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Train.m
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Train.m
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% Copyright 2017 Google Inc.
%
% Licensed under the Apache License, Version 2.0 (the "License");
% you may not use this file except in compliance with the License.
% You may obtain a copy of the License at
%
% https://www.apache.org/licenses/LICENSE-2.0
%
% Unless required by applicable law or agreed to in writing, software
% distributed under the License is distributed on an "AS IS" BASIS,
% WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
% See the License for the specific language governing permissions and
% limitations under the License.
function Train(project_name, additional_code)
% Given a project name, trains a model on all of the training data for that
% project, and writes the learned model (as a Matlab .mat file) to disk.
% "additional_code" is an optional string of Matlab code that is evaluated
% before doing this search, and so can be used to modify the project's default
% parameters for experimentation.
addpath(genpath('./internal/'))
params = LoadProjectParams(project_name);
if nargin < 2
additional_code = '';
end
% Evaluate any additional code that might have been passed in.
assert(ischar(additional_code));
if ~isempty(additional_code)
fprintf('Additional code: %s\n', additional_code)
eval(additional_code)
end
% If we are doing cross-validation, then set the number of folds to 1.
if params.TRAINING.CROSSVALIDATION.NUM_FOLDS > 1
params.TRAINING.CROSSVALIDATION.NUM_FOLDS = 1;
end
% Load all training data and as one cross-validation "fold".
data = PrecomputeMixedData(...
params.TRAINING.CROSSVALIDATION_DATA_FOLDER, ...
params.TRAINING.EXTRA_TRAINING_DATA_FOLDERS, ...
{}, params);
% Train the cross-validation "models".
models = TrainModel(data, params);
% extract the first and only model.
assert(length(models) == 1)
model = models{1};
% Save the trained model.
fprintf('Saving model to %s\n', params.output_model_filename);
save(params.output_model_filename, 'model');