4 considerations for finance teams about gen AI
This synthetic data allows institutions to represent diverse risk scenarios, improving predictive capabilities and accuracy. Generative AI’s application in creditworthiness evaluation identifies significant features by analyzing customer data, enhancing loan approval decisions and credit scoring accuracy. Moreover, generative AI facilitates scenario simulation and risk factor analysis, enabling proactive risk management. By generating synthetic data representing different risk scenarios, financial institutions can identify correlations, dependencies, and emerging risks, enhancing overall risk management effectiveness. The technology not only optimizes capital allocation but also reduces turnaround times through automation, streamlining risk assessment workflows without compromising accuracy. Generative AI redefines debt collection processes by enhancing communication strategies and optimizing customer interactions.
The integrity of these models is crucial, yet they are vulnerable to certain faults and manipulations that can lead to significant disruptions in financial markets. Here, GenAI operates by analyzing patterns within massive datasets – far more than a human could feasibly review – in order to understand these patterns of behavior on a granular level. It continuously looks for anomalies that signal potential fraud, from irregular transaction patterns to unusual account behavior. To provide a personalized AI-powered banking experience and tailored guidance, Wells Fargo introduced its Predictive Banking Feature.
GANs have emerged as a powerful tool for credit card fraud detection, particularly in handling imbalanced class problems. Compared to other machine learning approaches, GANs offer better performance and robustness due to their ability to understand hidden data structures. Ngwenduna and Mbuvha conducted an empirical study highlighting the effectiveness of GANs and their superiority over other sampling models. They also compared GANs with resampling methods like SMOTE, showing GANs’ superior performance.
Let’s embark on a comprehensive exploration of the formidable challenges encountered by finance businesses as they venture into the realm of Generative AI. We’ll delve deep into these challenges, unveiling innovative solutions poised to overcome these obstacles and pave the way for transformative advancements in the finance industry. According to a Deloitte report, advancements in generative AI could boost business productivity growth by 1.5 percentage points. Thus, finance businesses can see substantial gains in productivity and revenue by integrating generative AI into their processes. Generative AI in finance has become a valuable tool of innovation in the sector, offering advantages that redefine how financial operations are conducted and services are delivered.
According to an Accenture report, banking and insurance are the two industries set to be the most heavily impacted. Generative AI in finance and accounting helps in decision-making and decreasing errors by analyzing large sets of data. Generative AI in finance and banking has enabled a new scope of notable advancements such as a better understanding of financial literacy and improvisation of foundational frauds. There has never been a better time to seize the chance and gain a competitive edge while large-scale deployments remain nascent. These are key essentials you may want to focus on for a successful Gen AI implementation strategy.
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Some banks have already embraced its immense impact by applying Gen AI to a variety of use cases across their multiple functions. This includes lower costs, personalized user experiences, and enhanced operational efficiency, to name a few. Overall, the switch from traditional AI to generative AI in banking shows a move toward more flexible and human-like AI systems that can understand and generate natural-language text while taking context into account.
The time saved by automating routine tasks can instead be used to build firmer relationships with clients and colleagues. Additionally, there will be more chances to pursue ongoing learning and skills development, creating professionals capable of adapting to the changing nature of their business. As a leading software development company, we ensure to turn your dream projects into reality with a profound passion and skill set. gen ai in finance Our generative AI development services are the roadmap to enhance your financial operations in a way you might not have imagined. Financial institutions are becoming more aware of the whole potential of generative AI and its wide usage in different processes. To get a clearer picture of the role of this technology in the financial landscape, let’s discuss the potential use cases and the future of generative AI in finance.
Despite these challenges, the potential advantages of Generative AI in finance and banking far outweigh the limitations, which makes it a promising and transformative force in the Industry. Generative AI in financial services often requires significant computational power and energy consumption. The complex algorithms and foundational models used in genAI can put a strain on the resources needed to train and deploy these systems, leading to increased costs and taxing of other internal resources. In this webcast, panelists will explore and define how financial services institutions can leverage GenAI tech to enhance compliance and manage risks.
Automation
Generative AI not only optimizes asset allocation based on parameters like risk tolerance but also facilitates personalized product recommendations. By analyzing customer behavior and transaction history, the technology tailors suggestions for credit cards, loans, insurance, and investment products. This not only enhances customer satisfaction and engagement but also presents cross-selling and upselling opportunities for financial institutions, contributing to increased revenue and customer lifetime value.
Finance must also address data governance and be involved in ensuring data accuracy, which is crucial to training the LLMs correctly and ensuring accurate outputs. It’s also important that finance understands generative AI’s ethical implications and data privacy compliance requirements. As a quick reminder, generative AI, or GenAI, refers to AI-based solutions that use deep learning algorithms to mimic human-like creativity and produce new content. The output can range from text and images to music, programming code, and other formats. Only time will tell how generative AI technology develops and which of these three scenarios becomes reality. But your organization should start to think through these outcomes and how to react in each situation.
- Generative AI possesses the capability to transform the manner in which banks engage with their customers, offering tailored and streamlined services that have the potential to revolutionize the industry.
- This lack of transparency can be problematic for financial institutions that need to justify recommendations or decisions made by AI.
- Importantly (see example below) the process is made transparent to the user by revealing the computation performed, thus increasing the trust in the system.
- The challenge is to balance reinvention with the ongoing operation of the bank, maximizing the opportunities while limiting the disruption.
Financial analysts, asset managers, and research departments within investment and retail banks are required to extract specific information from a large corpus of financial data to promptly address customer inquiries. Consequently, they find themselves diligently sifting through vast amounts of information across multiple documents, in search of the exact answers or solutions. Finance professionals working in investment banking, research departments, and asset management sales teams face the challenging and time-consuming task of reviewing and analyzing complex documents. This requires not only reading and digesting large amounts of information, but also understanding and drawing actionable conclusions from it. 85% of financial services companies already use AI in some form, with plans to integrate AI even further within the next two years. When it comes to Generative AI, however, companies are just beginning to scratch the surface.
The result leads to improved discovery—with the help of genAI-sourced summaries on internal and external content—which consequently supports more efficient, consistent deal analysis and structuring. The scenario of time lost due to difficulty chasing content hidden within historical meeting notes, internal research thesis, memos, etc. is all too common. With a platform that leverages genAI, you can spend less time searching for company and market insights across internal and external sources.
Leading CFOs and finance functions leverage GenAI to improve the speed and quality of business intelligence and drive better business outcomes. Each successive FinTech innovation that came along incrementally transformed banking across its multiple functions, one by one, until generative AI entered the scene to drastically reinvent the entire industry. Finally, it can be challenging to develop a robust business case when it’s difficult to quantify the business benefits and costs of AI. Any AI solution must start with a value-augmentation opportunity for the business; prioritizing top-down structures, rather than starting with technology adoption.
With the help of GenAI, the bank hopes to expedite processes and financial analysis, increase employee productivity, enhance customer data privacy, and improve overall system security. You can foun additiona information about ai customer service and artificial intelligence and NLP. However, there are many other reasons why financial institutions can’t afford to ignore generative AI in banking. In this article, we’ll look into the advantages of GenAI and the challenges it helps address in the finance and banking industry.
LeewayHertz is committed to delivering comprehensive services, extending support well beyond the initial implementation phase for generative AI applications. With a dedicated focus on client success, LeewayHertz ensures the seamless integration and continuous functionality of generative AI solutions. Their post-implementation support encompasses ongoing assistance, updates, and troubleshooting to address any evolving needs or challenges that may arise. This commitment reflects LeewayHertz’s dedication to providing a holistic and enduring partnership with clients in harnessing the full potential of generative AI technologies.
To establish a solid foundation for building robust generative AI solutions, banks need a comprehensive implementation roadmap to include yet more strategic steps. As a highly experienced generative AI company, ITRex can help you define the opportunities within your business and the sector for generative AI adoption. To address these issues, it’s critical to integrate human expertise into Gen AI’s decision-making processes every step of the way. Such a human-in-the-loop approach is a sure-fire way to detect the model’s anomalies before they can impact the decision. Using generative AI to produce initial responses as a starting point and creating feedback loops can help the model reach 100% accuracy. For example, Fujitsu and Hokuhoku Financial Group have launched joint trials to explore promising use cases for generative AI in banking operations.
Users can explore investment opportunities or evaluate competitors, receiving precise, instantly verified answers. This development is a big step in AI for market intelligence promising more efficiency and accuracy in research. This is a chat experience powered by Generative AI that aims to transform research for business and financial professionals.
Generative AI becomes a valuable ally in this process, contributing to the creation of personalized marketing materials tailored to specific customer segments. Moreover, it plays a crucial role in tracking conversion rates and customer satisfaction, providing insights for continuous improvement. Through A/B testing, banks can evaluate the effectiveness of various strategies, enabling ongoing refinement of marketing approaches. This iterative approach improves the precision of marketing campaigns and fosters a more streamlined and cost-effective lead-generation strategy, ultimately enhancing the return on investment for marketing initiatives over time. Within banking and other financial services, the efficient search and synthesis of crucial financial documents are paramount for informed decision-making.
Compliance and regulatory reporting
In finance and banking, Generative AI plays an instrumental role in compliance testing and regulatory reporting. By generating synthetic data and automating regulatory analyses, generative AI models can streamline complex regulatory processes and ensure compliance with a wide range of regulations. Traditional trading strategies typically rely on technical and fundamental analysis, which can be time-consuming and limited in their ability to adapt to rapidly changing market conditions. Generative AI models, on the other hand, can learn from past experiences and dynamically adjust their strategies in real-time, offering a more efficient and adaptive approach to trading and investment decision-making. According to a 2023 KPMG survey, fraud detection came on top of the list of generative AI applications in finance, with 76% of the respondents saying the technology benefits this cause.
The potential of Generative AI to revolutionize risk assessment and credit scoring processes is being increasingly recognized in the finance and banking sectors. By generating synthetic data and improving accuracy, generative AI models can enhance credit risk assessments and enable more informed loan approval decisions. Generative AI is revolutionizing the finance and banking industries, enabling financial institutions to detect fraud in real-time, predict customer needs, and deliver unparalleled customer experiences. In this post, we’ll delve into the transformative power of generative AI in finance and banking, exploring its potential to reshape the industry and redefine the way we interact with financial institutions. We’ll examine the various use cases of generative AI in finance and banking, discuss real-world examples, and analyze the challenges and limitations of this cutting-edge technology. The implementation of ZBrain apps into workflows results in improved financial planning, reduced expenditures, and enhanced overall fiscal management.
Now, every tax consultant has access to a ChatGPT tool residing within KPMG’s firewall. The consultancy wants to incorporate ChatGPT into other products and services and expects as much as $12 billion in revenue from these initiatives. Financial generative AI can learn to draft financial reports, such as financial statements, budget, risk, and compliance reports. Accenture believes that banking and insurance have the largest potential for automation using Gen AI. GAI enables businesses to capitalize on industry shifts with agility, maximizing returns and outpacing competitors. Integrating GAI for report generation frees up expert’s time for strategic analysis, reduces errors for greater accuracy, and accelerates the identification of key recommendations for boosting agility.
From personalized banking services to sophisticated risk assessment models, Gen AI is not just streamlining operations but redefining the very essence of financial services. This analysis examines the transformative effects of Generative AI on the financial sector, highlighting its innovative applications, identifying the challenges faced, and addressing the ethical considerations it requires. AI plays a significant role in the banking sector, particularly in loan decision-making processes. It helps banks and financial institutions assess customers’ creditworthiness, determine appropriate credit limits, and set loan pricing based on risk.
The application of Generative AI in Finance includes the potential to redefine traditional approaches by generating realistic and informative financial scenarios and improving portfolio optimization strategies. By leveraging AI algorithms, finance professionals can now process vast amounts of data more efficiently, extracting valuable insights that were previously inaccessible due to the sheer volume of information. This transformation doesn’t just boost productivity; it propels finance teams toward a future where decisions based on real-time data, analysis, and recommendations become the norm.
In addition, the enterprise should emphasise the development of soft skills such as critical thinking, creativity, and emotional intelligence. ARTIFICIAL INTELLIGENCE (AI) is the theory and development of computer systems able to perform tasks normally requiring human intelligence. Mastercard plans to use a GenAI-based shopping recommendation engine for a more customer-oriented example. Shopping Muse will offer personalized product suggestions by analyzing the user’s shopping habits, history, on-site behavior, and retailer’s product catalog. In fact, we should go one step further to say that generative AI in finance is a dynamically developing field that has created an equally expanding market. It is estimated to grow at a CAGR of 28.1%, reaching a total value of almost $9.5 billion by 2032.
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Financial institutions can improve the efficacy and accuracy of their compliance testing and regulatory reporting with AI-generated synthetic data. Generative AI has revolutionised how banks approach testing and reporting, giving them more flexibility, reliability and trustworthiness. McKinsey predicts that generative AI could add $200–340 billion in annual value to the banking sector, which would mostly come from productivity increases.
Risk management is essential to avoiding financial disasters and keeping the business running smoothly. When trained on historical data, Generative AI can 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. A. Generative AI offers numerous applications in finance, ranging from customer engagement to risk management. It can be utilized to analyze customer sentiment, generate personalized financial advice, and automate investment strategies. Generative AI algorithms can analyze diverse data sources, including credit history, financial statements, and economic indicators, to assess credit risk for individual borrowers or businesses. This enables lenders to make more accurate and informed decisions regarding loan approvals, interest rates, and credit limits, ultimately minimizing default risks and optimizing loan portfolios.
Generative AI is the top technology trend in the last years for the banking and investment industry. Morgan Stanley, a stalwart in wealth management and financial services, is at the forefront of exploring AI-driven innovations to enhance its competitive edge. With a keen focus on leveraging Generative AI, Morgan Stanley aims to bolster its fraud detection capabilities, optimize https://chat.openai.com/ portfolio management processes, and provide personalized financial advice to its clients. Real-world examples have demonstrated the positive effect and potential of Generative AI in the finance and banking sector. Financial institutions are implementing AI solutions to improve customer experience, streamline banking processes, and enhance risk assessment and compliance testing.
If you are looking for a tech partner, LeewayHertz is your trusted ally, offering generative AI consulting and development services to propel your finance business into the digital forefront. With a proven track record in deploying diverse advanced LLM models and solutions, LeewayHertz helps you kickstart or further your AI journey. Workiva Gen AI is currently available only in English, and is only accessible to North American Workiva customers. As large language models (LLMs) become more widely available, Workiva will expand our gen AI offering in accordance with our strict data and security standards, along with local laws.
LeewayHertz’s proprietary generative AI platform, ZBrain, offers significant advantages for the finance and banking sectors. You can leverage it to craft tailor-made applications using advanced Large Language Models (LLMs) trained on specific client data. It’s an ideal tool for transforming finance and banking operations into smarter, data-driven systems.
Gen AI: Why finance should lead – KPMG Newsroom
Gen AI: Why finance should lead.
Posted: Thu, 18 Jan 2024 01:13:50 GMT [source]
It offers various large language models and templates to choose from, streamlining the creation and customization of intelligent applications. Generative AI plays a pivotal role in redefining payments and transactions within the financial landscape. In payment services, generative AI enhances Chat GPT the user experience by facilitating seamless electronic and traditional payment methods, such as wire transfers, online payments, and mobile payments. It employs advanced algorithms for fraud detection, ensuring secure transactions and safeguarding sensitive financial information.
Banking
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. Additionally, Generative AI assists in generating synthetic financial data for training predictive models, optimizing portfolio management, and streamlining financial document processing. The regulatory landscape for AI, particularly concerning Generative AI use in finance, still evolves and varies across different countries. This lack of consistent global regulations creates uncertainty for international financial institutions and discourages widespread technology adoption. Financial markets are constantly evolving, and historical data might not always be a perfect predictor of future trends.
When an AI system evaluates someone’s financial standing, everyone involved—be it the customer or the compliance officer—should clearly see how each piece of data tipped the scales. This openness not only builds trust but ensures financial experts can double-check the AI’s doing, confirming its accuracy and fairness. Not-so-slowly and steadily, chatbots and virtual assistants are becoming not just automated but actually smart. So smart in fact, that they can discern the context of customer inquiries with a nuance that almost mirrors human understanding.
Financial professionals understand the challenge of keeping up-to-date on competitors during earnings season. The task is tedious and time-consuming, yet crucial to maintaining a lead in your industry. Automation of transaction processing, enabled by Gen AI, significantly reduces manual workload. This automation is particularly beneficial in areas like payroll, accounts payable, and receivable, where AI algorithms can handle repetitive tasks with greater accuracy and speed.
The pioneering approach optimizes intricate financial strategies and decision-making processes, enhancing efficiency, accuracy, and adaptability in the dynamic world of finance. As the “tip of the spear” in generative AI, finance can build the strategy that fully considers all the opportunities, risks, and tradeoffs from adopting generative AI for finance. Generative AI enhances fraud detection by analyzing patterns, anomalies, and historical data. It has the capability to detect uncommon transactions or behaviors, adding an extra layer of security to prevent and address fraudulent activities in real-time proactively. It is part of the FinNLP project, which aims to democratize Internet-scale financial data and provide accessible tools for language modeling in finance. FinGPT leverages the strengths of existing open-source large language models (LLMs) and is fine-tuned using financial data for language modeling tasks in the financial domain.
By doing so, they position themselves ahead of the curve, ready to capitalize on the true commercial potential of generative AI as the hype inevitably subsides and its real impact on the industry unfolds. Financial firms and institutions stand in a unique position to take an early lead in the adoption of generative AI technology. This presents fresh and exhilarating prospects to actively influence the future of finance, fostering innovation and transformation. As the financial industry continues to evolve, the adoption of genAI is becoming increasingly important for staying competitive. Financial services teams can take several steps to prepare for the integration of this technology into their operations.
ZBrain adeptly sources data in diverse forms, including texts, images, and documents, and uses it to train powerful LLMs like GPT-4, Vicuna, Llama 2, and GPT-NeoX. The apps you create on this platform help you refine decision-making, deepen analytical insights, and enhance productivity, all while upholding stringent data privacy standards. Generative AI possesses the capability to transform the manner in which banks engage with their customers, offering tailored and streamlined services that have the potential to revolutionize the industry.
Using the existing enterprise IT systems as a foundation, the architecture adds layers including foundational LLMs, data lakes and external data stores. We further evaluated the value chains across the banking, capital markets, and insurance lines of business (LoBs) to identify granular impact areas (see Table 1). For every LoB, both predictive and generative AI will have varying degrees of influence on business outcomes–from initial engagement to onboarding and servicing, and from bonding to growing and governing.
Here are seven steps to help enterprises lay the foundation for an efficient and intelligent data management ecosystem. Generative Artificial Intelligence, often referred to as Generative AI, is a fascinating subset of AI that goes beyond merely processing data and delves into the realm of content creation. At its core, Generative AI employs a combination of advanced neural networks and cutting-edge algorithms to understand and replicate intricate patterns, enabling it to craft content ranging from text and images to videos. This ability to generate content resembling human-produced output is a game-changer in the BFSI sector.
By gaining insights into customers’ emotions and opinions, companies can devise strategies to enhance their services or products based on these findings. For more on conversational finance, you can check our article on the use cases of conversational AI in the financial services industry. For the wide range of use cases of conversational AI for customer service operations, check our conversational AI for customer service article. In another big partnership, Deutsche Bank is working with Google to develop generative AI engines and large language models that could provide insights to financial analysts and improve operational efficiency and execution speed. Financial analysis involves working with large datasets, including market trends, reports, event transcripts, estimates, company filings, etc. To keep up with the shifting financial landscape and spot investment opportunities on time, analysts must monitor all that data continuously, which takes significant time and effort.
Generative AI can also streamline and speed up the creation of proprietary legal documents for investment banks. With the implementation of advanced LLMs, Gen AI can assist in drafting complex legal documents with precision and efficiency, tailored to the specific needs and requirements of each investment bank. AI-powered document generation significantly reduces the legal teams’ workload, allowing them to focus on higher-value tasks and strategic decision-making.
The impact Gen AI has on the banking sector is immense across literally all banking functions, especially in terms of banking operations and decision-making. ZBrain’s LLM-based apps streamline the process of scrutinizing and understanding complex contractual documents. This innovation results in considerable time savings, reduces the potential for human error, and enhances the accuracy of contract interpretations. By implementing ZBrain, businesses benefit from more efficient and accurate contract analysis, leading to improved compliance, risk management, and decision-making. For a detailed insight into how ZBrain transforms contract analysis with its GenAI apps, you can explore the specific Flow described on this page. Generative AI has the potential to redefine the field of audit and internal controls by automating and enhancing various aspects of the auditing process.
AI is set to become mainstream in the BFSI industry, especially given GenAI’s potential to add complementary value. A fundamental tenet of the finance industry is trust–and this must form the basis of an AI revolution. AI transformation will impact value chains across virtually all BFSI lines of business. We also have different certifications that include Generative AI In Software Development, Generative AI In Project Management will help you to understand how Generative AI is used across different sectors. Visit GSDC to learn more about online Generative AI Cybersecurity certification and how Gen AI contributes in different industries.
We’ll uncover how the top applications of Generative AI in finance can solve the industry’s ten biggest bottlenecks for optimal safety and ROI. Gen AI, the new kid on the block, has got several interesting applications in banking and finance. Artificial Intelligence (AI) has revolutionized industries across the globe, with the finance sector being no exception.
Ernst & Young Global Limited, a UK company limited by guarantee, does not provide services to clients. Identifying a use case necessitates substantial effort in prioritization, cost-benefit analysis, and strategic considerations regarding technology and data architecture. Therefore, financial institutions worldwide are typically exploring only 7-10 crucial use cases on average. Our survey confirms this pattern, as 45% of participants have emphasized that identifying use cases and inadequate focus on Gen AI initiatives are among the primary obstacles when implementing Gen AI. Cem’s hands-on enterprise software experience contributes to the insights that he generates.
This automation not only streamlines the reporting process and reduces manual effort, but it also ensures consistency, accuracy, and timely delivery of reports. Banks want to save themselves from relying on archaic software and have ongoing efforts to modernize their software. Enterprise GenAI models can convert code from old software languages to modern ones and developers can validate the new software saving significant time. This concise training session discusses the current uses of AI in business, examines nine risk areas, and provides practical suggestions to address these risks effectively. Also, finance should actively support the change management required to enable the investment and the implementation plans, including stakeholder management. Finance needs to be closely involved in developing the business case for generative AI, as well as supporting business functions in modelling the financial benefits and costs of deploying it.
We will use this model to generate responses for sentiment analysis prompts and predict sentiment categories based on those responses. This can be leveraged to analyze the sentiment of multiple financial news articles or other financial data and obtain the output as negative, neutral, or positive. Unlike traditional Recurrent Neural Networks (RNNs), transformers use self-attention mechanisms to capture dependencies between different words in a sentence, allowing them to understand contextual relationships more effectively. This architecture has proven highly effective in various natural language processing tasks, enabling improved machine translation, language generation, and other text-based applications. A transformer is a specific type of neural network architecture that has gained popularity for its ability to process sequential data, like text, more efficiently. They are known for their capability to capture long-range dependencies and effectively process sequential data.
However, enterprise generative AI, particularly in the financial planning sector, has unique challenges and finance leaders are not aware of most generative AI applications in their industry which slows down adoption. This unawareness can specifically affect finance processes and the overall finance function. Leveraging generative AI’s capabilities in the data-to-decision process will enable an enterprise to see sooner and act faster.
According to the KPMG survey of US executives, around 60% of the respondents mentioned they would need at least a year to implement their first Gen AI solution. But even if you are not prepared to initiate a large-scale project yet, it’s time to experiment with smaller projects to understand what fits your company best. Morgan Stanley’s Wealth Management department deploys OpenAI technology to mine the bank’s proprietary data. And Bloomberg recently released its BloombergGPT—a large language model that was trained on an enormous financial dataset containing 700 billion tokens. People can use this Gen AI model to search Bloomberg’s financial data and obtain summaries and financial insights. Large language models can crawl the internet and social media platforms to discover market insights, such as shifts in demand, and gather intelligence on the competition.
The steadily growing valuation proves that GenAI is widely recognized as a vital technology worth investing in. You can minimize Gen AI risks by offering detailed guidelines on how to use these tools. For instance, it prohibits employees from uploading sensitive corporate information to open-source generative AI tools. You can pay license fees to connect to a close-source model, such as ChatGPT, with your existing software.
First, you must train the Generative AI on your customers’ financial goals, risk profiles, income levels, and spending habits. From there, you can use it to make personalized budgeting and saving recommendations. Generative AI can identify patterns and relationships in 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. The online payment platform Stripe, for example, recently announced its integration of Generative AI technology into its products. Financial data can be expensive to acquire, fragmented across different institutions, and subject to strict privacy regulations.