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thinxer

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MTIA v1: Meta’s first-generation AI inference accelerator

ai.facebook.com
110 points·by thinxer·3 lata temu·44 comments

Text to Shareable Web Apps

literallyanything.io
1 points·by thinxer·3 lata temu·1 comments

Site Generator for Apple Notes

devlog.notespub.com
1 points·by thinxer·3 lata temu·0 comments

Sparks of Artificial General Intelligence: Early Experiments with GPT-4

arxiv.org
180 points·by thinxer·3 lata temu·236 comments

comments

thinxer
·2 lata temu·discuss
For “cloud-native” apps, JuiceFS is not needed.

S3 is not designed for intensive metadata operations, like listing, renaming etc. For these operations, you will need a somewhat POSIX-complaint system. For example, if you want to train on ImageNet dataset, the “canonical” way [1] is to extract the images and organize them into folders, class by class. The whole dataset is discovered by directory listing. This where JuiceFS shines.

Of course, if the dataset is really massive, you will mostly end-up with in-house solutions.

[1]: https://github.com/pytorch/examples/blob/main/imagenet/extra...
thinxer
·3 lata temu·discuss
For context:

1. https://twitter.com/rus/status/1641908582814830592

2. https://twitter.com/bighuman/status/1641910129384648706