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Maybe the purpose of Life is not for happy, There are other more important purpose!


     This book aims to provide an introduction to the topic of deep learning algorithms. We review essential components of deep learning algorithms in full mathematical detail including different artificial neural network (ANN) architectures (such as fully-connected feedforward ANNs, convolutional ANNs, recurrent ANNs, residual ANNs, and ANNs with batch normalization) and different optimization algorithms (such as the basic stochastic gradient descent (SGD) method, accelerated methods, and adaptive methods). We also cover several theoretical aspects of deep learning algorithms such as approximation capacities of ANNs (including a calculus for ANNs), optimization theory (including Kurdyka-Łojasiewicz inequalities), and generalization errors. In the last part of the book some deep learning approximation methods for PDEs are reviewed including physics-informed neural networks (PINNs) and deep Galerkin methods. We hope that this book will be useful for students and scientists who do not yet have any background in deep learning at all and would like to gain a solid foundation as well as for practitioners who would like to obtain a firmer mathematical understanding of the objects and methods considered in deep learning.


This is the kind of books we need because deep learning has become for many a field of superstition and magic


Thanks, these books are wonderful!


Maybe you can try do more Exercise, Exercise is medicine for cancer and every dose counts - even in late stages of the disease: https://www.ecu.edu.au/newsroom/articles/research/exercise-i...


I think the addicted problem is the user's problem, not the product problem, like killing is human's problem, not the knife's problem.


The personal responsibility argument really falls apart when you consider the forces working against the user. The conversation has long since moved on from this line of thinking because the power is so lopsided now.


A knife that's well-designed does what it's supposed to - slicing up humans or food.

If social media sites are well-designed, what does that say about their purpose?


I'm not quite sure I understand your analogy because I think most would agree that knives should not be regulated and we shouldn't investigate and punish knife sellers/makers for stabbings.

To play along with your analogy: if social media sites are well-designed, they do what they're supposed to do: communicate information or misinformation. And just like how we don't crack down on knives even though there are plenty of stabbings, we shouldn't be cracking down on social media & online speech even though there are plenty of liars and idiots who spread misinformation.


There is much more limited harm from a person wielding a knife for malicious purposes, as opposed to how quickly social media can fuel similar actions. If you genuinely believe scale doesn't matter and everything is the same as everything else, I don't know what to tell you.


I don't doubt that scale matters, it's just a bad analogy. Knives aren't comparable to social media, but if the commenter wants to play the knife analogy game then this is the conclusion.


But the object of knives isn't to stab people to death; a vanishing number of knives bought are used to stab people to death, and "lunatics" are not a core base for any knife seller.

A well-designed system does what it's supposed to. Facebook's either supposed to be addictive, or it just is by accident. If it's by accident, it's poorly designed. If it's not, it has an objectionable purpose.


Facebook is not designed to be addictive, it's designed to be engaging. Lunatics aren't the core base for Facebook either, a small minority of Facebook's total user base cause problems. It looks like you've already made up your mind that Facebook is addictive and bad, you barely have to dress it up with this analogy.


If Facebook is not intended to be addictive, but is anyway, then it's poorly designed. Are you suggesting Facebook isn't addictive?


There's no solid evidence that it is addictive except in a colloquial sense. Addictive substances like opiates, nicotine etc consistently induce an addiction response in humans with very predictable outcomes. Facebook isn't anything like that, but its detractors love to use the word "addiction" to imply a medical phenomenon that doesn't happen. The "harm" of Facebook usage is not even close to the reliably brutal consequences of actual addictive substance abuse, nor is it induced with any consistency. Unlike actual addictive substances, Facebook does not alter one's ability to inhibit their own behavior.

There's no doubt that Facebook can negatively impact one's self-esteem and life, but that's like any entertainment. Even alcohol addiction is better understood and arguably more brutal, yet the only restriction on alcohol is an age limit.

Some info: https://www.livescience.com/49585-facebook-addiction-viewed-...


The delegation of accountability has become an epidemic. No one recognizes their own faults; everything and everyone else is to blame.

There’s an old saying that I absolutely love: I am only responsible for what I say, not for what you understand.


See Pytorch Lightning vs PyTorch Ignite vs Fast.ai: https://towardsdatascience.com/pytorch-lightning-vs-pytorch-...


I was a patient, be in hospital more then two months, i always thought if there was classic music echo in the passage or my room, the pain will be less.


Eve, Programming designed for humans: http://witheve.com/


Other GC-free Lisps:

    Pre-Scheme(https://en.wikipedia.org/wiki/PreScheme) is a GC-free (LIFO) subset of Scheme

    newLISP(http://www.newlisp.org/) uses "One Reference Only" memory management

    Linear Lisp(http://home.pipeline.com/%7Ehbaker1/LinearLisp.html) produces no garbage (and seems to have no implementation)

    Dale(https://github.com/tomhrr/dale) is basically C in S-Exprs (but with macros)

    ThinLisp(https://web.archive.org/web/20160324213055/http://www.thinlisp.org/, https://github.com/ska80/thinlisp) is a subset of Common Lisp that can be used without GC

    Bone Lisp(https://github.com/wolfgangj/bone-lisp) semi-automatic memory management

list is copyed from: https://www.reddit.com/r/lisp/comments/4mtktn/bone_01_lisp_w...



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