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    Home»AI News»E.SUN Bank and IBM build AI governance framework for banking
    E.SUN Bank and IBM build AI governance framework for banking
    AI News

    E.SUN Bank and IBM build AI governance framework for banking

    March 14, 20266 Mins Read
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    E.SUN Bank is working with IBM to build clearer AI governance rules for how artificial intelligence can be used inside a bank. The effort reflects a wider shift in finance. Many firms already use AI for fraud checks and credit scoring, and some also use it to handle customer service queries. The new challenge is how to manage these systems in a way that meets legal and risk rules.

    Banks face a growing list of questions as they deploy AI. How should a model be tested before it goes live? Who is responsible if it makes a wrong call? And how can firms prove to regulators that their systems are fair and safe?

    To address those issues, E.SUN Bank and IBM Consulting have created an AI governance framework for banking. The project also includes an AI governance white paper that sets out how financial firms can build internal controls around AI systems. According to the companies’ press release, the work adapts global standards such as the EU AI Act and ISO/IEC 42001 for financial services.

    The framework sets out how banks can review AI models before they are deployed. It also explains how those models should be monitored after they enter production. It includes rules for how data is used and how risk reviews should take place.

    10web

    E.SUN Bank said the framework is intended to help financial institutions introduce AI systems while maintaining governance and regulatory oversight. Many firms already run limited AI tools. The next step is to scale those systems across core operations such as lending and payments while staying within regulatory limits.

    Banks try to manage AI risk

    Financial firms have strong reasons to place guardrails around AI systems. Banking relies on trust, and regulators require firms to track how decisions are made. AI models often act as “black boxes,” meaning it can be hard to explain how they arrive at a result. That can create problems in areas such as credit decisions or fraud checks. Regulators in many regions have started to focus on these risks.

    The European Union’s AI Act, adopted in 2024, places strict rules on AI systems used in high-risk sectors such as finance. The law requires firms to assess risks and document training data. It also requires them to monitor how AI models behave after deployment.

    Global standards are also taking shape. ISO/IEC 42001, published in 2023, sets out how organisations can build management systems for AI. The standard focuses on oversight and model monitoring. It also addresses how organisations should manage AI data. The aim is to give firms a structured way to manage AI across an entire company rather than treating each model as a separate tool.

    E.SUN Bank’s project with IBM draws from both frameworks. It is meant to show how these rules could work in daily banking operations.

    From AI pilots to enterprise systems

    Banks have used machine learning for years, mainly in risk analysis and fraud detection. Newer AI models are expanding how banks use the technology. Many now apply it in customer service and document review. Some also use it in internal knowledge systems.

    That expansion brings new governance needs. A system that suggests answers to customer queries may seem low risk. But a model that helps approve loans or detect fraud can have direct financial effects.

    The governance framework created by E.SUN Bank and IBM sets out a process to track those risks. Models are reviewed before they go live, and teams monitor their output after deployment. The framework also assigns responsibility across teams, from developers to compliance staff. The project also produced a white paper that explains the steps in more detail. It outlines how banks can classify AI systems by risk level and apply different levels of oversight.

    AI governance expands across financial services

    The work at E.SUN Bank reflects a trend across global finance. Many banks now see governance as a key step before scaling AI across operations.

    Industry surveys suggest that AI adoption in financial services is already widespread. A 2024 report by NVIDIA found that about 91% of financial services firms were either assessing or already using AI. Common uses include fraud detection and risk modelling. Some banks also use AI to automate customer service tasks.

    Research from Deloitte shows that more than 70% of financial institutions plan to increase investment in AI. Much of that spending is aimed at compliance monitoring and risk analysis. Some banks also expect AI to improve internal operations.

    At the same time, regulators are paying closer attention. Authorities in several regions have warned banks to track how automated systems affect decisions such as credit approval and fraud detection. This pressure has led banks to invest more in internal oversight systems. Instead of focusing only on model accuracy, firms now also track data sources and decision logic. Many also monitor how models behave over time.

    Why governance may shape AI adoption

    The push for AI governance may influence how quickly banks adopt new tools. Without clear rules, many firms hesitate to move beyond small experiments. A structured framework can help them expand AI projects while still meeting regulatory demands.

    That is the idea behind the E.SUN Bank project. By combining global standards with banking workflows, the framework sets out how AI can be deployed under clear oversight. According to the companies’ announcement, IBM said the framework was developed to help financial institutions manage AI risks as they expand their use of AI in banking.

    The effort also reflects the growing role of governance in enterprise AI. Early AI projects focused on building models and improving performance. Today the focus is shifting toward how those systems are managed over time. As more banks bring AI into core operations, that question may become just as important as the technology itself.

    (Photo by Markus Spiske)

    See also: Manulife moves AI agents into core financial workflows

    Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is part of TechEx and is co-located with other leading technology events, click here for more information.

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