• Share
  • Email
  • Embed
  • Like
  • Save
  • Private Content
 

Reusable service component decision tree

on

  • 666 views

Wei Wang, Reusable service component decision tree

Wei Wang, Reusable service component decision tree

Statistics

Views

Total Views
666
Views on SlideShare
666
Embed Views
0

Actions

Likes
0
Downloads
1
Comments
0

0 Embeds 0

No embeds

Accessibility

Categories

Upload Details

Uploaded via as Microsoft PowerPoint

Usage Rights

© All Rights Reserved

Report content

Flagged as inappropriate Flag as inappropriate
Flag as inappropriate

Select your reason for flagging this presentation as inappropriate.

Cancel
  • Full Name Full Name Comment goes here.
    Are you sure you want to
    Your message goes here
    Processing…
Post Comment
Edit your comment

    Reusable service component decision tree Reusable service component decision tree Presentation Transcript

    • A Reusable Service Component forIoT.est A3.2- case study: using decision treeto derive road conditions
    • Reusable service component• The IoT.est project A3.2 aims to develop andimplement the concepts of reusable servicecomponent;• These components can be reusedin/integrated with many existing businessservices and applications.• Among the components, the ones that cancreate intelligence out of the IoT data areimportant.2
    • A reasoning service3• Reasoning Service using decision tree– Functionality• Take various sensor readings and predict the roadconditions based on a trained decision tree model• Applications: GPS planning, highway trafficmanagement, etc– Adaptation capability• The decision tree model will frequently update itself asnew data is available for training so it can adapt to therecent environmental changes.
    • Deriving road conditions usingdecision tree4
    • Deriving road conditions usingdecision tree5
    • Deriving road conditions usingdecision tree6
    • Try the service• Service link:– http://artemis.ccsrfi.net:8080/DecisionTreeService/ReasoningService?temp=-1&rainfall=20.0&visibility=10.0&traffic=100.0• Acknowledgement: Yue Zhang and Suparna De7