A. Ching, S. Edunov, M. Kabiljo, D. Logothetis, and S. Muthukrishnan, One trillion edges: Graph processing at facebook-scale, 2015 International Conference on Very Large Data Bases, vol.8, pp.1804-1815, 2015.

J. Ugander and L. Backstrom, Balanced label propagation for partitioning massive graphs, 2013 ACM International Conference on Web Search and Data Mining, pp.507-516, 2013.

L. Zhu, A. Galstyan, J. Cheng, and K. Lerman, Tripartite graph clustering for dynamic sentiment analysis on social media, 2014 ACM Conference on Management of Data, pp.1531-1542, 2014.

E. Minkov, W. W. Cohen, and A. Y. Ng, Contextual search and name disambiguation in email using graphs, 2006 International Conference on Research on Development in Information Retrieval, pp.27-34, 2006.

G. Malewicz, M. H. Austern, A. J. Bik, J. C. Dehnert, I. Horn et al., Pregel: A system for large-scale graph processing, 2010 ACM Conference on Management of Data, pp.135-146, 2010.

Y. Low, D. Bickson, J. Gonzalez, C. Guestrin, A. Kyrola et al., Distributed graphlab: A framework for machine learning and data mining in the cloud, 2012 International Conference on Very Large Data Bases, vol.5, pp.716-727, 2012.

J. E. Gonzalez, Y. Low, H. Gu, D. Bickson, and C. Guestrin, Powergraph: Distributed graph-parallel computation on natural graphs, 2012 USENIX Symposium on Operating Systems Design and Implementations, pp.17-30, 2012.

, Scaling the Facebook data warehouse to 300 PB

, The court of justice declares that the commissions us safe harbour decision is invalid, 2015.

C. Mayer, M. A. Tariq, C. Li, and K. Rothermel, GrapH: Heterogeneityaware graph computation with adaptive partitioning, 2016 International Conference on Distributed Computing Systems, pp.118-128, 2016.

A. C. Zhou, Y. Xiao, Y. Gong, B. He, J. Zhai et al., Privacy regulation aware process mapping in geo-distributed cloud data centers, IEEE Transactions on Parallel and Distributed Systems, vol.30, issue.8, pp.1872-1888, 2019.

A. C. Zhou, Y. Gong, B. He, and J. Zhai, Efficient process mapping in geo-distributed cloud data centers, 2017 International Conference for High Performance Computing, Networking, Storage, and Analysis, vol.16, p.12, 2017.

Q. Pu, G. Ananthanarayanan, P. Bodik, S. Kandula, A. Akella et al., Low latency geo-distributed data analytics, 2015 ACM International Conference on Applications, Technologies, Architectures, and Protocols for Computer Communication, pp.421-434, 2015.

J. Schad, J. Dittrich, and J. Quiané-ruiz, Runtime measurements in the cloud: Observing, analyzing, and reducing variance, Proceedings of the International Conference on Very Large Data Bases Endowment, vol.3, pp.460-471, 2010.

, AWS Direct Connect Pricing, 2016.

V. Jalaparti, I. Bliznets, S. Kandula, B. Lucier, and I. Menache, Dynamic pricing and traffic engineering for timely inter-datacenter transfers, 2016 ACM International Conference on Applications, Technologies, Architectures, and Protocols for Computer Communication, pp.73-86, 2016.

J. E. Gonzalez, R. S. Xin, A. Dave, D. Crankshaw, M. J. Franklin et al., Graphx: Graph processing in a distributed dataflow framework, 2014 USENIX Symposium on Operating Systems Design and Implementations, pp.599-613, 2014.

M. Onizuka, T. Fujimori, and H. Shiokawa, Graph partitioning for distributed graph processing, Data Science and Engineering, vol.2, issue.1, pp.94-105, 2017.

T. Chen and B. Li, A distributed graph partitioning algorithm for processing large graphs, 2016 IEEE Symposium on Service-Oriented System Engineering (SOSE), pp.53-59, 2016.

F. Rahimian, A. H. Payberah, S. Girdzijauskas, M. Jelasity, and S. Haridi, A distributed algorithm for large-scale graph partitioning, ACM Transactions on Autonomous and Adaptive Systems, vol.10, issue.2, pp.1-12, 2015.

, METIS

Q. Hua, Y. Li, D. Yu, and H. Jin, Quasi-streaming graph partitioning: A game theorectical approach, IEEE Transactions on Parallel and Distributed Systems, pp.1-1, 2019.

N. Xu, B. Cui, L. Chen, Z. Huang, and Y. Shao, Heterogeneous environment aware streaming graph partitioning, IEEE Transactions on Knowledge and Data Engineering, vol.27, issue.6, pp.1560-1572, 2015.

C. Mayer, R. Mayer, M. A. Tariq, H. Geppert, L. Laich et al., Adwise: Adaptive window-based streaming edge partitioning for high-speed graph processing, 2018 International Conference on Distributed Computing Systems, pp.685-695, 2018.

A. C. Zhou, S. Ibrahim, and B. He, On achieving efficient data transfer for graph processing in geo-distributed datacenters, 2017 International Conference on Distributed Computing Systems, pp.1397-1407, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01560187

S. Jain, A. Kumar, S. Mandal, J. Ong, L. Poutievski et al., B4: Experience with a globally-deployed software defined wan, 2013 ACM International Conference on Applications, Technologies, Architectures, and Protocols for Computer Communication, pp.3-14, 2013.

S. Brin and L. Page, The anatomy of a large-scale hypertextual web search engine, 1998 International World Wide Web Conferences, pp.107-117, 1998.

D. P. Bertsekas, F. Guerriero, and R. Musmanno, Parallel asynchronous label-correcting methods for shortest paths, Journal of Optimization Theory and Applications, vol.88, issue.2, pp.297-320, 1996.

S. Ma, Y. Cao, W. Fan, J. Huai, and T. Wo, Capturing topology in graph pattern matching, 2011 International Conference on Very Large Data Bases, vol.5, pp.310-321, 2011.

F. Petroni, L. Querzoni, K. Daudjee, S. Kamali, and G. Iacoboni, Hdrf: Stream-based partitioning for power-law graphs, 2015 ACM International Conference on Information and Knowledge Management, pp.243-252, 2015.

I. Stanton and G. Kliot, Streaming graph partitioning for large distributed graphs, 2012 ACM Knowledge Discovery and Data Mining, pp.1222-1230, 2012.

M. Mitzenmacher, The power of two choices in randomized load balancing, IEEE Transactions on Parallel and Distributed Systems, vol.12, issue.10, pp.1094-1104, 2001.

S. Venkataraman, A. Panda, G. Ananthanarayanan, M. J. Franklin, and I. Stoica, The power of choice in data-aware cluster scheduling, 2014 USENIX Symposium on Operating Systems Design and Implementations, pp.301-316, 2014.

X. Ren, G. Ananthanarayanan, A. Wierman, and M. Yu, Hopper: Decentralized speculation-aware cluster scheduling at scale, 2015 ACM International Conference on Applications, Technologies, Architectures, and Protocols for Computer Communication, pp.379-392, 2015.

J. Huang and D. J. Abadi, Leopard: Lightweight edge-oriented partitioning and replication for dynamic graphs, 2016 International Conference on Very Large Data Bases, vol.9, pp.540-551, 2016.

J. Zhong and B. He, Medusa: Simplified graph processing on gpus, IEEE Transactions on Parallel and Distributed Systems, vol.25, issue.6, pp.1543-1552, 2014.

, Prior to that, she was a Postdoc Fellow in Inria-Bretagne research center