Title: SmartP2P
1SmartP2P
- A Multi-objective Framework for Finding Social
Content in P2P Smartphone Networks
- Andreas Konstantinidis, Christos Aplitsiotis and
Demetrios Zeinalipour-Yazti - Department of Computer Science, University of
Cyprus - Department of Computer Science and Engineering,
Frederick University Cyprus
Query Routing Trees (QRTs)
Multi-Objective Optimization
- QRTs are optimized to
- minimize energy during search
- minimize response time during search
- maximize recall of the user query.
Pareto-Front (PF) a set of non-dominated
solutions.
Optimizer (MOEA/D)
SmartP2P Framework
- Search Techniques
- Centralized Search objects and tags are all
uploaded on S. - Distributed Random Search objects and tags are
all stored in-situ. Query node downloads from S a
random QRT and conduct a P2P search. - SmartP2P Search objects and tags are all stored
in-situ. Query node downloads from S a PF and
selects a QRT to conduct a P2P search.
SmartLab (A Programming Cloud of Smartphones)
Datasets / Scenarios MSS-1 GeoLife (mobility)
DBLP (social) GeoLife is a real dataset by
Microsoft Research Asia, includes 1,100
trajectories of a human moving in Beijing over a
life span of two years (2007-2009). DBLP is a
real dataset by the DBLP Computer Science
Bibliography website, includes over 1.4 million
publications in XML format. MSS-2 Pics 'n'
Trails (mobility and social) Real dataset
composed of GPS traces of a user moving in Tokyo
(2007-2008) and a collection of photos, tagged by
the location taken and a short description.
SmartP2P Prototype on SmartLab
http//smartlab.cs.ucy.ac.cy/
Experimental Results SmartP2P Evaluation on
SmartLab
Acknowledgements This work was supported by the
last authors Startup Grant, Funded by the
University of Cyprus