-
-
Notifications
You must be signed in to change notification settings - Fork 333
New issue
Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.
By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.
Already on GitHub? Sign in to your account
[WIP] ResNet-18 #221
Open
OTapio
wants to merge
1
commit into
FluxML:master
Choose a base branch
from
OTapio:master
base: master
Could not load branches
Branch not found: {{ refName }}
Loading
Could not load tags
Nothing to show
Loading
Are you sure you want to change the base?
Some commits from the old base branch may be removed from the timeline,
and old review comments may become outdated.
Open
[WIP] ResNet-18 #221
Changes from all commits
Commits
File filter
Filter by extension
Conversations
Failed to load comments.
Loading
Jump to
Jump to file
Failed to load files.
Loading
Diff view
Diff view
There are no files selected for viewing
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
Original file line number | Diff line number | Diff line change |
---|---|---|
@@ -0,0 +1,163 @@ | ||
#Should work with | ||
#Julia 1.4 | ||
#Atom v0.12.10 | ||
#CUDAapi v4.0.0 | ||
#CUDAdrv v6.2.2 | ||
#CUDAnative v3.0.2 | ||
#CuArrays v2.0.1 #master (https://github.com/JuliaGPU/CuArrays.jl) | ||
#DataFrames v0.20.2 | ||
#Flux v0.10.3 #master (https://github.com/FluxML/Flux.jl) | ||
#ImageMagick v1.1.3 | ||
#Images v0.22.0 | ||
#Juno v0.8.1 | ||
#MLDatasets v0.4.1 | ||
#Metalhead v0.5.0 | ||
#NNlib v0.6.6 | ||
#RDatasets v0.6.1 | ||
#StatsBase v0.32.2 | ||
#Zygote v0.4.12 | ||
# | ||
# | ||
# | ||
#Still has issues with speed and memory consumption. | ||
#ConvTranspose slows the neural network down significantly. | ||
#A more optimal way to feed images to the neural network probably can be found. | ||
#resizing images in preprocessing should be faster but might lead to greater | ||
#memory consumption. Resizing in preprocessing could be done with ConvTranspose, | ||
#imresize, or by some other tool. | ||
|
||
|
||
ENV["JULIA_CUDA_VERBOSE"] = true | ||
ENV["JULIA_CUDA_MEMORY_POOL"] = "split" | ||
ENV["JULIA_CUDA_MEMORY_LIMIT"] = 8000_000_000 | ||
|
||
using Random | ||
using Statistics | ||
using CuArrays | ||
using Zygote | ||
using Flux, Flux.Optimise | ||
using Metalhead, Images | ||
using Metalhead: trainimgs | ||
using Images.ImageCore | ||
using Flux: onehotbatch, onecold, logitcrossentropy, Momentum, @epochs | ||
using Base.Iterators: partition | ||
using Dates | ||
|
||
CuArrays.allowscalar(false) | ||
|
||
batch_size = 1 | ||
|
||
getarray(X) = Float32.(permutedims(channelview(X), (2, 3, 1))) | ||
|
||
function make_minibatch(imgs,labels,batch_size) | ||
data_set = [(cat(imgs[i]..., dims = 4), labels[:,i]) | ||
for i in partition(1:length(imgs), batch_size)] | ||
return data_set | ||
end | ||
|
||
X = trainimgs(CIFAR10) | ||
|
||
train_idxs = 1:49000 | ||
|
||
train_imgs = [getarray(X[i].img) for i in train_idxs] | ||
train_labels = Float32.(onehotbatch([X[i].ground_truth.class for i in train_idxs],1:10)) | ||
train_set = make_minibatch(train_imgs,train_labels,batch_size) | ||
train_data = train_set |> | ||
x -> map(y->gpu.(y),x) | ||
|
||
verify_idxs = 49001:50000 | ||
verify_imgs = cat([getarray(X[i].img) for i in verify_idxs]..., dims = 4) | ||
verify_labels = Float32.(onehotbatch([X[i].ground_truth.class for i in verify_idxs],1:10)) | ||
verify_set = [(verify_imgs,verify_labels)] | ||
verify_data = verify_set |> | ||
x -> map(y->gpu.(y),x) | ||
|
||
tX = valimgs(CIFAR10) | ||
test_idxs = 1:10000 | ||
test_imgs = [getarray(tX[i].img) for i in test_idxs] | ||
test_labels = Float32.(onehotbatch([tX[i].ground_truth.class for i in test_idxs], 1:10)) | ||
test_set = make_minibatch(test_imgs,test_labels,batch_size) | ||
test_data = test_set |> | ||
x -> map(y->gpu.(y),x) | ||
|
||
|
||
|
||
identity_layer(n) = Chain(Conv((3,3), n=>n, pad = (1,1), stride = (1,1)), | ||
BatchNorm(n,relu), | ||
Conv((3,3), n=>n, pad = (1,1), stride = (1,1)), | ||
BatchNorm(n,relu)) | ||
|
||
convolution_layer(n) = Chain(Conv((3,3), n=> 2*n, pad = (1,1), stride = (2,2)), | ||
BatchNorm(2*n,relu), | ||
Conv((3,3), 2*n=>2*n, pad = (1,1), stride = (1,1)), | ||
BatchNorm(2*n,relu)) | ||
|
||
simple_convolution(n) = Chain(Conv((1,1), n=>n, pad = (1,1), stride = (2,2)), | ||
BatchNorm(n,relu)) | ||
|
||
|
||
m_filter(n) = Chain( | ||
Conv((3,3), n=>2*n, pad = (1,1), stride = (2,2)), | ||
BatchNorm(2*n,relu), | ||
) |> gpu | ||
|
||
struct Combinator | ||
conv::Chain | ||
end |> gpu | ||
Combinator(n) = Combinator(m_filter(n))# |> gpu | ||
|
||
|
||
function (op::Combinator)(x, y) | ||
z = op.conv(y) | ||
return x + z | ||
end | ||
|
||
|
||
n = 7 | ||
|
||
m = Chain( | ||
ConvTranspose((n, n), 3 => 3, stride = n), | ||
Conv((7,7), 3=>64, pad = (3,3), stride = (2,2)), | ||
BatchNorm(64,relu), | ||
MaxPool((3,3), pad = (1,1), stride = (2,2)), | ||
SkipConnection(identity_layer(64), (variable_1, variable_2) -> variable_1 + variable_2), | ||
SkipConnection(identity_layer(64), (variable_1, variable_2) -> variable_1 + variable_2), | ||
SkipConnection(convolution_layer(64), Combinator(64)), | ||
SkipConnection(identity_layer(128), (variable_1, variable_2) -> variable_1 + variable_2), | ||
SkipConnection(convolution_layer(128), Combinator(128)), | ||
SkipConnection(identity_layer(256), (variable_1, variable_2) -> variable_1 + variable_2), | ||
SkipConnection(convolution_layer(256), Combinator(256)), | ||
SkipConnection(identity_layer(512), (variable_1, variable_2) -> variable_1 + variable_2), | ||
MeanPool((7,7)), | ||
x -> reshape(x, :, size(x,4)), | ||
Dense(512*1, 10), | ||
softmax, | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. you should remove the softmax here since you are using |
||
) |> gpu | ||
|
||
|
||
|
||
function accuracy(data_set) | ||
batch_size = size(data_set[1][1])[end] | ||
l = length(data_set)*batch_size | ||
s = 0f0 | ||
for (x,y) in data_set | ||
s += sum((onecold(m(x|>gpu) |> cpu) .== onecold(y|>cpu))) | ||
end | ||
return s/l | ||
end | ||
|
||
|
||
loss(x, y) = sum(logitcrossentropy(m(x), y)) | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. If I'm not wrong, |
||
opt = Momentum(0.01) | ||
|
||
number_of_epochs = 1 | ||
|
||
@epochs number_of_epochs train!(loss, params(m), train_data, opt, cb = Flux.throttle(() -> println("training... $(Dates.Time(Dates.now()))") , 10)) | ||
|
||
|
||
verify_acc = accuracy(verify_data) | ||
@info "Verify accuracy : $(verify_acc)" | ||
|
||
|
||
test_acc = accuracy(test_data) | ||
@info "Test accuracy : $(test_acc)" |
Add this suggestion to a batch that can be applied as a single commit.
This suggestion is invalid because no changes were made to the code.
Suggestions cannot be applied while the pull request is closed.
Suggestions cannot be applied while viewing a subset of changes.
Only one suggestion per line can be applied in a batch.
Add this suggestion to a batch that can be applied as a single commit.
Applying suggestions on deleted lines is not supported.
You must change the existing code in this line in order to create a valid suggestion.
Outdated suggestions cannot be applied.
This suggestion has been applied or marked resolved.
Suggestions cannot be applied from pending reviews.
Suggestions cannot be applied on multi-line comments.
Suggestions cannot be applied while the pull request is queued to merge.
Suggestion cannot be applied right now. Please check back later.
There was a problem hiding this comment.
Choose a reason for hiding this comment
The reason will be displayed to describe this comment to others. Learn more.
Don't these anonymous functions have names?