Warning: Variable 'rxTrainFrames' was not saved. For variables larger than 2GB use MAT-file version 7.3 or later

8 visualizaciones (últimos 30 días)
How do i keep the rxTrainFrame into workspace? my code is
dataDirectory = 'E:\SNR-Dataset\Data-18-time'
frameDS = signalDatastore(dataDirectory,'SignalVariableNames',["frame","label"],'IncludeSubfolders',true,'FileExtensions','.mat');
frameDSTrans = transform(frameDS,@helperModClassIQAsPages);
splitPercentages = [percentTrainingSamples,percentValidationSamples,percentTestSamples];
[trainDSTrans,validDSTrans,testDSTrans] = helperModClassSplitData(frameDSTrans,splitPercentages);
% Gather the training and validation frames into the memory
trainFramesTall = tall(transform(trainDSTrans, @helperModClassReadFrame));
rxTrainFrames = gather(trainFramesTall);
rxTrainFrames = cat(4, rxTrainFrames{:});
save('rxTrainFrames.mat', 'rxTrainFrames', '-v7.3')
validFramesTall = tall(transform(validDSTrans, @helperModClassReadFrame));
rxValidFrames = gather(validFramesTall);
rxValidFrames = cat(4, rxValidFrames{:});
% Gather the training and validation labels into the memory
trainLabelsTall = tall(transform(trainDSTrans, @helperModClassReadLabel));
rxTrainLabels = gather(trainLabelsTall);
rxTrainLabels = removecats(rxTrainLabels);
validLabelsTall = tall(transform(validDSTrans, @helperModClassReadLabel));
rxValidLabels = gather(validLabelsTall);
rxValidLabels = removecats(rxValidLabels);
maxEpochs = 100;
miniBatchSize = 128;
options = helperModClassTrainingOptions(maxEpochs,miniBatchSize,...
numel(rxTrainLabels),rxValidFrames,rxValidLabels);
trainedNet5 = trainNetwork(rxTrainFrames,rxTrainLabels,trainedNet4 ,options);
save trainedNet5

Respuestas (1)

yanqi liu
yanqi liu el 17 de En. de 2022
yes,sir,may be
save trainedNet5.mat trainedNet5 rxTrainFrames
then use
load trainedNet5.mat
to get it
  2 comentarios
john karli
john karli el 17 de En. de 2022
when i load load trainedNet5.mat then rxTrainFrames is not showingi n workspace and i got the error that rxTrainFrames is not define.
yanqi liu
yanqi liu el 17 de En. de 2022
yes,sir,may be use
save trainedNet5.mat trainedNet5 rxTrainFrames
to get file “trainedNet5.mat”
then,use
clear all;
load trainedNet5.mat
rxTrainFrames
check the rxTrainFrames

Iniciar sesión para comentar.

Categorías

Más información sobre Deep Learning Toolbox en Help Center y File Exchange.

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by