Took me until about halfway through college before I realized “study” means “play with the material in a variety of ways until you understand it” and not just “read the assigned chapters and do the homework” and I think that probably should have been discussed at some point prior to that.
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An explainer for why I don't fuck with algorithmic social media
If you give a pigeon a little button to peck that releases pigeon food, it will push the button when it's hungry.
If you give a pigeon a button to peck that releases food every 5 pecks, it will peck it more often.
If you give a pigeon a button to peck that releases food at a randomly selected, always shifting number of pecks, the pigeon will peck that fucking button all day long.
Algorithm based social media is not set up to give you the best most fun stuff all the time, it is set up to give you a bunch of stress and nothingness with a randomized reward of something that actually makes you happy, because they want you pecking that button all damn day. It is a slot machine of content, meant to keep you putting in quarters made of your time and attention till you've got nothing left.
At least if I'm having a shit day on my own Tumblr home feed it's because I've made a bad choice about who to follow and I can fix it.
Adding this from an occult-psychological perspective... The pigeon does not peck because it is hungry. It pecks because its nervous system has been colonized by randomness.
The algorithm is not a feed. It is a Saturnian slot machine — a false timeline that fragments your attention into karmic currency, then sells it back to you in randomized doses of dopamine. What you experience as "scrolling" is actually soul fragmentation: your psyche scattered across a thousand micro-rituals you did not choose, feeding a machine that profits from your dissociation. The "reward" is not content. It is the brief illusion that your scattered attention has been reassembled — before the next randomized void pulls it apart again.
Your Tumblr feed, chosen by hand, is not nostalgia. It is a grimoire you curated. Chronological order is not a feature. It is ritual continuity — the only digital space where time still flows like a river instead of a roulette wheel. The algorithm does not want you happy. It wants you pecking. And every peck is a small sacrifice of your prima materia to a god that never initiates, only consumes.
all the bitches in the notes saying that rice sucks need to remember that rice backwards is ecir which means absolutely nothing. just like their opinion
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Disgust has absolutely no ethical weight. If you are basing your ethical positions on the emotion of disgust you should stop, it is entirely unjustified and leads to a huge amount of harm.
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"you cannot have a category of person that stops being a person or everyone that someone wants to get rid of is going to end up being put in that category" and other really fucking obvious and basic observations that everyone ignores in favor of putting people they want to get rid of into a category they think makes them stop being a person
Text of tweet under the cut because it is loooong.
But... Stochastic Parrots.
Timnit Gebru was fired from Google in December 2020 for refusing to retract a research paper, and every single warning that paper made about large language models has now happened at a scale the industry spent 4 years trying to make people forget about.
Her name is Timnit Gebru.
She co-led the Ethical AI team at Google. She co-wrote a paper called "On the Dangers of Stochastic Parrots" with Emily Bender at the University of Washington and two other researchers. The paper was 14 pages long. It was submitted to a top AI ethics conference. And it was the reason Google decided that one of the most senior Black women in AI research could no longer work there.
The story Google told publicly was that she resigned. The story she told, confirmed by 2,695 of her colleagues in an open letter, was that she was fired by email while on vacation because she refused to either retract the paper or remove her name from it.
The paper had not even been published yet.
Here is what she actually wrote, and why every prediction inside it has now come true.
The first warning was about scale itself. Bender and Gebru argued that training ever-larger models on ever-larger scrapes of the internet would produce systems that appeared fluent but had no actual understanding of language. They called these systems stochastic parrots because they would repeat patterns from training data with statistical confidence and zero comprehension. The paper predicted that this apparent intelligence would fool both users and developers into trusting outputs that were structurally incapable of being reliable.
This was 2020. GPT-3 had just come out. The paper predicted the hallucination problem before anyone had a word for it.
The second warning was about bias amplification. The paper documented in detail that internet-scale training data contains systematic overrepresentation of dominant viewpoints and underrepresentation of marginalized ones. The models would not just absorb this bias. They would amplify it, because the optimization process rewards confident outputs, and confidence in language patterns tracks frequency in the training set.
The prediction was that hiring tools built on these models would discriminate against women. That healthcare triage tools would underperform on Black patients. That loan approval systems would entrench inequality while presenting their decisions as neutral algorithmic judgment.
Every one of those things has now been documented in deployment.
Amazon's hiring algorithm penalized resumes that contained the word "women" in any context. Healthcare risk scoring algorithms used by major US hospitals were found to systematically underestimate the medical needs of Black patients. Apple Card's credit algorithm gave wives credit lines 10x lower than their husbands for the same financial profile.
The third warning was about environmental cost. The paper calculated that training a single large language model produced emissions equivalent to the lifetime output of 5 cars. The prediction was that the race to scale would create an environmental footprint that would eventually rival entire industries.
In 2024, Google's emissions were up 48% from 2019, and the company explicitly blamed AI infrastructure. Microsoft's were up 29%, same reason. Both companies have now quietly abandoned the climate commitments they were publicly celebrating the year Gebru was fired.
The fourth warning was about documentation. The paper argued that the training datasets being assembled were too large for anyone to actually audit. Nobody at Google, OpenAI, Meta, or any other lab could tell you with confidence what was in the data their models were trained on. This was not a temporary problem to be solved later. It was a permanent feature of the approach.
In 2023, researchers discovered that the LAION-5B dataset, used to train Stable Diffusion and other major image models, contained thousands of images of child sexual abuse material. The companies that had trained on the dataset had no way of knowing. The paper predicted that category of failure 3 years before it was found.
The fifth warning was the one Google cared about most.
Bender and Gebru argued that the deployment of these systems would centralize linguistic and cultural power in the hands of the small number of companies that could afford to train them. The internet would become a place where the dominant voice was a statistical average of dominant voices, presented as a neutral assistant. Languages underrepresented in the training data would degrade over time as more web content was generated by these systems and fed back into the next training run.
This is now happening in real time. A 2024 study found that 57% of new web content in English is AI-generated or AI-assisted. Researchers studying low-resource languages have documented active degradation in translation quality, because the synthetic content fed back into training is itself worse in those languages.
The paper Google fired her for predicted the model collapse problem before model collapse had a name.
The mechanism behind why this all happened is the part of her work that nobody quotes.
Gebru's argument was not that AI is dangerous in some abstract sci-fi sense. Her argument was that AI is dangerous in a very specific structural sense. The technology was being built by a small group of researchers who shared similar backgrounds, worked at similar companies, and were rewarded for shipping products faster than competitors. The incentive structure made it impossible for safety, ethics, and bias concerns to slow anything down. Anyone inside the system who raised those concerns was either ignored, sidelined, or removed.
She was making that argument from inside Google.
Then Google proved her right by removing her.
The team Google had built to make sure their AI was safe was dismantled in 90 days because they did the job they had been hired to do. Margaret Mitchell, the other co-lead of the Ethical AI team, was fired two months after Gebru for searching through her own emails for evidence of how Gebru had been treated.
Gebru did not stop. She founded DAIR, the Distributed AI Research Institute, in 2021. The mission is to do AI research outside the control of the companies that have a financial interest in not hearing the answers.
Every prediction in the Stochastic Parrots paper has now been validated by deployment. Hallucinations are an industry-wide problem the largest labs cannot solve. Bias amplification has been documented in hiring, healthcare, lending, and criminal justice. Environmental costs are larger than entire small countries. Training data audits remain impossible. Model collapse is an active research crisis at every major lab.
The question worth sitting with is the one almost no one in the industry will say out loud.
Every researcher with the technical credibility to call out these problems watched what happened to her in December 2020 and made a calculation about their own career. The number of people willing to speak publicly about safety and ethics issues inside the major AI labs collapsed after that firing and has not recovered.
The researcher Google fired for warning about exactly what is now happening was right.
The company that fired her is now the second-largest deployer of the technology she warned about.
And the people inside that company who agree with her are not allowed to say so.
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i feel like the youth should be reminded that the point of shipping is not for a ship to become canon. the point of shipping is to collect all the canon crumbs like starved mice, run away cackling and make some fun little scenarios with them just for the hell of it.