X-Git-Url: https://bilbo.iut-bm.univ-fcomte.fr/and/gitweb/book_gpu.git/blobdiff_plain/17bff40b83bcdcc39769f9e59c70ffae1c525b72..063fd4437e9bfbefc2f6ed6c932744bb20514751:/BookGPU/Chapters/chapter13/ch13.tex?ds=inline diff --git a/BookGPU/Chapters/chapter13/ch13.tex b/BookGPU/Chapters/chapter13/ch13.tex index 90dd946..db2ab78 100755 --- a/BookGPU/Chapters/chapter13/ch13.tex +++ b/BookGPU/Chapters/chapter13/ch13.tex @@ -134,7 +134,7 @@ where $b=\{b_{1},b_{2},b_{3}\}$, $\|b\|_{2}$ denotes the Euclidean norm of $b$, $v=e^{-a}.u$ represents the general change of variables such that $a=\frac{b^{t}(x,y,z)}{2\eta}$. Consequently, the numerical resolution of the diffusion problem (the self-adjoint operator~(\ref{ch13:eq:04})) is done by optimization algorithms, in contrast to that -of the convection-diffusion problem (non self-adjoint operator~(\ref{ch13:eq:03})) +of the convection-diffusion problem (nonself-adjoint operator~(\ref{ch13:eq:03})) which is done by relaxation algorithms. In the case of our studied algorithm, the convergence\index{convergence} is ensured by M-matrix property; then, the performance is linked to the magnitude of the spectral radius of the iteration matrix, which is independent of the condition @@ -322,7 +322,7 @@ each component of the vector must be relaxed an infinite number of times. The ch relaxed components to be used in the computational process may be guided by any criterion, and in particular, a natural criterion is to pickup the most recently available values of the components computed by the processors. Furthermore, the asynchronous -iterations are implemented by means of nonblocking MPI communication subroutines\index{MPI subroutines!nonblocking} +iterations are implemented by means of nonblocking MPI communication subroutines\index{MPI!nonblocking} (asynchronous communications). The important property ensuring the convergence of the parallel projected Richardson @@ -486,13 +486,13 @@ in the synchronous algorithm and the asynchronous ones: \verb+cublasSetVectorAsy and \verb+cublasGetVectorAsync()+ in the asynchronous algorithm. Moreover, we use the communication routines of the MPI library to carry out the data exchanges between the neighboring nodes. We use the following communication routines: \verb+MPI_Isend()+ -and \verb+MPI_Irecv()+ to perform nonblocking\index{MPI subroutines!nonblocking} +and \verb+MPI_Irecv()+ to perform nonblocking\index{MPI!nonblocking} sends and receives, respectively. For the synchronous algorithm, we use the MPI routine \verb+MPI_Waitall()+ which puts the MPI process of a computing node in blocking status until all data exchanges with neighboring nodes (sends and receives) are completed. In contrast, for the asynchronous algorithms, we use the MPI routine \verb+MPI_Test()+ which tests the completion of a data exchange (send or receives) -without putting the MPI process in blocking status\index{MPI subroutines!blocking}. +without putting the MPI process in blocking status\index{MPI!blocking}. The function $Compute\_New\_Vector\_Elements()$ (line~$6$ in Algorithm~\ref{ch13:alg:02}) computes, at each iteration, the new elements of the iterate vector $U$. Its general code @@ -598,7 +598,7 @@ AllReduce(error,\hspace{0.1cm}maxerror,\hspace{0.1cm}MAX); \\ conv \leftarrow true; \end{array} $$ -where the function $AllReduce()$ uses the MPI global reduction subroutine\index{MPI subroutines!global} +where the function $AllReduce()$ uses the MPI global reduction subroutine\index{MPI!global} \verb+MPI_Allreduce()+ to compute the maximal value, $maxerror$, among the local absolute errors, $error$, of all computing nodes, and $p$ (in Algorithm~\ref{ch13:alg:02}) is used as a counter of the local relaxations carried out by a computing node. In @@ -698,6 +698,7 @@ $800^{3}$ & $222,108.09$ & $1,769,232$ & $188,790 \begin{table} \centering +\begin{scriptsize} \begin{tabular}{|c|c|c|c|c|c|c|c|} \hline \multirow{2}{*}{\bf Pb. size} & \multicolumn{3}{c|}{\bf Synchronous} & \multicolumn{3}{c|}{\bf Asynchronous} & \multirow{2}{*}{\bf Gain\%} \\ \cline{2-7} @@ -712,6 +713,7 @@ $768^{3}$ & $4,112.68$ & $831,144$ & $50.13$ $800^{3}$ & $3,950.87$ & $899,088$ & $56.22$ & $3,636.57$ & $834,900$ & $51.91$ & $7.95$ \\ \hline \end{tabular} +\end{scriptsize} \vspace{0.5cm} \caption{Execution times in seconds of the parallel projected Richardson method implemented on a cluster of 12 GPUs.} \label{ch13:tab:02} @@ -745,7 +747,7 @@ consequently it also depends on the number of computing nodes. %%--------------------------%% \section{Red-black ordering technique} \label{ch13:sec:06} -As is wellknown, the Jacobi method\index{iterative method!Jacobi} is characterized +As is well known, the Jacobi method\index{iterative method!Jacobi} is characterized by a slow convergence\index{convergence} rate compared to some iterative methods\index{iterative method} (for example, Gauss-Seidel method\index{iterative method!Gauss-Seidel}). So, in this section, we present some solutions to reduce the execution time and the number of @@ -776,7 +778,7 @@ vector elements leads to using twice the initial number of memory transactions. we apply the point red-black ordering\index{iterative method!red-black ordering} accordingly to the $y$-coordinate, as is shown in Figure~\ref{ch13:fig:06.02}. In this case, the vector elements having even $y$-coordinate are computed in parallel -using the values of those having odd $y$-coordinate and then viceversa. Moreover, +using the values of those having odd $y$-coordinate and then vice-versa. Moreover, in the GPU implementation of the parallel projected Richardson method (Section~\ref{ch13:sec:04}), we have shown that a subproblem of size $(NX\times ny\times nz)$ is decomposed into $nz$ grids of size $(NX\times ny)$. Then, each kernel is executed in parallel by