Cannot utilize fully all GPUs during network training

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It’s the performance and use of the resources installed on the Computer (Amazon Cloud EC2 instance in our case).
I am using a p3.8xlarge instance in EC2 on awamzon web server – basically it means I am using 4 GPUs V100,
I am training a neural network.
using:
mdl(i).Net = trainNetwork(trainData(:, :, :, 1: itStep: end), trainLabels(1: itStep: end, :), layers, options);
in options I define 'multi-gpu'
I also defined 'parallel' and tried to play with number of workers but all I see is just more processes waiting in the GPU queue on nvidia-smi.
For some reason I see that all GPU are working (see GPU.png) but for limited amount of time (very high usage for 3 seconds and then drops to 0% for 10 seconds at least.
I looked at the htop information(htop.jpg), I see that not all threads of the CPU are in use so that is the bottleneck (I think?)
I have a xeon processor on this instance with 32 cores (16 physical, 32 logical)
When I try to utilize all threads through local profile (profile local pool.png) it seems like it still doesn’t respond .
I get more workers because of it (CPU ?), but the GPUs still doesn't seem to improve
Tried to increase batch size - but at some point the GPU is out of memory, so that's not the problem.
How do i utilize all cores of the CPU to transfer data to the GPUs?
I read somewhere that you can also load the data to the pool itself? will that help?
I use the https://ngc.nvidia.com/catalog/containers/partners:matlab/tagsmatlab container for matlab:r2019a
I scanned these already:
Would appreciate your help.
Tomer
  9 Commenti
Tomer Nahshon
Tomer Nahshon il 29 Gen 2020
Modificato: Tomer Nahshon il 29 Gen 2020
Thanks Joss,
So I went through the documentation and started building the datastore.
But how do I define Labels (targets) in this datastore?
Or manually combine them so they will act the same as the combined DS but with the partition abilities?
Do you have any pointers for that?
Will this work?
Thanks,
Thanks,
Tomer
Joss Knight
Joss Knight il 29 Gen 2020
Modificato: Joss Knight il 2 Feb 2020
That will work or just implement an ordinary datastore with the Partitionable mixin, which is the currently advised approach. All you have to do is implement read() to read the data and the targets that go with it, and return a cell array containing both.
"For networks with a single input, the table or cell array returned by the datastore has two columns that specify the network inputs and expected responses, respectively.
For networks with multiple inputs, the datastore must be a combined or transformed datastore that returns a cell array with (numInputs+1) columns containing the predictors and the responses, where numInputs is the number of network inputs and numResponses is the number of responses. For i less than or equal to numInputs, the ith element of the cell array corresponds to the input layers.InputNames(i), where layers is the layer graph defining the network architecture. The last column of the cell array corresponds to the responses."

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Tomer Nahshon
Tomer Nahshon il 2 Feb 2020
Modificato: Tomer Nahshon il 2 Feb 2020
Ok, problem solved.
as Suggested by Joss and Mathworks, MathWorks Support created a custom Datastore inheriting the properties involved in this procedure,
The Labels are a numeric vector as an input to the DS function but could but could be loaded from a .mat file as well.
for Training, apprently I needed to use the 'parallel' execution environment and define DispatchInBackground training option as 'true' (probably since I use AWS cloud service).
classdef matFilesDatastore < matlab.io.Datastore & ...
matlab.io.datastore.Shuffleable & ...
matlab.io.datastore.Partitionable
properties
Datastore
Labels
ReadSize
end
properties(SetAccess = protected)
NumObservations
end
properties(Access = private)
CurrentFileIndex
end
methods
function ds = matFilesDatastore(folder, labels)
% ds = matFilesDatastore(folder, labels) creates a datastore
% from the data in folder and labels
% Create file datastore
fds = fileDatastore(folder, ...
'ReadFcn',@readData, ...
'IncludeSubfolders',true);
ds.Datastore = fds;
numObservations = numel(fds.Files);
% Labels.
ds.Labels = labels;
% Initialize datastore properties.
ds.ReadSize = 1;
ds.NumObservations = numObservations;
ds.CurrentFileIndex = 1;
end
function tf = hasdata(ds)
% tf = hasdata(ds) returns true if more data is available.
tf = ds.CurrentFileIndex + ds.ReadSize - 1 ...
<= ds.NumObservations;
end
function [data,info] = read(ds)
% [data,info] = read(ds) read one mini-batch of data.
miniBatchSize = ds.ReadSize;
info = struct;
for i = 1:miniBatchSize
predictors{i,1} = read(ds.Datastore);
responses{i,1} = ds.Labels(ds.CurrentFileIndex);
ds.CurrentFileIndex = ds.CurrentFileIndex + 1;
end
data = table(predictors,responses);
end
function reset(ds)
% reset(ds) resets the datastore to the start of the data.
reset(ds.Datastore);
ds.CurrentFileIndex = 1;
end
function dsNew = shuffle(ds)
% dsNew = shuffle(ds) shuffles the files and the corresponding
% labels in the datastore.
% Create copy of datastore.
dsNew = copy(ds);
dsNew.Datastore = copy(ds.Datastore);
fds = dsNew.Datastore;
% Shuffle files and corresponding labels.
numObservations = dsNew.NumObservations;
idx = randperm(numObservations);
fds.Files = fds.Files(idx);
dsNew.Labels = dsNew.Labels(idx);
end
function subds = partition(ds, numPartitions, idx)
subds = copy(ds);
subds.Datastore = partition(ds.Datastore, numPartitions, idx);
subds.NumObservations = numel(subds.Datastore.Files);
indices = pigeonHole(idx, numPartitions, ds.NumObservations);
subds.Labels = ds.Labels(indices);
reset(subds);
end
end
methods(Access = protected)
function n = maxpartitions(ds)
n = ds.NumObservations;
end
end
methods (Hidden = true)
function frac = progress(ds)
% frac = progress(ds) returns the percentage of observations
% read in the datastore.
frac = (ds.CurrentFileIndex - 1) / ds.NumObservations;
end
end
end
function data = readData(filename)
% data = readData(filename) reads the data X from the MAT file
% filename
S = load(filename);
data = S.image;
% label = S.label;
end
function observationIndices = pigeonHole(partitionIndex, numPartitions, numObservations)
%pigeonHole Helper function that maps partition index and numpartitions
% to the corresponding observation indices.
observationIndices = floor((0:numObservations - 1) * numPartitions / numObservations) + 1;
observationIndices = find(observationIndices == partitionIndex);
% Convert to a vector if observationIndices is empty.
if isempty(observationIndices)
observationIndices = double.empty(0, 1);
end
end
  3 Commenti
Tomer Nahshon
Tomer Nahshon il 12 Feb 2020
Thanks Joss,
Just one last question ,
I still notice that I don't use all my available threads although it works faster, I guess it's due to the fact I am using a custom 'ReadFcn' and can't avoid it?
Correct?
Thanks,
Tomer
Joss Knight
Joss Knight il 17 Feb 2020
It could be a number of reasons. With a custom ReadFcn there's no prefetching, so that will limit CPU core usage to one per MATLAB. But also you have 4 GPUs and if they become the compute bottleneck, your CPU cores will be waiting regardless.
You ought to be able to get all the CPU cores working with the DispatchInBackground training option. But that would preclude you using all the GPUs as well. Ideally you would use both DispatchInBackground and multi-gpu training, but I don't think that will work with your custom datastore. To get that going you're going to need to use the MiniBatchable mixin and PartitionableByIndex - because this feature needs to be able to divide your data by index.

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