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Insecure Random Number Generator #349

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gonzalo-munillag opened this issue Nov 7, 2022 · 1 comment
Open

Insecure Random Number Generator #349

gonzalo-munillag opened this issue Nov 7, 2022 · 1 comment

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@gonzalo-munillag
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gonzalo-munillag commented Nov 7, 2022

Hello,

I would like to bring to your attention that using the random number generator from TensorFlow could lead to vulnerabilities when sampling from a distribution to fulfill differential privacy during training: https://www.tmlt.io/research/tiny-bits-matter-precision-based-attacks-on-differential-privacy

PyTorch Opacus uses a secure RNG: https://opacus.ai/api/privacy_engine.html

In contrast, TensorFlow RNG:
https://www.tensorflow.org/api_docs/python/tf/random/Generator
https://stackoverflow.com/questions/63350248/is-tf-random-normal-cryptographically-secure

Additionally, there is no documentation that states the use of floating-point vulnerability protection as in https://scholar.google.com/citations?view_op=view_citation&hl=en&user=hg3A9TgAAAAJ&citation_for_view=hg3A9TgAAAAJ:dhFuZR0502QC
and
https://research.ibm.com/publications/secure-random-sampling-in-differential-privacy

Kind regards,
Gonzalo

@kairouzp
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kairouzp commented Nov 7, 2022 via email

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