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Challenges in Machine Generation of Analytic Products from Multi-Source Data - Intelligence Community Studies Board - Bog - National Academies Press -

Challenges in Machine Generation of Analytic Products from Multi-Source Data - Intelligence Community Studies Board - Bog - National Academies Press -

The Intelligence Community Studies Board of the National Academies of Sciences, Engineering, and Medicine convened a workshop on August 9-10, 2017 to examine challenges in machine generation of analytic products from multi-source data. Workshop speakers and participants discussed research challenges related to machine-based methods for generating analytic products and for automating the evaluation of these products, with special attention to learning from small data, using multi-source data, adversarial learning, and understanding the human-machine relationship. This publication summarizes the presentations and discussions from the workshop. Table of ContentsFront Matter1 Introduction2 Session 1: Plenary3 Session 2: Machine Learning from Image, Video, and Map Data4 Session 3: Machine Learning from Natural Languages5 Session 4: Learning from Multi-Source Data6 Session 5: Learning from Noisy, Adversarial Inputs7 Session 6: Learning from Social Media8 Session 7: Humans and Machines Working Together with Big Data9 Session 8: Use of Machine Learning for Privacy Ethics10 Session 9: Evaluation of Machine-Generated Products11 Session 10: Capability Technology MatrixAppendixesAppendix A: Biographical Sketches of Workshop Planning CommitteeAppendix B: Workshop AgendaAppendix C: Workshop Statement of TaskAppendix D: Capability Technology TablesAppendix E: Acronyms

DKK 344.00
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Intelligent Human-Machine Collaboration - National Research Council - Bog - National Academies Press - Plusbog.dk

Intelligent Human-Machine Collaboration - National Research Council - Bog - National Academies Press - Plusbog.dk

On June 12-14, 2012, the Board on Global Science and Technology held an international, multidisciplinary workshop in Washington, D.C., to explore the challenges and advances in intelligent human-machine collaboration (IH-MC), particularly as it applies to unstructured environments. This workshop convened researchers from a range of science and engineering disciplines, including robotics, human-robot and human-machine interaction, software agents and multi-agentsystems, cognitive sciences, and human-machine teamwork. Participants were drawn from research organizations in Australia, China, Germany, Israel, Italy, Japan, the Netherlands, the United Arab Emirates, the United Kingdom, and the United States. The first day of the workshop participants worked to determine how advances in IH-MC over the next two to three years could be applied solving a variety of different real-world scenarios in dynamic unstructured environments, ranging from managing a natural disaster to improving small-lot agile manufacturing. On the second day of the workshop, participants organized into small groups for a deeper exploration of research topics that had arisen, discussion of common challenges, hoped-for breakthroughs, and the national, transnational, and global context in which this research occurs. Day three of the workshop consisted of small groups focusing on longer term research deliverables, as well as identifying challenges and opportunities from different disciplinary and cultural perspectives. In addition, ten participants gave presentations on their research, ranging from human-robot communication, to disaster response robots, to human-in-the-loop control of robot systems. Intelligent Human-Machine Collaboration: Summary of a Workshop describes in detail the discussions and happenings of the three day workshop. Table of ContentsFront Matter1 Introduction2 Scenario Exercises3 Human-Machine Teamwork Panels4 Common Challenges and Breakthroughs5 Global and Transnational Issues6 Revisiting the ScenariosAppendix A: Workshop ParticipantsAppendix B: Workshop AgendaAppendix C: Presentation Abstracts

DKK 208.00
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Machine Learning and Artificial Intelligence to Advance Earth System Science - Computer Science And Telecommunications Board - Bog - National

Machine Learning and Artificial Intelligence to Advance Earth System Science - Computer Science And Telecommunications Board - Bog - National

The Earth system - the atmospheric, hydrologic, geologic, and biologic cycles that circulate energy, water, nutrients, and other trace substances - is a large, complex, multiscale system in space and time that involves human and natural system interactions. Machine learning (ML) and artificial intelligence (AI) offer opportunities to understand and predict this system. Researchers are actively exploring ways to use ML/AI approaches to advance scientific discovery, speed computation, and link scientific communities. To address the challenges and opportunities around using ML/AI to advance Earth system science, the National Academies convened a workshop in February 2022 that brought together Earth system experts, ML/AI researchers, social and behavioral scientists, ethicists, and decision makers to discuss approaches to improving understanding, analysis, modeling, and prediction. Participants also explored educational pathways, responsible and ethical use of these technologies, and opportunities to foster partnerships and knowledge exchange. This publication summarizes the workshop discussions and themes that emerged throughout the meeting. Table of ContentsFront MatterOverviewIntroductionEmerging Approaches for Using, Interpreting, and Integrating ML/AI for Earth System ScienceChallenges and Risks of Using ML/AI for Earth System ScienceIdentifying Future Opportunities to Accelerate ProgressClosing ThoughtsReferencesAppendix A: Statement of TaskAppendix B: Planning Committee BiographiesAppendix C: Workshop Agenda

DKK 195.00
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Frontiers of Engineering - National Academy Of Engineering - Bog - National Academies Press - Plusbog.dk

Frontiers of Engineering - National Academy Of Engineering - Bog - National Academies Press - Plusbog.dk

This volume presents papers on the topics covered at the National Academy of Engineering's 2017 US Frontiers of Engineering Symposium. Every year the symposium brings together 100 outstanding young leaders in engineering to share their cutting-edge research and innovations in selected areas. The 2017 symposium was held September 25-27 at the United Technologies Research Center in East Hartford, Connecticut. The intent of this book is to convey the excitement of this unique meeting and to highlight innovative developments in engineering research and technical work. Table of ContentsFront MatterMACHINES THAT TEACH THEMSELVESMachines That Teach Themselves - Rajan BhattacharyyaHumans and Computers Working Together to Measure Machine Learning Interpretability - Jordan Boyd-GraberENERGY STRATEGIES TO POWER OUR FUTUREEnergy Strategies to Power Our Future - Katherine Dykes and Jeremy MundayAgile Fractal Systems: Reenvisioning Power System Architecture - Timothy D. Heidel and Craig MillerBig Data and Analytics for Wind Energy Operations and Maintenance: Opportunities, Trends, and Challenges in the Industrial Internet - Bouchra BouqataAcross Dimensions and Scales: How Imaging and Machine Learning Will Help Design Tomorrow's Energy Conversion Devices - Mariana BertoniWireless Charging of Electric Vehicles - Khurram AfridiUNRAVELING THE COMPLEXITY OF THE BRAINUnraveling the Complexity of the Brain - Xue Han and Maryam M. ShanechiTechnologies to Interface with the Brain for Recording and Modulation - Ellis MengBrain-Machine Interface Paradigms for Neuroscience and Clinical Translation - Samantha R. Santacruz, Vivek R. Athalye, Ryan M. Neely, and Jose M. CarmenaThe Roles of Machine Learning in Biomedical Science - Konrad Paul Kording, Ari S. Benjamin, Roozbeh Farhoodi, and Joshua I. GlaserEfficient Feature Extraction and Classification Methods in Neural Interfaces - Mahsa Shoaran, Benyamin A. Haghi, Masoud Farivar, and Azita EmamiMEGATALL BUILDINGS AND OTHER FUTURE PLACES OF WORKMegatall Buildings and Other Future Places of Work - Maria Paz Gutierrez and Marija TrckaThe Evolution of Elevators: Physical-Human Interface, Digital Interaction, and Megatall Buildings - Stephen R. NicholsSupertall Timber: Functional Natural Materials for High-Rise Structures - Michael H. RamageApplications of Insights from Biology and Mathematics to the Design of Material Structures - Jenny E. SabinAPPENDIXESContributorsParticipantsProgram

DKK 292.00
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Implications of Artificial Intelligence for Cybersecurity - Computer Science And Telecommunications Board - Bog - National Academies Press -

Implications of Artificial Intelligence for Cybersecurity - Computer Science And Telecommunications Board - Bog - National Academies Press -

In recent years, interest and progress in the area of artificial intelligence (AI) and machine learning (ML) have boomed, with new applications vigorously pursued across many sectors. At the same time, the computing and communications technologies on which we have come to rely present serious security concerns: cyberattacks have escalated in number, frequency, and impact, drawing increased attention to the vulnerabilities of cyber systems and the need to increase their security. In the face of this changing landscape, there is significant concern and interest among policymakers, security practitioners, technologists, researchers, and the public about the potential implications of AI and ML for cybersecurity. The National Academies of Sciences, Engineering, and Medicine convened a workshop on March 12-13, 2019 to discuss and explore these concerns. This publication summarizes the presentations and discussions from the workshop. Table of ContentsFront Matter1 Introduction and Context2 Artificial Intelligence and the Landscape of Cyber Engagements3 Currently Deployed Artificial Intelligence and Machine Learning Tools for Cyber Defense Operations4 Adversarial Artificial Intelligence for Cybersecurity: Research and Development and Emerging Areas5 Security Risks of Artificial Intelligence-Enabled Systems6 Deep Fakes7 Wrap-Up Discussion: Identifying Key Implications and Open QuestionsAppendixesAppendix A: Workshop AgendaAppendix B: Additional Discussion Questions from SponsorAppendix C: Planning Committee and Staff BiographiesAppendix D: Speaker BiographiesAppendix E: Abbreviations and Acronyms

DKK 396.00
1

Human-Automation Interaction Considerations for Unmanned Aerial System Integration into the National Airspace System - Division Of Behavioral And

Human-Automation Interaction Considerations for Unmanned Aerial System Integration into the National Airspace System - Division Of Behavioral And

Prior to 2012, unmanned aircraft systems (UAS) technology had been primarily used by the military and hobbyists, but it has more recently transitioned to broader application, including commercial and scientific applications, as well as to expanded military use. These new uses encroach on existing structures for managing the nation's airspace andpresent significant challenges to ensure that UASs are coordinated safely and suitably with existing manned aircraft and air traffic management systems, particularly with the National Airspace System (NAS). Of particular concern is the interaction between human pilots, operators, or controllers and increasingly automated systems. Enhanced understanding ofthese interactions is essential to avoid unintended consequences, especially as new technologies emerge. In order to explore these issues, the National Academies of Sciences, Engineering, and Medicine organized a 2-day workshop in January 2018. This publication summarizes the presentations and discussions from the workshop. Table of ContentsFront Matter1 Introduction2 Human-Systems Integration Issues for UASs and Automation Technologies3 The Reality of Full Ground-Control Automation4 Transition Planning from Old to New Ground-Control Systems5 Near-Term Human-Systems Integration Challenges with UAS Automation6 Knowledge Gaps7 DoD R&D Efforts in Ground-Control Systems8 Man vs. Machine or Man Machine?9 Considerations for a Remote Pilot in Command10 Final ThoughtsAppendixesAppendix A: Workshop ParticipantsAppendix B: Workshop AgendaAppendix C: Biographical Sketches of Steering Committee Members and Presenters

DKK 448.00
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Data-Driven Modeling for Additive Manufacturing of Metals - Board On Mathematical Sciences And Analytics - Bog - National Academies Press - Plusbog.dk

Data-Driven Modeling for Additive Manufacturing of Metals - Board On Mathematical Sciences And Analytics - Bog - National Academies Press - Plusbog.dk

Additive manufacturing (AM) is the process in which a three-dimensional object is built by adding subsequent layers of materials. AM enables novel material compositions and shapes, often without the need for specialized tooling. This technology has the potential to revolutionize how mechanical parts are created, tested, and certified. However, successful real-time AM design requires the integration of complex systems and often necessitates expertise across domains. Simulation-based design approaches, such as those applied in engineering product design and material design, have the potential to improve AM predictive modeling capabilities, particularly when combined with existing knowledge of the underlying mechanics. These predictive models have the potential to reduce the cost of and time for concept-to-final-product development and can be used to supplement experimental tests. The National Academies convened a workshop on October 24-26, 2018 to discuss the frontiers of mechanistic data-driven modeling for AM of metals. Topics of discussion included measuring and modeling process monitoring and control, developing models to represent microstructure evolution, alloy design, and part suitability, modeling phases of process and machine design, and accelerating product and process qualification and certification. These topics then led to the assessment of short-, immediate-, and long-term challenges in AM. This publication summarizes the presentations and discussions from the workshop. Table of ContentsFront Matter1 Introduction2 Process Monitoring and Control3 Microstructure Evolution, Alloy Design, and Part Suitability4 Process and Machine Design5 Product and Process Qualification and Certification6 Summary of Challenges from Subgroup Discussions and Participant CommentsAppendixesAppendix A: Registered Workshop ParticipantsAppendix B: Workshop AgendaAppendix C: Workshop Statement of Task

DKK 396.00
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Complex Operational Decision Making in Networked Systems of Humans and Machines - National Research Council - Bog - National Academies Press -

Complex Operational Decision Making in Networked Systems of Humans and Machines - National Research Council - Bog - National Academies Press -

Over the last two decades, computers have become omnipresent in daily life. Their increased power and accessibility have enabled the accumulation, organization, and analysis of massive amounts of data. These data, in turn, have been transformed into practical knowledge that can be applied to simple and complex decision making alike. In many of today's activities, decision making is no longer an exclusively human endeavor. In both virtual and real ways, technology has vastly extended people's range of movement, speed and access to massive amounts of data. Consequently, the scope of complex decisions that human beings are capable of making has greatly expanded. At the same time, some of these technologies have also complicated the decision making process. The potential for changes to complex decision making is particularly significant now, as advances in software, memory storage and access to large amounts of multimodal data have dramatically increased. Increasingly, our decision making process integrates input from human judgment, computing results and assistance, and networks. Human beings do not have the ability to analyze the vast quantities of computer-generated or -mediated data that are now available. How might humans and computers team up to turn data into reliable (and when necessary, speedy) decisions?Complex Operational Decision Making in Networked Systems of Humans and Machines explores the possibilities for better decision making through collaboration between humans and computers. This study is situated around the essence of decision making; the vast amounts of data that have become available as the basis for complex decision making; and the nature of collaboration that is possible between humans and machines in the process of making complex decisions. This report discusses the research goals and relevant milestones in several enabling subfields as they relate to enhanced human-machine collaboration for complex decision making; the relevant impediments and systems-integration challenges that are preventing technological breakthroughs in these subfields; and a sense of the research that is occurring in university, government and industrial labs outside of the United States, and the implications of this research for U.S. policy. The development of human-machine collaboration for complex decision making is still in its infancy relative to where cross-disciplinary research could take it over the next generation. Complex Operational Decision Making explores challenges to progress, impediments to achieving technological breakthroughs, opportunities, and key research goals. Table of ContentsFront MatterSummary Chapter 1 Introduction Chapter 2 Computing and Decision Making Today Chapter 3 Human Elements of Team Decision Making Chapter 4 Machine and Network Elements of Team Decision Making Chapter 5 Enabling Technologies Chapter 6 Conclusion Appendix A Committee Biographies Appendix B International Visits Appendix C References

DKK 292.00
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Innovative Data Science Approaches to Identify Individuals, Populations, and Communities at High Risk for Suicide - Forum On Mental Health And

Sharing Exemplary Admissions Practices That Promote Diversity in Engineering - National Academy Of Engineering - Bog - National Academies Press -

The Role of Advanced Computation, Predictive Technologies, and Big Data Analytics in Food and Nutrition Research - Health And Medicine Division - Bog

An Examination of Emerging Bioethical Issues in Biomedical Research - Health And Medicine Division - Bog - National Academies Press - Plusbog.dk

An Examination of Emerging Bioethical Issues in Biomedical Research - Health And Medicine Division - Bog - National Academies Press - Plusbog.dk

On February 26, 2020, the Board on Health Sciences Policy of the National Academies of Sciences, Engineering, and Medicine hosted a 1-day public workshop in Washington, DC, to examine current and emerging bioethical issues that might arise in the context of biomedical research and to consider research topics in bioethics that could benefit from further attention. The scope of bioethical issues in research is broad, but this workshop focused on issues related to the development and use of digital technologies, artificial intelligence, and machine learning in research and clinical practice; issues emerging as nontraditional approaches to health research become more widespread; the role of bioethics in addressing racial and structural inequalities in health; and enhancing the capacity and diversity of the bioethics workforce. This publication summarizes the presentations and discussions from the workshop. Table of ContentsFront Matter1 Introduction2 Ethically Leveraging Digital Technology for Health3 Ethical Questions Concerning Nontraditional Approaches for Data Collection and Use4 Understanding the Impact of Inequality on Health, Disease, and Who Participates in Research5 Bioethics Research Workforce6 Reflecting on the Workshop and Looking to the FutureReferencesAppendix A: Workshop AgendaAppendix B: Speaker Biographical SketchesAppendix C: Statement of TaskAppendix D: Registered Attendees

DKK 370.00
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Mobile Technology for Adaptive Aging - Division Of Behavioral And Social Sciences And Education - Bog - National Academies Press - Plusbog.dk

Enhancing Urban Sustainability Infrastructure: Mathematical Approaches for Optimizing Investments - Division On Engineering And Physical Sciences -

Enhancing Urban Sustainability Infrastructure: Mathematical Approaches for Optimizing Investments - Division On Engineering And Physical Sciences -

The National Academies Board on Mathematical Sciences and Analytics and Board on Infrastructure and the Constructed Environment convened a 3-day public workshop on July 13, 20, and 27, 2022, to explore state-of-the-art analytical tools that could advance urban sustainability through improved prioritization of public works projects. Invited speakers included people working in urban sustainability, city planning, local public and private infrastructure, asset management, and infrastructure investment; city officials and utility officials; and statisticians, data scientists, mathematicians, economists, computer scientists, and artificial intelligence/machine learning experts. Presentations and workshop discussions provided insights into new research areas that have the potential to advance urban sustainability in public works planning, as well as the barriers to their adoption. This publication summarizes the presentation and discussion of the workshop. Table of ContentsFront MatterIntroduction1 Local Infrastructure Decision Making2 Relevant Data, Analytics, and Metrics for Infrastructure and Sustainability3 Funding and Investment Mechanisms for Infrastructure4 Decision Making for Infrastructure Investments5 Building Confidence in Data and Institutions6 Social, Physical, and Digital Infrastructure for Public Safety7 Moving Beyond Short-Termism8 Building the Ideal Sustainable City9 Workshop Themes and the Path ForwardAppendixesAppendix A: Key Resources for Decision MakersAppendix B: Workshop AgendaAppendix C: Biographical Information for Workshop Planning Committee Members and Speakers

DKK 208.00
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2015-2016 Assessment of the Army Research Laboratory - Army Research Laboratory Technical Assessment Board - Bog - National Academies Press -

2015-2016 Assessment of the Army Research Laboratory - Army Research Laboratory Technical Assessment Board - Bog - National Academies Press -

The National Academies of Sciences, Engineering, and Medicine's Army Research Laboratory Technical Assessment Board (ARLTAB) provides biennial assessments of the scientific and technical quality of the research, development, and analysis programs at the Army Research Laboratory (ARL), focusing on ballistics sciences, human sciences, information sciences, materials sciences, and mechanical sciences. This interim report summarizes the findings of the Board for the first year of this biennial assessment; the current report addresses approximately half the portfolio for each campaign; the remainder will be assessed in 2016. During the first year the Board examined the following elements within the ARL's science and technology campaigns: biological and bioinspired materials, energy and power materials, and engineered photonics materials; battlefield injury mechanisms, directed energy, and armor and adaptive protection; sensing and effecting, and system intelligence and intelligent systems; advanced computing architectures, computing sciences, data-intensive sciences, and predictive simulation sciences; human-machine interaction, intelligence and control, and perception; humans in multiagent systems, real-world behavior, and toward human variability; and mission capability of systems. A second, final report will subsume the findings of this interim report and add the findings from the second year of the review. Table of ContentsFront MatterSummary1 Introduction2 Materials Research3 Sciences for Lethality and Protection4 Information Sciences5 Computational Sciences6 Sciences for Maneuver7 Human Sciences8 Crosscutting Conclusions and Recommendations and Exceptional AccomplishmentsAppendix A: Army Research Laboratory Organization and Science and Technology Campaign FrameworkAppendix B: Biographical Sketches of Army Research LaboratoryTechnical Assessment Board Members and StaffAppendix C: Assessment CriteriaAppendix D: Acronyms

DKK 370.00
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Data Analytics and What It Means to the Materials Community - Defense Materials Manufacturing And Infrastructure Standing Committee - Bog - National

Data Analytics and What It Means to the Materials Community - Defense Materials Manufacturing And Infrastructure Standing Committee - Bog - National

Emerging techniques in data analytics, including machine learning and artificial intelligence, offer exciting opportunities for advancing scientific discovery and innovation in materials science. Vast repositories of experimental data and sophisticated simulations are being utilized to predict material properties, design and test new compositions, and accelerate nearly every facet of traditional materials science. How can the materials science community take advantage of these opportunities while avoiding potential pitfalls? What roadblocks may impede progress in the coming years, and how might they be addressed?To explore these issues, the Workshop on Data Analytics and What It Means to the Materials Community was organized as part of a workshop series on Defense Materials, Manufacturing, and Its Infrastructure. Hosted by the National Academies of Sciences, Engineering, and Medicine, the 2-day workshop was organized around three main topics: materials design, data curation, and emerging applications. Speakers identified promising data analytics tools and their achievements to date, as well as key challenges related to dealing with sparse data and filling data gaps; decisions around data storage, retention, and sharing; and the need to access, combine, and use data from disparate sources. Participants discussed the complementary roles of simulation and experimentation and explored the many opportunities for data informatics to increase the efficiency of materials discovery, design, and testing by reducing the amount of experimentation required. With an eye toward the ultimate goal of enabling applications, attendees considered how to ensure that the benefits of data analytics tools carry through the entire materials development process, from exploration to validation, manufacturing, and use. This publication summarizes the presentations and discussion of the workshop. Table of ContentsFront MatterOverview1 Introduction2 Keynote Addresses3 Materials Design4 Data Curation5 Emerging Applications6 DiscussionAppendixesAppendix A: Statement of TaskAppendix B: Workshop AgendaAppendix C: Workshop Attendee ListAppendix D: Planning Committee Biographical InformationAppendix E: Acronyms

DKK 266.00
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Strengthening Data Science Methods for Department of Defense Personnel and Readiness Missions - Committee On Strengthening Data Science Methods For

Strengthening Data Science Methods for Department of Defense Personnel and Readiness Missions - Committee On Strengthening Data Science Methods For

The Office of the Under Secretary of Defense (Personnel & Readiness), referred to throughout this report as P&R, is responsible for the total force management of all Department of Defense (DoD) components including the recruitment, readiness, and retention of personnel. Its work and policies are supported by a number of organizations both within DoD, including the Defense Manpower Data Center (DMDC), and externally, including the federally funded research and development centers (FFRDCs) that work for DoD. P&R must be able to answer questions for the Secretary of Defense such as how to recruit people with an aptitude for and interest in various specialties and along particular career tracks and how to assess on an ongoing basis service members' career satisfaction and their ability to meet new challenges. P&R must also address larger-scale questions, such as how the current realignment of forces to the Asia-Pacific area and other regions will affect recruitment, readiness, and retention. While DoD makes use of large-scale data and mathematical analysis in intelligence, surveillance, reconnaissance, and elsewhere—exploiting techniques such as complex network analysis, machine learning, streaming social media analysis, and anomaly detection—these skills and capabilities have not been applied as well to the personnel and readiness enterprise. Strengthening Data Science Methods for Department of Defense Personnel and Readiness Missions offers and roadmap and implementation plan for the integration of data analysis in support of decisions within the purview of P&R. Table of ContentsFront MatterSummary1 Introduction2 Overview of the Office of the Under Secretary of Defense (Personnel & Readiness)3 Personnel and Readiness Data and Their Use4 Overview of Data Science Methods5 Privacy and Confidentiality6 Commercial State of the Art in Human Resources Analytics7 Identifying P&R Opportunities and Implementing SolutionsAppendixesAppendix A: AcronymsAppendix B: Biographies of the CommitteeAppendix C: Meetings and PresentationsAppendix D: Stochastic Models of Uncertainty and Mathematical Optimization Under Uncertainty

DKK 318.00
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Big Data and Analytics for Infectious Disease Research, Operations, and Policy - Health And Medicine Division - Bog - National Academies Press -

Big Data and Analytics for Infectious Disease Research, Operations, and Policy - Health And Medicine Division - Bog - National Academies Press -

With the amount of data in the world exploding, big data could generate significant value in the field of infectious disease. The increased use of social media provides an opportunity to improve public health surveillance systems and to develop predictive models. Advances in machine learning and crowdsourcing may also offer the possibility to gather information about disease dynamics, such as contact patterns and the impact of the social environment. New, rapid, point-of-care diagnostics may make it possible to capture not only diagnostic information but also other potentially epidemiologically relevant information in real time. With a wide range of data available for analysis, decision-making and policy-making processes could be improved. While there are many opportunities for big data to be used for infectious disease research, operations, and policy, many challenges remain before it is possible to capture the full potential of big data. In order to explore some of the opportunities and issues associated with the scientific, policy, and operational aspects of big data in relation to microbial threats and public health, the National Academies of Sciences, Engineering, and Medicine convened a workshop in May 2016. Participants discussed a range of topics including preventing, detecting, and responding to infectious disease threats using big data and related analytics; varieties of data (including demographic, geospatial, behavioral, syndromic, and laboratory) and their broader applications; means to improve their collection, processing, utility, and validation; and approaches that can be learned from other sectors to inform big data strategies for infectious disease research, operations, and policy. This publication summarizes the presentations and discussions from the workshop. Table of ContentsFront Matter1 Introduction2 Big Data and Global Health3 Opportunities and Challenges for Big Data and Analytics4 Case Studies in Big Data and Analysis5 Closing Remarks and General DiscussionReferencesAppendix A: Workshop AgendaAppendix B: Biographical Sketches of Workshop SpeakersAppendix C: Statement of Task

DKK 370.00
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The Grid - Phillip F. Schewe - Bog - National Academies Press - Plusbog.dk

The Grid - Phillip F. Schewe - Bog - National Academies Press - Plusbog.dk

The electrical grid goes everywhere—it's the largest and most complex machine ever made. Yet the system is built in such a way that the bigger it gets, the more inevitable its collapse. Named the greatest engineering achievement of the 20th century by the National Academy of Engineering, the electrical grid is the largest industrial investment in the history of humankind. It reaches into your home, snakes its way to your bedroom, and climbs right up into the lamp next to your pillow. At times, it almost seems alive, like some enormous circulatory system that pumps life to big cities and the most remote rural areas. Constructed of intricately interdependent components, the grid operates on a rapidly shrinking margin for error. Things can—and do—go wrong in this system, no matter how many preventive steps we take. Just look at the colossal 2003 blackout, when 50 million Americans lost power due to a simple error at a power plant in Ohio; or the one a month later, which blacked out 57 million Italians. And these two combined don't even compare to the 2001 outage in India, which affected 226 million people. The Grid is the first history of the electrical grid intended for general readers, and it comes at a time when we badly need such a guide. As we get more and more dependent on electricity to perform even the most mundane daily tasks, the grid's inevitable shortcomings will take a toll on populations around the globe. At a moment when energy issues loom large on the nation's agenda and our hunger for electricity grows, The Grid is as timely as it is compelling. Table of ContentsFront MatterIntroduction1. The Gridness of the Grid2. Grid Genesis3. Most Electrifi ed City4. Imperial Grid5. Worst Day in Grid History6. Thirty Million Powerless7. Overhauling the Grid8. Energizing the Grid9. Touching the Grid10. Grid on the MoonNotesAcknowledgmentsIndex

DKK 201.00
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Transforming EPA Science to Meet Today's and Tomorrow's Challenges - Committee On Anticipatory Research For Epa's Research And Development Enterprise

Transforming EPA Science to Meet Today's and Tomorrow's Challenges - Committee On Anticipatory Research For Epa's Research And Development Enterprise

Since its establishment in 1970, the mission of the Environmental Protection Agency is to protect human health and the environment. EPA develops regulations, ensures compliance, and issues policies, in coordination with state, tribal, and local governments. To accomplish its mission, EPA should be equipped to produce and access the highest quality and most advanced science. The Office of Research and Development (ORD) provides the scientific bases for regulatory and public health policies that have broad impacts on the nation's natural resources and quality of human life, and that yield economic benefits and incur compliance costs for the regulated community. In addition, ORD develops the agency core research capabilities, providing tools and methods for meeting current and anticipating future environmental challenges, such as the risks to health and the environment posed by climate change. Because challenges associated with environmental protection today are complex and affected by many interacting factors, the report points to the need for a substantially broader and better integrated approach to environmental protection. This report calls for EPA ORD to pursue all of its scientific aims in a new framework—to apply systems thinking to a One Environment ? One Health approach in all aspects of ORD work. To accomplish this, the report provides actionable recommendations on how ORD might consider incorporating emerging science and systems thinking into the agency research planning, so that ORD can become an increasingly impactful organization. The report identifies a number of high-priority recommendations for ORD to pursue in taking advantage of a broad range of advanced tools, in concert with collaborators in other federal agencies and the broader scientific community. Given the resource constraints, the report recognizes that ORD will have to make decisions about priorities for implementing its recommendations, and that ORD leadership is in the best position to set those priorities as implementation begins. The report concluded by stating that shifting to a systems-thinking approach will require renewed support from science leadership, enhanced strategic planning, investment in new and broader expertise and tools, and a reimagined and inclusive commitment to communication and collaboration. Table of ContentsFront MatterSummary1 Introduction2 ORD's Approach to Providing Forward-Looking Science3 A One EnvironmentOne Health Approach for ORD4 Strengthening the Scientific and Technological Capabilities of the EPA Scientific Enterprise5 Acquiring and Applying Emerging Tools and Methods6 A Path Forward for Science for Environmental ProtectionAppendix A: Committee BiosketchesAppendix B: Open Session AgendasAppendix C: Monitoring for ExposureAppendix D: BiotechnologyAppendix E: Participatory Research ApproachesAppendix F: Data Science and Machine Learning

DKK 286.00
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Training Students to Extract Value from Big Data - Committee On Applied And Theoretical Statistics - Bog - National Academies Press - Plusbog.dk

Training Students to Extract Value from Big Data - Committee On Applied And Theoretical Statistics - Bog - National Academies Press - Plusbog.dk

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. Table of ContentsFront Matter1 Introduction2 The Need for Training: Experiences and Case Studies3 Principles for Working with Big Data4 Courses, Curricula, and Interdisciplinary Programs5 Shared Resources6 Workshop LessonsReferencesAppendixesAppendix A: Registered Workshop ParticipantsAppendix B: Workshop AgendaAppendix C: Acronyms

DKK 240.00
1