Small Molecule Drug Design

High-Precision Modeling and Simulations, Real-World Impact

Accelerate discovery cycles with scalable in-silico pipelines that transform complex biology into actionable, high-value candidates.

1. Target Identification

Identify therapeutic goals and potential binding pockets on target

We begin with a short scoping consult to align on disease biology, clinical context, and decision criteria. Structural assets are curated (experimental or homology models), binding pockets prioritized by druggability and assay readiness, and success metrics defined up front.

2. Virtual Screening

Rapid in-silico hit discovery via docking

We model binding sites (and alternate/induced pockets) and run ensemble docking across relevant receptor conformations. Large libraries are screened to yield ranked poses and chemotypes with pose rationales and metadata preserved for downstream refinement.

3. Atomistic Molecular Dynamics

Investigate ligand–target complexes in motion

All-atom MD in explicit solvent relaxes docked poses, captures receptor flexibility, and resolves key water networks. Trajectory clustering and stability metrics (e.g., RMSD, contact/H-bond occupancy) confirm persistent binding modes and filter out unstable complexes.

4. Binding Affinity Prediction

Quantify ligand-target binding strength

Rigorous free energy methods, such as alchemical free energy perturbation (FEP), thermodynamic integration (TI), or molecular mechanics Poisson-Boltzmann surface area (MMPBSA), are used to quantify binding affinities and provide statistical confidence. This enables rational prioritization of drug candidates before expensive experimental testing.

5. Lead Optimization

Guiding chemical modifications to enhance efficacy

Insights from computational simulations are leveraged to elucidate structure-activity relationships and guide chemical modifications for lead compound optimization. A deeper understanding of mechanisms, such as nonspecific binding, can inform future inhibitor design.

Compare pricing

Tailored Solutions. Flexible for Any Budget.

Depending on system size, compute usage & level of support.

Core Plan
$10k – 36k
Advanced Plan
$40k – 86k+
Retainer Plan
$8k – 15k /month
Project Scope
1–2 systems, low–medium complexity
Multiple systems, high complexity
Long-term support, flexible tasks
Methods
Basic/diverse docking; short–mid MD; µs-level MD; preliminary ML
Extended MD; FEP/TI; DFT; custom ML/workflows
Priority resources; advisory analysis; ad-hoc studies
Deliverables
Full report + reproducible workflow (includes quick results + summary)
Complete technical dossier + reusable pipeline
Continuous deliverables with monthly milestones
Use Cases
Feasibility, lead triage, publication-ready prep
Lead optimization, regulatory/Review-ready submissions
Ongoing R&D and parallel projects
Customizable Report
Fixed Templates

FAQ

Expert Insights. Scaled to Your Needs

How does the consulting process work?

Our process follows six steps: Scope Determination → Solution Proposal → Pilot Study → Result Presentation → Evaluation → Finalization & Execution. This ensures transparency and alignment at each stage.

We offer fixed-price, milestone-based, time-and-materials, and retainer models, depending on project needs and level of support required.

Timelines depend on complexity, but small pilot studies can be completed in 2–4 weeks, while full-scale projects usually take 2–3 months or more.

Clients retain full ownership of results and foreground intellectual property. We work under NDA and provide clear IP agreements.

We work across nucleic acids (natural and chemically modified), proteins, small molecules, polymers, and aqueous or complex chemical systems. Our workflows are adaptable to diverse research questions in biology, chemistry, and materials science.

Absolutely. Experimental observations such as binding assays, thermodynamic measurements, or structural data can be used to calibrate, benchmark, and validate our computational results.

Our results are supported by validation against reference data, convergence diagnostics, and explicit reporting of uncertainties. We emphasize reproducibility and clearly state limitations alongside predictions.

Yes. Every project is tailored to the client’s system, objectives, and available data. We design flexible workflows that balance accuracy, scalability, and cost.

Deliverables typically include a detailed report with figures and tables, curated datasets, and reproducible workflows or scripts. All results are prepared to be publication- or presentation-ready.

Yes. We collaborate with academic labs, biotech startups, and established companies worldwide.

Yes. We provide preliminary computational results, methods descriptions, and figures that can strengthen the technical case of grant or funding proposals.

Yes. We routinely deploy workflows on cloud platforms for large-scale simulations, ensuring cost-efficiency, scalability, and secure data management.

Connect. Collaborate. Grow.

Be part of a growing community of molecular modeling and simulation. Share insights, discuss strategies, and stay updated with the latest trends.