Search Results for author: Satyavrat Wagle

Found 5 papers, 0 papers with code

Unsupervised Federated Optimization at the Edge: D2D-Enabled Learning without Labels

no code implementations15 Apr 2024 Satyavrat Wagle, Seyyedali Hosseinalipour, Naji Khosravan, Christopher G. Brinton

Specifically, we introduce a \textit{smart information push-pull} methodology for data/embedding exchange tailored to FL settings with either soft or strict data privacy restrictions.

Contrastive Learning Federated Learning

Smart Information Exchange for Unsupervised Federated Learning via Reinforcement Learning

no code implementations15 Feb 2024 Seohyun Lee, Anindya Bijoy Das, Satyavrat Wagle, Christopher G. Brinton

Numerical analysis shows the advantages in terms of convergence speed and straggler resilience of the proposed method to different available FL schemes and benchmark datasets.

Federated Learning reinforcement-learning

A Reinforcement Learning-Based Approach to Graph Discovery in D2D-Enabled Federated Learning

no code implementations7 Aug 2023 Satyavrat Wagle, Anindya Bijoy Das, David J. Love, Christopher G. Brinton

Augmenting federated learning (FL) with direct device-to-device (D2D) communications can help improve convergence speed and reduce model bias through rapid local information exchange.

Federated Learning Reinforcement Learning (RL)

Network-Aware Optimization of Distributed Learning for Fog Computing

no code implementations17 Apr 2020 Yuwei Tu, Yichen Ruan, Su Wang, Satyavrat Wagle, Christopher G. Brinton, Carlee Joe-Wong

Unlike traditional federated learning frameworks, our method enables devices to offload their data processing tasks to each other, with these decisions determined through a convex data transfer optimization problem that trades off costs associated with devices processing, offloading, and discarding data points.

Distributed, Parallel, and Cluster Computing

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