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function varargout = trainingPartitions(numObservations,splits)
%TRAININGPARTITONS Random indices for splitting training data
% [idx1,...,idxN] = trainingPartitions(numObservations,splits) returns
% random vectors of indices to help split a data set with the specified
% number of observations, where SPLITS is a vector of length N of
% partition sizes that sum to one.
%
% % Example: Get indices for 50%-50% training-test split of 500
% % observations.
% [idxTrain,idxTest] = trainingPartitions(500,[0.5 0.5])
%
% % Example: Get indices for 80%-10%-10% training, validation, test split
% % of 500 observations.
% [idxTrain,idxValidation,idxTest] = trainingPartitions(500,[0.8 0.1 0.1])

arguments
numObservations (1,1) {mustBePositive}
splits {mustBeVector,mustBeInRange(splits,0,1,"exclusive"),mustSumToOne}
end

numPartitions = numel(splits);
varargout = cell(1,numPartitions);

idx = randperm(numObservations);

idxEnd = 0;

for i = 1:numPartitions-1
idxStart = idxEnd + 1;
idxEnd = idxStart + floor(splits(i)*numObservations) - 1;

varargout{i} = idx(idxStart:idxEnd);
end

% Last partition.
varargout{end} = idx(idxEnd+1:end);

end

function mustSumToOne(v)
% Validate that value sums to one.

if sum(v,"all") ~= 1
error("Value must sum to one.")
end

end