M. Asch and T. Moore, Big data and extreme-scale computing: Pathways to Convergence-Toward a shaping strategy for a future software and data ecosystem for scientific inquiry, The International Journal of High Performance Computing Applications, vol.32, pp.435-479, 2018.

A. Avati, K. Jung, S. Harman, L. Downing, A. Y. Ng et al., Improving Palliative Care with Deep Learning, 2017.

K. Bonawitz, H. Eichner, W. Grieskamp, D. Huba, A. Ingerman et al., Towards Federated Learning at Scale: System Design, 2019.

G. Henao, J. A. Precioso, F. Staccini, P. Riveill, and M. , Parallel and Distributed Processing for Unsupervised Patient Phenotype Representation, Latin America High Performance Computing Conference, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01885364

Z. Jia, M. Zaharia, and A. Aiken, Beyond Data and Model Parallelism for Deep Neural Networks, 2018.

J. Jiang, L. Yu, J. Jiang, Y. Liu, and B. Cui, Angel: a new large-scale machine learning system, National Science Review, vol.5, issue.2, pp.216-236, 2017.

,

J. A. Garcia, H. , and E. H. , enerGyPU and enerGyPhi Monitor for Power Consumption and Performance Evaluation on Nvidia Tesla GPU and Intel Xeon Phi, 2016.

D. P. Kingma and J. Ba, Adam: A Method for Stochastic Optimization, 2014.

J. Konecný, H. B. Mcmahan, F. X. Yu, P. Richtárik, A. T. Suresh et al., Federated Learning: Strategies for Improving Communication Efficiency, 2016.

H. Maharlou, S. R. Niakan-kalhori, S. Shahbazi, and R. Ravangard, Predicting Length of Stay in Intensive Care Units after Cardiac Surgery: Comparison of Artificial Neural Networks and Adaptive Neuro-fuzzy System, Healthcare informatics research, vol.24, issue.2, pp.109-117, 2018.

P. Rajpurkar, A. Hannun, M. Haghpanahi, C. Bourn, Y. Ng et al., Cardiologist-Level Arrhythmia Detection with Convolutional Neural Networks, 2017.

E. Strubell, A. Ganesh, and A. Mccallum, Energy and Policy Considerations for Deep Learning in NLP, 2019.

E. P. Xing, Q. Ho, W. Dai, J. K. Kim, J. Wei et al., Petuum: A New Platform for Distributed Machine Learning on Big Data, IEEE Transactions on Big Data, vol.1, issue.2, pp.49-67, 2015.

Y. Chengyin, W. Oliver, L. Modi, Z. Le, X. Minjie et al., A Real-Time Early Warning System for Monitoring Inpatient Mortality Risk: Prospective Study Using Electronic Medical Record Data, Journal of medical Internet research, vol.21, issue.7, pp.13719-13719, 2019.