CYAIHCSep 11, 2025

Incorporating AI Incident Reporting into Telecommunications Law and Policy: Insights from India

arXiv:2509.09508v14 citationsh-index: 15Computer Law & Security Review
Originality Synthesis-oriented
AI Analysis

It addresses a regulatory gap for AI incidents in telecommunications, particularly in jurisdictions like India without horizontal AI laws, offering incremental policy solutions for sectoral governance.

This paper tackles the problem of AI-specific risks in telecommunications, such as algorithmic bias, which are not covered by current cybersecurity and data protection laws, using India as a case study to reveal regulatory gaps and propose targeted reporting mandates and frameworks.

The integration of artificial intelligence (AI) into telecommunications infrastructure introduces novel risks, such as algorithmic bias and unpredictable system behavior, that fall outside the scope of traditional cybersecurity and data protection frameworks. This paper introduces a precise definition and a detailed typology of telecommunications AI incidents, establishing them as a distinct category of risk that extends beyond conventional cybersecurity and data protection breaches. It argues for their recognition as a distinct regulatory concern. Using India as a case study for jurisdictions that lack a horizontal AI law, the paper analyzes the country's key digital regulations. The analysis reveals that India's existing legal instruments, including the Telecommunications Act, 2023, the CERT-In Rules, and the Digital Personal Data Protection Act, 2023, focus on cybersecurity and data breaches, creating a significant regulatory gap for AI-specific operational incidents, such as performance degradation and algorithmic bias. The paper also examines structural barriers to disclosure and the limitations of existing AI incident repositories. Based on these findings, the paper proposes targeted policy recommendations centered on integrating AI incident reporting into India's existing telecom governance. Key proposals include mandating reporting for high-risk AI failures, designating an existing government body as a nodal agency to manage incident data, and developing standardized reporting frameworks. These recommendations aim to enhance regulatory clarity and strengthen long-term resilience, offering a pragmatic and replicable blueprint for other nations seeking to govern AI risks within their existing sectoral frameworks.

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