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Easing parallel programming on heterogeneous systems

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Academic year: 2020

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Figure

Figure 1.1: Objectives and structure of this Thesis.
Figure 3.2: Examples of the kernel characterization and definition for a stencil program imple- imple-menting an iterative Jacobi PDE solver for the Poisson's heat diffusion equation
Figure 3.3: Example of the main code, for a stencil program implementing an iterative Jacobi PDE solver for the Poisson's heat diffusion equation
Figure 3.4: Excerpt of the Controller library code generated for kernel deployment/launching on a CUDA capable GPU device
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