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“AI-Assisted Composite Materials Design” is an international, hands-on workshop that explores how AI is transforming traditional materials science workflows. Participants will learn to use data-driven models, surrogate optimization, and deep learning algorithms to predict material properties, simulate behavior, and discover new composite formulations with tailored mechanical, thermal, or electrical properties.
The workshop emphasizes real-world datasets, multi-scale modeling, and AI-powered tools like Bayesian optimization, Neural Networks, Graph Neural Networks (GNNs), and AutoML platforms applied to composite design and simulation.
To equip participants with practical knowledge and tools to leverage Artificial Intelligence and Machine Learning for the design, modeling, and optimization of composite materials, enabling accelerated innovation in aerospace, automotive, energy, and biomedical applications.
PhD in Computational Mechanics from MIT with 15+ years of experience in Industrial AI. Former Lead Data Scientist at Tesla and current advisor to Fortune 500 manufacturing firms.
Professional Certification Program
Bridge the gap between materials science and artificial intelligence
Train participants to use AI for faster, cost-effective materials discovery
Foster cross-disciplinary collaboration for smart, sustainable material development
Introduce scalable digital tools for next-generation composite design
Promote reproducibility, transparency, and innovation in AI-assisted materials research
Day 1: Generative Models for Microstructure Design
Fundamentals of microstructure design and its impact on material properties
Traditional vs. data-driven design approaches
Overview of generative models: GANs, VAEs, and diffusion models
Conditioning generative models on target properties
Learning inverse design: mapping structure to desired properties
Case studies in 2D/3D material generation using machine learning
Day 2: Bayesian Optimization for Stiffness/Weight Trade-Off
Multi-objective design problems in engineering
Stiffness vs. weight trade-offs in materials and components
Constraints in mechanical and aerospace design
Principles of Bayesian optimization: Gaussian processes, surrogate models, acquisition functions
Pareto frontiers and uncertainty quantification
Day 3: Digital Twin Validation in Finite Element Analysis (FEA)
Introduction to digital twins in predictive engineering
Integrating simulation data with real-world observations
FEA model setup and validation for structural behavior
Techniques for model calibration using experimental or sensor data
AI-assisted model updates to enhance simulation fidelity and performance feedback
Materials and mechanical engineers
Polymer scientists and nanocomposite researchers
AI/ML engineers in manufacturing or R&D
Aerospace, automotive, and biomedical materials developers
UG/PG/PhD students in materials science, physics, or applied AI
2025-06-24
Indian Standard Timing 4 PM
2025-06-24 to 2025-06-26
Indian Standard Timing 6 PM
Understand AI workflows for composite material property prediction
Learn how to build and deploy surrogate models for material optimization
Integrate structure-property relationships into predictive ML pipelines
Evaluate model performance for multi-objective materials design
Receive international certification and gain reusable tools for research and industry
INR. 4999
USD. 90
Participants will be equipped for roles such as:
Materials Informatics Specialist
Computational Materials Design Engineer
AI in Manufacturing R&D Scientist
Data-Driven Product Development Lead
Researcher in Sustainable/Smart Materials
Aerospace and defense R&D
Automotive lightweighting and electric vehicle companies
Polymer, nanomaterials, and high-performance materials labs
AI startups in smart manufacturing and Industry 4.0
National labs and academic research centers in material innovation
Take your research to the next level!
Achieve excellence and solidify your reputation among the elite!
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Excellent Presentation and Guidance in AI assisted design of composite materials by the mentor.
Instant Access
Not sure if this course is right for you? Schedule a free 15-minute consultation with our academic advisors.