Explainable Safety Risk Management in Construction With Unsupervised Learning is an essential compendium for professionals seeking to enhance construction risk management through advanced unsupervised learning methods. This chapter demonstrates the profound importance of unsupervised machine learning approaches, showcasing practical examples of how these techniques can be applied to distill complex, unlabeled data into actionable insights, elevating construction risk management to new levels of precision and efficiency.
– Vedat Togan, Professor of Civil Engineering, Karadeniz Technical University, Turkey
In our AI and ML-driven world, "Artificial Intelligence and Machine Learning Techniques for Civil Engineering" emerges as a guiding beacon, navigating readers through the transformative landscape of Artificial Intelligence (AI) and Machine Learning (ML) applications. The book encapsulates the remarkable journey of AI, from its roots in data handling to its pervasive influence in fields beyond.
AI and ML harness data, rapid processing, and intelligent algorithms, shaping our daily lives with personalized ads, virtual assistants, advancements like autonomous driving, and more. In civil engineering, they usher in a paradigm shift, empowering decision-makers to enhance efficiency and sustainability. These techniques prove invaluable in predicting structural performance, optimizing construction processes, and elevating project management.
The book unites industry leaders, sharing their insights and best practices, providing a comprehensive view of AI and ML's role in civil engineering. Comprising 13 chapters, each exploring unique facets, the book inspires readers to explore and contribute to the ever-evolving landscape of civil engineering. "Artificial Intelligence and Machine Learning Techniques for Civil Engineering" isn't merely a book; it is a gateway to a future shaped by the boundless possibilities AI and ML bring to civil engineering
– Vagelis Plevris, Associate Professor, Department of Civil and Environmental Engineering, Qatar University, Doha, Qatar