy":"none","emotion":"approval"},
{"id":"rdc_ktvdfli","responsibility":"none","reasoning":"consequentialist","policy":"none","emotion":"indifference"},
{"id":"rdc_ktt3h9r","responsibility":"company","reasoning":"deontological","policy":"none","emotion":"outrage"},
{"id":"rdc_ktsitld","responsibility":"none","reasoning":"consequentialist","policy":"none","emotion":"indifference"},
{"id":"rdc_ktus32i","responsibility":"none","reasoning":"deontological","policy":"none","emotion":"approval"}
]