Paulina Twarogal
Andrzej Puczyk
Banking Success with GenAI
Every generation witnesses breakthrough technologies that change the way we live and work. Think back to the late ‘90s when the internet and smartphones burst onto the scene. Initially met with skepticism, they eventually transformed industries and careers worldwide.
Twenty-five years later, and who can possibly imagine a world without them? Today, the pace of innovation continues to accelerate, with artificial intelligence taking center stage. There are around 70,000 AI companies worldwide, and over 115 million companies are currently leveraging its power.
While AI has been a hot topic for years, it wasn’t until late 2022 when things took a significant turn. Generative AI became a mainstream headline, with OpenAI releasing ChatGPT—a chatbot known for its remarkably human-like interactions. This changed the world overnight, making AI accessible to organizations and individual users like never before.
GenAI is not only reshaping numerous industries but has also found a central role in the fintech sector, opening doors to an era filled with potential and opportunities. At Neontri, we know how to take advantage of these opportunities. Our experts leverage over 10 years of fintech experience to deliver GenAI solutions that streamline operations, enhance customer experiences, and address key industry challenges.
In this first part of our three-part series, we’ll explore what GenAI is, how it works, and what game-changing solutions it brings to the fintech industry.
What is GenAI and how does it work?
Imagine for a moment—what if artificial intelligence could not only solve puzzles but also invent entirely new ones? That’s the essence of GenAI, a fascinating branch of AI that pushes the boundaries of creativity.
GenAI uses the power of algorithms and models to produce new and original content. While traditional AI systems rely on pre-existing rules and patterns, generative AI takes things to the next level. Its models learn from extensive data sources and then turn that knowledge into entirely new outputs. All you need to do is select the right tool, input a prompt, and wait for the results, which are typically of high-quality these days.
GenAI models can generate text, images, sounds, and many other forms of content. What’s truly remarkable is that their creations are often indistinguishable from human-made content. This makes generative AI not just a tool for content generation but a catalyst for innovation.
If you’d like to learn more about how GenAI works, check out our article on Generative AI – the Ultimate Overview: Use Cases, Models, and Tools.
The impact of GenAI on fintech
The impact of GenAI on the fintech industry is clearly visible. Take a look at the numbers below. They speak for themselves.
The AI market in fintech is expected to reach $31.71 billion by 2027, growing at an impressive rate of 28.6%. It’s not just a future trend; artificial intelligence is already being used in many different cases. According to the Cambridge Centre for Alternative Finance, a whopping 90% of global fintech companies have already embraced AI and machine learning.
When it comes to generative AI, recent forecasts are equally promising. By 2032, it’s predicted to exceed $6.2 billion in the fintech market, from its $865 million value in 2022. That’s a remarkable increase, isn’t it?
GenAI holds the promise of transforming the fintech landscape in several ways. It’s not just about improving customer service and streamlining processes but also mitigating risks and enhancing decision-making.
Game-changing possibilities offered by GenAI in fintech
All the hype and big claims aside, you might still be wondering how generative AI relates to fintech in practice. And so, without further ado, let’s get straight to the real-life examples.
Fraud detection and prevention
As the fintech industry continues to thrive, so does the unfortunate rise in fraudulent activities. Perpetrators are continuously innovating new methods to breach digital financial systems, resulting in a steady rise in identity theft and money laundering cases.
The truth is that the battle against fraud has never been more critical. Not only did the fintech sector see a 15% increase in the rate of identity fraud but also a staggering 92% rise in attempted payment fraud cases from 2021 to 2022. That means that the need for solutions to safeguard customer data is more urgent than ever.
Hopefully, AI is there to help. In fact, the global AI in the fraud management market is expected to reach $57 million by 2033. With its ability to analyze large volumes of data, GenAI can identify potential fraud patterns and develop predictive models to flag any suspicious activity in real time. As a result, generative AI could help banks and fintech organizations protect their systems and customer accounts. A study by IBM found that employing GenAI can reduce fraud losses by 50%.
For example, Mastercard, Visa, PayPal, and Bank of America have already used GenAI to mitigate fraud. In the case of Visa, its real-time payment fraud monitoring system, known as Visa Advanced Authorization (VAA), helped prevent around $28 billion in fraudulent transactions.
By using various AI and machine learning techniques, VAA system can quickly assess whether a transaction is likely to be fraudulent. It can evaluate more than 500 unique attributes per transaction in about a millisecond. Apart from VVA, there’s also Visa Risk Manager that helps with fraud risk management. Today, more than 8.000 global financial organizations are using these solutions to help identify and prevent fraud.
Curious about the common types of fraud AI can detect? Explore Mastering Fintech Security: How AI Can Shield Your Business from Financial Fraud for more insights.
Risk assessment
In today’s fast-paced and dynamic financial landscape, staying ahead of risks is crucial for fintech companies.
Generative AI can analyze historical data, market trends, and other important information to assess the risk that comes along with financial transactions and investments. It can also simulate various financial scenarios to help organizations in anticipating and mitigating risks.
A study by Deloitte revealed that GenAI could help fintech companies identify and mitigate risks even 10% more effectively compared to traditional methods.
While this number might not appear impressive at first glance, it’s important to keep in mind that we’re only scratching the surface of AI’s impact on the financial world. As AI continues to advance, we can anticipate much more significant improvements in the years ahead.
Let’s take Planck PLUS as an example—a tool that’s set to revolutionize business risk analysis. Planck’s platform aids commercial underwriting and risk assessment by converting real-time data into actionable insights for insurance carriers. This enables underwriters to access hidden risk information, make informed decisions, and reduce losses.
As the VP of product strategy in Planck says: “It’s like having a veteran underwriter sitting next to you.”
Customer service automation
In the business of safeguarding people’s finances, delivering exceptional customer care is non-negotiable. And one of the fundamental aspects of achieving this is ensuring round-the-clock availability for customers. This, however, turns out to be the Achilles heel of many fintech companies. Why?
Well, excessive workload, resource limitations, operational constraints, or the need for employee rest and shift schedules. These are just a few of the many reasons why companies struggle to deliver 24/7 support and fast resolutions. And, let’s face it, when it comes to finances, customers don’t like to wait. They want their problems sorted out right away, no matter the time.
Using GenAI to automate customer service processes, like employing virtual assistants, seems to work well in this case. A study by Gartner found that by 2026 GenAI could automate up to 30% of customer service tasks.
Of course, not every interaction can be completely automated, particularly when handling sensitive customer information. However, GenAI models can be used to automate recurring tasks and resolve low-complexity issues. This, in turn, will free human agents from dealing with basic tasks and allow them to concentrate on more complex requests.
To illustrate how it works in real life, let’s examine Bank of America’s virtual financial assistant, Erica. Simply speaking, Erica is an AI-powered virtual assistant integrated into their mobile banking app. It relies on its natural language processing abilities to provide customers with human-like responses, offering valuable assistance whenever needed.
Impressively, Bank of America reports that their clients have had more than 2 billion interactions with Erica since its launch in 2018. Their digital personal assistant has already responded to 800 million inquiries from over 42 million clients and provided them with personalized insights and guidance. This makes Erica one of the most favored AI tools among banking customers in the United States.
Process automation
GenAI is revolutionizing process automation by tackling repetitive, data-heavy tasks. This includes tasks like processing transactions, generating compliance reports, and onboarding new clients. These processes often involve numerous steps and consume significant time. GenAI not only speeds things up and reduces costs, but also minimizes the chance of human error.
For example, JPMorgan’s COIN program uses GenAI to automate reviewing commercial loan agreements, saving a staggering 360,000 hours of work annually. Similarly, Suade Labs’ platform leverages AI to streamline regulatory reporting, while Fenergo, a client lifecycle management software company, uses AI to automate client onboarding.
Personalized financial advice
Investors often look for tailored financial guidance that matches their specific goals and risk tolerance. By analyzing their individual financial data, spending habits, risk preferences as well as market trends and economic conditions, GenAI can offer personalized advice and recommendations. It can provide strategies to enhance savings, optimize debt repayment, and pinpoint cost-saving possibilities. This will make it easier to make smart choices.
A recent survey of American consumers conducted by the CFP Board reveals that nearly 1 in 3 investors is open to receiving financial guidance directly from generative AI programs. And they’re willing to do this without verifying such advice with any other source. This clearly highlights the growing trust in AI-driven recommendations.
Brex Finance Assistant is a good example of how generative AI can offer personalized financial advice. This ChatGPT-style CFO tool, developed by fintech company Brex and set to launch in 2023, acts as a smart financial assistant. It provides CFOs with valuable insights into their budgets and spending, tracks trends, and offers comparisons with businesses in the same industry. With this tool, CFOs can make informed decisions to foster business growth.
Another noteworthy example is JPMorgan Chase’s IndexGPT, expected to launch between 2026-2027. It will enable customers to explore various investment options in the market, make informed decisions based on their financial status, and receive guidance on future investments in stocks and funds.
Loan processing
Loan processing is rather a cumbersome task, often involving a mountain of paperwork and extensive manual effort. This is where generative AI steps in, offering a solution. By analyzing a user’s financial data, credit score, and other relevant factors, the loan processing procedures become much faster and more accurate. This, on the other hand, decreases the time and expenses.
Wondering how it all comes to life in practical scenarios? Let’s explore some real-world examples:
AXIS by AIO Logic is a commercial loan management platform that uses GenAI to assess risks, determine interest rates, and create tailored loan structures. It’s said to achieve a significant reduction in both time and costs compared to legacy systems, possibly up to 5 times higher.
Ocrolus might be yet another example of how GenAI can streamline loan processing. Ocrolus is a software that leverages generative AI to automate document processing for digital lenders. This innovative technology not only accelerates document analysis but also significantly reduces the workload on human analysts, ultimately driving operational efficiency and business growth.
Financial forecasting
Generative AI is also transforming financial forecasting. Instead of relying on gut feeling, GenAI uses massive amounts of data to create models that predict future financial trends. This isn’t entirely new—many companies already use AI for financial planning (83% according to a KPMG survey), but GenAI takes it a step further.
By generating synthetic financial data that mirrors real-world data, GenAI allows for more extensive and diverse analysis. This lets experts analyze a wider range of possibilities, leading to better predictions of the overall economy. McKinsey even estimates GenAI could generate between $2.6 trillion to $4.4 trillion in benefits every year.
A prime example of GenAI’s application in financial forecasting is Moody’s Analytics. This company uses AI-powered tools to analyze current market trends and economic indicators. These tools empower businesses and financial institutions to predict economic cycles, regional economic conditions, and the potential impact on their operations and investments.
Transform your fintech business with Neontri’s GenAI expertise
As the potential of GenAI continues to unfold, Neontri stands ready to help businesses navigate this exciting new era. With over 10 years of experience in fintech, our experts design customized GenAI solutions that streamline operations, enhance customer interactions, and solve complex industry challenges.
Whether it’s automating processes or creating hyper-personalized experiences, we tailor services to meet your specific needs. Partner with us to unlock the full potential of GenAI and position your business for success. The future is full of opportunities—let’s make sure you’re ready for what’s next.
In conclusion
The potential of GenAI in fintech is enormous. We’ve just discussed its game-changing possibilities, examining how it currently revolutionizes various aspects of fintech, from detecting fraud and managing risks to automating customer service and delivering personalized financial guidance.
As for the future, let’s brace ourselves as there is yet a lot to come.