Artificial Intelligence Sweeps Hedge Funds | BNY Mellon (2024)

Artificial Intelligence, or “AI”, has featured heavily in industry innovation headlines for some time. Yet for all the excitement and promise, the uptake in the hedge fund industry has been limited – until recently.

Hedge funds’ use of AI is accelerating and reshaping the industry, particularly in investing, cost models and recruitment. Managers also face challenges to explain new AI-based approaches to investors. Given the strategies are the byproduct of super computers crunching billions of data points and learning how to adjust to markets in real-time, explaining how returns are generated is pushing the boundaries of human comprehension.

Why Now?

In September 2018,BarclayHedge's Hedge Fund Sentiment Surveyfound that over half of hedge fund respondents (56%) used AI to inform investment decisions – nearly triple the 20% reported a year earlier. Around two-thirds of those using AI were doing so to generate trading ideas and optimize portfolios. Over a quarter were using it to automate trade execution, according to the survey.

The early results are promising. For example, theEurekahedge AI Hedge Fund Index¹ slightly outperformed the flagship Eurekahedge Hedge Fund Index in both 2017 and 2018. Moreover, the Eurekahedge Hedge Fund Index decreased by 4% in the fourth quarter of 2018, while the Eurekahedge AI Hedge Fund Index was flat for the period.

Several technical advances have driven AI adoption. New, vast ‘big data’ sets are now available from satellite imagery, the internet of things, global capital flows, point of sale systems, and social media. More data can now be generated in one day than during the entire 1990s. A large hedge fund heavily utilizing AI is likely to have dedicated experts devoted to evaluating and procuring new sets of data. With raw computing power continuing to advance, graphics processing units (GPUs) and customized hardware now solve problems in hours instead of weeks – a necessity given the ongoing rapid growth in data. Finally, with cloud computing now widespread and deployment costs falling, barriers to entry for machine learning are tumbling.

How Hedge Funds Use AI

A number of hedge funds are using AI to analyze masses of data, predict corrections in supply and demand imbalances, and forecast market movements for tactical asset allocation. This has the potential to assist a CIO’s team to combine different strategies and tailor allocations.

Use of AI is playing out across a wide spectrum of investment managers from pure AI-driven specialists, to large quant-driven shops, to traditional fundamental investors looking for an edge. A growing number of firms across the spectrum are also turning to AI to improve efficiency in their operations, accounting and investor relations functions.

Indeed, a class of AI pure play hedge funds has emerged in recent years that are based entirely on machine learning and AI algorithms. Examples include Aidiyia Holdings, Cerebellum Capital, Taaffeite Capital Management and Numerai. Numerai, a recognized AI hedge fund, is pushing the boundaries of the hedge fund business model. The firm uncovers investment strategies by hosting competitions among external AI experts, mathematicians and data scientists. Recently, Numerai expanded its business model by making elements of its platform available to the rest of financial community with its product Erasure, which is a decentralized prediction marketplace using blockchain technology.

Dwarfing the upstart AI pure plays are the large quant funds that are household names in the hedge fund industry such as Man AHL, Two Sigma, Citadel, Bridgewater and D.E. Shaw. For years, players like these have used computer-driven models to uncover new trading strategies and identify themes, factors and trading signals. Human “quants” will then feed these factors and signals into trading systems. With markets continually changing and shifting, these pre-AI models often need frequent monitoring and reprogramming by the quants. AI models are different because while initially crafted by humans, they are able to adapt to changing market circ*mstances on their own with far less human supervision and intervention. Quant managers have developed algorithms that gather and fine tune data, then autonomously change the investment course when a new pattern is identified.

Efficiency Plays

Hedge fund managers and their service providers are also using AI to optimize middle and back office operations. As teams move away from managing work through spreadsheets and towards digital and cloud enterprise resource planning (ERP) solutions, AI can provide an edge. Clearly not all fund processes can be completely automated, but AI can speed reconciliation, reduce errors and ultimately reduce costs.

Software and service providers to the hedge fund space are using AI in this area to help their hedge fund clients operate more efficiently and accurately. For example, BNY Mellon’shedge fund middle office and administration servicesare using an artificial intelligence and machine learning platform to analyze historical trade break data and predict with high probability the root cause of current trade breaks. In an industry that still suffers from manually intensive reconciliation challenges, this use of AI has the potential to significantly reduce costs and speed up the NAV production process.

The Talent Bottleneck

Few doubt the impact AI will have, but the immediate impact could be delayed due to a scarcity of talent. Although estimatesvary, it is clear that the number of people with high level education and skills in AI is only a few thousand. In practice, financial firms have had to recruit from tech players like Google and Facebook to obtain AI talent. The side benefit to bringing in talent from global tech firms is the cascading of new ideas into the financial sector.

The scarcity of talent is now colliding with a realisation that AI is mission critical to hedge funds both in keeping pace with traditional rivals and tech-savvy new entrants. The appreciation of this has ushered in major new investments in academic programs and training capacity to attract millennials and address the problem of talent scarcity.

Investing and Partnering

MIT, for example, recently announced one of the most ambitious steps yet with the creation of the $1bnStephen A. Schwarzman College of Computing. It comes as no surprise that funding originates from the CEO of Blackstone, one the world’s largest alternative investment managers. It underscores the fact that the alternative investment sector needs to increase the talent pool, in part because so many top graduates are being pulled away from finance by the flourishing tech sector.

Some of the largest industry players are employing non-conventional partnerships and methods for gaining an AI edge on the talent front. Man Group has partnered with Oxford University to createThe Oxford-Man Institute of Quantitative Finance. Man’s engineers, statisticians, and coders share facilities and collaborate with academics and researchers to study how algorithms, AI, and related advances can be applied to finance.

Another example is Two Sigma which is reported to hire more technologists than traditional portfolio managers. Like Man, Two Sigma is looking for an advantage by partnering with elite academia, in this case Cornell University. To recruit staff, Two Sigma uses an AI programming challenge in the form of its own game called ‘Halite®’. The game tests applicants’ ability to control a bot using the programming language of their choice.

Talent Retention

Understanding the need for talent and investing in its creation is vital. Yet the clear imperative is to understand how investment managers need to position themselves to attract the highly skilled AI specialists of tomorrow. What should hedge fund firms do to attract and retain talent?

Free snacks may help, but more important is to stress the fiduciary responsibilities of this potential career and emphasize that millennials will have an abundance of opportunities to make a difference. This implies trusting graduates with genuine responsibility for real issues involved with pension fund management, portfolio construction and investment idea generation. The role of human creativity is key. The big winners will be those firms that integrate AI with human talent. Machine analysis of data is already a necessity. Getting the most from AI requires empowering motivated and curious individuals who are encouraged to ask profound and creative questions of it.

A New Acronym - XAI

One of the new challenges facing the use of AI in hedge funds is the ability of human programmers to keep up with the speed and sophistication of their own creations. Bloomberg profiled this effect in its Sept 2017 report “The Massive Hedge Fund Betting on AI”. It tells the story of a large hedge fund with a new AI-based trading strategy that ran for months with very positive test results. If it had been a traditional quant strategy, it would have been quickly rolled out to investors. In this case, it had to be kept away from investors and run on separate servers until the creators fully understood how it worked. While pure performance is attractive, most investment management firms and their investors want to be able to fully explain how results are generated before they run with real money.

Indeed, a new acronym – XAI or Explainable Artificial Intelligence – has cropped up to describe the challenge of understanding how and why AI is generating a specific set of results. XAI isn’t a concern if the AI is being used to help choose the next film you want to watch on Netflix. However, if AI is being applied to trade large pension fund investments then clearly XAI is essential. The immediate challenge is to give humans a way to make sense of what computers are doing and be capable of explaining exactly how alpha is being generated.

Getting hedge fund AI programmers to embrace XAI to explain results is a good first step even though how AI works will remain opaque to fund outsiders. Within this explanation is a firm’s proprietary intellectual capital, a new form of ‘black box’. Understandably, firms will go to great lengths to keep this information confidential. Although hedge funds’ use of AI is accelerating and the number of use cases keep expanding, the specifics of how AI and machine learning contributes to fund performance is likely to remain largely a secret.

1The Eurekahedge AI Hedge Fund Index (Bloomberg Ticker - EHFI817) is an equally weighted index of 14 constituent funds. The index is designed to provide a broad measure of the performance of underlying hedge fund managers who utilize artificial intelligence and machine learning theory in their trading processes. The index is base weighted at 100 at December 2010, does not contain duplicate funds and is denominated in local currencies. For more information on the index methodology, pleaseclick here.

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Artificial Intelligence Sweeps Hedge Funds | BNY Mellon (2024)

FAQs

What investment funds are using AI? ›

6 of the Best AI ETFs to Buy Now
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Global X Robotics & Artificial Intelligence ETF (BOTZ)$2.8 billion0.68%
Invesco AI and Next Gen Software ETF (IGPT)$283 million0.60%
Roundhill Generative AI & Technology ETF (CHAT)$138 million0.75%
Amplify AI Powered Equity ETF (AIEQ)$107 million0.75%
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Apr 9, 2024

Why artificial intelligence AI and machine learning ML are important in the financial markets and institutions? ›

Some uses of AI/ML include powering chatbots in customer service functions, identifying investment opportunities and/or executing trades, augmenting lending models or (more sparingly) making lending decisions, and identifying and preventing fraud.

What is AI and generative AI? ›

Generative artificial intelligence (AI) refers to models or algorithms that create brand-new output, such as text, photos, videos, code, data, or 3D renderings, from the huge amount of data they are trained on. The models 'generate' new content by referring to the data they have been trained on, making new predictions.

What are the top hedge funds? ›

What are the Largest 100 Hedge Funds Ranked by AUM?
RankFirm NameADV Filing Date
1Millennium Management09/26/2023
2Citadel Advisors07/07/2023
3Bridgewater Associates04/21/2023
4Balyasny Asset Management05/18/2023
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Feb 20, 2024

What AI company did Warren Buffett invest in? ›

Look no further than iPhone maker Apple (AAPL 0.64%). The stock, which Buffett first bought in 2016, has grown to 44.2% of the portfolio. Nonetheless, Apple is a bonafide AI stock, and Buffett has only sold minimal shares despite sitting on tremendous unrealized gains today.

What are the top 3 AI stocks to buy now? ›

7 best-performing AI stocks
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NVDANVIDIA Corp221.39%
SYMSymbotic Inc53.19%
UPSTUpstart Holdings Inc46.67%
PRCTProcept BioRobotics Corp41.03%
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Apr 17, 2024

How is AI being used in banking? ›

How is Ai used in Banking? AI is used in banking to enhance efficiency, security, and customer experiences. It automates routine tasks like data entry and fraud detection, reducing operational costs. AI-driven chatbots provide 24/7 customer support.

How do investment banks use AI? ›

Fraud Detection: Use of AI in Investment Banking. AI can help find and stop fraud by monitoring transactions, looking for patterns and suspicious behavior, and informing the authorities. Detecting fraud with the most famous technology of today is among the best use of AI in Investment Banking.

How AI is used in finance? ›

How is AI used in finance? AI in finance can help in five general areas: personalize services and products, create opportunities, manage risk and fraud, enable transparency and compliance, and automate operations and reduce costs.

Why is AI suddenly so popular? ›

Artificial intelligence (AI) has evolved fast in recent years, becoming a key disruptive force across a wide range of industries. This boom in AI use can be due to a combination of technology breakthroughs, increasing data availability, and increased awareness of its potential.

What does GPT stand for? ›

GPT, standing for Generative Pre-trained Transformer, is a powerful language model tool used to decipher and generate human-like text. Let's explore the nuts and bolts of how GPT is revolutionizing language processing.

Why is AI so popular now? ›

Artificial Intelligence History

The term artificial intelligence was coined in 1956, but AI has become more popular today thanks to increased data volumes, advanced algorithms, and improvements in computing power and storage. Early AI research in the 1950s explored topics like problem solving and symbolic methods.

What is the most successful hedge fund ever? ›

Citadel, which ranked second in 2023, made $8.1 billion in profits after bringing in a record-breaking $16 billion in 2022. Its $74 billion in gains since inception rank it as the most successful hedge fund in history.

What is the most profitable hedge fund ever? ›

Citadel, a Miami-based multistrategy hedge-fund firm, led the list with a $74 billion net gain for its investors since inception in 1990 through 2023. It racked up an $8.1 billion profit last year.

What is the most successful hedge fund in the world? ›

The largest hedge funds in the world include Citadel, Bridgewater, AQR, and D.E. Shaw.
  1. Citadel. Citadel is based in Miami and focuses on five strategies. ...
  2. Bridgewater Associates. ...
  3. AQR Capital Management. ...
  4. D.E. Shaw. ...
  5. Renaissance Technologies. ...
  6. Two Sigma Investments. ...
  7. Elliott Investment Management. ...
  8. Farallon Capital Management.

Does Vanguard have any AI funds? ›

Vanguard Quietly Embraces AI in $13 Billion of Quant Stock Funds - Bloomberg.

Does Fidelity have an AI stock fund? ›

TGFTX - TCW Artificial Intelligence Equity Fund Class I | Fidelity Investments.

Does Charles Schwab use AI? ›

“Just in the past few years, AI search analysis has helped identify key areas of client interest, from taxes to meme stocks, crypto, and more. That's made us faster at looping in subject-matter experts to create or update time-relevant resources that the Schwab Assistant can serve up in response to client inquiries.”

Do investment banks use AI? ›

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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