Title :
SDPMN: Privacy Preserving MapReduce Network Using SDN
Author_Institution :
Services Comput. Technol. & Syst. Lab., Huazhong Univ. of Sci. & Technol., Wuhan, China
Abstract :
MapReduce is a popular programming model and an associated implementation for parallel processing big data in the distributed environment. Since large scaled MapReduce data centers usually provide services to many users, it is an essential problem to preserve the privacy between different applications in the same network. In this paper, we propose SDPMN, a framework that using software defined network (SDN) to distinguish the network between each application, which is a manageable and scalable method. We design this framework based on the existing SDN structure and Hardtop networks. Since the rule space of each SDN device is limited, we also propose the rule placement optimization for this framework to maximize the hardware supported isolated application networks. We state this problem in a general MapReduce network and design a heuristic algorithm to find the solution. From the simulation based evaluation, with our algorithm, the given network can support more privacy preserving application networks with SDN switches.
Keywords :
data privacy; optimisation; parallel processing; software defined networking; Big Data; Hardtop networks; SDN device; SDN structure; SDPMN; distributed environment; general MapReduce network; hardware supported isolated application networks; heuristic algorithm; large scaled MapReduce data centers; parallel processing; privacy preserving MapReduce network; programming model; rule placement optimization; software defined network; Data privacy; Heuristic algorithms; IP networks; Network topology; Ports (Computers); Privacy; Virtualization; MapReduce; Privacy; Software Defined Network;
Conference_Titel :
Cloud Computing and Big Data (CCBD), 2014 International Conference on
DOI :
10.1109/CCBD.2014.30