Tag Archives: Deep Learning

Deep Learning with Julia

By: DSB

Re-posted from: https://medium.com/coffee-in-a-klein-bottle/deep-learning-with-julia-e7f15ad5080b?source=rss-8bd6ec95ab58------2

A brief tutorial on training a Neural Network with Flux.jl

Flux.jl is the most popular Deep Learning framework in Julia. It provides a very elegant way of programming Neural Networks. Unfortunately, since Julia is still not as popular as Python, there aren’t as many tutorial guides on how to use it. Also, Julia is improving very fast, so things can change a lot in a short amount of time.

I’ve been trying to learn Flux.jl for a while, and I realized that most tutorials out there are actually outdated. So this is a brief updated tutorial.

1. What we are going to build

So, the goal of this tutorial is to build a simple classification Neural Network. This will be enough for anyone who is interested in using Flux. After learning the very basics, the rest is pretty much altering Networks architectures and loss functions.

2. Generating our Dataset

Instead of importing data from somewhere, let’s do everything self-contained. Hence, we write two auxiliary functions to generate our data:

#Auxiliary functions for generating our data
function generate_real_data(n)
x1 = rand(1,n) .- 0.5
x2 = (x1 .* x1)*3 .+ randn(1,n)*0.1
return vcat(x1,x2)
end
function generate_fake_data(n)
θ = 2*π*rand(1,n)
r = rand(1,n)/3
x1 = @. r*cos(θ)
x2 = @. r*sin(θ)+0.5
return vcat(x1,x2)
end
# Creating our data
train_size = 5000
real = generate_real_data(train_size)
fake = generate_fake_data(train_size)
# Visualizing
scatter(real[1,1:500],real[2,1:500])
scatter!(fake[1,1:500],fake[2,1:500])
Visualizing the Dataset

3. Creating the Neural Network

The creation of Neural Network architectures with Flux.jl is very direct and clean (cleaner than any other Library I know). Here is how you do it:

function NeuralNetwork()
return Chain(
Dense(2, 25,relu),
Dense(25,1,x->σ.(x))
)
end

The code is very self-explanatory. The first layer is a dense layer with input 2, output 25 and relu for activation function. The second is a dense layer with input 25, output 1 and a sigmoid activation function. The Chain ties the layers together. Yeah, it’s that simple.

4. Training our Model

Next, let’s prepare our model to be trained.

# Organizing the data in batches
X = hcat(real,fake)
Y = vcat(ones(train_size),zeros(train_size))
data = Flux.Data.DataLoader(X, Y', batchsize=100,shuffle=true);
# Defining our model, optimization algorithm and loss function
m = NeuralNetwork()
opt = Descent(0.05)
loss(x, y) = sum(Flux.Losses.binarycrossentropy(m(x), y))

In the code above, we first organize our data into one single dataset. We use the DataLoader function from Flux, that helps us create the batches and shuffles our data. Then, we call our model and define the loss function and the optimization algorithm. In this example, we are using gradient descent for optimization and cross-entropy for the loss function.

Everything is ready, and we can start training the model. Here, I’ll show two way of doing it.

Training Method 1

ps = Flux.params(m)
epochs = 20
for i in 1:epochs
Flux.train!(loss, ps, data, opt)
end
println(mean(m(real)),mean(m(fake))) # Print model prediction

In this code, first we declare what parameters are going to be trained, which is done using the Flux.params() function. The reason for this is that we can choose not to train a layer in our network, which might be useful in the case of transfer learning. Since in our example we are training the whole model, we just pass all the parameters to the training function.

Other then this, there is not much to be said. The final line of code is just printing the mean prediction probability our model is giving.

Training Method 2

m    = NeuralNetwork()
function trainModel!(m,data;epochs=20)
for epoch = 1:epochs
for d in data
gs = gradient(Flux.params(m)) do
l = loss(d...)
end
Flux.update!(opt, Flux.params(m), gs)
end
end
@show mean(m(real)),mean(m(fake))
end
trainModel!(m,data;epochs=20)

This method is a bit more convoluted, because we are doing the training “manually”, instead of using the training function given by Flux. This is interesting since one has more control over the training, which can be useful for more personalized training methods. Perhaps the most confusing part of the code is this one:

gs = gradient(Flux.params(m)) do
l = loss(d...)
end
Flux.update!(opt, Flux.params(m), gs)

The function gradient receives the parameters to which it will calculate the gradient, and applies it to the loss function, that is calculated for the batch d. The splater operator (the three dots) is just a neat way of passing x and y to the loss function. Finally, the update! function is adjusting the parameters according to the gradients, which are stored in the variable gs.

5. Visualizing the Results

Finally, the model is trained, and we can visualize it’s performance again the dataset.

scatter(real[1,1:100],real[2,1:100],zcolor=m(real)')
scatter!(fake[1,1:100],fake[2,1:100],zcolor=m(fake)',legend=false)
Neural Network prediction again the training dataset

Note that our model is performing quite well, it can properly classify the points in the middle with probability close to 0, implying that it belongs to the “fake data”, while the rest has probability close to 1, meaning that it belongs to the “real data”.

6. Conclusion

That’s all for our brief introduction. Hopefully this is a first article on a series on how to do Machine Learning with Julia.

Note that this tutorial is focused on simplicity, and not on writing the most efficient code. For that learning how to improve performance, look here.

TL;DR
Here is the code with everything put together:

#Auxiliary functions for generating our data
function generate_real_data(n)
x1 = rand(1,n) .- 0.5
x2 = (x1 .* x1)*3 .+ randn(1,n)*0.1
return vcat(x1,x2)
end
function generate_fake_data(n)
θ = 2*π*rand(1,n)
r = rand(1,n)/3
x1 = @. r*cos(θ)
x2 = @. r*sin(θ)+0.5
return vcat(x1,x2)
end
# Creating our data
train_size = 5000
real = generate_real_data(train_size)
fake = generate_fake_data(train_size)
# Visualizing
scatter(real[1,1:500],real[2,1:500])
scatter!(fake[1,1:500],fake[2,1:500])
function NeuralNetwork()
return Chain(
Dense(2, 25,relu),
Dense(25,1,x->σ.(x))
)
end
# Organizing the data in batches
X = hcat(real,fake)
Y = vcat(ones(train_size),zeros(train_size))
data = Flux.Data.DataLoader(X, Y', batchsize=100,shuffle=true);
# Defining our model, optimization algorithm and loss function
m = NeuralNetwork()
opt = Descent(0.05)
loss(x, y) = sum(Flux.Losses.binarycrossentropy(m(x), y))
# Training Method 1
ps = Flux.params(m)
epochs = 20
for i in 1:epochs
Flux.train!(loss, ps, data, opt)
end
println(mean(m(real)),mean(m(fake))) # Print model prediction
# Visualizing the model predictions
scatter(real[1,1:100],real[2,1:100],zcolor=m(real)')
scatter!(fake[1,1:100],fake[2,1:100],zcolor=m(fake)',legend=false)


Deep Learning with Julia was originally published in Coffee in a Klein Bottle on Medium, where people are continuing the conversation by highlighting and responding to this story.

Deep Learning on the New Ubuntu-Based Data Science Virtual Machine for Linux

Authored by Paul Shealy, Senior Software Engineer, and Gopi Kumar, Principal Program Manager, at Microsoft.

Deep learning has received significant attention recently for its ability to create machine learning models with very high accuracy. It’s especially popular in image and speech recognition tasks, where the availability of massive datasets with rich information make it feasible to train ever-larger neural networks on powerful GPUs and achieve groundbreaking results. Although there are a variety of deep learning frameworks available, getting started with one means taking time to download and install the framework, libraries, and other tools before writing your first line of code.

Microsoft’s Data Science Virtual Machine (DSVM) is a family of popular VM images published on the Azure marketplace with a broad choice of machine learning and data science tools. Microsoft is extending it with the introduction of a brand-new offering in this family – the Data Science Virtual Machine for Linux, based on Ubuntu 16.04LTS – that also includes a comprehensive set of popular deep learning frameworks.

Deep learning frameworks in the new VM include:

  • Microsoft Cognitive Toolkit
  • Caffe and Caffe2
  • TensorFlow
  • H2O
  • MXNet
  • NVIDIA DIGITS
  • Theano
  • Torch, including PyTorch
  • Keras

The image can be deployed on VMs with GPUs or CPU-only VMs. It also includes OpenCV, matplotlib and many other libraries that you will find useful.

Run dsvm-more-info at a command prompt or visit the documentation for more information about these frameworks and how to get started.

Sample Jupyter notebooks are included for most frameworks. Start Jupyter or log in to JupyterHub to browse the samples for an easy way to explore the frameworks and get started with deep learning.

GPU Support

Training a deep neural network requires considerable computational resources, so things can be made significantly faster by running on one or more GPUs. Azure now offers NC-class VM sizes with 1-4 NVIDIA K80 GPUs for computational workloads. All deep learning frameworks on the VM are compiled with GPU support, and the NVIDIA driver, CUDA and cuDNN are included. You may also choose to run the VM on a CPU if you prefer, and that is supported without code changes. And because this is running on Azure, you can choose a smaller VM size for setup and exploration, then scale up to one or more GPUs for training.

The VM comes with nvidia-smi to monitor GPU usage during training and help optimize parameters to make full use of the GPU. It also includes NVIDIA Docker if you want to run Docker containers with GPU access.

Data Science Virtual Machine

The Data Science Virtual Machine family of VM images on Azure includes the DSVM for Windows, a CentOS-based DSVM for Linux, and an Ubuntu-based DSVM for Linux. These images come with popular data science and machine learning tools, including Microsoft R Server Developer Edition, Microsoft R Open, Anaconda Python, Julia, Jupyter notebooks, Visual Studio Code, RStudio, xgboost, and many more. A full list of tools for all editions of the DSVM is available here. The DSVM has proven popular with data scientists as it helps them focus on their tasks and skip mundane steps around tool installation and configuration.


To try deep learning on Windows with GPUs, the Deep Learning Toolkit for DSVM contains all tools from the Windows DSVM plus GPU drivers, CUDA, cuDNN, and GPU versions of CNTK, MXNet, and TensorFlow.

Get Started Today

We invite you to use the new image to explore deep learning frameworks or for your machine learning and data science projects – DSVM for Linux (Ubuntu) is available today through the Marketplace. Free Azure credits are available to help get you started.

Paul & Gopi

Build & Deploy Machine Learning Apps on Big Data Platforms with Microsoft Linux Data Science Virtual Machine

This post is authored by Gopi Kumar, Principal Program Manager in the Data Group at Microsoft.

This post covers our latest additions to the Microsoft Linux Data Science Virtual Machine (DSVM), a custom VM image on Azure, purpose-built for data science, deep learning and analytics. Offered in both Microsoft Windows and Linux editions, DSVM includes a rich collection of tools, seen in the picture below, and makes you more productive when it comes to building and deploying advanced machine learning and analytics apps.

The central theme of our latest Linux DSVM release is to enable the development and testing of ML apps for deployment to distributed scalable platforms such as Spark, Hadoop and Microsoft R Server, for operating on data at a very large scale. In addition, with this release, DSVM also offers Julia Computing’s JuliaPro on both Linux and Windows editions.


Here’s more on the new DSVM components you can use to build and deploy intelligent apps to big data platforms:

Microsoft R Server 9.0

Version 9.0 of Microsoft R Server (MRS) is a major update to enterprise-scale R from Microsoft, supporting parallel and distributed computation. MRS 9.0 supports analytics execution in the Spark 2.0 context. There’s a new architecture and simplified interface for deploying R models and functions as web services via a new library called mrsdeploy, which makes it easy to consume models from other apps using the open Swagger framework.

Local Spark Standalone Instance

Spark is one of the premier platforms for highly scalable big data analytics and machine learning. Spark 2.0 launched in mid-2016 and brings several improvements such as the revised machine learning library (MLLib), scaling and performance optimization, better ANSI SQL compliance and unified APIs. The Linux DSVM now offers a standalone Spark instance (based on the Apache Spark distribution), PySpark kernel in Jupyter to help you build and test applications on the DSVM and deploy them on large scale clusters like Azure HDInsight Spark or your own on-premises Spark cluster. You can develop your code using either Jupyter notebook or with the included community edition of the Pycharm IDE for Python or RStudio for R.

Single Node Local Hadoop (HDFS and YARN) Instance

To make it easier to develop Hadoop programs and/or use HDFS storage locally for development and testing, a single node Hadoop installation is built into the VM. Also, if you are developing on the Microsoft R Server for execution in Hadoop or Spark remote contexts, you can first test things locally on the Linux DSVM and then deploy the code to a remote scaled out Hadoop or Spark cluster or to Microsoft R Server. These DSVM additions are designed to help you iterate rapidly when developing and testing your apps, before they get deployed into large-scale production big data clusters.

The DSVM is also a great environment for self-learning and running training classes on big data technologies. We provide sample code and notebooks to help you get started quickly on the different data science tools and technologies offered.

DSVM Resources

New to DSVM? Here are resources to get you started:

Linux Edition

Windows Edition

The goal of DSVM is to make data scientists and developers highly productive in their work and provide a broad array of popular tools. We hope you find it useful to have these new big data tools pre-installed with the DSVM.

We always appreciate feedback, so please send in your comments below or share your thoughts with us at the DSVM community forum.

Gopi