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Time Series with PyTorch. Modern Deep Learning Toolkit for Real-World Forecasting Challenges
Graeme Davidson, Lei Ma
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EЛЕКТРОННА КНИГА
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Neural networks are powerful tools for time-series forecasting, but applying them effectively requires both practical experience and a clear understanding of architectures, training strategies, and evaluation methods. This book brings these ideas together in a structured and practical way.
Starting with PyTorch fundamentals, you will build neural networks from scratch and progress through recurrent networks, attention mechanisms, and transformers before exploring forecasting architectures such as N-BEATS, N-HiTS, and the Temporal Fusion Transformer. Along the way, you will learn robust hyperparameter tuning, conformal prediction for uncertainty estimation, and reliable evaluation practices.
Unlike most forecasting books, this text also explores topics often overlooked or treated separately, including transfer learning across collections of series, synthetic data generation with diffusion models, and self-supervised representation learning. Beyond forecasting, later chapters cover classification, clustering, anomaly detection, and embeddings for large-scale time-series modeling.
Throughout, the focus is pragmatic: theory is reinforced through experimentation and implementation so you can apply these methods confidently to real-world time-series problems.
Starting with PyTorch fundamentals, you will build neural networks from scratch and progress through recurrent networks, attention mechanisms, and transformers before exploring forecasting architectures such as N-BEATS, N-HiTS, and the Temporal Fusion Transformer. Along the way, you will learn robust hyperparameter tuning, conformal prediction for uncertainty estimation, and reliable evaluation practices.
Unlike most forecasting books, this text also explores topics often overlooked or treated separately, including transfer learning across collections of series, synthetic data generation with diffusion models, and self-supervised representation learning. Beyond forecasting, later chapters cover classification, clustering, anomaly detection, and embeddings for large-scale time-series modeling.
Throughout, the focus is pragmatic: theory is reinforced through experimentation and implementation so you can apply these methods confidently to real-world time-series problems.
- 1. Time Series for Everyone
- 2. The Challenge of Time Series
- 3. Evaluating Time-Series Models
- 4. PyTorch Fundamentals
- 5. Simple Neural Architecture
- 6. Optimization
- 7. Conformal Prediction
- 8. Recurrent Neural Networks
- 9. Transformers
- 10. Other Neural Structures
- 11. Transfer Learning and Global Modelling
- 12. Synthetic Time Series Data
- 13. Diffusion Models
- 14. Time Series Classification
- 15. Time Series Clustering
- 16. Embeddings for Time Series
- 17. Supervised and Unsupervised Anomaly Detection
- 18. Self-Supervised Learning for Time Series
- Назва:Time Series with PyTorch. Modern Deep Learning Toolkit for Real-World Forecasting Challenges
- Автор:Graeme Davidson, Lei Ma
- Оригінальна назва:Time Series with PyTorch. Modern Deep Learning Toolkit for Real-World Forecasting Challenges
- ISBN:9781805120421, 9781805120421
- Дата видання:2026-05-29
- Формат:Eлектронна книга - EPUB
- Ідентифікатор видання: e_44fu
- Видавець: Packt Publishing
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