I/O is emerging as a major bottleneck for machine learning training, especially in distributed environments. Indeed, at large scale, I/O takes as much as 85% of training time. Addressing this I/O bottleneck necessitates careful optimization, as optimal data ingestion pipelines differ between systems, and require a delicate balance between access to local storage, external filesystems, and remote nodes. We introduce NoPFS, a machine learning I/O middleware, which provides a scalable, flexible, and easy-To-use solution to the I/O bottleneck. NoPFS uses clairvoyance: Given the seed generating the random access pattern for training with SGD, it can exactly predict when and where a sample will be accessed. We combine this with an analysis of acc...
The prosperity of Big Data owes to the advances in distributed computing systems, which make it poss...
Large scale machine learning has many characteristics that can be exploited in the system designs to...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
International audienceThe training of deep neural network models on large data remains a difficult p...
International audienceThe resource-hungry and time-consuming process of training Deep Neural Network...
Many scientific applications have started using deep learning methods for their classification or re...
Machine learning (ML) has become a powerful building block for modern services, scientific endeavors...
<p>Applications for Internet-enabled devices use machine learning to process captured data to make i...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
Deep Neural Networks (DNNs) enable computers to excel across many different applications such as ima...
Deep Learning, specifically Deep Neural Networks (DNNs), is stressing storage systems in new...
Nowadays, Deep Learning (DL) applications have become a necessary solution for analyzing and making ...
Machine learning approaches have been widely adopted in recent years due to their capability of lear...
The distributed training of deep learning models faces two issues: efficiency and privacy. First of ...
The prosperity of Big Data owes to the advances in distributed computing systems, which make it poss...
Large scale machine learning has many characteristics that can be exploited in the system designs to...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
International audienceThe training of deep neural network models on large data remains a difficult p...
International audienceThe resource-hungry and time-consuming process of training Deep Neural Network...
Many scientific applications have started using deep learning methods for their classification or re...
Machine learning (ML) has become a powerful building block for modern services, scientific endeavors...
<p>Applications for Internet-enabled devices use machine learning to process captured data to make i...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
Deep Neural Networks (DNNs) enable computers to excel across many different applications such as ima...
Deep Learning, specifically Deep Neural Networks (DNNs), is stressing storage systems in new...
Nowadays, Deep Learning (DL) applications have become a necessary solution for analyzing and making ...
Machine learning approaches have been widely adopted in recent years due to their capability of lear...
The distributed training of deep learning models faces two issues: efficiency and privacy. First of ...
The prosperity of Big Data owes to the advances in distributed computing systems, which make it poss...
Large scale machine learning has many characteristics that can be exploited in the system designs to...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...