A Framework for Transparency, Resilience, and AI‑Driven Payment Modernization
The real‑time transparency problem in payments
Payments operate at a fundamentally different speed and risk profile than other banking functions. While most legacy cores were designed
for batch processing, payments demand millisecond‑level decisioning, real‑time fraud detection, and immediate
exception handling.
AI promises to enhance routing, reduce fraud, and improve straight‑through processing (STP), but it cannot function safely when the
underlying payment architecture is opaque. Legacy payment systems—built on COBOL routines, hard‑coded rules, and undocumented patches—cannot provide the transparency AI requires to justify or explain decisions.
This creates a structural mismatch:
**AI is real‑time; legacy payments are not.**The result is a transparency gap that exposes banks to operational, financial, and regulatory risk.
Hidden dependencies inside legacy payment flows
Payment systems accumulate complexity over decades. Beneath the surface of every ACH, wire, SWIFT, or RTP transaction lies a web of
hidden dependencies:
Routing logic embedded in monolithic COBOL modules
Exception-handling rules that evolved through emergency patches
Fraud scoring dependent on legacy data paths
Downstream systems influenced by undocumented interfaces
ISO 20022 transformations layered on top of older message formats
These dependencies create a
black‑box payment architecture where neither humans nor machines can trace how a decision was formed.
AI models trained on such environments inherit these blind spots. Even if the model is explainable, the system it interacts with is
not—making the entire payment decision chain opaque.
Why AI fails in legacy payment systems
AI in payments requires:
Clean, real‑time data
Deterministic routing logic
Traceable decision paths
Consistent lineage
High‑fidelity observability
Legacy payment systems provide none of these. Instead, they introduce:
Latency from batch‑oriented cores
Inconsistent data lineage
Hard‑coded rules that override AI decisions
Opaque exception flows
Limited auditability
This leads to unpredictable outcomes, failed STP, and regulatory exposure.
The issue is not the AI model—it is the architecture beneath it.
The Payment Transparency Maturity Model (PTMM)
To address these challenges, payment modernization requires a structured approach. The
Payment Transparency Maturity Model (PTMM) provides a five‑level framework for assessing and improving payment
architecture readiness for AI.
Level 1 — Opaque Payment Logic
Routing, fraud rules, and exception handling are embedded in legacy code with no documentation or traceability.
Level 2 — Partial Lineage Visibility
Some data flows are mapped, but dependencies remain hidden across channels and systems.
Level 3 — Component‑Level Transparency
Business logic is decoupled into modular components with traceable decision paths.
Level 4 — Real‑Time Observability
Payment flows, routing decisions, and fraud triggers are observable in real time.
Level 5 — AI‑Ready, Regulator‑Ready Architecture
Every decision path is transparent, auditable, explainable, and aligned with supervisory expectations.
PTMM gives banks a measurable way to evaluate modernization progress and identify architectural gaps that must be addressed before
deploying AI into payment flows.
Regulatory pressure on payment transparency
Payment systems are increasingly treated as
national infrastructure, and regulators are shifting toward architecture‑level expectations. Supervisory bodies
now emphasize:
Real‑time fraud explainability
Traceability of payment routing decisions
Auditability of automated outcomes
ISO 20022 semantic consistency
Operational resilience in real‑time payment rails
Governance of AI‑driven payment decisions
As real‑time payment schemes (FedNow, RTP, UPI, SEPA Instant) expand, regulators will require banks to demonstrate not only how AI
models work, but how the payment architecture supports transparent, safe, and explainable decisioning.
Legacy systems cannot meet these expectations without modernization.
A blueprint for AI‑ready payment modernization
Banks preparing for AI‑enabled payment operations should adopt a structured blueprint:
Establish real‑time data lineage across all payment rails
Decouple routing and exception logic from monolithic cores
Introduce architectural observability for fraud, STP, and exception flows
Implement governance layers that track model inputs, outputs, and overrides
Build modernization roadmaps that prioritize transparency, not speed
Align payment modernization with regulatory expectations for explainability
This blueprint ensures AI is deployed into payment environments where decisions are explainable, risks are manageable, and operations
are resilient.
Why this matters for the future of payments
Payments are the heartbeat of the financial system. As banks adopt AI to improve fraud detection, routing, and STP, the underlying
architecture must evolve to support transparency and explainability.
Institutions that adopt transparency‑first payment modernization will be the ones capable of:
Meeting emerging regulatory expectations
Deploying AI safely and responsibly
Reducing fraud and operational risk
Supporting real‑time payment schemes
Modernizing without destabilizing legacy cores
Architectural transparency is no longer optional.
It is the foundation of AI‑ready payments.
About the Author
Neeraj Aggarwal is a modernization and payments transformation leader with deep expertise in AI‑enabled banking, core modernization,
and real‑time payment architectures. He advises financial institutions on building resilient, transparent, and regulator‑ready payment systems and contributes thought leadership across global industry forums.
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AI‑Ready Payments: Why Legacy Payment Architectures Cannot Support Safe, Explainable, and Real‑Time
A Framework for Transparency, Resilience, and AI‑Driven Payment Modernization
The real‑time transparency problem in payments
Payments operate at a fundamentally different speed and risk profile than other banking functions. While most legacy cores were designed for batch processing, payments demand millisecond‑level decisioning, real‑time fraud detection, and immediate exception handling.
AI promises to enhance routing, reduce fraud, and improve straight‑through processing (STP), but it cannot function safely when the underlying payment architecture is opaque. Legacy payment systems—built on COBOL routines, hard‑coded rules, and undocumented patches—cannot provide the transparency AI requires to justify or explain decisions.
This creates a structural mismatch: **AI is real‑time; legacy payments are not.**The result is a transparency gap that exposes banks to operational, financial, and regulatory risk.
Hidden dependencies inside legacy payment flows
Payment systems accumulate complexity over decades. Beneath the surface of every ACH, wire, SWIFT, or RTP transaction lies a web of hidden dependencies:
Routing logic embedded in monolithic COBOL modules
Exception-handling rules that evolved through emergency patches
Fraud scoring dependent on legacy data paths
Downstream systems influenced by undocumented interfaces
ISO 20022 transformations layered on top of older message formats
These dependencies create a black‑box payment architecture where neither humans nor machines can trace how a decision was formed.
AI models trained on such environments inherit these blind spots. Even if the model is explainable, the system it interacts with is not—making the entire payment decision chain opaque.
Why AI fails in legacy payment systems
AI in payments requires:
Clean, real‑time data
Deterministic routing logic
Traceable decision paths
Consistent lineage
High‑fidelity observability
Legacy payment systems provide none of these. Instead, they introduce:
Latency from batch‑oriented cores
Inconsistent data lineage
Hard‑coded rules that override AI decisions
Opaque exception flows
Limited auditability
This leads to unpredictable outcomes, failed STP, and regulatory exposure.
The issue is not the AI model—it is the architecture beneath it.
The Payment Transparency Maturity Model (PTMM)
To address these challenges, payment modernization requires a structured approach. The Payment Transparency Maturity Model (PTMM) provides a five‑level framework for assessing and improving payment architecture readiness for AI.
Level 1 — Opaque Payment Logic
Routing, fraud rules, and exception handling are embedded in legacy code with no documentation or traceability.
Level 2 — Partial Lineage Visibility
Some data flows are mapped, but dependencies remain hidden across channels and systems.
Level 3 — Component‑Level Transparency
Business logic is decoupled into modular components with traceable decision paths.
Level 4 — Real‑Time Observability
Payment flows, routing decisions, and fraud triggers are observable in real time.
Level 5 — AI‑Ready, Regulator‑Ready Architecture
Every decision path is transparent, auditable, explainable, and aligned with supervisory expectations.
PTMM gives banks a measurable way to evaluate modernization progress and identify architectural gaps that must be addressed before deploying AI into payment flows.
Regulatory pressure on payment transparency
Payment systems are increasingly treated as national infrastructure, and regulators are shifting toward architecture‑level expectations. Supervisory bodies now emphasize:
Real‑time fraud explainability
Traceability of payment routing decisions
Auditability of automated outcomes
ISO 20022 semantic consistency
Operational resilience in real‑time payment rails
Governance of AI‑driven payment decisions
As real‑time payment schemes (FedNow, RTP, UPI, SEPA Instant) expand, regulators will require banks to demonstrate not only how AI models work, but how the payment architecture supports transparent, safe, and explainable decisioning.
Legacy systems cannot meet these expectations without modernization.
A blueprint for AI‑ready payment modernization
Banks preparing for AI‑enabled payment operations should adopt a structured blueprint:
Establish real‑time data lineage across all payment rails
Decouple routing and exception logic from monolithic cores
Introduce architectural observability for fraud, STP, and exception flows
Implement governance layers that track model inputs, outputs, and overrides
Build modernization roadmaps that prioritize transparency, not speed
Align payment modernization with regulatory expectations for explainability
This blueprint ensures AI is deployed into payment environments where decisions are explainable, risks are manageable, and operations are resilient.
Why this matters for the future of payments
Payments are the heartbeat of the financial system. As banks adopt AI to improve fraud detection, routing, and STP, the underlying architecture must evolve to support transparency and explainability.
Institutions that adopt transparency‑first payment modernization will be the ones capable of:
Meeting emerging regulatory expectations
Deploying AI safely and responsibly
Reducing fraud and operational risk
Supporting real‑time payment schemes
Modernizing without destabilizing legacy cores
Architectural transparency is no longer optional.
It is the foundation of AI‑ready payments.
About the Author
Neeraj Aggarwal is a modernization and payments transformation leader with deep expertise in AI‑enabled banking, core modernization, and real‑time payment architectures. He advises financial institutions on building resilient, transparent, and regulator‑ready payment systems and contributes thought leadership across global industry forums.