Search Results for author: Mani Malek

Found 5 papers, 2 papers with code

Papaya: Practical, Private, and Scalable Federated Learning

no code implementations8 Nov 2021 Dzmitry Huba, John Nguyen, Kshitiz Malik, Ruiyu Zhu, Mike Rabbat, Ashkan Yousefpour, Carole-Jean Wu, Hongyuan Zhan, Pavel Ustinov, Harish Srinivas, Kaikai Wang, Anthony Shoumikhin, Jesik Min, Mani Malek

Our work tackles the aforementioned issues, sketches of some of the system design challenges and their solutions, and touches upon principles that emerged from building a production FL system for millions of clients.

Federated Learning

Opacus: User-Friendly Differential Privacy Library in PyTorch

3 code implementations25 Sep 2021 Ashkan Yousefpour, Igor Shilov, Alexandre Sablayrolles, Davide Testuggine, Karthik Prasad, Mani Malek, John Nguyen, Sayan Ghosh, Akash Bharadwaj, Jessica Zhao, Graham Cormode, Ilya Mironov

We introduce Opacus, a free, open-source PyTorch library for training deep learning models with differential privacy (hosted at opacus. ai).

Federated Learning with Buffered Asynchronous Aggregation

no code implementations11 Jun 2021 John Nguyen, Kshitiz Malik, Hongyuan Zhan, Ashkan Yousefpour, Michael Rabbat, Mani Malek, Dzmitry Huba

On the other hand, asynchronous aggregation of client updates in FL (i. e., asynchronous FL) alleviates the scalability issue.

Federated Learning Privacy Preserving

Antipodes of Label Differential Privacy: PATE and ALIBI

1 code implementation NeurIPS 2021 Mani Malek, Ilya Mironov, Karthik Prasad, Igor Shilov, Florian Tramèr

We propose two novel approaches based on, respectively, the Laplace mechanism and the PATE framework, and demonstrate their effectiveness on standard benchmarks.

Bayesian Inference Memorization +2

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