Data-intensive workflow management : for clouds and data-intensive and scalable computing environments

Bibliographic Information

Data-intensive workflow management : for clouds and data-intensive and scalable computing environments

Daniel C. M. de Oliveira, Ji Liu, Esther Pacitti

(Synthesis lectures on data management, #60)

Morgan & Claypool, c2019

  • : pbk

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Note

Includes bibliographical references (p. 133-160)

DOI:10.2200/S00915ED1V01Y201904DTM060

Description and Table of Contents

Description

Workflows may be defined as abstractions used to model the coherent flow of activities in the context of an in silico scientific experiment. They are employed in many domains of science such as bioinformatics, astronomy, and engineering. Such workflows usually present a considerable number of activities and activations (i.e., tasks associated with activities) and may need a long time for execution. Due to the continuous need to store and process data efficiently (making them data-intensive workflows), high-performance computing environments allied to parallelization techniques are used to run these workflows. At the beginning of the 2010s, cloud technologies emerged as a promising environment to run scientific workflows. By using clouds, scientists have expanded beyond single parallel computers to hundreds or even thousands of virtual machines. More recently, Data-Intensive Scalable Computing (DISC) frameworks (e.g., Apache Spark and Hadoop) and environments emerged and are being used to execute data-intensive workflows. DISC environments are composed of processors and disks in large-commodity computing clusters connected using high-speed communications switches and networks. The main advantage of DISC frameworks is that they support and grant efficient in-memory data management for large-scale applications, such as data-intensive workflows. However, the execution of workflows in cloud and DISC environments raise many challenges such as scheduling workflow activities and activations, managing produced data, collecting provenance data, etc. Several existing approaches deal with the challenges mentioned earlier. This way, there is a real need for understanding how to manage these workflows and various big data platforms that have been developed and introduced. As such, this book can help researchers understand how linking workflow management with Data-Intensive Scalable Computing can help in understanding and analyzing scientific big data. In this book, we aim to identify and distill the body of work on workflow management in clouds and DISC environments. We start by discussing the basic principles of data-intensive scientific workflows. Next, we present two workflows that are executed in a single site and multi-site clouds taking advantage of provenance. Afterward, we go towards workflow management in DISC environments, and we present, in detail, solutions that enable the optimized execution of the workflow using frameworks such as Apache Spark and its extensions.

Table of Contents

Preface Acknowledgments Overview Background Knowledge Workflow Execution in a Single-Site Cloud Workflow Execution in a Multi-Site Cloud Workflow Execution in DISC Environments Conclusion Bibliography Authors' Biographies

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Details

  • NCID
    BB28555782
  • ISBN
    • 9781681735573
  • Country Code
    us
  • Title Language Code
    eng
  • Text Language Code
    eng
  • Place of Publication
    [San Rafael, Calif.]
  • Pages/Volumes
    xvii, 161 p.
  • Size
    24 cm
  • Parent Bibliography ID
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