Convergence bounds are one of the main tools to obtain information on the performance of a distributed machine learning task, before running the task itself. In this work, we perform a set of experiments to assess to which extent, and in which way, such bounds can predict and improve the performance of real-world distributed (namely, federated) learning tasks. We find that, as can be expected given the way they are obtained, bounds are quite loose and their relative magnitude reflects the training rather than the testing loss. More unexpectedly, we find that some of the quantities appearing in the bounds turn out to be very useful to identify the clients that are most likely to contribute to the learning process, without requiring...
We study the rate of convergence of Bayesian learning in social networks. Each individual receives ...
We introduce a framework - Artemis - to tackle the problem of learning in a distributed or federated...
We introduce a framework - Artemis - to tackle the problem of learning in a distributed or federated...
Many machine learning approaches are characterized by information constraints on how they inter-act ...
In distributed optimization and machine learning, multiple nodes coordinate to solve large problems....
In distributed optimization and machine learning, multiple nodes coordinate to solve large problems....
In data-parallel optimization of machine learning models, workers collaborate to improve their estim...
In this paper, we use tools from rate-distortion theory to establish new upper bounds on the general...
We introduce a framework - Artemis - to tackle the problem of learning in a distributed or federated...
This paper studies probabilistic rates of convergence for consensus+innovations type of algorithms i...
Whether it occurs in artificial or biological substrates, {\it learning} is a {distributed} phenomen...
For many reasons, neural networks have become very popular AI machine learning models. Two of the mo...
We consider distributed online learning protocols that control the exchange of in-formation between ...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
We study the rate of convergence of Bayesian learning in social networks. Each individual receives ...
We introduce a framework - Artemis - to tackle the problem of learning in a distributed or federated...
We introduce a framework - Artemis - to tackle the problem of learning in a distributed or federated...
Many machine learning approaches are characterized by information constraints on how they inter-act ...
In distributed optimization and machine learning, multiple nodes coordinate to solve large problems....
In distributed optimization and machine learning, multiple nodes coordinate to solve large problems....
In data-parallel optimization of machine learning models, workers collaborate to improve their estim...
In this paper, we use tools from rate-distortion theory to establish new upper bounds on the general...
We introduce a framework - Artemis - to tackle the problem of learning in a distributed or federated...
This paper studies probabilistic rates of convergence for consensus+innovations type of algorithms i...
Whether it occurs in artificial or biological substrates, {\it learning} is a {distributed} phenomen...
For many reasons, neural networks have become very popular AI machine learning models. Two of the mo...
We consider distributed online learning protocols that control the exchange of in-formation between ...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
We study the rate of convergence of Bayesian learning in social networks. Each individual receives ...
We introduce a framework - Artemis - to tackle the problem of learning in a distributed or federated...
We introduce a framework - Artemis - to tackle the problem of learning in a distributed or federated...