score_sde_fast_sampling
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Running your code on FFHQ 1024
Thanks for sharing your code, I am trying to compare the performance of your code to Songs on the FFHQ1024x1024 data. You seem to have a config file ffhq.py that might do that. I am not sure how to test this, I also see the need for ffhq-r10.tfrecords and not sure on the checkpoint and options for the call.
Can you please provide suggestions? thanks
Hi Yaser,
You can use the lines of code here https://github.com/AlexiaJM/score_sde_fast_sampling/blob/5da8f3fe103ee5ac3c3a336f16cc06c9541f0ed9/experiments.sh#L165 to compare the various different sampling methods on FFHQ-256. You'll want to replace ffhq_256.py with ffhq.py in the lines of code.
Based on the paper, for optimal results, you'll want to use this line: https://github.com/AlexiaJM/score_sde_fast_sampling/blob/5da8f3fe103ee5ac3c3a336f16cc06c9541f0ed9/experiments.sh#L170
You can download FFHQ from https://github.com/NVlabs/ffhq-dataset.
Alexia, thanks for the quick response. Let's clarify
- I was planning to just run the evaluation part to compare performance with respect to Song's pytorch checkpoint_60.pth (for FFHQ1kx1K). So I am not sure I understand why FFHQ data is needed for this.
- If I understand your comments, I will have to train on the FFHQ, before I get to step 1? I didn't see any reference to a pretrained check point (I assumed checkpoint_60 might be used with your SDE solver).
- I have the FFHQ 1K1K dataset but not the multi-resolution tfrecords. I would expect the training on Full FFHQ to take enormous amount of time?
thanks for further clarifications.
- You need the real data to calculate the FID. Assuming you already have the FID and don't have eval.enable_loss=False, you could just comment out the line https://github.com/AlexiaJM/score_sde_fast_sampling/blob/5da8f3fe103ee5ac3c3a336f16cc06c9541f0ed9/run_lib.py#L234 and things should work without the dataset. But the problem is that I have never computed that FID statistics, so you will need to compute the FID stats with the correct dataset (tfrecords).
- You do not need to train, it is only used for the FID calculation. You can use the checkpoint https://drive.google.com/drive/folders/1GwcthBS4Ry54eA_fIg1hOCfThQ6I3u1L and change workdir to 'ffhq_1024_ncsnpp_continuous' which is the folder containing the checkpoint
Thanks Alexia, I tried this route, but the ml-collections and absl seem to have some issues beyond my knowledge. I will let go of it for now and revisit it in the future.