, High-performance storage architecture and scalable cluster file system, Sun Microsystems, Inc, Tech. Rep, 2007.

B. Welch, M. Unangst, Z. Abbasi, G. Gibson, B. Mueller et al., Scalable performance of the panasas parallel file system, Proceedings..., ser. FAST'08, USENIX Conf. on File and Storage Technologies. USENIX Association, vol.2, pp.1-2, 2008.

N. Ali, P. Carns, K. Iskra, D. Kimpe, S. Lang et al., Scalable I/O Forwarding Framework for High-Performance Computing Systems, IEEE International Conference on Cluster Computing and Workshops, pp.1-10, 2009.

V. Vishwanath, M. Hereld, K. Iskra, D. Kimpe, V. Morozov et al., Accelerating I/O forwarding in IBM blue gene/p systems, ACM/IEEE International Conference for High Performance Computing, Networking, Storage and Analysis, pp.1-10, 2010.

G. Almási, R. Bellofatto, J. Brunheroto, C. Cas¸cavalcas¸caval, J. G. Castanos et al., An overview of the Blue Gene/L system software organization, Proceedings..., Euro-Par, pp.543-555, 2003.

W. Xu, Y. Lu, Q. Li, E. Zhou, Z. Song et al., Hybrid hierarchy storage system in MilkyWay-2 supercomputer, Frontiers of Computer Science, vol.8, issue.3, pp.367-377, 2014.

C. Zimmer, S. Gupta, and V. G. Larrea, Finally, A Way to Measure Frontend I/O Performance

Q. Prabhat and . Koziol, High Performance Parallel I, 2014.

K. Ohta, D. Kimpe, J. Cope, K. Iskra, R. Ross et al., Optimization Techniques at the I/O Forwarding Layer, Proceedings... International Conference on Cluster Computing, pp.312-321, 2010.

F. Z. Boito, R. V. Kassick, P. O. Navaux, and Y. Denneulin, Automatic I/O scheduling algorithm selection for parallel file systems, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01247942

J. L. Bez, F. Z. Boito, L. M. Schnorr, P. O. Navaux, and J. Méhaut, TWINS: Server Access Coordination in the I/O Forwarding Layer, 2017 25th Euromicro International Conference on Parallel, Distributed and Network-based Processing, pp.116-123, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01515047

R. S. Sutton and A. G. Barto, Reinforcement Learning: An Introduction, 2017.

P. Carns, K. Harms, W. Allcock, C. Bacon, S. Lang et al., Understanding and Improving Computational Science Storage Access Through Continuous Characterization, Trans. Storage, vol.7, issue.3, pp.1-8, 2011.

R. L. Walko and R. Avissar, The Ocean-Land-Atmosphere Model (OLAM). Part I: Shallow-Water Tests, Monthly Weather Review, vol.136, issue.11, pp.4033-4044, 2008.

P. H. Carns, ALCF I/O Data Repository, 2013.

Y. Liu, R. Gunasekaran, X. Ma, and S. S. Vazhkudai, Server-side log data analytics for i/o workload characterization and coordination on large shared storage systems, High Performance Computing, Networking, Storage and Analysis, SC16: International Conference for, pp.819-829, 2016.

D. A. Berry and B. Fristedt, Bandit problems: sequential allocation of experiments (monographs on statistics and applied probability), vol.5, pp.71-87, 1985.

C. Spearman, The Proof and Measurement of Association between Two Things, The American Journal of Psychology, vol.15, issue.1, pp.72-101, 1904.

F. Chollet, Keras, 2015.

M. Abadi, TensorFlow: Large-scale machine learning on heterogeneous systems, 2015.

I. Yeo and R. A. Johnson, A New Family of Power Transformations to Improve Normality or Symmetry, Biometrika, vol.87, issue.4, pp.954-959, 2000.

G. E. Box and D. R. Cox, An analysis of transformations, Journal of the Royal Statistical Society, pp.211-252, 1964.

R. Hahnloser, R. Sarpeshkar, M. A. Mahowald, R. Douglas, H. Sebastian et al., Digital selection and analogue amplification coexist in a cortex-inspired silicon circuit, Nature, vol.405, pp.947-51, 2000.

R. Bolze, Grid5000: A large scale and highly reconfigurable experimental grid testbed, International Journal of High Performance Computing Applications, vol.20, issue.4, pp.481-494, 2006.
URL : https://hal.archives-ouvertes.fr/hal-00684943

, MPI-IO Test Bechmark, 2008.

V. Vishwanath, M. Hereld, V. Morozov, and M. E. Papka, Topologyaware data movement and staging for I/O acceleration on blue gene/p supercomputing systems, Proceedings..., ser. SC '11, 2011 International Conference for High Performance Computing, Networking, Storage and Analysis, vol.19, p.11, 2011.

F. Isaila, J. Garcia-blas, J. Carretero, R. Latham, and R. Ross, Design and evaluation of multiple-level data staging for blue gene systems, IEEE Transactions on, vol.22, issue.6, pp.946-959, 2011.

Y. Liu, R. Gunasekaran, X. Ma, and S. S. Vazhkudai, Automatic Identification of Application I/O Signatures from Noisy Server-Side Traces, FAST'14 Proceedings of 12th USENIX conference on File and Storage Technologies. USENIX Association, pp.213-228, 2014.

M. Dorier, S. Ibrahim, G. Antoniu, and R. Ross, Omnisc'IO: a grammar-based approach to spatial and temporal I/O patterns prediction, Proceedings of the International Conference for High Performance Computing, Networking, Storage and Analysis, pp.623-634, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01025670

H. Tang, X. Zou, J. Jenkins, D. A. Boyuka, I. I. et al., Improving Read Performance with Online Access Pattern Analysis and Prefetching, Euro-Par 2014Parallel Processing, pp.246-257, 2014.

B. Dong, X. Li, Q. Wu, L. Xiao, and L. Ruan, A dynamic and adaptive load balancing strategy for parallel file system with large-scale I/O servers, Journal of Parallel and Distributed Computing, vol.72, issue.10, pp.1254-1268, 2012.

B. Behzad, H. V. Luu, J. Huchette, S. Byna, R. Aydt et al., Taming parallel I/O complexity with auto-tuning, Proceedings..., ser. SC '13, pp.1-12, 2013.

R. Mclay, D. James, S. Liu, J. Cazes, and W. Barth, A user-friendly approach for tuning parallel file operations, Proceedings..., ser. SC '14, pp.229-236, 2014.

F. Isaila, J. Carretero, and R. Ross, CLARISSE: A middleware for data-staging coordination and control on large-scale HPC platforms, 2016 16th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing (CCGrid), pp.346-355, 2016.

R. Nou, J. Giralt, and T. Cortes, Automatic I/O scheduler selection through online workload analysis, 9th International Conference on Ubiquitous Intelligence and Computing and 9th International Conference on Autonomic and Trusted Computing, pp.431-438, 2012.

Y. Li, O. Bel, K. Chang, E. L. Miller, and D. D. Long, Capes: Unsupervised storage performance tuning using neural network-based deep reinforcement learning, 2017.