posted by user: rjazevedo || 10182 views || tracked by 46 users: [display]

CASES 2011 : International Conference on Compilers, Architectures, and Synthesis of Embedded Systems

FacebookTwitterLinkedInGoogle


Conference Series : Compilers, Architecture, and Synthesis for Embedded Systems
 
Link: http://www.esweek.org/cases
 
When Oct 9, 2011 - Oct 14, 2011
Where Taipei, Taiwan
Abstract Registration Due Mar 28, 2011
Submission Deadline Apr 4, 2011
Notification Due Jul 3, 2011
Final Version Due Jul 31, 2011
Categories    compilers   computer architecture   embedded systems
 

Call For Papers

The CASES conference provides a forum for emerging technology in embedded computing systems, with an emphasis on compilers and architectures for embedded systems. CASES is a common forum for researchers with an interest in embedded systems to reach across vertically integrated communities and to promote synergies. As evident from the past CASES meetings, several emerging applications are critically dependent on these interactions for their sustained growth and evolution. CASES 2011 is part of the 2011 Embedded Systems Week.

Program Chairs: Prof. Rajesh Gupta (University of California, San Diego) and Prof. Vincent Mooney (Georgia Institute of Technology)

Related Resources

CASES 2019   International Conference on Compilers, Architectures, and Synthesis for Embedded Systems
IJCSA 2018   International Journal on Computational Science & Applications
CASES 2018   International Conference on Compilers, Architectures, and Synthesis for Embedded Systems
MathSJ 2018   Applied Mathematics and Sciences: An International Journal
DATE E2 2018   Design, Automation, and Test in Europe, Topic E2: Compilers and Software Synthesis
OpenSuCo @ ISC HPC 2017   2017 International Workshop on Open Source Supercomputing
ESWEEK 2019   Embedded Systems Week
ITCE 2019   The International Conference on Innovative Trends in Computer Engineering
SI:EMS 2018   Special Issue on Embedded Multicore Systems in Journal of Systems Architecture
EMC2 2019   Workshop On Energy Efficient Machine Learning And Cognitive Computing For Embedded Applications