Book Image

Deep Learning for Time Series Cookbook

By : Vitor Cerqueira, Luís Roque
Book Image

Deep Learning for Time Series Cookbook

By: Vitor Cerqueira, Luís Roque

Overview of this book

Most organizations exhibit a time-dependent structure in their processes, including fields such as finance. By leveraging time series analysis and forecasting, these organizations can make informed decisions and optimize their performance. Accurate forecasts help reduce uncertainty and enable better planning of operations. Unlike traditional approaches to forecasting, deep learning can process large amounts of data and help derive complex patterns. Despite its increasing relevance, getting the most out of deep learning requires significant technical expertise. This book guides you through applying deep learning to time series data with the help of easy-to-follow code recipes. You’ll cover time series problems, such as forecasting, anomaly detection, and classification. This deep learning book will also show you how to solve these problems using different deep neural network architectures, including convolutional neural networks (CNNs) or transformers. As you progress, you’ll use PyTorch, a popular deep learning framework based on Python to build production-ready prediction solutions. By the end of this book, you'll have learned how to solve different time series tasks with deep learning using the PyTorch ecosystem.
Table of Contents (12 chapters)

Building an AE using PyOD

PyOD is a Python library that is devoted to anomaly detection. It contains several reconstruction-based algorithms such as AEs. In this recipe, we’ll build an AE using PyOD to detect anomalies in time series.

Getting ready

You can install PyOD using the following command:

pip install pyod

We’ll use the same dataset as in the previous recipe. So, we start with the dataset object created in the Prediction-based anomaly detection using DL recipe. Let’s see how to transform this data to build an AE with PyOD.

How to do it…

The following steps show how to build an AE and predict the probability of anomalies:

  1. We start by transforming the time series using a sliding window with the following code:
    import pandas as pd
    from sklearn.preprocessing import StandardScaler
    N_LAGS = 144
    series = dataset['y']
    input_data = []
    for i in range(N_LAGS, series.shape[0]):
        input_data.append(series...