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Distributed Optimization

The goal of Distributed Optimization is to optimize a certain objective defined over millions of billions of data that is distributed over many machines by utilizing the computational power of these machines.

Source: Analysis of Distributed StochasticDual Coordinate Ascent

Papers

Showing 321330 of 536 papers

TitleStatusHype
Distributed Newton-like Algorithms and Learning for Optimized Power Dispatch0
Efficient Randomized Subspace Embeddings for Distributed Optimization under a Communication BudgetCode0
Gradient-Tracking over Directed Graphs for solving Leaderless Multi-Cluster Games0
Distributed Second Order Methods with Fast Rates and Compressed Communication0
Smoothness Matrices Beat Smoothness Constants: Better Communication Compression Techniques for Distributed Optimization0
Straggler-Resilient Distributed Machine Learning with Dynamic Backup Workers0
Bias-Variance Reduced Local SGD for Less Heterogeneous Federated Learning0
Concentration of Non-Isotropic Random Tensors with Applications to Learning and Empirical Risk Minimization0
Delayed Projection Techniques for Linearly Constrained Problems: Convergence Rates, Acceleration, and Applications0
Cost-efficient SVRG with Arbitrary Sampling0
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