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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 371380 of 536 papers

TitleStatusHype
Uncertain Multi-Agent Systems with Distributed Constrained Optimization Missions and Event-Triggered Communications: Application to Resource Allocation0
DC-DistADMM: ADMM Algorithm for Constrained Distributed Optimization over Directed Graphs0
Distributed and time-varying primal-dual dynamics via contraction analysis0
Iterative Pre-Conditioning to Expedite the Gradient-Descent Method0
Communication-efficient Variance-reduced Stochastic Gradient Descent0
Deep Reinforcement Learning for QoS-Constrained Resource Allocation in Multiservice Networks0
Decentralized gradient methods: does topology matter?0
Improving Rate of Convergence via Gain Adaptation in Multi-Agent Distributed ADMM Framework0
Multi-frequency calibration for DOA estimation with distributed sensors0
Revisiting EXTRA for Smooth Distributed Optimization0
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