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Deep Learning with Microsoft Cognitive Toolkit Quick Start Guide
Deep Learning with Microsoft Cognitive Toolkit Quick Start Guide

Deep Learning with Microsoft Cognitive Toolkit Quick Start Guide: A practical guide to building neural networks using Microsoft's open source deep learning framework

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Deep Learning with Microsoft Cognitive Toolkit Quick Start Guide

Building Neural Networks with CNTK

In the previous chapter, we talked about what deep learning is, and how neural networks work on a conceptual level. Finally, we talked about CNTK, and how to get it installed on your machine. In this chapter, we will build our first neural network with CNTK and train it.

We will look at building a neural network using the different functions and classes from the CNTK library. We will do this with a basic classification problem.

Once we have a neural network for our classification problem, we will train it with sample data obtained from an open dataset. After our neural network is trained, we will look at how to use it to make predictions.

At the end of this chapter, we will spend some time talking about ways to improve your model once you've trained it.

In this chapter, we will cover the following topics:

  • Basic neural network concepts...

Technical requirements

In this chapter, we will work on a sample model, built using Python in a Jupyter notebook. Jupyter is an open source technology that allows you to create interactive web pages that contain sections of Python code, Markdown, and HTML. It makes it much easier to document your code and assumptions you made while building your deep learning model.

If you've installed Anaconda using the steps defined in Chapter 1, Getting Started with CNTK, you already have Jupyter installed on your machine. Should you not have Anaconda yet, you can download it from: https://anacondacloud.com/download.

You can get the sample code for this chapter from: https://github.com/PacktPublishing/Deep-Learning-with-Microsoft-Cognitive-Toolkit-Quick-Start-Guide/tree/master/ch2. To run the sample code, run the following commands inside a Terminal in the directory where you downloaded...

Basic neural network concepts in CNTK

In the previous chapter, we looked at the basic concepts of a neural network. Let's map the concepts we've learned to components in the CNTK library, and discover how you can use these concepts to build your own model.

Building neural networks using layer functions

Neural networks are made using several layers of neurons. In CNTK, we can model the layers of a neural network using layer functions defined in the layers module. A layer function in CNTK looks like a regular function. For example, you can create the most basic layer type, Dense, with one line of code:

from cntk.layers import Dense
from cntk import input_variable

features = input_variable(100)
layer = Dense(50)(features...

Building your first neural network

Now that we've learned what concepts CNTK offers to build a neural network, we can start to apply these concepts to a real machine learning problem. In this section, we'll explore how to use a neural network to classify species of iris flowers.

This is not a typical task where you want to use a neural network. But, as you will soon discover, the dataset is simple enough to get a good grasp of the process of building a deep learning model. Yet it contains enough data to ensure that the model works reasonably well.

The iris dataset describes the physical properties of different varieties of iris flowers:

  • Sepal length in cm
  • Sepal width in cm
  • Petal length in cm
  • Petal width in cm
  • Class (iris setosa, iris versicolor, iris virginica)
The code for this chapter includes the iris dataset, on which you need to train the deep learning model...

Training the neural network

Now that we have all the components for the deep learning defined, let's train it. You can train a model in CNTK using a combination of a learner and trainer. We're going to need to define those and then feed data through the trainer to train the model. Let's see how that works.

Choosing a learner and setting up training

There are several learners to choose from. For our first model, we are going to use the stochastic gradient descent learner. Let's configure the learner and trainer to train the neural network:

from cntk.learners import sgd
from cntk.train.trainer import Trainer

learner = sgd(z.parameters, 0.01)

trainer = Trainer(z, (loss, error_rate), [learner])

To configure...

Making predictions with a neural network

One of the most satisfying things after training a deep learning model is to actually use it in an application. For now, we'll limit ourselves to using the model with a sample that we randomly pick from our test set. But, later on, in Chapter 7, Deploying Models to Production, we'll look at how to save the model to disk and use it in C# or .NET to build applications with it.

Let's write the code to make a prediction with the neural network that we trained:

sample_index = np.random.choice(X_test.shape[0])
sample = X_test[sample_index]

inverted_mapping = {
1: 'Iris-setosa',
2: 'Iris-versicolor',
3: 'Iris-virginica'
}

prediction = z(sample)
predicted_label = inverted_mapping[np.argmax(prediction)]

print(predicted_label)

Follow the given steps:

  1. First, pick a random item from the test set using...

Improving the model

You will quickly learn that building and training neural networks takes more than one attempt. Usually, the first version of your model will not work as well as you hope. It requires quite a bit of experimentation to come up with a great model.

A good neural network starts with a great dataset. In nearly all cases, better performance is achieved by using a proper dataset. Many data scientists will tell you that they spend about 80% of their time working on a good dataset. As with all computer software, if you put garbage in, you will get garbage out.

Even with a good dataset, you still need to spend quite some time to build and train different models before you get the performance you're after. So, let's see what you can do to improve your model after you've built it for the first time.

After you've trained the model for the first time,...

Summary

In this chapter, we've built our first neural network and trained it to recognize iris flowers. While this sample is really basic, it shows how to use CNTK to build and train neural networks.

We've seen how to use the layer library in CNTK to our advantage to quickly define the structure for our neural network. In this chapter, we've talked about a few basic building blocks, such as the Dense layer and the Sequential layer, to chain several other layers together. In the coming chapters, we will learn other layer functions to build other types of neural networks such as convolutional networks.

In this chapter, we've also discussed how to use learner and trainer to build a basic algorithm to train our neural network. We've used the train_minibatch method, together with a basic loop, to construct our own training process. This is a pretty simple...

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Key benefits

  • Understand the fundamentals of Microsoft Cognitive Toolkit and set up the development environment
  • Train different types of neural networks using Cognitive Toolkit and deploy it to production
  • Evaluate the performance of your models and improve your deep learning skills

Description

Cognitive Toolkit is a very popular and recently open sourced deep learning toolkit by Microsoft. Cognitive Toolkit is used to train fast and effective deep learning models. This book will be a quick introduction to using Cognitive Toolkit and will teach you how to train and validate different types of neural networks, such as convolutional and recurrent neural networks. This book will help you understand the basics of deep learning. You will learn how to use Microsoft Cognitive Toolkit to build deep learning models and discover what makes this framework unique so that you know when to use it. This book will be a quick, no-nonsense introduction to the library and will teach you how to train different types of neural networks, such as convolutional neural networks, recurrent neural networks, autoencoders, and more, using Cognitive Toolkit. Then we will look at two scenarios in which deep learning can be used to enhance human capabilities. The book will also demonstrate how to evaluate your models' performance to ensure it trains and runs smoothly and gives you the most accurate results. Finally, you will get a short overview of how Cognitive Toolkit fits in to a DevOps environment

Who is this book for?

Data Scientists, Machine learning developers, AI developers who wish to train and deploy effective deep learning models using Microsoft CNTK will find this book to be useful. Readers need to have experience in Python or similar object-oriented language like C# or Java.

What you will learn

  • Set up your deep learning environment for the Cognitive Toolkit on Windows and Linux
  • Pre-process and feed your data into neural networks
  • Use neural networks to make effcient predictions and recommendations
  • Train and deploy effcient neural networks such as CNN and RNN
  • Detect problems in your neural network using TensorBoard
  • Integrate Cognitive Toolkit with Azure ML Services for effective deep learning

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Publication date : Mar 28, 2019
Length: 208 pages
Edition : 1st
Language : English
ISBN-13 : 9781789802993
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Publication date : Mar 28, 2019
Length: 208 pages
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Language : English
ISBN-13 : 9781789802993
Vendor :
Microsoft
Category :
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Concepts :

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Table of Contents

8 Chapters
Getting Started with CNTK Chevron down icon Chevron up icon
Building Neural Networks with CNTK Chevron down icon Chevron up icon
Getting Data into Your Neural Network Chevron down icon Chevron up icon
Validating Model Performance Chevron down icon Chevron up icon
Working with Images Chevron down icon Chevron up icon
Working with Time Series Data Chevron down icon Chevron up icon
Deploying Models to Production Chevron down icon Chevron up icon
Other Books You May Enjoy Chevron down icon Chevron up icon
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