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[Music]
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[Music]
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dear participants in today's session we
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shall discuss about the applications of
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artificial intelligence in Internet of
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things as we know internet is
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transforming from the internet of
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computers to the internet of things over
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the years massively interconnected
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systems which are also known as cyber
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physical systems are emerging from the
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assimilation of many facets like
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infrastructure embedded devices smart
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objects humans and physical
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environment this all is is heading to a
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huge internet of everything in a smart
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cyber physical Earth uh internet of
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things and cyber physical systems when
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they are conjugated with data science it
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may emerge as the next smart Revolution
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thus iot with AI can become a huge
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breakthrough easing human life however
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there are certain concerns also in this
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which include security concerns and
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ethical
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issues uh another issue which is
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impeding the growth of this field is a
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huge data is generated and weak
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computation power is available as of now
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so all these are areas of study to make
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this more uh properly applicable in the
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uh real world as we know internet of
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things is something which anticipates a
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world saturated with intelligent gadgets
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which are frequently called smart
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objects and these smart objects are
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interconnected through internet or any
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other communication medium with the
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Advent of internet of everything in a
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smart cyber physical Earth uh we have
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seen that certain concerns like huge
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data which has been generated with much
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weaker computation power uh is something
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which is impeding its growth the answer
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to this is research in Ai and data
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science because through data science we
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can find uh the answers to how to manage
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this huge amount of data thus iot and AI
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can become a huge bre breakthrough once
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they're combined together when we talk
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of smartness Big Data analysis machine
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learning is the way to
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go uh human intelligence basically is
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taking a perfect decision at an
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appropriate time when we talk of
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artificial intelligence it is a take
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away from Human intelligence so
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artificial intelligence would be
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choosing a right decision at the
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appropriate
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time when we discuss AI it is not a
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standalone discipline it is a has a
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interdisciplinary nature
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Fields as diverse as philosophy computer
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science mathematics statistics biology
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physics sociology psychology Etc all
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combined together in AI so AI if you are
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defining it in a formal way is the
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science of installing intelligence in
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machines so that they are capable of
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doing tasks that are traditionally
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required the human mind so whatever we
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are doing through our mind we are trying
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to simulate or we are trying to emulate
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it through AI data is something which is
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uh generated while doing all this and in
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real world data has some very unwelcome
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properties that includes huge volume of
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data and that huge volume is also
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unstructured in nature the data sources
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are varied and it needs real time
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processing also it changes
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continuously so what is the way forward
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machine learning is the way forward and
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machine learning basically gives inan
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systems the ability to learn without
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actually having to program them
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explicitly it is about learning from
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experience rather than uh actually
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programming for its functioning so
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adaptive learning is what machine
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learning is all about so many uh
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adaptive learning algorithms have used
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uh what is happening in various uh uh
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devices or various things in the real
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world or various uh species in the real
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world for example earthworm is a uh
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inspiration for the development of smart
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thermostats and adaptive learning of new
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responses is the quality which is uh
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actually picked up from the earth form
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to develop a smart thermostat similarly
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learning by trial and error which is
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picked up from fish that was used to
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develop a Kronos Robo then learning by
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setting a goal acting to achieve it and
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then assessing itself this quality or
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this this property of the octopus was
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used to develop the application in COG
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self-consciousness and higher order
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thinking which is something which
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chimpanzees exhibit that is used in
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development of Siri which we all use in
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our
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smartphones uh emotions like frustration
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and happiness which a small child from 1
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to 6 year old uh those emotions are used
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to develop Cosmo so that is a object
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which is developed basically simulating
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the emotions of a 1 to six-year-old
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child now full theory of Mind interpret
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human emotions and Responding back
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accordingly which is something a 7 to 11
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year old child does it is programmed
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into a device called a robo called
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pepper then during test simulation and
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experiments used a 12 plus year old
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human mind and this particular thing
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this test was devised by mit's AI
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program by Eugene
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ghostman now when we talk of Internet of
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things so many fields are merging in it
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into it for example high performance
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Computing cognitive science realtime
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analytics big data analytics machine
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learning wireless sensor networks then
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Network Control software actuators
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sensors embedded systems they are all
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part of or they all uh merge into the
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field of iot so when we talk of all
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these things like iot intelligence and
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like that there are certain relations
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which we can Define to actually
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understand how they are interl how they
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merge into each other things when they
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are intersected with intelligence we get
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what is called smart objects or smart
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devices similarly a network intersected
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with intelligence will give you a smart
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Network then things intersected with net
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Network would give us network
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devices similarly services and
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intelligence once they intersected we
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get smart Services services and network
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intersected gives us internet services
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then things and intelligence and network
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the intersection of all these things
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will give us internet of things internet
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services and intelligence once they are
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intersected their common cusp gives us
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internet of
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services and then internet of things
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it's Union with internet of services
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will give us internet of everything
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which would be having physical as well
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as smart devices so things and
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everything when we talk of these two
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terms when we are talking about iot and
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ie we must be very clear about the
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concept of things and the concept of
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everything one straightforward concept
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that may come to the mind is anything
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that can be connected maybe the thing in
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iot however we we can Define it in the
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other way around also
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there can be more features in making a
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physical object a thing the thing which
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could be a living thing or a non-living
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thing should have a way to generate or
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collect data that is the first property
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a thing should have a way to process
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data a way to spend or receive data a
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way to identify itself so thing is a
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physical object whereas IO is the things
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and intelligent
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Services Services as we know are uh not
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uh physical they are basically abstract
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uh when we talk of AI enabled iot there
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are some examples of the existing iot
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services with the working of AI behind
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them and these examples we use in our
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everyday life also for example we use
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voice assistants like Alexa Siri and so
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on in our smartphones then certain Robos
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like pepper sopia they are also be in
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application in use in different
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applications then robotic kitchens are
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there there which are actually being
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used smart devices like smart ens Sky
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smart lights automative Ai and certain
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industrial iot applications like primer
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and Pluto shift they are all part of our
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AI enabled iot uh applications which are
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presently deployed in the real world so
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once we are talking about AI enabled iot
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we should understand that what cyber
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physical systems are in a formal way
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this term cyber physical systems it
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emerged around 2006 and it was coined by
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Helen Gil at the National Science
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Foundation in the United
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States uh as for as far as NSF or the
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National Science Foundation definition
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is concerned they say it is an
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engineered system that are built from
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and depend upon the seamless integration
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of computational algorithms and physical
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components for example let us consider
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an example of what we can visualize in
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terms of cyber physical systems
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you are going in a car somewhere the car
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meets with an
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accident normally what is happening is
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once it meets with an accident accident
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somebody calls an ambulance somebody
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would call police you will reach an
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Hospital in that hospital the doctors
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would ask that okay this is a police
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case so let the police register a case
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first uh this is something which would
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waste very precious time in a accident
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case uh what would happen if you
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visualize a system in which once that
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accident happens the system is
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immediately informing the nearest uh
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hospital and the system is informing the
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nearest police station and the police
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reaches before or parall to when you
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reach the hospital in an ambulance so
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that way a lot of time is saved so that
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is what we are visualizing in a CPS kind
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of a system CPS again like uh iot is a
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combination of so many disciplines and
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this machine learning which is Big use
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use in this for example machine learning
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is basically it is a platform to learn
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the trends of the system from data
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generated in the past to make an
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informed decision in future without
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manual
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monitoring then big data analytics or
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what we call data science that is
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another uh area which machine learning
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uh uses so all the data that is
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generated in a huge interconnected
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system will constitute a massive content
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that will be processed and analyzed over
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time to make the system better
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so usually machine learning algorithms
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are modified and adapted to handle this
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big data scenario then design is another
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area which is part of machine learning
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the overall system needs a robust
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tolerant and efficient design which
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connects all the components as required
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process science its usage would be
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different industrial manufacturing
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processes are demanding the use of
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Automation in their production lines
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then wireless sensor networks for
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communication are required the whole
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system would depend on communication
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wireless connections between each
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component of the system would help pass
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information from one object to the
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another So within a system or within
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objects uh that would be required
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software is the heart of all this
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functioning all the working devices in
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system need a software to work these
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softwares would be system and task
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specific then embedded systems the
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gadgets the devices that constitute a
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CPS would contain uh embedded systems
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like camera temperature measurement
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sensors each device would have different
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embedded systems or sensors as per their
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requirements cybernetics is another
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field of study which is relevant to
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Mechanical physical biological cognitive
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and social systems uh mechatronics and
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Robotics these are fields which seek
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humanlike actions for different tasks so
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these will not be manually handled for
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giving given some fixed instructions
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rather they will be intelligent enough
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to know what needs to be done at the
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right time then high performance or
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cloud computing is something which is
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part of the machine Learning Systems
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typically the issues considered cannot
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be solved on a single commodity computer
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because of the uh huge amount of data So
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within a sensible amount of time you
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can't handle all that so excessively
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complex operations are required or the
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execution is incomprehensible because of
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the restricted accessible assets a lot
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of training data is required so these
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systems are required here then cognitive
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science what is cognitive science it is
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predominantly involving Concepts from
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psychology philosophy neuros
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Neuroscience then anthropology computer
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science and Linguistics so it is a study
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of mind and the level of intelligence
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the goal is to understand the nature of
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knowledge in various living beings and
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how that knowledge is acquired processed
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and used so that we can then mimic in
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our
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systems so what are the various
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components in iot CPS system when we
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talk of its components the iot
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architecture tree would have internet of
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things and that you'll have things
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things can be a smart object or a
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identity Network then data storage and
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data processing which we call data
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science then security is another
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component so what a smart SM objects
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actually we've been talking about this
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term two elements to consider in the
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physical world are a physical entity and
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a smart object a physical entity or a
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physical thing can be represented in the
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cyber world by a d by its digital proxy
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which is called a DP so digital
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properties have two fundamental
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properties one is each digital proxy
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must have a single ID that distinguishes
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it from others the association between
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the digital proxy and the physical
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entity must be established automatically
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through this
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DP then relevant digital parameters
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pertaining to the characteristics of the
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physical entity can be refreshed upon
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any difference in the former similarly
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changes that influence the digital proxy
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might be shown on the physical entity in
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the physical world through actuators so
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that is how we can show it in the
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physical world we can use actuators for
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that then data storage and data
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processing it that is the main motive of
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iot and CPS is to create an autonomous
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system that can handle different
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situations across the globe and those
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situations would help eventually assist
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humans to lead a better life so the
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basic iot CPS framework consists of
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smart objects and the connections
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between them then uh communication
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networks are very important here come
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continuous analysis of big data over
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these platforms demand an efficient and
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reliable Network structure
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virtualization of nearly every physical
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thing imposes a big Challenge on the
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network service providers so there
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should be Advanced Wireless technologies
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that can handle such enormous eruption
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of devices smart devices need a smart
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Network
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infrastructure artificial intelligence
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and iot CPS how they are actually
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working in the system is that we know
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that the first Industrial Revolution
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happened during 1760 to
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1840 and during that revolution
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industrial revolution a rapid growth of
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machines took place in the Second
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Industrial Revolution 1870 to 1914
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people became richer in urban uh
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currently what is happening is a smart
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or a cyber evolution is underway a
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number of interdisciplinary Technologies
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and Sciences are converging and giving
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rise to smarter softwares newer
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materials uh very flexible and uh Robos
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then groundbreaking inventions like 3D
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printers and a whole range of
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personalized web
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services so AI enabled iot CPS would
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basically be a good machine Learning
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System uh in order to deal such big data
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and what such a system would require is
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data preparation capabilities learning
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algorithms basic and advanced both
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Automation and adaptive processes
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scalability then emble modeling and
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real-time decision making
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in a cognitive Ai and iot CPA system
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cognition as we earlier also discussed
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is a process of acquiring knowledge and
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understanding through thoughts then
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experience and senses so intuitively
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cognitive iot can be thought of as an
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extension of iot which is capable of
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understanding reasoning and
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learning when we talk of air enabled iot
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CPS Energy utilization routing or
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traffic handling cost savings these are
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some of the applications challenges in
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this system would be as we see in the
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recent iot trends that data is coming at
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a faster speed from various sources in
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various forms so basically it obviously
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exceeds the abilities of an information
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system to embi store and analyze and
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process it the field of AI needs more
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development with the Advent of such iot
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CPS
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infrastructure security is another major
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concern as in this age of Technology
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there will be cyber wall
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we already see that cyber security is a
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big Challenge and it is even impeding
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National Security
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sometimes so challenges of this CPS
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include a number of specific challenges
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which get raised due to the large scale
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nature of this CPS system any physical
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system may be predicted partially by
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simulation but for a cyber process it is
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difficult to predict the behavior this
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difficulty to predict the behavior is
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one big challenge when the Two Worlds
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come together in a CPS they need to
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operate in synchron they have to be
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synchronized it poses a big challenge
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for the global system control there are
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even bigger challenges with the big data
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so when we talk of challenges of iot the
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Bas basic challenges are connectivity
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security and Trust
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interoperability scale of the whole
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system then energy and environment so
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these challenges are impeding the growth
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of iot systems when we talk of data
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analysis which is so so important in
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these systems the challenges which are
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impeding data analysis is analyzing the
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massive and fast flowing data which
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requires Advanced Technologies like
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virtualization softwares then adaptable
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cloud computing Etc it also needs very
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powerful high performance Computing
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devices that can provide the mechanism
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to discover the underlying insights in
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Big
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Data so to conclude our talk we can hope
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that in future future people will be
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wearing intelligent gadgets eating
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intelligent capsules that judge the
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impact of the medicine on the body
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living inside intelligent homes and so
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on with the right policies we can get
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the best of both worlds that is
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automation without rampant Unemployment
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uh with this we come to the end of the
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session uh thank you all for a very
00:20:18
patient
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[Music]
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hearing