The aim of this paper is to develop a theoretical framework for training neural network (NN) models, when data is distributed over a set of agents that are connected to each other through a sparse network topology. The framework builds on a distributed convexification technique, while leveraging dynamic consensus to propagate the information over the network. It can be customized to work with different loss and regularization functions, typically used when training NN models, while guaranteeing provable convergence to a stationary solution under mild assumptions. Interestingly, it naturally leads to distributed architectures where agents solve local optimization problems exploiting parallel multi-core processors. Numerical results corrobora...
The first part of this dissertation considers distributed learning problems over networked agents. T...
The first part of this dissertation considers distributed learning problems over networked agents. T...
This work presents and studies a distributed algorithm for solving optimization problems over networ...
The aim of this paper is to develop a general framework for training neural networks (NNs) in a dist...
The aim of this work is to develop a fully-distributed algorithmic framework for training graph conv...
We study distributed stochastic nonconvex optimization in multi-agent networks. We introduce a novel...
This paper proposes a new family of algorithms for training neural networks (NNs). These...
Over the past decade, there has been a growing interest in large-scale and privacy-concerned machine...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Distributed training of Deep Neural Networks (DNN) is an important technique to reduce the training ...
Distributed training of Deep Neural Networks (DNN) is an important technique to reduce the training ...
The aim of this paper is to propose a novel distributed strategy for tensor completion, where (parti...
The first part of this dissertation considers distributed learning problems over networked agents. T...
The first part of this dissertation considers distributed learning problems over networked agents. T...
This work presents and studies a distributed algorithm for solving optimization problems over networ...
The aim of this paper is to develop a general framework for training neural networks (NNs) in a dist...
The aim of this work is to develop a fully-distributed algorithmic framework for training graph conv...
We study distributed stochastic nonconvex optimization in multi-agent networks. We introduce a novel...
This paper proposes a new family of algorithms for training neural networks (NNs). These...
Over the past decade, there has been a growing interest in large-scale and privacy-concerned machine...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Distributed training of Deep Neural Networks (DNN) is an important technique to reduce the training ...
Distributed training of Deep Neural Networks (DNN) is an important technique to reduce the training ...
The aim of this paper is to propose a novel distributed strategy for tensor completion, where (parti...
The first part of this dissertation considers distributed learning problems over networked agents. T...
The first part of this dissertation considers distributed learning problems over networked agents. T...
This work presents and studies a distributed algorithm for solving optimization problems over networ...