Fix Qwen Image DreamBooth prior-preservation batch ordering#13441
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sayakpaul merged 2 commits intohuggingface:mainfrom Apr 14, 2026
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Failing tests are unrelated. |
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What does this PR do?
Fixes the prior-preservation batching issue in the Qwen Image DreamBooth LoRA script.
PR #13396 corrected the repeat count under
--with_prior_preservation, but the script still repeats prompt embeddings withrepeat(...), which interleaves the batch as[inst, class, inst, class, ...]. The dataloader and latertorch.chunk(..., 2, dim=0)logic assume grouped ordering[inst1..instB, class1..classB].In addition,
weightingwas not chunked alongsidemodel_predandtarget, which causes a batch mismatch fortrain_batch_size > 1.This update:
repeat_interleave(..., dim=0)forprompt_embedsandprompt_embeds_maskweightingin the prior-preservation loss pathReproduction:
This fails with:
RuntimeError: The size of tensor a (4) must match the size of tensor b (2)Before submitting
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Who can review?
@sayakpaul