gpu2nndata
(To be removed) Reformat neural data back from GPU
gpu2nndata will be removed in a future release. For more information,
see Transition Legacy Neural Network Code to dlnetwork Workflows.
For advice on updating your code, see Version History.
Syntax
X = gpu2nndata(Y,Q)
X = gpu2nndata(Y)
X = gpu2nndata(Y,Q,N,TS)
Description
Training and simulation of neural networks require that matrices be transposed. But
they do not require (although they are more efficient with) padding of column length so
that each column is memory aligned. This function copies data back from the current GPU
and reverses this transform. It can be used on data formatted with
nndata2gpu or on the results of network simulation.
X = gpu2nndata(Y,Q) copies the
QQ-by-N gpuArray Y into
RAM, takes the first Q rows and transposes the result to get an
N-by-Q matrix representing
Q
N-element vectors.
X = gpu2nndata(Y) calculates Q as the index of
the last row in Y that is not all NaN values
(those rows were added to pad Y for efficient GPU computation by
nndata2gpu). Y is then transformed as
before.
X = gpu2nndata(Y,Q,N,TS) takes a
QQ-by-(N*TS) gpuArray where
N is a vector of signal sizes, Q is the number
of samples (less than or equal to the number of rows after alignment padding
QQ), and TS is the number of time steps.
The gpuArray Y is copied back into RAM, the first
Q rows are taken, and then it is partitioned and transposed into
an M-by-TS cell array, where M
is the number of elements in N. Each Y{i,ts} is an
N(i)-by-Q matrix.
Examples
Copy a matrix to the GPU and back:
x = rand(5,6) [y,q] = nndata2gpu(x) x2 = gpu2nndata(y,q)
Copy from the GPU a neural network cell array data representing four time series, each consisting of five time steps of 2-element and 3-element signals.
x = nndata([2;3],4,5) [y,q,n,ts] = nndata2gpu(x) x2 = gpu2nndata(y,q,n,ts)
Version History
Introduced in R2012bSee Also
Time Series
Modeler | fitrnet (Statistics and Machine Learning Toolbox) | fitcnet (Statistics and Machine Learning Toolbox) | trainnet | trainingOptions | dlnetwork