Symbolia AI introduces BioForge for therapeutic discovery.

BioForge integrates target biology, structural modeling, chemistry, biologics design, ADMET, docking, molecular dynamics, and active learning to accelerate drug discovery.
We are fusing natural-language scientific reasoning with computational workflows to turn therapeutic hypotheses into validation-ready programs.

AI scientist

platform for therapeutic discovery

Closed-loop

targets, molecules, models, and assays

BioForge

drug discovery operating system

Focus Areas

01Protein targets and disease biology
02Small molecules, peptides, binders, and antibodies
03ADMET, docking, molecular dynamics, and wet-lab validation

Drug discovery needs closed-loop reasoning

BioForge applies Symbolia AI's AI scientist engine to therapeutic discovery, from protein targets and molecule design to wet-lab validation.

Scientific orchestration layer

LLM-based scientist workflows connect literature, domain knowledge, datasets, assumptions, and hypotheses in one traceable system.

Proprietary reasoning platform

BioForge fuses natural-language scientific reasoning with computational tools, structured evidence, and iterative validation workflows.

Multimodal evidence

Targets, structures, omics data, assays, chemistry, biologics sequences, ADMET signals, and partner datasets can be reasoned over together.

Better candidate prioritization

The platform ranks targets, molecules, peptides, binders, antibodies, assays, and validation paths with explicit scientific rationale.

Closed-loop learning

Bayesian optimization and active learning help decide what to design, simulate, synthesize, express, or test next as validation data arrives.

Partner-ready evidence

Outputs are designed for pharma R&D teams, biotech companies, translational labs, CRO partners, and platform discovery teams.

Questions before a partnership conversation.

BioForge is Symbolia AI's AI scientist platform for therapeutic discovery. It integrates target biology, chemistry, biologics design, ADMET, docking, molecular dynamics, and wet-lab validation feedback.

BioForge connects natural-language scientific reasoning with computational workflows, evidence graphs, and validation feedback so teams can move from broad therapeutic questions to ranked candidates and next experiments.

BioForge supports protein target intelligence, small molecule design, peptide and binder design, antibody discovery, ADMET and developability triage, docking, molecular dynamics, and wet-lab validation planning.

The platform is being designed for scientific literature, biomedical knowledge graphs, omics data, structures, compound libraries, sequences, assay results, ADMET signals, simulation outputs, and partner validation data.

Pharma teams, biotech companies, platform discovery groups, translational labs, CRO partners, and investors building therapeutic discovery programs are the best fit.

If you want to partner or collaborate with us, reach out!

We are building BioForge for protein targets, small molecules, peptides, binders, antibodies, ADMET, docking, molecular dynamics, and wet-lab validation, with pharma and biotech partners who want faster, sharper discovery loops.