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qwertyforce

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投稿

Claude Fable 5 will sabotage "frontier LLM research" tasks

twitter.com
49 ポイント·投稿者 qwertyforce·先月·6 コメント

I (Spiritually) Won Comma.ai's Compression Challenge

aaronleslie.dev
3 ポイント·投稿者 qwertyforce·2 か月前·1 コメント

Flash Attention Is Not Always Faster for Short Sequences

blog.qwertyforce.dev
1 ポイント·投稿者 qwertyforce·3 か月前·0 コメント

Fast Attention for Short Sequences

blog.qwertyforce.dev
2 ポイント·投稿者 qwertyforce·3 か月前·0 コメント

Forecast: Stack Overflow Has About 2 Years Left

blog.qwertyforce.dev
2 ポイント·投稿者 qwertyforce·5 か月前·0 コメント

Math and Me

togelius.blogspot.com
3 ポイント·投稿者 qwertyforce·5 か月前·0 コメント

Forecasting the Death of StackOverflow

blog.qwertyforce.dev
2 ポイント·投稿者 qwertyforce·6 か月前·2 コメント

Google AI Studio is now sponsoring Tailwind CSS

twitter.com
777 ポイント·投稿者 qwertyforce·6 か月前·298 コメント

Flash Attention from Scratch

lubits.ch
1 ポイント·投稿者 qwertyforce·6 か月前·0 コメント

Learn Cutlass the Hard Way

kapilsharma.dev
3 ポイント·投稿者 qwertyforce·7 か月前·1 コメント

QK Norm and the Curious Case of Logit Drift

rossjtaylor.com
1 ポイント·投稿者 qwertyforce·2 年前·0 コメント

Engineering the highest cited cat, Larry

reeserichardson.blog
2 ポイント·投稿者 qwertyforce·2 年前·0 コメント

ICLR Blogposts 2024

iclr-blogposts.github.io
1 ポイント·投稿者 qwertyforce·2 年前·0 コメント

Tutorial on Diffusion Models for Imaging and Vision

arxiv.org
2 ポイント·投稿者 qwertyforce·2 年前·0 コメント

A Probabilistic Interpretation of Regularization (2016)

bjlkeng.io
1 ポイント·投稿者 qwertyforce·2 年前·0 コメント

ICLR Blogposts

iclr-blogposts.github.io
10 ポイント·投稿者 qwertyforce·2 年前·0 コメント

Why Batch Norm Causes Exploding Gradients [2020]

kyleluther.github.io
1 ポイント·投稿者 qwertyforce·2 年前·0 コメント

Tensor Core Performance: The Ultimate Guide (2020) [pdf]

developer.download.nvidia.com
2 ポイント·投稿者 qwertyforce·3 年前·0 コメント

The Stilwell Brain [video]

youtube.com
2 ポイント·投稿者 qwertyforce·3 年前·0 コメント

Optimal power limit for deep learning tasks on RTX 3090

blog.qwertyforce.dev
1 ポイント·投稿者 qwertyforce·3 年前·0 コメント

コメント

qwertyforce
·2 か月前·議論
fwiw pangram says it is 100% generated
qwertyforce
·2 か月前·議論
I blame the ML engineers who work on these recommendation systems. They chase simplistic objectives like CTR, time spent, and so on, which can be gamed by this kind of content. This creates huge positive feedback loops in which popular content becomes even more popular and forms “metas,” while models train on clickstream data they themselves have influenced. They could try to fix this, but they won’t, because no one is asking them to
qwertyforce
·2 か月前·議論
Original title: How I (Spiritually) Won comma.ai's Compression Challenge
qwertyforce
·3 か月前·議論
It will probably suffer the same fate as the most-upvoted discussion of all time in the GitHub Community repo: https://github.com/orgs/community/discussions/66188

no reaction
qwertyforce
·3 か月前·議論
thats exaclty why i prefer codex
qwertyforce
·4 か月前·議論
noticed that firefox gives 2x kHashes/s more than chrome (1000 vs 500)
qwertyforce
·6 か月前·議論
yep, this is the only moat they will have against chinese AI labs
qwertyforce
·6 か月前·議論
That is a great question. IMO, major LLM players currently have a large enough user base to generate training data from their users (questions and user provided answers, corrections, etc). So, if StackOverflow dies, it will become harder to keep up with closed source models
qwertyforce
·6 か月前·議論
https://qwertyforce.dev/
qwertyforce
·6 か月前·議論
I think there should be some graph algorithm for this, to find a bottleneck in a graph
qwertyforce
·6 か月前·議論
it's sad that startups become corps and decay. this article is the perfect illustration, from the bio, to the llm slop content of the article. Just sad it has to be this way
qwertyforce
·2 年前·議論
Looks fake
qwertyforce
·2 年前·議論
dx1*=2; dy1*=2; dx2*=2; dy2*=2;
qwertyforce
·3 年前·議論
used 3090 is the best option imo
qwertyforce
·3 年前·議論
https://www.youtube.com/@animatedai/videos for visibility
qwertyforce
·3 年前·議論
you can also take a few steps back from the screen, it works too