AI co-scientist that turns ideas intohits

Accelerate life science discovery from hypothesis to validation.

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Vecura — Discovery Workspace

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Agents turn ideas into results

Describe your experiment. Vecura plans the steps, picks the right tools, and runs the full workflow while you focus on making decisions.

Vecura
Find covalent inhibitors targeting KRAS G12C. Screen fragments, check safety.

Running 3-step workflow

47 hits passed screening. Safety results in ~45s.
Agent is running · step 3 of 3
Vecura — Active Experiments

Works across every type of discovery challenge

Small molecules, peptides, repurposing, lead optimisation — describe your goal and Vecura builds the right workflow for it. No templates, no fixed steps. Or configure each step manually when you need precise control.

A scientific knowledge base for every source

One indexed knowledge base over both sides of your science — external sources like ChEMBL, PubChem, PubMed, and patents, plus internal data from your assays, prior screens, and SAR. Vecura pulls the right context for every hit, so the model reasons over everything you know.

Vecura — Knowledge Base
Evidence streamlive
ChEMBLAcrylamide warhead retains Cys12 selectivity
externalliterature
PubMed 38421Adagrasib resistance via Y96D mutation
externalliterature
NYB-Q3-2025312 hits · 18 in cyano-acrylamide series
internalscreen
USPTO WO2024Scaffold overlap · chiral pyrimidine claims
externalpatent
NYB4082912 sources linked
Mechanismcovalent · Cys12
Selectivity38× vs HRAS · in-house
Known resistanceY96D · cross-checked
Patent riskclear of WO2024/...
Internal precedent4 analogs · NYB-Q3
Linked citations17 sources
Vecura — Tools

Tools

Explore and run AI models

OpenFold3

All-atom 3D structure prediction of biomolecular complexes using NVIDIA NIM-packaged OpenFold3.

ProteinStructure prediction
BioEmu

Biomolecular Emulator (BioEmu) — a generative deep-learning model that samples from the approximated equilibrium distribution of 3D structures for a protein monomer given its amino acid sequence.

ProteinDynamics modeling
PepMLM

Target Sequence-Conditioned Generation of Peptide Binders via Masked Language Modeling

ProteinRepresentation learning
HMMER

HMMER is a C toolkit for biological sequence analysis using profile hidden Markov models (profile HMMs). It is widely used for protein and DNA homology search and is the engine behind Pfam, InterPro, and many large-scale annotation pipelines. The package is a collection of command-line programs (phmmer, jackhmmer, hmmsearch, hmmscan, nhmmer, nhmmscan, hmmbuild, hmmalign, hmmemit, plus utilities).

DNASearch
Chai-1

Multi-modal foundation model for biomolecular structure prediction of proteins, ligands, DNA, RNA, and complexes.

ProteinRepresentation learning
PROPKA 3

PROPKA predicts the pKa values of ionizable groups in proteins (v3.0) and protein-ligand complexes (v3.1+) based on the 3D structure using an empirical/heuristic method. It also computes folding free-energy and protein charge profiles as functions of pH.

ProteinProperty prediction
SaProt 650M (AF2)

SaProt is a structure-aware protein language model that combines amino-acid tokens with FoldSeek 3Di structural tokens for improved protein representation, zero-shot mutation effect prediction, embedding extraction, and inverse folding.

ProteinRepresentation learning
RFantibody

Structure-based de novo antibody and nanobody design pipeline combining an antibody-finetuned RFdiffusion for backbone design, ProteinMPNN for CDR sequence design, and an antibody-finetuned RoseTTAFold2 for in silico filtering.

AntibodyDesign
MDTraj

MDTraj is a Python library for reading, writing, and analyzing molecular dynamics (MD) trajectories with fast, vectorized routines for RMSD, secondary structure, hydrogen bonds, distances, dihedrals, SASA, radius of gyration and other observables.

ProteinDynamics modeling
hERGAI

HERGAI is a structure-based AI tool for predicting human Ether-a-go-go-Related Gene (hERG) potassium-channel inhibitors. It trains four binary classifiers (RF_BC, XGB_BC, DNN_BC and the stacking ensemble DNN_SC) on PLEC (Protein-Ligand Extended Connectivity) fingerprints extracted from ClassyPose-selected docking poses of small molecules against a hERG receptor structure. DNN_SC is reported as the best-performing model in the paper.

Small moleculeProperty prediction
Pocket2Mol

Pocket2Mol: Efficient Molecular Sampling Based on 3D Protein Pockets. Uses equivariant graph neural networks to autoregressively generate 3D ligand molecules conditioned on a protein binding pocket.

Protein complexDesign
MMseqs2

MMseqs2 (Many-against-Many sequence searching) is an ultra-fast, sensitive sequence search and clustering suite for protein and nucleotide sequences.

DNASearch

212 tools · More added regularly

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State-of-the-art tools, always current

Vecura connects to the best open models in the field — OpenFold, AutoDock, ADMETlab, and more. Updated continuously as the science moves forward.

Browse all tools →

From the people running the experiments

Our team spans medicinal chemistry, biology, and comp chem. Vecura is the first tool that actually works for all three without specialised setup. We've gone from hand-rolling pipelines to running entire campaigns through one workspace.

Head of Discovery

Series A biotech

I used to spend half my day formatting outputs between tools. Vecura just handles it — I describe the experiment and get back ranked hits with safety flags already attached.

Computational Chemist

Oncology biotech

The ADMET integration alone saves us from wasted screening cycles. We know which leads are viable before we ever touch the bench.

Drug Discovery Scientist

Mid-size pharma

What used to take a week of script-wrangling — fetching structures, running docking, filtering, summarizing — Vecura does in an afternoon.

Structural Biologist

Academic lab

The agent doesn't just run models — it reasons about which model to use and why. That's the part that surprised me most.

Bioinformatics Lead

Research institute

I can ask it to screen a target, generate a brief, and flag literature conflicts — all in one conversation. It's like having a computational collaborator available at 2am.

Principal Scientist

Drug repurposing startup

Supported by a global ecosystem

NVIDIAHPEEquinix

Start your next discovery with Vecura

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