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suppose that we are working on simple computer,i would like to know if there is some difference in parallel code computing and without parallel computing?there is link about parallel computing


there is given several example,related to integration,eigenvalue calculation and so on,but is there any difference if i do it using parallel computing or without it?for instant i want to calculate eigenvalue decomposition on huge matrix,how can i distribute it along 4 client and how to get result finally?please show me some codes or examples related to this topic,thanks in advance,for instance we have this matrix

>> tic
>> [V,D]=eig(a);
>> toc
Elapsed time is 9.819754 seconds.

what about parallel computing?

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closed as off-topic by High Performance Mark, Luis Mendo, Amro, Divakar, nkjt Jul 12 '14 at 15:29

This question appears to be off-topic. The users who voted to close gave this specific reason:

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yes, if you have access to the Parallel Computing Toolbox and the Distributed Computing Toolbox, you can use distributed arrays, with many algorithms implemented that operate on such arrays (including EIG): mathworks.com/products/parallel-computing/parallel/…. Most linear algebra functions for distributed arrays are implemented using ScaLAPACK under the hood. – Amro Jul 12 '14 at 10:06
just little example please,yes i have access to paralel computing – dato datuashvili Jul 12 '14 at 10:09
well did you check out the documentation (either locally or online), it is full of examples and numerous tutorials and explanations (far better than I can give): mathworks.com/help/distcomp/distributed-arrays-and-spmd.html – Amro Jul 12 '14 at 10:11
how can i determine how many workers do i need? – dato datuashvili Jul 12 '14 at 10:13
for exmaple this spmd (3) R = rand(4,4); end – dato datuashvili Jul 12 '14 at 10:13
up vote 1 down vote accepted

Here is a quick example as you requested:

% open a local pool of 2 workers

% random matrix distributed over workers (each gets half of the data)
A = distributed.rand(1000);

% (non symmetric eigenvalue EIG is not yet available for codistributed arrays)
A = A + A.';

% compute eigenvalues/eigenvectors
[V,D] = eig(A);

% V and D are distributed arrays.
% If you want to retrieve contents of distributed array on this client
%V = gather(V);

% shutdown workers

I still advise you to read the documentation to understand how to distributed arrays work in MATLAB.

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will it optimize code? – dato datuashvili Jul 12 '14 at 10:28
(as always) it depends. – Amro Jul 12 '14 at 10:30
depend on what? – dato datuashvili Jul 12 '14 at 10:34
there is an overhead involved in communicating between separate workers and transferring data back and forth.. So you generally benefit when the computation on each worker is significant compared to the cost of parallelism – Amro Jul 12 '14 at 10:40
but this approaches is recommended basically when there are multiple real clients connected right? – dato datuashvili Jul 12 '14 at 10:42

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