Book Image

Hands-On One-shot Learning with Python

By : Shruti Jadon, Ankush Garg
Book Image

Hands-On One-shot Learning with Python

By: Shruti Jadon, Ankush Garg

Overview of this book

One-shot learning has been an active field of research for scientists trying to develop a cognitive machine that mimics human learning. With this book, you'll explore key approaches to one-shot learning, such as metrics-based, model-based, and optimization-based techniques, all with the help of practical examples. Hands-On One-shot Learning with Python will guide you through the exploration and design of deep learning models that can obtain information about an object from one or just a few training samples. The book begins with an overview of deep learning and one-shot learning and then introduces you to the different methods you can use to achieve it, such as deep learning architectures and probabilistic models. Once you've got to grips with the core principles, you'll explore real-world examples and implementations of one-shot learning using PyTorch 1.x on datasets such as Omniglot and MiniImageNet. Finally, you'll explore generative modeling-based methods and discover the key considerations for building systems that exhibit human-level intelligence. By the end of this book, you'll be well-versed with the different one- and few-shot learning methods and be able to use them to build your own deep learning models.
Table of Contents (11 chapters)
1
Section 1: One-shot Learning Introduction
3
Section 2: Deep Learning Architectures
7
Section 3: Other Methods and Conclusion

Coding exercise

In this section, we will learn about the implementation of Siamese networks and matching networks.

Let's begin with Siamese networks.

Siamese networks – the MNIST dataset

In this tutorial, we will do the following things in the order listed here:

  1. Data preprocessing: Creating pairs
  2. Creating a Siamese network architecture
  3. Training it using the small MNIST dataset
  4. Visualizing the embeddings

Perform the following steps to carry out the exercise:

  1. First, import all the libraries needed using the following code:
# -*- encoding: utf-8 -*-
import argparse
import torch
import torchvision.datasets as dsets
import random
import numpy as np
import time
import matplotlib.pyplot as plt
from torch.autograd import Variable...