Search Results for author: Serge G. Petiton

Found 6 papers, 0 papers with code

An efficient and flexible inference system for serving heterogeneous ensembles of deep neural networks

no code implementations30 Aug 2022 Pierrick Pochelu, Serge G. Petiton, Bruno Conche

Experiments show the flexibility and efficiency under extreme scenarios: It successes to serve an ensemble of 12 heavy DNNs into 4 GPUs and at the opposite, one single DNN multi-threaded into 16 GPUs.

Image Classification

A Deep Neural Networks ensemble workflow from hyperparameter search to inference leveraging GPU clusters

no code implementations30 Aug 2022 Pierrick Pochelu, Serge G. Petiton, Bruno Conche

Finally, we propose a novel algorithm to optimize the inference of the DNNs ensemble in a GPU cluster based on allocation optimization.

AutoML

AutoML to generate ensembles of deep neural networks

no code implementations29 Sep 2021 Pierrick Pochelu, Serge G. Petiton, Bruno Conche

Automated Machine Learning with ensembling seeks to automatically build ensembles of Deep Neural Networks (DNNs) to achieve qualitative predictions.

AutoML BIG-bench Machine Learning

Recycling sub-optimial Hyperparameter Optimization models to generate efficient Ensemble Deep Learning

no code implementations1 Jan 2021 Pierrick Pochelu, Bruno Conche, Serge G. Petiton

Due to the lack of consensus to design a successful deep learning ensemble, we introduce Hyperband-Dijkstra, a new workflow that automatically explores neural network designs with Hyperband and efficiently combines them with Dijkstra's algorithm.

Hyperparameter Optimization

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