SlideShare a Scribd company logo
1 of 57
Internet of Things and Large-scale
Data Analytics
1
Payam Barnaghi
Institute for Communication Systems (ICS)/
5G Innovation Centre
University of Surrey
Guildford, United Kingdom
The IET Surrey Network, September 2015
2
IBM Mainframe 360, source Wikipedia
Apollo 11 Command Module (1965) had
64 kilobytes of memory
operated at 0.043MHz.
An iPhone 5s has a CPU running at speeds
of up to 1.3GHz
and has 512MB to 1GB of memory
Cray-1 (1975) produced 80 million Floating
point operations per second (FLOPS)
10 years later, Cray-2 produced 1.9G FLOPS
An iPhone 5s produces 76.8 GFLOPS – nearly
a thousand times more
Cray-2 used 200-kilowatt power
Source: Nick T., PhoneArena.com, 2014
Computing Power
4
−Smaller size
−More Powerful
−More memory and more storage
−"Moore's law" over the history of computing, the
number of transistors in a dense integrated circuit
has doubled approximately every two years.
5
Sensor devices are becoming widely available
- Programmable devices
- Off-the-shelf gadgets/tools
6
More “Things” are being connected
Home/daily-life devices
Business and
Public infrastructure
Health-care
…
7
People Connecting to Things
Motion sensor
Motion sensor
Motion sensor
ECG sensor
Internet
8
Things Connecting to Things
- Complex and heterogeneous
resources and networks
Example: Radiation Sensor Board (Libelium)
Source: Wireless Sensor Networks to Control Radiation Levels, David Gascón, Marcos Yarza, Libelium, April 2011.
Waspmote
Connected world
10Image courtesy: Wilgengebroed
11
Internet of Things (IoT)
− Extending the current Internet and providing connection,
communication, and inter-networking between devices and
physical objects, or "Things," is a growing trend that is often
referred to as the Internet ofThings.
− “The technologies and solutions that enable integration of
real world data and services into the current information
networking technologies are often described under the
umbrella term of the Internet of Things (IoT)”
Mobile Technologies
12
Image courtesy: Economist
1G
AMPS, NMT,
TACS
2G
GSM. GPRS,
TDMA IS-136,
CDMA IS-95, PDC
3G
UMTS, CDMA2000,
4G
5G
LTE, LTE-A
People
Things
Voice
Text
Data
5G technologies
and standards
Connection + Control M2M/IoT
Change in the communication
technologies
Mobile Services and Applications
14
Image courtesy: Economist
15
Things, Devices, Data, and lots of it
image courtesy: Smarter Data - I.03_C by Gwen Vanhee
Cyber-Physical-Social Data
16P. Barnaghi et al., "Digital Technology Adoption in the Smart Built Environment", IET Sector Technical Briefing, The Institution of Engineering and Technology
(IET), I. Borthwick (editor), March 2015.
Internet of Things: The story so far
RFID based
solutions
Wireless Sensor and
Actuator networks
, solutions for
communication
technologies, energy
efficiency, routing, …
Smart Devices/
Web-enabled Apps/Services,
initial products,
vertical applications, early
concepts and demos, …
Motion sensor
Motion sensor
ECG sensor
Physical-Cyber-Social
Systems, Linked-data,
semantics,
More products, more
heterogeneity,
solutions for control and
monitoring, …
Future: Cloud, Big (IoT) Data
Analytics, Interoperability, Enhanced
Cellular/Wireless Com. for IoT,
Real-world operational use-cases
and Industry and B2B
services/applications,
more Standards…
P. Barnaghi, A. Sheth, "Internet of Things: the story so far", IEEE IoT Newsletter, September 2014.
17
18
“Each single data item is important.”
“Relying merely on data from sources that are
unevenly distributed, without considering
background information or social context, can
lead to imbalanced interpretations and
decisions.”
?
Data- Challenges
− Multi-modal and heterogeneous
− Noisy and incomplete
− Time and location dependent
− Dynamic and varies in quality
− Crowed sourced data can be unreliable
− Requires (near-) real-time analysis
− Privacy and security are important issues
− Data can be biased- we need to know our data!
19
Data Lifecycle
20
Source: The IET Technical Report, Digital Technology Adoption in the Smart Built Environment: Challenges and opportunities of
data driven systems for building, community and city-scale applications,
http://www.theiet.org/sectors/built-environment/resources/digital-technology.cfm
21
“The ultimate goal is transforming the raw data
to insights and actionable knowledge and/or
creating effective representation forms for
machines and also human users and creating
automation.”
This usually requires data from multiple sources,
(near-) real time analytics and visualisation
and/or semantic representations.
22
“Data will come from various source and from
different platforms and various systems.”
This requires an ecosystem of IoT systems with
several backend support components (e.g.
pub/sub, storage, discovery, and access services).
Semantic interoperability is also a key
requirement.
Device/Data interoperability
23
The slide adapted from the IoT talk given by Jan Holler of Ericsson at IoT Week 2015 in Lisbon.
Search on the Internet/Web in the early days
2424
Accessing IoT data
25
“ The internet/web norm (for now) is often to use
an interface to search for the data; the search
engines are usually information locators – return
the link to the information; IoT data access is
more opportunistic and context aware”.
The IoT requires context-aware and opportunistic
push mechanism, dynamic device/resource
associations and (software-defined) data routing
networks.
IoT environments are usually dynamic and (near-) real-
time
26
Off-line Data analytics
Data analytics in dynamic environments
Image sources: ABC Australia and 2dolphins.com
What type of problems we expect to solve
using the IoT and data analytics solutions?
28Source LAT Times, http://documents.latimes.com/la-2013/
A smart City example
Future cities: A view from 1998
29
Source: http://robertluisrabello.com/denial/traffic-in-la/#gallery[default]/0/
Source: wikipedia
Back to the Future: 2013
Common problems
30
Source: thestar.com.my & skyscrappercity.com
Guildford, Surrey
Applications and potentials
− Analysis of thousands of traffic, pollution, weather, congestion,
public transport, waste and event sensory data to provide
better transport and city management.
− Converting smart meter readings to information that can help
prediction and balance of power consumption in a city.
− Monitoring elderly homes, personal and public healthcare
applications.
− Event and incident analysis and prediction using (near) real-
time data collected by citizen and device sensors.
− Turning social media data (e.g.Tweets) related to city issues
into event and sentiment analysis.
− Any many more…
31
32
EU FP7 CityPulse Project
33
34
CityPulse Consortium
Industrial
SIE (Austria,
Romania),
ERIC
SME AI,
Higher
Education
UNIS, NUIG,
UASO, WSU
City BR, AA
Partners:
Duration: 36 months (2014-2017)
35
Designing for real world problems
101 Smart City scenarios
37http://www.ict-citypulse.eu/scenarios/
Dr Mirko Presser
Alexandra Institute
Denmark
38
Data Visualisation
39
Event Visualisation
CityPulse demo
40
Data abstraction
41
F. Ganz, P. Barnaghi, F. Carrez, "Information Abstraction for Heterogeneous Real World Internet Data", IEEE Sensors Journal, 2013.
Adaptable and dynamic learning
methods
http://kat.ee.surrey.ac.uk/
Correlation analysis
43
Analysing social streams
44
With
City event extraction from social streams
45
Tweets from a city
POS
Tagging
Hybrid NER+
Event term
extraction
GeohashingGeohashing
Temporal
Estimation
Temporal
Estimation
Impact
Assessment
Impact
Assessment
Event
Aggregation
Event
AggregationOSM LocationsOSM Locations SCRIBE ontologySCRIBE ontology
511.org hierarchy511.org hierarchy
City Event ExtractionCity Event Annotation
P. Anantharam, P. Barnaghi, K. Thirunarayan, A.P. Sheth, "Extracting City Traffic Events from Social Streams", ACM Trans. on Intelligent
Systems and Technology, 2015.
Collaboration with Kno.e.sis, Wright State University
Geohashing
46
0.6 miles
Max-lat
Min-lat
Min-long
Max-long
0.38 miles
37.7545166015625, -122.40966796875
37.7490234375, -122.40966796875
37.7545166015625, -122.420654296875
37.7490234375, -122.420654296875
4
37.74933, -122.4106711
Hierarchical spatial structure of geohash for
representing locations with variable precision.
Here the location string is 5H34
0 1 2 3 4 5 6
7 8 9 B C D E
F G H I J K L
0 1
7
2 3 4
5 6 8 9
0 1 2 3 4
5 6 7
0 1 2
3 4 5
6 7 8
Social media analysis
47
City Infrastructure
Tweets from a city
P. Anantharam, P. Barnaghi, K. Thirunarayan, A. Sheth, "Extracting city events from social streams,“, ACM Transactions on TICS, 2014.
Social media analysis (deep learning –
under construction)
48
http://iot.ee.surrey.ac.uk/citypulse-social/
Accumulated and connected knowledge?
49
Image courtesy: IEEE Spectrum
Users in control or losing control?
50
Image source: Julian Walker, Flicker
Data Analytics solutions for IoT data
− Great opportunities and many applications;
− Enhanced and (near-) real-time insights;
− Supporting more automated decision making and in-depth
analysis of events and occurrences by combining various
sources of data;
− Providing more and better information to citizens;
− …
51
However…
− We need to know our data and its context (density, quality,
reliability, …)
− Open Data (there needs to be more real-time data)
− Complementary data
− Citizens in control
− Transparency and data management issues (privacy, security,
trust, …)
− Reliability and dependability of the systems
52
In conclusion
− IoT data analytics is different from common big data analytics.
− Data collection in the IoT comes at the cost of bandwidth, network,
energy and other resources.
− Data collection, delivery and processing is also depended on multiple
layers of the network.
− We need more resource-aware data analytics methods and cross-layer
optimisations.
− The solutions should work across different systems and multiple platforms
(Ecosystem of systems).
− Data sources are more than physical (sensory) observation.
− The IoT requires integration and processing of physical-cyber-social data.
− The extracted insights and information should be converted to a feedback
and/or actionable information.
53
IET sector briefing report
54
Available at: http://www.theiet.org/sectors/built-environment/resources/digital-technology.cfm
CityPulse stakeholder report
55
http://www.ict-citypulse.eu/page/sites/default/files/citypulse_annual_report.pdf
Other challenges and topics that I didn't talk about
Security
Privacy
Trust, resilience and
reliability
Noise and
incomplete data
Cloud and
distributed computing
Networks, test-beds and
mobility
Mobile computing
Applications and use-case
scenarios
56
Q&A
− Thank you.
http://personal.ee.surrey.ac.uk/Personal/P.Barnaghi/
@pbarnaghi
p.barnaghi@surrey.ac.uk

More Related Content

What's hot

Data Analytics for Smart Cities: Looking Back, Looking Forward
Data Analytics for Smart Cities: Looking Back, Looking Forward Data Analytics for Smart Cities: Looking Back, Looking Forward
Data Analytics for Smart Cities: Looking Back, Looking Forward PayamBarnaghi
 
Internet of Things: The story so far
Internet of Things: The story so farInternet of Things: The story so far
Internet of Things: The story so farPayamBarnaghi
 
Physical-Cyber-Social Data Analytics & Smart City Applications
Physical-Cyber-Social Data Analytics & Smart City ApplicationsPhysical-Cyber-Social Data Analytics & Smart City Applications
Physical-Cyber-Social Data Analytics & Smart City ApplicationsPayamBarnaghi
 
The Future is Cyber-Healthcare
The Future is Cyber-Healthcare The Future is Cyber-Healthcare
The Future is Cyber-Healthcare PayamBarnaghi
 
CityPulse: Large-scale data analysis for smart city applications
CityPulse: Large-scale data analysis for smart city applicationsCityPulse: Large-scale data analysis for smart city applications
CityPulse: Large-scale data analysis for smart city applicationsPayamBarnaghi
 
Intelligent Data Processing for the Internet of Things
Intelligent Data Processing for the Internet of Things Intelligent Data Processing for the Internet of Things
Intelligent Data Processing for the Internet of Things PayamBarnaghi
 
CityPulse: Large-scale data analysis for smart city applications
CityPulse: Large-scale data analysis for smart city applications CityPulse: Large-scale data analysis for smart city applications
CityPulse: Large-scale data analysis for smart city applications PayamBarnaghi
 
Intelligent Data Processing for the Internet of Things
Intelligent Data Processing for the Internet of Things Intelligent Data Processing for the Internet of Things
Intelligent Data Processing for the Internet of Things PayamBarnaghi
 
Dynamic Semantics for Semantics for Dynamic IoT Environments
Dynamic Semantics for Semantics for Dynamic IoT EnvironmentsDynamic Semantics for Semantics for Dynamic IoT Environments
Dynamic Semantics for Semantics for Dynamic IoT EnvironmentsPayamBarnaghi
 
Internet of Things and Data Analytics for Smart Cities
Internet of Things and Data Analytics for Smart CitiesInternet of Things and Data Analytics for Smart Cities
Internet of Things and Data Analytics for Smart CitiesPayamBarnaghi
 
Smart Cities: How are they different?
Smart Cities: How are they different? Smart Cities: How are they different?
Smart Cities: How are they different? PayamBarnaghi
 
What makes smart cities “Smart”?
What makes smart cities “Smart”? What makes smart cities “Smart”?
What makes smart cities “Smart”? PayamBarnaghi
 
Internet of Things and Data Analytics for Smart Cities and eHealth
Internet of Things and Data Analytics for Smart Cities and eHealthInternet of Things and Data Analytics for Smart Cities and eHealth
Internet of Things and Data Analytics for Smart Cities and eHealthPayamBarnaghi
 
Smart Cities and Data Analytics: Challenges and Opportunities
Smart Cities and Data Analytics: Challenges and Opportunities Smart Cities and Data Analytics: Challenges and Opportunities
Smart Cities and Data Analytics: Challenges and Opportunities PayamBarnaghi
 
How to make data more usable on the Internet of Things
How to make data more usable on the Internet of ThingsHow to make data more usable on the Internet of Things
How to make data more usable on the Internet of ThingsPayamBarnaghi
 
Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things PayamBarnaghi
 
How to make cities "smarter"?
How to make cities "smarter"?How to make cities "smarter"?
How to make cities "smarter"?PayamBarnaghi
 
Smart Cities….Smart Future
Smart Cities….Smart FutureSmart Cities….Smart Future
Smart Cities….Smart FuturePayamBarnaghi
 
Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things PayamBarnaghi
 
Internet of Things for healthcare: data integration and security/privacy issu...
Internet of Things for healthcare: data integration and security/privacy issu...Internet of Things for healthcare: data integration and security/privacy issu...
Internet of Things for healthcare: data integration and security/privacy issu...PayamBarnaghi
 

What's hot (20)

Data Analytics for Smart Cities: Looking Back, Looking Forward
Data Analytics for Smart Cities: Looking Back, Looking Forward Data Analytics for Smart Cities: Looking Back, Looking Forward
Data Analytics for Smart Cities: Looking Back, Looking Forward
 
Internet of Things: The story so far
Internet of Things: The story so farInternet of Things: The story so far
Internet of Things: The story so far
 
Physical-Cyber-Social Data Analytics & Smart City Applications
Physical-Cyber-Social Data Analytics & Smart City ApplicationsPhysical-Cyber-Social Data Analytics & Smart City Applications
Physical-Cyber-Social Data Analytics & Smart City Applications
 
The Future is Cyber-Healthcare
The Future is Cyber-Healthcare The Future is Cyber-Healthcare
The Future is Cyber-Healthcare
 
CityPulse: Large-scale data analysis for smart city applications
CityPulse: Large-scale data analysis for smart city applicationsCityPulse: Large-scale data analysis for smart city applications
CityPulse: Large-scale data analysis for smart city applications
 
Intelligent Data Processing for the Internet of Things
Intelligent Data Processing for the Internet of Things Intelligent Data Processing for the Internet of Things
Intelligent Data Processing for the Internet of Things
 
CityPulse: Large-scale data analysis for smart city applications
CityPulse: Large-scale data analysis for smart city applications CityPulse: Large-scale data analysis for smart city applications
CityPulse: Large-scale data analysis for smart city applications
 
Intelligent Data Processing for the Internet of Things
Intelligent Data Processing for the Internet of Things Intelligent Data Processing for the Internet of Things
Intelligent Data Processing for the Internet of Things
 
Dynamic Semantics for Semantics for Dynamic IoT Environments
Dynamic Semantics for Semantics for Dynamic IoT EnvironmentsDynamic Semantics for Semantics for Dynamic IoT Environments
Dynamic Semantics for Semantics for Dynamic IoT Environments
 
Internet of Things and Data Analytics for Smart Cities
Internet of Things and Data Analytics for Smart CitiesInternet of Things and Data Analytics for Smart Cities
Internet of Things and Data Analytics for Smart Cities
 
Smart Cities: How are they different?
Smart Cities: How are they different? Smart Cities: How are they different?
Smart Cities: How are they different?
 
What makes smart cities “Smart”?
What makes smart cities “Smart”? What makes smart cities “Smart”?
What makes smart cities “Smart”?
 
Internet of Things and Data Analytics for Smart Cities and eHealth
Internet of Things and Data Analytics for Smart Cities and eHealthInternet of Things and Data Analytics for Smart Cities and eHealth
Internet of Things and Data Analytics for Smart Cities and eHealth
 
Smart Cities and Data Analytics: Challenges and Opportunities
Smart Cities and Data Analytics: Challenges and Opportunities Smart Cities and Data Analytics: Challenges and Opportunities
Smart Cities and Data Analytics: Challenges and Opportunities
 
How to make data more usable on the Internet of Things
How to make data more usable on the Internet of ThingsHow to make data more usable on the Internet of Things
How to make data more usable on the Internet of Things
 
Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things
 
How to make cities "smarter"?
How to make cities "smarter"?How to make cities "smarter"?
How to make cities "smarter"?
 
Smart Cities….Smart Future
Smart Cities….Smart FutureSmart Cities….Smart Future
Smart Cities….Smart Future
 
Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things
 
Internet of Things for healthcare: data integration and security/privacy issu...
Internet of Things for healthcare: data integration and security/privacy issu...Internet of Things for healthcare: data integration and security/privacy issu...
Internet of Things for healthcare: data integration and security/privacy issu...
 

Viewers also liked

IBM Predictive analytics IoT Presentation
IBM Predictive analytics IoT PresentationIBM Predictive analytics IoT Presentation
IBM Predictive analytics IoT PresentationIan Skerrett
 
Big Data Analytics for the Industrial Internet of Things
Big Data Analytics for the Industrial Internet of ThingsBig Data Analytics for the Industrial Internet of Things
Big Data Analytics for the Industrial Internet of ThingsAnthony Chen
 
Internet of Things and Big Data: Vision and Concrete Use Cases
Internet of Things and Big Data: Vision and Concrete Use CasesInternet of Things and Big Data: Vision and Concrete Use Cases
Internet of Things and Big Data: Vision and Concrete Use CasesMongoDB
 
Internet of things, Big Data and Analytics 101
Internet of things, Big Data and Analytics 101Internet of things, Big Data and Analytics 101
Internet of things, Big Data and Analytics 101Mukul Krishna
 
101 Use Cases for IoT
101 Use Cases for IoT101 Use Cases for IoT
101 Use Cases for IoTCisco Canada
 
Internet-of-things- (IOT) - a-seminar - ppt - by- mohan-kumar-g
Internet-of-things- (IOT) - a-seminar - ppt - by- mohan-kumar-gInternet-of-things- (IOT) - a-seminar - ppt - by- mohan-kumar-g
Internet-of-things- (IOT) - a-seminar - ppt - by- mohan-kumar-gMohan Kumar G
 

Viewers also liked (7)

IBM Predictive analytics IoT Presentation
IBM Predictive analytics IoT PresentationIBM Predictive analytics IoT Presentation
IBM Predictive analytics IoT Presentation
 
Big Data Analytics for the Industrial Internet of Things
Big Data Analytics for the Industrial Internet of ThingsBig Data Analytics for the Industrial Internet of Things
Big Data Analytics for the Industrial Internet of Things
 
Data Analytics for IoT
Data Analytics for IoT Data Analytics for IoT
Data Analytics for IoT
 
Internet of Things and Big Data: Vision and Concrete Use Cases
Internet of Things and Big Data: Vision and Concrete Use CasesInternet of Things and Big Data: Vision and Concrete Use Cases
Internet of Things and Big Data: Vision and Concrete Use Cases
 
Internet of things, Big Data and Analytics 101
Internet of things, Big Data and Analytics 101Internet of things, Big Data and Analytics 101
Internet of things, Big Data and Analytics 101
 
101 Use Cases for IoT
101 Use Cases for IoT101 Use Cases for IoT
101 Use Cases for IoT
 
Internet-of-things- (IOT) - a-seminar - ppt - by- mohan-kumar-g
Internet-of-things- (IOT) - a-seminar - ppt - by- mohan-kumar-gInternet-of-things- (IOT) - a-seminar - ppt - by- mohan-kumar-g
Internet-of-things- (IOT) - a-seminar - ppt - by- mohan-kumar-g
 

Similar to Internet of Things and Large-scale Data Analytics

Semantic Technologies for the Internet of Things: Challenges and Opportunities
Semantic Technologies for the Internet of Things: Challenges and Opportunities Semantic Technologies for the Internet of Things: Challenges and Opportunities
Semantic Technologies for the Internet of Things: Challenges and Opportunities PayamBarnaghi
 
IoT : Research, Development, Challenges
IoT: Research, Development, ChallengesIoT: Research, Development, Challenges
IoT : Research, Development, Challengesbaddi youssef
 
IoT Challenges: Technological, Business and Social aspects
IoT Challenges: Technological, Business and Social aspectsIoT Challenges: Technological, Business and Social aspects
IoT Challenges: Technological, Business and Social aspectsRoberto Minerva
 
DWS15 - Smart City Forum - Boosting Digital Transformation - François Stephan...
DWS15 - Smart City Forum - Boosting Digital Transformation - François Stephan...DWS15 - Smart City Forum - Boosting Digital Transformation - François Stephan...
DWS15 - Smart City Forum - Boosting Digital Transformation - François Stephan...IDATE DigiWorld
 
GK NU CS 101 Session 1B (1).ppt
GK NU CS 101 Session 1B (1).pptGK NU CS 101 Session 1B (1).ppt
GK NU CS 101 Session 1B (1).pptPiyushRanjan269184
 
Io t research_arpanpal_iem
Io t research_arpanpal_iemIo t research_arpanpal_iem
Io t research_arpanpal_iemArpan Pal
 
VET4SBO Level 1 module 3 - unit 1 - v1.0 en
VET4SBO Level 1   module 3 - unit 1 - v1.0 enVET4SBO Level 1   module 3 - unit 1 - v1.0 en
VET4SBO Level 1 module 3 - unit 1 - v1.0 enKarel Van Isacker
 
Data Processing and Semantics for Advanced Internet of Things (IoT) Applicati...
Data Processing and Semantics for Advanced Internet of Things (IoT) Applicati...Data Processing and Semantics for Advanced Internet of Things (IoT) Applicati...
Data Processing and Semantics for Advanced Internet of Things (IoT) Applicati...Artificial Intelligence Institute at UofSC
 
Big Data & Smart City Applications
Big Data & Smart City ApplicationsBig Data & Smart City Applications
Big Data & Smart City ApplicationsAmit Sheth
 
Digital Entrepreneurs and the Internet of Things
Digital Entrepreneurs and the Internet of ThingsDigital Entrepreneurs and the Internet of Things
Digital Entrepreneurs and the Internet of ThingsKathryn Woolf
 
A Smart ITS based Sensor Network for Transport System with Integration of Io...
A Smart ITS based Sensor Network for Transport System with Integration of  Io...A Smart ITS based Sensor Network for Transport System with Integration of  Io...
A Smart ITS based Sensor Network for Transport System with Integration of Io...IRJET Journal
 
The Future of the Internet
The Future of the Internet The Future of the Internet
The Future of the Internet PayamBarnaghi
 
The-Internet-Of-Things-4th-Industrial-Revolution.pptx
The-Internet-Of-Things-4th-Industrial-Revolution.pptxThe-Internet-Of-Things-4th-Industrial-Revolution.pptx
The-Internet-Of-Things-4th-Industrial-Revolution.pptxHadHic
 
Application and Usefulness of Internet of Things in Information Technology
Application and Usefulness of Internet of Things in Information TechnologyApplication and Usefulness of Internet of Things in Information Technology
Application and Usefulness of Internet of Things in Information TechnologyDr. Amarjeet Singh
 
Internet of Things - The Tip of the Iceberg or The Tipping Point
Internet of Things - The Tip of the Iceberg or The Tipping PointInternet of Things - The Tip of the Iceberg or The Tipping Point
Internet of Things - The Tip of the Iceberg or The Tipping PointDr. Mazlan Abbas
 
87 seminar presentation
87 seminar presentation87 seminar presentation
87 seminar presentationVishakha Kumar
 
Cognitive IoT Whitepaper_Dec 2015
Cognitive IoT Whitepaper_Dec 2015Cognitive IoT Whitepaper_Dec 2015
Cognitive IoT Whitepaper_Dec 2015Nikhil Dikshit
 

Similar to Internet of Things and Large-scale Data Analytics (20)

IOTCYBER
IOTCYBERIOTCYBER
IOTCYBER
 
Semantic Technologies for the Internet of Things: Challenges and Opportunities
Semantic Technologies for the Internet of Things: Challenges and Opportunities Semantic Technologies for the Internet of Things: Challenges and Opportunities
Semantic Technologies for the Internet of Things: Challenges and Opportunities
 
IoT : Research, Development, Challenges
IoT: Research, Development, ChallengesIoT: Research, Development, Challenges
IoT : Research, Development, Challenges
 
smart automation system
smart automation systemsmart automation system
smart automation system
 
IoT Challenges: Technological, Business and Social aspects
IoT Challenges: Technological, Business and Social aspectsIoT Challenges: Technological, Business and Social aspects
IoT Challenges: Technological, Business and Social aspects
 
DWS15 - Smart City Forum - Boosting Digital Transformation - François Stephan...
DWS15 - Smart City Forum - Boosting Digital Transformation - François Stephan...DWS15 - Smart City Forum - Boosting Digital Transformation - François Stephan...
DWS15 - Smart City Forum - Boosting Digital Transformation - François Stephan...
 
GK NU CS 101 Session 1B (1).ppt
GK NU CS 101 Session 1B (1).pptGK NU CS 101 Session 1B (1).ppt
GK NU CS 101 Session 1B (1).ppt
 
Io t research_arpanpal_iem
Io t research_arpanpal_iemIo t research_arpanpal_iem
Io t research_arpanpal_iem
 
VET4SBO Level 1 module 3 - unit 1 - v1.0 en
VET4SBO Level 1   module 3 - unit 1 - v1.0 enVET4SBO Level 1   module 3 - unit 1 - v1.0 en
VET4SBO Level 1 module 3 - unit 1 - v1.0 en
 
Data Processing and Semantics for Advanced Internet of Things (IoT) Applicati...
Data Processing and Semantics for Advanced Internet of Things (IoT) Applicati...Data Processing and Semantics for Advanced Internet of Things (IoT) Applicati...
Data Processing and Semantics for Advanced Internet of Things (IoT) Applicati...
 
Big Data & Smart City Applications
Big Data & Smart City ApplicationsBig Data & Smart City Applications
Big Data & Smart City Applications
 
Digital Entrepreneurs and the Internet of Things
Digital Entrepreneurs and the Internet of ThingsDigital Entrepreneurs and the Internet of Things
Digital Entrepreneurs and the Internet of Things
 
A Smart ITS based Sensor Network for Transport System with Integration of Io...
A Smart ITS based Sensor Network for Transport System with Integration of  Io...A Smart ITS based Sensor Network for Transport System with Integration of  Io...
A Smart ITS based Sensor Network for Transport System with Integration of Io...
 
Presentation1
Presentation1Presentation1
Presentation1
 
The Future of the Internet
The Future of the Internet The Future of the Internet
The Future of the Internet
 
The-Internet-Of-Things-4th-Industrial-Revolution.pptx
The-Internet-Of-Things-4th-Industrial-Revolution.pptxThe-Internet-Of-Things-4th-Industrial-Revolution.pptx
The-Internet-Of-Things-4th-Industrial-Revolution.pptx
 
Application and Usefulness of Internet of Things in Information Technology
Application and Usefulness of Internet of Things in Information TechnologyApplication and Usefulness of Internet of Things in Information Technology
Application and Usefulness of Internet of Things in Information Technology
 
Internet of Things - The Tip of the Iceberg or The Tipping Point
Internet of Things - The Tip of the Iceberg or The Tipping PointInternet of Things - The Tip of the Iceberg or The Tipping Point
Internet of Things - The Tip of the Iceberg or The Tipping Point
 
87 seminar presentation
87 seminar presentation87 seminar presentation
87 seminar presentation
 
Cognitive IoT Whitepaper_Dec 2015
Cognitive IoT Whitepaper_Dec 2015Cognitive IoT Whitepaper_Dec 2015
Cognitive IoT Whitepaper_Dec 2015
 

More from PayamBarnaghi

Academic Research: A Survival Guide
Academic Research: A Survival GuideAcademic Research: A Survival Guide
Academic Research: A Survival GuidePayamBarnaghi
 
Reproducibility in machine learning
Reproducibility in machine learningReproducibility in machine learning
Reproducibility in machine learningPayamBarnaghi
 
Search, Discovery and Analysis of Sensory Data Streams
Search, Discovery and Analysis of Sensory Data StreamsSearch, Discovery and Analysis of Sensory Data Streams
Search, Discovery and Analysis of Sensory Data StreamsPayamBarnaghi
 
Internet Search: the past, present and the future
Internet Search: the past, present and the futureInternet Search: the past, present and the future
Internet Search: the past, present and the futurePayamBarnaghi
 
Scientific and Academic Research: A Survival Guide 
Scientific and Academic Research:  A Survival Guide Scientific and Academic Research:  A Survival Guide 
Scientific and Academic Research: A Survival Guide PayamBarnaghi
 
Lecture 8: IoT System Models and Applications
Lecture 8: IoT System Models and ApplicationsLecture 8: IoT System Models and Applications
Lecture 8: IoT System Models and ApplicationsPayamBarnaghi
 
Lecture 7: Semantic Technologies and Interoperability
Lecture 7: Semantic Technologies and InteroperabilityLecture 7: Semantic Technologies and Interoperability
Lecture 7: Semantic Technologies and InteroperabilityPayamBarnaghi
 
Lecture 6: IoT Data Processing
Lecture 6: IoT Data Processing Lecture 6: IoT Data Processing
Lecture 6: IoT Data Processing PayamBarnaghi
 
Lecture 5: Software platforms and services
Lecture 5: Software platforms and services Lecture 5: Software platforms and services
Lecture 5: Software platforms and services PayamBarnaghi
 
Scientific and Academic Research: A Survival Guide 
Scientific and Academic Research:  A Survival Guide Scientific and Academic Research:  A Survival Guide 
Scientific and Academic Research: A Survival Guide PayamBarnaghi
 
Semantic Technolgies for the Internet of Things
Semantic Technolgies for the Internet of ThingsSemantic Technolgies for the Internet of Things
Semantic Technolgies for the Internet of ThingsPayamBarnaghi
 
Spatial Data on the Web
Spatial Data on the WebSpatial Data on the Web
Spatial Data on the WebPayamBarnaghi
 
IoT-Lite: A Lightweight Semantic Model for the Internet of Things
IoT-Lite:  A Lightweight Semantic Model for the Internet of ThingsIoT-Lite:  A Lightweight Semantic Model for the Internet of Things
IoT-Lite: A Lightweight Semantic Model for the Internet of ThingsPayamBarnaghi
 
Internet of Things: Concepts and Technologies
Internet of Things: Concepts and TechnologiesInternet of Things: Concepts and Technologies
Internet of Things: Concepts and TechnologiesPayamBarnaghi
 

More from PayamBarnaghi (14)

Academic Research: A Survival Guide
Academic Research: A Survival GuideAcademic Research: A Survival Guide
Academic Research: A Survival Guide
 
Reproducibility in machine learning
Reproducibility in machine learningReproducibility in machine learning
Reproducibility in machine learning
 
Search, Discovery and Analysis of Sensory Data Streams
Search, Discovery and Analysis of Sensory Data StreamsSearch, Discovery and Analysis of Sensory Data Streams
Search, Discovery and Analysis of Sensory Data Streams
 
Internet Search: the past, present and the future
Internet Search: the past, present and the futureInternet Search: the past, present and the future
Internet Search: the past, present and the future
 
Scientific and Academic Research: A Survival Guide 
Scientific and Academic Research:  A Survival Guide Scientific and Academic Research:  A Survival Guide 
Scientific and Academic Research: A Survival Guide 
 
Lecture 8: IoT System Models and Applications
Lecture 8: IoT System Models and ApplicationsLecture 8: IoT System Models and Applications
Lecture 8: IoT System Models and Applications
 
Lecture 7: Semantic Technologies and Interoperability
Lecture 7: Semantic Technologies and InteroperabilityLecture 7: Semantic Technologies and Interoperability
Lecture 7: Semantic Technologies and Interoperability
 
Lecture 6: IoT Data Processing
Lecture 6: IoT Data Processing Lecture 6: IoT Data Processing
Lecture 6: IoT Data Processing
 
Lecture 5: Software platforms and services
Lecture 5: Software platforms and services Lecture 5: Software platforms and services
Lecture 5: Software platforms and services
 
Scientific and Academic Research: A Survival Guide 
Scientific and Academic Research:  A Survival Guide Scientific and Academic Research:  A Survival Guide 
Scientific and Academic Research: A Survival Guide 
 
Semantic Technolgies for the Internet of Things
Semantic Technolgies for the Internet of ThingsSemantic Technolgies for the Internet of Things
Semantic Technolgies for the Internet of Things
 
Spatial Data on the Web
Spatial Data on the WebSpatial Data on the Web
Spatial Data on the Web
 
IoT-Lite: A Lightweight Semantic Model for the Internet of Things
IoT-Lite:  A Lightweight Semantic Model for the Internet of ThingsIoT-Lite:  A Lightweight Semantic Model for the Internet of Things
IoT-Lite: A Lightweight Semantic Model for the Internet of Things
 
Internet of Things: Concepts and Technologies
Internet of Things: Concepts and TechnologiesInternet of Things: Concepts and Technologies
Internet of Things: Concepts and Technologies
 

Recently uploaded

USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...Postal Advocate Inc.
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management SystemChristalin Nelson
 
Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4JOYLYNSAMANIEGO
 
ROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptxROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptxVanesaIglesias10
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfPatidar M
 
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATIONTHEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATIONHumphrey A Beña
 
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxMULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxAnupkumar Sharma
 
Karra SKD Conference Presentation Revised.pptx
Karra SKD Conference Presentation Revised.pptxKarra SKD Conference Presentation Revised.pptx
Karra SKD Conference Presentation Revised.pptxAshokKarra1
 
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxBarangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxCarlos105
 
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptxMusic 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptxleah joy valeriano
 
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...Nguyen Thanh Tu Collection
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptxmary850239
 
Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)cama23
 
4.16.24 Poverty and Precarity--Desmond.pptx
4.16.24 Poverty and Precarity--Desmond.pptx4.16.24 Poverty and Precarity--Desmond.pptx
4.16.24 Poverty and Precarity--Desmond.pptxmary850239
 
Integumentary System SMP B. Pharm Sem I.ppt
Integumentary System SMP B. Pharm Sem I.pptIntegumentary System SMP B. Pharm Sem I.ppt
Integumentary System SMP B. Pharm Sem I.pptshraddhaparab530
 
What is Model Inheritance in Odoo 17 ERP
What is Model Inheritance in Odoo 17 ERPWhat is Model Inheritance in Odoo 17 ERP
What is Model Inheritance in Odoo 17 ERPCeline George
 
ENG 5 Q4 WEEk 1 DAY 1 Restate sentences heard in one’s own words. Use appropr...
ENG 5 Q4 WEEk 1 DAY 1 Restate sentences heard in one’s own words. Use appropr...ENG 5 Q4 WEEk 1 DAY 1 Restate sentences heard in one’s own words. Use appropr...
ENG 5 Q4 WEEk 1 DAY 1 Restate sentences heard in one’s own words. Use appropr...JojoEDelaCruz
 
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxiammrhaywood
 

Recently uploaded (20)

USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management System
 
Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4
 
ROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptxROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptx
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdf
 
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATIONTHEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
 
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxMULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
 
Raw materials used in Herbal Cosmetics.pptx
Raw materials used in Herbal Cosmetics.pptxRaw materials used in Herbal Cosmetics.pptx
Raw materials used in Herbal Cosmetics.pptx
 
Karra SKD Conference Presentation Revised.pptx
Karra SKD Conference Presentation Revised.pptxKarra SKD Conference Presentation Revised.pptx
Karra SKD Conference Presentation Revised.pptx
 
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxBarangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
 
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptxMusic 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
 
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx
 
Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)
 
4.16.24 Poverty and Precarity--Desmond.pptx
4.16.24 Poverty and Precarity--Desmond.pptx4.16.24 Poverty and Precarity--Desmond.pptx
4.16.24 Poverty and Precarity--Desmond.pptx
 
Integumentary System SMP B. Pharm Sem I.ppt
Integumentary System SMP B. Pharm Sem I.pptIntegumentary System SMP B. Pharm Sem I.ppt
Integumentary System SMP B. Pharm Sem I.ppt
 
What is Model Inheritance in Odoo 17 ERP
What is Model Inheritance in Odoo 17 ERPWhat is Model Inheritance in Odoo 17 ERP
What is Model Inheritance in Odoo 17 ERP
 
ENG 5 Q4 WEEk 1 DAY 1 Restate sentences heard in one’s own words. Use appropr...
ENG 5 Q4 WEEk 1 DAY 1 Restate sentences heard in one’s own words. Use appropr...ENG 5 Q4 WEEk 1 DAY 1 Restate sentences heard in one’s own words. Use appropr...
ENG 5 Q4 WEEk 1 DAY 1 Restate sentences heard in one’s own words. Use appropr...
 
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
 
FINALS_OF_LEFT_ON_C'N_EL_DORADO_2024.pptx
FINALS_OF_LEFT_ON_C'N_EL_DORADO_2024.pptxFINALS_OF_LEFT_ON_C'N_EL_DORADO_2024.pptx
FINALS_OF_LEFT_ON_C'N_EL_DORADO_2024.pptx
 

Internet of Things and Large-scale Data Analytics

  • 1. Internet of Things and Large-scale Data Analytics 1 Payam Barnaghi Institute for Communication Systems (ICS)/ 5G Innovation Centre University of Surrey Guildford, United Kingdom The IET Surrey Network, September 2015
  • 2. 2 IBM Mainframe 360, source Wikipedia
  • 3. Apollo 11 Command Module (1965) had 64 kilobytes of memory operated at 0.043MHz. An iPhone 5s has a CPU running at speeds of up to 1.3GHz and has 512MB to 1GB of memory Cray-1 (1975) produced 80 million Floating point operations per second (FLOPS) 10 years later, Cray-2 produced 1.9G FLOPS An iPhone 5s produces 76.8 GFLOPS – nearly a thousand times more Cray-2 used 200-kilowatt power Source: Nick T., PhoneArena.com, 2014
  • 4. Computing Power 4 −Smaller size −More Powerful −More memory and more storage −"Moore's law" over the history of computing, the number of transistors in a dense integrated circuit has doubled approximately every two years.
  • 5. 5 Sensor devices are becoming widely available - Programmable devices - Off-the-shelf gadgets/tools
  • 6. 6 More “Things” are being connected Home/daily-life devices Business and Public infrastructure Health-care …
  • 7. 7 People Connecting to Things Motion sensor Motion sensor Motion sensor ECG sensor Internet
  • 8. 8 Things Connecting to Things - Complex and heterogeneous resources and networks
  • 9. Example: Radiation Sensor Board (Libelium) Source: Wireless Sensor Networks to Control Radiation Levels, David Gascón, Marcos Yarza, Libelium, April 2011. Waspmote
  • 11. 11 Internet of Things (IoT) − Extending the current Internet and providing connection, communication, and inter-networking between devices and physical objects, or "Things," is a growing trend that is often referred to as the Internet ofThings. − “The technologies and solutions that enable integration of real world data and services into the current information networking technologies are often described under the umbrella term of the Internet of Things (IoT)”
  • 13. 1G AMPS, NMT, TACS 2G GSM. GPRS, TDMA IS-136, CDMA IS-95, PDC 3G UMTS, CDMA2000, 4G 5G LTE, LTE-A People Things Voice Text Data 5G technologies and standards Connection + Control M2M/IoT Change in the communication technologies
  • 14. Mobile Services and Applications 14 Image courtesy: Economist
  • 15. 15 Things, Devices, Data, and lots of it image courtesy: Smarter Data - I.03_C by Gwen Vanhee
  • 16. Cyber-Physical-Social Data 16P. Barnaghi et al., "Digital Technology Adoption in the Smart Built Environment", IET Sector Technical Briefing, The Institution of Engineering and Technology (IET), I. Borthwick (editor), March 2015.
  • 17. Internet of Things: The story so far RFID based solutions Wireless Sensor and Actuator networks , solutions for communication technologies, energy efficiency, routing, … Smart Devices/ Web-enabled Apps/Services, initial products, vertical applications, early concepts and demos, … Motion sensor Motion sensor ECG sensor Physical-Cyber-Social Systems, Linked-data, semantics, More products, more heterogeneity, solutions for control and monitoring, … Future: Cloud, Big (IoT) Data Analytics, Interoperability, Enhanced Cellular/Wireless Com. for IoT, Real-world operational use-cases and Industry and B2B services/applications, more Standards… P. Barnaghi, A. Sheth, "Internet of Things: the story so far", IEEE IoT Newsletter, September 2014. 17
  • 18. 18 “Each single data item is important.” “Relying merely on data from sources that are unevenly distributed, without considering background information or social context, can lead to imbalanced interpretations and decisions.” ?
  • 19. Data- Challenges − Multi-modal and heterogeneous − Noisy and incomplete − Time and location dependent − Dynamic and varies in quality − Crowed sourced data can be unreliable − Requires (near-) real-time analysis − Privacy and security are important issues − Data can be biased- we need to know our data! 19
  • 20. Data Lifecycle 20 Source: The IET Technical Report, Digital Technology Adoption in the Smart Built Environment: Challenges and opportunities of data driven systems for building, community and city-scale applications, http://www.theiet.org/sectors/built-environment/resources/digital-technology.cfm
  • 21. 21 “The ultimate goal is transforming the raw data to insights and actionable knowledge and/or creating effective representation forms for machines and also human users and creating automation.” This usually requires data from multiple sources, (near-) real time analytics and visualisation and/or semantic representations.
  • 22. 22 “Data will come from various source and from different platforms and various systems.” This requires an ecosystem of IoT systems with several backend support components (e.g. pub/sub, storage, discovery, and access services). Semantic interoperability is also a key requirement.
  • 23. Device/Data interoperability 23 The slide adapted from the IoT talk given by Jan Holler of Ericsson at IoT Week 2015 in Lisbon.
  • 24. Search on the Internet/Web in the early days 2424
  • 25. Accessing IoT data 25 “ The internet/web norm (for now) is often to use an interface to search for the data; the search engines are usually information locators – return the link to the information; IoT data access is more opportunistic and context aware”. The IoT requires context-aware and opportunistic push mechanism, dynamic device/resource associations and (software-defined) data routing networks.
  • 26. IoT environments are usually dynamic and (near-) real- time 26 Off-line Data analytics Data analytics in dynamic environments Image sources: ABC Australia and 2dolphins.com
  • 27. What type of problems we expect to solve using the IoT and data analytics solutions?
  • 28. 28Source LAT Times, http://documents.latimes.com/la-2013/ A smart City example Future cities: A view from 1998
  • 30. Common problems 30 Source: thestar.com.my & skyscrappercity.com Guildford, Surrey
  • 31. Applications and potentials − Analysis of thousands of traffic, pollution, weather, congestion, public transport, waste and event sensory data to provide better transport and city management. − Converting smart meter readings to information that can help prediction and balance of power consumption in a city. − Monitoring elderly homes, personal and public healthcare applications. − Event and incident analysis and prediction using (near) real- time data collected by citizen and device sensors. − Turning social media data (e.g.Tweets) related to city issues into event and sentiment analysis. − Any many more… 31
  • 32. 32
  • 33. EU FP7 CityPulse Project 33
  • 34. 34 CityPulse Consortium Industrial SIE (Austria, Romania), ERIC SME AI, Higher Education UNIS, NUIG, UASO, WSU City BR, AA Partners: Duration: 36 months (2014-2017)
  • 35. 35
  • 36. Designing for real world problems
  • 37. 101 Smart City scenarios 37http://www.ict-citypulse.eu/scenarios/ Dr Mirko Presser Alexandra Institute Denmark
  • 41. Data abstraction 41 F. Ganz, P. Barnaghi, F. Carrez, "Information Abstraction for Heterogeneous Real World Internet Data", IEEE Sensors Journal, 2013.
  • 42. Adaptable and dynamic learning methods http://kat.ee.surrey.ac.uk/
  • 45. City event extraction from social streams 45 Tweets from a city POS Tagging Hybrid NER+ Event term extraction GeohashingGeohashing Temporal Estimation Temporal Estimation Impact Assessment Impact Assessment Event Aggregation Event AggregationOSM LocationsOSM Locations SCRIBE ontologySCRIBE ontology 511.org hierarchy511.org hierarchy City Event ExtractionCity Event Annotation P. Anantharam, P. Barnaghi, K. Thirunarayan, A.P. Sheth, "Extracting City Traffic Events from Social Streams", ACM Trans. on Intelligent Systems and Technology, 2015. Collaboration with Kno.e.sis, Wright State University
  • 46. Geohashing 46 0.6 miles Max-lat Min-lat Min-long Max-long 0.38 miles 37.7545166015625, -122.40966796875 37.7490234375, -122.40966796875 37.7545166015625, -122.420654296875 37.7490234375, -122.420654296875 4 37.74933, -122.4106711 Hierarchical spatial structure of geohash for representing locations with variable precision. Here the location string is 5H34 0 1 2 3 4 5 6 7 8 9 B C D E F G H I J K L 0 1 7 2 3 4 5 6 8 9 0 1 2 3 4 5 6 7 0 1 2 3 4 5 6 7 8
  • 47. Social media analysis 47 City Infrastructure Tweets from a city P. Anantharam, P. Barnaghi, K. Thirunarayan, A. Sheth, "Extracting city events from social streams,“, ACM Transactions on TICS, 2014.
  • 48. Social media analysis (deep learning – under construction) 48 http://iot.ee.surrey.ac.uk/citypulse-social/
  • 49. Accumulated and connected knowledge? 49 Image courtesy: IEEE Spectrum
  • 50. Users in control or losing control? 50 Image source: Julian Walker, Flicker
  • 51. Data Analytics solutions for IoT data − Great opportunities and many applications; − Enhanced and (near-) real-time insights; − Supporting more automated decision making and in-depth analysis of events and occurrences by combining various sources of data; − Providing more and better information to citizens; − … 51
  • 52. However… − We need to know our data and its context (density, quality, reliability, …) − Open Data (there needs to be more real-time data) − Complementary data − Citizens in control − Transparency and data management issues (privacy, security, trust, …) − Reliability and dependability of the systems 52
  • 53. In conclusion − IoT data analytics is different from common big data analytics. − Data collection in the IoT comes at the cost of bandwidth, network, energy and other resources. − Data collection, delivery and processing is also depended on multiple layers of the network. − We need more resource-aware data analytics methods and cross-layer optimisations. − The solutions should work across different systems and multiple platforms (Ecosystem of systems). − Data sources are more than physical (sensory) observation. − The IoT requires integration and processing of physical-cyber-social data. − The extracted insights and information should be converted to a feedback and/or actionable information. 53
  • 54. IET sector briefing report 54 Available at: http://www.theiet.org/sectors/built-environment/resources/digital-technology.cfm
  • 56. Other challenges and topics that I didn't talk about Security Privacy Trust, resilience and reliability Noise and incomplete data Cloud and distributed computing Networks, test-beds and mobility Mobile computing Applications and use-case scenarios 56