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Deep Learning with PyTorch

You're reading from   Deep Learning with PyTorch A practical approach to building neural network models using PyTorch

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Product type Paperback
Published in Feb 2018
Publisher Packt
ISBN-13 9781788624336
Length 262 pages
Edition 1st Edition
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Author (1):
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Vishnu Subramanian Vishnu Subramanian
Author Profile Icon Vishnu Subramanian
Vishnu Subramanian
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Table of Contents (11) Chapters Close

Preface 1. Getting Started with Deep Learning Using PyTorch 2. Building Blocks of Neural Networks FREE CHAPTER 3. Diving Deep into Neural Networks 4. Fundamentals of Machine Learning 5. Deep Learning for Computer Vision 6. Deep Learning with Sequence Data and Text 7. Generative Networks 8. Modern Network Architectures 9. What Next? 10. Other Books You May Enjoy

Machine learning

Machine learning (ML) is a sub-field of AI and has become popular in the last 10 years and, at times, the two are used interchangeably. AI has a lot of other sub-fields aside from machine learning. ML systems are built by showing lots of examples, unlike symbolic AI, where we hard code rules to build the system. At a high level, machine learning systems look at tons of data and come up with rules to predict outcomes for unseen data:

Machine learning versus traditional programming

Most ML algorithms perform well on structured data, such as sales predictions, recommendation systems, and marketing personalization. An important factor for any ML algorithm is feature engineering and data scientists need to spend a lot of time to get the features right for ML algorithms to perform. In certain domains, such as computer vision and natural language processing (NLP), feature engineering is challenging as they suffer from high dimensionality.

Until recently, problems like this were challenging for organizations to solve using typical machine-learning techniques, such as linear regression, random forest, and so on, for reasons such as feature engineering and high dimensionality. Consider an image of size 224 x 224 x 3 (height x width x channels), where 3 in the image size represents values of red, green, and blue color channels in a color image. To store this image in computer memory, our matrix will contain 150,528 dimensions for a single image. Assume you want to build a classifier on top of 1,000 images of size 224 x 224 x 3, the dimensions will become 1,000 times 150,528. A special branch of machine learning called deep learning allows you to handle these problems using modern techniques and hardware.

Examples of machine learning in real life

The following are some cool products that are powered by machine learning:

  • Example 1: Google Photos uses a specific form of machine learning called deep learning for grouping photos
  • Example 2: Recommendation systems, which are a family of ML algorithms, are used for recommending movies, music, and products by major companies such as Netflix, Amazon, and iTunes
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