% This data is distributed under the terms of the Open Data Commons Attribution License (ODC-By) v1.0 - See more at: http://opendatacommons.org/licenses/by/1-0/ @Article{OJIOT_2020v6i1n03_Huu, title = {MASCARA (ModulAr Semantic CAching fRAmework) towards FPGA Acceleration for IoT Security Monitoring}, author = {Van Long Nguyen Huu and Julien Lallet and Emmanuel Casseau and Laurent d'Orazio}, journal = {Open Journal of Internet Of Things (OJIOT)}, issn = {2364-7108}, year = {2020}, volume = {6}, number = {1}, pages = {14--23}, url = {https://www.ronpub.com/ojiot/OJIOT_2020v6i1n03_Huu.html}, publisher = {RonPub}, bibsource = {RonPub}, abstract = {With the explosive growth of the Internet Of Things (IOTs), emergency security monitoring becomes essential to efficiently manage an enormous amount of information from heterogeneous systems. In concern of increasing the performance for the sequence of online queries on long-term historical data, query caching with semantic organization, called Semantic Query Caching or Semantic Caching (SC), can play a vital role. SC is implemented mostly in software perspective without providing a generic description of modules or cache services in the given context. Hardware acceleration with FPGA opens new research directions to achieve better performance for SC. Hence, our work aims to propose a flexible, adaptable, and tunable ModulAr Semantic CAching fRAmework (MASCARA) towards FPGA acceleration for fast and accurate massive logs processing applications.} }