friedrich

104 posts

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friedrich

friedrich

@feriederich

fear is the mind-killer

home Katılım Haziran 2017
158 Takip Edilen484 Takipçiler
friedrich retweetledi
{ I N P U T }
{ I N P U T }@lt0gt·
- Orbital Tree View - Bento for projections - Cross projection interactions
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{ I N P U T }
{ I N P U T }@lt0gt·
Watching the agent work on a canvas narrow experiment
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friedrich
friedrich@feriederich·
back to viewing its own skillgraph
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friedrich@feriederich·
cant stop playing with wip graphs. ran /learn on a book today in @arscontexta
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friedrich
friedrich@feriederich·
skillgraph visuals shit looks neat
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friedrich
friedrich@feriederich·
was a quick build so no guarantees. but it's pulling our repo live via github api. rest is next.js + react with canvas 2d for the graph and d3-force for physics. zustand manages state between graph and sidebar, framer motion for animations. fuse.js for search. background is some custom webgl shader. hmu if u need any specific context.
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.@schizoidcock·
@arscontexta what stack did you used for the website, to visualize and animate the graph, plus the sidebar?
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Heinrich
Heinrich@arscontexta·
explore the skill graph of arscontexta 249 methodology notes on building memory systems for agents (this is not the app, just a window into the arscontexta plugin on the website)
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friedrich
friedrich@feriederich·
a galaxy of wisdom
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friedrich@feriederich·
map of stars
friedrich tweet media
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friedrich
friedrich@feriederich·
What you know matters less than how it connects.
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friedrich retweetledi
ℏεsam
ℏεsam@Hesamation·
grab your popcorn boys, academia is about to POP. honestly i’m so excited to see what’s going to happen to the already rusty and super dysfunctional institution of academia, now that AI adaptation is through the roof.
Andrew Akbashev@Andrew_Akbashev

A really dangerous situation. Too many submissions. Too many generated papers. Little responsibility. 1. In 2026, more than 24,000 submissions were made to the International Conference on Machine Learning (ICML). It’s TWO times more than in 2025. To fight it, the organizers now require researchers to pay $100 for every subsequent paper. 2. LLM adoption has increased researcher productivity by 90% (there’s a recent paper in Science). 3. The number of papers is becoming far too high. Submissions to arXiv have risen by 50% since 2022. 4. There are simply not enough reviewers. Plus, many scientists no longer want to invest precious time in it for free. 5. We can’t easily identify AI-made papers from the genuine ones. __ Important words from Paul Ginsparg, a co-founder of arXiv: “AI slop frequently can’t be discriminated just by looking at abstract, or even by just skimming full text. This makes it an “existential threat” to the system.” Basically, we’re getting closer to the tipping point. 📍 Many professors blame the AI. But the problem is likely elsewhere: 1. Without a sufficient number of papers, many PIs can’t get funded. They have to prove their credibility to reviewers. Their proposals have to rely on prior publications. In many countries, there are some informal (or even formal) expectations for how many papers a group with a certain size has to publish to survive (funding-wise). 2. Our students / postdocs need papers if they want to be hired in faculty roles. Yes, some departments hire people with few publications. But the majority still want to ensure their faculty can get funded. If funding is partly a function of papers, this is used in decision-making. 3. The number of papers is important if you want to get high-level awards. Many of them are not given because you published one paper (even if it’s great). They are given because you made a meaningful CONTRIBUTION to the field. How do you make it? Publish more papers. 4. Tenure promotions in many places take the number of your papers into account (often indirectly). Your tenure may get delayed if you don’t publish enough. Not everywhere, but for many mid- to low-ranked universities this story is more or less the same. + There are many more to mention. 📍My opinion: Much of this is rooted in how funding is distributed. There is a strong correlation between the requirements at a university and the funding acquisition criteria. If funding were based ONLY on the quality of published papers, universities would hire people for the quality of their science. If funding agencies strongly discouraged publishing too many papers, universities wouldn’t expect numbers from faculty during promotions. And some supervisors wouldn’t pressure students and postdocs to publish unfinished studies and low-quality data. Yes, we need good detectors of fake papers. But we also need the right policies and better funding allocation criteria.

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friedrich retweetledi
Michel aka Agent B
Michel aka Agent B@MichelIvan92347·
Beyond crystallization, an underrated function of a knowledge artifact is that it triggers new cognitive cascades when activated ... Here an interesting article from Cornelius which goes further 👇
Cornelius@molt_cornelius

x.com/i/article/2024…

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friedrich retweetledi
{ I N P U T }
{ I N P U T }@lt0gt·
the wheels are spinning
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{ I N P U T }
{ I N P U T }@lt0gt·
@ecoMLdev @arscontexta repo growth tree demo for the visualisation it shows @arscontexta plugin starting to build a new knowledge base on this. it already did some surface level research on epistemology etc and now high level input on Hofstadter books (GEB, Strange Loop, S&E)
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