Your email was sent successfully. Check your inbox.

An error occurred while sending the email. Please try again.

Proceed reservation?

Export
  • 1
    Online Resource
    Online Resource
    Boca Raton, Florida ; : CRC Press,
    UID:
    almahu_9949616360202882
    Format: 1 online resource (339 pages)
    ISBN: 9781000057355 (e-book)
    Additional Edition: Print version: Internet of things and big data analytics : integrated platforms and industry use cases. Boca Raton, Florida ; London, England ; New York : CRC Press, 2020 ISBN 9780367342890
    Language: English
    Keywords: Electronic books.
    Library Location Call Number Volume/Issue/Year Availability
    BibTip Others were also interested in ...
  • 2
    UID:
    kobvindex_INT59033
    Format: 1 online resource (339 pages)
    Edition: 1st ed.
    ISBN: 9781000057355
    Content: This book is presents academic and practical research in IoT and big data. With contributions from both practitioners and academic researchers, the book examines new technology and compares it to existing technology. Experimental case studies are related to real-time scenarios
    Note: Cover -- Half Title -- Title Page -- Copyright Page -- Table of Contents -- Preface -- Author Biography -- Contributors -- 1 Taxonomy of Big Data and Analytics Solutions for Internet of Things -- 1.1 Introduction -- 1.1.1 IoT Emergence -- 1.1.2 IoT Architecture -- 1.1.2.1 Three Layers of IoT -- 1.1.2.2 IoT Devices -- 1.1.2.3 Cloud Server -- 1.1.2.4 End User -- 1.1.3 IoT Challenges -- 1.1.4 IoT Opportunities -- 1.1.4.1 IoT and the Cloud -- 1.1.4.2 IoT and Security -- 1.1.4.3 IoT at the Edge -- 1.1.4.4 IoT and Integration -- 1.1.5 IoT Applications -- 1.1.5.1 Real-Time Applications of IoT -- 1.1.6 Big Data and Analytics Solutions for IoT -- 1.1.6.1 Big Data in IoT -- 1.1.6.2 Big Data Challenges -- 1.1.6.3 Different Patterns of Data -- 1.7 Big Data Sources -- 1.7.1 Media -- 1.7.2 Business Data -- 1.7.2.1 Customer's Details -- 1.7.2.2 Transaction Details -- 1.7.2.3 Interactions -- 1.7.3 IoT Data -- 1.8 Big Data System Components -- 1.8.1 Data Acquisition (DAQ) -- 1.8.2 Data Retention -- 1.8.3 Data Transportation -- 1.8.4 Data Processing -- 1.8.5 Data Leverage -- 1.9 Big Data Analytics Types -- 1.9.1 Predictive Analytics -- 1.9.1.1 What Will Happen If ...? -- 1.9.2 Descriptive Analytics -- 1.9.2.1 What Has Happened? -- 1.9.3 Diagnostic Analytics -- 1.9.3.1 Why Did It Happen? -- 1.9.3.2 Real-Time Example -- 1.9.4 Prescriptive Analytics -- 1.9.4.1 What Should We Do about This? -- 1.10 Big Data Analytics Tools -- 1.10.1 Hadoop -- 1.10.1.1 Features of Hadoop -- 1.10.2 Apache Spark -- 1.10.3 Apache Storm -- 1.10.4 NoSQL Databases -- 1.10.5 Cassandra -- 1.10.6 RapidMiner -- 1.11 Conclusion -- References -- 2 Big Data Preparation and Exploration -- 2.1 Understanding Original Data Analysis -- 2.2 Benefits of Big Data Pre-Processing -- 2.3 Data Pre-Processing and Data Wrangling Techniques for IoT -- 2.3.1 Data Pre-Processing , 2.3.2 Steps Involved in Data Pre-Processing -- 2.3.3 Typical Use of Data Wrangling -- 2.3.4 Data Wrangling versus ETL -- 2.3.5 Data Wrangling versus Data Pre-Processing -- 2.3.6 Major Challenges in Data Cleansing -- 2.4 Challenges in Big Data Processing -- 2.4.1 Data Analysis -- 2.4.2 Countermeasures for Big-Data-Related Issues -- 2.4.2.1 Increasing Collection Coverage -- 2.4.2.2 Dimension Reduction and Processing Algorithms -- 2.5 Opportunities of Big Data -- 2.5.1 Big Data in Biomedical Image Processing -- 2.5.2 Big Data Opportunity for Genome -- References -- 3 Emerging IoT-Big Data Platform Oriented Technologies -- 3.1 Introduction -- 3.2 Ubiquitous Wireless Communication -- 3.2.1 Ubiquitous Computing -- 3.2.1.1 Ubiquitous Architecture -- 3.2.1.2 Communication Technologies -- 3.2.1.3 Applications -- 3.3 Real-Time Analytics: Overview -- 3.3.1 Challenges in Real-Time Analytics -- 3.3.2 Real-Time Analytics Platforms -- 3.4 Cloud Computing -- 3.4.1 Cloud Computing Era -- 3.4.2 Relationship between IoT and Cloud -- 3.4.3 Relationship between Big Data and Cloud -- 3.4.4 Convergence of IoT, Big Data, and Cloud Computing -- 3.5 Machine Learning -- 3.5.1 Introduction to Machine Learning with Big Data and IoT -- 3.5.2 Evaluation of Machine Learning Models -- 3.5.2.1 Holdout -- 3.5.2.2 Cross-Validation -- 3.5.3 Machine Learning and Big Data Applications -- 3.5.3.1 Machine Leaning Applications -- 3.5.3.2 Big Data Applications -- 3.6 Deep Learning -- 3.6.1 Applying Deep Learning into Big Data -- 3.6.1.1 Semantic Indexing -- 3.6.1.2 Performing Discriminative Tasks -- 3.6.1.3 Semantic Multimedia Tagging -- 3.6.2 Deep Learning Algorithms -- 3.6.3 Deep Learning Applications in IoT - Foundational Services -- References , 4 IoT-Big Data Systems (IoTBDSs) Enabling Technologies: Ubiquitous Wireless Communication, Real-Time Analytics, Machine Learning, Deep Learning, Commodity Sensors -- 4.1 Internet of Things -- 4.1.1 Fundamentals of IoT -- 4.1.2 IoT Framework and Its Working -- 4.1.2.1 Sensing Layer -- 4.1.2.2 Network Layer -- 4.1.2.3 Application Support Layer -- 4.1.2.4 Application Layer -- 4.1.3 Real-Time Applications of IoT -- 4.1.4 Challenges Involved in IoT Deployment -- 4.1.4.1 Security -- 4.1.4.2 Privacy -- 4.1.4.3 Software Complexity -- 4.1.4.4 Flexibility -- 4.1.4.5 Compliance -- 4.1.4.6 Unforeseeable Response -- 4.2 Big Data Analytics -- 4.2.1 Data Science and Big Data -- 4.2.2 Technologies Involved in Big Data -- 4.2.3 Applications of Big Data -- 4.2.4 Opportunities and Issues in Big Data Analytics -- 4.2.4.1 Advantages of Big Data Analytics -- 4.2.4.2 Issues in Big Data Analytics -- 4.3 Wireless Communication and IoT -- 4.3.1 Introduction -- 4.3.2 Architecture of Wireless Communication -- 4.3.3 Modern Ubiquitous Wireless Communication with IoT -- 4.3.4 Implementation of Communication Models for IoT -- 4.4 Machine and Deep Learning Techniques for Wireless IoT Big Data Analytics -- 4.4.1 Introduction to Machine and Deep Learning -- 4.4.1.1 Design Considerations in Machine Learning -- 4.4.1.2 Design Considerations of Deep Learning -- 4.4.2 Machine and Deep Learning Methods -- 4.4.3 Utilization of Learning Methods for IoT Big Data Analysis -- 4.4.4 Applications of IoT with Big Data Analytics in Wireless Mode -- 4.4.4.1 Smart Cities -- 4.4.4.2 Transport Sector -- 4.4.4.3 Weather Forecasting -- 4.4.4.4 Agriculture -- 4.4.4.5 Healthcare -- 4.5 Conclusion -- References -- 5 Distinctive Attributes of Big Data Platform and Big Data Analytics Software for IoT -- 5.1 Introduction -- 5.2 Data Ingestion -- 5.3 Typical Issues of Knowledge Consumption , 5.4 Features Required for Data Ingestion Tools -- 5.5 Big Data Management -- 5.6 ETL -- 5.6.1 History -- 5.6.2 How the ETL Method Works -- 5.6.3 ETL Challenges -- 5.6.3.1 Challenge #1 -- 5.6.3.2 Challenge #2 -- 5.6.3.3 Challenge #3 -- 5.6.4 Types of ETL Tools -- 5.7 Data Warehouse -- 5.8 Related Systems -- 5.8.1 Benetfis -- 5.9 Hadoop -- 5.9.1 History -- 5.9.2 Core Hadoop Elements -- 5.10 Stream Computing -- 5.10.1 Why Is the Streaming Process Needed? -- 5.10.2 How to Do Stream Processing? -- 5.11 Data Analytics -- 5.11.1 Types of Data Analytics -- 5.11.2 Working with Massive Data Analytics -- 5.11.3 Tools in Data Analytics -- 5.12 Machine Learning -- 5.13 Supervised Learning -- 5.13.1 Steps -- 5.13.2 Unsupervised Learning -- 5.14 Content Management -- 5.15 Content Management Process -- 5.16 Content Governance -- 5.16.1 Types of Digital Content Management -- 5.17 Content Management Systems and Tools -- 5.18 Data Integration -- 5.19 Data Governance -- 5.19.1 Data Governance Implementation -- 5.20 Data Stewardship -- References -- 6 Big Data Architecture for IoT -- 6.1 Introduction -- 6.2 IoT with Big Data Characteristics -- 6.3 IoT Reference Architecture -- 6.3.1 Big Data Components -- 6.3.2 IoT Architecture Layers Mapping to Big Data Components -- 6.4 Device Connectivity Options -- 6.4.1 Communication between IoT Devices and Internet -- 6.4.2 Communication between IoT Devices and Gateway -- 6.5 Device Stores -- 6.5.1 IoT Impacts on Storage -- 6.5.1.1 Storage Implications -- 6.5.1.2 Data Center Impact -- 6.6 Device Identity -- 6.6.1 Identity Management of IoT -- 6.7 Registry and Data Stores -- 6.7.1 Data Life Cycle Management in IoT for Device Data Stores -- 6.7.2 Data Management Framework for IoT Device Data Stores -- 6.8 Device Provisioning -- 6.9 Stream Processing and Processing -- 6.9.1 Stream Processing Architecture for IoT Applications , 6.10 High-Scale Compute Models -- 6.11 Corton Intelligence Suite Use Cases -- References -- 7 Algorithms for Big Data Delivery over Internet of Things -- 7.1 Introduction -- 7.2 Wireless Sensor Network -- 7.3 Ecosystem -- 7.4 Protocols for IoT -- 7.4.1 Data Link Protocol -- 7.4.1.1 IEEE 802.15.4 -- 7.4.1.2 IEEE 802.11ah -- 7.4.1.3 ZigBee Smart Energy -- 7.4.1.4 WirelessHART -- 7.4.1.5 LoRaWAN -- 7.4.1.6 Weightless -- 7.4.1.7 Z-Wave -- 7.4.1.8 EnOcean -- 7.5 Network Layer Protocols -- 7.5.1 Network Layer Routing Protocols -- 7.5.1.1 Routing Protocol for Low-Power and Lossy Networks (RPL) -- 7.5.1.2 Cognitive RPL (CORPL) -- 7.5.1.3 Channel-Aware Routing Protocol (CARP) and E-CARP -- 7.5.2 Network Layer Encapsulation Protocols -- 7.5.2.1 IPv6 over Low-Power Wireless Personal Area Network (6LoWPAN) -- 7.5.2.2 6TiSCH -- 7.6 Session Layer Protocols -- 7.6.1 MQTT -- 7.6.2 SMQTT -- 7.6.3 AMQP -- 7.6.4 DDS -- 7.7 Secure Communication in IoT and Big Data -- 7.8 Conclusion -- References -- 8 Big Data Storage Systems for IoT - Perspectives and Challenges -- 8.1 Introduction -- 8.1.1 Data Processing in IoT -- 8.2 Big Data Analytics for IoT -- 8.2.1 What Is Big Data? -- 8.2.1.1 Velocity of Data -- 8.2.1.2 Variety of Data -- 8.2.1.3 Veracity of Data -- 8.2.2 Need for Data Analytics in Big Data -- 8.2.3 Role of Big Data Analytics in IoT -- 8.2.4 Architecture of Big Data Analytics in IoT -- 8.3 Data Storage and Access for IoT -- 8.3.1 Distributed Storage Systems -- 8.3.2 NoSQL Databases -- 8.3.3 Data Integration and Virtualization -- 8.4 Dynamic-Data Handling in Big Data Storage Systems -- 8.4.1 Dynamic Data Assimilation Mechanisms -- 8.4.2 Interpolation Techniques -- 8.5 Heterogeneous Datasets in IoT Big Data -- 8.5.1 Data Cleaning for Heterogeneous Data -- 8.5.2 Data Integration -- 8.5.2.1 Dataset Annotation -- 8.5.2.2 Code Mapping -- 8.5.2.3 Data Linking , 8.5.2.4 Resource Description Framework
    Additional Edition: Print version Raj, Pethuru The Internet of Things and Big Data Analytics Milton : Auerbach Publishers, Incorporated,c2020 ISBN 9780367342890
    Language: English
    Keywords: Electronic books ; Electronic books
    URL: FULL  ((OIS Credentials Required))
    URL: FULL  ((OIS Credentials Required))
    Library Location Call Number Volume/Issue/Year Availability
    BibTip Others were also interested in ...
  • 3
    UID:
    almahu_9949385994902882
    Format: 1 online resource (xiii, 323 pages) : , color illustrations.
    Edition: First edition.
    ISBN: 9781003036739 , 1003036732 , 9781000057355 , 1000057356
    Content: "This book is presents academic and practical research in IoT and big data. With contributions from both practitioners and academic researchers, the book examines new technology and compares it to existing technology. Experimental case studies are related to real-time scenarios"--
    Note: "An Auerbach Book" -- Title page. , Taxonomy of big data and analytics solutions for internet of things -- Big data preparation and exploration -- Emerging IoT-big data platform oriented technologies -- Big data system based IoT enabling technologies : ubiquitous wireless communication, real-time analytics, machine learning, deep learning, commodity sensors -- Distinctive attributes of big data platform and big data analytics software for IoT -- Big data architecture for IoT -- Algorithms for big data delivery over internet of things -- Big data storage systems for IoT - perspectives and challenges -- Key technologies enabling big data analytics for IoT -- internet of things (IoT) and big data : data management, analytics, visualization and decision making -- Big data programming models for IoT data -- IoTBDs applications : smart transportation, smart healthcare, smart grid, smart inventory system, smart cities, smart manufacturing, smart retail, smart agriculture, etc. -- Big data management solutions for IoT : case study - connected car.
    Additional Edition: Print version: The internet of things and big data analytics Boca Raton, FL : CRC Press, 2020. ISBN 9780367342890
    Language: English
    Keywords: Electronic books. ; Electronic books.
    Library Location Call Number Volume/Issue/Year Availability
    BibTip Others were also interested in ...
  • 4
    UID:
    almahu_9949501751702882
    Format: 1 online resource , illustrations (black and white)
    ISBN: 9781000057355 , 1000057356 , 9781003036739 , 1003036732 , 9781000057379 , 1000057372 , 9781000057393 , 1000057399
    Content: This book comprehensively conveys the theoretical and practical aspects of IoT and big data analytics with the solid contributions from practitioners as well as academicians. This book examines and expounds the unique capabilities of the big data analytics platforms in capturing, cleansing and crunching IoT device/sensor data in order to extricate actionable insights. A number of experimental case studies and real-world scenarios are incorporated in this book in order to instigate our book readers. This book Analyzes current research and development in the domains of IoT and big data analytics Gives an overview of latest trends and transitions happening in the IoT data analytics space Illustrates the various platforms, processes, patterns, and practices for simplifying and streamlining IoT data analytics The Internet of Things and Big Data Analytics: Integrated Platforms and Industry Use Cases examines and accentuates how the multiple challenges at the cusp of IoT and big data can be fully met. The device ecosystem is growing steadily. It is forecast that there will be billions of connected devices in the years to come. When these IoT devices, resource-constrained as well as resource-intensive, interact with one another locally and remotely, the amount of multi-structured data generated, collected, and stored is bound to grow exponentially. Another prominent trend is the integration of IoT devices with cloud-based applications, services, infrastructures, middleware solutions, and databases. This book examines the pioneering technologies and tools emerging and evolving in order to collect, pre-process, store, process and analyze data heaps in order to disentangle actionable insights.
    Note: Cover -- Half Title -- Title Page -- Copyright Page -- Table of Contents -- Preface -- Author Biography -- Contributors -- 1 Taxonomy of Big Data and Analytics Solutions for Internet of Things -- 1.1 Introduction -- 1.1.1 IoT Emergence -- 1.1.2 IoT Architecture -- 1.1.2.1 Three Layers of IoT -- 1.1.2.2 IoT Devices -- 1.1.2.3 Cloud Server -- 1.1.2.4 End User -- 1.1.3 IoT Challenges -- 1.1.4 IoT Opportunities -- 1.1.4.1 IoT and the Cloud -- 1.1.4.2 IoT and Security -- 1.1.4.3 IoT at the Edge -- 1.1.4.4 IoT and Integration -- 1.1.5 IoT Applications -- 1.1.5.1 Real-Time Applications of IoT , 1.1.6 Big Data and Analytics Solutions for IoT -- 1.1.6.1 Big Data in IoT -- 1.1.6.2 Big Data Challenges -- 1.1.6.3 Different Patterns of Data -- 1.7 Big Data Sources -- 1.7.1 Media -- 1.7.2 Business Data -- 1.7.2.1 Customer's Details -- 1.7.2.2 Transaction Details -- 1.7.2.3 Interactions -- 1.7.3 IoT Data -- 1.8 Big Data System Components -- 1.8.1 Data Acquisition (DAQ) -- 1.8.2 Data Retention -- 1.8.3 Data Transportation -- 1.8.4 Data Processing -- 1.8.5 Data Leverage -- 1.9 Big Data Analytics Types -- 1.9.1 Predictive Analytics -- 1.9.1.1 What Will Happen If ...? -- 1.9.2 Descriptive Analytics , 1.9.2.1 What Has Happened? -- 1.9.3 Diagnostic Analytics -- 1.9.3.1 Why Did It Happen? -- 1.9.3.2 Real-Time Example -- 1.9.4 Prescriptive Analytics -- 1.9.4.1 What Should We Do about This? -- 1.10 Big Data Analytics Tools -- 1.10.1 Hadoop -- 1.10.1.1 Features of Hadoop -- 1.10.2 Apache Spark -- 1.10.3 Apache Storm -- 1.10.4 NoSQL Databases -- 1.10.5 Cassandra -- 1.10.6 RapidMiner -- 1.11 Conclusion -- References -- 2 Big Data Preparation and Exploration -- 2.1 Understanding Original Data Analysis -- 2.2 Benefits of Big Data Pre-Processing , 2.3 Data Pre-Processing and Data Wrangling Techniques for IoT -- 2.3.1 Data Pre-Processing -- 2.3.2 Steps Involved in Data Pre-Processing -- 2.3.3 Typical Use of Data Wrangling -- 2.3.4 Data Wrangling versus ETL -- 2.3.5 Data Wrangling versus Data Pre-Processing -- 2.3.6 Major Challenges in Data Cleansing -- 2.4 Challenges in Big Data Processing -- 2.4.1 Data Analysis -- 2.4.2 Countermeasures for Big-Data-Related Issues -- 2.4.2.1 Increasing Collection Coverage -- 2.4.2.2 Dimension Reduction and Processing Algorithms -- 2.5 Opportunities of Big Data , 2.5.1 Big Data in Biomedical Image Processing -- 2.5.2 Big Data Opportunity for Genome -- References -- 3 Emerging IoT-Big Data Platform Oriented Technologies -- 3.1 Introduction -- 3.2 Ubiquitous Wireless Communication -- 3.2.1 Ubiquitous Computing -- 3.2.1.1 Ubiquitous Architecture -- 3.2.1.2 Communication Technologies -- 3.2.1.3 Applications -- 3.3 Real-Time Analytics: Overview -- 3.3.1 Challenges in Real-Time Analytics -- 3.3.2 Real-Time Analytics Platforms -- 3.4 Cloud Computing -- 3.4.1 Cloud Computing Era -- 3.4.2 Relationship between IoT and Cloud
    Additional Edition: ISBN 0367342898
    Additional Edition: ISBN 9780367342890
    Language: English
    Library Location Call Number Volume/Issue/Year Availability
    BibTip Others were also interested in ...
Did you mean 1000087356?
Did you mean 1000017356?
Did you mean 1000007336?
Close ⊗
This website uses cookies and the analysis tool Matomo. Further information can be found on the KOBV privacy pages