The researchers want to show the broad range of applications of supramolecular materials. That is why they have chosen to test their techniques on medical applications, such as implant coverings, as well as electro-catalysis for water splitting in hydrogen production.
One of the main problems with medical implants, for example, is the growth of bacteria, which can coat the surface of a device and cause infections. New covering materials that keep bacteria from developing by actively releasing drugs or by forming a repellant surface could be the solution. The properties of supramolecular systems make them powerful tools to fulfill such functions and constitute an ideal platform to discover novel "smart" multicomponent coatings.
Supramolecular materials are a broad and diverse class of materials. They consist of different molecular building blocks that can be combined in many ways. These macro-assemblies can consist of a variety of elements like carbon or metals. Some of them can form cages that trap other chemical compounds. The singular building blocks are held together via so-called non-covalent interactions like hydrogen-bonding and hydrophobic or electrostatic interactions. Compared to covalent bonds they are much more diverse and potentially reversible.
"Because of the great diversity of supramolecular materials, it is possible to generate an incredible number of compounds with different characteristics, making them fantastic tools in many applications," says Angela Casini, co-coordinator of the network and Professor of Medicinal and Bioinorganic Chemistry. "But because of the large variety of possible combinations, finding the best out of billions is a bit like looking for a needle in the haystack," she adds.
This is where machine learning comes in. The team of scientists has a few different plans to integrate Artificial Intelligence into materials science. "Our main goal is to teach machines to predict the best combination of molecules for a particular set of future applications. We therefore need to learn how much data and what type of data about a supramolecular material we have to provide to the machine in order to predict the most appropriate combinations," says Gagliardi. Another way to use the potential of machine learning is to accelerate directly atomistic simulations of molecular properties.COMPAMED-tradefair.com; Source: Technical University of Munich