Integrating Artificial Intelligence in Financial Auditing to Enhance Accuracy, Efficiency, and Regulatory Compliance Outcomes
Obinna Barnabas Onyenahazi
- Year
- 2025
- Citations
- 7
- Access
- Open access
Abstract
The integration of Artificial Intelligence (AI) into financial auditing represents a transformative shift in how organizations ensure financial accuracy, operational efficiency, and regulatory compliance.Traditional audit methodologies, which often rely on manual sampling, retrospective data analysis, and predefined risk thresholds, are increasingly challenged by the scale, complexity, and velocity of modern financial data.AI, through technologies such as machine learning, natural language processing, and robotic process automation, offers auditors the ability to process vast datasets in real-time, detect anomalous patterns, and automate routine tasks with minimal human intervention.From a broader perspective, AI-driven audits enable continuous monitoring of financial transactions, improved risk stratification, and early detection of fraud and misstatements.As global regulatory standards tighten and enterprises seek more agile compliance solutions, the precision and transparency offered by AI-based systems become critical.Narrowing the focus, this study explores how AI tools are being applied in core audit processes including journal entry testing, contract review, inventory verification, and financial reporting.Case analyses from early adopters such as the Big Four accounting firms demonstrate measurable improvements in audit cycle times, coverage, and audit trail integrity.However, the implementation of AI in auditing also raises challenges, including data governance, model explainability, auditor training, and ethical considerations around decision automation.This paper presents a comprehensive evaluation of current AI applications in financial auditing and outlines a strategic roadmap for auditors, regulators, and financial institutions seeking to transition to AI-augmented audit ecosystems.The analysis underscores the role of interdisciplinary collaboration in achieving a balance between technological innovation and professional accountability in the audit domain.
Keywords
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