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mindesc

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mindesc
·12 か月前·議論
If you have any system that tries to gravitate to a local minimum it is almost impossible to not make Newton's fractal with it. Classical feed forward network learning does pretty much look like newtons method to me. Please take a look into https://en.m.wikipedia.org/wiki/Newton%27s_method
mindesc
·昨年·議論
This is how you turn unwanted dependencies and inability to make string searches a virtue.
mindesc
·2 年前·議論
yeah. use raw datatype url provided by the language and get hacked by some exotic xss you are not aware, because the specs have kitchen and sink included
mindesc
·3 年前·議論
I have understood that the bronze age collapse was a climate fluke that resulted into famine, which did lead to military power balance change which did lead into trade route collapse.
mindesc
·3 年前·議論
Dancing links has been so far my favourite algorithm to learn
mindesc
·3 年前·議論
if entanglement is part of information compression happening on the human brains, that would be wild indeed
mindesc
·3 年前·議論
The mistake here could also be that they are building a snake and that the real algorithm is about minimal ring containing start and end node. Usually when solving a puzzle the bad decision is taken as the first step and it is some sort of ego barrier that is hard to get over with
mindesc
·3 年前·議論
starting everywhere and building bigger snake from smaller ones sounds like quantum version of classical inside outside algorithm that is used to check if an input follows certain probabilistic context free grammar. if you don't know it, might be hard to find it https://en.wikipedia.org/wiki/Inside%E2%80%93outside_algorit...
mindesc
·3 年前·議論
Filling up that mana bar is not easy.
mindesc
·3 年前·議論
It could be also a sign of dependency hoarding and making you the bottleneck of the whole project. Bad architectural decisions, narcissistic need of importance or both. With those hours your partner starts to date with your friend. With experience I can assure you that position is not worth it. Not for you and not for the project. You end up draining your imagination. Over fitting is emerging in programming like it is emerging in the machine learning.