transparent ML
(Source: wikipedia.com)


  

Investigators 
Truyen Tran (Australia) 
Hieu-Chi Dam (Japan) 
Alejandro Franco (France) 

Members  
Kien Do 
Phuoc Nguyen 
Dung Nguyen  
Thang Nguyen  
Kha Pham  

 Alumni  
Adam Beykikhoshk 
Shivapratap Gopakumar 
Vuong Le  
Tu Nguyen  
Trang Pham  



 

 

 

Generative AI for Materials Discovery

Targeted exploration of unvisited regions in the materials space.

Areas:

  • Scientific Large Language Models
  • Physics-informed Generative AI

Content:

Overview:

This project will develop a general Generative AI platform to accelerate inverse design of materials. More specifically, we will:

  • Establish a multimodal agent flow to orchestrate scientific tools for automated materials discovery.
  • Develop scientific LLMs that learn materials compositions, structures, and properties from millions of scientific texts and materials databases.
  • Invent physics-guided [reinforcement learning-based] generative models to conditionally sample novel materials with desired functions.
  • Invent a closed-loop optimisation framework which integrates generative models with expert judgement and first-principles calculations, where the AI system iteratively proposes candidates and learns from feedback.
  • Demonstrate AI-accelerated discovery of functional materials with far fewer experiments than traditional approaches.
  • Validate the AI-generated materials designs through high-throughput simulation, and experimental synthesis and characterisation.
  • Release open-source software tools and DFT-validated materials database.

Talks/Tutorials

Publications

Programming frameworks

  • NVIDIA's Modulus

Datasets

  • Materials Project

Key references

  • Karniadakis, G. E., Kevrekidis, I. G., Lu, L., Perdikaris, P., Wang, S., & Yang, L. (2021). Physics-informed machine learning. Nature Reviews Physics, 3(6), 422-440.