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RTES 2011 : 2nd Annual International Conference on Real-Time & Embedded Systems

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Link: http://www.rtembeddedsystems.org
 
When Oct 12, 2011 - Oct 13, 2011
Where Hotel Fort Canning, Singapore
Submission Deadline Jul 11, 2011
Notification Due Jul 15, 2011
Categories    embedded systems   real-time
 

Call For Papers

Real-time and embedded systems have become a necessity in almost every aspect of the daily lives of individuals and organizations, from self-contained applications to those embedded in various devices and services (mobile phones, vital sign sensors, medication dispensers, home appliances, engine ignition systems, etc). A large proportion of these systems are mission/life critical and time sensitive.

RTES 2011 provides a forum to bring together researchers and developers from academia and industry for advancing the technology of real-time and embedded systems. Aiming to be expansive and inclusive, RTES 2011 looks to embrace new and emerging areas of real-time and embedded systems research.

To celebrate RTES 2011, plan to come early and stay late and also enjoy a modern city surrounded by spectacular wilderness.

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