Logo

Think Complexity: Complexity Science and Computational Modeling

Large book cover: Think Complexity: Complexity Science and Computational Modeling

Think Complexity: Complexity Science and Computational Modeling
by

Publisher: Green Tea Press
ISBN/ASIN: 1449314635
Number of pages: 146

Description:
This book is about complexity science, data structures and algorithms, intermediate programming in Python, and the philosophy of science. The book focuses on discrete models, which include graphs, cellular automata, and agent-based models. They are often characterized by structure, rules and transitions rather than by equations.

Home page url

Download or read it online for free here:
Download link
(1.2MB, PDF)

Similar books

Book cover: Computational Complexity: A Conceptual PerspectiveComputational Complexity: A Conceptual Perspective
by - Cambridge University Press
This book offers a comprehensive perspective to modern topics in complexity theory. It can be used as an introduction as either a textbook or for self-study, or to experts, since it provides expositions of the various sub-areas of complexity theory.
(10185 views)
Book cover: Foundations of CryptographyFoundations of Cryptography
by - Cambridge University Press
The book gives the mathematical underpinnings for cryptography; this includes one-way functions, pseudorandom generators, and zero-knowledge proofs. Throughout, definitions are complete and detailed; proofs are rigorous and given in full.
(14980 views)
Book cover: Parallel Complexity TheoryParallel Complexity Theory
by - Prentice Hall
The rapid growth of parallel complexity theory has led to a proliferation of parallel machine models. This book presents a unified theory of parallel computation based on a network model. It is the first such synthesis in book form.
(7975 views)
Book cover: Algorithmic Randomness and ComplexityAlgorithmic Randomness and Complexity
by - Springer
Computability and complexity theory are two central areas of research in theoretical computer science. This book provides a systematic, technical development of algorithmic randomness and complexity for scientists from diverse fields.
(8692 views)