The scheduling problem is considered in complexity theory as a NP-hard combinatorial optimization problem. Meta-heuristics proved to be very useful in the resolution of this class of problems. However, these techniques require parameter tuning which is a very hard task to perform. A Case-based Reasoning module is proposed in order to solve the parameter tuning problem in a Multi-Agent Scheduling System. A computational study is performed in order to evaluate the proposed CBR module performance
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
The paper presents an adaptive iterative distributed scheduling algorithm that operates dynamically ...
Sophisticated agents operating in open environments must make complex real-time control decisions on...
Abstract. In complexity theory, scheduling problem is considered as a NP-complete combinatorial opti...
A novel agent-based approach to Meta-Heuristics self-configuration is proposed in this work. Meta-h...
This paper addresses the problem of Biological Inspired Optimization Techniques (BIT) parameterizat...
This paper proposes a novel agent-based approach to Meta-Heuristics self-configuration. Meta-heurist...
This article presents a multi-agent framework for optimization using metaheuristics, called AMAM. In...
In this paper, we foresee the use of Multi-Agent Systems for supporting dynamic and distributed sch...
Metaheuristics performance is highly dependent of the respective parameters which need to be tuned. ...
Multi-machine scheduling, that is, the assigment of jobs to machines such that certain performance d...
Intelligent optimisation refers to the promising technique of integrating learning mechanisms into (...
International audienceIn this work, we present an agent-based approach to multi-criteria combinatori...
Decentralized decision-making is an active research topic in artificial intelligence. In a distribut...
Coordinating agents to complete a set of tasks with intercoupled temporal and resource constraints i...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
The paper presents an adaptive iterative distributed scheduling algorithm that operates dynamically ...
Sophisticated agents operating in open environments must make complex real-time control decisions on...
Abstract. In complexity theory, scheduling problem is considered as a NP-complete combinatorial opti...
A novel agent-based approach to Meta-Heuristics self-configuration is proposed in this work. Meta-h...
This paper addresses the problem of Biological Inspired Optimization Techniques (BIT) parameterizat...
This paper proposes a novel agent-based approach to Meta-Heuristics self-configuration. Meta-heurist...
This article presents a multi-agent framework for optimization using metaheuristics, called AMAM. In...
In this paper, we foresee the use of Multi-Agent Systems for supporting dynamic and distributed sch...
Metaheuristics performance is highly dependent of the respective parameters which need to be tuned. ...
Multi-machine scheduling, that is, the assigment of jobs to machines such that certain performance d...
Intelligent optimisation refers to the promising technique of integrating learning mechanisms into (...
International audienceIn this work, we present an agent-based approach to multi-criteria combinatori...
Decentralized decision-making is an active research topic in artificial intelligence. In a distribut...
Coordinating agents to complete a set of tasks with intercoupled temporal and resource constraints i...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
The paper presents an adaptive iterative distributed scheduling algorithm that operates dynamically ...
Sophisticated agents operating in open environments must make complex real-time control decisions on...