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HMEM 2020 : 1ST Workshop on Heterogeneous Memory Systems

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Link: https://epeec-project.eu/events-and-trainings/1st-workshop-heterogeneous-memory-systems-hmem
 
When Jun 29, 2020 - Jun 29, 2020
Where Barcelona, Spain
Submission Deadline May 29, 2020
Categories    memory   heterogeneous   high performance computing   computer science
 

Call For Papers

This workshop will serve as a forum to present and discuss ongoing research around heterogeneous memory systems. Topics include, but are not limited to: architectural considerations, middleware, programming models, runtime systems, tools, operating system developments, use cases, early experiences, etc.

This is a traditional-style workshop without formal papers or proceedings. Prospective authors must submit an abstract through this EasyChair link. Authors are also welcome to upload an extended abstract (PDF) for publication in the workshop website in case of acceptance.

Submission deadline: May 29, 2020 AOE.

This event is co-located with ISC2020.

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