Description

Book Synopsis
Learn how to apply the principles of machine learning totime series modeling with thisindispensableresource Machine Learning for Time Series Forecasting with Pythonis an incisive and straightforward examination of one of the most crucial elements of decision-makingin finance,marketing,education, and healthcare:time series modeling. Despitethe centrality of time series forecasting, few business analysts are familiar with the power or utility of applying machine learning to time series modeling. Author Francesca Lazzeri, a distinguishedmachine learning scientistandeconomist,corrects that deficiency by providing readers withcomprehensiveand approachableexplanation andtreatment of the applicationof machine learning to time series forecasting. Written for readers who have little to no experience in time seriesforecastingor machine learning, the book comprehensively coversall the topics necessary to: Understand time series forecasting concepts, such asstationarity,horizon,trend,and seasonalityPrepare time series dataformodelingEvaluatetime series forecasting models'performance and accuracyUnderstand when to use neural networks instead of traditional time series models in time series forecasting Machine Learning for Time Series Forecasting with Pythonis fullreal-world examples, resourcesand concrete strategies to help readers explore and transform data and develop usable, practical time series forecasts. Perfect for entry-level data scientists, business analysts,developers, and researchers, this book is an invaluable and indispensable guide to the fundamental and advanced concepts of machine learning applied to time series modeling.

Table of Contents

Acknowledgments vii

Introduction xv

Chapter 1 Overview of Time Series Forecasting 1

Flavors of Machine Learning for Time Series Forecasting 3

Supervised Learning for Time Series Forecasting 14

Python for Time Series Forecasting 21

Experimental Setup for Time Series Forecasting 24

Conclusion 26

Chapter 2 How to Design an End-to-End Time Series Forecasting Solution on the Cloud 29

Time Series Forecasting Template 31

Business Understanding and Performance Metrics 33

Data Ingestion 36

Data Exploration and Understanding 39

Data Pre-processing and Feature Engineering 40

Modeling Building and Selection 42

An Overview of Demand Forecasting Modeling Techniques 44

Model Evaluation 46

Model Deployment 48

Forecasting Solution Acceptance 53

Use Case: Demand Forecasting 54

Conclusion 58

Chapter 3 Time Series Data Preparation 61

Python for Time Series Data 62

Common Data Preparation Operations for Time Series 65

Time stamps vs. Periods 66

Converting to Timestamps 69

Providing a Format Argument 70

Indexing 71

Time/Date Components 76

Frequency Conversion 78

Time Series Exploration and Understanding 79

How to Get Started with Time Series Data Analysis 79

Data Cleaning of Missing Values in the Time Series 84

Time Series Data Normalization and Standardization 86

Time Series Feature Engineering 89

Date Time Features 90

Lag Features and Window Features 92

Rolling Window Statistics 95

Expanding Window Statistics 97

Conclusion 98

Chapter 4 Introduction to Autoregressive and Automated Methods for Time Series Forecasting 101

Autoregression 102

Moving Average 119

Autoregressive Moving Average 120

Autoregressive Integrated Moving Average 122

Automated Machine Learning 129

Conclusion 136

Chapter 5 Introduction to Neural Networks for Time Series Forecasting 137

Reasons to Add Deep Learning to Your Time Series Toolkit 138

Deep Learning Neural Networks Are Capable of Automatically Learning and Extracting Features from Raw and Imperfect Data 140

Deep Learning Supports Multiple Inputs and Outputs 142

Recurrent Neural Networks Are Good at Extracting Patterns from Input Data 143

Recurrent Neural Networks for Time Series Forecasting 144

Recurrent Neural Networks 145

Long Short-Term Memory 147

Gated Recurrent Unit 148

How to Prepare Time Series Data for LSTMs and GRUs 150

How to Develop GRUs and LSTMs for Time Series Forecasting 154

Keras 155

TensorFlow 156

Univariate Models 156

Multivariate Models 160

Conclusion 164

Chapter 6 Model Deployment for Time Series Forecasting 167

Experimental Set Up and Introduction to Azure Machine Learning SDK for Python 168

Workspace 169

Experiment 169

Run 169

Model 170

Compute Target, RunConfiguration, and ScriptRun Config 171

Image and Webservice 172

Machine Learning Model Deployment 173

How to Select the Right Tools to Succeed with Model Deployment 175

Solution Architecture for Time Series Forecasting with Deployment Examples 177

Train and Deploy an ARIMA Model 179

Configure the Workspace 182

Create an Experiment 183

Create or Attach a Compute Cluster 184

Upload the Data to Azure 184

Create an Estimator 188

Submit the Job to the Remote Cluster 188

Register the Model 189

Deployment 189

Define Your Entry Script and Dependencies 190

Automatic Schema Generation 191

Conclusion 196

References 197

Index 199

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      Description

      Book Synopsis
      Learn how to apply the principles of machine learning totime series modeling with thisindispensableresource Machine Learning for Time Series Forecasting with Pythonis an incisive and straightforward examination of one of the most crucial elements of decision-makingin finance,marketing,education, and healthcare:time series modeling. Despitethe centrality of time series forecasting, few business analysts are familiar with the power or utility of applying machine learning to time series modeling. Author Francesca Lazzeri, a distinguishedmachine learning scientistandeconomist,corrects that deficiency by providing readers withcomprehensiveand approachableexplanation andtreatment of the applicationof machine learning to time series forecasting. Written for readers who have little to no experience in time seriesforecastingor machine learning, the book comprehensively coversall the topics necessary to: Understand time series forecasting concepts, such asstationarity,horizon,trend,and seasonalityPrepare time series dataformodelingEvaluatetime series forecasting models'performance and accuracyUnderstand when to use neural networks instead of traditional time series models in time series forecasting Machine Learning for Time Series Forecasting with Pythonis fullreal-world examples, resourcesand concrete strategies to help readers explore and transform data and develop usable, practical time series forecasts. Perfect for entry-level data scientists, business analysts,developers, and researchers, this book is an invaluable and indispensable guide to the fundamental and advanced concepts of machine learning applied to time series modeling.

      Table of Contents

      Acknowledgments vii

      Introduction xv

      Chapter 1 Overview of Time Series Forecasting 1

      Flavors of Machine Learning for Time Series Forecasting 3

      Supervised Learning for Time Series Forecasting 14

      Python for Time Series Forecasting 21

      Experimental Setup for Time Series Forecasting 24

      Conclusion 26

      Chapter 2 How to Design an End-to-End Time Series Forecasting Solution on the Cloud 29

      Time Series Forecasting Template 31

      Business Understanding and Performance Metrics 33

      Data Ingestion 36

      Data Exploration and Understanding 39

      Data Pre-processing and Feature Engineering 40

      Modeling Building and Selection 42

      An Overview of Demand Forecasting Modeling Techniques 44

      Model Evaluation 46

      Model Deployment 48

      Forecasting Solution Acceptance 53

      Use Case: Demand Forecasting 54

      Conclusion 58

      Chapter 3 Time Series Data Preparation 61

      Python for Time Series Data 62

      Common Data Preparation Operations for Time Series 65

      Time stamps vs. Periods 66

      Converting to Timestamps 69

      Providing a Format Argument 70

      Indexing 71

      Time/Date Components 76

      Frequency Conversion 78

      Time Series Exploration and Understanding 79

      How to Get Started with Time Series Data Analysis 79

      Data Cleaning of Missing Values in the Time Series 84

      Time Series Data Normalization and Standardization 86

      Time Series Feature Engineering 89

      Date Time Features 90

      Lag Features and Window Features 92

      Rolling Window Statistics 95

      Expanding Window Statistics 97

      Conclusion 98

      Chapter 4 Introduction to Autoregressive and Automated Methods for Time Series Forecasting 101

      Autoregression 102

      Moving Average 119

      Autoregressive Moving Average 120

      Autoregressive Integrated Moving Average 122

      Automated Machine Learning 129

      Conclusion 136

      Chapter 5 Introduction to Neural Networks for Time Series Forecasting 137

      Reasons to Add Deep Learning to Your Time Series Toolkit 138

      Deep Learning Neural Networks Are Capable of Automatically Learning and Extracting Features from Raw and Imperfect Data 140

      Deep Learning Supports Multiple Inputs and Outputs 142

      Recurrent Neural Networks Are Good at Extracting Patterns from Input Data 143

      Recurrent Neural Networks for Time Series Forecasting 144

      Recurrent Neural Networks 145

      Long Short-Term Memory 147

      Gated Recurrent Unit 148

      How to Prepare Time Series Data for LSTMs and GRUs 150

      How to Develop GRUs and LSTMs for Time Series Forecasting 154

      Keras 155

      TensorFlow 156

      Univariate Models 156

      Multivariate Models 160

      Conclusion 164

      Chapter 6 Model Deployment for Time Series Forecasting 167

      Experimental Set Up and Introduction to Azure Machine Learning SDK for Python 168

      Workspace 169

      Experiment 169

      Run 169

      Model 170

      Compute Target, RunConfiguration, and ScriptRun Config 171

      Image and Webservice 172

      Machine Learning Model Deployment 173

      How to Select the Right Tools to Succeed with Model Deployment 175

      Solution Architecture for Time Series Forecasting with Deployment Examples 177

      Train and Deploy an ARIMA Model 179

      Configure the Workspace 182

      Create an Experiment 183

      Create or Attach a Compute Cluster 184

      Upload the Data to Azure 184

      Create an Estimator 188

      Submit the Job to the Remote Cluster 188

      Register the Model 189

      Deployment 189

      Define Your Entry Script and Dependencies 190

      Automatic Schema Generation 191

      Conclusion 196

      References 197

      Index 199

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