LIFT (255951)

  https://cordis.europa.eu/project/id/255951

  FP7 (2007-2013)

  Using Local Inference in Massively Distributed Systems

  FET-Open: Challenging current thinking (ICT-2009.8.0)

  data science  ·  smart sensors

  2010-10-01 Start Date (YY-MM-DD)

  2013-09-30 End Date (YY-MM-DD)

  € 2,495,742 Total Cost


  Description

As the scale of today¿s networked techno-social systems continues to increase, the analysis of their global phenomena becomes increasingly difficult, due to the continuous production of streams of data scattered among distributed, possibly resource-constrained nodes, and requiring reliable resolution in (near) real-time.We will explore a novel approach for realising sophisticated, large-scale distributed data-stream analysis systems, relying on processing local data in situ. Our key insight is that, for a wide range of distributed data analysis tasks, we can employ novel geometric techniques for intelligently decomposing the monitoring of complex holistic conditions and functions into safe, local constraints that can be tracked independently at each node (without communication), while guaranteeing correctness for the global-monitoring operation. While some solutions exist for the limited case of linear functions of the data, it is hard to deal with general, non-linear functions: in this case, a node¿s local function value essentially tells us absolutely nothing about the global function value. Our fundamental idea is to design novel algorithmic tools that monitor the input domain of the global function rather than its range. Each node can then be assigned a safe zone (SZ) for its local values that can offer guarantees for the value of the global function over the entire collection of nodes. This represents a dramatic shift in conventional thinking and the state-of-the-art. We aim to reduce the amount of communication and data collection across nodes to a minimum, requiring nodes to communicate only when their local constraints are violated. Privacy protection, in the case when transmitted data contain sensitive information, is also revolutionized in our view. We investigate real-life scenarios from network health monitoring, large-scale analysis of human mobility and traffic phenomena, internet-scale distributed querying, and monitoring sensor networks.


  Complicit Organisations

2 Israeli organisations participate in LIFT.

Country Organisation (ID) VAT Number Role Activity Type Total Cost EC Contribution Net EC Contribution
Israel UNIVERSITY OF HAIFA (999897826) nan participant HES € 0 € 328,440 € 0
Germany FRAUNHOFER GESELLSCHAFT ZUR FORDERUNG DER ANGEWANDTEN FORSCHUNG EV (999984059) DE129515865 coordinator REC € 0 € 456,420 € 0
Italy UNIVERSITA DI PISA (999862712) IT00286820501 participant HES € 0 € 120,000 € 0
Italy CONSIGLIO NAZIONALE DELLE RICERCHE (999979500) IT02118311006 participant REC € 0 € 229,408 € 0
Israel TECHNION - ISRAEL INSTITUTE OF TECHNOLOGY (999907720) IL557585585 participant HES € 0 € 395,200 € 0
Greece TECHNICAL UNIVERSITY OF CRETE (999824300) EL090087411 participant HES € 0 € 361,800 € 0