The most prevalent trend in today’s
financial services industry is the shift to
digital, specifically mobile and online
banking. In the era of unprecedented
convenience and speed, consumers don’t
want to trek to a physical bank branch to
handle their transactions. While on the one
hand, banks are releasing new features to
attract more customers and retain the
existing ones, on the other hand, startups
and neo banks with disruptive banking
technologies are breaking into the scene.
The use of Artificial Intelligence (AI) in the
banking industry can revolutionize the way
banks operate and provide services to
their customers, improving eciency,
productivity, and customer experience.
Bank offered rate based on Artificial IntelligenceIJAEMSJORNAL
The rise of event streaming in financial services is growing like crazy. Continuous real-time data integration and AI processing are mandatory for many use cases. Artificial intelligence is the simulation of human intelligence processes by machines, especially computer systems. Specific applications of AI include expert systems, natural language processing, speech recognition and machine vision.
Data-driven Banking: Managing the Digital TransformationLindaWatson19
The digital revolution has arrived in banking. Evolving customer expectations, increasing cyber threats and growing volumes of data are just a few of the challenges faced by traditional financial institutions.
Application of artificial intelligence in banking venkat vajradhar - mediumvenkatvajradhar1
Digital disruption is about redefining industries and changing the way businesses operate. Each sector is evaluating options and adopting ways to create value in a technology-driven world. The banking sector is seeing exceptional changes: above all, an increase in customer-centricity.
AI helps banks to predict future trends as well as outcomes. It has the power to predict future scenarios by analyzing past behaviors. Therefore, banks can easily identify fraud, detect anti-money laundering patterns, and make customer recommendations. AI is capable enough to detect suspicious data patterns among humungous volumes of data, which further helps in fraud management.
The future of financial technology (FinTech) - Trends and PredictionsAlexander Clifford
Through the adoption of innovative technologies, the financial sector is undergoing a digital transformation that achieves efficiency, increased accessibility, and economic growth. This increased digitalisation is being powered by financial technology, known as FinTech. Let’s dive into the trends of FinTech as well as the predictions about what the future of the financial industry looks like.
Bank offered rate based on Artificial IntelligenceIJAEMSJORNAL
The rise of event streaming in financial services is growing like crazy. Continuous real-time data integration and AI processing are mandatory for many use cases. Artificial intelligence is the simulation of human intelligence processes by machines, especially computer systems. Specific applications of AI include expert systems, natural language processing, speech recognition and machine vision.
Data-driven Banking: Managing the Digital TransformationLindaWatson19
The digital revolution has arrived in banking. Evolving customer expectations, increasing cyber threats and growing volumes of data are just a few of the challenges faced by traditional financial institutions.
Application of artificial intelligence in banking venkat vajradhar - mediumvenkatvajradhar1
Digital disruption is about redefining industries and changing the way businesses operate. Each sector is evaluating options and adopting ways to create value in a technology-driven world. The banking sector is seeing exceptional changes: above all, an increase in customer-centricity.
AI helps banks to predict future trends as well as outcomes. It has the power to predict future scenarios by analyzing past behaviors. Therefore, banks can easily identify fraud, detect anti-money laundering patterns, and make customer recommendations. AI is capable enough to detect suspicious data patterns among humungous volumes of data, which further helps in fraud management.
The future of financial technology (FinTech) - Trends and PredictionsAlexander Clifford
Through the adoption of innovative technologies, the financial sector is undergoing a digital transformation that achieves efficiency, increased accessibility, and economic growth. This increased digitalisation is being powered by financial technology, known as FinTech. Let’s dive into the trends of FinTech as well as the predictions about what the future of the financial industry looks like.
As impressive — or scary — as that might sound, artificial intelligence technologies aim to further revolutionize the way banking is done and the relationships between banks and their customers’ experience.
Application of artificial intelligence in banking venkat vajradhar - mediumvenkatvajradhar1
Digital disruption is about redefining industries and changing the way businesses operate. Each sector is evaluating options and adopting ways to create value in a technology-driven world. The banking sector is seeing exceptional changes: above all, an increase in customer-centricity.
ROLE OF ARTIFICIAL INTELLIGENCE IN COMBATING CYBER THREATS IN BANKINGvishal dineshkumar soni
With the advances in information technology, various cyberspaces are used by criminals to enhance cybercrime. To mitigate this cybercrime and cyber threats, the bank and financial industry try to implement artificial intelligence. Various opportunities are provided by AI techniques, which help the banking sector to increase prosperity and growth. To maintain trust in artificial intelligence, it is important to maintain transparency and explain ability. Information about customer's behavior and interest is provided by artificial intelligence techniques. Robo-advice is an automated platform that is maintained by AI. Artificial Intelligence is also involved in protecting personal data. Proper design provided by AI towards the banking sector, by which they are able to identify fraud in transactions. AI directly linked with the domain of cyber security. Various kinds of cybercrimes are prevented and identified by AI-based fraud detection systems. However, implementation and maintenance of artificial intelligence consist of the high cost. Along with this unemployment rate is increased by AI techniques.
6 use cases of machine learning in Finance Swathi Young
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* Chatbots
* RoboAdvisors
* Risk scoring
* Fraud Detection
* Insurance claims
* Underwriting
* regulatory compliance
Fintech Software Development: A Comprehensive Guide in 2024SeasiaInfotech2
Welcome to our fintech software development guide. Emerging technologies allow financial institutions to offer their services more quickly and efficiently to customers in a progressively mobile and web-connected world. Check out our blog now to learn more.
Collaborate and Build Solutions for the Bank and Fintech Industry.pdfTechugo
Banks will be equipped with cutting-edge technology, including machine learning and artificial intelligence, to improve their services and meet customers’ changing needs. Given the optimism surrounding them, one can only imagine how such partnerships will pan out in the future.
FinTech is more important than ever when it comes to keeping up in the rapidly changing financial industry. Technologies such as cloud computing, data analytics, Artificial Intelligence (AI) and the Internet of Things (IoT) have the potential to cut costs, retain customers and protect against cyberthreats, as long as organizations are willing to invest in them.
See more: http://ms.spr.ly/6005pvK4x
Future of artificial intelligence in the banking sectorusmsystems
The banking sector is becoming an active adapter of artificial intelligence — exploring and implementing this technology in new ways. The penetration of artificial intelligence in the banking sector had been unnoticed and sluggish until the advent of the era of internet banking.
Early Stage Fintech Investment Thesis (Sept 2016)Earnest Sweat
Here is an example of a personal investment thesis that I created to share with venture capital firms. In this example, I provide my personal perspective on the fintech sector. For details on how I build this thesis check out my blog (https://goo.gl/CU4Qid).
Note: Some of the confidential information has been redacted for privacy.
Accenture re-organizing-todays-cyber-threatsLapman Lee ✔
Banks are facing an urgent need to bring fraud risk management and IT security—two historic silos—more closely together to combat mounting data security and cyber threats.
banking sector is becoming an active adapter of artificial intelligence — exploring and implementing this technology in new ways. The entry of artificial intelligence into the banking sector was not recognized and slowed down until the era of Internet banking.
Evolving Technology Trends Is your bank ready for tomorrow?aakash malhotra
Banks around the world have been
racing to catch up with the ever-evolving
technological trends shaping the way they
operate and serve their clients.
Prior to COVID-19, the Middle East
financial services industry was evolving
at a measured pace, driven by changing
customer expectations, heightened
competition from incumbents and
new entrants, evolving regulations, and
advancements in technology. In a matter
of weeks, COVID-19 upended those
conventions
The financial volatility unleashed by the
pandemic has opened the doors of opportunity
for Banking and Financial Services (BFS)
companies. Technology-driven digital
transformation is expected to drive further shifts
in this new normal.
The industry will witness the adoption of
innovative technologies driven by emerging
trends. BFS organizations will increasingly
undertake digital transformation to broaden
their capabilities, and maturing FinTechs will
forge partnerships that drive disruptive growth
and customer-focused innovation.
Here, we explore some trends that will shape
the future of the BFS industry
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2. BACKGROUND .................................................................................... 3
DIGITAL TRANSFORMATION IN THE BANKING INDUSTRY ........ 4
ARTIFICIAL INTELLIGENCE................................................................ 5
AI WITH MACHINE LEARNING ............................................................................ 5
AI WITH NATURAL LANGUAGE PROCESSING ................................................ 6
AI WITH DEEP LEARNING .................................................................................... 6
AI FOR CYBERSECURITY........................................................................................ 7
WHAT IS A CYBER THREAT? ................................................................................ 7
HOW CAN AI HELP THE BANKS ? .................................................... 8
SAFEGUARD WITH SECURED SOFTWARE .................................... 9
AI FOR CUSTOMER EXPERIENCE........................................................................ 10
HOW CAN AI HELP THE BANKS IN IMPROVED CUSTOMER
EXPERIENCE? ................................................................................ 10
IMPROVED EFFICIENCY AND PRODUCTIVITY................................................ 10
PERSONALIZED RECOMMENDATIONS ............................................................ 10
PREDICTIVE ANALYTICS ........................................................................................ 10
WHY ARE BANKS SLOW IN USING AI?............................................11
WHAT ARE THE CHALLENGES FACED BY END USERS? ............................ 11
WHAT IS THE CURRENT ADOPTION RATE OF AI IN BANKING
INDUSTRY............................................................................................12
WHAT ARE THE KEY DRIVERS THAT WOULD LEAD TO WIDESPREAD
USAGE OF AI BY BANKS? .................................................................................... 12
CONCLUSION ....................................................................................13
REFERENCES ....................................................................................13
ABOUT THE AUTHOR ........................................................................14
ABOUT HAPPIEST MINDS TECHNOLOGIES ................................14
CONTENTS
3. The most prevalent trend in today’s
financial services industry is the shift to
digital, specifically mobile and online
banking. In the era of unprecedented
convenience and speed, consumers don’t
want to trek to a physical bank branch to
handle their transactions. While on the one
hand, banks are releasing new features to
attract more customers and retain the
existing ones, on the other hand, startups
and neo banks with disruptive banking
technologies are breaking into the scene.
The use of Artificial Intelligence (AI) in the
banking industry can revolutionize the way
banks operate and provide services to
their customers, improving efficiency,
productivity, and customer experience.
BACKGROUND
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 3
4. DIGITAL
TRANSFORMATION IN
THE BANKING
INDUSTRY
Covid has accelerated the digital transformation
and brought even those digitally shy consumers to
the newer fold. The digital shift is changing the
whole customer experience with an estimation of
75 to 80 billion devices being connected to the
internet by 2025.
As people want the convenience of banking right
at their fingertips, it is also increasing the number
of frauds at a staggering rate.
One of the major challenges in the banking
industry is cyber fraud.. The world is losing about
$5 trillion annually to such crimes with the number
expected to double in the next five years. It is a big
problem and India ranks among the top-5 most
attacked countries in the world.
Every day, a huge number of digital transactions
take place as users pay bills, withdraw money,
deposit cheques, and do a lot more via apps or
online accounts. Thus, there is an increasing need
for the banking sector to ramp up its cybersecurity
and fraud detection efforts.
This is where Artificial Intelligence in banking
comes to play.
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 4
5. ARTIFICIAL
INTELLIGENCE
Artificial Intelligence or AI comprises a range of technologies and techniques that enable machines to mimic
or perform tasks that would typically require human intelligence, such as learning, problem-solving, and
pattern recognition. This can include techniques like Natural Language Processing, Machine Learning, Deep
Learning, and Expert Systems.
Artificial Intelligence can help banks improve the security of online finance, track the loopholes in their
systems, and minimize risks.
AI with Machine Learning
It can quickly identify fraudulent activities and alert customers as well as banks. It can also be used to classify
customers into different segments based on their demographics and spending patterns or to predict which
customers are most likely to default on a loan. It can also predict which transactions are most likely to be
approved or denied. Additionally, it can be used to identify which products or services a customer is most
likely to be interested in and to recommend them to customers based on their past behavior.
These are a few reasons why AI is being widely adopted in the banking industry. Some of the other benefits
of using AI in banking include:
Customer
Experience
Chatbots and
Contact Center
Modernization
Process
Automation
Predictive
Analytics
Data Collection &
Analysis
Tracking Market
Trends
Loan & Credit
Decision
Regulatory
Compliance
Risk Management
Fraud Detection and
Prevention
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 5
6. ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 6
AI with Natural Language
Processing
An example of a Conversational Experience in banking
might be a chatbot that customers can interact with
through a messaging platform or a banking app. The
chatbot could be trained to understand and respond to
various customer inquiries, such as account balances,
transaction history, and account management. For
example, a customer might ask the chatbot, "What is my
account balance?" The chatbot would then use Natural
Language Processing to understand the question, access
the customer's account information, and respond with the
current balance. Some other examples of Conversational
Experience would include Voice Assistant, Contact Center
Modernization, etc.
AI with Deep Learning
It is a powerful technique that can help banks improve
the accuracy and efficiency of many processes and
enhance the customer experience. For instance:
Deep learning algorithms can be trained on historical
data to identify patterns and anomalies indicative of
fraudulent activity. This can help banks detect and
prevent fraud more effectively and help banks make
better-informed decisions. Other examples include
Loan & Credit Decisions and Risk Management.
7. AI for Cybersecurity
What is a cyber threat?
The banking sector has been
under attack for hundreds of
years. First, it was the physical
theft of money, and then
computer fraud. Cyber security is
critical in banking because today ,
it’s not only cyber fraud being
committed but criminals are also
hacking into servers to obtain a
customer’s personally identifiable
information (PII). As individuals
and companies perform most
transactions online, the risk of a
data breach increases daily.
Therefore, there’s a greater
emphasis to examine the
importance of cyber security in
banking sector processes.
There are several other reasons
to adopt this approach as well. At
first, banks handle large amounts
of sensitive financial information,
including customer accounts,
credit card numbers, and
personal identification
information. If this information
were to fall into the wrong hands,
it could be used for identity theft
or other financial crimes. In
addition to protecting customer
information, banks also have a
responsibility to protect their own
assets and operations from cyber
threats. This includes protecting
against cyber-attacks that could
disrupt the bank's operations or
compromise its systems and data.
In the digital age, cyber threats to
the banking industry are
becoming increasingly
sophisticated and widespread.
Banks must therefore implement
robust cybersecurity measures to
protect themselves and their
customers from these threats.
This includes measures such as
firewalls, intrusion detection and
prevention systems, and data
encryption to prevent
unauthorized access to sensitive
information. It also includes
training employees to recognize
and prevent cyber-attacks, and
regularly testing and updating
systems to ensure that they are
secure.
Overall, cybersecurity is a critical
concern for the banking industry,
and banks need to invest in
robust cybersecurity.
Some of the other items to be concerned about include:
MORE RISKS FROM
MOBILE APPS
More individuals access their
bank accounts on mobile apps.
Many of these people tend to
have minimal or no security, and
this makes the potential of
attack much greater. Hence,
banking software solutions are
required at the endpoint to
prevent malicious activity.
BREACHES AT
THIRD-PARTY
ORGANIZATIONS
As banks have upgraded their
cyber security, hackers have
turned to shared banking
systems and third-party
networks to gain access. If these
aren’t as protected as the bank,
the attackers can get through
with ease.
INCREASED RISK OF
CRYPTOCURRENCY
HACKS
In addition to standard funds,
hacks have increased in the
growing world of
cryptocurrency. Since the sector
is unsure how to implement
cyber security software for
banking in this ever-changing
market, the ability for attackers
to grab large amounts of this
currency is greater, especially
when it quickly jumps in value.
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 7
8. The different areas where financial fraud detection software can assist enterprises.
HOW CAN AI HELP
THE BANKS?
This is a type of cybercrime wherein attackers
send fake messages and website links to users
via email. These emails are seemingly legit and
authentic so that anyone can misjudge them and
enter vulnerable data that puts them at risk. To
avoid such situations, one can use automated
methods for detecting phishing through machine
learning. These methods are based on classical
machine learning algorithms for classification and
regression.
In an increasingly digital world, credit card fraud
has become quite common. This type of financial
fraud involves stealing debit cards or credit card
numbers through unsecured internet
connections. Machine learning algorithms help
identify which actions are authentic and which
ones are illegal. If someone tries to cheat the
system, an ML model can alert the bank and take
necessary measures to negate the activity.
Machine learning integration in anti-fraud systems
is particularly crucial when payment methods
extend beyond physical cards and into the realm
of mobile phones. Smartphones now feature NFC
chips, enabling users to pay for products just with
their phones. This means your smartphone is
prone to hacking and cyber threats. Machine
learning in Finance is an effective tool to detect
abnormal activities for each user, thus minimizing
mobile fraud risks.
EMAIL PHISHING CREDIT CARD FRAUD
MOBILE FRAUD
Information such as user’s name, bank details,
passwords, login credentials, and other extremely
sensitive information is under great threat if a
cybercriminal comes into play. Identity theft puts
both individuals and enterprises at risk. Machine
learning in Finance helps examine and check
identity documents such as passports or driving
licenses against secure databases in real-time to
ensure all fraud cases are detected. Besides, ML
can be also used for fighting fake IDs by enabling
biometric scanning and face recognition.
IDENTITY THEFT
Insurance fraud typically includes fake claims of
car damage, property, and even unemployment.
To reduce such frauds, insurance companies
spend an extensive amount of time and resources
to validate each claim. However, this process is
expensive as well as prone to hacking. Due to its
superior pattern recognition capabilities, machine
learning helps resolve insurance claims with
utmost accuracy and find fake ones. .
INSURANCE CLAIMS
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 8
9. When looking at the ongoing state of security on the internet, one must consider enhancement or
complete replacement of the current protection applications. Here are some things to look at in banking
software development.
SAFEGUARD WITH
SECURED SOFTWARE
SECURITY AUDIT
A thorough audit is imperative before implementing
any new cyber security software. The review reveals
the strengths and weaknesses of the existing setup.
Furthermore, it provides recommendations that can
help save money while also allowing for the proper
investments.
FIREWALLS
Cyber security banking configuration does not
include only applications. It also requires the right
hardware to block attacks. With an updated firewall,
banks can block malicious activity before they reach
other parts of the network.
ANTI-VIRUS AND ANTI-MALWARE
APPLICATIONS
While a firewall upgrade increases protection, it
won’t stop attacks unless anti-virus and anti-malware
applications are updated. Older software might not
contain the latest rules and virus signatures. In turn, it
can miss a potentially disastrous attack on the
system.
MULTI-FACTOR AUTHENTICATION
The multi-factor authentication also known as MFA,
is extremely critical to protect customers who utilize
mobile or online apps to do their banking. Many
users never change their passwords and if they do,
they make small changes. With MFA layering
attackers are prevented from reaching the network
because it asks for another level of protection. For
instance, a six-digit code sent to a customer’s cell
phone.
BIOMETRICS
It is another version of MFA which is more secure
than a texted code. This form of authentication relies
on retina scans, thumbprints, or facial recognition to
confirm a user’s identity. Though hackers have
accessed this type of authentication in the past, it is
more difficult to accomplish.
EDUCATION
All of the above measures can increase cyber security in the banking sector. Nevertheless, they can’t help if
customers continue to access their information from unprotected locations or improperly protect their login
credentials. This is why education is important. When banks notify their customers of consequences related to
these vulnerabilities it may move them to change their habits for fear of losing their investments.
AUTOMATIC LOGOUT
Many websites and apps allow a user to stay logged
in if they allow it. Thus, they can access their
information at any time without entering their login
credentials. However, this also permits attackers to
easily obtain your records. Automatic logout
minimizes this by closing a user’s access after a few
minutes of inactivity.
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 9
10. AI for Customer Experience
Traditional IVR Contact centers in banks are
customer service centers that handle incoming calls
and other forms of communication from bank
customers. These centers are typically responsible
for providing information, answering questions, and
resolving issues related to banking products and
services. Following are some of the main challenges
faced by traditional contact centers in banks which
could result in lost sales and dissatisfied customer.
Managing high call volume — These centers may
not be able to handle the volume of calls. Validation
of the customer could become a cumbersome
repetitive task.
Providing accurate and timely information—They
normally operate only during prescribed business
hours. There are routing of calls to irrelevant
department and the overall customer experience is
disrupted. There are too many options provided in
IVR, where customer would have to listen carefully
and decide, which may result in the customer not
getting the required information.
Other challenges include maintaining security and
compliance with regulations, managing and training
staff, and dealing with complex and changing
technology systems.
How can AI help the
Banks in improved
Customer
Experience?
Artificial intelligence (AI) can be used in the
banking industry to improve customer experience
in several ways. AI-powered chatbots and virtual
assistants can be used to provide automated
customer service, answering common questions
and helping customers to resolve issues more
quickly and efficiently. This will enable an
omni-channel interaction, which could result in an
improved customer experience.
Improved efficiency and
productivity
Personalized
recommendations
Predictive analytics
AI can automate a variety of tasks and processes in
the banking industry, freeing up human employees
to focus on more complex or value-added tasks and
improving efficiency and productivity. IVR solution
can be enabled 24/7 to handle queries and request
across the globe. Triaging of calls to right agent will
increase customer satisfaction and improve
efficiency. Banks can gather inputs from IVR system
for frequently enquired products / services which
can be offered. Based on this bank can launch new
products / services.
AI can be used to analyze customer data and make
personalized recommendations for products or
services that may be of interest to them. This can
help banks to better meet the needs of their
customers and provide a more personalized and
convenient experience. For the banks and financial
institutions, it would reduce the Turn Around Time
and money saved.
AI can be used to analyze customer data and make
predictions about their future financial
performance, helping banks to make more
informed investment and lending decisions. This
can help banks to identify opportunities to upsell or
cross-sell products, as well as to identify potential
issues that customers may face and proactively
address them. This would result in regaining the
trust of customers confidence and improved brand
reputation.
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 10
11. WHY ARE BANKS SLOW
IN USING AI?
Some of the challenges that banks
may face when adopting AI
technology include:
What are the challenges faced by
end users?
Regulatory compliance
The financial industry is heavily regulated, and banks
need to ensure that any new technology they adopt
is compliant with these regulations. This can be a
time-consuming and costly process.
Lack of understanding
Many people may not understand how AI works or
what it can be used for, which can make them hesitant
to use it.
Integration with legacy systems
Many banks have large, legacy IT systems that are
difficult to integrate with new technologies. This can
be a challenge when it comes to adopting AI systems,
as the technology may require access to data from
these legacy systems in order to function effectively.
Concerns about security and privacy
Some people may be concerned about the security
of their personal or financial information when using
AI-powered banking services.
Data privacy and security
Banks handle a large amount of sensitive customer
data, and any new technology that is adopted must
be able to protect this data. This can be a challenge
when it comes to AI, as the technology often requires
access to large amounts of data in order to function
effectively.
Resistance to change
Some people may be resistant to using new
technologies, especially if they are used to traditional
methods of banking.
Lack of skilled personnel
There is currently a shortage of individuals with the
necessary skills to develop and implement AI
systems. This can make it difficult for banks to find the
personnel they need to adopt the technology.
Lack of access
Not everyone may have access to AI-powered
banking services, either because they are not offered
in their region or because they do not have the
necessary technology (e.g. a smartphone) to use
them.
Resistance to change
As with any new technology, there may be resistance
to adoption from employees or customers. Banks
may need to invest in training and education in order
to overcome this resistance and ensure the
successful adoption of AI.
Costs
Some AI-powered banking services may come with
additional fees, which may be a barrier for some
users.
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 11
12. The following chart provides a
bird’s eye analysis of the Effort
vs Benefit while implementing
AI in Banking.
WHAT IS THE CURRENT ADOPTION
RATE OF AI IN BANKING INDUSTRY?
What are the key
drivers that would lead
to widespread usage of
AI by banks?
It is difficult to say exactly what the current adoption rate of AI in the banking industry is, as it can vary widely
from one bank to another. Some banks have been early adopters of AI and have implemented a wide range
of AI-powered services, while others have been slower to adopt the technology. It is generally accepted that
the adoption of AI in the banking industry has been increasing in recent years, and it is expected to continue
to grow in the coming years. According to a survey conducted by Accenture, 37% of banks reported using AI
in 2019, and that number increased to 53% by 2020 and is increasing further.
1
Increasing competition
As more banks adopt AI, those that do not may
struggle to keep up with their competitors in terms of
efficiency and customer service.
2
Customer demand
As more and more customers become accustomed to
using AI in their daily lives, they may come to expect
similar technologies from their banks.
3
Cost savings
AI can help banks reduce costs by automating many
tasks that were previously done manually, such as
fraud detection and customer service.
4
Improved decision making
AI can help banks make more informed and accurate
decisions by analyzing large amounts of data in
real-time.
5
Regulatory pressure
Some governments and regulatory bodies are
encouraging or mandating the use of AI in the financial
industry to help reduce risk and improve the overall
stability of the financial system.
Benefit/Impact
Effort
1
1
2
2
3
3
4
4
5
5
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 12
AI Claims
Processing
Intelligent
Reporting
Reconcilation
AI/ML
PSD2 Data
Insurance
Compliance
Risk
Mitigation
Market
Value
Prediction
Credit
Scoring
Predictive
Risk Models
KYC
Computer
Vision
- Form Fill
Digital
Banking
Assistants AI-driven
Customer
Service
Insurance
Assistance
Agent
Loan
Offers -
Custom
Personalize
thru Face
Detect
Content
Driven
Trading High
Frequency
Trading
AI-driven
Personalization
Vehicle
Damage
at Claim
Service
Desk
Automation
Compliance
Violations
Scan
Fraud
Detection
Proactive
insurance
quotes
13. Overall, the use of AI in the
banking industry can help to
improve customer experience
by providing personalized
recommendations, faster and
more efficient customer service,
and improved fraud detection
and prevention.
In 2023 and beyond, one of the
main driving forces for change
impacting the banking and
financial services industries will
be the need to meet customer
experience expectations. The
main aspects of this open
banking trend are the need for
financial institutions to provide
an omnichannel banking
experience, which means that
customers can move seamlessly
between their actions (mobile,
online or face-to-face) without
needing to initialize the action
each time. For this to work, it is
essential that the user
experience can be personalized,
with the interactions being
based on knowledge of the
customer’s needs and past
experiences and requirements.
Personalizing means that the
customer will build a deeper
relationship with their bank and
be less inclined to shop around
in the highly competitive market.
To provide a fully personalized
experience, the bank needs
comprehensive and up-to-date
data on which it can apply the
powers of Artificial Intelligence
and Machine Learning. This
power will generate insights that
help understand customer
needs better and offer targeted
marketing of products and
services.
Hence, 70% of the banks are
looking ahead to integrating AI
in mobile banking apps and
stepping forward to embrace the
golden opportunities of AI in
banking industry.
Overall, the use of AI in the
banking industry has the
potential to bring significant
benefits for both banks and their
customers, but it is important for
banks to carefully manage and
utilize these technologies in a
responsible and ethical manner.
CONCLUSION
References
1. Case studies from banks and financial institutions that have implemented AI solutions.
2. Reports and studies from consulting firms such as McKinsey, Deloitte, and Accenture, which provided
insights on how AI is being used in the banking industry and its potential impact on the industry.
3. Industry reports which provided a broader look at the overall impact of AI on the financial services industry.
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 13
14. ABOUT THE AUTHOR
Shobita K Sridharan is a Business Analyst Consultant
at Happiest Minds Technologies Ltd. She has around
15 years of experience in the IT Industry in Project
Management, Customer Relationship Management
across Supply Chain Management, BFSI, Insurance,
e-Governance domains.
For more information, write to us at
business@happiestminds.com
About Happiest Minds Technologies
Happiest Minds Technologies Limited (NSE: HAPPSTMNDS), a Mindful
IT Company, enables digital transformation for enterprises and
technology providers by delivering seamless customer experiences,
business effciency and actionable insights. We do this by leveraging a
spectrum of disruptive technologies such as: artificial intelligence,
blockchain, cloud, digital process automation, internet of things, robotics/
drones, security, virtual/augmented reality, etc. Positioned as ‘Born
Digital . Born Agile’, our capabilities span digital solutions, infrastructure,
product engineering and security. We deliver these services across industry
sectors such as automotive, BFSI, consumer packaged goods, e-
commerce, edutech, engineering R&D, hi-tech, manufacturing, retail
and travel/transportation/hospitality.
A Great Place to Work-Certified™ company, Happiest Minds
is headquartered in Bangalore, India with operations in the U.S., UK,
Canada, Australia and Middle East.
www.happiestminds.com
ARTIFICIAL INTELLIGENCE IN DIGITAL BANKING | 14