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Privacy Preserving Machine Learning With Fully Homomorphic Encryption,

Discover Benoit Chevallier-Mames and Jordan Frery (VP Cloud, ML and ML Tech Lead at Zama) presenting at Stanford University for the 2023 Security Seminar.
Privacy enhancing technologies (PETs) have been proposed as a way to protect the privacy of data while still allowing for data analysis. This is in particular interesting for online services that handle sensitive data, such as health data, biometrics, credit scores and other personal information. In our presentation, we focus on Fully Homomorphic Encryption (FHE), a powerful tool that allows for arbitrary computations to be performed on encrypted data. FHE has received lots of attention in the past few years and has reached realistic execution times and correctness.
More precisely, we explain how we apply FHE to linear, tree-based and neural-network models. For trees (decision trees, random forests, and gradient boosted trees), we get state-of-the-art solutions over encrypted tabular data. We also describe how we handle deep learning, to already achieve promising results on some vision tasks.
Our techniques are implemented within our open-source Concrete-ML library. We show a selected set of use-cases, and demonstrate that our FHE version is very close to the unprotected version in terms of accuracy.
Presenters: Benoit Chevallier-Mames and Jordan Frery.
Credits: ‪@stanford‬
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Пікірлер: 3

  • @natashaalkhatib1811
    @natashaalkhatib1811 Жыл бұрын

    Is this Dr.Dan Boneh in the room? Very nice talk and work :) Keep it up

  • @zama_fhe

    @zama_fhe

    Жыл бұрын

    It is! :)

  • @edbertkwesi4931
    @edbertkwesi4931 Жыл бұрын

    the best is zama AI