Raw LLM Responses

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@Aeizium the outcomes are already been collected 20 years ago and counting. In LA, they use an algorithmic software called Paradigm (similar to investors using the same software to determine blue chip stocks) that collects these variables and with 97% accuracy the young men that commit low level crimes are pre-determined to be in prison again and again. It includes race, religion, socioeconomic level, location of residence and crime committed. So she doesn't like the outcomes because it's bias? It's the facts you input numbers and nothing else, computers, like all mathematical probabilities, will have +/- variances in every study but 97% is way too much to suggest the computer is biased. For LA, Houston, Chicago, Atlanta, Dallas and NYC the crime rate is very very high and with 97% accuracy the software can determined each and every individual as future criminals just like the movie minority report. Its real and China is already using this technology. So let's not be so sensitive and hurt as her, she needs to go to Baltimore, MD and see the poverty stricken area these democrats have done to those places and for over 50 years it has been run by democrats, that's a fact and they put that into a statistical analysis (which I don't think too many people realize) and can determined that data as factual so no biases in that. Class dismiss next week I will start grading your tests.
youtube AI Bias 2023-10-22T14:5…
Coding Result
DimensionValue
Responsibilitycompany
Reasoningconsequentialist
Policyregulate
Emotionfear
Coded at2026-04-27T06:26:44.938723
Raw LLM Response
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