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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 301350 of 536 papers

TitleStatusHype
LocalNewton: Reducing Communication Bottleneck for Distributed Learning0
Innovation Compression for Communication-efficient Distributed Optimization with Linear Convergence0
An Efficient Learning Framework For Federated XGBoost Using Secret Sharing And Distributed OptimizationCode1
Improving the Transient Times for Distributed Stochastic Gradient Methods0
Distributed Energy Trading Management for Renewable Prosumers with HVAC and Energy Storage0
Mean Field MARL Based Bandwidth Negotiation Method for Massive Devices Spectrum Sharing0
Distributed Experiment Design and Control for Multi-agent Systems with Gaussian Processes0
Distributed Newton-like Algorithms and Learning for Optimized Power Dispatch0
Efficient Randomized Subspace Embeddings for Distributed Optimization under a Communication BudgetCode0
Moshpit SGD: Communication-Efficient Decentralized Training on Heterogeneous Unreliable DevicesCode1
Gradient-Tracking over Directed Graphs for solving Leaderless Multi-Cluster Games0
Decentralized Riemannian Gradient Descent on the Stiefel ManifoldCode1
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
Design of heterogeneous multi-agent system for distributed computation0
Convergent Adaptive Gradient Methods in Decentralized Optimization0
Cost-efficient SVRG with Arbitrary Sampling0
Fairness-Oriented User Scheduling for Bursty Downlink Transmission Using Multi-Agent Reinforcement Learning0
Byzantine-Resilient Non-Convex Stochastic Gradient Descent0
Linear Convergence of Distributed Mirror Descent with Integral Feedback for Strongly Convex Problems0
Wyner-Ziv Estimators for Distributed Mean Estimation with Side Information and OptimizationCode0
Sparse sketches with small inversion bias0
Distributed Stochastic Consensus Optimization with Momentum for Nonconvex Nonsmooth Problems0
Widely-distributed Radar Imaging Based on Consensus ADMM0
Distributed Saddle-Point Problems: Lower Bounds, Near-Optimal and Robust Algorithms0
Distributed Resource Allocation with Multi-Agent Deep Reinforcement Learning for 5G-V2V CommunicationCode1
Client Selection in Federated Learning: Convergence Analysis and Power-of-Choice Selection Strategies0
Byzantine-Robust Learning on Heterogeneous Datasets via Resampling0
Asynchronous Distributed Optimization with Stochastic Delays0
Distributed Mirror Descent with Integral Feedback: Asymptotic Convergence Analysis of Continuous-time Dynamics0
Graph neural networks-based Scheduler for Production planning problems using Reinforcement Learning0
Distributed Optimization, Averaging via ADMM, and Network TopologyCode0
On Communication Compression for Distributed Optimization on Heterogeneous Data0
GTAdam: Gradient Tracking with Adaptive Momentum for Distributed Online Optimization0
Projected Push-Sum Gradient Descent-Ascent for Convex Optimizationwith Application to Economic Dispatch Problems0
Distributed Personalized Gradient Tracking with Convex Parametric Models0
Graph Neural Networks for Scalable Radio Resource Management: Architecture Design and Theoretical AnalysisCode1
Distributed Training of Graph Convolutional Networks0
Distributed optimization for nonrigid nano-tomographyCode0
A Unified Linear Speedup Analysis of Federated Averaging and Nesterov FedAvg0
Federated Learning with Compression: Unified Analysis and Sharp GuaranteesCode0
Distributed Model Predictive Control with Reconfigurable Terminal Ingredients for Reference Tracking0
Linear Convergent Decentralized Optimization with Compression0
Advances in Asynchronous Parallel and Distributed Optimization0
Distributed Collision-Free Motion Coordination on a Sphere: A Conic Control Barrier Function Approach0
DEED: A General Quantization Scheme for Communication Efficiency in Bits0
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