Generative AI in Banking & Financial Services: Use Cases in 2024 (2024)

Generative AI tools are transforming the banking industry. The online payment platform Stripe, for example, recently announced its integration of Generative AI technology into its products. This is just one example of numerous integrations of AI in fintech.

While we’re still in the early stages of theGenerative Artificial Intelligence revolution powered by machine learning models, there’s undeniable potential for vast changes in banking. Verticals within financial services predicted to undergo significant transformation include retail banking, SMB banking, commercial banking, wealth management, investment banking, and capital markets. Let’s explore the seven use cases of Generative AI in modern banking in the USA, Canada, and India.

1. Detect and Prevent Fraud

One major use case for AI in banking is preventing fraud. According toCybercrime Magazine, the global cost of cybercrime was $6 trillion in 2021, and it’s expected to reach $10.5 trillion by 2025. To protect their business, banks must take data security seriously.

Many banks have large fraud prevention departments. However, these can be costly to run and maintain, and in some cases, they aren’t very effective.

Like utilizingGenerative AI in Insurancefor fraud detection, banks can use it to track transactions in terms of location, device, and operating system. It can then flag any anomalies or behavior that doesn’t fit expected patterns. From there, bank personnel can review the suspicious behavior and decide if it deserves further investigation. That way, banks don’t need to comb through transactions manually, which takes longer and is prone to human error.

In addition, Generative Artificial Intelligence can continually mine synthetic data and update its detection algorithms to keep up with the latest fraud schemes. This proactive approach helps banks anticipate fraudulent behavior before it happens.

Bankscan also use Generative AI to require users to provide additional verification when accessing their accounts. For example, an AI chatbot could ask users to answer a security question or perform a multi-factor authentication (MFA).

The point is there are many ways that banks can useGenerative AI to improve customer service, enhance efficiency, and protect themselves from fraud.

2. Manage Risk and Improve Credit Scoring

Banks can also use Generative Artificial Intelligence to manage credit risk assessment. Risk management is essential to avoiding financial disasters and keeping the business running smoothly. When trained on historical data,Generative AIcan detect and identify potential risks and financial risks and provide early warning signs so that banks have time to adapt and prevent (or at least mitigate) losses.

The same goes for credit scoring. Banks are in the business of evaluating borrowers applying for loans. Instead of relying on traditional credit score elements to determine creditworthiness, banks can have machine learning algorithms and AI to analyze vast amounts of data from multiple sources and create a more holistic financial picture of loan applicants.

3. Make Financial Forecasts

Another benefit of training AI on historical financial data is that it can help banks make financial forecasts and enable synthetic data generation.

Generative AI can identify patterns and relationshipsin the data and even run simulations based on hypothetical scenarios. From there, it can help banks evaluate a range of possible outcomes and plan accordingly.

In short, Generative Artificial Intelligence can look to the past to help banks make better financial decisions about the future and create synthetic data for robust analyses of risk exposure.

4. Personalize Marketing Efforts

Like all businesses, banks need to invest in targeted marketing to stand out from the competition and gain new customers. But this is easier said than done. It takes a lot of deep customer analysis and creative work, which can be costly and time-consuming.

However, Artificial Intelligence can help speed up your marketing efforts. How? By analyzing your customers’ preferences and online behavior. From there, it can split your leads into segments, for which you can create different buyer personas. That way, you can tailor your marketing campaigns to different groups based on market conditions and trends.

You can also use Generative AI to help you create targeted marketing materials and track conversion and customer satisfaction rates. Then perform A/B tests to see what’s working and what’s not. Over time, your marketing ROI will improve.

Generative AI in Banking & Financial Services: Use Cases in 2024 (2024)

FAQs

What is the use case for generative AI in banking? ›

Generative AI models can analyze massive volumes of transaction data, customer profiles, and historical patterns to identify suspicious activities. These models not only detect known money laundering techniques but also adapt to evolving schemes, ensuring banks stay ahead of criminal tactics.

What is the future of generative AI in financial services? ›

It is predicted that in the banking, financial services and insurance sectors (BFSI), generative AI (GenAI) has the potential to increase labour productivity by 0.1 to 0.6 per cent per year until 2040.

What are the biggest use cases for generative AI? ›

Top generative AI use cases
  • Improve customer experiences. Chatbots and virtual assistants. ...
  • Boost employee productivity. Employee assistant. ...
  • Enhance creativity & content creation. Marketing. ...
  • Accelerate process optimization. Document processing.

What banks are using GenAI? ›

For example, Capital One and JPMorgan Chase are using GenAI to strengthen their fraud and suspicious activity detection systems, Morgan Stanley implemented an AI tool that helps its financial advisors find data, and Goldman Sachs uses GenAI to develop internal software.

Which is the best generative AI tool? ›

Among the best generative AI tools for images, DALL-E 2 is OpenAI's recent version for image and art generation. DALL-E 2 generates better and more photorealistic images when compared to DALL-E. DALL-E 2 appropriately goes by user requests.

How to use GenAI in finance? ›

Exploring GenAI Use-Cases in Banking and Finance
  1. Fraud Agent. Cybercrime Magazine predicts that by 2025, cybercrime and fraud will cost $10.5 trillion globally. ...
  2. Customer Interaction Search Agent. ...
  3. Regional Market Intelligence Analyst. ...
  4. Marketing Content Generator. ...
  5. Financial Data Analyst.
Apr 12, 2024

What are the problems with AI in financial services? ›

AI systems are more vulnerable to these concerns than traditional software systems because of the dependency of an AI system on the data used to train and test it. Like other critical infrastructure sectors, the financial services sector is increasingly subject to costly cybersecurity threats and cyber-enabled fraud.

What is the best AI tool for financial research? ›

Top 5 AI Finance Tools In 2024
  • NetSuite Text Enhance uses AI to help create various types of business content directly within NetSuite. ...
  • Booke AI streamlines the bookkeeping process by automating repetitive tasks and correcting common errors. ...
  • Vic AI is designed to transform the way businesses handle invoice processing.
May 28, 2024

What is generative AI use cases in order to cash? ›

Few use cases of bringing generative AI to real-life OTC scenarios are illustrated below. Right from negotiating with customers for favorable terms to onboarding them towards seamless billing and collection, generative AI can drive efficiency across sub-processes.

How to identify generative AI use cases? ›

Generative AI models can be used to automate many rote and routine tasks. They can drive better business decision-making by offering new, faster ways to analyze data. They can act as collaborators for creative work. And they can help organizations design, prototype, and build all kinds of new products and innovations.

Who are the biggest players in generative AI? ›

Top Generative AI Companies (91)
  • IMO Health. Artificial Intelligence • Healthtech • Information Technology • Natural Language Processing • Software • Analytics • Generative AI. ...
  • Klaviyo. ...
  • Smartly. ...
  • SAG LLC. ...
  • Qualtrics. ...
  • Kensho Technologies. ...
  • Getty Images. ...
  • Grammarly.

What is a real time example of generative AI? ›

Recommended Tool: Duolingo Duolingo uses generative AI to personalize the language learning experiences of its users. The platform adapts to each learner's pace and progress, generating exercises and conversations that target specific areas of improvement, making language learning more interactive and adaptive.

What is an example of generative AI in banking? ›

One more example is the OCBC bank, which has rolled out a generative AI chatbot for its 30,000 global employees to automate a wide range of time-consuming tasks, such as writing investment research reports and drafting customer responses.

What is the future of GenAI in banking? ›

Generative AI set to unlock a new era in banking, transforming financial services and generating billions in value. Generative artificial intelligence (Gen AI) could radically change financial services, potentially generating higher value by 2030 and enhancing productivity.

How is AI affecting banks? ›

It can review unstructured data in different formats, identify and classify documents, and learn from its own performance. Banks have also used AI capabilities and data, both proprietary and external, to augment employees' capabilities, enabling them to perform tasks that were previously beyond them.

What is artificial intelligence use case in banking? ›

Cybersecurity and Fraud Detection

AI technology within banking apps scans transactional data, identifying irregular user behavior patterns. By leveraging smart AI tools and apps, banking companies can fortify their defenses against potential breaches, ensuring the security of their business operations.

How can generative AI be used in the insurance industry? ›

Insurers can use Gen AI for insurance claims processing. It can automatically extract and process data from various user-supporting documents (claim forms, medical records, and receipts). This minimizes the need for inputting data manually, thereby reducing the errors.

What is the use case of generative design? ›

For example, in the automotive manufacturing industry, engineers utilize generative design to reduce component weights, improve weak design areas, decrease production costs through component consolidation, and reduce the time to market for new products.

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