INVENTING TECHNOLOGY that REDEFINES CHEMISTRY
38 years of validated industrial data · Four applications deployed

Forty Years
of Process
Data. New
Intelligence.

Most chemicals firms approaching AI start from a cold dataset. Paragon starts from the opposite position. Thirty-eight years of validated industrial operation across multiple licensee sites has generated the operating data — feed compositions, reaction conditions, yield profiles, NDOM trends, energy curves, maintenance cycles — that machine intelligence is most valuable trained on.

Confirmed deployed · Founder-validated

Four Deployed Applications

Application 01 ● Deployed

Process Optimisation in Real Time

Predictive models trained on validated sulphonation operating data anticipate yield deviation, NDOM excursion and energy-intensity drift before they occur — enabling closed-loop adjustments to feed rates, reaction temperatures and neutralization kinetics inside the operating envelope.

Primary signal

Yield deviation prediction

Action

Closed-loop feed rate / temp / neutralization adjustment

Outcome

NDOM maintained at 0.5% vs 1.5–2.0% market norm

Application 02 ● Deployed

Predictive Maintenance & Asset Reliability

Equipment vibration, thermal and process-stream signatures fed into anomaly-detection models forecast component failure ahead of breakdown. Combined with the novel sulphur platform's structural 36-month maintenance cycle, this targets zero unplanned downtime over a deployment life.

Input signals

Vibration · thermal · process-stream signatures

Model

Anomaly detection trained on validated industrial cycles

Target outcome

Zero unplanned downtime · structural 36-month maintenance cycle

Application 03 ● Deployed

R&D Acceleration & Pipeline Programme Design

Generative chemistry models and reaction-pathway simulation accelerate the lab-to-pilot phase of pipeline programmes — biogas → surfactants, algae cultivation optimisation, FHPC concentrate formulation. Computational pre-screening reduces the experimental burden by an order of magnitude versus conventional bench-led R&D.

Methods applied

Generative chemistry · reaction-pathway simulation

Programmes accelerated

Biogas · Algae · FHPC Concentrates

Benchmark improvement

Order-of-magnitude reduction in experimental burden vs bench-led R&D

Application 04 ● Deployed

Plant Engineering Productivity

AI-assisted plant engineering — generative design of equipment lists, automated P&ID quality-checking, AI-assisted procurement specification — accelerates LSTK delivery cycles. Combined with the 42-day commissioning record at Pithampur, this delivers consistently faster plant handover than the market norm.

Applications

Equipment list generation · P&ID QC · procurement spec

Impact

Accelerated LSTK delivery cycles end-to-end

Reference benchmark

42-day commissioning record · Pithampur

Non-negotiable principles

Three Thesis Principles

01

AI augments first-principles engineering. It does not replace it.

38 years of process chemistry knowledge is the foundation. AI accelerates and improves the application of that knowledge. It cannot substitute for it.

02

Data quality beats data volume.

38 years of validated industrial operation across multiple licensee sites. Feed compositions, reaction conditions, yield profiles, NDOM trends, energy curves, maintenance cycles — documented, not reconstructed.

03

AI deployment is a licensable capability.

The AI moat extends the IP moat. Licensees access not just the process technology but the intelligent operating layer built on top of it — extending the economic case for the Paragon licence.

What we do not claim

Precision over marketing.

  • We do not claim AI will replace process engineers.
  • We do not claim machine learning models can design novel chemistries from first principles without human chemistry expertise.
  • We do not claim AI-driven autonomy in safety-critical operations. We engineer for human-in-the-loop control.