Download What is the Internet of Things? - Corrections Technology Association

Survey
yes no Was this document useful for you?
   Thank you for your participation!

* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project

Document related concepts

Geographic information system wikipedia , lookup

Neuroinformatics wikipedia , lookup

Pattern recognition wikipedia , lookup

Theoretical computer science wikipedia , lookup

Data analysis wikipedia , lookup

Data assimilation wikipedia , lookup

Corecursion wikipedia , lookup

Transcript
Iveta Topalova, Microsoft/IJIS Institute
John Daugherty, CIO Montana DOC
• Introduction
• What is the Internet of Things
• A Practitioner's Perspective
A new ecology of data assets is emerging that provides the means for secure
and trustworthy communications and for entirely new solution-sets related to the
digital identity of people, devices and institutions.
World Economic Forum
DEVICES THAT
COLLECT AND
TRANSMIT DATA
VIA THE INTERNET
Source: Forbes
“”
Source: Forbes
Moore’s Law
Metcalfe‘s Law
Koomey’s Law
Computations
per KWh
Transistors
10,000,000,000
1.E+14
1,000,000,000
1.E+12
100,000,000
1.E+10
10,000,000
1.E+08
1,000,000
1.E+06
100,000
1.E+04
10,000
1.E+02
1,000
1970
1980
1990
2000
2010
1.E+00
1940
1975
And more importantly:
what can you do by combining and analyzing signals from all of these IoT devices?
2010
Things
Connectivity
Data
Analytics
Connect disparate assets to increase situational
awareness and improve response
Things
Monitor and track the health of these assets to assure
reliability and reduce costs
Collect and secure large amounts of data from your
assets in the cloud for analysis
Analyze data from multiple sources in near real time to
increase correctional staff safety and aide in decisionmaking
Things
Create insights for the right people at the right time to
access and act on
Create operational intelligence to improve efficiency
and decision making
Convert the raw data from your “things” into actionable
insights and results.
Things
Apply historical data to new problems to successfully
predict future behavior and trends
Leverage machine learning to understand trends and
influence policy
Data
Corrections
Staff Need
Offenders on
Parole
(ankle bracelets, bands)
Cameras,
Video, Audio
surveillance
*OZY: Could a Sensor Solve Our Prison Suicide Problem
Cell Phone
Detectors
Special
Population
Management
Correctional Video and
Audio Data Collected
per day*
Medical/
Biometric Device
Data per day *
Search and
Query per day*
*Theoretical Data.
GPS Monitoring
Data per day*
150 K
SCALABILITY
LEVERAGE CLOUD SERVICES
CONNECTION
STANDARDS DEVELOPMENT
SECURITY
PROVEN METHODOLOGY
Cost
Computational Capabilities
$1
Sensor
Memory/Storage Capacity
Energy Consumption/Source
Component Quality
IoT Sweet Spot
$400 Phones
$1000 PCs
• IoT capabilities are primarily value-add to other primary capabilities
• Legacy devices are used or when new devices are added budget is an important
consideration
• Tiny devices make awfully vulnerable network servers
$10000
Server
Start by
connecting the
already existing
devices
Utilize services
and the cloud
as a jump-start
Combine the
data which is
already
collected
Generate new
insights to
create new
business value
Expand by adding new devices, new services, new data
The Internet of Corrections Things
Practitioner’s Perspective
Enabling IoT for Corrections: As-Is Environment
Sensor ‘Things’ - vendor proprietary device
Proprietary Format 1
Proprietary Format 2
Proprietary Format 3
Corrections Operations Center
Proprietary Format 4
Proprietary Format 5
Booking Management
Correction/Parole
Officer
23
Enabling IoT for Corrections: To-Be Environment
Sensor ‘Things’ - proprietary device / format
Correctional Operations Center
Sensor Catalog
S
e
n
s
o
r
T
h
i
n
g
Open Std
Data Driven
Corrections Management
Next Generation
Corrections/Parole
24
Mutual aid
agreements are
in place for
information
sharing and
support
“Things” are
accessible in
the personal
area network
zone
Copyright © 2015
Credit and thanks for this presentation:
– CTA
– Forbes
– IBM
– IJIS
– Microsoft
– OGC
– OZY
Iveta Topalova, [email protected], Microsoft
John Daugherty, [email protected], Montana DOC