MR-Edge: a MapReduce-based Protocol for IoT Edge Computing with resource constraints.
View/ Open
Date
2019Author
Wang, Qian
Lee, Brian
Murray, Niall
Qiao, Yuansong
Metadata
Show full item recordAbstract
Edge computing is proposed to remedy the
Cloud-only processing architecture for Internet of Things (IoT)
because of the massive amounts of IoT data. The challenge is
how to deploy and execute data processing tasks on
heterogeneous IoT edge network. As MapReduce is a wellknown
model in Cloud computing for distributed processing of
big data, this paper aims to devise a MapReduce-based
protocol to achieve IoT edge computing. Our design is built
upon the novel Information Centric Networking (ICN), which
supports function naming and forwarding so as to facilitate
task distribution among edge devices. To guarantee the
correctness of task execution, a tree topology is formed in our
approach to establish the logical connection between different
types of edge devices, namely processing-capable nodes and
forward-only ones. Moreover, the proposed protocol includes a
task maintenance scheme that enables the coexistence of
multiple IoT computation jobs. A testbed is implemented on
ndnSIM to verify the feasibility of our design. The results show
our approach could significantly decrease the network traffic
compared with centralized data processing.
Collections
The following license files are associated with this item: