International audienceTraining Deep Learning (DL) models require adjusting a series of hyperparameters. Although there are several tools to automatically choose the best hyperparameter configuration, the user is still the main actor to take the final decision. To decide whether the training should continue or try different configurations, the user needs to analyze online the hyperparameters most adequate to the training dataset, observing metrics such as accuracy and loss values. Provenance naturally represents data derivation relationships (i.e., transformations, parameter values, etc.), which provide important support in this data analysis. Most of the existing provenance solutions define their own and proprietary data representations to ...
The performance of optimizers, particularly in deep learning, depends considerably on their chosen h...
Deep Neural Networks have advanced rapidly over the past several years. However, it still seems like...
We propose a novel approach to ranking Deep Learning (DL) hyper-parameters through the application o...
International audienceTraining Deep Learning (DL) models require adjusting a series of hyperparamete...
International audienceThe duration of the life cycle in deep neural networks (DNN) depends on the da...
Deep learning is proving to be a useful tool in solving problems from various domains. Despite a ric...
Hyperparameter tuning represents one of the main challenges in deep learning-based profiling side-ch...
Machine learning models can learn to recognize subtle patterns in complex data, making them useful i...
International audienceHyperparameter learning has traditionally been a manual task because of the li...
Hyperparameter tuning is an integral part of deep learning research. Finding hyperparameter values t...
While machine learning model parameters can be learned from a set of training data, training machine...
International audienceEXTENDED ABSTRACT In typical large-scale scientific applications, several para...
Machine learning models can learn to recognize subtle patterns in complex data, making them useful i...
Hyperparameters of Deep Learning (DL) pipelines are crucial for their downstream performance. While ...
The number of Internet of Things devices generating data streams is expected to grow exponentially w...
The performance of optimizers, particularly in deep learning, depends considerably on their chosen h...
Deep Neural Networks have advanced rapidly over the past several years. However, it still seems like...
We propose a novel approach to ranking Deep Learning (DL) hyper-parameters through the application o...
International audienceTraining Deep Learning (DL) models require adjusting a series of hyperparamete...
International audienceThe duration of the life cycle in deep neural networks (DNN) depends on the da...
Deep learning is proving to be a useful tool in solving problems from various domains. Despite a ric...
Hyperparameter tuning represents one of the main challenges in deep learning-based profiling side-ch...
Machine learning models can learn to recognize subtle patterns in complex data, making them useful i...
International audienceHyperparameter learning has traditionally been a manual task because of the li...
Hyperparameter tuning is an integral part of deep learning research. Finding hyperparameter values t...
While machine learning model parameters can be learned from a set of training data, training machine...
International audienceEXTENDED ABSTRACT In typical large-scale scientific applications, several para...
Machine learning models can learn to recognize subtle patterns in complex data, making them useful i...
Hyperparameters of Deep Learning (DL) pipelines are crucial for their downstream performance. While ...
The number of Internet of Things devices generating data streams is expected to grow exponentially w...
The performance of optimizers, particularly in deep learning, depends considerably on their chosen h...
Deep Neural Networks have advanced rapidly over the past several years. However, it still seems like...
We propose a novel approach to ranking Deep Learning (DL) hyper-parameters through the application o...