[ET-VK] Fix use-after-free in PrepackNode when TensorRefs are shared#18914
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[ET-VK] Fix use-after-free in PrepackNode when TensorRefs are shared#18914
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Pull Request resolved: #18906 When a model has shared/tied weights (e.g. tied embeddings in transformers), the serialization deduplicates them into a single TensorRef that multiple PrepackNodes reference. Previously, `PrepackNode::create_staging_buffer()` called `tref->free_buffer()` unconditionally after copying weight data to a GPU staging buffer. This meant the first PrepackNode to execute would free the underlying host memory, and subsequent PrepackNodes sharing the same TensorRef would read from a dangling pointer — producing garbage/NaN values in prepacked weight and bias tensors on the GPU. The fix adds a `prepack_use_count` field to `TensorRef` that tracks how many PrepackNodes still need to read from it. Each PrepackNode increments the count in its constructor and decrements it after copying data. The buffer is only freed when the count reaches zero. This preserves the original eager-free behavior for non-shared weights (freeing immediately after the single consumer copies) while correctly deferring the free for shared weights until the last consumer is done — avoiding both the use-after-free and unnecessary peak memory increase. ghstack-source-id: 367726483 @exported-using-ghexport Differential Revision: [D101009402](https://our.internmc.facebook.com/intern/diff/D101009402/)
🔗 Helpful Links🧪 See artifacts and rendered test results at hud.pytorch.org/pr/pytorch/executorch/18914
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kirklandsign
approved these changes
Apr 15, 2026
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This PR was created by the merge bot to help merge the original PR into the main branch.
ghstack PR number: #18906 by @SS-JIA
^ Please use this as the source of truth for the PR details, comments, and reviews
ghstack PR base: https://github.com/pytorch/executorch/tree/gh/SS-JIA/520/base
ghstack PR head: https://github.com/pytorch/executorch/tree/gh/SS-JIA/520/head
Merge bot PR base: https://github.com/pytorch/executorch/tree/main
Merge bot PR head: https://github.com/pytorch/executorch/tree/gh/SS-JIA/520/orig
Differential Revision: D101009402
@diff-train-skip-merge