K. Aamodt, A. Quintana, . Achenbach, . Acounis, C. Adamová et al., The alice experiment at the cern lhc, Journal of Instrumentation, vol.3, issue.08, p.8002, 2008.
URL : https://hal.archives-ouvertes.fr/in2p3-00311441

D. Daniel-j-abadi, . Carney, C. Ugur, M. Etintemel, C. Cherniack et al., Aurora: a new model and architecture for data stream management, the VLDB Journal, vol.12, issue.2, pp.120-139, 2003.

T. Akidau, R. Bradshaw, C. Chambers, S. Chernyak, J. Rafael et al., The dataflow model: a practical approach to balancing correctness, latency, and cost in massive-scale, unbounded, out-of-order data processing, Proceedings of the VLDB Endowment, vol.8, pp.1792-1803, 2015.

A. Alexandrov, R. Bergmann, S. Ewen, J. Freytag, F. Hueske et al., The stratosphere platform for big data analytics, The VLDB JournalThe International Journal on Very Large Data Bases, vol.23, pp.939-964, 2014.

D. Battré, S. Ewen, F. Hueske, O. Kao, V. Markl et al., Nephele/pacts: a programming model and execution framework for web-scale analytical processing, Proceedings of the 1st ACM symposium on Cloud computing, pp.119-130, 2010.

B. Billet and V. Issarny, From task graphs to concrete actions: a new task mapping algorithm for the future internet of things, MASS-11th IEEE International Conference on Mobile Ad hoc and Sensor Systems, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01069838

F. Bonomi, R. Milito, J. Zhu, and S. Addepalli, Fog computing and its role in the internet of things, Proceedings of the first edition of the MCC workshop on Mobile cloud computing, pp.13-16, 2012.

P. Carbone, A. Katsifodimos, S. Ewen, V. Markl, S. Haridi et al., Apache flink: Stream and batch processing in a single engine, Bulletin of the IEEE Computer Society Technical Committee on Data Engineering, vol.36, issue.4, 2015.

V. Cardellini, V. Grassi, F. L. Presti, and M. Nardelli, Optimal operator replication and placement for distributed stream processing systems, ACM SIGMETRICS Performance Evaluation Review, vol.44, issue.4, pp.11-22, 2017.

B. Donovan and D. B. Work, New york city taxi trip data, 2010.

P. Garcia-lopez, A. Montresor, D. Epema, A. Datta, T. Higashino et al., Edge-centric computing: Vision and challenges

, ACM SIGCOMM Computer Communication Review, vol.45, issue.5, pp.37-42, 2015.

R. Ghosh and Y. Simmhan, Distributed scheduling of event analytics across edge and cloud, 2016.

N. Govindarajan, Y. Simmhan, N. Jamadagni, and P. Misra, Event processing across edge and the cloud for internet of things applications, Proceedings of the 20th International Conference on Management of Data, pp.101-104, 2014.

M. Hirzel, R. Soulé, S. Schneider, R. Bu?-gra-gedik, and . Grimm, A catalog of stream processing optimizations, ACM Computing Surveys (CSUR), vol.46, issue.4, p.46, 2014.

F. Hueske, M. Peters, M. J. Sax, A. Rheinländer, R. Bergmann et al., Opening the black boxes in data flow optimization, Proceedings of the VLDB Endowment, vol.5, pp.1256-1267, 2012.

J. Kreps, N. Narkhede, and J. Rao, A distributed messaging system for log processing, Proceedings of the NetDB, pp.1-7, 2011.

I. Legrand, C. Cirstoiu, . Grigoras, . Voicu, C. Toarta et al., Monalisa: An agent based, dynamic service system to monitor, control and optimize grid based applications, 2005.

P. Pietzuch, J. Ledlie, J. Shneidman, M. Roussopoulos, M. Welsh et al., Network-aware operator placement for stream-processing systems, Data Engineering, 2006. ICDE'06. Proceedings of the 22nd International Conference on, pp.49-49, 2006.

K. Hooman-peiro-sajjad, A. Danniswara, V. Al-shishtawy, and . Vlassov, Spanedge: Towards unifying stream processing over central and near-the-edge data centers, Edge Computing (SEC), pp.168-178, 2016.

S. Sharma, P. Varshney, and Y. Simmhan, Echo: An adaptive orchestration platform for hybrid dataflows across cloud and edge, Service-Oriented Computing: 15th International Conference, vol.10601, p.395, 2017.

M. Stoer and F. Wagner, A simple min-cut algorithm, Journal of the ACM (JACM), vol.44, issue.4, pp.585-591, 1997.

A. Videla and J. Williams, RabbitMQ in action: distributed messaging for everyone, 2012.

M. Zaharia, R. S. Xin, P. Wendell, T. Das, M. Armbrust et al., Apache spark: a unified engine for big data processing, Communications of the ACM, vol.59, issue.11, pp.56-65, 2016.