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@sxu sxu commented Nov 19, 2025

Summary: Introduce a FakeQuantizer subclass. It falls back to LPBQ observer's convert. _derived_bias_quant_spec also looks for it to correctly derive bias scale.

Open to suggestions on how to test. Naveen launched a QAT run and it seems to produce reasonable results.

Differential Revision: D87194388

@sxu sxu requested a review from cccclai as a code owner November 19, 2025 00:19
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pytorch-bot bot commented Nov 19, 2025

🔗 Helpful Links

🧪 See artifacts and rendered test results at hud.pytorch.org/pr/pytorch/executorch/15878

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❌ 3 New Failures, 2 Unrelated Failures

As of commit 0a8fd5c with merge base b4d72f1 (image):

NEW FAILURES - The following jobs have failed:

FLAKY - The following job failed but was likely due to flakiness present on trunk:

BROKEN TRUNK - The following job failed but was present on the merge base:

👉 Rebase onto the `viable/strict` branch to avoid these failures

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@meta-cla meta-cla bot added the CLA Signed This label is managed by the Facebook bot. Authors need to sign the CLA before a PR can be reviewed. label Nov 19, 2025
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meta-codesync bot commented Nov 19, 2025

@sxu has exported this pull request. If you are a Meta employee, you can view the originating Diff in D87194388.

@sxu sxu added the release notes: none Do not include this in the release notes label Nov 19, 2025
@billmguo
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@winskuo-quic can you review and approve this diff?

self.eps = eps

def forward(self, x: torch.Tensor) -> torch.Tensor:
if x.numel() == 0:
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Would it be simpler if calling torchao.quantization.quant_primitives._fake_quantize_affine directly?

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I think for QAT testing we can use pseudo labels generated by the FP32 model, do a few mini training steps on the fake-quant model, and then compare outputs against the FP32 baseline (pseudo labels) within acceptable atol/rtol thresholds as usual.

Summary:

Introduce a FakeQuantizer subclass. It falls back to LPBQ observer's `convert`. `_derived_bias_quant_spec` also looks for it to correctly derive bias scale.

Reviewed By: viveknayakatmeta

Differential Revision: D87194388
@sxu sxu force-pushed the export-D87194388 branch from eb2e9f9 to 0a8fd5c Compare November 21, 2025 01:24
@sxu sxu marked this pull request as draft November 21, 2025 01:36
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4 participants