Smart bioactive materials for sustainable nutrition and crop enhancement: Integrating AI-driven design with functional biopolymers

University of Leeds Original Source

About This Opportunity

This interdisciplinary PhD project explores the development of smart bioactive materials that can simultaneously enhance nutritional value in food systems and/or promote plant health in agriculture. The research integrates materials science, machine learning, and nutrition, offering a unique opportunity for candidates from diverse backgrounds to contribute to sustainable innovation. The project builds on recent advances in biopolymer-based materials. The PhD student will design and synthesize composite materials using bioactives, optimizing their structure and functionality for dual applications. A key innovation in this project is the use of machine learning-driven materials informatics. Machine learning models will be employed to predict the relationships between material composition, structure, and performance. This data-driven approach will accelerate the discovery and refinement of formulations, enabling targeted improvements in bioactivity, stability, and scalability. The student will conduct experimental testing to evaluate the materials' effectiveness in both food and agricultural contexts. This includes assessing nutrient delivery in food matrices and measuring crop growth in controlled environments. The project also includes a sustainability assessment, examining the environmental impact and life-cycle of the developed materials. This PhD offers broad accessibility to candidates with backgrounds in materials science, chemistry, food science, biotechnology, plant sciences, AI/data science, or chemical/environmental engineering. The outcomes of this research have the potential to contribute to global challenges in food security, sustainable agriculture, and green materials development.

36 - 49 mo
1 awards

Who Can Apply

Region
United Kingdom
Project in
United Kingdom
Applicants
individual

Application Details

Stages

  1. 1 single_stage

Required documents

cv research_proposal cover_letter transcripts

Restrictions

  • reporting_requirements