The journey from pilot to plant-wide deployment in industrial AI involves structured phases: Foundation, Proof of Concept, Pilot Production, Use Case Expansion, and Plant-Wide Optimization. Each phase builds on the previous, ensuring scalability, trust, and operational success. Key metrics like ROI, downtime reduction, and operator trust guide the process. XenonStack's platform approach enables rapid expansion, with clear steps for integrating AI agents, improving decision-making, and achieving plant-wide optimization with built-in governance and compliance.
The XenonStack Value Proposition
"We don't just deploy AI agents.
We build the decision infrastructure that makes them trustworthy."
Converts interest into action
Industrial AI solutions are deployed in phases to ensure smooth scaling and minimize risk. These phases range from initial assessments and proof of concept to full-scale deployment and optimization.
Phase 0: Foundation (4-6 weeks)
Phase 1: Proof of Concept (8-12 weeks)
Phase 2: Pilot Production (3-6 months)
Phase 3: Use Case Expansion (6-12 months)
Phase 4: Plant-Wide Optimization (12-24 months)
What is the goal of the Plant-Wide Optimization phase?
The Plant-Wide Optimization phase maximizes operational efficiency through multi-plant federation, holistic optimization, and continuous improvement via decision lineage.
Success is measured not only in cost savings, but in operational reliability. Key indicators include reduction in unplanned downtime, faster incident resolution, fewer compliance findings, and operator trust in AI recommendations. These metrics ensure that industrial AI delivers sustained, measurable value.
|
Phase |
Duration |
Services Investment |
Platform License |
|
Foundation |
4-6 weeks |
$50-100K |
Assessment |
|
POC |
8-12 weeks |
$150-300K |
Development |
|
Pilot |
3-6 months |
$200-400K |
Production (limited) |
|
Expansion |
6-12 months |
$300-600K |
Production (plant) |
|
Plant-Wide |
12-24 months |
$500K-1M |
Enterprise |
|
Capability |
ElixirData + NexaStack |
Generic AI Platforms |
Point Solutions |
|
Manufacturing Context |
Purpose-built context graph |
Generic data models |
No unified context |
|
Decision Governance |
Built-in FDA, ISO, OSHA compliance |
Add-on or missing |
Limited or none |
|
Decision Lineage |
Every decision traced to factors |
Audit logs only |
Basic logging |
|
Promotion Logic |
Advisory → Autonomous progression |
Manual workflows |
No progression |
|
Industrial Integration |
Pre-built SCADA, MES, ERP adapters |
Custom development |
Narrow scope |
|
Multi-Agent Orchestration |
Native coordination, conflict resolution |
Multiple separate tools |
Single function |
|
Edge Deployment |
Process-grade edge runtime |
Cloud-only or limited |
Varies |
Platform Synergy
Context OS (ElixirData) = The system of logic that gives AI agents the context they needAgent.
Platform (NexaStack) = The execution infrastructure that runs AI agents reliably.
Together = The complete stack for the Agentic Manufacturing Enterprise
|
Component |
Technology |
Capability |
|
Context Graph |
Graph database (Neo4j/Custom) |
10M+ nodes, sub-second queries |
|
Decision Plane |
Rule engine + ML integration |
Deterministic + probabilistic reasoning |
|
Lineage Engine |
Immutable log (append-only) |
Cryptographic integrity, time-series |
|
Constraint Engine |
Declarative constraints |
Hard/soft limits, complex rules |
|
API Layer |
REST + GraphQL + gRPC |
Integration flexibility |
|
Component |
Technology |
Capability |
|
Agent Runtime |
Container-based (K8s) |
Horizontal scaling, HA |
|
Workflow Engine |
DAG-based orchestration |
Complex multi-step workflows |
|
Model Serving |
MLflow + custom serving |
Multi-model, A/B testing |
|
Integration Adapters |
OPC-UA, MQTT, REST, etc. |
Pre-built industrial connectors |
|
Edge Runtime |
Lightweight containers |
ARM/x86, air-gapped capable |
Scaling industrial AI from pilot to plant-wide deployment is a structured, phased journey that ensures measurable success and operational reliability. XenonStack’s approach leverages a powerful combination of ElixirData's Context OS and NexaStack's execution infrastructure to provide a clear, achievable path from proof of concept to full-scale optimization. With built-in decision governance, compliance, and continuous improvement, XenonStack ensures that AI agents are not only efficient but also trustworthy. Success is measured not just in cost savings, but in enhanced operational metrics such as reduced downtime, faster incident resolution, and increased operator trust. By following this roadmap, manufacturers can seamlessly scale their AI solutions and unlock sustainable value across their operations.
Blog 1: The Missing Layer in Manufacturing AI: Context Graph
Blog 2: The Core AI Agents Powering Smart Manufacturing