Raw LLM Responses
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G
😂 in China this robot is useless because there are almost no crime. unlike NYC o…
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G
its not hard to have multiple AIs that are offline to be used to scan for deep f…
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G
You can solve any problem by simply killing everyone the problem affects.
When…
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G
Imagine going to the doctor with an urgent medical problem and the doctor says: …
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G
The evolving AI landscape reminds me of how Rumora stays ahead in marketing tren…
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G
The worst part is that these companies already know that the AI they're building…
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G
Funny how all of y'all actually like you know everything about these two robots.…
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G
He got something half-wrong at the start: the name is not wrong. It's just that …
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Comment
AI is not a marketing term. AI is when you don't set up your IT system based on predetermined rules as we used to do some time ago but when you write a program which automatically generates a ruleset which fits all the input data and then applies this ruleset to the new data hoping that it will give the correct answer.
To go with your shopping site example a classical predetermined rule based system might work like this: if this user has previously bought a purse and a nail polish then recommend to them high heels.
While an AI might work like this:
1) one user who previously bough a purse and a nail polish has just bought high heels
2) another user who previously bought A and B has just bought C
.... and a whole lot more inputs
>>> analyze this data set to find a ruleset which matches all of these
then later:
>>> if a user has bought A and C run it through the ruleset to estimate what the user might buy next.
This is of course an oversimplified example but I hope you get the gist.
youtube
AI Governance
2024-03-13T23:0…
♥ 1
Coding Result
| Dimension | Value |
|---|---|
| Responsibility | none |
| Reasoning | mixed |
| Policy | unclear |
| Emotion | approval |
| Coded at | 2026-04-27T06:26:44.938723 |
Raw LLM Response
[
{"id":"ytr_UgzpVY23_JwDAz64x6t4AaABAg.A0w5VIPaA_hA0wzWsHulMG","responsibility":"company","reasoning":"consequentialist","policy":"regulate","emotion":"fear"},
{"id":"ytr_UgzWxyYz0UWnrOC4wa94AaABAg.A0vzx3sOkWgA1-cyDwlz78","responsibility":"ai_itself","reasoning":"consequentialist","policy":"unclear","emotion":"fear"},
{"id":"ytr_UgzONdjpOi3Ej-BKLSV4AaABAg.A0vzuNB-YhrA0w8Uq-NPly","responsibility":"government","reasoning":"deontological","policy":"unclear","emotion":"outrage"},
{"id":"ytr_UgzONdjpOi3Ej-BKLSV4AaABAg.A0vzuNB-YhrA0wQhKOKSLH","responsibility":"company","reasoning":"deontological","policy":"none","emotion":"indifference"},
{"id":"ytr_UgzONdjpOi3Ej-BKLSV4AaABAg.A0vzuNB-YhrA0wjCuVre5x","responsibility":"none","reasoning":"mixed","policy":"unclear","emotion":"approval"},
{"id":"ytr_Ugx71A9kefOB1pL767R4AaABAg.A0vyeOD2vHQA0vzryxXWi6","responsibility":"user","reasoning":"consequentialist","policy":"liability","emotion":"approval"},
{"id":"ytr_UgwtXfzKcEjBX4e8eF14AaABAg.A0vxOROeLLFA0wFAXNSnK1","responsibility":"none","reasoning":"unclear","policy":"none","emotion":"indifference"},
{"id":"ytr_UgxBbCJpUhifIjvWcQ94AaABAg.9ps7j9OO3ef9psOlCGXc1w","responsibility":"government","reasoning":"unclear","policy":"regulate","emotion":"approval"},
{"id":"ytr_Ugz41Qkj-nSbg4vtIDh4AaABAg.ATnS28eFwA6AV4t7BPGi4f","responsibility":"ai_itself","reasoning":"consequentialist","policy":"unclear","emotion":"mixed"},
{"id":"ytr_Ugx8Wkd5zfslaCrVulJ4AaABAg.AQIVFS5GnJyAUoRVyplkaa","responsibility":"none","reasoning":"consequentialist","policy":"none","emotion":"approval"}
]