7.8 Presentations from IoT-Campus (II): IoT Survival Guide and Big Data Challenges

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Date: Wednesday 16 March 2016
Time: 14:30 - 16:00
Location / Room: Exhibition Theatre

Organiser:
Hans-Jürgen Brand, IDT/ZMDI, DE

This session features presentations given by exhibitors from the Campus on IoT and Secure Systems and from the projects booths, with a special focus on how IoT will change our life and how to design IoT devices. A second session (4.8) will highlight ASIC and sensor solutions for IoT applications. Attendees are invited to also visit the campus and projects booths for further details and discussions.

TimeLabelPresentation Title
Authors
14:307.8.1DIGITAL TRANSFORMATION: THE SURVIVAL GUIDE FOR THE AGE OF BIG DATA, INDUSTRY 4.0 AND THE INTERNET OF THINGS
Speaker:
Christoph Kögler, T-Systems Multimedia Solutions GmbH, DE
15:007.8.2DESIGNING IOT DEVICES WITH X-FAB'S OPEN-PLATFORM FOUNDRY TECHNOLOGIES
Speaker:
Ulrich Bretthauer, X-FAB, DE
15:307.8.3BIG DATA CHALLENGES IN HIGH ENERGY PHYSICS EXPERIMENTS: THE ATLAS (CERN) FAST TRACKER APPROACH
Speaker:
Calliope-Louisa Sotiropoulou, Universita’ di Pisa and INFN Pisa, IT
Abstract

We live in the era of "Big Data" problems. Massive amounts of data are produced and captured, data that require significant amounts of filtering to be processed in a realistically useful form. An excellent example of a "Big Data" problem is the data processing flow in High Energy Physics experiments, in our case the ATLAS detector in CERN. In the Large Hadron Collider (LHC) 40 million collisions of bunches of protons take place every second, which is about 15 trillion collisions per year. For the ATLAS detector alone 1 Mbyte of data is produced for every collision or 2000 Tbytes of data per year. Therefore what is needed is a very efficient real-time trigger system to filter the collisions (events) and identify the ones that contain "interesting" physics for processing.

One of the upgrades of the ATLAS Trigger system is the Fast TracKer real-time pattern matching machine, able to reconstruct the tracks of the particles in the inner silicon detector of the ATLAS experiment in less than 100 μsec. To achieve this performance the Fast TracKer is made of 8 different types of custom designed boards with 8000 ASICs and 2000 FPGAs. Pattern matching and reconstruction is a common data processing problem and therefore the hardware and algorithms developed for the Fast TracKer can be exploited in applications outside High Energy Physics. This is one of the targets of the Marie Curie IAPP Fast TracKer project: to explore the potentials of the Fast TracKer hardware in applications that are beyond its initial design purpose (e.g. biomedical applications, cognitive image processing and security applications).

16:00End of session
Coffee Break in Exhibition Area