M. Zakarya and L. Gillam, Energy efficient computing, clusters, grids and clouds: A taxonomy and survey, Sustain. Comput., Informat. Syst, vol.14, pp.13-33, 2017.

M. N. Vora, Hadoop-HBase for large-scale data, Proc. Int. Conf. Comput. Netw. Technol, vol.1, pp.601-605, 2011.

A. Thusoo, Hive-A petabyte scale data warehouse using hadoop, Proc. IEEE 26th Int. Conf. Data Eng. (ICDE), pp.996-1005, 2010.

J. Han, H. E. , G. Le, and J. Du, Survey on NoSQL database, Proc. 6th Int. Conf. Pervasive Comput. Appl, pp.363-366, 2011.

J. Song, T. Li, X. Liu, and Z. Zhu, Comparing and analyzing the energy efficiency of cloud database and parallel database, Proc. 2nd Int. Conf, vol.2, pp.989-997, 2012.

W. Lang, S. Harizopoulos, J. M. Patel, M. A. Shah, and D. Tsirogiannis, Towards energy-efficient database cluster design, Proc. VLDB Endowment, vol.5, pp.1684-1695, 2012.

G. You, S. Hwang, and N. Jain, Ursa: Scalable load and power management in cloud storage systems, ACM Trans. Storage, vol.9, issue.1, pp.1-29, 2013.

D. Schall and T. Härder, WattDB-A journey towards energy efficiency, Datenbank-Spektrum, vol.14, issue.3, pp.183-198, 2014.

H. Chihoub, S. Ibrahim, Y. Li, G. Antoniu, M. Pérez et al., Exploring energy-consistency trade-offs in cassandra cloud storage system, Proc. SBAC-PAD, pp.146-153, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01184235

A. P. Florence, V. Shanthi, and C. B. Simon, Energy conservation using dynamic voltage frequency scaling for computational cloud, Sci. World J, vol.2016, p.13, 2016.

S. Ibrahim, T. Phan, A. Carpen-amarie, H. Chihoub, D. Moise et al., Governing energy consumption in Hadoop through CPU frequency scaling: An analysis, Future Gener. Comput. Syst, vol.54, pp.219-232, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01166252

D. Gu, Cassandra at Instagram, 2016.

C. Guo and J. Pierson, Frequency selection approach for energy aware cloud database, Proc. 30th Int. Symp, pp.1-8, 2018.
URL : https://hal.archives-ouvertes.fr/hal-02092942

G. Costa, D. Careglio, R. I. Kat, A. Mendelson, J. Pierson et al., Hardware leverages for energy reduction in large scale distributed systems, 2010.

B. Subramaniam and W. Feng, On the Energy Proportionality of Distributed NoSQL Data Stores, vol.8966, pp.264-274, 2014.

D. Tsirogiannis, S. Harizopoulos, and M. A. Shah, Analyzing the energy efficiency of a database server, Proc. ACM SIGMOD Int. Conf. Manage. Data (SIGMOD), pp.231-242, 2010.

D. Schall and T. Härder, Approximating an energy-proportional DBMS by a dynamic cluster of nodes,'' in Database Systems for Advanced Applications, pp.297-311, 2014.

D. Schall and T. Härder, Energy-proportional query execution using a cluster of wimpy nodes, Proc. 9th Int. Workshop Data Manage. New Hardw. (DaMoN), pp.1-6, 2013.

G. Han, W. Que, G. Jia, L. Shu, and A. Jara, An efficient virtual machine consolidation scheme for multimedia cloud computing, Sensors, vol.16, issue.2, p.246, 2016.

S. Savinov and K. Daudjee, Dynamic database replica provisioning through virtualization, Proc. 2nd Int. Workshop Cloud Data Manage. (CloudDB), pp.41-46, 2010.

H. Chen, X. Zhu, H. Guo, J. Zhu, X. Qin et al., Towards energyefficient scheduling for real-time tasks under uncertain cloud computing environment, J. Syst. Softw, vol.99, pp.20-35, 2015.

L. Yu, F. Teng, and F. Magoulès, Node scaling analysis for poweraware real-time tasks scheduling, IEEE Trans. Comput, vol.65, issue.8, pp.2510-2521, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01273928

J. Liu and J. Guo, Energy efficient scheduling of real-time tasks on multicore processors with voltage islands, Future Gener. Comput. Syst, vol.56, pp.202-210, 2016.

M. Amiri and L. Mohammad-khanli, Survey on prediction models of applications for resources provisioning in cloud, J. Netw. Comput. Appl, vol.82, pp.93-113, 2017.

S. Martello and P. Toth, Knapsack Problems: Algorithms and Computer Implementations, 1990.

J. Chen and L. Thiele, Energy-efficient scheduling on homogeneous multiprocessor platforms, Proc. ACM Symp. Appl. Comput, pp.542-549, 2010.

D. E. Goldberg, Genetic Algorithms in Search, Optimization and Machine Learning, 1989.

C. B. Browne, A survey of Monte Carlo tree search methods, IEEE Trans. Comput. Intell. AI in Games, vol.4, issue.1, pp.1-43, 2012.

F. Cappello, Grid'5000: A large scale and highly reconfigurable grid experimental testbed,'' in Proc, IEEE/ACM Int. Workshop Grid Comput, vol.6, p.8, 2005.

B. F. Cooper, A. Silberstein, E. Tam, R. Ramakrishnan, and R. Sears, Benchmarking cloud serving systems with YCSB, Proc. 1st ACM Symp. Cloud Comput. (SoCC), pp.143-154, 2010.