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cr cnu---unuuu |
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190717s2019 ne a o 000 0 eng d |
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|d OCLCQ
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|a 9780128166468
|q (electronic bk.)
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|a 0128166460
|q (electronic bk.)
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|z 9780128166376
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|a (OCoLC)1108871637
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|a QA76.9.B45
|b B54 2019eb
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|a 005.7
|2 23
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|a Big data analytics for cyber-physical systems :
|b machine learning for the Internet of Things /
|c edited by Guido Dartmann, Houbing Song, Anke Schmeink.
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|a First edition.
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|a Amsterdam :
|b Elsevier,
|c 2019.
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|a 1 online resource (xxii, 373 pages) :
|b illustrations
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|a text
|b txt
|2 rdacontent
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|a computer
|b c
|2 rdamedia
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|a online resource
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|2 rdacarrier
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|a Online resource; title from PDF title page (EBSCO, viewed July 18, 2019)
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|a Big Data Analytics in Cyber-Physical Systems: Machine Learning for the Internet of Things examines sensor signal processing, IoT gateways, optimization and decision-making, intelligent mobility, and implementation of machine learning algorithms in embedded systems. This book focuses on the interaction between IoT technology and the mathematical tools used to evaluate the extracted data of those systems. Each chapter provides the reader with a broad list of data analytics and machine learning methods for multiple IoT applications. Additionally, this volume addresses the educational transfer needed to incorporate these technologies into our society by examining new platforms for IoT in schools, new courses and concepts for universities and adult education on IoT and data science.
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|a Intro; Title page; Table of Contents; Copyright; Contributors; Foreword; Acknowledgments; Introduction; Chapter 1: Data analytics and processing platforms in CPS; Abstract; 1 Open source versus proprietary software; 2 Data types; 3 Easy data visualization using code; 4 Statistical measurements in CPS data; 5 Statistical methods, models, and techniques: Brief introduction; 6 Analytics and statistics versus ML techniques; 7 Data charts; 8 Machine logs analysis and dashboarding; 9 Conclusion; Chapter 2: Fundamentals of data analysis and statistics; Abstract; 1 Introduction
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|a 2 Useful software tools3 Fundamentals of statistics; 4 Regression: Fitting functional models to the data; 5 Minimizing redundancy: Factor analysis and principle component analysis; 6 Explore unknown data: Cluster analysis; 7 Conclusion; Chapter 3: Density-based clustering techniques for object detection and peak segmentation in expanding data fields; Abstract; 1 Introduction; 2 Related work; 3 A brief introduction to density-based clustering; 4 Formal extensions of density-based clustering; 5 Clustering strategy for time-expandable data sets; 6 Evaluation and results; 7 Conclusion
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|a Chapter 4: Security for a regional network platform in IoTAbstract; 1 Introduction; 2 Regional network security; 3 Proactive distributed authentication framework for a regional network; 4 Discussion; 5 Function implementations; 6 Network setup and performance evaluations; 7 Conclusions; Chapter 5: Inference techniques for ultrasonic parking lot occupancy sensing based on smart city infrastructure; Abstract; 1 Introduction; 2 Related work; 3 Fundamentals and background; 4 System setup and architecture; 5 Data annotation and trainging methodoloy; 6 Proposed method; 7 Evaluation and results
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|a 8 Conclusion and future workChapter 6: Portable implementations for heterogeneous hardware platforms in autonomous driving systems; Abstract; 1 Advanced driver-assistance systems; 2 Programming challenges; 3 Parallel programming approaches; 4 Unification; 5 Summary; Chapter 7: AI-based sensor platforms for the IoT in smart cities; Abstract; 1 Introduction; 2 Function units of an IoT sensor; 3 More than one sensor element; 4 The communication interface; 5 Embedded O/S requirements; 6 Artificial intelligence embedded; 7 Classification and regression using machine learning algorithms
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|a 8 Learning process required9 AI-based IoT sensor system; 10 Decentralized intelligence; 11 Conclusions; Chapter 8: Predicting energy consumption using machine learning; Abstract; Acknowledgments; 1 Introduction; 2 Data profiling; 3 Learning from data; 4 Related work; 5 Further thoughts; Chapter 9: Reinforcement learning and deep neural network for autonomous driving; Abstract; 1 Introduction; 2 Signal model; 3 Machine learning; 4 Simulation; 5 Conclusion and future work
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|a Big data.
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|a Discourse analysis, Narrative.
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|a Truthfulness and falsehood.
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|a Online social networks.
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|a Donn�ees volumineuses.
|0 (CaQQLa)000284673
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|a Discours narratif.
|0 (CaQQLa)201-0084598
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|a Mensonge.
|0 (CaQQLa)201-0018770
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|a R�eseaux sociaux (Internet)
|0 (CaQQLa)201-0500106
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650 |
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7 |
|a Big data.
|2 fast
|0 (OCoLC)fst01892965
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650 |
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7 |
|a Discourse analysis, Narrative.
|2 fast
|0 (OCoLC)fst00894947
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650 |
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7 |
|a Online social networks.
|2 fast
|0 (OCoLC)fst01741311
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650 |
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7 |
|a Truthfulness and falsehood.
|2 fast
|0 (OCoLC)fst01158255
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700 |
1 |
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|a Dartmann, Guido,
|e editor.
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700 |
1 |
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|a Song, Houbing,
|e editor.
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700 |
1 |
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|a Schmeink, Anke,
|e editor.
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856 |
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|u https://sciencedirect.uam.elogim.com/science/book/9780128166376
|z Texto completo
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