Artificial Intelligence

Production-grade AI for industrial use cases. Predictive maintenance, computer vision QC, anomaly detection — built on your data, deployed on your terms.

Free Consultation

INDUSTRIES WE SERVE

ManufacturingEnergyMaritimeWater TreatmentHealthcareRetailLogisticsSmart City

AI that ships to production, not just demo

AIINPUTHIDDENOUTPUT
ProductionGrade
Edge + CloudDeployment
MLOpsPipeline

Many industrial AI projects die in POC. SURIOTA treats AI like any other engineering discipline — with version control, observability, model registries, and SLA. We pick high-ROI use cases, train on your data, and deploy with rollback and monitoring.

From predictive maintenance on rotating equipment to computer-vision quality control on production lines, our models run reliably in conditions where cloud GPUs are not available.

Edge-capable, retrainable, and governed — we build AI you can audit and trust.

WHY SURIOTA

AI that lives beyond the demo

Production-ready

Models ship with monitoring, drift detection, retraining pipelines, rollback. Not just a Jupyter notebook.

Edge-capable

Quantised models run on industrial gateways or PCs — no constant cloud dependency.

ROI-grounded

Every AI use case ships with measured baseline, target, and post-deployment value tracking.

Data sovereignty

Train and run on your infrastructure if needed. Your data never leaves your control.

WHAT WE DELIVER

Our AI capabilities

01

Predictive Maintenance

Vibration, temperature, current signature analysis on rotating equipment. Reduce downtime 30–60%.

02

Computer Vision QC

Defect detection, dimensional inspection, label verification using industrial cameras and YOLO models.

03

Anomaly Detection

Unsupervised anomaly detection on sensor streams, network traffic, energy consumption.

04

Demand Forecasting

Energy, water, inventory, staffing forecasts. Time-series models tuned for Indonesian seasonality.

05

NLP & Document AI

Invoice extraction, contract analysis, customer-service triage, multilingual (EN/ID) document understanding.

06

MLOps Platform

Model registries, CI/CD for ML, feature stores, monitoring, ground-truth labelling workflows.

HOW WE WORK

Our AI delivery workflow

  1. 01

    Use-case scoping

    Pick the highest-ROI AI use case grounded in data availability and operational constraints.

  2. 02

    Data audit

    Inventory data sources, quality, labels, gaps. Define collection plan if data is insufficient.

  3. 03

    Model development

    Baseline first, then iterate. Cross-validation, hyper-parameter search, fairness checks.

  4. 04

    Deploy & integrate

    Edge or cloud inference, API, dashboard, alerts, human-in-the-loop where appropriate.

  5. 05

    Operate & retrain

    Drift monitoring, retraining triggers, A/B tests, governance, value reporting.

FAQ

Frequently Asked Questions

Do we need a lot of data to start?

Depends on use case. Computer vision QC may need only 500–2000 labelled images per class. Sensor-based predictive maintenance benefits from 3–6 months of historical data.

Can the AI run without internet?

Yes for inference. We quantise and compile models to run on edge devices (Jetson, x86 industrial PCs).

What about hallucinations and reliability?

We use task-specific models (not general-purpose LLMs) for industrial use cases, plus rule-based guards and human-in-the-loop where stakes are high.

Will SURIOTA own the model?

You own the trained model and the data. We license MLOps tooling. On termination, we hand over weights, code, and runbooks.

How is success measured?

Pre-deployment baseline, success criteria signed off before launch, then quarterly value reviews. If the AI is not paying back, we say so.

Get Started

Ready to deploy industrial AI?

Free initial consultation — share your data and use case, our ML team responds within 24 hours with a feasibility check including data sufficiency, baseline, and target metrics.

✓ No obligation✓ Response within 24h✓ Batam-based engineering team