Vol. 1 No. 1 (2024): International Geotechnical Innovation Conference
Articles

Revolutionizing Geotechnical Solutions: The Power of AI

Published 2024-10-28

Keywords

  • Refugee Health Literacy,
  • Trauma-Related Stress,
  • Participatory Methodology,
  • Mental Health Intervention,
  • Integration Barriers

How to Cite

Revolutionizing Geotechnical Solutions: The Power of AI. (2024). 1st International Geotechnical Innovation Conference, 1(1). https://doi.org/10.54878/5txwev18

Abstract

This overview explores the transformative impact of artificial intelligence (AI) on geotechnical solutions. Traditionally, geotechnical engineering relied on many empirical methods for assessing soil behavior and foundation design. However, with the rapid development and implementation of AI, this field has undergone a significant transformation. AI algorithms, powered by machine learning and data analytics, enable engineers to analyze vast amounts of geotechnical data with unprecedented speed and accuracy. This summary explores how AI algorithms are revolutionizing geotechnical solutions by predicting soil behavior, optimizing foundation designs, and enhancing risk management processes. By harnessing the power of AI, geotechnical engineers can make informed decisions, mitigate risks, and optimize project outcomes like never before.

References

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