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53 \algnewcommand\Output{\item[\algorithmicoutput]}
55 \newcommand{\TOLG}{\mathit{tol_{gmres}}}
56 \newcommand{\MIG}{\mathit{maxit_{gmres}}}
57 \newcommand{\TOLM}{\mathit{tol_{multi}}}
58 \newcommand{\MIM}{\mathit{maxit_{multi}}}
59 \newcommand{\TOLC}{\mathit{tol_{cgls}}}
60 \newcommand{\MIC}{\mathit{maxit_{cgls}}}
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73 \RCE{Titre a confirmer.}
74 \title{Comparative performance analysis of simulated grid-enabled numerical iterative algorithms}
75 %\itshape{\journalnamelc}\footnotemark[2]}
77 \author{ Charles Emile Ramamonjisoa and
80 Lilia Ziane Khodja and
86 Femto-ST Institute - DISC Department\\
87 Université de Franche-Comté\\
89 Email: \email{{raphael.couturier,arnaud.giersch,david.laiymani,charles.ramamonjisoa}@univ-fcomte.fr}
92 %% Lilia Ziane Khodja: Department of Aerospace \& Mechanical Engineering\\ Non Linear Computational Mechanics\\ University of Liege\\ Liege, Belgium. Email: l.zianekhodja@ulg.ac.be
98 \keywords{Algorithm; distributed; iterative; asynchronous; simulation; simgrid; performance}
102 \section{Introduction}
104 \section{The asynchronous iteration model}
108 %%%%%%%%%%%%%%%%%%%%%%%%%
109 %%%%%%%%%%%%%%%%%%%%%%%%%
111 \section{Two-stage multisplitting methods}
113 \subsection{Synchronous and asynchronous two-stage methods for sparse linear systems}
115 In this paper we focus on two-stage multisplitting methods in their both versions synchronous and asynchronous~\cite{Frommer92,Szyld92,Bru95}. These iterative methods are based on multisplitting methods~\cite{O'leary85,White86,Alefeld97} and use two nested iterations: the outer iteration and the inner iteration. Let us consider the following sparse linear system of $n$ equations in $\mathbb{R}$
120 where $A$ is a sparse square and nonsingular matrix, $b$ is the right-hand side and $x$ is the solution of the system. Our work in this paper is restricted to the block Jacobi splitting method. This approach of multisplitting consists in partitioning the matrix $A$ into $L$ horizontal band matrices of order $\frac{n}{L}\times n$ without overlapping (i.e. sub-vectors $\{x_\ell\}_{1\leq\ell\leq L}$ are disjoint). The two-stage multisplitting methods solve the linear system~(\ref{eq:01}) iteratively as follows
122 x_\ell^{k+1} = A_{\ell\ell}^{-1}(b_\ell - \displaystyle\sum^{L}_{\substack{m=1\\m\neq\ell}}{A_{\ell m}x^k_m}),\mbox{~for~}\ell=1,\ldots,L\mbox{~and~}k=1,2,3,\ldots
125 where $x_\ell$ are sub-vectors of the solution $x$, $b_\ell$ are the sub-vectors of the right-hand side $b$, and $A_{\ell\ell}$ and $A_{\ell m}$ are diagonal and off-diagonal blocks of matrix $A$ respectively. The iterations of these methods can naturally be computed in parallel such that each processor or cluster of processors is responsible for solving one splitting as a linear sub-system
127 A_{\ell\ell} x_\ell = c_\ell,\mbox{~for~}\ell=1,\ldots,L,
130 where right-hand sides $c_\ell=b_\ell-\sum_{m\neq\ell}A_{\ell m}x_m$ are computed using the shared vectors $x_m$. In this paper, we use the well-known iterative method GMRES ({\it Generalized Minimal RESidual})~\cite{saad86} as an inner iteration to approximate the solutions of the different splittings arising from the block Jacobi multisplitting of matrix $A$. The algorithm in Figure~\ref{alg:01} shows the main key points of our block Jacobi two-stage method executed by a cluster of processors. In line~\ref{solve}, the linear sub-system~(\ref{eq:03}) is solved in parallel using GMRES method where $\MIG$ and $\TOLG$ are the maximum number of inner iterations and the tolerance threshold for GMRES respectively. The convergence of the two-stage multisplitting methods, based on synchronous or asynchronous iterations, is studied by many authors for example~\cite{Bru95,bahi07}.
133 %\begin{algorithm}[t]
134 %\caption{Block Jacobi two-stage multisplitting method}
135 \begin{algorithmic}[1]
136 \Input $A_\ell$ (sparse matrix), $b_\ell$ (right-hand side)
137 \Output $x_\ell$ (solution vector)\vspace{0.2cm}
138 \State Set the initial guess $x^0$
139 \For {$k=1,2,3,\ldots$ until convergence}
140 \State $c_\ell=b_\ell-\sum_{m\neq\ell}A_{\ell m}x_m^{k-1}$
141 \State $x^k_\ell=Solve_{gmres}(A_{\ell\ell},c_\ell,x^{k-1}_\ell,\MIG,\TOLG)$\label{solve}
142 \State Send $x_\ell^k$ to neighboring clusters\label{send}
143 \State Receive $\{x_m^k\}_{m\neq\ell}$ from neighboring clusters\label{recv}
146 \caption{Block Jacobi two-stage multisplitting method}
151 In this paper, we propose two algorithms of two-stage multisplitting methods. The first algorithm is based on asynchronous model which allows the communications to be overlapped by computations and reduces the idle times resulting from the synchronizations. So in the asynchronous mode, our two-stage algorithm uses asynchronous outer iterations and asynchronous communications between clusters. The communications (i.e. lines~\ref{send} and~\ref{recv} in Figure~\ref{alg:01}) are performed by message passing using MPI non-blocking communication routines. The convergence of the asynchronous iterations is detected when all clusters have locally converged
153 k\geq\MIM\mbox{~or~}\|x_\ell^{k+1}-x_\ell^k\|_{\infty }\leq\TOLM,
156 where $\MIM$ is the maximum number of outer iterations and $\TOLM$ is the tolerance threshold for the two-stage algorithm.
158 The second two-stage algorithm is based on synchronous outer iterations. We propose to use the Krylov iteration based on residual minimization to improve the slow convergence of the multisplitting methods. In this case, a $n\times s$ matrix $S$ is set using solutions issued from the inner iteration
160 S=[x^1,x^2,\ldots,x^s],~s\ll n.
163 At each $s$ outer iterations, the algorithm computes a new approximation $\tilde{x}=S\alpha$ which minimizes the residual
165 \min_{\alpha\in\mathbb{R}^s}{\|b-AS\alpha\|_2}.
168 The algorithm in Figure~\ref{alg:02} includes the procedure of the residual minimization and the outer iteration is restarted with a new approximation $\tilde{x}$ at every $s$ iterations. The least-squares problem~(\ref{eq:06}) is solved in parallel by all clusters using CGLS method~\cite{Hestenes52} such that $\MIC$ is the maximum number of iterations and $\TOLC$ is the tolerance threshold for this method (line~\ref{cgls} in Figure~\ref{alg:02}).
171 %\begin{algorithm}[t]
172 %\caption{Krylov two-stage method using block Jacobi multisplitting}
173 \begin{algorithmic}[1]
174 \Input $A_\ell$ (sparse matrix), $b_\ell$ (right-hand side)
175 \Output $x_\ell$ (solution vector)\vspace{0.2cm}
176 \State Set the initial guess $x^0$
177 \For {$k=1,2,3,\ldots$ until convergence}
178 \State $c_\ell=b_\ell-\sum_{m\neq\ell}A_{\ell m}x_m^{k-1}$
179 \State $x^k_\ell=Solve_{gmres}(A_{\ell\ell},c_\ell,x^{k-1}_\ell,\MIG,\TOLG)$
180 \State $S_{\ell,k\mod s}=x_\ell^k$
182 \State $\alpha = Solve_{cgls}(AS,b,\MIC,\TOLC)$\label{cgls}
183 \State $\tilde{x_\ell}=S_\ell\alpha$
184 \State Send $\tilde{x_\ell}$ to neighboring clusters
186 \State Send $x_\ell^k$ to neighboring clusters
188 \State Receive $\{x_m^k\}_{m\neq\ell}$ from neighboring clusters
191 \caption{Krylov two-stage method using block Jacobi multisplitting}
205 \subsection{Simulation of two-stage methods using SimGrid framework}
207 %%%%%%%%%%%%%%%%%%%%%%%%%
208 %%%%%%%%%%%%%%%%%%%%%%%%%
210 \section{Experimental, Results and Comments}
213 \textbf{V.1. Setup study and Methodology}
215 To conduct our study, we have put in place the following methodology
216 which can be reused with any grid-enabled applications.
218 \textbf{Step 1} : Choose with the end users the class of algorithms or
219 the application to be tested. Numerical parallel iterative algorithms
220 have been chosen for the study in the paper.
222 \textbf{Step 2} : Collect the software materials needed for the
223 experimentation. In our case, we have three variants algorithms for the
224 resolution of three 3D-Poisson problem: (1) using the classical GMRES alias Algo-1 in this
225 paper, (2) using the multisplitting method alias Algo-2 and (3) an
226 enhanced version of the multisplitting method as Algo-3. In addition,
227 SIMGRID simulator has been chosen to simulate the behaviors of the
228 distributed applications. SIMGRID is running on the Mesocentre
229 datacenter in Franche-Comte University $[$10$]$ but also in a virtual
232 \textbf{Step 3} : Fix the criteria which will be used for the future
233 results comparison and analysis. In the scope of this study, we retain
234 in one hand the algorithm execution mode (synchronous and asynchronous)
235 and in the other hand the execution time and the number of iterations of
236 the application before obtaining the convergence.
238 \textbf{Step 4 }: Setup up the different grid testbeds environment
239 which will be simulated in the simulator tool to run the program. The
240 following architecture has been configured in Simgrid : 2x16 - that is a
241 grid containing 2 clusters with 16 hosts (processors/cores) each -, 4x8,
242 4x16, 8x8 and 2x50. The network has been designed to operate with a
243 bandwidth equals to 10Gbits (resp. 1Gbits/s) and a latency of 8E-6
244 microseconds (resp. 5E-5) for the intra-clusters links (resp.
245 inter-clusters backbone links).
247 \textbf{Step 5}: Process an extensive and comprehensive testings
248 within these configurations in varying the key parameters, especially
249 the CPU power capacity, the network parameters and also the size of the
250 input matrix. Note that some parameters should be invariant to allow the
251 comparison like some program input arguments.
253 \textbf{Step 6} : Collect and analyze the output results.
255 \textbf{ V.2. Factors impacting distributed applications performance in
258 From our previous experience on running distributed application in a
259 computational grid, many factors are identified to have an impact on the
260 program behavior and performance on this specific environment. Mainly,
261 first of all, the architecture of the grid itself can obviously
262 influence the performance results of the program. The performance gain
263 might be important theoretically when the number of clusters and/or the
264 number of nodes (processors/cores) in each individual cluster increase.
266 Another important factor impacting the overall performance of the
267 application is the network configuration. Two main network parameters
268 can modify drastically the program output results : (i) the network
269 bandwidth (bw=bits/s) also known as "the data-carrying capacity"
270 $[$13$]$ of the network is defined as the maximum of data that can pass
271 from one point to another in a unit of time. (ii) the network latency
272 (lat : microsecond) defined as the delay from the start time to send the
273 data from a source and the final time the destination have finished to
274 receive it. Upon the network characteristics, another impacting factor
275 is the application dependent volume of data exchanged between the nodes
276 in the cluster and between distant clusters. Large volume of data can be
277 transferred in transit between the clusters and nodes during the code
280 In a grid environment, it is common to distinguish in one hand, the
281 "\,intra-network" which refers to the links between nodes within a
282 cluster and in the other hand, the "\,inter-network" which is the
283 backbone link between clusters. By design, these two networks perform
284 with different speed. The intra-network generally works like a high
285 speed local network with a high bandwith and very low latency. In
286 opposite, the inter-network connects clusters sometime via heterogeneous
287 networks components thru internet with a lower speed. The network
288 between distant clusters might be a bottleneck for the global
289 performance of the application.
291 \textbf{V.3 Comparing GMRES and Multisplitting algorithms in
294 In the scope of this paper, our first objective is to demonstrate the
295 Algo-2 (Multisplitting method) shows a better performance in grid
296 architecture compared with Algo-1 (Classical GMRES) both running in
297 \textbf{\textit{synchronous mode}}. Better algorithm performance
298 should mean a less number of iterations output and a less execution time
299 before reaching the convergence. For a systematic study, the experiments
300 should figure out that, for various grid parameters values, the
301 simulator will confirm the targeted outcomes, particularly for poor and
302 slow networks, focusing on the impact on the communication performance
303 on the chosen class of algorithm $[$12$]$.
305 The following paragraphs present the test conditions, the output results
309 \textit{3.a Executing the algorithms on various computational grid
310 architecture scaling up the input matrix size}
315 \begin{tabular}{r c }
317 Grid & 2x16, 4x8, 4x16 and 8x8\\ %\hline
318 Network & N2 : bw=1Gbs-lat=5E-05 \\ %\hline
319 Input matrix size & N$_{x}$ =150 x 150 x 150 and\\ %\hline
320 - & N$_{x}$ =170 x 170 x 170 \\ \hline
325 Table 1 : Clusters x Nodes with NX=150 or NX=170
327 \RCE{J'ai voulu mettre les tableaux des données mais je pense que c'est inutile et ça va surcharger}
330 The results in figure 1 show the non-variation of the number of
331 iterations of classical GMRES for a given input matrix size; it is not
332 the case for the multisplitting method.
334 %\begin{wrapfigure}{l}{60mm}
337 \includegraphics[width=60mm]{cluster_x_nodes_nx_150_and_nx_170.pdf}
338 \caption{Cluster x Nodes NX=150 and NX=170}
343 Unless the 8x8 cluster, the time
344 execution difference between the two algorithms is important when
345 comparing between different grid architectures, even with the same number of
346 processors (like 2x16 and 4x8 = 32 processors for example). The
347 experiment concludes the low sensitivity of the multisplitting method
348 (compared with the classical GMRES) when scaling up to higher input
351 \textit{3.b Running on various computational grid architecture}
355 \begin{tabular}{r c }
357 Grid & 2x16, 4x8\\ %\hline
358 Network & N1 : bw=10Gbs-lat=8E-06 \\ %\hline
359 - & N2 : bw=1Gbs-lat=5E-05 \\
360 Input matrix size & N$_{x}$ =150 x 150 x 150\\ \hline \\
364 %Table 2 : Clusters x Nodes - Networks N1 x N2
365 %\RCE{idem pour tous les tableaux de donnees}
368 %\begin{wrapfigure}{l}{60mm}
371 \includegraphics[width=60mm]{cluster_x_nodes_n1_x_n2.pdf}
372 \caption{Cluster x Nodes N1 x N2}
377 The experiments compare the behavior of the algorithms running first on
378 speed inter- cluster network (N1) and a less performant network (N2).
379 The figure 2 shows that end users will gain to reduce the execution time
380 for both algorithms in using a grid architecture like 4x16 or 8x8: the
381 performance was increased in a factor of 2. The results depict also that
382 when the network speed drops down, the difference between the execution
383 times can reach more than 25\%.
385 \textit{\\\\\\\\\\\\\\\\\\3.c Network latency impacts on performance}
389 \begin{tabular}{r c }
391 Grid & 2x16\\ %\hline
392 Network & N1 : bw=1Gbs \\ %\hline
393 Input matrix size & N$_{x}$ =150 x 150 x 150\\ \hline\\
397 Table 3 : Network latency impact
402 \includegraphics[width=60mm]{network_latency_impact_on_execution_time.pdf}
403 \caption{Network latency impact on execution time}
408 According the results in table and figure 3, degradation of the network
409 latency from 8.10$^{-6}$ to 6.10$^{-5}$ implies an absolute time
410 increase more than 75\% (resp. 82\%) of the execution for the classical
411 GMRES (resp. multisplitting) algorithm. In addition, it appears that the
412 multisplitting method tolerates more the network latency variation with
413 a less rate increase. Consequently, in the worst case (lat=6.10$^{-5
414 }$), the execution time for GMRES is almost the double of the time for
415 the multisplitting, even though, the performance was on the same order
416 of magnitude with a latency of 8.10$^{-6}$.
418 \textit{3.d Network bandwidth impacts on performance}
422 \begin{tabular}{r c }
424 Grid & 2x16\\ %\hline
425 Network & N1 : bw=1Gbs - lat=5E-05 \\ %\hline
426 Input matrix size & N$_{x}$ =150 x 150 x 150\\ \hline
430 Table 4 : Network bandwidth impact
434 \includegraphics[width=60mm]{network_bandwith_impact_on_execution_time.pdf}
435 \caption{Network bandwith impact on execution time}
441 The results of increasing the network bandwidth depict the improvement
442 of the performance by reducing the execution time for both of the two
443 algorithms. However, and again in this case, the multisplitting method
444 presents a better performance in the considered bandwidth interval with
445 a gain of 40\% which is only around 24\% for classical GMRES.
447 \textit{3.e Input matrix size impacts on performance}
451 \begin{tabular}{r c }
454 Network & N2 : bw=1Gbs - lat=5E-05 \\ %\hline
455 Input matrix size & N$_{x}$ = From 40 to 200\\ \hline
459 Table 5 : Input matrix size impact
463 \includegraphics[width=60mm]{pb_size_impact_on_execution_time.pdf}
464 \caption{Pb size impact on execution time}
468 In this experimentation, the input matrix size has been set from
469 Nx=Ny=Nz=40 to 200 side elements that is from 40$^{3}$ = 64.000 to
470 200$^{3}$ = 8.000.000 points. Obviously, as shown in the figure 5,
471 the execution time for the algorithms convergence increases with the
472 input matrix size. But the interesting result here direct on (i) the
473 drastic increase (300 times) of the number of iterations needed before
474 the convergence for the classical GMRES algorithm when the matrix size
475 go beyond Nx=150; (ii) the classical GMRES execution time also almost
476 the double from Nx=140 compared with the convergence time of the
477 multisplitting method. These findings may help a lot end users to setup
478 the best and the optimal targeted environment for the application
479 deployment when focusing on the problem size scale up. Note that the
480 same test has been done with the grid 2x16 getting the same conclusion.
482 \textit{3.f CPU Power impact on performance}
486 \begin{tabular}{r c }
488 Grid & 2x16\\ %\hline
489 Network & N2 : bw=1Gbs - lat=5E-05 \\ %\hline
490 Input matrix size & N$_{x}$ = 150 x 150 x 150\\ \hline
494 Table 6 : CPU Power impact
498 \includegraphics[width=60mm]{cpu_power_impact_on_execution_time.pdf}
499 \caption{CPU Power impact on execution time}
503 Using the SIMGRID simulator flexibility, we have tried to determine the
504 impact on the algorithms performance in varying the CPU power of the
505 clusters nodes from 1 to 19 GFlops. The outputs depicted in the figure 6
506 confirm the performance gain, around 95\% for both of the two methods,
507 after adding more powerful CPU. Note that the execution time axis in the
508 figure is in logarithmic scale.
510 \textbf{V.4 Comparing GMRES in native synchronous mode and
511 Multisplitting algorithms in asynchronous mode}
513 The previous paragraphs put in evidence the interests to simulate the
514 behavior of the application before any deployment in a real environment.
515 We have focused the study on analyzing the performance in varying the
516 key factors impacting the results. In the same line, the study compares
517 the performance of the two proposed methods in \textbf{synchronous mode
518 }. In this section, with the same previous methodology, the goal is to
519 demonstrate the efficiency of the multisplitting method in \textbf{
520 asynchronous mode} compare with the classical GMRES staying in the
523 Note that the interest of using the asynchronous mode for data exchange
524 is mainly, in opposite of the synchronous mode, the non-wait aspects of
525 the current computation after a communication operation like sending
526 some data between nodes. Each processor can continue their local
527 calculation without waiting for the end of the communication. Thus, the
528 asynchronous may theoretically reduce the overall execution time and can
529 improve the algorithm performance.
531 As stated supra, SIMGRID simulator tool has been used to prove the
532 efficiency of the multisplitting in asynchronous mode and to find the
533 best combination of the grid resources (CPU, Network, input matrix size,
534 \ldots ) to get the highest "\,relative gain" in comparison with the
535 classical GMRES time.
538 The test conditions are summarized in the table below :
542 \begin{tabular}{r c }
544 Grid & 2x50 totaling 100 processors\\ %\hline
545 Processors & 1 GFlops to 1.5 GFlops\\
546 Intra-Network & bw=1.25 Gbits - lat=5E-05 \\ %\hline
547 Inter-Network & bw=5 Mbits - lat=2E-02\\
548 Input matrix size & N$_{x}$ = From 62 to 150\\ %\hline
549 Residual error precision: 10$^{-5}$ to 10$^{-9}$\\ \hline
553 Again, comprehensive and extensive tests have been conducted varying the
554 CPU power and the network parameters (bandwidth and latency) in the
555 simulator tool with different problem size. The relative gains greater
556 than 1 between the two algorithms have been captured after each step of
557 the test. Table I below has recorded the best grid configurations
558 allowing a multiplitting method time more than 2.5 times lower than
559 classical GMRES execution and convergence time. The finding thru this
560 experimentation is the tolerance of the multisplitting method under a
561 low speed network that we encounter usually with distant clusters thru the
564 % use the same column width for the following three tables
565 \newlength{\mytablew}\settowidth{\mytablew}{\footnotesize\np{E-11}}
566 \newenvironment{mytable}[1]{% #1: number of columns for data
567 \renewcommand{\arraystretch}{1.3}%
568 \begin{tabular}{|>{\bfseries}r%
569 |*{#1}{>{\centering\arraybackslash}p{\mytablew}|}}}{%
574 \caption{Relative gain of the multisplitting algorithm compared with
581 & 5 & 5 & 5 & 5 & 5 \\
584 & 20 & 20 & 20 & 20 & 20 \\
587 & 1 & 1 & 1 & 1.5 & 1.5 \\
590 & 62 & 62 & 62 & 100 & 100 \\
593 & \np{E-5} & \np{E-8} & \np{E-9} & \np{E-11} & \np{E-11} \\
596 & 2.52 & 2.55 & 2.52 & 2.57 & 2.54 \\
605 & 50 & 50 & 50 & 50 & 50 \\
608 & 20 & 20 & 20 & 20 & 20 \\
611 & 1.5 & 1.5 & 1 & 1.5 & 1.5 \\
614 & 110 & 120 & 130 & 140 & 150 \\
617 & \np{E-11} & \np{E-11} & \np{E-11} & \np{E-11} & \np{E-11}\\
620 & 2.53 & 2.51 & 2.58 & 2.55 & 2.54 \\
629 \section*{Acknowledgment}
632 The authors would like to thank\dots{}
635 \bibliographystyle{wileyj}
636 \bibliography{biblio}
644 %%% ispell-local-dictionary: "american"