ICTAI 2016: 28th International Conference on Tools with Artificial Intelligence, San Jose, California, USA, 6-8 November 2016In cloud systems, computation time can be rented by the hour and for a given number of processors. Thus, accurate predictions of the behaviour of both sequential and parallel algorithms has become an important issue, in particular in the case of costly methods such as randomized combinatorial optimization tools. In this work, our objective is to use machine learning algorithms to predict performance of sequential and parallel local search algorithms. In addition to classical features of the instances used by other machine learning tools, we consider data on the sequential runtime distributions of a local search method...
We are at the beginning of the multicore era. Computers will have increasingly many cores (processor...
The technique of randomization has been employed to solve numerous prob lems of computing both sequ...
Perhaps surprisingly, it is possible to predict how long an algorithm will take to run on a previous...
In cloud systems, computation time can be rented by the hour and for a given number of processors. T...
Abstract. Machine learning can be utilized to build models that predict the runtime of search algori...
International audienceThis paper presents a detailed analysis of the scalability and parallelization...
International audienceThis paper presents a detailed analysis of the scalability and par-allelizatio...
Abstract. In this paper we discuss methods for predicting the performance of any formulation of rand...
International audienceWe propose a probabilistic model for the parallel execution of Las Vegas algor...
We propose a probabilistic model for the parallel execution of Las Vegas algorithms, i.e., randomize...
Exploiting run time distributions to compare sequential and parallel stochastic local search algorit...
Abstract. Run time distributions or time-to-target plots are very useful tools to characterize the r...
AbstractWe introduce the notion of expected hitting time to a goal as a measure of the convergence r...
Abstract. In view of the increasing importance of hardware parallelism, a natural extension of per-i...
International audienceLocal Search metaheuristics are a recognized means of solving hard combinatori...
We are at the beginning of the multicore era. Computers will have increasingly many cores (processor...
The technique of randomization has been employed to solve numerous prob lems of computing both sequ...
Perhaps surprisingly, it is possible to predict how long an algorithm will take to run on a previous...
In cloud systems, computation time can be rented by the hour and for a given number of processors. T...
Abstract. Machine learning can be utilized to build models that predict the runtime of search algori...
International audienceThis paper presents a detailed analysis of the scalability and parallelization...
International audienceThis paper presents a detailed analysis of the scalability and par-allelizatio...
Abstract. In this paper we discuss methods for predicting the performance of any formulation of rand...
International audienceWe propose a probabilistic model for the parallel execution of Las Vegas algor...
We propose a probabilistic model for the parallel execution of Las Vegas algorithms, i.e., randomize...
Exploiting run time distributions to compare sequential and parallel stochastic local search algorit...
Abstract. Run time distributions or time-to-target plots are very useful tools to characterize the r...
AbstractWe introduce the notion of expected hitting time to a goal as a measure of the convergence r...
Abstract. In view of the increasing importance of hardware parallelism, a natural extension of per-i...
International audienceLocal Search metaheuristics are a recognized means of solving hard combinatori...
We are at the beginning of the multicore era. Computers will have increasingly many cores (processor...
The technique of randomization has been employed to solve numerous prob lems of computing both sequ...
Perhaps surprisingly, it is possible to predict how long an algorithm will take to run on a previous...