The traditional approach to distributed machine learning is to adapt learning algorithms to the network, e.g., reducing updates to curb overhead. Networks based on intelligent edge, instead, make it possible to follow the opposite approach, i.e., to define the logical network topology around the learning task to perform, so as to meet the desired learning performance. In this paper, we propose a system model that captures such aspects in the context of supervised machine learning, accounting for both learning nodes (that perform computations) and information nodes (that provide data). We then formulate the problem of selecting (i) which learning and information nodes should cooperate to complete the learning task, and (ii) the number of epo...
The next-generation of wireless networks will enable many machine learning (ML) tools and applicatio...
Unlike theoretical analysis of distributed learning (DL) in the literature, DL over wireless edge ne...
Training a large-scale model over a massive data set is an extremely computation and storage intensi...
The traditional approach to distributed machine learning is to adapt learning algorithms to the netw...
The traditional approach to distributed machine learning is to adapt learning algorithms to the netw...
We address distributed machine learning in multi-tier (e.g., mobile-edge-cloud) networks where a het...
Federated Learning (FL) is a distributed optimization method in which multiple client nodes collabor...
In the mobile-edge-cloud continuum, a plethora of heterogeneous data sources and computation-capable...
Emerging technologies and applications including Internet of Things (IoT), social networking, and cr...
Emerging technologies and applications including Internet of Things (IoT), social networking, and cr...
Traditionally, distributed machine learning takes the guise of (i) different nodes training the sam...
The advent of algorithms capable of leveraging vast quantities of data and computational resources h...
The big data availability of Radio Access Network (RAN) statistics suggests using it for improving t...
The edge computing paradigm allows computationally intensive tasks to be offloaded from small device...
The parallel growth of contemporary machine learning (ML) technologies alongside edge/-fog networkin...
The next-generation of wireless networks will enable many machine learning (ML) tools and applicatio...
Unlike theoretical analysis of distributed learning (DL) in the literature, DL over wireless edge ne...
Training a large-scale model over a massive data set is an extremely computation and storage intensi...
The traditional approach to distributed machine learning is to adapt learning algorithms to the netw...
The traditional approach to distributed machine learning is to adapt learning algorithms to the netw...
We address distributed machine learning in multi-tier (e.g., mobile-edge-cloud) networks where a het...
Federated Learning (FL) is a distributed optimization method in which multiple client nodes collabor...
In the mobile-edge-cloud continuum, a plethora of heterogeneous data sources and computation-capable...
Emerging technologies and applications including Internet of Things (IoT), social networking, and cr...
Emerging technologies and applications including Internet of Things (IoT), social networking, and cr...
Traditionally, distributed machine learning takes the guise of (i) different nodes training the sam...
The advent of algorithms capable of leveraging vast quantities of data and computational resources h...
The big data availability of Radio Access Network (RAN) statistics suggests using it for improving t...
The edge computing paradigm allows computationally intensive tasks to be offloaded from small device...
The parallel growth of contemporary machine learning (ML) technologies alongside edge/-fog networkin...
The next-generation of wireless networks will enable many machine learning (ML) tools and applicatio...
Unlike theoretical analysis of distributed learning (DL) in the literature, DL over wireless edge ne...
Training a large-scale model over a massive data set is an extremely computation and storage intensi...