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The world is keen to leverage multi-faceted AI techniques and tools
to deploy and deliver the next generation of business and IT
applications. Resource-intensive gadgets, machines, instruments,
appliances, and equipment spread across a variety of environments
are empowered with AI competencies. Connected products are
collectively or individually enabled to be intelligent in their
operations, offering and output. AI is being touted as the
next-generation technology to visualize and realize a bevy of
intelligent systems, networks and environments. However, there are
challenges associated with the huge adoption of AI methods. As we
give full control to AI systems, we need to know how these AI
models reach their decisions. Trust and transparency of AI systems
are being seen as a critical challenge. Building knowledge graphs
and linking them with AI systems are being recommended as a viable
solution for overcoming this trust issue and the way forward to
fulfil the ideals of explainable AI. The authors focus on
explainable AI concepts, tools, frameworks and techniques. To make
the working of AI more transparent, they introduce knowledge graphs
(KG) to support the need for trust and transparency into the
functioning of AI systems. They show how these technologies can be
used towards explaining data fabric solutions and how intelligent
applications can be used to greater effect in finance and
healthcare. Explainable Artificial Intelligence (XAI): Concepts,
enabling tools, technologies and applications is aimed primarily at
industry and academic researchers, scientists, engineers, lecturers
and advanced students in the fields of IT and computer science,
soft computing, AI/ML/DL, data science, semantic web, knowledge
engineering and IoT. It will also prove a useful resource for
software, product and project managers and developers in these
fields.
With the growing maturity and stability of digitization and edge
technologies, vast numbers of digital entities, connected devices,
and microservices interact purposefully to create huge sets of
poly-structured digital data. Corporations are continuously seeking
fresh ways to use their data to drive business innovations and
disruptions to bring in real digital transformation. Data science
(DS) is proving to be the one-stop solution for simplifying the
process of knowledge discovery and dissemination out of massive
amounts of multi-structured data. Supported by query languages,
databases, algorithms, platforms, analytics methods and machine and
deep learning (ML and DL) algorithms, graphs are now emerging as a
new data structure for optimally representing a variety of data and
their intimate relationships. Compared to traditional analytics
methods, the connectedness of data points in graph analytics
facilitates the identification of clusters of related data points
based on levels of influence, association, interaction frequency
and probability. Graph analytics is being empowered through a host
of path-breaking analytics techniques to explore and pinpoint
beneficial relationships between different entities such as
organizations, people and transactions. This edited book aims to
explain the various aspects and importance of graph data science.
The authors from both academia and industry cover algorithms,
analytics methods, platforms and databases that are intrinsically
capable of creating business value by intelligently leveraging
connected data. This book will be a valuable reference for ICTs
industry and academic researchers, scientists and engineers, and
lecturers and advanced students in the fields of data analytics,
data science, cloud/fog/edge architecture, internet of things,
artificial intelligence/machine and deep learning, and related
fields of applications. It will also be of interest to analytics
professionals in industry and IT operations teams.
Advances in Computers, Volume 127 presents innovations in computer
hardware, software, theory, design and applications, with this
updated volume including new chapters on Edge AI, Edge Computing,
Edge Analytics, Edge Data Analytics, Edge Native Applications, Edge
Platforms, Edge Computing, IoT, Internet of Things, etc.
There is no doubt that there has been much excitement regarding the
pioneering contributions of artificial intelligence (AI), the
internet of things (IoT), and blockchain technologies and tools in
visualizing and realizing smarter as well as sophisticated systems
and services. However, researchers are being bombarded with various
machine and deep learning algorithms, which are categorized as a
part and parcel of the enigmatic AI discipline. The knowledge
discovered gets disseminated to actuators and other concerned
systems in order to empower them to intelligently plan and
insightfully execute appropriate tasks with clarity and confidence.
The IoT processes in conjunction with the AI algorithms and
blockchain technology are bound to lay out a stimulating foundation
for producing and sustaining smarter systems for society. The
Handbook of Research on Smarter and Secure Industrial Applications
Using AI, IoT, and Blockchain Technology articulates and
accentuates various AI algorithms, fresh innovations in the IoT,
and blockchain spaces. The domain of transforming raw data to
information and to relevant knowledge is gaining prominence with
the availability of data ingestion, processing, mining, analytics
algorithms, platforms, frameworks, and other accelerators. Covering
topics such as blockchain applications, Industry 4.0, and
cryptography, this book serves as a comprehensive guide for AI
researchers, faculty members, IT professionals, academicians,
students, researchers, and industry professionals.
The Blockchain Technology for Secure and Smart Applications across
Industry Verticals, Volume 121, presents the latest information on
a type of distributed ledger used for maintaining a permanent and
tamper-proof record of transactional data. The book presents a
novel compendium of existing and budding Blockchain technologies
for various smart applications. Chapters in this new release
include the Basics of Blockchain, The Blockchain History,
Architecture of Blockchain, Core components of Blockchain,
Blockchain 2.0: Smart Contracts, Empowering Digital Twins with
Blockchain, Industrial Use Cases at the Cusp of the IoT and
Blockchain Paradigms, Blockchain Components and Concepts, Digital
Signatures, Accumulators, Financial Systems, and more. This book is
a unique effort to illuminate various techniques to represent,
improve and authorize multi-institutional and multidisciplinary
research in a different type of smart applications, like the
financial system, smart grid, transportation system, etc. Readers
in identity-privacy, traceability, immutability, transparency,
auditability, and security will find it to be a valuable resource.
The Digital Twin Paradigm for Smarter Systems and Environments: The
Industry Use Cases, Volume 117, the latest volume in the Advances
in Computers series, presents detailed coverage of new advancements
in computer hardware, software, theory, design and applications.
Chapters vividly illustrate how the emerging discipline of digital
twin is strategically contributing to various digital
transformation initiatives. Specific chapters cover Demystifying
the Digital Twin Paradigm, Digital Twin Technology for "Smarter
Manufacturing", The Fog Computing/ Edge Computing to leverage
Digital Twin, The industry use cases for the Digital Twin idea,
Enabling Digital Twin at the Edge, The Industrial Internet of
Things (IIOT), and much more.
Fog computing is quickly increasing its applications and uses to
the next level. As it continues to grow, different types of
virtualization technologies can thrust this branch of computing
further into mainstream use. The Handbook of Research on Cloud and
Fog Computing Infrastructures for Data Science is a key reference
volume on the latest research on the role of next-generation
systems and devices that are capable of self-learning and how those
devices will impact society. Featuring wide-ranging coverage across
a variety of relevant views and themes such as cognitive analytics,
data mining algorithms, and the internet of things, this
publication is ideally designed for programmers, IT professionals,
students, researchers, and engineers looking for innovative
research on software-defined cloud infrastructures and
domain-specific analytics.
Clouds are being positioned as the next-generation consolidated,
centralized, yet federated IT infrastructure for hosting all kinds
of IT platforms and for deploying, maintaining, and managing a
wider variety of personal, as well as professional applications and
services. Handbook of Research on Cloud Infrastructures for Big
Data Analytics focuses exclusively on the topic of cloud-sponsored
big data analytics for creating flexible and futuristic
organizations. This book helps researchers and practitioners, as
well as business entrepreneurs, to make informed decisions and
consider appropriate action to simplify and streamline the arduous
journey towards smarter enterprises.
Blockchain Technology: Platforms, Tools and Use Cases, Volume 111,
the latest release in the Advances in Computers series published
since 1960, presents detailed coverage of innovations in computer
hardware, software, theory, design and applications. In addition,
it provides contributors with a medium in which they can explore
their subjects in greater depth and breadth than journal articles
usually allow. This volume has 8 Chapters that discuss the various
aspects of Blockchain technology.
A Deep Dive into NoSQL Databases: The Use Cases and Applications,
Volume 109, the latest release in the Advances in Computers series
first published in 1960, presents detailed coverage of innovations
in computer hardware, software, theory, design and applications. In
addition, it provides contributors with a medium in which they can
explore their subjects in greater depth and breadth. This update
includes sections on NoSQL and NewSQL databases for big data
analytics and distributed computing, NewSQL databases and scalable
in-memory analytics, NoSQL web crawler application, NoSQL Security,
a Comparative Study of different In-Memory (No/New)SQL Databases,
NoSQL Hands On-4 NoSQLs, the Hadoop Ecosystem, and more.
This timely text/reference presents a comprehensive review of the
workflow scheduling algorithms and approaches that are rapidly
becoming essential for a range of software applications, due to
their ability to efficiently leverage diverse and distributed cloud
resources. Particular emphasis is placed on how workflow-based
automation in software-defined cloud centers and hybrid IT systems
can significantly enhance resource utilization and optimize energy
efficiency. Topics and features: describes dynamic workflow and
task scheduling techniques that work across multiple (on-premise
and off-premise) clouds; presents simulation-based case studies,
and details of real-time test bed-based implementations; offers
analyses and comparisons of a broad selection of static and dynamic
workflow algorithms; examines the considerations for the main
parameters in projects limited by budget and time constraints;
covers workflow management systems, workflow modeling and
simulation techniques, and machine learning approaches for
predictive workflow analytics. This must-read work provides
invaluable practical insights from three subject matter experts in
the cloud paradigm, which will empower IT practitioners and
industry professionals in their daily assignments. Researchers and
students interested in next-generation software-defined cloud
environments will also greatly benefit from the material in the
book.
When digitized entities, connected devices and microservices
interact purposefully, we end up with a massive amount of
multi-structured streaming (real-time) data that is continuously
generated by different sources at high speed. Streaming analytics
allows the management, monitoring, and real-time analytics of live
streaming data. The topic has grown in importance due to the
emergence of online analytics and edge and IoT platforms. A real
digital transformation is being achieved across industry verticals
through meticulous data collection, cleansing and crunching in real
time. Capturing and subjecting those value-adding events is
considered to be the prime task for achieving trustworthy and
timely insights. The authors articulate and accentuate the
challenges widely associated with streaming data and analytics,
describe data analytics algorithms and approaches, present edge and
fog computing concepts and technologies and show how streaming
analytics can be accomplished in edge device clouds. They also
delineate several industry use cases across cloud system operations
in transportation and cyber security and other business domains.
The book will be of interest to ICTs industry and academic
researchers, scientists and engineers as well as lecturers and
advanced students in the fields of data science, cloud/fog/edge
architecture, internet of things and artificial intelligence and
related fields of applications. It will also be useful to
cloud/edge/fog and IoT architects, analytics professionals, IT
operations teams and site reliability engineers (SREs).
Many industries are affected by the growing advancements and
stability of the internet of things (IoT) technologies and tools.
These include the agricultural fields. With such advancements,
decision-enabling agricultural field data gets gathered and
transmitted meticulously through numerous IoT sensors and devices
deployed in agricultural fields and their surroundings. Further
study on these technologies is required to ensure they are utilized
appropriately within the field. Applying Drone Technologies and
Robotics for Agricultural Sustainability conveys the latest trends
and transitions happening in the digital space in order to fulfill
the varying needs and sentiments of the agriculture domain.
Covering key topics such as deep learning, robots, sustainability,
and smart farming, this premier reference source is ideal for
industry professionals, farmers, computer scientists, policymakers,
researchers, scholars, practitioners, instructors, and students.
Business and IT organizations are currently embracing new
strategically sound concepts in order to be more customer-centric,
competitive, and cognitive in their daily operations. While useful,
the various software tools, pioneering technologies, as well as
their unique contributions largely go unused due to the lack of
information provided on their special characteristics. Novel
Practices and Trends in Grid and Cloud Computing is a collection of
innovative research on the key concerns of cloud computing and how
they are being addressed, as well as the various technologies and
tools empowering cloud theory to be participative, penetrative,
pervasive, and persuasive. While highlighting topics including
cyber security, smart technology, and artificial intelligence, this
book is ideally designed for students, researchers, and business
managers on the lookout for innovative IT solutions for all the
business automation software and improvisations of computational
technologies.
This book presents a detailed review of high-performance computing
infrastructures for next-generation big data and fast data
analytics. Features: includes case studies and learning activities
throughout the book and self-study exercises in every chapter;
presents detailed case studies on social media analytics for
intelligent businesses and on big data analytics (BDA) in the
healthcare sector; describes the network infrastructure
requirements for effective transfer of big data, and the storage
infrastructure requirements of applications which generate big
data; examines real-time analytics solutions; introduces
in-database processing and in-memory analytics techniques for data
mining; discusses the use of mainframes for handling real-time big
data and the latest types of data management systems for BDA;
provides information on the use of cluster, grid and cloud
computing systems for BDA; reviews the peer-to-peer techniques and
tools and the common information visualization techniques, used in
BDA.
The emergence of highly promising and potent technologies has
enabled the transition of ordinary objects into smart
artifacts-providing wider connectivity of digitized entities that
can facilitate the building of connected cities. This book provides
readers with a solid foundation on the latest technologies and
tools required to develop and enhance smart cities around the
world. The book begins by examining the rise of the cloud as the
fundamental technology for establishing and sustaining smart cities
and enterprises. Explaining the principal technologies and platform
solutions for implementing intelligent cities, the book details the
role of various technologies, standards, protocols, and tools in
establishing flexible homes and the buildings of the future.
Examines IT platforms and tools from various product vendors
Considers service-oriented architecture and event-driven
architecture for smart city applications Explains how to leverage
big data analytics for smart city enhancement and improved decision
making Includes case studies of intelligent cities, smart homes,
buildings, transports, healthcare systems, and airports The authors
explore the convergence of cloud computing and enterprise
architecture and present valuable information on next-generation
cloud computing. They also cover the various architectural types,
including enterprise-scale integration, security, management, and
governance. The book concludes by explaining the various security
requirements of intelligent cities as well as the threats and
vulnerabilities of the various components that form the basis of
the intelligent city framework, including cloud, big data, Internet
of Things, and mobile technologies.
Machines are being systematically empowered to be interactive and
intelligent in their operations, offerings. and outputs. There are
pioneering Artificial Intelligence (AI) technologies and tools.
Machine and Deep Learning (ML/DL) algorithms, along with their
enabling frameworks, libraries, and specialized accelerators, find
particularly useful applications in computer and machine vision,
human machine interfaces (HMIs), and intelligent machines. Machines
that can see and perceive can bring forth deeper and decisive
acceleration, automation, and augmentation capabilities to
businesses as well as people in their everyday assignments. Machine
vision is becoming a reality because of advancements in the
computer vision and device instrumentation spaces. Machines are
increasingly software-defined. That is, vision-enabling software
and hardware modules are being embedded in new-generation machines
to be self-, surroundings, and situation-aware. Machine
Intelligence emphasizes computer vision and natural language
processing as drivers of advances in machine intelligence. The book
examines these technologies from the algorithmic level to the
applications level. It also examines the integrative technologies
enabling intelligent applications in business and industry.
Features: Motion images object detection over voice using deep
learning algorithms Ubiquitous computing and augmented reality in
HCI Learning and reasoning in Artificial Intelligence Economic
sustainability, mindfulness, and diversity in the age of artificial
intelligence and machine learning Streaming analytics for
healthcare and retail domains Covering established and emerging
technologies in machine vision, the book focuses on recent and
novel applications and discusses state-of-the-art technologies and
tools.
As the number of Internet of Things (IoT) elements grows
exponentially, their interactions can generate a massive amount of
raw and multi-structured data. The challenge with this data
explosion is to transform any raw data into information and
knowledge, which can be used by people and systems to make
intelligent decisions. Industrial IoT Application Architectures and
Use Cases explores how artificial intelligence (AI), data
analytics, and IoT technology combine to promote intelligent
decision-making and automation in a range of industries. With
faster, more stable AI algorithms and approaches, knowledge
discovery and dissemination from IoT-device data can be simplified
and streamlined. An era of powerful cognitive technology is
beginning due to cloud-based cognitive systems that are forming the
foundation of game-changing intelligent applications. This book
presents next-generation use cases of IoT and IoT data analytics
for a variety of industrial verticals as given below: An
Intelligent IoT framework for smart water management An IoT-enabled
smart traffic control system for congestion control and smart
traffic management An intelligent airport system for airport
management and security surveillance An IoT framework for
healthcare to integrate and report patient information Fuzzy
scheduling with IoT for tracking and monitoring hotel assets An IoT
system for designing drainage systems and monitoring drainage pipes
Predictive maintenance of plant equipment to decide the actual mean
time to malfunction Integrated neural networks and IoT systems for
predictive equipment maintenance IoT integration in blockchain for
smart waste management This book also includes a chapter on the IoT
paradigm and an overview of uses cases for personal, social, and
industrial applications.
The strategically sound combination of edge computing and
artificial intelligence (AI) results in a series of distinct
innovations and disruptions enabling worldwide enterprises to
visualize and realize next-generation software products, solutions
and services. Businesses, individuals, and innovators are all set
to embrace and experience the sophisticated capabilities of Edge
AI. With the faster maturity and stability of Edge AI technologies
and tools, the world is destined to have a dazzling array of
edge-native, people-centric, event-driven, real-time,
service-oriented, process-aware, and insights-filled services.
Further on, business workloads and IT services will become
competent and cognitive with state-of-the-art Edge AI
infrastructure modules, AI algorithms and models, enabling
frameworks, integrated platforms, accelerators, high-performance
processors, etc. The Edge AI paradigm will help enterprises evolve
into real-time and intelligent digital organizations. Applied Edge
AI: Concepts, Platforms, and Industry Use Cases focuses on the
technologies, processes, systems, and applications that are driving
this evolution. It examines the implementation technologies; the
products, processes, platforms, patterns, and practices; and use
cases. AI-enabled chips are exclusively used in edge devices to
accelerate intelligent processing at the edge. This book examines
AI toolkits and platforms for facilitating edge intelligence. It
also covers chips, algorithms, and tools to implement Edge AI, as
well as use cases. FEATURES The opportunities and benefits of
intelligent edge computing Edge architecture and infrastructure
AI-enhanced analytics in an edge environment Encryption for
securing information An Edge AI system programmed with Tiny Machine
learning algorithms for decision making An improved edge paradigm
for addressing the big data movement in IoT implementations by
integrating AI and caching to the edge Ambient intelligence in
healthcare services and in development of consumer electronic
systems Smart manufacturing of unmanned aerial vehicles (UAVs) AI,
edge computing, and blockchain in systems for environmental
protection Case studies presenting the potential of leveraging AI
in 5G wireless communication
Digital transformation (DT) has become a buzzword. Every industry
segment across the globe is consciously jumping toward digital
innovation and disruption to get ahead of their competitors. In
other words, every aspect of running a business is being digitally
empowered to reap all the benefits of the digital paradigm. All
kinds of digitally enabled businesses across the globe are
intrinsically capable of achieving bigger and better things for
their constituents. Their consumers, clients, and customers will
realize immense benefits with real digital transformation
initiatives and implementations. The much-awaited business
transformation can be easily and elegantly accomplished with a
workable and winnable digital transformation strategy, plan, and
execution. There are several enablers and accelerators for
realizing the much-discussed digital transformation. There are a
lot of digitization and digitalization technologies available to
streamline and speed up the process of the required transformation.
Industrial Internet of Things (IIoT) technologies in close
association with decisive advancements in the artificial
intelligence (AI) space can bring forth the desired transitions.
The other prominent and dominant technologies toward forming
digital organizations include cloud IT, edge/fog computing,
real-time data analytics platforms, blockchain technology, digital
twin paradigm, virtual and augmented reality (VR/AR) techniques,
enterprise mobility, and 5G communication. These technological
innovations are intrinsically competent and versatile enough to
fulfill the varying requirements for establishing and sustaining
digital enterprises. Enterprise Digital Transformation: Technology,
Tools, and Use Cases features chapters on the evolving aspects of
digital transformation and intelligence. It covers the unique
competencies of digitally transformed enterprises, IIoT use cases,
and applications. It explains promising technological solutions
widely associated with digital innovation and disruption. The book
focuses on setting up and sustaining smart factories that are
fulfilling the Industry 4.0 vision that is realized through the
IIoT and allied technologies.
Digital transformation (DT) has become a buzzword. Every industry
segment across the globe is consciously jumping toward digital
innovation and disruption to get ahead of their competitors. In
other words, every aspect of running a business is being digitally
empowered to reap all the benefits of the digital paradigm. All
kinds of digitally enabled businesses across the globe are
intrinsically capable of achieving bigger and better things for
their constituents. Their consumers, clients, and customers will
realize immense benefits with real digital transformation
initiatives and implementations. The much-awaited business
transformation can be easily and elegantly accomplished with a
workable and winnable digital transformation strategy, plan, and
execution. There are several enablers and accelerators for
realizing the much-discussed digital transformation. There are a
lot of digitization and digitalization technologies available to
streamline and speed up the process of the required transformation.
Industrial Internet of Things (IIoT) technologies in close
association with decisive advancements in the artificial
intelligence (AI) space can bring forth the desired transitions.
The other prominent and dominant technologies toward forming
digital organizations include cloud IT, edge/fog computing,
real-time data analytics platforms, blockchain technology, digital
twin paradigm, virtual and augmented reality (VR/AR) techniques,
enterprise mobility, and 5G communication. These technological
innovations are intrinsically competent and versatile enough to
fulfill the varying requirements for establishing and sustaining
digital enterprises. Enterprise Digital Transformation: Technology,
Tools, and Use Cases features chapters on the evolving aspects of
digital transformation and intelligence. It covers the unique
competencies of digitally transformed enterprises, IIoT use cases,
and applications. It explains promising technological solutions
widely associated with digital innovation and disruption. The book
focuses on setting up and sustaining smart factories that are
fulfilling the Industry 4.0 vision that is realized through the
IIoT and allied technologies.
Coud reliability engineering is a leading issue of cloud services.
Cloud service providers guarantee computation, storage and
applications through service-level agreements (SLAs) for promised
levels of performance and uptime. Cloud Reliability Engineering:
Technologies and Tools presents case studies examining cloud
services, their challenges, and the reliability mechanisms used by
cloud service providers. These case studies provide readers with
techniques to harness cloud reliability and availability
requirements in their own endeavors. Both conceptual and applied,
the book explains reliability theory and the best practices used by
cloud service companies to provide high availability. It also
examines load balancing, and cloud security. Written by researchers
and practitioners, the book's chapters are a comprehensive study of
cloud reliability and availability issues and solutions. Various
reliability class distributions and their effects on cloud
reliability are discussed. An important aspect of reliability block
diagrams is used to categorize poor reliability of cloud
infrastructures, where enhancement can be made to lower the failure
rate of the system. This technique can be used in design and
functional stages to determine poor reliability of a system and
provide target improvements. Load balancing for reliability is
examined as a migrating process or performed by using virtual
machines. The approach employed to identify the lightly loaded
destination node to which the processes/virtual machines migrate
can be optimized by employing a genetic algorithm. To analyze
security risk and reliability, a novel technique for minimizing the
number of keys and the security system is presented. The book also
provides an overview of testing methods for the cloud, and a case
study discusses testing reliability, installability, and security.
A comprehensive volume, Cloud Reliability Engineering: Technologies
and Tools combines research, theory, and best practices used to
engineer reliable cloud availability and performance.
This book vividly illustrates all the promising and potential
machine learning (ML) and deep learning (DL) algorithms through a
host of real-world and real-time business use cases. Machines and
devices can be empowered to self-learn and exhibit intelligent
behavior. Also, Big Data combined with real-time and runtime data
can lead to personalized, prognostic, predictive, and prescriptive
insights. This book examines the following topics: Cognitive
machines and devices Cyber physical systems (CPS) The Internet of
Things (IoT) and industrial use cases Industry 4.0 for smarter
manufacturing Predictive and prescriptive insights for smarter
systems Machine vision and intelligence Natural interfaces K-means
clustering algorithm Support vector machine (SVM) algorithm A
priori algorithms Linear and logistic regression Applied Learning
Algorithms for Intelligent IoT clearly articulates ML and DL
algorithms that can be used to unearth predictive and prescriptive
insights out of Big Data. Transforming raw data into information
and relevant knowledge is gaining prominence with the availability
of data processing and mining, analytics algorithms, platforms,
frameworks, and other accelerators discussed in the book. Now, with
the emergence of machine learning algorithms, the field of data
analytics is bound to reach new heights. This book will serve as a
comprehensive guide for AI researchers, faculty members, and IT
professionals. Every chapter will discuss one ML algorithm, its
origin, challenges, and benefits, as well as a sample industry use
case for explaining the algorithm in detail. The book's detailed
and deeper dive into ML and DL algorithms using a practical use
case can foster innovative research.
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.
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