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Large Language Models (LLMs) Strategy for Banks.

Written by Jessica P | Aug 8, 2024 2:35:44 PM

Introduction

The deployment of large language models (LLMs) in the UK banking sector is at a transformative juncture. Based on a report from The Alan Turing Institute, this analysis investigates the potential benefits, challenges, and strategic considerations for adopting LLMs in financial services or large global banks. 

The findings are derived from extensive literature reviews and insights from a workshop involving key stakeholders in the financial industry.

 

LLM Market Overview and Development

LLMs are anticipated to become a market exceeding USD 40 billion by the end of the decade, driven by their capability to process vast amounts of textual data and generate coherent responses. In the UK banking sector, a joint Bank of England (BoE) and Financial Conduct Authority (FCA) survey indicated that 72% of financial services firms already employ machine learning (ML) applications in their daily operations. This trend is expanding to include LLMs, with financial institutions exploring their use primarily in low-risk activities such as information retrieval and internal process optimisation.

LLM Functional Opportunities in Banking

The integration of LLMs in financial services presents multiple opportunities categorised under four main areas:

1. Public Communication and Customer Engagement:

LLMs can enhance customer service through advanced chatbots capable of handling inquiries and personalising interactions. They can simplify technical jargon for public communication and develop financial literacy education materials.

2. Financial Service Safety:

LLMs can improve fraud detection and prevention by identifying patterns and anomalies in transaction data.
They assist in market and trade surveillance, enhancing compliance and operational efficiency.

3. Financial Insight Generation:

LLMs can streamline the analysis of market trends and company performance, providing intricate financial analysis for risk assessment and portfolio management. They offer personalised investment advice through advanced robo-advisors.

4. Money Economics-related Services:

LLMs can aid in investment banking, treasury optimisation, and private equity and venture capital strategy development. They enhance the accuracy of valuations and risk assessments, supporting strategic advisory services and cash management.

 

Risks and Challenges

The deployment of LLMs comes with significant risks categorised into three main areas:

1. Data-related Risks:

  • Bias: LLMs can exhibit inherent biases from training data, leading to discriminatory outputs and potential legal liabilities.
  • Privacy: Using sensitive data requires rigorous privacy protections to prevent inadvertent disclosures.
  • Data Transparency and Security: Ensuring data integrity and security is crucial, especially with the potential for intellectual property infringements.


2. Model Complexity-related Risks:

  • Explainability: The complexity of LLMs makes it challenging to interpret their decision-making processes, which is critical for regulatory compliance.
  • Susceptibility to Attacks: LLMs are vulnerable to adversarial attacks such as prompt injections and data poisoning.
  • Reasoning Errors: LLMs may struggle with abstract reasoning and make mistakes in complex contexts, requiring robust validation processes.

3. Social Behaviors and Human Values:

  • Alignment and Hallucination: LLMs must align with human values to prevent the generation of misleading or toxic content.
  • Environmental Impact: The high computational power required for training LLMs has significant environmental implications.
  • Openness vs. Security: Balancing the benefits of open-source models with the need for security and privacy is a critical consideration.

A Strategy for Safe Adoption

Achieving safe and trustworthy adoption of LLMs involves addressing key characteristics outlined by the National Institute of Standards and Technology (NIST), such as validity, reliability, security, transparency, and fairness. Workshop participants emphasised the importance of:

  1. Robustness and Resilience: Developing robust processes and systems that can withstand adversity and recover quickly.
  2. Privacy and Security: Implementing technical privacy-enhancing techniques and comprehensive security measures.
  3. Fairness and Accountability: Ensuring fairness in LLM outputs and maintaining accountability for decision-making processes.
  4. Explainability: Facilitating auditability and ensuring transparency in developing and deploying LLMs.
    Skill Development: Enhancing human-machine collaboration skills and providing education on LLMs' effective and ethical use.

 

Understanding Large Language Models (LLMs) - a Guide for Finance Executives

 

What is a Large Language Model (LLM)?

A Large Language Model (LLM) is a type of artificial intelligence designed to understand and generate human-like text based on vast amounts of linguistic data. These models are trained on extensive datasets that include books, articles, websites, and other textual sources, enabling them to predict and generate coherent and contextually relevant text.

Key Features of LLMs

For finance executives at large global banks, understanding the key features of LLMs is crucial as these features directly impact operational efficiency, risk management, and strategic decision-making. Here are the key technical features of LLMs and their significance:

1. Transformer Architecture:

  • Explanation: LLMs, such as GPT-4, are built on transformer architecture, which uses attention mechanisms to process and generate text. This architecture allows the model to weigh the importance of different words in a sentence, capturing contextual relationships more effectively.
  • Importance: For finance executives, this means LLMs can generate precise and contextually relevant financial reports, summaries, and forecasts, enhancing decision-making and communication within the bank.

2. Scalability:

  • Explanation: LLMs can scale up to billions of parameters, enabling them to handle large datasets and complex tasks.
  • Importance: This scalability allows financial institutions to process vast amounts of financial data quickly, improving the efficiency of data analysis, risk assessment, and regulatory compliance. It supports seamlessly managing and analysing large portfolios, market data, and customer interactions.

3. Parameters:

  • Explanation: Parameters in an LLM are like the settings on a complex machine, determining how it processes and generates text. More parameters mean the model can capture more nuances and details in the data it processes.
  • Importance: In financial services, more parameters enable the LLM to provide more accurate risk assessments, detailed market analysis, and personalised investment advice by understanding the intricate details of financial language and data.

4. Context Windows:

  • Explanation: The context window of an LLM refers to the amount of text the model can consider at one time when generating a response. A larger context window allows the model to understand and remember more information from the input text.
  • Importance: For a finance executive, a larger context window means the LLM can handle lengthy and complex financial documents, maintaining coherence and relevance throughout. This is crucial for analysing regulatory filings, drafting comprehensive financial reports, and summarising extensive market research.

5. Natural Language Processing (NLP) Capabilities:

  • Explanation: LLMs excel at NLP tasks such as text generation, translation, summarisation, and sentiment analysis.
  • Importance: These capabilities enable finance executives to leverage LLMs to automate customer service through chatbots, generate detailed market analysis, and monitor sentiment around financial products and services. This improves customer engagement and provides valuable insights into market trends and behaviour.

6. Contextual Understanding and Generation:

  • Explanation: LLMs can generate contextually accurate responses based on the input they receive, making them adept at understanding language nuances.
  • Importance: In a finance setting, this ensures that LLMs can accurately interpret and respond to complex financial queries, draft personalised investment advice, and generate comprehensive risk assessments. This enhances the bank’s ability to provide tailored financial services and maintain high standards of accuracy and reliability.

7. Fine-tuning and Customisation:

  • Explanation: LLMs can be fine-tuned on specific datasets to specialise in particular domains, such as finance, law, or healthcare.
  • Importance: For a finance executive, this means LLMs can be customised to understand financial jargon, regulatory requirements, and market dynamics specific to the bank’s operations. This customisation ensures that the LLM's outputs are highly relevant and specific to the bank’s needs, improving operational effectiveness and compliance.

8. Integration with Existing Systems:

  • Explanation: APIs and other integration tools can integrate LLMs into existing IT infrastructure and software applications.
  • Importance: Seamless integration allows banks to enhance their systems with advanced AI capabilities without extensive overhauls. This facilitates the deployment of LLMs in fraud detection, automated compliance checks, and portfolio management, thereby leveraging AI to augment traditional banking operations efficiently.

9. Data Privacy and Security Features:

  • Explanation: Advanced LLMs incorporate techniques, such as differential privacy and federated learning, to ensure data privacy and security.
  • Importance: Finance executives must ensure data security and compliance with privacy regulations. LLMs equipped with these features can safely handle sensitive financial data, mitigating risks of data breaches and ensuring compliance with regulatory standards such as GDPR and other data protection laws.

     

Deployment of Private LLMs in the Banking Sector

Why Consider a Private or Open-Weighted LLM?

When deploying large language models (LLMs) internally, banks must weigh the advantages of using private or open-weighted LLMs versus relying on public LLMs such as OpenAI's GPT-4. For finance executives, the choice between these options hinges on several key factors:

1. Data Security and Privacy:

  • Private LLMs: A private LLM, hosted internally, ensures that sensitive financial data never leaves the bank's secure environment. This is akin to having an in-house security vault where all critical financial documents are stored and managed, ensuring maximum control and compliance with data protection regulations.
  • Public LLMs (e.g., GPT-4): While GPT-4 offers robust capabilities, using a public LLM involves sending data to external servers, which poses potential risks of data breaches and privacy issues, similar to outsourcing your most sensitive financial transactions to an external firm.

2. Customisation and Fine-Tuning:

  • Private LLMs: These models can be fine-tuned extensively on proprietary datasets unique to the bank, similar to tailoring a financial product specifically to the needs of high-net-worth clients. This ensures the LLM understands and generates responses that align perfectly with the bank's requirements, from regulatory compliance to specific market terminology.
  • Public LLMs: While GPT-4 can be customised to some extent, the level of fine-tuning is limited compared to private LLMs. It’s like trying to customise a standardised financial product to fit very specific needs – it’s possible, but with constraints.

3. Operational Control and Flexibility:

  • Private LLMs: Banks retain full control over the deployment, updates, and usage policies of the LLM, allowing for tailored governance and operational flexibility. It’s akin to having an internal trading platform rather than using a third-party service—full control leads to better alignment with internal processes and risk management frameworks.
  • Public LLMs: With GPT-4, banks rely on the provider’s update schedule and operational protocols, leading to alignment issues and less control over specific functionalities.

4. Cost Efficiency:

  • Private LLMs: While the initial setup cost might be higher, maintaining a private LLM can be more cost-effective over time, especially for large-scale, ongoing operations. Consider it the difference between leasing and buying property; owning your infrastructure might be more expensive initially, but it can save costs in the long run.
  • Public LLMs: GPT-4’s usage costs can add up, especially with high-volume, frequent queries. This is similar to paying for a premium financial consulting service whenever you need advice versus having an in-house expert team.

 

Offerings from Major Tech Companies

Several major tech companies provide solutions for deploying both public and private LLMs with open weights, each offering unique benefits relevant to the banking sector:

1. Oracle:

Oracle’s LLM Solutions: Oracle offers LLM deployment on its robust cloud infrastructure, emphasising security and compliance, which are crucial for banks handling sensitive data. They provide customisable AI models tailored for financial services, ensuring data integrity and regulatory adherence.

Relevance to Banks: Oracle’s offerings are like a secure, highly regulated financial exchange platform designed to handle large transactions with stringent compliance measures.

                                                                        Figure: Integrating a Private LLM into your finance platforms.


2. Microsoft:

Azure OpenAI Service: Microsoft’s Azure provides a platform for deploying both private and public LLMs, including GPT-4. Azure offers enterprise-grade security, compliance certifications, and integration with existing Microsoft tools, making it a seamless fit for banks.

Relevance to Banks: Azure’s capabilities are comparable to an integrated financial management system that connects various departments, ensuring secure, streamlined operations across the organisation.

3. Amazon (AWS):

Amazon Bedrock: AWS provides tools for building and deploying private LLMs with extensive customisation options and scalability. AWS emphasises data security and offers robust tools for monitoring and managing AI workloads.

Relevance to Banks: AWS’s offerings can be likened to a scalable investment portfolio management system, adaptable to varying levels of demand and complexity, ensuring efficient and secure operations.

4. Meta:

Open-Source LLMs (LLaMA): Meta provides LLaMA, an open-weight LLM model that can be deployed privately. This offers complete transparency and customisation potential, with the benefit of community-driven improvements and innovations.

Relevance to Banks: Meta’s LLaMA is like an open banking initiative, allowing financial institutions to innovate and collaborate on developing the best solutions while retaining control over their proprietary implementations.

Integrating LLMs with Oracle EPM and Oracle OFSAA Solutions: Realistic Possibilities for Banks

Revvence specialises in implementing Oracle solutions specific to Financial Services, focusing on how AI and GenAI can be incorporated into these solutions to deliver greater value to our banking clients.
As banks look to enhance their operational efficiency and strategic decision-making, integrating Large Language Models (LLMs) with Oracle's Enterprise Performance Management (EPM) solutions and Oracle Financial Services Analytical Applications (OFSAA) presents significant opportunities. This section explores how these integrations can transform banking processes, which is relevant to finance executives at a global bank.

Benefits of Integrating LLMs with Oracle EPM Solutions

Oracle EPM Solutions provides a comprehensive suite of tools to streamline financial processes, enhance forecasting accuracy, and improve decision-making. Integrating LLMs into these solutions can amplify these benefits through advanced AI capabilities.

1. EPM Digital Assistant:

  • Integration with LLMs: Enhancing the EPM Digital Assistant with LLMs can provide more sophisticated natural language interactions, allowing finance executives to query financial data in real time and receive detailed, contextually accurate responses. For example, an executive could ask, "What were the main drivers behind our Q3 revenue growth?" and receive an insightful, data-driven analysis.
  • Relevance: This integration simplifies complex reporting tasks and improves accessibility to critical financial insights, akin to having a financial expert on demand.

2. Intelligent Narrative Generation:

  • Integration with LLMs: LLMs can enhance narrative reporting by generating more nuanced and comprehensive reports. They can automatically identify trends and anomalies and provide explanations in plain language, making it easier for finance teams to understand and act on financial data.
  • Relevance: This reduces the manual effort involved in report creation and ensures consistency and accuracy in financial communications, similar to automating a complex auditing process.

3. Auto Predict and Insights:

  • Integration with LLMs: Using LLMs for predictive analytics can improve the accuracy of forecasts by incorporating a broader range of variables and learning from historical data. LLMs can identify subtle patterns and trends that traditional models might miss.
  • Relevance: Enhanced forecasting capabilities help banks make more informed decisions regarding capital allocation and risk management, much like leveraging advanced market analysis for better investment decisions.

4. Machine Learning Model Import (Bring Your Own Model):

  • Integration with LLMs: LLMs can be integrated as part of the BYOM feature, allowing banks to use advanced AI models for scenario planning and what-if analyses. This can include assessing the impact of macroeconomic changes on financial performance.
  • Relevance: This flexibility allows banks to tailor predictive models to their specific needs, similar to customising financial products for different client segments.

 

You can find out more about the opportunities for integrating GenAI into banking in these two articles:

  1. Leveraging Generative AI for Enhanced Risk and Compliance in Banking.
  2. Unlocking the Transformative Power of Generative AI in Banking.


Benefits of Integrating LLMs with Oracle OFSAA

Oracle OFSAA provides powerful tools for risk management, regulatory compliance, and financial analytics, such as fair-value analytics and optimising RWAs. Integrating LLMs with OFSAA can significantly enhance these capabilities.

1. Enhanced Credit Scoring:

  • Integration with LLMs: LLMs can analyse vast amounts of data, including non-traditional data sources like social media and transaction histories, to improve credit scoring models. This can lead to more accurate risk assessments and better lending decisions.
  • Relevance: This approach can help expand access to credit while managing risk effectively, like using detailed market research to identify new investment opportunities.

2. Automated Regulatory Compliance:

  • Integration with LLMs: LLMs can automate the collection, analysis, and reporting of compliance data, ensuring adherence to regulations such as Basel III/IV, ESG reporting, and anti-money laundering (AML) requirements.
  • Relevance: Automating these processes reduces the compliance burden on staff and minimises the risk of errors, akin to having a robust internal compliance system that proactively manages regulatory requirements.

3. Predictive Forecasting:

  • Integration with LLMs: LLMs can enhance predictive forecasting by incorporating real-time data and complex variables into financial models. This leads to more accurate forecasts and better strategic planning.
  • Relevance: Improved forecasting enables banks to allocate resources more effectively and anticipate market changes, similar to using predictive analytics to guide investment strategies.

4. Scenario Modeling with AI:

  • Integration with LLMs: LLMs can run complex scenario analyses to help banks prepare for various economic conditions. This includes stress testing and evaluating the impact of potential market disruptions.
  • Relevance: This capability supports robust risk management and strategic planning, much like using advanced simulations to test the resilience of a financial portfolio.

 

Oracle and Nvidia Partnership: Enhancing AI Capabilities

Oracle's partnership with Nvidia further strengthens these integrations by providing the necessary computational power to handle large-scale AI tasks efficiently. Nvidia's GPUs, known for their parallel processing capabilities and high-bandwidth memory, are particularly well-suited for the demanding requirements of financial applications.

  1. Faster Time to Market: Oracle Cloud Infrastructure (OCI) offers pre-configured solutions and streamlined workflows, enabling banks to deploy AI solutions quickly.
  2. Specialised AI Features: Nvidia's GPUs have features optimised for AI workloads, enhancing performance for risk modelling and pattern recognition tasks.

By leveraging the combined strengths of Oracle's secure cloud infrastructure and Nvidia's advanced AI technology, banks can achieve superior performance and security in their AI applications, ensuring they stay ahead in the competitive financial landscape.

You can read more about this important relationship by reading this blog: "How Oracle and Nvidia's Partnership Gives Oracle Financial Services Clients an AI Advantage.

 

Key Takeaways & Call to Action

 

Integrating LLMs (Language Model Models) in the UK banking sector offers significant opportunities for improving operational efficiency, customer engagement, and financial insights. However, it also introduces risks that require proactive management. Financial institutions must collaborate with regulators, practitioners, and researchers to navigate the complexities of LLM adoption. Developing regulatory guidelines and best practices will be crucial for the responsible use of LLMs in financial services.

For finance executives at large global banks, using private or open-weight LLMs has strategic advantages in security, customization, control, and cost efficiency compared to public LLMs like OpenAI’s GPT-4. Integrating LLMs with Oracle EPM and OFSAA solutions enhances operational efficiency, decision-making, and regulatory compliance. Partnering with Oracle and Nvidia provides the computational power for large-scale AI applications. Finance leaders should explore these advanced AI capabilities to drive innovation and maintain a competitive edge, making informed decisions to mitigate risks and promote growth.

 

Call to Action

We urge our clients to proactively explore the integration of LLMs into their operations. By understanding and leveraging LLMs' advanced technical features, finance executives can enhance operational efficiency, improve strategic decision-making, and ensure robust regulatory compliance. We can help our clients explore LLMs' integration capabilities with Oracle EPM and OFSAA solutions to fully realise AI's potential in transforming financial processes. Now is the time to embrace these innovations to drive improved financial performance.



How can we help?

Revvence can help in several valuable ways:

  • Review your existing core finance processes and recommend GenAI use cases.
  • Create a proof-of-concept to demonstrate potential outcomes and help build your business case.
  • The design and delivery of end-to-end GenAI applications in the finance function.
  • Check out Revvy, our Narrow-GPT for Finance Transformation. Read all about Revvy here.