.. .. Projet,

. .. Défis, , p.16

B. Rürup, Protection sociale : problèmes et défis, Les réformes de la protection sociale en Allemagne, pp.9-25

.. .. Overall,

, Figure 5: Box plots of each factor between non-bleached and bleached colonies of massive Porites.

S. T. Horsfall, Problems Addressed through Government Programs, Social Problems, pp.101-136, 2018.

. .. Service-models, 43 2.4 hardware-level virtualization (left) vs. operating system-level virtualization (right)

M. Paolino, S. Pinneterre, and D. Raho, FPGA virtualization with accelerators overcommitment for network function virtualization, 2017 International Conference on ReConFigurable Computing and FPGAs (ReConFig), p.47, 2017.

R. Management and .. .. , Waste and Resource Management: Referees 2013, Proceedings of the Institution of Civil Engineers - Waste and Resource Management, vol.167, issue.1, pp.48-48, 2014.

.. .. Mape-k-management, MAPE, Encyclopedia of Production and Manufacturing Management, pp.445-445

. .. Architectural-overview-of-openstack, , p.52

. .. Architectural-overview-of-kubernetes, Getting Started with Modeling, Foundation 3ds Max 8 Architectural Visualization, pp.59-71

. .. , Three Approaches to Handwriting Problems, Handwriting Problems in the Secondary School, pp.68-69

. .. , Problem 1 (Real system capacity estimation), p.69

H. Robbins, An empirical Bayes estimation problem, Herbert Robbins Selected Papers, pp.72-73, 1985.

. .. , Ephemeral-aware applications adaptation, p.76

. .. , Problem 4 (Malicious farmers prevention), p.78

.. .. Phd-overview,

. .. Ssds, , p.89

. .. I/o-interference-of-mixed-workloads, , p.90

. .. Mape-k, MAPE

.. .. Overall-approach,

, Figure 29: Box plot for each performance metric., p.101

, Table 2: The number of training and testing samples for all the datasets used.

.. .. Feature-importance, The Importance of Feature Selection, Computational Intelligence and Feature Selection, pp.1-11

M. Hassan and M. Hamada, Performance Comparison of Feed-Forward Neural Networks Trained with Different Learning Algorithms for Recommender Systems, Computation, vol.5, issue.4, p.40, 2017.

C. Bikcora, L. Verheijen, and S. Weiland, Probabilistic short-term load forecasting with conditional mean-variance and quantile regression models, 2016 European Control Conference (ECC), p.111, 2016.

.. .. Overall-approach, Overall Approach, Uncertainty in Industrial Practice, pp.213-224

. .. , Cost of Equity for Private Companies, Private Company Valuation, p.121

.. .. Hadoop-architecture,

. .. Cuckoo, Regression-based execution time prediction in Hadoop environment, Information, Computer and Application Engineering, pp.623-627, 2018.

, Minimum wages are high in international comparison, 2018.

, Minimum wages are high in international comparison, 2018.

.. .. Overall, Overall Approach, Uncertainty in Industrial Practice, pp.213-224

, Microeconomic Models, The ABCs of Political Economy, pp.112-146

, Figure 2: 2D diagram of interaction between hesperetin and nsP1.

. .. , Table 6: Confusion matrix., p.152

. .. , Confusion matrix with heterogeneous hardware, p.153

. .. , Table 6: Confusion matrix., p.154

, Table 2: The number of training and testing samples for all the datasets used.

.. .. Architecture,

.. .. Perspectives, List of Figures and Tables

. .. , Hosts characteristics of private company 1, p.27

I. A. Muniz and J. B. Hurle, CAP MTR versus environmentally targeted agricultural policy in marginal arable areas: impact analysis combining simulation and survey data, Agricultural Economics, vol.34, issue.3, pp.303-313, 2006.

R. Makarewicz and M. Galuszka, Nonlinear uncertainty of the long term average level calculated from short term average sound levels, Noise Control Engineering Journal, vol.60, issue.6, pp.770-774, 2012.

J. Silver, Class struggles in Ghana's mining industry, Review of African Political Economy, vol.5, issue.12, pp.67-86, 1978.

T. Coenen, Modeling the impact of interference on wireless ad hoc network performance, p.72

. .. , 75 3.4 Summary of opportunistic mapreduce on ephemeral and heterogeneous Cloud resources

. .. , Summary of sabotage-tolerance mechanisms, p.80

. .. Applications, Figure 3: Utah teapot mesh used for benchmarks., p.94

D. W. Walls, National Establishment Time-Series Database©: Sample File 2006, SSRN Electronic Journal, p.95, 2007.

G. Chawla, M. S. Sachdev, and G. Ramakrishna, An improved ANN based admittance relay using pre-processed inputs, 2008 Annual IEEE India Conference, p.98, 2008.

. .. Measured-workload-characteristics, , p.101

, Discount Window, p.117

M. J. Carroll, Potential Cost Savings and Cost Avoidances Associated With Security Cooperation Training Programs, p.120, 2015.

(. Median, Table 3: Outcomes expressed as median and interquartile range (IQR) (Wilcoxon?Mann?Whitney test).

K. Dejmal, J. Novotny, and F. Hudec, Assessment optimization of weather forecast: Terminal Aerodrome Forecast (TAF) — For 24 hours, International Conference on Military Technologies (ICMT) 2015, 2015.

, Table 1: Usage summary for four MRDP deployments: total operations, unique users, total data, and average transfer rate, each for both outgoing and incoming transfers.

. Applications and . .. Benchmarks-used, Figure 3: Utah teapot mesh used for benchmarks., p.146

, Photochemically and Electrochemically Guided Molecular Machines, Concepts for Molecular Machines, pp.127-151, 2017.

. .. , Selected features for homogeneous hardware, p.152

.. .. Ware, Selected Bibliography, Bruce McDonald's 'Hard Core Logo', 2011.

G. Aceto, A. Botta, W. De-donato, and A. Pescapè, Cloud monitoring: A survey, Computer Networks, vol.57, issue.9, pp.2093-2115, 2013.

A. Acharya, G. Edjlali, and J. Saltz, The utility of exploiting idle workstations for parallel computation, ACM SIGMETRICS Performance Evaluation Review, vol.25, issue.1, pp.225-234, 1997.

O. Agmon-ben-yehuda, M. Ben-yehuda, A. Schuster, and D. Tsafrir, Deconstructing Amazon EC2 Spot Instance Pricing, ACM Transactions on Economics and Computation, vol.1, issue.3, pp.1-20, 2013.

D. , Trojan Detection using IC Fingerprinting, 2007 IEEE Symposium on Security and Privacy (SP '07), p.79, 2007.

N. Agrawal, A. C. Arpaci-dusseau, and R. H. Arpaci-dusseau, Towards realistic file-system benchmarks with CodeMRI, ACM SIGMETRICS Performance Evaluation Review, vol.36, issue.2, pp.52-57, 2008.

K. Sungyong-ahn, J. La, and . 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, vol.87, 2016.

M. Katevenis, S. Sidiropoulos, and C. Courcoubetis, Weighted round-robin cell multiplexing in a general-purpose ATM switch chip, IEEE Journal on Selected Areas in Communications, vol.9, issue.8, pp.1265-1279, 1991.

B. Allen and S. Project, Table A.106 Refunds - CIT, p.106

E. Alpaydin, Introduction to machine learning, vol.56, 2014.

M. Amiri and L. Mohammad-khanli, Survey on prediction models of applications for resources provisioning in cloud, Journal of Network and Computer Applications, vol.82, pp.93-113, 2017.

N. Amit, D. Tsafrir, and A. Schuster, VSwapper, ACM SIGARCH Computer Architecture News, vol.42, issue.1, pp.349-366, 2014.

P. David, G. Anderson, and . Fedak, The computational and storage potential of volunteer computing, Cluster Computing and the Grid, 2006. CCGRID 06. Sixth IEEE International Symposium on, vol.1, p.65, 2006.

. David-p-anderson, SETI@ home: an experiment in public-resource computing, Communications of the ACM, vol.45, pp.56-61, 2002.

C. S. Julio and . Anjos, MRA++: Scheduling and data placement on MapReduce for heterogeneous environments, Future Generation Computer Systems, vol.42, pp.22-35, 2015.

J. C. Anjos, K. J. Matteussi, P. R. De-souza, A. Da-silva-veith, G. Fedak et al., Enabling Strategies for Big Data Analytics in Hybrid Infrastructures, 2018 International Conference on High Performance Computing & Simulation (HPCS), p.76, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01875952

S. Arnautov, Proceedings of the second USENIX symposium on Operating systems design and implementation - OSDI '96, 12th USENIX Symposium on Operating Systems Design and Implementation (OSDI 16), pp.689-703, 1996.

. Amazon and . Spot, , vol.66, p.43, 2018.

J. Axboe, . Fio-flexible-io, and . Tester, , p.89, 2014.

Y. Bengio, P. Simard, and P. Frasconi, Learning long-term dependencies with gradient descent is difficult, IEEE Transactions on Neural Networks, vol.5, issue.2, pp.157-166, 1994.

F. Benhammadi, Z. Gessoum, and A. Mokhtari, CPU load prediction using neuro-fuzzy and Bayesian inferences, vol.75, p.73, 2011.
URL : https://hal.archives-ouvertes.fr/hal-01169910

F. Benson, A Note on the Estimation of Mean and Standard Deviation from Quantiles, Journal of the Royal Statistical Society: Series B (Methodological), vol.11, issue.1, pp.91-100, 1949.

C. Bienia, S. Kumar, J. P. Singh, and K. Li, The PARSEC benchmark suite, Proceedings of the 17th international conference on Parallel architectures and compilation techniques - PACT '08, p.94, 2008.

S. Boboila and P. Desnoyers, Performance models of flash-based solid-state drives for real workloads, 2011 IEEE 27th Symposium on Mass Storage Systems and Technologies (MSST), p.71, 2011.

N. Bobroff, A. Kochut, and K. Beaty, Dynamic Placement of Virtual Machines for Managing SLA Violations, 2007 10th IFIP/IEEE International Symposium on Integrated Network Management, p.49, 2007.

G. Bontempi, Long term time series prediction with multi-input multioutput local learning, Proc. 2nd ESTSP, p.112, 2008.

J. Boukhobza and P. Olivier, Flash Translation Layer, Flash Memory Integration, vol.70, pp.129-147, 2017.
URL : https://hal.archives-ouvertes.fr/hal-00796007

A. Brazell and W. Bible, Jarvis, Dr John Herbert, (born 16 May 1947), Senior Vice President Advisor, John Wiley & Sons Inc., 2007?09 (Senior Vice President, John Wiley and Sons - Europe, 1997?2007), vol.726, p.94, 2007.

L. Breiman, Random forests, Machine Learning, vol.45, issue.1, pp.5-32, 2001.

L. Breiman and P. Spector, Submodel Selection and Evaluation in Regression. The X-Random Case, International Statistical Review / Revue Internationale de Statistique, vol.60, issue.3, p.291, 1992.

L. Breiman, J. H. Friedman, R. A. Olshen, and C. J. Stone, Introduction To Tree Classification, Classification And Regression Trees, vol.58, pp.18-58, 2017.

J. Brodkin and C. Study, Parallel Internet: Inside the Worldwide LHC computing Grid, vol.23, p.11, 2008.

S. John and . Bucy, The disksim simulation environment version 4.0 reference manual (cmu-pdl-08-101), in: In PDL, p.71, 2008.

B. Burns, B. Grant, D. Oppenheimer, E. Brewer, and J. Wilkes, Borg, Omega, and Kubernetes, Queue, vol.14, issue.1, pp.70-93, 2016.

A. Calif, Google and IBM Announce University Initiative to Address Internet-Scale Computing Challenges, Website, 2007.

M. C. Calzarossa, M. L. Della-vedova, L. Massari, D. Petcu, M. I. Tabash et al., Workloads in the Clouds, Springer Series in Reliability Engineering, vol.30, pp.525-550, 2016.

R. Caruana and A. Niculescu-mizil, An empirical comparison of supervised learning algorithms, Proceedings of the 23rd international conference on Machine learning - ICML '06, p.113, 2006.

M. Carvalho, W. Cirne, F. Brasileiro, and J. Wilkes, Long-term SLOs for reclaimed cloud computing resources, Proceedings of the ACM Symposium on Cloud Computing - SOCC '14, vol.127, pp.1-13, 2014.

M. Carvalho, W. Cirne, F. Brasileiro, and J. Wilkes, Long-term SLOs for reclaimed cloud computing resources, Proceedings of the ACM Symposium on Cloud Computing - SOCC '14, vol.20, p.29, 2014.

M. Carvalho, W. Cirne, F. Brasileiro, and J. Wilkes, Long-term SLOs for reclaimed cloud computing resources, Proceedings of the ACM Symposium on Cloud Computing - SOCC '14, pp.1-13, 2014.

D. Castelvecchi, Artificial intelligence called in to tackle LHC data deluge, Nature, vol.528, issue.7580, pp.18-19, 2015.

G. Chandrashekar and F. Sahin, A survey on feature selection methods, Computers & Electrical Engineering, vol.40, issue.1, pp.16-28, 2014.

T. Chen and C. Guestrin, XGBoost, Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, p.100, 2016.

N. Chohan, See Spot Run: using spot instances for mapreduce workflows, Proceedings of the 2Nd USENIX Conference on Hot Topics in Cloud Computing, USENIX, p.76, 2010.

V. Costan, I. Lebedev, and S. Devadas, Secure Processors Part II: Intel SGX Security Analysis and MIT Sanctum Architecture, IACR Cryptology ePrint Archive, p.168, 2017.

J. Dartois, J. Boukhobza, V. Francoise, and O. Barais, Tracking Application Fingerprint in a Trustless Cloud Environment for Sabotage Detection, 2019 IEEE 27th International Symposium on Modeling, Analysis, and Simulation of Computer and Telecommunication Systems (MASCOTS), pp.74-82, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02303153

J. Dartois, H. B.-ribeiro, J. Boukhobza, and O. Barais, Cuckoo: Opportunistic MapReduce on Ephemeral and Heterogeneous Cloud Resources, 2019 IEEE 12th International Conference on Cloud Computing (CLOUD), 2019.
URL : https://hal.archives-ouvertes.fr/hal-02179453

J. Dartois, J. Boukhobza, A. Knefati, and O. Barais, Investigating Machine Learning Algorithms for Modeling SSD I/O Performance for Container-based Virtualization, IEEE Transactions on Cloud Computing, vol.14, pp.1-1, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02013421

J. Dartois, A. Knefati, J. Boukhobza, and O. Barais, Using Quantile Regression for Reclaiming Unused Cloud Resources While Achieving SLA, 2018 IEEE International Conference on Cloud Computing Technology and Science (CloudCom), pp.89-98, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01898438

J. Dean and S. Ghemawat, MapReduce, Communications of the ACM, vol.51, issue.1, pp.107-113, 2008.

C. Delimitrou and C. Kozyrakis, Quasar, ACM SIGPLAN Notices, vol.49, issue.4, pp.127-144, 2014.

S. Di, D. Kondo, and W. Cirne, Host load prediction in a Google compute cloud with a Bayesian model, 2012 International Conference for High Performance Computing, Networking, Storage and Analysis, vol.75, p.73, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00788002

A. Peter, . Dinda, and . David-r-o'hallaron, An evaluation of linear models for host load prediction, High Performance Distributed Computing, vol.75, p.73, 1999.

M. Dorier, G. Antoniu, R. Ross, D. Kimpe, and S. Ibrahim, CALCioM: Mitigating I/O Interference in HPC Systems through Cross-Application Coordination, 2014 IEEE 28th International Parallel and Distributed Processing Symposium, pp.155-164, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00916091

H. Drucker, Jonathan Harris, Art Journal, vol.56, issue.3, p.15, 1997.

W. Du, M. Murugesan, and J. Jia, Uncheatable Grid Computing, Algorithms and Theory of Computation Handbook, Second Edition, Volume 2, vol.80, pp.1-21, 2009.

. Truong-vinh-truong-duy, . Yukinori-sato, and Y. Inoguchi, Improving accuracy of host load predictions on computational grids by artificial neural networks, 2009 IEEE International Symposium on Parallel & Distributed Processing, vol.26, p.73, 2009.

E. Ho and E. Spanjer, Survey Update: Users Share Their 2017 Storage Performance Needs, p.100, 2017.

R. Evans and J. Gao, Deepmind AI reduces Google data centre cooling bill by 40%, DeepMind blog, vol.20, p.11, 2016.

C. Fehling, F. Leymann, R. Retter, W. Schupeck, and P. Arbitter, Cloud Computing Fundamentals, Cloud Computing Patterns, pp.21-78, 2013.

W. Felter, A. Ferreira, R. Rajamony, and J. Rubio, An updated performance comparison of virtual machines and Linux containers, 2015 IEEE International Symposium on Performance Analysis of Systems and Software (ISPASS), vol.100, p.45, 2015.

M. Feurer, A. Klein, K. Eggensperger, J. T. Springenberg, M. Blum et al., Auto-sklearn: Efficient and Robust Automated Machine Learning, Automated Machine Learning, pp.113-134, 2019.

, new ffmpeg, vol.146, p.94, 2009.

A. Fielding and C. A. O'muircheartaigh, Binary Segmentation in Survey Analysis with Particular Reference to AID, The Statistician, vol.26, issue.1, p.17, 1977.

Y. Freund and R. E. Schapire, A Decision-Theoretic Generalization of On-Line Learning and an Application to Boosting, Journal of Computer and System Sciences, vol.55, issue.1, pp.119-139, 1997.

H. Jerome and . Friedman, Greedy function approximation: a gradient boosting machine, Annals of statistics, p.61, 2001.

H. Jerome and . Friedman, Multivariate adaptive regression splines, The annals of statistics, vol.19, p.59, 1991.

J. Friedman, T. Hastie, and R. Tibshirani, The elements of statistical learning, Springer series in statistics, vol.1, 2001.

E. Gal and S. Toledo, Algorithms and data structures for flash memories, ACM Computing Surveys, vol.37, issue.2, pp.138-163, 2005.

S. Garfinkel, Architects of the information society: 35 years of the Laboratory for Computer Science at MIT, p.38, 1999.

R. Garg, H. Saran, R. S. Randhawa, and M. Singh, A SLA framework for QoS provisioning and dynamic capacity allocation, IEEE 2002 Tenth IEEE International Workshop on Quality of Service (Cat. No.02EX564), vol.117, pp.129-137

D. Gmach, J. Rolia, L. Cherkasova, and A. Kemper, Workload Analysis and Demand Prediction of Enterprise Data Center Applications, 2007 IEEE 10th International Symposium on Workload Characterization, vol.75, p.73, 2007.

. Sc-goh, Design-adaptive nonparametric estimation of conditional quantile derivatives, Journal of Nonparametric Statistics, p.113, 2012.

P. Golle and I. Mironov, Uncheatable Distributed Computations, Topics in Cryptology ? CT-RSA 2001, vol.80, pp.425-440, 2001.

G. Vynck, Google to Spend $13 Billion on Data Centers, 2018.

, SECURED DATA ACCESS BETWEEN TWO VIRTUAL MACHINES, International Journal of Research in Engineering and Technology, vol.07, issue.03, pp.43-48, 2018.

A. Greenberg, J. Hamilton, D. A. Maltz, and P. Patel, The cost of a cloud, ACM SIGCOMM Computer Communication Review, vol.39, issue.1, pp.68-73, 2008.

L. M. Grupp, J. D. Davis, and S. Swanson, Proceedings Demo & Poster Track of ACM/IFIP/USENIX International Middleware Conference on - MiddlewareDPT '13, Presented as part of the 2013 USENIX Annual Technical Conference (USENIX ATC 13), vol.87, pp.79-90, 2013.

B. Gulmezoglu, T. Eisenbarth, and B. Sunar, Cache-Based Application Detection in the Cloud Using Machine Learning, Proceedings of the 2017 ACM on Asia Conference on Computer and Communications Security, vol.80, p.79, 2017.

S. Halevi, D. Harnik, B. Pinkas, and A. Shulman-peleg, Proofs of ownership in remote storage systems, Proceedings of the 18th ACM conference on Computer and communications security - CCS '11, p.156, 2011.

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.8, 2009.

M. Handaoui, J. Dartois, L. Lemarchand, and J. Boukhobza, Salamander: a Holistic Scheduling of MapReduce Jobs on Ephemeral Cloud Resources, 2020 20th IEEE/ACM International Symposium on Cluster, Cloud and Internet Computing (CCGRID), vol.168, p.140, 2020.
URL : https://hal.archives-ouvertes.fr/hal-02497029

H. Hao, C. Liu, and H. Sako, Comparison of genetic algorithm and sequential search methods for classifier subset selection, Seventh International Conference on Document Analysis and Recognition, p.148, 2003.

T. Hastie, R. Tibshirani, and J. Friedman, Linear Methods for Regression, The Elements of Statistical Learning, pp.1-57, 2008.

T. Hastie, The entire regularization path for the support vector machine, Journal of Machine Learning Research, vol.5, p.57, 2004.

K. Hightower, B. Burns, and J. Beda, Kubernetes: Up and Running Dive into the Future of Infrastructure, pp.978-1491935675, 2017.

S. Hochreiter and J. Schmidhuber, Long Short-Term Memory, Neural Computation, vol.9, issue.8, pp.1735-1780, 1997.

P. Horn, Meccanica infor mation, Meccanica, vol.31, issue.5, pp.M33-M41, 1996.

H. and H. Huang, Performance modeling and analysis of flash-based storage devices, MSST, p.71, 2011.

. Idc/seagate, Disk-drive maker Seagate receives buyout offers, Physics Today, 2010.

S. Islam, J. Keung, K. Lee, and A. Liu, Empirical prediction models for adaptive resource provisioning in the cloud, Future Generation Computer Systems, vol.28, issue.1, pp.155-162, 2012.

K. Jackson, Varney, Sir David (Robert), (born 11 May 1946), Chairman, Packt Ltd, since 2012, vol.51, p.41, 2007.

B. Jacob, A practical guide to the IBM autonomic computing toolkit, IBM Redbooks, vol.4, p.91, 2004.

A. Jain and D. Zongker, Feature selection: evaluation, application, and small sample performance, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.19, issue.2, pp.153-158, 1997.

A. Seyyed and . Javadi, Scavenger: A Black-Box Batch Workload Resource Manager for Improving Utilization in Cloud Environments, Proceedings of the ACM Symposium on Cloud Computing, SoCC '19, p.165, 2019.

B. Jennings and R. Stadler, Resource Management in Clouds: Survey and Research Challenges, Journal of Network and Systems Management, vol.23, issue.3, pp.567-619, 2014.

W. Stanley and J. , The coal question: Can Britain survive, First published in (1865) (cit, p.165

H. Jin, X. Yang, X. Sun, and I. Raicu, ADAPT: Availability-Aware MapReduce Data Placement for Non-dedicated Distributed Computing, 2012 IEEE 32nd International Conference on Distributed Computing Systems, p.75, 2012.

M. Jung, W. Choi, S. Srikantaiah, J. Yoo, and M. T. Kandemir, HIOS, ACM SIGARCH Computer Architecture News, vol.42, issue.3, pp.289-300, 2014.

R. Jyoti, TCO Analysis Comparing Private and Public Cloud Solutions for Running Enterprise Workloads Using the 5Cs Framework, p.39, 2017.

M. Karakus, OMTiR: Open Market for Trading Idle Cloud Resources, 2014 IEEE 6th International Conference on Cloud Computing Technology and Science, p.42, 2014.

R. Karedla, J. S. Love, and B. G. Wherry, Caching strategies to improve disk system performance, Computer, vol.27, issue.3, pp.38-46, 1994.

K. Keahey, M. Tsugawa, A. Matsunaga, and J. Fortes, Sky Computing, IEEE Internet Computing, vol.13, issue.5, pp.43-51, 2009.
URL : https://hal.archives-ouvertes.fr/inria-00551206

O. Jeffrey, D. M. Kephart, and . Chess, The vision of autonomic computing, Computer, vol.1, p.50, 2003.

M. Khan, Y. Jin, M. Li, Y. Xiang, and C. Jiang, Hadoop Performance Modeling for Job Estimation and Resource Provisioning, IEEE Transactions on Parallel and Distributed Systems, vol.27, issue.2, pp.441-454, 2016.

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, 2009 First International Conference on Advances in System Simulation, p.71, 2009.

A. Klimovic, H. Litz, and C. Kozyrakis, ReFlex, Proceedings of the Twenty-Second International Conference on Architectural Support for Programming Languages and Operating Systems, p.106, 2017.

A. Muhammad-anas-knefati, B. Oulidi, and . Abdous, Local linear double and asymmetric kernel estimation of conditional quantiles, Communications in Statistics-Theory and Methods, vol.45, p.113, 2016.

R. Koenker and G. Bassett, Regression Quantiles, Econometrica, vol.46, issue.1, p.33, 1978.

R. Kohavi, IJCAI-83: International joint conference on artificial intelligence, Artificial Intelligence, vol.18, issue.2, p.268, 1982.

A. Kougkas, M. Dorier, R. Latham, R. Ross, and X. Sun, Leveraging burst buffer coordination to prevent I/O interference, 2016 IEEE 12th International Conference on e-Science (e-Science), p.71, 2016.

J. Kumar, R. Goomer, and A. K. Singh, Long Short Term Memory Recurrent Neural Network (LSTM-RNN) Based Workload Forecasting Model For Cloud Datacenters, Procedia Computer Science, vol.125, pp.676-682, 2018.

D. Kusnetzky, Fleet manager's guide to testing vehicles for valid results, p.44, 1981.

N. Laptev, Time-series extreme event forecasting with neural networks at uber, International Conference on Machine Learning, vol.34, p.114, 2017.

A. Lenk, M. Klems, J. Nimis, S. Tai, and T. Sandholm, What's inside the Cloud? An architectural map of the Cloud landscape, 2009 ICSE Workshop on Software Engineering Challenges of Cloud Computing, p.40, 2009.

Y. Li, Y. Shen, and Y. Liu, Cloud Computing Networks: Utilizing the Content Delivery Network, Enabling the New Era of Cloud Computing: Data Security, Transfer, and Management, p.73, 2014.

H. Lin, X. Ma, J. Archuleta, W. Feng, M. Gardner et al., MOON, Proceedings of the 19th ACM International Symposium on High Performance Distributed Computing - HPDC '10, vol.78, p.76, 2010.
URL : https://hal.archives-ouvertes.fr/in2p3-00024076

Y. Lin, C. Lu, Y. Lai, W. Peng, and P. Lin, Application classification using packet size distribution and port association, Journal of Network and Computer Applications, vol.32, issue.5, pp.1023-1030, 2009.

J. Michel, M. Litzkow, M. W. Livny, and . Mutka, Condor-a hunter of idle workstations, tech. rep, p.142, 1987.

B. Louden, From the Editor: Nuts!, Cornell Hotel and Restaurant Administration Quarterly, vol.23, issue.4, pp.100-100, 1983.

S. Makridakis, E. Spiliotis, and V. Assimakopoulos, Statistical and Machine Learning forecasting methods: Concerns and ways forward, PLOS ONE, vol.13, issue.3, p.e0194889, 2018.

P. Marshall, K. Keahey, and T. Freeman, Improving Utilization of Infrastructure Clouds, 2011 11th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing, vol.127, pp.205-214, 2011.

M. Maurer, I. Brandic, and R. Sakellariou, Self-Adaptive and Resource-Efficient SLA Enactment for Cloud Computing Infrastructures, 2012 IEEE Fifth International Conference on Cloud Computing, p.91, 2012.

P. M. Mell and T. Grance, The NIST definition of cloud computing, p.38, 2011.

P. Menage, Literature notes, American Documentation, vol.10, issue.1, pp.87-94, 1959.

X. Meng, C. Isci, J. Kephart, L. Zhang, E. Bouillet et al., Efficient resource provisioning in compute clouds via VM multiplexing, Proceeding of the 7th international conference on Autonomic computing - ICAC '10, pp.11-20, 2010.

M. Merabet, S. M. Benslimane, M. Barhamgi, and C. Bonnet, A Predictive Map Task Scheduler for Optimizing Data Locality in MapReduce Clusters, International Journal of Grid and High Performance Computing, vol.10, issue.4, pp.1-14, 2018.

D. Merkel, Docker: lightweight linux containers for consistent development and deployment, Linux Journal, vol.239, p.45, 2014.

. James-n-morgan, C. Robert, A. Messenger, and . Thaid, CORRELATION AND NOMINAL VARIABLES, Cluster Analysis for Applications, pp.215-227, 1973.

. Ab-mysql and . Mysql, , vol.146, p.94, 2001.

V. Nitu, B. Teabe, L. Fopa, A. Tchana, and D. Hagimont, StopGap: elastic VMs to enhance server consolidation, Software: Practice and Experience, vol.47, issue.11, pp.1501-1519, 2017.
URL : https://hal.archives-ouvertes.fr/hal-02559760

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, pp.88-93, 2014.

H. Ouarnoughi, Placement autonomique de machines virtuelles sur un système de stockage hybride dans un cloud IaaS, vol.91, p.50, 2017.

E. Outin, J. Dartois, O. Barais, and J. Pazat, Enhancing Cloud Energy Models for Optimizing Datacenters Efficiency, 2015 International Conference on Cloud and Autonomic Computing, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01243146

F. Pedregosa, Getting Started with Scikit-learn for Machine Learning, Python® Machine Learning, vol.12, pp.93-117, 2019.

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, vol.87, pp.51-58, 2010.

W. Reese, Nginx: the high-performance web server and reverse proxy, Linux Journal, vol.173, p.94, 2008.

K. Ren and G. Gibson, Proceedings Demo & Poster Track of ACM/IFIP/USENIX International Middleware Conference on - MiddlewareDPT '13, Presented as part of the 2013 USENIX Annual Technical Conference (USENIX ATC 13), p.106, 2013.

E. Y. Rkt, Upaya Meningkatkan Kemampuan Berpikir Kritis dalam Keperawatan, p.55, 2019.

D. Robb, Web Site Planning, Guerrilla Capacity Planning, vol.25, pp.143-163

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

E. Sammer, Hadoop Operations: A Guide for Developers and Administrators, p.135, 2012.

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

F. G. Luis and . Sarmenta, Sabotage-tolerance mechanisms for volunteer computing systems, Future Generation Computer Systems, vol.18, pp.561-572, 2002.

R. Schuster, V. Shmatikov, and E. Tromer, Usenix Security Symposium, IEEE Software, vol.28, issue.3, pp.6-6, 2011.

M. Schwarzkopf, A. Konwinski, M. Abd-el-malek, and J. Wilkes, Omega, Proceedings of the 8th ACM European Conference on Computer Systems - EuroSys '13, p.53, 2013.

M. Shaari, DYNAMIC PRICING SCHEME FOR RESOURCE ALLOCATION IN MULTI-CLOUD ENVIRONMENT, Malaysian Journal of Computer Science, vol.30, issue.1, 2017.

P. Sharma, L. Chaufournier, P. Shenoy, and Y. C. Tay, Containers and Virtual Machines at Scale, Proceedings of the 17th International Middleware Conference, vol.1, pp.978-979, 2016.

E. Shriver, A. Merchant, and J. Wilkes, An analytic behavior model for disk drives with readahead caches and request reordering, ACM SIGMETRICS Performance Evaluation Review, vol.26, issue.1, pp.182-191, 1998.

K. Shvachko, H. Kuang, S. Radia, and R. Chansler, The Hadoop Distributed File System, 2010 IEEE 26th Symposium on Mass Storage Systems and Technologies (MSST), pp.1-10, 2010.

S. Sidiroglou-douskos, S. Misailovic, H. Hoffmann, and M. Rinard, Managing performance vs. accuracy trade-offs with loop perforation, Proceedings of the 19th ACM SIGSOFT symposium and the 13th European conference on Foundations of software engineering - SIGSOFT/FSE '11, pp.124-134, 2011.

R. Singhal and A. Verma, Predicting Job Completion Time in Heterogeneous MapReduce Environments, 2016 IEEE International Parallel and Distributed Processing Symposium Workshops (IPDPSW), p.77, 2016.

S. Soltesz, H. Pötzl, M. E. Fiuczynski, A. Bavier, and L. Peterson, Container-based operating system virtualization, Proceedings of the 2nd ACM SIGOPS/EuroSys European Conference on Computer Systems 2007 - EuroSys '07, p.45, 2007.

B. Song, Y. Yu, Y. Zhou, Z. Wang, and S. Du, Host load prediction with long short-term memory in cloud computing, The Journal of Supercomputing, vol.74, issue.12, pp.6554-6568, 2017.

G. Soundararajan and C. Amza, Towards End-to-End Quality of Service: Controlling I/O Interference in Shared Storage Servers, Middleware 2008, vol.88, pp.287-305, 2008.

A. Spark, Apache Spark?-Lightning-Fast Cluster Computing, p.118, 2014.

. Richard-m-stallman, Using the GNU compiler collection, vol.146, p.94, 2003.

A. Luiz and . Steffenel, Mapreduce challenges on pervasive grids, Journal of Computer Science, vol.10, p.76, 2014.

B. Souhaib, . Taieb, and . Amir-f-atiya, A bias and variance analysis for multistep-ahead time series forecasting, IEEE transactions on neural networks and learning systems, vol.27, p.112, 2016.

B. Tang, M. Tang, G. Fedak, and H. He, Availability/Network-aware MapReduce over the Internet, Information Sciences, vol.379, pp.94-111, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01426393

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

A. Tchana, B. Bui, B. Teabe, V. Nitu, and D. Hagimont, Mitigating performance unpredictability in the IaaS using the Kyoto principle, Proceedings of the 17th International Middleware Conference, vol.165, p.106, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01782588

A. Tenu, Les débuts de la comptabilité en Mésopotamie. Archéologie de la comptabilité, Culture matérielle des pratiques comptables au Proche-Orient ancien, vol.8, p.11, 2016.

J. Thatcher, Solid State Storage (SSS) Performance Test Specification (PTS) Enterprise Version, vol.97, p.89, 2013.

A. Traeger, E. Zadok, N. Joukov, and C. P. Wright, A nine year study of file system and storage benchmarking, ACM Transactions on Storage, vol.4, issue.2, pp.1-56, 2008.

V. Jack and . Tu, Advantages and disadvantages of using artificial neural networks versus logistic regression for predicting medical outcomes, Journal of clinical epidemiology, vol.49, p.57, 1996.

E. Vmware, Introducing VMware vSphere 6.7, pp.1-22, 2018.

V. Vcenter, Installing and Configuring vCenter Server, pp.47-116, 2018.

A. Verma, L. Pedrosa, M. Korupolu, D. Oppenheimer, E. Tune et al., Large-scale cluster management at Google with Borg, Proceedings of the Tenth European Conference on Computer Systems - EuroSys '15, p.53, 2015.

M. Wang, Storage device performance prediction with CART models, Proceedings. The IEEE Computer Society's 12th Annual International Symposium on, p.71, 2004.

J. Winter, Trusted computing building blocks for embedded linux-based ARM trustzone platforms, Proceedings of the 3rd ACM workshop on Scalable trusted computing - STC '08, p.168, 2008.

Y. Wu, Y. Yuan, G. Yang, and W. Zheng, Load prediction using hybrid model for computational grid, 2007 8th IEEE/ACM International Conference on Grid Computing, vol.75, p.73, 2007.

M. G. Xavier, I. C. De-oliveira, F. D. Rossi, R. D. Dos-passos, K. J. Matteussi et al., A Performance Isolation Analysis of Disk-Intensive Workloads on Container-Based Clouds, 2015 23rd Euromicro International Conference on Parallel, Distributed, and Network-Based Processing, vol.87, pp.253-260, 2015.

G. Miguel and . Xavier, Performance evaluation of container-based virtualization for high performance computing environments, 201321.

, 14th Euromicro International Conference on Parallel, Distributed, and Network-Based Processing - Cover, 14th Euromicro International Conference on Parallel, Distributed, and Network-Based Processing (PDP'06), p.45, 2006.

Y. Yan, Y. Gao, Y. Chen, Z. Guo, B. Chen et al., TR-Spark, Proceedings of the Seventh ACM Symposium on Cloud Computing, vol.78, p.65, 2016.

J. Yang and V. Honavar, Feature Subset Selection Using a Genetic Algorithm, Feature Extraction, Construction and Selection, pp.117-136, 1998.

L. Yang, I. Foster, and J. M. Schopf, Homeostatic and tendencybased CPU load predictions, Parallel and Distributed Processing Symposium, vol.9, p.73, 2003.

Q. Yang, C. Peng, H. Zhao, Y. Yu, Y. Zhou et al., A new method based on PSR and EA-GMDH for host load prediction in cloud computing system, The Journal of Supercomputing, vol.68, issue.3, pp.1402-1417, 2014.

Q. Yang, Y. Zhou, Y. Yu, J. Yuan, X. Xing et al., Multi-step-ahead host load prediction using autoencoder and echo state networks in cloud computing, The Journal of Supercomputing, vol.71, issue.8, pp.3037-3053, 2015.

Y. Yang, G. Kim, W. W. Song, Y. Lee, A. Chung et al., Pado, Proceedings of the Twelfth European Conference on Computer Systems, pp.978-979, 2017.

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, vol.87, pp.34-41, 2012.

Y. Jin and Y. Makris, Hardware Trojan detection using path delay fingerprint, 2008 IEEE International Workshop on Hardware-Oriented Security and Trust, p.79, 2008.

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, p.71, 2006.

M. Zaharia, D. Borthakur, J. Sen-sarma, K. Elmeleegy, S. Shenker et al., Delay scheduling, Proceedings of the 5th European conference on Computer systems - EuroSys '10, p.75, 2010.

M. Zaharia, Proceedings of the second USENIX symposium on Operating systems design and implementation - OSDI '96, Proceedings of the 8th USENIX Conference on Operating Systems Design and Implementation, vol.78, p.75, 1996.

S. Zander, T. Nguyen, and G. Armitage, Automated traffic classification and application identification using machine learning, The IEEE Conference on Local Computer Networks 30th Anniversary (LCN'05)l, vol.80, p.79, 2005.

B. Zhang, Y. A. Dhuraibi, R. Rouvoy, F. Paraiso, and L. Seinturier, CloudGC: Recycling Idle Virtual Machines in the Cloud, 2017 IEEE International Conference on Cloud Engineering (IC2E), p.65, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01403488

Y. Zhang, Proceedings of the second USENIX symposium on Operating systems design and implementation - OSDI '96, Proceedings of the 12th USENIX conference on Operating Systems Design and Implementation, p.78, 1996.

S. Zhao, V. Lo, and C. Dickey, Result verification and trust-based scheduling in peer-to-peer grids, Peer-to-Peer Computing, 2005. P2P 2005. Fifth IEEE International Conference on, vol.80, p.79, 2005.

J. Zhu, Multi-class adaboost, Statistics and its Interface, vol.2, issue.3, p.61, 2009.