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PyTorch before 3.7.0 has a bernoulli_p decompose function in decompositions.py even though it lacks full consistency with the eager CPU implementation, negatively affecting nn.Dropout1d, nn.Dropout2d, and nn.Dropout3d for fallback_random=True.

🗓️ 02 Oct 2025 01:04:57Reported by MicrosoftType 
mscve
 mscve
🔗 msrc.microsoft.com👁 2 Views

PyTorch before 3.7.0 has bernoulli_p decompose without full CPU consistency, affecting Dropout with fallback_random.

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02 Oct 2025 01:04Current
7High risk
Vulners AI Score7
CVSS 3.15.3
EPSS0.00099
SSVC
2