Executing a core banking migration successfully requires treating it as a business transformation, not a technology project. The critical workstreams are data mapping, dependency discovery, and organisational alignment. Modern AI tooling has materially reduced the unknowns that made legacy migration so risky, but the institutions that get it right combine better technology with a cultural shift toward continuous, rather than episodic, change.
Summary
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Data migration is almost always the most underestimated workstream. Legacy stacks rarely have a single source of truth. Deposits, lending, and product logic often sit in separate systems with different data models.
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Dependency mapping is not just a pre-migration task. Many integrations are not fully visible until migration is underway. Treating discovery as a one-time exercise is one of the most common causes of scope overruns.
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GenAI has materially changed the unknowns equation. What once took six months to map can now be done in under eight weeks.
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The best migrations ask the right business question first. Not "what system do we want to replace?" but "what business model do we want to emerge with?"
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Culture is the deciding factor. Institutions that succeed have shifted from treating technology change as a once-every-five-years event to treating continuous evolution as the operating model
No longer a career-ending risk
Moderator
CEO & Founding Partner
Aperture
Panellist
Head of Payments & Embedded Finance
Tungsten Automation
Panellist
Senior Vice President APAC
10x Banking
Panellist
Banking Partnerships Director
GFT Technologies
Why core banking modernisation risk has changed
Core banking data migration: what it actually looks like
Before migration begins, a bank needs clear answers to three questions about its data:
- Where does it sit? Which systems hold which data, and what are the dependencies between them?
- What does it mean? What are the business rules, exceptions, and edge cases attached to each data set?
- What do we actually want to carry forward? Migration is also an opportunity to rationalise the back book, retire legacy products, and launch cleaner versions.
Core banking modernisation creates a moment to ask what products the bank wants to offer going forward, not just to replicate what existed.
How dependencies hide until you need them
Treat dependency mapping as a continuous process throughout the programme, not a one-time exercise before it begins.
Why this is not a technology project
- What does our back book look like at the end?
- What products do we want to launch?
- What customer experience are we trying to drive with the agility a 4th-generation core banking platform enables?
What the practitioners' success factors have in common
Andrew Ng (Tungsten Automation)
- People alignment. Executives must be aligned on outcomes, not just activity. "Lots of people end up very, very busy doing stuff, and we're never quite sure how this results in the outcome at the end.
- Realism and courage. Testing timelines cannot be compressed because a build ran late. The instinct to protect schedule by cutting testing is, as Adnrew put it, "quite stupid. It will all break."
- Customer focus throughout – as a prioritisation mechanism, not just a guiding principle.
Simon Farmilo (GFT Technologies)
- Use migration as an opportunity to simplify the dependency state, not just replace the core. Audit every integration for continued relevance.
- Reshape the IT estate in parallel. The biggest long-term outcome from migration is often the elimination of technical debt across surrounding systems, not the new core alone.
- Culture and upskilling – people need to understand how a continuously evolving technology environment operates, not just how the new system works.
Lewis Ide (10x Banking)
- Cultural transformation. "The mindset has always been, in some of the legacy systems, that it does a job... we do our upgrade every five years." The shift is from episodic upgrades to continuous evolution. Banks that succeed have leadership that is actively living that transformation mindset, not just endorsing it from a distance.
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FAQs
What is core banking modernisation?
Core banking modernisation is the process of replacing or upgrading a bank's core banking system – the technology infrastructure that processes accounts, transactions, products, and customer records – with a modern, cloud-native platform. It encompasses data migration, integration management, dependency discovery, and organisational change, and is typically treated as a multi-year business transformation programme rather than a technology upgrade.
How long does a core banking migration take?
Timeline varies significantly by approach and institutional complexity. Big bang replacements can be completed over a compressed window for simpler environments. Phased migrations at large, complex institutions typically run over several years. While institutions who hollow out the core and are intentional about what they take forward can migrate far faster. Greenfield builds allow new propositions to launch quickly, with full migration of legacy portfolios occurring in parallel over time.
What makes data migration in core banking so complex?
Legacy banking stacks almost never have a single source of truth. Deposits, lending, and product data typically sit in separate systems with different data models and business rules. Before migration, banks must understand where all data lives, what it means in each context, what regulatory retention requirements apply, and what they actually want to carry forward versus retire.
What is the difference between phased migration and a parallel run?
In a phased migration, the bank migrates defined segments of its product or customer base sequentially. In a parallel run, the legacy and new systems operate simultaneously with synchronised data, allowing the new platform to be validated and proven at scale before the legacy system is decommissioned. Both approaches distribute risk over time; the right choice depends on continuity requirements, operational capacity, and regulatory context.
How is AI changing core banking migration?
AI tooling has materially reduced the unknown-unknowns that have historically made migration so risky. Tasks such as reverse-engineering legacy code and mapping integration dependencies, which once took months, can now be completed in weeks. This improves a bank's ability to understand its own estate before committing to cutover. It does not eliminate migration risk, but it changes the information available to manage it.
What is a 4th-generation core banking platform?
A 4th-generation core banking platform is a cloud-native, event-driven, API-first architecture built on microservices. Unlike legacy mainframe or first- and second-generation platforms, it supports real-time data processing, multi-tenancy, and continuous product development without requiring changes to underlying infrastructure. It is designed to enable banks to build, iterate, and scale financial products without rebuilding commodity code. The 10x Banking Platform is a 4th-generation core banking platform.
How should we approach business and technology alignment during migration?
Engage the business before technical planning begins. The target product set, customer experience ambitions, and data rationalisation decisions all require business input that cannot be delegated to the technology team. Without that alignment upfront, there is a material risk of migrating the wrong things – or building a modern infrastructure that runs a legacy business model.