salvatore distefano politecnico di milano – italy [email protected] mobile...
TRANSCRIPT
![Page 1: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/1.jpg)
Salvatore Distefano Politecnico di Milano – [email protected]
Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future Internet Cloud-based Architectures and Services
FIA - Athens - March 18, 2014
Mobile Crowdsensing Application
![Page 2: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/2.jpg)
Agenda
• Introduction• Crowd-based approaches• Crowd Sensing• Mobile Crowd Sensing • MCSaaS• MCS Application
2
![Page 3: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/3.jpg)
Introduction
• 20-30 billions of devices by 2020• IoT: enhanced communication techniques• New challenges• High level solutions for managing things• New-value added applications directly involving
3
![Page 4: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/4.jpg)
• Leveraging on crowd• Data, services, ideas, contents, skills, money, … coming from
crowds• Crowdsourcing = Crowd + outsourcing• “the practice of obtaining something by contributions from a
large group of people and especially from the online community rather than from traditional employees or suppliers”
• Crowdfunding, crowdsearching, crowdsensing, open source development
• Volunteer contribution: free vs by charge
4
Crowd-based approaches
![Page 5: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/5.jpg)
• Crowdsourcing on data• Two possible ways• Direct, participatory contribution on a volunteer basis• Data are provided by sensors/sensing resources from contributors• Active, a priori, both proactive and reactive, runtime• Traffic monitoring, pothole mapping, emergency/disaster prediction, management and
recovery, VGI, …
• Indirect • DB, Web, Social Networks, Crowdsourcing/searching, data mining, feature
extraction, filtering, processing, …• Passive, a posteriori, reactive, offline• Investigation of the effect/impact of a given phenomenon on a given area, geocomputing …
6
Crowdsensing
![Page 6: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/6.jpg)
Mobile Crowdsensing• The integration of sensors
that can be used for gathering materialistic or non-materialistic information
• Involve people that both participate and use the MCS
• Geo-tagged info
7
User at Front End
Web Service at Back End
![Page 7: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/7.jpg)
The MCS Paradigm
8
Participatory Sensing
Opportunistic Sensing
Users actively engage in the data collection activity.
Users manually determine how, when, what, where to sample.
Higher burdens or costs.
Can avoid phone context issues.
Takes random sample which is application defined.
Easy to gather large amount data in small time.
Can’t avoid phone context issues.
Lower burdens or costs if contextual problems are
handled.
Filtering Data by Handling Privacy Issues & Localization.
Dataset is ready for research !!!
![Page 8: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/8.jpg)
MCS Stack
9
![Page 9: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/9.jpg)
Mobile Crowdsensing ApplicationsMonitoring common phenomenon…
•Pollution (air/noise) levels in a neighborhood.•Real-time traffic patterns.•Pot holes on roads.•Road closures and transit timings.•……
10
![Page 10: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/10.jpg)
Mobile Crowdsensing: current issues
volunteer enrolment:
• requires out-of-band campaign (social network) to get attention
• involves user-initiated activity (website download) to begin contributing
• slow and unpredictable uptake
app/service availability/reliability:
• degradation with node churn
• real-time info may translate into severe burden on resources (battery)
• privacy
• customisability
11
![Page 11: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/11.jpg)
MCS Challenges
12
Localized Analytics
Resource Limitations
Privacy
Aggregate Analytics
Architecture
![Page 12: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/12.jpg)
MCS as a service - MCSAAS
14
![Page 13: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/13.jpg)
MCSaaS: a Cloud platform for deploying MCS apps on SAaaS infrastructure
readily available infrastructure:
• a platform provider only needs booking resources for MCS, sending client-side platform code
• SAaaS will take care of (one-time) client deployment
automatic deployment:
• fire-and-forget experience for the app provider - just send a request to MCSaaS provider for resources, attaching the payload
• (SAaaS-unaware) dissemination carried out by the platform
16
![Page 14: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/14.jpg)
MCSaaS: a Cloud platform for managing MCS apps on SAaaS infrastructurechurn management(s), each at its own layer:
• transparent
• built-in, as part of the framework(s) management
real-time info:
• built-in, platform-level sharing of monitoring data
• low device-side load from infrastructure-level stats collection
• optional on-demand feature, may be disabled at will
• lower strain on constrained resources
17
![Page 15: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/15.jpg)
Mobile Crowdsensing application: PotHole Detector
20
![Page 16: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/16.jpg)
Mobile Crowdsensing application: PotHole Detector
21
![Page 17: Salvatore Distefano Politecnico di Milano – Italy salvatore.distefano@polimi.it Mobile Crowdsensing, Social and Big Data as Innovation Enablers for Future](https://reader030.vdocuments.mx/reader030/viewer/2022032600/56649db55503460f94aa729b/html5/thumbnails/17.jpg)
Q&A
THANKS!
22