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TSNE Analysis, K-Nearest Neighbor Analysis, Frequency Analysis and Semantic Factorization

Open davidHemf opened this issue 1 year ago • 2 comments

Hi & good day!

Thanks for the paper, the repo and codes. I was searching through folders to find out the source code for image analysis, but didn't see anything relate to KNN, T-SNE, Frequency and semantic factorization. Where can I find them? And is it possible to run any of analysis with just one CUDA? CUDA_VISIBLE_DEVICES=0 instead of CUDA_VISIBLE_DEVICES=0,...,N

In the README, it mention to "3 differentiable augmentations" so how to activate or deactivate augmentation during training?

Thanks again!

davidHemf avatar Apr 16 '23 15:04 davidHemf

Hi & good day!

Thanks for the paper, the repo and codes. I was searching through folders to find out the source code for image analysis, but didn't see anything relate to KNN, T-SNE, Frequency and semantic factorization. Where can I find them?

Here :)

And is it possible to run any of analysis with just one CUDA? CUDA_VISIBLE_DEVICES=0 instead of CUDA_VISIBLE_DEVICES=0,...,N

Yes, you can.

In the README, it mention to "3 differentiable augmentations" so how to activate or deactivate augmentation during training?

You can activate or deactivate using our configuration system. The previous hyperlink shows our options for controlling differentiable augmentations. You can turn on or off the differentiable operations by changing .yaml file. Please refer to BigGAN-DiffAug.yaml and StyleGAN-ADA.yaml yaml primitives.

mingukkang avatar Apr 18 '23 04:04 mingukkang

Hi again @mingukkang Thanks for the great work :) and wonderful reply!

davidHemf avatar Apr 18 '23 07:04 davidHemf