CODATA AND GLOBAL CHALLENGES IN DATA-DRIVEN SCIENCE
Abstract and keywords
Abstract (English):
This synthesis report present the scientific results of the international conference ``Global Challenges and Data-Driven Science'' which took place in St.~Petersburg, Russian Federation from 8 October to 13 October 2017. This event facilitated multidisciplinary scientific dialogue between leading scientists, data managers and experts, as well as Big Data researchers of various fields of knowledge. The St.~Petersburg conference covered a wide range of topics related to data science. It featured discussions covering the collection and processing of large amounts of data, the implementation of system analysis methods into data science, machine learning, data mining, pattern recognition, decision-making robotics and algorithms of artificial intelligence. The conference was an outstanding event in the field of scientific diplomacy and brought together more than 150 participants from 35 countries. It's success ensured the effective data science dialog between nations and continents and established a new platform for future collaboration.

Keywords:
Big Data, Open Data, FAIR principles, data-driven science, system analysis methods, data mining, machine learning, pattern recognition, international conference, CODATA
Text
Text (PDF): Read Download
References

1. Abrukov, V. S., et al. Application of Artificial Neural Networks for Solution of Scientific and Applied Problems for Combustion of Energetic Materials // Advancements in Energetic Materials and Chemical Propulsion, K. K. Kuo and J. D. Rivera (eds.) - Redding: Begell House Inc.., 2007. - p. 268.

2. Agrawal, P., Khater, S. , Gupta, M. , Sain, N. , Mohanty, D. RiPPMiner: A bioinformatics resource for deciphering chemical structures of RiPPs based on prediction of cleavage and cross-links, // Nucleic Acids Res., 2017. - v. 45 - no. W1 - p. W80.

3. Aitsi-Selmi, A., et al. Reflections on a Science and Technology Agenda for 21st Century Disaster Risk Reduction, // International Journal of Disaster Risk Science, 2016. - v. 7 - no. 1 - p. 1.

4. Amato, G., Carrara, F., Falchi, F., Gennaro, C., Meghini, C., Vairo, C. Deep learning for decentralized parking lot occupancy detection, // Expert Systems With Applications, 2017. - v. 72 - p. 327.

5. Anand, S., Mohanty, D. Computational methods for identification of novel secondary metabolite biosynthetic pathways by genome analysis // Handbook of research on computational and systems biology: Interdisciplinary applications, Limin Angela Liu, Dongquing Wei and Yixue Li (eds.) - Hershey, PA, USA: Medical Information Science Reference (IGI-Global)., 2011. - p. 380.

6. Atkins, D., et al. Revolutionizing Science and Engineering Through Cyberinfrastructure. Report of the Blue-Ribbon Advisory Panel on Cyberinfrastructure - Washington, DC: National Science Foundation., 2003.

7. Belov, S. Yu. Monitoring of parameters of coastal Arctic ecosystems for sustainability control by remote sensing in the short-wave range of radio waves // The Arctic Science Summit Week 2017 - Prague: Czech Polar Reports., 2017. - p. 380.

8. Bondur, V. G., Ginzburg, A. S. Emission of Carbon-Bearing Gases and Aerosols from Natural Fires on the Territory of Russia Based on Space Monitoring, // Doklady Earth Sciences, 2016. - v. 466 - no. 2 - p. 148.

9. Bromley, A. Policy Statements on Data Management for Global Change Research, Global Change Research Program - Washington, DC, US: Office of Science and Technology Policy., 1991.

10. CODATA, The Value of Open Data Sharing. Paper commissioned by the Group on Earth Observations - Geneva, CH: Group on Earth Observations., 2015.

11. Costello, M. J. Motivating Online Publication of Data, // Bioscience, 2009. - v. 59 - p. 418.

12. DiRenzo, J., Goward, D. A., Roberts, F. S. The Little-known Challenge of maritime cyber security (with) // Proceedings of the 6th International conference on Information, Intelligence, Systems and Applications (IISA) - USA: IEEE., 2015. - p. 1.

13. Frigg, R., Thompson, E., Werndl, C. Philosophy of Climate Science Part I, // Observing Climate Change, 2015. - v. 12 - p. 953.

14. Frolova, N., Larionov, V., Bonnin, J. Data Bases Used in Worldwide Systems for Earthquake Loss Estimation in Emergency Mode: Wenchuan Earthquake // Proc. TIEMS 2010 Conference - Beijing, China: TIEMS., 2010. - p. 4.

15. Fuss, S., et al. Betting on Negative Emissions, // Nature Climate Change, 2014. - v. 4 - no. 10 - p. 850.

16. GEA, Global Energy Assessment - Toward a Sustainable Future - Cambridge, UK and New York, USA, and Laxenburg, Austria: Cambridge University Press and the International Institute for Applied Systems Analysis., 2012.

17. Guhr, T., Müller-Groeling, A., Weidenmüller, H. A. Random-matrix theories in quantum physics: common concepts, // Physics Reports, 1998. - v. 299 - no. 4 - p. 189.

18. Gvishiani, A., Dubois, J. Artificial Intelligence and Dynamic Systems for Geophysical Applications - Paris: Springer-Verlag., 2002. - 350 pp.

19. Gvishiani, A. D., Agayan, S. M. , Dzeboev, B. A. , Belov, I. O. Recognition of Strong Earthquake - Prone Areas with a Single Learning Class, // Doklady Earth Sciences, 2017. - v. 474, Part 1 - p. 546.

20. Gvishiani, A. D., Dzeboev, B. A., Agayan, S. M. FCAZm intelligent recognition system for locating areas prone to strong earthquakes in the Andean and Caucasian mountain belts, // Izvestiya. Physics of the Solid Earth, 2016. - v. 52 - no. 4 - p. 461.

21. Gvishiani, A., et al. Fuzzy-based clustering of epicenters and strong earthquake-prone areas, // Environmental yanEngineering and Management Journal, 2013. - v. 12 - no. 1 - p. 1.

22. Hey, T., Tansley, S., Tolle, K. The Fourth Paradigm: Data-Intensive Scientific Discovery, 1 edition (October 16, 2009) - Redmond, Washington: Microsoft Research., 2009.

23. Ismail-Zadeh, A., Korotkii, A., Tsepelev, I. Data-Driver Numerical Modelling in Geodynamics: Methods and Applications - Switzerland: Springer-Nature., 2016.

24. Janssen, K. The Availability of Spatial and Environmental Data in the European Union: At the Crossroads Between Public and Economic Interests - USA: Kluwer Law International., 2010. - 617 pp.

25. Johansson, T. B., Patwardhan, A., Nakienovi, N., Gomez-Echeverri, L. Global Energy Assessment - Cambridge: Cambridge University Press., 2012.

26. Karmen, P., Montserrat, M. F., Tom, D. G., Ian, C. Science for Disaster Risk Management 2017: Knowing Better and Losing Less - Luxembourg: Publications Office of the European Union., 2017.

27. Khater, S., Gupta, M., Agrawal, P., Sain, N., Prava, J., Gupta, P., Grover, M., Kumar, N., Mohanty, D. SBSPKSv2: structure-based sequence analysis of polyketide synthases and non-ribosomal peptide synthetases, // Nucleic Acids Res., 2017. - v. 45 - no. W1 - p. W72.

28. Kofner, J., Balás, P. , Emerson, M. , Havlik, P. , Rovenskaya, E. , Stepanova, A. , Vinokurov, E. , Kabat, P. High-level consultation meeting on Eurasian Economic Integration. IIASA project ``Challenges and Opportunities of Economic Integration within a Wider European and Eurasian Space'' Executive Summary - Laxenburg, Austria: International Institute for Applied Systems Analysis., 2017.

29. Kondrashov, D., Chekroun, M., Ghil, M. Data-driven non-Markovian closure models, // Physica D, 2015. - v. 297 - p. 33.

30. Lobkovsky, L. I. The model of seismic gaps and catastrophic earthquakes in island arcs // Proceedings of 5th School of marine geology. A. P. Lisitsin (ed.), Vol. 2 - Moscow: P. P. Shirshov Inst. of Oceanology RAS., 1982. - p. 41.

31. Mau, V. Economic Crises in the Recent History of Russia, // Economic Policy, 2015. - no. 2 - p. 9.

32. Medema, M. H., Fischbach, M. A. Computational approaches to natural product discovery, // Nature Chemical Biology, 2015. - v. 11 - no. 9 - p. 639.

33. Metz, B., Davidson, O., Coninck, H. De., Loos, M., Meyer, L. IPCC Special Report on Carbon Dioxide Capture and Storage, Intergovernmental Panel on Climate Change - Geneva, Switzerland: Working Group III., 2005.

34. Nelson, Ch., et al. ACCAM global optimization model for the USCG aviation air stations // Proceedings of 2014 IIE Industrial and Systems Engineering Research conference (ISERC2014) - USA: Institute of Industrial [ampersand] Systems Engineers., 2014. - p. 1.

35. Odintsova, A., et al. Dynamics of oil and gas industry development in the 20th century using the world's largest deposits as an example: GIS project and web service, // Geoinformatics, 2017. - no. 4 - p. 2.

36. Parsons, M. A., Fox, P. A. Is Data Publication the Right Metaphor?, // Data Science Journal, 2013. - v. 12 - p. WDS32.

37. Rajendra, A., Priti, S. Knowledge-Based Systems, 1 edition - USA: Jones [ampersand] Bartlett., 2009. - 354 pp.

38. Reissell, A. IIASA Arctic Futures Initiative and Finland, Country of/on Extremes?, // Geoinformatics Research Papers, 2016. - v. 4 - p. WDS32.

39. Rybkina, A., et al. Development of geospatial database on hydrocarbon extraction methods in the 20th century for large and super large oil and gas deposits in Russia and other countries, // Russian Journal of Earth Sciences, 2016. - v. 16 - no. 6 - p. WDS32.

40. Science International, Open Data in a Big Data World - Paris: International Council for Science (ICSU), International Social Science Council (ISSC), The World Academy of Sciences (TWAS), InterAcademy Partnership (IAP)., 2015.

41. Sheremet, I. A. Augmented Post Systems: The Mathematical Framework for Knowledge and Data Engineering in Network-Centric Environment - Berlin: EANS., 2013. - 215 pp.

42. Vaisberg, L. Mehanika of loose media under vibration effects: methods of description and mathematical modeling, // Enrichment of Ores, 2015. - v. 4 - p. 21.

43. Wang, H., Sivonen, K., Fewer, D. P. Genomic insights into the distribution, genetic diversity and evolution of polyketide synthases andnonribosomal peptide synthetases, // Curr. Opin. Genet. Dev., 2015. - v. 35 - p. 79.

44. Wilkinson, Mark D., et al. The FAIR Guiding Principles for scientific data management and stewardship, // Scientific Data, 2016. - v. 3 - p. 79.

45. Zhang, Q., Doroghazi, J. R., Zhao, X., Walker, M. C., Van der Donk, W. A. Expanded natural product diversity revealed by analysis of lanthipeptide-like gene clusters in Actinobacteria, // Applied and Environmental Microbiology, 2015. - v. 81 - no. 13 - p. 4339.

46. Zlotnicki, J., Le Mouel, J. L., Gvishiani, A. Automatic fuzzy-logic recognition of anomalous activity on long geophysical records: Application to electric signals associated with the volcanic activity of La Fournaise volcano (Reunion Island), // Earth And Planetary Science Letters, 2005. - v. 234 - no. 1-2 - p. 261.

Login or Create
* Forgot password?