This book provides a short, hands-on introduction to the science of complexity using simple computational models of natural complex systems―with models and exercises drawn from physics, chemistry, geology, and biol...

Buy Now From Amazon

This book provides a short, hands-on introduction to the science of complexity using simple computational models of natural complex systems―with models and exercises drawn from physics, chemistry, geology, and biology. By working through the models and engaging in additional computational explorations suggested at the end of each chapter, readers very quickly develop an understanding of how complex structures and behaviors can emerge in natural phenomena as diverse as avalanches, forest fires, earthquakes, chemical reactions, animal flocks, and epidemic diseases.

Natural Complexity provides the necessary topical background, complete source codes in Python, and detailed explanations for all computational models. Ideal for undergraduates, beginning graduate students, and researchers in the physical and natural sciences, this unique handbook requires no advanced mathematical knowledge or programming skills and is suitable for self-learners with a working knowledge of precalculus and high-school physics.

Self-contained and accessible, Natural Complexity enables readers to identify and quantify common underlying structural and dynamical patterns shared by the various systems and phenomena it examines, so that they can form their own answers to the questions of what natural complexity is and how it arises.



Similar Products

The Book of Why: The New Science of Cause and EffectScale: The Universal Laws of Growth, Innovation, Sustainability, and the Pace of Life in Organisms, Cities, Economies, and CompaniesDeep Learning (Adaptive Computation and Machine Learning)Python Machine Learning: Machine Learning and Deep Learning with Python, scikit-learn, and TensorFlow, 2nd EditionA Student's Guide to Python for Physical Modeling: Updated EditionNonlinear Dynamics and Chaos: With Applications to Physics, Biology, Chemistry, and Engineering, Second Edition (Studies in Nonlinearity) (Volume 1)Decision Making Under Uncertainty: Theory and Application (MIT Lincoln Laboratory Series)Ten Great Ideas about Chance