Generative AI for Finance & Accounting

How Generative AI Is Shaping The Future Of Finnace

generative ai finance use cases

It also provides law enforcement with detailed case files, including photos and evidence collected during the investigation, to help build a stronger case. “AI can scan an endless amount of text and data quickly, immediately linking multiple incidents together and supporting the investigative process,” said Vishal Patel, chief technology officer, Appriss Retail. “We’re proud to be one of the first loss prevention specialists to integrate generative AI in a meaningful way. Retailers and law enforcement need tools that help them build and develop cases collaboratively.” This solution is specifically designed to identify connections between incidents, using key details such as suspects, narratives, vehicles, and other critical case information.

generative ai finance use cases

This could empower teams to quickly access relevant information, enabling them to rapidly make better-informed decisions and develop effective strategies. As companies rush to adapt and implement it, understanding the technology’s potential to deliver value to the economy and society at large will help shape critical decisions. We have used two complementary lenses to determine where generative AI, with its current capabilities, could deliver the biggest value and how big that value could be (Exhibit 1). The pace of workforce transformation is likely to accelerate, given increases in the potential for technical automation. Yet we’re still in the early innings of cloud-based AI’s impact on financial services and in society more broadly.

When we had 40 of McKinsey’s own developers test generative AI–based tools, we found impressive speed gains for many common developer tasks. Considering our responsible attitude to artificial intelligence, proven success stories, and the technological knowledge of our masters, MOCG stands as a reliable partner. We assist in picking LLMs, training them, and integrating them with third-party services. Partnering with us means settling on a team committed to maximizing investment and aligning it with your strategic vision. At Master of Code Global (MOCG), our approach as Generative AI developers aligns with these principles.

Choose the Right Generative AI Models

In this section, we highlight the value potential of generative AI across business functions. Our estimates are based on the structure of the global economy in 2022 and do not consider the value generative AI could create if it produced entirely new product or service categories. The success of interface.ai’s Voice Assistant at Great Lakes Credit Union is just one of many Generative AI use cases in banking that showcase the transformative impact of this technology. By significantly improving call containment rates, enhancing member satisfaction, and elevating employee roles, Voice AI has become a cornerstone of GLCU’s strategy to deliver exceptional member support.

Gen AI, along with its boost to productivity, also presents new risks (see sidebar “A unique set of risks”). Risk management for gen AI remains in the early stages for financial institutions—we have seen little consistency in how most are approaching the issue. Sooner rather than later, however, banks will need to redesign their risk- and model-governance frameworks and develop new sets of controls. Capabilities such as foundation models, cloud infrastructure, and MLOps platforms are at risk of becoming commoditized, given how rapidly open-source alternatives are developing.

And additional $2.6 trillion–$4.4 trillion of incremental economic impact could be added from new generative AI use cases, resulting in a total use-case-driven potential of $13.6 trillion–$22.1 trillion. For one thing, gen AI has been known to produce content that’s biased, factually wrong, or illegally scraped from a copyrighted source. Before adopting gen AI tools wholesale, organizations should reckon with the reputational and legal risks to which they may become exposed. Keep a human in the loop; that is, make sure a real human checks any gen AI output before it’s published or used.

Two-thirds of senior digital and analytics leaders attending a recent McKinsey forum on gen AI1McKinsey Banking & Securities Gen AI Forum, September 27, 2023; more than 30 executives attended. Said they believed that the technology will fundamentally change the way they do business. The pressing questions for banking institutions are how and where to use gen AI most effectively, and how to ensure the applications are fully adopted and scaled within their organizations. Stepping in with evolving technologies is a way to stay ahead in the competitive market. Gen AI integration in finance business transforms various processes, operations, and services meticulously. Foundational models, such as Large Language Models (LLMs), are trained on text or language and have a contextual understanding of human language and conversations.

generative ai finance use cases

But scaling up is always hard, and it’s still unclear how effectively banks will bring gen AI solutions to market and persuade employees and customers to fully embrace them. Only by following a plan that engages all of the relevant hurdles, complications, and opportunities will banks tap the enormous promise of gen AI long into the future. Too often, banking leaders call for new operating models to support new technologies. Successful institutions’ models already enable flexibility and scalability to support new capabilities. An operating model that is fit for scale-up is cross-functional and aligns accountabilities and responsibilities between delivery and business teams.

Generative AI could propel higher productivity growth

Using foundation models, researchers can quantify clinical events, establish relationships, and measure the similarity between the patient cohort and evidence-backed indications. The result is a short list of indications that have a better probability of success in clinical trials because they can be more accurately matched to appropriate patient groups. In the lead identification stage of drug development, scientists can use foundation models to automate the preliminary screening of chemicals in the search for those that will produce specific effects on drug targets. To start, thousands of cell cultures are tested and paired with images of the corresponding experiment. Using an off-the-shelf foundation model, researchers can cluster similar images more precisely than they can with traditional models, enabling them to select the most promising chemicals for further analysis during lead optimization.

  • McKinsey predicts that technologies like Generative AI will revolutionize the sector’s competitive landscape over the next decade.
  • In March 2023 alone, there were six major steps forward, including new customer relationship management solutions and support for the financial services industry.
  • This data-driven approach ensures that portfolios are aligned with investors’ objectives while maximizing returns within specified risk parameters.

The quality of the data sets used in generative AI models directly impacts the quality of the responses and insights generated. In financial services institutions, where accurate and reliable data is crucial, poorly reported data can lead to inaccurate or unreliable outputs, resulting in significant miscommunications or falsified results. It is essential to ensure that the input data used in generative AI models is of high quality and is properly validated and vetted to mitigate this risk. And Citigroup recently used gen AI to assess the impact of new US capital rules.8Katherine Doherty, “Citi used generative AI to read 1,089 pages of new capital rules,” Bloomberg, October 27, 2023.

Those who adeptly navigate this pivotal decision-making process and align it with their strategic objectives will undoubtedly emerge as frontrunners. 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. It’s true that the more information you have at your disposal, the better decisions you’ll make. There’s no limit to the amount of potential influences that sway a monumental deal or strategy,  from a company’s performance  to stocks that are secondary important. With the help of genAI technology and integration capabilities, your team can connect multiple internal research sources within one, centralized resource. 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.

real-world gen AI use cases from the world’s leading organizations

Krishi is an eager Tech Journalist and content writer for both B2B and B2C, with a focus on making the process of purchasing software easier for businesses and enhancing their online presence and SEO. Businesses, on the other hand, can process ‘big data’ to make prediction models that can forecast demands and help personalize the customer journey. This helps businesses plan resource allocation and manage inventory levels accordingly. However, predictive AI models not only process this much data but also ensure you get detailed analysis and predictions from the data. AI voice synthesis has many applications—you can use an AI voice to create social media content or produce a song.

In 2012, the McKinsey Global Institute (MGI) estimated that knowledge workers spent about a fifth of their time, or one day each work week, searching for and gathering information. If generative AI could take on such tasks, increasing the efficiency and effectiveness of the workers doing them, the benefits would be huge. We analyzed only use cases for which generative AI could deliver a significant improvement in the outputs that drive key value. In particular, our estimates of the primary value the technology could unlock do not include use cases for which the sole benefit would be its ability to use natural language.

This is akin to the flip-phone phase with the touchscreen era right around the corner. When that arrives, it will bring incredible opportunities for banks, including in KYC/AML and anti-fraud work. Thus, the question isn’t “to be or not to be”; rather, it’s about when you will start utilizing Generative AI in finance. Current statistics indicate that institutions in this sector are leading in workforce exposure to potential automation. Challenges like legacy technology and talent shortages might temporarily hinder the adoption of AI-based tools. These algorithms consider a large number of factors, including market conditions, risk tolerance, and investment goals, to recommend the most advantageous asset mix.

As we explore the diverse applications of Generative AI in FinTech, it’s clear that the impact goes beyond mere technological advancement. Next, let’s look at some real-world scenarios to understand how these use cases are changing the sector. However, it’s crucial to acknowledge hurdles such as security, reliability, safeguarding intellectual property, and understanding outcomes. Armed with appropriate strategies, generative AI can elevate your institution’s reputation for finance and AI. Successfully adopting generative AI requires a balanced approach that combines urgency and risk awareness. The finance domain can pave the way by establishing an organizational framework that is aligned with your company’s risk tolerance, cultural intricacies, and appetite for technology-driven change.

The technology has already gained traction in customer service because of its ability to automate interactions with customers using natural language. Crucially, productivity and quality of service improved most among less-experienced agents, while the AI assistant did not increase—and sometimes decreased—the productivity and quality metrics of more highly skilled agents. This is because AI assistance helped less-experienced agents communicate using techniques similar to those of their higher-skilled counterparts. The advanced machine learning that powers gen AI–enabled products has been decades in the making. But since ChatGPT came off the starting block in late 2022, new iterations of gen AI technology have been released several times a month. In March 2023 alone, there were six major steps forward, including new customer relationship management solutions and support for the financial services industry.

generative ai finance use cases

Details of these transactions are sent to data centers, which decide whether they are fraudulent. These algorithmic trading systems used in the financial sector also have the potential to provide companies with more insights into the markets, allowing them to stay ahead of their competition, as well as identify new growth opportunities. AI technologies are also generative ai finance use cases increasingly used for algorithmic trading in financial markets, with companies utilizing AI bots to automate trading processes and optimize strategies for maximum returns. AI-driven investment strategies are becoming increasingly popular in wealth management. You can foun additiona information about ai customer service and artificial intelligence and NLP.

This limited data access can hinder the development and effectiveness of Generative AI models in finance. JPMorgan Chase, a leading global financial institution, has demonstrated a strong commitment to innovation through its proactive investment in cutting-edge AI technologies. Among these advancements, Generative AI stands out as a pivotal tool leveraged by the brand to elevate various facets of its operations. The AI would instantly pull results from your performance data and organize it into a report that is ready for analysis. A new level of transparency will stem from more comprehensive and accurate know-your-client reporting and more thorough due-diligence checks, which now would be taking too many human work hours.

Within the technology’s first few months, McKinsey research found that generative AI (gen AI) features stand to add up to $4.4 trillion to the global economy—annually. With regulations constantly evolving, AI’s capacity to interpret and comply with these transformations efficiently will be invaluable. The adoption of artificial intelligence introduces a spectrum of difficulties, like safety, adherence to norms, and privacy. Addressing these issues is essential for maintaining a balanced and responsible AI ecosystem. Borrowers, especially those with limited credit history, get a fairer opportunity to access financial products.

Generative AI in financial services: Integrating your data

Buyers increasingly demand tailored digital journeys and customized offers, posing a challenge for businesses with limited resources and traditional service approaches. The need to handle redundant and time-consuming duties, such as manually entering data, and summarizing lengthy papers. Morgan Stanley is setting a new standard on Wall Street with its AI-powered Assistant, developed in partnership with OpenAI.

  • In financial services institutions, where accurate and reliable data is crucial, poorly reported data can lead to inaccurate or unreliable outputs, resulting in significant miscommunications or falsified results.
  • Appriss Retail provides AI-driven analytics and real-time, integrated recommendations focused on identifying and mitigating theft, fraud, and abuse, while shaping positive experiences for profitable consumers.
  • A generative AI bot trained on proprietary knowledge such as policies, research, and customer interaction could provide always-on, deep technical support.
  • Text-to-text AI models have become quite smart and can help developers write code for different programs in a matter of seconds.

By prioritizing encryption, Generative AI ensures that financial data is handled with the utmost care and confidentiality. Stress testing involves evaluating how financial systems and models perform under extreme conditions. Generative AI contributes to this process by simulating various scenarios and assessing how well financial models withstand stress.

These capabilities can be particularly helpful in speeding up, automating, scaling, and improving the customer service, marketing, sales, and compliance domains. The emerging technology also automates product development’s ideation and prototyping phases, significantly shortening the time needed for design iterations. Additionally, it simulates market demand, accurately predicting customer preferences and tailoring financial services accordingly.

Real-Life Examples of Generative AI in the Finance Industry

Sentiment analysis, an approach within NLP, categorizes texts, images, or videos according to their emotional tone as negative, positive, or neutral. By gaining insights into customers’ emotions and opinions, companies can devise strategies to enhance their services or products based on these findings. Generative AI models, when fine-tuned properly, can generate various scenarios by simulating market conditions, macroeconomic factors, and other variables, providing valuable insights into potential risks and opportunities. For more on conversational finance, you can check our article on the use cases of conversational AI in the financial services industry.

Deep learning has powered many of the recent advances in AI, but the foundation models powering generative AI applications are a step-change evolution within deep learning. Unlike previous deep learning models, they can process extremely large and varied sets of unstructured data and perform more than one task. To capture the benefits of these exciting new technologies while controlling the risks, companies must invest in their software development and data science capabilities. And they will need to build robust frameworks to manage data quality and model engineering, human–machine interaction, and ethics. Case examples in this article show how these technologies can accelerate and enable access to critical business information, giving human decision makers the information to make thoughtful and timely choices.

In retail and consumer packaged goods, the potential impact is also significant at $400 billion to $660 billion a year. The latest generative AI applications can perform a range of routine tasks, such as the reorganization and classification of data. But it is their ability to write text, compose music, and create digital art that has garnered headlines and persuaded consumers and households to experiment on their own.

generative ai finance use cases

This involves using ML algorithms, natural language processing, and other AI techniques to analyze data. We observed that the technologies are also used to forecast trends, manage risks, and deliver insights that were previously unattainable with traditional analytical approaches. You can foun additiona information about ai customer service and artificial intelligence and NLP. AI models could take into account variables like gender, race, or profession which may have been used historically in credit applications. https://chat.openai.com/ From refining risk management frameworks to enhancing trading strategies and elevating customer service experiences, Generative AI plays a multifaceted role within JPMorgan’s ecosystem. The report also dwells on how Generative AI can enhance enterprise and finance workflows by introducing contextual awareness and human-like decision-making capabilities, potentially revolutionizing traditional work processes.

When does generative AI create competitive advantage?

Generative AI in banking is both about automating processes and creating a seamless, innovative user experience. Fintech is reshaping the financial services with cutting-edge, technology-driven solutions. Its focus is on enhancing efficiency, accessibility, and the overall user experience. And one of the innovations gaining increasing traction is AI automation, with its adoption rate growing by 63% in finserv.

Gen AI is particularly good at discovering and summarizing complex information, such as mortgage-backed securities contracts or customer holdings across various asset classes. Generative AI models can be highly complex, making understanding how they arrive at certain decisions or recommendations challenging. This lack of transparency is particularly concerning in finance, where justifying AI-driven decisions is essential for regulatory compliance and customer trust. DocLLM is designed to process and understand complex business documents such as forms, invoices, and reports, while SpectrumGPT analyzes large volumes of documents and proprietary research, providing valuable insights to portfolio managers. These tools have significantly boosted document comprehension and operational efficiency, delivering a 15% performance improvement compared to more general technologies like GPT-4.

Cross-functional teams bring coherence and transparency to implementation, by putting product teams closer to businesses and ensuring that use cases meet specific business outcomes. Processes such as funding, staffing, procurement, and risk management get rewired to facilitate speed, scale, and flexibility. The second factor is that scaling gen AI complicates an operating dynamic that had been nearly resolved for most financial institutions. While analytics at banks have been relatively focused, and often governed centrally, gen AI has revealed that data and analytics will need to enable every step in the value chain to a much greater extent. Business leaders will have to interact more deeply with analytics colleagues and synchronize often-differing priorities.

A new McKinsey survey shows that the vast majority of workers—in a variety of industries and geographic locations—have tried generative AI tools at least once, whether in or outside work. One surprising result is that baby boomers report using gen AI tools for work more than millennials. Don’t miss out on the opportunity to see how Generative AI can revolutionize your customer support and boost your ROI.

To solve this challenge, in August 2023, GLCU partnered with interface.ai to launch its industry-first Generative AI voice assistant. The assistant is named Olive and has had several significant impacts for the credit union. Code agents are helping developers and product teams to design, create, and operate applications faster and better, and to ramp up on new languages and code bases. Many organizations are already seeing double-digit gains in productivity, leading to faster deployment and cleaner, clearer code. Don’t miss out on the opportunity to see how Generative AI can revolutionize your financial services, boost ROI, and improve efficiency. Generative AI simulates market scenarios, stress-testing strategies, and uncovering potential risks and opportunities before they materialize.

The organization leveraged Gen AI to enhance fraud detection capabilities, enable personalized financial advice, optimize portfolio management automatically, and more. Identifying trading opportunities in a volatile finance industry is not the work of an average Joe. That’s where Gen AI solution allows traders to trade efficiently by creating and implementing algorithmic trading strategies based on market data and previous trading analysis.

generative ai finance use cases

AI automates the processing of vast amounts of financial documents, reducing errors and increasing processing speed. After completing model development, establish rigorous testing and validation protocols. This involves subjecting Generative AI models to exhaustive testing across diverse finance use cases and scenarios. Identify and address any potential shortcomings or discrepancies to ensure model robustness before deployment.

By learning from historical financial data, generative AI models can capture complex patterns and relationships in the data, enabling them to make predictive analytics about future trends, asset prices, and economic indicators. AI algorithms are used to automate trading strategies by analyzing market data and executing trades at optimal times. AI systems browse through reams of market data at an incredible speed and with high accuracy, sensing trends and making trades almost as fast as they can be. It’s like an Avengers-level calculator that gets to predict the movement of the markets very accurately.

The investment bank uses Kensho, an AI-powered search engine and analytics platform, to help its clients analyze market trends and make data-driven investment decisions. Kensho’s platform uses natural language processing to extract insights from vast amounts of financial data quickly. This predictive banking feature is a prime Chat GPT example of how generative AI is being implemented in the finance and banking industry to provide more personalized customer experiences. Wells Fargo plans to expand the feature to small business and credit card customers, further showcasing the potential of generative AI in revolutionizing traditional banking services.

This data-driven approach ensures that portfolios are aligned with investors’ objectives while maximizing returns within specified risk parameters. In addition to calculating probable ROI, choosing the right AI service provider is another paramount factor. Key aspects to evaluate include expertise in a variety of artificial intelligence apps and a track record in the industry.

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