Reactive PublishingApplied Macroeconomic Simulation with Python is a practical guide to building, testing, and interpreting computational macroeconomic models using Python. Designed for advanced students, economists, analysts, researchers, and technically minded finance professionals, this book focuses on the modeling tools used to study economic systems, policy shocks, market dynamics, and structural uncertainty.The book introduces core approaches to macroeconomic simulation, including DSGE modeling, agent-based systems, numerical methods, calibration, sensitivity analysis, and policy stress testing. Readers will learn how computational models can be used to examine inflation, output, employment, monetary policy, fiscal policy, financial instability, and broader economic interactions.Rather than treating macroeconomics as a purely theoretical discipline, this book emphasizes implementation. It shows how Python can be used to construct models, run simulations, analyze outcomes, and compare different policy scenarios. Topics are presented with a focus on clarity, reproducibility, and practical application.Inside, readers will explore: DSGE model structure and simulation logic Agent-based approaches to heterogeneous economic behavior Policy stress testing and scenario design Calibration, shocks, and sensitivity analysis Numerical tools for solving and simulating macroeconomic systems Python workflows for economic modeling and interpretationThis book is suitable for readers who already have a basic understanding of economics, statistics, and Python, and who want to move into more advanced computational macroeconomic analysis. It is not a shortcut or a promise of forecasting certainty. Instead, it provides a structured foundation for building models, testing assumptions, and studying how complex economies respond to changing conditions.
AmazonPages: 411, Paperback, Independently published
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