Faster alternative to containers.Map
21 views (last 30 days)
Show older comments
Profiling a script (attached, along with a sample input data file), I have found that looking up a Map generated with containers.Map is the bottleneck. Namely the table is:
s = containers.Map(nodes, num2cell([1:numel(nodes)]'));
and the script looks it up within a while-loop a few thousands times:
idx = s(temp1); % same as above if s is a Map object
I have tried replacing the Map object with a data structure, but it did not seem to work, due to field name limitations. Are there other faster methods?
3 Comments
Nikolaus Koopmann
on 16 Mar 2022
have you found a solution??
i'm faced with a similar problem. Was going with containers.Map first but it didnt scale. java.uitl.HashTable is just as slow :(
cheers,
niko
Answers (2)
Walter Roberson
on 1 Sep 2017
fid = fopen('dataset_203_2.txt', 'rt');
approx_num_nodes = 3000;
used_nodes = 0;
known_nodes = nan(1, approx_num_nodes);
node_connections = cell(1, approx_num_nodes);
while true
thisline = fgetl(fid);
if ~ischar(thisline); break; end %end of file
toks = regexp(thisline, '^(?<src>\d+)\s*->\s*(?<dst>(\d+,\s*)*\d+)', 'names');
src = str2double(toks.src);
dst = str2double( regexp(toks.dst, ',\s*', 'split') );
mentioned = [src, dst];
[known, idx] = ismember(mentioned, known_nodes);
unknown = ~known;
num_new_nodes = nnz(unknown);
newnodes = used_nodes+(1:num_new_nodes);
known_nodes(newnodes) = mentioned(unknown);
used_nodes = used_nodes + num_new_nodes;
idx(unknown) = newnodes;
node_connections{idx(1)} = idx(2:end);
end
fclose(fid);
known_nodes = known_nodes(1:used_nodes);
At the end of this code, known_nodes will be a numeric list of node numbers from the file, in the order encountered, and node_connections will be a cell array of numeric vectors listing all of the connections. The connections listed will be in terms of the indices into the known_nodes list, not in terms of the original node numbers.
Another way of phrasing this is that the known_nodes is something would something you would use for the node labels, but the information in the node_connections list uses internal node numbers. It would be each to reconfigure this for text labels instead of numeric labels.
3 Comments
Walter Roberson
on 1 Sep 2017
I did not do any timing tests on this. On my system it executed quickly on the test file.
Taking out the str2double() and fixing up the indexing to suit should speed it a little.
This code does have the disadvantage of calling ismember over and over again. I have it ismember against the complete nan-padded list, so it should take pretty much constant time per pass. In theory comparing against only the part of the array that has been used would make it faster, but in practice the extracting of the used subset would probably negate the gains. You would not want to build upwards with the list getting longer and longer, as then you end up doing reallocations every pass.
Mike Croucher
on 15 Sep 2022
MATLAB R2022b has a new dictionary datatype that's much faster than containers.map. A tutorial-like introduction at An introduction to dictionaries (associative arrays) in MATLAB » The MATLAB Blog - MATLAB & Simulink (mathworks.com)
1 Comment
JS2018
on 16 Oct 2022
Looking forward to your blog post about the differences between containers.map and dictionaries!
See Also
Categories
Find more on Dictionaries in Help Center and File Exchange
Products
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!