nndata2gpu
(To be removed) Format neural data for efficient GPU training or simulation
nndata2gpu 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
nndata2gpu(x)
[Y,Q,N,TS] = nndata2gpu(X)
nndata2gpu(X,PRECISION)
Description
nndata2gpu requires Parallel Computing Toolbox™.
nndata2gpu(x) takes an
N-by-Q matrix X of
Q
N-element column vectors, and returns it in a form for neural network
training and simulation on the current GPU device.
The N-by-Q matrix becomes a
QQ-by-N gpuArray where QQ
is Q rounded up to the next multiple of 32. The extra rows
(Q+1):QQ are filled with NaN values. The
gpuArray has the same precision ('single' or
'double') as X.
[Y,Q,N,TS] = nndata2gpu(X) can also take an
M-by-TS cell array of M
signals over TS time steps. Each element of
X{i,ts} should be an
Ni-by-Q matrix of Q
Ni-element vectors, representing the ith signal
vector at time step ts, across all Q time series.
In this case, the gpuArray Y returned is
QQ-by-(sum(Ni)*TS). Dimensions
Ni, Q, and TS are also
returned so they can be used with gpu2nndata to perform the reverse
formatting.
nndata2gpu(X,PRECISION) specifies the default precision of the
gpuArray, which can be 'double' or 'single'.
Examples
Copy a matrix to the GPU and back:
x = rand(5,6) [y,q] = nndata2gpu(x) x2 = gpu2nndata(y,q)
Copy 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