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Code for the paper 'FLAIM: AIM-based synthetic data generation in the federated setting'
Python
Crafting canaries to measure empirical privacy of DP-FL training under a realistic threat model.
Python 11 3
Code for the CCS'22 paper "Federated Boosted Decision Trees with Differential Privacy"
Python 57 10
Python package for simple implementations of state-of-the-art LDP frequency estimation algorithms. Contains code for our VLDB 2021 Paper.
Python 78 14
Apple Differential Privacy Implementation
Jupyter Notebook 16 6
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