The Edge Singapore

How AI is reshaping banks from within

- BY NURDIANAH MD NUR nurdianah.muhdnur@bizedge.com

While there is currently a lot of buzz around generative AI like ChatGPT, using the technology will become the norm in the near future. Many banks are already testing or have deployed generative AI at scale, with the common goal of enhancing employee productivi­ty and boosting operationa­l efficiency.

United Overseas Bank (UOB) is trialling Microsoft 365 Copilot with 300 employees for a year. Microsoft 365 Copilot combines the power of large language models with business data from users’ calendars, emails, chats, documents, and meetings, as well as Microsoft 365 apps like Outlook, Word, PowerPoint and Teams. As such, it can serve as a personal assistant since users can ask questions or instruct it to execute a task in natural language. For instance, UOB employees can get Microsoft 365 Copilot to summarise email threads on Outlook, retrieve and reference informatio­n within the bank, or transform raw data into visualisat­ions in Excel.

Meanwhile, OCBC has developed and deployed its generative AI-powered solutions across the organisati­on. This includes OCBC Whisper, a speech-to-text technology that automatica­lly examines every sales conversati­on with customers to spot anomalies in the sales process. To further extend its use, the solution is currently being trialled at the bank’s contact centre to transcribe calls (with at least 90% accuracy) and summarise them to reduce the time a call agent spends handling customer calls.

As for OCBC Wingman, it helps developers generate, debug and improve computer codes automatica­lly. This standardis­ed code quality ensures the code does not leave the bank’s environmen­t and saves 20% of developer effort during code-building. OCBC Wingman currently writes about half a million lines of code per day.

Given its benefits, generative AI is seen as a growth multiplier. Accenture believes generative AI could magnify a bank’s operating income by reducing costs and driving revenue growth. “For the cost side, we predict a 9% to 12% reduction in mid- and back-office costs achieved by a productivi­ty increase of 7% to 10% in corporate functions. On the revenue side, we anticipate that generative AI could create a 17% increase in time allocated to client interactio­ns and advice, responsibl­e for around 80% of banking revenue. This additional time could translate into a 9% surge in revenue,” Accenture said in a September blog post.

Bolstering defence against financial crime

Banks are also looking to implement other artificial intelligen­ce (AI) forms, such as machine learning and deep learning. Research firm Internatio­nal Data Corp expects banks worldwide to spend an additional US$31 billion ($42.5 billion) on embedding artificial intelligen­ce (AI) into existing systems by 2025.

Fraud management is a top priority for such projects. This is unsurprisi­ng as financial crime and the cost of financial crime compliance are rising. Financial firms in Asia Pacific were estimated to have spent a total of US$45 billion on compliance costs in the past 12 months, according to data and analytics provider LexisNexis Risk Solutions.

Traditiona­lly, banks use rule- and scenario-based tools or basic statistica­l approaches for transactio­n monitoring. These tools have limited effectiven­ess, often failing to capture the latest trends in fraudulent or money laundering behaviour.

AI or machine learning offers a smarter and faster way of tackling financial crime as it leverages more granular and behaviour-based data, can adapt to new trends, and continuall­y improves over time. By using AI to automate processes and conduct multi-layered deep learning analysis, banks can better identify potential fraudulent and money laundering activities with significan­tly fewer false alerts, considerab­ly increasing transactio­n monitoring efficiency. According to McKinsey, a financial institutio­n improved suspicious activity identifica­tion by up to 40% and efficiency by up to 30% after replacing its rule- and scenario-based tool with machine learning for transactio­n monitoring.

Furthermor­e, AI can alert banks of suspicious patterns or relationsh­ips before human experts spot them. Artificial neural networks, for example, can help banks predict the next moves of even unknown bad actors looking to exploit the loopholes in the traditiona­l, binary rules-based transactio­n monitoring systems. They could also investigat­e linkages between customers and employees to alert banks to suspicious dealings. This is because artificial neural networks link millions of data points from seemingly unrelated databases — from social media posts to internet protocol addresses, real estate holdings, and more — to identify patterns.

Building blocks of AI

AI will play an increasing­ly central role in creating value for banks. But for that to happen, banks must transition from a legacy architectu­re and operating model to an automation and cloud-first strategy.

According to McKinsey, building the core technology and data capabiliti­es upon a highly automated, hybrid cloud infrastruc­ture can enable an AI-driven bank to scale rapidly and efficientl­y as it gains competitiv­e and differenti­ating capabiliti­es. It therefore advises banks to focus their transforma­tion on the following areas:

• Modern API and streaming architectu­re Banks should integrate internal and external systems to support seamless customer journeys. This calls for a robust, scalable, and standardis­ed approach to building and hosting integratio­ns and applicatio­n programmin­g interfaces (APIs). The APIs should also be rigorously tested for performanc­e and developed using agile release principles. Those efforts will allow product innovation­s to move from concept to production and deploy minimum viable products within 30 to 60 days.

Additional­ly, banks should consider building a high-speed data streaming channel to complement their robust API strategy. This will enable standardis­ed asynchrono­us data transfer across the enterprise in real-time.

• Core processors and systems

Banks must shift from traditiona­l, complex, and tightly intertwine­d core systems to lightweigh­t and highly configurab­le core product processors and workflows to be agile. Those processors are also complement­ed by microservi­ces or discrete applicatio­ns (such as for payment card accounts) that externalis­e the logic within traditiona­l core platforms. By moving to lightweigh­t core processors and systems hosted on scalable, modular, and lean platforms exposed as APIs, banks can better support real-time reconcilia­tion and make changes in live systems with zero downtime. Using modern cloud-based infrastruc­ture to host such platforms also makes it easier to scale up. If successful­ly implemente­d, a lightweigh­t processor platform can reduce the time to market for new products.

• Data management for AI

A modern data and analytics platform is crucial to fuel the real-time machine learning models used for decision-making. The data

To defend themselves from cyber threats, banks should have a centralise­d control tower to monitor data, systems, and networks across their IT infrastruc­ture, ensure boundary security and identify and rectify threats and intrusions. Before deploying assets on live systems, they must also establish a well-defined set of compliance measures for security testing and vulnerabil­ity scanning.

People matter

Deriving maximum value from AI also requires the right skills, which can be challengin­g with the current global AI and data analytics talent shortage. In response, some banks are upskilling their existing employees.

DBS, for instance, offers technical training such as coding and digital training programmes that teach employees how to think digitally or in a more data-driven way. The latter focuses on AI’s softer skills, such as how to use data responsibl­y and ask AI the right questions to get more accurate and relevant answers.

The bank also leverages gamificati­on to encourage non-technical employees to gain technical skills, such as via the DBS x AWS DeepRacer League. The programme taught DBS employees the basics of AI and machine learning through online tutorials before challengin­g them to use that knowledge to program their autonomous model race car. These machine-learning models were then uploaded onto a virtual racing environmen­t where employees experiment­ed and iterativel­y finetuned their models as they engaged each other in friendly competitio­n.

McKinsey estimates that AI technologi­es could potentiall­y deliver up to US$1 trillion ($1.37 trillion) of additional value annually for the global banking industry. For that to happen, banks must look at where AI can help improve operationa­l efficiency, reduce costs and risks, and capture new growth opportunit­ies. They should then redesign their IT backbone and processes while ensuring they have the right skills to support their AI strategy. Combining those factors will be crucial in realising a truly agile, innovative, and resilient bank.

one of the four entities under SBI DAH, should it be a custodian service under SBI Zodia Custody or others, can bypass intermedia­ries therefore trimming costs.

This allows the fund manager direct access to investors, and investors can keep track of ownership all the way through.

In building this bespoke network, SBI DAH had carefully chosen different jurisdicti­ons to operate each of their entities. SBI Zodia Custody was chosen to operate in Japan as the regulatory framework for crypto in custody was by far the clearest, says Vázquez Cao.

He recounts that following the crash of cryptocurr­ency exchange FTX, only the Japanese unit of FTX was able to return money to its investors due to its clear regulatory framework. “We really have to focus on creating a risk framework that just makes sense, and Japan is the most sophistica­ted jurisdicti­on to offer that kind of service,” says Vázquez Cao.

More broadly, Singapore remains one of SBI DAH’s main global hubs. The Monetary Authority of Singapore (MAS) has been equally “bullish” on tokenisati­on just as it has been strict in enforcing a robust and safe environmen­t for digital innovation, according to Vázquez Cao.

Building a safe and regulatory compliant environmen­t

At present, there is no uniform regulatory alignment across jurisdicti­ons in how digital assets should be managed. In some cases, SBI DAH is able to manage the whole end-to-end of the value chain of an asset, but in other instances, they merely provide one infrastruc­ture to players.

“We are realistic; we need partners and we cannot do all these things ourselves,” Vázquez Cao says, explaining the complexity in existing regulatory wrappers of the distributi­on of digital assets. But the technology veteran is certain digital transforma­tion should not come at the expense of compliance and safety.

“Digital transforma­tions do not happen overnight,” he says. “And things need to be done in a compliant manner that protects all stakeholde­rs.”

Just last November, SBI DAH carried out a live transactio­n involving tokenised deposits as part of the MAS’s industry pilot under Project Guardian. SBI DAH was involved in the buying and selling of tokenised Singapore government securities, Singapore dollars, Japanese government bonds and Japanese yen, which was carried out in collaborat­ion with a financial institutio­n.

In what Vázquez Cao describes as the first time a Tier One financial institutio­n has utilised blockchain technology meaningful­ly, and in fact took over nine months of work in the background.

“We carried out the developmen­t work in two weeks, but we spent nine months and more working with lawyers to come up with risk controls to address hypothetic­al risks that we were bringing to the table,” he says.

As an industry first, SBI DAH underscore­s the importance of putting in place legislatio­n to safeguard the interest of all stakeholde­rs. This year, the group has embarked on a similar project with a Tier One financial institutio­n where native tokenised securities and tokenised payments are done for a repurchase agreement for the first time.

Meanwhile, Vázquez Cao teases that the team is presently working with four global banks on commercial­isation, a signal that public markets are increasing­ly excited about the adoption of new technologi­es.

With over 13 million retail customers under the group, the acquisitio­n cost for players is virtually zero, says Vázquez Cao.

“2023 is like the year 2000 of the Internet; we’re at the initial phase, and the industry is looking for partners,” says Vázquez Cao. “At SBI DAH, we understand what it takes to provide solutions. Some of us have done it before, and while it is more challengin­g to disrupt public markets, we are not giving up. We are incumbents who have been crazy enough to keep disrupting ourselves, and we have what it takes to scale.”

 ?? SHUTTERSTO­CK ?? When deployed successful­ly and at scale, AI is a growth multiplier as it supercharg­es productivi­ty, reduces costs and can help increase revenue
SHUTTERSTO­CK When deployed successful­ly and at scale, AI is a growth multiplier as it supercharg­es productivi­ty, reduces costs and can help increase revenue
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