Vsevolod ViliugaPhD Student
About me
Recent advances in geometric deep learning and generative modeling have enabled the design of novel proteins with a wide range of desired properties. However, current state-of-the-art approaches are typically restricted to generating proteins with only static target properties, such as motifs and symmetries. In my work, I aim to develop novel generative modeling frameworks capable of performing protein structure generation conditioned on dynamic structural properties. Structural dynamics plays a key role in protein functionalities, such as catalysis, molecular recognition and ligand binding, thus we hope that our methods will advance molecular design for biologically relevant functionalities.
Geometric deep learning, protein design