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  • 1
    UID:
    almahu_9949087988702882
    Umfang: 1 online resource (66 pages) : , illustrations
    ISBN: 9780309314381 (e-book)
    Weitere Ausg.: Print version: Mellody, Maureen. Training students to extract value from big data : summary of a workshop. Washington, District of Columbia : The National Academies Press, c2014 ISBN 9780309314343
    Sprache: Englisch
    Schlagwort(e): Electronic books.
    Bibliothek Standort Signatur Band/Heft/Jahr Verfügbarkeit
    BibTip Andere fanden auch interessant ...
  • 2
    UID:
    gbv_1772423157
    Umfang: xii, 180 Seiten , Illustrationen , 23 cm
    ISBN: 9780309314343 , 0309314348
    Serie: Consensus study report
    Inhalt: Front matter -- Summary -- 1. Introduction -- 2. Governance of the MDV Enterprise-- 3. Technical MDV Capabilities and Research and Development -- 4. Conclusion
    Inhalt: Appendix A: Statement of Task -- Appendix B: List of Findings and Recommendations -- Appendix C: Summary of the Defense Science Board Task Force Report: Assessment of Nuclear Monitoring and Verification Technologies -- Appendix D: Summary of the 2018 Plan for Verification, Detection, and Monitoring of Nuclear Weapons and Fissile Material -- Appendix E: Table of Technology Readiness Levels -- Appendix F: NNSA DNN (NA-20) Organizational Chart -- Appendix G: MDV at the Department of Energy National Laboratories -- Appendix H: NNSA's Over the Horizon Initiative -- Appendix I: Example Charter for the National Security Council's External Advisory Board for Monitoring, Detection, and Verification Assessment -- Appendix J: Table of Relevant Technical and Program Reviews -- Appendix K: Summary of Currently Funded NNSA/DNN R&D University Consortia -- Appendix L: Table of MDV R&D Technical Capabilities Needed for the Nuclear Fuel Cycle, Nuclear Test Explosions, and Arms Control -- Appendix M: MDV R&D Priorities Listed in the NDRD Strategic Plan for FY20202024 -- Appendix N: Committee Biographies -- Appendix O: List of Committee Meetings and Briefings.
    Inhalt: "At the request of Congress, this report presents findings and recommendations related to governance of the U.S. government's monitoring, detection, and verification (MDV) enterprise and offers findings and recommendations related to technical MDV capabilities and research, development, test, and evaluation efforts, focused in particular on the nuclear fuel cycle, nuclear test explosions, and arms control." --
    Anmerkung: Includes bibliographical references (pages 121-127)
    Sprache: Englisch
    Schlagwort(e): USA ; Kernwaffe ; Nonproliferation ; Atomstrategie ; Rüstungsbegrenzung
    Bibliothek Standort Signatur Band/Heft/Jahr Verfügbarkeit
    BibTip Andere fanden auch interessant ...
  • 3
    UID:
    edoccha_9958236240202883
    Umfang: 1 online resource (66 pages) : , illustrations
    Ausgabe: 1st ed.
    ISBN: 0-309-31440-2
    Inhalt: "As the availability of high-throughput data-collection technologies, such as information-sensing mobile devices, remote sensing, internet log records, and wireless sensor networks has grown, science, engineering, and business have rapidly transitioned from striving to develop information from scant data to a situation in which the challenge is now that the amount of information exceeds a human's ability to examine, let alone absorb, it. Data sets are increasingly complex, and this potentially increases the problems associated with such concerns as missing information and other quality concerns, data heterogeneity, and differing data formats. The nation's ability to make use of data depends heavily on the availability of a workforce that is properly trained and ready to tackle high-need areas. Training students to be capable in exploiting big data requires experience with statistical analysis, machine learning, and computational infrastructure that permits the real problems associated with massive data to be revealed and, ultimately, addressed. Analysis of big data requires cross-disciplinary skills, including the ability to make modeling decisions while balancing trade-offs between optimization and approximation, all while being attentive to useful metrics and system robustness. To develop those skills in students, it is important to identify whom to teach, that is, the educational background, experience, and characteristics of a prospective data-science student; what to teach, that is, the technical and practical content that should be taught to the student; and how to teach, that is, the structure and organization of a data-science program. Training Students to Extract Value from Big Data summarizes a workshop convened in April 2014 by the National Research Council's Committee on Applied and Theoretical Statistics to explore how best to train students to use big data. The workshop explored the need for training and curricula and coursework that should be included. One impetus for the workshop was the current fragmented view of what is meant by analysis of big data, data analytics, or data science. New graduate programs are introduced regularly, and they have their own notions of what is meant by those terms and, most important, of what students need to know to be proficient in data-intensive work. This report provides a variety of perspectives about those elements and about their integration into courses and curricula."--Publisher's description.
    Anmerkung: The Need for Training: Experiences and Case Studies -- Principles for Working with Big Data -- Courses, Curricula, and Interdisciplinary Programs -- Shared Resources -- Workshop Lessons -- Appendix A: Registered Workshop Participants -- Appendix B: Workshop Agenda -- Appendix C: Acronyms.
    Weitere Ausg.: ISBN 0-309-31434-8
    Weitere Ausg.: ISBN 0-309-31437-2
    Sprache: Englisch
    Bibliothek Standort Signatur Band/Heft/Jahr Verfügbarkeit
    BibTip Andere fanden auch interessant ...
  • 4
    UID:
    edocfu_9958236240202883
    Umfang: 1 online resource (66 pages) : , illustrations
    Ausgabe: 1st ed.
    ISBN: 0-309-31440-2
    Inhalt: "As the availability of high-throughput data-collection technologies, such as information-sensing mobile devices, remote sensing, internet log records, and wireless sensor networks has grown, science, engineering, and business have rapidly transitioned from striving to develop information from scant data to a situation in which the challenge is now that the amount of information exceeds a human's ability to examine, let alone absorb, it. Data sets are increasingly complex, and this potentially increases the problems associated with such concerns as missing information and other quality concerns, data heterogeneity, and differing data formats. The nation's ability to make use of data depends heavily on the availability of a workforce that is properly trained and ready to tackle high-need areas. Training students to be capable in exploiting big data requires experience with statistical analysis, machine learning, and computational infrastructure that permits the real problems associated with massive data to be revealed and, ultimately, addressed. Analysis of big data requires cross-disciplinary skills, including the ability to make modeling decisions while balancing trade-offs between optimization and approximation, all while being attentive to useful metrics and system robustness. To develop those skills in students, it is important to identify whom to teach, that is, the educational background, experience, and characteristics of a prospective data-science student; what to teach, that is, the technical and practical content that should be taught to the student; and how to teach, that is, the structure and organization of a data-science program. Training Students to Extract Value from Big Data summarizes a workshop convened in April 2014 by the National Research Council's Committee on Applied and Theoretical Statistics to explore how best to train students to use big data. The workshop explored the need for training and curricula and coursework that should be included. One impetus for the workshop was the current fragmented view of what is meant by analysis of big data, data analytics, or data science. New graduate programs are introduced regularly, and they have their own notions of what is meant by those terms and, most important, of what students need to know to be proficient in data-intensive work. This report provides a variety of perspectives about those elements and about their integration into courses and curricula."--Publisher's description.
    Anmerkung: The Need for Training: Experiences and Case Studies -- Principles for Working with Big Data -- Courses, Curricula, and Interdisciplinary Programs -- Shared Resources -- Workshop Lessons -- Appendix A: Registered Workshop Participants -- Appendix B: Workshop Agenda -- Appendix C: Acronyms.
    Weitere Ausg.: ISBN 0-309-31434-8
    Weitere Ausg.: ISBN 0-309-31437-2
    Sprache: Englisch
    Bibliothek Standort Signatur Band/Heft/Jahr Verfügbarkeit
    BibTip Andere fanden auch interessant ...
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