Wednesday, September 17, 2025

 

Artificial Intelligence In Capital Markets – Analysis

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AI Definition in Capital Markets

By Eva Su and Ling Zhu


The term AI has been defined in federal laws such as the National Artificial Intelligence Initiative Act of 2020 as “a machine-based system that can … make predictions, recommendations or decisions influencing real or virtual environments.” The U.S. capital markets regulator, the Securities and Exchange Commission (SEC), referred to AI in a notice of proposed rulemaking in June 2023 (discussed in more detail below) as a type of predictive data analytics-like technology, describing it as “the capability of a machine to imitate intelligent human behavior.” 

AI Use in Capital Markets

The scope and speed of AI adoption in the financial sector are dependent on both supply-side factors (e.g., technology enablers, data, and business model) and demand-side factors (e.g., revenue or productivity improvements and competitive pressure from peers that are implementing AI tools to obtain market share). Both capital markets industry participants and the SEC may find use for AI as shown below.

Capital Markets Use

Common AI usage in capital markets include (1) investment management and execution, such as investment research, portfolio management, and trading; (2) client support, such as robo-adviser service, chatbots, and other forms of client engagement and underwriting; (3) regulatory compliance, such as anti-money laundering and counter terrorist financing reporting and other compliance processes; and (4) back-office functions, such as internal productivity support and risk management functions.

For example, in its 2023 proposed rule, the SEC observed that some firms and investors in financial markets have used AI technologies, including machine learning and large language model (LLM)-based chatbots, “to make investment decisions and communicate between firms and investors.” LLM is a subset of generative AI that is capable of generating responses to prompts in natural language format once the model has been trained on a large amount of text data. An LLM can have applications in capital markets, such as answering questions and generating computer code. Furthermore, the Financial Industry Regulatory Authority, a self-regulatory organization for broker-dealers under the oversight of the SEC, described some machine learning applications in the securities industry, such as grouping similar trades in a time series of trade events, exploring options pricing and hedging, monitoring large volumes of trading data, keyword extraction from legal documents, and market sentiment analysis.

Regulatory Use

The SEC reported 30 use cases of AI within the agency in its AI Use Case Inventory for 2024. Examples include (1) searching and extracting information from certain securities filings, (2) identifying potentially manipulative trading activities, (3) enhancing the review of public comments, and (4) improving communication and collaboration among the SEC workforce. In 2025, the Office of Management and Budget issued Memorandum M-25-21, providing guidance to agencies (including the SEC) on accelerating AI use and requiring each agency to develop an AI strategy, share certain AI assets, and enable “an AI-ready federal workforce.” 


Selected Policy Issues

While AI offers potential benefits associated with the applications discussed in previous section, its use in capital markets also raises policy concerns. Below are examples of issues relating to AI use in capital markets that Congress may want to consider.

Auditable and explainable capabilities. Advanced AI financial models can produce sophisticated analysis that often may not have outputs explainable to a human. This characteristic has led to concerns about human capability to review and flag potential mistakes and biases embedded in AI analysis. Some financial regulatory authorities have developed AI tools (e.g., Project Noor), to gain more auditability into high-risk financial AI models. 

Accountability. The issue of accountability centers around the question of who bears responsibility when AI systems fail or cause harm. The first known case of an investor suing an AI developer over autonomous trading reportedly occurred in 2019. In that instance, the investor expected the AI to outperform the market and generate substantial returns. Instead, it incurred millions in losses, prompting the investor to seek remedy from the developer.

AI-related information transparency and disclosure. “AI washing“—that is, false and misleading overstatements about AI use—could lead to failures to comply with SEC disclosure requirements. Specifically, certain exaggerated claims that overstate AI usage or AI-related productivity gains may distort the assessments of the investment opportunities and lead to investor harm. The SEC initiated multiple enforcement actions against certain securities offerings and investment advisory servicesthat appeared to have misled investors regarding AI use. 

Concentration and third-party dependency. The substantial costs and specialized expertise required to develop advanced AI models have resulted in a market dominated by a relatively small number of developers and data aggregators, creating concentration risks. This concentration could lead to operational vulnerabilities as disruptions at a few providers could have widespread consequences. Even when financial firms design their own models or rely on in-house data, these tools are typically hosted on third-party cloud providers. Such third-party risks expose participants to vulnerabilities associated with information access, model control, governance, and cybersecurity. 

Market correlation. A common reliance on similar AI models and training data within capital markets may amplify financial fragility. Some observers argue that herding effects—where individual investors make similar decisions based on signals from the same underlying models or data providers—could intensify the interconnectedness of the global financial system, thereby increasing the risk of financial instability.

Collusion. One academic paper indicates that AI systems could collude to fix prices and sideline human traders, potentially undermining market competition and market efficiency. One of its authors explained during an interview that even fairly simple AI algorithms could collude without being prompted, and they could have widespread effects. Others challenged the paper, arguing that AI’s effects on market efficiency is unclear.

Model bias. While AI could overcome certain human biases in investment decisionmaking, it could also introduce and amplify AI bias derived from human programming instructions or training data deficiencies. Such bias could lead to AI systems favoring certain investors over others (e.g., providing more favorable terms or easier access to funding for certain investors based on race, ethnicity or other characteristics) and potentially amplifying inequalities. 

Data. Data is at the core of AI models. Data availability, reliability, infrastructure, security, and privacy are all sources of policy concerns. If an AI system is trained on limited, biased, and non-representative data, it could result in overgeneralization and misinterpretation in capital markets applications.

AI-enabled fraud, manipulation, and cyberattacks. AI could lower the entry barriers for bad actors to distort markets and enable more sophisticated and automated ways to generate fraud and market manipulation. Hackers are reportedly using AI both to distribute malware and deepfake emails targeting financial victims and to develop new types of malicious tools designed to reach and exploit a wider set of targets.

Costs. AI adoption involves significant investments in technology platforms, expenses related to system transitions and business model adjustments, and ongoing operating costs, such as licensing or service fees. For certain large-scale capital markets operations, there is often a lag between initial AI investments and the realization of revenue or productivity gains. As a result, these market participants may face financial pressures when AI spending is not immediately offset by the system’s benefits. Aside from financial impact, some stakeholders are concerned about AI’s environmental costs and the potential costs associated with the transition of the workforce that is displaced by AI.

SEC Actions

In recognition of AI’s transformative potential, the SEC launched an AI task force in August 2025 to enhance innovation in its operations and regulatory oversight. In addition, the SEC has engaged with stakeholders to discuss broader AI issues in capital markets. At an SEC AI roundtable in May 2025, the agency focused on AI-related benefits, costs, and uses; fraud and cybersecurity; and governance and risk management. 

In the June 2023 proposed rulemaking mentioned above, the SEC discussed AI use in capital markets as it sought to address certain conflicts of interest associated with broker-dealers’ or investment advisors’ use of predictive data analytics technologies. The SEC notice was withdrawn in June 2025, along with some other SEC proposed rules introduced during the previous Administration. The SEC has not indicated if AI will be addressed in future rulemaking.

Options for Congress

Some financial authorities and other stakeholders have released reports addressing AI’s capital markets use cases and policy implications. Examples of policy recommendations include to (1) evaluate the adequacy of the current securities regulation in addressing AI-related vulnerabilities; (2) enhance regulatory capabilities by incorporating AI tools into regulatory functions; (3) enhance data monitoring and data collection capabilities; and (4) adopt coordinated approaches to address critical system-wide risks, such as AI third-party provider risks and cyberattack protocols. 

In the 119th Congress, the Unleashing AI Innovation in Financial Services Act (H.R. 4801) would establish regulatory sandboxes—referred to as “AI innovation labs”—at the SEC and other financial regulators. These labs would allow AI test projects to operate with relief from certain regulations and without expectation of enforcement actions. Participating entities would have to apply and gain approval through their primary regulators and demonstrate that the projects serve the public interest, promote investor protection, and do not pose systemic risk. The AI Act of 2024 (H.R. 10262 in the 118th Congress), among other things, would have required the SEC to provide a study on both the realized and potential benefits, risks, and challenges of AI for capital market participants as well as for the agency itself. The study was to incorporate public input through a request for information process and include both regulatory proposals and legislative recommendations.

About the authors:

  • Eva Su, Specialist in Financial Economics
  • Ling Zhu, Analyst in Telecommunications Policy

Source: This article was published at the Congressional Research Service (CRS)


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The Congressional Research Service (CRS) works exclusively for the United States Congress, providing policy and legal analysis to committees and Members of both the House and Senate, regardless of party affiliation. As a legislative branch agency within the Library of Congress, CRS has been a valued and respected resource on Capitol Hill for nearly a century.

 

Can NATO Countries Stop Buying Russian Oil, As Trump Demands? – Analysis

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By Ray Furlong and RFE/RL’s Hungarian Service


US President Donald Trump has said NATO countries should stop buying Russian oil if they want Washington to tighten sanctions on Moscow — but achieving this could be time consuming and challenging.

Only three NATO nations currently import Russian crude: Hungary, Slovakia, and Turkey. Of the three, Turkey is the big one.

“According to our data, (Turkey) is the third largest Russian oil importer globally,” Petras Kanitas, a Vilnius-based analyst at the Center for Research on Energy and Clean Air (CREA), told RFE/RL on September 15.

“Turkey buys Russian oil mainly because it’s heavily discounted,” he added. “They also benefit by refining Russian crude oil and selling fuel products to Europe.”

Trump has for some time spoken of secondary tariffsagainst countries that import Russian oil and has already announced them on India. In a September 13 Truth Socialpost, he called on “all NATO nations” to stop such imports.


“Trump’s threats so far have largely been directed at India and to an extent China. Turkey was never kind of in the mix. So, this is an interesting new development,” said Benjamin Hilgenstock, senior economist at the Kyiv-based KSE Institute, a think tank.

The idea is to hit the Russian economy by cutting off one of its key exports, forcing the Kremlin into substantial negotiations on ending the full-scale war it launched against Ukraine in 2022.

Hilgenstock, who is also an Associate Fellow at the German Council on Foreign Relations, said losing Turkish exports would be a big problem for Moscow.

“It would probably mean that they have to give higher discounts to other buyers in order to redirect this volume,” he told RFE/RL.

But Turkey’s appetite for Russian oil is based on powerful economic forces that Ankara will not easily ignore. Some of its refineries take 90 percent of their crude from Russia; switching could not happen overnight. Turkey is also, unlike India and China, a big importer of refined Russian oil products.

“Of course, for Turkey, [ending imports] will be somewhat of a challenge, as it would be for Hungary and the Slovak Republic, which have taken no steps whatsoever to diversify their supplies,” said Hilgenstock.

Economics aside, the politics would also make it more complicated to push Turkey into cutting Russian supplies. Since it’s not a member of the European Union, it does not face the same pressures as Hungary or Slovakia.

Hungary And Slovakia

Both Budapest and Bratislava have repeatedly said they are dependent on Russian oil via the Druzhba pipeline.

In August, when Ukrainian air strikes repeatedly put it out of action, Hungarian Foreign Minister Peter Szijarto said “if deliveries via the Druzhba pipeline become impossible for a long time, then the oil supply to Hungary and Slovakia will also become impossible.”

Yet the EU has set a goal of ridding itself of Russian energy imports by 2027 using EU internal market rules, meaning the decision could not be vetoed by Hungary or Slovakia.

Analysts say both countries could import oil via the Adria pipeline, through Croatia, instead.

“Diversification is not an insoluble technical problem but a matter of political and economic will,” Tamas Pletser, an oil and gas analyst at Erste Bank, told RFE/RL’s Hungarian Serviceearlier this month.

“This would make fuel more expensive, but as long as there is a free market there is no shortage,” he added.

CREA energy analyst Kanitas pointed out that earlier this year, the Czech Republic succeeded in fully divesting itself of Russian oil supplies — a move it committed to shortly after Russia’s full-scale invasion of Ukraine in 2022.

“They kept their promise,” he said, but added that Hungarian Prime Minister Viktor Orban “has good relations with President Trump. I would say there might be some sort of waiver or something.”

Secondary Tariffs

Trump’s post also called on NATO countries to consider 50-100 percent tariffs on China to punish it for its support of Russia’s war machine.

The call comes as Washington is itself engaged in a tense trade standoff with China. Trump has repeatedly pushed back his own deadline for China to accept new trade terms or face massive new tariffs — as China has shown no willingness to back down.

Trump’s statement was backed by Republican Senator Lindsay Graham, who has pushed legislation for massive secondary tariffs to choke Russia’s trading partners.

“It is now time for the Europeans to follow President Trump’s lead and go after China and India,” he told NBC’s Meet The Press program. “China and India will change their practices toward Putin. This war will end.”

But since Europe has accepted steep tariff increases as the price for doing business with Washington, it has all the more need to keep trade rolling with China.

On September 15, the Foreign Ministry in Beijing warned of “firm countermeasures” if NATO countries “hit China with tariffs.”

No European leaders have suggested a tariff hike is on the cards. Nor was there any immediate sign of movement on cutting oil imports.

Hilgenstock said that for there to be any, Trump might need to intervene personally with the leaders of Hungary, Slovakia, and Turkey.

“This is really a conversation that Mr. Trump has to have with his friends (Viktor) Orban, (Robert) Fico, and (Recep Tayyip) Erdogan.”

  • Ray Furlong is a Senior International Correspondent for RFE/RL. He has reported for RFE/RL from the Balkans, Kazakhstan, Georgia, and elsewhere since joining the company in 2014. He previously worked for 17 years for the BBC as a foreign correspondent in Prague and Berlin, and as a roving international reporter across Europe and the former Soviet Union.


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RFE/RL journalists report the news in 21 countries where a free press is banned by the government or not fully established.