This paper considers a novel application domain for rein-forcement learning: that of “autonomic computing, ” i.e. self-managing computing systems. RL is applied to an online re-source allocation task in a distributed multi-application com-puting environment with independent time-varying load in each application. The task is to allocate servers in real time so as to maximize the sum of performance-based expected utility in each application. This task may be treated as a com-posite MDP, and to exploit the problem structure, a simple lo-calized RL approach is proposed, with better scalability than previous approaches. The RL approach is tested in a realistic prototype data center comprising real servers, real HTTP re-quests, and realistic time...
The concept of Virtualization of Network Resources, such as cloud storage and computing power, has b...
We consider an online resource allocation problem where tasks with specific values, sizes and resour...
The computing continuum model is a widely ac-cepted and used approach that make possible the existen...
Online Network Resource Allocation (ONRA) for service provisioning is a fundamental problem in commu...
We present a new hybrid approach to performance management, combining disparate strengths of Reinfor...
International audienceDynamic and appropriate resource dimensioning isa crucial issue in cloud compu...
Cloud technologies provide capabilities that can guarantee to the end user high availability, perfor...
We consider a load balancing problem with task-server affinity and server-dependent task recurrence,...
This paper introduces a resource allocation framework specifically tailored for addressing the probl...
In cyber-physical systems, it is advantageous to leverage cloud with edge resources to distribute th...
International audienceLarge scale production grids are a major case for autonomic computing. Followi...
In a web system, configuration is crucial to the perfor-mance and service availability. It is a chal...
The advent of on-demand computing facilitated by computational clouds, provides an almost unlimited ...
In this study, we investigate a real-time system where computationally intensive tasks are executed ...
The concept of Virtualization of Network Resources, such as cloud storage and computing power, has b...
We consider an online resource allocation problem where tasks with specific values, sizes and resour...
The computing continuum model is a widely ac-cepted and used approach that make possible the existen...
Online Network Resource Allocation (ONRA) for service provisioning is a fundamental problem in commu...
We present a new hybrid approach to performance management, combining disparate strengths of Reinfor...
International audienceDynamic and appropriate resource dimensioning isa crucial issue in cloud compu...
Cloud technologies provide capabilities that can guarantee to the end user high availability, perfor...
We consider a load balancing problem with task-server affinity and server-dependent task recurrence,...
This paper introduces a resource allocation framework specifically tailored for addressing the probl...
In cyber-physical systems, it is advantageous to leverage cloud with edge resources to distribute th...
International audienceLarge scale production grids are a major case for autonomic computing. Followi...
In a web system, configuration is crucial to the perfor-mance and service availability. It is a chal...
The advent of on-demand computing facilitated by computational clouds, provides an almost unlimited ...
In this study, we investigate a real-time system where computationally intensive tasks are executed ...
The concept of Virtualization of Network Resources, such as cloud storage and computing power, has b...
We consider an online resource allocation problem where tasks with specific values, sizes and resour...
The computing continuum model is a widely ac-cepted and used approach that make possible the existen...