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Accelerate Antibody Discovery with AntiDIF on Vecura

Antibody researchers can now generate diverse, structurally-compatible antibody sequences directly within Vecura using the AntiDIF model, bypassing the need for complex local infrastructure setup.

May 12, 2026AntiDIF
AntiDIF
AntiDIF is now available on Vecura
vecura.com

What is AntiDIF?

AntiDIF (Antibody-specific Discrete Diffusion for Inverse Folding) is a specialized discrete-diffusion model designed to generate novel antibody amino-acid sequences that fold into a specific, prescribed backbone geometry. By fine-tuning the RL-DIF architecture on antibody-specific structural data, the model effectively addresses the challenge of creating diverse antibody candidates while maintaining high sequence-recovery rates. It is particularly valuable for researchers aiming to explore a wider design space during antibody discovery campaigns, moving beyond the limitations of general-purpose inverse folders.

What can users do with AntiDIF on Vecura?

With AntiDIF on Vecura, users can:

  • Generate novel antibody variable-domain sequences directly from a provided heavy/light chain PDB backbone.
  • Improve the diversity of sampled sequences compared to traditional autoregressive methods.
  • Perform targeted redesign by restricting sequence generation to specific CDR loops or hotspot residues using custom free_positions.
  • Easily manage the design process through a guided interface without needing to configure complex, underlying infrastructure.

What the output means

The output provides a comprehensive set of predicted sequences, detailed sequence recovery metrics, and a diversity score that quantifies how varied the generated candidates are for a given backbone.

This output should be used to support scientific decision making. It does not replace experimental validation.

Why this matters

The traditional antibody design process often faces a bottleneck where computational tools produce sequences with limited structural or sequence variation, restricting the scope of experimental screening. By enhancing inter-sample diversity while strictly adhering to a defined backbone, AntiDIF allows researchers to explore a broader, more promising candidate space.

This capability empowers scientists to generate more robust, diverse panels of antibody candidates, significantly accelerating the initial stages of therapeutic antibody discovery.

  • Developed by: Nikhil Branson (OXPIG)
  • Source: Official GitHub Repo
  • Reference: AntiDIF Preprint (bioRxiv)

Try AntiDIF on Vecura.

Open the model workspace and start evaluating it with your own inputs.

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Topics

antibodyinverse-foldingdiscrete-diffusionprotein-designantibody-designRL-DIFPiFold

On this page

What is AntiDIF?What can users do with AntiDIF on Vecura?What the output meansWhy this matters
Vecura

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