International audienceWe propose a probabilistic model for the parallel execution of Las Vegas algorithms, i.e. randomized algorithms whose runtime might vary from one execution to another, even with the same input. This model aims at predicting the parallel performances (i.e. speedups) by analysis the runtime distribution of the sequential runs of the algorithm. Then, we study in practice the case of a particular Las Vegas algorithm for combinatorial optimization on three classical problems, and compare the model with an actual parallel implementation up to 256 cores. We show that the prediction can be accurate, matching the actual speedups very well up to 100 parallel cores and then with a deviation of about 20% up to 256 cores
International audienceThis paper presents a detailed analysis of the scalability and parallelization...
Probabilistic algorithms are computationally intensive approximate methods for solving intractable p...
International audienceWe provide a parallelization with and without shared-memory for Bandit-Based M...
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...
In cloud systems, computation time can be rented by the hour and for a given number of processors. T...
ICTAI 2016: 28th International Conference on Tools with Artificial Intelligence, San Jose, Californi...
International audienceThis paper presents a detailed analysis of the scalability and par-allelizatio...
AbstractWe introduce the notion of expected hitting time to a goal as a measure of the convergence r...
We introduce the notion of expected hitting time to a goal as a measure of the con- vergence rate o...
The effective use of computational resources requires a good understanding of parallel architectures...
International audienceWe address the parallelization of a Monte-Carlo search algorithm. On a cluster...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
Deliverable no. 2.1.1-BThe sequential sampling strategies based on Gaussian processes are widely use...
We advocate a new methodology for empirically analysing the behaviour of Las Vegas Algorithms, a lar...
International audienceThis paper presents a detailed analysis of the scalability and parallelization...
Probabilistic algorithms are computationally intensive approximate methods for solving intractable p...
International audienceWe provide a parallelization with and without shared-memory for Bandit-Based M...
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...
In cloud systems, computation time can be rented by the hour and for a given number of processors. T...
ICTAI 2016: 28th International Conference on Tools with Artificial Intelligence, San Jose, Californi...
International audienceThis paper presents a detailed analysis of the scalability and par-allelizatio...
AbstractWe introduce the notion of expected hitting time to a goal as a measure of the convergence r...
We introduce the notion of expected hitting time to a goal as a measure of the con- vergence rate o...
The effective use of computational resources requires a good understanding of parallel architectures...
International audienceWe address the parallelization of a Monte-Carlo search algorithm. On a cluster...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
Deliverable no. 2.1.1-BThe sequential sampling strategies based on Gaussian processes are widely use...
We advocate a new methodology for empirically analysing the behaviour of Las Vegas Algorithms, a lar...
International audienceThis paper presents a detailed analysis of the scalability and parallelization...
Probabilistic algorithms are computationally intensive approximate methods for solving intractable p...
International audienceWe provide a parallelization with and without shared-memory for Bandit-Based M...