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LEGaTO: Low-Energy, Secure, and Resilient Toolset for Heterogeneous Computing

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 Added by Behzad Salami
 Publication date 2019
and research's language is English




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The LEGaTO project leverages task-based programming models to provide a software ecosystem for Made in-Europe heterogeneous hardware composed of CPUs, GPUs, FPGAs and dataflow engines. The aim is to attain one order of magnitude energy savings from the edge to the converged cloud/HPC, balanced with the security and resilience challenges. LEGaTO is an ongoing three-year EU H2020 project started in December 2017.



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