Our Story
ABsynth AS emerged from a leading computational immunology group (Prof. Victor Greiff, University of Oslo, Norway) that was in need for a way to test, improve and benchmark their machine-learning strategies for predicting antibody specificity.
We developed a binding simulator (Absolut!) to generate synthetic 3D antibody-antigen complexes of one billion antibody-antigen complexes, to unlock continuous benchmarking and model refinement. See our article published in Nature Computational Science
click here for more detail
We have already shown that AI lessons learnt using Absolut! translate into real-world, such as ranking of AI models or the optimization of dataset design. We are now developing Absolut 2.0, a new binding simulator with native protein conformations.