Computer-aided Molecular Design by Aligning Generative Diffusion Models: Perspectives and Challenges
A Ajagekar, B Decardi-Nelson, C Shang… - Computers & Chemical …, 2024 - Elsevier
Deep generative models like diffusion models have generated significant interest in
computer-aided molecular design by enabling the automated generation of novel molecular …
computer-aided molecular design by enabling the automated generation of novel molecular …
SUSIE: Pharmaceutical CMC ontology-based information extraction for drug development using machine learning
V Mann, S Viswanath, S Vaidyaraman… - Computers & Chemical …, 2023 - Elsevier
Automatically extracting information from unstructured text in pharmaceutical documents is
important for drug discovery and development. This information can be integrated with …
important for drug discovery and development. This information can be integrated with …
Extrapolative prediction of small-data molecular property using quantum mechanics-assisted machine learning
H Shimakawa, A Kumada, M Sato - npj Computational Materials, 2024 - nature.com
Data-driven materials science has realized a new paradigm by integrating materials domain
knowledge and machine-learning (ML) techniques. However, ML-based research has often …
knowledge and machine-learning (ML) techniques. However, ML-based research has often …
Models, modeling and model-based systems in the era of computers, machine learning and AI
Abstract Models, representing a system under study with respect to problems such as
process design, process control, product synthesis and many more, are at the core of most …
process design, process control, product synthesis and many more, are at the core of most …
[HTML][HTML] Quo Vadis ChatGPT? From Large Language Models to Large Knowledge Models
V Venkatasubramanian, A Chakraborty - Computers & Chemical …, 2025 - Elsevier
The startling success of ChatGPT and other large language models (LLMs) using
transformer-based generative neural network architecture in applications such as natural …
transformer-based generative neural network architecture in applications such as natural …
eSFILES: Intelligent process flowsheet synthesis using process knowledge, symbolic AI, and machine learning
Process flowsheet synthesis, design, and simulation require integrated approaches that
combine domain knowledge and data-driven methods for fast, efficient, and reliable …
combine domain knowledge and data-driven methods for fast, efficient, and reliable …
An artificial intelligence course for chemical engineers
Artificial intelligence and machine learning are revolutionising fields of science and
engineering. In recent years, process engineering has widely benefited from this novel …
engineering. In recent years, process engineering has widely benefited from this novel …
Machine learning & conventional approaches to process control & optimization: Industrial applications & perspectives
DB Raven, Y Chikkula, KM Patel, AH Al Ghazal… - Computers & Chemical …, 2024 - Elsevier
Abstract Technologies based on Artificial Intelligence (AI) and Machine Learning (ML)
concepts are advancing at a rapid pace. The new paradigms are challenging the status-quo …
concepts are advancing at a rapid pace. The new paradigms are challenging the status-quo …
A scalable and integrated machine learning framework for molecular properties prediction
This work introduced a scalable and integrated machine learning (ML) framework to
facilitate important steps of building quantitative structure–property relationship (QSPR) …
facilitate important steps of building quantitative structure–property relationship (QSPR) …
[HTML][HTML] Augmenting optimization-based molecular design with graph neural networks
Computer-aided molecular design (CAMD) studies quantitative structure–property
relationships and discovers desired molecules using optimization algorithms. With the …
relationships and discovers desired molecules using optimization algorithms. With the …