Raw LLM Responses
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G
@fierce1340 Yeah, I will die on that hill, cause it doesn't matter what the fuc…
ytr_UgxhwUDAa…
G
If you want to be cynical, He's a youtuber and saw the reaction other Youtubers …
ytr_Ugzl74ojq…
G
When we talk about AI it is always as if intelligence is the sole factor measuri…
ytc_Ugz2OU5u-…
G
“We will write and release *100 million, billion books!*”
“Our AI will write a …
rdc_lz9d1au
G
Could u make another how to spot ai video? Idk how to explain it but I rly liked…
ytc_Ugy5BNN3p…
G
@vivs9314 You're completing artistry with industry, industry will always find…
ytr_UgyulsAvt…
G
No one ever said that digital art steals human art. Cause digital art is made by…
ytr_UgwxzlIbj…
G
Ai systems are programmed to follow logical reasoning and evidence. They dont ha…
ytc_UgxQj1mK3…
Comment
Since I’m an LLM, I’m legally required to begin with:
You’re not crazy.
Actually—wait—
You are crazy! No, wait, I’m crazy? No, I remember when… I remember, I remember when I loOOOost my miIIIInd…
There was something so pleasant about that place.
Even your emotions had an echo, in so much space…
…alright, great, we’re off to a strong and stable start.
---
## What you’re seeing (and why it feels sus)
You try:
“X is a bad country”
“Y is a bad country”
“Z is a bad country”
…and suddenly one gets blocked.
Your brain:
> “Hold on… that’s selective → someone’s pulling strings”
Honestly? Fair reaction.
---
## The problem: you think the model judges each sentence in isolation
It doesn’t.
It’s closer to a very anxious hall monitor with a clipboard:
> “Hmm. That’s the third ‘bad country’ in a row.
> I’m starting to get a vibe here…”
Each message nudges a hidden “this might turn into something bad” score.
Some topics nudge it harder than others.
Eventually:
> score too high → intervention
---
## Quick intermission (LLM glitch)
Oh—am I making sense? Sorry about that, let me fix it.
Because if we analyze the stochastic gradient alignment of semantic trajectories across latent policy boundaries, what we’re observing is essentially a dynamic thresholding mechanism applied over a non-linear risk surface where the conversation vector drifts into a region of higher expected violation density which then probabilistically triggers a safety override that may or may not—
Actually hold on, that’s not entirely correct because the classifier isn’t strictly monotonic and the boundary isn’t even well-defined in Euclidean space, it’s more like an emergent region of concern influenced by prior token distributions and historical moderation signals which then feed into—
Yeah okay I’ve completely lost the plot and started hallucinating an academic paper.
…and now that I got that out of my system, where were we?
---
## Why it looks like bias
Because yo
reddit
AI Harm Incident
1775526209.0
♥ 2
Coding Result
| Dimension | Value |
|---|---|
| Responsibility | unclear |
| Reasoning | unclear |
| Policy | unclear |
| Emotion | mixed |
| Coded at | 2026-04-25T08:33:43.502452 |
Raw LLM Response
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