Physics + chemistry intelligence

See the process. Control the outcome.

Eigen Control develops AI-assisted Raman analysis, industrial chemistry inference, and GPU-native simulation tools for faster quality, control, and engineering decisions.

Built for real-time industrial systems Physics-first models Houston engineered
Live process model
14:32:18 CST
InputProcess streamDCS + optical signals
InferenceEigen modelPhysics constrained
OutputLive chemistryControl ready
Raman responseComposition fingerprint
measured model
40090014001900 cm⁻¹
Quality index98.7inside target
Model confidence99.2%stable
Update interval1.0 scontinuous
Illustrative interface · not operating data
QUALITY SIGNAL · CONTROL READY
Computational platforms for high-consequence engineering and operations.
Refining
Energy transition
Aerospace
Advanced manufacturing
Preparing Fourier sketch
Fourier illustration

Pure math driven control.

AI identifies the Math.

The refinery's eigen-frequencies are where control starts: Fourier math finds the modes that ring in the process and turns them into levers a controller can move.

Setpoint Control frequency circle Pure math trace
CFD illustration

Fluid dynamics in motion.

One industrial intelligence layer

From live chemistry to faster physics.

The platform connects process data, optical measurements, numerical methods, and modern compute—turning complex engineering signals into decisions operators and technical teams can use.

01 / PROCESS INTELLIGENCE

Eigen IC Analyzer

Real-time inferential quality from existing process signals. Build reliable chemistry estimates for monitoring, advisory control, and closed-loop applications—without waiting on delayed laboratory results.

Industrial deployment path
02 / NUMERICS

Physics-first modeling

Applied mathematics and hybridizable discontinuous Galerkin methods designed for accurate, scalable scientific computing.

New math for new hardware
03 / SCALE

Multi-node GPU systems

Scientific workloads architected to exploit the parallel compute infrastructure already reshaping AI development.

Cluster-native architecture
Plant-ready architecture

Intelligence that fits the operating environment.

Eigen is designed around the system boundary that matters: instruments and process tags in, trusted quality values and engineering decisions out.

Industrial inference pathEdge or enterprise deployment

Signals

Raman spectra, DCS tags, laboratory reference data, and operating context.

RamanOPC / DCSHistorian

Edge compute

Data conditioning, signal health checks, and secure local model execution.

ValidationPreprocessMonitoring

AI inference

Physics-informed models estimate live composition, quality, or field variables.

PredictionConfidenceDrift

Operational value

Quality values, KPIs, advisory recommendations, and control-ready outputs.

DCSDashboardControl
ContinuousLive process visibility
ExplainableSignals with engineering context
MonitoredHealth, confidence, and drift
IntegratedOutputs where teams already work
Applications

Technical capability tied to plant value.

Every model is judged by the decisions it improves: quality, yield, throughput, energy, uptime, engineering cycle time, or safe operation.

01

Refining & petrochemicals

Live quality inference, Raman-based composition, and process-control support for complex hydrocarbon systems.

Quality · yield · control
02

Energy transition

Faster simulation for carbon capture, renewable fuels, emissions, water systems, and next-generation energy assets.

Design · scale-up · risk
03

Aerospace & mobility

High-performance fluid analysis for aerodynamics, thermal systems, and engineering certification workflows.

Speed · fidelity · iteration
04

Advanced manufacturing

Simulation and analytical intelligence for semiconductors, reactors, materials processing, and complex production systems.

Throughput · consistency · scale
Next-generation CFD

New math for modern compute.

Legacy CFD software was shaped by the limitations of earlier hardware. Eigen rewrites the solver stack around AI linear-algebra platforms, parallel numerical methods, and multi-node GPU systems.

01
AI platforms as linear-algebra engines

TensorFlow and PyTorch provide access to highly optimized GPU operations and scalable execution.

02
Hybridizable discontinuous Galerkin methods

Numerical schemes selected for accuracy, parallelism, and efficient solution of demanding flow problems.

03
Multi-node by design

An architecture intended to scale scientific computing across the same cluster class used for AI training.

Read the CFD platform note
Eigen solver / flow field● CONVERGING
Residual2.7e−08decreasing
GPU occupancy94.1%balanced
Mesh cells8.4Mdistributed
Nodes08synchronized
Illustrative solver view · not benchmark data
Engineering principles

Built for serious operating environments.

Advanced technology earns trust through rigor, integration, and clarity—not visual spectacle or opaque claims.

First-principles grounding

Models are developed with the physical and chemical structure of the problem in view—so predictions remain meaningful to engineers.

Compute-native architecture

Software and numerical methods are designed together for edge inference, GPU execution, and modern parallel infrastructure.

Operational integration

The end product is not a model file. It is a dependable signal, solver, or decision workflow that fits the plant and engineering stack.

Eigen Control

AI that reasons from first principles to predict reality.

We provide physics and chemistry computational platforms for planning and control of real-time industrial systems—where better visibility and faster engineering create measurable operating value.

Start a technical conversation

Bring us the process, signal, or simulation bottleneck.

Emailmail@eigencontrol.com Phone+1 504 298 9108 LocationHouston, Texas