Generate a 100000x100000 matrix that takes less time and memory
10 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
Jay Vaidya
el 19 de Oct. de 2020
Comentada: Jay Vaidya
el 20 de Oct. de 2020
I have written a random matrix generator code that generates an adjacency matrix of any size. I am targetting larger size like 100kx100k but the problem that I face is the time to generate that (which is related to the RAM memory). It needs ~ 60 GB to do this.
I presume that there has to be a smarter way to do this, like by using a small int instead of a double word or something similar to the datatype. Any help would be appreciated. Thanks
function [a,ed] = Random_graph_genar_function(nodes, connectivity)
for it=1:3
ni = nodes;
ac= connectivity;
mi=(ni*(ni-1))/2;
no=round(mi*ac);
a=zeros(ni,ni);
in=randperm(mi,no); p=1;
for i=1:ni
for j=i+1:ni
if (any(in(:)==p))
a(i,j)=1;
a(j,i)=1;
end
p=p+1;
end
end
p=0;
for i=1:ni
for j=i+1:ni
if (a(i,j)==1)
p=p+1;
ed(1,p)=i;
ed(2,p)=j;
end
end
end
s=sum(a);
mx=max(s)
for i=1:ni
bc(i)=mx-s(i);
end
tbc=sum(bc);
end
end
4 comentarios
Walter Roberson
el 20 de Oct. de 2020
The percentage of the matrix that is non-zero is random
Is it going to be 0.000378% in one run, but 82.19% in another run? You have no idea what the percentage will be, other than more than 0% and less than 100% ?
Respuesta aceptada
Matt J
el 20 de Oct. de 2020
Editada: Matt J
el 20 de Oct. de 2020
Seems to me the whole code can be replaced by,
function [a,ed] = Random_graph_genar_function(nodes, connectivity)
a=logical(sprandsym(nodes,connectivity));
a=a-a.*speye(nodes);
G=graph(a);
ed=table2array(G.Edges).';
end
although instead of having the function return a and ed, I suspect that everything you are trying to do is more easily accomplished with the graph object G instead.
8 comentarios
Walter Roberson
el 20 de Oct. de 2020
Editada: Walter Roberson
el 20 de Oct. de 2020
If you have a fixed number of iterations to work with, then you will need to proceed by either
- growing the graph step by step so that at no point are there disconnected points; or
- imposing a maximum distance away from other existing points upon new points, and "reserving" a number of iterations to do nothing but "fix-up" the disconnected subtrees by connecting them to other sub-trees; or
- after the initial iterations, find all disconnected subtrees and move them to be attached to the main tree. If you have a constrained geometry, it might take some searching to find attachment points that satisfy the constraints
I suspect that the first option, growing step by step, is the easiest.
Más respuestas (2)
Ameer Hamza
el 19 de Oct. de 2020
If most of the elements equal to zero, then use sparse array: https://www.mathworks.com/help/matlab/ref/sparse.html. You can also try to create uint8 array which will only use 1/8 memory
a=zeros(ni,ni,'uint8');
7 comentarios
Walter Roberson
el 19 de Oct. de 2020
a=zeros(ni,ni,'uint8');
You are already using only one byte per entry.
If you were to create logic that packed 8 adjacent entries into one byte, you could potentially get 8:1 compression... and would still need 116.4 gigabytes of memory.
Your only hope would be if you could use a sparse() array. See https://www.mathworks.com/matlabcentral/answers/100287-how-much-memory-a-sparse-matrix-created-using-sprand-with-given-number-of-rows-columns-and-density for a guideline to the amount of memory a sparse array uses. I suspect the 16 is 8 bytes for an offset, plus 8 bytes for storage -- so using a sparse logical array possibly only takes 8+1 = 9 bytes per entry (this could be tested.)
Which is to say that if your occupancy is more than about 1/20 then sparse would be less efficient. If you had a target of (say) 16 gigabytes then you would need to be about only 1/1000 occupied.
0 comentarios
Ver también
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!