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lifecodes

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The fast it goes the slow it feels

3 ポイント·投稿者 lifecodes·22 日前·0 コメント

Mathematical Psychology: Where Numbers Meet Neurons

neurolaunch.com
1 ポイント·投稿者 lifecodes·3 か月前·0 コメント

コメント

lifecodes
·3 か月前·議論
hmm you are right, I too wish the same brother
lifecodes
·3 か月前·議論
the CoT bug where 8% of training runs could see the model's own scratchpad is the scariest part to me. and of course it had to be in the agentic tasks, exactly where you need to trust what the model is "thinking"

the sandwich email story is wild too. not evil, just extremely literal. that gap between "we gave it permissions" and "we understood what it would do" feels like the whole problem in one anecdote

also the janus point landed, if you build probes to see how the model feels and immediately start deleting the inconvenient ones, you've basically told it honesty isn't safe. that seems like it compounds over time

It's scary to think that some very intelligent AI Model is not honest with us..

Ultron is not far, I guess...
lifecodes
·3 か月前·議論
Hey there I read your article, it was good..

But the first time I saw the title, I literally felt like you have copied me..

But ofc, you have your original thing..

Check my this article : https://blog.eshanstudio.com/posts/case-against-humanity/
lifecodes
·3 か月前·議論
MANAGED AGENTS sounds like progress, but also like we’re standardizing around the current limitations instead of solving them.
lifecodes
·3 か月前·議論
I guess it would be much cheaper to attach an api version of everything we developed till now than teaching these ai to be able to control things in real world as humans do..

I mean if we see the cost of training then making more apis for everything we have makes sense to me.

what do u think?
lifecodes
·3 か月前·議論
I guess we are reaching the point where “10T parsmeters” sounds more like a marketing number than a meaningful metric.

Between moE, aggressive quantization, and synthetic data pipelines, it’s getting harder to tell whether bigger models are actually better, or just more expensive to train.

Would be more interesting to see -> capability per dollar or per watt, not parameter count...
lifecodes
·3 か月前·議論
If this holds, does it unlock 100B+ models running locally in ~tens of GB RAM? Or does accuracy collapse before that point?