R. Angles and C. Gutierrez, Survey of Graph Database Models, ACM Comput Surv, vol.40, issue.1, 2008.

R. Kumar-kaliyar, Graph databases: A survey, International Conference on Computing, Communication Automation, pp.785-790, 2015.

, Neo4j Graph Platform -The Leader in Graph Databases', Neo4j Graph Database Platform, 2019.

, graph/graphTOC.html (accessed Oct, vol.16, 2019.

, Multi-model highly available NoSQL database -ArangoDB, 2019.

Z. Ding and R. Hartmut-güting, Modeling Temporally Variable Transportation Networks, Database Systems for Advanced Applications. DASFAA, pp.154-168, 2004.

B. George and S. Shekhar, Time-Aggregated Graphs for Modeling Spatio-temporal Networks, J. Data Semant. XI, vol.5383, pp.191-212, 2008.

B. George, J. M. Kang, and S. Shekhar, Spatio-Temporal Sensor Graphs (STSG): A data model for the discovery of spatio-temporal patterns, Intell. Data Anal, vol.13, issue.3, pp.457-475, 2009.

K. Semertzidis, E. Pitoura, E. Terzi, and P. Tsaparas, Best Friends Forever (BFF): Finding Lasting Dnese Subgraphs, 2017.

S. Shekhar and D. Oliver, Computational Modeling of Spatiotemporal Social Networks: A Time-Aggregated Graph Approach, 2010.

, A Consensus Glossary of Temporal Database Concepts, SIGMOD Rec, vol.23, issue.1, pp.52-64, 1994.

J. A. Gohil and P. M. Dolia, Checking and verifying temporal data validity using valid time temporal dimension and queries in oraccle12C', International journal of database management systems (IJDMS), 2015.

L. Yang, L. Qi, Y. Zhao, B. Gao, and T. Liu, Link Analysis Using Time Series of Web Graphs, Proceedings of the Sixteenth ACM Conference on Conference on Information and Knowledge Management, pp.1011-1014, 2007.

P. J. Mucha, T. Richardson, K. Macon, M. A. Porter, and J. Onnela, Community Structure in Time-Dependent, Multiscale, and Multiplex Networks', Science, vol.328, pp.876-878, 2010.

W. Huo and V. J. Tsotras, Efficient Temporal Shortest Path Queries on Evolving Social Graphs, Proceedings of the 26th International Conference on Scientific and Statistical Database Management, vol.38, pp.1-38, 2014.

R. K. Pan and J. Saramäki, Path lengths, correlations, and centrality in temporal networks, Phys Rev E, vol.84, issue.1, p.16105, 2011.

H. N. Chaudhry, FlowGraph: Distributed Temporal Pattern Detection over Dynamically Evolving Graphs, Proceedings of the 13th ACM International Conference on Distributed and Eventbased Systems, pp.272-275, 2019.

W. Han, Chronos: A Graph Engine for Temporal Graph Analysis, Proceedings of the Ninth European Conference on Computer Systems, 2014.

Y. Miao, ImmortalGraph: A System for Storage and Analysis of Temporal Graphs, Trans. Storage TOS, 2015.

N. Duhan, A. Sharma, and K. K. Bhatia, Page Ranking Algorithms: A Survey, 2009 IEEE International Advance Computing Conference, pp.1530-1537, 2009.

B. Bollobás* and O. Riordan, The Diameter of a Scale-Free RandomGraph, Combinatorica, vol.24, issue.1, pp.5-34, 2004.

, RocksDB | A persistent key-value store, 2020.

A. Cassandra, , 2020.

U. Khurana and A. Deshpande, Efficient snapshot retrieval over historical graph data, 2013 IEEE 29th International Conference on Data Engineering (ICDE), pp.997-1008, 2013.

W. D. Vijitbenjaronk, J. Lee, T. Suzumura, and G. Tanase, Scalable Time-Versioning Support for Property Graph Databases, Symas Lightning Memory-mapped Database', Symas Corporation, 2017.

J. Byun, S. Woo, and D. Kim, ChronoGraph: Enabling temporal graph traversals for efficient information diffusion analysis over time, IEEE Trans. Knowl. Data Eng, pp.1-1, 2019.

M. A. Rodriguez, Gremlin's Time Machine, 2016.

C. Cattuto, A. Panisson, M. Quaggiotto, and A. Averbuch, Time-Varying Social networks in Graph Databases, First International Workshop on Graph Data Management Experiences and Systems, 2013.

H. Haixing, S. Jinghe, L. Xuelian, M. Shuai, and H. Jinpeng, TGraph: A temporal Graph Data Management System, 2016.

, Purpose-Built Open Source Time Series Database', InfluxData, 2019.

L. Deri, S. Mainardi, and F. Fusco, tsdb: A Compressed Database for Time Series, Traffic Monitoring and Analysis, pp.143-156, 2012.

M. Andersen and D. E. Culler, BTrDB: Optimizing Storage System Design for Timeseries Processing, Proceedings of the 14th USENIX Conference on File and Storage Technologies (FAST '16), 2016.

K. Yong-shin, P. Il-ha, R. Jongtae, and L. Yong-han, MongoDB-Based Repository Design for IoT-Generated RFID/Sensor Big Data, IEEE Sensors Journal, pp.485-497, 2016.

U. Khurana and A. Desphande, Storing and Analyzing Historical Graph Data at Scale, Proc. 19th International Conference on Extending Database Technology (EDBT), 2016.

V. Z. Moffitt and J. Stoyanovich, Towards a Distributed Infrastructure for Evolving Graph Analytics, Proceedings of the 25th International Conference Companion on World Wide Web, pp.843-848, 2016.

T. Hartmann, F. Fouquet, M. Jimenez, R. Rouvoy, and Y. Le-traon, Analyzing Complex Data in Motion at Scale with Temporal Graphs, International Conference on Software Engineering & Knowledge Engineering, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01511636

A. G. Labouseur, The G* graph database: efficiently managing large distributed dynamic graphs, Distrib. Parallel Databases, vol.33, pp.479-514, 2015.

P. Macko, V. J. Marathe, D. W. Margo, and M. I. Seltzer, LLAMA: Efficient graph analytics using Large Multiversioned Arrays, 2015.

A. Castelltort and A. Laurent, Representing history in graphoriented NoSQL databases: A versioning system, Eighth International Conference on Digital Information Management (ICDIM 2013), 2013.
URL : https://hal.archives-ouvertes.fr/lirmm-01381081

J. Leskovec, A. Krevl, and . Datasets,

, 2019 and is currently working toward the Ph.D. degree in temporal graph databases optimized for the internet of things (IoT) at Orange Labs