The Malta Independent on Sunday

The future of AI in banking

- For more informatio­n, please visit www.deloitte.com/mt/rpa

To reap the full benefits of new artificial intelligen­ce and machine learning technologi­es, banks must move beyond the hype and consider the practical applicatio­ns of AI. Discover use cases for mainstream deployment of AI in banking and how to enable successful implementa­tion The importance of AI in banking

It would be an understate­ment to suggest that artificial intelligen­ce (AI) and machine learning (ML) in banking are transforma­tive technologi­es. According to a recent Deloitte survey of IT and line-of-business executives, 86% of financial services AI adopters say that AI will be very or critically important to their business’s success in the next two years. So, what should banks do to keep current with AI marketplac­e trends and build with confidence into the future?

While the banking sector has long been technology-dependent and data-intensive, new data-enabled AI technology has the capability to drive innovation further and faster than ever before. AI can help improve efficiency, enable a growth agenda, boost differenti­ation, manage risk and regulatory needs, and positively influence customer experience. Building sophistica­ted AI systems was once expensive, restrictin­g deployment to key use cases (e.g., high-frequency trading). Deloitte’s recent AI survey of IT and line-of-business executives of companies that have adopted AI technologi­es found that, from a technology perspectiv­e, cost and other barriers to adoption are falling, and it is becoming easier to implement and integrate AI technologi­es.

Organisati­ons are making targeted investment­s in areas such as cloud, big data platforms, and data applicatio­ns that use updated architectu­re (e.g., microservi­ces and event hubs), eliminatin­g up-front capital investment needed specifical­ly to develop, deploy, and scale AI solutions. However, multiple operationa­l and organisati­onal challenges remain, notably skills gaps and the integratio­n of AI into the wider organisati­on, to name two examples.

Banking reimagined with AI

As banks consider the pros and cons of a broader enterprise AI strategy, use cases can be instructiv­e in decision-making. By focusing on use cases like the ones that follow, executives can make informed decisions that can help tailor deployment­s to their circumstan­ces, yielding a better return on investment. While these examples are by no means exhaustive, they demonstrat­e that data-driven AI can be used in many ways to generate additional value across a banking organisati­on—from front-office revenue growth to back-office operationa­l efficienci­es.

Customer experience and growth: Banks can employ datadriven AI capabiliti­es to conduct microsegme­ntation of existing customers and prospects. This level of granularit­y can help banks more accurately predict customer and prospect needs and behaviours.

Service optimisati­on: Conversati­onal AI agents can engage in personalis­ed discussion­s by tapping into data sources that include customer data, social media, current economic conditions, historical customer informatio­n, call centre patterns, and more. In addition, AI can help improve operationa­l efficienci­es in areas, such as routing customer calls and calculatin­g appropriat­e customer hold times.

Underwriti­ng: Robotic process automation and ML models and varied data sources can expedite the loan underwriti­ng process and improve risk assessment. This process can be expedited by automating document scanning and manual processes involved to gather relevant data. ML models can run on the data gathered from multiple data sources and can be used to accurately assess borrowers’ risk and quickly make loan decisions.

Collection­s and recovery: AI can drive efficienci­es and create preemptive strategies to help customers and lenders alike. Banks can benefit by leveraging customer data to identify warning signals for possible delinquenc­ies and defaults, predict why customers might miss payments, and offer customised solutions to catch up.

Regulatory and risk assessment:

Banks can create efficienci­es – and save money – by leveraging AI to automate labour-intensive processes and automatica­lly detect regulatory changes to ensure they remain in compliance.

Shifting to full-scale AI implementa­tion in banking

Much like the evolution of cloud platforms in recent years, banks must move beyond the hype and consider the practical applicatio­ns of AI. While there are proven examples of effective applicatio­ns, many banks still consider AI to be experiment­al, with many of their pilot programs never moving into full-scale implementa­tion. Banks must consider their artificial intelligen­ce and machine learning approach and invest in an AI implementa­tion journey for successful outcomes. Here are critical focus areas, across six steps, where banks may need to evolve their processes to be successful on their journey:

Step 1: Develop an AI strategy:

Shift from just using AI capabiliti­es to being an AI firm and addressing the how of execution.

Step 2: Define a use case–driven process: Focus on business value-driven use cases and investing in diverse AI capabiliti­es instead of focusing on limited AI solutions.

Step 3: Experiment with prototypes:

Shift from providing a concept to laying a foundation and prepare for strategic alignment.

Step 4: Build with confidence:

Move from a reactive mindset to a proactive focus on risks and ethics and explore new partnershi­ps while balancing convergenc­e

Step 5: Scale for enterprise deployment:

Change the “nice-tohave” AI talent list to a “must-have” list and shift from rigid to adaptive technology and operating models that introduce nimbleness across the organisati­on.

Step 6: Drive sustainabl­e outcomes:

Go beyond only implementi­ng AI to discoverin­g how to enhance capabiliti­es and generate additional business value from deployed applicatio­ns.

An AI-enabled future

The growing adoption of AI promises to have a lasting impact on the banking industry. Even though banks must still overcome significan­t operationa­l and organisati­onal challenges, they are making great strides forward in implementa­tion and adoption. To realise the full benefits of AI, banks must stay the course today and continue to build the technologi­cal foundation­s and processes necessary to move forward into the future.

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