Authors
Pankaj Gupta, Venu Satuluri, Ajeet Grewal, Siva Gurumurthy, Volodymyr Zhabiuk, Quannan Li, Jimmy Lin
Publication date
2014/8/1
Journal
Proceedings of the VLDB Endowment
Volume
7
Issue
13
Pages
1379-1380
Publisher
VLDB Endowment
Description
We describe a production Twitter system for generating relevant, personalized, and timely recommendations based on observing the temporally-correlated actions of each user's followings. The system currently serves millions of recommendations daily to tens of millions of mobile users. The approach can be viewed as a specific instance of the novel problem of online motif detection in large dynamic graphs. Our current solution partitions the graph across a number of machines, and with the construction of appropriate data structures, motif detection can be translated into the lookup and intersection of adjacency lists in each partition. We conclude by discussing a generalization of the problem that perhaps represents a new class of data management systems.
Total citations
20142015201620172018201920202021202220232024128695610567
Scholar articles
P Gupta, V Satuluri, A Grewal, S Gurumurthy… - Proceedings of the VLDB Endowment, 2014