## Hot answers tagged matlab

5

Your question may get closed as being off-topic or too broad, but I think it's a good question if rephrased as "what's the python equivalent of this code".
Generally speaking, this is something that a lot of folks coming from matlab get confused by. In python, things are separated into "namespaces" and you need to explicitly import ...

4

Use regular expression.
str = 'abc76.5_pol0.00_Ev0.3';
C = regexp(str, '[a-zA-Z]*', 'match');

3

Slightly faster than Divakar's answer:
nzv = arrayfun(@(n) nonzeros(A(n,:)), 1:size(A,1), 'uniformoutput', false);
Benchmarking
Small matrix
A = randi([0 3],100,200);
repetitions = 1000;
tic
for count = 1:repetitions
nzv =cellfun(@(x) nonzeros(x),mat2cell(A,ones(1,size(A,1)),size(A,2)),'uni',0);
end
toc
tic
for count = 1:repetitions
nzv = ...

3

Working with 64bit floating point arithmetic, 100^1000 is inf because it is larger than the largest possible value. If the symbolic math toolbox is available, use vpa or sym to work with large numbers:
sym('100^1000')
or
vpa('100^1000')

2

you can do this using area with a twist:
...
area(xData,[Rain_Min(:) , Rain_Max(:)-Rain_Min(:)]); hold on
colormap([1 1 1; 0 0 1]);
...

2

This is a partial (and unsatisfying) answer that works for this particular instance but isn't general:
states(isnan(states)) = inf;
uniqueStates = unique(states,'rows');
uniqueStates(~isfinite(uniqueStates)) = nan;
Apparently MATLAB does not treat Inf values as distinct. I don't plan on having any Inf values in my application, but I can certainly imagine ...

2

For huge text files, you might want to avoid hist or histc.
Code
%// Convert everything to chars
letters_char = reshape(char(ns{:}),[],1);
%// Get the case-insensitive count of each letter
count_lettters = sum(bsxfun(@eq,letters_char,97:122),1) + ...
sum(bsxfun(@eq,letters_char,65:90),1)
Finally, to get the probability distribution, use ...

2

This is the solution that I found
output = regexp(str, '[^a-zA-Z]', 'split');
output(cellfun(@isempty,output)) = [];

2

Using sprintf would be easy but I'm not sure if you can use it?
fId = sprintf('L%d', i);
If numel(bvec) is in the range 0 to 9 you could use char:
fId = ['L', char(48+i)];
Or you could create your own number to string conversion function. There may be better ways, but here's an idea:
function s = convertnum(n)
if n > 9
s = ...

2

Convert to a cell array such that you have a cell for each row and then use nonzeros for each cell, that deletes zeros and finally store them into separate variables.
Code
nzv =cellfun(@(x) nonzeros(x),mat2cell(A,ones(1,size(A,1)),size(A,2)),'uni',0)
[v1,v2,v3,v4] = nzv{:}

1

One solution would be to import the package before calling localfunctions:
+mypkg/mytest.m
function f = mytest()
import mypkg.*
f = localfunctions;
end
function foo()
end
function bar()
end
When called:
>> f = mypkg.mytest()
f =
@foo
@bar
>> functions(f{1})
ans =
function: 'foo'
type: 'scopedfunction'
...

1

Something like this?
[ii, jj] = meshgrid(1:size(A,1), 1:size(A,2));
labels = strcat('(', num2str(ii(:)), ',' ,num2str(jj(:)), ')');
stem(reshape(A.',[],1)); %'// or plot, or bar, or...
set(gca, 'xtick', 1:numel(A))
set(gca, 'xticklabel', labels)
xlim([0, numel(A)+1])

1

you can use the split function
cv::Mat bgrImage = imread("C:/temp/cool_cat.jpg");
cv::Mat labImage;
cvtColor(bgrImage, labImage, CV_BGR2Lab);
//split the channels
vector<cv::Mat> lab_channels;
cv::split(labImage, lab_channels);
//nicer than for loop IMHO
int l = 0; int a = 1; int b = 2;
cv::Mat_<bool> ...

1

This can be easily vectorized as follows (see sub2ind):
y = y(x(sub2ind(size(x), y(:,1), y(:,2)))==-1,:);

1

I would suggest using separating axes theorem. For reference, check S. Gottschalk, M.C. Lin, D. Manocha, OBBTree: A hierarchical structure for rapid interference detection, in: Proc. SIGGRAPH, ACM, New York, NY, USA, 1996, pp. 171-180. It is very powerful and I have used it successfully for interference detection between a cube and a cuboid, with the cuboid ...

1

You can also use strsplit with a RegularExpression option.
C = strsplit(str, '[^a-zA-Z]', 'DelimiterType', 'RegularExpression')

1

This can read all characters at waonce into array A
fileID = fopen('words.txt','r');
A = fscanf(fileID, '%c'); % this also works for unicode characters.
fclose(fileID);
Using Map, you can count the occurrence of all characters:
for i = 1:numel(A)
if isKey(keyMap, A(i))
keyMap(A(i)) = keyMap(A(i)) + 1;
else
keyMap(A(i)) = 1;
...

1

Code
%// Get unique rows with in-built "unique" that considers NaN as distinct
unq1 = unique(states,'rows');
%// Detect nans
unq1_nans = isnan(unq1);
%// Find nan equalities across rows
unq1_nans_roweq = bsxfun(@plus,unq1_nans,permute(unq1_nans,[3 2 1]))==2;
%// Find non-nan equalities across rows
unq1_nonans_roweq = bsxfun(@eq,unq1,permute(unq1,[3 2 ...

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