Sunday, February 1, 2026

Intelligence-driven Analysis: Clean Core







AIMLUX.ai - PowerGraph: Fusion (KGNN) Enterprise Automation Engineer leverages the KGNN’s ability to "cross-reference" legacy Oracle logic against the optimized architecture of the target systems. 


This isn't just a translation; it is a structural optimization designed to take full advantage of IBM Power10/11 and the SAP HANA/DB2 columnar engines.


    

To navigate the 2027 SAP transition deadline, enterprise migrations require a hybrid approach: high-performance hardware (IBM Power Systems) and intelligence-driven analysis (KGNN/AI Consulting).







Enterprise Migration Lifecycle: Oracle to SAP/IBM RISE- Fusion (KGNN)

The following chart outlines the lifecycle of a migration from legacy Oracle databases to SAP HANA or IBM DB2 on RISE, highlighting how Aimlux.ai (integrating Equitus.AI capabilities) accelerates each stage.
 

Stage

Process & Objectives

Aimlux.ai / KGNN Assistance

IBM Power Advantage

1. Discovery

Map all Oracle schemas, dependencies, and "dark data."

Automated Ingestion: KGNN builds a self-generating knowledge graph of your entire landscape.

Massive Throughput: Power10 processors ingest TBs of metadata without latency.

2. Assessment

Identify custom PL/SQL, compatibility gaps, and "Clean Core" opportunities.

Semantic Analysis: AI identifies logic patterns rather than just text, flagging 70%+ for auto-remediation.

Memory Density: Analyzes entire 5TB+ datasets in-memory for instant results.

3. Planning

Design target architecture for SAP HANA or IBM DB2 on RISE.

Predictive Mapping: AI recommends the optimal "Brownfield" or "Greenfield" path based on graph insights.

Certified Resilience: Architecture design for 99.999% availability on IBM Power Virtual Server.

4. Execution

Data movement, schema conversion, and custom code rewriting.

Zero-ETL Transition: KGNN automates complex mapping, reducing manual dev hours by up to 80%.

Live Partition Mobility: Move workloads with zero downtime during the cutover phase.

5. Validation

Ensure semantic parity and data integrity post-migration.

Autonomous Reconciliation: AI validates that data "meaning" is preserved, not just the raw bits.

Hardware Encryption: Transparent Data Encryption (TDE) at the chip level for secure validation.

6. Operations

Post-migration tuning, AI-driven insights, and hybrid cloud management.

Continuous Optimization: AI monitors the "Clean Core" to prevent future technical debt accumulation.

Scalability: Seamlessly scale SAP HANA instances on-demand in the IBM RISE environment.









Strategic Value of Aimlux.ai Consulting


Aimlux.ai doesn't just provide "labor"; it provides an Intelligence-Driven Platform that specifically addresses the risks of the 2025 deadline:


1. Risk Mitigation (The "Clean Core" Strategy)


By using KGNN to analyze legacy Oracle code, Aimlux.ai ensures that only necessary logic is moved. This aligns with SAP's Clean Core mandate for RISE, reducing future upgrade costs and ensuring your SAP HANA environment isn't cluttered with 20-year-old PL/SQL "ghosts."


2. Operational Efficiency on IBM Power10/11


For databases in the 2TB–5TB+ range, standard x86 cloud environments often struggle with memory bottlenecks. Aimlux.ai optimizes your migration for IBM Power Virtual Server, which offers:


  • 2.5x more memory bandwidth than x86 alternatives.

  • Architecture consistency between on-premises Power systems and the IBM Cloud, reducing migration risks by up to 25%.






3. Accelerated ROI


AIMLUX.ai consulting - PowerGraph.ai  can reduce manual mapping and remediation hours by 70-80%, the Aimlux.ai approach allows enterprises to achieve full ROI within the first 12 months, avoiding the "talent wars" and high consultant rates expected as the 2025 deadline nears.




__________________________________________________________________________


Custom Code Remediation:


Oracle Cloud is the TOP Tier of Database Costs and traditional migration is costly, AIMLUX.ai automates Custom Code Remediation (CCR) which is the single greatest bottleneck in database migration, 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 in 3 Dimensions rather than just 2 in Property Graphs lines of text. Here is the step-by-step breakdown:






Step-by-Step Custom Code Remediation via Fusion (KGNN) 

Utilizing an Enterprise Automation Engineer to enable shifting from Oracle to SAP/ IBM DB2 integration requires that the databases and API systems can function smoothly, requiring new PL/SQL code to enhance the integration efficacy and speed. 


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.  These 

  • 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.

The Technical Process:

  • Deconstruction of "Code Intent": The KGNN doesn't just read the text of an Oracle stored procedure; it parses the Abstract Syntax Tree (AST). It breaks down the PL/SQL into "Intent Nodes"—identifying whether a block of code is performing a data transformation, a security check, or a calculation.

  • Relationship Mapping (The Edge Construction): While a standard parser sees a table, the KGNN sees the Edges—the invisible dependencies where a specific API call triggers a sequence of Oracle functions that ultimately impact an SAP business process.

  • Contextual Metadata Extraction: It extracts the "Tribal Knowledge" embedded in the database schema—identifying which legacy tables are actually core to the business and which are redundant "ghost" tables that should not be migrated to the IBM RISE cloud.



2. Pattern Matching against the "Target Ontology"

Enterprise Automation Engineer leverages the KGNN’s ability to "cross-reference" legacy Oracle logic against the optimized architecture of the target systems. This isn't just a translation; it is a structural optimization designed to take full advantage of IBM Power10 and the SAP HANA/DB2 columnar engines.


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

In a 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 :  AIMLUX.ai has uses experience and automation engineer to oversee integration 


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





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








Thursday, January 22, 2026

Equitus.ai’s Data Conversion Service (DCS) solves the "ETL Nightmare"







 

AIMLUX.AI - Fusion (KGNN)  Consulting: Equitus.ai Automation Engineer --- >>> Enterprise Database Migration From Oracle - SAP Hana and IBM DB2 which can be accelerated with Machine Learning Technology. 


Avoid the ETL Nightmare ” — Data Conversion Services (DCS) Fusion (KGNN) is available as a Service/Product; Automating the costly, and error-prone process of   manually  Extracting ,  Translating and Loading (ETL).




_______________________________________________________


DCS: Data Migration as a Product: Using Fusion (KGNN)


Problem: Extracting Transforming, and Loading data  during enterprise system migrations is a daunting task Purchasing DCS Tokens allows you to control cost and oversee processes efficiently. 


Executive Summary


  • Solution: AIMLUX.AI  Fusion (KGNN) - : Equitus.ai, Data Conversion Service (DCS)  can help solve Costly Database Migration 
  • Issues: Manual ETL is typically 80% of Legacy Inner System Migration Budget. 
  • Benefit: Producing an easier Data Migration Experience from Oracle - SAP Hana, IBM DB2 
  • Value: Allowing for the integration of legacy and AI systems.




Reducing Migration, Integration and Database costs going forward on IBM POWER 11 SYSTEMS:


 

DMRA - During Data Migration, Mapping and Semantic Schema Segmenting Automation can rapidly improve IT control over previously and expensive complex functions. Now Enterprise users seeking to migrate From Oracle to SAP/IBM DB2 on Power systems.







Automation of Mapping and translation of schemas, systematically understanding the Oracle --- > SAP --- > IBM  the ETL process through  DCS which allows companies to move from legacy  Oracle  environments to modern  SAP  or  IBM DB2  systems on  Power 11  with near-zero manual coding.








1. PowerGraph.ai Consulting; providing EAE to oversea the migration process; AIMLUX.ai  is offering intelligent ingestion technology to Augment, Automate and Authorize (AAA) data migration through Tokenization and Monetization with DCS by building significant cost controls. 

MRA , generates a road map from schema to testing with Migration as a Product simplifying the process by improving quality, reducing complexity and improving ROI on DMRA Projects. Contact us for an Assessment.


Automate Migration to Reduce ETL: "The Zero-Code Bridge" - Utilizing Equitus.ai Knowledge Graph Neural Networks (KGNN) - can dynamically convert your Oracle to SAP or IBM DB2 eliminating costly Extract Translate and Load (ETL) manual workloads.


{Slogan:  DMRA -  Automate the ETL process by dynamic schema mapping. Keep the Data. Migrate in Weeks, Not Years.}


DCS proposes to make migration cost effective fast and easy; focuses on the  technical debt  and  operational risk  that usually paralyze Fortune 500 companies during database migrations. '

Migrate with PowerGraph.ai, using Equitus.ai's KGNN technologies available through TD Synnex, Sycomp.com and WWT.com.  






2. Target Audience & Pain Points - Enterprise CIO/CTO/DBA can now face the costly/complex legacy database migrations with PowerGraph.ai support and assistance.



  • The CIO/CTO:  Worried about the $10M+ cost of "manual ETL" and the risk of data loss during the Oracle → SAP/DB2 transition.

  • The Data Architect:  Exhausted by writing custom Python/SQL scripts to map incompatible Oracle schemas to DB2.

  • The IBM Power 11 Owner:  Needs a way to populate their new high-performance hardware with legacy data without a 12-month "staging" period.

    







3. Strategic Marketing Pillars: To investigate the benefits and savings of DMRA, contact our Global System Integrators Partners  (GSI).  


[Semantic Mapping, Risk-Free Modernization] by embedding an assistant engineer with KGNN the data migration process can be safely and rapidly accelerated. 



Pillar 1: “Automated Semantic Mapping”

  • The Message:  DCS doesn't just move rows; it understands  meaning . It uses Equitus's internal AI to automatically map Oracle's proprietary structures to SAP or DB2 equivalents.

  • The "Hook":  "DCS reduces manual ETL work by up to 80%."

Pillar 2: “Risk-Free Modernization”

  • The Message:  Transitioning to DB2 on Power 11 is the goal; migration is the obstacle. DCS is the "express lane" that ensures data integrity and referential transparency.

  • The "Hook":  "Move to Power 11 performance today, not next year."








4. Execution Tactics (The "DCS Launch" Playbook): Getting started 



A. The "Oracle-to-Anything" Calculator (Interactive Tool)

Develop a web-based ROI tool.

  • User Inputs:  Number of tables, total TB of data, and current number of ETL developers.

  • Output:  A report showing the estimated  cost savings  and  time-to-completion  using Equitus DCS vs. traditional manual ETL services.

B. The “Mission Critical Migration” Whitepaper

Specifically target the  Oracle-to-DB2  path, which is common for IBM Power users.

  • Content:  A technical deep-dive on how DCS handles complex Oracle PL/SQL triggers and stored procedures when moving to IBM DB2.

  • Co-Branding:  Partner with IBM's migration lab to show DCS running on Power 11 hardware.

C. Case Study: “The 30-Day Transition”

Feature a "Hero" story of a company that was stuck in " Migration Purgatory " for 2 years and used DCS to complete their Oracle → SAP transition in 60 days.

  • Key Stat:  Focus on the  reduction in FTE (Full-Time Equivalent)  hours spent on data cleaning.









5. Sales Enablement: The “DCS vs. Traditional” Table


Equitus.ai Enterprise Architects Engineers (EAE) sales teams should use this comparison in every pitch:



Aimlux.ai PowerGraph - Specializes in understanding the nuances and complexities of Enterprise Schema Mapping making assisting IT professionals in the Data Integration Field.

 

 


 

Feature

Traditional ETL (Manual)

Equitus DCS (Automated)

Mapping

Manual hand-coding per table

AI-driven semantic discovery

Error Handling

Log-based, manual fix

AI-assisted error detection & auto-correction

Speed

6–18 Months

30–90 Days

Cost

High (Human Labor Intensive)

Low (Licensing/Automation Based)

Hardware Fit

Generic Cloud/Server

Optimized for IBM Power 11










6. Readiness Assessment Campaign


With deadlines approaching users can start with a free mapping and To kick this off, we should create a  "Migration Readiness Assessment" —a 48-hour scan of a client's Oracle environment that uses a "lite" version of DCS to show them exactly how much of their data can be converted automatically.


Are you an Oracle Database Administrator (DBA) if you are in an ETL Nightmare you are our target audience;

  • 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.







  • Contact us for Consulting Solutions





    Intelligence-driven Analysis: Clean Core

    AIMLUX.ai - PowerGraph: Fusion (KGNN) Enterprise Automation Engineer leverages the KGNN’s ability to "cross-reference" legacy Ora...