AI RESEARCH

Inverse Design of Inorganic Compounds with Generative AI

arXiv CS.LG

ArXi:2604.11827v1 Announce Type: cross Machine learning is revolutionizing chemistry. Beyond the value of predictive models accelerating virtual screening, generative AI aims at enabling inverse design, reversing the compound-to-property prediction paradigm into property-to-compound generation. Chemists now have access to a rich AI toolbox for organic chemistry, including drug discovery. However, the application of these methods to inorganic compounds remains limited by the challenges posed by their intrinsic nature.