, 8 surprising facts about real docker adoption, 2016.

N. Agrawal, A. C. Arpaci-dusseau, and R. H. Arpaci-dusseau, Towards realistic file-system benchmarks with codemri, vol.36, pp.52-57, 2008.

S. Ahn, K. La, and J. Kim, Improving i/o resource sharing of linux cgroup for nvme ssds on multi-core systems, 8th USENIX Workshop on Hot Topics in Storage and File Systems, 2016.

B. Allen, Smartmontools project, 2018.

E. Alpaydin, Introduction to machine learning, 2014.

J. Axboe, Fio-flexible io tester, 2014.

F. Bellard and M. Niedermayer, , 2012.

C. Bienia, S. Kumar, J. P. Singh, and K. Li, The parsec benchmark suite: Characterization and architectural implications, Proceedings of the 17th International Conference on Parallel Architectures and Compilation Techniques, PACT '08, pp.72-81, 2008.

S. Boboila, Analysis, Modeling and Design of Flash-based Solid-state Drives, 2012.

J. Boukhobza and P. Olivier, Flash Memory Integration: Performance and Energy Issues, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01557987

A. Brazell, , vol.726, 2011.

L. Breiman, Random forests. Machine learning, vol.45, pp.5-32, 2001.

L. Breiman, J. Friedman, C. J. Stone, and R. A. Olshen, Classification and Regression Trees, 1984.

L. Breiman and P. Spector, Submodel Selection and Evaluation in Regression. The X-Random Case, International Statistical Review, vol.60, issue.3, pp.291-319, 1992.

J. S. Bucy, J. Schindler, S. W. Schlosser, and G. R. Ganger, The disksim simulation environment version 4.0 reference manual (cmu-pdl-08-101), PDL, p.26, 2008.

T. Chen and C. Guestrin, Xgboost: A scalable tree boosting system, Proceedings of the 22Nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD '16, pp.785-794, 2016.

M. Dorier, G. Antoniu, R. Ross, D. Kimpe, and S. Ibrahim, Calciom: Mitigating i/o interference in hpc systems through crossapplication coordination, 2014 IEEE 28th International Parallel and Distributed Processing Symposium, pp.155-164, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00916091

H. Drucker, Improving regressors using boosting techniques, ICML, vol.97, pp.107-115, 1997.

E. H. Spanjer, Survey update: Users share their 2017 storage performance needs, 2017.

W. Felter, A. Ferreira, R. Rajamony, and J. Rubio, An updated performance comparison of virtual machines and linux containers, IEEE International Symposium on Performance Analysis of Systems and Software (ISPASS), pp.171-172, 2015.

M. Feurer, A. Klein, K. Eggensperger, J. Springenberg, M. Blum et al., Efficient and robust automated machine learning, Advances in Neural Information Processing Systems, pp.2962-2970, 2015.

A. Fielding and C. O'muircheartaigh, Binary segmentation in survey analysis with particular reference to aid, The Statistician, pp.17-28, 1977.

Y. Freund and R. E. Schapire, A decision-theoretic generalization of on-line learning and an application to boosting, J. Comput. Syst. Sci, vol.55, issue.1, 1997.

J. Friedman, T. Hastie, and R. Tibshirani, Additive logistic regression: a statistical view of boosting (with discussion and a rejoinder by the authors). The annals of statistics, vol.28, pp.337-407, 2000.

J. H. Friedman, Greedy function approximation: a gradient boosting machine, Annals of statistics, pp.1189-1232, 2001.

J. H. Friedman, Multivariate adaptive regression splines. The annals of statistics, vol.19, pp.1-67, 1991.

T. H. Friedman, The Elements of Statistical Learning, Springer Series in Statistics, 2013.

E. Gal and S. Toledo, Algorithms and data structures for flash memories, CSUR, ACM, vol.37, pp.138-163, 2005.

A. Gordon, N. Amit, N. Har'el, M. Ben-yehuda, A. Landau et al., Eli: bare-metal performance for i/o virtualization, SIGPLAN, ACM, vol.47, pp.411-422, 2012.

L. M. Grupp, J. D. Davis, and S. Swanson, The harey tortoise: Managing heterogeneous write performance in ssds, Presented as part of the 2013 USENIX Annual Technical Conference (USENIX ATC 13), pp.79-90, 2013.

P. Han, X. Zhang, R. S. Norton, and Z. Feng, Large-scale prediction of long disordered regions in proteins using random forests, BMC bioinformatics, vol.10, issue.1, p.1, 2009.

T. Hastie, S. Rosset, R. Tibshirani, and J. Zhu, The entire regularization path for the support vector machine, JMLR, vol.5, pp.1391-1415, 2004.

K. Hightower, B. Burns, and J. Beda, Kubernetes: Up and running dive into the future of infrastructure, 2017.

H. H. Huang, S. Li, A. S. Szalay, and A. Terzis, Performance modeling and analysis of flash-based storage devices, MSST, IEEE, pp.1-11, 2011.

B. Jacob, R. Lanyon-hogg, D. K. Nadgir, and A. F. Yassin, A practical guide to the ibm autonomic computing toolkit, IBM Redbooks, vol.4, issue.10, 2004.

M. Jung, W. Choi, S. Srikantaiah, J. Yoo, and M. T. Kandemir, Hios: A host interface i/o scheduler for solid state disks, SIGARCH, ACM, vol.42, pp.289-300, 2014.

J. Kim, D. Lee, and S. H. Noh, Towards SLO complying ssds through OPS isolation, 13th USENIX Conference on File and Storage Technologies (FAST 15), pp.183-189, 2015.

Y. Kim, B. Tauras, A. Gupta, and B. Urgaonkar, Flashsim: A simulator for nand flash-based solid-state drives, SIMUL, pp.125-131, 2009.

A. Klimovic, H. Litz, and C. Kozyrakis, Reflex: Remote flash ≈ local flash, Proceedings of the Twenty-Second International Conference on Architectural Support for Programming Languages and Operating Systems, ASPLOS '17, pp.345-359, 2017.

R. Kohavi, A study of cross-validation and bootstrap for accuracy estimation and model selection, Proceedings of the 14th International Joint Conference on Artificial Intelligence, vol.2, pp.1137-1143, 1995.

A. Kougkas, M. Dorier, R. Latham, R. Ross, and X. H. Sun, Leveraging burst buffer coordination to prevent i/o interference, 2016 IEEE 12th International Conference on e-Science (e-Science), pp.371-380, 2016.

S. Marston, Z. Li, S. Bandyopadhyay, J. Zhang, and A. Ghalsasi, Cloud computingâ??the business perspective. Decision support systems, vol.51, pp.176-189, 2011.

M. Maurer, I. Brandic, and R. Sakellariou, Self-adaptive and resource-efficient sla enactment for cloud computing infrastructures, IEEE 5th International Conference on, pp.368-375, 2012.

P. Menage, Cgroup online documentation, 2016.

D. Merkel, Docker: lightweight linux containers for consistent development and deployment, Linux Journal, issue.239, 2014.

J. N. Morgan, R. C. Messenger, and A. Thaid, A sequential analysis program for the analysis of nominal scale dependent variables, 1973.

A. Mysql and . Mysql, , 2001.

Q. Noorshams, A. Busch, A. Rentschler, D. Bruhn, S. Kounev et al., Automated modeling of i/o performance and interference effects in virtualized storage systems, 2014 IEEE 34th International Conference on Distributed Computing Systems Workshops (ICDCSW), pp.88-93, 2014.

H. Ouarnoughi, Placement autonomique de machines virtuelles sur un système de stockage hybride dans un cloud IaaS, 2017.

H. Ouarnoughi, J. Boukhobza, F. Singhoff, and S. Rubini, A multi-level I/O tracer for timing and performance storage systems in iaas cloud, 3rd IEEE International Workshop on Real-time and distributed computing in emerging applications, 2014.

E. Outin, J. Dartois, O. Barais, and J. Pazat, Enhancing cloud energy models for optimizing datacenters efficiency, Cloud and Autonomic Computing (ICCAC), 2015 International Conference on, pp.93-100, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01243146

F. Pedregosa, G. Varoquaux, A. Gramfort, V. Michel, B. Thirion et al., Scikit-learn: Machine learning in python, Journal of Machine Learning Research, vol.12, pp.2825-2830, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00650905

B. Pierce, What's the difference between sata and nvme? Electronic Design White Paper Library, 2012.

X. Pu, L. Liu, Y. Mei, S. Sivathanu, Y. Koh et al., Understanding performance interference of i/o workload in virtualized cloud environments, 2010 IEEE 3rd International Conference on Cloud Computing, pp.51-58, 2010.

W. Reese, Nginx: the high-performance web server and reverse proxy, Linux Journal, issue.173, 2008.

K. Ren and G. Gibson, TABLEFS: Enhancing metadata efficiency in the local file system, Presented as part of the 2013 USENIX Annual Technical Conference (USENIX ATC 13), pp.145-156, 2013.

C. Ruemmler and J. Wilkes, An introduction to disk drive modeling, Computer, vol.27, issue.3, pp.17-28, 1994.

I. Sã-nudo, R. Cavicchioli, N. Capodieci, P. Valente, and M. Bertogna, A survey on shared disk i/o management in virtualized environments under real time constraints, SIGBED Rev, vol.15, issue.1, pp.57-63, 2018.

R. E. Schapire, The boosting approach to machine learning: An overview, Nonlinear estimation and classification, pp.149-171, 2003.

J. Shafer, I/o virtualization bottlenecks in cloud computing today, Proceedings of the 2Nd Conference on I/O Virtualization, WIOV'10, pp.5-5, 2010.

E. Shriver, A. Merchant, and J. Wilkes, An analytic behavior model for disk drives with readahead caches and request reordering, Proceedings of the 1998 ACM SIGMETRICS Joint International Conference on Measurement and Modeling of Computer Systems, SIGMETRICS '98/PERFORMANCE '98, pp.182-191, 1998.
DOI : 10.1145/277851.277906

S. Soltesz, H. , M. E. Fiuczynski, A. Bavier, and L. Peterson,

, highperformance alternative to hypervisors, Proceedings of the 2Nd ACM SIGOPS/EuroSys European Conference on Computer Systems 2007, EuroSys '07, pp.275-287, 2007.

G. Soundararajan and C. Amza, Towards end-to-end quality of service: Controlling i/o interference in shared storage servers, Middleware 2008: ACM/IFIP/USENIX 9th International Middleware Conference Leuven, pp.287-305, 2008.

R. M. Stallman, Using the gnu compiler collection. Free Software Foundation, vol.4, 2003.

V. Tarasov, E. Zadok, and S. Shepler, Filebench: A flexible framework for file system benchmarking. The USENIX Magazine, vol.41, 2016.

J. Thatcher, E. Kim, D. Landsman, and M. Fausset, Solid state storage (sss) performance test specification (pts) enterprise version 1.1, 2013.

A. Traeger, E. Zadok, N. Joukov, and C. P. Wright, A nine year study of file system and storage benchmarking, Trans. Storage, vol.4, issue.2, 2008.

J. V. Tu, Advantages and disadvantages of using artificial neural networks versus logistic regression for predicting medical outcomes, J. Clin. Epidemiol, vol.49, issue.11, pp.1225-1231, 1996.
DOI : 10.1016/s0895-4356(96)00002-9

M. Wang, K. Au, A. Ailamaki, A. Brockwell, C. Faloutsos et al., Storage device performance prediction with cart models, Proceedings. The IEEE Computer Society's 12th Annual International Symposium on, pp.588-595, 2004.

M. G. Xavier, M. V. Neves, F. D. Rossi, T. C. Ferrerzto, T. Lange et al., Performance evaluation of container-based virtualization for high performance computing environments, 21st Euromicro International Conference on Parallel, Distributed, and Network-Based Processing, pp.233-240, 2013.

M. G. Xavier, I. C. Oliveira, F. D. Rossi, R. D. Passos, K. J. Matteussi et al., A performance isolation analysis of disk-intensive workloads on container-based clouds, Proceedings of the 2015 23rd Euromicro International Conference on Parallel, Distributed, and Network-Based Processing, PDP '15, pp.253-260, 2015.

Z. Yang, H. Fang, Y. Wu, C. Li, B. Zhao et al., Understanding the effects of hypervisor i/o scheduling for virtual machine performance interference, 4th IEEE International Conference on Cloud Computing Technology and Science Proceedings, pp.34-41, 2012.

L. Yin, S. Uttamchandani, and R. Katz, An empirical exploration of black-box performance models for storage systems, 14th IEEE International Symposium on Modeling, Analysis, and Simulation, pp.433-440, 2006.

B. Zhang, X. Wang, R. Lai, L. Yang, Y. Luo et al., A survey on i/o virtualization and optimization, 2010 Fifth Annual ChinaGrid Conference, pp.117-123, 2010.
DOI : 10.1109/chinagrid.2010.54

J. Zhu, H. Zou, S. Rosset, and T. Hastie, Multi-class adaboost, Statistics and its Interface, vol.2, pp.349-360, 2009.