Accelerating therapeutic discovery — from concept to validation-ready candidates
Genesis Molecular Engine, Inc. is a pipeline-first discovery interface that helps teams generate, evaluate, and prioritize small‑molecule candidates with scientific rigor.
Platform Snapshot
A concise view of modules the platform can expose as the roadmap progresses.
For external use, replace example metrics with validated results and cite datasets/tools.
About
Genesis is a modular discovery workflow that converts molecule generation into repeatable, auditable decision steps. It supports early discovery today while providing a clear path toward a scalable platform.
Compound design
Generate analog families with constraints (scaffolds, warheads, property windows) and capture the rationale for each change.
Screening signals
Docking + risk flags + novelty similarity checks, consolidated into an explainable prioritization record.
Codex logs
Each candidate receives a “scroll”: metrics, decisions, and next experiments — exportable for partners and investors.
Pipeline
A practical end‑to‑end workflow designed for immediate execution and long‑term scalability.
Core flow
Outputs
Each run produces artifacts suitable for partner communication and diligence packets.
Candidate table
SMILES, docking scores, property metrics, alerts, novelty similarity, and recommended next action.
Codex report (PDF/HTML)
A narrative report: what changed, why it matters, and the recommended experiments to validate the hypothesis.
Partner summary
Executive-ready brief: program objective, key results, roadmap, and collaboration request.
Note: Replace any placeholder metrics with validated results before external publication.
Technology
A modular stack — start lightweight, then deepen into automated modeling and learning loops as evidence grows.
AI generation
Template-constrained generation for analog families, with optional reinforcement on success signals.
Cheminformatics
Descriptor pipelines for sanitization, alerts, similarity search, clustering, and reporting.
Docking layer
Pose generation and scoring workflows with reproducible settings and parameter logging.
Quality gates
Filters for PAINS/alerts, rule-of-five, and toxicity predictors — treated as first-class data in decision making.
Export & auditability
Export to PDF/HTML/CSV with timestamps and run parameters to support internal review and partner replication.
AEON Layer
Decision intelligence that turns computational outputs into clear, action-oriented explanations.
What AEON does
AEON tracks why each molecular change was made and how it affected outcomes. It summarizes trade-offs (potency vs. safety), proposes next design moves, and keeps an audit trail.
AEON modules
Optional extensions: dataset-backed confidence scoring and continuous improvement as validated results are incorporated.
Investor Overview
A concise overview: scientific thesis, execution milestones, and how capital accelerates progress.
Thesis
The fastest path to value is a disciplined, repeatable discovery loop: generate high‑quality analog families, evaluate them across orthogonal signals, and deliver decision‑ready candidate packages suitable for partnership or validation.
Milestones
| Quarter | Deliverable |
|---|---|
| Q1 | Validated pipeline demo + exportable reports |
| Q2 | Partner pilots + curated target programs |
| Q3 | Improved scoring + automated learning loop |
| Q4 | Candidate packages for wet lab validation |
What funding enables
Concrete, diligence-friendly uses of capital.
Note: Valuation discussions should be supported by demonstrable traction, defensible IP, and comparable market data.
Contact
For partnerships, pilot studies, or investor discussions. This form generates a local email draft.
Partnership tracks
Select a track and we will reply with next steps.
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