How generative AI is impacting the hiring needs in the investment management industry (2024)

With generative AI taking conversations around artificial intelligence (AI) mainstream, there are discussions around the potential applications and impact this technology will have for every industry.

According to the World Economic Forum, “Generative AI refers to a category of artificial intelligence algorithms that generate new outputs based on the data they have been trained on. Unlike traditional AI systems that are designed to recognise patterns and make predictions, generative AI creates new content in the form of images, text, audio, and more.”

Stanford University's Artificial Intelligence Index Report 2023 places the AI job postings in the finance and insurance industry as the third-highest in terms of percentage of total job postings when compared with those in 2021 and 2022. In the broader banking and finance segment, people are looking at AI to help them in risk assessment, fraud detection, customer experience and answering questions related to financial advice.

In this article, let us explore the potential impact for the investment management industry, which focuses on long-term management of financial assets.

A question that the asset management industry has been trying to answer is how to get better returns. Traditionally, in actively managed funds, fund managers have to understand market signals and build a portfolio that aligns with client goals and gives the best-in-class returns. Over the last few decades, we have seen the rise of passive funds and exchange traded funds.

How does this situation change with the mainstreaming of AI, especially with the advent of generative AI?

The CFA Institute, the global association of investment professionals, has just launched the Handbook of Artificial Intelligence and Big Data Applications in Investments. Here are a few of their learnings:

A survey by the CFA Institute asked what kind of people would companies in the sector hire over the next two years. Most respondents wanted to hire finance talent with some AI and big data skills.

The application of AI and big data in investment management is across business functions — core businesses, risk management, sales and marketing, cybersecurity, customer service, back office and compliance.

Natural language processing is a natural application in the asset management industry given that many actions need text data. It has been used to summarise information, extract topics, search information, answer questions, analyse sentiments and recognise named entities.

Some specific and emerging use cases today include:
Analyse new data: For example, can sentiments be analysed from social media posts to provide more real-time insights before they get captured in financial results

Analyse patterns from data: For example, searching for ESG (environmental, social, governance) themes in a corporate social responsibility report or assessing risks in corporate filing documents which are large, bulky documents through a bag-of-words approach

Increasingly, such information can be used to augment data for client insights and with the new advances of multimodal models, there could be more ways to look at text and tone.

Indeed, Bloomberg recently announced BloombergGPT, a 50-billion-parameter generative AI model trained on a wide range of financial data to support tasks within the financial industry. Bloomberg said this could help in improving existing natural language processing (NPL) tasks, including sentiment analysis, named entity recognition, news classification and answering questions, among others.

Morgan Stanley highlighted another market underlying need recently. Given that companies in financial services often want their data to stay proprietary so that they can create their own AI models — as the AI systems learn more with data — trust in data is becoming an even more important requirement.

So how could all of this help the industry?
Deloitte in its recent report — AI: The Next Frontier for Investment Management Firms — talked about 4 pillars of transformation:

Generate alpha: Using alternative data sets, firms can improve their performance and generate more alpha and returns

Operational efficiency: Using this approach, the traditional cost centers can start becoming more of AI-enabled “as a service” offerings

Improve product and content distribution: AI can help customise content for better customer experience

Manage risk: AI could be a key differentiator in how risk is managed in the firms by helping add to data and preparing for unforeseen events

For people entering the investment management sector today and over the next few years, this means apart from knowledge of finance, they might have to learn how to analyse data and use tools such as machine learning and also elements of programming. The most important quality will be ability to think, reason and to ask the right questions.

How generative AI is impacting the hiring needs in the investment management industry (2024)

FAQs

How does AI affect investment management? ›

Advantages of using AI in asset and investment management

Enable the automation of manual middle and back-office tasks with intelligent automation solutions; this can help reduce costs of high-volume, repetitive tasks.

How does generative AI affect the industry? ›

From personalized product recommendations to virtual try-on experiences, Generative AI is reshaping the retail industry with innovation. AI-powered algorithms enhance customer engagement, optimize inventory management, and drive revenue growth.

How can generative AI be used in investment banking? ›

Gen AI algorithms can provide insights into the underlying patterns contributing to fraud alerts, which enables more effective decision-making. Generative AI models can help banks identify possible risk areas and preserve profitability by analyzing historical data patterns and market trends.

What is the potential impact of generative AI on the labour market? ›

Generative AI may increase polarization between jobs while decreasing inequality among workers in a certain job, with an uncertain overall effect. A final question is that while research finds some jobs more exposed to generative AI, it does not state which workers will be replaced.

How to use AI for investment management? ›

Here are some ways regular investors can utilize artificial intelligence in their portfolios.
  1. Stock Picking.
  2. Automated Portfolio Building.
  3. Trading and Trade Management.
  4. Portfolio Optimization.
  5. Data Interpretation and Predictions.
  6. Risk Management.
  7. Step 1: Understand Your Financial Goals.
  8. Step 2: Choose Your Investing Method.

How AI helps to manage trading as well as risk management in the finance sector? ›

Informing and analyzing trading decisions

By rapidly absorbing and querying the details of different instruments and their attributes, AI models can make sense of the most complex investment portfolios and provide a faster, deeper and clearer picture than ever of their performance.

How does generative AI affect financial services? ›

Generative AI models augment existing data by creating statistically similar synthetic data and then using it to train more robust models for credit scoring. Generative AI also helps identify non-traditional variables or patterns to assess a borrower's creditworthiness more accurately.

What problems can generative AI solve? ›

Generative AI solves diverse business problems, such as adapting to consumer preferences, streamlining content creation, and enhancing data-driven decision-making. It's pivotal in optimizing design processes, advancing healthcare innovations, and improving financial forecasting.

What industries will generative AI disrupt? ›

Here are five of the business sectors that will be most affected by the incorporation of AI tech into systems and processes:
  • Education.
  • Cybersecurity.
  • Financial services.
  • Retail.
  • Marketing.
Apr 2, 2024

How is AI impacting investment banking? ›

Making it easier to leverage relationships

One of the most exciting ways artificial intelligence can help investment banks uncover new opportunities is through relationship management. This is because the most powerful tool in any investment banker's toolbox is their personal network.

How is JP Morgan using generative AI? ›

Overall, J.P. Morgan Research estimates generative AI could increase global GDP by $7–10 trillion, or by as much as 10%. The technology could result in a massive workforce productivity boom over the next one to three years, which could affect the shape of the economic cycle.

How does AI affect the finance industry? ›

The impact of Artificial Intelligence in the finance industry cannot be overstated. From automating manual tasks to improving risk management, enhancing customer experience, enabling algorithmic trading, and boosting fraud detection, AI has transformed the way financial institutions operate.

What is the downside of generative AI? ›

Known Limitations Of Generative AI

Large language models (LLMs) are prone to "hallucinations" - generating fictitious information, presented as factual or accurate. This can include citations, publications, biographical information, and other information commonly used in research and academic papers.

What are the threats of generative AI? ›

Risks of Incorporating Generative AI into Services
  • Information leakage by outputting information about other users or internal system information.
  • Responses that are inappropriate as a service such as factual errors, bias, discrimination, incitement of crime, or copyright infringement.

How AI will impact future employment? ›

AI and machines increase labour productivity by automating routine tasks while expanding employee skills and increasing the value of work. As a result, in a machine-for-machine employment model, low-skilled jobs will disappear, while new and currently unrealized job roles will emerge (Polak 2021).

How will AI affect investment banking? ›

AI may boost portfolio management, risk management, low-cost customer support, customized customer experience, automated trading, cost-effectiveness, and 24/7 availability. Still, investment banking requires human vision and relationships. Thus, a total replacement is unattainable.

How will AI change investing? ›

Sentiment analysis: AI can analyse social media, news articles, and other sources of information to gauge market sentiment. This can provide valuable insights into market trends, public perception, and potential impact on investments.

What is the effect of AI on management? ›

AI, along with other technological tools, is further driving this transformation. Managers base their future decisions on their past experience, but by using AI tools, they have access to a huge amount of accumulated real-world experience from all the plans and strategies analysed by AI.

How is AI affecting the financial industry? ›

How does AI impact the finance industry? AI is a large driving force for how financial organizations conduct risk management, which includes security, regulatory compliance, fraud, anti-money laundering (AML), and know-your-customer (KYC) guidelines.

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