Epidemic Modeling
Principles, Algorithms, and Applications
- 1 Edición - 1 de octubre de 2026
- Última edición
- Autor: Teddy Lazebnik
- Idioma: Inglés
Epidemic Modeling: Principles, Algorithms, and Applications is a comprehensive introduction and practical guide to building, understanding, and applying epidemiological models… Leer más
Descripción
Descripción
Epidemic Modeling: Principles, Algorithms, and Applications is a comprehensive introduction and practical guide to building, understanding, and applying epidemiological models in real-world contexts. Bridging theory and practice, the book walks readers through the full modelling pipeline from the biological, social, and political drivers of disease spread to classical compartmental models such as SIR, and onward to modern computational techniques including agent-based simulation, machine learning, and optimization under uncertainty. Each chapter builds progressively, pairing clear conceptual explanations with hands-on code, real data examples, and step-by-step methods that readers can adapt to new challenges. Drawing on extensive academic and industry experience, the text emphasizes how modelling decisions are made in practice addressing real-world complications such as incomplete data, reporting delays, and measurement error. Designed as both a learning resource and long-term reference, the book equips readers to move beyond running existing models to designing, evaluating, and communicating their own. It also fosters a shared language across disciplines, helping technical and non-technical audiences engage meaningfully with modelling insights. Timely and practical, this book empowers the next generation of modelers and decision-makers to respond effectively to an increasingly complex epidemic landscape.
Puntos claves
Puntos claves
- Guides readers through end-to-end epidemic modelling workflows
- Demonstrates real-world applications with code and data-driven examples
- Equips practitioners to design, adapt, and evaluate models for policy decisions
De interès para
De interès para
Graduate students, advanced undergraduates, early-career researchers, and practitioners in epidemiology, applied mathematics, computer science, and public health policy
Índice
Índice
1. The history of pandemics and epidemiological modeling
2. The biology, epidemiology, psychological, and governance aspects of pandemics
3. Compartmental temporal models
4. Compartmental spatio-temporal models
5. Multi-strain and evolving pandemics
6. Introduction to multi-agent computer simulations
7. Data-driven models
8. Parameter estimation and model calibration
9. Integrating surveillance, mobility, and genomic data in pandemic models
10. Modeling and optimizing intervention policies
11. Uncertainty quantification, sensitivity analysis, and model comparison
12. Computational considerations in pandemic models
2. The biology, epidemiology, psychological, and governance aspects of pandemics
3. Compartmental temporal models
4. Compartmental spatio-temporal models
5. Multi-strain and evolving pandemics
6. Introduction to multi-agent computer simulations
7. Data-driven models
8. Parameter estimation and model calibration
9. Integrating surveillance, mobility, and genomic data in pandemic models
10. Modeling and optimizing intervention policies
11. Uncertainty quantification, sensitivity analysis, and model comparison
12. Computational considerations in pandemic models
Detalles del producto
Detalles del producto
- Edición: 1
- Última edición
- Publicado: 1 de octubre de 2026
- Idioma: Inglés
Sobre el autor
Sobre el autor
TL
Teddy Lazebnik
Dr. Lazebnik is currently an Assistant Professor in the Department of Computing at Jönköping University, in Jönköping, Sweden. He earned his PhD in biomathematics with a dissertation on modelling pandemic spread and optimal oncology treatment protocols. Since then, he has published widely on multi-strain pandemic models, spatio-temporal epidemic dynamics, and the integration of agent-based simulation and deep reinforcement learning for health-system decision support. Alongside his academic work, he has over a decade of experience leading AI and algorithm-development teams in industry, particularly in biomedical and healthcare applications, which informs the book’s emphasis on models that actually run, scale, and support real decisions.
Afiliaciones y experiencia
Assistant Professor, Department of Computing, Jönköping University, Sweden