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EEC – 289Q Project Presentation
Time-Oriented Interlink Locator (TOIL) Wen-Fu Kao, Ying Yu Tai, Howard Che-Hao Chang Instructor: Dr. Chen-Nee Chuah
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Motivation and Limitation
Peer-to-Peer resource sharing among existing network infrastructure is desired Request node doesn’t know where the target node is Caused huge amount of network loading for searching the target
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Random Walk Qin Lv et al. (ACM SIGMETRICS 2002) claims it has the best performance Choose successor randomly Every walker chooses only one link Stops when TTL=0 A B C D E F G
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TOIL Algorithm Use RTT as the hint for selecting the nodes
Only search the top three nodes Distributed, Breadth first Stops when TTL=0
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TOIL Link Selection A B C D E F G A B D C F G E
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TOIL Searching Tree A B A D B C C A F E G A G C F C E C G
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Experimental Method Simulation for 100 nodes and 600 nodes graph
Generated by the GT-ITM Matlab for simulating the k random walker A C program for simulating TOIL Exhaustive searches all possible path to see the best and the worst case
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Network Topology 100 Node Graph 600 Node Graph
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Performance Comparison Ⅰ
100 Nodes Hit Rate 600 Nodes Hit Rate TOIL becomes stable when reaching enough TTL
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Performance Comparison Ⅱ
100 Nodes Traffic Load 600 Nodes Traffic Load Exponential growth vs. Linear growth TOIL is a ternary tree
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Performance Comparison Ⅲ
Hit Time Ratio (HTR)=T2/T1 T1=E[hit time|walker finds the shortest path to the target for a given TTL] T2=E[hit time|TOIL finds the shortest path to the target for a given TTL] 600 Nodes Hit Time Ratio
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Conclusion and Future Work
TOIL has the potential; needs further improvement The performance of TOIL depends on the network topology Possible modification of TOIL Binary vs. Ternary Tree Replace one of the nodes into a randomly selected one from physically connected neighbors Choose only one node instead of k nodes after certain TTL
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