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!مرحباً بكم في المجموعة البحثية للذكاء الاصطناعي في دراسة و تحليل الأنظمة الكيميائية والبيئية وعلوم المواد
 
Welcome to the AI4CHEMIA Research Group!

The Artificial Intelligence for Chemical, Environmental, and Materials Informatics and Analytics Group at King Saud University—where we harness AI and advanced simulations to tackle complex challenges across engineering and science.

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Our Research

At AI4CHEMIA, we are a dynamic team adapting to diverse research needs, covering a broad spectrum from decision analytics and data mining powered by large language models, to the development of computer-vision sensors, computational design and analysis with deep learning, and AI-enhanced environmental assessments. We invite you to explore our ongoing projects and research endeavors.

Funding Partners

Vision

The name AI4CHEMIA pays homage to the origins of Chemistry (Kimia, "كمي", to conceal) and the pioneering spirit of Jabir ibn Hayyan. Today, we carry that spirit into the digital age by fusing physical sciences and domain knowledge with the power of AI.

We believe the future of engineering lies at the intersection of data and physical reality. Our vision is to unlock new possibilities and push the limits by applying AI-guided insights to chemical and energy systems. Whether we are optimizing complex processes, generating better-performing molecules and materials, or refining control systems.

 

 The resulting AI models are grounded in physics, chemistry, and historical data, ensuring feasibility while reaching for new innovations and better performance.

Latest Publications

Versatile Deep Learning Pipeline for Transferable Chemical Data Extraction

Explore How AI Redefines Chemical Data Extraction: Our latest publication presents ChemREL, a versatile deep learning pipeline that significantly improves the performance, transferability, and extensibility of chemical data extraction, achieving superior accuracy over existing methods and even GPT-4 across diverse chemical document datasets.

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P.O. Box 800, Riyadh 11421

@AI4CHEMIA

Disclaimer: The content and information on AI4CHEMIA.ORG do not represent the views or policies of King Saud University. This site is designed solely for facilitating data sharing and showcasing the portfolio of our research group. For official information, please refer to the authorized King Saud University websites.

© 2025 by AI4ChEMIA

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