AI in Investment Banking: Trends and Risks (2024)

The Artificial Intelligence (AI) market is booming, the proliferation of AI startups has been astounding, and the sheer scale of investments flowing into AI ventures, without precedent. What about AI in investment banking? In this article, we'll cover a range of dynamics you need to consider if you aim to leverage AI in investment banking.

The paradigm shift of AI in investment banking

According to Statista, funding in AI startups demonstrated consistent growth in the years preceding the COVID-19 pandemic, rising from $18 billion in 2017 to $26 billion in 2020. Thereafter, such investments displayed a substantial uptick, particularly in the latter half of 2021, as the novel necessity of remote work and increased cybersecurity concerns became paramount. This uptick became supercharged as investments soared from slightly over $30 billion in 2020 to over $65 billion in 2021; and then by 2022, global corporate investment in AI reached a staggering $92 billion, up from just $12.75 billion in 2015. This data record says it all, characterizing the meteoric growth of AI over the past decade.

A Crunchbase report revealed that global funding for AI startups surged to nearly $50 billion in 2023, marking a 9% year-over-year increase; and furthermore, the forecast for 2024 suggests a continuation of this upward growth trajectory. Not surprisingly, the largest investments went to leading foundation model companies such as OpenAI, Anthropic, and Inflection AI, who collectively raised $18 billion.

In summary, these numbers not only showcase the significant evolution of AI, they clearly signify a robust adoption and reception of this startlingly new technology by users, and the investment banking sector is certainly not lagging behind with respect to embracing this trend.

AI is boosting processes in investment banking

In July 2023, EY's CEO Outlook Pulse revealed in a survey that almost half of CEOs are investing in AI, with 43% fully integrating AI into their capital allocation processes. This is a clear sign that industry leaders are grasping the transformational nature of AI with respect to traditional processes in deal negotiations and M&A due diligence, for starters. They are becoming keenly aware that generative AI affordances offer potentially significant efficiency improvements in complex financial transactions and engagements.

In due diligence for example, Robotic Process Automation (RPA) is revolutionizing the process. Instead of relying exclusively on manual reviews, the use of AI to streamline data analysis saves time and costs. The benefits of AI extend to target identification and valuation, with generative AI tools analyzing diverse data sets to identify patterns, aiding in target selection. Additionally, specifically refined AI tools’ predictive modeling techniques simplify valuation by analyzing historical financial data, market trends, and macroeconomic factors—providing valuable insights for more effective negotiations and avoiding overvaluation or undervaluation. AI thus plays a pivotal role in enhancing efficiency and streamlining various aspects of investment banking.

Notwithstanding this extraordinary paradigm-shifting development, a new dimension in the regulatory space has opened up, with a unique and unprecedented landscape of risk revealing itself.

Understanding AI risks through FINRA's lens

The adoption of AI in investment banking is a fact. tWhile AI brings considerable benefits to deal-making, this rapidly-evolving technology raises crucial considerations with regards to risk management, data privacy, and security. The absence of organic human judgment and intuition in AI can pose serious challenges, particularly in the relational realm of deal risk assessment. Significantly, dependence on AI in investment banking might unintentionally result in non-compliance with regulatory frameworks. Key aspects of generative AI still require further development before investment bankers can completely rely on it. Even now, the regulatory regimes within the SEC and FINRA in the U.S. are already starting on the effort to craft AI-specific regulations, with the EU’s recently adopted AI Act providing a template from which to proceed

Regulatory obligations pertaining to AI, particularly generative AI, are taking shape; for example, FINRA stipulates engaging in pilots and deployments to address risk and compliance processes, along with expediting information delivery to the market. Firms moving forward—perhaps with unseemly haste— in the use of AI technologies will need to keep abreast ot increasing scrutiny from the SEC. And this is not to mention recent high-level developments in the Biden Administration’s Executive order from Q4 2023, “On the Safe, Secure, and Trustworthy Development and use of Artificial Intelligence (AI)”, marking a significant step in the U.S. government’s approach to regulating AI technologies.

Such an approach can now be seen instantiated in the 2024 FINRA Annual Regulatory Oversight Report, which delves into challenges and potential risks linked to AI in investment banking and within the securities industry. Key concerns outlined in the report include:

1 - Model explainability and bias:

The report emphasizes that AI-based applications may introduce unique challenges related to model explainability and bias. Firms are urged to review supervisory procedures to prevent the creation of an environment conducive to excessive risk-taking.

2 - Autonomous trading applications:

Notably, the report highlights challenges associated with AI in portfolio management and trading, particularly when applications are designed to act autonomously. Unforeseen circ*mstances, such as market volatility, natural disasters, pandemics, or geopolitical changes, may render AI models unreliable, potentially resulting in undesirable trading behavior and negative consequences.

3 - Regulatory compliance and risk management:

Firms are cautioned to assess potential risks tied to AI applications in areas like liquidity and cash management, credit risk management, and regulatory compliance. The report stresses the necessity of robust governance, supervision, and extensive testing of AI-based applications to promptly identify and mitigate concerns.

These insights underscore the critical importance of addressing the unique risks and singular challenges associated with the integration of AI technology in the securities industry. Robust governance, supervision, and risk management practices are imperative for ensuring the responsible and effective use of AI-based applications.

2023 was startling enough, in the exponential uptake of AI technology due in large part to the public’s embrace of OpenAI’s ChatGPT—but 2024 promises to be a watershed year in which this breakthrough technology will truly come into its own and permeate every aspect of every industry, including AI in investment banking and the capital markets.

AI in Investment Banking: Trends and Risks (2024)

FAQs

Is investment banking at risk of AI? ›

Conclusion. With the improvement of AI technology, the investment banking sector can effectively focus on better decision-making, better productivity, customization, and precision with much more accuracy. Though AI will not replace investment banking.

What are the risks of artificial intelligence in banking? ›

However, hallucination, algorithmic bias and vulnerability to data quality issues present risks to the accuracy of AI predictions. If financial entities base their decisions on faulty AI predictions which are not checked, this could lead to outcomes that may result in economic losses or even disorderly market moves.

How does generative AI affect investment banking? ›

Improved data integration and interoperability: As investment banks grapple with siloed data sources, generative AI will facilitate seamless data integration, enabling better collaboration and decision-making across departments and business units.

What is the AI trend in banking? ›

The rise of Gen AI

However, I think the biggest impact of gen AI in banking will be on revenue. Our models show that pairing AI with people in sales, marketing and customer interaction could boost revenue by 6% in three years. The key to achieving that growth will be an AI strategy that puts the workforce at its core.

Will financial analysts be replaced by AI? ›

Not to mention, human financial analysts bring creativity and critical thinking AI doesn't tend to possess. So, it is unlikely that AI will fully replace financial analysts, or at least any time in the near future. Instead, they may work together to improve efficiency and accuracy in decision-making processes.

Will AI replace fund managers? ›

Leading CIOs discuss the future of equity markets at the Cafemutual Ideas Fest 2024.

What is the biggest risk of AI? ›

Dangers of Artificial Intelligence
  • Automation-spurred job loss.
  • Deepfakes.
  • Privacy violations.
  • Algorithmic bias caused by bad data.
  • Socioeconomic inequality.
  • Market volatility.
  • Weapons automatization.
  • Uncontrollable self-aware AI.

What are the biggest challenges in implementing artificial intelligence in banking? ›

Ethical and Legal Concerns: AI raises ethical and legal questions related to privacy, security, transparency, and algorithmic bias. Banks must navigate these challenges carefully.

What are the top 5 drawbacks of artificial intelligence? ›

Frequently cited drawbacks of AI include the following:
  • A lack of creativity. ...
  • The absence of empathy. ...
  • Skill loss in humans. ...
  • Possible overreliance on the technology and increased laziness in humans. ...
  • Job loss and displacement.
Jun 16, 2023

How to use AI in M&A? ›

AI and big data are reshaping strategic decision-making in M&A. By analyzing market trends, competitor strategies and historical deal outcomes, these technologies provide a more data-driven approach to determining whether an M&A deal should be pursued.

What is the negative impact of AI in finance? ›

There is always a risk of exposing sensitive information when using AI. AI vulnerabilities in data storage or processing can expose confidential information to cyber threats. Because of this, you must improve your data security measures and regularly update AI systems to prevent potential data breaches.

How does AI increase ROI? ›

By automating tasks like list cleaning and audience segmentation, businesses can save time and allocate resources more effectively. Additionally, AI-driven predictive analytics enable proactive decision-making, minimising risks and maximising opportunities for higher ROI.

What is the future of AI in investment banking? ›

The McKinsey Global Institute (MGI) estimates that across the global banking sector, gen AI could add between $200 billion and $340 billion in value annually, or 2.8 to 4.7 percent of total industry revenues, largely through increased productivity.

What are the disadvantages of AI in banking? ›

4 Disadvantages of AI in the Financial Sector
  • Expensive. Artificial intelligence requires a lot of money for production and maintenance because it is a highly complex machine. ...
  • Bad Calls. ...
  • Unemployment. ...
  • Clients remain suspicious of AI.
May 29, 2024

How AI is disrupting the banking industry? ›

Why AI in Banks? Why Now? AI is changing the quality of products and services the banking industry offers. Not only has it provided better methods to handle data and improve customer experience, but it has also simplified, sped up, and redefined traditional processes to make them more efficient.

What industries are most at risk from AI? ›

Roles focused on data analysis, bookkeeping, basic financial reporting and repetitive administrative tasks are highly susceptible to automation.

Is there risk in investment banking? ›

Market risk, also known as macro risk, is unavoidable and, therefore, of the utmost concern for investment banks. Market risk can be defined as the risk of loss due to variables in the market. The variables include exchange rates, inflation, and interest rate risk.

What finance jobs are safe from AI? ›

15 Finance Jobs That Are Safe from AI & Automation [2024]
  • Finance Advisor. ...
  • Risk Managers. ...
  • Compliance Officers. ...
  • Financial Research Analysts. ...
  • Investment Bankers. ...
  • Portfolio Managers. ...
  • Tax Advisors. ...
  • Financial Auditors.

Is investment banking being automated? ›

AI and automation are not new to investment banking. In fact, machine learning/deep learning algorithms and natural language processing (NLP) techniques have been widely used for years to help automate trading, modernize risk management, and conduct investment research.

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