Leading Autonomous AI: Review of Governance Frameworks, and the Scholar-Practitioner Gap in Financial Services for C-Suite Executives

Authors

DOI:

https://doi.org/10.32996/jbms.2026.8.6.4

Keywords:

Agentic Artificial Intelligence, Executive Leadership, AI Governance, Financial Services, Scholar‑Practitioner Research, Autonomous Systems, Model Risk Management, Adaptive Leadership, Responsible AI, Regulatory Compliance

Abstract

The emergence of Agentic Artificial Intelligence (Agentic AI)—autonomous systems capable of independent reasoning, planning, and executing actions across enterprise environments—presents a defining strategic paradox for Managing Directors and C-Suite executives in financial services. These leaders face an unprecedented challenge: aggressively deploying autonomous AI systems to drive operational efficiency and competitive advantage while maintaining unyielding regulatory compliance, operational stability, and risk management. This paper examines this paradox through a dual lens of practitioner job descriptions and scholarly literature. Practitioner sources reveal that executives are expected to simultaneously architect cloud-native AI platforms, operationalize Model Risk Management (MRM) frameworks for autonomous agents, define portfolio prioritization rubrics for agentic systems, establish human-in-the-loop and human-on-the-loop control mechanisms, and deliver quantifiable ROI—often without established playbooks or precedents. These roles demand deep fluency across a complex technical stack, including multi-agent orchestration frameworks, tool-use architectures, MLOps for agent monitoring, and governance systems for autonomous decision-making. Scholarly literature offers foundational insights through transdisciplinary research models, temporal perspectives on the academic-practitioner gap, and critical pragmatism as a bridging philosophy. However, a critical gap exists at the intersection of agentic AI implementation and executive strategic leadership: there is no empirical understanding of how senior leaders actually navigate the organizational, regulatory, and technical complexities of scaling autonomous AI systems in highly regulated environments. Adopting a Scholar-Practitioner approach, this proposed research will investigate how Managing Directors, CIOs, CTOs, and CDOs in banking and insurance navigate these challenges. The study will employ a qualitative multiple-case study design, integrating adaptive leadership theory with AI governance constructs to explore how executives balance innovation imperatives with control requirements in the age of autonomous AI. Findings will contribute actionable frameworks for executive decision-making, organizational design, and risk governance, bridging the gap between academic theory and practitioner need.

Author Biography

  • Satyadhar, Touro University, BoFA

    Satyadhar Joshi is a quantitative analyst with experience in financial risk, data science, machine learning, and artificial intelligence. He has contributed to the field through a combination of applied research, educational content, and peer review work. His areas of focus include financial modeling, AI-driven risk assessment, and big data analytics.

    He currently serves as an Assistant Vice President at Bank of America and conducts independent research in generative AI and financial systems. His work explores how modern AI methods, such as transformer models and generative algorithms, can be integrated into traditional risk modeling frameworks. His interest lies in improving the tools used to model uncertainty, particularly in the context of increasingly nonlinear and data-driven financial markets.

    With a foundation in statistical modeling and machine learning, Joshi's research often applies generative AI techniques to practical problems in finance. He shares much of his work publicly through code repositories, technical documentation, and online tutorials. These resources include examples of AI deployment in cloud environments, market prediction models, and applications of vector databases.

    In addition to technical contributions, Joshi engages in ongoing discussions about the impact of generative AI on the financial workforce. His writing addresses the evolving role of analysts in AI-augmented environments and considers how agentic systems may shift the nature of financial decision-making and compliance tasks. He also explores the policy and regulatory considerations that arise from the use of AI in finance.

    Joshi’s work spans multiple disciplines, drawing from behavioral finance, cognitive science, and systems engineering to inform the development of adaptive AI systems. Some of his recent research includes investigations into prompt engineering techniques for improving language model performance in structured financial tasks such as credit risk evaluation and stress testing.

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Published

2026-04-11

Issue

Section

Research Article

How to Cite

Satyadhar. (2026). Leading Autonomous AI: Review of Governance Frameworks, and the Scholar-Practitioner Gap in Financial Services for C-Suite Executives. Journal of Business and Management Studies, 8(6), 49-68. https://doi.org/10.32996/jbms.2026.8.6.4