Raw LLM Responses
Inspect the exact model output for any coded comment.
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ALEX! My dude, stop awakening the AI! or are you starting an AI rights movement?…
ytc_Ugz35IW7F…
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Check out AI human Rock collab Ambermine - Such A Time As This. Spotify, Apple M…
ytc_UgxHxuvZF…
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@omaquu performance? If Bob smacks the table when he loses in a video game, Bob …
ytr_UgwygtqSt…
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Bawsed on comments, not going to watch the interview. I do have a theory. AI is …
ytc_UgyprLYxt…
G
Guardrail n safety with an intelligence 10,000 times ur own? Come on now..they a…
ytc_UgyW1rf6u…
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👋AI DevX Engineer at a medium sized startup: biggest speed boost happens when yo…
ytc_Ugwz2auy0…
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Probably humans struggle to control their own because they don't have a natural …
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People who use AI art to get into art school took my place in Highschool but the…
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Comment
https://www.technologyreview.com/2020/12/04/1013294/google-ai-ethics-research-paper-forced-out-timnit-gebru/
Here's an article that describes the paper that Google asked her to withdraw.
And here is the paper itself:
http://faculty.washington.edu/ebender/papers/Stochastic_Parrots.pdf
Edit : Summary for those who don't want to click.
It describes 4 risks
1) Big Language models are very expensive, so they will primarily benefit rich organisations (also, environmental impact)
2) AI's are trained on large amount of data, usually gathered from the internet. This means that language models will always reflect the language use of majorities over minorities, and because the data is not sanitized, will pick up on racist, sexist or abusive language.
3) Language data models actually don't understand language. So, this an opportunity cost because research could have been focused on other methods for understanding language.
4) Language models can be used to fake and mislead, potentially mass producing fake news
One example of a language model going wrong (not related to this incident) is google's AI from 2017. This AI was supposed to analyze the emotional context of text, so figure out whether a given statement was positive or negative.
It picked up on a variety of biases in the internet, considering homosexual, jewish, black inherently negative words. "White power" meanwhile was neutral. Now imagine that such an AI is used for content moderation.
https://mashable.com/2017/10/25/google-machine-learning-bias/?europe=true
reddit
AI Responsibility
1612445306.0
♥ 3350
Coding Result
| Dimension | Value |
|---|---|
| Responsibility | unclear |
| Reasoning | unclear |
| Policy | unclear |
| Emotion | indifference |
| Coded at | 2026-04-25T08:33:43.502452 |
Raw LLM Response
[{"id":"rdc_glz18kj","responsibility":"unclear","reasoning":"unclear","policy":"unclear","emotion":"unclear"},
{"id":"rdc_glzgqjm","responsibility":"unclear","reasoning":"unclear","policy":"unclear","emotion":"indifference"},
{"id":"rdc_glzj2qc","responsibility":"company","reasoning":"consequentialist","policy":"unclear","emotion":"mixed"},
{"id":"rdc_glzywdq","responsibility":"user","reasoning":"deontological","policy":"unclear","emotion":"indifference"},
{"id":"rdc_glzsm4r","responsibility":"company","reasoning":"virtue","policy":"unclear","emotion":"resignation"}]