Matlab Shallow Network Mini Batch Training

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Lynn Marciano
Lynn Marciano am 12 Jul. 2018
Kommentiert: Jingjun Liu am 23 Nov. 2019
Hello, I have been training my data through the patternnet provided by matlab and really like it's functionality and I've been seeing great results using it. I have a problem however, I want to start investigating all the functions that can be adjusted under the hood of the default patternnet, but I have such a large data size, that even though I'm connected to a cluster, my model takes about 10 hours at minimum to train. I know there are capabilities with training on the GPU but after several attempts, it says I have no memory for training. I know having a minibatch might be able to compensate for this, but I'm not entirely sure if I have to create a datastore for the minibatch to be effective. If anyone has input a minibatch into the shallow network inputs and trained on GPU, please give me some insight on the right direction to go with this. Thanks in advance.
  4 Kommentare
sayak nag
sayak nag am 15 Mär. 2019
Please help I am following your advice but it seems that despite whatever I specify as my mini-batch the network is training in batch mode i.e. no of iterations per epoch is 1.
Jingjun Liu
Jingjun Liu am 23 Nov. 2019
The mini-batch does not work for sequenceInputLayer. That's what I found.

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Greg Heath
Greg Heath am 20 Dez. 2018
If you have a huge dataset, it is often rewarding to just randomly divide it into m subsets. Then design with 1 and test on m-1. If the subsets are sufficiently large. it is not necessary to use m-fold cross-validation. However, you may want to design more than one net.
Hope this helps.
Thank you for formally accepting my answer
Greg

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