SWS Academic Research eLibraryEarth & Planetary Sciences

Scholarly record

INTERACTIVE E-SCIENCE CYBERINFRASTRUCTURE FOR WORKFLOW MANAGEMENT COUPLED WITH BIGDATA TECHNOLOGY

Nasonov, Denis, Visheratin, Alexander A, Knyazkov, Konstantin V., Kovalchuk, Sergey V.

First published: 2015https://doi.org/10.5593/sgem2015/b21/s7.023View metrics

Publication Impact Profile

PlumX
  • Captures
  • Mendeley - Readers: 16

Publication details

Title
INTERACTIVE E-SCIENCE CYBERINFRASTRUCTURE FOR WORKFLOW MANAGEMENT COUPLED WITH BIGDATA TECHNOLOGY
Authors
Nasonov, Denis, Visheratin, Alexander A, Knyazkov, Konstantin V., Kovalchuk, Sergey V.
Proceedings
SGEM International Multidisciplinary Scientific GeoConference EXPO Proceedings; 15th International Multidisciplinary Scientific GeoConference SGEM2015, INFORMATICS, GEOINFORMATICS AND REMOTE SENSING
Publisher
Stef92 Technology
Year
2015
Pages
175-182
ISSN
1314-2704
ISBN
978-619-7105-34-6
Language
en
Publication type
Conference Paper
References30
  1. Yu J., Buyya R. A taxonomy of workflow management systems for grid computing //Journal of Grid Computing. – 2005. – Т. 3. – №. 3-4. – С. 171-200.;

  2. Foster I. et al. Cloud computing and grid computing 360 -degree compared //Grid Computing Environments Workshop, 2008. GCE'08. – Ieee, 2008. – С. 1-10.

  3. Tansley S. et al. (ed.). The fourth paradigm: data -intensive scientific discovery. – Redmond, WA : Microsoft Research, 2009. – Т. 1.

  4. Assunção M. D. et al. Big Data computing and clouds: Trends and future directions //Journal of Parallel and Distributed Computing. – 2014.

  5. Manjunatha A. et al. Getting Code Near the Data: A Study of Generating Customized Data Intensive Scientific Workflows with DSL. – 2010.

  6. Baranowski M., Belloum A., Bubak M. MapReduce Operations with WS -VLAM WMS //Procedia Computer Science. – 2013. – Т. 18. – С. 2599-2602.

  7. Gil Y. et al. Time -bound analytic tasks on large datasets through dynamic configuration of workflows //Proceedings of the 8th Workshop on Workflows in Support of Large-Scale Science. – ACM, 2013. – С. 88-97.

  8. Gil Y. et al. Examining the challenges of scientific workflows //Ieee computer. – 2007. – Т. 40. – №. 12. – С. 26-34.

  9. Foster I., Kesselman C. Scaling system -level science: Scientific exp loration and IT implications //Computer. – 2006. – №. 11. – С. 31-39.

  10. Boukhanovsky A. V., Kovalchuk S. V., Maryin S. V. Intelligent software platform for complex system computer simulation: conception, architecture and implementation //Izvestiya VUZov. Priborostroenie. – 2009. – Т. 10. – С. 5-24.

  11. Knyazkov K. V. et al. CLAVIRE: e -Science infrastructure for data -driven computing //Journal of Computational Science. – 2012. – Т. 3. – №. 6. – С. 504- 510.

  12. Kovalchuk S. V. et al. Knowledge -based Expressive Technolo gies within Cloud Computing Environments //PAoIS. – Springer Berlin Heidelberg, 2014. – С. 1-11.

  13. Knyazkov K. V. et al. Interactive workflow -based infrastructure for urgent computing //Procedia Computer Science. – 2013. – Т. 18. – С. 2223-2232.

  14. Kovalchuk S. V. et al. Virtual Simulation Objects concept as a framework for system-level simulation //arXiv preprint arXiv:1211.7080. – 2012.

  15. Kovalchuk S. V. et al. A Technology for BigData Analysis Task Description Using Domain-specific Languages //Procedia Computer Science. – 2014. – Т. 29. – С. 488-498. International Multidisciplinary Scientific GeoConfenferences SGEM 2015 www.sgem.org

  16. Yu J., Buyya R. A taxonomy of workflow management systems for grid computing //Journal of Grid Computing. – 2005. – Т. 3. – №. 3-4. – С. 171-200.;

  17. Foster I. et al. Cloud computing and grid computing 360 -degree compared //Grid Computing Environments Workshop, 2008. GCE'08. – Ieee, 2008. – С. 1-10.

  18. Tansley S. et al. (ed.). The fourth paradigm: data -intensive scientific discovery. – Redmond, WA : Microsoft Research, 2009. – Т. 1.

  19. Assunção M. D. et al. Big Data computing and clouds: Trends and future directions //Journal of Parallel and Distributed Computing. – 2014.

  20. Manjunatha A. et al. Getting Code Near the Data: A Study of Generating Customized Data Intensive Scientific Workflows with DSL. – 2010.

  21. Baranowski M., Belloum A., Bubak M. MapReduce Operations with WS -VLAM WMS //Procedia Computer Science. – 2013. – Т. 18. – С. 2599-2602.

  22. Gil Y. et al. Time -bound analytic tasks on large datasets through dynamic configuration of workflows //Proceedings of the 8th Workshop on Workflows in Support of Large-Scale Science. – ACM, 2013. – С. 88-97.

  23. Gil Y. et al. Examining the challenges of scientific workflows //Ieee computer. – 2007. – Т. 40. – №. 12. – С. 26-34.

  24. Foster I., Kesselman C. Scaling system -level science: Scientific exp loration and IT implications //Computer. – 2006. – №. 11. – С. 31-39.

  25. Boukhanovsky A. V., Kovalchuk S. V., Maryin S. V. Intelligent software platform for complex system computer simulation: conception, architecture and implementation //Izvestiya VUZov. Priborostroenie. – 2009. – Т. 10. – С. 5-24.

  26. Knyazkov K. V. et al. CLAVIRE: e -Science infrastructure for data -driven computing //Journal of Computational Science. – 2012. – Т. 3. – №. 6. – С. 504- 510.

  27. Kovalchuk S. V. et al. Knowledge -based Expressive Technolo gies within Cloud Computing Environments //PAoIS. – Springer Berlin Heidelberg, 2014. – С. 1-11.

  28. Knyazkov K. V. et al. Interactive workflow -based infrastructure for urgent computing //Procedia Computer Science. – 2013. – Т. 18. – С. 2223-2232.

  29. Kovalchuk S. V. et al. Virtual Simulation Objects concept as a framework for system-level simulation //arXiv preprint arXiv:1211.7080. – 2012.

  30. Kovalchuk S. V. et al. A Technology for BigData Analysis Task Description Using Domain-specific Languages //Procedia Computer Science. – 2014. – Т. 29. – С. 488-498. International Multidisciplinary Scientific GeoConfenferences SGEM 2015 www.sgem.org

View or Download full articleAccess options
Full paper accessChoose SWS login, librarian support, or instant article download.

SWS access login

Login as SWS Scientific Committee

Authors and approved SWS contributors will read and export their own linked papers after identity matching by SWS profile, email and SGEM GlobalID.

For librarian assistance: [email protected]

Purchase Instant Access

48-hour online accessComing soon
Online-only accessComing soon
Download the full article in PDF formatEUR 35
  • Article can be downloaded after successful payment.
  • Article may be used according to SWS library access terms.
  • Article cannot be redistributed.
Get full paper

Back to publication list