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by Birch-san
882 days ago
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cross-attention doesn't need to involve NATTEN. there's no neighbourhood involved because it's not self-attention. so you can do it the stable-diffusion way: after self-attention, run torch sdp with Q=image and K=V=text. I tried adding "stable-diffusion-style" cross-attn to HDiT, text-conditioning on small class-conditional datasets (oxford flowers), embedding the class labels as text prompts with Phi-1.5. trained it for a few minutes, and the images were relevant to the prompts, so it seemed to be working fine. but if instead of a text condition you have a single-token condition (class label) then yeah the adanorm would be a simpler way. |
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