Modern Time Series Forecasting with Python
eBook - ePub

Modern Time Series Forecasting with Python

Exploring statistical models, machine learning, and deep learning for cutting-edge time series forecasting (English Edition)

  1. 446 pages
  2. English
  3. ePUB (mobile friendly)
  4. Available on iOS & Android
eBook - ePub

Modern Time Series Forecasting with Python

Exploring statistical models, machine learning, and deep learning for cutting-edge time series forecasting (English Edition)

About this book

Description
Time series forecasting is driving decision-making in everything from financial markets to supply chain logistics. This book provides a hands-on roadmap to mastering this technology, bridging the gap between classical statistical rigor and cutting-edge artificial intelligence.

Understand time series fundamentals by exploring decomposition, stationarity, and ACF/PACF analysis before mastering preprocessing and feature engineering. You will build foundational ARIMA, SARIMA, and Holt-Winters' models before pivoting to machine learning with XGBoost and Scikit-learn. The journey accelerates into deep learning, designing RNNs, LSTMs, and hybrid CNN-LSTM architectures for univariate and multivariate forecasting. After exploring advanced VAR and VECM models, you will implement walk-forward validation and professional error metrics. The final sections cover scalability and MLOps, teaching you to handle big data with Dask and deploy production-ready models via FastAPI and Apache Kafka.

By the end of this book, you will be a competent practitioner capable of building high-performance forecasting pipelines for stock prices, demand, and sensor data. You will possess the technical expertise to deploy scalable, ethical, and accurate models in real-world cloud environments with confidence.

What you will learn
? Diagnose trend and seasonality using Statsmodels stationarity.
? Build ARIMA/SARIMA and smoothing models using Statsmodels.
? Engineer lag, rolling, and calendar-based forecasting features.
? Deploy FastAPI pipelines and monitor Kafka drift.
? Build LSTM and GRU architectures with TensorFlow.
? Backtest, compare, and ensemble models with confidence.
? Deploy, monitor, and retrain forecasting pipelines at scale.

Who this book is for
This book is designed for data scientists, machine learning engineers, and analysts mastering temporal data. Proficiency in Python and basic statistics is required, while experience with cloud deployment or deep learning helps professional engineers scale models using the featured technical frameworks.

Table of Contents
1. Introduction to Time Series Data and Analysis
2. Data Pre-processing and Feature Engineering
3. Exploratory and Statistical Analysis of Time Series
4. Autoregressive Models
5. Moving Average and ARMA Models
6. ARIMA and SARIMA Models
7. Exponential Smoothing Methods
8. Feature-based Machine Learning for Time Series Forecasting
9. Introduction to Deep Learning for Time Series
10. Building and Training LSTM Models for Time Series
11. Advanced Deep Learning Architectures and Multivariate Forecasting
12. Multivariate Time Series Forecasting
13. Model Evaluation, Selection, and Ensembling
14. Forecasting at Scale and Model Deployment
15. Time Series Forecasting in Practice

Trusted by 375,005 students

Access to over 1 million titles for a fair monthly price.

Study more efficiently using our study tools.

Information

Year
2026
eBook ISBN
9789365893625

Table of contents

  1. Cover
  2. Title Page
  3. Copyright Page
  4. Dedication Page
  5. About the Author
  6. About the Reviewer
  7. Acknowledgement
  8. Preface
  9. Table of Contents
  10. 1. Introduction to Time Series Data and Analysis
  11. 2. Data Pre-processing and Feature Engineering
  12. 3. Exploratory and Statistical Analysis of Time Series
  13. 4. Autoregressive Models
  14. 5. Moving Average and ARMA Models
  15. 6. ARIMA and SARIMA Models
  16. 7. Exponential Smoothing Methods
  17. 8. Feature-based Machine Learning for Time Series Forecasting
  18. 9. Introduction to Deep Learning for Time Series
  19. 10. Building and Training LSTM Models for Time Series
  20. 11. Advanced Deep Learning Architectures and Multivariate Forecasting
  21. 12. Multivariate Time Series Forecasting
  22. 13. Model Evaluation, Selection, and Ensembling
  23. 14. Forecasting at Scale and Model Deployment
  24. 15. Time Series Forecasting in Practice
  25. Index

Frequently asked questions

Yes, you can cancel anytime from the Subscription tab in your account settings on the Perlego website. Your subscription will stay active until the end of your current billing period. Learn how to cancel your subscription
No, books cannot be downloaded as external files, such as PDFs, for use outside of Perlego. However, you can download books within the Perlego app for offline reading on mobile or tablet. Learn how to download books offline
Perlego offers two plans: Essential and Complete
  • Essential is ideal for learners and professionals who enjoy exploring a wide range of subjects. Access the Essential Library with 800,000+ trusted titles and best-sellers across business, personal growth, and the humanities. Includes unlimited reading time and Standard Read Aloud voice.
  • Complete: Perfect for advanced learners and researchers needing full, unrestricted access. Unlock 1.4M+ books across hundreds of subjects, including academic and specialized titles. The Complete Plan also includes advanced features like Premium Read Aloud and Research Assistant.
Both plans are available with monthly, semester, or annual billing cycles.
We are an online textbook subscription service, where you can get access to an entire online library for less than the price of a single book per month. With over 1 million books across 990+ topics, we’ve got you covered! Learn about our mission
Look out for the read-aloud symbol on your next book to see if you can listen to it. The read-aloud tool reads text aloud for you, highlighting the text as it is being read. You can pause it, speed it up and slow it down. Learn more about Read Aloud
Yes! You can use the Perlego app on both iOS and Android devices to read anytime, anywhere — even offline. Perfect for commutes or when you’re on the go.
Please note we cannot support devices running on iOS 13 and Android 7 or earlier. Learn more about using the app
Yes, you can access Modern Time Series Forecasting with Python by Ravindra Rapaka in PDF and/or ePUB format. We have over one million books available in our catalogue for you to explore.