In this paper we introduce LDBC Graphalytics, a new industrial-grade benchmark for graph analysis platforms.
It consists of six deterministic algorithms, standard datasets, synthetic dataset generators, and reference output, that
enable the objective comparison of graph analysis platforms. Its test harness produces deep metrics that quantify multiple
kinds of system scalability, such as horizontal/vertical and weak/strong, and of robustness, such as failures and performance
variability. The benchmark comes with open-source software for generating data and monitoring performance. We describe and
analyze six implementations of the benchmark
(three from the community, three from the industry), providing insights into
the strengths and weaknesses of the platforms. Key to our contribution, vendors perform the tuning and benchmarking of their
platforms.
%0 Journal Article
%1 24634
%A Iosup, A.
%A Hegeman, T.
%A Ngai, W.
%A Heldens, S.
%A Prat, A.
%A Manhardt, T.
%A Chafi, H.
%A Capota, M.
%A Sundaram, N.
%A Anderson, M.
%A Tanase, I.
%A Xia, Y.
%A Nai, L.
%A Boncz, P. A.
%D 2016
%J Proceedings of the VLDB Endowment
%K ldbc-self myown sysrelevantforlod2
%N 12
%P -
%T LDBC Graphalytics: A Benchmark For Large-Scale Graph Analysis On Parallel And Distributed Platforms
%U http://oai.cwi.nl/oai/asset/24634/24634B.pdf
%V 9
%X In this paper we introduce LDBC Graphalytics, a new industrial-grade benchmark for graph analysis platforms.
It consists of six deterministic algorithms, standard datasets, synthetic dataset generators, and reference output, that
enable the objective comparison of graph analysis platforms. Its test harness produces deep metrics that quantify multiple
kinds of system scalability, such as horizontal/vertical and weak/strong, and of robustness, such as failures and performance
variability. The benchmark comes with open-source software for generating data and monitoring performance. We describe and
analyze six implementations of the benchmark
(three from the community, three from the industry), providing insights into
the strengths and weaknesses of the platforms. Key to our contribution, vendors perform the tuning and benchmarking of their
platforms.
@article{24634,
abstract = {In this paper we introduce LDBC Graphalytics, a new industrial-grade benchmark for graph analysis platforms.
It consists of six deterministic algorithms, standard datasets, synthetic dataset generators, and reference output, that
enable the objective comparison of graph analysis platforms. Its test harness produces deep metrics that quantify multiple
kinds of system scalability, such as horizontal/vertical and weak/strong, and of robustness, such as failures and performance
variability. The benchmark comes with open-source software for generating data and monitoring performance. We describe and
analyze six implementations of the benchmark
(three from the community, three from the industry), providing insights into
the strengths and weaknesses of the platforms. Key to our contribution, vendors perform the tuning and benchmarking of their
platforms.
},
added-at = {2016-09-05T21:53:07.000+0200},
author = {Iosup, A. and Hegeman, T. and Ngai, W. and Heldens, S. and Prat, A. and Manhardt, T. and Chafi, H. and Capota, M. and Sundaram, N. and Anderson, M. and Tanase, I. and Xia, Y. and Nai, L. and Boncz, P. A.},
biburl = {https://www.bibsonomy.org/bibtex/2a6065110dadfcd510b4589e004a7cbae/peterboncz},
group = {DA},
interhash = {2a56f69d9c292be93c009cd51165b821},
intrahash = {a6065110dadfcd510b4589e004a7cbae},
journal = {Proceedings of the VLDB Endowment},
keywords = {ldbc-self myown sysrelevantforlod2},
language = {en},
month = {June},
number = 12,
pages = { - },
refereed = {y},
size = {p.},
timestamp = {2016-09-05T21:53:07.000+0200},
title = {L{DBC} {Graphalytics}: {A} {Benchmark} {For} {Large-}{Scale} {Graph} {Analysis} {On} {Parallel} {And} {Distributed} {Platforms}},
url = {http://oai.cwi.nl/oai/asset/24634/24634B.pdf},
volume = 9,
year = 2016
}