Tuesday, June 10, 2025

Equitus KGNN as the cognitive core for ingesting and linking data







AIX-based architecture proposal integrating Equitus.ai KGNN & EVS with IBM's Hybrid Cloud, Data & AI, and Automation stack—tailored to support ROI justification through EVW/EEV metrics and Gen AI enablement.


πŸ“˜ Custom AIX Architecture Proposal:

“Modernizing Mission-Critical Workloads with Gen AI and Equitus.ai”


1. 🎯 Executive Summary

This proposal outlines how integrating Equitus.ai's Knowledge Graph Neural Network (KGNN) and Video Sentinel (EVS) into IBM AIX environments can reduce ETL overhead, lower FTE demand, and increase mission-aligned outcomes. It provides stakeholders with a defensible business case to justify Gen AI investments through measurable EVW (Equivalent Value of Work) and EEV (Equivalent Employee Value) outcomes.


2. 🧩 Solution Stack Overview

Layer Components Partners/Tech Stack
Edge & Input Layer Sensors, Cameras, Network Logs EVS (Equitus Video Sentinel)
AI Ingestion Layer Data feeds, video streams, structured/unstructured KGNN (Knowledge Graph Neural Network)
AIX Core Layer IBM Power10, AIX OS, Virtual I/O Servers IBM
Middleware Red Hat OpenShift, IBM MQ, IBM Cloud Pak IBM, Equitus, Watsonx
Data Fabric / ML Watsonx, DataStage, Db2 AI, Instana, Turbonomic IBM AI & Automation
User Interface Layer Dashboards, Command & Control Apps, Reporting Maximo, Equitus UX, Custom UIs

3. πŸ“‰ Legacy Pain Points vs. Equitus-Enabled Improvements

Pain Point Improvement via Equitus.ai EVW / EEV Impact
ETL process delays AI modeling KGNN auto-generates structured knowledge from data ↑ EVW, ↓ FTE for data prep
High analyst hours for video/audio review EVS extracts and tags video metadata automatically ↑ EEV per analyst, ↓ SOC costs
Data silos across workloads KGNN federates and contextualizes disparate datasets ↑ EVW across domains (Ops, Intel, Maint.)
Low explainability in AI outcomes Transparent graph lineage and relevance scoring ↑ Trust, faster adoption of Gen AI tools

4. πŸ“ Reference Architecture Diagram

Let me generate a high-resolution architecture graphic showing:

  • IBM AIX + Power10 as the backbone

  • Equitus KGNN as the cognitive core for ingesting and linking data

  • EVS processing video feeds at the edge

  • Watsonx and IBM Cloud Paks using KGNN outputs for AI/ML

  • Red Hat OpenShift enabling hybrid deployment

  • Dashboards or operational UIs on top

🟒 Would you like the diagram in:

  • PowerPoint Slide Format?

  • High-resolution PNG or PDF?

  • Whitepaper-style diagram with explainer notes?


5. πŸ’° Business Case Using EVW/EEV Metrics

Metric Legacy Cost Estimate With Equitus.ai Savings (%) Value Expression
ETL Engineering Hours $2.2M/year $0.8M/year 63% ↑EVW = $1.4M annual
SOC Video Analysts $1.5M/year $0.6M/year 60% ↑EEV = $900K annual
Time-to-Model AI Workloads 12–18 weeks 3–4 weeks 70% faster Faster mission impact

6. πŸ“ Deployment Model Options

Deployment Type Description Use Case
On-Prem AIX Full-stack on IBM Power10, closed-loop systems Defense, CBP, Fed Integrators
Hybrid Cloud Local KGNN + Watsonx on IBM Cloud/Red Hat OpenShift Enterprise, Intelligence Fusion
Edge + Cloud EVS on border edge; KGNN + Watsonx in cloud Border surveillance, Public Safety

7. πŸ“ž Next Steps & Contact

πŸ§ͺ Proof of Value:

  • Available 60–90 day PoV with IBM + Equitus teams.

  • Custom sandbox with redacted/simulated mission data.

πŸ“ Contacts:


πŸ”„ Would you like me to:

  • Generate a PowerPoint stakeholder pitch deck ?

  • Produce the system diagram first?

  • Provide a PDF draft proposal ?

Let me know which output format(s) and use-case area (eg, CBP, logistics, finance, maritime) you want prioritized.

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