Skip to yearly menu bar Skip to main content


Talk
in
Workshop: Privacy Preserving Machine Learning

Contributed talk 8: Private Machine Learning in TensorFlow using Secure Computation

Morten Dahl


Abstract:

We present a framework for experimenting with secure multi-party computation directly in TensorFlow. By doing so we benefit from several properties valuable to both researchers and practitioners, including tight integration with ordinary machine learning processes, existing optimizations for distributed computation in TensorFlow, high-level abstractions for expressing complex algorithms and protocols, and an expanded set of familiar tooling. We give an open source implementation of a state-of-the-art protocol and report on concrete benchmarks using typical models from private machine learning.

Chat is not available.