Technology
AI's Cost-Cutting Promises Helps Drive Financial Sector Enthusiasm
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In another look at the different ways that banks, wealth managers and family offices are using AI, this article examines a survey and other information to convey where the market is heading.
Cost cutting appears to be the most popular reason for the
world’s financial institutions to embrace generative AI, although
enhancing the client experience and gaining a competitive
edge are also strong motivators.
Those findings, from Japan-based NTT DATA, a digital
business and IT services house, provide insight into how 800
senior banking figures worldwide (Europe, North America, Latin
America, Asia-Pacific) think about the promise of AI and how this
will affect the business. And the findings illuminate what sort
of use cases –
as this publication is noting – are gaining ground in the
wealth management industry.
NTT laid out what banks get most exercised about, as the
following chart shows:
Source: NTT DATA
The NTT DATA report emerged a few days ago. Surveys are pouring
out, chronicling what the banking, wealth management, fund
management and other financial sectors see as AI’s potential. A
report last year by KPMG,
for example, found that three quarters (75 per cent) of the asset
manager CEOs it surveyed see generative AI as a top investment
priority. (Source: KPMG 2024 Asset Management CEO
Outlook.)
Even the family office sector, which sometimes lags big
institutions such as banks and investment houses, is feeling the
trend. At US-based Eton Solutions, for
example, in September 2024 it launched EtonGPT™, which it said
was the world’s first generative AI module for family offices
globally. Solution's ERP [enterprise resource planning]
platform.
Ideas about the use cases for AI are legion. According to
Francesco Filia and Daniele Guerini, authors of The Future Of
Finance: The Rising Tide of Fintech Lending And The Platform
Economy, AI capabilities include credit scoring and risk
assessment; fraud detection and prevention; chatbots and virtual
assistants; personalised banking and financial planning;
algorithmic trading; customer relationship management; regulatory
compliance; robo-advisors; and natural language processing
(NLP).
The adoption of certain technologies is winning admirers.
“I am impressed by the technology’s ability to allow subject
matter experts to make a bigger impact than they have
traditionally been allowed within technology,” Spencer Lourens,
chief data officer at CliftonLarsonAllen,
the accounting and professional services firm, told this
news service. “As an example, the AI models that are available
today make it much easier for a business user who has a problem
to create a prompt template or a small, repeatable solution that
solves a business problem for them which used to take a lot
longer to do manually. On a larger scale, this has led to the
creation of many startups, including but not limited to Harvey
AI, Decagon, and many others being built to solve very specific
business problems with products that fill gaps these models can
address.”
Analysis from Oliver Wyman and Morgan Stanley highlights a number
of effects that AI will have, such as faster and more accurate
decision-making; personalised client relationships, such as the
use of natural language processing and recommendation systems;
automation of internal processes, and advanced reasoning.
Technologies such as Chain of Thought enable AI to explain
how AI “thinks.” As explained by IBM, this “mirrors human
reasoning, facilitating systematic problem-solving through a
coherent series of logical deductions.”
Last year, AI use cases featured in the 12th edition of the
WealthBriefing Tech and Ops Trends in Wealth Management
2024
report.
Use cases
CLA’s Lourens was asked what sort of use cases are coming
up.
“There’s a broad range here – some clients want to get
access to Microsoft Copilot or another generative AI
platform/service. Some are looking for us to build a system that
helps them make the question/answering process easier around
their internal documents,” he said. “Some want to get rid of
manual and cumbersome steps around document mining and data
entry, and some are interested in creating 'AI agents’ to help
them with broader, end-to-end tasks.”
“We don’t see one way that a firm should go as it is very
dependent on where they are in their overall digital journey, but
we also see clients still needing us to conduct data analysis and
build custom models for them, which is something we have done for
years before ChatGPT and generative AI of today existed,” Lourens
said.
In November last year, Broadridge Financial Solutions, which
provides tech solutions to financial firms, gave this publication
examples of AI enhancements such as BondGPT, which is powered by
OpenAI GPT-4; it answers bond-related questions and assists
users in their identification of corporate bonds on the LTX
platform. This app distils bond issuer and market data so that
users can pose questions – such as how to find a replacement for
a bond of a certain type – quickly, and in seconds, rather than
minutes or hours after talking to an analyst, as has been the
case. (LTX is an electronic trading platform for corporate
bonds.)
Also in the US, Raymond James, the
wealth management house, said its advisors are using analytics to
identify and support client touchpoints in the “Opportunities”
application and machine learning in “Advisor Access” that
predicts and recommends their next action for faster results. It
is also piloting an enhanced intranet site powered by generative
AI to relay relevant, timely information and resources.
Banks are devoting resources in various ways. For example, last
year this news service spoke to Julius Baer, the Swiss private
bank, about the work of its
innovation lab.
Impact
NTT DATA’s report showed how significant AI’s impact is proving
to be. GenAI is already making waves in the banking industry,
with six in 10 organisations (58 per cent) fully embracing
its transformative potential, an increase from 2023, when only 45
per cent of organisations had fully embraced GenAI.
Exploring viable use cases for AI in all its forms will be
essential to justify the high spending it is causing, NTT DATA
said.
“Generative AI represents a pivotal moment for the banking
industry,” said Robb Rasmussen, the firm’s global marketing and
communications head. “While the potential benefits are enormous,
the challenges of implementing GenAI are complex and varied,
requiring careful navigation and a structured approach. Given the
anticipated high spending on GenAI, achieving a return on
investment is crucial.”