McKinsey estimates that AI—and generative AI in particular—could contribute up to $340 billion annually to the global banking sector, accounting for approximately 4.7% of total industry revenues. This includes leveraging AI to significantly enhance financial planning and analysis (FP&A) processes by automating routine tasks such as accounts payable, journal entries, data gathering, and reporting.
Early applications of AI in FP&A have already demonstrated a powerful impact. By integrating real-time data into traditional forecasting models, AI improves the accuracy of predictions related to revenue, expenses, and cash flow. Generative AI further advances these capabilities by automating tasks like report generation, variance analysis, and recommendations, allowing FP&A teams to focus more on strategic initiatives.
However, fully harnessing these benefits requires overcoming the longstanding challenges in traditional FP&A processes that have hindered financial planning’s effectiveness and agility.
Challenges of traditional FP&A
Traditional FP&A processes face significant challenges in handling vast amounts of financial data generated daily. Integrating market data, transactional data, and economic indicators often results in data silos and inconsistencies, which complicates obtaining a comprehensive financial overview. Additionally, traditional processes are typically confined to predefined scenarios, limiting their ability to adapt to unexpected market conditions and changes. This rigidity impedes effective preparation for sudden events and volatile market fluctuations.
Manual FP&A processes are also time-consuming and prone to errors, which hampers the ability to respond quickly to market changes. This delay impacts decision-making agility and operational efficiency. Traditional FP&A struggles with adapting to real-world, requiring substantial resources for continuous scenario development and modeling. The inability to accurately predict future conditions leads to diminished confidence in financial projections and challenges in urgent decision-making, particularly around capital allocation.
Generative AI enhancements in FP&A processes
Generative AI addresses these traditional challenges and enhances FP&A processes in several ways:
- Forecasting capabilities: Generative AI, when combined with traditional forecasting tools, incorporates real-time data to improve accuracy in revenue, expense, and cash flow forecasting. This capability enhances the generation of reports, explanation of variances, and provision of recommendations almost in real-time.
- Scenario planning and stress testing: Generative AI can simulate a range of potential market conditions, including rare and extreme events. These simulations cover various macroeconomic factors, industry-specific trends, and geopolitical events, allowing institutions to test their resilience against numerous risks.
- Resource allocation: By providing real-time insights into financial performance, generative AI enables institutions to make more informed and agile decisions regarding resource allocation. This optimization of capital deployment and operational expenses is achieved through AI-driven analysis, which maximizes returns and minimizes risks.
- Risk management: Generative AI continuously monitors market conditions and internal data to offer up-to-date risk assessments. This capability allows institutions to detect emerging risks and take timely actions to mitigate them. AI algorithms can analyze transaction data and behavioral patterns to identify unusual activities, such as potential fraud.
- Regulatory compliance: Generative AI automates the collection, analysis, and reporting of data required for regulatory compliance, reducing the burden of manual reporting and ensuring accuracy. AI can adapt quickly to new regulations and continuously monitor changes to maintain compliance.
Challenges to adoption
Despite its potential, adopting generative AI in FP&A presents several challenges:
- Data infrastructure and management: Effective AI implementation relies on high-quality, clean data. Investing in robust data infrastructure, such as scalable, secure cloud-based storage and advanced management tools, is essential for data accessibility and security.
- Model explainability and transparency: Ensuring transparency in AI models is critical for regulatory compliance and stakeholder trust. Techniques for explainable AI, such as feature importance and model visualization, help demystify AI decisions and build confidence.
- Regulatory compliance and ethical considerations: Generative AI tools may lack contextual awareness and real-time information, and there are no implicit governance models for output validation. Institutions should establish ethical guidelines for AI use and conduct regular audits to ensure adherence, avoid biases, and comply with regulations.
- Integration with human expertise: Human expertise remains vital for interpreting AI insights and making strategic decisions. AI should augment rather than replace human capabilities, requiring a collaborative approach and training for employees to effectively work with AI.
Navigating the future
Generative AI holds transformative potential for FP&A processes in banking. To fully leverage this technology, banks should start with practical use cases such as forecasting, reporting, and dynamic scenario generation. These initial applications offer quick wins and pave the way for broader implementation. As adoption progresses, finance functions must strategically address current challenges and set a course for innovation and resilience. Embracing generative AI will not only refine FP&A processes but also enhance financial stability and strategic agility in an ever-changing economic landscape.
For more information on how generative AI can transform your FP&A processes, visit EXL’s website.
Zia Siddiqi, vice president and head of capital markets at EXL and Vikas Sharma is senior vice president and global practice head of banking analytics at EXL, a leading data analytics and digital operations and solutions company.
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Source: News