Table of contents : Cover Front Matter 1. Machine Learning in Computer Aided Engineering 2. Artificial Neural Networks 3. Gaussian Processes 4. Machine Learning Methods for Constructing Dynamic Models From Data 5. Physics-Informed Neural Networks: Theory and Applications 6. Physics-Informed Deep Neural Operator Networks 7. Digital Twin for Dynamical Systems 8. Reduced Order Modeling 9. Regression Models for Machine Learning 10. Overview on Machine Learning Assisted Topology Optimization Methodologies 11. Mixed-Variable Concurrent Material, Geometry, and Process Design in Integrated Computational Materials Engineering 12. Machine Learning Interatomic Potentials: Keys to First-Principles Multiscale Modeling