Download presentation
Presentation is loading. Please wait.
Published byBlaise Atchley Modified over 10 years ago
1
TECHNOLOGIES & CONCEPTS IN BIG DATA QUANTIFIED SELF, INTERNET OF THINGS, TELEMATICS, AND VIDEO SEARCH Amer Aljarallah IDS 594 Selected Topics in Big Data
2
Retailer Web Channel DWMS CRM SCM/Logistics Suppliers Distribution Infomediaries Geo-location Social Media Traditional Sources of Data Social Analytics Telematics Cloud Computing Text Analytics In-Memory Analytics Social Media Monitors Speech Recognition Predictive Analytics Internet of ThingsLogical Data Warehouse Video Search Graph Databases Quantified Self
3
The Internet of Things Telematics Video Search Quantified Self
5
The General Theme What is it? Current supporting Technologies Applications and Examples How is it related to Big Data? Future/Potentiality
6
QUANTIFIED SELF
7
Quantified Self Quantified Self is a movement promoting the use of self- monitoring through a wide variety of sensors and devices. WearableMobile AppsPortable Devices
8
QS Applications Focused Categories Sports Body movements Scales Activity monitors/trackers Health Vital measurements Baby monitors Broad Categories Physical activities Diet Psychological states and traits Mental and cognitive states and traits Environmental Situational Social
9
Technology Examples
10
QS in Big Data Opportunities Data Collection Health data streams Data Integration Individual & Environmental data Data Analysis Health warning signals Challenges Practical Manual Easiness Cost Mindset Cultural Psychological Sociological
11
Future of QS Horizon: 2~5 years to maturity Penetration: <1% Smart Watches Google, Apple, and Samsung Wearable Clothing Sensors Monitors Others Carpet Toilet Etc.
12
INTERNET OF THINGS
13
Internet of Things [The] network of physical objects that contain embedded technology to communicate and sense or interact with their internal states or the external environment. Anything that can communicate! Ideas and information are important, but things matter much more… Kevin Ashton, 2009
14
Applications (View 1)
15
Applications (View 2)
16
Applications (View 3)
17
Technologies in IoT Radio-frequency identification (RFID) Wireless sensor network (WSN) RFID sensor networks (RSN) Near field communication (NFC) Middleware layers Intermediary between objects and applications Data management Service management Management of security and access
18
IoT in Big Data Opportunities Personal Domotics – home automation Assisted living E-Health Business Automation Logistics Business/process management Intelligent transportation Challenges Standardization Naming Security Authentication Privacy Value Value creation Cost
19
Future of IoT Horizon: 10 years to maturity Penetration: 1~5% Environment Management Monitoring, optimization, performance assessment Remote Operation/Support Enhance Life Quality
20
TELEMATICS
21
Telematics [The] combination of the transmission of information over a telecommunication network and the [computerized] processing of this information. [The] use of in-car installed and after-factory devices to transmit data in real time back to an organization, including vehicle use, maintenance requirements, air bag deployment or automotive servicing. Platform for usage-based insurance (UBI) pay-per-use pay as you drive (PAYD) pay how you drive (PHYD)
22
Example
23
Technologies in Telematics Wireless communication Trunked radio Cellular communication (GSM, UMTS) Satellite communication Dedicated Short Range Communication (DSRC, V2V, V2I) Broadcasting Positioning systems (GPS) Dead reckoning (position, direction, speed, time, and distance) Satellite positioning Cellular communication based positioning Signpost systems Geographical Information Systems (GIS)
24
Waze Application
25
Applications
26
Telematics in Big Data Opportunities Customer preferences Usage behavior Value-added services Segmentation of customers based on usage/behavior Usage-based insurance Pay-per-use, PAYD, PHYD Challenges Data collection Cost/Value Privacy and Safety
27
Future of Telematics Horizon: 5~10 years to maturity Penetration: 5~20% Accurate risk assessment Recovery of stolen vehicles Faster claims submittals Improved roadside assistance Reduce driver risks Telematics can reduce accidents by 30%
28
VIDEO SEARCH
29
Video Search [The] ability to search within a collection of videos. Audio Speech recognition Speech-to-text/Transcription Video Facial/Object recognition
30
Current Applications Semantic Video Search Search for Concepts Search for objects: cars, Classification Content Management Rich Media Searchability
31
Video Search in Big Data Opportunities Plain Search YouTube, etc. Transportation Surveillance monitors Surgery analysis Content Management (Copyright, Violence, Sexual, …) Challenges Technology Feature extraction Non-audio video
32
Future of Video Search Horizon: 5~10 years to maturity Penetration: <1% Enterprise Applications Higher education Law enforcement Business products manufacturers Service organizations Content Management
33
GOOGLE TRENDS
34
Google Trends
37
References 1. Ashton, K. (2009). That Internet of Things Thing. RFiD Journal, 22, 97-114. 2. Atzori, L., Iera, A., & Morabito, G. (2010). The internet of things: A survey.Computer Networks, 54(15), 2787-2805. 3. Chui, M., Löffler, M., & Roberts, R. (2010). The internet of things. McKinsey Quarterly, 2, 1-9. 4. Goel, A. (2008). Fleet telematics [electronic resource]: real-time management and planning of commercial vehicle operations (Vol. 40). Springer. 5. Gubbi, J., Buyya, R., Marusic, S., & Palaniswami, M. (2013). Internet of Things (IoT): A vision, architectural elements, and future directions. Future Generation Computer Systems. 6. Heudecker, N. (2013). Hype Cycle for Big Data 2013. Gartner Inc., Stamford, CT. 7. Hossain, E., Chow, G., Leung, V., McLeod, R. D., Mišić, J., Wong, V. W., & Yang, O. (2010). Vehicular telematics over heterogeneous wireless networks: A survey. Computer Communications, 33(7), 775-793. 8. Snoek, C., Sande, K., Rooij, O. D., Huurnink, B., Uijlings, J., Liempt, V. M.,... & Smeulders, A. (2009). The MediaMill TRECVID 2009 semantic video search engine. In TRECVID workshop. 9. Swan, M. (2013). The Quantified Self: Fundamental Disruption in Big Data Science and Biological Discovery. Big Data, 1(2), 85-99. 10. Tolve, A. (2013) Telematics and the Value of Big Data, Part I. Telematics Update. Web. 26 Nov. 2013. 11. Tolve, A. (2013) Telematics and the Value of Big Data, Part II. Telematics Update. Web. 26 Nov. 2013.
38
THANK YOU! Q&A
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.