Description
Abstraction Refinement for Large Scale Model Checking by Wang provides a comprehensive examination of modern formal verification techniques. The work focuses on counterexample-guided abstraction refinement (CEGAR), a pivotal methodology that enables verification of large, complex systems by creating abstract models and progressively refining them based on verification results.
This book addresses the computational challenges inherent in model checking large systems by introducing practical algorithms and theoretical foundations. Readers will explore how abstraction techniques reduce state spaces while maintaining verification accuracy, making it possible to verify systems that would otherwise be intractable. The author details implementation strategies, optimization methods, and real-world applications of refinement techniques.
Ideal for researchers, engineers, and graduate students in formal methods, computer science, and software verification, this work bridges the gap between theoretical foundations and practical applications in model checking.







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