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Analyzing related raw data files through dataflows
Author(s) -
Silva Vítor,
Oliveira Daniel,
Valduriez Patrick,
Mattoso Marta
Publication year - 2015
Publication title -
concurrency and computation: practice and experience
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.309
H-Index - 67
eISSN - 1532-0634
pISSN - 1532-0626
DOI - 10.1002/cpe.3616
Subject(s) - computer science , raw data , database , workflow , data file , data management , computer file , programming language
Summary Computer simulations may ingest and generate high numbers of raw data files. Most of these files follow a de facto standard format established by the application domain, for example, Flexible Image Transport System for astronomy. Although these formats are supported by a variety of programming languages, libraries, and programs, analyzing thousands or millions of files requires developing specific programs. Database management systems (DBMS) are not suited for this, because they require loading the raw data and structuring it, which becomes heavy at large scale. Systems like NoDB, RAW, and FastBit have been proposed to index and query raw data files without the overhead of using a database management system. However, these solutions are focused on analyzing one single large file instead of several related files. In this case, when related files are produced and required for analysis, the relationship among elements within file contents must be managed manually, with specific programs to access raw data. Thus, this data management may be time‐consuming and error‐prone. When computer simulations are managed by a scientific workflow management system (SWfMS), they can take advantage of provenance data to relate and analyze raw data files produced during workflow execution. However, SWfMS registers provenance at a coarse grain, with limited analysis on elements from raw data files. When the SWfMS is dataflow‐aware, it can register provenance data and the relationships among elements of raw data files altogether in a database, which is useful to access the contents of a large number of files. In this paper, we propose a dataflow approach for analyzing element data from several related raw data files. Our approach is complementary to the existing single raw data file analysis approaches. We use the Montage workflow from astronomy and a workflow from Oil and Gas domain as data‐intensive case studies. Our experimental results for the Montage workflow explore different types of raw data flows like showing all linear transformations involved in projection simulation programs, considering specific mosaic elements from input repositories. The cost for raw data extraction is approximately 3.7% of the total application execution time. Copyright © 2015 John Wiley & Sons, Ltd.

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