Repositori institucional URV
Español Català English
TITLE:
BenchBox: A User-Driven Benchmarking Framework for Fat-Client Storage Systems - imarina:6389373

URV's Author/s:García López, Pedro Antonio / GRACIA TINEDO, RAÚL / Sanchez Artigas, Marc
Author, as appears in the article.:Gracia-Tinedo R; Zou C; Sanchez-Artigas M; Garcia-Lopez P
Author's mail:marc.sanchez@urv.cat
pedro.garcia@urv.cat
Author identifier:0000-0002-9700-7318
0000-0002-9848-1492
Journal publication year:2018
Publication Type:Journal Publications
ISSN:10459219
APA:Gracia-Tinedo R; Zou C; Sanchez-Artigas M; Garcia-Lopez P (2018). BenchBox: A User-Driven Benchmarking Framework for Fat-Client Storage Systems. Ieee Transactions On Parallel And Distributed Systems, 29(10), 2191-2205. DOI: 10.1109/TPDS.2018.2819657
Papper original source:Ieee Transactions On Parallel And Distributed Systems. 29 (10): 2191-2205
Abstract:© 1990-2012 IEEE. In many online storage services, end-users mainly interact with the system via 'fat' storage clients that integrate complex functionality. This means that to obtain a complete performance evaluation of one of such systems we may need to generate workloads on the client side that reproduce the behavior of real users. Unfortunately, this remains as an open research challenge today. We present BenchBox: A distributed performance evaluation framework for fat-client storage systems. On the one hand, BenchBox can generate workloads directly in storage clients that mimic users exhibiting a certain behavior, namely, user stereotypes. To this end, the framework enables to plug-in workload models and feed them with compact recipes that capture the behavior of user stereotypes (e.g., storage activity, type of file contents, data sharing links). On the other hand, BenchBox provides researchers with management and monitoring facilities to deploy experiments and analyze the performance of groups of storage clients. To demonstrate our framework, we equipped BenchBox with a 2-layer workload model that reproduces both the activity-e.g., types of operations, frequency-and data-e.g., file sizes, data types-of users in a Personal Cloud. We used this model to generate workloads based on user stereotypes that we identified in real traces (UbuntuOne). Our experiments with public providers show how distinct types of users impact on the performance and efficiency of Personal Clouds, which may guide their optimization.
Article's DOI:10.1109/TPDS.2018.2819657
Link to the original source:https://ieeexplore.ieee.org/document/8325508
Papper version:info:eu-repo/semantics/acceptedVersion
licence for use:https://creativecommons.org/licenses/by/3.0/es/
Department:Enginyeria Informàtica i Matemàtiques
Licence document URL:https://repositori.urv.cat/ca/proteccio-de-dades/
Thematic Areas:Signal processing
Interdisciplinar
Hardware and architecture
Engineering, electrical & electronic
Engenharias iv
Computer science, theory & methods
Computational theory and mathematics
Ciências biológicas i
Ciência da computação
Keywords:User modeling
Personal clouds
Performance evaluation
Noves tecnologies de la informació i de la comunicació
Client-centric benchmarking
Entity:Universitat Rovira i Virgili
Record's date:2024-09-07
Search your record at:

Available files
FileDescriptionFormat
DocumentPrincipalDocumentPrincipalapplication/pdf

Information

© 2011 Universitat Rovira i Virgili