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iTurboGraph: Scaling and Automating Incremental Graph Analytics

Authors
Ko, SeongyunLee, TaesungHong, KijaeLee, WonseokWonseokSeo, InSeo, JiwonHan, Wook-Shin
Issue Date
Jun-2021
Publisher
ACM
Keywords
distributed systems; dynamic graph; graph analytics; incremental graph analytics
Citation
Proceedings of the ACM SIGMOD International Conference on Management of Data, pp.977 - 990
Indexed
SCOPUS
Journal Title
Proceedings of the ACM SIGMOD International Conference on Management of Data
Start Page
977
End Page
990
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/141747
DOI
10.1145/3448016.3457243
ISSN
0730-8078
Abstract
With the rise of streaming data for dynamic graphs, large-scale graph analytics meets a new requirement of Incremental Computation because the larger the graph, the higher the cost for updating the analytics results by re-execution. A dynamic graph consists of an initial graph G and graph mutation updates ΔG$ of edge insertions or deletions. Given a query Q, its results $Q(G)$, and updates for ΔG$ to G, incremental graph analytics computes updates ΔQ$ such that Q($G \cup ΔG)$ = $Q(G)$ $\cup$ ΔQ$ where $\cup$ is a union operator. In this paper, we consider the problem of large-scale incremental neighbor-centric graph analytics (\NGA ). We solve the limitations of previous systems: lack of usability due to the difficulties in programming incremental algorithms for \NGA and limited scalability and efficiency due to the overheads in maintaining intermediate results for graph traversals in \NGA. First, we propose a domain-specific language, ŁNGA, and develop its compiler for intuitive programming of \NGA, automatic query incrementalization, and query optimizations. Second, we define Graph Streaming Algebra as a theoretical foundation for scalable processing of incremental \NGA. We introduce a concept of Nested Graph Windows and model graph traversals as the generation of walk streams. Lastly, we present a system \SystemName, which efficiently processes incremental \NGA for large graphs. Comprehensive experiments show that it effectively avoids costly re-executions and efficiently updates the analytics results with reduced IO and computations.
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