Saturday, January 31, 2026

"Custom Code Remediation"

 




Aimlux.ai Consulting Services is offering Enterprise migration services on Equitus.AI KGNN enables transforms the 2025 SAP transition from a high-risk manual overhaul into an automated, predictable technical conversion. 

For a standard 2TB–5TB SAP instance, the efficiency gains are centered on the platform's ability to "understand" the semantic relationships within Oracle data and map them autonomously to SAP HANA or IBM DB2.







Per-Database Efficiency & Savings (2TB–5TB Instance)





 

Migration Phase

Traditional Manual Effort (Estimated Hours)

Equitus KGNN Effort (Automated/AI-Led)

Efficiency Gain (%)

Cost Displacement Note

Data Discovery & Profiling

160 - 240 hrs

12 - 20 hrs

92%

Eliminates manual profiling; KGNN builds the graph instantly.

Schema Mapping (Oracle to HANA)

320 - 450 hrs

40 - 60 hrs

87%

Auto-generation of semantic mappings reduces architect hours.

Custom Code Remediation

600 - 800 hrs

180 - 240 hrs

70%

Neural network identifies logic patterns and suggests fixes.

ETL & Pipeline Setup

200 - 300 hrs

0 hrs (Zero-ETL)

100%

KGNN's "Zero-ETL" approach connects data without staging.

Validation & Reconciliation

120 - 180 hrs

24 - 36 hrs

80%

Automated semantic integrity checks ensure data parity.

TOTAL

1,400 - 1,970 hrs

256 - 356 hrs

~82%

Saves ~$180k-$250k in labor per instance.







Why the First 12 Months? (The ROI Drivers)

The 2025 deadline creates a "bottleneck" where specialized SAP/Oracle talent will be at a premium. Equitus KGNN achieves a comprehensive ROI within the first year by:

  1. Removing Talent Dependencies: You no longer need a massive team of high-cost consultants for manual mapping.

  2. Infrastructure Optimization: By running natively on IBM Power10, KGNN utilizes high-bandwidth memory to process these 5TB datasets without the latency of traditional x86 clusters.

  3. Risk Mitigation: By automating Custom Code Remediation (the #1 cause of SAP migration delays), you avoid the "hidden" 13th and 14th months of project overrun.

Strategic Transition to IBM RISE

Integrating Equitus with IBM RISE for Cloud ensures that once the data is migrated, it remains in a "Clean Core" state. The KGNN acts as a permanent semantic layer, allowing future AI applications on IBM Cloud to access SAP data without re-building complex integrations.

Would you like me to expand the "Custom Code Remediation" section into a step-by-step breakdown of how the KGNN identifies legacy Oracle PL/SQL for conversion?







This overview of SAP AI migration tools explains how AI-powered analysis can reduce the overall time and cost of moving from legacy ECC systems to modern S/4HANA environments.

Traditional migration, Custom Code Remediation is the single greatest bottleneck, often consuming 40% to 60% of the total project timeline. When moving from Oracle to SAP HANA or IBM DB2, legacy PL/SQL often contains complex logic, triggers, and proprietary extensions that don't translate 1:1.

Equitus KGNN automates this by treating code as a connected graph of intent rather than just lines of text. Here is the step-by-step breakdown:





Step-by-Step Custom Code Remediation via KGNN

1. Semantic Parsing & Node Extraction

Instead of a simple "find and replace," the KGNN ingests the Oracle PL/SQL codebase and deconstructs it into nodes.

  • Logic Nodes: Functions, procedures, and calculations.

  • Dependency Edges: How a specific trigger in Oracle affects a table that SAP HANA needs to access.

  • The Result: A visual "Code Map" that shows exactly which pieces of custom logic are critical and which are obsolete.

2. Pattern Matching against the "Target Ontology"

The KGNN compares the extracted Oracle patterns against a pre-built library of SAP HANA (SQLScript) and IBM DB2 (SQL PL) best practices.

  • Contextual Translation: It identifies if a proprietary Oracle hint (e.g., /*+ INDEX(...) */) has a semantic equivalent in the target database or if the target’s optimizer handles it natively.

  • Optimization Identification: The AI recognizes "Row-based" logic in Oracle that should be converted to "Columnar-optimized" logic in HANA to take advantage of in-memory performance.

3. Impact Propagation Analysis

One change in a stored procedure can break five connected applications. The KGNN performs Change Impact Analysis:

  • It predicts the "downstream" effects of modifying a specific piece of custom code.

  • It flags "High-Centrality" code—logic that is touched by multiple business processes—requiring human-in-the-loop validation, while automating the "Leaf" nodes (isolated logic).

4. Automated "Clean Core" Synthesis

To align with SAP's Clean Core strategy (especially for RISE with SAP), the KGNN identifies custom code that can be replaced by Standard SAP Functionality.

  • It maps custom Oracle-side calculations to standard HANA Calculation Views.

  • This prevents "technical debt carry-over," ensuring the new environment is leaner than the legacy one.

5. Iterative Verification & Explainability

Unlike standard AI, the KGNN provides an audit trail. For every line of code converted:

  • Provenance: It shows the original Oracle source.

  • Reasoning: It explains why the specific target syntax was chosen.

  • Unit Test Generation: It automatically suggests test parameters based on the data relationships discovered in the analysis phase.










Efficiency Comparison: Custom Code Remediation: AIMLUX.AI FUSION TIMETABLE ACCELERATION


 

Task

Traditional Manual Method

Equitus KGNN

Dead Code Detection

Manual Audit (Weeks)

Automated (Minutes)

Syntax Conversion

Regex/Manual Rewriting

Semantic Transformation

Dependency Mapping

Documentation/Guesswork

Real-time Graph Visuals

Logic Validation

Trial and Error

Predicted Impact Analysis









Friday, January 30, 2026

Oracle to DB2, the "last mile" of connectivity

 





PowerGraph.ai - Consulting Services - Offers end-end  Data Conversion Services (DCS):  Oracle to DB2, the "last mile" of connectivity—adjusting application code, middleware, and drivers—is often where projects stall due to manual refactoring and testing cycles. Equitus.ai KGNN (Knowledge Graph Neural Network) accelerates this by acting as an intelligent orchestration and abstraction layer.




KGNN treats  the migration as a series of manual "find-and-replace" tasks, KGNN leverages its graph-based intelligence to map and automate the bridge between the application and the new database environment.






1. Automated Dependency Discovery

One of the biggest risks in migration is missing a "hidden" connection in a legacy microservice or middleware layer.

  • KGNN Action: It crawls your application ecosystem to create a Knowledge Graph of all dependencies.

  • The Benefit: It identifies every service, API, and middleware component (like JBoss, WebSphere, or Spring Boot) that currently talks to Oracle. This ensures that no application is left "orphaned" during the cutover to DB2.


2. SQL Contextual Translation


Oracle and DB2 have different SQL dialects (e.g., how they handle PL/SQL vs. SQL PL, or specific date functions).

  • KGNN Action: KGNN uses its neural network to understand the semantic intent of your existing Oracle queries.

  • The Benefit: Instead of simple string replacement, it can suggest or automate the conversion of complex queries into DB2-optimized syntax. This reduces the time developers spend debugging "Invalid SQL" errors after the switch.


3. Middleware Abstraction (Semantic Layer)


KGNN excels at creating a Semantic Layer that sits between your data and your applications.

  • KGNN Action: You can point KGNN at your new DB2 instance and use its Software Connectors to present a unified data view to your applications.

  • The Benefit: In some architectures, the application can connect to the KGNN semantic layer rather than the database directly. This "decouples" the application from the specific database flavor, making the physical switch from Oracle to DB2 transparent to the application’s business logic.

4. Integration with IBM Power Systems


Equitus.ai has a strategic partnership with IBM, specifically optimizing KGNN for IBM Power10 and Power11—the primary hardware for many DB2 deployments.

  • The Benefit: Because KGNN is "Power-Native," it can handle the high-throughput connectivity requirements of enterprise middleware, ensuring that the migration doesn't result in a performance bottleneck at the connection level.









Summary of KGNN Advantages in Connectivity






Feature

Role in Migration

Auto-Discovery

Maps every app-to-Oracle link so nothing is missed.

Neural Translation

Converts Oracle-specific query logic to DB2-compatible code.

Unified Connectors

Provides pre-built adapters to bridge disparate middleware types.

Traceability

Provides a full audit trail of how data flows changed from "Source A" to "Target B."

















Monday, January 26, 2026

PowerGraph - automation, accuracy, and the end of manual mapping










PowerGraph.ai - Data Conversion Services for system migration from Oracle to IBM: 

Targeting DBAs requires a specific tonal shift. While executives care about "SKUs" and "ROI," DBAs care about redundancy, risk, and weekends. They are often the "No" vote in a migration because they’re the ones who have to fix the broken PL/SQL at 2:00 AM.







To win them over, the copy needs to focus on automation, accuracy, and the end of manual mapping.


Consulting

Deployment

Maintenance

Training

 

three distinct concepts:



Option 1: The "Anti-Manual" (Direct & Technical)

Headline: Stop manually mapping Oracle dependencies. Primary Text: Moving Oracle workloads to SAP HANA or IBM Db2 doesn't have to be a manual nightmare. PowerGraph.ai’s graph-based modeling automates the discovery of hidden dependencies and PL/SQL complexities.

Get a decision-ready migration plan in 6–10 weeks—not 6 months.

CTA: [Download the Technical Brief]



Option 2: The "Right Tool, Right Task" (Logic-Based)

Headline: Not every Oracle workload belongs in HANA. Primary Text: Over-provisioning HANA is a budget killer. Our "Migration-as-a-Product" service uses automated schema analysis to split your workloads intelligently: Core ERP → SAP HANA  Non-SAP Apps → IBM Db2

Automate your assessment. Minimize your risk. Optimize your footprint.

CTA: [See the Migration Logic]



Option 3: The "Peace of Mind" (Short & Punchy)

Headline: Your Oracle Exit, Productized. Primary Text: Ditch the open-ended consulting SOWs. AIMLUX.ai delivers a fixed-scope, automated conversion roadmap for Oracle to SAP/IBM migrations.

We find what breaks before you hit "migrate."

CTA: [Get the SKU Details]




Targeting Recommendations for LinkedIn:

To make these ads effective, I recommend the following parameters:

  • Job Titles: Oracle Database Administrator, Database Architect, Migration Architect, Head of Data Infrastructure.

  • Skills: PL/SQL, Oracle Database, Database Migration, SAP HANA, IBM Db2.

  • Groups: Oracle DBA Network, SAP S/4HANA Professional Group, IBM Power Systems.

















Friday, January 23, 2026

"Migration-as-a-Product"








"Migration-as-a-Product" 


The AIMLUX & PowerGraph Value Proposition

Migration-as-a-Product, not Migration-as-a-Project.


Data Migration Readiness Assessment (DRMA) AIMLUX.ai, via its PowerGraph.ai unit, provides a packaged digital conversion service sold as a standardized SKU through TD SYNNEX Destination AI. This replaces open-ended consulting with a fixed-scope, high-velocity migration engine.







[DRMA]

1. The Architecture: Engine + Services

Component

Role

Key Functions

PowerGraph.ai

The Engine

Automated discovery, dependency mapping, and graph-based workload modeling. Handles Oracle → SAP HANA and Oracle → IBM Db2 conversions.

AIMLUX.ai

The Wrapper

Provides the methodology, "migration plays," and fixed-scope deliverables (Assessment, Feasibility Score, and Cutover Strategy).


The Result: A move from 6-month "studies" to 6–10 week decision-ready migration plans.




2. Strategic Differentiation: The Dual-Target Advantage

Unlike tools that force a single destination, PowerGraph supports split-target migrations, solving a major enterprise pain point:

  • ERP Workloads: Seamlessly identifies and maps core ERP to SAP S/4HANA.

  • Non-SAP Apps: Flags workloads better suited for IBM Db2 (often on Power).

  • Cost Control: Prevents the "over-migration" of non-essential data to expensive HANA memory by tiering to Db2.




3. The TD SYNNEX SKU: Why Packaging Matters

By productizing this through Destination AI, AIMLUX eliminates the friction of traditional enterprise procurement.

  • Fixed Pricing: Tiers based on database size and complexity rather than hourly billing.

  • Faster Cycles: Standardized SKUs bypass the "Request for Quote" (RFQ) traps of custom SOWs.

  • Channel Ready: Allows partners to easily "attach" migration services to hardware (IBM Power) or software (SAP S/4) sales.






4. Stakeholder Value (Commercial Impact)


For TD SYNNEX

  • Infrastructure Pull-through: Drives sales for AI, SAP, and IBM hardware.

  • Scalability: A repeatable service SKU that doesn't require constant custom consulting.

For IBM (Power / Db2)

  • Oracle Exit: Lowers the barrier for customers to leave Oracle.

  • Hardware Adoption: Accelerates conversations around Power11 by proving migration feasibility early.

For SAP

  • S/4HANA Velocity: Increases the speed of conversion and reduces "migration fear."

  • Accuracy: Minimizes HANA sizing errors through automated code analysis



_________________________________________________________________

Reducing the risk and cost of  inter system migrations:


AIMLUX.ai, via its PowerGraph.ai unit, is not selling “software licenses” alone.
It’s selling a packaged digital conversion service, productized as a SKU through TD SYNNEX Destination AI.

Think of it as: > Migration-as-a-Product, not Migration-as-a-Project.
---

How the pieces fit together

1) PowerGraph.ai = the “engine” PowerGraph.ai provides the core technology

layer: Automated discovery & dependency mapping Oracle schema + code analysis (PL/SQL, data types, usage) Graph-based workload modeling (what breaks if you move X) Ai-assisted conversion recommendations:

Oracle → SAP HANA

Oracle → IBM Db2

This reduces: Manual assessment labor / Trial-and-error conversions  Risk of missed dependencies ➡️ This is what makes it “fast” and “cost-effective.”
---

2) AIMLUX.ai = the services wrapper AIMLUX.ai wraps PowerGraph with: 

Structured migration methodology/  Predefined migration “plays” (Oracle → HANA, Oracle → Db2)Fixed-scope deliverables: Assessment report\ Conversion feasibility score Data & code migration plan \ Cutover strategy

Instead of: > “Let’s study this for 6 months” It becomes: > “In 6–10 weeks, you get a decision-ready migration plan.”
--

3) Why SAP HANA and IBM Db2 together ,This is important. nMany enterprises:

 Move core ERP → SAP S/4HANA Move non-SAP apps → IBM Db2 (often on Power) PowerGraph supports split-target migrations, which is hard to do manually: Identifies which Oracle workloads fit SAP best Flags which are better candidates for Db2 / Reduces over-migrating everything to HANA (very expensive)
---
Why it’s sold as a SKU on TD SYNNEX = Problem it solves Enterprises don’t like: Open-ended consulting SOWs\ Unclear pricing \  Long procurement cycles.

SKU-based solution By packaging it as a Destination AI SKU, TD SYNNEX enables: Fixed price tiers (based on DB size / complexity) Faster procurement\ Channel-friendly resale\ Easier attachment to:  SAP deals ---  IBM Power / Db2 deals -- Oracle exit initiatives

So the SKU represents: > “Oracle → SAP HANA / Db2 Migration Assessment & Conversion Accelerator” Why this works commercially (important for this group) For TD SYNNEX - Pull-through for AI, SAP, and IBM infrastructure Repeatable, scalable service SKU Not dependent on custom consulting every time. For IBM (Power / Db2) Lowers friction to leave Oracle\  Makes Db2 on Power more competitive\ Speeds Power11 adoption conversations

For SAP\ Faster S/4HANA conversions \ Reduced HANA sizing mistakes \Less customer fear around Oracle exit 


Training Module

Learning Objective

Technology Focus

Legacy-to-Modern Migration

Converting Oracle databases to SAP HANA or IBM DB2.

Equitus DCS & KGNN.

AI-Ready Data Architecture

Moving from fragmented data to an AI-ready Knowledge Graph.

SmartFabric & KGNN.

System Integration Sales

Understanding SKU-based selling for digital conversion.

GSI Partner Workflows.

Operational Intelligence

Maintaining a "Single Source of Truth" (SSoT) post-migration.

Equitus Fusion.







How PowerGraph Compliments pgvector

How PowerGraph Compliments pgvector AIMLUX.ai positions the PowerGraph solution as the "Semantic Brain" for EDB Postgres AI, spec...