The Huge Opportunity for Artificial Intelligence in Investment Operations and Accounting - Global Banking | Finance (2024)

In the middle and back offices, the depth and breadth of industry expertise will be a bigger driver of AI innovation than data science

By Tom McMackin, SVP, Marc Zimmerman, SVP, and Scott Kurland, MD, of SS&C

Although AI technology is increasingly being embraced by most industries to drive enhanced operational efficiencies, customer experience and financial performance, the financial services industry was actually one of its earliest pioneers. The ability to predict stock market movements has been the holy grail for institutional investors since the inception of securities exchanges. It is little wonder that this industry segment first began research with predictive analytics as early as the 1950’s and 60’s. A decade later, capital markets began to see the development of the first algorithmic models that were used to accelerate trading decisions. Today, these tools have evolved into the High Frequency Trading (HTF) systems that execute millions of transactions daily.

In very real terms, AI offers the ability to make faster and smarter decisions, translating into billions of dollars a year for financial services institutions. It should come as no surprise then that investment banks and hedge funds have been pouring significant funds into related software technology and research for years.

Investment Operations and Accounting – A New Financial Services Frontier for AI

The Huge Opportunity for Artificial Intelligence in Investment Operations and Accounting - Global Banking | Finance (1)

Tom McMackin

To date, the major share of the AI spend within capital markets has been squarely focused on enabling front-office trading and customer-facing business functions, while middle- and back-office operations have remained largely unchartered territory. Investment operations and accounting systems have become increasingly sophisticated in their efforts to address the industry’s ever-changing accounting standards and regulatory compliance requirements, but thus far these applications are not ‘smart.’Instead, they are typically legacy solutions driven by hard-coded rules and processes that enable the inflow of structured data from external sources, such as counter-parties, custodians, securities exchanges,and clearing and settlement systems. Unlike front-office trading operations that utilize AI to make more enlightened decisions based on Deep Learning and Big Data analysis, the goal of the middle and back office is to perform accounting, regulatory compliance and other operational tasks with the utmost efficiency and precision.

No “Do-Overs” in the Middle and Back Office

Clearly there are big opportunities to leverage AI in the middle and back-offices. Examples include automating reconciliation processes, reducing the burden of exception management, and enabling faster, more effective remediation of identified errors. However, the middle and back-office calls for a substantially different approach to the use of AI — one that is driven as much by the depth and breadth of expertise in investment operations and accounting as it is by the AI technology itself. In the front office, bad decisions one day can be compensated by better decisions the next. Anomalies are expected as part of the asset management and trading process. Not so in the middle and back office, where numbers either add up correctly or they don’t. If they don’t, the exceptions must be quickly identified, reconciled and repaired to avoid undesired downstream consequences with regulators, auditors and stakeholders.

More Sophisticated AI Tools Don’t Always Produce More Sophisticated Results

Today’s most sophisticated, front-office trading models leverage advanced AI tools like Deep Learning with Advanced Neural Networks (ANN) to uncover new patterns, and reach insights and conclusions through interpretation of data – similar to how the human brain functions. Unfortunately, Deep Learning models are not yet an exact science. Like human brains, these tools can draw inaccurate conclusions. In the more precise world of investment accounting, there is little room for opinion — human or machine. Machine learning models must be thoroughly trained and tested to produce very specific and accurate outcomes. They must be designed to identify only appropriate patterns, then suggest or trigger appropriate actions relevant to operations and accounting processes. This takes highly specialized investment operations and accounting expertise, not only with regard to middle-to-back-office functions, but also across a continually expanding landscape of asset types, transactions, markets, regulations and industry operating models.

In the investment accounting space, machine learning can be used to reduce time and cost associated with data inquiries by providing relevant context.Once the machine learning model identifies an issue and where it resides, it can either suggest the proper course of action to resolve it, or autonomously initiate the appropriate workflow through “Intelligent Workflow Automation” (IWA). IWA technology learns from user behavior to identify and automate the appropriate workflow processes needed to locate and resolve the problem without manual intervention.For example, in the investment operations area, reconciling position holdings from custodians can be time consuming if there are differences in the quantities due to out-of-date factors. Pattern recognition algorithms can discover these breaks and resolve them quickly.

It is essential that the behaviors of IWA models are thoroughly scripted and tested by highly experienced and knowledgeable investment operations and accounting experts to ensure that target automations correctly perform the tasks at hand. No matter how sophisticated the models are, they will not produce valid results unless they are guided by specialized investment accounting and operations domain expertise to know what anomalies, parameters and drivers to look for.

Increasing the Value of AI with a Single, Unified Platform

What the financial services industry generally calls “integrated investment operations and accounting systems” are essentially a series of disparate functional applications or modules that are loosely wired together in an effort to more efficiently perform a range of middle-to back-office functions and services. To the extent they are effectively integrated, they endeavor to exchange data and automate hard-coded transactions from beginning to end in a serial sequence commonly referred to as “Straight Through Processing (STP)”. However, here no pattern recognition is involved –it is simply one specific event triggering another specific event with no enhanced intelligence.

Today’s modular investment operations and accounting systems lack the unified architecture needed to exploit the full value of AI. The full potential of machine learning and intelligent workflow can only be realized when an application can holistically recognize patterns and pinpoint exceptions across relevant functions, activities and data anywhere in the system. Only then can the system autonomously initiate the best actions or recommend the most appropriate next steps.

This process, however, is problematic where separate applications or modules have been cobbled together to look, but not really act like one. To truly enjoy the full benefit and value of AI in a middle and back-office investment setting, institutions will need a unified technology platform that provides a single database and user interface together with a rich collection of pre-integrated functions and common services. The platform also needs to be able to support all the diverse assets, transaction types and industry operating models that define an institution’s businesses. Successful solution pioneers in this new space will likely have long and successful track record in the industry, deep expertise in wide range of asset types and industry operating models, and an aggressive mergers and acquisitions strategy to continually deepen and widen that expertise.

Bottom line – AI tools have the potential to bring huge efficiency gains and cost savings to middle- and back-office investment operations, especially when embedded in software applications that singularly support ready access to all required data. However, successful deployment of these technologies also requires deep domain knowledge and expertise on the part of the application provider to truly optimize the capabilities and benefits of this innovative technology.

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The Huge Opportunity for Artificial Intelligence in Investment Operations and Accounting - Global Banking | Finance (2024)

FAQs

How does AI help in investment banking? ›

Managing risk is the most significant use of AI in investment banking. For managing risk, AI can help reduce potential risks, identify and detect patterns, and provide timely insights to make decisions as soon as possible by scanning large volumes of data in less time.

What is the role of artificial intelligence in the accounting industry? ›

AI tools streamline accounting through automated data entry, real-time reporting and analysis, and workflow automation. AI tools can also be trained with custom business and financial data, enabling them to generate personalized financial insights and recommendations.

What is the future of AI in banking and finance? ›

Generative AI (gen AI) is revolutionizing the banking industry as financial institutions use the technology to supercharge customer-facing chatbots, prevent fraud, and speed up time-consuming tasks such as developing code, preparing drafts of pitch books, and summarizing regulatory reports.

What are the benefits of artificial intelligence 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.

How is JP Morgan using AI? ›

J.P. Morgan is also using AI for payment validation screening and to automatically show insights to clients, such as cashflow analysis, when they need it.

How is AI used in banking operations? ›

Banks are now using AI algorithms to evaluate client data, identify individual financial activities and provide personalized advice. This kind of individualized attention enables clients to make better informed financial decisions, increases trust and strengthens customer loyalty.

What is the future of AI in accounting? ›

AI is changing the work of finance professionals and accountants by automating repetitive operations, improving fraud detection, offering real-time insights, and modernizing audit processes. As the accounting industry embraces these AI technologies, professionals must adjust and develop the skills to use AI properly.

What companies are using artificial intelligence in accounting? ›

The profession's biggest firms - like EY and PwC - are deploying AI technology in their auditing and financial review procedures in order to identify irregular transactions or patterns of inconsistency.

What are the disadvantages of AI in accounting? ›

Drawbacks of AI in Accounting and Finance
  • Job Reskilling or Redeployment. As automation progresses, job displacement concerns arise. ...
  • Sensitive Data Exposure. There is always a risk of exposing sensitive information when using AI. ...
  • Complacency and Over-reliance. AI should not replace human judgment, but rather augment it.
Mar 14, 2024

Which is the most used AI technology in banking and finance? ›

Chatbots & Virtual Assistants

Chatbots and virtual assistants powered by AI have become a staple in modern banking. These applications use natural language processing (NLP) and machine learning algorithms to understand and respond to customer queries in real-time.

Will AI replace humans in banking? ›

AI is never going to fully replace human employees, and is widely expected to be a boon for the workplace. About 30% of the hours employees currently work will be automated by 2030, according to a report from McKinsey. This will free up some workers to focus on more strategic projects.

Which bank is using AI? ›

Capital One is another example of a bank embracing the use of AI to better serve its customers.

How to use AI in accounting? ›

How to incorporate AI in your accounting workflows
  1. Workflow analysis. Begin by thoroughly understanding your existing accounting processes. ...
  2. Identify manual and repetitive tasks. ...
  3. Assess data volume and complexity. ...
  4. Evaluate data variability. ...
  5. Analyze task suitability.

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.

Why artificial intelligence is a good investment? ›

The investment for AI is multifaceted. Firstly, the expansion of AI applications across diverse sectors signifies a tipping point that promises long-term value and growth potential. From predictive analytics to natural language processing, AI is not merely a technological tool but a catalyst for innovation.

How is generative AI used in investment banking? ›

Leveraging Generative AI in banking to collect and interpret financial data on a large scale enables bank managers to make knowledgeable choices, offer personalized services, detect fraud and suspicious transactions, evaluate risks, and undertake a variety of other essential tasks.

How is AI useful in stock market? ›

The AI algorithms execute trades within milliseconds, allowing investors and financial institutions to capitalize on minuscule price discrepancies. The use of AI in stock market trading tools improves their ability to analyze market data and execute trades at lightning-fast speed with better accuracy.

How can AI help with investing? ›

AI is being used in investing in a number of ways, including algorithmic trading, sentiment analysis, and chatbot interfaces to help investors analyze data and ensure that their portfolios are diversified.

How does Morgan Stanley use AI? ›

It now uses machine learning to recommend investments based on client preferences. Next Best Action uses machine learning to identify personalized investment ideas. They distribute those ideas and relevant messages to specific clients with their Customer Relationship Management (CRM) systems.

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