In this paper, we determine the optimal convergence rates for strongly convex and smooth distributed optimization in two settings: centralized and decentralized communications over a network. For centralized (i.e. master/slave) algorithms, we show that distributing Nesterov's accelerated gradient descent is optimal and achieves a precision $\varepsilon > 0$ in time $O(\sqrt{\kappa_g}(1+\Delta\tau)\ln(1/\varepsilon))$, where $\kappa_g$ is the condition number of the (global) function to optimize, $\Delta$ is the diameter of the network, and $\tau$ (resp. $1$) is the time needed to communicate values between two neighbors (resp. perform local computations). For decentralized algorithms based on gossip, we provide the first optimal algorithm, ...
<p>We consider distributed optimization in random networks where N nodes cooperatively minimize the ...
This dissertation considers distributed algorithms for centralized and decentralized networks that s...
<p>We study distributed optimization problems when N nodes minimize the sum of their individual cost...
In this paper, we determine the optimal convergence rates for strongly convex and smooth distributed...
International audienceThis work proposes a theoretical analysis of distributed optimization of conve...
International audienceIn this paper, we study the problem of minimizing a sum of smooth and strongly...
17 pagesInternational audienceIn this work, we consider the distributed optimization of non-smooth c...
This thesis considers optimization problems defined over a network of nodes, where each node knows o...
In recent years, significant progress has been made in the field of distributed optimization algorit...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
This dissertation contributes toward design, convergence analysis and improving the performance of t...
Abstract In this article, studying distributed optimisation over time‐varying directed networks wher...
We study diffusion and consensus based optimization of a sum of unknown convex objective functions o...
A number of important problems that arise in various application domains can be formulated as a dist...
In many large-scale optimization problems arising in the context of machine learning the decision va...
<p>We consider distributed optimization in random networks where N nodes cooperatively minimize the ...
This dissertation considers distributed algorithms for centralized and decentralized networks that s...
<p>We study distributed optimization problems when N nodes minimize the sum of their individual cost...
In this paper, we determine the optimal convergence rates for strongly convex and smooth distributed...
International audienceThis work proposes a theoretical analysis of distributed optimization of conve...
International audienceIn this paper, we study the problem of minimizing a sum of smooth and strongly...
17 pagesInternational audienceIn this work, we consider the distributed optimization of non-smooth c...
This thesis considers optimization problems defined over a network of nodes, where each node knows o...
In recent years, significant progress has been made in the field of distributed optimization algorit...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
This dissertation contributes toward design, convergence analysis and improving the performance of t...
Abstract In this article, studying distributed optimisation over time‐varying directed networks wher...
We study diffusion and consensus based optimization of a sum of unknown convex objective functions o...
A number of important problems that arise in various application domains can be formulated as a dist...
In many large-scale optimization problems arising in the context of machine learning the decision va...
<p>We consider distributed optimization in random networks where N nodes cooperatively minimize the ...
This dissertation considers distributed algorithms for centralized and decentralized networks that s...
<p>We study distributed optimization problems when N nodes minimize the sum of their individual cost...