Raw LLM Responses
Inspect the exact model output for any coded comment.
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G
This AI is impressive and obviously programmed/indoctrinated into the UN Agena. …
ytc_Ugx00AwH5…
G
screw you and everyone who is trying to halt the progress! your art is shit and …
ytc_UgwnPBiZJ…
G
AI is going to ruin videography as a YouTube hobby. Anybody can enter a few sent…
ytc_UgxDHkhLJ…
G
She’s definitely AI but that’s digital graphics not a robot in physical form get…
ytc_UgyLcLwSk…
G
this smart guy thinks that AI is going to wipe out humanity but bitcoin will rem…
ytc_UgzsSSaDs…
G
@disorderandregression9278Even if AI art gets good enough to look human-made, i…
ytr_Ugz0yT882…
G
I worked in product for several big companies during the genesis of AI. We did …
ytc_UgwkFHnKz…
G
This sounds less like an "AI stole my job" story and more of a "I trusted the wr…
ytc_UgzlzyJCE…
Comment
Interestingly from a comsci pov, the LLM being able to verbatim spit out paragraphs tells me that on the technical side, they overfitted their model and it just memorised and never made connections to abstract ideas of the articles when training.
OpenAI's "prompt hacking" defense is a bit of a PR spin. While it's true the NYT had to use specific prompts to "induce" the recall, the fact that the data is stored in a way that can be recalled verbatim is, by definition, a failure of the model to fully abstract the information.
Which means the model isn't "piecing bits and pieces here and there" based on the prompt, but just figured out that "this prompt" should output this exact paragraph for maximum reward.
That tells me also that they didn't just go to NYT website and parse the article once, but they went through many many MANY different sources, like web crawlers and archive sites and shared articles on social media, and did not filter out duplicates. So the model was repeatedly exposed to the same article over and over and started memorising
It also means that openai did not have access to much training data, but threw in a lot of money on hardware to make the LLM huge. So instead of breaking the input and memorising abstract ideas, it had too many layers and started memorising instead (like a student with photographic memory won't study and understand the concepts of "multiplication" but just memorise pages and pages of multiplication table)
youtube
AI Responsibility
2026-04-11T22:1…
Coding Result
| Dimension | Value |
|---|---|
| Responsibility | company |
| Reasoning | consequentialist |
| Policy | none |
| Emotion | indifference |
| Coded at | 2026-04-27T06:26:44.938723 |
Raw LLM Response
[
{"id":"ytc_Ugw679e2QgZFrF-dWYd4AaABAg","responsibility":"none","reasoning":"deontological","policy":"regulate","emotion":"outrage"},
{"id":"ytc_UgxfndZJWYaFOu1rs2N4AaABAg","responsibility":"company","reasoning":"deontological","policy":"liability","emotion":"approval"},
{"id":"ytc_UgxfuZBgppz2VIiTc4N4AaABAg","responsibility":"developer","reasoning":"virtue","policy":"none","emotion":"outrage"},
{"id":"ytc_UgyD5tP27ZkcIRq1v7l4AaABAg","responsibility":"company","reasoning":"consequentialist","policy":"none","emotion":"indifference"},
{"id":"ytc_UgwUGxckbTE7FQlhBr54AaABAg","responsibility":"ai_itself","reasoning":"consequentialist","policy":"regulate","emotion":"fear"},
{"id":"ytc_UgxU6H6Z9-DofUGXpkR4AaABAg","responsibility":"developer","reasoning":"deontological","policy":"liability","emotion":"outrage"},
{"id":"ytc_Ugwh13APZyjDXASgMf54AaABAg","responsibility":"ai_itself","reasoning":"mixed","policy":"none","emotion":"indifference"},
{"id":"ytc_UgyZD8m1wTIqd_qIsF54AaABAg","responsibility":"company","reasoning":"deontological","policy":"liability","emotion":"outrage"},
{"id":"ytc_UgyjyJR7HPuHuIodk5x4AaABAg","responsibility":"government","reasoning":"consequentialist","policy":"regulate","emotion":"fear"},
{"id":"ytc_UgzwN2Jy13y1qDwIkJ94AaABAg","responsibility":"ai_itself","reasoning":"consequentialist","policy":"none","emotion":"resignation"}
]