, Data Our New Natural Resource

M. Abdelbaky, M. Zou, A. R. Zamani, E. G. Renart, J. D. Montes et al., Computing in the continuum: Combining pervasive devices and services to support data-driven applications, 2017 IEEE 37th Int. Conf. on Dstb Comp. Systems, 2017.

A. Benoit, A. Dobrila, J. Nicod, and L. Philippe, Scheduling linear chain streaming applications on heterogeneous systems with failures, Future Gener. Comput. Syst, vol.29, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00926146

M. D. De-assuncao, A. Da-silva, R. Veith, and . Buyya, Distributed data stream processing and edge computing: A survey on resource elasticity and future directions, Journal of Net. and Computer Applications, vol.103, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01653842

O. Runsewe and N. Samaan, Cloud resource scaling for big data streaming applications using a layered multi-dimensional hidden markov model, Proc. of the 17th IEEE/ACM Int. Symposium on Cluster, Cloud and Grid Computing, CCGrid '17, 2017.

V. Cardellini, V. Grassi, F. L. Presti, and M. Nardelli, Optimal operator placement for distributed stream processing applications, 10th ACM Int. Conf. on Dstb Event-Based Systems, 2016.

B. Peng, M. Hosseini, Z. Hong, R. Farivar, and R. Campbell, R-storm: Resource-aware scheduling in storm, 16th Annual Middleware Conf., Middleware '15, 2015.

J. Xu, Z. Chen, J. Tang, and S. Su, T-Storm: Traffic-aware online scheduling in storm, IEEE 34th Int. Conf. on Distributed Computing Systems (ICDCS), 2014.

H. P. Sajjad, K. Danniswara, A. Al-shishtawy, and V. Vlassov, Spanedge: Towards unifying stream processing over central and nearthe-edge data centers, 2016 IEEE/ACM Symp, 2016.

B. Cheng, A. Papageorgiou, and M. Bauer, Geelytics: Enabling ondemand edge analytics over scoped data sources, IEEE Int. Cong. on BigData, 2016.

C. Hochreiner, M. Vogler, P. Waibel, and S. Dustdar, VISP: An ecosystem for elastic data stream processing for the internet of things, 20th IEEE Int. Ent. Dstb Object Comp. Conf, 2016.

V. Cardellini, V. Grassi, F. L. Presti, and M. Nardelli, Distributed QoSaware scheduling in Storm, 9th ACM Int. Conf. on Dstb Event-Based Systems, DEBS '15, 2015.

L. Ni, J. Zhang, C. Jiang, C. Yan, and K. Yu, Resource allocation strategy in fog computing based on priced timed petri nets, IEEE IoT Journal, 2017.

E. Renart, J. Diaz-montes, and M. Parashar, Data-driven stream processing at the edge, IEEE Int. Conf. on Fog and Edge Computing, 2017.

E. Renart, D. Balouek-thomert, X. Hu, J. Gong, and M. Parashar, Online decision-making using edge resources for content-driven stream processing, IEEE Int. Conf. on eScience, 2017.

A. Shukla, S. Chaturvedi, and Y. Simmhan, Riotbench: An iot benchmark for distributed stream processing systems, Concurrency and Computation: Practice and Experience, vol.29, issue.21, 2017.

B. Brehmer, The dynamic ooda loop : Amalgamating boyd s ooda loop and the cybernetic approach to command and control assessment , tools and metrics, 2005.

A. Shukla, S. Chaturvedi, and Y. Simmhan, Riotbench: A real-time iot benchmark for distributed stream processing platforms, CoRR, 2017.

W. Hu, Y. Gao, K. Ha, J. Wang, B. Amos et al., Quantifying the impact of edge computing on mobile applications, 7th ACM SIGOPS Asia-Pacific Wksp on Systems, APSys '16, 2016.

R. Eidenbenz and T. Locher, Task allocation for distributed stream processing, IEEE INFOCOM 2016, 2016.

M. Taneja and A. Davy, Resource aware placement of iot application modules in fog-cloud computing paradigm, IFIP/IEEE Symp. on Integrated Net. and Service Mgmt (IM), 2017.

V. Cardellini, F. Lopresti, M. Nardelli, and G. Russorusso, Optimal operator deployment and replication for elastic distributed data stream processing, Concurrency and Computation

W. Chen, I. Paik, and Z. Li, Cost-aware streaming workflow allocation on geo-distributed data centers, IEEE Transactions on Computers, 2017.

, Apache Hadoop

, Apache Spark

A. Toshniwal, S. Taneja, A. Shukla, K. Ramasamy, and . Patel, Storm@twitter, Proc. of the 2014 ACM SIGMOD Int. Conf. on Mgmt of Data, SIGMOD '14, 2014.

P. Carbone, A. Katsifodimos, S. Ewen, V. Markl, S. Haridi et al., Apache flink: Stream and batch processing in a single engine, IEEE Data Eng. Bull, 2015.

A. Da-silva, M. D. Veith, L. De-assuno, and . Lefevre, Latency-aware placement of data stream analytics on edge computing, 16th Int. Conf. Service-Oriented Comp., ICSOC '18, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01875936

K. Yoon, P. Yoon, C. Hwang, and S. , Multiple Attribute Decision Making: An Introduction. Multiple Attribute Decision Making: An Introduction, 1995.

E. G. Renart, D. Balouek-thomert, and M. Parashar, Edge based datadriven pipelines (technical report), CoRR, 2018.

N. Kaur and S. K. Sood, Efficient resource management system based on 4vs of big data streams, Big Data Res, 2017.

W. Hu, Y. Gao, K. Ha, J. Wang, B. Amos et al., Quantifying the impact of edge computing on mobile applications, 2016.

K. Ha, P. Pillai, G. Lewis, S. Simanta, S. Clinch et al., The impact of mobile multimedia applications on data center consolidation, IEEE Int. Conf. on Cloud Engineering (IC2E), 2013.

, Microsoft Azure IoT Hub Pricing

, AWS IoT Core Pricing