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The banking industry is at a crossroads, driven by the disruptive potential of artificial intelligence (AI). More than just a shiny new technology, AI is fundamentally changing how banks operate, interact with customers, and manage risk. What makes AI so compelling for banks is not just its ability to automate tasks but its potential to enable deeper insights and smarter decisions. However, while the opportunities are enormous, we must also acknowledge the challenges—some of which, if not properly managed, could undermine the progress being made.
For years, the banking experience has been bogged down by inefficiencies—queues, forms, and uninspiring customer service. Enter AI, and things start to change. One of the most exciting areas where AI is making a tangible impact is in customer service. Chatbots, driven by natural language processing, are providing an on-demand, personalised experience. Bank of America ’s "Erica" is a case in point. A chatbot integrated into the mobile app, Erica enables customers to ask questions, get financial advice, and even make payments, all without ever speaking to a human.
Yet, the real value here is how AI personalises the experience. AI doesn’t just answer questions; it anticipates customer needs based on data. Take JPMorgan Chase’s AI-driven portfolio management services—by analysing customer behavior, the system can recommend tailored financial products. The more data you feed these systems, the more they learn, and the better they become at predicting what customers will need next.
When it comes to security, AI’s role is indispensable. Traditional fraud detection systems were built around static rules, which made them slow and inefficient when faced with evolving threats. AI has changed this game by allowing banks to identify potential fraud in real-time by detecting patterns and anomalies that humans simply can't spot.
HSBC, for instance, has invested heavily in AI for fraud detection, scanning millions of transactions to identify potential fraudsters. The more AI gets to work on this data, the sharper it becomes at distinguishing between legitimate and suspicious behavior. This not only helps banks reduce fraud losses but also makes fraud detection more efficient by cutting down on false positives—a huge win for both banks and customers.
One of the more revolutionary aspects of AI is how it’s changing credit scoring. Traditional scoring models are rigid, based largely on static data like past credit history, which can exclude entire swathes of people from accessing credit. AI can go beyond this, analysing unconventional data like social media behaviour, online shopping patterns, or even smartphone usage to build a fuller picture of an individual’s creditworthiness.
Upstart, for instance, has taken a leadership role here by working with banks to use AI-driven models that consider a broader array of factors. These models have been proven to improve approval rates while reducing default risk. The lesson here is that AI can enable banks to serve a wider population while still managing risk effectively.
One of the less glamorous but critically important uses of AI in banking is in the back office. The potential cost savings here are enormous. AI-driven automation can handle mundane tasks like data entry, reconciliation, and compliance checks, freeing up employees to focus on higher-value work. RBS's use of "Luvo," an AI-powered assistant that helps employees quickly retrieve information, has been a good example of this for a long time.
But beyond automation, AI’s real power lies in its predictive capabilities. Banks can use AI to forecast demand for services, anticipate customer behaviour, and make strategic decisions about resource allocation. It's about becoming a smarter, more agile institution that can react faster to changes in the market.
With all the excitement around AI, we cannot overlook the elephant in the room: data privacy. Banks have a responsibility to protect customer data, yet AI systems thrive on large datasets, often pushing the boundaries of what is ethically acceptable. Any misuse or breach of customer data can have catastrophic consequences, not just in terms of fines but also in the erosion of customer trust.
The European Union 's GDPR is a case in point. Banks are under pressure to comply with strict data protection regulations, and the more complex their AI systems become, the harder it is to ensure full compliance. Data governance must be a top priority—without it, the risks of AI will far outweigh the rewards.
AI is not infallible. In fact, one of the biggest risks is that AI systems can inherit the biases present in the data they are trained on. This is not just a technical issue—it’s a social and ethical one. Take Goldman Sachs ' Apple Card controversy, where their algorithm was accused of gender bias, offering lower credit limits to women. This is not an isolated incident, and as more banks adopt AI for credit scoring and other decision-making processes, the risks of bias creeping in will only grow.
It’s critical that banks adopt robust governance around AI, ensuring their models are transparent, explainable, and subject to regular audits. An unchecked AI system can perpetuate discrimination on a mass scale—something that would erode the very trust AI is supposed to enhance.
There’s no denying that AI is automating many tasks that were once the domain of humans. This brings up the uncomfortable question: what happens to the people who used to do these jobs? The reality is that AI will inevitably lead to job displacement in certain areas, particularly in customer service and routine back-office roles.
However, this is not the whole story. While some jobs may disappear, new ones will emerge, especially in areas that require human oversight, creativity, and empathy—skills that AI can’t replicate. The key will be in re-skilling and up-skilling the workforce, enabling employees to transition into new roles where they can add real value.
Finally, AI’s rise in banking raises important regulatory questions. How do you regulate something that can evolve and adapt in ways that even its creators don’t fully understand? Central banks and regulators are still grappling with how to oversee AI in financial services. The European Central Bank, for example, has issued guidelines, but there is still much uncertainty around how to ensure AI systems are safe, fair, and transparent.
This is an evolving area, and banks need to stay ahead of the curve. They should be proactive in shaping the regulatory frameworks around AI, rather than waiting to react to them.
AI is reshaping the banking industry in ways that were unimaginable just a few years ago. The opportunities are vast—from personalised customer experiences to smarter risk management.
However, we must not be blind to the challenges. Issues around data privacy, algorithmic bias, job displacement, and regulation must be addressed head-on if banks are to truly harness AI’s potential. In the end, success will depend not just on the technology itself but on how well banks manage these challenges and integrate AI into a broader, ethically sound strategy.
This content is provided by an external author without editing by Finextra. It expresses the views and opinions of the author.
Kyrylo Reitor Chief Marketing Officer at International Fintech Business
15 November
Francesco Fulcoli Chief Compliance and Risk Officer at Flagstone
Nkahiseng Ralepeli VP of Product: Digital Assets at Absa Bank, CIB.
14 November
Jamel Derdour CMO at Transact365 / Nucleus365
13 November
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