We study distributed machine learning at the wireless edge, where limited power devices (workers) with local datasets implement distributed stochastic gradient descent (DSGD) over-the-air with the help of a remote parameter server (PS). We consider a bandwidth-limited fading multiple access channel (MAC) from the workers to the PS for communicating the local gradient estimates. Motivated by the additive nature of the wireless MAC, we study analog transmission of low-dimensional gradient estimates while accumulating error from previous iterations. We also design an opportunistic worker scheduling scheme to align the received gradient vectors at the PS in an efficient manner. Numerical results show that the proposed DSGD algorithm converges m...
This paper addresses the problem of distributed training of a machine learning model over the nodes ...
This paper addresses the problem of distributed training of a machine learning model over the nodes ...
We study federated edge learning (FEEL), where wireless edge devices, each with its own dataset, lea...
We study collaborative machine learning at the wireless edge, where power and bandwidth-limited devi...
We study federated machine learning (ML) at the wireless edge, where power- and bandwidth-limited wi...
We study federated machine learning (ML) at the wireless edge, where power- and bandwidth-limited wi...
We study federated machine learning at the wireless network edge, where limited power wireless devic...
We study wireless collaborative machine learning (ML), where mobile edge devices, each with its own ...
With the advent of beyond 5G and 6G systems, wireless communication networks will evolve from a pure...
With the advent of beyond 5G and 6G systems, wireless communication networks will evolve from a pure...
The next-generation of wireless networks will enable many machine learning (ML) tools and applicatio...
Abstract The next-generation of wireless networks will enable many machine learning (ML) tools and ...
The aim of this paper is to propose a novel dynamic resource allocation strategy for energy-efficien...
In this paper, we address the problem of dynamic allocation of communication and computation resourc...
The aim of this paper is to propose a resource allocation strategy for dynamic training and inferenc...
This paper addresses the problem of distributed training of a machine learning model over the nodes ...
This paper addresses the problem of distributed training of a machine learning model over the nodes ...
We study federated edge learning (FEEL), where wireless edge devices, each with its own dataset, lea...
We study collaborative machine learning at the wireless edge, where power and bandwidth-limited devi...
We study federated machine learning (ML) at the wireless edge, where power- and bandwidth-limited wi...
We study federated machine learning (ML) at the wireless edge, where power- and bandwidth-limited wi...
We study federated machine learning at the wireless network edge, where limited power wireless devic...
We study wireless collaborative machine learning (ML), where mobile edge devices, each with its own ...
With the advent of beyond 5G and 6G systems, wireless communication networks will evolve from a pure...
With the advent of beyond 5G and 6G systems, wireless communication networks will evolve from a pure...
The next-generation of wireless networks will enable many machine learning (ML) tools and applicatio...
Abstract The next-generation of wireless networks will enable many machine learning (ML) tools and ...
The aim of this paper is to propose a novel dynamic resource allocation strategy for energy-efficien...
In this paper, we address the problem of dynamic allocation of communication and computation resourc...
The aim of this paper is to propose a resource allocation strategy for dynamic training and inferenc...
This paper addresses the problem of distributed training of a machine learning model over the nodes ...
This paper addresses the problem of distributed training of a machine learning model over the nodes ...
We study federated edge learning (FEEL), where wireless edge devices, each with its own dataset, lea...