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where can I find COYO-Labels-300M? #8

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Soonhwan-Kwon opened this issue Oct 29, 2022 · 4 comments
Open

where can I find COYO-Labels-300M? #8

Soonhwan-Kwon opened this issue Oct 29, 2022 · 4 comments

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@Soonhwan-Kwon
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First of all, thank you for the great dataset.

We also provide COYO-Labels-300M by adding machine-generated vision labels to a subset of COYO-700M for comparison with the JFT-300M.
We first removed the duplicated images by image_phash.
Then, we labeled 300M unique images into 21,841 classes by [EfficientNetV2-XL](https://arxiv.org.abs/2104.00298) trained with [ImageNet-21K](https://www.image-net.org/) dataset.

as described above readme, COYO-Labels-300M exists but I can't find how to get it ,or additional meta dataset to build this dataset.
Will it be released in future?
thank you in advance.

@justHungryMan
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Hi @Soonhwan-Kwon, thank you for your interest.
We are currently preparing for the release of coyo-labeled-300M. We are also preparing ViT-L performance and training code using coyo-labeled-300M. You can meet in 1-2 weeks, so please stay tuned to our updates :)
Thank you.

@Soonhwan-Kwon
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Thank you for the great news!

@justHungryMan
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Hi @Soonhwan-Kwon, we just updated COYO-Labeled-300M. Thank you for waiting. :)

@Soonhwan-Kwon
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Soonhwan-Kwon commented Nov 14, 2022

I always admire opensource sprit and great research work of kakaobrain. Thank you for the wonderful image classification dataset set! I'll download it right now. Thank you!

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