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Models and Programmability Breakout III

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Models and Programmability (Breakout III) Amr, Stan, Amol, Christos, Ugur, Cyrus ... Given a trajectory at the query, move/actuate sensors at the right locations ... – PowerPoint PPT presentation

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Title: Models and Programmability Breakout III


1
Models and Programmability (Breakout III)
  • Amr, Stan, Amol, Christos, Ugur, Cyrus

2
Vision What we want to see in 10 years? Sixth
Sense
  • Preventive actions
  • Healthcare disease outbreak
  • Crisis traffic accidents, airplane crash
  • Predictive actions
  • National security predicts terrorists next
    action
  • Efficiency
  • Green houses, hybrid vehicles (lots of sensors)
  • Real-time searching (sensor Google)
  • Fusion of web, sensor data,

3
Motivating Application
  • Moving sensors, soldiers with sensors
  • Two types of queries/applications
  • Monitoring environment and phenomena (e.g.,
    average temp of an area)
  • Moving object queries (e.g., when the number of
    soldiers reaches n in a given area)

4
Assumed Architecture
Queries
Logical layer
Modeling
Feature layer
Feature extraction
Raw data layer
Data acquisition
Moving sensors
5
Challenge 1 A Generic way of Incorporating
Models
  • Use of model
  • Missing values
  • Optimization
  • Fault tolerance (exploiting redundancy in models)
  • Prediction
  • Compression (data reduction)
  • Different types of models
  • Statistical Models
  • Geospatial Models
  • Constraints
  • Model source
  • Supplied by domain expert
  • Learned

6
Challenge 1
  • Designing Models, using techniques from
  • Data mining
  • Time series analysis
  • Computational geometry
  • Spatiotemporal databases
  • ..

7
Architecture
Queries
Logical layer
Modeling
Feature layer
Feature extraction
Raw data layer
Data acquisition
Moving sensors
8
Challenge 2 Incorporating more info into queries
  • Resolution
  • Confidence
  • Pattern
  • Models
  • Uncertainty
  • Triggers
  • Linguistic constructs that retain the
    declarative-ness
  • How each of the above can be defined
  • Implementation issues

9
Architecture
Queries
Logical layer
Modeling
Feature layer
Feature extraction
Raw data layer
Data acquisition
Moving sensors
10
Challenge 3 Cross-layer optimization
  • Examples
  • Models can dictate data acquisition rate
    (adaptive sampling rate)
  • Queries can dictate data acquisition rate
    (adaptive sampling rate)
  • Given patterns in the query, what models
    algorithms are the best to use
  • Given a trajectory at the query, move/actuate
    sensors at the right locations
  • Which set(s) of sensors, historical data, models
    to use for a given query

11
Architecture
Queries
Logical layer
Modeling
Feature layer
Feature extraction
Raw data layer
Data acquisition
Moving sensors
12
Challenge 4 How to incorporate Uncertainty at
different layers
  • Missing values
  • Faulty sensors
  • Conflicting sensed values

13
Visionary Outlook Privacy
  • Exploiting space, time and latency to
    identify the level of privacy and data protection
  • Trade-off between the required response time and
    level of security
  • Secure enough given space and time
  • At which layer(s) to incorporate the privacy
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