Machine Learning for Data-Centric Geotechnics
Kok-Kwang Phoon editor Chong Tang editor Zi-Jun Cao editor
Format:Hardback
Publisher:Taylor & Francis Ltd
Publishing:27th May '26
£157.50 was £175.00
This title is due to be published on 27th May, and will be despatched as soon as possible.

Machine learning and other digital technologies fed with large datasets offer a major set of tools for practical geotechnical design. Large language models and other generative AIs can perform cognitive tasks currently undertaken by humans -- and might even predict the next event based on some time series. This depends on a balance of data centricity, fit-for (and transformative) practice, and geotechnical context, and can be achieved by the integration of information, data, techniques, tools, perspectives, concepts, theories, along with experience from both geotechnical engineering and machine learning in computer science. And yet good engineering and research outcomes are still dependent on how practice (which includes the workforce) is improved or even transformed in the longer term to better serve end-users. This collection of focused chapters from a group of specialists presents principles and broader up to date practice of machine learning, along with a number of example areas of site characterization, design and construction in geotechnics.
This book is essential for sophisticated practitioners as well as graduate student.
ISBN: 9781032886541
Dimensions: unknown
Weight: unknown
456 pages